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chore: import upstream snapshot with attribution
2026-07-13 12:59:56 +08:00

181 lines
6.0 KiB
Python

# SPDX-License-Identifier: AGPL-3.0-only
# Copyright 2026-present the Unsloth AI Inc. team. All rights reserved. See /studio/LICENSE.AGPL-3.0
"""Shared helpers for raw-text dataset preparation."""
from dataclasses import dataclass
from typing import Literal
from datasets import Dataset
@dataclass(frozen = True)
class RawTextNotice:
message: str
level: Literal["info", "warning"]
update_status: bool = False
@dataclass(frozen = True)
class RawTextPreparationResult:
dataset: Dataset
notices: list[RawTextNotice]
def resolve_column_names(dataset) -> list[str]:
"""Return the column names for *dataset*, guarding against None.
IterableDataset.column_names is None until HF datasets>=X materialises
it from the first batch; .map() also keeps it None. Resolution order:
1. dataset.column_names if truthy (regular Dataset or HF>=4.4)
2. keys of dataset.features if available
3. bounded first-row probe, consumes one element, safe on IterableDataset
because HF re-iterates from the generator on the next pass
4. [] as a last resort so callers never see None
"""
col_names = getattr(dataset, "column_names", None)
if col_names:
return list(col_names)
features = getattr(dataset, "features", None)
if features:
return list(features.keys())
try:
first_row = next(iter(dataset))
return list(first_row.keys())
except Exception:
return []
def _string_columns(dataset: Dataset) -> list[str]:
feature_map = getattr(dataset, "features", {}) or {}
string_cols: list[str] = []
for col in resolve_column_names(dataset):
feature = feature_map.get(col)
dtype = str(getattr(feature, "dtype", ""))
if dtype in {"string", "large_string"}:
string_cols.append(col)
return string_cols
def _split_scope(split_name: str | None) -> str:
return f"the {split_name} split" if split_name else "this dataset"
def _drop_invalid_text_rows(
dataset: Dataset, *, mode_title: str, split_scope: str
) -> tuple[Dataset, list[RawTextNotice]]:
# Lazy filter — drops rows whose 'text' is null/non-string before they reach
# the tokenizer. Works on both Dataset and streaming IterableDataset.
filtered_dataset = dataset.filter(lambda ex: isinstance(ex["text"], str))
# Streaming datasets (IterableDataset) have no __len__, so we can't count the
# dropped rows or verify the result is non-empty without consuming the whole
# stream. Keep the filter, skip only the len()-based diagnostics.
if not hasattr(dataset, "__len__"):
return filtered_dataset, [
RawTextNotice(
message = (
f"{mode_title}: streaming dataset — rows with null or "
f"non-string 'text' in {split_scope} are dropped on the fly."
),
level = "info",
)
]
dropped_rows = len(dataset) - len(filtered_dataset)
if not dropped_rows:
return filtered_dataset, []
if len(filtered_dataset) == 0:
raise ValueError(
f"{mode_title} training requires at least one string 'text' value "
f"in {split_scope}; all {dropped_rows} rows were null or non-string."
)
return filtered_dataset, [
RawTextNotice(
message = (
f"{mode_title}: dropped {dropped_rows:,} row(s) with null or "
f"non-string 'text' values from {split_scope}"
),
level = "warning",
update_status = True,
)
]
def prepare_raw_text_dataset(
dataset: Dataset,
*,
mode_label: str = "raw text",
split_name: str | None = None,
eos_token: str | None = None,
append_eos: bool = False,
) -> RawTextPreparationResult:
notices: list[RawTextNotice] = []
mode_title = mode_label.capitalize()
split_scope = _split_scope(split_name)
col_names = resolve_column_names(dataset)
if "text" not in col_names:
string_cols = _string_columns(dataset)
if not string_cols:
raise ValueError(
f"{mode_title} training requires a string 'text' column but none "
f"was found in {split_scope} (columns: {col_names})."
)
renamed_col = string_cols[0]
if len(string_cols) > 1:
notices.append(
RawTextNotice(
message = (
f"{mode_title}: dataset has {len(string_cols)} string "
f"columns ({string_cols}); auto-selecting '{renamed_col}' "
"as the training text. Rename the intended column to "
"'text' to override."
),
level = "warning",
update_status = True,
)
)
notices.append(
RawTextNotice(
message = (
f"{mode_title}: renaming column '{renamed_col}' -> 'text' " f"for {split_scope}"
),
level = "info",
)
)
dataset = dataset.rename_column(renamed_col, "text")
dataset, invalid_row_notices = _drop_invalid_text_rows(
dataset,
mode_title = mode_title,
split_scope = split_scope,
)
notices.extend(invalid_row_notices)
if append_eos:
if not eos_token:
notices.append(
RawTextNotice(
message = (
f"{mode_title}: tokenizer has no eos_token; skipping EOS "
"append. Model will not learn document boundaries."
),
level = "warning",
)
)
else:
def _append_eos(ex, _eos = eos_token):
text = ex["text"]
return {"text": text if text.endswith(_eos) else text + _eos}
dataset = dataset.map(_append_eos)
return RawTextPreparationResult(dataset = dataset, notices = notices)