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Improve bsr @ strided
performance in baddmm
for bfloat16/half
with Triton kernels. (#88078)
As per title. Additionally we also introduce support for: - Rectangular block sizes which are powers of 2 and at least 16 (triton's `dot` limitation). - Batch support with broadcasting for either of the arguments. Pull Request resolved: https://github.com/pytorch/pytorch/pull/88078 Approved by: https://github.com/cpuhrsch
This commit is contained in:
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PyTorch MergeBot
parent
befe815466
commit
7f256fff77
@ -6446,6 +6446,12 @@
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SparseCPU: s_addmm_sparse_dense_cpu_
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SparseCUDA: s_addmm_sparse_dense_cuda_
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- func: _triton_bsr_dense_mm(Tensor bsr, Tensor dense) -> Tensor
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variants: function
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dispatch:
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CPU: triton_bsr_dense_mm
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autogen: _triton_bsr_dense_mm.out
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- func: _addmm_activation.out(Tensor self, Tensor mat1, Tensor mat2, *, Scalar beta=1, Scalar alpha=1, bool use_gelu=False, Tensor(a!) out) -> Tensor(a!)
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structured: True
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dispatch:
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@ -4,6 +4,10 @@
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#include <ATen/native/sparse/SparseBlasImpl.h>
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#include <ATen/SparseCsrTensorUtils.h>
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// Required for checking whether Triton kernels are available
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#include <torch/csrc/jit/frontend/function_schema_parser.h>
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#include <ATen/core/dispatch/Dispatcher.h>
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#ifndef AT_PER_OPERATOR_HEADERS
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#include <ATen/Functions.h>
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#include <ATen/NativeFunctions.h>
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@ -12,6 +16,7 @@
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#include <ATen/ops/_convert_indices_from_csr_to_coo.h>
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#include <ATen/ops/empty_like.h>
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#include <ATen/ops/zeros.h>
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#include <ATen/ops/_triton_bsr_dense_mm.h>
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#endif
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namespace at {
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@ -70,6 +75,31 @@ Tensor& _compressed_row_strided_mm_out(const Tensor& compressed, const Tensor& s
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blocksize = {values.size(-2), values.size(-1)};
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}
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// No stable support for ROCM in Triton yet.
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#ifndef USE_ROCM
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// Triton works only with blocksizes which are powers of 2.
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const auto is_power_of_2 = [](int64_t v) -> bool {
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return !(v & (v - 1));
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};
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// Dtype and blocksize checks for potential Triton usage.
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if ((strided.scalar_type() == ScalarType::Half
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|| strided.scalar_type() == ScalarType::BFloat16)
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&& is_power_of_2(blocksize[0]) && is_power_of_2(blocksize[1])
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&& (blocksize[0] >= 16) && (blocksize[1] >= 16)
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// lhs is retiled to (b0, b1) while rhs is to (b1, b0),
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// so the result is tiled to (b0, b0) and we need to make
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// sure that dense.size(-1) is divisible by b0.
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&& n % blocksize[0] == 0) {
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const auto triton_kernel = c10::Dispatcher::singleton()
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.findOp(torch::jit::parseName("aten::_triton_bsr_dense_mm"));
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// Call Triton only if dispatch key was overwritten.
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if (triton_kernel->hasKernelForDispatchKey(c10::DispatchKey::SparseCsrCUDA)) {
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return at::_triton_bsr_dense_mm_out(result, compressed, strided);
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}
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}
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#endif
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// (..., r, c) -> (..., r / b0, c / b1, b0, b1)
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// NOTE: this function ALWAYS creates a view upon successful execution.
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const auto tile_tensor = [compressed_layout](
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@ -1292,5 +1292,12 @@ Tensor _sparse_csr_prod_cpu(const Tensor& input, IntArrayRef dims_to_reduce, boo
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return result;
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}
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Tensor triton_bsr_dense_mm(
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const Tensor& bsr,
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const Tensor& dense) {
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TORCH_CHECK(false, "_triton_bsr_dense_mm: Triton kernel should be overwritten in Python.");
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return Tensor {};
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}
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} // namespace native
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} // namespace at
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@ -274,6 +274,5 @@ Tensor sparse_sparse_matmul_cpu(const Tensor& mat1_, const Tensor& mat2_) {
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return output;
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}
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} // namespace native
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} // namespace at
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3
mypy.ini
3
mypy.ini
@ -188,6 +188,9 @@ ignore_errors = True
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# Third party dependencies that don't have types.
