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ISO 5259:2024

ISO 5259:2024 Artificial intelligence – Data quality for analytics and machine learning (ML) – Part 4: Data quality process framework

CDN $295.00

Description

This document establishes general common organizational approaches, regardless of the type, size or nature of the applying organization, to ensure data quality for training and evaluation in analytics and machine learning (ML). It includes guidance on the data quality process for:

     supervised ML with regard to the labelling of data used for training ML systems, including common organizational approaches for training data labelling;

     unsupervised ML;

     semi-supervised ML;

     reinforcement learning;

     analytics.

This document is applicable to training and evaluation data that come from different sources, including data acquisition and data composition, data preparation, data labelling, evaluation and data use. This document does not define specific services, platforms or tools.

Edition

1

Published Date

2024-07-15

Status

PUBLISHED

Pages

28

Language Detail Icon

English

Format Secure Icon

Secure PDF

Abstract

This document establishes general common organizational approaches, regardless of the type, size or nature of the applying organization, to ensure data quality for training and evaluation in analytics and machine learning (ML). It includes guidance on the data quality process for:

-     supervised ML with regard to the labelling of data used for training ML systems, including common organizational approaches for training data labelling;

-     unsupervised ML;

-     semi-supervised ML;

-     reinforcement learning;

-     analytics.

This document is applicable to training and evaluation data that come from different sources, including data acquisition and data composition, data preparation, data labelling, evaluation and data use. This document does not define specific services, platforms or tools.

Previous Editions

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