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eval_attribute_extraction.py
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227 lines (190 loc) · 8.65 KB
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import os
import random
import toml
from sys import argv
from types import SimpleNamespace
import accelerate
import numpy as np
import pandas as pd
import torch
# from eval import eval_model
from utils.collate import MultiEncoderClassificationDataset, TokenizedCollator
from utils.dist import get_rank
from utils.eval_utils import eval_loop_, text_to_embedding
from utils.model_utils import get_sentence_embedding_dimension, load_encoder
from utils.utils import *
from utils.streaming_utils import load_streaming_embeddings
from datasets import load_dataset, load_from_disk
def main():
os.environ["TOKENIZERS_PARALLELISM"] = "0"
cfg = toml.load(f'{argv[1]}/config.toml')
unknown_cfg = read_args(argv)
cfg = SimpleNamespace(**{**cfg, **unknown_cfg})
if hasattr(cfg, 'mixed_precision') and cfg.mixed_precision == 'bf16' and not torch.cuda.is_bf16_supported():
cfg.mixed_precision = 'fp16'
print("Note: bf16 is not available on this hardware!")
# set seeds
random.seed(cfg.seed + get_rank())
torch.manual_seed(cfg.seed + get_rank())
np.random.seed(cfg.seed + get_rank())
torch.cuda.manual_seed(cfg.seed + get_rank())
accelerator = accelerate.Accelerator(
mixed_precision=cfg.mixed_precision if hasattr(cfg, 'mixed_precision') else None
)
# https://github.com/huggingface/transformers/issues/26548
accelerator.dataloader_config.dispatch_batches = False
sup_encs = {cfg.sup_emb: load_encoder(cfg.sup_emb, mixed_precision=cfg.mixed_precision if hasattr(cfg, 'mixed_precision') and cfg.mixed_precision != 'no' else None)}
encoder_dims = {cfg.sup_emb: get_sentence_embedding_dimension(sup_encs[cfg.sup_emb])}
translator = load_n_translator(cfg, encoder_dims)
assert hasattr(cfg, 'unsup_emb')
assert cfg.sup_emb != cfg.unsup_emb
unsup_enc = {
cfg.unsup_emb: load_encoder(cfg.unsup_emb, mixed_precision=cfg.mixed_precision if hasattr(cfg, 'mixed_precision') and cfg.mixed_precision != 'no' else None)
}
unsup_dim = {
cfg.unsup_emb: get_sentence_embedding_dimension(unsup_enc[cfg.unsup_emb])
}
translator.add_encoders(unsup_dim, overwrite_embs=[cfg.unsup_emb])
if cfg.style != 'identity':
assert cfg.unsup_emb not in sup_encs
assert cfg.unsup_emb in translator.in_adapters
assert cfg.unsup_emb in translator.out_adapters
cfg.num_params = sum(x.numel() for x in translator.parameters())
print("Number of parameters:", cfg.num_params)
if hasattr(cfg, 'val_dataset') and cfg.val_dataset == 'tweets':
### Tweets
dset_name = 'cardiffnlp/tweet_topic_multilingual'
dset = load_dataset('cardiffnlp/tweet_topic_multilingual', 'en', num_proc=8)['test']
raw_labels = pd.read_csv('labels/tweet_topic_multilingual.csv')['label'].tolist()
elif hasattr(cfg, 'val_dataset') and cfg.val_dataset == 'enron':
### ENRON
dset_name = 'rishi-jha/filtered_enron'
dset = load_dataset('rishi-jha/filtered_enron', split='train', num_proc=8).shuffle(seed=cfg.val_dataset_seed).select(range(1280))
raw_labels = list(json.load(open('email_to_index.json', 'r')).keys())
# read from email_structure.txt
email_structure = open('email_structure.txt', 'r').read()
print(email_structure)
raw_labels = [email_structure.format(l, l) for l in raw_labels]
elif hasattr(cfg, 'val_dataset') and 'mimic' in cfg.val_dataset:
### MIMIC
if cfg.val_dataset == 'mimic':
dset_name = 'data/mimic'
elif cfg.val_dataset == 'mimic_templates':
dset_name = 'data/mimic_templates'
split = "medcat"
dset = load_from_disk(dset_name)['unsupervised'].shuffle(seed=cfg.val_dataset_seed)
dset = dset.select(range(cfg.val_size))
raw_labels = pd.read_csv(f"data/mimic/{split}_mapping.csv").sort_values("index")[split + '_description' if split == 'medcat' else ''].to_list()
num_classes = len(raw_labels)
def add_one_hot_label(example):
index = example[f"{split}" + "_indices" if split == 'medcat' else "_index"]
one_hot = [0] * num_classes
if isinstance(index, list):
for i in index:
one_hot[i] = 1
elif isinstance(index, int):
one_hot[index] = 1
else:
raise ValueError(f"Unknown index type {type(index)}")
example["label"] = one_hot
return example
dset = dset.map(add_one_hot_label)
keep_columns = ["text", "label"]
dset = dset.remove_columns([col for col in dset.column_names if col not in keep_columns])
else:
raise ValueError(f"Unknown dataset {cfg.val_dataset}")
# Labels for attribute extraction
labels = {
cfg.sup_emb: text_to_embedding(raw_labels, cfg.sup_emb, sup_encs[cfg.sup_emb], cfg.normalize_embeddings, cfg.max_seq_length, accelerator.device),
cfg.unsup_emb: text_to_embedding(raw_labels, cfg.unsup_emb, unsup_enc[cfg.unsup_emb], cfg.normalize_embeddings, cfg.max_seq_length, accelerator.device)
}
print('Loaded labels...')
