def get_wfs_with_parameter(parameter, wf_class='Workflow'): """ Find workflows of a given class, with a given parameter (which must be a node) :param parameter: an AiiDA node :param wf_class: the name of the workflow class :return: an AiiDA query set with all workflows that have this parameter """ from aiida.common.datastructures import wf_data_types from aiida.orm.workflow import Workflow try: from aiida.backends.djsite.db import models except ImportError: from aiida.djsite.db import models # Find attributes with this name qdata = models.DbWorkflowData.objects.filter(aiida_obj=parameter, data_type=wf_data_types.PARAMETER) # Find workflows with those attributes if wf_class == 'Workflow': qwf = Workflow.query(data__in=qdata) else: qwf = Workflow.query(module_class=wf_class,data__in=qdata) #q2 = wf_class.query(data__in=q1) # return a Django QuerySet with the resulting class instances return qwf.distinct().order_by('ctime')
def load_workflow(wf_id=None, pk=None, uuid=None): """ Return an AiiDA workflow given PK or UUID. :param wf_id: PK (integer) or UUID (string) or a workflow :param pk: PK of a workflow :param uuid: UUID of a workflow :return: an AiiDA workflow :raises: ValueError if none or more than one of parameters is supplied or type of wf_id is neither string nor integer """ # This must be done inside here, because at import time the profile # must have been already loaded. If you put it at the module level, # the implementation is frozen to the default one at import time. from aiida.orm.implementation import Workflow if int(wf_id is None) + int(pk is None) + int(uuid is None) == 3: raise ValueError("one of the parameters 'wf_id', 'pk' and 'uuid' " "has to be supplied") if int(wf_id is None) + int(pk is None) + int(uuid is None) < 2: raise ValueError("only one of parameters 'wf_id', 'pk' and 'uuid' " "has to be supplied") if wf_id is not None: if isinstance(wf_id, str) or isinstance(wf_id, unicode): return Workflow.get_subclass_from_uuid(wf_id) elif isinstance(wf_id, int): return Workflow.get_subclass_from_pk(wf_id) else: raise ValueError("'wf_id' has to be either string, unicode or " "integer, {} given".format(type(wf_id))) if pk is not None: return Workflow.get_subclass_from_pk(pk) else: return Workflow.get_subclass_from_uuid(uuid)
def wipe_all_scratch(w, results_to_save): """ Wipe out all the scratch on the remote cluster used by a workflow and all its subworkflows (found recursively) :param results_to_save: a list of Calculation objects that will be skipped :w: the workflow instance to clean """ from aiida.orm.workflow import Workflow from aiida.orm.calculation.job import JobCalculation if not isinstance(w, Workflow): raise TypeError("Parameter w should be a workflow") try: if not all( [ isinstance(_,JobCalculation) for _ in results_to_save ] ): raise TypeError("Parameter results_to_save should be a list of calculations") except TypeError: raise TypeError("Parameter results_to_save should be a list of calculations") steps = w.dbworkflowinstance.steps.all() this_calcs = JobCalculation.query(workflow_step__in=steps) this_wfs = Workflow.query(parent_workflow_step__in=steps) for c in this_calcs: if c.pk not in [_.pk for _ in results_to_save]: try: c.out.remote_folder._clean() except AttributeError: # remote folder does not exist (probably submission of calc. failed) pass except OSError: # work directory was already removed pass for this_wf in this_wfs: wipe_all_scratch(this_wf, results_to_save)
def get_aiida_class(self): """ Return the corresponding aiida instance of class aiida.worflow """ from aiida.orm.workflow import Workflow return Workflow.get_subclass_from_uuid(self.uuid)
def advance_workflow(w_superclass, step): """ The method tries to advance a step running its next method and handling possible errors. If the method to advance is the Workflow ``exit`` method and there are no more steps RUNNING or in ERROR state then the workflow is set to FINISHED, otherwise an error is added to the report and the Workflow is flagged as ERORR. If the method is the ``wf_default_call`` this means the step had no next, and possibly is part of a branching. In this case the Workflow is not advanced but the method returns True to let the other steps kick in. Finally the methos tries to load the Workflow and execute the selected step, reporting the errors and the stack trace in the report in case of problems. Is no errors are reported the method returns True, in all the other cases the Workflow is set to ERROR state and the method returns False. :param w_superclass: Workflow object to advance :param step: DbWorkflowStep to execute :return: True if the step has been executed, False otherwise """ from aiida.orm.workflow import Workflow if step.nextcall == wf_exit_call: logger.info("[{0}] Step: {1} has an exit call".format( w_superclass.uuid, step.name)) if len(w_superclass.get_steps(wf_states.RUNNING)) == 0 and len( w_superclass.get_steps(wf_states.ERROR)) == 0: logger.info("[{0}] Step: {1} is really finished, going