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#
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[mypy-triton.*]
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ignore_missing_imports = True
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[mypy-tensorflow.*]
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ignore_missing_imports = True
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@ -20,6 +20,7 @@ from torch.testing._internal.common_dtype import (
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floating_types, all_types_and_complex_and, floating_and_complex_types, floating_types_and,
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all_types_and_complex, floating_and_complex_types_and
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)
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from torch._inductor.utils import has_triton
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from test_sparse import CUSPARSE_SPMM_COMPLEX128_SUPPORTED
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if TEST_SCIPY:
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@ -1464,6 +1465,63 @@ class TestSparseCSR(TestCase):
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self.assertEqual(actual, out)
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self.assertEqual(actual, expected)
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@parametrize("block_size", [16, 32, 64])
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@parametrize("index_dtype", [torch.int32, torch.int64])
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@unittest.skipIf(not has_triton(), "Triton is not available")
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@skipCUDAIfRocm
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@onlyCUDA
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@dtypes(torch.half, torch.bfloat16)
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@dtypesIfCUDA(*[torch.half] if SM53OrLater else [],
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*[torch.bfloat16] if SM80OrLater else [])
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def test_triton_bsr_dense_bmm(self, device, dtype, index_dtype, block_size):
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from functools import partial
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# Note that each value in a non-zero block is in range block_size * [low^2, high^2).
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tensor = partial(make_tensor, device=device, dtype=dtype, low=0.5, high=1.5)
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# NOTE: batch dims with zero sizes are not supported in `to_sparse_bsr`.
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batches = [(), (2,)]
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size = [128, 256, 0]
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# Whether to make inputs orthogonal so that the product is zero
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make_orthogonal = [True, False]
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for bd, bs, m, n, k, is_ortho in itertools.product(batches, batches, size, size, size, make_orthogonal):
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bsr = tensor(bs + (m, k))
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# NOTE: do not get confused, it will be transposed
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dense = tensor(bd + (n, k))
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if is_ortho:
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bsr = torch.cat((bsr, torch.zeros_like(bsr)), dim=-1)
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dense = torch.cat((torch.zeros_like(dense), dense), dim=-1)
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bsr = bsr.to_sparse_bsr(block_size)
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if bsr.dim() == 2:
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# Test against linear to check dispatch.
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res_tri = torch.nn.functional.linear(dense, bsr)
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res_dense = torch.nn.functional.linear(dense, bsr.to_dense())
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else:
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# Otherwise check correctness against bmm
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# since nn.linear does not support bsr.dim() > 2.
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res_tri = torch._triton_bsr_dense_mm(bsr, dense.transpose(-2, -1))
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res_dense = bsr.to_dense() @ dense.transpose(-2, -1)
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self.assertEqual(res_tri, res_dense)
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res_dense = bsr.to_dense() @ dense.transpose(-2, -1)
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# check whether bsr_dense_mm handles different grid sizes
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# None means max possible grid size which is CUDA-dependent.
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grid_size = (None, 2, 4)
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grid_gen = itertools.product(grid_size, repeat=3)
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for is_sparse_rowspace, grid in itertools.product((True, False), grid_gen):
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res_tri = torch.sparse._triton_ops.bsr_dense_mm(
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bsr,
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dense.transpose(-2, -1),
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max_grid=grid,
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is_sparse_rowspace_mode=is_sparse_rowspace
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)
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self.assertEqual(res_tri, res_dense)
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# TODO: block_size 1 is broken
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@parametrize("block_size", [2, 3])
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@parametrize("index_dtype", [torch.int32, torch.int64])
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@ -1328,3 +1328,7 @@ import torch.fx.experimental.symbolic_shapes
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from torch import func as func
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from torch.func import vmap
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# dynamic registration of sparse triton kernels
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from torch.sparse import _register_impls
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_register_impls(torch.library.Library("aten", "IMPL"))
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@ -4,6 +4,8 @@ from typing import Optional, Tuple, List, Union
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import torch
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from torch._C import _add_docstr, _sparse # type: ignore[attr-defined]
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from torch import Tensor
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from torch.cuda import _lazy_call
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from torch._inductor.cuda_properties import get_device_capability
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# A workaround to support both TorchScript and MyPy:
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from typing import TYPE_CHECKING
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@ -462,3 +464,30 @@ See :func:`torch.sparse.check_sparse_tensor_invariants.enable` for more informat
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return mth(*args, **kwargs)
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return test_mth
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# Triton registrations
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def _has_triton():
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if not torch.cuda.is_available():
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return False
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try:
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import triton
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return triton is not None and get_device_capability() >= (7, 0)
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except ImportError:
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return False
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def _register_impls(lib):
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"""This function is called from torch/__init__.py to do any dynamic registrations. """
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def register_sparse_cuda_impls(lib=lib):
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from ._triton_ops import bsr_dense_mm
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if bsr_dense_mm is not None:
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lib.impl("aten::_triton_bsr_dense_mm",
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lambda *args, **kwargs: bsr_dense_mm(*args, skip_checks=True, **kwargs), "SparseCsrCUDA")
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# This code is evaluated on import torch and therefore cannot force initialization of the cuda rt
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# We must schedule the registration to occur lazily.
