Files
clang-p2996/mlir/test/Integration/Dialect/SparseTensor/CPU/sparse_mttkrp.mlir
Cullen Rhodes baafc74ab0 [mlir][test][Integration] Refactor Arm emulator configuration
The logic enabling the Arm SVE (and now SME) integration tests for
various dialects, that may run under emulation, is now duplicated in
several places.

This patch moves the configuration to the top-level MLIR integration
tests Lit config and renames the '%lli' substitution in contexts where
it will run exclusively (ArmSVE, ArmSME) on AArch64 (and possibly under
emulation) to '%lli_aarch64_cmd', and '%lli_host_or_aarch64_cmd' for
contexts where it may run AArch64 (also possibly under emulation). The
latter is for integration tests that have target-specific and
target-agnostic codepaths such as SparseTensor, which supports scalable
vectors.

The two substitutions have the same effect but the names are different to
convey this information. The '%lli_aarch64_cmd' substitution could be
used in the SparseTensor tests but that would be a misnomer if the host
were x86 and the MLIR_RUN_SVE_TESTS=OFF.

The reason for renaming the '%lli' substitution is to not prevent running other
target-specific integration tests at the same time, since the same substitution
'%lli' is used for lli in other integration tests:

  * mlir/test/Integration/Dialect/Vector/CPU/X86Vector              - (AVX emulation via Intel SDE)
  * mlir/test/Integration/Dialect/Vector/CPU/AMX                    - (AMX emulation via Intel SDE)
  * mlir/test/Integration/Dialect/LLVMIR/CPU/test-vp-intrinsic.mlir - (RISCV emulation via QEMU if supported, native otherwise)

and substituting '%lli' at the top-level with Arm specific logic would override
this.

Reviewed By: awarzynski

Differential Revision: https://reviews.llvm.org/D148929
2023-04-26 09:57:43 +00:00

