Ejemplo n.º 1
0
 def test_send_email_running_subtask(self):
     # test at a lower level, to ensure that the course gets checked down below too.
     entry = InstructorTask.create(self.course.id, "task_type", "task_key", "task_input", self.instructor)
     entry_id = entry.id  # pylint: disable=no-member
     subtask_id = "subtask-id-value"
     initialize_subtask_info(entry, "emailed", 100, [subtask_id])
     subtask_status = SubtaskStatus.create(subtask_id)
     update_subtask_status(entry_id, subtask_id, subtask_status)
     check_subtask_is_valid(entry_id, subtask_id, subtask_status)
     bogus_email_id = 1001
     to_list = ['*****@*****.**']
     global_email_context = {'course_title': 'dummy course'}
     with self.assertRaisesRegexp(DuplicateTaskException, 'already being executed'):
         send_course_email(entry_id, bogus_email_id, to_list, global_email_context, subtask_status.to_dict())
Ejemplo n.º 2
0
def send_course_email(entry_id, email_id, to_list, global_email_context,
                      subtask_status_dict):
    """
    Sends an email to a list of recipients.

    Inputs are:
      * `entry_id`: id of the InstructorTask object to which progress should be recorded.
      * `email_id`: id of the CourseEmail model that is to be emailed.
      * `to_list`: list of recipients.  Each is represented as a dict with the following keys:
        - 'profile__name': full name of User.
        - 'email': email address of User.
        - 'pk': primary key of User model.
      * `global_email_context`: dict containing values that are unique for this email but the same
        for all recipients of this email.  This dict is to be used to fill in slots in email
        template.  It does not include 'name' and 'email', which will be provided by the to_list.
      * `subtask_status_dict` : dict containing values representing current status.  Keys are:

        'task_id' : id of subtask.  This is used to pass task information across retries.
        'attempted' : number of attempts -- should equal succeeded plus failed
        'succeeded' : number that succeeded in processing
        'skipped' : number that were not processed.
        'failed' : number that failed during processing
        'retried_nomax' : number of times the subtask has been retried for conditions that
            should not have a maximum count applied
        'retried_withmax' : number of times the subtask has been retried for conditions that
            should have a maximum count applied
        'state' : celery state of the subtask (e.g. QUEUING, PROGRESS, RETRY, FAILURE, SUCCESS)

        Most values will be zero on initial call, but may be different when the task is
        invoked as part of a retry.

    Sends to all addresses contained in to_list that are not also in the Optout table.
    Emails are sent multi-part, in both plain text and html.  Updates InstructorTask object
    with status information (sends, failures, skips) and updates number of subtasks completed.
    """
    subtask_status = SubtaskStatus.from_dict(subtask_status_dict)
    current_task_id = subtask_status.task_id
    num_to_send = len(to_list)
    log.info((u"Preparing to send email %s to %d recipients as subtask %s "
              u"for instructor task %d: context = %s, status=%s"), email_id,
             num_to_send, current_task_id, entry_id, global_email_context,
             subtask_status)

    # Check that the requested subtask is actually known to the current InstructorTask entry.
    # If this fails, it throws an exception, which should fail this subtask immediately.
    # This can happen when the parent task has been run twice, and results in duplicate
    # subtasks being created for the same InstructorTask entry.  This can happen when Celery
    # loses its connection to its broker, and any current tasks get requeued.
    # We hope to catch this condition in perform_delegate_email_batches() when it's the parent
    # task that is resubmitted, but just in case we fail to do so there, we check here as well.
    # There is also a possibility that this task will be run twice by Celery, for the same reason.
    # To deal with that, we need to confirm that the task has not already been completed.
    check_subtask_is_valid(entry_id, current_task_id, subtask_status)

    send_exception = None
    new_subtask_status = None
    try:
        course_title = global_email_context['course_title']
        with dog_stats_api.timer('course_email.single_task.time.overall',
                                 tags=[_statsd_tag(course_title)]):
            new_subtask_status, send_exception = _send_course_email(
                entry_id,
                email_id,
                to_list,
                global_email_context,
                subtask_status,
            )
    except Exception:
        # Unexpected exception. Try to write out the failure to the entry before failing.
        log.exception("Send-email task %s for email %s: failed unexpectedly!",
                      current_task_id, email_id)
        # We got here for really unexpected reasons.  Since we don't know how far
        # the task got in emailing, we count all recipients as having failed.
        # It at least keeps the counts consistent.
        subtask_status.increment(failed=num_to_send, state=FAILURE)
        update_subtask_status(entry_id, current_task_id, subtask_status)
        raise

    if send_exception is None:
        # Update the InstructorTask object that is storing its progress.
        log.info("Send-email task %s for email %s: succeeded", current_task_id,
                 email_id)
        update_subtask_status(entry_id, current_task_id, new_subtask_status)
    elif isinstance(send_exception, RetryTaskError):
        # If retrying, a RetryTaskError needs to be returned to Celery.
        # We assume that the the progress made before the retry condition
        # was encountered has already been updated before the retry call was made,
        # so we only log here.
        log.warning("Send-email task %s for email %s: being retried",
                    current_task_id, email_id)
        raise send_exception  # pylint: disable=raising-bad-type
    else:
        log.error("Send-email task %s for email %s: failed: %s",
                  current_task_id, email_id, send_exception)
        update_subtask_status(entry_id, current_task_id, new_subtask_status)
        raise send_exception  # pylint: disable=raising-bad-type

    # return status in a form that can be serialized by Celery into JSON:
    log.info("Send-email task %s for email %s: returning status %s",
             current_task_id, email_id, new_subtask_status)
    return new_subtask_status.to_dict()
Ejemplo n.º 3
0
def send_course_email(entry_id, email_id, to_list, global_email_context, subtask_status_dict):
    """
    Sends an email to a list of recipients.

