A travel assistant made to answer travel related queries. It responds using data retrieved from both Pinecone and Neo4j. Currently only works for Vietnam
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Updated
Mar 30, 2026 - Python
A travel assistant made to answer travel related queries. It responds using data retrieved from both Pinecone and Neo4j. Currently only works for Vietnam
EduPilot is an intelligent course assistant built for Indiana University students. It answers questions across four graduate courses β AML, ADT, STAT, and LLM β using a seven-stage multi-agent RAG pipeline that retrieves directly from course lecture slides and materials, cites every claim and verifies its own answers, and refuses to hallucinate.
In this project, I made a resume scoring system. And it not only scores candidates based on Job Description & Resume but it can also have user profiles and their personal hiring preferences. So a particular user can filter Resume in bulk according to their personal preference. It also learns user preferences with time and evolves for each user.
RAG pipeline to query and analyze software engineering case studies
AI credit-card recommender (RAG) with Mistral & AI credit-card recommender (RAG) with Mistral & Pinecone β semantic search, comparisons & FastAPI ππ³π
A Retrieval-Augmented Generation (RAG) pipeline built to query and analyze state-level energy policies.
Built a multi-agent AI Assistant using LLMs, LangChain, and LangGraph with RAG-based document retrieval. Enabled context-aware Q&A over PDFs using Pinecone vector DB. Implemented FastAPI backend with JWT authentication for scalable, secure AI interactions.
Multimodal RAG architecture integrating Pinecone vector store and Gemini LLM for querying text and images from documents.
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