import unittest from dataclasses import dataclass import pytest from accelerate.commands.config.config_args import SageMakerConfig from accelerate.commands.launch import _convert_nargs_to_dict from accelerate.utils import ComputeEnvironment @dataclass class MockLaunchConfig(SageMakerConfig): compute_environment = ComputeEnvironment.AMAZON_SAGEMAKER fp16 = True ec2_instance_type = "ml.p3.2xlarge" iam_role_name = "accelerate_sagemaker_execution_role" profile = "hf-sm" region = "us-east-1" num_machines = 1 base_job_name = "accelerate-sagemaker-1" pytorch_version = "1.6" transformers_version = "4.4" training_script = "train.py" success_training_script_args = [ "--model_name_or_path", "bert", "--do_train", "False", "--epochs", "3", "--learning_rate", "5e-5", "--max_steps", "50.5", ] fail_training_script_args = [ "--model_name_or_path", "bert", "--do_train", "--do_test", "False", "--do_predict", "--epochs", "3", "--learning_rate", "5e-5", "--max_steps", "50.5", ] class SageMakerLaunch(unittest.TestCase): def test_args_convert(self): # If no defaults are changed, `to_kwargs` returns an empty dict. converted_args = _convert_nargs_to_dict(MockLaunchConfig.success_training_script_args) assert isinstance(converted_args["model_name_or_path"], str) assert isinstance(converted_args["do_train"], bool) assert isinstance(converted_args["epochs"], int) assert isinstance(converted_args["learning_rate"], float) assert isinstance(converted_args["max_steps"], float) with pytest.raises(ValueError): _convert_nargs_to_dict(MockLaunchConfig.fail_training_script_args)