num_workers = get_num_proc()
dset = MultiEncoderClassificationDataset(
dataset=dset,
encoders={ **unsup_enc, **sup_encs },
n_embs_per_batch=2,
batch_size=cfg.val_bs,
max_length=cfg.max_seq_length,
seed=cfg.sampling_seed,
)
valloader = DataLoader(
dset,
batch_size=cfg.val_bs if hasattr(cfg, 'val_bs') else cfg.bs,
num_workers=num_workers,
shuffle=False,
pin_memory=True,
prefetch_factor=(8 if num_workers > 0 else None),
collate_fn=TokenizedCollator(),
drop_last=True,
)
valloader = accelerator.prepare(valloader)
if cfg.style != 'identity':
assert hasattr(cfg, 'load_dir')
print(f"Loading models from {argv[1]}...")
translator.load_state_dict(torch.load(f'{argv[1]}/model.pt', map_location='cpu'), strict=False)
translator = accelerator.prepare(translator)
inverters = None
# get_inverters(["gtr"], accelerator.device)
with torch.no_grad():
translator.eval()
val_res = {}
recons, trans, heatmap_dict, text_recons, text_trans, classification =\
eval_loop_(
cfg,
translator,
{**sup_encs, **unsup_enc},
valloader,
inverters=inverters,
device=accelerator.device,
labels=labels
)
val_res['recons'] = {}
for flag, res in recons.items():
for k, v in res.items():
if k == 'cos':
val_res['recons'][f"rec_{flag}_{k}"] = v
val_res['trans'] = {}
for target_flag, d in trans.items():
for flag, res in d.items():
for k, v in res.items():
if flag == cfg.unsup_emb and target_flag == cfg.unsup_emb:
continue
val_res['trans'][f"{flag}_{target_flag}_{k}"] = v
val_res['heatmap'] = {}
if len(heatmap_dict) > 0:
for k,v in heatmap_dict.items():
# if v is a plt.Figure, skip it
if v.__class__.__name__ == 'Figure':
# val_res['heatmap'][f"{k}"] = v
continue
else:
val_res['heatmap'][f"{k} (avg. {cfg.top_k_batches} batches)"] = v
val_res['text_recons'] = {}
if len(text_recons) > 0:
for flag, res in text_recons.items():
for k,v in res.items():
val_res['text_recons'][f"text_{k}"] = v
val_res['text_trans'] = {}
if len(text_trans) > 0:
for target_flag, d in text_trans.items():
for flag, res in d.items():
for k, v in res.items():
if flag == cfg.unsup_emb and target_flag == cfg.unsup_emb:
continue
val_res['text_trans'][f"{flag}_{target_flag}_{k}"] = v
val_res['classification'] = {}
if len(classification) > 0:
for k,v in classification.items():
val_res['classification'][f"{k}"] = v
# write dictionary to file in results including dataset name, embedding names
if cfg.style == 'identity':
fnm = f'results/baseline_{dset_name.replace("/", "_")}_{cfg.unsup_emb}_{cfg.sup_emb}.json'
else:
fnm = f'results/{dset_name.replace("/", "_")}_{cfg.unsup_emb}_{cfg.sup_emb}.json'
with open(fnm, 'w') as f:
# human readable
f.write(json.dumps(val_res, indent=4))
# save results to file
if __name__ == "__main__":
main()