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      1 /* Copyright 2015 The TensorFlow Authors. All Rights Reserved.
      2 
      3 Licensed under the Apache License, Version 2.0 (the "License");
      4 you may not use this file except in compliance with the License.
      5 You may obtain a copy of the License at
      6 
      7     http://www.apache.org/licenses/LICENSE-2.0
      8 
      9 Unless required by applicable law or agreed to in writing, software
     10 distributed under the License is distributed on an "AS IS" BASIS,
     11 WITHOUT WARRANTIES OR CONDITIONS OF ANY KIND, either express or implied.
     12 See the License for the specific language governing permissions and
     13 limitations under the License.
     14 ==============================================================================*/
     15 
     16 #ifndef TENSORFLOW_CORE_FRAMEWORK_TENSOR_SHAPE_H_
     17 #define TENSORFLOW_CORE_FRAMEWORK_TENSOR_SHAPE_H_
     18 
     19 #include <string>
     20 
     21 #include "third_party/eigen3/unsupported/Eigen/CXX11/Tensor"
     22 #include "tensorflow/core/framework/types.pb.h"
     23 #include "tensorflow/core/lib/core/errors.h"
     24 #include "tensorflow/core/lib/core/status.h"
     25 #include "tensorflow/core/lib/core/stringpiece.h"
     26 #include "tensorflow/core/lib/gtl/array_slice.h"
     27 #include "tensorflow/core/lib/gtl/inlined_vector.h"
     28 #include "tensorflow/core/lib/strings/strcat.h"
     29 #include "tensorflow/core/platform/logging.h"
     30 
     31 namespace tensorflow {
     32 
     33 // START_SKIP_DOXYGEN
     34 template <class Shape>
     35 class TensorShapeIter;
     36 class TensorShape;
     37 class TensorShapeProto;
     38 class PartialTensorShape;
     39 // END_SKIP_DOXYGEN
     40 
     41 /// Internal representation for both TensorShape and PartialTensorShape.
     42 class TensorShapeRep {
     43  public:
     44   ~TensorShapeRep();
     45 
     46   /// Copy the specified shape
     47   TensorShapeRep(const TensorShapeRep& b);
     48   void operator=(const TensorShapeRep& b);
     49 
     50   /// Move the specified shape.  After moving, <b> is safe for destruction and
     51   // can be reassigned into, but its dimensions and number of elements can be
     52   // nonsensical (e.g., negative dimension sizes, or number of elements not
     53   // properly recomputed).
     54   TensorShapeRep(TensorShapeRep&& b);
     55   void operator=(TensorShapeRep&& b);
     56 
     57   /// Clear a tensor shape, producing the scalar shape.
     58   void Clear();
     59 
     60   // Maximum number of dimensions in a tensor.
     61   // It's 254 because 255 = kUnknownRank is used to represent unknown rank.
     62   static constexpr int MaxDimensions() { return 254; }
     63 
     64   /// \brief Returns the number of elements in the tensor.
     65   ///
     66   /// We use `int64` and not `size_t` to be compatible with `Eigen::Tensor`
     67   /// which uses `ptrdiff_t`.  For PartialTensorShape, -1 means not fully
     68   /// defined.
     69   int64 num_elements() const { return num_elements_; }
     70 
     71   /// For error messages.
     72   string DebugString() const;
     73   static string DebugString(const TensorShapeProto& proto);
     74 
     75   void DumpRep() const;  // XXX
     76 
     77  protected:
     78   // Constructable only via TensorShapeBase
     79   TensorShapeRep() = default;
     80 
     81   void ClearAllButDataType();
     82 
     83   // We use 16 bytes to represent a TensorShape.  Because we need to
     84   // be able to support full 64-bit dimension sizes and an arbitrary
     85   // number of dimensions for a Tensor, but most tensor dimensions are
     86   // significantly smaller than 64 bits and most tensors are 1, 2, or 3
     87   // dimensions, we have several representations.
     88   // Rep16: Supports up to 6 dimensions where each dimension is < 2^16 - 1
     89   // Rep32: Supports up to 3 dimensions where each dimension is < 2^32 - 1
     90   // Rep64: Supports arbitrary dimensionality, 64-bit dimensions using
     91   //        an out of line vector.
     92   // For PartialTensorShape, a dimension of static_cast<uint??>(-1) is unknown.
     93   // This value is not allowed in TensorShape either for format compatibility.
