×
Morphik-core: Open-source AI tool for private knowledge apps
Written by
Published on
Join our daily newsletter for breaking news, product launches and deals, research breakdowns, and other industry-leading AI coverage
Join Now

Morphik Core introduces an open-source alternative to traditional Retrieval-Augmented Generation (RAG) systems, specifically designed for complex technical and visual document processing. This multimodal platform enables developers to overcome limitations in traditional text-only systems by offering comprehensive tools that understand both visual and textual content—filling a critical gap for organizations dealing with technical documentation containing diagrams, schematics, and other visual elements.

The big picture: Morphik provides an integrated solution for processing multimodal documents through a combination of visual understanding technology and knowledge graph capabilities.

  • The platform can process diverse document types including images, PDFs, and videos through a unified endpoint, eliminating the need for separate systems for different content types.
  • Its open-source nature (with MIT licensing for core functionality) allows developers to implement advanced document understanding without proprietary constraints.

Key features: The system offers several capabilities beyond standard RAG approaches, focusing on visual content understanding and metadata extraction.

  • It employs ColPali techniques for visual content comprehension, enabling users to query information contained within images and diagrams.
  • The platform can automatically generate domain-specific knowledge graphs with minimal coding, using either pre-built system prompts or custom configurations.
  • Morphik includes fast metadata extraction capabilities for documents, identifying elements like bounding boxes, classifications, and labels.

Integration capabilities: The platform is designed to work within existing enterprise ecosystems rather than requiring complete infrastructure changes.

  • It offers connections to productivity tools like Google Suite, Slack, and Confluence, allowing organizations to enhance their current document systems.
  • The system includes cache-augmented generation to create persistent key-value caches of documents, significantly improving response time for repeated queries.

Deployment options: Users can access Morphik through either cloud-based or self-hosted implementations depending on their requirements.

  • A free tier is available through the cloud service, offering 200 pages and 100 queries at no cost.
  • Self-hosting options exist for organizations with specific security or compliance requirements, though with limited support.

Implementation approach: Getting started with Morphik involves minimal code, with a Python SDK that simplifies document processing and querying.

  • The example code shows that developers can ingest complex files and query specific technical details (like dimensions of components in assembly instructions) with just a few lines of code.
  • While core functionality is open-source, certain enterprise features in the “ee” namespace operate under different licensing terms.
GitHub - morphik-org/morphik-core: Open source multi-modal RAG for building AI apps over private knowledge.

Recent News

Scaling generative AI 4 ways from experiments to production

Organizations face significant hurdles when moving generative AI initiatives from experimentation to production-ready systems, with most falling short of deployment goals despite executive interest.

Google expands Gemini AI with 2 new plans, leak reveals

Google prepares to introduce multiple subscription tiers for Gemini, addressing the gap between its free and premium AI offerings.

AI discovers potential Alzheimer’s cause and treatment

AI identifies PHGDH gene as a direct cause of Alzheimer's disease beyond its role as a biomarker, offering a new understanding of spontaneous cases and potential treatment pathways.