Upgrade NAS-API to v2.0:
we use an abstract class NASBenchMetaAPI to define the spec of an API; it can be inherited to support different kinds of NAS API, while keep the query interface the same.
This commit is contained in:
		| @@ -37,7 +37,7 @@ At the moment, this project provides the following algorithms and scripts to run | ||||
|     <td rowspan="6" align="center" valign="middle" halign="middle"> NAS </td> | ||||
|     <td align="center" valign="middle"> TAS </td> | ||||
|     <td align="center" valign="middle"> <a href="https://arxiv.org/abs/1905.09717">Network Pruning via Transformable Architecture Search</a> </td> | ||||
|     <td align="center" valign="middle"> <a href="https://github.com/D-X-Y/AutoDL-Projects/tree/master/docs/NIPS-2019-TAS.md">NIPS-2019-TAS.md</a> </td> | ||||
|     <td align="center" valign="middle"> <a href="https://github.com/D-X-Y/AutoDL-Projects/tree/master/docs/NeurIPS-2019-TAS.md">NeurIPS-2019-TAS.md</a> </td> | ||||
|     </tr> | ||||
|     <tr> <!-- (2-nd row) --> | ||||
|     <td align="center" valign="middle"> DARTS </td> | ||||
|   | ||||
| @@ -37,7 +37,7 @@ | ||||
|     <td rowspan="6" align="center" valign="middle" halign="middle"> NAS </td> | ||||
|     <td align="center" valign="middle"> TAS </td> | ||||
|     <td align="center" valign="middle"> <a href="https://arxiv.org/abs/1905.09717">Network Pruning via Transformable Architecture Search</a> </td> | ||||
|     <td align="center" valign="middle"> <a href="https://github.com/D-X-Y/AutoDL-Projects/tree/master/docs/NIPS-2019-TAS.md">NIPS-2019-TAS.md</a> </td> | ||||
|     <td align="center" valign="middle"> <a href="https://github.com/D-X-Y/AutoDL-Projects/tree/master/docs/NeurIPS-2019-TAS.md">NeurIPS-2019-TAS.md</a> </td> | ||||
|     </tr> | ||||
|     <tr> <!-- (2-nd row) --> | ||||
|     <td align="center" valign="middle"> DARTS </td> | ||||
|   | ||||
							
								
								
									
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							| @@ -0,0 +1,13 @@ | ||||
| { | ||||
|   "scheduler": ["str",   "cos"], | ||||
|   "eta_min"  : ["float", "0.0"], | ||||
|   "epochs"   : ["int",   "200"], | ||||
|   "warmup"   : ["int",   "0"], | ||||
|   "optim"    : ["str",   "SGD"], | ||||
|   "LR"       : ["float", "0.1"], | ||||
|   "decay"    : ["float", "0.0005"], | ||||
|   "momentum" : ["float", "0.9"], | ||||
|   "nesterov" : ["bool",  "1"], | ||||
|   "criterion": ["str",   "Softmax"], | ||||
|   "batch_size": ["int", "256"] | ||||
| } | ||||
| @@ -29,7 +29,10 @@ NAS-BENCH-201-4-v1.0-archive.tar](https://drive.google.com/open?id=1X2i-JXaElsnV | ||||
| - [2020.02.25] APIv1.0/FILEv1.0: Checkpoints for 3 runs of each baseline NAS algorithm are provided in [Google Drive](https://drive.google.com/open?id=1eAgLZQAViP3r6dA0_ZOOGG9zPLXhGwXi). | ||||
| - [2020.03.09] APIv1.2/FILEv1.0: More robust API with more functions and descriptions | ||||
| - [2020.03.16] APIv1.3/FILEv1.1: [`NAS-Bench-201-v1_1-096897.pth`](https://drive.google.com/open?id=16Y0UwGisiouVRxW-W5hEtbxmcHw_0hF_) (4.7G), where `096897` is the last six digits for this file. It contains information of more trials compared to `NAS-Bench-201-v1_0-e61699.pth`, especially all models trained by 12 epochs on all datasets are avaliable. | ||||
| - [2020.06.01] APIv2.0/FILEv2.0: coming soon! | ||||
| - [2020.06.30] APIv2.0: Use abstract class (NASBenchMetaAPI) for APIs of NAS-Bench-x0y. | ||||
| - [2020.06.30] FILEv2.0: coming soon! | ||||
|  | ||||
| **We recommend to use `NAS-Bench-201-v1_1-096897.pth`** | ||||
|  | ||||
|  | ||||
| The training and evaluation data used in NAS-Bench-201 can be downloaded from [Google Drive](https://drive.google.com/open?id=1L0Lzq8rWpZLPfiQGd6QR8q5xLV88emU7) or [Baidu-Wangpan (code:4fg7)](https://pan.baidu.com/s/1XAzavPKq3zcat1yBA1L2tQ). | ||||
| @@ -42,7 +45,8 @@ It is recommended to put these data into `$TORCH_HOME` (`~/.torch/` by default). | ||||
| from nas_201_api import NASBench201API as API | ||||
| api = API('$path_to_meta_nas_bench_file') | ||||
| api = API('NAS-Bench-201-v1_1-096897.pth') | ||||
| api = API('{:}/{:}'.format(os.environ['TORCH_HOME'], 'NAS-Bench-201-v1_1-096897.pth')) | ||||
| # The default path for benchmark file is '{:}/{:}'.format(os.environ['TORCH_HOME'], 'NAS-Bench-201-v1_1-096897.pth') | ||||
| api = API(None) | ||||
| ``` | ||||
|  | ||||
| 2. Show the number of architectures `len(api)` and each architecture `api[i]`: | ||||
| @@ -149,10 +153,12 @@ api.reload('{:}/{:}'.format(os.environ['TORCH_HOME'], 'NAS-BENCH-201-4-v1.0-arch | ||||
| weights = api.get_net_param(3, 'cifar10', None) # Obtaining the weights of all trials for the 3-th architecture on cifar10. It will returns a dict, where the key is the seed and the value is the trained weights. | ||||
| ``` | ||||
|  | ||||
| To obtain the training and evaluation information (please see the comments [here](https://github.com/D-X-Y/AutoDL-Projects/blob/master/lib/nas_201_api/api.py#L172)): | ||||
| To obtain the training and evaluation information (please see the comments [here](https://github.com/D-X-Y/AutoDL-Projects/blob/master/lib/nas_201_api/api_201.py#L142)): | ||||
| ``` | ||||
| api.get_more_info(112, 'cifar10', None, False, True) | ||||
| api.get_more_info(112, 'ImageNet16-120', None, False, True) # the info of last training epoch for 112-th architecture (use 200-epoch-hyper-parameter and randomly select a trial) | ||||
| api.get_more_info(112, 'cifar10', None, hp='200', is_random=True) | ||||
| # Query info of last training epoch for 112-th architecture | ||||
| # using 200-epoch-hyper-parameter and randomly select a trial. | ||||
| api.get_more_info(112, 'ImageNet16-120', None, hp='200', is_random=True) | ||||
| ``` | ||||
|  | ||||
| Please use the following script to show the best architectures on each dataset: | ||||
|   | ||||
| @@ -4,6 +4,7 @@ | ||||
| # [2020.02.25] Initialize the API as v1.1 | ||||
| # [2020.03.09] Upgrade the API to v1.2 | ||||
| # [2020.03.16] Upgrade the API to v1.3 | ||||
| # [2020.06.30] Upgrade the API to v2.0 | ||||
| import os | ||||
| from setuptools import setup | ||||
|  | ||||
| @@ -15,7 +16,7 @@ def read(fname='README.md'): | ||||
|  | ||||
| setup( | ||||
|     name = "nas_bench_201", | ||||
|     version = "1.3", | ||||
|     version = "2.0", | ||||
|     author = "Xuanyi Dong", | ||||
|     author_email = "dongxuanyi888@gmail.com", | ||||
|     description = "API for NAS-Bench-201 (a benchmark for neural architecture search).", | ||||
|   | ||||
| @@ -126,7 +126,6 @@ def correct_time_related_info(arch_index: int, arch_info_full: ArchResults, arch | ||||
|     arch_info.reset_pseudo_eval_times('ImageNet16-120', None, 'ori-test', eval_per_sample * nums['ImageNet16-120-test']) | ||||
|   # arch_info_full.debug_test() | ||||
|   # arch_info_less.debug_test() | ||||
|   # import pdb; pdb.set_trace() | ||||
|   return arch_info_full, arch_info_less | ||||
|  | ||||
|  | ||||
|   | ||||
							
								
								
									
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								exps/NAS-Bench-201/test-nas-api-vis.py
									
									
									
									
									
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								exps/NAS-Bench-201/test-nas-api-vis.py
									
									
									
									
									
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							| @@ -0,0 +1,93 @@ | ||||
| ############################################################### | ||||
| # NAS-Bench-201, ICLR 2020 (https://arxiv.org/abs/2001.00326) # | ||||
| ############################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2020.06           # | ||||
| ############################################################### | ||||
| # Usage: python exps/NAS-Bench-201/test-nas-api-vis.py | ||||
| ############################################################### | ||||
| import os, sys, time, torch, argparse | ||||
| import numpy as np | ||||
| from typing import List, Text, Dict, Any | ||||
| from shutil import copyfile | ||||
| from collections import defaultdict | ||||
| from copy    import deepcopy | ||||
| from pathlib import Path | ||||
| import matplotlib | ||||
| import seaborn as sns | ||||
| matplotlib.use('agg') | ||||
| import matplotlib.pyplot as plt | ||||
| import matplotlib.ticker as ticker | ||||
|  | ||||
| lib_dir = (Path(__file__).parent / '..' / '..' / 'lib').resolve() | ||||
| if str(lib_dir) not in sys.path: sys.path.insert(0, str(lib_dir)) | ||||
| from config_utils import dict2config, load_config | ||||
| from nas_201_api import NASBench201API, NASBench301API | ||||
| from log_utils import time_string | ||||
| from models import get_cell_based_tiny_net | ||||
|  | ||||
|  | ||||
| def visualize_info(api, vis_save_dir, indicator): | ||||
|   vis_save_dir = vis_save_dir.resolve() | ||||
|   # print ('{:} start to visualize {:} information'.format(time_string(), api)) | ||||
|   vis_save_dir.mkdir(parents=True, exist_ok=True) | ||||
|  | ||||
|   cifar010_cache_path = vis_save_dir / '{:}-cache-{:}-info.pth'.format('cifar10', indicator) | ||||
|   cifar100_cache_path = vis_save_dir / '{:}-cache-{:}-info.pth'.format('cifar100', indicator) | ||||
|   imagenet_cache_path = vis_save_dir / '{:}-cache-{:}-info.pth'.format('ImageNet16-120', indicator) | ||||
|   cifar010_info = torch.load(cifar010_cache_path) | ||||
|   cifar100_info = torch.load(cifar100_cache_path) | ||||
|   imagenet_info = torch.load(imagenet_cache_path) | ||||
|   indexes       = list(range(len(cifar010_info['params']))) | ||||
|  | ||||
|   print ('{:} start to visualize relative ranking'.format(time_string())) | ||||
|  | ||||
|   cifar010_ord_indexes = sorted(indexes, key=lambda i: cifar010_info['test_accs'][i]) | ||||
|   cifar100_ord_indexes = sorted(indexes, key=lambda i: cifar100_info['test_accs'][i]) | ||||
|   imagenet_ord_indexes = sorted(indexes, key=lambda i: imagenet_info['test_accs'][i]) | ||||
|  | ||||
|   cifar100_labels, imagenet_labels = [], [] | ||||
|   for idx in cifar010_ord_indexes: | ||||
|     cifar100_labels.append( cifar100_ord_indexes.index(idx) ) | ||||
|     imagenet_labels.append( imagenet_ord_indexes.index(idx) ) | ||||
|   print ('{:} prepare data done.'.format(time_string())) | ||||
|  | ||||
|   dpi, width, height = 200, 1400,  800 | ||||
|   figsize = width / float(dpi), height / float(dpi) | ||||
|   LabelSize, LegendFontsize = 18, 12 | ||||
|   resnet_scale, resnet_alpha = 120, 0.5 | ||||
|  | ||||
|   fig = plt.figure(figsize=figsize) | ||||
|   ax  = fig.add_subplot(111) | ||||
|   plt.xlim(min(indexes), max(indexes)) | ||||
|   plt.ylim(min(indexes), max(indexes)) | ||||
|   # plt.ylabel('y').set_rotation(30) | ||||
|   plt.yticks(np.arange(min(indexes), max(indexes), max(indexes)//3), fontsize=LegendFontsize, rotation='vertical') | ||||
|   plt.xticks(np.arange(min(indexes), max(indexes), max(indexes)//5), fontsize=LegendFontsize) | ||||
|   ax.scatter(indexes, cifar100_labels, marker='^', s=0.5, c='tab:green', alpha=0.8) | ||||
|   ax.scatter(indexes, imagenet_labels, marker='*', s=0.5, c='tab:red'  , alpha=0.8) | ||||
|   ax.scatter(indexes, indexes        , marker='o', s=0.5, c='tab:blue' , alpha=0.8) | ||||
|   ax.scatter([-1], [-1], marker='o', s=100, c='tab:blue' , label='CIFAR-10') | ||||
|   ax.scatter([-1], [-1], marker='^', s=100, c='tab:green', label='CIFAR-100') | ||||
|   ax.scatter([-1], [-1], marker='*', s=100, c='tab:red'  , label='ImageNet-16-120') | ||||
|   plt.grid(zorder=0) | ||||
|   ax.set_axisbelow(True) | ||||
|   plt.legend(loc=0, fontsize=LegendFontsize) | ||||
|   ax.set_xlabel('architecture ranking in CIFAR-10', fontsize=LabelSize) | ||||
|   ax.set_ylabel('architecture ranking', fontsize=LabelSize) | ||||
|   save_path = (vis_save_dir / '{:}-relative-rank.pdf'.format(indicator)).resolve() | ||||
|   fig.savefig(save_path, dpi=dpi, bbox_inches='tight', format='pdf') | ||||
|   save_path = (vis_save_dir / '{:}-relative-rank.png'.format(indicator)).resolve() | ||||
|   fig.savefig(save_path, dpi=dpi, bbox_inches='tight', format='png') | ||||
|   print ('{:} save into {:}'.format(time_string(), save_path)) | ||||
|  | ||||
|  | ||||
| if __name__ == '__main__': | ||||
|   parser = argparse.ArgumentParser(description='NAS-Bench-X', formatter_class=argparse.ArgumentDefaultsHelpFormatter) | ||||
|   parser.add_argument('--save_dir',    type=str, default='output/NAS-BENCH-202', help='Folder to save checkpoints and log.') | ||||
|   parser.add_argument('--check_N',     type=int, default=32768,  help='For safety.') | ||||
|   # use for train the model | ||||
|   args = parser.parse_args() | ||||
|  | ||||
|   visualize_info(None, Path('output/vis-nas-bench/'), 'tss') | ||||
|  | ||||
|   visualize_info(None, Path('output/vis-nas-bench/'), 'sss') | ||||
							
								
								
