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main.py
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337 lines (295 loc) · 16.2 KB
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# from parameters import parse_args
import logging
import os
import numpy as np
from dpsda.logging import setup_logging, log_num_words, load_embeddings, log_samples, log_count, compute_fid, log_prompt_generation
from dpsda.data_loader import load_data
from dpsda.feature_extractor import extract_features
from dpsda.dp_counter import dp_nn_histogram
from dpsda.arg_utils import parse_args
import os
os.environ["TOKENIZERS_PARALLELISM"] = "false"
def main():
args, api = parse_args()
if args.log_online:
import wandb
_ = os.system('wandb login {}'.format(args.wandb_key))
os.environ['WANDB_API_KEY'] = args.wandb_key
wandb.init(project=args.project, name=args.result_folder[7:])
wandb.config.update(args)
if args.data_checkpoint_step >= len(args.num_samples_schedule) - 1:
logging.info(f'finished {args.data_checkpoint_step} PE iterations!')
exit(0)
os.makedirs(args.result_folder, exist_ok=True)
setup_logging(os.path.join(args.result_folder, 'log.log'))
logging.info(f'config: {args}')
logging.info(f'API config: {api.args}')
# load private data
all_private_samples, all_private_labels, private_labels_counter, private_labels_indexer = load_data(
dataset=args.dataset,
data_file=args.train_data_file,
num_samples=args.num_private_samples,
subsample_one_class=args.subsample_one_class)
# if we randomly subsample the private data, we save the subsampled data.
if args.num_private_samples > 0:
log_samples(samples=all_private_samples, additional_info=all_private_labels,
folder=f'{args.result_folder}/train')
private_classes = list(private_labels_counter.keys())
logging.info(
f'Private_num_classes: {len(private_classes)}, Private_num_samples: {len(all_private_samples)}, Private_num_labels:{len(all_private_labels)}')
logging.info('Extracting features of private data')
if args.train_data_embeddings_file != '':
logging.info(f'load features {args.train_data_embeddings_file}')
all_private_features, all_private_labels = load_embeddings(
args.train_data_embeddings_file) # need to be full samples index
all_private_samples = all_private_samples[:len(all_private_features)]
else:
# extract the embeddings of the private data
all_private_features = extract_features(
data=all_private_samples,
batch_size=args.feature_extractor_batch_size,
model_name=args.feature_extractor,
)
# Generating initial synthetic samples.
if args.data_checkpoint_path != '':
logging.info(
f'Loading data checkpoint from {args.data_checkpoint_path}')
seed_syn_samples, seed_additional_info, sync_labels_counter, sync_labels_indexer = load_data(
dataset=args.dataset,
data_file=args.data_checkpoint_path,
num_samples=-1,
gen=True,
) # load all samples
if args.data_checkpoint_step < 0:
raise ValueError('data_checkpoint_step should be >= 0')
start_t = args.data_checkpoint_step + 1
else:
logging.info('Generating initial samples')
private_lens_dict = None
num_seed_samples = int(
args.num_samples_schedule[0]/args.init_combine_divide_L)
seed_syn_samples, seed_additional_info, sync_labels_counter, all_prefix_prompts = api.text_random_sampling(num_samples=num_seed_samples,
prompt_counter=private_labels_counter, lens_dict=private_lens_dict)
os.makedirs(f'{args.result_folder}/0', exist_ok=True)
log_prompt_generation(fname=f'{args.result_folder}/0/prompt_generation.jsonl',
prompts=all_prefix_prompts, generations=np.stack([seed_syn_samples], axis=1))
if args.data_checkpoint_step >= 0:
logging.info('Ignoring data_checkpoint_step')
