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Past Events

  • illustration of the brain

    Frontiers of AI/ML

    Date: May 25 & May 27, 2021 | 11am - 1pm
    Location: Webinar
    Businesses are integrating artificial intelligence and machine learning into every facet of their work, but we’re far from realizing their potential. An understanding of what’s possible, and what’s still over the horizon, is essential to understanding how businesses can maximize the value of AI and ML.
  • AI for Social Good

    Date: May 10, 2021 | 12pm - 1pm EST
    Location: Webinar
    MIT Quest AI Roundtable: AI has the potential to address longstanding societal problems, from economic inequality to unequal access to healthcare, but it could also widen these divisions without deliberate steps to mitigate AI’s potential negative effects. We will discuss ideas for harnessing AI for the benefit of all. Speakers: Fotini Christia (MIT); Stacy Hobson (IBM); Moderator: Aude Oliva.
  • Crossing the hardware-software divide for faster AI

    Date: April 29, 2021 | 12pm - 1pm EST
    Location: Webinar
    MIT Quest AI Roundtable: AI applications are moving quickly to smartphones and low-power hand-held devices. To make the shift, both hardware and software will need to be redesigned for speed and efficiency. We will discuss leading strategies for achieving efficient AI by co-designing hardware and software for deep learning. Speakers (MIT): Vivienne Sze; Song Han; Moderator: Aude Oliva.
  • Toward Brain-inspired, Energy-efficient Chips

    Date: March 26, 2021 | 12pm -1pm EST
    Location: Webinar
    MIT Quest AI Roundtable: Traditional computer chips waste time and energy shuttling data between separate memory and computational units. Neural circuits in the brain, by contrast, achieve enormous efficiencies by storing and processing information at the same place. Inspired by biological models of learning, researchers are designing computing elements that mimic neural circuits and consume massively less energy. Speakers: Bilge Yildiz, Michale Fee (MIT); Panelists: Jesus delAlamo, Ju Li (MIT); Moderator: Aude Oliva (MIT)
  • Extending Deep Nets to New, Unexpected Situations

    Date: February 11, 2021 | 7pm - 8pm EST
    Location: Webinar
    MIT Quest AI Roundtable: Deep neural networks could very well memorize their training data, but instead they find generalizable rules. We will discuss various ideas for why this happens, and how we can build deep learning systems that generalize even better to new and unexpected scenarios. Speakers: Pulkit Agrawal, Phillip Isola (MIT); Alyosha Efros (UC Berkeley); Moderator: Aude Oliva (MIT)
  • The MIT-IBM Watson AI Lab logo

    What’s Next in AI 2020 Conference

    Date: Nov. 5; Nov. 12; Nov. 19, 2020 | 9am-12pm EST
    Location: Webinar
    Leaders agree that AI offers a competitive advantage, but only a fraction of organizations are using AI to its full potential. In this virtual event, scientists and business experts from the MIT-IBM Watson AI Lab will explain how to overcome three key barriers to implementing AI successfully — trust, scalability, and reasoning.
  • Collective Intelligence

    Date: September 24, 2019 | 9am - 6pm EST
    Location: Singleton Auditorium, Building 46
    Almost everything humans have achieved has been done by groups of people working together. Financial markets operate on this principle of collective intelligence to set prices for stocks, as do Internet search engines to answer questions asked by thousands before. Computers can make groups even smarter, but how should humans and machines interact? This workshop will explore the ways that people and machines, working separately and together, can leverage their relative strengths, resolve conflict and create value for society.
  • GANocracy

    Date: May 31, 2019 | 8:30am–7pm
    Location: MIT Building 46 and Room 34-101
    This workshop and tutorial will focus on the promise of generative adversarial networks, or GANs: how we can exploit their benefits while minimizing their potential harm. Topics will include the nuts and bolts of generative models, their applications, generative art, and the science and theory of GANs.