									
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							| @@ -0,0 +1,283 @@ | ||||
| ############################################################### | ||||
| # NAS-Bench-201, ICLR 2020 (https://arxiv.org/abs/2001.00326) # | ||||
| ############################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2020.06           # | ||||
| ############################################################### | ||||
| # Usage: python exps/NAS-Bench-201/test-nas-api.py | ||||
| ############################################################### | ||||
| import os, sys, time, torch, argparse | ||||
| import numpy as np | ||||
| from typing import List, Text, Dict, Any | ||||
| from shutil import copyfile | ||||
| from collections import defaultdict | ||||
| from copy    import deepcopy | ||||
| from pathlib import Path | ||||
| import matplotlib | ||||
| import seaborn as sns | ||||
| matplotlib.use('agg') | ||||
| import matplotlib.pyplot as plt | ||||
| import matplotlib.ticker as ticker | ||||
|  | ||||
| lib_dir = (Path(__file__).parent / '..' / '..' / 'lib').resolve() | ||||
| if str(lib_dir) not in sys.path: sys.path.insert(0, str(lib_dir)) | ||||
| from config_utils import dict2config, load_config | ||||
| from nas_201_api import NASBench201API, NASBench301API | ||||
| from log_utils import time_string | ||||
| from models import get_cell_based_tiny_net | ||||
|  | ||||
|  | ||||
| def test_api(api, is_301=True): | ||||
|   print('{:} start testing the api : {:}'.format(time_string(), api)) | ||||
|   api.clear_params(12) | ||||
|   api.reload(index=12) | ||||
|    | ||||
|   # Query the informations of 1113-th architecture | ||||
|   info_strs = api.query_info_str_by_arch(1113) | ||||
|   print(info_strs) | ||||
|   info = api.query_by_index(113) | ||||
|   print('{:}\n'.format(info)) | ||||
|   info = api.query_by_index(113, 'cifar100') | ||||
|   print('{:}\n'.format(info)) | ||||
|  | ||||
|   info = api.query_meta_info_by_index(115, '90' if is_301 else '200') | ||||
|   print('{:}\n'.format(info)) | ||||
|  | ||||
|   for dataset in ['cifar10', 'cifar100', 'ImageNet16-120']: | ||||
|     for xset in ['train', 'test', 'valid']: | ||||
|       best_index, highest_accuracy = api.find_best(dataset, xset) | ||||
|     print('') | ||||
|   params = api.get_net_param(12, 'cifar10', None) | ||||
|  | ||||
|   # obtain the config and create the network | ||||
|   config = api.get_net_config(12, 'cifar10') | ||||
|   print('{:}\n'.format(config)) | ||||
|   network = get_cell_based_tiny_net(config) | ||||
|   network.load_state_dict(next(iter(params.values()))) | ||||
|  | ||||
|   # obtain the cost information | ||||
|   info = api.get_cost_info(12, 'cifar10') | ||||
|   print('{:}\n'.format(info)) | ||||
|   info = api.get_latency(12, 'cifar10') | ||||
|   print('{:}\n'.format(info)) | ||||
|  | ||||
|   # count the number of architectures | ||||
|   info = api.statistics('cifar100', '12') | ||||
|   print('{:}\n'.format(info)) | ||||
|  | ||||
|   # show the information of the 123-th architecture | ||||
|   api.show(123) | ||||
|  | ||||
|   # obtain both cost and performance information | ||||
|   info = api.get_more_info(1234, 'cifar10') | ||||
|   print('{:}\n'.format(info)) | ||||
|   print('{:} finish testing the api : {:}'.format(time_string(), api)) | ||||
|  | ||||
|  | ||||
| def visualize_sss_info(api, dataset, vis_save_dir): | ||||
|   vis_save_dir = vis_save_dir.resolve() | ||||
|   print ('{:} start to visualize {:} information'.format(time_string(), dataset)) | ||||
|   vis_save_dir.mkdir(parents=True, exist_ok=True) | ||||
|   cache_file_path = vis_save_dir / '{:}-cache-sss-info.pth'.format(dataset) | ||||
|   if not cache_file_path.exists(): | ||||
|     print ('Do not find cache file : {:}'.format(cache_file_path)) | ||||
|     params, flops, train_accs, valid_accs, test_accs = [], [], [], [], [] | ||||
|     for index in range(len(api)): | ||||
|       info = api.get_cost_info(index, dataset) | ||||
|       params.append(info['params']) | ||||
|       flops.append(info['flops']) | ||||
|       # accuracy | ||||
|       info = api.get_more_info(index, dataset, hp='90') | ||||
|       train_accs.append(info['train-accuracy']) | ||||
|       test_accs.append(info['test-accuracy']) | ||||
|       if dataset == 'cifar10': | ||||
|         info = api.get_more_info(index, 'cifar10-valid', hp='90') | ||||
|         valid_accs.append(info['valid-accuracy']) | ||||
|       else: | ||||
|         valid_accs.append(info['valid-accuracy']) | ||||
|     info = {'params': params, 'flops': flops, 'train_accs': train_accs, 'valid_accs': valid_accs, 'test_accs': test_accs} | ||||
|     torch.save(info, cache_file_path) | ||||
|   else: | ||||
|     print ('Find cache file : {:}'.format(cache_file_path)) | ||||
|     info = torch.load(cache_file_path) | ||||
|     params, flops, train_accs, valid_accs, test_accs = info['params'], info['flops'], info['train_accs'], info['valid_accs'], info['test_accs'] | ||||
|   print ('{:} collect data done.'.format(time_string())) | ||||
|  | ||||
|   pyramid = ['8:16:32:48:64', '8:8:16:32:48', '8:8:16:16:32', '8:8:16:16:48', '8:8:16:16:64', '16:16:32:32:64', '32:32:64:64:64'] | ||||
|   pyramid_indexes = [api.query_index_by_arch(x) for x in pyramid] | ||||
|   largest_indexes = [api.query_index_by_arch('64:64:64:64:64')] | ||||
|  | ||||
|   indexes = list(range(len(params))) | ||||
|   dpi, width, height = 250, 8500, 1300 | ||||
|   figsize = width / float(dpi), height / float(dpi) | ||||
|   LabelSize, LegendFontsize = 24, 24 | ||||
|   # resnet_scale, resnet_alpha = 120, 0.5 | ||||
|   xscale, xalpha = 120, 0.8 | ||||
|  | ||||
|   fig, axs = plt.subplots(1, 4, figsize=figsize) | ||||
|   # ax1, ax2, ax3, ax4, ax5 = axs | ||||
|   for ax in axs: | ||||
|     for tick in ax.xaxis.get_major_ticks(): | ||||
|       tick.label.set_fontsize(LabelSize) | ||||
|     ax.yaxis.set_major_formatter(ticker.FormatStrFormatter('%.0f')) | ||||
|     for tick in ax.yaxis.get_major_ticks(): | ||||
|       tick.label.set_fontsize(LabelSize) | ||||
|   ax2, ax3, ax4, ax5 = axs | ||||
|   # ax1.xaxis.set_ticks(np.arange(0, max(indexes), max(indexes)//5)) | ||||
|   # ax1.scatter(indexes, test_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   # ax1.set_xlabel('architecture ID', fontsize=LabelSize) | ||||
|   # ax1.set_ylabel('test accuracy (%)', fontsize=LabelSize) | ||||
|  | ||||
|   ax2.scatter(params, train_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax2.scatter([params[x] for x in pyramid_indexes], [train_accs[x] for x in pyramid_indexes], marker='*', s=xscale, c='tab:orange', label='Pyramid Structure', alpha=xalpha) | ||||
|   ax2.scatter([params[x] for x in largest_indexes], [train_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax2.set_xlabel('#parameters (MB)', fontsize=LabelSize) | ||||
|   ax2.set_ylabel('train accuracy (%)', fontsize=LabelSize) | ||||
|   ax2.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   ax3.scatter(params, test_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax3.scatter([params[x] for x in pyramid_indexes], [test_accs[x] for x in pyramid_indexes], marker='*', s=xscale, c='tab:orange', label='Pyramid Structure', alpha=xalpha) | ||||
|   ax3.scatter([params[x] for x in largest_indexes], [test_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax3.set_xlabel('#parameters (MB)', fontsize=LabelSize) | ||||
|   ax3.set_ylabel('test accuracy (%)', fontsize=LabelSize) | ||||
|   ax3.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   ax4.scatter(flops, train_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax4.scatter([flops[x] for x in pyramid_indexes], [train_accs[x] for x in pyramid_indexes], marker='*', s=xscale, c='tab:orange', label='Pyramid Structure', alpha=xalpha) | ||||
|   ax4.scatter([flops[x] for x in largest_indexes], [train_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax4.set_xlabel('#FLOPs (M)', fontsize=LabelSize) | ||||
|   ax4.set_ylabel('train accuracy (%)', fontsize=LabelSize) | ||||
|   ax4.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   ax5.scatter(flops, test_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax5.scatter([flops[x] for x in pyramid_indexes], [test_accs[x] for x in pyramid_indexes], marker='*', s=xscale, c='tab:orange', label='Pyramid Structure', alpha=xalpha) | ||||
|   ax5.scatter([flops[x] for x in largest_indexes], [test_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax5.set_xlabel('#FLOPs (M)', fontsize=LabelSize) | ||||
|   ax5.set_ylabel('test accuracy (%)', fontsize=LabelSize) | ||||
|   ax5.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   save_path = vis_save_dir / 'sss-{:}.png'.format(dataset) | ||||
|   fig.savefig(save_path, dpi=dpi, bbox_inches='tight', format='png') | ||||
|   print ('{:} save into {:}'.format(time_string(), save_path)) | ||||
|   plt.close('all') | ||||
|  | ||||
|  | ||||
| def visualize_tss_info(api, dataset, vis_save_dir): | ||||
|   vis_save_dir = vis_save_dir.resolve() | ||||
|   print ('{:} start to visualize {:} information'.format(time_string(), dataset)) | ||||
|   vis_save_dir.mkdir(parents=True, exist_ok=True) | ||||
|   cache_file_path = vis_save_dir / '{:}-cache-tss-info.pth'.format(dataset) | ||||
|   if not cache_file_path.exists(): | ||||
|     print ('Do not find cache file : {:}'.format(cache_file_path)) | ||||
|     params, flops, train_accs, valid_accs, test_accs = [], [], [], [], [] | ||||
|     for index in range(len(api)): | ||||
|       info = api.get_cost_info(index, dataset) | ||||
|       params.append(info['params']) | ||||
|       flops.append(info['flops']) | ||||
|       # accuracy | ||||
|       info = api.get_more_info(index, dataset, hp='200') | ||||
|       train_accs.append(info['train-accuracy']) | ||||
|       test_accs.append(info['test-accuracy']) | ||||
|       if dataset == 'cifar10': | ||||
|         info = api.get_more_info(index, 'cifar10-valid', hp='200') | ||||
|         valid_accs.append(info['valid-accuracy']) | ||||
|       else: | ||||
|         valid_accs.append(info['valid-accuracy']) | ||||
|     info = {'params': params, 'flops': flops, 'train_accs': train_accs, 'valid_accs': valid_accs, 'test_accs': test_accs} | ||||
|     torch.save(info, cache_file_path) | ||||
|   else: | ||||
|     print ('Find cache file : {:}'.format(cache_file_path)) | ||||
|     info = torch.load(cache_file_path) | ||||
|     params, flops, train_accs, valid_accs, test_accs = info['params'], info['flops'], info['train_accs'], info['valid_accs'], info['test_accs'] | ||||
|   print ('{:} collect data done.'.format(time_string())) | ||||
|  | ||||
|   resnet = ['|nor_conv_3x3~0|+|none~0|nor_conv_3x3~1|+|skip_connect~0|none~1|skip_connect~2|'] | ||||
|   resnet_indexes = [api.query_index_by_arch(x) for x in resnet] | ||||
|   largest_indexes = [api.query_index_by_arch('|nor_conv_3x3~0|+|nor_conv_3x3~0|nor_conv_3x3~1|+|nor_conv_3x3~0|nor_conv_3x3~1|nor_conv_3x3~2|')] | ||||
|  | ||||
|   indexes = list(range(len(params))) | ||||
|   dpi, width, height = 250, 8500, 1300 | ||||
|   figsize = width / float(dpi), height / float(dpi) | ||||
|   LabelSize, LegendFontsize = 24, 24 | ||||
|   # resnet_scale, resnet_alpha = 120, 0.5 | ||||
|   xscale, xalpha = 120, 0.8 | ||||
|  | ||||
|   fig, axs = plt.subplots(1, 4, figsize=figsize) | ||||
|   # ax1, ax2, ax3, ax4, ax5 = axs | ||||
|   for ax in axs: | ||||
|     for tick in ax.xaxis.get_major_ticks(): | ||||
|       tick.label.set_fontsize(LabelSize) | ||||
|     ax.yaxis.set_major_formatter(ticker.FormatStrFormatter('%.0f')) | ||||
|     for tick in ax.yaxis.get_major_ticks(): | ||||
|       tick.label.set_fontsize(LabelSize) | ||||
|   ax2, ax3, ax4, ax5 = axs | ||||
|   # ax1.xaxis.set_ticks(np.arange(0, max(indexes), max(indexes)//5)) | ||||
|   # ax1.scatter(indexes, test_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   # ax1.set_xlabel('architecture ID', fontsize=LabelSize) | ||||
|   # ax1.set_ylabel('test accuracy (%)', fontsize=LabelSize) | ||||
|  | ||||
|   ax2.scatter(params, train_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax2.scatter([params[x] for x in resnet_indexes] , [train_accs[x] for x in  resnet_indexes], marker='*', s=xscale, c='tab:orange', label='ResNet', alpha=xalpha) | ||||
|   ax2.scatter([params[x] for x in largest_indexes], [train_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax2.set_xlabel('#parameters (MB)', fontsize=LabelSize) | ||||
|   ax2.set_ylabel('train accuracy (%)', fontsize=LabelSize) | ||||
|   ax2.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   ax3.scatter(params, test_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax3.scatter([params[x] for x in resnet_indexes] , [test_accs[x] for x in  resnet_indexes], marker='*', s=xscale, c='tab:orange', label='ResNet', alpha=xalpha) | ||||
|   ax3.scatter([params[x] for x in largest_indexes], [test_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax3.set_xlabel('#parameters (MB)', fontsize=LabelSize) | ||||
|   ax3.set_ylabel('test accuracy (%)', fontsize=LabelSize) | ||||
|   ax3.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   ax4.scatter(flops, train_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax4.scatter([flops[x] for x in  resnet_indexes], [train_accs[x] for x in  resnet_indexes], marker='*', s=xscale, c='tab:orange', label='ResNet', alpha=xalpha) | ||||
|   ax4.scatter([flops[x] for x in largest_indexes], [train_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax4.set_xlabel('#FLOPs (M)', fontsize=LabelSize) | ||||
|   ax4.set_ylabel('train accuracy (%)', fontsize=LabelSize) | ||||
|   ax4.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   ax5.scatter(flops, test_accs, marker='o', s=0.5, c='tab:blue') | ||||
|   ax5.scatter([flops[x] for x in  resnet_indexes], [test_accs[x] for x in  resnet_indexes], marker='*', s=xscale, c='tab:orange', label='ResNet', alpha=xalpha) | ||||
|   ax5.scatter([flops[x] for x in largest_indexes], [test_accs[x] for x in largest_indexes], marker='x', s=xscale, c='tab:green',  label='Largest Candidate', alpha=xalpha) | ||||
|   ax5.set_xlabel('#FLOPs (M)', fontsize=LabelSize) | ||||
|   ax5.set_ylabel('test accuracy (%)', fontsize=LabelSize) | ||||
|   ax5.legend(loc=4, fontsize=LegendFontsize) | ||||
|  | ||||
|   save_path = vis_save_dir / 'tss-{:}.png'.format(dataset) | ||||
|   fig.savefig(save_path, dpi=dpi, bbox_inches='tight', format='png') | ||||
|   print ('{:} save into {:}'.format(time_string(), save_path)) | ||||
|   plt.close('all') | ||||
|  | ||||
|  | ||||
| def test_issue_81_82(api): | ||||
|   results = api.query_by_index(0, 'cifar10') | ||||
|   results = api.query_by_index(0, 'cifar10-valid', hp='200') | ||||
|   print(results.keys()) | ||||
|   print(results[888].get_eval('x-valid')) | ||||
|   result_dict = api.get_more_info(index=0, dataset='cifar10-valid', iepoch=11, hp='200', is_random=False) | ||||
|  | ||||
|  | ||||
| if __name__ == '__main__': | ||||
|   parser = argparse.ArgumentParser(description='NAS-Bench-X', formatter_class=argparse.ArgumentDefaultsHelpFormatter) | ||||
|   parser.add_argument('--save_dir',    type=str, default='output/NAS-BENCH-202', help='Folder to save checkpoints and log.') | ||||
|   parser.add_argument('--check_N',     type=int, default=32768,  help='For safety.') | ||||
|   # use for train the model | ||||
|   args = parser.parse_args() | ||||
|  | ||||
|   api201 = NASBench201API(os.path.join(os.environ['TORCH_HOME'], 'NAS-Bench-201-v1_0-e61699.pth'), verbose=True) | ||||
|   test_issue_81_82(api201) | ||||
|   test_api(api201, False) | ||||
|   api201 = NASBench201API(None, verbose=True) | ||||
|   test_issue_81_82(api201) | ||||
|   visualize_tss_info(api201, 'cifar10', Path('output/vis-nas-bench')) | ||||
|   visualize_tss_info(api201, 'cifar100', Path('output/vis-nas-bench')) | ||||
|   visualize_tss_info(api201, 'ImageNet16-120', Path('output/vis-nas-bench')) | ||||
|   test_api(api201, False) | ||||
|  | ||||
|   api301 = NASBench301API(None, verbose=True) | ||||
|   visualize_sss_info(api301, 'cifar10', Path('output/vis-nas-bench')) | ||||
|   visualize_sss_info(api301, 'cifar100', Path('output/vis-nas-bench')) | ||||
|   visualize_sss_info(api301, 'ImageNet16-120', Path('output/vis-nas-bench')) | ||||
|   test_api(api301, True) | ||||
|  | ||||
|   # save_dir = '{:}/visual'.format(args.save_dir) | ||||
| @@ -38,7 +38,6 @@ def evaluate(api, weight_dir, data: str, use_12epochs_result: bool): | ||||
|   final_test_accs = OrderedDict({'cifar10': [], 'cifar100': [], 'ImageNet16-120': []}) | ||||
|   for idx in range(len(api)): | ||||
|     # info = api.get_more_info(idx, data, use_12epochs_result=use_12epochs_result, is_random=False) | ||||
|     # import pdb; pdb.set_trace() | ||||
|     for key in ['cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120']: | ||||
|       info = api.get_more_info(idx, key, use_12epochs_result=False, is_random=False) | ||||
|       if key == 'cifar10-valid': | ||||
|   | ||||
							
								
								
									
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								exps/NAS-Bench-201/xshape-collect.py
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										242
									
								
								exps/NAS-Bench-201/xshape-collect.py
									
									
									
									
									
										Normal file
									
								
							| @@ -0,0 +1,242 @@ | ||||
| ##################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2019.08 # | ||||
| ##################################################### | ||||
| # python exps/NAS-Bench-201/xshape-collect.py | ||||
| ##################################################### | ||||
| import os, re, sys, time, argparse, collections | ||||
| import numpy as np | ||||
| import torch | ||||
| from tqdm import tqdm | ||||
| from pathlib import Path | ||||
| from collections import defaultdict, OrderedDict | ||||
| from typing import Dict, Any, Text, List | ||||
| lib_dir = (Path(__file__).parent / '..' / '..' / 'lib').resolve() | ||||
| if str(lib_dir) not in sys.path: sys.path.insert(0, str(lib_dir)) | ||||
| from log_utils    import AverageMeter, time_string, convert_secs2time | ||||
| from config_utils import dict2config | ||||
| # NAS-Bench-201 related module or function | ||||
| from models       import CellStructure, get_cell_based_tiny_net | ||||
