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237 lines
10 KiB
Python
237 lines
10 KiB
Python
# SPDX-FileCopyrightText: 2022-present deepset GmbH <info@deepset.ai>
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#
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# SPDX-License-Identifier: Apache-2.0
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import io
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import os
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from pathlib import Path
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from typing import Any, Literal
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from haystack import Document, component, logging
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from haystack.components.converters.utils import get_bytestream_from_source, normalize_metadata
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from haystack.dataclasses import ByteStream
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from haystack.lazy_imports import LazyImport
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logger = logging.getLogger(__name__)
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with LazyImport("Run 'pip install pandas openpyxl'") as pandas_xlsx_import:
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import openpyxl
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import pandas as pd
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with LazyImport("Run 'pip install tabulate'") as tabulate_import:
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from tabulate import tabulate # noqa: F401 # the library is used but not directly referenced
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@component
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class XLSXToDocument:
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"""
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Converts XLSX (Excel) files into Documents.
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Supports reading data from specific sheets or all sheets in the Excel file. If all sheets are read, a Document is
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created for each sheet. The content of the Document is the table which can be saved in CSV or Markdown format.
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### Usage example
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```python
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from haystack.components.converters.xlsx import XLSXToDocument
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from datetime import datetime
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converter = XLSXToDocument()
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results = converter.run(
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sources=["test/test_files/xlsx/basic_tables_two_sheets.xlsx"], meta={"date_added": datetime.now().isoformat()}
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)
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documents = results["documents"]
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print(documents[0].content)
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# >> ",A,B\\n1,col_a,col_b\\n2,1.5,test\\n"
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```
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"""
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def __init__(
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self,
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table_format: Literal["csv", "markdown"] = "csv",
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sheet_name: str | int | list[str | int] | None = None,
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read_excel_kwargs: dict[str, Any] | None = None,
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table_format_kwargs: dict[str, Any] | None = None,
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*,
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link_format: Literal["markdown", "plain", "none"] = "none",
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store_full_path: bool = False,
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) -> None:
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"""
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Creates a XLSXToDocument component.
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:param table_format: The format to convert the Excel file to.
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:param sheet_name: The name of the sheet to read. If None, all sheets are read.
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:param read_excel_kwargs: Additional arguments to pass to `pandas.read_excel`.
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See https://pandas.pydata.org/docs/reference/api/pandas.read_excel.html#pandas-read-excel
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:param table_format_kwargs: Additional keyword arguments to pass to the table format function.
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- If `table_format` is "csv", these arguments are passed to `pandas.DataFrame.to_csv`.
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See https://pandas.pydata.org/docs/reference/api/pandas.DataFrame.to_csv.html#pandas-dataframe-to-csv
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- If `table_format` is "markdown", these arguments are passed to `pandas.DataFrame.to_markdown`.
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See https://pandas.pydata.org/docs/reference/api/pandas.DataFrame.to_markdown.html#pandas-dataframe-to-markdown
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:param link_format: The format for link output. Possible options:
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- `"markdown"`: `[text](url)`
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- `"plain"`: `text (url)`
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- `"none"`: Only the text is extracted, link addresses are ignored.
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:param store_full_path:
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If True, the full path of the file is stored in the metadata of the document.
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If False, only the file name is stored.
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"""
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pandas_xlsx_import.check()
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self.table_format = table_format
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if table_format not in ["csv", "markdown"]:
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raise ValueError(f"Unsupported export format: {table_format}. Choose either 'csv' or 'markdown'.")
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if link_format not in ("markdown", "plain", "none"):
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msg = f"Unknown link format '{link_format}'. Supported formats are: 'markdown', 'plain', 'none'"
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raise ValueError(msg)
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if table_format == "markdown":
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tabulate_import.check()
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self.link_format = link_format
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self.sheet_name = sheet_name
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self.read_excel_kwargs = read_excel_kwargs or {}
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self.table_format_kwargs = table_format_kwargs or {}
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self.store_full_path = store_full_path
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@component.output_types(documents=list[Document])
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def run(
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self, sources: list[str | Path | ByteStream], meta: dict[str, Any] | list[dict[str, Any]] | None = None
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) -> dict[str, list[Document]]:
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"""
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Converts a XLSX file to a Document.
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:param sources:
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List of file paths or ByteStream objects.
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:param meta:
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Optional metadata to attach to the documents.
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This value can be either a list of dictionaries or a single dictionary.
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If it's a single dictionary, its content is added to the metadata of all produced documents.
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If it's a list, the length of the list must match the number of sources, because the two lists will
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be zipped.
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If `sources` contains ByteStream objects, their `meta` will be added to the output documents.
