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  1. airbnb-nyc-price-analysis airbnb-nyc-price-analysis Public

    Exploratory data analysis of Airbnb listings in NYC to uncover pricing patterns, demand drivers, and neighborhood-level insights using Python and data visualization.

    Jupyter Notebook

  2. financial-time-series-volatility-analysis financial-time-series-volatility-analysis Public

    Applied econometric analysis of financial markets using GARCH, VAR, and VECM to model volatility, interdependencies, and long-run equilibrium across oil prices, exchange rates, and stock indices.

    Jupyter Notebook

  3. gold-price-forecasting-arima gold-price-forecasting-arima Public

    Time series forecasting project using ARIMA and Holt-Winters models to analyze and predict gold price trends with data preprocessing, decomposition, and model validation.

    R

  4. healthcare-analytics-conjoint-basket-portfolio healthcare-analytics-conjoint-basket-portfolio Public

    Healthcare analytics project applying conjoint analysis, market basket analysis (Apriori), and portfolio optimization to derive insights on patient preferences and investment decisions.

    R

  5. policy-document-rag-pipeline policy-document-rag-pipeline Public

    Automated policy document collection using Selenium and developed an AI-powered RAG pipeline (LangChain + Llama2) to structure 100+ university policy PDFs for compliance Q&A.

    Python

  6. superbowl-ad-sentiment-analysis superbowl-ad-sentiment-analysis Public

    NLP-based analysis of Super Bowl commercials using YouTube comments to study the relationship between viewer sentiment, emotional response, and Ad Meter performance.