| from nas_201_api  import NASBench301API, ArchResults, ResultsCount | ||||
| from procedures   import bench_pure_evaluate as pure_evaluate, get_nas_bench_loaders | ||||
|  | ||||
|  | ||||
| def account_one_arch(arch_index: int, arch_str: Text, checkpoints: List[Text], datasets: List[Text]) -> ArchResults: | ||||
|   information = ArchResults(arch_index, arch_str) | ||||
|  | ||||
|   for checkpoint_path in checkpoints: | ||||
|     try: | ||||
|       checkpoint = torch.load(checkpoint_path, map_location='cpu') | ||||
|     except: | ||||
|       raise ValueError('This checkpoint failed to be loaded : {:}'.format(checkpoint_path)) | ||||
|     used_seed  = checkpoint_path.name.split('-')[-1].split('.')[0] | ||||
|     ok_dataset = 0 | ||||
|     for dataset in datasets: | ||||
|       if dataset not in checkpoint: | ||||
|         print('Can not find {:} in arch-{:} from {:}'.format(dataset, arch_index, checkpoint_path)) | ||||
|         continue | ||||
|       else: | ||||
|         ok_dataset += 1 | ||||
|       results     = checkpoint[dataset] | ||||
|       assert results['finish-train'], 'This {:} arch seed={:} does not finish train on {:} ::: {:}'.format(arch_index, used_seed, dataset, checkpoint_path) | ||||
|       arch_config = {'name': 'infer.shape.tiny', 'channels': arch_str, 'arch_str': arch_str, | ||||
|                      'genotype': results['arch_config']['genotype'], | ||||
|                      'class_num': results['arch_config']['num_classes']} | ||||
|       xresult = ResultsCount(dataset, results['net_state_dict'], results['train_acc1es'], results['train_losses'], | ||||
|                              results['param'], results['flop'], arch_config, used_seed, results['total_epoch'], None) | ||||
|       xresult.update_train_info(results['train_acc1es'], results['train_acc5es'], results['train_losses'], results['train_times']) | ||||
|       xresult.update_eval(results['valid_acc1es'], results['valid_losses'], results['valid_times']) | ||||
|       information.update(dataset, int(used_seed), xresult) | ||||
|     if ok_dataset < len(datasets): raise ValueError('{:} does find enought data : {:} vs {:}'.format(checkpoint_path, ok_dataset, len(datasets))) | ||||
|   return information | ||||
|  | ||||
|  | ||||
| def correct_time_related_info(hp2info: Dict[Text, ArchResults]): | ||||
|   # calibrate the latency based on the number of epochs = 01, since they are trained on the same machine. | ||||
|   x1 = hp2info['01'].get_metrics('cifar10-valid', 'x-valid')['all_time'] / 98 | ||||
|   x2 = hp2info['01'].get_metrics('cifar10-valid', 'ori-test')['all_time'] / 40 | ||||
|   cifar010_latency = (x1 + x2) / 2 | ||||
|   for hp, arch_info in hp2info.items(): | ||||
|     arch_info.reset_latency('cifar10-valid', None, cifar010_latency) | ||||
|     arch_info.reset_latency('cifar10', None, cifar010_latency) | ||||
|   # hp2info['01'].get_latency('cifar10') | ||||
|  | ||||
|   x1 = hp2info['01'].get_metrics('cifar100', 'ori-test')['all_time'] / 40 | ||||
|   x2 = hp2info['01'].get_metrics('cifar100', 'x-test')['all_time'] / 20 | ||||
|   x3 = hp2info['01'].get_metrics('cifar100', 'x-valid')['all_time'] / 20 | ||||
|   cifar100_latency = (x1 + x2 + x3) / 3 | ||||
|   for hp, arch_info in hp2info.items(): | ||||
|     arch_info.reset_latency('cifar100', None, cifar100_latency) | ||||
|  | ||||
|   x1 = hp2info['01'].get_metrics('ImageNet16-120', 'ori-test')['all_time'] / 24 | ||||
|   x2 = hp2info['01'].get_metrics('ImageNet16-120', 'x-test')['all_time'] / 12 | ||||
|   x3 = hp2info['01'].get_metrics('ImageNet16-120', 'x-valid')['all_time'] / 12 | ||||
|   image_latency = (x1 + x2 + x3) / 3 | ||||
|   for hp, arch_info in hp2info.items(): | ||||
|     arch_info.reset_latency('ImageNet16-120', None, image_latency) | ||||
|  | ||||
|   # CIFAR10 VALID | ||||
|   train_per_epoch_time = list(hp2info['01'].query('cifar10-valid', 777).train_times.values()) | ||||
|   train_per_epoch_time = sum(train_per_epoch_time) / len(train_per_epoch_time) | ||||
|   eval_ori_test_time, eval_x_valid_time = [], [] | ||||
|   for key, value in hp2info['01'].query('cifar10-valid', 777).eval_times.items(): | ||||
|     if key.startswith('ori-test@'): | ||||
|       eval_ori_test_time.append(value) | ||||
|     elif key.startswith('x-valid@'): | ||||
|       eval_x_valid_time.append(value) | ||||
|     else: raise ValueError('-- {:} --'.format(key)) | ||||
|   eval_ori_test_time = sum(eval_ori_test_time) / len(eval_ori_test_time) | ||||
|   eval_x_valid_time = sum(eval_x_valid_time) / len(eval_x_valid_time) | ||||
|   for hp, arch_info in hp2info.items(): | ||||
|     arch_info.reset_pseudo_train_times('cifar10-valid', None, train_per_epoch_time) | ||||
|     arch_info.reset_pseudo_eval_times('cifar10-valid', None, 'x-valid', eval_x_valid_time) | ||||
|     arch_info.reset_pseudo_eval_times('cifar10-valid', None, 'ori-test', eval_ori_test_time) | ||||
|  | ||||
|   # CIFAR10 | ||||
|   train_per_epoch_time = list(hp2info['01'].query('cifar10', 777).train_times.values()) | ||||
|   train_per_epoch_time = sum(train_per_epoch_time) / len(train_per_epoch_time) | ||||
|   eval_ori_test_time = [] | ||||
|   for key, value in hp2info['01'].query('cifar10', 777).eval_times.items(): | ||||
|     if key.startswith('ori-test@'): | ||||
|       eval_ori_test_time.append(value) | ||||
|     else: raise ValueError('-- {:} --'.format(key)) | ||||
|   eval_ori_test_time = sum(eval_ori_test_time) / len(eval_ori_test_time) | ||||
|   for hp, arch_info in hp2info.items(): | ||||
|     arch_info.reset_pseudo_train_times('cifar10', None, train_per_epoch_time) | ||||
|     arch_info.reset_pseudo_eval_times('cifar10', None, 'ori-test', eval_ori_test_time) | ||||
|  | ||||
|   # CIFAR100 | ||||
|   train_per_epoch_time = list(hp2info['01'].query('cifar100', 777).train_times.values()) | ||||
|   train_per_epoch_time = sum(train_per_epoch_time) / len(train_per_epoch_time) | ||||
|   eval_ori_test_time, eval_x_valid_time, eval_x_test_time = [], [], [] | ||||
|   for key, value in hp2info['01'].query('cifar100', 777).eval_times.items(): | ||||
|     if key.startswith('ori-test@'): | ||||
|       eval_ori_test_time.append(value) | ||||
|     elif key.startswith('x-valid@'): | ||||
|       eval_x_valid_time.append(value) | ||||
|     elif key.startswith('x-test@'): | ||||
|       eval_x_test_time.append(value) | ||||
|     else: raise ValueError('-- {:} --'.format(key)) | ||||
|   eval_ori_test_time = sum(eval_ori_test_time) / len(eval_ori_test_time) | ||||
|   eval_x_valid_time = sum(eval_x_valid_time) / len(eval_x_valid_time) | ||||
|   eval_x_test_time = sum(eval_x_test_time) / len(eval_x_test_time) | ||||
|   for hp, arch_info in hp2info.items(): | ||||
|     arch_info.reset_pseudo_train_times('cifar100', None, train_per_epoch_time) | ||||
|     arch_info.reset_pseudo_eval_times('cifar100', None, 'x-valid', eval_x_valid_time) | ||||
|     arch_info.reset_pseudo_eval_times('cifar100', None, 'x-test', eval_x_test_time) | ||||
|     arch_info.reset_pseudo_eval_times('cifar100', None, 'ori-test', eval_ori_test_time) | ||||
|  | ||||
|   # ImageNet16-120 | ||||
|   train_per_epoch_time = list(hp2info['01'].query('ImageNet16-120', 777).train_times.values()) | ||||
|   train_per_epoch_time = sum(train_per_epoch_time) / len(train_per_epoch_time) | ||||
|   eval_ori_test_time, eval_x_valid_time, eval_x_test_time = [], [], [] | ||||
|   for key, value in hp2info['01'].query('ImageNet16-120', 777).eval_times.items(): | ||||
|     if key.startswith('ori-test@'): | ||||
|       eval_ori_test_time.append(value) | ||||
|     elif key.startswith('x-valid@'): | ||||
|       eval_x_valid_time.append(value) | ||||
|     elif key.startswith('x-test@'): | ||||
|       eval_x_test_time.append(value) | ||||
|     else: raise ValueError('-- {:} --'.format(key)) | ||||
|   eval_ori_test_time = sum(eval_ori_test_time) / len(eval_ori_test_time) | ||||
|   eval_x_valid_time = sum(eval_x_valid_time) / len(eval_x_valid_time) | ||||
|   eval_x_test_time = sum(eval_x_test_time) / len(eval_x_test_time) | ||||
|   for hp, arch_info in hp2info.items(): | ||||
|     arch_info.reset_pseudo_train_times('ImageNet16-120', None, train_per_epoch_time) | ||||
|     arch_info.reset_pseudo_eval_times('ImageNet16-120', None, 'x-valid', eval_x_valid_time) | ||||
|     arch_info.reset_pseudo_eval_times('ImageNet16-120', None, 'x-test', eval_x_test_time) | ||||
|     arch_info.reset_pseudo_eval_times('ImageNet16-120', None, 'ori-test', eval_ori_test_time) | ||||
|   return hp2info | ||||
|  | ||||
|  | ||||
| def simplify(save_dir, save_name, nets, total): | ||||
|    | ||||
|   hps, seeds = ['01', '12', '90'], set() | ||||
|   for hp in hps: | ||||
|     sub_save_dir = save_dir / 'raw-data-{:}'.format(hp) | ||||
|     ckps = sorted(list(sub_save_dir.glob('arch-*-seed-*.pth'))) | ||||
|     seed2names = defaultdict(list) | ||||
|     for ckp in ckps: | ||||
|       parts = re.split('-|\.', ckp.name) | ||||
|       seed2names[parts[3]].append(ckp.name) | ||||
|     print('DIR : {:}'.format(sub_save_dir)) | ||||
|     nums = [] | ||||
|     for seed, xlist in seed2names.items(): | ||||
|       seeds.add(seed) | ||||
|       nums.append(len(xlist)) | ||||
|       print('  seed={:}, num={:}'.format(seed, len(xlist))) | ||||
|     # assert len(nets) == total == max(nums), 'there are some missed files : {:} vs {:}'.format(max(nums), total) | ||||
|   print('{:} start simplify the checkpoint.'.format(time_string())) | ||||
|  | ||||
|   datasets = ('cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120') | ||||
|  | ||||
|   simplify_save_dir, arch2infos, evaluated_indexes = save_dir / save_name, {}, set() | ||||
|   simplify_save_dir.mkdir(parents=True, exist_ok=True) | ||||
|   end_time, arch_time = time.time(), AverageMeter() | ||||
|   # for index, arch_str in enumerate(nets): | ||||
|   for index in tqdm(range(total)): | ||||
|     arch_str = nets[index] | ||||
|     hp2info = OrderedDict() | ||||
|     for hp in hps: | ||||
|       sub_save_dir = save_dir / 'raw-data-{:}'.format(hp) | ||||
|       ckps = [sub_save_dir / 'arch-{:06d}-seed-{:}.pth'.format(index, seed) for seed in seeds] | ||||
|       ckps = [x for x in ckps if x.exists()] | ||||
|       if len(ckps) == 0: raise ValueError('Invalid data : index={:}, hp={:}'.format(index, hp)) | ||||
|        | ||||
|       arch_info = account_one_arch(index, arch_str, ckps, datasets) | ||||
|       hp2info[hp] = arch_info | ||||
|      | ||||
|     hp2info = correct_time_related_info(hp2info) | ||||
|     evaluated_indexes.add(index) | ||||
|  | ||||
|     to_save_data = OrderedDict({'01': hp2info['01'].state_dict(), | ||||
|                                 '12': hp2info['12'].state_dict(), | ||||
|                                 '90': hp2info['90'].state_dict()}) | ||||
|     torch.save(to_save_data, simplify_save_dir / '{:}-FULL.pth'.format(index)) | ||||
|      | ||||
|     for hp in hps: hp2info[hp].clear_params() | ||||
|     to_save_data = OrderedDict({'01': hp2info['01'].state_dict(), | ||||
|                                 '12': hp2info['12'].state_dict(), | ||||
|                                 '90': hp2info['90'].state_dict()}) | ||||
|     torch.save(to_save_data, simplify_save_dir / '{:}-SIMPLE.pth'.format(index)) | ||||
|     arch2infos[index] = to_save_data | ||||
|     # measure elapsed time | ||||
|     arch_time.update(time.time() - end_time) | ||||
|     end_time  = time.time() | ||||
|     need_time = '{:}'.format(convert_secs2time(arch_time.avg * (total-index-1), True)) | ||||
|     # print('{:} {:06d}/{:06d} : still need {:}'.format(time_string(), index, total, need_time)) | ||||
|   print('{:} {:} done.'.format(time_string(), save_name)) | ||||
|   final_infos = {'meta_archs' : nets, | ||||
|                  'total_archs': total, | ||||
|                  'arch2infos' : arch2infos, | ||||
|                  'evaluated_indexes': evaluated_indexes} | ||||
|   save_file_name = save_dir / '{:}.pth'.format(save_name) | ||||
|   torch.save(final_infos, save_file_name) | ||||
|   print ('Save {:} / {:} architecture results into {:}.'.format(len(evaluated_indexes), total, save_file_name)) | ||||
|  | ||||
|  | ||||
| def traverse_net(candidates: List[int], N: int): | ||||
|   nets = [''] | ||||
|   for i in range(N): | ||||
|     new_nets = [] | ||||
|     for net in nets: | ||||
|       for C in candidates: | ||||
|         new_nets.append(str(C) if net == '' else "{:}:{:}".format(net,C)) | ||||
|     nets = new_nets | ||||
|   return nets | ||||
|  | ||||
|  | ||||
| if __name__ == '__main__': | ||||
|  | ||||
|   parser = argparse.ArgumentParser(description='NAS-BENCH-201', formatter_class=argparse.ArgumentDefaultsHelpFormatter) | ||||
|   parser.add_argument('--base_save_dir',  type=str, default='./output/NAS-BENCH-202',    help='The base-name of folder to save checkpoints and log.') | ||||
|   parser.add_argument('--candidateC'   ,  type=int, nargs='+', default=[8, 16, 24, 32, 40, 48, 56, 64], help='.') | ||||
|   parser.add_argument('--num_layers'   ,  type=int, default=5,      help='The number of layers in a network.') | ||||
|   parser.add_argument('--check_N'      ,  type=int, default=32768,  help='For safety.') | ||||
|   parser.add_argument('--save_name'    ,  type=str, default='simplify',                  help='The save directory.') | ||||
|   args = parser.parse_args() | ||||
|    | ||||
|   nets = traverse_net(args.candidateC, args.num_layers) | ||||
|   if len(nets) != args.check_N: raise ValueError('Pre-num-check failed : {:} vs {:}'.format(len(nets), args.check_N)) | ||||
|  | ||||
|   save_dir  = Path(args.base_save_dir) | ||||
|   simplify(save_dir, args.save_name, nets, args.check_N) | ||||
| @@ -22,7 +22,7 @@ from log_utils    import Logger, AverageMeter, time_string, convert_secs2time | ||||
|  | ||||
|  | ||||
| def obtain_valid_ckp(save_dir: Text, total: int): | ||||
|   possible_seeds = [777, 888] | ||||
|   possible_seeds = [777, 888, 999] | ||||
|   seed2ckps = defaultdict(list) | ||||
|   miss2ckps = defaultdict(list) | ||||
|   for i in range(total): | ||||
| @@ -33,7 +33,7 @@ def obtain_valid_ckp(save_dir: Text, total: int): | ||||
|       else: | ||||
|         miss2ckps[seed].append(i) | ||||
|   for seed, xlist in seed2ckps.items(): | ||||
|     print('[{:}] [seed={:}] has {:}/{:}'.format(save_dir, seed, len(xlist), total)) | ||||
|     print('[{:}] [seed={:}] has {:5d}/{:5d} | miss {:5d}/{:5d}'.format(save_dir, seed, len(xlist), total, total-len(xlist), total)) | ||||
|   return dict(seed2ckps), dict(miss2ckps) | ||||
|      | ||||
|  | ||||
|   | ||||
| @@ -65,7 +65,7 @@ class MyWorker(Worker): | ||||
|     assert len(self.seen_archs) > 0 | ||||
|     best_index, best_acc = -1, None | ||||
|     for arch_index in self.seen_archs: | ||||
|       info = self._nas_bench.get_more_info(arch_index, self._dataname, None, True, True) | ||||
|       info = self._nas_bench.get_more_info(arch_index, self._dataname, None, hp='200', is_random=True) | ||||
|       vacc = info['valid-accuracy'] | ||||
|       if best_acc is None or best_acc < vacc: | ||||
|         best_acc = vacc | ||||
| @@ -77,7 +77,7 @@ class MyWorker(Worker): | ||||
|     start_time = time.time() | ||||
|     structure  = self.convert_func( config ) | ||||
|     arch_index = self._nas_bench.query_index_by_arch( structure ) | ||||
|     info       = self._nas_bench.get_more_info(arch_index, self._dataname, None, True, True) | ||||
|     info       = self._nas_bench.get_more_info(arch_index, self._dataname, None, hp='200', is_random=True) | ||||
|     cur_time   = info['train-all-time'] + info['valid-per-time'] | ||||
|     cur_vacc   = info['valid-accuracy'] | ||||
|     self.real_cost_time += (time.time() - start_time) | ||||
|   | ||||
| @@ -42,7 +42,7 @@ def train_and_eval(arch, nas_bench, extra_info, dataname='cifar10-valid', use_01 | ||||
|   if use_012_epoch_training and nas_bench is not None: | ||||
|     arch_index = nas_bench.query_index_by_arch( arch ) | ||||
|     assert arch_index >= 0, 'can not find this arch : {:}'.format(arch) | ||||
|     info = nas_bench.get_more_info(arch_index, dataname, None, True) | ||||
|     info = nas_bench.get_more_info(arch_index, dataname, iepoch=None, hp='12', is_random=True) | ||||
|     valid_acc, time_cost = info['valid-accuracy'], info['train-all-time'] + info['valid-per-time'] | ||||
|     #_, valid_acc = info.get_metrics('cifar10-valid', 'x-valid' , 25, True) # use the validation accuracy after 25 training epochs | ||||
|   elif not use_012_epoch_training and nas_bench is not None: | ||||
| @@ -51,10 +51,10 @@ def train_and_eval(arch, nas_bench, extra_info, dataname='cifar10-valid', use_01 | ||||
|     # It did return values for cifar100 and ImageNet16-120, but it has some potential issues. (Please email me for more details) | ||||
|     arch_index, nepoch = nas_bench.query_index_by_arch( arch ), 25 | ||||
|     assert arch_index >= 0, 'can not find this arch : {:}'.format(arch) | ||||
|     xoinfo = nas_bench.get_more_info(arch_index, 'cifar10-valid', None, True) | ||||
|     xocost = nas_bench.get_cost_info(arch_index, 'cifar10-valid', False) | ||||
|     info = nas_bench.get_more_info(arch_index, dataname, nepoch, False, True) # use the validation accuracy after 25 training epochs, which is used in our ICLR submission (not the camera ready). | ||||
|     cost = nas_bench.get_cost_info(arch_index, dataname, False) | ||||
|     xoinfo = nas_bench.get_more_info(arch_index, 'cifar10-valid', iepoch=None, hp='12') | ||||
|     xocost = nas_bench.get_cost_info(arch_index, 'cifar10-valid', hp='200') | ||||
|     info = nas_bench.get_more_info(arch_index, dataname, nepoch, hp='200', True) # use the validation accuracy after 25 training epochs, which is used in our ICLR submission (not the camera ready). | ||||
|     cost = nas_bench.get_cost_info(arch_index, dataname, hp='200') | ||||
|     # The following codes are used to estimate the time cost. | ||||
|     # When we build NAS-Bench-201, architectures are trained on different machines and we can not use that time record. | ||||
|     # When we create checkpoints for converged_LR, we run all experiments on 1080Ti, and thus the time for each architecture can be fairly compared. | ||||
|   | ||||
							
