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# Copyright (c) Meta Platforms, Inc. and affiliates. | |
# All rights reserved. | |
# | |
# This source code is licensed under the license found in the | |
# LICENSE file in the root directory of this source tree. | |
from concurrent.futures import ThreadPoolExecutor | |
from collections import deque | |
from functools import partial | |
from hashlib import sha1 | |
import logging | |
from pathlib import Path | |
import sys | |
import typing as tp | |
import zipfile | |
import flashy | |
import torch | |
logger = logging.getLogger(__name__) | |
def get_full_embed(full_embed: torch.Tensor, x: tp.Any, idx: int, device: tp.Union[str, torch.device]) -> torch.Tensor: | |
"""Utility function for the EmbeddingCache, returning the full embedding without any chunking. | |
This method can be used in case there is no need in extracting a chunk of the full embedding | |
read from the cache. | |
Args: | |
full_embed (torch.Tensor): The full embedding. | |
x (any): Batch object from which the full embedding is derived. | |
idx (torch.Tensor): Index of object to consider in the batch object. | |
Returns: | |
full_embed (torch.Tensor): The full embedding | |
""" | |
return full_embed.to(device) | |
class EmbeddingCache: | |
"""Cache around embeddings computation for faster execution. | |
The EmbeddingCache is storing pre-computed embeddings on disk and provides a simple API | |
to retrieve the pre-computed embeddings on full inputs and extract only a given chunk | |
using a user-provided function. When the cache is warm (all embeddings are pre-computed), | |
the EmbeddingCache allows for faster training as it removes the need of computing the embeddings. | |
Additionally, it provides in-memory cache around the loaded embeddings to limit IO footprint | |
and synchronization points in the forward calls. | |
Args: | |
cache_path (Path): Path to folder where all pre-computed embeddings are saved on disk. | |
device (str or torch.device): Device on which the embedding is returned. | |
compute_embed_fn (callable[[Path, any, int], torch.Tensor], optional): Function to compute | |
the embedding from a given object and path. This user provided function can compute the | |
embedding from the provided object or using the provided path as entry point. The last parameter | |
specify the index corresponding to the current embedding in the object that can represent batch metadata. | |
extract_embed_fn (callable[[torch.Tensor, any, int], torch.Tensor], optional): Function to extract | |
the desired embedding chunk from the full embedding loaded from the cache. The last parameter | |
specify the index corresponding to the current embedding in the object that can represent batch metadata. | |
If not specified, will return the full embedding unmodified. | |
""" | |
def __init__(self, cache_path: tp.Union[str, Path], device: tp.Union[str, torch.device], | |
compute_embed_fn: tp.Callable[[Path, tp.Any, int], torch.Tensor], | |
extract_embed_fn: tp.Optional[tp.Callable[[torch.Tensor, tp.Any, int], torch.Tensor]] = None): | |
self.cache_path = Path(cache_path) | |
self.device = device | |
self._compute_embed_fn = compute_embed_fn | |
self._extract_embed_fn: tp.Callable[[torch.Tensor, tp.Any, int], torch.Tensor] | |
if extract_embed_fn is not None: | |
self._extract_embed_fn = extract_embed_fn | |
else: | |
self._extract_embed_fn = partial(get_full_embed, device=device) | |
if self.cache_path is not None: | |
self.cache_path.mkdir(exist_ok=True, parents=True) | |
logger.info(f"Cache instantiated at: {self.cache_path}") | |
self.pool = ThreadPoolExecutor(8) | |
self.pool.__enter__() | |
self._current_batch_cache: dict = {} | |
self._memory_cache: dict = {} | |
def _get_cache_path(self, path: tp.Union[Path, str]): | |
"""Get cache path for the given file path.""" | |
sig = sha1(str(path).encode()).hexdigest() | |
return self.cache_path / sig | |
def _get_full_embed_from_cache(cache: Path): | |
"""Loads full pre-computed embedding from the cache.""" | |
try: | |
embed = torch.load(cache, 'cpu') | |
except Exception as exc: | |
logger.error("Error loading %s: %r", cache, exc) | |
embed = None | |
