accuratere
Accuratere is a framework and toolkit designed to measure and improve the accuracy of data-driven systems. It provides standardized metrics, workflows, and tooling to calibrate predictions, measurements, and decisions across data pipelines and AI models. The central aim is to enable traceability of accuracy from data sources through processing stages to outputs, supporting auditing and accountability.
The scope includes a measurement framework that defines error budgets, calibration procedures, and validation tests; a
Applications include machine learning model evaluation, online inference with streaming data, sensor networks, and risk scoring
Origin and reception: The term emerged in academic and industry discussions during the late 2010s and 2020s
Related topics include data quality, model evaluation, calibration, and reproducibility.