/* Copyright 2015 The TensorFlow Authors. All Rights Reserved. Licensed under the Apache License, Version 2.0 (the "License"); you may not use this file except in compliance with 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/util/saved_tensor_slice_util.h" #include "tensorflow/core/lib/core/errors.h" #include "tensorflow/core/lib/strings/ordered_code.h" #include "tensorflow/core/lib/strings/str_util.h" namespace tensorflow { namespace checkpoint { const char kSavedTensorSlicesKey[] = ""; string EncodeTensorNameSlice(const string& name, const TensorSlice& slice) { string buffer; // All the tensor slice keys will start with a 0 tensorflow::strings::OrderedCode::WriteNumIncreasing(&buffer, 0); tensorflow::strings::OrderedCode::WriteString(&buffer, name); tensorflow::strings::OrderedCode::WriteNumIncreasing(&buffer, slice.dims()); for (int d = 0; d < slice.dims(); ++d) { // A trivial extent (meaning we take EVERYTHING) will default to -1 for both // start and end. These will be properly parsed. tensorflow::strings::OrderedCode::WriteSignedNumIncreasing(&buffer, slice.start(d)); tensorflow::strings::OrderedCode::WriteSignedNumIncreasing(&buffer, slice.length(d)); } return buffer; } Status DecodeTensorNameSlice(const string& code, string* name, tensorflow::TensorSlice* slice) { StringPiece src(code); uint64 x; if (!tensorflow::strings::OrderedCode::ReadNumIncreasing(&src, &x)) { return errors::Internal("Failed to parse the leading number: src = ", src); } if (x != 0) { return errors::Internal( "The leading number should always be 0 for any valid key: src = ", src); } if (!tensorflow::strings::OrderedCode::ReadString(&src, name)) { return errors::Internal("Failed to parse the tensor name: src = ", src); } if (!tensorflow::strings::OrderedCode::ReadNumIncreasing(&src, &x)) { return errors::Internal("Failed to parse the tensor rank: src = ", src); } if (x == 0) { return errors::Internal("Expecting positive rank of the tensor, got ", x, ", src = ", src); } if (x >= kint32max) { return errors::Internal("Too many elements ", x); } slice->SetFullSlice(x); for (int d = 0; d < static_cast(x); ++d) { // We expected 2x integers int64 start, length; if (!tensorflow::strings::OrderedCode::ReadSignedNumIncreasing(&src, &start)) { return errors::Internal("Failed to parse start: src = ", src); } if (!tensorflow::strings::OrderedCode::ReadSignedNumIncreasing(&src, &length)) { return errors::Internal("Failed to parse length: src = ", src); } if (length >= 0) { // a non-trivial extent slice->set_start(d, start); slice->set_length(d, length); } } return Status::OK(); } Status ParseShapeAndSlice(const string& shape_and_slice, TensorShape* shape, TensorSlice* slice, TensorShape* shape_slice) { CHECK(!shape_and_slice.empty()); // Syntax: dim0 dim1 dim2 ... // Where slice string is defined in core/framework/tensor_slice.h std::vector splits = str_util::Split(shape_and_slice, ' '); // Must have at least 2 strings. if (splits.size() < 2) { return errors::InvalidArgument( "Need least two elements in shape_and_slice specification: ", shape_and_slice); } // The last split is the slice specification. slice->Clear(); auto status = slice->Parse(splits.back(), slice); if (!status.ok()) return status; // The first n-1 are the shape specification. splits.pop_back(); shape->Clear(); for (const auto& s : splits) { int64 dim; if (!strings::safe_strto64(s, &dim)) { return errors::InvalidArgument( "Non numerical dimension in shape_and_slice: ", shape_and_slice); } shape->AddDim(dim); } // The specified slice must be compatible with the specified shape. return slice->SliceTensorShape(*shape, shape_slice); } } // namespace checkpoint } // namespace tensorflow