This paper reviews the entire engineering process of trustworthy Machine Learning (ML) algorithms designed to equip critical systems with advanced analytics and decision functions. We start from the fundamental principles of ML and describe the core elements conditioning its trust, particularly through its design: namely domain specification, data engineering, design of the ML algorithms, their implementation, evaluation and deployment. The latter components are organized in an unique framework for the design of trusted ML systems.
翻译:本文件回顾了可信赖的机器学习算法的整个工程过程,这些算法旨在为关键系统配备先进的分析和决定功能,我们从ML的基本原则开始,描述决定其信任的核心要素,特别是通过设计:即域规范、数据工程、ML算法的设计、其实施、评价和部署,后者在设计可信赖的ML系统的独特框架内组织。