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2205 search results found
  • January 20, 2021
    Center for Information Systems Research

    Maximizing Value Capture from Digital Business Ecosystems

    Principal Investigator Ina Sebastian

  • Conference-ICT-2018

    STEX-pitch-2 - 2016-Digital-Health_Conf-videos

    September 14, 2016Conference Video Duration: 13:6

    STEX Pitches: ClinicalBox, ClinLogica, Cardiio

    Farbod Hagigi, PhD, MPH, CEO & founder, ClinicalBox, Inc.
    Andrew Braunstein, MS, CEO, ClinLogica, Inc.
    Ming-Zher Poh, PhD, CEO & co-founder, Cardiio

    2016 MIT Digital Health Conference

  • Conference-ICT-2018

    STEX-pitch-3 - 2016-Digital-Health_Conf-videos

    September 14, 2016Conference Video Duration: 17:6

    STEX pitches: Composable Analytics, Fitnescity, Salubris Analytics

    Andy Vidan, CEO & co-founder, Composable Analytics
    Laila Zemrani, CEO & co-founder, Fitnescity
    Christine Hsieh, PhD, CEO & founder, Salubris Analytics

    2016 MIT Digital Health Conference

  • 3.26.21-Digital-Health-Startup-Workshop

    March 26, 2021

    nQ Medical

    PathMaker Neurosystems

    E25Bio

    CareAcross

    macro-eyes

    Podimetrics

     Humana Digital Health Analytics

    Secure AI Labs (SAIL)

    CoVerified

    Embr Labs

  • June 21, 2011
    Center for Bits and Atoms

    Digital Materials and Assemblers

    Principal Investigator Neil Gershenfeld

  • February 2, 2016

    MITx Digital Learning Lab

    Principal Investigator Ferdi Alimadhi

  • June 23, 2003
    Department of Electrical Engineering and Computer Science

    Digital Signature Schemes

    Principal Investigator Silvio Micali

  • October 15, 2015
    Department of Architecture

    Digital Structures Group

    Principal Investigator Caitlin Mueller

  • March 27, 2019
    Department of Architecture

    Digital Modeling and Fabrication

    Principal Investigator Lawrence Sass

  • 2024 MIT R&D Conference: Track 5 - AI - The Road to Digital Twins in Semiconductor Manufacturing

    November 19, 2024Conference Video Duration: 25:26
    The Road to Digital Twins in Semiconductor Manufacturing
    Duane Boning
    MIT Vice Provost for International Activities (VPIA)
    Associate Director, Microsystems Technology Laboratories (MTL)
    Clarence J. LeBel Professor, MIT Electrical Engineering and Computer Science (EECS)

    There is great interest in “digital twins” to improve many aspects of semiconductor manufacturing, from increased device yield and performance, reduced consumption of energy and materials, increased flexibility, and to enable rapid uptake and scaling of new material, equipment, and process innovations. The digital twin has both physical and virtual components, with bilateral communication and control; the hope is to enable a wide range of models (of equipment, processes, wafers) at different fidelities (physical to simplified empirical, and machine-learning enabled), to support a wide range of “smart” functionalities. The road to digital twins goes through and builds upon many well-trodden paths. Here, several lines of research at MTL since the late 1980’s are highlighted, beginning with elements of the MIT Computer Aided Fabrication Environment including process flow languages, to DOE/Opt methods for automated surrogate model construction, and run by run control to track and compensate for equipment state and wear in CMP and other unit processes. The development of “statistical metrology” methods encompassed characterization and modeling of semiconductor variation, with layout pattern dependent models to identify “hot spots” in planarization, dishing, and erosion for a given design, as well as to guide dummy fill generation. An evolution from statistical to ML/AI approaches, particularly Bayesian methods, enabled design for manufacturability (DFM) for rapid MOSFET characterization, and then rapid fabrication process tuning, as well as AI-enabled anomaly detection. These and other paths bring us to an exciting next stage of the journey: by harnessing advances in sensing and data collection, AI methods, and computational power not possible at the beginning, the community is poised to create and deploy digital twins for semiconductor manufacturing.

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