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_lazy_call(register_sparse_cuda_impls)
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608
torch/sparse/_triton_ops.py
Normal file
608
torch/sparse/_triton_ops.py
Normal file
@ -0,0 +1,608 @@
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import torch
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from torch._inductor.cuda_properties import get_device_capability
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def _has_triton():
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if not torch.cuda.is_available():
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return False
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try:
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import triton
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return triton is not None and get_device_capability() >= (7, 0)
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except ImportError:
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return False
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def compressed_indices_to_plain_indices(cidx, pidx):
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nnz = pidx.shape[-1]
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cdim = cidx.shape[-1] - 1
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batch_numel = cidx.shape[0]
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batch_offset = torch.arange(batch_numel, dtype=cidx.dtype, device=cidx.device)[
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:, None
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]
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cidx_batch_offsetted = cidx[:, :-1] + nnz * batch_offset
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cidx_linear = torch.empty(
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(batch_numel * cdim + 1,), dtype=cidx.dtype, device=cidx.device
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)
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cidx_linear[:-1] = cidx_batch_offsetted.reshape(-1)
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cidx_linear[-1] = nnz * batch_numel
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idx_linear = torch._convert_indices_from_csr_to_coo(
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cidx_linear, pidx.reshape(-1), out_int32=(cidx.dtype == torch.int32)
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).select(0, 0)
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return idx_linear.reshape(batch_numel, -1).sub_(cdim * batch_offset)
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def slicer(dim, slice_range, *tensors):
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for t in tensors:
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slices = [slice(None)] * t.dim()
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slices[dim] = slice_range
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yield t[slices]
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if _has_triton():
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import triton
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import triton.language as tl
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from typing import Optional, Tuple
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@triton.jit
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def _bsr_strided_dense_rowspace_kernel(
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BLOCKSIZE_ROW: tl.constexpr,
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BLOCKSIZE_COL: tl.constexpr,
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# values prologue
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values_ptr,
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values_batch_stride,
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values_nnz_stride,
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values_row_block_stride,
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values_col_block_stride,
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# values epilogue
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# crow_indices prologue
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crow_indices_ptr,
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crow_indices_batch_stride,
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crow_indices_stride,
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# crow_indices epilogue
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# col_indices prologue
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col_indices_ptr,
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col_indices_batch_stride,
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col_indices_stride,
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# col_indices epilogue
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# dense prologue
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dense_ptr,
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dense_batch_stride,
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dense_tiled_row_stride,
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dense_tiled_col_stride,
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dense_row_block_stride,
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dense_col_block_stride,
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# dense epilogue
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# output prologue
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output_ptr,
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output_batch_stride,
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output_tiled_row_stride,
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output_tiled_col_stride,
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output_row_block_stride,
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output_col_block_stride,
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# output epilogue
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GROUP_SIZE_ROW: tl.constexpr,
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):
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batch_pid = tl.program_id(axis=2)
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row_block_pid = tl.program_id(axis=0)
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col_block_pid = tl.program_id(axis=1)
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n_block_rows = tl.num_programs(axis=0)
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n_block_cols = tl.num_programs(axis=1)
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row_block_pid, col_block_pid = tl.swizzle2d(
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row_block_pid, col_block_pid, n_block_rows, n_block_cols, GROUP_SIZE_ROW
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)
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crow_indices_offset_ptr = (
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crow_indices_ptr
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+ crow_indices_batch_stride * batch_pid
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+ crow_indices_stride * row_block_pid
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)
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nnz_offset = tl.load(crow_indices_offset_ptr)
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nnz_offset_next = tl.load(crow_indices_offset_ptr + crow_indices_stride)
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# Compute nnz for the row with number row_block_pid.
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# If it is zero, skip the row.
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row_nnz = nnz_offset_next - nnz_offset
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if row_nnz == 0:
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return
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row_block_arange = tl.arange(0, BLOCKSIZE_ROW)
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col_block_arange = tl.arange(0, BLOCKSIZE_COL)
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# Pointers are set to the first block of the current row.