								
								
									
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								exps/experimental/test-api.py
									
									
									
									
									
										Normal file
									
								
							
							
						
						
									
										20
									
								
								exps/experimental/test-api.py
									
									
									
									
									
										Normal file
									
								
							| @@ -0,0 +1,20 @@ | ||||
| #  | ||||
| # exps/experimental/test-api.py | ||||
| # | ||||
| import sys, time, random, argparse | ||||
| from copy import deepcopy | ||||
| import torchvision.models as models | ||||
| from pathlib import Path | ||||
| lib_dir = (Path(__file__).parent / '..' / '..' / 'lib').resolve() | ||||
| if str(lib_dir) not in sys.path: sys.path.insert(0, str(lib_dir)) | ||||
|  | ||||
| from nas_201_api import NASBench201API as API | ||||
|  | ||||
|  | ||||
| def main(): | ||||
|   api = API(None) | ||||
|   info = api.get_more_info(100, 'cifar100', 199, False, True) | ||||
|  | ||||
|  | ||||
| if __name__ == '__main__': | ||||
|   main() | ||||
| @@ -112,6 +112,7 @@ class Structure: | ||||
|  | ||||
|   @staticmethod | ||||
|   def str2structure(xstr): | ||||
|     if isinstance(xstr, Structure): return xstr | ||||
|     assert isinstance(xstr, str), 'must take string (not {:}) as input'.format(type(xstr)) | ||||
|     nodestrs = xstr.split('+') | ||||
|     genotypes = [] | ||||
|   | ||||
| @@ -1,9 +1,11 @@ | ||||
| ##################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2019.08 # | ||||
| ##################################################### | ||||
| from .api import NASBench201API | ||||
| from .api import ArchResults, ResultsCount | ||||
| from .api_utils import ArchResults, ResultsCount | ||||
| from .api_201 import NASBench201API | ||||
| from .api_301 import NASBench301API | ||||
|  | ||||
| # NAS_BENCH_201_API_VERSION="v1.1"  # [2020.02.25] | ||||
| # NAS_BENCH_201_API_VERSION="v1.2"  # [2020.03.09] | ||||
| NAS_BENCH_201_API_VERSION="v1.3"  # [2020.03.16] | ||||
| # NAS_BENCH_201_API_VERSION="v1.3"  # [2020.03.16] | ||||
| NAS_BENCH_201_API_VERSION="v2.0"    # [2020.06.30] | ||||
|   | ||||
| @@ -1,916 +0,0 @@ | ||||
| ##################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2019.08 # | ||||
| ############################################################################################ | ||||
| # NAS-Bench-201: Extending the Scope of Reproducible Neural Architecture Search, ICLR 2020 # | ||||
| ############################################################################################ | ||||
| # The history of benchmark files: | ||||
| # [2020.02.25] NAS-Bench-201-v1_0-e61699.pth : 6219 architectures are trained once, 1621 architectures are trained twice, 7785 architectures are trained three times. `LESS` only supports CIFAR10-VALID. | ||||
| # [2020.03.16] NAS-Bench-201-v1_1-096897.pth : 2225 architectures are trained once, 5439 archiitectures are trained twice, 7961 architectures are trained three times on all training sets. For the hyper-parameters with the total epochs of 12, each model is trained on CIFAR-10, CIFAR-100, ImageNet16-120 once, and is trained on CIFAR-10-VALID twice. | ||||
| # | ||||
| # I'm still actively enhancing this benchmark. Please feel free to contact me if you have any question w.r.t. NAS-Bench-201. | ||||
| # | ||||
| import os, copy, random, torch, numpy as np | ||||
| from pathlib import Path | ||||
| from typing import List, Text, Union, Dict | ||||
| from collections import OrderedDict, defaultdict | ||||
|  | ||||
|  | ||||
| def print_information(information, extra_info=None, show=False): | ||||
|   dataset_names = information.get_dataset_names() | ||||
|   strings = [information.arch_str, 'datasets : {:}, extra-info : {:}'.format(dataset_names, extra_info)] | ||||
|   def metric2str(loss, acc): | ||||
|     return 'loss = {:.3f}, top1 = {:.2f}%'.format(loss, acc) | ||||
|  | ||||
|   for ida, dataset in enumerate(dataset_names): | ||||
|     metric = information.get_compute_costs(dataset) | ||||
|     flop, param, latency = metric['flops'], metric['params'], metric['latency'] | ||||
|     str1 = '{:14s} FLOP={:6.2f} M, Params={:.3f} MB, latency={:} ms.'.format(dataset, flop, param, '{:.2f}'.format(latency*1000) if latency is not None and latency > 0 else None) | ||||
|     train_info = information.get_metrics(dataset, 'train') | ||||
|     if dataset == 'cifar10-valid': | ||||
|       valid_info = information.get_metrics(dataset, 'x-valid') | ||||
|       str2 = '{:14s} train : [{:}], valid : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(valid_info['loss'], valid_info['accuracy'])) | ||||
|     elif dataset == 'cifar10': | ||||
|       test__info = information.get_metrics(dataset, 'ori-test') | ||||
|       str2 = '{:14s} train : [{:}], test  : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(test__info['loss'], test__info['accuracy'])) | ||||
|     else: | ||||
|       valid_info = information.get_metrics(dataset, 'x-valid') | ||||
|       test__info = information.get_metrics(dataset, 'x-test') | ||||
|       str2 = '{:14s} train : [{:}], valid : [{:}], test : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(valid_info['loss'], valid_info['accuracy']), metric2str(test__info['loss'], test__info['accuracy'])) | ||||
|     strings += [str1, str2] | ||||
|   if show: print('\n'.join(strings)) | ||||
|   return strings | ||||
|  | ||||
| """ | ||||
| This is the class for API of NAS-Bench-201. | ||||
| """ | ||||
| class NASBench201API(object): | ||||
|  | ||||
|   """ The initialization function that takes the dataset file path (or a dict loaded from that path) as input. """ | ||||
|   def __init__(self, file_path_or_dict: Union[Text, Dict], verbose: bool=True): | ||||
|     self.filename = None | ||||
|     if isinstance(file_path_or_dict, str) or isinstance(file_path_or_dict, Path): | ||||
|       file_path_or_dict = str(file_path_or_dict) | ||||
|       if verbose: print('try to create the NAS-Bench-201 api from {:}'.format(file_path_or_dict)) | ||||
|       assert os.path.isfile(file_path_or_dict), 'invalid path : {:}'.format(file_path_or_dict) | ||||
|       self.filename = Path(file_path_or_dict).name | ||||
|       file_path_or_dict = torch.load(file_path_or_dict, map_location='cpu') | ||||
|     elif isinstance(file_path_or_dict, dict): | ||||
|       file_path_or_dict = copy.deepcopy( file_path_or_dict ) | ||||
|     else: raise ValueError('invalid type : {:} not in [str, dict]'.format(type(file_path_or_dict))) | ||||
|     assert isinstance(file_path_or_dict, dict), 'It should be a dict instead of {:}'.format(type(file_path_or_dict)) | ||||
|     self.verbose = verbose # [TODO] a flag indicating whether to print more logs | ||||
|     keys = ('meta_archs', 'arch2infos', 'evaluated_indexes') | ||||
|     for key in keys: assert key in file_path_or_dict, 'Can not find key[{:}] in the dict'.format(key) | ||||
|     self.meta_archs = copy.deepcopy( file_path_or_dict['meta_archs'] ) | ||||
|     self.arch2infos_less = OrderedDict() | ||||
|     self.arch2infos_full = OrderedDict() | ||||
|     for xkey in sorted(list(file_path_or_dict['arch2infos'].keys())): | ||||
|       all_info = file_path_or_dict['arch2infos'][xkey] | ||||
|       self.arch2infos_less[xkey] = ArchResults.create_from_state_dict( all_info['less'] ) | ||||
|       self.arch2infos_full[xkey] = ArchResults.create_from_state_dict( all_info['full'] ) | ||||
|     self.evaluated_indexes = sorted(list(file_path_or_dict['evaluated_indexes'])) | ||||
|     self.archstr2index = {} | ||||
|     for idx, arch in enumerate(self.meta_archs): | ||||
|       #assert arch.tostr() not in self.archstr2index, 'This [{:}]-th arch {:} already in the dict ({:}).'.format(idx, arch, self.archstr2index[arch.tostr()]) | ||||
|       assert arch not in self.archstr2index, 'This [{:}]-th arch {:} already in the dict ({:}).'.format(idx, arch, self.archstr2index[arch]) | ||||
|       self.archstr2index[ arch ] = idx | ||||
|  | ||||
|   def __getitem__(self, index: int): | ||||
|     return copy.deepcopy( self.meta_archs[index] ) | ||||
|  | ||||
|   def __len__(self): | ||||
|     return len(self.meta_archs) | ||||
|  | ||||
|   def __repr__(self): | ||||
|     return ('{name}({num}/{total} architectures, file={filename})'.format(name=self.__class__.__name__, num=len(self.evaluated_indexes), total=len(self.meta_archs), filename=self.filename)) | ||||
|  | ||||
|   def random(self): | ||||
|     """Return a random index of all architectures.""" | ||||
|     return random.randint(0, len(self.meta_archs)-1) | ||||
|  | ||||
|   # This function is used to query the index of an architecture in the search space. | ||||
|   # The input arch can be an architecture string such as '|nor_conv_3x3~0|+|nor_conv_3x3~0|avg_pool_3x3~1|+|skip_connect~0|nor_conv_3x3~1|skip_connect~2|' | ||||
|   # or an instance that has the 'tostr' function that can generate the architecture string. | ||||
|   # This function will return the index. | ||||
|   #   If return -1, it means this architecture is not in the search space. | ||||
|   #   Otherwise, it will return an int in [0, the-number-of-candidates-in-the-search-space). | ||||
|   def query_index_by_arch(self, arch): | ||||
|     if isinstance(arch, str): | ||||
|       if arch in self.archstr2index: arch_index = self.archstr2index[ arch ] | ||||
|       else                         : arch_index = -1 | ||||
|     elif hasattr(arch, 'tostr'): | ||||
|       if arch.tostr() in self.archstr2index: arch_index = self.archstr2index[ arch.tostr() ] | ||||
|       else                                 : arch_index = -1 | ||||
|     else: arch_index = -1 | ||||
|     return arch_index | ||||
|  | ||||
|   def reload(self, archive_root: Text, index: int): | ||||
|     """Overwrite all information of the 'index'-th architecture in the search space. | ||||
|          It will load its data from 'archive_root'. | ||||
|     """ | ||||
|     assert os.path.isdir(archive_root), 'invalid directory : {:}'.format(archive_root) | ||||
|     xfile_path = os.path.join(archive_root, '{:06d}-FULL.pth'.format(index)) | ||||
|     assert 0 <= index < len(self.meta_archs), 'invalid index of {:}'.format(index) | ||||
|     assert os.path.isfile(xfile_path), 'invalid data path : {:}'.format(xfile_path) | ||||
|     xdata = torch.load(xfile_path, map_location='cpu') | ||||
|     assert isinstance(xdata, dict) and 'full' in xdata and 'less' in xdata, 'invalid format of data in {:}'.format(xfile_path) | ||||
|     if index in self.arch2infos_less: del self.arch2infos_less[index] | ||||
|     if index in self.arch2infos_full: del self.arch2infos_full[index] | ||||
|     self.arch2infos_less[index] = ArchResults.create_from_state_dict( xdata['less'] ) | ||||
|     self.arch2infos_full[index] = ArchResults.create_from_state_dict( xdata['full'] ) | ||||
|  | ||||
|   def clear_params(self, index: int, use_12epochs_result: Union[bool, None]): | ||||
|     """Remove the architecture's weights to save memory. | ||||
|     :arg | ||||
|       index: the index of the target architecture | ||||
|       use_12epochs_result: a flag to controll how to clear the parameters. | ||||
|         -- None: clear all the weights in both `less` and `full`, which indicates the training hyper-parameters. | ||||
|         -- True: clear all the weights in arch2infos_less, which by default is 12-epoch-training result. | ||||
|         -- False: clear all the weights in arch2infos_full, which by default is 200-epoch-training result. | ||||
|     """ | ||||
|     if use_12epochs_result is None: | ||||
|       self.arch2infos_less[index].clear_params() | ||||
|       self.arch2infos_full[index].clear_params() | ||||
|     else: | ||||
|       if use_12epochs_result: arch2infos = self.arch2infos_less | ||||
|       else                  : arch2infos = self.arch2infos_full | ||||
|       arch2infos[index].clear_params() | ||||
|    | ||||
|   # This function is used to query the information of a specific archiitecture | ||||
|   # 'arch' can be an architecture index or an architecture string | ||||
|   # When use_12epochs_result=True, the hyper-parameters used to train a model are in 'configs/nas-benchmark/CIFAR.config' | ||||
|   # When use_12epochs_result=False, the hyper-parameters used to train a model are in 'configs/nas-benchmark/LESS.config' | ||||
|   # The difference between these two configurations are the number of training epochs, which is 200 in CIFAR.config and 12 in LESS.config. | ||||
|   def query_by_arch(self, arch, use_12epochs_result=False): | ||||
|     if isinstance(arch, int): | ||||
|       arch_index = arch | ||||
|     else: | ||||
|       arch_index = self.query_index_by_arch(arch) | ||||
|     if arch_index == -1: return None # the following two lines are used to support few training epochs | ||||
|     if use_12epochs_result: arch2infos = self.arch2infos_less | ||||
|     else                  : arch2infos = self.arch2infos_full | ||||
|     if arch_index in arch2infos: | ||||
|       strings = print_information(arch2infos[ arch_index ], 'arch-index={:}'.format(arch_index)) | ||||
|       return '\n'.join(strings) | ||||
|     else: | ||||
|       print ('Find this arch-index : {:}, but this arch is not evaluated.'.format(arch_index)) | ||||
|       return None | ||||
|  | ||||
|   # This 'query_by_index' function is used to query information with the training of 12 epochs or 200 epochs. | ||||
|   # ------ | ||||
|   # If use_12epochs_result=True, we train the model by 12 epochs (see config in configs/nas-benchmark/LESS.config) | ||||
|   # If use_12epochs_result=False, we train the model by 200 epochs (see config in configs/nas-benchmark/CIFAR.config) | ||||
|   # ------ | ||||
|   # If dataname is None, return the ArchResults | ||||
|   # else, return a dict with all trials on that dataset (the key is the seed) | ||||
|   # Options are 'cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120'. | ||||
|   #  -- cifar10-valid : training the model on the CIFAR-10 training set. | ||||
|   #  -- cifar10 : training the model on the CIFAR-10 training + validation set. | ||||
|   #  -- cifar100 : training the model on the CIFAR-100 training set. | ||||
|   #  -- ImageNet16-120 : training the model on the ImageNet16-120 training set. | ||||
|   def query_by_index(self, arch_index: int, dataname: Union[None, Text] = None, | ||||
|                      use_12epochs_result: bool = False): | ||||
|     if use_12epochs_result: basestr, arch2infos = '12epochs' , self.arch2infos_less | ||||
|     else                  : basestr, arch2infos = '200epochs', self.arch2infos_full | ||||
|     assert arch_index in arch2infos, 'arch_index [{:}] does not in arch2info with {:}'.format(arch_index, basestr) | ||||
|     archInfo = copy.deepcopy( arch2infos[ arch_index ] ) | ||||
|     if dataname is None: return archInfo | ||||
|     else: | ||||
|       assert dataname in archInfo.get_dataset_names(), 'invalid dataset-name : {:}'.format(dataname) | ||||
|       info = archInfo.query(dataname) | ||||
|       return info | ||||
|  | ||||
|   def query_meta_info_by_index(self, arch_index, use_12epochs_result=False): | ||||
|     if use_12epochs_result: basestr, arch2infos = '12epochs' , self.arch2infos_less | ||||
|     else                  : basestr, arch2infos = '200epochs', self.arch2infos_full | ||||
|     assert arch_index in arch2infos, 'arch_index [{:}] does not in arch2info with {:}'.format(arch_index, basestr) | ||||
|     archInfo = copy.deepcopy( arch2infos[ arch_index ] ) | ||||
|     return archInfo | ||||
|  | ||||
|   def find_best(self, dataset, metric_on_set, FLOP_max=None, Param_max=None, use_12epochs_result=False): | ||||
|     """Find the architecture with the highest accuracy based on some constraints.""" | ||||
|     if use_12epochs_result: basestr, arch2infos = '12epochs' , self.arch2infos_less | ||||
|     else                  : basestr, arch2infos = '200epochs', self.arch2infos_full | ||||
|     best_index, highest_accuracy = -1, None | ||||
|     for i, idx in enumerate(self.evaluated_indexes): | ||||
|       info = arch2infos[idx].get_compute_costs(dataset) | ||||
|       flop, param, latency = info['flops'], info['params'], info['latency'] | ||||
|       if FLOP_max  is not None and flop  > FLOP_max : continue | ||||
|       if Param_max is not None and param > Param_max: continue | ||||
|       xinfo = arch2infos[idx].get_metrics(dataset, metric_on_set) | ||||
|       loss, accuracy = xinfo['loss'], xinfo['accuracy'] | ||||
|       if best_index == -1: | ||||
|         best_index, highest_accuracy = idx, accuracy | ||||
|       elif highest_accuracy < accuracy: | ||||
|         best_index, highest_accuracy = idx, accuracy | ||||
|     return best_index, highest_accuracy | ||||
|  | ||||
|   def arch(self, index: int): | ||||
|     """Return the topology structure of the `index`-th architecture.""" | ||||
|     assert 0 <= index < len(self.meta_archs), 'invalid index : {:} vs. {:}.'.format(index, len(self.meta_archs)) | ||||
|     return copy.deepcopy(self.meta_archs[index]) | ||||
|  | ||||
|   def get_net_param(self, index, dataset, seed, use_12epochs_result=False): | ||||
|     """ | ||||
|       This function is used to obtain the trained weights of the `index`-th architecture on `dataset` with the seed of `seed` | ||||
|       Args [seed]: | ||||
|         -- None : return a dict containing the trained weights of all trials, where each key is a seed and its corresponding value is the weights. | ||||
|         -- a interger : return the weights of a specific trial, whose seed is this interger. | ||||
|       Args [use_12epochs_result]: | ||||
|         -- True : train the model by 12 epochs | ||||
|         -- False : train the model by 200 epochs | ||||
|     """ | ||||
|     if use_12epochs_result: arch2infos = self.arch2infos_less | ||||
|     else: arch2infos = self.arch2infos_full | ||||
|     arch_result = arch2infos[index] | ||||
|     return arch_result.get_net_param(dataset, seed) | ||||
|  | ||||
|   def get_net_config(self, index: int, dataset: Text): | ||||
|     """ | ||||
|       This function is used to obtain the configuration for the `index`-th architecture on `dataset`. | ||||
|       Args [dataset] (4 possible options): | ||||
|         -- cifar10-valid : training the model on the CIFAR-10 training set. | ||||
|         -- cifar10 : training the model on the CIFAR-10 training + validation set. | ||||
|         -- cifar100 : training the model on the CIFAR-100 training set. | ||||
|         -- ImageNet16-120 : training the model on the ImageNet16-120 training set. | ||||
|       This function will return a dict. | ||||
|       ========= Some examlpes for using this function: | ||||
|       config = api.get_net_config(128, 'cifar10') | ||||
|     """ | ||||
|     archresult = self.arch2infos_full[index] | ||||
|     all_results = archresult.query(dataset, None) | ||||
|     if len(all_results) == 0: raise ValueError('can not find one valid trial for the {:}-th architecture on {:}'.format(index, dataset)) | ||||
|     for seed, result in all_results.items(): | ||||
|       return result.get_config(None) | ||||
|       #print ('SEED [{:}] : {:}'.format(seed, result)) | ||||
|     raise ValueError('Impossible to reach here!') | ||||
|  | ||||
|   def get_cost_info(self, index: int, dataset: Text, use_12epochs_result: bool = False) -> Dict[Text, float]: | ||||
|     """To obtain the cost metric for the `index`-th architecture on a dataset.""" | ||||
|     if use_12epochs_result: arch2infos = self.arch2infos_less | ||||
|     else: arch2infos = self.arch2infos_full | ||||
|     arch_result = arch2infos[index] | ||||
|     return arch_result.get_compute_costs(dataset) | ||||
|  | ||||
|   def get_latency(self, index: int, dataset: Text, use_12epochs_result: bool = False) -> float: | ||||
|     """ | ||||
|     To obtain the latency of the network (by default it will return the latency with the batch size of 256). | ||||
|     :param index: the index of the target architecture | ||||
|     :param dataset: the dataset name (cifar10-valid, cifar10, cifar100, ImageNet16-120) | ||||
|     :return: return a float value in seconds | ||||
|     """ | ||||
|     cost_dict = self.get_cost_info(index, dataset, use_12epochs_result) | ||||
|     return cost_dict['latency'] | ||||
|  | ||||
|   # obtain the metric for the `index`-th architecture | ||||
|   # `dataset` indicates the dataset: | ||||
|   #   'cifar10-valid'  : using the proposed train set of CIFAR-10 as the training set | ||||
|   #   'cifar10'        : using the proposed train+valid set of CIFAR-10 as the training set | ||||
|   #   'cifar100'       : using the proposed train set of CIFAR-100 as the training set | ||||
|   #   'ImageNet16-120' : using the proposed train set of ImageNet-16-120 as the training set | ||||
|   # `iepoch` indicates the index of training epochs from 0 to 11/199. | ||||
|   #   When iepoch=None, it will return the metric for the last training epoch | ||||
|   #   When iepoch=11, it will return the metric for the 11-th training epoch (starting from 0) | ||||
|   # `use_12epochs_result` indicates different hyper-parameters for training | ||||
|   #   When use_12epochs_result=True, it trains the network with 12 epochs and the LR decayed from 0.1 to 0 within 12 epochs | ||||
|   #   When use_12epochs_result=False, it trains the network with 200 epochs and the LR decayed from 0.1 to 0 within 200 epochs | ||||
|   # `is_random` | ||||
|   #   When is_random=True, the performance of a random architecture will be returned | ||||
|   #   When is_random=False, the performanceo of all trials will be averaged. | ||||
|   def get_more_info(self, index: int, dataset, iepoch=None, use_12epochs_result=False, is_random=True): | ||||
|     if use_12epochs_result: basestr, arch2infos = '12epochs' , self.arch2infos_less | ||||
|     else                  : basestr, arch2infos = '200epochs', self.arch2infos_full | ||||
|     archresult = arch2infos[index] | ||||
|     # if randomly select one trial, select the seed at first | ||||
|     if isinstance(is_random, bool) and is_random: | ||||
|       seeds = archresult.get_dataset_seeds(dataset) | ||||
|       is_random = random.choice(seeds) | ||||
|     # collect the training information | ||||
|     train_info = archresult.get_metrics(dataset, 'train', iepoch=iepoch, is_random=is_random) | ||||
|     total = train_info['iepoch'] + 1 | ||||
|     xinfo = {'train-loss'    : train_info['loss'], | ||||
|              'train-accuracy': train_info['accuracy'], | ||||
|              'train-per-time': train_info['all_time'] / total, | ||||
|              'train-all-time': train_info['all_time']} | ||||
|     # collect the evaluation information | ||||
|     if dataset == 'cifar10-valid': | ||||
|       valid_info = archresult.get_metrics(dataset, 'x-valid', iepoch=iepoch, is_random=is_random) | ||||
|       try: | ||||
|         test_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test_info = None | ||||
|       valtest_info = None | ||||
|     else: | ||||
|       try: # collect results on the proposed test set | ||||
|         if dataset == 'cifar10': | ||||
|           test_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|         else: | ||||
|           test_info = archresult.get_metrics(dataset, 'x-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test_info = None | ||||
|       try: # collect results on the proposed validation set | ||||
|         valid_info = archresult.get_metrics(dataset, 'x-valid', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         valid_info = None | ||||
|       try: | ||||
|         if dataset != 'cifar10': | ||||
|           valtest_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|         else: | ||||
|           valtest_info = None | ||||
|       except: | ||||
|         valtest_info = None | ||||
|     if valid_info is not None: | ||||
|       xinfo['valid-loss'] = valid_info['loss'] | ||||
|       xinfo['valid-accuracy'] = valid_info['accuracy'] | ||||
|       xinfo['valid-per-time'] = valid_info['all_time'] / total | ||||
|       xinfo['valid-all-time'] = valid_info['all_time'] | ||||
|     if test_info is not None: | ||||
|       xinfo['test-loss'] = test_info['loss'] | ||||
|       xinfo['test-accuracy'] = test_info['accuracy'] | ||||
|       xinfo['test-per-time'] = test_info['all_time'] / total | ||||
|       xinfo['test-all-time'] = test_info['all_time'] | ||||
|     if valtest_info is not None: | ||||
|       xinfo['valtest-loss'] = valtest_info['loss'] | ||||
|       xinfo['valtest-accuracy'] = valtest_info['accuracy'] | ||||
|       xinfo['valtest-per-time'] = valtest_info['all_time'] / total | ||||
|       xinfo['valtest-all-time'] = valtest_info['all_time'] | ||||
|     return xinfo | ||||
|   """ # The following logic is deprecated after March 15 2020, where the benchmark file upgrades from NAS-Bench-201-v1_0-e61699.pth to NAS-Bench-201-v1_1-096897.pth. | ||||
|   def get_more_info(self, index: int, dataset, iepoch=None, use_12epochs_result=False, is_random=True): | ||||
|     if use_12epochs_result: basestr, arch2infos = '12epochs' , self.arch2infos_less | ||||
|     else                  : basestr, arch2infos = '200epochs', self.arch2infos_full | ||||
|     archresult = arch2infos[index] | ||||
|     # if randomly select one trial, select the seed at first | ||||
|     if isinstance(is_random, bool) and is_random: | ||||
|       seeds = archresult.get_dataset_seeds(dataset) | ||||
|       is_random = random.choice(seeds) | ||||
|     if dataset == 'cifar10-valid': | ||||
|       train_info = archresult.get_metrics(dataset, 'train'   , iepoch=iepoch, is_random=is_random) | ||||
|       valid_info = archresult.get_metrics(dataset, 'x-valid' , iepoch=iepoch, is_random=is_random) | ||||
|       try: | ||||
|         test__info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test__info = None | ||||
|       total      = train_info['iepoch'] + 1 | ||||
|       xifo = {'train-loss'    : train_info['loss'], | ||||
|               'train-accuracy': train_info['accuracy'], | ||||
|               'train-per-time': None if train_info['all_time'] is None else train_info['all_time'] / total, | ||||
|               'train-all-time': train_info['all_time'], | ||||
|               'valid-loss'    : valid_info['loss'], | ||||
|               'valid-accuracy': valid_info['accuracy'], | ||||
|               'valid-all-time': valid_info['all_time'], | ||||
|               'valid-per-time': None if valid_info['all_time'] is None else valid_info['all_time'] / total} | ||||
|       if test__info is not None: | ||||
|         xifo['test-loss']     = test__info['loss'] | ||||
|         xifo['test-accuracy'] = test__info['accuracy'] | ||||
|       return xifo | ||||
|     else: | ||||
|       train_info = archresult.get_metrics(dataset, 'train'   , iepoch=iepoch, is_random=is_random) | ||||
|       try: | ||||
|         if dataset == 'cifar10': | ||||
|           test__info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|         else: | ||||
|           test__info = archresult.get_metrics(dataset, 'x-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test__info = None | ||||
|       try: | ||||
|         valid_info = archresult.get_metrics(dataset, 'x-valid', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         valid_info = None | ||||
|       try: | ||||
|         est_valid_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         est_valid_info = None | ||||
|       xifo = {'train-loss'    : train_info['loss'], | ||||
|               'train-accuracy': train_info['accuracy']} | ||||
|       if test__info is not None: | ||||
|         xifo['test-loss'] = test__info['loss'], | ||||
|         xifo['test-accuracy'] = test__info['accuracy'] | ||||
|       if valid_info is not None: | ||||
|         xifo['valid-loss'] = valid_info['loss'] | ||||
|         xifo['valid-accuracy'] = valid_info['accuracy'] | ||||
|       if est_valid_info is not None: | ||||
|         xifo['est-valid-loss'] = est_valid_info['loss'] | ||||
|         xifo['est-valid-accuracy'] = est_valid_info['accuracy'] | ||||
|       return xifo | ||||
|   """ | ||||
|  | ||||
|   def show(self, index: int = -1) -> None: | ||||
|     """ | ||||
|     This function will print the information of a specific (or all) architecture(s). | ||||
|  | ||||
|     :param index: If the index < 0: it will loop for all architectures and print their information one by one. | ||||
|                   else: it will print the information of the 'index'-th archiitecture. | ||||
|     :return: nothing | ||||
|     """ | ||||
|     if index < 0: # show all architectures | ||||
|       print(self) | ||||
|       for i, idx in enumerate(self.evaluated_indexes): | ||||
|         print('\n' + '-' * 10 + ' The ({:5d}/{:5d}) {:06d}-th architecture! '.format(i, len(self.evaluated_indexes), idx) + '-'*10) | ||||
