"""Loader that loads .ipynb notebook files.""" import json from pathlib import Path from typing import Any, List import pandas as pd from langchain.docstore.document import Document from langchain.document_loaders.base import BaseLoader def concatenate_cells( cell: dict, include_outputs: bool, max_output_length: int, traceback: bool ) -> str: """Combine cells information in a readable format ready to be used.""" cell_type = cell["cell_type"] source = cell["source"] output = cell["outputs"] if include_outputs and cell_type == "code" and output: if "ename" in output[0].keys(): error_name = output[0]["ename"] error_value = output[0]["evalue"] if traceback: traceback = output[0]["traceback"] return ( f"'{cell_type}' cell: '{source}'\n, gives error '{error_name}'," f" with description '{error_value}'\n" f"and traceback '{traceback}'\n\n" ) else: return ( f"'{cell_type}' cell: '{source}'\n, gives error '{error_name}'," f"with description '{error_value}'\n\n" ) elif output[0]["output_type"] == "stream": output = output[0]["text"] min_output = min(max_output_length, len(output)) return ( f"'{cell_type}' cell: '{source}'\n with " f"output: '{output[:min_output]}'\n\n" ) else: return f"'{cell_type}' cell: '{source}'\n\n" return "" def remove_newlines(x: Any) -> Any: """Remove recursivelly newlines, no matter the data structure they are stored in.""" if isinstance(x, str): return x.replace("\n", "") elif isinstance(x, list): return [remove_newlines(elem) for elem in x] elif isinstance(x, pd.DataFrame): return x.applymap(remove_newlines) else: return x class NotebookLoader(BaseLoader): """Loader that loads .ipynb notebook files.""" def __init__( self, path: str, include_outputs: bool = False, max_output_length: int = 10, remove_newline: bool = False, traceback: bool = False, ): """Initialize with path.""" self.file_path = path self.include_outputs = include_outputs self.max_output_length = max_output_length self.remove_newline = remove_newline self.traceback = traceback def load( self, ) -> List[Document]: """Load documents.""" try: import pandas as pd except ImportError: raise ValueError( "pandas is needed for Notebook Loader, " "please install with `pip install pandas`" ) p = Path(self.file_path) with open(p, encoding="utf8") as f: d = json.load(f) data = pd.json_normalize(d["cells"]) filtered_data = data[["cell_type", "source", "outputs"]] if self.remove_newline: filtered_data = filtered_data.applymap(remove_newlines) text = filtered_data.apply( lambda x: concatenate_cells( x, self.include_outputs, self.max_output_length, self.traceback ), axis=1, ).str.cat(sep=" ") metadata = {"source": str(p)} return [Document(page_content=text, metadata=metadata)]