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
5.5.22-Efficient-AI-Michael-Carbin
Conference Video
|
Duration: 31:58
May 5, 2022
View this past event
Preview
5.5.22-Efficient-AI-Michael-Carbin
Please
login
to view this video.
Video details
The cost of training modern deep learning systems, such as GPT-3, has put the impressive capabilities of these systems beyond the reach of many individuals and institutions. However, a key property of these systems is that they are approximate in that there is a natural trade-off between the quality of the results these systems produce and their performance and energy consumption. Exploiting this fact, researchers have developed a variety of new mechanisms that automatically change the exact behavior of a system to enable the system to execute more efficiently and cost effectively through techniques like quantization, distillation, and pruning. In this talk, I will present how such approximation mechanisms serve as a central opportunity for efficient ML, with still critical work to be done in understanding how to compose, analyze, and characterize the behavior of the resulting approximate systems.
Locked Interactive transcript
Please
login
to view this video.
Video details
The cost of training modern deep learning systems, such as GPT-3, has put the impressive capabilities of these systems beyond the reach of many individuals and institutions. However, a key property of these systems is that they are approximate in that there is a natural trade-off between the quality of the results these systems produce and their performance and energy consumption. Exploiting this fact, researchers have developed a variety of new mechanisms that automatically change the exact behavior of a system to enable the system to execute more efficiently and cost effectively through techniques like quantization, distillation, and pruning. In this talk, I will present how such approximation mechanisms serve as a central opportunity for efficient ML, with still critical work to be done in understanding how to compose, analyze, and characterize the behavior of the resulting approximate systems.
Locked Interactive transcript
More Videos From This Event
See all videos
May 2022
|
Conference Video
5.5.22-Efficient-AI-Julie-Shah
The Ethical Computing Platform
May 2022
|
Conference Video
5.5.22-Efficient-AI-Daniel-Huttenlocher
Building the Schwarzman College of Computing at MIT
May 2022
|
Conference Video
5.5.22-Efficient-AI-Jesús-delAlamo
AI Hardware: What’s Next?
May 2022
|
Conference Video
5.5.22-Efficient-AI-Song-Han
TinyML: Enable Efficient Deep Learning on Mobile Devices
May 2022
|
Conference Video
5.5.22-Efficient-AI-Panel
MIT-Industry Panel Discussion: AI Hardware at the Edge - the Internet of Intelligent Things
May 2022
|
Conference Video
5.5.22-Efficient-AI-Wojciech-Matusik
High-resolution Tactile Sensors to Give AI a Human-Touch
May 2022
|
Conference Video
5.5.22-Efficient-AI-Dina-Katabi
Ambient Intelligence: Seeing the World Through the Eyes of Radio Signals
May 2022
|
Conference Video
5.5.22-Efficient-AI-Tomás-Palacios
AI Talent Recruiting: MIT EECS Alliance
May 2022
|
Conference Video
5.5.22-Efficient-AI-Sync-Computing
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-Covariance
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-Interpretable-AI
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-Themis-AI
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-UbiCept
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-Prescient
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-MosaicML
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-OmniML
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-Arundo
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-Pison
MIT Startup Lightning Talk
May 2022
|
Conference Video
5.5.22-Efficient-AI-Antonio-Torralba
Learning to See by Looking at Noise
May 2022
|
Conference Video
5.5.22-Efficient-AI-Sertac-Karaman
Chips for Robotics: The Co-design of Computing Hardware and Algorithms for Low-energy Autonomous Vehicles