Creating a Training Job
For training on the training platform, if the training fails, you can view the detailed log information on the platform or by calling the API in Querying Training Job Logs.
Sample Code
In ModelArts notebook, you do not need to enter authentication parameters for session authentication. For details about session authentication of other development environments, see Session Authentication.
- Example 1: Create a training job using the data stored on OBS.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21
from modelarts.session import Session from modelarts.estimator import Estimator session = Session() estimator = Estimator( modelarts_session=session, framework_type='PyTorch', # AI engine name framework_version='PyTorch-1.0.0-python3.6', # AI engine version code_dir='/bucket/src/', # Training script directory boot_file='/bucket/src/pytorch_sentiment.py', # Training boot script directory log_url='/bucket/log/', # Training log directory hyperparameters=[ {"label":"classes", "value": "10"}, {"label":"lr", "value": "0.001"} ], output_path='/bucket/output/', # Training output directory train_instance_type='modelarts.vm.cpu.2u', # Training environment flavor train_instance_count=1, # Number of training nodes job_description='pytorch-sentiment with ModelArts SDK') # Training job description job_instance = estimator.fit(inputs='/bucket/data/train/', wait=False, job_name='my_training_job')
- Example 2: Create a training job using a dataset.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19 20 21
from modelarts.session import Session from modelarts.estimator import Estimator session = Session() estimator = Estimator( modelarts_session=session, framework_type='PyTorch', # AI engine name framework_version='PyTorch-1.0.0-python3.6', # AI engine version code_dir='/bucket/src/', # Training script directory boot_file='/bucket/src/pytorch_sentiment.py', # Training boot script directory log_url='/bucket/log/', # Training log directory hyperparameters=[ {"label":"classes", "value": "10"}, {"label":"lr", "value": "0.001"} ], output_path='/bucket/output/', # Training output directory train_instance_type='modelarts.vm.cpu.2u', # Training environment flavor train_instance_count=1, # Number of training nodes job_description='pytorch-sentiment with ModelArts SDK') # Training job description job_instance = estimator.fit(dataset_id='4AZNvFkN7KYr5EdhFkH', dataset_version_id='UOF9BIeSGArwVt0oI6T', wait=False, job_name='my_training_job')
- Example 3: Create a training job using a custom image.
1 2 3 4 5 6 7 8 9 10 11 12 13 14 15 16 17 18 19
from modelarts.session import Session from modelarts.estimator import Estimator session = Session() estimator = Estimator( modelarts_session=session, log_url='/bucket/log/', # Training log directory hyperparameters=[ {"label":"classes", "value": "10"}, {"label":"lr", "value": "0.001"} ], output_path='/bucket/output/', # Training output directory train_instance_type='modelarts.vm.cpu.2u', # Training environment flavor train_instance_count=1, # Number of training nodes user_command='bash -x /home/work/run_train.sh python /home/work/user-job-dir/app/mnist/mnist_softmax.py --data_url /home/work/user-job-dir/app/mnist_data', # Boot command of the custom image user_image_url='100.125.5.235:20202/jobmng/cpu-base:1.0', # Address for downloading the custom image job_description='pytorch-sentiment with ModelArts SDK') # Training job description job_instance = estimator.fit(inputs='/bucket/data/train/', wait=False, job_name='my_training_job')
- Example 4: Submit a training job in a dedicated resource pool.
