By alexclowe
Profile datasets for quality issues, design A/B tests with power analysis, scaffold scikit-learn/XGBoost pipelines, and audit models for bias before shipping.
Generate a data quality report from a dataset description, flag outliers and biases, suggest transforms
Recommend model architecture, generate scikit-learn or XGBoost template, document assumptions
Plan an A/B test or experiment with sample size, power analysis, and recommended duration
Compute cross-validation, generate confusion matrix, audit feature importance for bias
Dataset profiling expertise — auto-scans for missing values, outliers, class imbalance, correlation issues, and schema drift
Model card generation expertise — auto-generates Model Cards covering intended use, limitations, and training data provenance per the HuggingFace and Mitchell et al. standard
Own this plugin?
Verify ownership to unlock analytics, metadata editing, and a verified badge. GitHub access is read-only (username + org membership).
Sign in to claimOwn this plugin?
Verify ownership to unlock analytics, metadata editing, and a verified badge. GitHub access is read-only (username + org membership).
Sign in to claimBased on adoption, maintenance, documentation, and repository signals. Not a security audit or endorsement.
npx claudepluginhub alexclowe/awesome-claude-cowork-plugins --plugin data-scientistBuild evals, A/B test prompts, audit skills, and benchmark LLM outputs at production quality
Summarize depositions, build case timelines, draft motions, and manage discovery holds
Draft financial summaries, prepare reconciliation reports, and generate client communications
Draft client proposals, write executive summaries, and turn meetings into action plans
Write listing descriptions, draft client emails, and create market analysis narratives
Build evals, A/B test prompts, audit skills, and benchmark LLM outputs at production quality
AI ethics and fairness validation
Data science and ML workflow tools. 9 agents, 8 commands, 19 skills, 9 templates for problem framing, preprocessing, validation, EDA, experimentation, review, deployment, and knowledge compounding.
Self-documenting, self-improving framework for analytical repositories
Evaluate and compare ML model performance metrics
Data analysis expert for SQL queries, BigQuery operations, and data insights. Use proactively for data analysis tasks and queries.