
ISO 29119:2020
ISO 29119:2020 Software and systems engineering – Software testing – Part 11: Guidelines on the testing of AI-based systems
CDN $0.00
Description
This document provides an introduction to AI-based systems. These systems are typically complex (e.g. deep neural nets), are sometimes based on big data, can be poorly specified and can be non-deterministic, which creates new challenges and opportunities for testing them.
This document explains those characteristics which are specific to AI-based systems and explains the corresponding difficulties of specifying the acceptance criteria for such systems.
This document presents the challenges of testing AI-based systems, the main challenge being the test oracle problem, whereby testers find it difficult to determine expected results for testing and therefore whether tests have passed or failed. It covers testing of these systems across the life cycle and gives guidelines on how AI-based systems in general can be tested using black-box approaches and introduces white-box testing specifically for neural networks. It describes options for the test environments and test scenarios used for testing AI-based systems.
In this document an AI-based system is a system that includes at least one AI component.
Edition
1
Published Date
2020-11-27
Status
PUBLISHED
Pages
52
Format 
Secure PDF
Secure – PDF details
- Save your file locally or view it via a web viewer
- Viewing permissions are restricted exclusively to the purchaser
- Device limits - 3
- Printing – Enabled only to print (1) copy
See more about our Environmental Commitment
Abstract
This document provides an introduction to AI-based systems. These systems are typically complex (e.g. deep neural nets), are sometimes based on big data, can be poorly specified and can be non-deterministic, which creates new challenges and opportunities for testing them.
This document explains those characteristics which are specific to AI-based systems and explains the corresponding difficulties of specifying the acceptance criteria for such systems.
This document presents the challenges of testing AI-based systems, the main challenge being the test oracle problem, whereby testers find it difficult to determine expected results for testing and therefore whether tests have passed or failed. It covers testing of these systems across the life cycle and gives guidelines on how AI-based systems in general can be tested using black-box approaches and introduces white-box testing specifically for neural networks. It describes options for the test environments and test scenarios used for testing AI-based systems.
In this document an AI-based system is a system that includes at least one AI component.
Previous Editions
Can’t find what you are looking for?
Please contact us at:
Related Documents
-

ISO 3833:1977 Road vehicles – Types – Terms and definitions
CDN $115.00 Add to cart -

ISO 10110:2019 Optics and photonics – Preparation of drawings for optical elements and systems – Part 1: General
CDN $312.00 Add to cart -

ISO 5053:2019 Industrial trucks – Vocabulary – Part 2: Fork arms and attachments
CDN $351.00 Add to cart -

ISO 80004:2021 Nanotechnologies – Vocabulary – Part 6: Nano-object characterization
CDN $76.00 Add to cart







