marcenacp's picture
Deploy (see actual commits on https://github.com/mlcommons/croissant).
73ebcab
raw
history blame contribute delete
No virus
7.55 kB
import dataclasses
import hashlib
import io
import tempfile
from etils import epath
import magic
import pandas as pd
import requests
from .names import find_unique_name
from .path import get_resource_path
from .state import FileObject
from .state import FileSet
FILE_OBJECT = "FileObject"
FILE_SET = "FileSet"
RESOURCE_TYPES = [FILE_OBJECT, FILE_SET]
@dataclasses.dataclass
class FileType:
name: str
encoding_format: str
extensions: list[str]
class FileTypes:
CSV = FileType(name="CSV", encoding_format="text/csv", extensions=["csv"])
EXCEL = FileType(
name="Excel",
encoding_format="application/vnd.ms-excel",
extensions=["xls", "xlsx", "xlsm"],
)
GZIP = FileType(name="GZIP", encoding_format="application/gzip", extensions=["gz"])
JPEG = FileType(name="JPEG", encoding_format="image/jpeg", extensions=["json"])
JSON = FileType(
name="JSON", encoding_format="application/json", extensions=["json"]
)
JSONL = FileType(
name="JSON-Lines",
encoding_format="application/jsonl+json",
extensions=["jsonl"],
)
PARQUET = FileType(
name="Parquet",
encoding_format="application/vnd.apache.parquet",
extensions=["parquet"],
)
TAR = FileType(
name="Archive (TAR)",
encoding_format="application/x-tar",
extensions=["tar"],
)
TSV = FileType(
name="TSV", encoding_format="text/tab-separated-values", extensions=["tsv"]
)
TXT = FileType(
name="Text",
encoding_format="text/plain",
extensions=["txt"],
)
ZIP = FileType(
name="ZIP",
encoding_format="application/zip",
extensions=["zip"],
)
def _full_name(file_type: FileType):
return f"{file_type.name} ({file_type.encoding_format})"
FILE_TYPES: dict[str, FileType] = {
_full_name(file_type): file_type
for file_type in [
FileTypes.CSV,
FileTypes.EXCEL,
FileTypes.GZIP,
FileTypes.JPEG,
FileTypes.JSON,
FileTypes.JSONL,
FileTypes.PARQUET,
FileTypes.TAR,
FileTypes.TSV,
FileTypes.TXT,
FileTypes.ZIP,
]
}
ENCODING_FORMATS: dict[str, FileType] = {
file_type.encoding_format: file_type for file_type in FILE_TYPES.values()
}
def name_to_code(file_type_name: str) -> str | None:
"""Maps names to the encoding format: Text => plain/text."""
for name, file_type in FILE_TYPES.items():
if file_type_name == name:
return file_type.encoding_format
return None
def code_to_index(encoding_format: str) -> int | None:
"""Maps the encoding format to its index in the list of keys: plain/text => 12."""
for i, file_type in enumerate(FILE_TYPES.values()):
if file_type.encoding_format == encoding_format:
return i
return None
def _sha256(content: bytes):
"""Computes the sha256 digest of the byte string."""
return hashlib.sha256(content).hexdigest()
def hash_file_path(url: str) -> epath.Path:
"""Reproducibly produces the file path."""
tempdir = epath.Path(tempfile.gettempdir())
hash = _sha256(url.encode())
return tempdir / f"croissant-editor-{hash}"
def download_file(url: str, file_path: epath.Path):
"""Downloads the file locally to `file_path`."""
with requests.get(url, stream=True) as request:
request.raise_for_status()
with tempfile.TemporaryDirectory() as tmpdir:
tmpdir = epath.Path(tmpdir) / "file"
with tmpdir.open("wb") as file:
for chunk in request.iter_content(chunk_size=8192):
file.write(chunk)
tmpdir.copy(file_path)
def get_dataframe(file_type: FileType, file: io.BytesIO | epath.Path) -> pd.DataFrame:
"""Gets the df associated to the file."""
if file_type == FileTypes.CSV:
df = pd.read_csv(file)
elif file_type == FileTypes.EXCEL:
df = pd.read_excel(file)
elif file_type == FileTypes.JSON:
df = pd.read_json(file)
elif file_type == FileTypes.JSONL:
df = pd.read_json(file, lines=True)
elif file_type == FileTypes.PARQUET:
df = pd.read_parquet(file)
elif file_type == FileTypes.TSV:
df = pd.read_csv(file, sep="\t")
else:
raise NotImplementedError(
f"File type {file_type} is not supported. Please, open an issue on GitHub:"
" https://github.com/mlcommons/croissant/issues/new"
)
return df.infer_objects()
def _guess_mime_type(path: epath.Path) -> str:
"""Guess most specific MIME type."""
mime = magic.from_file(path, mime=True)
extension = path.suffix
if mime == "text/plain":
# In some cases, a CSV/TSV may be classified as text
# For example, if the file is not terminated by a newline
if extension == ".csv":
mime = "text/csv"
elif extension == ".tsv":
mime = "text/tab-separated-values"
return mime
def guess_file_type(path: epath.Path) -> FileType | None:
mime = _guess_mime_type(path)
return ENCODING_FORMATS.get(mime)
def file_from_url(url: str, names: set[str], folder: epath.Path) -> FileObject:
"""Downloads locally and extracts the file information."""
file_path = hash_file_path(url)
if not file_path.exists():
download_file(url, file_path)
with file_path.open("rb") as file:
sha256 = _sha256(file.read())
file_type = guess_file_type(file_path)
df = get_dataframe(file_type, file_path)
name = find_unique_name(names, url.split("/")[-1])
return FileObject(
id=name,
name=name,
description="",
content_url=url,
encoding_format=file_type.encoding_format,
sha256=sha256,
df=df,
folder=folder,
)
def file_from_upload(
file: io.BytesIO, names: set[str], folder: epath.Path
) -> FileObject:
"""Uploads locally and extracts the file information."""
value = file.getvalue()
content_url = f"data/{file.name}"
sha256 = _sha256(value)
file_path = get_resource_path(content_url)
with file_path.open("wb") as f:
f.write(value)
file_type = guess_file_type(file_path)
df = get_dataframe(file_type, file)
name = find_unique_name(names, file.name)
return FileObject(
id=name,
name=name,
description="",
content_url=content_url,
encoding_format=file_type.encoding_format,
sha256=sha256,
df=df,
folder=folder,
)
def file_from_form(
type: str, names: set[str], folder: epath.Path
) -> FileObject | FileSet:
"""Creates a file based on manually added fields."""
if type == FILE_OBJECT:
name = find_unique_name(names, "file_object")
return FileObject(id=name, name=name, folder=folder)
elif type == FILE_SET:
name = find_unique_name(names, "file_set")
return FileSet(id=name, name=name)
else:
raise ValueError("type has to be one of FILE_OBJECT, FILE_SET")
def is_url(file: FileObject) -> bool:
return file.content_url and file.content_url.startswith("http")
def trigger_download(file: FileObject):
if is_url(file):
file_path = hash_file_path(file.content_url)
if not file_path.exists():
download_file(file.content_url, file_path)
else:
file_path = get_resource_path(file.content_url)
file_type = guess_file_type(file_path)
df = get_dataframe(file_type, file_path)
file.df = df