# A unique identifier for the head node and workers of this cluster. cluster_name: default # Running Ray in Docker images is optional (this docker section can be commented out). # This executes all commands on all nodes in the docker container, # and opens all the necessary ports to support the Ray cluster. # Empty string means disabled. Assumes Docker is installed. docker: image: "rayproject/ray-ml:latest-gpu" # You can change this to latest-cpu if you don't need GPU support and want a faster startup # image: rayproject/ray:latest-gpu # use this one if you don't need ML dependencies, it's faster to pull container_name: "ray_container" # If true, pulls latest version of image. Otherwise, `docker run` will only pull the image # if no cached version is present. pull_before_run: True run_options: # Extra options to pass into "docker run" - --ulimit nofile=65536:65536 provider: type: local head_ip: YOUR_HEAD_NODE_HOSTNAME # You may need to supply a public ip for the head node if you need # to run `ray up` from outside of the Ray cluster's network # (e.g. the cluster is in an AWS VPC and you're starting ray from your laptop) # This is useful when debugging the local node provider with cloud VMs. # external_head_ip: YOUR_HEAD_PUBLIC_IP worker_ips: [WORKER_NODE_1_HOSTNAME, WORKER_NODE_2_HOSTNAME, ... ] # Optional when running automatic cluster management on prem. If you use a coordinator server, # then you can launch multiple autoscaling clusters on the same set of machines, and the coordinator # will assign individual nodes to clusters as needed. # coordinator_address: ":" # How Ray will authenticate with newly launched nodes. auth: ssh_user: YOUR_USERNAME # You can comment out `ssh_private_key` if the following machines don't need a private key for SSH access to the Ray # cluster: # (1) The machine on which `ray up` is executed. # (2) The head node of the Ray cluster. # # The machine that runs ray up executes SSH commands to set up the Ray head node. The Ray head node subsequently # executes SSH commands to set up the Ray worker nodes. When you run ray up, ssh credentials sitting on the ray up # machine are copied to the head node -- internally, the ssh key is added to the list of file mounts to rsync to head node. # ssh_private_key: ~/.ssh/id_rsa # The minimum number of workers nodes to launch in addition to the head # node. This number should be >= 0. # Typically, min_workers == max_workers == len(worker_ips). # This field is optional. min_workers: TYPICALLY_THE_NUMBER_OF_WORKER_IPS # The maximum number of workers nodes to launch in addition to the head node. # This takes precedence over min_workers. # Typically, min_workers == max_workers == len(worker_ips). # This field is optional. max_workers: TYPICALLY_THE_NUMBER_OF_WORKER_IPS # The default behavior for manually managed clusters is # min_workers == max_workers == len(worker_ips), # meaning that Ray is started on all available nodes of the cluster. # For automatically managed clusters, max_workers is required and min_workers defaults to 0. # The autoscaler will scale up the cluster faster with higher upscaling speed. # E.g., if the task requires adding more nodes then autoscaler will gradually # scale up the cluster in chunks of upscaling_speed*currently_running_nodes. # This number should be > 0. upscaling_speed: 1.0 idle_timeout_minutes: 5 # Files or directories to copy to the head and worker nodes. The format is a # dictionary from REMOTE_PATH: LOCAL_PATH. E.g. you could save your conda env to an environment.yaml file, mount # that directory to all nodes and call `conda -n my_env -f /path1/on/remote/machine/environment.yaml`. In this # example paths on all nodes must be the same (so that conda can be called always with the same argument) file_mounts: { # "/path1/on/remote/machine": "/path1/on/local/machine", # "/path2/on/remote/machine": "/path2/on/local/machine", } # Files or directories to copy from the head node to the worker nodes. The format is a # list of paths. The same path on the head node will be copied to the worker node. # This behavior is a subset of the file_mounts behavior. In the vast majority of cases # you should just use file_mounts. Only use this if you know what you're doing! cluster_synced_files: [] # Whether changes to directories in file_mounts or cluster_synced_files in the head node # should sync to the worker node continuously file_mounts_sync_continuously: False # Patterns for files to exclude when running rsync up or rsync down rsync_exclude: - "**/.git" - "**/.git/**" # Pattern files to use for filtering out files when running rsync up or rsync down. The file is searched for # in the source directory and recursively through all subdirectories. For example, if .gitignore is provided # as a value, the behavior will match git's behavior for finding and using .gitignore files. rsync_filter: - ".gitignore" # List of commands that will be run before `setup_commands`. If docker is # enabled, these commands will run outside the container and before docker # is setup. initialization_commands: [] # List of shell commands to run to set up each nodes. setup_commands: [] # If we have e.g. conda dependencies stored in "/path1/on/local/machine/environment.yaml", we can prepare the # work environment on each worker by: # 1. making sure each worker has access to this file i.e. see the `file_mounts` section # 2. adding a command here that creates a new conda environment on each node or if the environment already exists, # it updates it: # conda env create -q -n my_venv -f /path1/on/local/machine/environment.yaml || conda env update -q -n my_venv -f /path1/on/local/machine/environment.yaml # # Ray developers: # you probably want to create a Docker image that # has your Ray repo pre-cloned. Then, you can replace the pip installs # below with a git checkout (and possibly a recompile). # To run the nightly version of ray (as opposed to the latest), either use a rayproject docker image # that has the "nightly" (e.g. "rayproject/ray-ml:nightly-gpu") or uncomment the following line: # - pip install -U "ray[default] @ https://s3-us-west-2.amazonaws.com/ray-wheels/latest/ray-3.0.0.dev0-cp37-cp37m-manylinux2014_x86_64.whl" # Custom commands that will be run on the head node after common setup. head_setup_commands: [] # 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: # If we have e.g. conda dependencies, we could create on each node a conda environment (see `setup_commands` section). # In that case we'd have to activate that env on each node before running `ray`: # - conda activate my_venv && ray stop # - conda activate my_venv && ulimit -c unlimited && ray start --head --port=6379 --autoscaling-config=~/ray_bootstrap_config.yaml - ray stop - ulimit -c unlimited && ray start --head --port=6379 --autoscaling-config=~/ray_bootstrap_config.yaml # Command to start ray on worker nodes. You don't need to change this. worker_start_ray_commands: # If we have e.g. conda dependencies, we could create on each node a conda environment (see `setup_commands` section). # In that case we'd have to activate that env on each node before running `ray`: # - conda activate my_venv && ray stop # - ray start --address=$RAY_HEAD_IP:6379 - ray stop - ray start --address=$RAY_HEAD_IP:6379