start_t = 1
# save initial synthetic samples.
log_samples(samples=seed_syn_samples, additional_info=seed_additional_info,
folder=f'{args.result_folder}/{start_t-1}')
if args.compute_fid:
synthetic_features = extract_features(
data=seed_syn_samples,
batch_size=args.feature_extractor_batch_size,
model_name=args.feature_extractor,
)
compute_fid(synthetic_features, all_private_features, args.feature_extractor,
folder=args.result_folder, step=start_t-1, log_online=args.log_online)
if args.init_combine_divide_L > 1:
parent_directory = os.path.dirname(args.data_checkpoint_path)
all_data_ckpt_path = os.path.join(
parent_directory + "_all", 'samples.csv')
if os.path.isfile(all_data_ckpt_path):
logging.info(f'start to load {all_data_ckpt_path}')
syn_samples, additional_info, sync_labels_counter, _ = load_data(
dataset=args.dataset,
data_file=all_data_ckpt_path,
num_samples=-1,
gen=True,
) # load all samples
else:
syn_samples, additional_info = [], []
current_idx = 0
for class_i, class_ in enumerate(private_classes):
num_samples_per_class = sync_labels_counter[class_]
if num_samples_per_class == 0:
continue
seed_syn_samples_per_class = seed_syn_samples[current_idx: current_idx +
num_samples_per_class]
seed_additional_info_per_class = seed_additional_info[
current_idx: current_idx + num_samples_per_class]
new_variants_samples_stacked, _, _, _, _ = api.text_variation(
sequences=seed_syn_samples_per_class, # seed samples
additional_info=seed_additional_info_per_class,
num_variations_per_sequence=args.init_combine_divide_L-1, # just do one variation
variation_degree=args.variation_degree_schedule[0]
)
syn_samples.extend(seed_syn_samples_per_class) # seed samples
for x in new_variants_samples_stacked: # L-1 variations
syn_samples.extend(x.tolist())
additional_info.extend(
seed_additional_info_per_class * args.init_combine_divide_L)
current_idx += num_samples_per_class
sync_labels_counter[class_] = num_samples_per_class * \
args.init_combine_divide_L
log_samples(samples=syn_samples, additional_info=additional_info,
folder=f'{args.result_folder}/-1')
else:
syn_samples, additional_info = seed_syn_samples, seed_additional_info
logging.info(
f'initial samples size {len(syn_samples)} label {len(additional_info)}')
for key, value in sync_labels_counter.items():
if value > 0:
logging.info(f'initial samples label counter {key}: {value}')
for t in range(start_t, len(args.num_samples_schedule)):
logging.info(f't={t}')
if args.lookahead_degree == 0:
packed_samples = np.expand_dims(syn_samples, axis=1)
else:
logging.info('Running text variation')
packed_samples, variation_lables, all_target_words, all_gen_words, all_masked_prompts = api.text_variation( # shape [# num_sample, # variations]
sequences=syn_samples,
additional_info=additional_info,
num_variations_per_sequence=args.lookahead_degree,
variation_degree=args.variation_degree_schedule[t])
if args.lookahead_self:
packed_samples = np.concatenate((packed_samples, np.expand_dims(
syn_samples, axis=1)), axis=1) # add the original samples to the variations
os.makedirs(f'{args.result_folder}/{t}', exist_ok=True)
log_num_words(fname=f'{args.result_folder}/{t}/num_word_lookahead.csv',
all_gen_words=all_gen_words, all_target_words=all_target_words)
log_prompt_generation(fname=f'{args.result_folder}/{t}/prompt_generation.jsonl',
prompts=all_masked_prompts, generations=packed_samples)
packed_features = []
logging.info('Running feature extraction')
# iterate over # lookahead_degree variations.
for i in range(packed_samples.shape[1]):
sub_packed_features = extract_features(
data=packed_samples[:, i],
batch_size=args.feature_extractor_batch_size,
model_name=args.feature_extractor,
)
packed_features.append(sub_packed_features)
