Wine Dataset Exploration & Classification
EDA through supervised baselines on wine chemistry features, CV metrics, and error analysis comparing linear vs tree models.
What was my role?
I was the sole implementer for this coursework module: scoped requirements, wrote the code and experiments for “Wine Dataset Exploration & Classification,” and produced the write-up with metrics and limitations.
Situation
Course lab for “Wine Dataset Exploration & Classification”: short deadlines, public or synthetic data, and rubrics that reward reproducible notebooks and honest limitations.
Task
Produce a small credible artifact—clean repo or notebook—with baselines, evaluation, and a crisp story of what would change in production.
Action
Implemented end-to-end (EDA through supervised baselines on wine chemistry features, CV metrics, and error analysis comparing linear vs tree models.), logged experiments, compared alternatives, and documented dependencies plus failure cases.
Result
Submitted a runnable deliverable with metrics, repeatable setup commands, and a trade-off section suitable for extending to real systems.