Skip to content

Latest commit

 

History

History
118 lines (106 loc) · 13 KB

README.md

File metadata and controls

118 lines (106 loc) · 13 KB

GPU Finder

GPU Finder attempts to make it easier to find and provision Compute Engine Instances with GPUs.

Why GPU Finder?

GPU quotas are not always consistent across regions and at any particular time. At peak times, there may be limited availability of GPUs in the cloud due to high demand for their compute capacity. This makes finding and provisioning of GPUs difficult and time consuming. By just setting a few configuration parameters, this script can be used to automate the process of finding and provisioning Compute Engine instances with GPUs.

Prerequisites

  • A GCP account and access to a service account with the permissions needed for creating instances. See the docs for creating a key file and setting the GOOGLE_APPLICATION_CREDENTIALS environment variable
  • A python environment with google-api-python-client==2.0.2 library installed using pip

Using the GPU Finder

  1. Download the service account key file and set the GOOGLE_APPLICATION_CREDENTIALS environment variable to authenticate with GCP APIs
  2. Install the Google API client library by running the command below:
pip install -r requirements.txt
  1. Modify the gpu-config.json file to set the appropriate configuration parameters. In addition to the name of the machine, the important parameters to set are:
Zone Location GPU model GPU virtual workstation
asia-east1-a Changhua County, Taiwan, APAC T4, P100, K80. T4, P100
asia-east1-b Changhua County, Taiwan, APAC K80
asia-east1-c Changhua County, Taiwan, APAC T4, V100, P100 T4, P100
asia-east2-a
asia-east2-b
asia-east2-c Hong Kong, APAC
asia-northeast1-a
asia-northeast1-c Tokyo, Japan, APAC T4 T4
asia-northeast1-b Tokyo, Japan, APAC
asia-northeast2-a
asia-northeast2-b
asia-northeast2-c Osaka, Japan, APAC
asia-northeast3-a Seoul, South Korea, APAC
asia-northeast3-b
asia-northeast3-c Seoul, South Korea, APAC T4 T4
asia-south1-a
asia-south1-b Mumbai, India, APAC T4 T4
asia-south1-c Mumbai, India, APAC
asia-southeast1-a Jurong West, Singapore, APAC T4 T4
asia-southeast1-b Jurong West, Singapore, APAC T4, P4 T4, P4
asia-southeast1-c Jurong West, Singapore, APAC A100, T4, P4 T4, P4
asia-southeast2-a
asia-southeast2-b Jakarta, Indonesia, APAC T4 T4
asia-southeast2-c Jakarta, Indonesia, APAC
australia-southeast1-a Sydney, Australia, APAC T4, P4 T4, P4
australia-southeast1-b Sydney, Australia, APAC P4 P4
australia-southeast1-c Sydney, Australia, APAC P100 P100
europe-north1-a
europe-north1-b
europe-north1-c Hamina, Finland, Europe
europe-west1-b St. Ghislain, Belgium, Europe P100, K80 P100
europe-west1-c St. Ghislain, Belgium, Europe
europe-west1-d St. Ghislain, Belgium, Europe P100, K80 P100
europe-west2-a
europe-west2-b London, England, Europe T4 T4
europe-west2-c London, England, Europe
europe-west3-a Frankfurt, Germany, Europe
europe-west3-b Frankfurt, Germany, Europe T4 T4
europe-west3-c Frankfurt, Germany, Europe
europe-west4-a Eemshaven, Netherlands, Europe A100, V100, P100 P100
europe-west4-b Eemshaven, Netherlands, Europe A100, T4, P4, V100 T4, P4
europe-west4-c Eemshaven, Netherlands, Europe T4, P4, V100 T4, P4
europe-west6-a
europe-west6-b
europe-west6-c Zurich, Switzerland, Europe
northamerica-northeast1-a
northamerica-northeast1-b
northamerica-northeast1-c Montréal, Québec, North America P4 P4
southamerica-east1-a
southamerica-east1-b Osasco, São Paulo, Brazil, South America
southamerica-east1-c Osasco, São Paulo, Brazil, South America T4 T4
us-central1-a Council Bluffs, Iowa, North America A100, T4, P4, V100, K80 T4, P4
us-central1-b Council Bluffs, Iowa, North America A100, T4, V100 T4
us-central1-c Council Bluffs, Iowa, North America A100, P4, V100, P100, K80 P4, P100
us-central1-f Council Bluffs, Iowa, North America T4, V100, P100, K80 T4, P100
us-east1-b Moncks Corner, South Carolina, North America P100 P100
us-east1-c Moncks Corner, South Carolina, North America T4, V100, P100, K80 T4, P100
us-east1-d Moncks Corner, South Carolina, North America T4, K80 T4
us-east4-a Ashburn, Virginia, North America P4 P4
us-east4-b Ashburn, Virginia, North America T4, P4 T4, P4
us-east4-c Ashburn, Virginia, North America P4 P4
us-west1-a The Dalles, Oregon, North America T4, V100, P100 T4
us-west1-b The Dalles, Oregon, North America T4, V100, P100, K80 T4, P100
us-west1-c The Dalles, Oregon, North America
us-west2-a Los Angeles, California, North America
us-west2-b
us-west2-c Los Angeles, California, North America P4 P4
us-west3-a
us-west3-b
us-west3-c Salt Lake City, Utah, North America
us-west4-a
us-west4-b
us-west4-c Las Vegas, Nevada, North America
GPU Model Configuration Name Compatible Machine Types Number of GPUs
NVIDIA® A100 nvidia-tesla-a100 A2 1, 2, 4, 8, 16
NVIDIA® T4 nvidia-tesla-t4 N1 1, 2, 4
NVIDIA® V100 nvidia-tesla-v100 N1 1, 2, 4, 8
NVIDIA® P4 nvidia-tesla-p4 N1 1, 2, 4
NVIDIA® P100 nvidia-tesla-p100 N1 1, 2, 4
NVIDIA® K80 nvidia-tesla-k80 N1 1, 2, 4, 8
  1. Additional configuration like disk type, disk size, firewall rules, image type, image family, VPC, startup scripts, and others can be set in the configuration file too.
  2. When running the script, you will see output in the logs about which regions and zones the instances will be created in, the names of instances, and whether a quota has been reached in a given region.

Clean Up

There is a delete_instance function in the script that will delete the instances passed in the instance_details parameter. Please be mindful of cleaning up instances with GPUs attached when these are no longer needed.