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clearml.conf
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# CLEARML-AGENT configuration file
api {
api_server: https://demoapi.demo.clear.ml
web_server: https://demoapp.demo.clear.ml
files_server: https://demofiles.demo.clear.ml
# Credentials are generated in the webapp, https://app.clear.ml/settings/workspace-configuration
# Overridden with os environment: CLEARML_API_ACCESS_KEY / CLEARML_API_SECRET_KEY
credentials {"access_key": "EGRTCO8JMSIGI6S39GTP43NFWXDQOW", "secret_key": "x!XTov_G-#vspE*Y(h$Anm&DIc5Ou-F)jsl$PdOyj5wG1&E!Z8"}
# verify host ssl certificate, set to False only if you have a very good reason
verify_certificate: True
}
agent {
# unique name of this worker, if None, created based on hostname:process_id
# Override with os environment: CLEARML_WORKER_ID
# worker_id: "clearml-agent-machine1:gpu0"
worker_id: ""
# worker name, replaces the hostname when creating a unique name for this worker
# Override with os environment: CLEARML_WORKER_NAME
# worker_name: "clearml-agent-machine1"
worker_name: ""
# Set GIT user/pass credentials (if user/pass are set, GIT protocol will be set to https)
# leave blank for GIT SSH credentials (set force_git_ssh_protocol=true to force SSH protocol)
# **Notice**: GitHub personal token is equivalent to password, you can put it directly into `git_pass`
# To learn how to generate git token GitHub/Bitbucket/GitLab:
# https://docs.github.com/en/authentication/keeping-your-account-and-data-secure/creating-a-personal-access-token
# https://support.atlassian.com/bitbucket-cloud/docs/app-passwords/
# https://docs.gitlab.com/ee/user/profile/personal_access_tokens.html
# git_user: ""
# git_pass: ""
# Limit credentials to a single domain, for example: github.com,
# all other domains will use public access (no user/pass). Default: always send user/pass for any VCS domain
# git_host: ""
# Force GIT protocol to use SSH regardless of the git url (Assumes GIT user/pass are blank)
force_git_ssh_protocol: false
# Force a specific SSH port when converting http to ssh links (the domain is kept the same)
# force_git_ssh_port: 0
# Force a specific SSH username when converting http to ssh links (the default username is 'git')
# force_git_ssh_user: git
# Set the python version to use when creating the virtual environment and launching the experiment
# Example values: "/usr/bin/python3" or "/usr/local/bin/python3.6"
# The default is the python executing the clearml_agent
python_binary: ""
# ignore any requested python version (Default: False, if a Task was using a
# specific python version and the system supports multiple python the agent will use the requested python version)
# ignore_requested_python_version: true
# Force the root folder of the git repository (instead of the working directory) into the PYHTONPATH
# default false, only the working directory will be added to the PYHTONPATH
# force_git_root_python_path: false
# if set, use GIT_ASKPASS to pass user/pass when cloning / fetch repositories
# it solves passing user/token to git submodules.
# this is a safer way to ensure multiple users using the same repository will
# not accidentally leak credentials
# Note: this is only supported on Linux systems
# enable_git_ask_pass: true
# in docker mode, if container's entrypoint automatically activated a virtual environment
# use the activated virtual environment and install everything there
# set to False to disable, and always create a new venv inheriting from the system_site_packages
# docker_use_activated_venv: true
# select python package manager:
# currently supported: pip, conda and poetry
# if "pip" or "conda" are used, the agent installs the required packages
# based on the "installed packages" section of the Task. If the "installed packages" is empty,
# it will revert to using `requirements.txt` from the repository's root directory.
# If Poetry is selected and the root repository contains `poetry.lock` or `pyproject.toml`,
# the "installed packages" section is ignored, and poetry is used.
# If Poetry is selected and no lock file is found, it reverts to "pip" package manager behaviour.
package_manager: {
# supported options: pip, conda, poetry
type: pip,
# specify pip version to use (examples "<20.2", "==19.3.1", "", empty string will install the latest version)
# pip_version: ["<20.2 ; python_version < '3.10'", "<22.3 ; python_version >= '3.10'"]
# specify poetry version to use (examples "<2", "==1.1.1", "", empty string will install the latest version)
# poetry_version: "<2",
# poetry_install_extra_args: ["-v"]
# virtual environment inheres packages from system
system_site_packages: false,
# install with --upgrade
force_upgrade: false,
# additional artifact repositories to use when installing python packages
# extra_index_url: ["https://allegroai.jfrog.io/clearml/api/pypi/public/simple"]
extra_index_url: []