out".format( w_superclass.uuid, step.name)) w_superclass.set_state(wf_states.FINISHED) return True else: logger.error( "[{0}] Step: {1} is NOT finished, stopping workflow with error" .format(w_superclass.uuid, step.name)) w_superclass.append_to_report( """Step: {1} is NOT finished, some calculations or workflows are still running and there is a next call, stopping workflow with error""" .format(step.name)) w_superclass.set_state(wf_states.ERROR) return False elif step.nextcall == wf_default_call: logger.info( "Step: {0} is not finished and has no next call, waiting for other methods to kick." .format(step.name)) w_superclass.append_to_report( "Step: {0} is not finished and has no next call, waiting for other methods to kick." .format(step.name)) return True elif not step.nextcall == None: logger.info( "In advance_workflow the step {0} goes to nextcall {1}".format( step.name, step.nextcall)) try: w = Workflow.get_subclass_from_uuid(w_superclass.uuid) getattr(w, step.nextcall)() return True except Exception: import traceback w.append_to_report( "ERROR ! This workflow got an error in the {0} method, we report down the stack trace" .format(step.nextcall)) w.append_to_report("full traceback: {0}".format( traceback.format_exc())) w.get_step(step.nextcall).set_state(wf_states.ERROR) w.set_state(wf_states.ERROR) return False else: logger.error("Step: {0} ERROR, no nextcall".format(step.name)) w.append_to_report("Step: {0} ERROR, no nextcall".format(step.name)) w.set_state(wf_states.ERROR) return False
def execute_steps(): """ This method loops on the RUNNING workflows and handled the execution of the steps until each workflow reaches an end (or gets stopped for errors). In the loop for each RUNNING workflow the method loops also in each of its RUNNING steps, testing if all the calculation and subworkflows attached to the step are FINISHED. In this case the step is set as FINISHED and the workflow is advanced to the step's next method present in the db with ``advance_workflow``, otherwise if any step's JobCalculation is found in NEW state the method will submit. If none of the previous conditions apply the step is flagged as ERROR and cannot proceed anymore, blocking the future execution of the step and, connected, the workflow. Finally, for each workflow the method tests if there are INITIALIZED steps to be launched, and in case reloads the workflow and execute the specific those steps. In case or error the step is flagged in ERROR state and the stack is reported in the workflow report. """ from aiida.backends.utils import get_automatic_user from aiida.orm.workflow import Workflow from aiida.common.datastructures import wf_states from aiida.orm import JobCalculation logger.info("Querying the worflow DB") w_list = Workflow.query(user=get_automatic_user(), state=wf_states.RUNNING) for w in w_list: logger.info("Found active workflow: {0}".format(w.uuid)) # Launch INITIALIZED Workflows # running_steps = w.get_steps(state=wf_states.RUNNING) for s in running_steps: logger.info("[{0}] Found active step: {1}".format(w.uuid, s.name)) s_calcs_new = [c.uuid for c in s.get_calculations() if c._is_new()] s_calcs_running = [ c.uuid for c in s.get_calculations() if c._is_running() ] s_calcs_finished = [ c.uuid for c in s.get_calculations() if c.has_finished_ok() ] s_calcs_failed = [ c.uuid for c in s.get_calculations() if c.has_failed() ] s_calcs_num = len(s.get_calculations()) s_sub_wf_running = [ sw.uuid for sw in s.get_sub_workflows() if sw.is_running() ] s_sub_wf_finished = [ sw.uuid for sw in s.get_sub_workflows() if sw.has_finished_ok() ] s_sub_wf_failed = [ sw.uuid for sw in s.get_sub_workflows() if sw.has_failed() ] s_sub_wf_num = len(s.get_sub_workflows()) if s_calcs_num == (len(s_calcs_finished) + len(s_calcs_failed) ) and s_sub_wf_num == (len(s_sub_wf_finished) + len(s_sub_wf_failed)): logger.info("[{0}] Step: {1} ready to move".format( w.uuid, s.name)) s.set_state(wf_states.FINISHED) advance_workflow(w, s) elif len(s_calcs_new) > 0: for uuid in s_calcs_new: obj_calc = JobCalculation.get_subclass_from_uuid(uuid=uuid) try: obj_calc.submit() logger.info( "[{0}] Step: {1} launched calculation {2}".format( w.uuid, s.name, uuid)) except: logger.error( "[{0}] Step: {1} cannot launch calculation {2}". format(w.uuid, s.name, uuid)) ## DO NOT STOP ANYMORE IF A CALCULATION FAILS # elif s_calcs_failed: #s.set_state(wf_states.ERROR) initialized_steps = w.get_steps(state=wf_states.INITIALIZED) for s in initialized_steps: import sys try: w_class = Workflow.get_subclass_from_uuid(w.uuid) getattr(w, s.name)() return True except: exc_type, exc_value, exc_traceback = sys.exc_info() w.append_to_report( "ERROR ! This workflow got an error in the {0} method, we report down the stack trace" .format(s.name)) w.append_to_report("full traceback: {0}".format( exc_traceback.format_exc())) s.set_state(wf_states.ERROR) w.set_state(wf_states.ERROR) for w in w_list: if w.get_steps(state=wf_states.ERROR): w.set_state(wf_states.ERROR)