rust-bert/utils/download-dependencies_t5_base.py

49 lines
1.6 KiB
Python

from transformers import T5_PRETRAINED_CONFIG_ARCHIVE_MAP
from transformers.tokenization_t5 import PRETRAINED_VOCAB_FILES_MAP
from transformers.file_utils import get_from_cache, hf_bucket_url
from pathlib import Path
import shutil
import os
import numpy as np
import torch
import subprocess
config_path = T5_PRETRAINED_CONFIG_ARCHIVE_MAP['t5-base']
vocab_path = PRETRAINED_VOCAB_FILES_MAP['vocab_file']['t5-base']
weights_path = 't5-base'
target_path = Path.home() / 'rustbert' / 't5-base'
temp_config = get_from_cache(config_path)
temp_vocab = get_from_cache(vocab_path)
temp_weights = get_from_cache(hf_bucket_url(weights_path, filename="pytorch_model.bin", use_cdn=True))
os.makedirs(str(target_path), exist_ok=True)
config_path = str(target_path / 'config.json')
vocab_path = str(target_path / 'spiece.model')
model_path = str(target_path / 'model.bin')
shutil.copy(temp_config, config_path)
shutil.copy(temp_vocab, vocab_path)
shutil.copy(temp_weights, model_path)
weights = torch.load(temp_weights, map_location='cpu')
nps = {}
for k, v in weights.items():
k = k.replace("gamma", "weight").replace("beta", "bias")
nps[k] = np.ascontiguousarray(v.cpu().numpy())
np.savez(target_path / 'model.npz', **nps)
source = str(target_path / 'model.npz')
target = str(target_path / 'model.ot')
toml_location = (Path(__file__).resolve() / '..' / '..' / 'Cargo.toml').resolve()
subprocess.call(
['cargo', 'run', '--bin=convert-tensor', '--manifest-path=%s' % toml_location, '--', source, target])
os.remove(str(target_path / 'model.bin'))
os.remove(str(target_path / 'model.npz'))