# additional flags to use when calling pip install, example: ["--use-deprecated=legacy-resolver", ]
# extra_pip_install_flags: []
# control the pytorch wheel resolving algorithm, options are: "pip", "direct", "none"
# Override with environment variable CLEARML_AGENT_PACKAGE_PYTORCH_RESOLVE
# "pip" (default): would automatically detect the cuda version, and supply pip with the correct
# extra-index-url, based on pytorch.org tables
# "direct": would resolve a direct link to the pytorch wheel by parsing the pytorch.org pip repository
# and matching the automatically detected cuda version with the required pytorch wheel.
# if the exact cuda version is not found for the required pytorch wheel, it will try
# a lower cuda version until a match is found
# "none": No resolver used, install pytorch like any other package
# pytorch_resolve: "pip"
# additional conda channels to use when installing with conda package manager
conda_channels: ["pytorch", "conda-forge", "nvidia", "defaults", ]
# conda_full_env_update: false
# notice this will not install any additional packages into the selected environment, should be used in
# conjunction with CLEARML_CONDA_ENV_PACKAGE which points to an existing conda environment directory
# conda_env_as_base_docker: false
# install into base conda environment
# (should only be used if running in docker mode, because it will change the conda base enrichment)
# use_conda_base_env: false
# set the priority packages to be installed before the rest of the required packages
# Note: this only controls the installation order of existing requirement packages (and does not add additional packages)
# priority_packages: ["cython", "numpy", "setuptools", ]
# set the optional priority packages to be installed before the rest of the required packages,
# In case a package installation fails, the package will be ignored,
# and the virtual environment process will continue
# Note: this only controls the installation order of existing requirement packages (and does not add additional packages)
# priority_optional_packages: ["pygobject", ]
# set the post packages to be installed after all the rest of the required packages
# Note: this only controls the installation order of existing requirement packages (and does not add additional packages)
# post_packages: ["horovod", ]
# set the optional post packages to be installed after all the rest of the required packages,
# In case a package installation fails, the package will be ignored,
# and the virtual environment process will continue
# Note: this only controls the installation order of existing requirement packages (and does not add additional packages)
