Markus Böck 9048ea28da Reland "[mlir] Make the vast majority of intgration and runner tests work on Windows"
This reverts commit 5561e174117ff395d65b6978d04b62c1a1275138

The logic was moved from cmake into lit fixing the issue that lead to the revert and potentially others with multi-config cmake generators

Differential Revision: https://reviews.llvm.org/D143925
2023-02-15 19:14:43 +01:00

103 lines
3.7 KiB
MLIR

// DEFINE: %{option} = enable-runtime-library=true
// DEFINE: %{compile} = mlir-opt %s --sparse-compiler=%{option}
// DEFINE: %{run} = 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.
// 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} = %lli \
// 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}
#CSC = #sparse_tensor.encoding<{
dimLevelType = [ "dense", "compressed" ],
dimOrdering = affine_map<(i,j) -> (j,i)>
}>
module {
func.func private @printMemrefF64(%ptr : tensor<*xf64>)
//
// Column-wise storage forces the ijk loop to permute into jki
// so that access pattern expansion (workspace) needs to be
// done along dimension with size 8.
//
func.func @matmul(%A: tensor<8x2xf64, #CSC>,
%B: tensor<2x4xf64, #CSC>) -> tensor<8x4xf64, #CSC> {
%C = bufferization.alloc_tensor() : tensor<8x4xf64, #CSC>
%D = linalg.matmul
ins(%A, %B: tensor<8x2xf64, #CSC>, tensor<2x4xf64, #CSC>)
outs(%C: tensor<8x4xf64, #CSC>) -> tensor<8x4xf64, #CSC>
return %D: tensor<8x4xf64, #CSC>
}
//
// Main driver.
//
func.func @entry() {
%c0 = arith.constant 0 : index
%d1 = arith.constant -1.0 : f64
// Initialize various dense matrices for stress testing.
%da = arith.constant dense<[
[ 1.1, 2.1 ],
[ 1.2, 2.2 ],
[ 1.3, 2.3 ],
[ 1.4, 2.4 ],
[ 1.5, 2.5 ],
[ 1.6, 2.6 ],
[ 1.7, 2.7 ],
[ 1.8, 2.8 ]
]> : tensor<8x2xf64>
%db = arith.constant dense<[
[ 10.1, 11.1, 12.1, 13.1 ],
[ 10.2, 11.2, 12.2, 13.2 ]
]> : tensor<2x4xf64>
// Convert all these matrices to sparse format.
%x1 = sparse_tensor.convert %da : tensor<8x2xf64> to tensor<8x2xf64, #CSC>
%x2 = sparse_tensor.convert %db : tensor<2x4xf64> to tensor<2x4xf64, #CSC>
// Call kernels with dense.
%x3 = call @matmul(%x1, %x2)
: (tensor<8x2xf64, #CSC>,
tensor<2x4xf64, #CSC>) -> tensor<8x4xf64, #CSC>
// CHECK: {{\[}}[32.53, 35.73, 38.93, 42.13],
// CHECK-NEXT: [34.56, 37.96, 41.36, 44.76],
// CHECK-NEXT: [36.59, 40.19, 43.79, 47.39],
// CHECK-NEXT: [38.62, 42.42, 46.22, 50.02],
// CHECK-NEXT: [40.65, 44.65, 48.65, 52.65],
// CHECK-NEXT: [42.68, 46.88, 51.08, 55.28],
// CHECK-NEXT: [44.71, 49.11, 53.51, 57.91],
// CHECK-NEXT: [46.74, 51.34, 55.94, 60.54]]
//
%xc = sparse_tensor.convert %x3 : tensor<8x4xf64, #CSC> to tensor<8x4xf64>
%xu = tensor.cast %xc : tensor<8x4xf64> to tensor<*xf64>
call @printMemrefF64(%xu) : (tensor<*xf64>) -> ()
// Release the resources.
bufferization.dealloc_tensor %x1 : tensor<8x2xf64, #CSC>
bufferization.dealloc_tensor %x2 : tensor<2x4xf64, #CSC>
bufferization.dealloc_tensor %x3 : tensor<8x4xf64, #CSC>
return
}
}