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NAS-BENCH-201 has been extended to NATS-Bench
Since our NAS-BENCH-201 has been extended to NATS-Bench, this repo is deprecated and not maintained. Please use NATS-Bench, which has 5x more architecture information and faster API than NAS-BENCH-201.
NAS-BENCH-201: Extending the Scope of Reproducible Neural Architecture Search
We propose an algorithm-agnostic NAS benchmark (NAS-Bench-201) with a fixed search space, which provides a unified benchmark for almost any up-to-date NAS algorithms. The design of our search space is inspired by that used in the most popular cell-based searching algorithms, where a cell is represented as a directed acyclic graph. Each edge here is associated with an operation selected from a predefined operation set. For it to be applicable for all NAS algorithms, the search space defined in NAS-Bench-201 includes 4 nodes and 5 associated operation options, which generates 15,625 neural cell candidates in total.
In this Markdown file, we provide:
For the following two things, please use AutoDL-Projects:
Note: please use PyTorch >= 1.2.0
and Python >= 3.6.0
.
You can simply type pip install nas-bench-201
to install our api. Please see source codes of nas-bench-201
module in this repo.
If you have any questions or issues, please post it at here or email me.
Preparation and Download
[deprecated] The old benchmark file of NAS-Bench-201 can be downloaded from Google Drive or Baidu-Wangpan (code:6u5d).
[recommended] The latest benchmark file of NAS-Bench-201 (NAS-Bench-201-v1_1-096897.pth
) can be downloaded from Google Drive. The files for model weight are too large (431G) and I need some time to upload it. Please be patient, thanks for your understanding.
You can move it to anywhere you want and send its path to our API for initialization.
- [2020.02.25] APIv1.0/FILEv1.0:
NAS-Bench-201-v1_0-e61699.pth
(2.2G), wheree61699
is the last six digits for this file. It contains all information except for the trained weights of each trial. - [2020.02.25] APIv1.0/FILEv1.0: The full data of each architecture can be download from NAS-BENCH-201-4-v1.0-archive.tar (about 226GB). This compressed folder has 15625 files containing the the trained weights.
- [2020.02.25] APIv1.0/FILEv1.0: Checkpoints for 3 runs of each baseline NAS algorithm are provided in Google Drive.
- [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
(4.7G), where096897
is the last six digits for this file. It contains information of more trials compared toNAS-Bench-201-v1_0-e61699.pth
, especially all models trained by 12 epochs on all datasets are avaliable. - [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 or Baidu-Wangpan (code:4fg7).
It is recommended to put these data into $TORCH_HOME
(~/.torch/
by default). If you want to generate NAS-Bench-201 or similar NAS datasets or training models by yourself, you need these data.
How to Use NAS-Bench-201
More usage can be found in our test codes.
- Creating an API instance from a file:
from nas_201_api import NASBench201API as API
api = API('$path_to_meta_nas_bench_file')
# Create an API without the verbose log
api = API('NAS-Bench-201-v1_1-096897.pth', verbose=False)
# The default path for benchmark file is '{:}/{:}'.format(os.environ['TORCH_HOME'], 'NAS-Bench-201-v1_1-096897.pth')
api = API(None)
- Show the number of architectures
len(api)
and each architectureapi[i]
:
num = len(api)
for i, arch_str in enumerate(api):
print ('{:5d}/{:5d} : {:}'.format(i, len(api), arch_str))
- Show the results of all trials for a single architecture:
# show all information for a specific architecture
api.show(1)
api.show(2)
# show the mean loss and accuracy of an architecture
info = api.query_meta_info_by_index(1) # This is an instance of `ArchResults`
res_metrics = info.get_metrics('cifar10', 'train') # This is a dict with metric names as keys
cost_metrics = info.get_comput_costs('cifar100') # This is a dict with metric names as keys, e.g., flops, params, latency
# get the detailed information
results = api.query_by_index(1, 'cifar100') # a dict of all trials for 1st net on cifar100, where the key is the seed
print ('There are {:} trials for this architecture [{:}] on cifar100'.format(len(results), api[1]))
for seed, result in results.items():
print ('Latency : {:}'.format(result.get_latency()))
print ('Train Info : {:}'.format(result.get_train()))
print ('Valid Info : {:}'.format(result.get_eval('x-valid')))
print ('Test Info : {:}'.format(result.get_eval('x-test')))
# for the metric after a specific epoch
print ('Train Info [10-th epoch] : {:}'.format(result.get_train(10)))
- Query the index of an architecture by string
index = api.query_index_by_arch('|nor_conv_3x3~0|+|nor_conv_3x3~0|avg_pool_3x3~1|+|skip_connect~0|nor_conv_3x3~1|skip_connect~2|')
api.show(index)
This string |nor_conv_3x3~0|+|nor_conv_3x3~0|avg_pool_3x3~1|+|skip_connect~0|nor_conv_3x3~1|skip_connect~2|
means:
node-0: the input tensor
node-1: conv-3x3( node-0 )
node-2: conv-3x3( node-0 ) + avg-pool-3x3( node-1 )
node-3: skip-connect( node-0 ) + conv-3x3( node-1 ) + skip-connect( node-2 )
- Create the network from api:
config = api.get_net_config(123, 'cifar10') # obtain the network configuration for the 123-th architecture on the CIFAR-10 dataset
from models import get_cell_based_tiny_net # this module is in AutoDL-Projects/lib/models
network = get_cell_based_tiny_net(config) # create the network from configurration
print(network) # show the structure of this architecture
If you want to load the trained weights of this created network, you need to use api.get_net_param(123, ...)
