test+bins: flash grad-check, flash==composed, PyTorch parity, --flash flag
autograd: flash_attention_batched_bwd (dQ/dK/dV finite-diff, seq>tile) + flash_matches_composed_fwd. model/tests/flash.rs: flash==composed on-vs-off (logits/loss/every param grad), fp32 + bf16. parity_dump: XTRAIN_PARITY_FLASH dumps the flash path for the same parity.py oracle (PyTorch SDPA parity at B>1). train + train_ddp get the --flash flag. Co-Authored-By: Claude Opus 4.8 <noreply@anthropic.com>
This commit is contained in:
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crates/xtrain-model/tests/flash.rs
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157
crates/xtrain-model/tests/flash.rs
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// T14 flash-attention correctness gate: the fused flash SDPA core must match the
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// composed T10 path (cublasSgemmStridedBatched×2 + causal-softmax kernel) in
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// forward logits, loss, AND every parameter gradient — flash is the SAME SDPA
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// math (online softmax never materializes the [bh,S,S] scores), so it differs
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// from composed only by reduction order (in-kernel fp32 FMA vs cuBLAS, and the
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// dK/dV atomicAdd order in backward). This test makes that a closed on-GPU loop:
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//
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// build two identical models (same init), one with `--flash` on, one off, run
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// the SAME batched loss + backward on both, and assert
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// 1. the forward logits match within tolerance
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// 2. the loss matches
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// 3. EVERY parameter's grad matches within tolerance
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//
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// Parameterised over fp32 AND bf16 (T12). bf16 just adds the bf16 rounding band on
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// top — flash's bf16 path upcasts Q/K/V to fp32 for the kernel exactly like the
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// composed path's fp32 softmax, so the two are still the same softmax numerics.
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#![cfg(not(no_cuda))]
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use xtrain_cuda::device;
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use xtrain_model::{Config, TinyTransformer, batched_ids_tensor};
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use xtrain_tensor::{DType, Device};
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fn fill(n: usize, seed: u64, scale: f32) -> Vec<f32> {
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let mut state = seed
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.wrapping_mul(2862933555777941757)
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.wrapping_add(3037000493);
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(0..n)
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.map(|_| {
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state = state
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.wrapping_mul(6364136223846793005)
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.wrapping_add(1442695040888963407);
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(((state >> 33) as f32 / (1u64 << 31) as f32) - 0.5) * 2.0 * scale
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})
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.collect()
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}
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fn build(cfg: Config, device: Device, dtype: DType, flash: bool) -> TinyTransformer {
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let mut seed = 1u64;
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let m = TinyTransformer::new(cfg, device, |shape| {
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seed = seed.wrapping_add(1);
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let n: usize = shape.iter().product();
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if shape.len() == 1 {
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fill(n, seed, 0.02).iter().map(|v| v + 1.0).collect()
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} else {
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fill(n, seed, 0.08)
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}
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});
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m.with_compute_dtype(dtype).with_flash(flash)
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}
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fn host(t: &xtrain_tensor::Tensor) -> Vec<f32> {
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t.to_dtype(DType::F32)
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.to_device(Device::Cpu)
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.as_slice::<f32>()
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.to_vec()
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}
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fn run(dtype: DType, logit_tol: f32, grad_tol: f32) {
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assert!(device::device_count().unwrap() > 0, "no CUDA device");
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device::set_device(0).unwrap();
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let device = Device::Cuda(0);
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// seq=40 > FA_TILE=32 so the online-softmax tile-rescale path is exercised.
