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predictive-modeling

النجوم٢
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آخر تحديث٩ يوليو ٢٠٢٦ في ١١:٠٨

Use whenever the GOAL is a prediction that drives an action — predict, score, rank, flag, classify, forecast, or detect anomalies on units ("which pharmacy is likely diverting opioids", "which claim to audit", "who's likely to churn", "rank by risk"). Route by GOAL, not algorithm: a prediction deliverable is this skill even when a random forest does the work; a causal effect stays in causal-identification even when ML does the heavy lifting (double/debiased ML, causal forests, ML propensity scores). Covers clean-label, proxy/weak-label, unsupervised/anomaly (no label), and ranking/triage regimes in R, Julia, or Python. A high validation score is not a working model until leakage is ruled out and the split mirrors deployment. NOT for one-off data-QA outlier checks while cleaning a dataset — that's data-contracts; uplift/CATE-for-targeting runs BOTH this skill's evaluation gates and causal-identification's design.

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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