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Indicator Pool

A catalog of measurable indicators for every RAISEF driver

Find candidate measures, where to use them in the lifecycle, and how to collect reliable evidence.

The Indicator Pool is a working reference of potential metrics you can draw from when assessing systems with RAISEF. Each entry names the driver it supports, describes the indicator precisely, notes lifecycle placement, and outlines collection and scoring methods. Where useful, entries include data sources, sampling tips, example thresholds, and cautions on interpretation. Use the pool to assemble scorecards, plan evaluations, and compare options before you standardize. Content begins with the dissertation appendices and will expand as research and practice evolve.

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Case Study 1: AI-Driven Healthcare Diagnostics

Case Study 2: Fairness in AI-Driven Credit Scoring

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