    Inputs are:
      * `entry_id`: id of the InstructorTask object to which progress should be recorded.
      * `email_id`: id of the CourseEmail model that is to be emailed.
      * `to_list`: list of recipients.  Each is represented as a dict with the following keys:
        - 'profile__name': full name of User.
        - 'email': email address of User.
        - 'pk': primary key of User model.
      * `global_email_context`: dict containing values that are unique for this email but the same
        for all recipients of this email.  This dict is to be used to fill in slots in email
        template.  It does not include 'name' and 'email', which will be provided by the to_list.
      * `subtask_status_dict` : dict containing values representing current status.  Keys are:

        'task_id' : id of subtask.  This is used to pass task information across retries.
        'attempted' : number of attempts -- should equal succeeded plus failed
        'succeeded' : number that succeeded in processing
        'skipped' : number that were not processed.
        'failed' : number that failed during processing
        'retried_nomax' : number of times the subtask has been retried for conditions that
            should not have a maximum count applied
        'retried_withmax' : number of times the subtask has been retried for conditions that
            should have a maximum count applied
        'state' : celery state of the subtask (e.g. QUEUING, PROGRESS, RETRY, FAILURE, SUCCESS)

        Most values will be zero on initial call, but may be different when the task is
        invoked as part of a retry.

    Sends to all addresses contained in to_list that are not also in the Optout table.
    Emails are sent multi-part, in both plain text and html.  Updates InstructorTask object
    with status information (sends, failures, skips) and updates number of subtasks completed.
    """
    subtask_status = SubtaskStatus.from_dict(subtask_status_dict)
    current_task_id = subtask_status.task_id
    num_to_send = len(to_list)
    log.info((u"Preparing to send email %s to %d recipients as subtask %s "
              u"for instructor task %d: context = %s, status=%s"),
             email_id, num_to_send, current_task_id, entry_id, global_email_context, subtask_status)

    # Check that the requested subtask is actually known to the current InstructorTask entry.
    # If this fails, it throws an exception, which should fail this subtask immediately.
    # This can happen when the parent task has been run twice, and results in duplicate
    # subtasks being created for the same InstructorTask entry.  This can happen when Celery
    # loses its connection to its broker, and any current tasks get requeued.
    # We hope to catch this condition in perform_delegate_email_batches() when it's the parent
    # task that is resubmitted, but just in case we fail to do so there, we check here as well.
    # There is also a possibility that this task will be run twice by Celery, for the same reason.
    # To deal with that, we need to confirm that the task has not already been completed.
    check_subtask_is_valid(entry_id, current_task_id, subtask_status)

    send_exception = None
    new_subtask_status = None
    try:
        course_title = global_email_context['course_title']
        with dog_stats_api.timer('course_email.single_task.time.overall', tags=[_statsd_tag(course_title)]):
            new_subtask_status, send_exception = _send_course_email(
                entry_id,
                email_id,
                to_list,
                global_email_context,
                subtask_status,
            )
    except Exception:
        # Unexpected exception. Try to write out the failure to the entry before failing.
        log.exception("Send-email task %s for email %s: failed unexpectedly!", current_task_id, email_id)
        # We got here for really unexpected reasons.  Since we don't know how far
        # the task got in emailing, we count all recipients as having failed.
        # It at least keeps the counts consistent.
        subtask_status.increment(failed=num_to_send, state=FAILURE)
        update_subtask_status(entry_id, current_task_id, subtask_status)
        raise

    if send_exception is None:
        # Update the InstructorTask object that is storing its progress.
        log.info("Send-email task %s for email %s: succeeded", current_task_id, email_id)
        update_subtask_status(entry_id, current_task_id, new_subtask_status)
    elif isinstance(send_exception, RetryTaskError):
        # If retrying, a RetryTaskError needs to be returned to Celery.
        # We assume that the the progress made before the retry condition
        # was encountered has already been updated before the retry call was made,
        # so we only log here.
        log.warning("Send-email task %s for email %s: being retried", current_task_id, email_id)
        raise send_exception  # pylint: disable=raising-bad-type
    else:
        log.error("Send-email task %s for email %s: failed: %s", current_task_id, email_id, send_exception)
        update_subtask_status(entry_id, current_task_id, new_subtask_status)
        raise send_exception  # pylint: disable=raising-bad-type

    # return status in a form that can be serialized by Celery into JSON:
    log.info("Send-email task %s for email %s: returning status %s", current_task_id, email_id, new_subtask_status)
    return new_subtask_status.to_dict()