AudioGPT / NeuralSeq /utils /__init__.py
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Duplicate from AIGC-Audio/AudioGPT
98f685a
import glob
import logging
import re
import time
from collections import defaultdict
import os
import sys
import shutil
import types
import numpy as np
import torch
import torch.nn.functional as F
import torch.distributed as dist
from torch import nn
def tensors_to_scalars(metrics):
new_metrics = {}
for k, v in metrics.items():
if isinstance(v, torch.Tensor):
v = v.item()
if type(v) is dict:
v = tensors_to_scalars(v)
new_metrics[k] = v
return new_metrics
class AvgrageMeter(object):
def __init__(self):
self.reset()
def reset(self):
self.avg = 0
self.sum = 0
self.cnt = 0
def update(self, val, n=1):
self.sum += val * n
self.cnt += n
self.avg = self.sum / self.cnt
def collate_1d(values, pad_idx=0, left_pad=False, shift_right=False, max_len=None, shift_id=1):
"""Convert a list of 1d tensors into a padded 2d tensor."""
size = max(v.size(0) for v in values) if max_len is None else max_len
res = values[0].new(len(values), size).fill_(pad_idx)
def copy_tensor(src, dst):
assert dst.numel() == src.numel()
if shift_right:
dst[1:] = src[:-1]
dst[0] = shift_id
else:
dst.copy_(src)
for i, v in enumerate(values):
copy_tensor(v, res[i][size - len(v):] if left_pad else res[i][:len(v)])
return res
def collate_2d(values, pad_idx=0, left_pad=False, shift_right=False, max_len=None):
"""Convert a list of 2d tensors into a padded 3d tensor."""
size = max(v.size(0) for v in values) if max_len is None else max_len
res = values[0].new(len(values), size, values[0].shape[1]).fill_(pad_idx)
def copy_tensor(src, dst):
assert dst.numel() == src.numel()
if shift_right:
dst[1:] = src[:-1]
else:
dst.copy_(src)
for i, v in enumerate(values):
copy_tensor(v, res[i][size - len(v):] if left_pad else res[i][:len(v)])
return res
def _is_batch_full(batch, num_tokens, max_tokens, max_sentences):
if len(batch) == 0:
return 0
if len(batch) == max_sentences:
return 1
if num_tokens > max_tokens:
return 1
return 0
def batch_by_size(
indices, num_tokens_fn, max_tokens=None, max_sentences=None,
required_batch_size_multiple=1, distributed=False
):
"""
Yield mini-batches of indices bucketed by size. Batches may contain
sequences of different lengths.
Args:
indices (List[int]): ordered list of dataset indices
num_tokens_fn (callable): function that returns the number of tokens at
a given index
max_tokens (int, optional): max number of tokens in each batch
(default: None).
max_sentences (int, optional): max number of sentences in each
batch (default: None).
required_batch_size_multiple (int, optional): require batch size to
be a multiple of N (default: 1).
"""
max_tokens = max_tokens if max_tokens is not None else sys.maxsize
max_sentences = max_sentences if max_sentences is not None else sys.maxsize
bsz_mult = required_batch_size_multiple
if isinstance(indices, types.GeneratorType):
indices = np.fromiter(indices, dtype=np.int64, count=-1)
sample_len = 0
sample_lens = []
batch = []
batches = []
for i in range(len(indices)):
idx = indices[i]
num_tokens = num_tokens_fn(idx)
sample_lens.append(num_tokens)
sample_len = max(sample_len, num_tokens)
assert sample_len <= max_tokens, (
"sentence at index {} of size {} exceeds max_tokens "
"limit of {}!".format(idx, sample_len, max_tokens)
)
num_tokens = (len(batch) + 1) * sample_len
if _is_batch_full(batch, num_tokens, max_tokens, max_sentences):
mod_len = max(
bsz_mult * (len(batch) // bsz_mult),
len(batch) % bsz_mult,
)
batches.append(batch[:mod_len])
batch = batch[mod_len:]
sample_lens = sample_lens[mod_len:]
sample_len = max(sample_lens) if len(sample_lens) > 0 else 0
batch.append(idx)
if len(batch) > 0:
batches.append(batch)
return batches
def make_positions(tensor, padding_idx):
"""Replace non-padding symbols with their position numbers.
