Tutorial: Create human-centered AI with the Human-AI eXperience (HAX) Toolkit

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Published on ● Video Link: https://www.youtube.com/watch?v=PNoGW3KkEAs



Duration: 39:39
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Speakers:
Saleema Amershi, Senior Principal Research Manager, Microsoft Research
Mihaela Vorvoreanu, Director, Aether UX Research & RAI Education

There’s been a push to build AI technologies that benefit people and society while also mitigating potential harm. To accomplish this, it’s important to take a holistic approach. We aim to help AI creators make responsible and human-centered decisions as they develop their products through technical advances in algorithms and models as well as sociotechnical advances in methods and tools. In this talk, researchers from Microsoft Research and the cross-company AI, Ethics, and Effects in Engineering and Research (Aether) Committee introduce the Human-AI eXperience (HAX) Toolkit—a set of practical tools for creating human-centered AI technologies. They will share concrete examples and case studies to demonstrate how and when to use each tool in the Toolkit. They will also talk about open research challenges and opportunities to create responsible AI experiences.

Resources: https://aka.ms/haxtoolkit

Learn more about the 2021 Microsoft Research Summit: https://Aka.ms/researchsummit




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Tags:
fair AI systems
reliable AI systems
responsible AI
social inequities in AI
societal implications of AI
societal impact
machine learning
natural language processing
microsoft research summit