awesome-repositories.com
Blog
awesome-repositories.com

Découvrez les meilleurs dépôts open-source grâce à notre recherche par IA.

ExplorerRecherches sélectionnéesAlternatives open sourceLogiciels auto-hébergésBlogPlan du site
ProjetÀ proposNotre méthodologiePresseServeur MCP
Mentions légalesConfidentialitéConditions d'utilisation
© 2026 Bringes Technology SRL·VAT RO45896025·hello@awesome-repositories.com
·

2 dépôts

Awesome GitHub RepositoriesDocument Loaders

Components that extract raw text from various file formats and web sources.

Distinct from Document Splitters: Focuses on the ingestion of diverse file formats, whereas document splitters focus on dividing existing text into chunks.

Explore 2 awesome GitHub repositories matching data & databases · Document Loaders. Refine with filters or upvote what's useful.

Awesome Document Loaders GitHub Repositories

Trouvez les meilleurs dépôts grâce à l'IA.Nous recherchons les dépôts les plus pertinents grâce à l'IA.
  • opendataloader-project/opendataloader-pdfAvatar de opendataloader-project

    opendataloader-project/opendataloader-pdf

    25,769Voir sur GitHub↗

    This project is a PDF data extraction tool and document preprocessor designed to convert PDF files into structured formats such as Markdown, JSON, and HTML. It functions as an OCR document parser for scanned files, an accessibility automator for generating PDF/UA compliant metadata, and a loader for AI orchestration frameworks like LangChain. The software distinguishes itself through specialized handling of complex document elements, including the conversion of mathematical formulas into LaTeX and the generation of natural-language descriptions for charts and images. It utilizes recursive seg

    Functions as a document loader that integrates structured PDF content into the LangChain orchestration framework.

    Javaa11yaccessibilityai
    Voir sur GitHub↗25,769
  • tmc/langchaingoAvatar de tmc

    tmc/langchaingo

    9,416Voir sur GitHub↗

    langchaingo is an LLM application framework for Go designed for building language model-powered applications and autonomous agents. It serves as an orchestration library and tool integration framework that allows developers to link prompt sequences and model calls into complex, multi-step workflows. The project provides a toolkit for implementing retrieval-augmented generation pipelines by processing unstructured documents and retrieving relevant context via vector search. It includes a dedicated integration layer for indexing high-dimensional embeddings and performing similarity searches acr

    Ships a pipeline of loaders and text splitters to transform diverse file formats into chunked data.

    Go
    Voir sur GitHub↗9,416
  1. Home
  2. Data & Databases
  3. Document Splitters
  4. Document Loaders