Besides the small introduction, subscribers and consulting clients within this management domain have access to:
Learn about machine biases, how and where they arise in AI systems, and how they relate to human cognitive and societal biases.
Learn about data biases and how to mitigate them.
Learn about model biases and how to mitigate them.
Learn about approaches for proactive and effective bias prevention and mitigation.
Workshops offer an easy way to accelerate your project. If you are unable to do the project yourself, and a Guided Implementation isn't enough, we offer low-cost delivery of our project workshops. We take you through every phase of your project and ensure that you have a roadmap in place to complete your project successfully.
Understand your organization’s maturity with respect to data and analytics in order to maximize workshop value.
Workshop content aligned to your organization’s level of maturity and business objectives.
1.1 Execute Data Culture Diagnostic.
1.2 Review current analytics strategy.
1.3 Review organization's business and IT strategy.
1.4 Review other supporting documentation.
1.5 Confirm participant list for workshop.
Data Culture Diagnostic report.
Develop a good understanding of machine biases and how they emerge from human cognitive and societal biases. Learn about the machine learning process and how it relates to machine bias.
Select an ML/AI project and complete a bias risk assessment.
A solid understanding of algorithmic biases and the need to mitigate them.
Increased insight into how new technologies such as ML and AI impact organizational risk.
Customized bias risk assessment template.
Completed bias risk assessment for selected project.
2.1 Review primer on AI and machine learning (ML).
2.2 Review primer on human and machine biases.
2.3 Understand business context and objective for AI in your organization.
2.4 Discuss selected AI/ML/data science project or use case.
2.5 Review and modify bias risk assessment.
2.6 Complete bias risk assessment for selected project.
Bias risk assessment template customized for your organization.
Completed bias risk assessment for selected project.
Learn about data biases: what they are and where they originate.
Learn how to address or mitigate data biases.
Identify data biases in selected project.
A solid understanding of data biases and how to mitigate them.
Customized Datasheets for Data Sets Template.
Completed datasheet for data sets for selected project.
3.1 Review machine learning process.
3.2 Review examples of data biases and why and how they happen.
3.3 Identify possible data biases in selected project.
3.4 Discuss “Datasheets for Datasets” framework.
3.5 Modify Datasheets for Data Sets Template for your organization.
3.6 Complete datasheet for data sets for selected project.
Datasheets for Data Sets Template customized for your organization.
Completed datasheet for data sets for selected project.
Learn about model biases: what they are and where they originate.
Learn how to address or mitigate model biases.
Identify model biases in selected project.
A solid understanding of model biases and how to mitigate them.
Customized Model Cards for Model Reporting Template.
Completed model card for selected project.
4.1 Review machine learning process.
4.2 Review examples of model biases and why and how they happen.
4.3 Identify potential model biases in selected project.
4.4 Discuss Model Cards For Model Reporting framework.
4.5 Modify Model Cards for Model Reporting Template for your organization.
4.6 Complete model card for selected project.
Model Cards for Model Reporting Template customized for your organization.
Completed model card for selected project.
Review mitigation approach and best practices to control machine bias.
Create mitigation plan to address machine biases in selected project. Align with enterprise risk management (ERM).
A solid understanding of the cultural dimension of algorithmic bias prevention and mitigation and best practices.
Drafted plan to mitigate machine biases in selected project.
5.1 Review and discuss lessons learned.
5.2 Create mitigation plan to address machine biases in selected project.
5.3 Review mitigation approach and best practices to control machine bias.
5.4 Identify gaps and discuss remediation.
Summary of challenges and recommendations to systematically identify and mitigate machine biases.
Plan to mitigate machine biases in selected project.