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  1. F1-NextJS-RAG-Chatbot F1-NextJS-RAG-Chatbot Public

    RAG chatbot for Formula 1 using Next.js, LangChain.js, OpenAI and Astra DB. Retrieves and answers F1 questions based on up-to-date, custom data.

    TypeScript

  2. MLOps-Customer-Satisfaction-Pipeline MLOps-Customer-Satisfaction-Pipeline Public

    End-to-end MLOps pipeline for customer satisfaction prediction. Features automated training, continuous deployment with MLflow, experiment tracking with ZenML and interactive predictions via Stream…

    Python

  3. LLM-Semantic-Book-Recommender LLM-Semantic-Book-Recommender Public

    Powerful book recommender using Large Language Models (LLMs) and semantic vector search. It analyzes book descriptions to recommend contextually and emotionally similar titles. Includes zero-shot c…

    Jupyter Notebook

  4. Email-Spam-Detection-ML Email-Spam-Detection-ML Public

    A TensorFlow neural network trained on email text data using NLP preprocessing to classify emails as spam or legitimate.

    Jupyter Notebook

  5. Online-Payment-Fraud-Detection-ML Online-Payment-Fraud-Detection-ML Public

    Online-Payment-Fraud-Detection-ML is a machine learning project focused on detecting fraudulent online transactions. The model analyzes transaction patterns to distinguish between legitimate and fr…

    Jupyter Notebook

  6. Credit-Card-Fraud-Detection-ML Credit-Card-Fraud-Detection-ML Public

    Machine learning project detecting fraudulent credit card transactions using Random Forest. Handles imbalanced dataset (0.17% fraud) with strong precision-recall balance.

    Jupyter Notebook