/* 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. ==============================================================================*/ // IWYU pragma: private, include "third_party/tensorflow/stream_executor/stream_executor.h" #ifndef TENSORFLOW_STREAM_EXECUTOR_LIB_CASTS_H_ #define TENSORFLOW_STREAM_EXECUTOR_LIB_CASTS_H_ #include namespace stream_executor { namespace port { // port::bit_cast is a template function that implements the // equivalent of "*reinterpret_cast(&source)". We need this in // very low-level functions like the protobuf library and fast math // support. // // float f = 3.14159265358979; // int i = port::bit_cast(f); // // i = 0x40490fdb // // The classical address-casting method is: // // // WRONG // float f = 3.14159265358979; // WRONG // int i = * reinterpret_cast(&f); // WRONG // // The address-casting method actually produces undefined behavior // according to ISO C++ specification section 3.10 -15 -. Roughly, this // section says: if an object in memory has one type, and a program // accesses it with a different type, then the result is undefined // behavior for most values of "different type". // // This is true for any cast syntax, either *(int*)&f or // *reinterpret_cast(&f). And it is particularly true for // conversions between integral lvalues and floating-point lvalues. // // The purpose of 3.10 -15- is to allow optimizing compilers to assume // that expressions with different types refer to different memory. gcc // 4.0.1 has an optimizer that takes advantage of this. So a // non-conforming program quietly produces wildly incorrect output. // // The problem is not the use of reinterpret_cast. The problem is type // punning: holding an object in memory of one type and reading its bits // back using a different type. // // The C++ standard is more subtle and complex than this, but that // is the basic idea. // // Anyways ... // // port::bit_cast<> calls memcpy() which is blessed by the standard, // especially by the example in section 3.9 . Also, of course, // port::bit_cast<> wraps up the nasty logic in one place. // // Fortunately memcpy() is very fast. In optimized mode, with a // constant size, gcc 2.95.3, gcc 4.0.1, and msvc 7.1 produce inline // code with the minimal amount of data movement. On a 32-bit system, // memcpy(d,s,4) compiles to one load and one store, and memcpy(d,s,8) // compiles to two loads and two stores. // // I tested this code with gcc 2.95.3, gcc 4.0.1, icc 8.1, and msvc 7.1. // // WARNING: if Dest or Source is a non-POD type, the result of the memcpy // is likely to surprise you. // // Props to Bill Gibbons for the compile time assertion technique and // Art Komninos and Igor Tandetnik for the msvc experiments. // // -- mec 2005-10-17 template inline Dest bit_cast(const Source& source) { // Compile time assertion: sizeof(Dest) == sizeof(Source) // A compile error here means your Dest and Source have different sizes. static_assert(sizeof(Dest) == sizeof(Source), "src and dst types must have equal sizes"); Dest dest; memcpy(&dest, &source, sizeof(dest)); return dest; } } // namespace port } // namespace stream_executor #endif // TENSORFLOW_STREAM_EXECUTOR_LIB_CASTS_H_