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values_block_ptrs = (
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values_ptr
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+ values_batch_stride * batch_pid
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+ values_nnz_stride * nnz_offset
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+ values_row_block_stride * row_block_arange[:, None]
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+ values_col_block_stride * col_block_arange[None, :]
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)
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# NOTE: dense is advanced into all dimensions but the tiled row one.
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# That will be advanced in the loop according to values in col_indices.
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dense_block_ptrs = (
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dense_ptr
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+ dense_batch_stride * batch_pid
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+ dense_tiled_col_stride * col_block_pid
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+ dense_row_block_stride * col_block_arange[:, None]
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+ dense_col_block_stride * row_block_arange[None, :]
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)
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# Pointers are set to exact write-to locations
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output_ptrs = (
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output_ptr
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+ output_batch_stride * batch_pid
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+ output_tiled_row_stride * row_block_pid
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+ output_tiled_col_stride * col_block_pid
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+ output_row_block_stride * row_block_arange[:, None]
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+ output_col_block_stride * row_block_arange[None, :]
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)
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# Set pointer to the first nonzero element in the current row
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col_index_nnz_ptr = (
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col_indices_ptr
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+ col_indices_batch_stride * batch_pid
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+ col_indices_stride * nnz_offset
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)
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output_acc_block = tl.zeros((BLOCKSIZE_ROW, BLOCKSIZE_ROW), tl.float32)
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for _ in range(row_nnz):
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values_block = tl.load(values_block_ptrs)
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# find which row of dense needs to get loaded
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# for multiplication with values_block.
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dense_row_idx = tl.load(col_index_nnz_ptr)
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dense_block = tl.load(dense_block_ptrs + dense_tiled_row_stride * dense_row_idx)
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# do block mm
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output_acc_block += tl.dot(values_block, dense_block)
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# move val/col_index ptrs to the next block in the row
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values_block_ptrs += values_nnz_stride
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col_index_nnz_ptr += col_indices_stride
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# write back the result
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tl.store(output_ptrs, output_acc_block.to(output_ptr.dtype.element_ty))
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@triton.jit
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def _bsr_strided_sparse_rowspace_kernel(
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BLOCKSIZE_ROW: tl.constexpr,
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BLOCKSIZE_COL: tl.constexpr,
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batch_idx_ptr,
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row_idx_ptr,
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nnz_per_row_ptr,
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nnz_per_row_cumsum_ptr,
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col_indices_ptr,
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col_indices_stride,
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# values prologue
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values_ptr,
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values_nnz_stride,
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values_row_block_stride,
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values_col_block_stride,
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# values epilogue
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# dense prologue
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dense_ptr,
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dense_batch_stride,
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dense_tiled_row_stride,
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dense_tiled_col_stride,
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dense_row_block_stride,
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dense_col_block_stride,
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# dense epilogue
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# output prologue
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output_ptr,
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output_batch_stride,
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output_tiled_row_stride,
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output_tiled_col_stride,
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output_row_block_stride,
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output_col_block_stride,
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# output epilogue
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GROUP_SIZE_ROW: tl.constexpr,
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):
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row_block_pid = tl.program_id(axis=0)
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col_block_pid = tl.program_id(axis=1)
|
||||
n_block_rows = tl.num_programs(axis=0)
|
||||
n_block_cols = tl.num_programs(axis=1)
|
||||
|
||||
row_block_pid, col_block_pid = tl.swizzle2d(
|
||||
row_block_pid, col_block_pid, n_block_rows, n_block_cols, GROUP_SIZE_ROW
|
||||
)
|
||||
|
||||
batch_idx = tl.load(batch_idx_ptr + row_block_pid)
|
||||
row_idx = tl.load(row_idx_ptr + row_block_pid)
|
||||
row_idx_nnz = tl.load(nnz_per_row_ptr + row_block_pid)
|
||||
row_idx_nnz_cumsum = tl.load(nnz_per_row_cumsum_ptr + row_block_pid)
|
||||
row_idx_nnz_offset = row_idx_nnz_cumsum - row_idx_nnz
|
||||
|
||||
row_block_arange = tl.arange(0, BLOCKSIZE_ROW)
|
||||
col_block_arange = tl.arange(0, BLOCKSIZE_COL)
|
||||
|
||||
# Pointers are set to the first block of the current row.
|
||||
values_block_ptrs = (
|
||||
values_ptr
|
||||
+ values_nnz_stride * row_idx_nnz_offset
|
||||
+ values_row_block_stride * row_block_arange[:, None]
|
||||
+ values_col_block_stride * col_block_arange[None, :]
|
||||
)
