summaryrefslogtreecommitdiff
path: root/gnu/packages/patches/tensorflow-c-api-fix.patch
blob: 7f39b9f60fd0c596b590bdd570dbaac5daa35f20 (plain)
1
2
3
4
5
6
7
8
9
10
11
12
13
14
15
16
17
18
19
20
21
22
23
24
25
26
27
28
29
30
31
32
33
34
35
36
37
38
39
40
41
42
43
44
45
46
47
48
49
50
51
52
53
54
55
56
57
58
59
60
61
62
63
64
65
66
67
68
69
70
71
72
73
74
75
76
77
78
79
80
81
82
83
84
85
86
87
88
89
90
91
92
93
94
95
96
97
98
99
100
101
102
103
104
105
106
107
108
109
110
111
112
113
114
115
116
117
118
119
120
121
122
123
124
125
126
127
128
129
130
131
132
133
134
135
136
137
138
139
140
141
142
143
144
145
146
147
148
149
150
151
152
153
154
155
156
157
158
159
160
161
162
163
164
165
166
167
168
169
170
171
172
173
174
175
176
177
178
179
180
181
182
183
184
185
186
187
188
189
190
191
192
193
194
195
196
197
198
199
200
201
202
203
204
205
206
207
208
209
210
211
212
213
214
215
216
217
218
219
220
221
222
223
224
225
226
227
228
229
230
231
232
233
234
235
236
237
238
239
240
241
242
243
244
245
246
247
248
249
250
251
252
253
254
255
256
257
258
259
260
261
262
263
264
265
266
267
268
269
270
271
272
273
274
275
276
277
278
279
280
281
282
283
284
285
286
287
288
289
290
291
292
293
294
295
296
297
298
299
300
301
302
303
304
305
306
307
308
309
310
311
312
From eb61daae91432be0b07bb2f6854887bedfa6fc95 Mon Sep 17 00:00:00 2001
From: Asim Shankar <ashankar@google.com>
Date: Tue, 26 Jun 2018 00:57:33 -0700
Subject: [PATCH] [C API]: Bugfix for TF_AddGradients.

TF_AddGradients could create nodes in the graph with names that conflicted with
other nodes in the graph. This would most clearly happen if TF_AddGradients()
was called twice on the same graph, and could also happen if there were other
nodes in the graph that happened to have "gradients" as a prefix of their name.

Fix that.

The added test in c_api_test.cc would fail in the call to TF_SessionRun() with
  Node 'gradients/OnesLike' is not unique
without the changes to c_api.cc and c_api_internal.h

While at it, also fixed a possible name collision bug when using the C++ API
to constructor graphs (using Scope).

Thanks @karllessard for pointing this out.

PiperOrigin-RevId: 202087996
---
 tensorflow/c/c_api.cc                    | 13 ++++-
 tensorflow/c/c_api_test.cc               | 65 ++++++++++++++++++++++--
 tensorflow/c/c_test_util.cc              |  7 +++
 tensorflow/c/c_test_util.h               |  3 ++
 tensorflow/cc/framework/scope.cc         | 30 ++++++++---
 tensorflow/cc/framework/scope_internal.h |  3 +-
 tensorflow/cc/framework/scope_test.cc    | 10 ++++
 7 files changed, 116 insertions(+), 15 deletions(-)

diff --git a/tensorflow/c/c_api.cc b/tensorflow/c/c_api.cc
index 09a03639d6fa3..37c8302e08bc3 100644
--- a/tensorflow/c/c_api.cc
+++ b/tensorflow/c/c_api.cc
@@ -2414,7 +2414,18 @@ void TF_AddGradients(TF_Graph* g, TF_Output* y, int ny, TF_Output* x, int nx,
     for (int i = first_new_node_id; i < g->graph.num_node_ids(); ++i) {
       Node* n = g->graph.FindNodeId(i);
       if (n == nullptr) continue;
-      g->name_map[n->name()] = n;
+      // We have a convoluted scheme here: Using the C++ graph construction API
+      // to add potentially many nodes to the graph without running the checks
+      // (such as uniqueness of the names of nodes) we run with other functions
+      // that add a node to the graph (like TF_FinishOperation).
+      if (!g->name_map.insert(std::make_pair(n->name(), n)).second) {
+        status->status = tensorflow::errors::Internal(
+            "BUG: The API allowed construction of a graph with duplicate node "
+            "names (",
+            n->name(),
+            "). This is a bug. Please file an issue at "
+            "https://github.com/tensorflow/tensorflow/issues.");
+      }
     }
   }
 
diff --git a/tensorflow/c/c_api_test.cc b/tensorflow/c/c_api_test.cc
index 577f10c5e69ea..bc04b53fbb7fa 100644
--- a/tensorflow/c/c_api_test.cc
+++ b/tensorflow/c/c_api_test.cc
@@ -1160,7 +1160,7 @@ TEST(CAPI, GetOpDef) {
 }
 
 void StringVectorToArrays(const std::vector<string>& v,
-                          std::unique_ptr<const void* []>* ptrs,
+                          std::unique_ptr<const void*[]>* ptrs,
                           std::unique_ptr<size_t[]>* lens) {
   ptrs->reset(new const void*[v.size()]);
   lens->reset(new size_t[v.size()]);
@@ -1196,7 +1196,7 @@ class CApiColocationTest : public ::testing::Test {
 
   void SetViaStringList(TF_OperationDescription* desc,
                         const std::vector<string>& list) {
-    std::unique_ptr<const void* []> list_ptrs;
+    std::unique_ptr<const void*[]> list_ptrs;
     std::unique_ptr<size_t[]> list_lens;
     StringVectorToArrays(list, &list_ptrs, &list_lens);
     TF_SetAttrStringList(desc, tensorflow::kColocationAttrName, list_ptrs.get(),
@@ -1700,6 +1700,61 @@ TEST_F(CApiGradientsTest, OpWithNoGradientRegistered_NoGradInputs) {
   TestGradientsError(false);
 }
 