|         print('arch : {:}'.format(self.meta_archs[idx])) | ||||
|         strings = print_information(self.arch2infos_full[idx]) | ||||
|         print('>' * 40 + ' {:03d} epochs '.format(self.arch2infos_full[idx].get_total_epoch()) + '>' * 40) | ||||
|         print('\n'.join(strings)) | ||||
|         strings = print_information(self.arch2infos_less[idx]) | ||||
|         print('>' * 40 + ' {:03d} epochs '.format(self.arch2infos_less[idx].get_total_epoch()) + '>' * 40) | ||||
|         print('\n'.join(strings)) | ||||
|         print('<' * 40 + '------------' + '<' * 40) | ||||
|     else: | ||||
|       if 0 <= index < len(self.meta_archs): | ||||
|         if index not in self.evaluated_indexes: print('The {:}-th architecture has not been evaluated or not saved.'.format(index)) | ||||
|         else: | ||||
|           strings = print_information(self.arch2infos_full[index]) | ||||
|           print('>' * 40 + ' {:03d} epochs '.format(self.arch2infos_full[index].get_total_epoch()) + '>' * 40) | ||||
|           print('\n'.join(strings)) | ||||
|           strings = print_information(self.arch2infos_less[index]) | ||||
|           print('>' * 40 + ' {:03d} epochs '.format(self.arch2infos_less[index].get_total_epoch()) + '>' * 40) | ||||
|           print('\n'.join(strings)) | ||||
|           print('<' * 40 + '------------' + '<' * 40) | ||||
|       else: | ||||
|         print('This index ({:}) is out of range (0~{:}).'.format(index, len(self.meta_archs))) | ||||
|  | ||||
|   def statistics(self, dataset: Text, use_12epochs_result: bool) -> Dict[int, int]: | ||||
|     """ | ||||
|     This function will count the number of total trials. | ||||
|     """ | ||||
|     valid_datasets = ['cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120'] | ||||
|     if dataset not in valid_datasets: | ||||
|       raise ValueError('{:} not in {:}'.format(dataset, valid_datasets)) | ||||
|     if use_12epochs_result: arch2infos = self.arch2infos_less | ||||
|     else                  : arch2infos = self.arch2infos_full | ||||
|     nums = defaultdict(lambda: 0) | ||||
|     for index in range(len(self)): | ||||
|       archInfo = arch2infos[index] | ||||
|       dataset_seed = archInfo.dataset_seed | ||||
|       if dataset not in dataset_seed: | ||||
|         nums[0] += 1 | ||||
|       else: | ||||
|         nums[len(dataset_seed[dataset])] += 1 | ||||
|     return dict(nums) | ||||
|  | ||||
|   @staticmethod | ||||
|   def str2lists(arch_str: Text) -> List[tuple]: | ||||
|     """ | ||||
|     This function shows how to read the string-based architecture encoding. | ||||
|       It is the same as the `str2structure` func in `AutoDL-Projects/lib/models/cell_searchs/genotypes.py` | ||||
|  | ||||
|     :param | ||||
|       arch_str: the input is a string indicates the architecture topology, such as | ||||
|                     |nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2| | ||||
|     :return: a list of tuple, contains multiple (op, input_node_index) pairs. | ||||
|  | ||||
|     :usage | ||||
|       arch = api.str2lists( '|nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2|' ) | ||||
|       print ('there are {:} nodes in this arch'.format(len(arch)+1)) # arch is a list | ||||
|       for i, node in enumerate(arch): | ||||
|         print('the {:}-th node is the sum of these {:} nodes with op: {:}'.format(i+1, len(node), node)) | ||||
|     """ | ||||
|     node_strs = arch_str.split('+') | ||||
|     genotypes = [] | ||||
|     for i, node_str in enumerate(node_strs): | ||||
|       inputs = list(filter(lambda x: x != '', node_str.split('|'))) | ||||
|       for xinput in inputs: assert len(xinput.split('~')) == 2, 'invalid input length : {:}'.format(xinput) | ||||
|       inputs = ( xi.split('~') for xi in inputs ) | ||||
|       input_infos = tuple( (op, int(IDX)) for (op, IDX) in inputs) | ||||
|       genotypes.append( input_infos ) | ||||
|     return genotypes | ||||
|  | ||||
|   @staticmethod | ||||
|   def str2matrix(arch_str: Text, | ||||
|                  search_space: List[Text] = ['none', 'skip_connect', 'nor_conv_1x1', 'nor_conv_3x3', 'avg_pool_3x3']) -> np.ndarray: | ||||
|     """ | ||||
|     This func shows how to convert the string-based architecture encoding to the encoding strategy in NAS-Bench-101. | ||||
|  | ||||
|     :param | ||||
|       arch_str: the input is a string indicates the architecture topology, such as | ||||
|                     |nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2| | ||||
|       search_space: a list of operation string, the default list is the search space for NAS-Bench-201 | ||||
|         the default value should be be consistent with this line https://github.com/D-X-Y/AutoDL-Projects/blob/master/lib/models/cell_operations.py#L24 | ||||
|     :return | ||||
|       the numpy matrix (2-D np.ndarray) representing the DAG of this architecture topology | ||||
|     :usage | ||||
|       matrix = api.str2matrix( '|nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2|' ) | ||||
|       This matrix is 4-by-4 matrix representing a cell with 4 nodes (only the lower left triangle is useful). | ||||
|          [ [0, 0, 0, 0],  # the first line represents the input (0-th) node | ||||
|            [2, 0, 0, 0],  # the second line represents the 1-st node, is calculated by 2-th-op( 0-th-node ) | ||||
|            [0, 0, 0, 0],  # the third line represents the 2-nd node, is calculated by 0-th-op( 0-th-node ) + 0-th-op( 1-th-node ) | ||||
|            [0, 0, 1, 0] ] # the fourth line represents the 3-rd node, is calculated by 0-th-op( 0-th-node ) + 0-th-op( 1-th-node ) + 1-th-op( 2-th-node ) | ||||
|       In NAS-Bench-201 search space, 0-th-op is 'none', 1-th-op is 'skip_connect', | ||||
|          2-th-op is 'nor_conv_1x1', 3-th-op is 'nor_conv_3x3', 4-th-op is 'avg_pool_3x3'. | ||||
|     :(NOTE) | ||||
|       If a node has two input-edges from the same node, this function does not work. One edge will be overlapped. | ||||
|     """ | ||||
|     node_strs = arch_str.split('+') | ||||
|     num_nodes = len(node_strs) + 1 | ||||
|     matrix = np.zeros((num_nodes, num_nodes)) | ||||
|     for i, node_str in enumerate(node_strs): | ||||
|       inputs = list(filter(lambda x: x != '', node_str.split('|'))) | ||||
|       for xinput in inputs: assert len(xinput.split('~')) == 2, 'invalid input length : {:}'.format(xinput) | ||||
|       for xi in inputs: | ||||
|         op, idx = xi.split('~') | ||||
|         if op not in search_space: raise ValueError('this op ({:}) is not in {:}'.format(op, search_space)) | ||||
|         op_idx, node_idx = search_space.index(op), int(idx) | ||||
|         matrix[i+1, node_idx] = op_idx | ||||
|     return matrix | ||||
|  | ||||
|  | ||||
| class ArchResults(object): | ||||
|  | ||||
|   def __init__(self, arch_index, arch_str): | ||||
|     self.arch_index   = int(arch_index) | ||||
|     self.arch_str     = copy.deepcopy(arch_str) | ||||
|     self.all_results  = dict() | ||||
|     self.dataset_seed = dict() | ||||
|     self.clear_net_done = False | ||||
|  | ||||
|   def get_compute_costs(self, dataset): | ||||
|     x_seeds = self.dataset_seed[dataset] | ||||
|     results = [self.all_results[ (dataset, seed) ] for seed in x_seeds] | ||||
|  | ||||
|     flops     = [result.flop for result in results] | ||||
|     params    = [result.params for result in results] | ||||
|     latencies = [result.get_latency() for result in results] | ||||
|     latencies = [x for x in latencies if x > 0] | ||||
|     mean_latency = np.mean(latencies) if len(latencies) > 0 else None | ||||
|     time_infos = defaultdict(list) | ||||
|     for result in results: | ||||
|       time_info = result.get_times() | ||||
|       for key, value in time_info.items(): time_infos[key].append( value ) | ||||
|       | ||||
|     info = {'flops'  : np.mean(flops), | ||||
|             'params' : np.mean(params), | ||||
|             'latency': mean_latency} | ||||
|     for key, value in time_infos.items(): | ||||
|       if len(value) > 0 and value[0] is not None: | ||||
|         info[key] = np.mean(value) | ||||
|       else: info[key] = None | ||||
|     return info | ||||
|  | ||||
|   def get_metrics(self, dataset, setname, iepoch=None, is_random=False): | ||||
|     """ | ||||
|       This `get_metrics` function is used to obtain obtain the loss, accuracy, etc information on a specific dataset. | ||||
|       If not specify, each set refer to the proposed split in NAS-Bench-201 paper. | ||||
|       If some args return None or raise error, then it is not avaliable. | ||||
|       ======================================== | ||||
|       Args [dataset] (4 possible options): | ||||
|         -- cifar10-valid : training the model on the CIFAR-10 training set. | ||||
|         -- cifar10 : training the model on the CIFAR-10 training + validation set. | ||||
|         -- cifar100 : training the model on the CIFAR-100 training set. | ||||
|         -- ImageNet16-120 : training the model on the ImageNet16-120 training set. | ||||
|       Args [setname] (each dataset has different setnames): | ||||
|         -- When dataset = cifar10-valid, you can use 'train', 'x-valid', 'ori-test' | ||||
|         ------ 'train' : the metric on the training set. | ||||
|         ------ 'x-valid' : the metric on the validation set. | ||||
|         ------ 'ori-test' : the metric on the test set. | ||||
|         -- When dataset = cifar10, you can use 'train', 'ori-test'. | ||||
|         ------ 'train' : the metric on the training + validation set. | ||||
|         ------ 'ori-test' : the metric on the test set. | ||||
|         -- When dataset = cifar100 or ImageNet16-120, you can use 'train', 'ori-test', 'x-valid', 'x-test' | ||||
|         ------ 'train' : the metric on the training set. | ||||
|         ------ 'x-valid' : the metric on the validation set. | ||||
|         ------ 'x-test' : the metric on the test set. | ||||
|         ------ 'ori-test' : the metric on the validation + test set. | ||||
|       Args [iepoch] (None or an integer in [0, the-number-of-total-training-epochs) | ||||
|         ------ None : return the metric after the last training epoch. | ||||
|         ------ an integer i : return the metric after the i-th training epoch. | ||||
|       Args [is_random]: | ||||
|         ------ True : return the metric of a randomly selected trial. | ||||
|         ------ False : return the averaged metric of all avaliable trials. | ||||
|         ------ an integer indicating the 'seed' value : return the metric of a specific trial (whose random seed is 'is_random'). | ||||
|     """ | ||||
|     x_seeds = self.dataset_seed[dataset] | ||||
|     results = [self.all_results[ (dataset, seed) ] for seed in x_seeds] | ||||
|     infos   = defaultdict(list) | ||||
|     for result in results: | ||||
|       if setname == 'train': | ||||
|         info = result.get_train(iepoch) | ||||
|       else: | ||||
|         info = result.get_eval(setname, iepoch) | ||||
|       for key, value in info.items(): infos[key].append( value ) | ||||
|     return_info = dict() | ||||
|     if isinstance(is_random, bool) and is_random: # randomly select one | ||||
|       index = random.randint(0, len(results)-1) | ||||
|       for key, value in infos.items(): return_info[key] = value[index] | ||||
|     elif isinstance(is_random, bool) and not is_random: # average | ||||
|       for key, value in infos.items(): | ||||
|         if len(value) > 0 and value[0] is not None: | ||||
|           return_info[key] = np.mean(value) | ||||
|         else: return_info[key] = None | ||||
|     elif isinstance(is_random, int): # specify the seed | ||||
|       if is_random not in x_seeds: raise ValueError('can not find random seed ({:}) from {:}'.format(is_random, x_seeds)) | ||||
|       index = x_seeds.index(is_random) | ||||
|       for key, value in infos.items(): return_info[key] = value[index] | ||||
|     else: | ||||
|       raise ValueError('invalid value for is_random: {:}'.format(is_random)) | ||||
|     return return_info | ||||
|  | ||||
|   def show(self, is_print=False): | ||||
|     return print_information(self, None, is_print) | ||||
|  | ||||
|   def get_dataset_names(self): | ||||
|     return list(self.dataset_seed.keys()) | ||||
|  | ||||
|   def get_dataset_seeds(self, dataset): | ||||
|     return copy.deepcopy( self.dataset_seed[dataset] ) | ||||
|  | ||||
|   def get_net_param(self, dataset: Text, seed: Union[None, int] =None): | ||||
|     """ | ||||
|     This function will return the trained network's weights on the 'dataset'. | ||||
|     :arg | ||||
|       dataset: one of 'cifar10-valid', 'cifar10', 'cifar100', and 'ImageNet16-120'. | ||||
|       seed: an integer indicates the seed value or None that indicates returing all trials. | ||||
|     """ | ||||
|     if seed is None: | ||||
|       x_seeds = self.dataset_seed[dataset] | ||||
|       return {seed: self.all_results[(dataset, seed)].get_net_param() for seed in x_seeds} | ||||
|     else: | ||||
|       return self.all_results[(dataset, seed)].get_net_param() | ||||
|  | ||||
|   def reset_latency(self, dataset: Text, seed: Union[None, Text], latency: float) -> None: | ||||
|     """This function is used to reset the latency in all corresponding ResultsCount(s).""" | ||||
|     if seed is None: | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         self.all_results[(dataset, seed)].update_latency([latency]) | ||||
|     else: | ||||
|       self.all_results[(dataset, seed)].update_latency([latency]) | ||||
|  | ||||
|   def reset_pseudo_train_times(self, dataset: Text, seed: Union[None, Text], estimated_per_epoch_time: float) -> None: | ||||
|     """This function is used to reset the train-times in all corresponding ResultsCount(s).""" | ||||
|     if seed is None: | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         self.all_results[(dataset, seed)].reset_pseudo_train_times(estimated_per_epoch_time) | ||||
|     else: | ||||
|       self.all_results[(dataset, seed)].reset_pseudo_train_times(estimated_per_epoch_time) | ||||
|  | ||||
|   def reset_pseudo_eval_times(self, dataset: Text, seed: Union[None, Text], eval_name: Text, estimated_per_epoch_time: float) -> None: | ||||
|     """This function is used to reset the eval-times in all corresponding ResultsCount(s).""" | ||||
|     if seed is None: | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         self.all_results[(dataset, seed)].reset_pseudo_eval_times(eval_name, estimated_per_epoch_time) | ||||
|     else: | ||||
|       self.all_results[(dataset, seed)].reset_pseudo_eval_times(eval_name, estimated_per_epoch_time) | ||||
|  | ||||
|   def get_latency(self, dataset: Text) -> float: | ||||
|     """Get the latency of a model on the target dataset. [Timestamp: 2020.03.09]""" | ||||
|     latencies = [] | ||||
|     for seed in self.dataset_seed[dataset]: | ||||
|       latency = self.all_results[(dataset, seed)].get_latency() | ||||
|       if not isinstance(latency, float) or latency <= 0: | ||||
|         raise ValueError('invalid latency of {:} for {:} with {:}'.format(dataset)) | ||||
|       latencies.append(latency) | ||||
|     return sum(latencies) / len(latencies) | ||||
|  | ||||
|   def get_total_epoch(self, dataset=None): | ||||
|     """Return the total number of training epochs.""" | ||||
|     if dataset is None: | ||||
|       epochss = [] | ||||
|       for xdata, x_seeds in self.dataset_seed.items(): | ||||
|         epochss += [self.all_results[(xdata, seed)].get_total_epoch() for seed in x_seeds] | ||||
|     elif isinstance(dataset, str): | ||||
|       x_seeds = self.dataset_seed[dataset] | ||||
|       epochss = [self.all_results[(dataset, seed)].get_total_epoch() for seed in x_seeds] | ||||
|     else: | ||||
|       raise ValueError('invalid dataset={:}'.format(dataset)) | ||||
|     if len(set(epochss)) > 1: raise ValueError('Each trial mush have the same number of training epochs : {:}'.format(epochss)) | ||||
|     return epochss[-1] | ||||
|  | ||||
|   def query(self, dataset, seed=None): | ||||
|     """Return the ResultsCount object (containing all information of a single trial) for 'dataset' and 'seed'""" | ||||
|     if seed is None: | ||||
|       x_seeds = self.dataset_seed[dataset] | ||||
|       return {seed: self.all_results[(dataset, seed)] for seed in x_seeds} | ||||
|     else: | ||||
|       return self.all_results[(dataset, seed)] | ||||
|  | ||||
|   def arch_idx_str(self): | ||||
|     return '{:06d}'.format(self.arch_index) | ||||
|  | ||||
|   def update(self, dataset_name, seed, result): | ||||
|     if dataset_name not in self.dataset_seed: | ||||
|       self.dataset_seed[dataset_name] = [] | ||||
|     assert seed not in self.dataset_seed[dataset_name], '{:}-th arch alreadly has this seed ({:}) on {:}'.format(self.arch_index, seed, dataset_name) | ||||
|     self.dataset_seed[ dataset_name ].append( seed ) | ||||
|     self.dataset_seed[ dataset_name ] = sorted( self.dataset_seed[ dataset_name ] ) | ||||
|     assert (dataset_name, seed) not in self.all_results | ||||
|     self.all_results[ (dataset_name, seed) ] = result | ||||
|     self.clear_net_done = False | ||||
|  | ||||
|   def state_dict(self): | ||||
|     state_dict = dict() | ||||
|     for key, value in self.__dict__.items(): | ||||
|       if key == 'all_results': # contain the class of ResultsCount | ||||
|         xvalue = dict() | ||||
|         assert isinstance(value, dict), 'invalid type of value for {:} : {:}'.format(key, type(value)) | ||||
|         for _k, _v in value.items(): | ||||
|           assert isinstance(_v, ResultsCount), 'invalid type of value for {:}/{:} : {:}'.format(key, _k, type(_v)) | ||||
|           xvalue[_k] = _v.state_dict() | ||||
|       else: | ||||
|         xvalue = value | ||||
|       state_dict[key] = xvalue | ||||
|     return state_dict | ||||
|  | ||||
|   def load_state_dict(self, state_dict): | ||||
|     new_state_dict = dict() | ||||
|     for key, value in state_dict.items(): | ||||
|       if key == 'all_results': # to convert to the class of ResultsCount | ||||
|         xvalue = dict() | ||||
|         assert isinstance(value, dict), 'invalid type of value for {:} : {:}'.format(key, type(value)) | ||||
|         for _k, _v in value.items(): | ||||
|           xvalue[_k] = ResultsCount.create_from_state_dict(_v) | ||||
|       else: xvalue = value | ||||
|       new_state_dict[key] = xvalue | ||||
|     self.__dict__.update(new_state_dict) | ||||
|  | ||||
|   @staticmethod | ||||
|   def create_from_state_dict(state_dict_or_file): | ||||
|     x = ArchResults(-1, -1) | ||||
|     if isinstance(state_dict_or_file, str): # a file path | ||||
|       state_dict = torch.load(state_dict_or_file, map_location='cpu') | ||||
|     elif isinstance(state_dict_or_file, dict): | ||||
|       state_dict = state_dict_or_file | ||||
|     else: | ||||
|       raise ValueError('invalid type of state_dict_or_file : {:}'.format(type(state_dict_or_file))) | ||||
|     x.load_state_dict(state_dict) | ||||
|     return x | ||||
|  | ||||
|   # This function is used to clear the weights saved in each 'result' | ||||
|   # This can help reduce the memory footprint. | ||||
|   def clear_params(self): | ||||
|     for key, result in self.all_results.items(): | ||||
|       del result.net_state_dict | ||||
|       result.net_state_dict = None | ||||
|     self.clear_net_done = True | ||||
|  | ||||
|   def debug_test(self): | ||||
|     """This function is used for me to debug and test, which will call most methods.""" | ||||
|     all_dataset = ['cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120'] | ||||
|     for dataset in all_dataset: | ||||
|       print('---->>>> {:}'.format(dataset)) | ||||
|       print('The latency on {:} is {:} s'.format(dataset, self.get_latency(dataset))) | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         result = self.all_results[(dataset, seed)] | ||||
|         print('  ==>> result = {:}'.format(result)) | ||||
|         print('  ==>> cost = {:}'.format(result.get_times())) | ||||
|  | ||||
|   def __repr__(self): | ||||
|     return ('{name}(arch-index={index}, arch={arch}, {num} runs, clear={clear})'.format(name=self.__class__.__name__, index=self.arch_index, arch=self.arch_str, num=len(self.all_results), clear=self.clear_net_done)) | ||||
|  | ||||
|  | ||||
| """ | ||||
| This class (ResultsCount) is used to save the information of one trial for a single architecture. | ||||
| I did not write much comment for this class, because it is the lowest-level class in NAS-Bench-201 API, which will be rarely called. | ||||
| If you have any question regarding this class, please open an issue or email me. | ||||
| """ | ||||
| class ResultsCount(object): | ||||
|  | ||||
|   def __init__(self, name, state_dict, train_accs, train_losses, params, flop, arch_config, seed, epochs, latency): | ||||
|     self.name           = name | ||||
|     self.net_state_dict = state_dict | ||||
|     self.train_acc1es = copy.deepcopy(train_accs) | ||||
|     self.train_acc5es = None | ||||
|     self.train_losses = copy.deepcopy(train_losses) | ||||
|     self.train_times  = None | ||||
|     self.arch_config  = copy.deepcopy(arch_config) | ||||
|     self.params     = params | ||||
|     self.flop       = flop | ||||
|     self.seed       = seed | ||||
|     self.epochs     = epochs | ||||
|     self.latency    = latency | ||||
|     # evaluation results | ||||
|     self.reset_eval() | ||||
|  | ||||
|   def update_train_info(self, train_acc1es, train_acc5es, train_losses, train_times) -> None: | ||||
|     self.train_acc1es = train_acc1es | ||||
|     self.train_acc5es = train_acc5es | ||||
|     self.train_losses = train_losses | ||||
|     self.train_times  = train_times | ||||
|  | ||||
|   def reset_pseudo_train_times(self, estimated_per_epoch_time: float) -> None: | ||||
|     """Assign the training times.""" | ||||
|     train_times = OrderedDict() | ||||
|     for i in range(self.epochs): | ||||
|       train_times[i] = estimated_per_epoch_time | ||||
|     self.train_times = train_times | ||||
|  | ||||
|   def reset_pseudo_eval_times(self, eval_name: Text, estimated_per_epoch_time: float) -> None: | ||||
|     """Assign the evaluation times.""" | ||||
|     if eval_name not in self.eval_names: raise ValueError('invalid eval name : {:}'.format(eval_name)) | ||||
|     for i in range(self.epochs): | ||||
|       self.eval_times['{:}@{:}'.format(eval_name,i)] = estimated_per_epoch_time | ||||
|  | ||||
|   def reset_eval(self): | ||||
|     self.eval_names  = [] | ||||
|     self.eval_acc1es = {} | ||||
|     self.eval_times  = {} | ||||
|     self.eval_losses = {} | ||||
|  | ||||
|   def update_latency(self, latency): | ||||
|     self.latency = copy.deepcopy( latency ) | ||||
|  | ||||
|   def get_latency(self) -> float: | ||||
|     """Return the latency value in seconds. -1 represents not avaliable ; otherwise it should be a float value""" | ||||
|     if self.latency is None: return -1.0 | ||||
|     else: return sum(self.latency) / len(self.latency) | ||||
|  | ||||
|   def update_eval(self, accs, losses, times):  # new version | ||||
|     data_names = set([x.split('@')[0] for x in accs.keys()]) | ||||
|     for data_name in data_names: | ||||
|       assert data_name not in self.eval_names, '{:} has already been added into eval-names'.format(data_name) | ||||
|       self.eval_names.append( data_name ) | ||||
|       for iepoch in range(self.epochs): | ||||
|         xkey = '{:}@{:}'.format(data_name, iepoch) | ||||
|         self.eval_acc1es[ xkey ] = accs[ xkey ] | ||||
|         self.eval_losses[ xkey ] = losses[ xkey ] | ||||
|         self.eval_times [ xkey ] = times[ xkey ] | ||||
|  | ||||
|   def update_OLD_eval(self, name, accs, losses): # old version | ||||
|     assert name not in self.eval_names, '{:} has already added'.format(name) | ||||
|     self.eval_names.append( name ) | ||||
|     for iepoch in range(self.epochs): | ||||
|       if iepoch in accs: | ||||
|         self.eval_acc1es['{:}@{:}'.format(name,iepoch)] = accs[iepoch] | ||||
|         self.eval_losses['{:}@{:}'.format(name,iepoch)] = losses[iepoch] | ||||
|  | ||||
|   def __repr__(self): | ||||
|     num_eval = len(self.eval_names) | ||||
|     set_name = '[' + ', '.join(self.eval_names) + ']' | ||||
|     return ('{name}({xname}, arch={arch}, FLOP={flop:.2f}M, Param={param:.3f}MB, seed={seed}, {num_eval} eval-sets: {set_name})'.format(name=self.__class__.__name__, xname=self.name, arch=self.arch_config['arch_str'], flop=self.flop, param=self.params, seed=self.seed, num_eval=num_eval, set_name=set_name)) | ||||
|  | ||||
|   def get_total_epoch(self): | ||||
|     return copy.deepcopy(self.epochs) | ||||
|  | ||||
|   def get_times(self): | ||||
|     """Obtain the information regarding both training and evaluation time.""" | ||||
|     if self.train_times is not None and isinstance(self.train_times, dict): | ||||
|       train_times = list( self.train_times.values() ) | ||||
|       time_info = {'T-train@epoch': np.mean(train_times), 'T-train@total': np.sum(train_times)} | ||||
|     else: | ||||
|       time_info = {'T-train@epoch':                 None, 'T-train@total':               None } | ||||
|     for name in self.eval_names: | ||||
|       try: | ||||
|         xtimes = [self.eval_times['{:}@{:}'.format(name,i)] for i in range(self.epochs)] | ||||
|         time_info['T-{:}@epoch'.format(name)] = np.mean(xtimes) | ||||
|         time_info['T-{:}@total'.format(name)] = np.sum(xtimes) | ||||
|       except: | ||||
|         time_info['T-{:}@epoch'.format(name)] = None | ||||
|         time_info['T-{:}@total'.format(name)] = None | ||||
|     return time_info | ||||
|  | ||||
|   def get_eval_set(self): | ||||
|     return self.eval_names | ||||
|  | ||||
|   # get the training information | ||||
|   def get_train(self, iepoch=None): | ||||
|     if iepoch is None: iepoch = self.epochs-1 | ||||
|     assert 0 <= iepoch < self.epochs, 'invalid iepoch={:} < {:}'.format(iepoch, self.epochs) | ||||
|     if self.train_times is not None: | ||||
|       xtime = self.train_times[iepoch] | ||||
|       atime = sum([self.train_times[i] for i in range(iepoch+1)]) | ||||
|     else: xtime, atime = None, None | ||||
|     return {'iepoch'  : iepoch, | ||||
|             'loss'    : self.train_losses[iepoch], | ||||
|             'accuracy': self.train_acc1es[iepoch], | ||||
|             'cur_time': xtime, | ||||
|             'all_time': atime} | ||||
|  | ||||
|   def get_eval(self, name, iepoch=None): | ||||
|     """Get the evaluation information ; there could be multiple evaluation sets (identified by the 'name' argument).""" | ||||
|     if iepoch is None: iepoch = self.epochs-1 | ||||
|     assert 0 <= iepoch < self.epochs, 'invalid iepoch={:} < {:}'.format(iepoch, self.epochs) | ||||
|     if isinstance(self.eval_times,dict) and len(self.eval_times) > 0: | ||||
|       xtime = self.eval_times['{:}@{:}'.format(name,iepoch)] | ||||
|       atime = sum([self.eval_times['{:}@{:}'.format(name,i)] for i in range(iepoch+1)]) | ||||
|     else: xtime, atime = None, None | ||||
|     return {'iepoch'  : iepoch, | ||||
|             'loss'    : self.eval_losses['{:}@{:}'.format(name,iepoch)], | ||||
|             'accuracy': self.eval_acc1es['{:}@{:}'.format(name,iepoch)], | ||||
|             'cur_time': xtime, | ||||
|             'all_time': atime} | ||||
|  | ||||
|   def get_net_param(self, clone=False): | ||||
|     if clone: return copy.deepcopy(self.net_state_dict) | ||||
|     else: return self.net_state_dict | ||||
|  | ||||
|   def get_config(self, str2structure): | ||||
|     """This function is used to obtain the config dict for this architecture.""" | ||||
|     if str2structure is None: | ||||
|       return {'name': 'infer.tiny', 'C': self.arch_config['channel'], | ||||
|               'N'   : self.arch_config['num_cells'], | ||||
|               'arch_str': self.arch_config['arch_str'], 'num_classes': self.arch_config['class_num']} | ||||
|     else: | ||||
|       return {'name': 'infer.tiny', 'C': self.arch_config['channel'], | ||||
|               'N'   : self.arch_config['num_cells'], | ||||
|               'genotype': str2structure(self.arch_config['arch_str']), 'num_classes': self.arch_config['class_num']} | ||||
|  | ||||
|   def state_dict(self): | ||||
|     _state_dict = {key: value for key, value in self.__dict__.items()} | ||||
|     return _state_dict | ||||
|  | ||||
|   def load_state_dict(self, state_dict): | ||||
|     self.__dict__.update(state_dict) | ||||
|  | ||||
|   @staticmethod | ||||
|   def create_from_state_dict(state_dict): | ||||
|     x = ResultsCount(None, None, None, None, None, None, None, None, None, None) | ||||
|     x.load_state_dict(state_dict) | ||||
|     return x | ||||
							