|
||||
|
||||
# NOTE: dense is advanced into all dimensions but the tiled row one.
|
||||
# That will be advanced in the loop according to values in col_indices.
|
||||
dense_block_ptrs = (
|
||||
dense_ptr
|
||||
+ dense_batch_stride * batch_idx
|
||||
+ dense_tiled_col_stride * col_block_pid
|
||||
+ dense_row_block_stride * col_block_arange[:, None]
|
||||
+ dense_col_block_stride * row_block_arange[None, :]
|
||||
)
|
||||
|
||||
# Pointers are set to exact write-to locations
|
||||
output_ptrs = (
|
||||
output_ptr
|
||||
+ output_batch_stride * batch_idx
|
||||
+ output_tiled_row_stride * row_idx
|
||||
+ output_tiled_col_stride * col_block_pid
|
||||
+ output_row_block_stride * row_block_arange[:, None]
|
||||
+ output_col_block_stride * row_block_arange[None, :]
|
||||
)
|
||||
|
||||
output_acc_block = tl.zeros((BLOCKSIZE_ROW, BLOCKSIZE_ROW), tl.float32)
|
||||
col_index_nnz_ptr = col_indices_ptr + row_idx_nnz_offset * col_indices_stride
|
||||
for _ in range(row_idx_nnz):
|
||||
values_block = tl.load(values_block_ptrs)
|
||||
|
||||
# find which row of dense needs to get loaded
|
||||
# for multiplication with values_block.
|
||||
dense_row_idx = tl.load(col_index_nnz_ptr)
|
||||
dense_block = tl.load(dense_block_ptrs + dense_tiled_row_stride * dense_row_idx)
|
||||
|
||||
# do block mm
|
||||
output_acc_block += tl.dot(values_block, dense_block)
|
||||
|
||||
# move val/col_index ptrs to the next block in the row
|
||||
values_block_ptrs += values_nnz_stride
|
||||
col_index_nnz_ptr += col_indices_stride
|
||||
|
||||
# write back the result
|
||||
tl.store(output_ptrs, output_acc_block.to(output_ptr.dtype.element_ty))
|
||||
|
||||
|
||||
def _run_sparse_rowspace_kernel(
|
||||
blocksize, values, crow_indices, col_indices, dense, output, max_grid
|
||||
):
|
||||
# Compute a vector of non-zero elements numbers per each row.
|
||||
# We want to ultimately iterate over non-zero rows.
|
||||
nnz_per_row = crow_indices[:, 1:] - crow_indices[:, :-1]
|
||||
|
||||
# Compute indices of non-zero counts.
|
||||
# batch_idx maps to a broadcasted batch index, while
|
||||
# row_idx tracks non-zero rows of the sparse argument
|
||||
# and rows of the output that get modified.
|
||||
batch_idx, row_idx = nnz_per_row.nonzero(as_tuple=True)
|
||||
|
||||
# Compress the vector of counts to hold only non-zero values.
|
||||
nnz_per_row = nnz_per_row[batch_idx, row_idx]
|
||||
# Compute cumulative counts which along with nnz_per_row
|
||||
# are used to compute offsets into nnz values.
|
||||
nnz_per_row_cumsum = nnz_per_row.cumsum(-1)
|
||||
|
||||
n_nnz_block_rows = row_idx.size(-1)
|
||||
n_block_cols = dense.size(-3)
|
||||
max_n_nnz_block_rows, max_n_block_cols = max_grid[:2]
|
||||
|
||||
for c_start in range(0, n_block_cols, max_n_block_cols):
|
||||
c_dense, c_output = slicer(
|
||||
-3, slice(c_start, c_start + max_n_block_cols), dense, output
|
||||
)
|
||||
c_grid = min(n_block_cols - c_start, max_n_block_cols)
|
||||
|
||||
for r_start in range(0, n_nnz_block_rows, max_n_nnz_block_rows):
|
||||
r_batch_idx, r_row_idx, r_nnz_per_row, r_nnz_per_row_cumsum = slicer(
|
||||
0,
|
||||
slice(r_start, r_start + max_n_nnz_block_rows),
|
||||
batch_idx,
|
||||
row_idx,
|
||||
nnz_per_row,
|
||||
nnz_per_row_cumsum,
|
||||
)
|
||||
r_grid = min(n_nnz_block_rows - r_start, max_n_nnz_block_rows)
|
||||
|
||||
_bsr_strided_sparse_rowspace_kernel[(r_grid, c_grid)](
|
||||
*blocksize,
|
||||
r_batch_idx,
|
||||
r_row_idx,
|
||||
r_nnz_per_row,
|
||||
r_nnz_per_row_cumsum,
|
||||
col_indices,
|
||||
*col_indices.stride(),
