Beta/venv/lib/python3.12/site-packages/huggingface_hub/serialization/_dduf.py

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import json
import logging
import mmap
import os
import shutil
import zipfile
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from collections.abc import Generator, Iterable
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from contextlib import contextmanager
from dataclasses import dataclass, field
from pathlib import Path
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from typing import Any
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from ..errors import DDUFCorruptedFileError, DDUFExportError, DDUFInvalidEntryNameError
logger = logging.getLogger(__name__)
DDUF_ALLOWED_ENTRIES = {
# Allowed file extensions in a DDUF file
".json",
".model",
".safetensors",
".txt",
}
DDUF_FOLDER_REQUIRED_ENTRIES = {
# Each folder must contain at least one of these entries
"config.json",
"tokenizer_config.json",
"preprocessor_config.json",
"scheduler_config.json",
}
@dataclass
class DDUFEntry:
"""Object representing a file entry in a DDUF file.
See [`read_dduf_file`] for how to read a DDUF file.
Attributes:
filename (str):
The name of the file in the DDUF archive.
offset (int):
The offset of the file in the DDUF archive.
length (int):
The length of the file in the DDUF archive.
dduf_path (str):
The path to the DDUF archive (for internal use).
"""
filename: str
length: int
offset: int
dduf_path: Path = field(repr=False)
@contextmanager
def as_mmap(self) -> Generator[bytes, None, None]:
"""Open the file as a memory-mapped file.
Useful to load safetensors directly from the file.
Example:
```py
>>> import safetensors.torch
>>> with entry.as_mmap() as mm:
... tensors = safetensors.torch.load(mm)
```
"""
with self.dduf_path.open("rb") as f:
with mmap.mmap(f.fileno(), length=0, access=mmap.ACCESS_READ) as mm:
yield mm[self.offset : self.offset + self.length]
def read_text(self, encoding: str = "utf-8") -> str:
"""Read the file as text.
Useful for '.txt' and '.json' entries.
Example:
```py
>>> import json
>>> index = json.loads(entry.read_text())
```
"""
with self.dduf_path.open("rb") as f:
f.seek(self.offset)
return f.read(self.length).decode(encoding=encoding)
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def read_dduf_file(dduf_path: os.PathLike | str) -> dict[str, DDUFEntry]:
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"""
Read a DDUF file and return a dictionary of entries.
Only the metadata is read, the data is not loaded in memory.
Args:
dduf_path (`str` or `os.PathLike`):
The path to the DDUF file to read.
Returns:
`dict[str, DDUFEntry]`:
A dictionary of [`DDUFEntry`] indexed by filename.
Raises:
- [`DDUFCorruptedFileError`]: If the DDUF file is corrupted (i.e. doesn't follow the DDUF format).
Example:
```python
>>> import json
>>> import safetensors.torch
>>> from huggingface_hub import read_dduf_file
# Read DDUF metadata
>>> dduf_entries = read_dduf_file("FLUX.1-dev.dduf")
# Returns a mapping filename <> DDUFEntry
>>> dduf_entries["model_index.json"]
DDUFEntry(filename='model_index.json', offset=66, length=587)
# Load model index as JSON
>>> json.loads(dduf_entries["model_index.json"].read_text())
{'_class_name': 'FluxPipeline', '_diffusers_version': '0.32.0.dev0', '_name_or_path': 'black-forest-labs/FLUX.1-dev', ...
# Load VAE weights using safetensors
>>> with dduf_entries["vae/diffusion_pytorch_model.safetensors"].as_mmap() as mm:
... state_dict = safetensors.torch.load(mm)
```
"""
entries = {}
dduf_path = Path(dduf_path)
logger.info(f"Reading DDUF file {dduf_path}")
with zipfile.ZipFile(str(dduf_path), "r") as zf:
for info in zf.infolist():
logger.debug(f"Reading entry {info.filename}")
if info.compress_type != zipfile.ZIP_STORED:
raise DDUFCorruptedFileError("Data must not be compressed in DDUF file.")
try:
_validate_dduf_entry_name(info.filename)
except DDUFInvalidEntryNameError as e:
raise DDUFCorruptedFileError(f"Invalid entry name in DDUF file: {info.filename}") from e
offset = _get_data_offset(zf, info)
entries[info.filename] = DDUFEntry(
filename=info.filename, offset=offset, length=info.file_size, dduf_path=dduf_path
)
# Consistency checks on the DDUF file
if "model_index.json" not in entries:
raise DDUFCorruptedFileError("Missing required 'model_index.json' entry in DDUF file.")
index = json.loads(entries["model_index.json"].read_text())
_validate_dduf_structure(index, entries.keys())
logger.info(f"Done reading DDUF file {dduf_path}. Found {len(entries)} entries")
return entries
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def export_entries_as_dduf(dduf_path: str | os.PathLike, entries: Iterable[tuple[str, str | Path | bytes]]) -> None:
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"""Write a DDUF file from an iterable of entries.
