Skip to main content
MIT Corporate Relations
MIT Corporate Relations
Search
×
Read
Watch
Attend
About
Connect
MIT Startup Exchange
Search
Sign-In
Register
Search
×
MIT ILP Home
Read
Faculty Features
Research
News
Watch
Attend
Conferences
Webinars
Learning Opportunities
About
Membership
Staff
For Faculty
Connect
Faculty/Researchers
Program Directors
MIT Startup Exchange
User Menu and Search
Search
Sign-In
Register
MIT ILP Home
Toggle menu
Search
Sign-in
Register
Read
Faculty Features
Research
News
Watch
Attend
Conferences
Webinars
Learning Opportunities
About
Membership
Staff
For Faculty
Connect
Faculty/Researchers
Program Directors
MIT Startup Exchange
Greenewald-Thompson-Japan-1.29.21
Conference Video
|
Duration: 21:24
January 29, 2021
View this past event
Preview
Greenewald-Thompson-Japan-1.29.21
Please
login
to view this video.
Video details
Deep learning's recent history has been one of achievement: from triumphing over humans in the game of Go to world-leading performance in image recognition, voice recognition, translation, and other tasks. But this progress has come with a voracious appetite for computing power. This article reports on the computational demands of Deep Learning applications in five prominent application areas and shows that progress in all five is strongly reliant on increases in computing power. Extrapolating forward this reliance reveals that progress along current lines is rapidly becoming economically, technically, and environmentally unsustainable. Thus, continued progress in these applications will require dramatically more computationally-efficient methods, which will either have to come from changes to deep learning or from moving to other machine learning methods.
Locked Interactive transcript
Please
login
to view this video.
Video details
Deep learning's recent history has been one of achievement: from triumphing over humans in the game of Go to world-leading performance in image recognition, voice recognition, translation, and other tasks. But this progress has come with a voracious appetite for computing power. This article reports on the computational demands of Deep Learning applications in five prominent application areas and shows that progress in all five is strongly reliant on increases in computing power. Extrapolating forward this reliance reveals that progress along current lines is rapidly becoming economically, technically, and environmentally unsustainable. Thus, continued progress in these applications will require dramatically more computationally-efficient methods, which will either have to come from changes to deep learning or from moving to other machine learning methods.
Locked Interactive transcript
More Videos From This Event
See all videos
January 2021
|
Conference Video
Armstrong-Japan-1.21.2021
Decarbonizing the Energy Sector: Making Better Decisions for the Energy Transition
January 2021
|
Conference Video
Sarma-Japan-1.21.2021
Future Trends in Innovation
January 2021
|
Conference Video
Karl Koster-Opening-remarks-Japan-1.21.2021
MIT Innovation Ecosystem
January 2021
|
Conference Video
Michael Cusumano-Japan-1.21.2021
Platform Thinking for the Present and Future
January 2021
|
Conference Video
Shah-Japan-1.22.2021
Robotics after COVID-19
January 2021
|
Conference Video
Hastings-Japan-1.22.2021
Is Change Coming in the Space Enterprise?
January 2021
|
Conference Video
Vecna-Robotics-1.22.21
Autonomous mobile robots for bulk materials handling
January 2021
|
Conference Video
Akasha-1.22.21
Imaging and AI for Manufacturing Automation
January 2021
|
Conference Video
Veo-Robotics-1.22.21
Improving manufacturing flexibility by reducing cost and complexity of human-robot interaction
January 2021
|
Conference Video
Industrial-ML-1.22.21
Making Factories Smarter with Machine Learning
January 2021
|
Conference Video
Akselos-1.22.21
Protecting the World's Largest Critical Asset with the World’s Most Advanced Digital Twin Technology
January 2021
|
Conference Video
Pentelute-Japan-1.28.2021
Rapid response technologies for drug discovery
January 2021
|
Conference Video
Schlau-Cohen-Japan-1.28.2021
Crossing the membrane: Conformational dynamics in signal transduction
January 2021
|
Conference Video
Uncountable-1.28.21
AI Platform for Material Development
January 2021
|
Conference Video
Sweetwater Japan 1.28.2021
Green no longer comes at a premium
January 2021
|
Conference Video
Sourcemap-1.28.21
Supply chain transparency platform
January 2021
|
Conference Video
Syzygy-1.28.21
Illuminating the future of the hydrogen industry
January 2021
|
Conference Video
Han-Japan-1.29.2021
Efficient AI: Reducing the Carbon Footprint of Artificial Intelligence in the Internet of Things (IoT)
January 2021
|
Conference Video
Prescient-Devices-1.29.21
Build agile sensor-to-cloud IoT solutions without complexity
January 2021
|
Conference Video
blink-AI-1.29.21
Imaging AI for autonomy, robotics and sensing
January 2021
|
Conference Video
Leela-AI-1.29.21
AI that Understands “What’s Going On” in Video Data, and Learns New Skills with a No-code User Interface
January 2021
|
Conference Video
NaraLogics-1.29.21
Digital Flywheel Platform for Retail
January 2021
|
Conference Video
Onspecta-1.29.21
Unique Virtualization Technology for Best Inference Hardware Performance
February 2021
|
Conference Video
Cima-Japan-2.5.2021
Pursuing Rapid Commercialization of Research
February 2021
|
Conference Video
Timothy Swager-2.5.2021
3-D Molecular Porosity for New Generations of Polymer Membranes
January 2021
|
Conference Video
1.21.21-Armstrong-Japanese version
Decarbonizing the Energy Sector: Making Better Decisions for the Energy Transition
January 2021
|
Conference Video
1.21.21-Cusumano-Japanese version
Platform Thinking for the Present and Future
January 2021
|
Conference Video
1.21.21-Sanjay Sarma - Japanese Version
Future Trends in Innovation