return embed | |
def get_embed_from_cache(self, paths: tp.List[Path], x: tp.Any) -> torch.Tensor: | |
"""Get embedding from cache, computing and storing it to cache if not already cached. | |
The EmbeddingCache first tries to load the embedding from the in-memory cache | |
containing the pre-computed chunks populated through `populate_embed_cache`. | |
If not found, the full embedding is computed and stored on disk to be later accessed | |
to populate the in-memory cache, and the desired embedding chunk is extracted and returned. | |
Args: | |
paths (list[Path or str]): List of paths from where the embeddings can be loaded. | |
x (any): Object from which the embedding is extracted. | |
""" | |
embeds = [] | |
for idx, path in enumerate(paths): | |
cache = self._get_cache_path(path) | |
if cache in self._current_batch_cache: | |
embed = self._current_batch_cache[cache] | |
else: | |
full_embed = self._compute_embed_fn(path, x, idx) | |
try: | |
with flashy.utils.write_and_rename(cache, pid=True) as f: | |
torch.save(full_embed.cpu(), f) | |
except Exception as exc: | |
logger.error('Error saving embed %s (%s): %r', cache, full_embed.shape, exc) | |
else: | |
logger.info('New embed cache saved: %s (%s)', cache, full_embed.shape) | |
embed = self._extract_embed_fn(full_embed, x, idx) | |
embeds.append(embed) | |
embed = torch.stack(embeds, dim=0) | |
return embed | |
def populate_embed_cache(self, paths: tp.List[Path], x: tp.Any) -> None: | |
"""Populate in-memory caches for embeddings reading from the embeddings stored on disk. | |
The in-memory caches consist in a cache for the full embedding and another cache for the | |
final embedding chunk. Such caches are used to limit the IO access when computing the actual embeddings | |
and reduce the IO footprint and synchronization points during forward passes. | |
Args: | |
paths (list[Path]): List of paths from where the embeddings can be loaded. | |
x (any): Object from which the embedding is extracted. | |
""" | |
self._current_batch_cache.clear() | |
if self.cache_path is not None: | |
futures: list = [] | |
for path in paths: | |
assert path is not None, "Path is required for computation from cache" | |
cache = self._get_cache_path(path) | |
if cache in self._memory_cache or not cache.exists(): | |
futures.append(None) | |
else: | |
futures.append(self.pool.submit(EmbeddingCache._get_full_embed_from_cache, cache)) | |
for idx, (path, future) in enumerate(zip(paths, futures)): | |
assert path is not None | |
cache = self._get_cache_path(path) | |
full_embed = None | |
if future is None: | |
if cache in self._memory_cache: | |
full_embed = self._memory_cache[cache] | |
else: | |
full_embed = future.result() | |
if full_embed is not None: | |
self._memory_cache[cache] = full_embed | |
full_embed = full_embed.to(self.device) | |
if full_embed is not None: | |
embed = self._extract_embed_fn(full_embed, x, idx) | |
self._current_batch_cache[cache] = embed | |
class CachedBatchWriter: | |
"""Write pre computed caches for mini batches. This can | |
make loading a lot more efficient depending on your filesystem. | |
Args: | |
cache_folder (Path): folder in which the cached minibatches | |
will be stored. | |
Inside cache folder, the structure is the following: | |
`epoch_number / update_number.zip` | |
And the zip file contains one entry per batch item. | |
It is possible to use the cache with a batch size smaller than | |
created with but obviously not larger. Make sure to call the | |
`start_epoch(epoch)` method for indicating changes of epochs. | |
See the grid `audiocraft/grids/musicgen/musicgen_warmup_cache.py` | |
for an example of how to warmup the cache. | |
""" | |
def __init__(self, cache_folder: Path): | |
self.cache_folder = cache_folder | |
self._current_epoch: tp.Optional[int] = None | |
self._current_index = 0 | |
def start_epoch(self, epoch: int): | |
"""Call at the beginning of each epoch. | |
""" | |
self._current_epoch = epoch | |
self._current_index = 0 | |
self._zip_path.parent.mkdir(exist_ok=True, parents=True) | |
def _get_zip_path(cache_folder: Path, epoch: int, index: int): | |
return cache_folder / f"{epoch:05d}" / f"{index:06d}.zip" | |
