File: qgroupnorm_test.py

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import operator_benchmark as op_bench
import torch


"""Microbenchmarks for quantized groupnorm operator."""

groupnorm_configs_short = op_bench.cross_product_configs(
    dims=(
        (32, 8, 16),
        (32, 8, 56, 56),
    ),
    num_groups=(2, 4),
    dtype=(torch.qint8,),
    tags=["short"],
)


class QGroupNormBenchmark(op_bench.TorchBenchmarkBase):

    def init(self, dims, num_groups, dtype):
        X = (torch.rand(*dims) - 0.5) * 256
        num_channels = dims[1]
        scale = 1.0
        zero_point = 0

        self.inputs = {
            "qX": torch.quantize_per_tensor(
                X, scale=scale, zero_point=zero_point, dtype=dtype),
            "num_groups": num_groups,
            "weight": torch.rand(num_channels, dtype=torch.float),
            "bias": torch.rand(num_channels, dtype=torch.float),
            "eps": 1e-5,
            "Y_scale": 0.1,
            "Y_zero_point": 0
        }

    def forward(self, qX, num_groups: int, weight, bias, eps: float, Y_scale: float, Y_zero_point: int):
        return torch.ops.quantized.group_norm(
            qX, num_groups, weight=weight, bias=bias,
            eps=eps, output_scale=Y_scale,
            output_zero_point=Y_zero_point)


op_bench.generate_pt_test(groupnorm_configs_short, QGroupNormBenchmark)


if __name__ == "__main__":
    op_bench.benchmark_runner.main()