EU-AIA-10-20
Data Governance
10 — Data and data governance
Apply data requirements to testing data for non-training AI systems
Description
Full Analysis & Evidence Requirements
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EU-AIA-10-01
Data Governance
Use quality training, validation and testing data sets
EU-AIA-10-02
Data Governance
Implement appropriate data governance and management practices
EU-AIA-10-03
Documentation
Document relevant design choices
EU-AIA-10-04
Documentation
Document data collection processes and origin
EU-AIA-10-05
Documentation
Document data preparation processing operations
EU-AIA-10-06
Documentation
Formulate and document assumptions about data
EU-AIA-10-07
Data Governance
Assess data availability, quantity and suitability
EU-AIA-10-08
Risk Management
Examine data for possible biases
EU-AIA-10-09
Risk Management
Implement bias detection, prevention and mitigation measures
EU-AIA-10-10
Data Governance
Identify and address data gaps and shortcomings
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