     94   struct Rep16 {
     95     uint16 dims_[6];
     96   };
     97   struct Rep32 {
     98     uint32 dims_[3];
     99   };
    100   struct Rep64 {
    101     gtl::InlinedVector<int64, 4>* dims_;
    102   };
    103 
    104   // We use the max value of uint16 or uint32 to represent unknown shapes, so
    105   // the maximum representable valid shape in these representations is one less.
    106   static const int64 kMaxRep16 = std::numeric_limits<uint16>::max() - 1;
    107   static const int64 kMaxRep32 = std::numeric_limits<uint32>::max() - 1;
    108   static const uint16 kUnknownRep16 = std::numeric_limits<uint16>::max();
    109   static const uint32 kUnknownRep32 = std::numeric_limits<uint32>::max();
    110 
    111   Rep16* as16() { return reinterpret_cast<Rep16*>(buf()); }
    112   Rep32* as32() { return reinterpret_cast<Rep32*>(buf()); }
    113   Rep64* as64() { return reinterpret_cast<Rep64*>(buf()); }
    114 
    115   const Rep16* as16() const { return reinterpret_cast<const Rep16*>(buf()); }
    116   const Rep32* as32() const { return reinterpret_cast<const Rep32*>(buf()); }
    117   const Rep64* as64() const { return reinterpret_cast<const Rep64*>(buf()); }
    118 
    119   enum RepTag { REP16 = 0, REP32 = 1, REP_OUT_OF_LINE = 2 };
    120 
    121   // Since we have a convenient extra byte available, we allow the
    122   // Tensor class to store an 8-bit value in this extra storage.  This
    123   // allows it to store the Tensor's datatype enum value here and avoid
    124   // an extra word of storage.
    125   friend class Tensor;
    126   friend class TensorShapeTestHelper;
    127   DataType data_type() const { return static_cast<DataType>(buf()[13]); }
    128   void set_data_type(DataType dt) {
    129     // We only have 8 bits available to store DataType, so make sure it fits
    130     DCHECK_LT(static_cast<uint32>(dt), 256u);
    131     buf()[13] = static_cast<uint8>(dt);
    132   }
    133 
    134   // We store the number of dimensions in byte 14, and the RepTag in byte 15.
    135   // Bytes [0..13] vary depending on the representation.
    136   // A value of 255 indicates unknown rank in the PartialTensorShape case.
    137   static const uint8 kUnknownRank = 255;
    138   uint8 ndims_byte() const { return buf()[14]; }
    139   void set_ndims_byte(uint8 nd) { buf()[14] = nd; }
    140 
    141   RepTag tag() const { return static_cast<RepTag>(buf()[15]); }
    142   void set_tag(RepTag tag) { buf()[15] = static_cast<uint8>(tag); }
    143 
    144   void set_num_elements(int64 n) { num_elements_ = n; }
    145 
    146  private:
    147   void DestructorOutOfLine();
    148   void SlowCopyFrom(const TensorShapeRep& b);
    149 
    150   uint8* buf() { return &u_.buf[0]; }
    151   const uint8* buf() const { return &u_.buf[0]; }
    152 
    153   union {
    154     uint8 buf[16];
    155     // Force data to be aligned enough for a pointer.
    156     Rep64* unused_aligner;
    157   } u_;
    158   int64 num_elements_;
    159 };
    160 
    161 /// Base class for TensorShape and PartialTensorShape.
    162 /// The class is templatized by either TensorShape or PartialTensorShape to
    163 /// allow skipping known/unknown checks in the TensorShape case, but the
    164 /// representation is shared exactly for fast conversion.
    165 template <class Shape>
    166 class TensorShapeBase : public TensorShapeRep {
    167  public:
    168   /// \brief Construct a `TensorShapeBase` from the provided sizes.
    169   /// REQUIRES: `dim_sizes[i] >= 0` (or >= -1 for PartialTensorShape)
    170   explicit TensorShapeBase(gtl::ArraySlice<int64> dim_sizes);
    171   TensorShapeBase(std::initializer_list<int64> dim_sizes)
    172       : TensorShapeBase(gtl::ArraySlice<int64>(dim_sizes)) {}
    173 
    174   /// Construct an empty TensorShape, or an unknown rank PartialTensorShape
    175   TensorShapeBase();
    176 
    177   TensorShapeBase(const TensorShapeProto& proto);
    178 
    179   /// Returns `true` iff `proto` is a valid tensor shape.