								
								
									
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| ##################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2019.08 # | ||||
| ############################################################################################ | ||||
| # NAS-Bench-201: Extending the Scope of Reproducible Neural Architecture Search, ICLR 2020 # | ||||
| ############################################################################################ | ||||
| # The history of benchmark files: | ||||
| # [2020.02.25] NAS-Bench-201-v1_0-e61699.pth : 6219 architectures are trained once, 1621 architectures are trained twice, 7785 architectures are trained three times. `LESS` only supports CIFAR10-VALID. | ||||
| # [2020.03.16] NAS-Bench-201-v1_1-096897.pth : 2225 architectures are trained once, 5439 archiitectures are trained twice, 7961 architectures are trained three times on all training sets. For the hyper-parameters with the total epochs of 12, each model is trained on CIFAR-10, CIFAR-100, ImageNet16-120 once, and is trained on CIFAR-10-VALID twice. | ||||
| # | ||||
| # I'm still actively enhancing this benchmark. Please feel free to contact me if you have any question w.r.t. NAS-Bench-201. | ||||
| # | ||||
| import os, copy, random, torch, numpy as np | ||||
| from pathlib import Path | ||||
| from typing import List, Text, Union, Dict, Optional | ||||
| from collections import OrderedDict, defaultdict | ||||
|  | ||||
| from .api_utils import ArchResults | ||||
| from .api_utils import NASBenchMetaAPI | ||||
| from .api_utils import remap_dataset_set_names | ||||
|  | ||||
|  | ||||
| ALL_BENCHMARK_FILES = ['NAS-Bench-201-v1_0-e61699.pth', 'NAS-Bench-201-v1_1-096897.pth'] | ||||
| ALL_ARCHIVE_DIRS = ['NAS-Bench-201-v1_1-archive'] | ||||
|  | ||||
|  | ||||
| def print_information(information, extra_info=None, show=False): | ||||
|   dataset_names = information.get_dataset_names() | ||||
|   strings = [information.arch_str, 'datasets : {:}, extra-info : {:}'.format(dataset_names, extra_info)] | ||||
|   def metric2str(loss, acc): | ||||
|     return 'loss = {:.3f}, top1 = {:.2f}%'.format(loss, acc) | ||||
|  | ||||
|   for ida, dataset in enumerate(dataset_names): | ||||
|     metric = information.get_compute_costs(dataset) | ||||
|     flop, param, latency = metric['flops'], metric['params'], metric['latency'] | ||||
|     str1 = '{:14s} FLOP={:6.2f} M, Params={:.3f} MB, latency={:} ms.'.format(dataset, flop, param, '{:.2f}'.format(latency*1000) if latency is not None and latency > 0 else None) | ||||
|     train_info = information.get_metrics(dataset, 'train') | ||||
|     if dataset == 'cifar10-valid': | ||||
|       valid_info = information.get_metrics(dataset, 'x-valid') | ||||
|       str2 = '{:14s} train : [{:}], valid : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(valid_info['loss'], valid_info['accuracy'])) | ||||
|     elif dataset == 'cifar10': | ||||
|       test__info = information.get_metrics(dataset, 'ori-test') | ||||
|       str2 = '{:14s} train : [{:}], test  : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(test__info['loss'], test__info['accuracy'])) | ||||
|     else: | ||||
|       valid_info = information.get_metrics(dataset, 'x-valid') | ||||
|       test__info = information.get_metrics(dataset, 'x-test') | ||||
|       str2 = '{:14s} train : [{:}], valid : [{:}], test : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(valid_info['loss'], valid_info['accuracy']), metric2str(test__info['loss'], test__info['accuracy'])) | ||||
|     strings += [str1, str2] | ||||
|   if show: print('\n'.join(strings)) | ||||
|   return strings | ||||
|  | ||||
|  | ||||
| """ | ||||
| This is the class for the API of NAS-Bench-201. | ||||
| """ | ||||
| class NASBench201API(NASBenchMetaAPI): | ||||
|  | ||||
|   """ The initialization function that takes the dataset file path (or a dict loaded from that path) as input. """ | ||||
|   def __init__(self, file_path_or_dict: Optional[Union[Text, Dict]]=None, | ||||
|                verbose: bool=True): | ||||
|     self.filename = None | ||||
|     if file_path_or_dict is None: | ||||
|       file_path_or_dict = os.path.join(os.environ['TORCH_HOME'], ALL_BENCHMARK_FILES[-1]) | ||||
|       print ('Try to use the default NAS-Bench-201 path from {:}.'.format(file_path_or_dict)) | ||||
|     if isinstance(file_path_or_dict, str) or isinstance(file_path_or_dict, Path): | ||||
|       file_path_or_dict = str(file_path_or_dict) | ||||
|       if verbose: print('try to create the NAS-Bench-201 api from {:}'.format(file_path_or_dict)) | ||||
|       assert os.path.isfile(file_path_or_dict), 'invalid path : {:}'.format(file_path_or_dict) | ||||
|       self.filename = Path(file_path_or_dict).name | ||||
|       file_path_or_dict = torch.load(file_path_or_dict, map_location='cpu') | ||||
|     elif isinstance(file_path_or_dict, dict): | ||||
|       file_path_or_dict = copy.deepcopy(file_path_or_dict) | ||||
|     else: raise ValueError('invalid type : {:} not in [str, dict]'.format(type(file_path_or_dict))) | ||||
|     assert isinstance(file_path_or_dict, dict), 'It should be a dict instead of {:}'.format(type(file_path_or_dict)) | ||||
|     self.verbose = verbose # [TODO] a flag indicating whether to print more logs | ||||
|     keys = ('meta_archs', 'arch2infos', 'evaluated_indexes') | ||||
|     for key in keys: assert key in file_path_or_dict, 'Can not find key[{:}] in the dict'.format(key) | ||||
|     self.meta_archs = copy.deepcopy( file_path_or_dict['meta_archs'] ) | ||||
|     # This is a dict mapping each architecture to a dict, where the key is #epochs and the value is ArchResults | ||||
|     self.arch2infos_dict = OrderedDict() | ||||
|     for xkey in sorted(list(file_path_or_dict['arch2infos'].keys())): | ||||
|       all_info = file_path_or_dict['arch2infos'][xkey] | ||||
|       hp2archres = OrderedDict() | ||||
|       # self.arch2infos_less[xkey] = ArchResults.create_from_state_dict( all_info['less'] ) | ||||
|       # self.arch2infos_full[xkey] = ArchResults.create_from_state_dict( all_info['full'] ) | ||||
|       hp2archres['12'] = ArchResults.create_from_state_dict(all_info['less']) | ||||
|       hp2archres['200'] = ArchResults.create_from_state_dict(all_info['full']) | ||||
|       self.arch2infos_dict[xkey] = hp2archres | ||||
|     self.evaluated_indexes = sorted(list(file_path_or_dict['evaluated_indexes'])) | ||||
|     self.archstr2index = {} | ||||
|     for idx, arch in enumerate(self.meta_archs): | ||||
|       assert arch not in self.archstr2index, 'This [{:}]-th arch {:} already in the dict ({:}).'.format(idx, arch, self.archstr2index[arch]) | ||||
|       self.archstr2index[ arch ] = idx | ||||
|  | ||||
|   def reload(self, archive_root: Text = None, index: int = None): | ||||
|     """Overwrite all information of the 'index'-th architecture in the search space. | ||||
|          It will load its data from 'archive_root'. | ||||
|     """ | ||||
|     if archive_root is None: | ||||
|       archive_root = os.path.join(os.environ['TORCH_HOME'], ALL_ARCHIVE_DIRS[-1]) | ||||
|     assert os.path.isdir(archive_root), 'invalid directory : {:}'.format(archive_root) | ||||
|     if index is None: | ||||
|       indexes = list(range(len(self))) | ||||
|     else: | ||||
|       indexes = [index] | ||||
|     for idx in indexes: | ||||
|       assert 0 <= idx < len(self.meta_archs), 'invalid index of {:}'.format(idx) | ||||
|       xfile_path = os.path.join(archive_root, '{:06d}-FULL.pth'.format(idx)) | ||||
|       assert os.path.isfile(xfile_path), 'invalid data path : {:}'.format(xfile_path) | ||||
|       xdata = torch.load(xfile_path, map_location='cpu') | ||||
|       assert isinstance(xdata, dict) and 'full' in xdata and 'less' in xdata, 'invalid format of data in {:}'.format(xfile_path) | ||||
|       hp2archres = OrderedDict() | ||||
|       hp2archres['12'] = ArchResults.create_from_state_dict(xdata['less']) | ||||
|       hp2archres['200'] = ArchResults.create_from_state_dict(xdata['full']) | ||||
|       self.arch2infos_dict[idx] = hp2archres | ||||
|  | ||||
|   def query_info_str_by_arch(self, arch, hp: Text='12'): | ||||
|     """ This function is used to query the information of a specific architecture | ||||
|         'arch' can be an architecture index or an architecture string | ||||
|         When hp=12, the hyper-parameters used to train a model are in 'configs/nas-benchmark/hyper-opts/12E.config' | ||||
|         When hp=200, the hyper-parameters used to train a model are in 'configs/nas-benchmark/hyper-opts/200E.config' | ||||
|         The difference between these three configurations are the number of training epochs. | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call query_info_str_by_arch with arch={:} and hp={:}'.format(arch, hp)) | ||||
|     self._query_info_str_by_arch(arch, hp, print_information) | ||||
|  | ||||
|   # obtain the metric for the `index`-th architecture | ||||
|   # `dataset` indicates the dataset: | ||||
|   #   'cifar10-valid'  : using the proposed train set of CIFAR-10 as the training set | ||||
|   #   'cifar10'        : using the proposed train+valid set of CIFAR-10 as the training set | ||||
|   #   'cifar100'       : using the proposed train set of CIFAR-100 as the training set | ||||
|   #   'ImageNet16-120' : using the proposed train set of ImageNet-16-120 as the training set | ||||
|   # `iepoch` indicates the index of training epochs from 0 to 11/199. | ||||
|   #   When iepoch=None, it will return the metric for the last training epoch | ||||
|   #   When iepoch=11, it will return the metric for the 11-th training epoch (starting from 0) | ||||
|   # `use_12epochs_result` indicates different hyper-parameters for training | ||||
|   #   When use_12epochs_result=True, it trains the network with 12 epochs and the LR decayed from 0.1 to 0 within 12 epochs | ||||
|   #   When use_12epochs_result=False, it trains the network with 200 epochs and the LR decayed from 0.1 to 0 within 200 epochs | ||||
|   # `is_random` | ||||
|   #   When is_random=True, the performance of a random architecture will be returned | ||||
|   #   When is_random=False, the performanceo of all trials will be averaged. | ||||
|   def get_more_info(self, index: int, dataset, iepoch=None, hp='12', is_random=True): | ||||
|     if self.verbose: | ||||
|       print('Call the get_more_info function with index={:}, dataset={:}, iepoch={:}, hp={:}, and is_random={:}.'.format(index, dataset, iepoch, hp, is_random)) | ||||
|     archresult = self.arch2infos_dict[index][str(hp)] | ||||
|     # if randomly select one trial, select the seed at first | ||||
|     if isinstance(is_random, bool) and is_random: | ||||
|       seeds = archresult.get_dataset_seeds(dataset) | ||||
|       is_random = random.choice(seeds) | ||||
|     # collect the training information | ||||
|     train_info = archresult.get_metrics(dataset, 'train', iepoch=iepoch, is_random=is_random) | ||||
|     total = train_info['iepoch'] + 1 | ||||
|     xinfo = {'train-loss'    : train_info['loss'], | ||||
|              'train-accuracy': train_info['accuracy'], | ||||
|              'train-per-time': train_info['all_time'] / total if train_info['all_time'] is not None else None, | ||||
|              'train-all-time': train_info['all_time']} | ||||
|     # collect the evaluation information | ||||
|     if dataset == 'cifar10-valid': | ||||
|       valid_info = archresult.get_metrics(dataset, 'x-valid', iepoch=iepoch, is_random=is_random) | ||||
|       try: | ||||
|         test_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test_info = None | ||||
|       valtest_info = None | ||||
|     else: | ||||
|       try: # collect results on the proposed test set | ||||
|         if dataset == 'cifar10': | ||||
|           test_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|         else: | ||||
|           test_info = archresult.get_metrics(dataset, 'x-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test_info = None | ||||
|       try: # collect results on the proposed validation set | ||||
|         valid_info = archresult.get_metrics(dataset, 'x-valid', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         valid_info = None | ||||
|       try: | ||||
|         if dataset != 'cifar10': | ||||
|           valtest_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|         else: | ||||
|           valtest_info = None | ||||
|       except: | ||||
|         valtest_info = None | ||||
|     if valid_info is not None: | ||||
|       xinfo['valid-loss'] = valid_info['loss'] | ||||
|       xinfo['valid-accuracy'] = valid_info['accuracy'] | ||||
|       xinfo['valid-per-time'] = valid_info['all_time'] / total | ||||
|       xinfo['valid-all-time'] = valid_info['all_time'] | ||||
|     if test_info is not None: | ||||
|       xinfo['test-loss'] = test_info['loss'] | ||||
|       xinfo['test-accuracy'] = test_info['accuracy'] | ||||
|       xinfo['test-per-time'] = test_info['all_time'] / total | ||||
|       xinfo['test-all-time'] = test_info['all_time'] | ||||
|     if valtest_info is not None: | ||||
|       xinfo['valtest-loss'] = valtest_info['loss'] | ||||
|       xinfo['valtest-accuracy'] = valtest_info['accuracy'] | ||||
|       xinfo['valtest-per-time'] = valtest_info['all_time'] / total | ||||
|       xinfo['valtest-all-time'] = valtest_info['all_time'] | ||||
|     return xinfo | ||||
|  | ||||
|   def show(self, index: int = -1) -> None: | ||||
|     """This function will print the information of a specific (or all) architecture(s).""" | ||||
|     self._show(index, print_information) | ||||
|  | ||||
|   @staticmethod | ||||
|   def str2lists(arch_str: Text) -> List[tuple]: | ||||
|     """ | ||||
|     This function shows how to read the string-based architecture encoding. | ||||
|       It is the same as the `str2structure` func in `AutoDL-Projects/lib/models/cell_searchs/genotypes.py` | ||||
|  | ||||
|     :param | ||||
|       arch_str: the input is a string indicates the architecture topology, such as | ||||
|                     |nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2| | ||||
|     :return: a list of tuple, contains multiple (op, input_node_index) pairs. | ||||
|  | ||||
|     :usage | ||||
|       arch = api.str2lists( '|nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2|' ) | ||||
|       print ('there are {:} nodes in this arch'.format(len(arch)+1)) # arch is a list | ||||
|       for i, node in enumerate(arch): | ||||
|         print('the {:}-th node is the sum of these {:} nodes with op: {:}'.format(i+1, len(node), node)) | ||||
|     """ | ||||
|     node_strs = arch_str.split('+') | ||||
|     genotypes = [] | ||||
|     for i, node_str in enumerate(node_strs): | ||||
|       inputs = list(filter(lambda x: x != '', node_str.split('|'))) | ||||
|       for xinput in inputs: assert len(xinput.split('~')) == 2, 'invalid input length : {:}'.format(xinput) | ||||
|       inputs = ( xi.split('~') for xi in inputs ) | ||||
|       input_infos = tuple( (op, int(IDX)) for (op, IDX) in inputs) | ||||
|       genotypes.append( input_infos ) | ||||
|     return genotypes | ||||
|  | ||||
|   @staticmethod | ||||
|   def str2matrix(arch_str: Text, | ||||
|                  search_space: List[Text] = ['none', 'skip_connect', 'nor_conv_1x1', 'nor_conv_3x3', 'avg_pool_3x3']) -> np.ndarray: | ||||
|     """ | ||||
|     This func shows how to convert the string-based architecture encoding to the encoding strategy in NAS-Bench-101. | ||||
|  | ||||
|     :param | ||||
|       arch_str: the input is a string indicates the architecture topology, such as | ||||
|                     |nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2| | ||||
|       search_space: a list of operation string, the default list is the search space for NAS-Bench-201 | ||||
|         the default value should be be consistent with this line https://github.com/D-X-Y/AutoDL-Projects/blob/master/lib/models/cell_operations.py#L24 | ||||
|     :return | ||||
|       the numpy matrix (2-D np.ndarray) representing the DAG of this architecture topology | ||||
|     :usage | ||||
|       matrix = api.str2matrix( '|nor_conv_1x1~0|+|none~0|none~1|+|none~0|none~1|skip_connect~2|' ) | ||||
|       This matrix is 4-by-4 matrix representing a cell with 4 nodes (only the lower left triangle is useful). | ||||
|          [ [0, 0, 0, 0],  # the first line represents the input (0-th) node | ||||
|            [2, 0, 0, 0],  # the second line represents the 1-st node, is calculated by 2-th-op( 0-th-node ) | ||||
|            [0, 0, 0, 0],  # the third line represents the 2-nd node, is calculated by 0-th-op( 0-th-node ) + 0-th-op( 1-th-node ) | ||||
|            [0, 0, 1, 0] ] # the fourth line represents the 3-rd node, is calculated by 0-th-op( 0-th-node ) + 0-th-op( 1-th-node ) + 1-th-op( 2-th-node ) | ||||
|       In NAS-Bench-201 search space, 0-th-op is 'none', 1-th-op is 'skip_connect', | ||||
|          2-th-op is 'nor_conv_1x1', 3-th-op is 'nor_conv_3x3', 4-th-op is 'avg_pool_3x3'. | ||||
|     :(NOTE) | ||||
|       If a node has two input-edges from the same node, this function does not work. One edge will be overlapped. | ||||
|     """ | ||||
|     node_strs = arch_str.split('+') | ||||
|     num_nodes = len(node_strs) + 1 | ||||
|     matrix = np.zeros((num_nodes, num_nodes)) | ||||
|     for i, node_str in enumerate(node_strs): | ||||
|       inputs = list(filter(lambda x: x != '', node_str.split('|'))) | ||||
|       for xinput in inputs: assert len(xinput.split('~')) == 2, 'invalid input length : {:}'.format(xinput) | ||||
|       for xi in inputs: | ||||
|         op, idx = xi.split('~') | ||||
|         if op not in search_space: raise ValueError('this op ({:}) is not in {:}'.format(op, search_space)) | ||||
|         op_idx, node_idx = search_space.index(op), int(idx) | ||||
|         matrix[i+1, node_idx] = op_idx | ||||
|     return matrix | ||||
|  | ||||
							
								
								
									
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								lib/nas_201_api/api_301.py
									
									
									
									
									
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							| @@ -0,0 +1,215 @@ | ||||
| ##################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2020.06 # | ||||
| ############################################################################################ | ||||
| # NAS-Bench-301, coming soon. | ||||
| ############################################################################################ | ||||
| # The history of benchmark files: | ||||
| # [2020.06.30] NAS-Bench-301-v1_0 | ||||
| #  | ||||
| import os, copy, random, torch, numpy as np | ||||
| from pathlib import Path | ||||
| from typing import List, Text, Union, Dict, Optional | ||||
| from collections import OrderedDict, defaultdict | ||||
| from .api_utils import ArchResults | ||||
| from .api_utils import NASBenchMetaAPI | ||||
| from .api_utils import remap_dataset_set_names | ||||
|  | ||||
|  | ||||
| ALL_BENCHMARK_FILES = ['NAS-Bench-301-v1_0-363be7.pth'] | ||||
| ALL_ARCHIVE_DIRS = ['NAS-Bench-301-v1_0-archive'] | ||||
|  | ||||
|  | ||||
| def print_information(information, extra_info=None, show=False): | ||||
|   dataset_names = information.get_dataset_names() | ||||
|   strings = [information.arch_str, 'datasets : {:}, extra-info : {:}'.format(dataset_names, extra_info)] | ||||
|   def metric2str(loss, acc): | ||||
|     return 'loss = {:.3f} & top1 = {:.2f}%'.format(loss, acc) | ||||
|  | ||||
|   for ida, dataset in enumerate(dataset_names): | ||||
|     metric = information.get_compute_costs(dataset) | ||||
|     flop, param, latency = metric['flops'], metric['params'], metric['latency'] | ||||
|     str1 = '{:14s} FLOP={:6.2f} M, Params={:.3f} MB, latency={:} ms.'.format(dataset, flop, param, '{:.2f}'.format(latency*1000) if latency is not None and latency > 0 else None) | ||||
|     train_info = information.get_metrics(dataset, 'train') | ||||
|     if dataset == 'cifar10-valid': | ||||
|       valid_info = information.get_metrics(dataset, 'x-valid') | ||||
|       test__info = information.get_metrics(dataset, 'ori-test') | ||||
|       str2 = '{:14s} train : [{:}], valid : [{:}], test : [{:}]'.format( | ||||
|                 dataset, metric2str(train_info['loss'], train_info['accuracy']), | ||||
|                 metric2str(valid_info['loss'], valid_info['accuracy']), | ||||
|                 metric2str(test__info['loss'], test__info['accuracy'])) | ||||
|     elif dataset == 'cifar10': | ||||
|       test__info = information.get_metrics(dataset, 'ori-test') | ||||
|       str2 = '{:14s} train : [{:}], test  : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(test__info['loss'], test__info['accuracy'])) | ||||
|     else: | ||||
|       valid_info = information.get_metrics(dataset, 'x-valid') | ||||
|       test__info = information.get_metrics(dataset, 'x-test') | ||||
|       str2 = '{:14s} train : [{:}], valid : [{:}], test : [{:}]'.format(dataset, metric2str(train_info['loss'], train_info['accuracy']), metric2str(valid_info['loss'], valid_info['accuracy']), metric2str(test__info['loss'], test__info['accuracy'])) | ||||
|     strings += [str1, str2] | ||||
|   if show: print('\n'.join(strings)) | ||||
|   return strings | ||||
|  | ||||
|  | ||||
| """ | ||||
| This is the class for the API of NAS-Bench-301. | ||||
| """ | ||||
| class NASBench301API(NASBenchMetaAPI): | ||||
|  | ||||
|   """ The initialization function that takes the dataset file path (or a dict loaded from that path) as input. """ | ||||
|   def __init__(self, file_path_or_dict: Optional[Union[Text, Dict]]=None, verbose: bool=True): | ||||
|     self.filename = None | ||||
|     if file_path_or_dict is None: | ||||
|       file_path_or_dict = os.path.join(os.environ['TORCH_HOME'], ALL_BENCHMARK_FILES[-1]) | ||||
|     if isinstance(file_path_or_dict, str) or isinstance(file_path_or_dict, Path): | ||||
|       file_path_or_dict = str(file_path_or_dict) | ||||
|       if verbose: print('try to create the NAS-Bench-201 api from {:}'.format(file_path_or_dict)) | ||||
|       assert os.path.isfile(file_path_or_dict), 'invalid path : {:}'.format(file_path_or_dict) | ||||
|       self.filename = Path(file_path_or_dict).name | ||||
|       file_path_or_dict = torch.load(file_path_or_dict, map_location='cpu') | ||||
|     elif isinstance(file_path_or_dict, dict): | ||||
|       file_path_or_dict = copy.deepcopy( file_path_or_dict ) | ||||
|     else: raise ValueError('invalid type : {:} not in [str, dict]'.format(type(file_path_or_dict))) | ||||
|     assert isinstance(file_path_or_dict, dict), 'It should be a dict instead of {:}'.format(type(file_path_or_dict)) | ||||
|     self.verbose = verbose # [TODO] a flag indicating whether to print more logs | ||||
|     keys = ('meta_archs', 'arch2infos', 'evaluated_indexes') | ||||
|     for key in keys: assert key in file_path_or_dict, 'Can not find key[{:}] in the dict'.format(key) | ||||
|     self.meta_archs = copy.deepcopy( file_path_or_dict['meta_archs'] ) | ||||
|     # This is a dict mapping each architecture to a dict, where the key is #epochs and the value is ArchResults | ||||
|     self.arch2infos_dict = OrderedDict() | ||||
|     for xkey in sorted(list(file_path_or_dict['arch2infos'].keys())): | ||||
|       all_infos = file_path_or_dict['arch2infos'][xkey] | ||||
|       hp2archres = OrderedDict() | ||||
|       for hp_key, results in all_infos.items(): | ||||
|         hp2archres[hp_key] = ArchResults.create_from_state_dict(results) | ||||
|       self.arch2infos_dict[xkey] = hp2archres | ||||
|     self.evaluated_indexes = sorted(list(file_path_or_dict['evaluated_indexes'])) | ||||
|     self.archstr2index = {} | ||||
|     for idx, arch in enumerate(self.meta_archs): | ||||
|       assert arch not in self.archstr2index, 'This [{:}]-th arch {:} already in the dict ({:}).'.format(idx, arch, self.archstr2index[arch]) | ||||
|       self.archstr2index[ arch ] = idx | ||||
|     if self.verbose: | ||||
|       print('Create NAS-Bench-301 done with {:}/{:} architectures avaliable.'.format(len(self.evaluated_indexes), len(self.meta_archs))) | ||||
|  | ||||
|   def reload(self, archive_root: Text = None, index: int = None): | ||||
|     """Overwrite all information of the 'index'-th architecture in the search space, where the data will be loaded from 'archive_root'. | ||||
|        If index is None, overwrite all ckps. | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call clear_params with archive_root={:} and index={:}'.format(archive_root, index)) | ||||
|     if archive_root is None: | ||||
|       archive_root = os.path.join(os.environ['TORCH_HOME'], ALL_ARCHIVE_DIRS[-1]) | ||||
|     assert os.path.isdir(archive_root), 'invalid directory : {:}'.format(archive_root) | ||||
|     if index is None: | ||||
|       indexes = list(range(len(self))) | ||||
|     else: | ||||
|       indexes = [index] | ||||
|     for idx in indexes: | ||||
|       assert 0 <= idx < len(self.meta_archs), 'invalid index of {:}'.format(idx) | ||||
|       xfile_path = os.path.join(archive_root, '{:06d}-FULL.pth'.format(idx)) | ||||
|       if not os.path.isfile(xfile_path): | ||||
|         xfile_path = os.path.join(archive_root, '{:d}-FULL.pth'.format(idx)) | ||||
|       assert os.path.isfile(xfile_path), 'invalid data path : {:}'.format(xfile_path) | ||||
|       xdata = torch.load(xfile_path, map_location='cpu') | ||||
|       assert isinstance(xdata, dict), 'invalid format of data in {:}'.format(xfile_path) | ||||
|  | ||||
|       hp2archres = OrderedDict() | ||||
|       for hp_key, results in xdata.items(): | ||||
|         hp2archres[hp_key] = ArchResults.create_from_state_dict(results) | ||||
|       self.arch2infos_dict[idx] = hp2archres | ||||
|  | ||||
|   def query_info_str_by_arch(self, arch, hp: Text='12'): | ||||
|     """ This function is used to query the information of a specific architecture | ||||
|         'arch' can be an architecture index or an architecture string | ||||
|         When hp=01, the hyper-parameters used to train a model are in 'configs/nas-benchmark/hyper-opts/01E.config' | ||||
|         When hp=12, the hyper-parameters used to train a model are in 'configs/nas-benchmark/hyper-opts/12E.config' | ||||
|         When hp=90, the hyper-parameters used to train a model are in 'configs/nas-benchmark/hyper-opts/90E.config' | ||||
|         The difference between these three configurations are the number of training epochs. | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call query_info_str_by_arch with arch={:} and hp={:}'.format(arch, hp)) | ||||
|     self._query_info_str_by_arch(arch, hp, print_information) | ||||
|  | ||||
|   def get_more_info(self, index: int, dataset: Text, iepoch=None, hp='12', is_random=True): | ||||
|     """This function will return the metric for the `index`-th architecture | ||||
|        `dataset` indicates the dataset: | ||||
|           'cifar10-valid'  : using the proposed train set of CIFAR-10 as the training set | ||||
|           'cifar10'        : using the proposed train+valid set of CIFAR-10 as the training set | ||||
|           'cifar100'       : using the proposed train set of CIFAR-100 as the training set | ||||
|           'ImageNet16-120' : using the proposed train set of ImageNet-16-120 as the training set | ||||
|         `iepoch` indicates the index of training epochs from 0 to 11/199. | ||||
|           When iepoch=None, it will return the metric for the last training epoch | ||||
|           When iepoch=11, it will return the metric for the 11-th training epoch (starting from 0) | ||||
|         `hp` indicates different hyper-parameters for training | ||||
|           When hp=01, it trains the network with 01 epochs and the LR decayed from 0.1 to 0 within 01 epochs | ||||
|           When hp=12, it trains the network with 01 epochs and the LR decayed from 0.1 to 0 within 12 epochs | ||||
|           When hp=90, it trains the network with 01 epochs and the LR decayed from 0.1 to 0 within 90 epochs | ||||
|         `is_random` | ||||
|           When is_random=True, the performance of a random architecture will be returned | ||||
|           When is_random=False, the performanceo of all trials will be averaged. | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call the get_more_info function with index={:}, dataset={:}, iepoch={:}, hp={:}, and is_random={:}.'.format(index, dataset, iepoch, hp, is_random)) | ||||
|     archresult = self.arch2infos_dict[index][str(hp)] | ||||
|     # if randomly select one trial, select the seed at first | ||||
|     if isinstance(is_random, bool) and is_random: | ||||
|       seeds = archresult.get_dataset_seeds(dataset) | ||||
|       is_random = random.choice(seeds) | ||||
|     # collect the training information | ||||
|     train_info = archresult.get_metrics(dataset, 'train', iepoch=iepoch, is_random=is_random) | ||||
|     total = train_info['iepoch'] + 1 | ||||
|     xinfo = {'train-loss'    : train_info['loss'], | ||||
|              'train-accuracy': train_info['accuracy'], | ||||
|              'train-per-time': train_info['all_time'] / total, | ||||
|              'train-all-time': train_info['all_time']} | ||||
|     # collect the evaluation information | ||||
|     if dataset == 'cifar10-valid': | ||||
|       valid_info = archresult.get_metrics(dataset, 'x-valid', iepoch=iepoch, is_random=is_random) | ||||
|       try: | ||||
|         test_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test_info = None | ||||
|       valtest_info = None | ||||
|     else: | ||||
|       try: # collect results on the proposed test set | ||||
|         if dataset == 'cifar10': | ||||
|           test_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|         else: | ||||
|           test_info = archresult.get_metrics(dataset, 'x-test', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         test_info = None | ||||
|       try: # collect results on the proposed validation set | ||||
|         valid_info = archresult.get_metrics(dataset, 'x-valid', iepoch=iepoch, is_random=is_random) | ||||
|       except: | ||||
|         valid_info = None | ||||
|       try: | ||||
|         if dataset != 'cifar10': | ||||
|           valtest_info = archresult.get_metrics(dataset, 'ori-test', iepoch=iepoch, is_random=is_random) | ||||
|         else: | ||||
|           valtest_info = None | ||||
|       except: | ||||
|         valtest_info = None | ||||
|     if valid_info is not None: | ||||
|       xinfo['valid-loss'] = valid_info['loss'] | ||||
|       xinfo['valid-accuracy'] = valid_info['accuracy'] | ||||
|       xinfo['valid-per-time'] = valid_info['all_time'] / total | ||||
|       xinfo['valid-all-time'] = valid_info['all_time'] | ||||
|     if test_info is not None: | ||||
|       xinfo['test-loss'] = test_info['loss'] | ||||
|       xinfo['test-accuracy'] = test_info['accuracy'] | ||||
|       xinfo['test-per-time'] = test_info['all_time'] / total | ||||
|       xinfo['test-all-time'] = test_info['all_time'] | ||||
|     if valtest_info is not None: | ||||
|       xinfo['valtest-loss'] = valtest_info['loss'] | ||||
|       xinfo['valtest-accuracy'] = valtest_info['accuracy'] | ||||
|       xinfo['valtest-per-time'] = valtest_info['all_time'] / total | ||||
|       xinfo['valtest-all-time'] = valtest_info['all_time'] | ||||
|     return xinfo | ||||
|  | ||||
|   def show(self, index: int = -1) -> None: | ||||
|     """ | ||||
|     This function will print the information of a specific (or all) architecture(s). | ||||
|  | ||||
|     :param index: If the index < 0: it will loop for all architectures and print their information one by one. | ||||
|                   else: it will print the information of the 'index'-th architecture. | ||||
|     :return: nothing | ||||
|     """ | ||||
|     self._show(index, print_information) | ||||
							
