def submit_job(job_data): job_id = generate_job_id() schedule_logger.info('submit job, job_id {}, body {}'.format(job_id, job_data)) job_dsl = job_data.get('job_dsl', {}) job_runtime_conf = job_data.get('job_runtime_conf', {}) job_utils.check_pipeline_job_runtime_conf(job_runtime_conf) job_parameters = job_runtime_conf['job_parameters'] job_initiator = job_runtime_conf['initiator'] job_type = job_parameters.get('job_type', '') if job_type != 'predict': # generate job model info job_parameters['model_id'] = '#'.join([dtable_utils.all_party_key(job_runtime_conf['role']), 'model']) job_parameters['model_version'] = job_id train_runtime_conf = {} else: detect_utils.check_config(job_parameters, ['model_id', 'model_version']) # get inference dsl from pipeline model as job dsl job_tracker = Tracking(job_id=job_id, role=job_initiator['role'], party_id=job_initiator['party_id'], model_id=job_parameters['model_id'], model_version=job_parameters['model_version']) pipeline_model = job_tracker.get_output_model('pipeline') job_dsl = json_loads(pipeline_model['Pipeline'].inference_dsl) train_runtime_conf = json_loads(pipeline_model['Pipeline'].train_runtime_conf) job_dsl_path, job_runtime_conf_path = save_job_conf(job_id=job_id, job_dsl=job_dsl, job_runtime_conf=job_runtime_conf) job = Job() job.f_job_id = job_id job.f_roles = json_dumps(job_runtime_conf['role']) job.f_work_mode = job_parameters['work_mode'] job.f_initiator_party_id = job_initiator['party_id'] job.f_dsl = json_dumps(job_dsl) job.f_runtime_conf = json_dumps(job_runtime_conf) job.f_train_runtime_conf = json_dumps(train_runtime_conf) job.f_run_ip = '' job.f_status = JobStatus.WAITING job.f_progress = 0 job.f_create_time = current_timestamp() # save job info TaskScheduler.distribute_job(job=job, roles=job_runtime_conf['role'], job_initiator=job_initiator) # push into queue RuntimeConfig.JOB_QUEUE.put_event({ 'job_id': job_id, "initiator_role": job_initiator['role'], "initiator_party_id": job_initiator['party_id'] } ) schedule_logger.info( 'submit job successfully, job id is {}, model id is {}'.format(job.f_job_id, job_parameters['model_id'])) board_url = BOARD_DASHBOARD_URL.format(job_id, job_initiator['role'], job_initiator['party_id']) return job_id, job_dsl_path, job_runtime_conf_path, {'model_id': job_parameters['model_id'], 'model_version': job_parameters[ 'model_version']}, board_url
def submit(cls, job_data, job_id=None): if not job_id: job_id = job_utils.generate_job_id() schedule_logger(job_id).info('submit job, job_id {}, body {}'.format( job_id, job_data)) job_dsl = job_data.get('job_dsl', {}) job_runtime_conf = job_data.get('job_runtime_conf', {}) job_utils.check_job_runtime_conf(job_runtime_conf) authentication_utils.check_constraint(job_runtime_conf, job_dsl) job_initiator = job_runtime_conf['initiator'] conf_adapter = JobRuntimeConfigAdapter(job_runtime_conf) common_job_parameters = conf_adapter.get_common_parameters() if common_job_parameters.job_type != 'predict': # generate job model info common_job_parameters.model_id = model_utils.gen_model_id( job_runtime_conf['role']) common_job_parameters.model_version = job_id train_runtime_conf = {} else: # check predict job parameters detect_utils.check_config(common_job_parameters.to_dict(), ['model_id', 'model_version']) # get inference dsl from pipeline model as job dsl tracker = Tracker( job_id=job_id, role=job_initiator['role'], party_id=job_initiator['party_id'], model_id=common_job_parameters.model_id, model_version=common_job_parameters.model_version) pipeline_model = tracker.get_output_model('pipeline') train_runtime_conf = json_loads( pipeline_model['Pipeline'].train_runtime_conf) if not model_utils.check_if_deployed( role=job_initiator['role'], party_id=job_initiator['party_id'], model_id=common_job_parameters.model_id, model_version=common_job_parameters.model_version): raise Exception( f"Model {common_job_parameters.model_id} {common_job_parameters.model_version} has not been deployed yet." ) job_dsl = json_loads(pipeline_model['Pipeline'].inference_dsl) job = Job() job.f_job_id = job_id job.f_dsl = job_dsl job.f_train_runtime_conf = train_runtime_conf job.f_roles = job_runtime_conf['role'] job.f_work_mode = common_job_parameters.work_mode job.f_initiator_role = job_initiator['role'] job.f_initiator_party_id = job_initiator['party_id'] job.f_role = job_initiator['role'] job.f_party_id = job_initiator['party_id'] path_dict = job_utils.save_job_conf( job_id=job_id, role=job.f_initiator_role, job_dsl=job_dsl, job_runtime_conf=job_runtime_conf, job_runtime_conf_on_party={}, train_runtime_conf=train_runtime_conf, pipeline_dsl=None) if job.f_initiator_party_id not in job_runtime_conf['role'][ job.f_initiator_role]: schedule_logger(job_id).info("initiator party id error:{}".format( job.f_initiator_party_id)) raise Exception("initiator party id error {}".format( job.f_initiator_party_id)) # create common parameters on initiator JobController.backend_compatibility( job_parameters=common_job_parameters) JobController.adapt_job_parameters( role=job.f_initiator_role, job_parameters=common_job_parameters, create_initiator_baseline=True) job.f_runtime_conf = conf_adapter.update_common_parameters( common_parameters=common_job_parameters) dsl_parser = schedule_utils.get_job_dsl_parser( dsl=job.f_dsl, runtime_conf=job.f_runtime_conf, train_runtime_conf=job.f_train_runtime_conf) # initiator runtime conf as template job.f_runtime_conf_on_party = job.f_runtime_conf.copy() job.f_runtime_conf_on_party[ "job_parameters"] = common_job_parameters.to_dict() if common_job_parameters.work_mode == WorkMode.CLUSTER: # Save the status information of all participants in the initiator for scheduling for role, party_ids in job.f_roles.items(): for party_id in party_ids: if role == job.f_initiator_role and party_id == job.f_initiator_party_id: continue JobController.initialize_tasks(job_id, role, party_id, False, job.f_initiator_role, job.f_initiator_party_id, common_job_parameters, dsl_parser) status_code, response = FederatedScheduler.create_job(job=job) if status_code != FederatedSchedulingStatusCode.SUCCESS: job.f_status = JobStatus.FAILED job.f_tag = "submit_failed" FederatedScheduler.sync_job_status(job=job) raise Exception("create job failed", response) schedule_logger(job_id).info( 'submit job successfully, job id is {}, model id is {}'.format( job.f_job_id, common_job_parameters.model_id)) logs_directory = job_utils.get_job_log_directory(job_id) submit_result = { "job_id": job_id, "model_info": { "model_id": common_job_parameters.model_id, "model_version": common_job_parameters.model_version }, "logs_directory": logs_directory, "board_url": job_utils.get_board_url(job_id, job_initiator['role'], job_initiator['party_id']) } submit_result.update(path_dict) return submit_result
def submit_job(job_data): job_id = generate_job_id() schedule_logger(job_id).info('submit job, job_id {}, body {}'.format(job_id, job_data)) job_dsl = job_data.get('job_dsl', {}) job_runtime_conf = job_data.get('job_runtime_conf', {}) job_utils.check_pipeline_job_runtime_conf(job_runtime_conf) job_parameters = job_runtime_conf['job_parameters'] job_initiator = job_runtime_conf['initiator'] job_type = job_parameters.get('job_type', '') if job_type != 'predict': # generate job model info job_parameters['model_id'] = '#'.join([dtable_utils.all_party_key(job_runtime_conf['role']), 'model']) job_parameters['model_version'] = job_id train_runtime_conf = {} else: detect_utils.check_config(job_parameters, ['model_id', 'model_version']) # get inference dsl from pipeline model as job dsl job_tracker = Tracking(job_id=job_id, role=job_initiator['role'], party_id=job_initiator['party_id'], model_id=job_parameters['model_id'], model_version=job_parameters['model_version']) pipeline_model = job_tracker.get_output_model('pipeline') job_dsl = json_loads(pipeline_model['Pipeline'].inference_dsl) train_runtime_conf = json_loads(pipeline_model['Pipeline'].train_runtime_conf) path_dict = save_job_conf(job_id=job_id, job_dsl=job_dsl, job_runtime_conf=job_runtime_conf, train_runtime_conf=train_runtime_conf, pipeline_dsl=None) job = Job() job.f_job_id = job_id job.f_roles = json_dumps(job_runtime_conf['role']) job.f_work_mode = job_parameters['work_mode'] job.f_initiator_party_id = job_initiator['party_id'] job.f_dsl = json_dumps(job_dsl) job.f_runtime_conf = json_dumps(job_runtime_conf) job.f_train_runtime_conf = json_dumps(train_runtime_conf) job.f_run_ip = '' job.f_status = JobStatus.WAITING job.f_progress = 0 job.f_create_time = current_timestamp() initiator_role = job_initiator['role'] initiator_party_id = job_initiator['party_id'] if initiator_party_id not in job_runtime_conf['role'][initiator_role]: schedule_logger(job_id).info("initiator party id error:{}".format(initiator_party_id)) raise Exception("initiator party id error {}".format(initiator_party_id)) get_job_dsl_parser(dsl=job_dsl, runtime_conf=job_runtime_conf, train_runtime_conf=train_runtime_conf) TaskScheduler.distribute_job(job=job, roles=job_runtime_conf['role'], job_initiator=job_initiator) # push