Projects

Selected work for ML QA, data quality, QA automation, and applied data science roles.

Projects are ordered for recruiter scanability: machine learning work first, then data product thinking, interactive study tooling, and evidence-based QA impact.

Open to remote and hybrid opportunities in Massachusetts / Boston-area teams.Primary focus: ML QA Engineer · Data Quality Engineer. Secondary focus: QA Automation Engineer with Python · Data Analyst · Junior Data Scientist.EmailLinkedInGitHubResume PDF
QA analytics

QA Impact / Evidence Dashboard

Project type: professional impact summary. Skills demonstrated: defect analysis, test coverage, release readiness, Jira metric interpretation, automation contribution. Outcome: a detailed evidence page showing tracked QA delivery metrics, team context, and release-quality work.

  • QA strategy
  • Defect analysis
  • Regression
  • Release testing
  • Metrics
Interactive learning

Data Science Flashcard Lab

Project type: static JavaScript learning tool. Skills demonstrated: DOM interaction, local storage, UX clarity, ML explanation, WPH-specific diagrams. Outcome: a study lab that explains ML concepts and how they apply to a data product.

  • JavaScript
  • Local storage
  • ML interview prep
  • Explainability