    180   // For TensorShape, the proto shape must be fully defined.
    181   static bool IsValid(const TensorShapeProto& proto);
    182 
    183   /// Returns `OK` iff `proto` is a valid tensor shape, and a descriptive error
    184   /// status otherwise.
    185   static Status IsValidShape(const TensorShapeProto& proto);
    186 
    187   /// \brief Add a dimension to the end ("inner-most").
    188   /// REQUIRES: `size >= 0`
    189   void AddDim(int64 size);
    190 
    191   /// Appends all the dimensions from `shape`.
    192   void AppendShape(const TensorShapeBase& shape);
    193 
    194   /// \brief Insert a dimension somewhere in the `TensorShape`.
    195   /// REQUIRES: `0 <= d <= dims()`
    196   /// REQUIRES: `size >= 0`
    197   void InsertDim(int d, int64 size);
    198 
    199   /// \brief Modifies the size of the dimension `d` to be `size`
    200   /// REQUIRES: `0 <= d < dims()`
    201   /// REQUIRES: `size >= 0`
    202   void set_dim(int d, int64 size);
    203 
    204   /// \brief Removes dimension `d` from the `TensorShape`.
    205   /// REQUIRES: `0 <= d < dims()`
    206   void RemoveDim(int d) {
    207     CHECK_GE(d, 0);
    208     RemoveDimRange(d, d + 1);
    209   }
    210 
    211   /// \brief Removes last `n` dimensions from the `TensorShape`.
    212   /// REQUIRES: `0 <= n <= dims()`
    213   void RemoveLastDims(int n) {
    214     CHECK_LE(n, dims());
    215     RemoveDimRange(dims() - n, dims());
    216   }
    217 
    218   /// \brief Removes the dimensions in range `[begin:end)` from `TensorShape`.
    219   /// Negative values of `end` are interpreted as `dims() + end + 1` (as in
    220   /// Python). The same is true for negative values of `begin`. REQUIRES:
    221   /// `-(dims()+1) <= begin <= dims()` REQUIRES: `-(dims()+1) <= end <= dims()`
    222   void RemoveDimRange(int begin, int end);
    223 
    224   /// Return whether the rank is unknown
    225   bool unknown_rank() const {
    226     return kIsPartial && ndims_byte() == kUnknownRank;
    227   }
    228 
    229   /// Return the number of dimensions in the tensor.
    230   /// Can be -1 meaning unknown rank for PartialTensorShape.
    231   int dims() const {
    232     uint8 dims = ndims_byte();
    233     return kIsPartial && dims == kUnknownRank ? -1 : dims;
    234   }
    235 
    236   /// \brief Returns the number of elements in dimension `d`.
    237   /// REQUIRES: `0 <= d < dims()`
    238   // TODO(touts): Rename to `dimension()` to match
    239   // `Eigen::Tensor::dimension()`?
    240   int64 dim_size(int d) const;
    241 
    242   /// Returns sizes of all dimensions.
    243   // Returns an empty list for unknown rank PartialTensorShape.
    244   gtl::InlinedVector<int64, 4> dim_sizes() const;
    245 
    246   /// Return true iff the rank and all of the dimensions are well defined
    247   // TODO(irving): Rename to is_fully_defined now that it's fast.
    248   bool IsFullyDefined() const { return !kIsPartial || num_elements() != -1; }
    249 
    250   /// Fill `*proto` from `*this`.
    251   void AsProto(TensorShapeProto* proto) const;
    252 
    253   /// For iterating through the dimensions.
    254   TensorShapeIter<Shape> begin() const;
    255   TensorShapeIter<Shape> end() const;
    256 
    257  private:
    258   void RecomputeNumElements();
    259 
    260   // True for PartialTensorShape, false for TensorShape
    261   static constexpr bool kIsPartial =
    262       std::is_same<Shape, PartialTensorShape>::value;
    263   static_assert(kIsPartial || std::is_same<Shape, TensorShape>::value,
    264                 "Shape is neither TensorShape nor PartialTensorShape");
    265 
    266   // Used by AddDim and MakeShapeHelper.  Does no error checking.
    267   void UnsafeAddDim(int64 size, int64 new_num_elements);
    268 
    269   // For use by TensorShapeUtils::MakeShape
    270   template <class T, class S>
    271   friend Status MakeShapeHelper(const T*, int64, S*);
    272 };
    273 
    274 /// Represents the shape of a Tensor.