145 lines
5.2 KiB
MLIR

// DEFINE: %{option} = enable-runtime-library=true
// DEFINE: %{compile} = mlir-opt %s --sparse-compiler=%{option}
// DEFINE: %{run} = TENSOR0="%mlir_src_dir/test/Integration/data/mttkrp_b.tns" \
// DEFINE: mlir-cpu-runner \
// DEFINE: -e entry -entry-point-result=void \
// DEFINE: -shared-libs=%mlir_c_runner_utils,%mlir_runner_utils | \
// DEFINE: FileCheck %s
//
// RUN: %{compile} | %{run}
//
// Do the same run, but now with direct IR generation.
// REDEFINE: %{option} = enable-runtime-library=false
// RUN: %{compile} | %{run}
//
// Do the same run, but now with direct IR generation and vectorization.
// REDEFINE: %{option} = "enable-runtime-library=false vl=2 reassociate-fp-reductions=true enable-index-optimizations=true"
// RUN: %{compile} | %{run}
// Do the same run, but now with direct IR generation and, if available, VLA
// vectorization.
// REDEFINE: %{option} = "enable-runtime-library=false vl=4 enable-arm-sve=%ENABLE_VLA"
// REDEFINE: %{run} = TENSOR0="%mlir_src_dir/test/Integration/data/mttkrp_b.tns" \
// REDEFINE: %lli_host_or_aarch64_cmd \
// REDEFINE: --entry-function=entry_lli \
// REDEFINE: --extra-module=%S/Inputs/main_for_lli.ll \
// REDEFINE: %VLA_ARCH_ATTR_OPTIONS \
// REDEFINE: --dlopen=%mlir_native_utils_lib_dir/libmlir_c_runner_utils%shlibext -dlopen=%mlir_runner_utils| \
// REDEFINE: FileCheck %s
// RUN: %{compile} | mlir-translate -mlir-to-llvmir | %{run}
!Filename = !llvm.ptr<i8>
#SparseTensor = #sparse_tensor.encoding<{
dimLevelType = [ "compressed", "compressed", "compressed" ]
}>
#mttkrp = {
indexing_maps = [
affine_map<(i,j,k,l) -> (i,k,l)>, // B
affine_map<(i,j,k,l) -> (k,j)>, // C
affine_map<(i,j,k,l) -> (l,j)>, // D
affine_map<(i,j,k,l) -> (i,j)> // A (out)
],
iterator_types = ["parallel", "parallel", "reduction", "reduction"],
doc = "A(i,j) += B(i,k,l) * D(l,j) * C(k,j)"
}
//
// Integration test that lowers a kernel annotated as sparse to
// actual sparse code, initializes a matching sparse storage scheme
// from file, and runs the resulting code with the JIT compiler.
//
module {
func.func private @printMemrefF64(%ptr : tensor<*xf64>)
//
// Computes Matricized Tensor Times Khatri-Rao Product (MTTKRP) kernel. See
// http://tensor-compiler.org/docs/data_analytics/index.html.
//
func.func @kernel_mttkrp(%argb: tensor<?x?x?xf64, #SparseTensor>,
%argc: tensor<?x?xf64>,
%argd: tensor<?x?xf64>,
%arga: tensor<?x?xf64>)
-> tensor<?x?xf64> {
%0 = linalg.generic #mttkrp
ins(%argb, %argc, %argd:
tensor<?x?x?xf64, #SparseTensor>, tensor<?x?xf64>, tensor<?x?xf64>)
outs(%arga: tensor<?x?xf64>) {
^bb(%b: f64, %c: f64, %d: f64, %a: f64):
%0 = arith.mulf %b, %c : f64
%1 = arith.mulf %d, %0 : f64
%2 = arith.addf %a, %1 : f64
linalg.yield %2 : f64
} -> tensor<?x?xf64>
return %0 : tensor<?x?xf64>
}
func.func private @getTensorFilename(index) -> (!Filename)
//
// Main driver that reads matrix from file and calls the sparse kernel.
//
func.func @entry() {
%f0 = arith.constant 0.0 : f64
%cst0 = arith.constant 0 : index
%cst1 = arith.constant 1 : index
%cst2 = arith.constant 2 : index
// Read the sparse input tensor B from a file.
%fileName = call @getTensorFilename(%cst0) : (index) -> (!Filename)
%b = sparse_tensor.new %fileName
: !Filename to tensor<?x?x?xf64, #SparseTensor>
// Get sizes from B, pick a fixed size for dim-2 of A.
%isz = tensor.dim %b, %cst0 : tensor<?x?x?xf64, #SparseTensor>
%jsz = arith.constant 5 : index
%ksz = tensor.dim %b, %cst1 : tensor<?x?x?xf64, #SparseTensor>
%lsz = tensor.dim %b, %cst2 : tensor<?x?x?xf64, #SparseTensor>
// Initialize dense input matrix C.
%c = tensor.generate %ksz, %jsz {
^bb0(%k : index, %j : index):
%k0 = arith.muli %k, %jsz : index
%k1 = arith.addi %k0, %j : index
%k2 = arith.index_cast %k1 : index to i32
%kf = arith.sitofp %k2 : i32 to f64
tensor.yield %kf : f64
} : tensor<?x?xf64>
// Initialize dense input matrix D.
%d = tensor.generate %lsz, %jsz {
^bb0(%l : index, %j : index):
%k0 = arith.muli %l, %jsz : index
%k1 = arith.addi %k0, %j : index
%k2 = arith.index_cast %k1 : index to i32
%kf = arith.sitofp %k2 : i32 to f64
tensor.yield %kf : f64
} : tensor<?x?xf64>
// Initialize dense output matrix A.
%a = tensor.generate %isz, %jsz {
^bb0(%i : index, %j: index):
tensor.yield %f0 : f64
} : tensor<?x?xf64>
// Call kernel.
%0 = call @kernel_mttkrp(%b, %c, %d, %a)
: (tensor<?x?x?xf64, #SparseTensor>,
tensor<?x?xf64>, tensor<?x?xf64>, tensor<?x?xf64>) -> tensor<?x?xf64>
// Print the result for verification.
//
// CHECK: {{\[}}[16075, 21930, 28505, 35800, 43815],
// CHECK-NEXT: [10000, 14225, 19180, 24865, 31280]]
//
%u = tensor.cast %0: tensor<?x?xf64> to tensor<*xf64>
call @printMemrefF64(%u) : (tensor<*xf64>) -> ()
// Release the resources.
bufferization.dealloc_tensor %b : tensor<?x?x?xf64, #SparseTensor>
return
}
}