# post_optional_packages: []
# set to True to support torch nightly build installation,
# notice: torch nightly builds are ephemeral and are deleted from time to time
torch_nightly: false,
},
# target folder for virtual environments builds, created when executing experiment
venvs_dir = ~/.clearml/venvs-builds
# cached virtual environment folder
venvs_cache: {
# maximum number of cached venvs
max_entries: 10
# minimum required free space to allow for cache entry, disable by passing 0 or negative value
free_space_threshold_gb: 2.0
# unmark to enable virtual environment caching
path: ~/.clearml/venvs-cache
},
# cached git clone folder
vcs_cache: {
enabled: true,
path: ~/.clearml/vcs-cache
# if git pull failed, always revert to re-cloning the repo, it protects against old user name changes
# clone_on_pull_fail: false
},
# DEPRECATED: please use `venvs_cache` and set `venvs_cache.path`
# use venv-update in order to accelerate python virtual environment building
# Still in beta, turned off by default
# venv_update: {
# enabled: false,
# },
# cached folder for specific python package download (mostly pytorch versions)
pip_download_cache {
enabled: true,
path: ~/.clearml/pip-download-cache
},
translate_ssh: true,
# set "disable_ssh_mount: true" to disable the automatic mount of ~/.ssh folder into the docker containers
# default is false, automatically mounts ~/.ssh
# Must be set to True if using "clearml-session" with this agent!
# disable_ssh_mount: false
# reload configuration file every daemon execution
reload_config: false,
# pip cache folder mapped into docker, used for python package caching
docker_pip_cache = ~/.clearml/pip-cache
# apt cache folder mapped into docker, used for ubuntu package caching
docker_apt_cache = ~/.clearml/apt-cache
# optional arguments to pass to docker image
# these are local for this agent and will not be updated in the experiment's docker_cmd section
# You can also pass host environments into the container with ["-e", "HOST_NAME=$HOST_NAME"]
# extra_docker_arguments: ["--ipc=host", "-v", "/mnt/host/data:/mnt/data"]
# Allow the extra docker arg to override task level docker arg (if the same argument is passed on both),
# if set to False, a task docker arg will override the docker extra arg
# docker_args_extra_precedes_task: true
# prevent a task docker args to be used if already specified in the extra_docker_arguments
# protected_docker_extra_args: ["privileged", "security-opt", "network", "ipc"]
# optional shell script to run in docker when started before the experiment is started
# extra_docker_shell_script: ["apt-get install -y bindfs", ]
# Install the required packages for opencv libraries (libsm6 libxext6 libxrender-dev libglib2.0-0),
# for backwards compatibility reasons, true as default,
# change to false to skip installation and decrease docker spin up time
# docker_install_opencv_libs: true
# Allow passing host environments into docker container with Task's docker container args
# Example "-e HOST_NAME=$HOST_NAME"
# NOTICE this might introduce security risk allowing access to keys/secret on the host machine1
# Use with care!
# docker_allow_host_environ: false
# set to true in order to force "docker pull" before running an experiment using a docker image.
# This makes sure the docker image is updated.
docker_force_pull: false
default_docker: {
# default docker image to use when running in docker mode
image: "nvidia/cuda:11.0.3-cudnn8-runtime-ubuntu20.04"
# optional arguments to pass to docker image
# arguments: ["--ipc=host"]
# lookup table rules for default container
# first matched rule will be picked, according to rule order
# enterprise version only
# match_rules: [
# {
# image: "nvidia/cuda:11.0.3-cudnn8-runtime-ubuntu20.04"
# arguments: "-e define=value"
# match: {
# script{
# # Optional: must match all requirements (not partial)
# requirements: {
# # version selection matching PEP-440
# pip: {
# tensorflow: "~=2.6"
# },
# }
# # Optional: matching based on regular expression, example: "^exact_match$"
# repository: "/my_repository/"
# branch: "main"
# binary: "python3.6"
# }
# # Optional: matching based on regular expression, example: "^exact_match$"
# project: "project/sub_project"
# }
# },
# {
# image: "nvidia/cuda:11.0.3-cudnn8-runtime-ubuntu20.04"
# arguments: "-e define=value"
# match: {
# # must match all requirements (not partial)
# script{
# requirements: {
# conda: {
# torch: ">=2.6,<2.8"
# }
# }
# # no repository matching required
# repository: ""
# }
# # no repository matching required
# project: ""
# }
# },
# ]
}
# set the OS environments based on the Task's Environment section before launching the Task process.
enable_task_env: false
# CUDA versions used for Conda setup & solving PyTorch wheel packages
# Should be detected automatically. Override with os environment CUDA_VERSION / CUDNN_VERSION
# cuda_version: 10.1
# cudnn_version: 7.6
# Hide docker environment variables containing secrets when printing out the docker command by replacing their
# values with "********". Turning this feature on will hide the following environment variables values:
# CLEARML_API_SECRET_KEY, CLEARML_AGENT_GIT_PASS, AWS_SECRET_ACCESS_KEY, AZURE_STORAGE_KEY
# To include more environment variables, add their keys to the "extra_keys" list. E.g. to make sure the value of
# your custom environment variable named MY_SPECIAL_PASSWORD will not show in the logs when included in the
# docker command, set:
# extra_keys: ["MY_SPECIAL_PASSWORD"]
hide_docker_command_env_vars {
enabled: true
extra_keys: []
parse_embedded_urls: true
}
# allow to set internal mount points inside the docker,
# especially useful for non-root docker container images.
# docker_internal_mounts {
# sdk_cache: "/clearml_agent_cache"
# apt_cache: "/var/cache/apt/archives"
# ssh_folder: "/root/.ssh"
# ssh_ro_folder: "/.ssh"
# pip_cache: "/root/.cache/pip"
# poetry_cache: "/root/.cache/pypoetry"
# vcs_cache: "/root/.clearml/vcs-cache"
# venv_build: "~/.clearml/venvs-builds"
# pip_download: "/root/.clearml/pip-download-cache"
# }
# Name docker containers created by the daemon using the following string format (supported from Docker 0.6.5)
# Allowed variables are task_id, worker_id and rand_string (random lower-case letters string, up to 32 characters)
# Note: resulting name must start with an alphanumeric character and
# continue with alphanumeric characters, underscores (_), dots (.) and/or dashes (-)
# docker_container_name_format: "clearml-id-{task_id}-{rand_string:.8}"
}
sdk {
# CLEARML - default SDK configuration
storage {
cache {
# Defaults to <system_temp_folder>/clearml_cache
default_base_dir: "~/.clearml/cache"
}
direct_access: [
# Objects matching are considered to be available for direct access, i.e. they will not be downloaded
# or cached, and any download request will return a direct reference.
# Objects are specified in glob format, available for url and content_type.
{ url: "file://*" } # file-urls are always directly referenced
]