								
								
									
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							| @@ -0,0 +1,711 @@ | ||||
| ##################################################### | ||||
| # Copyright (c) Xuanyi Dong [GitHub D-X-Y], 2019.08 # | ||||
| ############################################################################################ | ||||
| # NAS-Bench-201: Extending the Scope of Reproducible Neural Architecture Search, ICLR 2020 # | ||||
| ############################################################################################ | ||||
| # In this Python file, we define NASBenchMetaAPI, the abstract class for benchmark APIs. | ||||
| # We also define the class ArchResults, which contains all information of a single architecture trained by one kind of hyper-parameters on three datasets. | ||||
| # We also define the class ResultsCount, which contains all information of a single trial for a single architecture. | ||||
| ############################################################################################ | ||||
| # History: | ||||
| # [2020.06.30] The first version. | ||||
| # | ||||
| import os, abc, copy, random, torch, numpy as np | ||||
| from pathlib import Path | ||||
| from typing import List, Text, Union, Dict, Optional | ||||
| from collections import OrderedDict, defaultdict | ||||
|  | ||||
|  | ||||
| def remap_dataset_set_names(dataset, metric_on_set, verbose=False): | ||||
|   """re-map the metric_on_set to internal keys""" | ||||
|   if verbose: | ||||
|     print('Call internal function _remap_dataset_set_names with dataset={:} and metric_on_set={:}'.format(dataset, metric_on_set)) | ||||
|   if dataset == 'cifar10' and metric_on_set == 'valid': | ||||
|     dataset, metric_on_set = 'cifar10-valid', 'x-valid' | ||||
|   elif dataset == 'cifar10' and metric_on_set == 'test': | ||||
|     dataset, metric_on_set = 'cifar10', 'ori-test' | ||||
|   elif dataset == 'cifar10' and metric_on_set == 'train': | ||||
|     dataset, metric_on_set = 'cifar10', 'train' | ||||
|   elif (dataset == 'cifar100' or dataset == 'ImageNet16-120') and metric_on_set == 'valid': | ||||
|     metric_on_set = 'x-valid' | ||||
|   elif (dataset == 'cifar100' or dataset == 'ImageNet16-120') and metric_on_set == 'test': | ||||
|     metric_on_set = 'x-test' | ||||
|   if verbose: | ||||
|     print('  return dataset={:} and metric_on_set={:}'.format(dataset, metric_on_set)) | ||||
|   return dataset, metric_on_set | ||||
|  | ||||
|  | ||||
| class NASBenchMetaAPI(metaclass=abc.ABCMeta): | ||||
|  | ||||
|   @abc.abstractmethod | ||||
|   def __init__(self, file_path_or_dict: Optional[Union[Text, Dict]]=None, verbose: bool=True): | ||||
|     """The initialization function that takes the dataset file path (or a dict loaded from that path) as input.""" | ||||
|  | ||||
|   def __getitem__(self, index: int): | ||||
|     return copy.deepcopy(self.meta_archs[index]) | ||||
|  | ||||
|   def arch(self, index: int): | ||||
|     """Return the topology structure of the `index`-th architecture.""" | ||||
|     if self.verbose: | ||||
|       print('Call the arch function with index={:}'.format(index)) | ||||
|     assert 0 <= index < len(self.meta_archs), 'invalid index : {:} vs. {:}.'.format(index, len(self.meta_archs)) | ||||
|     return copy.deepcopy(self.meta_archs[index]) | ||||
|  | ||||
|   def __len__(self): | ||||
|     return len(self.meta_archs) | ||||
|  | ||||
|   def __repr__(self): | ||||
|     return ('{name}({num}/{total} architectures, file={filename})'.format(name=self.__class__.__name__, num=len(self.evaluated_indexes), total=len(self.meta_archs), filename=self.filename)) | ||||
|  | ||||
|   def random(self): | ||||
|     """Return a random index of all architectures.""" | ||||
|     return random.randint(0, len(self.meta_archs)-1) | ||||
|  | ||||
|   def query_index_by_arch(self, arch): | ||||
|     """ This function is used to query the index of an architecture in the search space. | ||||
|         In the topology search space, the input arch can be an architecture string such as '|nor_conv_3x3~0|+|nor_conv_3x3~0|avg_pool_3x3~1|+|skip_connect~0|nor_conv_3x3~1|skip_connect~2|'; | ||||
|           or an instance that has the 'tostr' function that can generate the architecture string; | ||||
|           or it is directly an architecture index, in this case, we will check whether it is valid or not. | ||||
|         This function will return the index. | ||||
|         If return -1, it means this architecture is not in the search space. | ||||
|         Otherwise, it will return an int in [0, the-number-of-candidates-in-the-search-space). | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call query_index_by_arch with arch={:}'.format(arch)) | ||||
|     if isinstance(arch, int): | ||||
|       if 0 <= arch < len(self): | ||||
|         return arch | ||||
|       else: | ||||
|         raise ValueError('Invalid architecture index {:} vs [{:}, {:}].'.format(arch, 0, len(self))) | ||||
|     elif isinstance(arch, str): | ||||
|       if arch in self.archstr2index: arch_index = self.archstr2index[ arch ] | ||||
|       else                         : arch_index = -1 | ||||
|     elif hasattr(arch, 'tostr'): | ||||
|       if arch.tostr() in self.archstr2index: arch_index = self.archstr2index[ arch.tostr() ] | ||||
|       else                                 : arch_index = -1 | ||||
|     else: arch_index = -1 | ||||
|     return arch_index | ||||
|  | ||||
|   @abc.abstractmethod | ||||
|   def reload(self, archive_root: Text = None, index: int = None): | ||||
|     """Overwrite all information of the 'index'-th architecture in the search space, where the data will be loaded from 'archive_root'. | ||||
|        If index is None, overwrite all ckps. | ||||
|     """ | ||||
|  | ||||
|   def clear_params(self, index: int, hp: Optional[Text]=None): | ||||
|     """Remove the architecture's weights to save memory. | ||||
|     :arg | ||||
|       index: the index of the target architecture | ||||
|       hp: a flag to controll how to clear the parameters. | ||||
|         -- None: clear all the weights in '01'/'12'/'90', which indicates the number of training epochs. | ||||
|         -- '01' or '12' or '90': clear all the weights in arch2infos_dict[index][hp]. | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call clear_params with index={:} and hp={:}'.format(index, hp)) | ||||
|     if hp is None: | ||||
|       for key, result in self.arch2infos_dict[index].items(): | ||||
|         result.clear_params() | ||||
|     else: | ||||
|       if str(hp) not in self.arch2infos_dict[index]: | ||||
|         raise ValueError('The {:}-th architecture only has hyper-parameters of {:} instead of {:}.'.format(index, list(self.arch2infos_dict[index].keys()), hp)) | ||||
|       self.arch2infos_dict[index][str(hp)].clear_params() | ||||
|  | ||||
|   @abc.abstractmethod | ||||
|   def query_info_str_by_arch(self, arch, hp: Text='12'): | ||||
|     """This function is used to query the information of a specific architecture.""" | ||||
|  | ||||
|   def _query_info_str_by_arch(self, arch, hp: Text='12', print_information=None): | ||||
|     arch_index = self.query_index_by_arch(arch) | ||||
|     if arch_index in self.arch2infos_dict: | ||||
|       if hp not in self.arch2infos_dict[arch_index]: | ||||
|         raise ValueError('The {:}-th architecture only has hyper-parameters of {:} instead of {:}.'.format(index, list(self.arch2infos_dict[arch_index].keys()), hp)) | ||||
|       info = self.arch2infos_dict[arch_index][hp] | ||||
|       strings = print_information(info, 'arch-index={:}'.format(arch_index)) | ||||
|       return '\n'.join(strings) | ||||
|     else: | ||||
|       print ('Find this arch-index : {:}, but this arch is not evaluated.'.format(arch_index)) | ||||
|       return None | ||||
|  | ||||
|   def query_meta_info_by_index(self, arch_index, hp: Text = '12'): | ||||
|     """Return the ArchResults for the 'arch_index'-th architecture. This function is similar to query_by_index.""" | ||||
|     if self.verbose: | ||||
|       print('Call query_meta_info_by_index with arch_index={:}, hp={:}'.format(arch_index, hp)) | ||||
|     if arch_index in self.arch2infos_dict: | ||||
|       if hp not in self.arch2infos_dict[arch_index]: | ||||
|         raise ValueError('The {:}-th architecture only has hyper-parameters of {:} instead of {:}.'.format(arch_index, list(self.arch2infos_dict[arch_index].keys()), hp)) | ||||
|       info = self.arch2infos_dict[arch_index][hp] | ||||
|     else: | ||||
|       raise ValueError('arch_index [{:}] does not in arch2infos'.format(arch_index)) | ||||
|     return copy.deepcopy(info) | ||||
|  | ||||
|   def query_by_index(self, arch_index: int, dataname: Union[None, Text] = None, hp: Text = '12'): | ||||
|     """ This 'query_by_index' function is used to query information with the training of 01 epochs, 12 epochs, 90 epochs, or 200 epochs. | ||||
|         ------ | ||||
|         If hp=01, we train the model by 01 epochs (see config in configs/nas-benchmark/hyper-opts/01E.config) | ||||
|         If hp=12, we train the model by 01 epochs (see config in configs/nas-benchmark/hyper-opts/12E.config) | ||||
|         If hp=90, we train the model by 01 epochs (see config in configs/nas-benchmark/hyper-opts/90E.config) | ||||
|         If hp=200, we train the model by 01 epochs (see config in configs/nas-benchmark/hyper-opts/200E.config) | ||||
|         ------ | ||||
|         If dataname is None, return the ArchResults | ||||
|           else, return a dict with all trials on that dataset (the key is the seed) | ||||
|         Options are 'cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120'. | ||||
|         -- cifar10-valid : training the model on the CIFAR-10 training set. | ||||
|         -- cifar10 : training the model on the CIFAR-10 training + validation set. | ||||
|         -- cifar100 : training the model on the CIFAR-100 training set. | ||||
|         -- ImageNet16-120 : training the model on the ImageNet16-120 training set. | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call query_by_index with arch_index={:}, dataname={:}, hp={:}'.format(arch_index, dataname, hp)) | ||||
|     info = self.query_meta_info_by_index(arch_index, hp) | ||||
|     if dataname is None: return info | ||||
|     else: | ||||
|       if dataname not in info.get_dataset_names(): | ||||
|         raise ValueError('invalid dataset-name : {:} vs. {:}'.format(dataname, info.get_dataset_names())) | ||||
|       return info.query(dataname) | ||||
|  | ||||
|   def find_best(self, dataset, metric_on_set, FLOP_max=None, Param_max=None, hp: Text = '12'): | ||||
|     """Find the architecture with the highest accuracy based on some constraints.""" | ||||
|     if self.verbose: | ||||
|       print('Call find_best with dataset={:}, metric_on_set={:}, hp={:} | with #FLOPs < {:} and #Params < {:}'.format(dataset, metric_on_set, hp, FLOP_max, Param_max)) | ||||
|     dataset, metric_on_set = remap_dataset_set_names(dataset, metric_on_set, self.verbose) | ||||
|     best_index, highest_accuracy = -1, None | ||||
|     for i, arch_index in enumerate(self.evaluated_indexes): | ||||
|       arch_info = self.arch2infos_dict[arch_index][hp] | ||||
|       info = arch_info.get_compute_costs(dataset)  # the information of costs | ||||
|       flop, param, latency = info['flops'], info['params'], info['latency'] | ||||
|       if FLOP_max  is not None and flop  > FLOP_max : continue | ||||
|       if Param_max is not None and param > Param_max: continue | ||||
|       xinfo = arch_info.get_metrics(dataset, metric_on_set)  # the information of loss and accuracy | ||||
|       loss, accuracy = xinfo['loss'], xinfo['accuracy'] | ||||
|       if best_index == -1: | ||||
|         best_index, highest_accuracy = arch_index, accuracy | ||||
|       elif highest_accuracy < accuracy: | ||||
|         best_index, highest_accuracy = arch_index, accuracy | ||||
|     if self.verbose: | ||||
|       print('  the best architecture : [{:}] {:} with accuracy={:.3f}%'.format(best_index, self.arch(best_index), highest_accuracy)) | ||||
|     return best_index, highest_accuracy | ||||
|  | ||||
|   def get_net_param(self, index, dataset, seed: Optional[int], hp: Text = '12'): | ||||
|     """ | ||||
|       This function is used to obtain the trained weights of the `index`-th architecture on `dataset` with the seed of `seed` | ||||
|       Args [seed]: | ||||
|         -- None : return a dict containing the trained weights of all trials, where each key is a seed and its corresponding value is the weights. | ||||
|         -- a interger : return the weights of a specific trial, whose seed is this interger. | ||||
|       Args [hp]: | ||||
|         -- 01 : train the model by 01 epochs | ||||
|         -- 12 : train the model by 12 epochs | ||||
|         -- 90 : train the model by 90 epochs | ||||
|         -- 200 : train the model by 200 epochs | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call the get_net_param function with index={:}, dataset={:}, seed={:}, hp={:}'.format(index, dataset, seed, hp)) | ||||
|     info = self.query_meta_info_by_index(index, hp) | ||||
|     return info.get_net_param(dataset, seed) | ||||
|  | ||||
|   def get_net_config(self, index: int, dataset: Text): | ||||
|     """ | ||||
|       This function is used to obtain the configuration for the `index`-th architecture on `dataset`. | ||||
|       Args [dataset] (4 possible options): | ||||
|         -- cifar10-valid : training the model on the CIFAR-10 training set. | ||||
|         -- cifar10 : training the model on the CIFAR-10 training + validation set. | ||||
|         -- cifar100 : training the model on the CIFAR-100 training set. | ||||
|         -- ImageNet16-120 : training the model on the ImageNet16-120 training set. | ||||
|       This function will return a dict. | ||||
|       ========= Some examlpes for using this function: | ||||
|       config = api.get_net_config(128, 'cifar10') | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call the get_net_config function with index={:}, dataset={:}.'.format(index, dataset)) | ||||
|     if index in self.arch2infos_dict: | ||||
|       info = self.arch2infos_dict[index] | ||||
|     else: | ||||
|       raise ValueError('The arch_index={:} is not in arch2infos_dict.'.format(arch_index)) | ||||
|     info = next(iter(info.values())) | ||||
|     results = info.query(dataset, None) | ||||
|     results = next(iter(results.values())) | ||||
|     return results.get_config(None) | ||||
|    | ||||
|   def get_cost_info(self, index: int, dataset: Text, hp: Text = '12') -> Dict[Text, float]: | ||||
|     """To obtain the cost metric for the `index`-th architecture on a dataset.""" | ||||
|     if self.verbose: | ||||
|       print('Call the get_cost_info function with index={:}, dataset={:}, and hp={:}.'.format(index, dataset, hp)) | ||||
|     info = self.query_meta_info_by_index(index, hp) | ||||
|     return info.get_compute_costs(dataset) | ||||
|  | ||||
|   def get_latency(self, index: int, dataset: Text, hp: Text = '12') -> float: | ||||
|     """ | ||||
|     To obtain the latency of the network (by default it will return the latency with the batch size of 256). | ||||
|     :param index: the index of the target architecture | ||||
|     :param dataset: the dataset name (cifar10-valid, cifar10, cifar100, ImageNet16-120) | ||||
|     :return: return a float value in seconds | ||||
|     """ | ||||
|     if self.verbose: | ||||
|       print('Call the get_latency function with index={:}, dataset={:}, and hp={:}.'.format(index, dataset, hp)) | ||||
|     cost_dict = self.get_cost_info(index, dataset, hp) | ||||
|     return cost_dict['latency'] | ||||
|  | ||||
|   @abc.abstractmethod | ||||
|   def show(self, index=-1): | ||||
|     """This function will print the information of a specific (or all) architecture(s).""" | ||||
|  | ||||
|   def _show(self, index=-1, print_information=None) -> None: | ||||
|     """ | ||||
|     This function will print the information of a specific (or all) architecture(s). | ||||
|  | ||||
|     :param index: If the index < 0: it will loop for all architectures and print their information one by one. | ||||
|                   else: it will print the information of the 'index'-th architecture. | ||||
|     :return: nothing | ||||
|     """ | ||||
|     if index < 0: # show all architectures | ||||
|       print(self) | ||||
|       for i, idx in enumerate(self.evaluated_indexes): | ||||
|         print('\n' + '-' * 10 + ' The ({:5d}/{:5d}) {:06d}-th architecture! '.format(i, len(self.evaluated_indexes), idx) + '-'*10) | ||||
|         print('arch : {:}'.format(self.meta_archs[idx])) | ||||
|         for key, result in self.arch2infos_dict[index].items(): | ||||
|           strings = print_information(result) | ||||
|           print('>' * 40 + ' {:03d} epochs '.format(result.get_total_epoch()) + '>' * 40) | ||||
|           print('\n'.join(strings)) | ||||
|         print('<' * 40 + '------------' + '<' * 40) | ||||
|     else: | ||||
|       if 0 <= index < len(self.meta_archs): | ||||
|         if index not in self.evaluated_indexes: print('The {:}-th architecture has not been evaluated or not saved.'.format(index)) | ||||
|         else: | ||||
|           arch_info = self.arch2infos_dict[index] | ||||
|           for key, result in self.arch2infos_dict[index].items(): | ||||
|             strings = print_information(result) | ||||
|             print('>' * 40 + ' {:03d} epochs '.format(result.get_total_epoch()) + '>' * 40) | ||||
|             print('\n'.join(strings)) | ||||
|           print('<' * 40 + '------------' + '<' * 40) | ||||
|       else: | ||||
|         print('This index ({:}) is out of range (0~{:}).'.format(index, len(self.meta_archs))) | ||||
|  | ||||
|   def statistics(self, dataset: Text, hp: Union[Text, int]) -> Dict[int, int]: | ||||
|     """This function will count the number of total trials.""" | ||||
|     if self.verbose: | ||||
|       print('Call the statistics function with dataset={:} and hp={:}.'.format(dataset, hp)) | ||||
|     valid_datasets = ['cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120'] | ||||
|     if dataset not in valid_datasets: | ||||
|       raise ValueError('{:} not in {:}'.format(dataset, valid_datasets)) | ||||
|     nums, hp = defaultdict(lambda: 0), str(hp) | ||||
|     for index in range(len(self)): | ||||
|       archInfo = self.arch2infos_dict[index][hp] | ||||
|       dataset_seed = archInfo.dataset_seed | ||||
|       if dataset not in dataset_seed: | ||||
|         nums[0] += 1 | ||||
|       else: | ||||
|         nums[len(dataset_seed[dataset])] += 1 | ||||
|     return dict(nums) | ||||
|  | ||||
|  | ||||
| class ArchResults(object): | ||||
|  | ||||
|   def __init__(self, arch_index, arch_str): | ||||
|     self.arch_index   = int(arch_index) | ||||
|     self.arch_str     = copy.deepcopy(arch_str) | ||||
|     self.all_results  = dict() | ||||
|     self.dataset_seed = dict() | ||||
|     self.clear_net_done = False | ||||
|  | ||||
|   def get_compute_costs(self, dataset): | ||||
|     x_seeds = self.dataset_seed[dataset] | ||||
|     results = [self.all_results[ (dataset, seed) ] for seed in x_seeds] | ||||
|  | ||||
|     flops     = [result.flop for result in results] | ||||
|     params    = [result.params for result in results] | ||||
|     latencies = [result.get_latency() for result in results] | ||||
|     latencies = [x for x in latencies if x > 0] | ||||
|     mean_latency = np.mean(latencies) if len(latencies) > 0 else None | ||||
|     time_infos = defaultdict(list) | ||||
|     for result in results: | ||||
|       time_info = result.get_times() | ||||
|       for key, value in time_info.items(): time_infos[key].append( value ) | ||||
|       | ||||
|     info = {'flops'  : np.mean(flops), | ||||
|             'params' : np.mean(params), | ||||
|             'latency': mean_latency} | ||||
|     for key, value in time_infos.items(): | ||||
|       if len(value) > 0 and value[0] is not None: | ||||
|         info[key] = np.mean(value) | ||||
|       else: info[key] = None | ||||
|     return info | ||||
|  | ||||
|   def get_metrics(self, dataset, setname, iepoch=None, is_random=False): | ||||
|     """ | ||||
|       This `get_metrics` function is used to obtain obtain the loss, accuracy, etc information on a specific dataset. | ||||
|       If not specify, each set refer to the proposed split in NAS-Bench-201 paper. | ||||
|       If some args return None or raise error, then it is not avaliable. | ||||
|       ======================================== | ||||
|       Args [dataset] (4 possible options): | ||||
|         -- cifar10-valid : training the model on the CIFAR-10 training set. | ||||
|         -- cifar10 : training the model on the CIFAR-10 training + validation set. | ||||
|         -- cifar100 : training the model on the CIFAR-100 training set. | ||||
|         -- ImageNet16-120 : training the model on the ImageNet16-120 training set. | ||||
|       Args [setname] (each dataset has different setnames): | ||||
|         -- When dataset = cifar10-valid, you can use 'train', 'x-valid', 'ori-test' | ||||
|         ------ 'train' : the metric on the training set. | ||||
|         ------ 'x-valid' : the metric on the validation set. | ||||
|         ------ 'ori-test' : the metric on the test set. | ||||
|         -- When dataset = cifar10, you can use 'train', 'ori-test'. | ||||
|         ------ 'train' : the metric on the training + validation set. | ||||
|         ------ 'ori-test' : the metric on the test set. | ||||
|         -- When dataset = cifar100 or ImageNet16-120, you can use 'train', 'ori-test', 'x-valid', 'x-test' | ||||
|         ------ 'train' : the metric on the training set. | ||||
|         ------ 'x-valid' : the metric on the validation set. | ||||
|         ------ 'x-test' : the metric on the test set. | ||||
|         ------ 'ori-test' : the metric on the validation + test set. | ||||
|       Args [iepoch] (None or an integer in [0, the-number-of-total-training-epochs) | ||||
|         ------ None : return the metric after the last training epoch. | ||||
|         ------ an integer i : return the metric after the i-th training epoch. | ||||
