Reviewed-by: Pruthi, Vineet <vineet.pruthi@t-systems.com> Co-authored-by: Wuwan, Qi <wuwanqi1@noreply.gitea.eco.tsi-dev.otc-service.com> Co-committed-by: Wuwan, Qi <wuwanqi1@noreply.gitea.eco.tsi-dev.otc-service.com>
261 KiB
Terminating a Training Job
Function
This API is used to terminate a training job. Only jobs in the creating, awaiting, or running state can be terminated.
URI
POST /v2/{project_id}/training-jobs/{training_job_id}/actions
Parameter |
Mandatory |
Type |
Description |
|---|---|---|---|
project_id |
Yes |
String |
Project ID. For details, see Obtaining a Project ID and Name. |
training_job_id |
Yes |
String |
Training job ID For details about how to obtain the value, see Querying the Training Job List. |
Request Parameters
Parameter |
Mandatory |
Type |
Description |
|---|---|---|---|
action_type |
Yes |
String |
Operation request for a training job. If this parameter is set to terminate, the training job is terminated. |
Response Parameters
Status code: 202
Parameter |
Type |
Description |
|---|---|---|
kind |
String |
Training job type, which is job by default. Options: |
metadata |
JobMetadata object |
Metadata of a training job. |
status |
Status object |
Status of a training job. You do not need to set this parameter when creating a job. |
algorithm |
JobAlgorithmResponse object |
Algorithm used by a training job. The options are as follows: |
tasks |
Array of TaskResponse objects |
List of tasks in heterogeneous training jobs. |
spec |
SpecResponce object |
Specifications of a training job. |
endpoints |
JobEndpointsResp object |
This section describes the configurations required for remotely accessing a training job. |
Parameter |
Type |
Description |
|---|---|---|
id |
String |
Training job ID, which is generated and returned by ModelArts after the training job is created. |
name |
String |
Name of a training job. The value must contain 1 to 64 characters consisting of only digits, letters, underscores (_), and hyphens (-). |
workspace_id |
String |
Workspace where a job is located. The default value is 0. |
description |
String |
Training job description. The value must contain 0 to 256 characters. The default value is NULL. |
create_time |
Long |
Time when a training job was created, in milliseconds. The value is generated and returned by ModelArts after a training job is created. |
user_name |
String |
Username for creating a training job. The username is generated and returned by ModelArts after a training job is created. |
annotations |
Map<String,String> |
Advanced configurations of a training job. The options are as follows: |
Parameter |
Type |
Description |
|---|---|---|
phase |
String |
Level-1 status of a training job. The options are: |
secondary_phase |
String |
The level-2 status of a training job is an internal detailed status, which may be added, modified, or deleted. Dependency is not recommended. The options are: |
duration |
Long |
Running duration of a training job, in milliseconds |
node_count_metrics |
Array<Array<Integer>> |
Node count changes during the training job running period. |
tasks |
Array of strings |
Tasks of a training job. |
start_time |
Long |
Start time of a training job. The value is in timestamp format. |
task_statuses |
Array of TaskStatuses objects |
Status of a training job task. |
running_records |
Array of RunningRecord objects |
Running and fault recovery records of a training job |
Parameter |
Type |
Description |
|---|---|---|
task |
String |
Task of a training job. |
exit_code |
Integer |
Exit code of a training job task. |
message |
String |
Error message of a training job task. |
Parameter |
Type |
Description |
|---|---|---|
start_at |
Integer |
Unix timestamp of the start time in the current running record, in seconds. |
end_at |
Integer |
Unix timestamp of the end time in the current running record, in seconds. |
start_type |
String |
Startup mode of the current running record. |
end_reason |
String |
Reason why the current running record ends. |
end_related_task |
String |
ID of the task worker that causes the end of the current running record, for example, worker-0. |
end_recover |
String |
Fault tolerance policy used after the current running record ends. The enums are as follows: |
end_recover_before_downgrade |
String |
Tolerance policy used after the current running record ends and before the fault tolerance policy is degraded. The options are the same as those of end_recover. |
