IMPACT2021 | How Deep Learning Model Architecture Impacts Optimal Training Configuration in the Cloud – Eugene Protasenko

IMPACT2021 | Dell’s purpose-built Data Science Workstations: For AI Developers and Their Users – Kyle Harper
January 29, 2021
IMPACT2021 | The Golden Era of AI and Machine Learning: The case for on-premise AI resources – Kyle Harper
January 29, 2021
IMPACT2021 | Dell’s purpose-built Data Science Workstations: For AI Developers and Their Users – Kyle Harper
January 29, 2021
IMPACT2021 | The Golden Era of AI and Machine Learning: The case for on-premise AI resources – Kyle Harper
January 29, 2021

IMPACT2021 | How Deep Learning Model Architecture Impacts Optimal Training Configuration in the Cloud – Eugene Protasenko

This session is part of a long research program aimed at scrutinizing how different components of server hardware and software stack affect deep learning model’s training time and cost. Even a very simple set up where one needs to choose a cloud VM with a single GPU secondary parameters (like RAM, CPU performance, disks, etc.) might have a significant impact on the cost and duration of the training and this impact will vary from one neural network architecture to another.

Speaker
Eugene Protasenko
CEO and Founder, RocketCompute
Redwood City, California United States

Track
Modern Enterprise IT
Performance Engineering and DevOps

IMPACT Session Video:

To view the video you must have a CMG membership. Sign up today!

For existing members sign in here.