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build-ml-pipeline

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Opinionated, Pythonic way to **declare** the pipeline that goes from a data source to a predictor: data loading, preprocessing, feature engineering, estimator selection, and their composition. The pipeline is built as a **skrub DataOps graph**; every step is either a pure-Python function (stateless) attached via `.skb.apply_func`, or a scikit-learn-compatible estimator (stateful) attached via `.skb.apply`. Stops at the declared object. Out of scope: `fit` invocation, train/test split, hyperparameter tuning, persistence, evaluation. Deep-learning declarations are covered via internal `references/*.md`; skrub and scikit-learn mechanics live in sibling skills. TRIGGER when: writing or editing code that declares any link in the chain *data source → predictor* — data readers/loaders feeding a model (`read_csv`, `read_parquet`, `Dataset` classes), preprocessing or feature-engineering steps (transformers, encoders, imputers, scalers, text/image featurizers), **pure-Python data-processing functions destined for the p

التثبيت

التثبيت باستخدام Codex أو Claude انسخ هذا Prompt والصقه في Codex أو Claude أو مساعد آخر ليراجع صفحة Skill ويثبّتها لك.

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SKILL.md
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