Empowering the trustworthiness of ML-based critical systems through engineering activities

09/30/2022
by   Juliette Mattioli, et al.
10

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.

READ FULL TEXT
research
08/10/2023

Application of Systems Engineering Process in Building ML-Enabled Systems

Machine learning (ML) components are being added to more and more critic...
research
11/03/2020

Ensuring Dataset Quality for Machine Learning Certification

In this paper, we address the problem of dataset quality in the context ...
research
11/11/2022

Capabilities for Better ML Engineering

In spite of machine learning's rapid growth, its engineering support is ...
research
12/31/2015

Strategies and Principles of Distributed Machine Learning on Big Data

The rise of Big Data has led to new demands for Machine Learning (ML) sy...
research
06/29/2023

Statistically Enhanced Learning: a feature engineering framework to boost (any) learning algorithms

Feature engineering is of critical importance in the field of Data Scien...
research
08/09/2022

"Is It My Turn?" Assessing Teamwork and Taskwork in Collaborative Immersive Analytics

Immersive analytics has the potential to promote collaboration in machin...
research
01/13/2021

Designing Machine Learning Toolboxes: Concepts, Principles and Patterns

Machine learning (ML) and AI toolboxes such as scikit-learn or Weka are ...

Please sign up or login with your details

Forgot password? Click here to reset