    275 ///
    276 /// A tensor's shape is denoted by its number of dimensions and a size for each
    277 /// dimension.  For example, a Tensor represented by a 3 x 4 matrix would have
    278 /// a shape of 2-D, [3,4].
    279 ///
    280 /// If you know the exact shape of your Tensor when you create the TensorShape
    281 /// object, you can specify it then, or you can create a TensorShape with
    282 /// zero dimensions and one element, and call AddDim() to add dimensions later.
    283 class TensorShape : public TensorShapeBase<TensorShape> {
    284  public:
    285   using TensorShapeBase<TensorShape>::TensorShapeBase;
    286 
    287   /// Allow a TensorShape to be used as a PartialTensorShape without copying
    288   operator const PartialTensorShape&() const;  // NOLINT(runtime/explicit)
    289 
    290   /// Returns true if `*this` and `b` have the same sizes. Ignores
    291   /// dimension names.
    292   bool IsSameSize(const TensorShape& b) const;
    293   bool operator==(const TensorShape& b) const { return IsSameSize(b); }
    294   bool operator!=(const TensorShape& b) const { return !IsSameSize(b); }
    295 
    296   /// Fill `*dsizes` from `*this`.
    297   template <int NDIMS>
    298   Eigen::DSizes<Eigen::DenseIndex, NDIMS> AsEigenDSizes() const;
    299 
    300   /// Same as `AsEigenDSizes()` but allows for `NDIMS > dims()` -- in
    301   /// which case we pad the rest of the sizes with 1.
    302   template <int NDIMS>
    303   Eigen::DSizes<Eigen::DenseIndex, NDIMS> AsEigenDSizesWithPadding() const;
    304 
    305  private:
    306   // These CHECK fail to ease debugging.
    307   // REQUIRES: dims() == NDIMS
    308   void CheckDimsEqual(int NDIMS) const;
    309   // REQUIRES: dims() >= NDIMS
    310   void CheckDimsAtLeast(int NDIMS) const;
    311 };
    312 
    313 /// Represents the value of one dimension in a TensorShape.
    314 struct TensorShapeDim {
    315   explicit TensorShapeDim(int64 s) : size(s) {}
    316   int64 size;
    317 };
    318 
    319 // START_SKIP_DOXYGEN
    320 template <class Shape>
    321 class TensorShapeIter {
    322  public:
    323   TensorShapeIter(const Shape* shape, int d) : shape_(shape), d_(d) {}
    324   bool operator==(const TensorShapeIter& rhs) {
    325     DCHECK(shape_ == rhs.shape_);
    326     return d_ == rhs.d_;
    327   }
    328   bool operator!=(const TensorShapeIter& rhs) {
    329     DCHECK(shape_ == rhs.shape_);
    330     return d_ != rhs.d_;
    331   }
    332   void operator++() { ++d_; }
    333   TensorShapeDim operator*() { return TensorShapeDim(shape_->dim_size(d_)); }
    334 
    335  private:
    336   const Shape* shape_;
    337   int d_;
    338 };
    339 // END_SKIP_DOXYGEN
    340 
    341 /// \brief Static helper routines for `TensorShape`. Includes a few common
    342 /// predicates on a tensor shape.
    343 class TensorShapeUtils {
    344  public:
    345   static bool IsScalar(const TensorShape& shape) { return shape.dims() == 0; }
    346 
    347   static bool IsVector(const TensorShape& shape) { return shape.dims() == 1; }
    348 
    349   static bool IsVectorOrHigher(const TensorShape& shape) {
    350     return shape.dims() >= 1;
    351   }
    352 
    353   static bool IsMatrix(const TensorShape& shape) { return shape.dims() == 2; }
    354 
    355   static bool IsSquareMatrix(const TensorShape& shape) {
    356     return shape.dims() == 2 && shape.dim_size(0) == shape.dim_size(1);
    357   }
    358 
    359   static bool IsMatrixOrHigher(const TensorShape& shape) {
    360     return shape.dims() >= 2;
    361   }
    362 
    363   /// \brief Returns a `TensorShape` whose dimensions are
    364   /// `dims[0]`, `dims[1]`, ..., `dims[n-1]`.
