Fostering trust in AI systems is a great remaining obstacle to bringing the most transformative AI technologies into reality, such as autonomous vehicles or the large-scale integration of machine intelligence in medicine. The challenge is to translate guiding ethical principles and aspirations into implementation and make the responsible practice of AI accessible, reproducible, and achievable for all who engage with the design and use of AI systems.
This guide offers a deep dive into practical concerns and considerations, along with frameworks and tools that can empower you to address the issues of trust and bias in AI.
Trust is not an option, it is a requirement. Building AI systems without trust tenets invites disaster, for your organization, your own personal brand and for stakeholders impacted by the AI system.