- Naive GEMM kernel: one thread per output element (F32 + BF16) - Tiled GEMM kernel: 32x32 shared memory tiles (F32 + BF16) - cuBLAS wrapper: cublasGemmEx with row-major trick - GemmBackend enum for runtime backend selection - CublasContext RAII handle - Made error::check public for cross-crate use - 17 GEMM tests: small/medium/rect sizes, all backends, F32+BF16 - Cross-backend consistency verified (naive vs tiled vs cuBLAS) - All 44 tests pass across all crates Co-Authored-By: Claude Opus 4.6 (1M context) <noreply@anthropic.com>
153 lines
5.1 KiB
Rust
153 lines
5.1 KiB
Rust
use half::bf16;
|
|
use xserv_kernels::{matmul, GemmBackend};
|
|
use xserv_tensor::{Device, Tensor};
|
|
|
|
fn cpu_matmul_f32(a: &[f32], b: &[f32], m: usize, n: usize, k: usize) -> Vec<f32> {
|
|
let mut c = vec![0.0f32; m * n];
|
|
for i in 0..m {
|
|
for j in 0..n {
|
|
let mut sum = 0.0f32;
|
|
for kk in 0..k {
|
|
sum += a[i * k + kk] * b[kk * n + j];
|
|
}
|
|
c[i * n + j] = sum;
|
|
}
|
|
}
|
|
c
|
|
}
|
|
|
|
fn check_close_f32(result: &[f32], expected: &[f32], atol: f32) {
|
|
assert_eq!(result.len(), expected.len());
|
|
for (i, (r, e)) in result.iter().zip(expected).enumerate() {
|
|
assert!(
|
|
(r - e).abs() <= atol,
|
|
"mismatch at index {i}: got {r}, expected {e}, diff {}",
|
|
(r - e).abs()
|
|
);
|
|
}
|
|
}
|
|
|
|
fn check_close_bf16(result: &[bf16], expected: &[f32], atol: f32) {
|
|
assert_eq!(result.len(), expected.len());
|
|
for (i, (r, e)) in result.iter().zip(expected).enumerate() {
|
|
let rv = r.to_f32();
|
|
assert!(
|
|
(rv - e).abs() <= atol,
|
|
"mismatch at index {i}: got {rv}, expected {e}, diff {}",
|
|
(rv - e).abs()
|
|
);
|
|
}
|
|
}
|
|
|
|
fn run_gemm_test_f32(backend: GemmBackend, m: usize, n: usize, k: usize) {
|
|
xserv_cuda::device::set_device(0).unwrap();
|
|
|
|
let a_data: Vec<f32> = (0..m * k).map(|i| ((i % 7) as f32 - 3.0) * 0.1).collect();
|
|
let b_data: Vec<f32> = (0..k * n).map(|i| ((i % 11) as f32 - 5.0) * 0.1).collect();
|
|
let expected = cpu_matmul_f32(&a_data, &b_data, m, n, k);
|
|
|
|
let a = Tensor::from_slice(&a_data, &[m, k]).to_device(Device::Cuda(0));
|
|
let b = Tensor::from_slice(&b_data, &[k, n]).to_device(Device::Cuda(0));
|
|
let c = matmul(&a, &b, backend);
|
|
|
|
let c_cpu = c.to_device(Device::Cpu);
|
|
check_close_f32(c_cpu.as_slice::<f32>(), &expected, 1e-4);
|
|
}
|
|
|
|
fn run_gemm_test_bf16(backend: GemmBackend, m: usize, n: usize, k: usize) {
|
|
xserv_cuda::device::set_device(0).unwrap();
|
|
|
|
let a_f32: Vec<f32> = (0..m * k).map(|i| ((i % 7) as f32 - 3.0) * 0.1).collect();
|
|
let b_f32: Vec<f32> = (0..k * n).map(|i| ((i % 11) as f32 - 5.0) * 0.1).collect();
|
|
let expected = cpu_matmul_f32(&a_f32, &b_f32, m, n, k);
|
|
|
|
let a_data: Vec<bf16> = a_f32.iter().map(|&v| bf16::from_f32(v)).collect();
|
|
let b_data: Vec<bf16> = b_f32.iter().map(|&v| bf16::from_f32(v)).collect();
|
|
|
|
let a = Tensor::from_slice(&a_data, &[m, k]).to_device(Device::Cuda(0));
|
|