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let mut cfg = Config::tiny();
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cfg.vocab = 16;
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cfg.n_layers = 4;
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let batch = 3usize;
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let seq = 40usize;
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let seqs: Vec<Vec<i32>> = (0..batch)
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.map(|b| {
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(0..seq)
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.map(|i| ((b * 7 + i * 3 + 1) % cfg.vocab) as i32)
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.collect()
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})
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.collect();
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let tgts: Vec<Vec<i32>> = (0..batch)
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.map(|b| {
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(0..seq)
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.map(|i| ((b * 5 + i * 2 + 2) % cfg.vocab) as i32)
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.collect()
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})
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.collect();
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let ids = batched_ids_tensor(&seqs, device);
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let tgt = batched_ids_tensor(&tgts, device);
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// --- flash OFF (composed reference) ---
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let off = build(cfg, device, dtype, false);
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let off_logits = host(&off.forward_batched(&ids, batch).value());
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let off_loss = off.loss_batched(&ids, &tgt, batch);
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let off_loss_val = host(&off_loss.value())[0];
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off_loss.backward();
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let off_grads: Vec<Vec<f32>> = off
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.params()
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.iter()
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.map(|p| host(&p.grad().expect("off grad")))
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.collect();
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// --- flash ON ---
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let on = build(cfg, device, dtype, true);
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let on_logits = host(&on.forward_batched(&ids, batch).value());
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let on_loss = on.loss_batched(&ids, &tgt, batch);
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let on_loss_val = host(&on_loss.value())[0];
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on_loss.backward();
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let on_grads: Vec<Vec<f32>> = on
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.params()
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.iter()
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.map(|p| host(&p.grad().expect("on grad")))
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.collect();
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// 1. Forward logits.
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let logit_rel = off_logits
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.iter()
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.zip(&on_logits)
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.map(|(a, b)| (a - b).abs() / a.abs().max(1e-4))
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.fold(0.0f32, f32::max);
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// 2. Loss.
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let loss_rel = (off_loss_val - on_loss_val).abs() / off_loss_val.abs().max(1e-4);
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println!(
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"[{dtype:?}] flash on/off: loss {off_loss_val:.6}/{on_loss_val:.6} (rel {loss_rel:.2e}), \
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logits max rel {logit_rel:.2e}"
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);
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assert!(
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logit_rel < logit_tol,
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"[{dtype:?}] logits diverged: {logit_rel:.2e}"
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);
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assert!(
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loss_rel < logit_tol,
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"[{dtype:?}] loss diverged: {loss_rel:.2e}"
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);
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// 3. Every parameter grad — the load-bearing gate.
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let mut max_grad_rel = 0.0f32;
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for (off_g, on_g) in off_grads.iter().zip(&on_grads) {
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for (a, b) in off_g.iter().zip(on_g) {
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let rel = (a - b).abs() / a.abs().max(1e-3);
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max_grad_rel = max_grad_rel.max(rel);
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}
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}
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println!("[{dtype:?}] flash on/off: grad max rel err = {max_grad_rel:.3e}");
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assert!(
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max_grad_rel < grad_tol,
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"[{dtype:?}] flash grads diverged from composed: {max_grad_rel:.3e}"
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);
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}
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#[test]
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fn flash_matches_composed_fp32() {
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// fp32: same SDPA math, differs only by reduction order (in-kernel fp32 FMA vs
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// cuBLAS, dK/dV atomicAdd order). Tight but not bit-exact.
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run(DType::F32, 1e-3, 2e-2);
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}
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#[test]
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fn flash_matches_composed_bf16() {
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// bf16 (T12 composition): bf16 rounding band on top of the fp32-softmax core.
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run(DType::BF16, 2e-2, 5e-2);
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}
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@@ -67,7 +67,7 @@ fn dump_for_parity() {
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// Same deterministic init as the overfit test.
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let mut seed = 1u64;
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let model = TinyTransformer::new(cfg, device, |shape| {
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let mut model = TinyTransformer::new(cfg, device, |shape| {
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seed = seed.wrapping_add(1);
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let n: usize = shape.iter().product();
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if shape.len() == 1 {
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@@ -76,6 +76,14 @@ fn dump_for_parity() {
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fill(n, seed, 0.08)
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}
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});
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// T14: with XTRAIN_PARITY_FLASH set, dump from the fused flash-attention path.
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// flash is the SAME SDPA math, so the SAME parity.py PyTorch oracle is the
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// reference for both paths — running this once per path checks flash against
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// PyTorch at B>1 (forward logits + every parameter grad).
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if std::env::var("XTRAIN_PARITY_FLASH").is_ok() {
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model = model.with_flash(true);
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println!("parity: FLASH attention path");
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}
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// config + ids
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{
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