Parameter |
Type |
Description |
|---|---|---|
id |
String |
Algorithm used by a training job. The options are as follows: |
name |
String |
Algorithm name. |
subscription_id |
String |
Subscription ID of a subscribed algorithm, which must be used with item_version_id |
item_version_id |
String |
Version ID of the subscribed algorithm, which must be used with subscription_id |
code_dir |
String |
Code directory of a training job, for example, /usr/app/. This parameter must be set together with boot_file. If id or subscription_id+item_version_id has been set for boot_file, you do not need to set this parameter. |
boot_file |
String |
Boot file of a training job, which needs to be stored in the code directory. for example, /usr/app/boot.py. This parameter must be used together with code_dir. If id or subscription_id+item_version_id has been set for code_dir, you do not need to set this parameter. |
autosearch_config_path |
String |
YAML configuration path of an auto search job. An OBS URL is required. For example, obs://bucket/file.yaml. |
autosearch_framework_path |
String |
Framework code directory of auto search jobs. An OBS URL is required. For example, obs://bucket/files/. |
command |
String |
Boot command for starting the container of a custom image for a training job. For example, python train.py. |
parameters |
Array of Parameter objects |
Running parameters of a training job. |
policies |
policies object |
Policies supported by jobs. |
inputs |
Array of Input objects |
Input of a training job. |
outputs |
Array of Output objects |
Output of a training job. |
engine |
JobEngine object |
Engine of a training job. Leave this parameter blank if the job is created using id of the algorithm in algorithm management, or subscription_id+item_version_id of the subscribed algorithm. |
local_code_dir |
String |
Local directory of the training container to which the algorithm code directory is downloaded. The rules are as follows: |
working_dir |
String |
Work directory where an algorithm is executed. Note that this parameter does not take effect in v1 compatibility mode. |
environments |
Array of Map<String,String> objects |
Environment variables of a training job. The format is key:value. Leave this parameter blank. |
summary |
Summary object |
Visualization log summary. |
Parameter |
Type |
Description |
|---|---|---|
name |
String |
Parameter name. |
value |
String |
Parameter value. |
description |
String |
Parameter description. |
constraint |
constraint object |
Parameter constraint. |
i18n_description |
i18n_description object |
Internationalization description. |
Parameter |
Type |
Description |
|---|---|---|
type |
String |
Parameter type. |
editable |
Boolean |
Whether the parameter is editable. |
required |
Boolean |
Whether the parameter is mandatory. |
sensitive |
Boolean |
Whether the parameter is sensitive This function is not implemented currently. |
valid_type |
String |
Valid type. |
valid_range |
Array of strings |
Valid range. |
Parameter |
Type |
Description |
|---|---|---|
language |
String |
International language. |
description |
String |
Description of an international language. |
Parameter |
Type |
Description |
|---|---|---|
auto_search |
auto_search object |
Hyperparameter search configuration. |
Parameter |
Type |
Description |
|---|---|---|
skip_search_params |
String |
Hyperparameter parameters that need to be skipped. |
reward_attrs |
Array of reward_attrs objects |
List of search metrics. |
search_params |
Array of search_params objects |
Search parameters. |
algo_configs |
Array of algo_configs objects |
Search algorithm configurations. |
Parameter |
Type |
Description |
|---|---|---|
name |
String |
Metric name. |
mode |
String |
Search mode. |
regex |
String |
Regular expression of a metric. |
Parameter |
Type |
Description |
|---|---|---|
name |
String |
Name of the search algorithm. |
params |
Array of AutoSearchAlgoConfigParameter objects |
Search algorithm parameters. |
Parameter |
Type |
Description |
|---|---|---|
key |
String |
Parameter key. |
value |
String |
Parameter value. |
type |
String |
Parameter type. |
Parameter |
Type |
Description |
|---|---|---|
name |
String |
Name of the data input channel. |
description |
String |
Description of the data input channel. |
local_dir |
String |
Local directory of the container to which the data input channel is mapped Example: /home/ma-user/modelarts/inputs/data_url_0. |
remote |
