Warning
This document is for an in-development version of Galaxy. You can alternatively view this page in the latest release if it exists or view the top of the latest release's documentation.
Source code for galaxy.jobs.actions.post
"""
Actions to be run at job completion (or output hda creation, as in the case of
immediate_actions listed below. Currently only used in workflows.
"""
import datetime
import socket
from markupsafe import escape
from galaxy.util import (
send_mail,
unicodify,
)
from galaxy.util.logging import get_logger
log = get_logger(__name__)
[docs]class DefaultJobAction(object):
"""
Base job action.
"""
name = "DefaultJobAction"
verbose_name = "Default Job"
[docs] @classmethod
def get_short_str(cls, pja):
if pja.action_arguments:
return "%s -> %s" % (pja.action_type, escape(pja.action_arguments))
else:
return "%s" % pja.action_type
[docs]class EmailAction(DefaultJobAction):
"""
This action sends an email to the galaxy user responsible for a job.
"""
name = "EmailAction"
verbose_name = "Email Notification"
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
frm = app.config.email_from
if frm is None:
if action.action_arguments and 'host' in action.action_arguments:
host = action.action_arguments['host']
else:
host = socket.getfqdn()
frm = 'galaxy-no-reply@%s' % host
to = job.user.email
subject = "Galaxy workflow step notification '%s'" % (job.history.name)
outdata = ', '.join(ds.dataset.display_name() for ds in job.output_datasets)
body = "Your Galaxy job generating dataset '%s' is complete as of %s." % (outdata, datetime.datetime.now().strftime("%I:%M"))
try:
send_mail(frm, to, subject, body, app.config)
except Exception as e:
log.error("EmailAction PJA Failed, exception: %s", unicodify(e))
[docs] @classmethod
def get_short_str(cls, pja):
if pja.action_arguments and 'host' in pja.action_arguments:
return "Email the current user from server %s when this job is complete." % escape(pja.action_arguments['host'])
else:
return "Email the current user when this job is complete."
[docs]class ChangeDatatypeAction(DefaultJobAction):
name = "ChangeDatatypeAction"
verbose_name = "Change Datatype"
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
for dataset_assoc in job.output_datasets:
if action.output_name == '' or dataset_assoc.name == action.output_name:
app.datatypes_registry.change_datatype(dataset_assoc.dataset, action.action_arguments['newtype'])
for dataset_collection_assoc in job.output_dataset_collection_instances:
if action.output_name == '' or dataset_collection_assoc.name == action.output_name:
for dataset_instance in dataset_collection_assoc.dataset_collection_instance.dataset_instances:
if dataset_instance:
app.datatypes_registry.change_datatype(dataset_instance, action.action_arguments['newtype'])
[docs] @classmethod
def get_short_str(cls, pja):
return "Set the datatype of output '%s' to '%s'" % (escape(pja.output_name),
escape(pja.action_arguments['newtype']))
[docs]class RenameDatasetAction(DefaultJobAction):
name = "RenameDatasetAction"
verbose_name = "Rename Dataset"
[docs] @classmethod
def execute_on_mapped_over(cls, trans, sa_session, action, step_inputs, step_outputs, replacement_dict):
# Prevent renaming a dataset to the empty string.
input_names = {}
# Lookp through inputs find one with "to_be_replaced" input
# variable name, and get the replacement name
for input_key, step_input in step_inputs.items():
if step_input and hasattr(step_input, "name"):
input_names[input_key] = step_input.name
new_name = cls._gen_new_name(action, input_names, replacement_dict)
if new_name:
for name, step_output in step_outputs.items():
if action.output_name == '' or name == action.output_name:
step_output.name = new_name
@classmethod
def _gen_new_name(self, action, input_names, replacement_dict):
new_name = None
if action.action_arguments and action.action_arguments.get('newname', ''):
new_name = action.action_arguments['newname']
