// RUN: npcomp-opt %s | npcomp-opt | FileCheck %s // CHECK-LABEL: func @torch.operator( func @torch.operator(%arg0: !torch.tensor, %arg1: !torch.tensor) -> !torch.tensor { // CHECK: torch.operator "ns.unqual.overload"(%arg0, %arg1) : (!torch.tensor, !torch.tensor) -> !torch.tensor %0 = torch.operator "ns.unqual.overload"(%arg0, %arg1) : (!torch.tensor, !torch.tensor) -> !torch.tensor return %0 : !torch.tensor } func @torch.linear_params.create(%arg0: !torch.tensor, %arg1: !torch.tensor) -> (!torch.LinearParams, !torch.LinearParams) { %with_bias = torch.linear_params.create %arg0, %arg1 : !torch.tensor, !torch.tensor %without_bias = torch.linear_params.create %arg0 : !torch.tensor return %with_bias, %without_bias : !torch.LinearParams, !torch.LinearParams } // CHECK-LABEL: func @builtin_tensor_interop( func @builtin_tensor_interop(%arg0: tensor<*xf32>, %arg1: tensor<3x?xsi8>, %arg2: !torch.vtensor<*,f32>, %arg3: !torch.vtensor<[3,?],si8>) { // CHECK: torch.from_builtin_tensor %arg0 : tensor<*xf32> -> !torch.vtensor<*,f32> %0 = torch.from_builtin_tensor %arg0 : tensor<*xf32> -> !torch.vtensor<*,f32> // CHECK: torch.from_builtin_tensor %arg1 : tensor<3x?xsi8> -> !torch.vtensor<[3,?],si8> %1 = torch.from_builtin_tensor %arg1 : tensor<3x?xsi8> -> !torch.vtensor<[3,?],si8> // CHECK: torch.to_builtin_tensor %arg2 : !torch.vtensor<*,f32> -> tensor<*xf32> %2 = torch.to_builtin_tensor %arg2 : !torch.vtensor<*,f32> -> tensor<*xf32> // CHECK: torch.to_builtin_tensor %arg3 : !torch.vtensor<[3,?],si8> -> tensor<3x?xsi8> %3 = torch.to_builtin_tensor %arg3 : !torch.vtensor<[3,?],si8> -> tensor<3x?xsi8> return } // CHECK: @tensor.default() -> !torch.tensor func private @tensor.default() -> !torch.tensor // CHECK: @tensor.default_explicit() -> !torch.tensor{{$}} func private @tensor.default_explicit() -> !torch.tensor<*,unk> // CHECK: @tensor.value_semantic() -> !torch.vtensor{{$}} func private @tensor.value_semantic() -> !torch.vtensor<*,unk> // CHECK: @tensor.dtype() -> !torch.tensor<*,si32> func private @tensor.dtype() -> !torch.tensor<*,si32> // CHECK: @tensor.ranked() -> !torch.tensor<[?,?,?],unk> func private @tensor.ranked() -> !torch.tensor<[?,?,?],unk> // CHECK: @tensor.some_sizes_known() -> !torch.tensor<[?,2,?,4],unk> func private @tensor.some_sizes_known() -> !torch.tensor<[?,2,?,4],unk> // CHECK: @tensor.fully_determined() -> !torch.vtensor<[1,2,3,4],f32> func private @tensor.fully_determined() -> !torch.vtensor<[1,2,3,4],f32> // CHECK-LABEL: func @torch.tensor() { func @torch.tensor() { // CHECK: torch.tensor(dense<4.200000e+01> : tensor<3x2xf32>) : !torch.vtensor<[3,2],f32> %0 = torch.tensor(dense<42.0> : tensor<3x2xf32>) : !torch.vtensor<[3,2],f32> // CHECK: torch.tensor(dense<4.200000e+01> : tensor<3x2xf32>) : !torch.tensor<[3,2],f32> %1 = torch.tensor(dense<42.0> : tensor<3x2xf32>) : !torch.tensor<[3,2],f32> return } func @derefine(%arg0: !torch.tensor) -> !torch.optional { %0 = torch.derefine %arg0 : !torch.tensor to !torch.optional return %0 : !torch.optional } %bool_true = basicpy.bool_constant true %num3_i64 = basicpy.numeric_constant 3 : i64 %num = basicpy.numeric_constant 4.250000e+01 : f64 %tensor = torch.tensor(dense<1.000000e+00> : tensor<1xf32>) : !torch.tensor %none = torch.constant.none func private @f(%arg0: !torch.nn.Module<"test">) { return } torch.class_type @empty {} %submodule = torch.nn_module {} : !torch.nn.Module<"empty"> torch.class_type @test { torch.attr "b" : !basicpy.BoolType torch.attr "i" : i64 torch.attr "f" : f64 torch.attr "t" : !torch.tensor torch.attr "submodule" : !torch.nn.Module<"empty"> torch.attr "ob" : !torch.optional torch.method "method", @f } torch.nn_module { torch.slot "b", %bool_true : !basicpy.BoolType torch.slot "i", %num3_i64 : i64 torch.slot "f", %num : f64 torch.slot "t", %tensor : !torch.tensor torch.slot "submodule", %submodule : !torch.nn.Module<"empty"> torch.slot "ob", %none : !torch.none } : !torch.nn.Module<"test">