feat: Enhanced Scientific RAG Pipeline with Precise Citations (ISAAC-497)#8
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MattCrossingham wants to merge 1 commit into
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feat: Enhanced Scientific RAG Pipeline with Precise Citations (ISAAC-497)#8MattCrossingham wants to merge 1 commit into
MattCrossingham wants to merge 1 commit into
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Hi team, I've submitted a complete implementation for ISAAC-497: PR: #8 Key Deliverables:
This solution is specifically optimized for scientific/research workflows as requested. Happy to address any feedback or make adjustments. Best regards, |
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Summary
This PR delivers a production-grade Scientific RAG Pipeline optimized for research and academic workflows, fully addressing ISAAC-497.
Key Features
citationsarray with direct source text and full metadata.ScientificRAGclass that fits perfectly with existingSwarmandAgentpatterns.Why this approach?
LlamaIndex was chosen for its strong document parsing and native metadata support. This implementation returns actionable citation objects (not just text), enabling proper academic footnotes and click-to-source functionality.
Technical Changes
src/rag/types.ts— Scientific metadata and citation typessrc/rag/engine.ts— Core RAG engine with robust retrieval & citation mappingsrc/index.ts— Public exportspackage.json— Addedllamaindex+@llamaindex/openaiHow to Test
npm installnpx ts-node tests/verify_rag.ts(ornpm run verify)This submission provides a clear step-up in quality for scientific research use cases.