# TODO: Unify and simplify replacement options.
# Add interface through workflow editor UI
# The following if statement will process a request to rename
# using an input file name.
# TODO: Replace all matching code with regex
# Proper syntax is #{input_file_variable | option 1 | option n}
# where
# input_file_variable = is the name of an module input variable
# | = the delimiter for added options. Optional if no options.
# options = basename, upper, lower
# basename = keep all of the file name except the extension
# (everything before the final ".")
# upper = force the file name to upper case
# lower = force the file name to lower case
# suggested additions:
# "replace" option so you can replace a portion of the name,
# support multiple #{name} in one rename action...
start_pos = 0
while new_name.find("#{", start_pos) > -1:
to_be_replaced = ""
# This assumes a single instance of #{variable} will exist
start_pos = new_name.find("#{", start_pos) + 2
end_pos = new_name.find("}", start_pos)
to_be_replaced = new_name[start_pos:end_pos]
input_file_var = to_be_replaced
# Pull out the piped controls and store them for later
# parsing.
tokens = to_be_replaced.split("|")
operations = []
if len(tokens) > 1:
input_file_var = tokens[0].strip()
for i in range(1, len(tokens)):
operations.append(tokens[i].strip())
# Treat . as special symbol (breaks parameter names anyway)
# to allow access to repeat elements, for instance first
# repeat in cat1 would be something like queries_0.input2.
input_file_var = input_file_var.replace(".", "|")
replacement = input_names.get(input_file_var, "")
# In case name was None.
replacement = replacement or ''
# Do operations on replacement
# Any control that is not defined will be ignored.
# This should be moved out to a class or module function
for operation in operations:
# Basename returns everything prior to the final '.'
if operation == "basename":
fields = replacement.split(".")
replacement = fields[0]
if len(fields) > 1:
temp = ""
for i in range(1, len(fields) - 1):
temp += "." + fields[i]
replacement += temp
elif operation == "upper":
replacement = replacement.upper()
elif operation == "lower":
replacement = replacement.lower()
new_name = new_name.replace("#{%s}" % to_be_replaced, replacement)
if replacement_dict:
for k, v in replacement_dict.items():
new_name = new_name.replace("${%s}" % k, v)
return new_name
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
input_names = {}
# Lookp through inputs find one with "to_be_replaced" input
# variable name, and get the replacement name
for input_assoc in job.input_datasets:
if input_assoc.dataset:
input_names[input_assoc.name] = input_assoc.dataset.name
# Ditto for collections...
for input_assoc in job.input_dataset_collections:
# Either a HDCA or a DCE - only HDCA has a name.
has_collection = input_assoc.dataset_collection
if has_collection and hasattr(has_collection, "name"):
input_names[input_assoc.name] = has_collection.name
new_name = cls._gen_new_name(action, input_names, replacement_dict)
if new_name:
for dataset_assoc in job.output_datasets:
if action.output_name == '' or dataset_assoc.name == action.output_name:
dataset_assoc.dataset.name = new_name
for dataset_collection_assoc in job.output_dataset_collection_instances:
if action.output_name == '' or dataset_collection_assoc.name == action.output_name:
dataset_collection_assoc.dataset_collection_instance.name = new_name
[docs] @classmethod
def get_short_str(cls, pja):
# Prevent renaming a dataset to the empty string.
if pja.action_arguments and pja.action_arguments.get('newname', ''):
return "Rename output '%s' to '%s'." % (escape(pja.output_name),
escape(pja.action_arguments['newname']))
else:
return "Rename action used without a new name specified. Output name will be unchanged."
[docs]class HideDatasetAction(DefaultJobAction):
name = "HideDatasetAction"
verbose_name = "Hide Dataset"
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
for dataset_assoc in job.output_datasets:
if dataset_assoc.dataset.state != dataset_assoc.dataset.states.ERROR and (action.output_name == '' or dataset_assoc.name == action.output_name):
dataset_assoc.dataset.visible = False
for dataset_collection_assoc in job.output_dataset_collection_instances:
if action.output_name == '' or dataset_collection_assoc.name == action.output_name:
dataset_collection_assoc.dataset_collection_instance.visible = False
[docs] @classmethod
def execute_on_mapped_over(cls, trans, sa_session, action, step_inputs, step_outputs, replacement_dict):
for name, step_output in step_outputs.items():
if action.output_name == '' or name == action.output_name:
step_output.visible = False
[docs] @classmethod
def get_short_str(cls, pja):
return "Hide output '%s'." % escape(pja.output_name)
[docs]class DeleteDatasetAction(DefaultJobAction):
# This is disabled for right now. Deleting a dataset in the middle of a workflow causes errors (obviously) for the subsequent steps using the data.
name = "DeleteDatasetAction"
verbose_name = "Delete Dataset"
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
for dataset_assoc in job.output_datasets:
if action.output_name == '' or dataset_assoc.name == action.output_name:
dataset_assoc.dataset.deleted = True
for dataset_collection_assoc in job.output_dataset_collection_instances:
if action.output_name == '' or dataset_collection_assoc.name == action.output_name:
dataset_collection_assoc.dataset_collection_instance.deleted = True
[docs] @classmethod
def execute_on_mapped_over(cls, trans, sa_session, action, step_inputs, step_outputs, replacement_dict):
for name, step_output in step_outputs.items():
if action.output_name == '' or name == action.output_name:
step_output.deleted = True
[docs]class ColumnSetAction(DefaultJobAction):
name = "ColumnSetAction"
verbose_name = "Assign Columns"
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
for dataset_assoc in job.output_datasets:
if action.output_name == '' or dataset_assoc.name == action.output_name:
for k, v in action.action_arguments.items():
if v:
