Guidelines for the assessment of machine learning sytems

Room
Time
Theme
Difficulty
Congress Hall
Room H1+H2
Room G3
To be released
11:35
To be released
Governance
To be released
D1

This presentation introduces the new Guidance Note NI692 developed by Bureau Veritas Marine & Offshore for assessing Machine Learning Systems (aaccessible here).

This Guidance Note provides recommendations for the transparent and trustworthy development and operation of machine learning systems in marine settings. It emphasizes human oversight and risk-based assessment across the system lifecycle, from data and design to deployment, monitoring, and maintenance.

Key highlights of the Guidance Note include:

NI692 builds upon the EU AI Act, ISO standards, and the IMO MASS Code, and emphasizes key aspects of ML systems such as transparency, explainability, human oversight, and traceability.

Speakers

Berenice Le Glouanec

Technical Advisor AI & Data
Bureau Veritas Marine & Offshore
Berenice Le Glouanec

Bio

Bérénice Le Glouanec holds a master's degree in Language Technology from the University of Gothenburg. She is the AI and data technical expert at Bureau Veritas Marine & Offshore, working within the Digital and Autonomous Ship team in the Rule Development department. She is responsible for drafting rule notes and recommendations, including NI692, a guideline that addresses the entire lifecycle of machine learning systems and ensures their trustworthiness. She also contributes to the International Association of Classification Societies (IACS) on the revision of Recommendation 183 on Ship Data Quality and follows AI standardization activities within AFNOR and CEN-CENELEC.

Recording