to obtain the weights and then load it to the network.
-
api.get_more_info(...)
can return the loss / accuracy / time on training / validation / test sets, which is very helpful. For more details, please look at the comments in the get_more_info function. -
For other usages, please see
lib/nas_201_api/api.py
. We provide some usage information in the comments for the corresponding functions. If what you want is not provided, please feel free to open an issue for discussion, and I am happy to answer any questions regarding NAS-Bench-201.
Detailed Instruction
In nas_201_api
, we define three classes: NASBench201API
, ArchResults
, ResultsCount
.
ResultsCount
maintains all information of a specific trial. One can instantiate ResultsCount and get the info via the following codes (000157-FULL.pth
saves all information of all trials of 157-th architecture):
from nas_201_api import ResultsCount
xdata = torch.load('000157-FULL.pth')
odata = xdata['full']['all_results'][('cifar10-valid', 777)]
result = ResultsCount.create_from_state_dict( odata )
print(result) # print it
print(result.get_train()) # print the final training loss/accuracy/[optional:time-cost-of-a-training-epoch]
print(result.get_train(11)) # print the training info of the 11-th epoch
print(result.get_eval('x-valid')) # print the final evaluation info on the validation set
print(result.get_eval('x-valid', 11)) # print the info on the validation set of the 11-th epoch
print(result.get_latency()) # print the evaluation latency [in batch]
result.get_net_param() # the trained parameters of this trial
arch_config = result.get_config(CellStructure.str2structure) # create the network with params
net_config = dict2config(arch_config, None)
network = get_cell_based_tiny_net(net_config)
network.load_state_dict(result.get_net_param())
ArchResults
maintains all information of all trials of an architecture. Please see the following usages:
from nas_201_api import ArchResults
xdata = torch.load('000157-FULL.pth')
archRes = ArchResults.create_from_state_dict(xdata['less']) # load trials trained with 12 epochs
archRes = ArchResults.create_from_state_dict(xdata['full']) # load trials trained with 200 epochs
print(archRes.arch_idx_str()) # print the index of this architecture
print(archRes.get_dataset_names()) # print the supported training data
print(archRes.get_compute_costs('cifar10-valid')) # print all computational info when training on cifar10-valid
print(archRes.get_metrics('cifar10-valid', 'x-valid', None, False)) # print the average loss/accuracy/time on all trials
print(archRes.get_metrics('cifar10-valid', 'x-valid', None, True)) # print loss/accuracy/time of a randomly selected trial
NASBench201API
is the topest level api. Please see the following usages:
from nas_201_api import NASBench201API as API
api = API('NAS-Bench-201-v1_1-096897.pth') # This will load all the information of NAS-Bench-201 except the trained weights
api = API('{:}/{:}'.format(os.environ['TORCH_HOME'], 'NAS-Bench-201-v1_1-096897.pth')) # The same as the above line while I usually save NAS-Bench-201-v1_1-096897.pth in ~/.torch/.
api.show(-1) # show info of all architectures
api.reload('{:}/{:}'.format(os.environ['TORCH_HOME'], 'NAS-BENCH-201-4-v1.0-archive'), 3) # This code will reload the information 3-th architecture with the trained weights
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):
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)
Citation
If you find that NAS-Bench-201 helps your research, please consider citing it:
@inproceedings{dong2020nasbench201,
title = {NAS-Bench-201: Extending the Scope of Reproducible Neural Architecture Search},
author = {Dong, Xuanyi and Yang, Yi},
booktitle = {International Conference on Learning Representations (ICLR)},
url = {https://openreview.net/forum?id=HJxyZkBKDr},
year = {2020}
}