--- title: Sweep version: EN --- ### read_sweep ```python vessl.read_sweep( sweep_name: str, **kwargs ) ``` Read sweep in the default organization/project. If you want to override the default organization/project, then pass `organization_name` or `project_name` as `**kwargs`. **Args** * `sweep_name` (str) : Sweep name. **Example** ```python vessl.read_sweep( sweep_name="pitch-lord", ) ``` ---- ## list_sweeps ```python vessl.list_sweeps( **kwargs ) ``` List sweeps in the default organization/project. If you want to override the default organization/project, then pass `organization_name` or `project_name` as `**kwargs`. **Example** ```python vessl.list_sweeps() ``` ---- ## create_sweep ```python vessl.create_sweep( name: str, algorithm: str, parameters: List[SweepParameter], cluster_name: str, command: str, objective: SweepObjective = None, max_experiment_count: int = None, parallel_experiment_count: int = None, max_failed_experiment_count: int = None, resource_spec_name: str = None, processor_type: str = None, cpu_limit: float = None, memory_limit: str = None, gpu_type: str = 'Any', gpu_limit: int = None, image_url: str = None, *, early_stopping_name: str = None, early_stopping_settings: List[Tuple[str, str]] = None, message: str = None, hyperparameters: List[Tuple[str, str]] = None, dataset_mounts: List[str] = None, git_ref_mounts: List[str] = None, git_diff_mount: str = None, archive_file_mount: str = None, object_storage_mount: str = None, root_volume_size: str = None, working_dir: str = None, output_dir: str = MOUNT_PATH_OUTPUT, **kwargs ) ``` Create sweep in the default organization/project. If you want to override the default organization/project, then pass `organization_name` or `project_name` as `**kwargs`. Pass `use_git_diff=True` if you want to run experiment with uncommitted changes and pass `use_git_diff_untracked=True` if you want to run untracked changes(only valid if `use_git_diff` is set). **Args** * `name` (str) : Name * `objective` (Optional[vessl.SweepObjective]) : A sweep objective including goal, metric, and type. * `max_experiment_count` (Optional[int]) : The maximum number of experiments to run. Required unless grid search. * `parallel_experiment_count` (Optional[int]) : The number of experiments to run in parallel. Default: 1. * `max_failed_experiment_count` (Optional[int]) : The maximum number of experiments to allow to fail. Default: 1. * `algorithm` (str) : Parameter suggestion algorithm. `grid`, `random`, or `bayesian`. * `parameters` (List[vessl.SweepParameter]) : A list of parameters to search. - SweepParameter - name(str): The names of hyperparameters to search. - type(str): `int`, `double`, `categorical`. - range(SweepParameterRange): Search range. - list(List[str]): A list of values to try. If `list` is given, `min`, `max` and `step` will be ignored. - min(str): The minimum value of the search range (inclusive). - max(str): The maximum value of the search range (inclusive). - step(Optional[str]): If provided, the values are limited to min + n*step. * `cluster_name` (str) : Cluster name(must be specified before other options). * `command` (str) : Start command to execute in experiment container. * `resource_spec_name` (str) : Resource type to run an experiment (for managed cluster only). Defaults to None. * `cpu_limit` (float) : Number of vCPUs (for custom cluster only). Defaults to None. * `memory_limit` (str) : Memory limit (for custom cluster only). Defaults to None. Example: "100Gi", "500Mi" * `gpu_type` (str) : GPU type(name) (for custom cluster only). Defaults to "Any". processor_type(str) cpu or gpu (for custom cluster only). Defaults to None. **Example** * `gpu_limit` (int) : Number of GPU cores (for custom cluster only). Defaults to None. * `image_url` (str) : Kernel docker image URL. Defaults to None. * `early_stopping_name` (str) : Early stopping algorithm name. Defaults to None. * `early_stopping_settings` (List[Tuple[str, str]]) : Early stopping algorithm settings. Defaults to None. * `message` (str) : Message. Defaults to None. * `hyperparameters` (List[str]) : A list of fixed hyperparameters. Defaults to None. * `dataset_mounts` (List[str]) : A list of dataset mounts. Defaults to None. * `git_ref_mounts` (List[str]) : A list of git repository mounts. Defaults to None. * `git_diff_mount` (str) : Git diff mounts. Defaults to None. * `archive_file_mount` (str) : Local archive file mounts. Defaults to None. * `object_storage_mount` (str) : Object storage mounts. Defaults to None. * `root_volume_size` (str) : Root volume size. Defaults to None. * `working_dir` (str) : Working directory path. Defaults to None. * `output_dir` (str) : Output directory path. Defaults to "/output/". **Example** ```python sweep_objective = vessl.SweepObjective( type="maximize", goal="0.99", metric="val_accuracy", ) parameters = [ vessl.SweepParameter( name="optimizer", type="categorical", range=vessl.SweepParameterRange( list=["adam", "sgd", "adadelta"] ) ), vessl.SweepParameter( name="batch_size", type="int", range=vessl.SweepParameterRange( max="256", min="64", step="8", ) ) ] # Custom Cluster vessl.create_sweep( name="example-sweep-name", objective=sweep_objective, max_experiment_count=4, parallel_experiment_count=2, max_failed_experiment_count=2, algorithm="random", parameters=parameters, dataset_mounts=["/input:mnist"], cluster_name="dgx-cluster", processor_type="gpu", gpu_type="NVIDIA-A100-SXM4-80GB", gpu_limit=2, cpu_limit=30, memory_limit="100Gi", kernel_image_url="public.ecr.aws/vessl/kernels:py36.full-cpu", start_command="pip install requirements.txt && python main.py", ) # VESSL-Managed Cluster vessl.create_sweep( name="example-sweep-name", objective=sweep_objective, max_experiment_count=4, parallel_experiment_count=2, max_failed_experiment_count=2, algorithm="random", parameters=parameters, dataset_mounts=["/input:mnist"], cluster_name="aws-apne2", kernel_resource_spec_name="v1.cpu-4.mem-13", kernel_image_url="public.ecr.aws/vessl/kernels:py36.full-cpu", start_command="pip install requirements.txt && python main.py", ) ``` ---- ## terminate_sweep ```python vessl.terminate_sweep( sweep_name: str, **kwargs ) ``` Terminate sweep in the default organization/project. If you want to override the default organization/project, then pass `organization_name` or `project_name` as `**kwargs`. **Args** * `sweep_name` (str) : Sweep name. **Example** ```python vessl.terminate_sweep( sweep_name="pitch-lord", ) ``` ---- ## list_sweep_logs ```python vessl.list_sweep_logs( sweep_name: str, tail: int = 200, **kwargs ) ``` List sweep logs in the default organization/project. If you want to override the default organization/project, then pass `organization_name` or `project_name` as `**kwargs`. **Args** * `sweep_name` (str) : Sweep name. * `tail` (int) : The number of lines to display from the end. Display all if -1. Defaults to 200. **Example** ```python vessl.list_sweep_logs( sweep_name="pitch-lord", ) ``` ---- ## get_best_sweep_experiment ```python vessl.get_best_sweep_experiment( sweep_name: str, **kwargs ) ``` Read sweep and return the best experiment info in the default organization/project. If you want to override the default organization/project, then pass `organization_name` or `project_name` as `**kwargs`. **Args** * `sweep_name` (str) : Sweep name. **Example** ```python vessl.get_best_sweep_experiment( sweep_name="pitch-lord", ) ```