InputDataInfo object |
Information of the data input. Enums: |
remote_constraint |
Array of remote_constraint objects |
Data input constraint |
Parameter |
Type |
Description |
|---|---|---|
dataset |
dataset object |
Dataset as the data input. |
obs |
obs object |
OBS in which data input and output stored. |
Parameter |
Type |
Description |
|---|---|---|
id |
String |
Dataset ID of a training job. |
version_id |
String |
Dataset version ID of a training job. |
obs_url |
String |
OBS URL of the dataset for a training job. It is automatically parsed by ModelArts based on the dataset ID and dataset version ID. For example, /usr/data/. |
Parameter |
Type |
Description |
|---|---|---|
obs_url |
String |
OBS URL of the dataset required by a training job. For example, /usr/data/. |
Parameter |
Type |
Description |
|---|---|---|
data_type |
String |
Data input type, including the data storage location and dataset. |
attributes |
String |
Attributes if a dataset is used as the data input. Options: |
Parameter |
Type |
Description |
|---|---|---|
name |
String |
Name of the data output channel. |
description |
String |
Description of the data output channel. |
local_dir |
String |
Local directory of the container to which the data output channel is mapped. |
remote |
Remote object |
Description of the actual data output. |
Parameter |
Type |
Description |
|---|---|---|
engine_id |
String |
Engine ID selected for a training job. The value can be engine_id, engine_name + engine_version, or image_url. |
engine_name |
String |
Name of the engine selected for a training job. If engine_id has been set, you do not need to set this parameter. If you use a preset framework and custom image to create a training job, you must set both this parameter and image_url. |
engine_version |
String |
Version of the engine selected for a training job. If engine_id has been set, you do not need to set this parameter. |
image_url |
String |
Custom image URL selected for a training job. The URL is obtained from SWR. You can select an image or enter an image in the format of "Organization name/Image name:tag". |
install_sys_packages |
Boolean |
Whether to install the MoXing version specified by the training platform. Value true means to install the specified MoXing version. This parameter is available only when engine_name, engine_version, and image_url are set. |
Parameter |
Type |
Description |
|---|---|---|
log_type |
String |
Visualization log type of a training job. After this parameter is configured, the training job can be used as the data source of a visualization job. The options are as follows: |
log_dir |
LogDir object |
Visualization log output of a training job. This parameter is mandatory when log_type is not empty. |
data_sources |
Array of DataSource objects |
Visualization log input of a visualization job or debug training job. This parameter is mandatory when tensorboard/enable or mindstudio-insight/enable is set to true for advanced training functions. |
Parameter |
Type |
Description |
|---|---|---|
pfs |
PFSSummary object |
Output of an OBS parallel file system. |
Parameter |
Type |
Description |
|---|---|---|
role |
String |
Task role. This function is not supported currently. |
algorithm |
TaskResponseAlgorithm object |
Algorithm management and configuration. |
task_resource |
FlavorResponse object |
Flavors of a training job or an algorithm. |
Parameter |
Type |
Description |
|---|---|---|
code_dir |
String |
Absolute path of the directory where the algorithm boot file is stored. |
boot_file |
String |
Absolute path of the algorithm boot file. |
inputs |
AlgorithmInput object |
Algorithm input channel. |
outputs |
AlgorithmOutput object |
Algorithm output channel. |
engine |
AlgorithmEngine object |
Engine on which a heterogeneous job depends. |
local_code_dir |
String |
Local directory of the training container to which the algorithm code directory is downloaded. The rules are as follows: |
working_dir |
String |
Work directory where an algorithm is executed. Note that this parameter does not take effect in v1 compatibility mode. |
Parameter |
Type |
Description |
|---|---|---|
name |
String |
Name of the data input channel. |
local_dir |
String |
Local path of the container to which the data input and output channels are mapped. |
remote |
AlgorithmRemote object |
Actual data input, which can only be OBS for heterogeneous jobs. |
Parameter |
Type |
Description |
|---|---|---|
