/* Copyright 2016 The TensorFlow Authors. All Rights Reserved. Licensed under the Apache License, Version 2.0 (the "License"); You may obtain a copy of the License at http://www.apache.org/licenses/LICENSE-2.0 Unless required by applicable law or agreed to in writing, software distributed under the License is distributed on an "AS IS" BASIS, WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied. See the License for the specific language governing permissions and limitations under the License. ==============================================================================*/ #include "tensorflow/core/framework/node_def_builder.h" #include "tensorflow/core/framework/op.h" #include "tensorflow/core/framework/shape_inference_testutil.h" #include "tensorflow/core/framework/tensor.h" #include "tensorflow/core/framework/tensor_testutil.h" #include "tensorflow/core/lib/core/status_test_util.h" #include "tensorflow/core/lib/strings/str_util.h" #include "tensorflow/core/platform/test.h" namespace tensorflow { TEST(CudnnRNNOpsTest, ParamsSize_ShapeFn) { ShapeInferenceTestOp op("CudnnRNNParamsSize"); INFER_OK(op, "[];[];[]", "[1]"); INFER_OK(op, "?;[];[]", "[1]"); INFER_OK(op, "[];?;[]", "[1]"); INFER_OK(op, "[];[];?", "[1]"); INFER_OK(op, "[];?;?", "[1]"); INFER_OK(op, "?;?;?", "[1]"); INFER_ERROR("Shape must be rank 0 ", op, "[1,2];?;[]"); INFER_ERROR("Shape must be rank 0 ", op, "?;[2];[]"); INFER_ERROR("Shape must be rank 0 ", op, "?;?;[1]"); } TEST(CudnnRNNOpsTest, ForwardLstm_ShapeFn) { int seq_length = 2; int batch_size = 3; int num_units = 4; int num_layers = 5; int dir_count = 1; std::vector input_shape = {seq_length, batch_size, num_units}; std::vector input_h_shape = {num_layers * dir_count, batch_size, num_units}; std::vector output_shape = {seq_length, batch_size, num_units * dir_count}; auto shape_to_str = [](const std::vector& v) { return strings::StrCat("[", str_util::Join(v, ","), "]"); }; string input_shapes_desc = strings::StrCat( shape_to_str(input_shape), ";", shape_to_str(input_h_shape), ";", shape_to_str(input_h_shape), ";", "[?]"); string output_shapes_desc = "[d0_0,d0_1,d1_2];in1;in1;?"; ShapeInferenceTestOp op("CudnnRNN"); TF_ASSERT_OK(NodeDefBuilder("test", "CudnnRNN") .Input({"input", 0, DT_FLOAT}) .Input({"input_h", 0, DT_FLOAT}) .Input({"input_c", 0, DT_FLOAT}) .Input({"params", 0, DT_FLOAT}) .Attr("rnn_mode", "lstm") .Attr("input_mode", "auto_select") .Attr("direction", "unidirectional") .Finalize(&op.node_def)); INFER_OK(op, input_shapes_desc, output_shapes_desc); } TEST(CudnnRNNOpsTest, ForwardV2Lstm_ShapeFn) { int seq_length = 2; int batch_size = 3; int num_units = 4; int num_layers = 5; int dir_count = 1; std::vector input_shape = {seq_length, batch_size, num_units}; std::vector input_h_shape = {num_layers * dir_count, batch_size, num_units}; std::vector output_shape = {seq_length, batch_size, num_units * dir_count}; auto shape_to_str = [](const std::vector& v) { return strings::StrCat("[", str_util::Join(v, ","), "]"); }; string input_shapes_desc = strings::StrCat( shape_to_str(input_shape), ";", shape_to_str(input_h_shape), ";", shape_to_str(input_h_shape), ";", "[?]"); string output_shapes_desc = "[d0_0,d0_1,d1_2];in1;in1;?;?"; ShapeInferenceTestOp op("CudnnRNNV2"); TF_ASSERT_OK(NodeDefBuilder("test", "CudnnRNNV2") .Input({"input", 0, DT_FLOAT}) .Input({"input_h", 0, DT_FLOAT}) .Input({"input_c", 0, DT_FLOAT}) .Input({"params", 0, DT_FLOAT}) .Attr("rnn_mode", "lstm") .Attr("input_mode", "auto_select") .Attr("direction", "unidirectional") .Finalize(&op.node_def)); INFER_OK(op, input_shapes_desc, output_shapes_desc); } } // end namespace tensorflow