sonic-autoscaler.yaml (32 lines of code) (raw):

# An unique identifier for the head node and workers of this cluster. cluster_name: default # The minimum number of workers nodes to launch in addition to the head # node. This number should be >= 0. min_workers: 4 # The maximum number of workers nodes to launch in addition to the head # node. This takes precedence over min_workers. max_workers: 4 # The autoscaler will scale up the cluster to this target fraction of resource # usage. For example, if a cluster of 10 nodes is 100% busy and # target_utilization is 0.8, it would resize the cluster to 13. This fraction # can be decreased to increase the aggressiveness of upscaling. # This value must be less than 1.0 for scaling to happen. target_utilization_fraction: 0.8 # If a node is idle for this many minutes, it will be removed. idle_timeout_minutes: 5 # Cloud-provider specific configuration. provider: type: aws region: us-east-1 availability_zone: us-east-1d # How Ray will authenticate with newly launched nodes. auth: ssh_user: ubuntu # By default Ray creates a new private keypair, but you can also use your own. # If you do so, make sure to also set "KeyName" in the head and worker node # configurations below. # ssh_private_key: /path/to/your/key.pem # Provider-specific config for the head node, e.g. instance type. By default # Ray will auto-configure unspecified fields such as SubnetId and KeyName. # For more documentation on available fields, see: # http://boto3.readthedocs.io/en/latest/reference/services/ec2.html#EC2.ServiceResource.create_instances head_node: InstanceType: p2.8xlarge ImageId: ami-bc09d9c1 # Amazon Deep Learning AMI (Ubuntu) # Additional options in the boto docs. # Provider-specific config for worker nodes, e.g. instance type. By default # Ray will auto-configure unspecified fields such as SubnetId and KeyName. # For more documentation on available fields, see: # http://boto3.readthedocs.io/en/latest/reference/services/ec2.html#EC2.ServiceResource.create_instances worker_nodes: InstanceType: p2.8xlarge ImageId: ami-bc09d9c1 # Amazon Deep Learning AMI (Ubuntu) # Run workers on spot by default. Comment this out to use on-demand. # InstanceMarketOptions: # MarketType: spot # # Additional options can be found in the boto docs, e.g. # # SpotOptions: # # MaxPrice: MAX_HOURLY_PRICE # Additional options in the boto docs. # Files or directories to copy to the head and worker nodes. The format is a # dictionary from REMOTE_PATH: LOCAL_PATH, e.g. # file_mounts: { # "/home/ubuntu/sonic-on-ray": "/Users/<username>/sonic-on-ray" # } # List of shell commands to run to set up nodes. setup_commands: # Note: if you're developing Ray, you probably want to create an AMI that # has your Ray repo pre-cloned. Then, you can replace the pip installs # below with a git checkout <your_sha> (and possibly a recompile). - echo 'export PATH="$HOME/anaconda3/envs/tensorflow_p36/bin:$PATH"' >> ~/.bashrc - pip install ray opencv-python - GIT_SSH_COMMAND="ssh -o UserKnownHostsFile=/dev/null -o StrictHostKeyChecking=no" git clone --recursive git@github.com:openai/retro.git gym-retro - cd gym-retro; pip install -e . - GIT_SSH_COMMAND="ssh -o UserKnownHostsFile=/dev/null -o StrictHostKeyChecking=no" git clone git@github.com:openai/sonic-on-ray.git # Custom commands that will be run on the head node after common setup. head_setup_commands: - pip install boto3==1.4.8 # 1.4.8 adds InstanceMarketOptions # Custom commands that will be run on worker nodes after common setup. worker_setup_commands: [] # Command to start ray on the head node. You don't need to change this. head_start_ray_commands: - ray stop - ray start --head --redis-port=6379 --object-manager-port=8076 --autoscaling-config=~/ray_bootstrap_config.yaml # Command to start ray on worker nodes. You don't need to change this. worker_start_ray_commands: - ray stop - ray start --redis-address=$RAY_HEAD_IP:6379 --object-manager-port=8076