back

What is this? A machine learning model for ants?

How to shrink deep learning models, and why you would want to.

If you suspend your transcription on amara.org, please add a timestamp below to indicate how far you progressed! This will help others to resume your work!

Please do not press “publish” on amara.org to save your progress, use “save draft” instead. Only press “publish” when you're done with quality control.

Video duration
00:40:49
Language
English
Abstract
This talk will give a brief introduction of deep learning models and the energy they consume for training and inference. We then discuss what methods currently exist for handling their complexity, and how neural network parameter counts could grow by orders of magnitude, despite the end of Moore's law.

Declared dead numerous times, the hype around deep learning is bigger than ever. With Large Language Models and Diffusion Models becoming a commodity, we ask the question of how bad their energy consumption *really* is, what we can do about it, and how it is possible to run cutting-edge language models on off-the-shelf GPUs.

We will look at the various ways that people have come up with to rein in the hunger for resources of deep learning models, and why we still struggle to keep up with the demands of modern neural network model architectures. From low-bitwidth integer representation, through pruning of redundant connections and using a large network to teach a small one, all the way to quickly adapting existing models using low-rank adaptation.

This talk aims to give the audience an estimation of the amount of energy modern machine learning models consume to allow for more informed decisions around their usage and regulations. In the second part, we discuss the most common techniques used for running modern architectures on commodity hardware, outside of data centers. Hopefully, deeper insights into these methods will help improve experimentation with and access to deep learning models.

Talk ID
11844
Event:
37c3
Day
3
Room
Saal 1
Start
1:50 p.m.
Duration
00:40:00
Track
Sustainability & Climate Justice
Type of
lecture
Speaker
Other Artists
etrommer
Talk Slug & media link
37c3-11844-what_is_this_a_machine_learning_model_for_ants
English
0.0% Checking done0.0%
0.0% Syncing done0.0%
0.0% Transcribing done0.0%
100.0% Nothing done yet100.0%
  

Work on this video on Amara!

English: Transcribed until

Last revision: 9 months, 3 weeks ago