Beispiel #1
0
def get_component_model(job_id, component_name, task_version, task_id, role,
                        party_id):
    request_data = request.json
    model_id = request_data.get("model_id")
    model_version = request_data.get("model_version")
    tracker = Tracker(job_id=job_id,
                      component_name=component_name,
                      task_id=task_id,
                      task_version=task_version,
                      role=role,
                      party_id=party_id,
                      model_id=model_id,
                      model_version=model_version)
    data = tracker.get_output_model(
        model_alias=request_data.get("search_model_alias"), parse=False)
    return get_json_result(data=data)
Beispiel #2
0
def component_output_model():
    request_data = request.json
    check_request_parameters(request_data)
    job_dsl, job_runtime_conf, runtime_conf_on_party, train_runtime_conf = job_utils.get_job_configuration(job_id=request_data['job_id'],
                                                                                                           role=request_data['role'],
                                                                                                           party_id=request_data['party_id'])
    try:
        model_id = runtime_conf_on_party['job_parameters']['model_id']
        model_version = runtime_conf_on_party['job_parameters']['model_version']
    except Exception as e:
        job_dsl, job_runtime_conf, train_runtime_conf = job_utils.get_model_configuration(job_id=request_data['job_id'],
                                                                                          role=request_data['role'],
                                                                                          party_id=request_data['party_id'])
        if any([job_dsl, job_runtime_conf, train_runtime_conf]):
            adapter = JobRuntimeConfigAdapter(job_runtime_conf)
            model_id = adapter.get_common_parameters().to_dict().get('model_id')
            model_version = adapter.get_common_parameters().to_dict.get('model_version')
        else:
            stat_logger.exception(e)
            stat_logger.error(f"Can not find model info by filters: job id: {request_data.get('job_id')}, "
                              f"role: {request_data.get('role')}, party id: {request_data.get('party_id')}")
            raise Exception(f"Can not find model info by filters: job id: {request_data.get('job_id')}, "
                            f"role: {request_data.get('role')}, party id: {request_data.get('party_id')}")

    tracker = Tracker(job_id=request_data['job_id'], component_name=request_data['component_name'],
                      role=request_data['role'], party_id=request_data['party_id'], model_id=model_id,
                      model_version=model_version)
    dag = schedule_utils.get_job_dsl_parser(dsl=job_dsl, runtime_conf=job_runtime_conf,
                                            train_runtime_conf=train_runtime_conf)
    component = dag.get_component_info(request_data['component_name'])
    output_model_json = {}
    # There is only one model output at the current dsl version.
    output_model = tracker.get_output_model(component.get_output()['model'][0] if component.get_output().get('model') else 'default')
    for buffer_name, buffer_object in output_model.items():
        if buffer_name.endswith('Param'):
            output_model_json = json_format.MessageToDict(buffer_object, including_default_value_fields=True)
    if output_model_json:
        component_define = tracker.get_component_define()
        this_component_model_meta = {}
        for buffer_name, buffer_object in output_model.items():
            if buffer_name.endswith('Meta'):
                this_component_model_meta['meta_data'] = json_format.MessageToDict(buffer_object,
                                                                                   including_default_value_fields=True)
        this_component_model_meta.update(component_define)
        return get_json_result(retcode=0, retmsg='success', data=output_model_json, meta=this_component_model_meta)
    else:
        return get_json_result(retcode=0, retmsg='no data', data={})
Beispiel #3
0
    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