obs |
RemoteObs object |
OBS in which data input and output are stored. |
Parameter |
Type |
Description |
|---|---|---|
name |
String |
Name of the data output channel. |
local_dir |
String |
Local directory of the container to which the data output channel is mapped. |
remote |
Remote object |
Description of the actual data output. |
mode |
String |
Data transmission mode. The default value is upload_periodically. |
period |
String |
Data transmission period. The default value is 30s. |
Parameter |
Type |
Description |
|---|---|---|
obs |
RemoteObs object |
OBS to which data is actually exported. |
Parameter |
Type |
Description |
|---|---|---|
engine_id |
String |
Engine ID, for example, caffe-1.0.0-python2.7. |
engine_name |
String |
Engine name, for example, Caffe. |
engine_version |
String |
Engine version. Engines with the same name have multiple versions, for example, Caffe-1.0.0-python2.7 of Python 2.7. |
v1_compatible |
Boolean |
Whether the v1 compatibility mode is used. |
run_user |
String |
User UID started by default by the engine. |
image_url |
String |
Custom image URL selected for an algorithm. |
Parameter |
Type |
Description |
|---|---|---|
flavor_id |
String |
ID of the resource flavor. |
flavor_name |
String |
Name of the resource flavor. |
max_num |
Integer |
Maximum number of nodes in a resource flavor. |
flavor_type |
String |
Resource flavor type. Options: |
billing |
BillingInfo object |
Billing information of a resource flavor. |
flavor_info |
FlavorInfoResponse object |
Resource flavor details. |
attributes |
Map<String,String> |
Other specification attributes. |
Parameter |
Type |
Description |
|---|---|---|
max_num |
Integer |
Maximum number of nodes that can be selected. The value 1 indicates that the distributed mode is not supported. |
cpu |
Cpu object |
CPU specifications. |
gpu |
Gpu object |
GPU specifications. |
npu |
Npu object |
NPU specifications. |
memory |
Memory object |
Memory information. |
disk |
DiskResponse object |
Disk information. |
Parameter |
Type |
Description |
|---|---|---|
size |
Integer |
Disk size. |
unit |
String |
Unit of the disk size. |
Parameter |
Type |
Description |
|---|---|---|
resource |
Resource object |
Resource flavors of a training job. Select either flavor_id or pool_id+[flavor_id]. |
volumes |
Array of JobVolume objects |
Volumes attached for a training job. |
log_export_path |
LogExportPath object |
Export path of training job logs. |
schedule_policy |
SchedulePolicy object |
Training job scheduling policy. |
Parameter |
Type |
Description |
|---|---|---|
policy |
String |
Resource specification mode of a training job. The value can be regular, indicating the standard mode. |
flavor_id |
String |
ID of the resource flavor selected for a training job. flavor_id cannot be specified for dedicated resource pools with CPU specifications. The options for dedicated resource pools with GPU specifications are as follows: |
flavor_name |
String |
Read-only flavor name returned by ModelArts when flavor_id is used. |
node_count |
Integer |
Number of resource replicas selected for a training job. |
pool_id |
String |
Resource pool ID selected for a training job. |
flavor_detail |
FlavorDetail object |
Flavor details of a training job or algorithm. This parameter is available only for public resource pools. |
Parameter |
Type |
Description |
|---|---|---|
flavor_type |
String |
Resource flavor type. The options are as follows: |
billing |
BillingInfo object |
Billing information of a resource flavor. |
flavor_info |
FlavorInfo object |
Resource flavor details. |
Parameter |
Type |
Description |
|---|---|---|
code |
String |
Billing code. |
unit_num |
Integer |
Billing unit. |
Parameter |
Type |
Description |
|---|---|---|
max_num |
Integer |
Maximum number of nodes that can be selected. The value 1 indicates that the distributed mode is not supported. |
cpu |
Cpu object |
CPU specifications. |
gpu |
Gpu object |
GPU specifications. |
npu |
Npu object |
NPU specifications. |
memory |
Memory object |
Memory information. |
disk |
Disk object |
Disk information. |
Parameter |
Type |
Description |
|---|---|---|
arch |
String |
CPU architecture. |
core_num |
Integer |
Number of cores. |
Parameter |
Type |
Description |
|---|---|---|
unit_num |
Integer |
Number of GPUs. |
product_name |
String |
Product name. |
memory |
String |
Memory. |
Parameter |
Type |
Description |
|---|---|---|
unit_num |
String |