into queue job_event = job_utils.job_event(job_id, initiator_role, initiator_party_id) try: RuntimeConfig.JOB_QUEUE.put_event(job_event) except Exception as e: raise Exception('push job into queue failed') schedule_logger(job_id).info( 'submit job successfully, job id is {}, model id is {}'.format(job.f_job_id, job_parameters['model_id'])) board_url = BOARD_DASHBOARD_URL.format(job_id, job_initiator['role'], job_initiator['party_id']) logs_directory = get_job_log_directory(job_id) return job_id, path_dict['job_dsl_path'], path_dict['job_runtime_conf_path'], logs_directory, \ {'model_id': job_parameters['model_id'],'model_version': job_parameters['model_version']}, board_url
def submit(cls, job_data, job_id=None): if not job_id: job_id = job_utils.generate_job_id() schedule_logger(job_id).info('submit job, job_id {}, body {}'.format(job_id, job_data)) job_dsl = job_data.get('job_dsl', {}) job_runtime_conf = job_data.get('job_runtime_conf', {}) job_initiator = job_runtime_conf['initiator'] job_parameters = RunParameters(**job_runtime_conf['job_parameters']) cls.backend_compatibility(job_parameters=job_parameters) job_utils.check_job_runtime_conf(job_runtime_conf) if job_parameters.job_type != 'predict': # generate job model info job_parameters.model_id = model_utils.gen_model_id(job_runtime_conf['role']) job_parameters.model_version = job_id train_runtime_conf = {} else: detect_utils.check_config(job_parameters.to_dict(), ['model_id', 'model_version']) # get inference dsl from pipeline model as job dsl tracker = Tracker(job_id=job_id, role=job_initiator['role'], party_id=job_initiator['party_id'], model_id=job_parameters.model_id, model_version=job_parameters.model_version) pipeline_model = tracker.get_output_model('pipeline') if not job_dsl: job_dsl = json_loads(pipeline_model['Pipeline'].inference_dsl) train_runtime_conf = json_loads(pipeline_model['Pipeline'].train_runtime_conf) path_dict = job_utils.save_job_conf(job_id=job_id, job_dsl=job_dsl, job_runtime_conf=job_runtime_conf, train_runtime_conf=train_runtime_conf, pipeline_dsl=None) job = Job() job.f_job_id = job_id job.f_dsl = job_dsl job_runtime_conf["job_parameters"] = job_parameters.to_dict() job.f_runtime_conf = job_runtime_conf job.f_train_runtime_conf = train_runtime_conf job.f_roles = job_runtime_conf['role'] job.f_work_mode = job_parameters.work_mode job.f_initiator_role = job_initiator['role'] job.f_initiator_party_id = job_initiator['party_id'] initiator_role = job_initiator['role'] initiator_party_id = job_initiator['party_id'] if initiator_party_id not in job_runtime_conf['role'][initiator_role]: schedule_logger(job_id).info("initiator party id error:{}".format(initiator_party_id)) raise Exception("initiator party id error {}".format(initiator_party_id)) dsl_parser = schedule_utils.get_job_dsl_parser(dsl=job_dsl, runtime_conf=job_runtime_conf, train_runtime_conf=train_runtime_conf) cls.adapt_job_parameters(job_parameters=job_parameters) # update runtime conf job_runtime_conf["job_parameters"] = job_parameters.to_dict() job.f_runtime_conf = job_runtime_conf status_code, response = FederatedScheduler.create_job(job=job) if status_code != FederatedSchedulingStatusCode.SUCCESS: raise Exception("create job failed: {}".format(response)) if job_parameters.work_mode == WorkMode.CLUSTER: # Save the status information of all participants in the initiator for scheduling for role, party_ids in job_runtime_conf["role"].items(): for party_id in party_ids: if role == job_initiator['role'] and party_id == job_initiator['party_id']: continue JobController.initialize_tasks(job_id, role, party_id, False, job_initiator, job_parameters, dsl_parser) # push into queue try: JobQueue.create_event(job_id=job_id, initiator_role=initiator_role, initiator_party_id=initiator_party_id) except Exception as e: raise Exception(f'push job into queue failed:\n{e}') schedule_logger(job_id).info( 'submit job successfully, job id is {}, model id is {}'.format(job.f_job_id, job_parameters.model_id)) board_url = "http://{}:{}{}".format( ServiceUtils.get_item("fateboard", "host"), ServiceUtils.get_item("fateboard", "port"), FATE_BOARD_DASHBOARD_ENDPOINT).format(job_id, job_initiator['role'], job_initiator['party_id']) logs_directory = job_utils.get_job_log_directory(job_id) return job_id, path_dict['job_dsl_path'], path_dict['job_runtime_conf_path'], logs_directory, \ {'model_id': job_parameters.model_id, 'model_version': job_parameters.model_version}, board_url