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3296 search results found
  • April 28, 2014
    Department of Chemical Engineering

    Selective Transport Membrane Electrodes Based on 2D Electronic Materials: New Concepts for Integrated Renewable Energy Generation

    Principal Investigator Michael Strano

  • 2024 MIT Sustainability Conference: MIT Climate & Sustainability Consortium Project Highlights

    October 22, 2024Conference Video Duration: 34:22

    MIT Climate & Sustainability Consortium Project Highlights
    Introduction and Update
    Jeremy Gregory
    Executive Director, MIT Climate & Sustainability Consortium

    The Climate and Sustainability Implications of Generative AI
    Noman Bashir
    Computing & Climate Impact Fellow, MIT Climate & Sustainability Consortium

    The rapid expansion of generative artificial intelligence (Gen-AI) neglects consideration of negative effects alongside expected benefits. This incomplete cost calculation promotes unchecked growth and a risk of unjustified techno-optimism with potential environmental consequences, including expanding demand for computing power, larger carbon footprints, and an accelerated depletion of natural resources. The current siloed focus on efficiency improvements results instead in increased adoption without fundamentally considering the vast sustainability implications of Gen-AI. 

    In this talk, I will propose that responsible development of Gen-AI requires a focus on sustainability beyond only efficiency improvements and necessitates benefit-cost evaluation frameworks that encourage (or require) Gen-AI to develop in ways that support social and environmental sustainability goals alongside economic opportunity. However, a comprehensive value consideration is complex and requires detailed analysis, coordination, innovation, and adoption across diverse stakeholders. Engaging stakeholders, including technical and sociotechnical experts, corporate entities, policymakers, and civil society, in a benefit-cost analysis would foster development in the most urgent and impactful directions while reducing unsustainable practices. More details are in our white paper, which is accessible at MIT Gen-AI Sustainability White Paper.

    A Cautionary Tale about Deep Learning-based Climate Emulators
    Björn Lütjens
    Postdoctoral Associate, MIT Department of Earth, Atmospheric, and Planetary Sciences

    Climate models are computationally very expensive for exploring the impacts of climate policies. For example, simulating the impacts of a single policy emission scenario can take multiple weeks and cost hundreds of thousands of USD in computing. Compellingly, deep learning models can now forecast the weather in seconds rather than hours in comparison to conventional weather models and are being proposed to achieve similar reductions by approximating climate models. Climate approximations or emulators, however, have already been developed since the 1990s and I will present how we implemented a linear regression-based emulator that outperforms a novel 100M-parameter transformer-based deep learning emulator on the most common climate emulation benchmark. I will use our results to discuss more nuanced insights highlighting how chaotic dynamics influence emulator performance and use cases where deep-learning emulators can improve existing linear emulators. 

    Collaborative Development of an Interactive Decision Support Tool for Trucking Fleet Decarbonization
    Danika MacDonell
    Impact Fellow, MIT Climate & Sustainability Consortium

    This presentation shares the journey of creating an interactive geospatial decision support tool in close collaboration with industry and academic partners of the MIT Climate & Sustainability Consortium. The tool leverages comprehensive public data on freight flows, costs, emissions, infrastructure, and regulatory incentives. Integrating key insights and methodologies from our partners, it aims to assist trucking industry stakeholders in identifying and assessing strategies to transition fleets to low-carbon energy carriers.

  • SMR-Logo
    December 16, 2019

    It's Time to Tackle your Team's Undiscussables

  • January 20, 2017
    Department of Mathematics

    Transport and Chemotaxis of Swimming Cells in Porous Media Flows

    Principal Investigator Joern Dunkel

  • Howard
    J
    Herzog

    Senior Research Engineer
    Primary DLC
    MIT Energy Initiative

    Contact

    MIT Room
    E19-370L
    Phone
    (617) 253-0688
    hjherzog@mit.edu
  • David
    D
    Clark

    Senior Research Scientist
    Primary DLC
    Computer Science and Artificial Intelligence Laboratory

    Contact

    MIT Room
    32-G536
    Phone
    (617) 253-6003
    ddc@csail.mit.edu
  • Chathan
    M
    Cooke

    Principal Research Engineer
    Primary DLC
    Research Laboratory of Electronics

    Contact

    MIT Room
    N10-201
    Phone
    (617) 253-2591
    cmcooke@mit.edu
  • Ngoc Cuong
    Nguyen

    Principal Research Scientist
    Primary DLC
    Department of Aeronautics and Astronautics

    Contact

    MIT Room
    37-371
    Phone
    (617) 324-3043
    cuongng@mit.edu
  • 4.5.23-AI-Tedrake

    April 5, 2023Conference Video Duration: 32:7
    Can Computers Beat Humans at Design? 
  • 9.26.23-Sustainability-Grossman

    September 26, 2023Conference Video Duration: 11:3
    MIT Climate and Sustainability Consortium

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