Number of NPUs. |
product_name |
String |
Product name. |
memory |
String |
Memory. |
Parameter |
Type |
Description |
|---|---|---|
size |
Integer |
Memory size. |
unit |
String |
Number of memory units. |
Parameter |
Type |
Description |
|---|---|---|
size |
String |
Disk size. |
unit |
String |
Unit of the disk size, which is GB generally. |
Parameter |
Type |
Description |
|---|---|---|
nfs_server_path |
String |
NFS server path, for example, 10.10.10.10:/example/path. |
local_path |
String |
Path for attaching volumes to the training container, for example, /example/path. |
read_only |
Boolean |
Whether the disks attached to the container in NFS mode are read-only. |
Parameter |
Type |
Description |
|---|---|---|
obs_url |
String |
OBS path for storing training job logs, for example, obs://example/path. |
host_path |
String |
Path of the host where training job logs are stored, for example, /example/path. |
Parameter |
Type |
Description |
|---|---|---|
required_affinity |
RequiredAffinity object |
Affinity requirements for training jobs. |
priority |
Integer |
Priority of the training job. |
preemptible |
Boolean |
Whether preemption is allowed |
Parameter |
Type |
Description |
|---|---|---|
affinity_type |
String |
Affinity scheduling policy. Possible values are as follows: |
affinity_group_size |
Integer |
Affinity group size. This parameter is mandatory when affinity_type is set to hyperinstance. In this case, the system schedules tasks specified by affinity_group_size to a supernode to form an affinity group. When a user delivers a training job to the supernode resource pool, if the affinity group size is not set, the system sets the value to 1 by default. |
Parameter |
Type |
Description |
|---|---|---|
ssh |
SSHResp object |
SSH connection information. |
jupyter_lab |
JupyterLab object |
JupyterLab connection information. |
tensorboard |
Tensorboard object |
TensorBoard connection information. |
mindstudio_insight |
MindStudioInsight object |
MindStudio Insight connection information. |
Parameter |
Type |
Description |
|---|---|---|
key_pair_names |
Array of strings |
Specifies the SSH key pair name, which can be created and viewed on the Key Pair page of the ECS console. |
task_urls |
Array of TaskUrls objects |
SSH connection address information. |
Parameter |
Type |
Description |
|---|---|---|
task |
String |
ID of a training job. |
url |
String |
SSH connection address of a training job. |
Parameter |
Type |
Description |
|---|---|---|
url |
String |
JupyterLab address of a training job. |
token |
String |
JupyterLab token of a training job. |
Example Requests
The following is an example of how to stop the training job whose UUID is 3faf5c03-aaa1-4cbe-879d-24b05d997347.
POST https://endpoint/v2/{project_id}/training-jobs/cf63aba9-63b1-4219-b717-708a2665100b/actions
{
"action_type" : "terminate"
}
Example Responses
Status code: 202
ok
{
"kind" : "job",
"metadata" : {
"id" : "cf63aba9-63b1-4219-b717-708a2665100b",
"name" : "trainjob--py14_mem06-110",
"description" : "",
"create_time" : 1636515222282,
"workspace_id" : "0",
"user_name" : "ei_modelarts_z00424192_01"
},
"status" : {
"phase" : "Terminating",
"secondary_phase" : "Terminating",
"duration" : 0,
"start_time" : 0,
"node_count_metrics" : null,
"tasks" : [ "worker-0" ]
},
"algorithm" : {
"code_dir" : "obs://test/economic_test/py_minist/",
"boot_file" : "obs://test/economic_test/py_minist/minist_common.py",
"inputs" : [ {
"name" : "data_url",
"local_dir" : "/home/ma-user/modelarts/inputs/data_url_0",
"remote" : {
"obs" : {
"obs_url" : "/test/data/py_minist/"
}
}
} ],
"outputs" : [ {
"name" : "train_url",
"local_dir" : "/home/ma-user/modelarts/outputs/train_url_0",
"remote" : {
"obs" : {
"obs_url" : "/test/train_output/"
}
}
} ],
"engine" : {
"engine_id" : "pytorch-cp36-1.4.0-v2",
"engine_name" : "PyTorch",
"engine_version" : "PyTorch-1.4.0-python3.6-v2"
}
},
"spec" : {
"resource" : {
"policy" : "economic",
"flavor_id" : "modelarts.vm.pnt1.large.eco",
"flavor_name" : "Computing GPU(Pnt1) instance",
"node_count" : 1,
"flavor_detail" : {
"flavor_type" : "GPU",
"billing" : {
"code" : "modelarts.vm.gpu.pnt1.eco",
"unit_num" : 1
},
"flavor_info" : {
"cpu" : {
"arch" : "x86",
"core_num" : 8
},
"gpu" : {
"unit_num" : 1,
"product_name" : "GP-Pnt1",
"memory" : "8GB"
},
"memory" : {
"size" : 64,
"unit" : "GB"
}
}
}
}
}
}
Status Codes
Status Code |
Description |
|---|---|
202 |
ok |
Error Codes
See Error Codes.