Selected article for: "acceptable safety and evidence base"

Author: Hawkins, Richard; Paterson, Colin; Picardi, Chiara; Jia, Yan; Calinescu, Radu; Habli, Ibrahim
Title: Guidance on the Assurance of Machine Learning in Autonomous Systems (AMLAS)
  • Cord-id: 8xhgvjd8
  • Document date: 2021_2_2
  • ID: 8xhgvjd8
    Snippet: Machine Learning (ML) is now used in a range of systems with results that are reported to exceed, under certain conditions, human performance. Many of these systems, in domains such as healthcare , automotive and manufacturing, exhibit high degrees of autonomy and are safety critical. Establishing justified confidence in ML forms a core part of the safety case for these systems. In this document we introduce a methodology for the Assurance of Machine Learning for use in Autonomous Systems (AMLAS
    Document: Machine Learning (ML) is now used in a range of systems with results that are reported to exceed, under certain conditions, human performance. Many of these systems, in domains such as healthcare , automotive and manufacturing, exhibit high degrees of autonomy and are safety critical. Establishing justified confidence in ML forms a core part of the safety case for these systems. In this document we introduce a methodology for the Assurance of Machine Learning for use in Autonomous Systems (AMLAS). AMLAS comprises a set of safety case patterns and a process for (1) systematically integrating safety assurance into the development of ML components and (2) for generating the evidence base for explicitly justifying the acceptable safety of these components when integrated into autonomous system applications.

    Search related documents:
    Co phrase search for related documents
    • Try single phrases listed below for: 1