This is a lower-level helper than [`export_folder_as_dduf`] that allows more flexibility when serializing data.
In particular, you don't need to save the data on disk before exporting it in the DDUF file.
Args:
dduf_path (`str` or `os.PathLike`):
The path to the DDUF file to write.
entries (`Iterable[tuple[str, Union[str, Path, bytes]]]`):
An iterable of entries to write in the DDUF file. Each entry is a tuple with the filename and the content.
The filename should be the path to the file in the DDUF archive.
The content can be a string or a pathlib.Path representing a path to a file on the local disk or directly the content as bytes.
Raises:
- [`DDUFExportError`]: If anything goes wrong during the export (e.g. invalid entry name, missing 'model_index.json', etc.).
Example:
```python
# Export specific files from the local disk.
>>> from huggingface_hub import export_entries_as_dduf
>>> export_entries_as_dduf(
... dduf_path="stable-diffusion-v1-4-FP16.dduf",
... entries=[ # List entries to add to the DDUF file (here, only FP16 weights)
... ("model_index.json", "path/to/model_index.json"),
... ("vae/config.json", "path/to/vae/config.json"),
... ("vae/diffusion_pytorch_model.fp16.safetensors", "path/to/vae/diffusion_pytorch_model.fp16.safetensors"),
... ("text_encoder/config.json", "path/to/text_encoder/config.json"),
... ("text_encoder/model.fp16.safetensors", "path/to/text_encoder/model.fp16.safetensors"),
... # ... add more entries here
... ]
... )
```
```python
# Export state_dicts one by one from a loaded pipeline
>>> from diffusers import DiffusionPipeline
>>> from typing import Generator, Tuple
>>> import safetensors.torch
>>> from huggingface_hub import export_entries_as_dduf
>>> pipe = DiffusionPipeline.from_pretrained("CompVis/stable-diffusion-v1-4")
... # ... do some work with the pipeline
>>> def as_entries(pipe: DiffusionPipeline) -> Generator[tuple[str, bytes], None, None]:
... # Build a generator that yields the entries to add to the DDUF file.
... # The first element of the tuple is the filename in the DDUF archive (must use UNIX separator!). The second element is the content of the file.
... # Entries will be evaluated lazily when the DDUF file is created (only 1 entry is loaded in memory at a time)
... yield "vae/config.json", pipe.vae.to_json_string().encode()
... yield "vae/diffusion_pytorch_model.safetensors", safetensors.torch.save(pipe.vae.state_dict())
... yield "text_encoder/config.json", pipe.text_encoder.config.to_json_string().encode()
... yield "text_encoder/model.safetensors", safetensors.torch.save(pipe.text_encoder.state_dict())
... # ... add more entries here
>>> export_entries_as_dduf(dduf_path="stable-diffusion-v1-4.dduf", entries=as_entries(pipe))
```
"""
logger.info(f"Exporting DDUF file '{dduf_path}'")
filenames = set()
index = None
with zipfile.ZipFile(str(dduf_path), "w", zipfile.ZIP_STORED) as archive:
for filename, content in entries:
if filename in filenames:
raise DDUFExportError(f"Can't add duplicate entry: {filename}")
filenames.add(filename)
if filename == "model_index.json":
try:
index = json.loads(_load_content(content).decode())
except json.JSONDecodeError as e:
raise DDUFExportError("Failed to parse 'model_index.json'.") from e
try:
filename = _validate_dduf_entry_name(filename)
except DDUFInvalidEntryNameError as e:
raise DDUFExportError(f"Invalid entry name: {filename}") from e
logger.debug(f"Adding entry '{filename}' to DDUF file")
_dump_content_in_archive(archive, filename, content)
# Consistency checks on the DDUF file
if index is None:
raise DDUFExportError("Missing required 'model_index.json' entry in DDUF file.")
try:
_validate_dduf_structure(index, filenames)
except DDUFCorruptedFileError as e:
raise DDUFExportError("Invalid DDUF file structure.") from e
logger.info(f"Done writing DDUF file {dduf_path}")
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def export_folder_as_dduf(dduf_path: str | os.PathLike, folder_path: str | os.PathLike) -> None:
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"""
Export a folder as a DDUF file.
AUses [`export_entries_as_dduf`] under the hood.
Args:
dduf_path (`str` or `os.PathLike`):
The path to the DDUF file to write.
folder_path (`str` or `os.PathLike`):
The path to the folder containing the diffusion model.