|       Args [is_random]: | ||||
|         ------ True : return the metric of a randomly selected trial. | ||||
|         ------ False : return the averaged metric of all avaliable trials. | ||||
|         ------ an integer indicating the 'seed' value : return the metric of a specific trial (whose random seed is 'is_random'). | ||||
|     """ | ||||
|     x_seeds = self.dataset_seed[dataset] | ||||
|     results = [self.all_results[ (dataset, seed) ] for seed in x_seeds] | ||||
|     infos   = defaultdict(list) | ||||
|     for result in results: | ||||
|       if setname == 'train': | ||||
|         info = result.get_train(iepoch) | ||||
|       else: | ||||
|         info = result.get_eval(setname, iepoch) | ||||
|       for key, value in info.items(): infos[key].append( value ) | ||||
|     return_info = dict() | ||||
|     if isinstance(is_random, bool) and is_random: # randomly select one | ||||
|       index = random.randint(0, len(results)-1) | ||||
|       for key, value in infos.items(): return_info[key] = value[index] | ||||
|     elif isinstance(is_random, bool) and not is_random: # average | ||||
|       for key, value in infos.items(): | ||||
|         if len(value) > 0 and value[0] is not None: | ||||
|           return_info[key] = np.mean(value) | ||||
|         else: return_info[key] = None | ||||
|     elif isinstance(is_random, int): # specify the seed | ||||
|       if is_random not in x_seeds: raise ValueError('can not find random seed ({:}) from {:}'.format(is_random, x_seeds)) | ||||
|       index = x_seeds.index(is_random) | ||||
|       for key, value in infos.items(): return_info[key] = value[index] | ||||
|     else: | ||||
|       raise ValueError('invalid value for is_random: {:}'.format(is_random)) | ||||
|     return return_info | ||||
|  | ||||
|   def show(self, is_print=False): | ||||
|     return print_information(self, None, is_print) | ||||
|  | ||||
|   def get_dataset_names(self): | ||||
|     return list(self.dataset_seed.keys()) | ||||
|  | ||||
|   def get_dataset_seeds(self, dataset): | ||||
|     return copy.deepcopy( self.dataset_seed[dataset] ) | ||||
|  | ||||
|   def get_net_param(self, dataset: Text, seed: Union[None, int] =None): | ||||
|     """ | ||||
|     This function will return the trained network's weights on the 'dataset'. | ||||
|     :arg | ||||
|       dataset: one of 'cifar10-valid', 'cifar10', 'cifar100', and 'ImageNet16-120'. | ||||
|       seed: an integer indicates the seed value or None that indicates returing all trials. | ||||
|     """ | ||||
|     if seed is None: | ||||
|       x_seeds = self.dataset_seed[dataset] | ||||
|       return {seed: self.all_results[(dataset, seed)].get_net_param() for seed in x_seeds} | ||||
|     else: | ||||
|       return self.all_results[(dataset, seed)].get_net_param() | ||||
|  | ||||
|   def reset_latency(self, dataset: Text, seed: Union[None, Text], latency: float) -> None: | ||||
|     """This function is used to reset the latency in all corresponding ResultsCount(s).""" | ||||
|     if seed is None: | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         self.all_results[(dataset, seed)].update_latency([latency]) | ||||
|     else: | ||||
|       self.all_results[(dataset, seed)].update_latency([latency]) | ||||
|  | ||||
|   def reset_pseudo_train_times(self, dataset: Text, seed: Union[None, Text], estimated_per_epoch_time: float) -> None: | ||||
|     """This function is used to reset the train-times in all corresponding ResultsCount(s).""" | ||||
|     if seed is None: | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         self.all_results[(dataset, seed)].reset_pseudo_train_times(estimated_per_epoch_time) | ||||
|     else: | ||||
|       self.all_results[(dataset, seed)].reset_pseudo_train_times(estimated_per_epoch_time) | ||||
|  | ||||
|   def reset_pseudo_eval_times(self, dataset: Text, seed: Union[None, Text], eval_name: Text, estimated_per_epoch_time: float) -> None: | ||||
|     """This function is used to reset the eval-times in all corresponding ResultsCount(s).""" | ||||
|     if seed is None: | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         self.all_results[(dataset, seed)].reset_pseudo_eval_times(eval_name, estimated_per_epoch_time) | ||||
|     else: | ||||
|       self.all_results[(dataset, seed)].reset_pseudo_eval_times(eval_name, estimated_per_epoch_time) | ||||
|  | ||||
|   def get_latency(self, dataset: Text) -> float: | ||||
|     """Get the latency of a model on the target dataset. [Timestamp: 2020.03.09]""" | ||||
|     latencies = [] | ||||
|     for seed in self.dataset_seed[dataset]: | ||||
|       latency = self.all_results[(dataset, seed)].get_latency() | ||||
|       if not isinstance(latency, float) or latency <= 0: | ||||
|         raise ValueError('invalid latency of {:} with seed={:} : {:}'.format(dataset, seed, latency)) | ||||
|       latencies.append(latency) | ||||
|     return sum(latencies) / len(latencies) | ||||
|  | ||||
|   def get_total_epoch(self, dataset=None): | ||||
|     """Return the total number of training epochs.""" | ||||
|     if dataset is None: | ||||
|       epochss = [] | ||||
|       for xdata, x_seeds in self.dataset_seed.items(): | ||||
|         epochss += [self.all_results[(xdata, seed)].get_total_epoch() for seed in x_seeds] | ||||
|     elif isinstance(dataset, str): | ||||
|       x_seeds = self.dataset_seed[dataset] | ||||
|       epochss = [self.all_results[(dataset, seed)].get_total_epoch() for seed in x_seeds] | ||||
|     else: | ||||
|       raise ValueError('invalid dataset={:}'.format(dataset)) | ||||
|     if len(set(epochss)) > 1: raise ValueError('Each trial mush have the same number of training epochs : {:}'.format(epochss)) | ||||
|     return epochss[-1] | ||||
|  | ||||
|   def query(self, dataset, seed=None): | ||||
|     """Return the ResultsCount object (containing all information of a single trial) for 'dataset' and 'seed'""" | ||||
|     if seed is None: | ||||
|       x_seeds = self.dataset_seed[dataset] | ||||
|       return {seed: self.all_results[(dataset, seed)] for seed in x_seeds} | ||||
|     else: | ||||
|       return self.all_results[(dataset, seed)] | ||||
|  | ||||
|   def arch_idx_str(self): | ||||
|     return '{:06d}'.format(self.arch_index) | ||||
|  | ||||
|   def update(self, dataset_name, seed, result): | ||||
|     if dataset_name not in self.dataset_seed: | ||||
|       self.dataset_seed[dataset_name] = [] | ||||
|     assert seed not in self.dataset_seed[dataset_name], '{:}-th arch alreadly has this seed ({:}) on {:}'.format(self.arch_index, seed, dataset_name) | ||||
|     self.dataset_seed[ dataset_name ].append( seed ) | ||||
|     self.dataset_seed[ dataset_name ] = sorted( self.dataset_seed[ dataset_name ] ) | ||||
|     assert (dataset_name, seed) not in self.all_results | ||||
|     self.all_results[ (dataset_name, seed) ] = result | ||||
|     self.clear_net_done = False | ||||
|  | ||||
|   def state_dict(self): | ||||
|     state_dict = dict() | ||||
|     for key, value in self.__dict__.items(): | ||||
|       if key == 'all_results': # contain the class of ResultsCount | ||||
|         xvalue = dict() | ||||
|         assert isinstance(value, dict), 'invalid type of value for {:} : {:}'.format(key, type(value)) | ||||
|         for _k, _v in value.items(): | ||||
|           assert isinstance(_v, ResultsCount), 'invalid type of value for {:}/{:} : {:}'.format(key, _k, type(_v)) | ||||
|           xvalue[_k] = _v.state_dict() | ||||
|       else: | ||||
|         xvalue = value | ||||
|       state_dict[key] = xvalue | ||||
|     return state_dict | ||||
|  | ||||
|   def load_state_dict(self, state_dict): | ||||
|     new_state_dict = dict() | ||||
|     for key, value in state_dict.items(): | ||||
|       if key == 'all_results': # to convert to the class of ResultsCount | ||||
|         xvalue = dict() | ||||
|         assert isinstance(value, dict), 'invalid type of value for {:} : {:}'.format(key, type(value)) | ||||
|         for _k, _v in value.items(): | ||||
|           xvalue[_k] = ResultsCount.create_from_state_dict(_v) | ||||
|       else: xvalue = value | ||||
|       new_state_dict[key] = xvalue | ||||
|     self.__dict__.update(new_state_dict) | ||||
|  | ||||
|   @staticmethod | ||||
|   def create_from_state_dict(state_dict_or_file): | ||||
|     x = ArchResults(-1, -1) | ||||
|     if isinstance(state_dict_or_file, str): # a file path | ||||
|       state_dict = torch.load(state_dict_or_file, map_location='cpu') | ||||
|     elif isinstance(state_dict_or_file, dict): | ||||
|       state_dict = state_dict_or_file | ||||
|     else: | ||||
|       raise ValueError('invalid type of state_dict_or_file : {:}'.format(type(state_dict_or_file))) | ||||
|     x.load_state_dict(state_dict) | ||||
|     return x | ||||
|  | ||||
|   # This function is used to clear the weights saved in each 'result' | ||||
|   # This can help reduce the memory footprint. | ||||
|   def clear_params(self): | ||||
|     for key, result in self.all_results.items(): | ||||
|       del result.net_state_dict | ||||
|       result.net_state_dict = None | ||||
|     self.clear_net_done = True | ||||
|  | ||||
|   def debug_test(self): | ||||
|     """This function is used for me to debug and test, which will call most methods.""" | ||||
|     all_dataset = ['cifar10-valid', 'cifar10', 'cifar100', 'ImageNet16-120'] | ||||
|     for dataset in all_dataset: | ||||
|       print('---->>>> {:}'.format(dataset)) | ||||
|       print('The latency on {:} is {:} s'.format(dataset, self.get_latency(dataset))) | ||||
|       for seed in self.dataset_seed[dataset]: | ||||
|         result = self.all_results[(dataset, seed)] | ||||
|         print('  ==>> result = {:}'.format(result)) | ||||
|         print('  ==>> cost = {:}'.format(result.get_times())) | ||||
|  | ||||
|   def __repr__(self): | ||||
|     return ('{name}(arch-index={index}, arch={arch}, {num} runs, clear={clear})'.format(name=self.__class__.__name__, index=self.arch_index, arch=self.arch_str, num=len(self.all_results), clear=self.clear_net_done)) | ||||
|  | ||||
|  | ||||
| """ | ||||
| This class (ResultsCount) is used to save the information of one trial for a single architecture. | ||||
| I did not write much comment for this class, because it is the lowest-level class in NAS-Bench-201 API, which will be rarely called. | ||||
| If you have any question regarding this class, please open an issue or email me. | ||||
| """ | ||||
| class ResultsCount(object): | ||||
|  | ||||
|   def __init__(self, name, state_dict, train_accs, train_losses, params, flop, arch_config, seed, epochs, latency): | ||||
|     self.name           = name | ||||
|     self.net_state_dict = state_dict | ||||
|     self.train_acc1es = copy.deepcopy(train_accs) | ||||
|     self.train_acc5es = None | ||||
|     self.train_losses = copy.deepcopy(train_losses) | ||||
|     self.train_times  = None | ||||
|     self.arch_config  = copy.deepcopy(arch_config) | ||||
|     self.params     = params | ||||
|     self.flop       = flop | ||||
|     self.seed       = seed | ||||
|     self.epochs     = epochs | ||||
|     self.latency    = latency | ||||
|     # evaluation results | ||||
|     self.reset_eval() | ||||
|  | ||||
|   def update_train_info(self, train_acc1es, train_acc5es, train_losses, train_times) -> None: | ||||
|     self.train_acc1es = train_acc1es | ||||
|     self.train_acc5es = train_acc5es | ||||
|     self.train_losses = train_losses | ||||
|     self.train_times  = train_times | ||||
|  | ||||
|   def reset_pseudo_train_times(self, estimated_per_epoch_time: float) -> None: | ||||
|     """Assign the training times.""" | ||||
|     train_times = OrderedDict() | ||||
|     for i in range(self.epochs): | ||||
|       train_times[i] = estimated_per_epoch_time | ||||
|     self.train_times = train_times | ||||
|  | ||||
|   def reset_pseudo_eval_times(self, eval_name: Text, estimated_per_epoch_time: float) -> None: | ||||
|     """Assign the evaluation times.""" | ||||
|     if eval_name not in self.eval_names: raise ValueError('invalid eval name : {:}'.format(eval_name)) | ||||
|     for i in range(self.epochs): | ||||
|       self.eval_times['{:}@{:}'.format(eval_name,i)] = estimated_per_epoch_time | ||||
|  | ||||
|   def reset_eval(self): | ||||
|     self.eval_names  = [] | ||||
|     self.eval_acc1es = {} | ||||
|     self.eval_times  = {} | ||||
|     self.eval_losses = {} | ||||
|  | ||||
|   def update_latency(self, latency): | ||||
|     self.latency = copy.deepcopy( latency ) | ||||
|  | ||||
|   def get_latency(self) -> float: | ||||
|     """Return the latency value in seconds. -1 represents not avaliable ; otherwise it should be a float value""" | ||||
|     if self.latency is None: return -1.0 | ||||
|     else: return sum(self.latency) / len(self.latency) | ||||
|  | ||||
|   def update_eval(self, accs, losses, times):  # new version | ||||
|     data_names = set([x.split('@')[0] for x in accs.keys()]) | ||||
|     for data_name in data_names: | ||||
|       assert data_name not in self.eval_names, '{:} has already been added into eval-names'.format(data_name) | ||||
|       self.eval_names.append( data_name ) | ||||
|       for iepoch in range(self.epochs): | ||||
|         xkey = '{:}@{:}'.format(data_name, iepoch) | ||||
|         self.eval_acc1es[ xkey ] = accs[ xkey ] | ||||
|         self.eval_losses[ xkey ] = losses[ xkey ] | ||||
|         self.eval_times [ xkey ] = times[ xkey ] | ||||
|  | ||||
|   def update_OLD_eval(self, name, accs, losses): # old version | ||||
|     assert name not in self.eval_names, '{:} has already added'.format(name) | ||||
|     self.eval_names.append( name ) | ||||
|     for iepoch in range(self.epochs): | ||||
|       if iepoch in accs: | ||||
|         self.eval_acc1es['{:}@{:}'.format(name,iepoch)] = accs[iepoch] | ||||
|         self.eval_losses['{:}@{:}'.format(name,iepoch)] = losses[iepoch] | ||||
|  | ||||
|   def __repr__(self): | ||||
|     num_eval = len(self.eval_names) | ||||
|     set_name = '[' + ', '.join(self.eval_names) + ']' | ||||
|     return ('{name}({xname}, arch={arch}, FLOP={flop:.2f}M, Param={param:.3f}MB, seed={seed}, {num_eval} eval-sets: {set_name})'.format(name=self.__class__.__name__, xname=self.name, arch=self.arch_config['arch_str'], flop=self.flop, param=self.params, seed=self.seed, num_eval=num_eval, set_name=set_name)) | ||||
|  | ||||
|   def get_total_epoch(self): | ||||
|     return copy.deepcopy(self.epochs) | ||||
|  | ||||
|   def get_times(self): | ||||
|     """Obtain the information regarding both training and evaluation time.""" | ||||
|     if self.train_times is not None and isinstance(self.train_times, dict): | ||||
|       train_times = list( self.train_times.values() ) | ||||
|       time_info = {'T-train@epoch': np.mean(train_times), 'T-train@total': np.sum(train_times)} | ||||
|     else: | ||||
|       time_info = {'T-train@epoch':                 None, 'T-train@total':               None } | ||||
|     for name in self.eval_names: | ||||
|       try: | ||||
|         xtimes = [self.eval_times['{:}@{:}'.format(name,i)] for i in range(self.epochs)] | ||||
|         time_info['T-{:}@epoch'.format(name)] = np.mean(xtimes) | ||||
|         time_info['T-{:}@total'.format(name)] = np.sum(xtimes) | ||||
|       except: | ||||
|         time_info['T-{:}@epoch'.format(name)] = None | ||||
|         time_info['T-{:}@total'.format(name)] = None | ||||
|     return time_info | ||||
|  | ||||
|   def get_eval_set(self): | ||||
|     return self.eval_names | ||||
|  | ||||
|   # get the training information | ||||
|   def get_train(self, iepoch=None): | ||||
|     if iepoch is None: iepoch = self.epochs-1 | ||||
|     assert 0 <= iepoch < self.epochs, 'invalid iepoch={:} < {:}'.format(iepoch, self.epochs) | ||||
|     if self.train_times is not None: | ||||
|       xtime = self.train_times[iepoch] | ||||
|       atime = sum([self.train_times[i] for i in range(iepoch+1)]) | ||||
|     else: xtime, atime = None, None | ||||
|     return {'iepoch'  : iepoch, | ||||
|             'loss'    : self.train_losses[iepoch], | ||||
|             'accuracy': self.train_acc1es[iepoch], | ||||
|             'cur_time': xtime, | ||||
|             'all_time': atime} | ||||
|  | ||||
|   def get_eval(self, name, iepoch=None): | ||||
|     """Get the evaluation information ; there could be multiple evaluation sets (identified by the 'name' argument).""" | ||||
|     if iepoch is None: iepoch = self.epochs-1 | ||||
|     assert 0 <= iepoch < self.epochs, 'invalid iepoch={:} < {:}'.format(iepoch, self.epochs) | ||||
|     if isinstance(self.eval_times,dict) and len(self.eval_times) > 0: | ||||
|       xtime = self.eval_times['{:}@{:}'.format(name,iepoch)] | ||||
|       atime = sum([self.eval_times['{:}@{:}'.format(name,i)] for i in range(iepoch+1)]) | ||||
|     else: xtime, atime = None, None | ||||
|     return {'iepoch'  : iepoch, | ||||
|             'loss'    : self.eval_losses['{:}@{:}'.format(name,iepoch)], | ||||
|             'accuracy': self.eval_acc1es['{:}@{:}'.format(name,iepoch)], | ||||
|             'cur_time': xtime, | ||||
|             'all_time': atime} | ||||
|  | ||||
|   def get_net_param(self, clone=False): | ||||
|     if clone: return copy.deepcopy(self.net_state_dict) | ||||
|     else: return self.net_state_dict | ||||
|  | ||||
|   def get_config(self, str2structure): | ||||
|     """This function is used to obtain the config dict for this architecture.""" | ||||
|     if str2structure is None: | ||||
|       # In this case, this is NAS-Bench-301 | ||||
|       if 'name' in self.arch_config and self.arch_config['name'] == 'infer.shape.tiny': | ||||
|         return {'name': 'infer.shape.tiny', 'channels': self.arch_config['channels'], | ||||
|                 'genotype': self.arch_config['genotype'], 'num_classes': self.arch_config['class_num']} | ||||
|       # In this case, this is NAS-Bench-201 | ||||
|       else: | ||||
|         return {'name': 'infer.tiny', 'C': self.arch_config['channel'], | ||||
|                 'N'   : self.arch_config['num_cells'], | ||||
|                 'arch_str': self.arch_config['arch_str'], 'num_classes': self.arch_config['class_num']} | ||||
|     else: | ||||
|       # In this case, this is NAS-Bench-301 | ||||
|       if 'name' in self.arch_config and self.arch_config['name'] == 'infer.shape.tiny': | ||||
|         return {'name': 'infer.shape.tiny', 'channels': self.arch_config['channels'], | ||||
|                 'genotype': str2structure(self.arch_config['genotype']), 'num_classes': self.arch_config['class_num']} | ||||
|       # In this case, this is NAS-Bench-201 | ||||
|       else: | ||||
|         return {'name': 'infer.tiny', 'C': self.arch_config['channel'], | ||||
|                 'N'   : self.arch_config['num_cells'], | ||||
|                 'genotype': str2structure(self.arch_config['arch_str']), 'num_classes': self.arch_config['class_num']} | ||||
|  | ||||
|   def state_dict(self): | ||||
|     _state_dict = {key: value for key, value in self.__dict__.items()} | ||||
|     return _state_dict | ||||
|  | ||||
|   def load_state_dict(self, state_dict): | ||||
|     self.__dict__.update(state_dict) | ||||
|  | ||||
|   @staticmethod | ||||
|   def create_from_state_dict(state_dict): | ||||
|     x = ResultsCount(None, None, None, None, None, None, None, None, None, None) | ||||
|     x.load_state_dict(state_dict) | ||||
|     return x | ||||
| @@ -4,7 +4,9 @@ | ||||
| ##################################################### | ||||
| # SLURM_PROCID=0 SLURM_NTASKS=6 bash ./scripts-search/X-X/train-shapes-v2.sh 12 777 | ||||
| # | ||||
| # SLURM_PROCID=0 SLURM_NTASKS=2 bash ./scripts-search/X-X/train-shapes.sh 31000-32767 90 777 | ||||
| # SLURM_PROCID=0 SLURM_NTASKS=4 bash ./scripts-search/X-X/train-shapes.sh 30000-32767 90 777 | ||||
| # SLURM_PROCID=0 SLURM_NTASKS=4 bash ./scripts-search/X-X/train-shapes.sh 00000-09999 90 777 | ||||
| # | ||||
| echo script name: $0 | ||||
| echo $# arguments | ||||
| if [ "$#" -ne 2 ] ;then | ||||
| @@ -21,7 +23,8 @@ fi | ||||
|  | ||||
| #srange=01000-03999,04050-05000,06000-09000,11000-14500,15000-18500,20000-23500,25000-27500,29000-30000 | ||||
| #srange=00000-00999,04000-04049,05001-05999,09001-10999,14501-14999,18501-19999,23501-24999,27501-28999,30001-32767 | ||||
| srange=00000-00999,04000-04049,05001-05999,09001-10999,14501-14999,18501-19999,23501-24999,27501-28999,30001-30999 | ||||
| #srange=00000-09999 | ||||
| srange=10000-29999 | ||||
| opt=$1 | ||||
| all_seeds=$2 | ||||
| cpus=4 | ||||
|   | ||||
| @@ -5,14 +5,17 @@ | ||||
| # [mars6] CUDA_VISIBLE_DEVICES=0 bash ./scripts-search/X-X/train-shapes.sh 00000-05000 12 777 | ||||
| # [mars6]   bash ./scripts-search/X-X/train-shapes.sh 05001-10000 12 777 | ||||
| # [mars20]  bash ./scripts-search/X-X/train-shapes.sh 10001-14500 12 777 | ||||
| # [mars20]  bash ./scripts-search/X-X/train-shapes.sh 14501-19500 12 777 | ||||
| # [mars20]  bash ./scripts-search/X-X/train-shapes.sh 14501-18000 12 777 | ||||
| # [saturn4] bash ./scripts-search/X-X/train-shapes.sh 18001-19500 12 777 | ||||
| # [saturn4] bash ./scripts-search/X-X/train-shapes.sh 19501-23500 12 777 | ||||
| # [saturn4] bash ./scripts-search/X-X/train-shapes.sh 23501-27500 12 777 | ||||
| # [saturn4] bash ./scripts-search/X-X/train-shapes.sh 27501-30000 12 777 | ||||
| # [saturn4] bash ./scripts-search/X-X/train-shapes.sh 30001-32767 12 777 | ||||
| # [x] bash ./scripts-search/X-X/train-shapes.sh 30001-32767 12 777 | ||||
| # | ||||
| # CUDA_VISIBLE_DEVICES=2 bash ./scripts-search/X-X/train-shapes.sh 01000-03999,04050-05000,06000-09000,11000-14500,15000-18500,20000-23500,25000-27500,29000-30000 12 777 | ||||
| # SLURM_PROCID=1 SLURM_NTASKS=5 bash ./scripts-search/X-X/train-shapes.sh 01000-03999,04050-05000,06000-09000,11000-14500,15000-18500,20000-23500,25000-27500,29000-30000 90 777 | ||||
| # [GCP] bash ./scripts-search/X-X/train-shapes.sh 00000-09999 90 777 | ||||
| # [UTS] bash ./scripts-search/X-X/train-shapes.sh 30000-32767 90 777 | ||||
| echo script name: $0 | ||||
| echo $# arguments | ||||
| if [ "$#" -ne 3 ] ;then | ||||
|   | ||||
		Reference in New Issue
	
	Block a user