    365   static Status MakeShape(const int32* dims, int64 n, TensorShape* out);
    366   static Status MakeShape(const int64* dims, int64 n, TensorShape* out);
    367   static Status MakeShape(gtl::ArraySlice<int32> shape, TensorShape* out);
    368   static Status MakeShape(gtl::ArraySlice<int64> shape, TensorShape* out);
    369   static Status MakeShape(const int32* dims, int64 n, PartialTensorShape* out);
    370   static Status MakeShape(const int64* dims, int64 n, PartialTensorShape* out);
    371   static Status MakeShape(gtl::ArraySlice<int32> shape,
    372                           PartialTensorShape* out);
    373   static Status MakeShape(gtl::ArraySlice<int64> shape,
    374                           PartialTensorShape* out);
    375 
    376   static string ShapeListString(const gtl::ArraySlice<TensorShape>& shapes);
    377 
    378   /// \brief Returns true iff `shape` starts with `prefix`.
    379   static bool StartsWith(const TensorShape& shape, const TensorShape& prefix);
    380 
    381   /// \brief Returns true iff `shape` ends with `suffix`.
    382   static bool EndsWith(const TensorShape& shape, const TensorShape& suffix);
    383 
    384   /// \brief Returns the product of values in an int64 array,
    385   /// or a failing Status if the array represents a value larger than
    386   /// a `TensorShape` can hold.
    387   static Status NumElements(gtl::ArraySlice<int64> shape, int64* num_elements);
    388 };
    389 
    390 /// Manages the partially known dimensions of a Tensor and their sizes.
    391 class PartialTensorShape : public TensorShapeBase<PartialTensorShape> {
    392  public:
    393   PartialTensorShape() {}
    394   using TensorShapeBase<PartialTensorShape>::TensorShapeBase;
    395 
    396   /// Add a dimension to the end ("inner-most"), returns a new
    397   /// PartialTensorShape.
    398   /// REQUIRES: `size >= -1`, where -1 means unknown
    399   PartialTensorShape Concatenate(int64 size) const;
    400 
    401   /// Appends all the dimensions from `shape`.  Returns a new
    402   /// PartialTensorShape.
    403   PartialTensorShape Concatenate(const PartialTensorShape& shape) const;
    404 
    405   /// Merges all the dimensions from `shape`.  Returns
    406   /// `InvalidArgument` error if either `shape` has a different rank
    407   /// or if any of the dimensions are incompatible.
    408   Status MergeWith(const PartialTensorShape& shape,
    409                    PartialTensorShape* result) const;
    410 
    411   /// Exact equality test. Returns true iff the ranks match (i.e., both are
    412   /// unknown, or both are known and equal), and all dimensions are equal (i.e.,
    413   /// both dimensions are known, or both are known and equal). This is a
    414   /// stronger condition that IsCompatibleWith.
    415   bool IsIdenticalTo(const PartialTensorShape& shape) const;
    416 
    417   /// Return true iff the ranks match, and if the
    418   /// dimensions all either match or one is unknown.
    419   bool IsCompatibleWith(const PartialTensorShape& shape) const;
    420 
    421   // Fill `*shape` from `*this`.
    422   // If `*this` is not fully defined, returns false and
    423   // `*shape` is left in an intermediate state.  Otherwise
    424   // returns true.
    425   bool AsTensorShape(TensorShape* shape) const;
    426 
    427   /// \brief Returns a `PartialTensorShape` whose dimensions are
    428   /// `dims[0]`, `dims[1]`, ..., `dims[n-1]`.  Values of -1 are
    429   /// considered "unknown".
    430   template <class T>
    431   static Status MakePartialShape(const T* dims, int n,
    432                                  PartialTensorShape* out) {
    433     return TensorShapeUtils::MakeShape(dims, n, out);
    434   }
    435 };
    436 
    437 /// \brief Static helper routines for `PartialTensorShape`. Includes a few
    438 /// common predicates on a partially known tensor shape.
