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#include <catch2/catch_test_macros.hpp>

#include <random>

#include "../utils/helpers.h"

#include <cudnn_frontend.h>

TEST_CASE("Int8 Matmul", "[matmul][graph]") {
    if (cudnnGetCudartVersion() < 12000) {
        SKIP("Test requires cuda toolkit 12.0 or above");
    }
    namespace fe = cudnn_frontend;

    // matmul problem size
    int64_t const b = 16;
    int64_t const m = 32;
    int64_t const n = 64;
    int64_t const k = 128;

    // Initialize input tensors
    Surface<int8_t> A_gpu(b * m * k, false);
    // note this is a bf16 tensor, but half is used just for memory allocation
    Surface<int8_t> B_gpu(b * k * n, false);

    // Make cudnn graph
    fe::graph::Graph graph{};

    // Create the two non-virtual input tensors A and B.
    // There are read from global memory.
    auto A_attributes = fe::graph::Tensor_attributes()
                            .set_name("A")
                            .set_dim({b, m, k})
                            .set_stride({m * k, k, 1})
                            .set_data_type(fe::DataType_t::INT8);
    auto A            = graph.tensor(A_attributes);
    auto B_attributes = fe::graph::Tensor_attributes()
                            .set_name("B")
                            .set_dim({b, k, n})
                            .set_stride({k * n, 1, n})
                            .set_data_type(fe::DataType_t::INT8);
    auto B = graph.tensor(B_attributes);

    auto Bias_attributes = cudnn_frontend::graph::Tensor_attributes()
                               .set_name("Bias")
                               .set_dim({b, m, n})
                               .set_data_type(cudnn_frontend::DataType_t::FLOAT)
                               .set_stride({m * n, n, 1});
    auto Bias = graph.tensor(Bias_attributes);

    // Add MATMUL operation
    auto matmul_attributes = cudnn_frontend::graph::Matmul_attributes()
                                 .set_compute_data_type(cudnn_frontend::DataType_t::INT32)
                                 .set_name("GEMM");
    auto C = graph.matmul(A, B, matmul_attributes);
    C->set_data_type(cudnn_frontend::DataType_t::FLOAT);

    // Add ADD operation
    auto add_attributes = cudnn_frontend::graph::Pointwise_attributes()
                              .set_name("pw1_add")
                              .set_mode(cudnn_frontend::PointwiseMode_t::ADD)
                              .set_compute_data_type(cudnn_frontend::DataType_t::FLOAT);
    auto C_after_add = graph.pointwise(C, Bias, add_attributes);
    C_after_add->set_output(true).set_data_type(cudnn_frontend::DataType_t::FLOAT);
    REQUIRE(graph.validate().is_good());

    // Create a unique_ptr for the cuDNN handle
    auto handle_ptr = create_cudnn_handle();
    auto handle     = *handle_ptr;

    REQUIRE(graph.build_operation_graph(handle).is_good());
    REQUIRE(graph.create_execution_plans({fe::HeurMode_t::A}).is_good());

    if (check_device_arch_newer_than("ampere") && cudnnGetVersion() >= 8906) {
        REQUIRE(graph.check_support(handle).is_good());
    } else {
        SKIP("int8 gemm not supported pre-Ampere or pre-cudnn-8.9.6");
    }

    REQUIRE(graph.build_plans(handle, fe::BuildPlanPolicy_t::HEURISTICS_CHOICE).is_good());

    // Run cudnn graph
    // note this is a bf16 tensor, but half is used just for memory allocation
    Surface<float> C_gpu(b * m * n, false);
    Surface<float> Bias_gpu(b * m * n, false);
    int64_t workspace_size;
    REQUIRE(graph.get_workspace_size(workspace_size).is_good());
    Surface<int8_t> workspace(workspace_size, false);

    std::unordered_map<std::shared_ptr<fe::graph::Tensor_attributes>, void*> variant_pack = {
        {A, A_gpu.devPtr}, {B, B_gpu.devPtr}, {C_after_add, C_gpu.devPtr}, {Bias, Bias_gpu.devPtr}};

    std::cout << graph.print() << std::endl;
    REQUIRE(graph.execute(handle, variant_pack, workspace.devPtr).is_good());
}