instancenorm_backward.py 3.72 KB
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import hipdnn
import torch


def build_instancenorm_graph(
    hipdnn_handle,
    torch_tensor_x,
    torch_tensor_scale,
    torch_tensor_dy,
    torch_tensor_mean,
    torch_tensor_inv_var,
    hipdnn_data_type,
):
    # Create graph
    graph = hipdnn.pygraph(
        handle=hipdnn_handle,
        io_data_type=hipdnn_data_type,
        intermediate_data_type=hipdnn.data_type.FLOAT,
        compute_data_type=hipdnn.data_type.FLOAT,
        name="instancenorm_backward",
    )

    # Create hipdnn tensors
    hipdnn_tensor_x = graph.tensor_like(torch_tensor_x)
    hipdnn_tensor_scale = graph.tensor_like(torch_tensor_scale)
    hipdnn_tensor_dy = graph.tensor_like(torch_tensor_dy)
    hipdnn_tensor_mean = graph.tensor_like(torch_tensor_mean)
    hipdnn_tensor_inv_var = graph.tensor_like(torch_tensor_inv_var)

    # Create op
    hipdnn_tensor_dx, hipdnn_tensor_dbias, hipdnn_tensor_dscale = graph.instancenorm_backward(
        hipdnn_tensor_dy,
        hipdnn_tensor_x,
        hipdnn_tensor_scale,
        hipdnn_tensor_mean,
        hipdnn_tensor_inv_var,
        hipdnn.data_type.FLOAT,
        name="instancenorm_backward",
    )
    hipdnn_tensor_dx.set_output(True)
    hipdnn_tensor_dbias.set_output(True)
    hipdnn_tensor_dscale.set_output(True)
    graph.build(hipdnn_handle)

    return (
        graph,
        hipdnn_tensor_x,
        hipdnn_tensor_scale,
        hipdnn_tensor_dy,
        hipdnn_tensor_mean,
        hipdnn_tensor_inv_var,
        hipdnn_tensor_dx,
        hipdnn_tensor_dbias,
        hipdnn_tensor_dscale,
    )


if __name__ == "__main__":
    # Input dimensions
    n = 16  # Batch size
    c = 32  # Number of input channels
    h = 64  # Height
    w = 64  # Width

    hipdnn_data_type = hipdnn.data_type.FLOAT
    torch_data_type = torch.float32

    torch_tensor_x = torch.rand((n, c, h, w), dtype=torch_data_type, device="cuda")
    torch_tensor_scale = torch.rand((1, c, 1, 1), dtype=torch_data_type, device="cuda")
    torch_tensor_dy = torch.rand((n, c, h, w), dtype=torch_data_type, device="cuda")
    torch_tensor_mean = torch.rand((n, c, 1, 1), dtype=torch_data_type, device="cuda")
    torch_tensor_inv_var = torch.rand((n, c, 1, 1), dtype=torch_data_type, device="cuda")

    hipdnn_handle = hipdnn.create_handle()

    (
        graph,
        hipdnn_tensor_x,
        hipdnn_tensor_scale,
        hipdnn_tensor_dy,
        hipdnn_tensor_mean,
        hipdnn_tensor_inv_var,
        hipdnn_tensor_dx,
        hipdnn_tensor_dbias,
        hipdnn_tensor_dscale,
    ) = build_instancenorm_graph(
        hipdnn_handle,
        torch_tensor_x,
        torch_tensor_scale,
        torch_tensor_dy,
        torch_tensor_mean,
        torch_tensor_inv_var,
        hipdnn_data_type,
    )

    torch_tensor_dx = torch.empty(hipdnn_tensor_dx.get_dim(), dtype=torch_data_type, device="cuda")
    torch_tensor_dbias = torch.empty(
        hipdnn_tensor_dbias.get_dim(), dtype=torch_data_type, device="cuda"
    )
    torch_tensor_dscale = torch.empty(
        hipdnn_tensor_dscale.get_dim(), dtype=torch_data_type, device="cuda"
    )
    variant_pack = {
        hipdnn_tensor_x: torch_tensor_x.data_ptr(),
        hipdnn_tensor_scale: torch_tensor_scale.data_ptr(),
        hipdnn_tensor_dy: torch_tensor_dy.data_ptr(),
        hipdnn_tensor_mean: torch_tensor_mean.data_ptr(),
        hipdnn_tensor_inv_var: torch_tensor_inv_var.data_ptr(),
        hipdnn_tensor_dx: torch_tensor_dx.data_ptr(),
        hipdnn_tensor_dbias: torch_tensor_dbias.data_ptr(),
        hipdnn_tensor_dscale: torch_tensor_dscale.data_ptr(),
    }
    workspace = torch.empty(graph.get_workspace_size(), dtype=torch.uint8, device="cuda")

    graph.exec(variant_pack=variant_pack, workspace=workspace.data_ptr())
    print("instancenorm backward graph execution complete.")