[mlir][tosa] Added shape propagation for TOSA pool operations.

Pool operations perform the same shape propagation. Included the shape
propagation and tests for these avg_pool2d and max_pool2d.

Differential Revision: https://reviews.llvm.org/D105665
This commit is contained in:
Rob Suderman 2021-07-08 15:17:15 -07:00
parent 6611fbc62a
commit f2832c2295
3 changed files with 112 additions and 2 deletions

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@ -56,7 +56,10 @@ def Tosa_ArgMaxOp : Tosa_Op<"argmax", [
//===----------------------------------------------------------------------===// //===----------------------------------------------------------------------===//
// Operator: avg_pool2d // Operator: avg_pool2d
//===----------------------------------------------------------------------===// //===----------------------------------------------------------------------===//
def Tosa_AvgPool2dOp : Tosa_Op<"avg_pool2d", [NoSideEffect]> { def Tosa_AvgPool2dOp : Tosa_Op<"avg_pool2d", [
DeclareOpInterfaceMethods<InferShapedTypeOpInterface,
["inferReturnTypeComponents"]>,
NoSideEffect]> {
let summary = "Performs max pooling on the input."; let summary = "Performs max pooling on the input.";
let description = [{ let description = [{
@ -233,7 +236,10 @@ def Tosa_MatMulOp : Tosa_Op<"matmul", [
//===----------------------------------------------------------------------===// //===----------------------------------------------------------------------===//
// Operator: max_pool2d // Operator: max_pool2d
//===----------------------------------------------------------------------===// //===----------------------------------------------------------------------===//
def Tosa_MaxPool2dOp : Tosa_Op<"max_pool2d", [NoSideEffect]> { def Tosa_MaxPool2dOp : Tosa_Op<"max_pool2d", [
DeclareOpInterfaceMethods<InferShapedTypeOpInterface,
["inferReturnTypeComponents"]>,
NoSideEffect]> {
let summary = "Performs max pooling on the input."; let summary = "Performs max pooling on the input.";
let description = [{ let description = [{

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@ -845,6 +845,62 @@ NARY_SHAPE_INFER(tosa::TanhOp)
NARY_SHAPE_INFER(tosa::SigmoidOp) NARY_SHAPE_INFER(tosa::SigmoidOp)
#undef PRED_SHAPE_INFER #undef PRED_SHAPE_INFER
static LogicalResult poolingInferReturnTypes(
ValueRange operands, DictionaryAttr attributes,
SmallVectorImpl<ShapedTypeComponents> &inferredReturnShapes) {
RankedTensorType inputTy = operands[0].getType().dyn_cast<RankedTensorType>();
llvm::SmallVector<int64_t> outputShape;
outputShape.resize(4, -1);
// We only know the rank if the input type is unranked.
if (!inputTy) {
inferredReturnShapes.push_back(ShapedTypeComponents(outputShape));
return success();
}
// Batch and number of channels are identical for pooling layer.
outputShape[0] = inputTy.getDimSize(0);
outputShape[3] = inputTy.getDimSize(3);
int32_t height = inputTy.getDimSize(1);
int32_t width = inputTy.getDimSize(2);
llvm::SmallVector<int64_t> kernel;
llvm::SmallVector<int64_t> stride;
llvm::SmallVector<int64_t> pad;
getI64Values(attributes.get("kernel").cast<ArrayAttr>(), kernel);
getI64Values(attributes.get("stride").cast<ArrayAttr>(), stride);
getI64Values(attributes.get("pad").cast<ArrayAttr>(), pad);
if (height != -1) {
int32_t padded = height + pad[0] + pad[1] - kernel[0];
outputShape[1] = padded / stride[0] + 1;
}
if (width != -1) {
int32_t padded = width + pad[2] + pad[3] - kernel[1];
outputShape[2] = padded / stride[1] + 1;
}
inferredReturnShapes.push_back(ShapedTypeComponents(outputShape));
return success();
}
LogicalResult AvgPool2dOp::inferReturnTypeComponents(
MLIRContext *context, ::llvm::Optional<Location> location,
ValueRange operands, DictionaryAttr attributes, RegionRange regions,
SmallVectorImpl<ShapedTypeComponents> &inferredReturnShapes) {
return poolingInferReturnTypes(operands, attributes, inferredReturnShapes);
}
LogicalResult MaxPool2dOp::inferReturnTypeComponents(
MLIRContext *context, ::llvm::Optional<Location> location,
ValueRange operands, DictionaryAttr attributes, RegionRange regions,
SmallVectorImpl<ShapedTypeComponents> &inferredReturnShapes) {
return poolingInferReturnTypes(operands, attributes, inferredReturnShapes);
}
//===----------------------------------------------------------------------===// //===----------------------------------------------------------------------===//
// TOSA Operator Definitions. // TOSA Operator Definitions.
//===----------------------------------------------------------------------===// //===----------------------------------------------------------------------===//