|
||||
values,
|
||||
*values.stride(),
|
||||
c_dense,
|
||||
*c_dense.stride(),
|
||||
c_output,
|
||||
*c_output.stride(),
|
||||
GROUP_SIZE_ROW=4,
|
||||
num_stages=4,
|
||||
num_warps=4,
|
||||
)
|
||||
|
||||
|
||||
def _run_dense_rowspace_kernel(
|
||||
blocksize, values, crow_indices, col_indices, dense, output, max_grid
|
||||
):
|
||||
# Launch kernel
|
||||
n_batches = dense.size(0)
|
||||
n_block_rows = crow_indices.size(-1) - 1
|
||||
n_block_cols = dense.size(-3)
|
||||
max_n_block_rows, max_n_block_cols, max_n_batches = max_grid
|
||||
|
||||
for b_start in range(0, n_batches, max_n_batches):
|
||||
b_v, b_crow, b_col, b_d, b_o = slicer(
|
||||
0,
|
||||
slice(b_start, b_start + max_n_batches),
|
||||
values,
|
||||
crow_indices,
|
||||
col_indices,
|
||||
dense,
|
||||
output,
|
||||
)
|
||||
b_grid = min(n_batches - b_start, max_n_batches)
|
||||
|
||||
for c_start in range(0, n_block_cols, max_n_block_cols):
|
||||
bc_d, bc_o = slicer(
|
||||
-3, slice(c_start, c_start + max_n_block_cols), b_d, b_o
|
||||
)
|
||||
c_grid = min(n_block_cols - c_start, max_n_block_cols)
|
||||
|
||||
for r_start in range(0, n_block_rows, max_n_block_rows):
|
||||
r_slice = slice(r_start, r_start + max_n_block_rows)
|
||||
br_crow = next(slicer(-1, r_slice, b_crow))
|
||||
brc_o = next(slicer(-4, r_slice, bc_o))
|
||||
r_grid = min(n_block_rows - r_start, max_n_block_rows)
|
||||
|
||||
_bsr_strided_dense_rowspace_kernel[(r_grid, c_grid, b_grid)](
|
||||
*blocksize,
|
||||
b_v,
|
||||
*b_v.stride(),
|
||||
br_crow,
|
||||
*br_crow.stride(),
|
||||
b_col,
|
||||
*b_col.stride(),
|
||||
bc_d,
|
||||
*bc_d.stride(),
|
||||
brc_o,
|
||||
*brc_o.stride(),
|
||||
GROUP_SIZE_ROW=4,
|
||||
num_stages=4,
|
||||
num_warps=4,
|
||||
)
|
||||
|
||||
|
||||
def bsr_dense_mm(
|
||||
bsr: torch.Tensor,
|
||||
dense: torch.Tensor,
|
||||
*,
|
||||
skip_checks: bool = False,
|
||||
is_sparse_rowspace_mode: Optional[bool] = None,
|
||||
max_grid: Optional[Tuple[Optional[int], Optional[int], Optional[int]]] = None,
|
||||
out: Optional[torch.Tensor] = None,
|
||||
):
|
||||
m, kl = bsr.shape[-2:]
|
||||
kr, n = dense.shape[-2:]
|
||||
|
||||
def check(cond, msg):
|
||||
if not cond:
|
||||
raise ValueError(msg)
|
||||
|
||||
if not skip_checks:
|
||||
check(
|
||||
bsr.layout == torch.sparse_bsr,
|
||||
"bsr_dense_mm(): only BSR sparse format is supported for the sparse argument.",
|
||||
)
|
||||
|
||||
check(
|
||||
bsr.device == dense.device and bsr.device.type == "cuda",
|
||||
"bsr_dense_mm(): all inputs are expected to be on the same GPU device.",
|
||||
)
|
||||
|
||||
check(
|
||||
bsr.dtype == dense.dtype
|
||||
and bsr.dtype in (torch.half, torch.bfloat16, torch.float),
|
||||
"bsr_dense_mm(): all inputs are expected to be of the same dtype "
|
||||
"and one of (half, bfloat16, float32), "
|
||||
f"but got bsr.dtype == {bsr.dtype} and dense.dtype == {dense.dtype}.",
|
||||
)
|
||||
|
||||
check(
|
||||
bsr.dim() >= 2 and dense.dim() >= 2,
|
||||
"bsr_dense_mm(): all inputs are expected to be at least 2D, "
|
||||
f"but got bsr.dim() == {bsr.dim()} and dense.dim() == {dense.dim()}.",
|
||||
)
|
||||
|
||||
check(
|
||||
kl == kr,
|
||||
"bsr_dense_mm(): argument sizes are not compatible for matrix multiplication, "
|
||||
f"got bsr.shape[-1] == {kl} which is not equal to dense.shape[-2] == {kr}.",
|
||||
)
|
||||
|
||||
row_block = bsr.values().shape[-2]
|
||||
check(
|
||||
not n % row_block,
|
||||
f"bsr_dense_mm(): dense.size(-1) == {n} should be divisible by "
|
||||
f"blocksize[0] == {row_block}.",
|
||||
)
