Probably Approximately Correct Learners

Chara Podimata

Welcome to Probably Approximately Correct Learners, a podcast from the Learning Theory Alliance team. In this podcast, we will dive deep into the minds of leading researchers in Machine Learning! Join us for engaging interviews that explore a diverse range of topics—from groundbreaking research findings to the experiences and insights that shape life beyond academia. Whether you're a seasoned expert or just starting your journey in the field, this podcast is your gateway to understanding the evolving landscape of Machine Learning. Tune in and broaden your perspective with each episode!

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  1. 2 АПР.

    Ep. 4: Nicole Immorlica

    Welcome to Probably Approximately Correct Learners, episode 4! In this episode, Chara chats with Prof. Nicole Immorlica. Nicole Immorlica is a Professor of Computer Science at Yale University and a Researcher at Microsoft.  She received her BS in 2000, MEng in 2001 and PhD in 2005 in theoretical computer science from MIT in Cambridge, MA.  She joined MSR NE in 2012 after completing postdocs at Microsoft in Redmond, WA and Centruum vor Wiskunde en Informatics (CWI) in Amsterdam, Netherlands, and a professorship in computer science at Northwestern University.  Nicole’s research interest is in the design and operation of sociotechnical systems. Using tools and modeling concepts from both theoretical computer science and economics, Nicole hopes to explain, predict, and shape behavioral patterns in various online and offline systems, markets, and games. She is known for her work on social networks, matching markets, and mechanism design.  She is the recipient of a number of fellowships and awards including ACM Fellow, the Sloan Fellowship, the Microsoft Faculty Fellowship and the NSF CAREER Award.  She has been on several boards including SIGecom, SIGACT, the Game Theory Society, and OneChronos; is an associate editor of Operations Research and Transactions on Economics and Computation, and was program committee member and chair for several ACM, IEEE and INFORMS conferences in her area. Nicole and I talked about this paper: https://arxiv.org/pdf/2502.20783.

    47 мин.

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Welcome to Probably Approximately Correct Learners, a podcast from the Learning Theory Alliance team. In this podcast, we will dive deep into the minds of leading researchers in Machine Learning! Join us for engaging interviews that explore a diverse range of topics—from groundbreaking research findings to the experiences and insights that shape life beyond academia. Whether you're a seasoned expert or just starting your journey in the field, this podcast is your gateway to understanding the evolving landscape of Machine Learning. Tune in and broaden your perspective with each episode!