}
metrics {
# History size for debug files per metric/variant. For each metric/variant combination with an attached file
# (e.g. debug image event), file names for the uploaded files will be recycled in such a way that no more than
# X files are stored in the upload destination for each metric/variant combination.
file_history_size: 100
# Max history size for matplotlib imshow files per plot title.
# File names for the uploaded images will be recycled in such a way that no more than
# X images are stored in the upload destination for each matplotlib plot title.
matplotlib_untitled_history_size: 100
# Limit the number of digits after the dot in plot reporting (reducing plot report size)
# plot_max_num_digits: 5
# Settings for generated debug images
images {
format: JPEG
quality: 87
subsampling: 0
}
# Support plot-per-graph fully matching Tensorboard behavior (i.e. if this is set to True, each series should have its own graph)
tensorboard_single_series_per_graph: False
}
network {
metrics {
# Number of threads allocated to uploading files (typically debug images) when transmitting metrics for
# a specific iteration
file_upload_threads: 4
# Warn about upload starvation if no uploads were made in specified period while file-bearing events keep
# being sent for upload
file_upload_starvation_warning_sec: 120
}
iteration {
# Max number of retries when getting frames if the server returned an error (http code 500)
max_retries_on_server_error: 5
# Backoff factory for consecutive retry attempts.
# SDK will wait for {backoff factor} * (2 ^ ({number of total retries} - 1)) between retries.
retry_backoff_factor_sec: 10
}
}
aws {
s3 {
# S3 credentials, used for read/write access by various SDK elements
# default, used for any bucket not specified below
key: ""
secret: ""
region: ""
# Or enable credentials chain to let Boto3 pick the right credentials.
# This includes picking credentials from environment variables,
# credential file and IAM role using metadata service.
# Refer to the latest Boto3 docs
use_credentials_chain: false
credentials: [
# specifies key/secret credentials to use when handling s3 urls (read or write)
# {
# bucket: "my-bucket-name"
# key: "my-access-key"
# secret: "my-secret-key"
# },
# {
# # This will apply to all buckets in this host (unless key/value is specifically provided for a given bucket)
# host: "my-minio-host:9000"
# key: "12345678"
# secret: "12345678"
# multipart: false
# secure: false
# verify: /path/to/ca/bundle.crt OR false to not verify
# }
]
}
boto3 {
pool_connections: 512
max_multipart_concurrency: 16
}
}
google.storage {
# # Default project and credentials file
# # Will be used when no bucket configuration is found
# project: "clearml"
# credentials_json: "/path/to/credentials.json"
# # Specific credentials per bucket and sub directory
# credentials = [
# {
# bucket: "my-bucket"
# subdir: "path/in/bucket" # Not required
# project: "clearml"
# credentials_json: "/path/to/credentials.json"
# },
# ]
}
azure.storage {
# containers: [
# {
# account_name: "clearml"
# account_key: "secret"
# # container_name:
# }
# ]
}
log {
# debugging feature: set this to true to make null log propagate messages to root logger (so they appear in stdout)
null_log_propagate: False
task_log_buffer_capacity: 66
# disable urllib info and lower levels
disable_urllib3_info: True
}
development {
# Development-mode options
# dev task reuse window
task_reuse_time_window_in_hours: 72.0
# Run VCS repository detection asynchronously
vcs_repo_detect_async: True
# Store uncommitted git/hg source code diff in experiment manifest when training in development mode
# This stores "git diff" or into the experiment's "script.requirements.diff" section
store_uncommitted_code_diff_on_train: True
# Support stopping an experiment in case it was externally stopped, status was changed or task was reset
support_stopping: True
# Default Task output_uri. if output_uri is not provided to Task.init, default_output_uri will be used instead.
default_output_uri: ""
# Development mode worker
worker {
# Status report period in seconds
report_period_sec: 2
# ping to the server - check connectivity
ping_period_sec: 30
# Log all stdout & stderr
log_stdout: True
}
}
# Apply top-level environment section from configuration into os.environ
apply_environment: true
# Apply top-level files section from configuration into local file system
apply_files: true
}
# Environment section (top-level) is applied to the OS environment as `key=value` for each key/value pair
# * enable/disable with `agent.apply_environment` OR `sdk.apply_environment`
# Example:
#
# environment {
# key_a: value_a
# key_b: value_b
# }
# Files section (top-level) allows auto-generating files at designated paths with
# predefined content and target format.
# * enable/disable with `agent.apply_files` OR `sdk.apply_files`
# Files content options include:
# contents: the target file's content, typically a string (or any base type int/float/list/dict etc.)
# format: a custom format for the contents. Currently supported value is `base64` to automatically decode a
# base64-encoded contents string, otherwise ignored
# path: the target file's path, may include ~ and inplace env vars
# target_format: format used to encode contents before writing into the target file. Supported values are json,
# yaml, yml and bytes (in which case the file will be written in binary mode). Default is text mode.
# overwrite: overwrite the target file in case it exists. Default is true.
# mode: file-system mode to be applied to the file after its creation. The mode string will be parsed into an
# integer (e.g. "0o777" for -rwxrwxrwx)
# Example:
# files {
# myfile1 {
# contents: "The quick brown fox jumped over the lazy dog"
# path: "/tmp/fox.txt"
# }
# myjsonfile {
# contents: {
# some {
# nested {
# value: [1, 2, 3, 4]
# }
# }
# }
# path: "/tmp/test.json"
# target_format: json
# }
# }