MS in Data Science • Machine Learning • MLOps • Analytics
I turn data into decisions with statistical modeling, machine learning, and production-grade data systems. I enjoy building end-to-end solutions—from data pipelines and feature engineering to model deployment and monitoring.
- Currently: Master’s in Data Science
- Interests: ML, NLP, CV, Time Series, Recommenders, MLOps
- Open to: Collaborations on applied ML/data engineering
- Portfolio: Browse all public projects (auto-sorted by latest updates)
Portfolio • Resume • LinkedIn • Email • Kaggle • Hugging Face
- Languages: Python, R, SQL
- ML/DL: scikit-learn, PyTorch, TensorFlow
- Data: Pandas, NumPy, Polars
- Visualization: Matplotlib, Seaborn, Plotly
- MLOps / Data Eng: Docker, Kubernetes, Airflow, FastAPI, GitHub Actions
- Cloud: AWS/GCP (basics)
- End-to-end ML: problem framing → data pipelines → feature engineering → model training/validation → deployment → monitoring.
- AI engineering: build and ship LLM/NLP/CV systems (retrieval, prompt engineering, fine-tuning, evaluation, guardrails).
- MLOps: reproducible experiments, CI/CD for models, model registries, containers, orchestration, and observability.
- Supervised/unsupervised learning, time-series forecasting, recommendation systems.
- NLP: embeddings, RAG, instruction-tuning, evaluation (BLEU/ROUGE/BERTScore), safety.
- CV: transfer learning, data augmentation, efficient inference.
- Data engineering: ETL/ELT, dbt-style transformations, warehouse/lakehouse patterns.
- Serving: batch/online inference, REST/gRPC, async pipelines.
- Pin your top projects on your GitHub profile to feature them here prominently.
- Tip: Use descriptive READMEs with problem, approach, results, and reproducibility steps.
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- MS in Data Science — Your University, YYYY–Present
- BS in Your Major — Your University, YYYY–YYYY
- Example: AWS Certified Machine Learning – Specialty (Year)
- Example: Google Professional Data Engineer (Year)
- Example: TensorFlow Developer Certificate (Year)
- Paper: Title — Venue, Year
- Talk: Title — Conference/Meetup, Year
- Blog: Post Title — Platform, Year
- Kaggle: https://www.kaggle.com/YOUR_KAGGLE_USERNAME
- Hugging Face: https://huggingface.co/YOUR_HF_USERNAME
- Google Scholar: https://scholar.google.com/citations?user=YOUR_SCHOLAR_ID
- Medium/Substack: LINK_TO_BLOG
- All public repositories (auto-updated): https://github.com/mdtanvir-hasan?tab=repositories&sort=updated
- By topic:
- Data Science: https://github.com/search?q=user%3Amdtanvir-hasan+topic%3Adata-science&type=repositories&s=updated
- Machine Learning: https://github.com/search?q=user%3Amdtanvir-hasan+topic%3Amachine-learning&type=repositories&s=updated
- MLOps: https://github.com/search?q=user%3Amdtanvir-hasan+topic%3Amlops&type=repositories&s=updated
- GitHub: https://github.com/mdtanvir-hasan
- LinkedIn: https://www.linkedin.com/in/YOUR_LINKEDIN_SLUG/
- Email: [email protected]
- Calendly (optional): https://calendly.com/YOUR_HANDLE/intro-chat