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@ -660,3 +660,51 @@ func @scatter_minimum_static(%arg0 : tensor<?x4x?xi32>, %arg1 : tensor<3x?xi32>,
%0 = "tosa.scatter"(%arg0, %arg1, %arg2) : (tensor<?x4x?xi32>, tensor<3x?xi32>, tensor<?x?x5xi32>) -> (tensor<?x?x?xi32>) %0 = "tosa.scatter"(%arg0, %arg1, %arg2) : (tensor<?x4x?xi32>, tensor<3x?xi32>, tensor<?x?x5xi32>) -> (tensor<?x?x?xi32>)
return return
} }
// -----
// CHECK-LABEL: @test_pool_static
func @test_pool_static(%arg0: tensor<3x5x6x7xf32>) {
// CHECK: -> tensor<3x2x4x7xf32>
%0 = "tosa.avg_pool2d"(%arg0) {kernel = [4, 3], pad = [0, 0, 0, 0], stride = [1, 1]} : (tensor<3x5x6x7xf32>) -> tensor<?x?x?x?xf32>
// CHECK: -> tensor<3x2x4x7xf32>
%1 = "tosa.max_pool2d"(%arg0) {kernel = [4, 3], pad = [0, 0, 0, 0], stride = [1, 1]} : (tensor<3x5x6x7xf32>) -> tensor<?x?x?x?xf32>
return
}
// -----
// CHECK-LABEL: @test_pool_dynamic_input
func @test_pool_dynamic_input(%arg0: tensor<?x?x?x?xf32>) {
// CHECK: -> tensor<?x?x?x?xf32>
%0 = "tosa.avg_pool2d"(%arg0) {kernel = [4, 3], pad = [0, 0, 0, 0], stride = [1, 1]} : (tensor<?x?x?x?xf32>) -> tensor<?x?x?x?xf32>
// CHECK: -> tensor<?x?x?x?xf32>
%1 = "tosa.max_pool2d"(%arg0) {kernel = [4, 3], pad = [0, 0, 0, 0], stride = [1, 1]} : (tensor<?x?x?x?xf32>) -> tensor<?x?x?x?xf32>
return
}
// -----
// CHECK-LABEL: @test_pool_padded
func @test_pool_padded(%arg0: tensor<3x5x6x7xf32>) {
// CHECK: -> tensor<3x5x11x7xf32>
%0 = "tosa.avg_pool2d"(%arg0) {kernel = [4, 3], pad = [1, 2, 3, 4], stride = [1, 1]} : (tensor<3x5x6x7xf32>) -> tensor<?x?x?x?xf32>
// CHECK: -> tensor<3x5x11x7xf32>
%1 = "tosa.max_pool2d"(%arg0) {kernel = [4, 3], pad = [1, 2, 3, 4], stride = [1, 1]} : (tensor<3x5x6x7xf32>) -> tensor<?x?x?x?xf32>
return
}
// -----
// CHECK-LABEL: @test_pool_stride
func @test_pool_stride(%arg0: tensor<3x11x12x7xf32>) {
// CHECK: -> tensor<3x4x4x7xf32>
%0 = "tosa.avg_pool2d"(%arg0) {kernel = [4, 3], pad = [0, 0, 0, 0], stride = [2, 3]} : (tensor<3x11x12x7xf32>) -> tensor<?x?x?x?xf32>
// CHECK: -> tensor<3x4x4x7xf32>
%1 = "tosa.max_pool2d"(%arg0) {kernel = [4, 3], pad = [0, 0, 0, 0], stride = [2, 3]} : (tensor<3x11x12x7xf32>) -> tensor<?x?x?x?xf32>
return
}