In contrast to other high-risk industries, artificial intelligence presents special challenges for regulation and governance. Therefore, relying solely on experts, research, and conventional testing is insufficient to create artificial intelligence (AI) that is secure from harm. True diversity is required for the development of artificial intelligence. People with varied life experiences and differing points of view need to be included in the conversation and their insights, concerns, and observations to be heard and factored into the development.
Multi-Stakeholder Feedback is essential to identify potential harms of an artificial intelligence application. MKAI has the largest and most diverse AI de-risking community in the world.
Learn how to gain vital perspectives about the potential risks, harms, exclusions, biases and prejudices from your AI.
We provide access to our 1,000+ AI ethics stakeholders that will engage with you to discover the 'blind spots' in your AI plans.
Many unique individuals will work together to review your AI processes. We help you to spot the mistakes before they materialise into embarrassing or expensive errors.
MKAI stakeholders will ask the difficult questions that might not get raised otherwise. They will challenge you to think wider and deeper about the impact of your AI.
We enable you to speak to people that don't think you like you do, and help you and 'your AI systems' to see the world through their eyes.
HR Automation
Social Media Algorithms
Recommendation Engines
Education Technologies
Insurance Algorithms
Health and Medicines
Security and Surveillance
Government Related Systems
The data used in AI models is either restricted, under-representative, or biased. Individuals in this collective can contribute information and data to make the models more diverse and useful.
Often, teams working on AI projects have a lack of diversity, for example, gender, age, region, neurodiversity, and impaired capacities. This restricts the scope of their ideas as well as the understanding of those who will use the systems. MKAI members will examine the issues that organisations are attempting to address in the nations they are targeting. We will identify the flaws, errors, and omissions.
Testing solutions with or on a diverse group is challenging. With over 95 nations represented, and many other diverse attributes, the MKAI collective will be able to provide comments, feedback and suggestions.