Applied ML

A methods portfolio spanning 17 analyses across 9 domains โ€” applying classical ML, deep learning, ensemble modeling, and statistical regression to real-world problems in healthcare, agriculture, retail, finance, and engineering. Each project demonstrates deliberate method selection, rigorous comparative evaluation, and interpretable results โ€” the analytical foundations underlying applied research and production systems.

18

Applied ML
Analyses

9

Domains

12

Datasets &
Real-World Problems

Domain

Healthcare

Clinical risk prediction · Diagnostic classification · Patient data modeling

Domain

Computer Vision & NLP

Spatial & temporal learning · Sequence modeling · Architecture implementation

Domain

Retail & Commerce

Demand forecasting · Customer behavior · Market basket analysis

Domain

Finance & Economics

Customer targeting · Economic forecasting · Behavioral pattern mining

Domain

Agriculture

Crop classification · Quality control automation · Agricultural ML

Domain

Real Estate

Property value prediction · Regularization benchmarking · Non-linear modeling

Domain

Materials Science & Forensics

Compositional analysis · Structural property prediction · Forensic classification

Domain

Public Health & Sustainability

Population health modeling · Environmental prediction · Non-parametric methods

Domain

ML Tooling

Model benchmarking · Hyperparameter optimization · Automated model selection