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sthsuyash/README.md

Hi 👋, I'm Suyash Shrestha



A passionate Software Engineer and Computer Science & IT Undergraduate.

  • 🌱 I’m currently learning Machine Learning and RAG.

  • 👯 I’m looking to collaborate on Software development. projects

  • 💬 Ask me about Python and Javascript

  • 🤖 I'm keen on Backend Development, Machine Learning, RAG Systems and Data Analysis.

  • 📫 How to reach me [email protected]


Languages and Tools:

JavaScript TypeScript Python

React NodeJS Tailwind

PostgreSQL MongoDB Reddis

Docker Amazon AWS PyTorch

🔥 My Stats :

Github Stats Summary

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  1. CSIT_Labs CSIT_Labs Public

    Contains all the lab codes necessary for Computer Science students (especially CSIT, Tribhuvan University)

    Jupyter Notebook 34 8

  2. GharBikri GharBikri Public

    GharBikri is a RealEstate website where you can buy, sell and rent houses.

    JavaScript 11 4

  3. Nepali-news-portal Nepali-news-portal Public

    News portal for nepali community with devnagari scripts combined with various machine learning features such as sentiment analysis, news category classifier, news summarizer with english translatio…

    JavaScript 1

  4. News-algorithm News-algorithm Public

    Empowering Nepali language processing with machine learning: Tools for sentiment analysis, news classification, summarization and personalized recommendations

    Jupyter Notebook 1

  5. chat-pdf chat-pdf Public

    A chatbot system for interacting with PDF documents using a retrieval-augmented generation (RAG) approach. This project enables users to query and receive answers from PDF content efficiently.

    Jupyter Notebook