#include #include "utils.hpp" #include #include #include int main() { using InputType = float; const int64_t n = 1; // Batch size // Input const int64_t c = 16; // Number of channels const int64_t h = 16; // Height const int64_t w = 16; // Width auto buildGroupnormSwishGraph = [=](hipdnnHandle_t handle) { auto graph = std::make_shared(); graph->set_name("group_norm_swish_graph") .set_io_data_type(hipdnn_frontend::getDataTypeEnumFromType()) .set_intermediate_data_type(hipdnn_frontend::getDataTypeEnumFromType()) .set_compute_data_type(hipdnn_frontend::DataType::FLOAT); // // create groupnorm auto input = std::make_shared( hipdnn_frontend::graph::Tensor_attributes() .set_name("input") .set_dim({n, c, h, w}) .set_stride({c * h * w, h * w, w, 1})); auto scale = std::make_shared( hipdnn_frontend::graph::Tensor_attributes().set_name("scale").set_dim({c}).set_stride( {1})); auto bias = std::make_shared( hipdnn_frontend::graph::Tensor_attributes().set_name("bias").set_dim({c}).set_stride( {1})); auto epsilon = std::make_shared( hipdnn_frontend::graph::Tensor_attributes() .set_name("epsilon") .set_dim({1}) .set_stride({1}) .set_data_type(hipdnn_frontend::DataType::FLOAT)); auto groups = std::make_shared( hipdnn_frontend::graph::Tensor_attributes() .set_name("groups") .set_dim({1}) .set_stride({1}) .set_data_type(hipdnn_frontend::DataType::INT32)); epsilon->set_value(1e-5); groups->set_value(2); auto groupnormFwdAttributes = hipdnn_frontend::graph::GroupnormFwdAttributes() .set_name("groupnorm_forward_node") .set_epsilon(epsilon) .set_groups(groups) .set_forward_phase(hipdnn_frontend::NormFwdPhase_t::TRAINING); auto [y, mean, inv_variance] = graph->groupnorm(input, scale, bias, groupnormFwdAttributes); mean->set_output(true); inv_variance->set_output(true); // create swish auto swishAttributes = hipdnn_frontend::graph::PointwiseAttributes().set_mode( hipdnn_frontend::PointwiseMode_t::SWISH_FWD); auto output = graph->pointwise(y, swishAttributes); output->set_output(true); // build graph HIPDNN_FE_CHECK(graph->build(handle)); return std::make_tuple(graph, input, scale, bias, mean, inv_variance, output); }; auto backend = hipdnn_frontend::detail::hipdnnBackend(); if(!backend) { std::cout << "Creat backend failed. \n"; return 1; } hipdnnHandle_t handle; HIPDNN_CHECK(backend->create(&handle)); auto [graph, input, scale, bias, mean, inv_variance, output] = buildGroupnormSwishGraph(handle); // Allocate DCU memory hipdnn_data_sdk::utilities::Tensor inputTensor(input->get_dim(), input->get_stride()); hipdnn_data_sdk::utilities::Tensor scaleTensor(scale->get_dim(), scale->get_stride()); hipdnn_data_sdk::utilities::Tensor biasTensor(bias->get_dim(), bias->get_stride()); hipdnn_data_sdk::utilities::Tensor meanTensor(mean->get_dim(), mean->get_stride()); hipdnn_data_sdk::utilities::Tensor invVarianceTensor(inv_variance->get_dim(), inv_variance->get_stride()); hipdnn_data_sdk::utilities::Tensor outTensor(output->get_dim(), output->get_stride()); std::unordered_map variantPack; variantPack[input->get_uid()] = inputTensor.memory().deviceData(); variantPack[scale->get_uid()] = scaleTensor.memory().deviceData(); variantPack[bias->get_uid()] = biasTensor.memory().deviceData(); variantPack[mean->get_uid()] = meanTensor.memory().deviceData(); variantPack[inv_variance->get_uid()] = invVarianceTensor.memory().deviceData(); variantPack[output->get_uid()] = outTensor.memory().deviceData(); int64_t workspaceSize = 0; HIPDNN_FE_CHECK(graph->get_workspace_size(workspaceSize)); const hipdnn_data_sdk::utilities::Workspace workspace(static_cast(workspaceSize)); HIPDNN_FE_CHECK(graph->execute(handle, variantPack, workspace.get())); std::cout << "groupnorm_swish graph execution complete. \n"; HIPDNN_CHECK(backend->destroy(handle)); return 0; }