# Try to use both pure integer and 'cX' format.
if not isinstance(v, int):
if v[0] == 'c':
v = v[1:]
v = int(v)
if v != 0:
setattr(dataset_assoc.dataset.metadata, k, v)
[docs] @classmethod
def get_short_str(cls, pja):
return "Set the following metadata values:<br/>" + "<br/>".join('%s : %s' % (escape(k), escape(v)) for k, v in pja.action_arguments.items())
[docs]class SetMetadataAction(DefaultJobAction):
name = "SetMetadataAction"
# DBTODO Setting of Metadata is currently broken and disabled. It should not be used (yet).
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
for data in job.output_datasets:
data.set_metadata(action.action_arguments['newtype'])
[docs]class DeleteIntermediatesAction(DefaultJobAction):
name = "DeleteIntermediatesAction"
verbose_name = "Delete Non-Output Completed Intermediate Steps"
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
# TODO Optimize this later. Just making it work for now.
# TODO Support purging as well as deletion if user_purge is enabled.
# Dataset candidates for deletion must be
# 1) Created by the workflow.
# 2) Not have any job_to_input_dataset associations with states other
# than OK or DELETED. If a step errors, we don't want to delete/purge it
# automatically.
# 3) Not marked as a workflow output.
# POTENTIAL ISSUES: When many outputs are being finish()ed
# concurrently, sometimes non-terminal steps won't be cleaned up
# because of the lag in job state updates.
sa_session.flush()
if not job.workflow_invocation_step:
log.debug("This job is not part of a workflow invocation, delete intermediates aborted.")
return
wfi = job.workflow_invocation_step.workflow_invocation
sa_session.refresh(wfi)
if wfi.active:
log.debug("Workflow still scheduling so new jobs may appear, skipping deletion of intermediate files.")
# Still evaluating workflow so we don't yet have all workflow invocation
# steps to start looking at.
return
outputs_defined = wfi.workflow.has_outputs_defined()
if outputs_defined:
wfi_steps = [wfistep for wfistep in wfi.steps if not wfistep.workflow_step.workflow_outputs and wfistep.workflow_step.type == "tool"]
jobs_to_check = []
for wfi_step in wfi_steps:
sa_session.refresh(wfi_step)
wfi_step_job = wfi_step.job
if wfi_step_job:
jobs_to_check.append(wfi_step_job)
else:
log.debug("No job found yet for wfi_step %s, (step %s)" % (wfi_step, wfi_step.workflow_step))
for j2c in jobs_to_check:
creating_jobs = []
for input_dataset in j2c.input_datasets:
if not input_dataset.dataset:
log.debug("PJA Async Issue: No dataset attached to input_dataset %s during handling of workflow invocation %s" % (input_dataset.id, wfi))
elif not input_dataset.dataset.creating_job:
log.debug("PJA Async Issue: No creating job attached to dataset %s during handling of workflow invocation %s" % (input_dataset.dataset.id, wfi))
else:
creating_jobs.append((input_dataset, input_dataset.dataset.creating_job))
for (input_dataset, creating_job) in creating_jobs:
sa_session.refresh(creating_job)
sa_session.refresh(input_dataset)
for input_dataset in [x.dataset for (x, creating_job) in creating_jobs if creating_job.workflow_invocation_step and creating_job.workflow_invocation_step.workflow_invocation == wfi]:
# note that the above input_dataset is a reference to a
# job.input_dataset.dataset at this point
safe_to_delete = True
for job_to_check in [d_j.job for d_j in input_dataset.dependent_jobs]:
if job_to_check != job and job_to_check.state not in [job.states.OK, job.states.DELETED]:
log.trace("Workflow Intermediates cleanup attempted, but non-terminal state '%s' detected for job %s" % (job_to_check.state, job_to_check.id))
safe_to_delete = False
if safe_to_delete:
# Support purging here too.
input_dataset.mark_deleted()
else:
# No workflow outputs defined, so we can't know what to delete.
# We could make this work differently in the future
pass
[docs] @classmethod
def get_short_str(cls, pja):
return "Delete parent datasets of this step created in this workflow that aren't flagged as outputs."
