import hipdnn import torch def build_bacthnorm_inference_graph( hipdnn_handle, torch_tensor_x, torch_tensor_scale, torch_tensor_bias, torch_tensor_mean, torch_tensor_variance, torch_tensor_epsilon, 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="bacthNorm_inference", ) # Create hipdnn tensors hipdnn_tensor_x = graph.tensor_like(torch_tensor_x) hipdnn_tensor_scale = graph.tensor_like(torch_tensor_scale) hipdnn_tensor_bias = graph.tensor_like(torch_tensor_bias) hipdnn_tensor_mean = graph.tensor_like(torch_tensor_mean) hipdnn_tensor_variance = graph.tensor_like(torch_tensor_variance) hipdnn_tensor_epsilon = graph.tensor_like(torch_tensor_epsilon) hipdnn_tensor_epsilon.set_value(1e-5) # Create batchnorm op hipdnn_tensor_y = graph.batchnorm_inference_ext( input=hipdnn_tensor_x, mean=hipdnn_tensor_mean, variance=hipdnn_tensor_variance, scale=hipdnn_tensor_scale, bias=hipdnn_tensor_bias, epsilon=hipdnn_tensor_epsilon, ) hipdnn_tensor_y.set_output(True) graph.build(hipdnn_handle) return ( graph, hipdnn_tensor_x, hipdnn_tensor_scale, hipdnn_tensor_bias, hipdnn_tensor_mean, hipdnn_tensor_variance, hipdnn_tensor_epsilon, hipdnn_tensor_y, ) if __name__ == "__main__": # Input dimensions n = 4 # Batch size c = 16 # Number of input channels h = 56 # Height w = 56 # 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.float32, device="cuda") torch_tensor_bias = torch.rand(1, c, 1, 1, dtype=torch.float32, device="cuda") torch_tensor_mean = torch.rand(1, c, 1, 1, dtype=torch.float32, device="cuda") torch_tensor_variance = torch.rand(1, c, 1, 1, dtype=torch.float32, device="cuda") torch_tensor_epsilon = torch.full( (1, 1, 1, 1), 1e-5, dtype=torch.float32, requires_grad=False, device="cuda" ) hipdnn_handle = hipdnn.create_handle() ( graph, hipdnn_tensor_x, hipdnn_tensor_scale, hipdnn_tensor_bias, hipdnn_tensor_mean, hipdnn_tensor_variance, hipdnn_tensor_epsilon, hipdnn_tensor_y, ) = build_bacthnorm_inference_graph( hipdnn_handle, torch_tensor_x, torch_tensor_scale, torch_tensor_bias, torch_tensor_mean, torch_tensor_variance, torch_tensor_epsilon, hipdnn_data_type, ) torch_tensor_y = torch.empty(hipdnn_tensor_y.get_dim(), dtype=torch_data_type, device="cuda") variant_pack = { hipdnn_tensor_x: torch_tensor_x.data_ptr(), hipdnn_tensor_mean: torch_tensor_mean.data_ptr(), hipdnn_tensor_variance: torch_tensor_variance.data_ptr(), hipdnn_tensor_scale: torch_tensor_scale.data_ptr(), hipdnn_tensor_bias: torch_tensor_bias.data_ptr(), hipdnn_tensor_epsilon: torch_tensor_epsilon.data_ptr(), hipdnn_tensor_y: torch_tensor_y.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("BatchNorm inference graph execution complete.")