Challenges of responsible AI

Responsible AI Data Management

Maria Prokofieva

Lead ML Engineer

Responsible data management practices in the real world

 

  • Complex

 

  • Involves trade-offs

 

  • Professional judgement

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Responsible AI Data Management

Common trade-offs

 

Trade offs

Responsible AI dimensions

Responsible AI Data Management

 

Business factors

 

  • Profit over fairness and privacy

  • Revenue over testing and security

Responsible AI Data Management

Pre-trained models

  • Reduce costs

  • Save time and resources

  • No need for data collection and training

  • Might have biased training data

  • Lack transparency

pretrained models

Responsible AI Data Management

Using pre-trained models

  • Due diligence on model source
  • Good reputation
  • Credibility
  • Review model documentation
  • Additional tests for fairness and bias
Responsible AI Data Management

 

Metrics trade off

 

  • Accuracy over fairness
  • Even in balanced datasets
Responsible AI Data Management

Accuracy trade-offs

  • Lower accuracy for specific groups
  • No account for data quality or quantity for underrepresented groups
  • Privacy reduces accuracy

Facial recognction

Responsible AI Data Management

Robustness trade-offs

Metrics trade off

 

  • Robustness versus bias

  • Robustness versus fairness

Responsible AI Data Management

Professional conduct and duties of care

  • Code of ethics and conduct

  • Guidance varies by country and organization

  • Responsibility, non-harm, fairness

  • User privacy and confidentiality
  • Positive impact on society
  • Maintain high standards
  • Develop robust and secure systems
  • Inclusive and non-discriminatory

 

ACM

1 https://www.acm.org/code-of-ethics
Responsible AI Data Management

Let's practice!

Responsible AI Data Management

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