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agusrajuthaliyan/README.md

I'm a passionate Data Analyst and Developer enthusiastic about AI, Data Science, and Web Development. I love building impactful projects and exploring new technologies.

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Hugging Face LangChain Pydantic RAG ChromaDB Firecrawl BeautifulSoup4 Gemini Llama NumPy Pandas Anaconda Plotly Seaborn MediaPipe Streamlit Gradio Power BI Excel Canva Framer Oracle DB Supabase

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  1. Stock-Price-Prediction-App Stock-Price-Prediction-App Public

    This Streamlit-based web application predicts the closing price of stocks using historical data and a Random Forest model. Users can select any stock symbol, specify a date range, and enter stock f…

    Python

  2. youtube-news-analytics youtube-news-analytics Public

    An end-to-end analytics pipeline benchmarking Indian news channels. Features a Python ETL script fetching 9,000+ videos via YouTube Data API v3 and an interactive Power BI dashboard to analyze enga…

    Python

  3. MultiAgent-B2B-SDR MultiAgent-B2B-SDR Public

    Jupyter Notebook

  4. DeepMost-RAG-Chatbot DeepMost-RAG-Chatbot Public

    A Retrieval-Augmented Generation (RAG) chatbot leveraging Google Gemini 2.5 Pro and LangChain. Features automated web data ingestion via Firecrawl, vector storage with ChromaDB, and context-aware r…

    Python

  5. VIIRA-kerala-socioeconomic-mapping VIIRA-kerala-socioeconomic-mapping Public

    VIIRA: A geospatial research dashboard analyzing the correlation between Night-Time Lights (VIIRS) and telecom infrastructure in Kerala. Built with Streamlit and PyDeck for interactive 3D visualiza…

    Python

  6. Open-Course-Data-Analysis-Project Open-Course-Data-Analysis-Project Public

    A comprehensive study on student elective choices using K-Means Clustering and Multinomial Logistic Regression. Analyzes enrollment trends across 12 departments to predict student preferences and o…

    Jupyter Notebook