PhD in Computer Science | Associate Professor | Machine Learning Researcher
I bridge advanced machine learning research with practical, teachable applications. With a background in both academia (PhD, 10+ years teaching) and collaborative research (Laval University, Canada), I specialize in turning complex AI/ML concepts into working systems and clear explanations.
- π Iβm currently working on: LLM applications (RAG systems, document Q&A), medical image classification, and time series forecasting.
- π± Iβm currently learning: MLOps, LLM deployment (LangChain, vector databases), and production AI.
- π― Iβm looking to collaborate on: LLM research, openβsource AI tutorials, or industry internships.
- π¬ Ask me about: Machine Learning, Deep Learning (CNNs, LSTMs), LLMs and RAG, Big Data (Hadoop/Spark), and teaching data science.
- π« How to reach me: [Your Email] | [LinkedIn URL] | [Google Scholar URL]
- Document Q&A with RAG β Retrieval-Augmented Generation over PDF documents using LangChain + ChromaDB + OpenAI API (or local model)
- Research Paper Assistant β LLM-powered tool to summarize and answer questions about arXiv papers
- Code Documentation Generator β Uses an LLM to automatically generate docstrings and README files for Python code
- Chest Xβray Classification β CNN models for multi-class chest X-ray analysis with Twitter API integration
- Skin Cancer Detection β Transfer learning for dermatological image classification
- Renewable Energy Forecasting β LSTM models for energy consumption prediction
- ECG Time Series Prediction β LSTM for electrocardiogram signal prediction
- Machine Learning Course β Graduate-level lectures, labs, and assignments
- Deep Learning Course β Neural networks from scratch to modern architectures