def _zip_path(self): | |
assert self._current_epoch is not None | |
return CachedBatchWriter._get_zip_path(self.cache_folder, self._current_epoch, self._current_index) | |
def save(self, *content): | |
"""Save one mini batch. This function is distributed-aware | |
and will automatically merge all the items from the different | |
workers. | |
""" | |
all_contents = [] | |
for rank in range(flashy.distrib.world_size()): | |
their_content = flashy.distrib.broadcast_object(content, src=rank) | |
all_contents.append(their_content) | |
if flashy.distrib.is_rank_zero(): | |
idx = 0 | |
with flashy.utils.write_and_rename(self._zip_path) as tmp: | |
with zipfile.ZipFile(tmp, 'w') as zf: | |
for content in all_contents: | |
for vals in zip(*content): | |
with zf.open(f'{idx}', 'w') as f: # type: ignore | |
torch.save(vals, f) | |
idx += 1 | |
flashy.distrib.barrier() | |
self._current_index += 1 | |
class CachedBatchLoader: | |
"""Loader for cached mini-batches dumped with `CachedBatchWriter`. | |
Args: | |
cache_folder (Path): folder in which the cached minibatches are stored. | |
batch_size (int): batch size (per GPU) expected. | |
num_workers (int): number of workers to use for loading. | |
min_length (int): minimum expected length for each epoch. If some | |
mini-batches are missing, and error is raised. | |
This is iterable just like a regular DataLoader. | |
""" | |
def __init__(self, cache_folder: Path, batch_size: int, | |
num_workers: int = 10, min_length: int = 1): | |
self.cache_folder = cache_folder | |
self.batch_size = batch_size | |
self.num_workers = num_workers | |
self.min_length = min_length | |
self._current_epoch: tp.Optional[int] = None | |
self.sampler = None # for compatibility with the regular DataLoader | |
def __len__(self): | |
path = CachedBatchWriter._get_zip_path(self.cache_folder, self._current_epoch or 0, 0).parent | |
return len([p for p in path.iterdir() if p.suffix == ".zip"]) | |
def start_epoch(self, epoch: int): | |
"""Call at the beginning of each epoch. | |
""" | |
self._current_epoch = epoch | |
def _zip_path(self, index: int): | |
assert self._current_epoch is not None | |
return CachedBatchWriter._get_zip_path(self.cache_folder, self._current_epoch, index) | |
def _load_one(self, index: int): | |
zip_path = self._zip_path(index) | |
if not zip_path.exists(): | |
if index < self.min_length: | |
raise RuntimeError(f"Cache should have at least {self.min_length} batches, but {index} doesn't exist") | |
return None | |
mode = "rb" if sys.version_info >= (3, 9) else "r" | |
try: | |
with zipfile.ZipFile(zip_path, 'r') as zf: | |
rank = flashy.distrib.rank() | |
world_size = flashy.distrib.world_size() | |
root = zipfile.Path(zf) | |
items = list(root.iterdir()) | |
total_batch_size = self.batch_size * world_size | |
if len(items) < total_batch_size: | |
raise RuntimeError( | |
f"The cache can handle a max batch size of {len(items)}, " | |
f"but {total_batch_size} is needed.") | |
start = rank * self.batch_size | |
items = items[start: start + self.batch_size] | |
assert len(items) == self.batch_size | |
entries = [] | |
entries = [torch.load(item.open(mode), 'cpu') for item in items] # type: ignore | |
transposed = zip(*entries) | |
out = [] | |
for part in transposed: | |
assert len(part) > 0 | |
if isinstance(part[0], torch.Tensor): | |
out.append(torch.stack(part)) | |
else: | |
out.append(part) | |
return out | |
except Exception: | |
logger.error("Error when reading zip path %s", zip_path) | |
raise | |
def __iter__(self): | |
"""This will yields tuples, exactly as provided to the | |
`CachedBatchWriter.save` method. | |
""" | |
pool = ThreadPoolExecutor(self.num_workers) | |
next_index = 0 | |
queue = deque() | |
def _get_next(): | |
nonlocal next_index | |
r = queue.popleft().result() | |
if r is None: | |
return None | |
else: | |
queue.append(pool.submit(self._load_one, next_index)) | |
next_index += 1 | |
return r | |
with pool: | |
# fill the buffer of fetching jobs. | |
for _ in range(2 * self.num_workers): | |
queue.append(pool.submit(self._load_one, next_index)) | |
next_index += 1 | |
while True: | |
batch = _get_next() | |
if batch is None: | |
return | |
yield batch | |