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# requires-python = ">=3.10"
# dependencies = [
# "datasets>=3.0.0",
# "huggingface_hub>=0.24.0",
# ]
# ///
from __future__ import annotations
import argparse
import json
import os
import re
from collections import OrderedDict
from typing import Any
from datasets import Dataset, DatasetDict, load_dataset
PAGE_RE = re.compile(r"_(\d{3,})-")
DEFAULT_KEEP_COLUMNS = [
"title",
"barcode",
"call_number",
"location",
"date_scanned",
"scanned_by",
"ld4p_id",
"original_zip",
]
def normalize_value(value: Any) -> Any:
"""Make values safe and stable for Dataset.from_list."""
if value is None:
return None
if isinstance(value, (str, int, float, bool)):
return value
try:
return json.dumps(value, ensure_ascii=False, sort_keys=True)
except TypeError:
return str(value)
def parse_page_number(source_path: str | None) -> int | None:
if not source_path:
return None
match = PAGE_RE.search(source_path)
if match:
return int(match.group(1))
return None
def make_document_id(row: dict[str, Any], group_by: list[str]) -> str:
values = [str(row.get(col, "")).strip() for col in group_by]
return "::".join(values)
def reduce_split(
ds: Dataset,
*,
group_by: list[str],
keep_columns: list[str],
markdown_column: str,
source_path_column: str,
inference_info_column: str,
add_page_markers: bool,
) -> Dataset:
missing_group_cols = [col for col in group_by if col not in ds.column_names]
if missing_group_cols:
raise ValueError(f"Missing grouping columns: {missing_group_cols}")
if markdown_column not in ds.column_names:
raise ValueError(f"Missing markdown column: {markdown_column}")
if source_path_column not in ds.column_names:
raise ValueError(f"Missing source path column: {source_path_column}")
# Crucial: remove image/reference image columns before row iteration.
# This avoids decoding or carrying image payloads into the reduced dataset.
early_drop_columns = [col for col in ["image"] if col in ds.column_names]
if early_drop_columns:
ds = ds.remove_columns(early_drop_columns)
keep_columns = [col for col in keep_columns if col in ds.column_names]
documents: OrderedDict[tuple[Any, ...], dict[str, Any]] = OrderedDict()
for row_index, row in enumerate(ds):
key = tuple(normalize_value(row.get(col)) for col in group_by)
if key not in documents:
doc = {
col: normalize_value(row.get(col))
for col in keep_columns
}
doc["document_id"] = make_document_id(row, group_by)
doc["_pages"] = []
documents[key] = doc
source_path = row.get(source_path_column)
page_number = parse_page_number(source_path)
documents[key]["_pages"].append(
{
"row_index": row_index,
"page_number": page_number,
"source_path": normalize_value(source_path),
"markdown": row.get(markdown_column) or "",
"inference_info": normalize_value(row.get(inference_info_column))
if inference_info_column in ds.column_names
else None,
}
)
output_rows: list[dict[str, Any]] = []
for doc in documents.values():
pages = sorted(
doc["_pages"],
key=lambda p: (
p["page_number"] is None,
p["page_number"] if p["page_number"] is not None else 10**12,
p["row_index"],
),
)
markdown_parts = []
for idx, page in enumerate(pages, start=1):
text = page["markdown"].strip()
if add_page_markers:
marker = f"<!-- page {idx}; source_path: {page['source_path']} -->"
markdown_parts.append(f"{marker}\n\n{text}".strip())
else:
markdown_parts.append(text)
source_paths = [p["source_path"] for p in pages]
page_numbers = [p["page_number"] for p in pages]
inference_infos = [
p["inference_info"]
for p in pages
if p.get("inference_info") not in (None, "")
]
doc.pop("_pages", None)
doc[markdown_column] = "\n\n".join(part for part in markdown_parts if part)
doc["page_count"] = len(pages)
doc["source_paths"] = source_paths
doc["page_numbers"] = page_numbers
# Usually identical across pages; keep first value as document-level metadata.
doc[inference_info_column] = inference_infos[0] if inference_infos else None
output_rows.append(doc)
return Dataset.from_list(output_rows)
def parse_csv_arg(value: str) -> list[str]:
return [part.strip() for part in value.split(",") if part.strip()]
def main() -> None:
parser = argparse.ArgumentParser(
description="Consolidate page-level OCR rows into document-level OCR rows."
)
parser.add_argument(
"--input-dataset",
required=True,
help="Input Hugging Face dataset repo ID, e.g. username/page-level-ocr",
)
parser.add_argument(
"--output-dataset",
required=True,
help="Output Hugging Face dataset repo ID, e.g. username/document-level-ocr",
)
parser.add_argument(
"--config",
default=None,
help="Optional dataset config/subset name.",
)
parser.add_argument(
"--split",
default=None,
help="Optional split to process. If omitted, all splits are processed.",
)
parser.add_argument(
"--group-by",
default="barcode",
help="Comma-separated grouping columns. Default: barcode",
)
parser.add_argument(
"--keep-columns",
default=",".join(DEFAULT_KEEP_COLUMNS),
help="Comma-separated metadata columns to preserve.",
)
parser.add_argument(
"--markdown-column",
default="markdown",
help="OCR text column to concatenate. Default: markdown",
)
parser.add_argument(
"--source-path-column",
default="source_path",
help="Column used to infer page order. Default: source_path",
)
parser.add_argument(
"--inference-info-column",
default="inference_info",
help="Column containing OCR inference metadata. Default: inference_info",
)
parser.add_argument(
"--no-page-markers",
action="store_true",
help="Do not insert HTML page markers into the consolidated markdown.",
)
parser.add_argument(
"--private",
action="store_true",
help="Create the output dataset as private if it does not already exist.",
)
parser.add_argument(
"--token",
default=os.environ.get("HF_TOKEN"),
help="Hugging Face token. Defaults to HF_TOKEN environment variable.",
)
parser.add_argument(
"--dry-run",
action="store_true",
help="Print a summary instead of pushing to the Hub.",
)
args = parser.parse_args()
group_by = parse_csv_arg(args.group_by)
keep_columns = parse_csv_arg(args.keep_columns)
load_kwargs: dict[str, Any] = {
"path": args.input_dataset,
}
if args.config:
load_kwargs["name"] = args.config
if args.split:
load_kwargs["split"] = args.split
if args.token:
load_kwargs["token"] = args.token
loaded = load_dataset(**load_kwargs)
reduce_kwargs = {
"group_by": group_by,
"keep_columns": keep_columns,
"markdown_column": args.markdown_column,
"source_path_column": args.source_path_column,
"inference_info_column": args.inference_info_column,
"add_page_markers": not args.no_page_markers,
}
if isinstance(loaded, DatasetDict):
reduced = DatasetDict(
{
split_name: reduce_split(split_ds, **reduce_kwargs)
for split_name, split_ds in loaded.items()
}
)
else:
reduced = reduce_split(loaded, **reduce_kwargs)
if args.dry_run:
if isinstance(reduced, DatasetDict):
for split_name, split_ds in reduced.items():
print(f"{split_name}: {split_ds.num_rows} consolidated documents")
print(split_ds[0] if split_ds.num_rows else "No rows")
else:
print(f"{reduced.num_rows} consolidated documents")
print(reduced[0] if reduced.num_rows else "No rows")
return
push_kwargs: dict[str, Any] = {
"repo_id": args.output_dataset,
"private": args.private,
}
if args.token:
push_kwargs["token"] = args.token
reduced.push_to_hub(**push_kwargs)
print(f"Pushed consolidated dataset to: {args.output_dataset}")
if __name__ == "__main__":
main() |