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import gradio as gr


def get_base_backend_config(backend_name="pytorch"):
    return [
        # seed
        gr.Textbox(
            value=42,
            label=f"{backend_name}.seed",
            info="Sets seed for reproducibility",
        ),
        # inter_op_num_threads
        gr.Textbox(
            value="null",
            label=f"{backend_name}.inter_op_num_threads",
            info="Use null for default and -1 for cpu_count()",
        ),
        # intra_op_num_threads
        gr.Textbox(
            value="null",
            label=f"{backend_name}.intra_op_num_threads",
            info="Use null for default and -1 for cpu_count()",
        ),
        # initial_isolation_check
        gr.Checkbox(
            value=True,
            label=f"{backend_name}.initial_isolation_check",
            info="Makes sure that initially, no other process is running on the target device",
        ),
        # continous_isolation_check
        gr.Checkbox(
            value=True,
            label=f"{backend_name}.continous_isolation_check",
            info="Makes sure that throughout the benchmark, no other process is running on the target device",
        ),
        # delete_cache
        gr.Checkbox(
            value=False,
            label=f"{backend_name}.delete_cache",
            info="Deletes model cache (weights & configs) after benchmark is done",
        ),
    ]


def get_pytorch_config():
    return get_base_backend_config(backend_name="pytorch") + [
        # no_weights
        gr.Checkbox(
            value=False,
            label="pytorch.no_weights",
            info="Generates random weights instead of downloading pretrained ones",
        ),
        # # device_map
        # gr.Dropdown(
        #     value="null",
        #
        #     label="pytorch.device_map",
        #     choices=["null", "auto", "sequential"],
        #     info="Use null for default and `auto` or `sequential` the same way as in `from_pretrained`",
        # ),
        # torch_dtype
        gr.Dropdown(
            value="null",
            label="pytorch.torch_dtype",
            choices=["null", "bfloat16", "float16", "float32", "auto"],
            info="Use null for default and `auto` for automatic dtype selection",
        ),
        # amp_autocast
        gr.Checkbox(
            value=False,
            label="pytorch.amp_autocast",
            info="Enables Pytorch's native Automatic Mixed Precision",
        ),
        # amp_dtype
        gr.Dropdown(
            value="null",
            label="pytorch.amp_dtype",
            info="Use null for default",
            choices=["null", "bfloat16", "float16"],
        ),
        # torch_compile
        gr.Checkbox(
            value=False,
            label="pytorch.torch_compile",
            info="Compiles the model with torch.compile",
        ),
        # bettertransformer
        gr.Checkbox(
            value=False,
            label="pytorch.bettertransformer",
            info="Applies optimum.BetterTransformer for fastpath anf optimized attention",
        ),
        # quantization_scheme
        gr.Dropdown(
            value="null",
            choices=["null", "gptq", "bnb"],
            label="pytorch.quantization_scheme",
            info="Use null for no quantization",
        ),
        # # use_ddp
        # gr.Checkbox(
        #     value=False,
        #
        #     label="pytorch.use_ddp",
        #     info="Uses DistributedDataParallel for multi-gpu training",
        # ),
        # peft_strategy
        gr.Textbox(
            value="null",
            label="pytorch.peft_strategy",
        ),
    ]


def get_onnxruntime_config():
    return get_base_backend_config(backend_name="onnxruntime")
    # no_weights

    # no_weights: bool = False

    # # export options
    # export: bool = True
    # use_cache: bool = True
    # use_merged: bool = False
    # torch_dtype: Optional[str] = None

    # # provider options
    # provider: str = "${infer_provider:${device}}"
    # device_id: Optional[int] = "${oc.deprecated:backend.provider_options.device_id}"
    # provider_options: Dict[str, Any] = field(default_factory=lambda: {"device_id": "${infer_device_id:${device}}"})

    # # inference options
    # use_io_binding: bool = "${is_gpu:${device}}"
    # enable_profiling: bool = "${oc.deprecated:backend.session_options.enable_profiling}"
    # session_options: Dict[str, Any] = field(
    #     default_factory=lambda: {"enable_profiling": "${is_profiling:${benchmark.name}}"}
    # )

    # # optimization options
    # optimization: bool = False
    # optimization_config: Dict[str, Any] = field(default_factory=dict)

    # # quantization options
    # quantization: bool = False
    # quantization_config: Dict[str, Any] = field(default_factory=dict)

    # # calibration options
    # calibration: bool = False
    # calibration_config: Dict[str, Any] = field(default_factory=dict)

    # # null, O1, O2, O3, O4
    # auto_optimization: Optional[str] = None
    # auto_optimization_config: Dict[str, Any] = field(default_factory=dict)

    # # null, arm64, avx2, avx512, avx512_vnni, tensorrt
    # auto_quantization: Optional[str] = None
    # auto_quantization_config: Dict[str, Any] = field(default_factory=dict)

    # # ort-training is basically a different package so we might need to seperate these two backends in the future
    # use_inference_session: bool = "${is_inference:${benchmark.name}}"

    # # training options
    # use_ddp: bool = False
    # ddp_config: Dict[str, Any] = field(default_factory=dict)

    # # peft options
    # peft_strategy: Optional[str] = None
    # peft_config: Dict[str, Any] = field(default_factory=dict)


def get_openvino_config():
    return get_base_backend_config(backend_name="openvino")


def get_neural_compressor_config():
    return get_base_backend_config(backend_name="neural-compressor")


def get_text_generation_inference_config():
    return get_base_backend_config(backend_name="text-generation-inference")


def get_inference_config():
    return [
        # duration
        gr.Textbox(
            value=10,
            label="inference.duration",
            info="Minimum duration of benchmark in seconds",
        ),
        # warmup runs
        gr.Textbox(
            value=10,
            label="inference.warmup_runs",
            info="Number of warmup runs before measurements",
        ),
        # memory
        gr.Checkbox(
            value=False,
            label="inference.memory",
            info="Measures the peak memory footprint",
        ),
        # energy
        gr.Checkbox(
            value=False,
            label="inference.energy",
            info="Measures energy consumption and carbon emissions",
        ),
        # input_shapes
        gr.Dataframe(
            type="array",
            value=[[2, 16]],
            row_count=(1, "static"),
            col_count=(2, "dynamic"),
            label="inference.input_shapes",
            headers=["batch_size", "sequence_length"],
            info="Controllable input shapes, add more columns for more inputs",
        ),
        # forward kwargs
        gr.Dataframe(
            type="array",
            value=[[False]],
            headers=["return_dict"],
            row_count=(1, "static"),
            col_count=(1, "dynamic"),
            label="inference.forward_kwargs",
            info="Keyword arguments for the forward pass, add more columns for more arguments",
        ),
    ]


def get_training_config():
    return [
        # warmup steps
        gr.Textbox(
            value=40,
            label="training.warmup_steps",
        ),
        # dataset_shapes
        gr.Dataframe(
            type="array",
            value=[[500, 16]],
            headers=["dataset_size", "sequence_length"],
            row_count=(1, "static"),
            col_count=(2, "dynamic"),
            label="training.dataset_shapes",
        ),
        # training_arguments
        gr.Dataframe(
            value=[[2]],
            type="array",
            row_count=(1, "static"),
            col_count=(1, "dynamic"),
            label="training.training_arguments",
            headers=["per_device_train_batch_size"],
        ),
    ]