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Panel discussion with the invited speakers.
Author Information
Graham Cormode (Meta AI)
Borja Balle (DeepMind)
Yu-Xiang Wang (UC Santa Barbara)
Alejandro Saucedo (The Institute for Ethical AI & Machine Learning)
Alejandro is the Chief Scientist at the Institute for Ethical AI & Machine Learning, where he contributes to policy and industry standards on the responsible design, development and operation of AI, including the fields of explainability, GPU acceleration, privacy preserving ML and other key machine learning research areas. Alejandro Saucedo is also the Director of Machine Learning Engineering at Seldon Technologies, where he leads teams of machine learning engineers focused on the scalability and extensibility of machine learning deployment and monitoring products. With over 10 years of software development experience, Alejandro has held technical leadership positions across hyper-growth scale-ups and has a strong track record building cross-functional teams of software engineers. He is currently appointed as governing council Member-at-Large at the Association for Computing Machinery, and is currently the Chairperson of the Kompute GPU Acceleration Committee at the Linux Foundation. LInkedin: https://linkedin.com/in/axsaucedo Twitter: https://twitter.com/axsaucedo Github: https://github.com/axsaucedo Website: https://ethical.institute/
Neil Lawrence (University of Cambridge)
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