airflow.providers.amazon.aws.hooks.batch_client¶
A client for AWS Batch services.
See also
Module Contents¶
Classes¶
| A structured Protocol for  | |
| Interact with AWS Batch. | 
- class airflow.providers.amazon.aws.hooks.batch_client.BatchProtocol[source]¶
- Bases: - airflow.typing_compat.Protocol- A structured Protocol for - boto3.client('batch') -> botocore.client.Batch.- This is used for type hints on - BatchClient.client(); it covers only the subset of client methods required.- See also - get_waiter(waiterName)[source]¶
- Get an AWS Batch service waiter. - Parameters
- waiterName (str) – The name of the waiter. The name should match the name (including the casing) of the key name in the waiter model file (typically this is CamelCasing). 
- Returns
- a waiter object for the named AWS Batch service 
- Return type
- botocore.waiter.Waiter 
 - Note - AWS Batch might not have any waiters (until botocore PR-1307 is released). - import boto3 boto3.client("batch").waiter_names == [] 
 - submit_job(jobName, jobQueue, jobDefinition, arrayProperties, parameters, containerOverrides, tags)[source]¶
- Submit a Batch job. - Parameters
- jobName (str) – the name for the AWS Batch job 
- jobQueue (str) – the queue name on AWS Batch 
- jobDefinition (str) – the job definition name on AWS Batch 
- arrayProperties (dict) – the same parameter that boto3 will receive 
- parameters (dict) – the same parameter that boto3 will receive 
- containerOverrides (dict) – the same parameter that boto3 will receive 
- tags (dict) – the same parameter that boto3 will receive 
 
- Returns
- an API response 
- Return type
 
 
- class airflow.providers.amazon.aws.hooks.batch_client.BatchClientHook(*args, max_retries=None, status_retries=None, **kwargs)[source]¶
- Bases: - airflow.providers.amazon.aws.hooks.base_aws.AwsBaseHook- Interact with AWS Batch. - Provide thick wrapper around - boto3.client("batch").- Parameters
 - Note - Several methods use a default random delay to check or poll for job status, i.e. - random.uniform(DEFAULT_DELAY_MIN, DEFAULT_DELAY_MAX)Using a random interval helps to avoid AWS API throttle limits when many concurrent tasks request job-descriptions.- To modify the global defaults for the range of jitter allowed when a random delay is used to check Batch job status, modify these defaults, e.g.: .. code-block: - BatchClient.DEFAULT_DELAY_MIN = 0 BatchClient.DEFAULT_DELAY_MAX = 5 - When explicit delay values are used, a 1 second random jitter is applied to the delay (e.g. a delay of 0 sec will be a - random.uniform(0, 1)delay. It is generally recommended that random jitter is added to API requests. A convenience method is provided for this, e.g. to get a random delay of 10 sec +/- 5 sec:- delay = BatchClient.add_jitter(10, width=5, minima=0)- Additional arguments (such as - aws_conn_id) may be specified and are passed down to the underlying AwsBaseHook.- See also - property client: BatchProtocol | botocore.client.BaseClient[source]¶
- An AWS API client for Batch services. - Returns
- a boto3 ‘batch’ client for the - .region_name
- Return type
- BatchProtocol | botocore.client.BaseClient 
 
 - check_job_success(job_id)[source]¶
- Check the final status of the Batch job. - Return True if the job ‘SUCCEEDED’, else raise an AirflowException. - Parameters
- job_id (str) – a Batch job ID 
- Raises
- AirflowException 
 
 - wait_for_job(job_id, delay=None, get_batch_log_fetcher=None)[source]¶
- Wait for Batch job to complete. - Parameters
 - :param get_batch_log_fetcher : a method that returns batch_log_fetcher - Raises
- AirflowException 
 
 - poll_for_job_running(job_id, delay=None)[source]¶
- Poll for job running. - The status that indicates a job is running or already complete are: ‘RUNNING’|’SUCCEEDED’|’FAILED’. - So the status options that this will wait for are the transitions from: ‘SUBMITTED’>’PENDING’>’RUNNABLE’>’STARTING’>’RUNNING’|’SUCCEEDED’|’FAILED’ - The completed status options are included for cases where the status changes too quickly for polling to detect a RUNNING status that moves quickly from STARTING to RUNNING to completed (often a failure). 
 - poll_for_job_complete(job_id, delay=None)[source]¶
- Poll for job completion. - The status that indicates job completion are: ‘SUCCEEDED’|’FAILED’. - So the status options that this will wait for are the transitions from: ‘SUBMITTED’>’PENDING’>’RUNNABLE’>’STARTING’>’RUNNING’>’SUCCEEDED’|’FAILED’ 
 - poll_job_status(job_id, match_status)[source]¶
- Poll for job status using an exponential back-off strategy (with max_retries). 
 - static parse_job_description(job_id, response)[source]¶
- Parse job description to extract description for job_id. 
 - get_job_all_awslogs_info(job_id)[source]¶
- Parse job description to extract AWS CloudWatch information. - Parameters
- job_id (str) – AWS Batch Job ID 
 
 - static add_jitter(delay, width=1, minima=0)[source]¶
- Use delay +/- width for random jitter. - Adding jitter to status polling can help to avoid AWS Batch API limits for monitoring Batch jobs with a high concurrency in Airflow tasks. - Parameters
- Returns
- uniform(delay - width, delay + width) jitter and it is a non-negative number 
- Return type
 
 - static delay(delay=None)[source]¶
- Pause execution for - delayseconds.- Parameters
- delay (int | float | None) – a delay to pause execution using - time.sleep(delay); a small 1 second jitter is applied to the delay.
 - Note - This method uses a default random delay, i.e. - random.uniform(DEFAULT_DELAY_MIN, DEFAULT_DELAY_MAX); using a random interval helps to avoid AWS API throttle limits when many concurrent tasks request job-descriptions.
 - static exponential_delay(tries)[source]¶
- An exponential back-off delay, with random jitter. - There is a maximum interval of 10 minutes (with random jitter between 3 and 10 minutes). This is used in the - poll_for_job_status()method.- Parameters
- tries (int) – Number of tries 
 - Examples of behavior: - def exp(tries): max_interval = 600.0 # 10 minutes in seconds delay = 1 + pow(tries * 0.6, 2) delay = min(max_interval, delay) print(delay / 3, delay) for tries in range(10): exp(tries) # 0.33 1.0 # 0.45 1.35 # 0.81 2.44 # 1.41 4.23 # 2.25 6.76 # 3.33 10.00 # 4.65 13.95 # 6.21 18.64 # 8.01 24.04 # 10.05 30.15 
 