# take the averaged embedding for each sequence..
packed_features = np.mean(packed_features, axis=0)
logging.info(f'feature extraction shape {packed_features.shape}')
logging.info('Computing histogram')
count = []
current_idx = 0
# for next iteration
new_syn_samples = []
new_additional_info = []
# for current iteration saving
all_selected_samples = []
all_selected_additional_info = []
for class_i, class_ in enumerate(private_classes):
# key must have the same order as private_classes (from private_labels_counter)
num_samples_per_class = sync_labels_counter[class_]
if num_samples_per_class == 0:
continue
# get the count for each synthetic data
public_features = packed_features[current_idx:
num_samples_per_class+current_idx]
logging.info(
f'{class_}, {num_samples_per_class} , features shape {public_features.shape}')
assert num_samples_per_class == public_features.shape[0]
selected_size = int(num_samples_per_class/args.combine_divide_L)
logging.info(f'selected_size {selected_size}')
if selected_size == 0:
sub_count = []
sub_new_indices = list(
range(current_idx, num_samples_per_class+current_idx))
selected_syn_samples = [syn_samples[i]
for i in sub_new_indices]
selected_additional_info = [
additional_info[i] for i in sub_new_indices]
new_variants_samples = selected_syn_samples*args.combine_divide_L
new_variants_additional_info = selected_additional_info * args.combine_divide_L
else:
sub_count, sub_clean_count = dp_nn_histogram(
public_features=public_features,
private_features=all_private_features[private_labels_indexer[class_]],
noise_multiplier=args.noise_multiplier,
num_nearest_neighbor=args.num_nearest_neighbor,
mode=args.nn_mode,
threshold=args.count_threshold)
assert np.sum(sub_count) > 0
# Generating new indices of synthetic data
if args.select_syn_mode == 'prob':
candidate_indices = np.arange(
current_idx, num_samples_per_class + current_idx, dtype=int)
sampling_prob = (sub_count) / np.sum(sub_count)
top_1_ind = np.argpartition(sampling_prob, -1)[-1:]
sub_new_indices = np.random.choice(
candidate_indices,
size=selected_size,
p=sampling_prob)
# logging.info(f'sub_new_indices size {len(sub_new_indices)}')
elif args.select_syn_mode == 'rank':
sort_index = [
i+current_idx for i, x in sorted(enumerate(sub_count), key=lambda x: -x[1])]
sub_new_indices = sort_index[:selected_size] # top votes
else:
raise ValueError(
f'supported select_syn_mode {args.select_syn_mode}')
count_fname = class_.replace("\t", "_").replace(
" ", "_").replace("&", "").replace(":", "")
log_count(sub_count, sub_clean_count,
f'{args.result_folder}/{t}/count_class/{count_fname}.csv')
# Generate new synthetic data
selected_syn_samples = [syn_samples[i]
for i in sub_new_indices]
selected_additional_info = [
additional_info[i] for i in sub_new_indices]
# logging.info(f'selected_syn_samples shape {len(selected_syn_samples)} label {len(selected_additional_info)}')
assert len(selected_syn_samples) == len(
selected_additional_info)
new_variants_samples = []
if args.combine_divide_L == 1:
_num_variations_per_sequence = 1 # just do one variation
elif args.combine_divide_L > 1:
if args.donnot_keep_last_iter:
_num_variations_per_sequence = args.combine_divide_L
else:
_num_variations_per_sequence = args.combine_divide_L - 1
new_variants_samples.extend(selected_syn_samples)
else:
raise ValueError('combine_divide_L should be >= 1')
logging.info(
f'_num_variations_per_sequence {_num_variations_per_sequence}')
new_variants_samples_stacked, _, _, _, _ = api.text_variation(
sequences=selected_syn_samples, # seed samples
additional_info=selected_additional_info,
num_variations_per_sequence=_num_variations_per_sequence, # just do one variation
variation_degree=args.variation_degree_schedule[t]
)
for x in new_variants_samples_stacked:
new_variants_samples.extend(x.tolist())
new_variants_additional_info = selected_additional_info * args.combine_divide_L
# logging.info(f'new_variants_samples shape {len(new_variants_samples)} label {len(new_variants_additional_info)}')
new_syn_samples.extend(new_variants_samples)
new_additional_info.extend(new_variants_additional_info)
sync_labels_counter[class_] = len(
new_variants_samples) # update class size
if args.save_syn_mode == 'selected':
all_selected_samples.extend(selected_syn_samples)
all_selected_additional_info.extend(selected_additional_info)
elif args.save_syn_mode == 'one_var':
all_selected_samples.extend(new_variants_samples_stacked[:, 0])
all_selected_additional_info.extend(selected_additional_info)
elif args.save_syn_mode == 'all':
all_selected_samples.extend(
new_variants_samples) # all --- L times size
all_selected_additional_info.extend(
new_variants_additional_info)
current_idx += public_features.shape[0]
syn_samples = new_syn_samples
additional_info = new_additional_info
all_data = log_samples(samples=all_selected_samples,
additional_info=all_selected_additional_info, folder=f'{args.result_folder}/{t}')
if args.compute_fid:
synthetic_features = extract_features(
data=all_selected_samples,
batch_size=args.feature_extractor_batch_size,
model_name=args.feature_extractor,
)
compute_fid(synthetic_features, all_private_features, args.feature_extractor,
folder=args.result_folder, step=t, log_online=args.log_online)
all_data = log_samples(
samples=syn_samples, additional_info=additional_info, folder=f'{args.result_folder}/{t}_all')
if args.log_online:
wandb.finish()
if __name__ == '__main__':
main()