from modelarts.session import Session from modelarts.estimator import Estimator session = Session() estimator = Estimator( modelarts_session=session, framework_type='PyTorch', # AI engine name framework_version='PyTorch-1.0.0-python3.6', # AI engine version code_dir='/bucket/src/', # Training script directory boot_file='/bucket/src/pytorch_sentiment.py', # Training boot script directory log_url='/bucket/log/', # Training log directory hyperparameters=[ {"label":"classes", "value": "10"}, {"label":"lr", "value": "0.001"} ], output_path='/bucket/output/', # Training output directory pool_id="your pool id", # Dedicated resource pool ID train_instance_type='your instance type', # Training environment flavor. If the value is None, the default flavor of the dedicated resource pool will be used. train_instance_count=1, # Number of training nodes job_description='pytorch-sentiment with ModelArts SDK') # Training job description job_instance = estimator.fit(inputs='/bucket/data/train/', wait=False, job_name='my_training_job')
Parameters
Parameter |
Mandatory |
Type |
Description |
---|---|---|---|
modelarts_session |
Yes |
Object |
Session object. For details about the initialization method, see Session Authentication. |
train_instance_count |
Yes |
Int |
Number of compute nodes in a training job |
code_dir |
No |
String |
Code directory of a training job, for example, /bucket/src/. Leave this parameter blank when model_name is set. |
boot_file |
No |
String |
Boot file of a training job, which must be stored in the code directory. For example, /bucket/src/boot.py. Leave this parameter blank when model_name is set. |
model_name |
No |
String |
Name of the built-in algorithm used by a training job. If you have configured model_name, you do not need to configure app_url, boot_file_url, framework_type, and framework_version. You can obtain this value by calling the API described in Querying a Built-in Algorithm. |
output_path |
Yes |
String |
Output path of a training job |
hyperparameters |
No |
JSON Array |
Running parameters of a training job. It is a collection of label-value pairs of the string type. This parameter is a container environment variable when a job uses a custom image. |
log_url |
No |
String |
OBS URL of the logs of a training job. By default, this parameter is left blank. Example value: /usr/log/ |
train_instance_type |
Yes |
String |
Resource flavor selected for a training job. If you choose to train on the training platform, obtain the value by calling the API described in Querying the List of Resource Flavors. |
framework_type |
No |
String |
Engine selected for a training job. Obtain the value by calling the API described in Querying the List of Engine Types. Leave this parameter blank when model_name is set. |
framework_version |
No |
String |
Engine version selected for a training job. Obtain the value by calling the API described in Querying the List of Engine Types. Leave this parameter blank when model_name is set. |
job_description |
No |
String |
Description of a training job |
user_image_url |
No |
String |
SWR URL of the custom image used by a training job. Example value: 100.125.5.235:20202/jobmng/custom-cpu-base:1.0 |
user_command |
No |
String |
Boot command used to start the container of the custom image of a training job. The format is bash /home/work/run_train.sh python /home/work/user-job-dir/app/train.py {python_file_parameter}. |
pool_id |
No |
String |
ID of the resource pool for a training job. To obtain the ID, do as follows: Log in to the ModelArts management console, choose Dedicated Resource Pools in the navigation pane on the left, and view the resource pool ID in the dedicated resource pool list. |
Parameter |
Mandatory |
Type |
Description |
---|---|---|---|
inputs |
Yes |
String |
Data storage location of a training job. inputs cannot be used with dataset_id and dataset_version_id, or with data_source at the same time. However, one of the parameters must exist. Only this parameter is supported in local training. |
dataset_id |
No |
String |
Dataset ID of a training job. This parameter must be used with dataset_version_id, but cannot be used with inputs. |
dataset_version_id |
No |
String |
Dataset version ID of a training job. This parameter must be used with dataset_id, but cannot be used with inputs. |
wait |
No |
Boolean |
Whether to wait for the completion of a training job. Default value: False |
job_name |
No |
String |
Name of a training job. Enter 1 to 64 characters. Only the following characters are allowed: a-z, A-Z, 0-9, hyphens (-), and underscores (_). If this parameter is left blank, a job name is generated randomly. |
Parameter |
Type |
Description |
---|---|---|
TrainingJob |
Object |
Training object. This object contains attributes such as job_id and version_id, and operations on a training job, such as querying, modifying, or deleting the training job. For example, you can use job_instance.job_id to obtain the ID of a training job. |
Feedback
Was this page helpful?
Provide feedbackThank you very much for your feedback. We will continue working to improve the documentation.See the reply and handling status in My Cloud VOC.
For any further questions, feel free to contact us through the chatbot.
Chatbot