vithursant/terraform-aws-spotgpu
Fully automated provisioning of AWS EC2 Spot Instances for Deep Learning workloads using Terraform.
This helps deep learning engineers and researchers quickly provision powerful, GPU-equipped AWS EC2 Spot Instances for their deep learning workloads. You provide a simple configuration, and it automatically sets up the necessary infrastructure on Amazon Web Services, allowing you to run your models and experiments without manually configuring servers. This is ideal for those who need to frequently spin up and tear down computational resources for training neural networks or running large-scale simulations.
149 stars. No commits in the last 6 months.
Use this if you are a deep learning engineer or researcher who needs to rapidly set up cost-effective, GPU-accelerated computing environments on AWS for training and experimentation.
Not ideal if you need a persistent, always-on server environment or if your workloads do not require GPU acceleration.
Stars
149
Forks
38
Language
HCL
License
Apache-2.0
Category
Last pushed
May 01, 2018
Commits (30d)
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