Position numbers begin at padding_idx+1. Padding symbols are ignored.
"""
# The series of casts and type-conversions here are carefully
# balanced to both work with ONNX export and XLA. In particular XLA
# prefers ints, cumsum defaults to output longs, and ONNX doesn't know
# how to handle the dtype kwarg in cumsum.
mask = tensor.ne(padding_idx).int()
return (
torch.cumsum(mask, dim=1).type_as(mask) * mask
).long() + padding_idx
def softmax(x, dim):
return F.softmax(x, dim=dim, dtype=torch.float32)
def unpack_dict_to_list(samples):
samples_ = []
bsz = samples.get('outputs').size(0)
for i in range(bsz):
res = {}
for k, v in samples.items():
try:
res[k] = v[i]
except:
pass
samples_.append(res)
return samples_
def load_ckpt(cur_model, ckpt_base_dir, prefix_in_ckpt='model', force=True, strict=True):
if os.path.isfile(ckpt_base_dir):
base_dir = os.path.dirname(ckpt_base_dir)
checkpoint_path = [ckpt_base_dir]
else:
base_dir = ckpt_base_dir
checkpoint_path = sorted(glob.glob(f'{base_dir}/model_ckpt_steps_*.ckpt'), key=
lambda x: int(re.findall(f'{base_dir}/model_ckpt_steps_(\d+).ckpt', x)[0]))
if len(checkpoint_path) > 0:
checkpoint_path = checkpoint_path[-1]
state_dict = torch.load(checkpoint_path, map_location="cpu")["state_dict"]
state_dict = {k[len(prefix_in_ckpt) + 1:]: v for k, v in state_dict.items()
if k.startswith(f'{prefix_in_ckpt}.')}
if not strict:
cur_model_state_dict = cur_model.state_dict()
unmatched_keys = []
for key, param in state_dict.items():
if key in cur_model_state_dict:
new_param = cur_model_state_dict[key]
if new_param.shape != param.shape:
unmatched_keys.append(key)
print("| Unmatched keys: ", key, new_param.shape, param.shape)
for key in unmatched_keys:
del state_dict[key]
cur_model.load_state_dict(state_dict, strict=strict)
print(f"| load '{prefix_in_ckpt}' from '{checkpoint_path}'.")
else:
e_msg = f"| ckpt not found in {base_dir}."
if force:
assert False, e_msg
else:
print(e_msg)
def remove_padding(x, padding_idx=0):
if x is None:
return None
assert len(x.shape) in [1, 2]
if len(x.shape) == 2: # [T, H]
return x[np.abs(x).sum(-1) != padding_idx]
elif len(x.shape) == 1: # [T]
return x[x != padding_idx]
class Timer:
timer_map = {}
def __init__(self, name, print_time=False):
if name not in Timer.timer_map:
Timer.timer_map[name] = 0
self.name = name
self.print_time = print_time
def __enter__(self):
self.t = time.time()
def __exit__(self, exc_type, exc_val, exc_tb):
Timer.timer_map[self.name] += time.time() - self.t
if self.print_time:
print(self.name, Timer.timer_map[self.name])
def print_arch(model, model_name='model'):
print(f"| {model_name} Arch: ", model)
num_params(model, model_name=model_name)
def num_params(model, print_out=True, model_name="model"):
parameters = filter(lambda p: p.requires_grad, model.parameters())
parameters = sum([np.prod(p.size()) for p in parameters]) / 1_000_000
if print_out:
print(f'| {model_name} Trainable Parameters: %.3fM' % parameters)
return parameters