Ejemplo n.º 1
0
def execute_tuning(data: Dict[str, Any]) -> dict:
    """Get configuration."""
    from lpot.ux.utils.workload.workload import Workload

    if not str(data.get("id", "")):
        message = "Missing request id."
        mq.post_error(
            "tuning_finish",
            {
                "message": message,
                "code": 404
            },
        )
        raise Exception(message)

    request_id: str = data["id"]
    workdir = Workdir(request_id=request_id)
    workload_path: str = workdir.workload_path
    try:
        workload_data = load_json(os.path.join(workload_path,
                                               "workload.json"), )
    except Exception as err:
        mq.post_error(
            "tuning_finish",
            {
                "message": repr(err),
                "code": 404,
                "id": request_id
            },
        )
        raise err
    workload = Workload(workload_data)
    tuning: Tuning = Tuning(workload, workdir.workload_path,
                            workdir.template_path)
    send_data = {
        "message": "started",
        "id": request_id,
        "size_fp32": get_size(tuning.model_path),
    }
    workdir.clean_logs()
    workdir.update_data(
        request_id=request_id,
        model_path=tuning.model_path,
        model_output_path=tuning.model_output_path,
        status="wip",
    )

    executor = Executor(
        workspace_path=workload_path,
        subject="tuning",
        data=send_data,
        log_name="output",
    )

    proc = executor.call(tuning.command, )
    tuning_time = executor.process_duration
    if tuning_time:
        tuning_time = round(tuning_time, 2)
    log.debug(f"Elapsed time: {tuning_time}")
    logs = [os.path.join(workload_path, "output.txt")]
    parser = Parser(logs)
    if proc.is_ok:
        response_data = parser.process()

        if isinstance(response_data, dict):
            response_data["id"] = request_id
            response_data["tuning_time"] = tuning_time
            response_data["size_int8"] = get_size(tuning.model_output_path)
            response_data["model_output_path"] = tuning.model_output_path
            response_data["size_fp32"] = get_size(tuning.model_path)
            response_data["is_custom_dataloader"] = bool(workdir.template_path)

            workdir.update_data(
                request_id=request_id,
                model_path=tuning.model_path,
                model_output_path=tuning.model_output_path,
                metric=response_data,
                status="success",
                execution_details={"tuning": tuning.serialize()},
            )
            response_data["execution_details"] = {"tuning": tuning.serialize()}

        log.debug(f"Parsed data is {json.dumps(response_data)}")
        mq.post_success("tuning_finish", response_data)
        return response_data
    else:
        log.debug("FAIL")
        workdir.update_data(
            request_id=request_id,
            model_path=tuning.model_path,
            status="error",
        )
        mq.post_failure("tuning_finish", {
            "message": "failed",
            "id": request_id
        })
        raise ClientErrorException("Tuning failed during execution.")
Ejemplo n.º 2
0
def execute_optimization(data: Dict[str, Any]) -> dict:
    """Get configuration."""
    from lpot.ux.utils.workload.workload import Workload

    if not str(data.get("id", "")):
        message = "Missing request id."
        mq.post_error(
            "optimization_finish",
            {"message": message, "code": 404},
        )
        raise Exception(message)

    request_id: str = data["id"]
    workdir = Workdir(request_id=request_id, overwrite=False)
    workload_path: str = workdir.workload_path
    try:
        workload_data = _load_json_as_dict(
            os.path.join(workload_path, "workload.json"),
        )
    except Exception as err:
        mq.post_error(
            "optimization_finish",
            {"message": repr(err), "code": 404, "id": request_id},
        )
        raise err
    workload = Workload(workload_data)
    optimization: Optimization = OptimizationFactory.get_optimization(
        workload,
        workdir.template_path,
    )
    send_data = {
        "message": "started",
        "id": request_id,
        "size_input_model": get_size(optimization.input_graph),
    }
    workdir.clean_logs()
    workdir.update_data(
        request_id=request_id,
        model_path=optimization.input_graph,
        input_precision=optimization.input_precision,
        model_output_path=optimization.output_graph,
        output_precision=optimization.output_precision,
        status="wip",
    )

    executor = Executor(
        workspace_path=workload_path,
        subject="optimization",
        data=send_data,
        log_name="output",
    )

    proc = executor.call(
        optimization.command,
    )
    optimization_time = executor.process_duration
    if optimization_time:
        optimization_time = round(optimization_time, 2)
    log.debug(f"Elapsed time: {optimization_time}")
    logs = [os.path.join(workload_path, "output.txt")]
    parser = OptimizationParser(logs)
    if proc.is_ok:
        response_data = parser.process()

        if isinstance(response_data, dict):
            response_data["id"] = request_id
            response_data["optimization_time"] = optimization_time
            response_data["size_optimized_model"] = get_size(optimization.output_graph)
            response_data["model_output_path"] = optimization.output_graph
            response_data["size_input_model"] = get_size(optimization.input_graph)
            response_data["is_custom_dataloader"] = bool(workdir.template_path)

            workdir.update_data(
                request_id=request_id,
                model_path=optimization.input_graph,
                model_output_path=optimization.output_graph,
                metric=response_data,
                status="success",
                execution_details={"optimization": optimization.serialize()},
                input_precision=optimization.input_precision,
                output_precision=optimization.output_precision,
            )
            response_data["execution_details"] = {"optimization": optimization.serialize()}

        log.debug(f"Parsed data is {json.dumps(response_data)}")
        mq.post_success("optimization_finish", response_data)
        return response_data
    else:
        log.debug("FAIL")
        workdir.update_data(
            request_id=request_id,
            model_path=optimization.input_graph,
            input_precision=optimization.input_precision,
            output_precision=optimization.output_precision,
            status="error",
        )
        mq.post_failure("optimization_finish", {"message": "failed", "id": request_id})
        raise ClientErrorException("Optimization failed during execution.")