[docs]class TagDatasetAction(DefaultJobAction):
name = "TagDatasetAction"
verbose_name = "Add tag to dataset"
action = "Add"
direction = "to"
[docs] @classmethod
def execute_on_mapped_over(cls, trans, sa_session, action, step_inputs, step_outputs, replacement_dict):
if action.action_arguments:
tags = [t.replace('#', 'name:') if t.startswith('#') else t for t in [t.strip() for t in action.action_arguments.get('tags', '').split(',') if t.strip()]]
if tags:
for name, step_output in step_outputs.items():
if action.output_name == '' or name == action.output_name:
cls._execute(trans.app, trans.user, step_output, tags)
[docs] @classmethod
def execute(cls, app, sa_session, action, job, replacement_dict):
if action.action_arguments:
tags = [t.replace('#', 'name:') if t.startswith('#') else t for t in [t.strip() for t in action.action_arguments.get('tags', '').split(',') if t.strip()]]
if tags:
for dataset_assoc in job.output_datasets:
if action.output_name == '' or dataset_assoc.name == action.output_name:
cls._execute(app, job.user, dataset_assoc.dataset, tags)
for dataset_collection_assoc in job.output_dataset_collection_instances:
if action.output_name == '' or dataset_collection_assoc.name == action.output_name:
cls._execute(app, job.user, dataset_collection_assoc.dataset_collection_instance, tags)
sa_session.flush()
@classmethod
def _execute(cls, app, user, output, tags):
app.tag_handler.add_tags_from_list(user, output, tags)
[docs] @classmethod
def get_short_str(cls, pja):
if pja.action_arguments and pja.action_arguments.get('tags', ''):
return "%s tag(s) '%s' %s '%s'." % (cls.action,
escape(pja.action_arguments['tags']),
cls.direction,
escape(pja.output_name))
else:
return "%s Tag action used without a tag specified. No tag will be added." % cls.action
[docs]class RemoveTagDatasetAction(TagDatasetAction):
name = "RemoveTagDatasetAction"
verbose_name = "Remove tag from dataset"
action = "Remove"
direction = "from"
@classmethod
def _execute(cls, app, user, output, tags):
app.tag_handler.remove_tags_from_list(user, output, tags)
[docs]class ActionBox(object):
actions = {"RenameDatasetAction": RenameDatasetAction,
"HideDatasetAction": HideDatasetAction,
"ChangeDatatypeAction": ChangeDatatypeAction,
"ColumnSetAction": ColumnSetAction,
"EmailAction": EmailAction,
"DeleteIntermediatesAction": DeleteIntermediatesAction,
"TagDatasetAction": TagDatasetAction,
"RemoveTagDatasetAction": RemoveTagDatasetAction}
public_actions = ['RenameDatasetAction', 'ChangeDatatypeAction',
'ColumnSetAction', 'EmailAction',
'DeleteIntermediatesAction', 'TagDatasetAction',
'RemoveTagDatasetAction']
# Actions that can be applied ahead of the job execution while workflow is still
# being scheduled and jobs created.
immediate_actions = ['ChangeDatatypeAction', 'RenameDatasetAction',
'TagDatasetAction', 'RemoveTagDatasetAction']
# Actions that will be applied to implicit mapped over collection outputs and not
# just individual outputs when steps include mapped over tools and implicit collection outputs.
mapped_over_output_actions = ['RenameDatasetAction', 'HideDatasetAction',
'TagDatasetAction', 'RemoveTagDatasetAction']
[docs] @classmethod
def get_short_str(cls, action):
if action.action_type in ActionBox.actions:
return ActionBox.actions[action.action_type].get_short_str(action)
else:
return "Unknown Action"
[docs] @classmethod
def handle_incoming(cls, incoming):
npd = {}
for key, val in incoming.items():
if key.startswith('pja'):
sp = key.split('__')
ao_key = sp[2] + sp[1]
# flag / output_name / pjatype / desc
if ao_key not in npd:
npd[ao_key] = {'action_type': sp[2],
'output_name': sp[1],
'action_arguments': {}}
if len(sp) > 3:
if sp[3] == 'output_name':
npd[ao_key]['output_name'] = val
else:
npd[ao_key]['action_arguments'][sp[3]] = val
else:
# Not pja stuff.
pass
return npd
[docs] @classmethod
def execute_on_mapped_over(cls, trans, sa_session, pja, step_inputs, step_outputs, replacement_dict=None):
if pja.action_type in ActionBox.actions:
ActionBox.actions[pja.action_type].execute_on_mapped_over(trans, sa_session, pja, step_inputs, step_outputs, replacement_dict)
[docs] @classmethod
def execute(cls, app, sa_session, pja, job, replacement_dict=None):
if pja.action_type in ActionBox.actions:
ActionBox.actions[pja.action_type].execute(app, sa_session, pja, job, replacement_dict)