Example:
```python
>>> from huggingface_hub import export_folder_as_dduf
>>> export_folder_as_dduf(dduf_path="FLUX.1-dev.dduf", folder_path="path/to/FLUX.1-dev")
```
"""
folder_path = Path(folder_path)
def _iterate_over_folder() -> Iterable[tuple[str, Path]]:
for path in Path(folder_path).glob("**/*"):
if not path.is_file():
continue
if path.suffix not in DDUF_ALLOWED_ENTRIES:
logger.debug(f"Skipping file '{path}' (file type not allowed)")
continue
path_in_archive = path.relative_to(folder_path)
if len(path_in_archive.parts) >= 3:
logger.debug(f"Skipping file '{path}' (nested directories not allowed)")
continue
yield path_in_archive.as_posix(), path
export_entries_as_dduf(dduf_path, _iterate_over_folder())
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def _dump_content_in_archive(archive: zipfile.ZipFile, filename: str, content: str | os.PathLike | bytes) -> None:
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with archive.open(filename, "w", force_zip64=True) as archive_fh:
if isinstance(content, (str, Path)):
content_path = Path(content)
with content_path.open("rb") as content_fh:
shutil.copyfileobj(content_fh, archive_fh, 1024 * 1024 * 8) # type: ignore[misc]
elif isinstance(content, bytes):
archive_fh.write(content)
else:
raise DDUFExportError(f"Invalid content type for {filename}. Must be str, Path or bytes.")
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def _load_content(content: str | Path | bytes) -> bytes:
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"""Load the content of an entry as bytes.
Used only for small checks (not to dump content into archive).
"""
if isinstance(content, (str, Path)):
return Path(content).read_bytes()
elif isinstance(content, bytes):
return content
else:
raise DDUFExportError(f"Invalid content type. Must be str, Path or bytes. Got {type(content)}.")
def _validate_dduf_entry_name(entry_name: str) -> str:
if "." + entry_name.split(".")[-1] not in DDUF_ALLOWED_ENTRIES:
raise DDUFInvalidEntryNameError(f"File type not allowed: {entry_name}")
if "\\" in entry_name:
raise DDUFInvalidEntryNameError(f"Entry names must use UNIX separators ('/'). Got {entry_name}.")
entry_name = entry_name.strip("/")
if entry_name.count("/") > 1:
raise DDUFInvalidEntryNameError(f"DDUF only supports 1 level of directory. Got {entry_name}.")
return entry_name
def _validate_dduf_structure(index: Any, entry_names: Iterable[str]) -> None:
"""
Consistency checks on the DDUF file structure.
Rules:
- The 'model_index.json' entry is required and must contain a dictionary.
- Each folder name must correspond to an entry in 'model_index.json'.
- Each folder must contain at least a config file ('config.json', 'tokenizer_config.json', 'preprocessor_config.json', 'scheduler_config.json').
Args:
index (Any):
The content of the 'model_index.json' entry.
entry_names (Iterable[str]):
The list of entry names in the DDUF file.
Raises:
- [`DDUFCorruptedFileError`]: If the DDUF file is corrupted (i.e. doesn't follow the DDUF format).
"""
if not isinstance(index, dict):
raise DDUFCorruptedFileError(f"Invalid 'model_index.json' content. Must be a dictionary. Got {type(index)}.")
dduf_folders = {entry.split("/")[0] for entry in entry_names if "/" in entry}
for folder in dduf_folders:
if folder not in index:
raise DDUFCorruptedFileError(f"Missing required entry '{folder}' in 'model_index.json'.")
if not any(f"{folder}/{required_entry}" in entry_names for required_entry in DDUF_FOLDER_REQUIRED_ENTRIES):
raise DDUFCorruptedFileError(
f"Missing required file in folder '{folder}'. Must contains at least one of {DDUF_FOLDER_REQUIRED_ENTRIES}."
)
def _get_data_offset(zf: zipfile.ZipFile, info: zipfile.ZipInfo) -> int:
"""
Calculate the data offset for a file in a ZIP archive.
Args:
zf (`zipfile.ZipFile`):
The opened ZIP file. Must be opened in read mode.
info (`zipfile.ZipInfo`):
The file info.
Returns:
int: The offset of the file data in the ZIP archive.
"""
if zf.fp is None:
raise DDUFCorruptedFileError("ZipFile object must be opened in read mode.")
# Step 1: Get the local file header offset
header_offset = info.header_offset
# Step 2: Read the local file header
zf.fp.seek(header_offset)
local_file_header = zf.fp.read(30) # Fixed-size part of the local header
if len(local_file_header) < 30:
raise DDUFCorruptedFileError("Incomplete local file header.")
# Step 3: Parse the header fields to calculate the start of file data
# Local file header: https://en.wikipedia.org/wiki/ZIP_(file_format)#File_headers
filename_len = int.from_bytes(local_file_header[26:28], "little")
extra_field_len = int.from_bytes(local_file_header[28:30], "little")
# Data offset is after the fixed header, filename, and extra fields
data_offset = header_offset + 30 + filename_len + extra_field_len
return data_offset