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skills
skills contient 7 skills collectées depuis balintdecsi, avec une couverture métier par dépôt et des pages de détail sur le site.
Skills dans ce dépôt
Suggestions for scoping and writing an Analytics Project Brief — the one-page artifact that defines problem, metrics, counter-metrics, stakeholders, methodology, success criteria, and pre-mortem before any analysis begins. Use when the task is to draft, review, or critique a project brief, scope an analytics project, define KPIs, identify counter-metrics or blockers, or prepare a stakeholder map. Not for technical implementation — see ml-modeling, statistical-modeling, or data-warehousing for that.
Best-practice suggestions for predictive ML modelling with scikit-learn — Pipelines, ColumnTransformer, cross-validation, hyperparameter search, honest train/test evaluation, model leaderboards, and threshold/loss-based decisions. Use when building, comparing or reviewing supervised ML models (regression or classification) in Python notebooks or scripts.
Best-practice suggestions for statistical / inferential modelling in Python — OLS and logistic regression with statsmodels, robust standard errors, side-by-side regression tables with stargazer, confidence and prediction intervals, hypothesis tests, and significance reporting. Use when interpreting coefficients, building explanatory regressions, comparing nested models, reporting confidence/prediction intervals, or testing whether an effect is statistically significant.
Best-practice suggestions for time series exploration and forecasting in Python — datetime indexing, resampling, temporal train/test splits, decomposition, ACF/PACF, stationarity checks, ARIMA/SARIMA/SARIMAX, AutoGluon TimeSeriesPredictor, backtesting, forecast metrics, and prediction intervals. Use when analyzing, building, comparing, or reviewing forecasts for dated/ordered data such as demand, energy, sales, traffic, sensors, macro, or finance series.
Best practices for designing data warehouses and analytical pipelines using the bronze/silver/gold medallion architecture, validations-as-code, and idempotent transforms. Use when building or modifying data pipelines, ETL/ELT jobs, dbt models, SQL warehouses, lakehouses, or any layered analytics workload (DuckDB, Snowflake, BigQuery, Postgres, Spark, etc.).
Technical setup skill for analytics and data science projects — repository scaffolding, folder structure (dev/prod split, data layers, numbered notebooks), environment management (uv, venv, dotenv), pre-commit hooks for notebook output clearing, branching and commit conventions, .gitignore patterns, AGENTS.md creation, database/storage I/O patterns, and production orchestration notebooks. Use when initialising a new analytics project, setting up a repo for a data science team, or creating an AGENTS.md file.
AI-powered code review using CodeRabbit. Default code-review skill. Trigger for any explicit review request AND autonomously when the agent thinks a review is needed (code/PR/quality/security).