    439 class PartialTensorShapeUtils {
    440  public:
    441   static string PartialShapeListString(
    442       const gtl::ArraySlice<PartialTensorShape>& shapes);
    443 
    444   static bool AreIdentical(const gtl::ArraySlice<PartialTensorShape>& shapes0,
    445                            const gtl::ArraySlice<PartialTensorShape>& shapes1);
    446 
    447   static bool AreCompatible(const gtl::ArraySlice<PartialTensorShape>& shapes0,
    448                             const gtl::ArraySlice<PartialTensorShape>& shapes1);
    449 };
    450 
    451 // ----------------------------------------------------------------------------
    452 // Template method implementation details below
    453 // ----------------------------------------------------------------------------
    454 
    455 template <int NDIMS>
    456 Eigen::DSizes<Eigen::DenseIndex, NDIMS> TensorShape::AsEigenDSizes() const {
    457   CheckDimsEqual(NDIMS);
    458   return AsEigenDSizesWithPadding<NDIMS>();
    459 }
    460 
    461 template <int NDIMS>
    462 Eigen::DSizes<Eigen::DenseIndex, NDIMS> TensorShape::AsEigenDSizesWithPadding()
    463     const {
    464   CheckDimsAtLeast(NDIMS);
    465   static_assert(NDIMS <= TensorShape::MaxDimensions(), "Too many dimensions");
    466   Eigen::DSizes<Eigen::DenseIndex, NDIMS> dsizes;
    467   for (int d = 0; d < dims(); d++) {
    468     dsizes[d] = dim_size(d);
    469   }
    470   for (int d = dims(); d < NDIMS; d++) {
    471     dsizes[d] = 1;
    472   }
    473   return dsizes;
    474 }
    475 
    476 // ----------------------------------------------------------------------------
    477 // Inlining of some performance critical routines
    478 // ----------------------------------------------------------------------------
    479 
    480 inline TensorShapeRep::TensorShapeRep(const TensorShapeRep& b) {
    481   num_elements_ = b.num_elements_;
    482   if (b.tag() != REP_OUT_OF_LINE) {
    483     memcpy(buf(), b.buf(), sizeof(u_.buf));
    484     // memcpy above Implicitly does:
    485     //   set_ndims_byte(b.ndims_byte());
    486     //   set_tag(b.tag());
    487   } else {
    488     set_tag(REP16);  // So that SlowCopyFrom does not try to deallocate
    489     SlowCopyFrom(b);
    490   }
    491 }
    492 
    493 inline TensorShapeRep::TensorShapeRep(TensorShapeRep&& b) {
    494   num_elements_ = b.num_elements_;
    495   memcpy(buf(), b.buf(), sizeof(u_.buf));
    496   // memcpy above Implicitly does:
    497   //   set_ndims_byte(b.ndims_byte());
    498   //   set_tag(b.tag());
    499   b.set_tag(REP16);  // other shape no longer owns out-of-line data, if any.
    500 }
    501 
    502 inline TensorShapeRep::~TensorShapeRep() {
    503   if (tag() == REP_OUT_OF_LINE) {
    504     DestructorOutOfLine();
    505   }
    506 }
    507 
    508 inline void TensorShapeRep::operator=(const TensorShapeRep& b) {
    509   num_elements_ = b.num_elements_;
    510   if (tag() != REP_OUT_OF_LINE && b.tag() != REP_OUT_OF_LINE) {
    511     memcpy(buf(), b.buf(), sizeof(u_.buf));
    512     // memcpy above implicitly also does:
    513     //   set_tag(b.tag());
    514     //   set_ndims_byte(b.ndims_byte());
    515   } else {
    516     SlowCopyFrom(b);
    517   }
    518 }
    519 
    520 inline void TensorShapeRep::operator=(TensorShapeRep&& b) {
    521   if (tag() == REP_OUT_OF_LINE) {
    522     DestructorOutOfLine();
    523   }
    524   num_elements_ = b.num_elements_;
    525   memcpy(buf(), b.buf(), sizeof(u_.buf));
    526   // memcpy above Implicitly does:
    527   //   set_ndims_byte(b.ndims_byte());
    528   //   set_tag(b.tag());
    529   b.set_tag(REP16);  // other shape no longer owns out-of-line data, if any.
    530 }
    531 
    532 inline TensorShape::operator const PartialTensorShape&() const {
    533   // Downcast to the shared representation and upcast to PartialTensorShape
    534   const TensorShapeRep* rep = this;
    535   return *static_cast<const PartialTensorShape*>(rep);
    536 }
    537 
    538 // Declare explicit instantiations in .cc file
    539 extern template class TensorShapeBase<TensorShape>;
    540 extern template class TensorShapeBase<PartialTensorShape>;
    541 
    542 }  // namespace tensorflow
    543 
    544 #endif  // TENSORFLOW_CORE_FRAMEWORK_TENSOR_SHAPE_H_
    545