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:returns:
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A dictionary with the following keys:
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- `documents`: Created documents
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"""
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documents = []
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meta_list = normalize_metadata(meta, sources_count=len(sources))
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for source, metadata in zip(sources, meta_list, strict=True):
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try:
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bytestream = get_bytestream_from_source(source)
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except Exception as e:
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logger.warning("Could not read {source}. Skipping it. Error: {error}", source=source, error=e)
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continue
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try:
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tables, tables_metadata = self._extract_tables(bytestream)
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except Exception as e:
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logger.warning(
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"Could not read {source} and convert it to a Document, skipping. Error: {error}",
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source=source,
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error=e,
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)
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continue
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# Loop over tables and create a Document for each table
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for table, excel_metadata in zip(tables, tables_metadata, strict=True):
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merged_metadata = {**bytestream.meta, **metadata, **excel_metadata}
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if not self.store_full_path and "file_path" in bytestream.meta:
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file_path = bytestream.meta["file_path"]
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merged_metadata["file_path"] = os.path.basename(file_path)
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document = Document(content=table, meta=merged_metadata)
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documents.append(document)
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return {"documents": documents}
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@staticmethod
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def _generate_excel_column_names(n_cols: int) -> list[str]:
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result = []
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for i in range(n_cols):
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col_name = ""
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num = i
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while num >= 0:
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col_name = chr(num % 26 + 65) + col_name
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num = num // 26 - 1
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result.append(col_name)
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return result
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def _extract_tables(self, bytestream: ByteStream) -> tuple[list[str], list[dict]]:
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"""
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Extract tables from an Excel file.
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"""
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file_bytes = io.BytesIO(bytestream.data)
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resolved_read_excel_kwargs = {
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**self.read_excel_kwargs,
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"sheet_name": self.sheet_name,
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"header": None, # Don't assign any pandas column labels
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"engine": "openpyxl", # Use openpyxl as the engine to read the Excel file
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}
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sheet_to_dataframe = pd.read_excel(io=file_bytes, **resolved_read_excel_kwargs)
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if isinstance(sheet_to_dataframe, pd.DataFrame):
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sheet_to_dataframe = {self.sheet_name: sheet_to_dataframe}
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# If link extraction is enabled, load the workbook with openpyxl to read hyperlinks
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hyperlinks_by_sheet: dict[str | int | None, dict[tuple[int, int], str]] = {}
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if self.link_format != "none":
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file_bytes.seek(0)
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wb = openpyxl.load_workbook(file_bytes, data_only=True)
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for sheet_key in sheet_to_dataframe:
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if isinstance(sheet_key, int):
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ws = wb.worksheets[sheet_key]
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elif sheet_key is None:
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ws = wb.active
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else:
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ws = wb[sheet_key]
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cell_links: dict[tuple[int, int], str] = {}
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for row in ws.iter_rows():
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for cell in row:
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if cell.hyperlink and cell.hyperlink.target:
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# Convert to 0-based indices to match DataFrame positions
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cell_links[(cell.row - 1, cell.column - 1)] = cell.hyperlink.target
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hyperlinks_by_sheet[sheet_key] = cell_links
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wb.close()
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updated_sheet_to_dataframe = {}
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for key in sheet_to_dataframe:
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df = sheet_to_dataframe[key]
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# Row starts at 1 in Excel
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df.index = df.index + 1
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# Excel column names are Alphabet Characters
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header = self._generate_excel_column_names(df.shape[1])
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df.columns = header
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# Apply hyperlinks to cell values
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if key in hyperlinks_by_sheet:
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for (row_idx, col_idx), url in hyperlinks_by_sheet[key].items():
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if row_idx < len(df) and col_idx < len(df.columns):
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cell_value = df.iat[row_idx, col_idx]
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text = str(cell_value) if pd.notna(cell_value) else ""
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if self.link_format == "markdown":
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df.iat[row_idx, col_idx] = f"[{text}]({url})"
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else:
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df.iat[row_idx, col_idx] = f"{text} ({url})"
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updated_sheet_to_dataframe[key] = df
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tables = []
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metadata = []
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for key, value in updated_sheet_to_dataframe.items():
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if self.table_format == "csv":
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resolved_kwargs = {"index": True, "header": True, "lineterminator": "\n", **self.table_format_kwargs}
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tables.append(value.to_csv(**resolved_kwargs))
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else:
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resolved_kwargs = {
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"index": True,
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"headers": value.columns,
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"tablefmt": "pipe",
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**self.table_format_kwargs,
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}
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# to_markdown uses tabulate
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tables.append(value.to_markdown(**resolved_kwargs))
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# add sheet_name to metadata
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metadata.append({"xlsx": {"sheet_name": key}})
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return tables, metadata
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