let b = Tensor::from_slice(&b_data, &[k, n]).to_device(Device::Cuda(0));
|
|
let c = matmul(&a, &b, backend);
|
|
|
|
let c_cpu = c.to_device(Device::Cpu);
|
|
check_close_bf16(c_cpu.as_slice::<bf16>(), &expected, 0.1);
|
|
}
|
|
|
|
// --- F32 tests ---
|
|
|
|
#[test]
|
|
fn test_gemm_naive_f32_small() { run_gemm_test_f32(GemmBackend::Naive, 4, 4, 4); }
|
|
|
|
#[test]
|
|
fn test_gemm_naive_f32_medium() { run_gemm_test_f32(GemmBackend::Naive, 64, 64, 64); }
|
|
|
|
#[test]
|
|
fn test_gemm_naive_f32_rect() { run_gemm_test_f32(GemmBackend::Naive, 32, 64, 48); }
|
|
|
|
#[test]
|
|
fn test_gemm_tiled_f32_small() { run_gemm_test_f32(GemmBackend::Tiled, 4, 4, 4); }
|
|
|
|
#[test]
|
|
fn test_gemm_tiled_f32_medium() { run_gemm_test_f32(GemmBackend::Tiled, 128, 128, 128); }
|
|
|
|
#[test]
|
|
fn test_gemm_tiled_f32_rect() { run_gemm_test_f32(GemmBackend::Tiled, 65, 33, 97); }
|
|
|
|
#[test]
|
|
fn test_gemm_cublas_f32_small() { run_gemm_test_f32(GemmBackend::CuBlas, 4, 4, 4); }
|
|
|
|
#[test]
|
|
fn test_gemm_cublas_f32_medium() { run_gemm_test_f32(GemmBackend::CuBlas, 256, 256, 256); }
|
|
|
|
#[test]
|
|
fn test_gemm_cublas_f32_rect() { run_gemm_test_f32(GemmBackend::CuBlas, 65, 33, 97); }
|
|
|
|
// --- BF16 tests ---
|
|
|
|
#[test]
|
|
fn test_gemm_naive_bf16_small() { run_gemm_test_bf16(GemmBackend::Naive, 4, 4, 4); }
|
|
|
|
#[test]
|
|
fn test_gemm_naive_bf16_medium() { run_gemm_test_bf16(GemmBackend::Naive, 64, 64, 64); }
|
|
|
|
#[test]
|
|
fn test_gemm_tiled_bf16_small() { run_gemm_test_bf16(GemmBackend::Tiled, 4, 4, 4); }
|
|
|
|
#[test]
|
|
fn test_gemm_tiled_bf16_medium() { run_gemm_test_bf16(GemmBackend::Tiled, 128, 128, 128); }
|
|
|
|
#[test]
|
|
fn test_gemm_cublas_bf16_small() { run_gemm_test_bf16(GemmBackend::CuBlas, 4, 4, 4); }
|
|
|
|
#[test]
|
|
fn test_gemm_cublas_bf16_medium() { run_gemm_test_bf16(GemmBackend::CuBlas, 256, 256, 256); }
|
|
|
|
// --- Larger benchmark-style tests ---
|
|
|
|
#[test]
|
|
fn test_gemm_cublas_f32_1024() { run_gemm_test_f32(GemmBackend::CuBlas, 1024, 1024, 1024); }
|
|
|
|
#[test]
|
|
fn test_gemm_consistency_all_backends() {
|
|
xserv_cuda::device::set_device(0).unwrap();
|
|
|
|
let m = 64;
|
|
let n = 64;
|
|
let k = 64;
|
|
let a_data: Vec<f32> = (0..m * k).map(|i| ((i % 7) as f32 - 3.0) * 0.1).collect();
|
|
let b_data: Vec<f32> = (0..k * n).map(|i| ((i % 11) as f32 - 5.0) * 0.1).collect();
|
|
|
|
let a = Tensor::from_slice(&a_data, &[m, k]).to_device(Device::Cuda(0));
|
|
let b = Tensor::from_slice(&b_data, &[k, n]).to_device(Device::Cuda(0));
|
|
|
|
let c_naive = matmul(&a, &b, GemmBackend::Naive).to_device(Device::Cpu);
|
|
let c_tiled = matmul(&a, &b, GemmBackend::Tiled).to_device(Device::Cpu);
|
|
let c_cublas = matmul(&a, &b, GemmBackend::CuBlas).to_device(Device::Cpu);
|
|
|
|
let naive = c_naive.as_slice::<f32>();
|
|
let tiled = c_tiled.as_slice::<f32>();
|
|
let cublas = c_cublas.as_slice::<f32>();
|
|
|
|
check_close_f32(naive, cublas, 1e-4);
|
|
check_close_f32(tiled, cublas, 1e-4);
|
|
}
|