|
||||
|
||||
# Required to undo the fake batch dimension insertion.
|
||||
original_batch_dims_broadcasted = torch.broadcast_shapes(
|
||||
bsr.shape[:-2], dense.shape[:-2]
|
||||
)
|
||||
|
||||
if out is not None and not skip_checks:
|
||||
expected_out_shape = original_batch_dims_broadcasted + (m, n)
|
||||
check(
|
||||
out.shape == expected_out_shape,
|
||||
"bsr_dense_mm(): `out` argument has wrong shape, "
|
||||
f"expected {expected_out_shape}, but got {out.shape}.",
|
||||
)
|
||||
check(
|
||||
out.is_contiguous() or out.transpose(-2, -1).is_contiguous(),
|
||||
"bsr_dense_mm(): only row-major/col-major `out` arguments are supported, "
|
||||
"i.e. (out.is_contiguous() or out.transpose(-2, -1).is_contiguous()) "
|
||||
"should be True.",
|
||||
)
|
||||
|
||||
# Short circuit if lhs is zero
|
||||
if bsr._nnz() == 0:
|
||||
return dense.new_zeros(original_batch_dims_broadcasted + (m, n))
|
||||
|
||||
# TODO: insert switch
|
||||
if is_sparse_rowspace_mode is None:
|
||||
is_sparse_rowspace_mode = False
|
||||
|
||||
# Introduce fake batch dimension if not present for convenience.
|
||||
def unsqueeze_batch_dim(t, n_non_batch_dims):
|
||||
if t.dim() > n_non_batch_dims:
|
||||
return t
|
||||
else:
|
||||
return t.unsqueeze(0)
|
||||
|
||||
def make_triton_contiguous(t):
|
||||
# Triton does not distinguish between row- and col-majorness
|
||||
# and will be fast as long as there is a contiguous dimension.
|
||||
if not (t.is_contiguous() or t.transpose(-2, -1).is_contiguous()):
|
||||
return t.contiguous()
|
||||
else:
|
||||
return t
|
||||
|
||||
crow_indices = unsqueeze_batch_dim(bsr.crow_indices(), 1)
|
||||
col_indices = unsqueeze_batch_dim(bsr.col_indices(), 1)
|
||||
values = make_triton_contiguous(unsqueeze_batch_dim(bsr.values(), 3))
|
||||
dense = make_triton_contiguous(unsqueeze_batch_dim(dense, 2))
|
||||
nnz = values.shape[-3]
|
||||
blocksize = values.shape[-2:]
|
||||
|
||||
# Compute broadcasted batch dimension
|
||||
bsr_batch_dims = values.shape[:-3]
|
||||
dense_batch_dims = dense.shape[:-2]
|
||||
batch_dims_broadcasted = torch.broadcast_shapes(bsr_batch_dims, dense_batch_dims)
|
||||
|
||||
# Allocate out
|
||||
if out is None:
|
||||
out = dense.new_zeros(batch_dims_broadcasted + (m, n))
|
||||
|
||||
# Broadcast batch dimensions and squash
|
||||
def batch_broadcast_and_squash(t, batch_dims, invariant_dims):
|
||||
return t.broadcast_to(batch_dims + invariant_dims).flatten(
|
||||
0, len(batch_dims) - 1
|
||||
)
|
||||
|
||||
crow_indices = batch_broadcast_and_squash(
|
||||
crow_indices, batch_dims_broadcasted, (-1,)
|
||||
)
|
||||
|
||||
if is_sparse_rowspace_mode:
|
||||
# Flatten batch dimension with nnz dimension
|
||||
# as required by the sparse rowspace kernel.
|
||||
col_indices = batch_broadcast_and_squash(
|
||||
col_indices, batch_dims_broadcasted + (-1,), ()
|
||||
)
|
||||
values = batch_broadcast_and_squash(
|
||||
values, batch_dims_broadcasted + (values.shape[-3],), values.shape[-2:]
|
||||
)
|
||||
else:
|
||||
col_indices = batch_broadcast_and_squash(
|
||||
col_indices, batch_dims_broadcasted, (-1,)
|
||||
)
|
||||
values = batch_broadcast_and_squash(
|
||||
values, batch_dims_broadcasted, values.shape[-3:]
|
||||
)
|
||||
|
||||
dense = batch_broadcast_and_squash(dense, batch_dims_broadcasted, dense.shape[-2:])
|
||||
|
||||
# NOTE: out is contiguous, so batch_broadcast_and_squash will create a view
|
||||
out = batch_broadcast_and_squash(out, batch_dims_broadcasted, out.shape[-2:])
|
||||
|
||||
# NOTE: this function will ALWAYS create a view
|
||||
def tile_to_blocksize(t, blocksize):
|
||||
*rest, m, n = t.shape
|
||||
new_shape = rest + [
|
||||
m // blocksize[0],
|
||||
blocksize[0],
|
||||
n // blocksize[1],
|
||||
blocksize[1],
|
||||
]
|
||||
return t.reshape(new_shape).transpose(-3, -2)
|
||||
|
||||
# "Blockify" the row dimension of dense with blocksize[1]
|
||||
# since dense is on the rhs of matmul
|
||||
dense = tile_to_blocksize(dense, blocksize[::-1])
|
||||
# "Blockify" the row dimension of out with blocksize[0]
|
||||
# which is inherited from the bsr input.
|
||||
# NOTE: tile_to_blocksize will create a view.
|
||||
# NOTE: out.blocksize[-1] == dense.blocksize[-1],
|
||||
# so it could be any value in [1, dense.shape[-1]).
|
||||
# We need to probably use the largest possible blocksize
|
||||
# so that it fits into SRAM.
|
||||
out = tile_to_blocksize(out, (blocksize[0], blocksize[0]))
|
||||
|
||||
# Launch kernel
|
||||
if is_sparse_rowspace_mode:
|
||||
kernel = _run_sparse_rowspace_kernel
|
||||
else:
|
||||
kernel = _run_dense_rowspace_kernel
|
||||
|
||||
# cuda_max_grid = (2 ** 31 - 1, 2 ** 16 - 1, 2 ** 16 - 1)
|
||||
cuda_max_grid = (2147483647, 65535, 65535)
|
||||
if max_grid is None:
|
||||
max_grid = cuda_max_grid
|
||||
else:
|
||||
|
||||
def valid_grid_dim(g, mg):
|
||||
if g is None:
|
||||
return mg
|
||||
else:
|
||||
# grid must be at least 1 and no greater than mg
|
||||
return max(1, min(g, mg))
|
||||
|
||||
max_grid = tuple(
|
||||
valid_grid_dim(g, mg) for g, mg in zip(max_grid, cuda_max_grid)
|
||||
) # type: ignore[assignment]
|
||||
|
||||
kernel(blocksize, values, crow_indices, col_indices, dense, out, max_grid)
|
||||
|
||||
# Block dims need to rejoin with the corresponding block dimensions
|
||||
# prior to reshape so that blocks do not end up being transposed.
|
||||
# NB: type checker is not able to narrow Optional[Tensor] to tensor by this point
|
||||
return out.transpose(-3, -2).reshape(original_batch_dims_broadcasted + (m, n)) # type: ignore[union-attr]
|
||||
else:
|
||||
bsr_dense_mm = None # type: ignore[assignment]
|
||||
|
||||
|
||||
if __name__ == "__main__":
|
||||
from torch._inductor.utils import has_triton
|
||||
|
||||
if has_triton():
|
||||
torch.manual_seed(13)
|
||||
dtype = torch.float32
|
||||
p = 0.5
|
||||
mask_size = (8, 8)
|
||||
block_size = (64, 64)
|
||||
size = (mask_size[0] * block_size[0], mask_size[1] * block_size[1])
|
||||
|
||||
n_exp = 512
|
||||
diff = torch.ones(n_exp, device="cuda", dtype=torch.float32)
|
||||
for i in range(n_exp):
|
||||
mask = torch.rand(*mask_size, device="cuda") < p
|
||||
x = torch.rand(*mask_size, *block_size, dtype=dtype, device="cuda") / 10
|
||||
x = (
|
||||
(mask[:, :, None, None] * x)
|
||||
.transpose(-3, -2)
|
||||
.reshape(*size)
|
||||
.to_sparse_bsr(*block_size)
|
||||
)
|
||||
y = torch.rand(5, *size, dtype=dtype, device="cuda") / 10
|
||||
res_dense = x.to_dense() @ y
|
||||
res = bsr_dense_mm(x, y)
|
||||
diff[i] = (res - res_dense).abs().max()
|
||||
print(f"mean: {diff.mean()}, std: {diff.std()}")
|
||||
print(f"max diff: {diff.max()}")
|
Reference in New Issue
Block a user