+void ScalarFloatFromTensor(const TF_Tensor* t, float* f) {
+  ASSERT_TRUE(t != nullptr);
+  ASSERT_EQ(TF_FLOAT, TF_TensorType(t));
+  ASSERT_EQ(0, TF_NumDims(t));
+  ASSERT_EQ(4, TF_TensorByteSize(t));
+  float* p = static_cast<float*>(TF_TensorData(t));
+  *f = *p;
+}
+
+TEST_F(CApiGradientsTest, MultipleCallsToAddGradients) {
+  const float X = 3.0f, Y = 7.0f;
+  TF_Operation* x = Placeholder(graph_, s_, "x", TF_FLOAT);
+  TF_Operation* y = Placeholder(graph_, s_, "y", TF_FLOAT);
+  TF_Operation* xy = Mul(x, y, graph_, s_, "xy");
+  TF_Output dxy_dx, dxy_dy;
+
+  TF_Output outputs[1] = {{xy, 0}};
+  TF_Output inputs[1] = {{x, 0}};
+  TF_AddGradients(graph_, outputs, 1, inputs, 1, nullptr, s_, &dxy_dx);
+  ASSERT_EQ(TF_OK, TF_GetCode(s_)) << TF_Message(s_);
+
+  inputs[0] = {y, 0};
+  TF_AddGradients(graph_, outputs, 1, inputs, 1, nullptr, s_, &dxy_dy);
+  ASSERT_EQ(TF_OK, TF_GetCode(s_)) << TF_Message(s_);
+
+  TF_SessionOptions* opts = TF_NewSessionOptions();
+  TF_Session* sess = TF_NewSession(graph_, opts, s_);
+  TF_DeleteSessionOptions(opts);
+  ASSERT_EQ(TF_OK, TF_GetCode(s_)) << TF_Message(s_);
+
+  TF_Output feeds[] = {{x, 0}, {y, 0}};
+  TF_Tensor* feedValues[] = {FloatTensor(X), FloatTensor(Y)};
+  TF_Output fetches[] = {dxy_dx, dxy_dy};
+  TF_Tensor* fetchValues[] = {nullptr, nullptr};
+
+  TF_SessionRun(sess, nullptr /* run_options */, feeds, feedValues, 2, fetches,
+                fetchValues, 2, nullptr /* target_opers */, 0,
+                nullptr /* run_metadata */, s_);
+  TF_DeleteTensor(feedValues[0]);
+  TF_DeleteTensor(feedValues[1]);
+  ASSERT_EQ(TF_OK, TF_GetCode(s_)) << TF_Message(s_);
+  TF_DeleteSession(sess, s_);
+  ASSERT_EQ(TF_OK, TF_GetCode(s_)) << TF_Message(s_);
+
+  float dxy_dxValue = 0.0f, dxy_dyValue = 0.0f;
+  ScalarFloatFromTensor(fetchValues[0], &dxy_dxValue);
+  EXPECT_EQ(Y, dxy_dxValue);
+
+  ScalarFloatFromTensor(fetchValues[1], &dxy_dyValue);
+  EXPECT_EQ(X, dxy_dyValue);
+
+  TF_DeleteTensor(fetchValues[0]);
+  TF_DeleteTensor(fetchValues[1]);
+}
+
 // REGISTER_OP for CApiAttributesTest test cases.
 // Registers two ops, each with a single attribute called 'v'.
 // The attribute in one op will have a type 'type', the other
@@ -1784,7 +1839,7 @@ TEST_F(CApiAttributesTest, String) {
 
 TEST_F(CApiAttributesTest, StringList) {
   std::vector<string> list = {"bugs", "bunny", "duck"};
-  std::unique_ptr<const void* []> list_ptrs;
+  std::unique_ptr<const void*[]> list_ptrs;
   std::unique_ptr<size_t[]> list_lens;
   StringVectorToArrays(list, &list_ptrs, &list_lens);
   int list_total_size = 0;
@@ -1800,7 +1855,7 @@ TEST_F(CApiAttributesTest, StringList) {
   ASSERT_EQ(TF_OK, TF_GetCode(s_)) << TF_Message(s_);
 
   EXPECT_TF_META("v", list.size(), TF_ATTR_STRING, list_total_size);
-  std::unique_ptr<void* []> values(new void*[list.size()]);
+  std::unique_ptr<void*[]> values(new void*[list.size()]);
   std::unique_ptr<size_t[]> lens(new size_t[list.size()]);
   std::unique_ptr<char[]> storage(new char[list_total_size]);
   TF_OperationGetAttrStringList(oper, "v", values.get(), lens.get(),
@@ -2025,7 +2080,7 @@ TEST_F(CApiAttributesTest, TensorShapeProtoList) {
   tensorflow::PartialTensorShape(pts2).AsProto(&proto);
   proto.SerializeToString(&bytes2);
 
-  std::unique_ptr<const void* []> list_ptrs;
+  std::unique_ptr<const void*[]> list_ptrs;
   std::unique_ptr<size_t[]> list_lens;
   const std::vector<string> list = {bytes1, bytes2};
   StringVectorToArrays(list, &list_ptrs, &list_lens);
diff --git a/tensorflow/c/c_test_util.cc b/tensorflow/c/c_test_util.cc
index f3b28c1708129..24eb6c069b213 100644
--- a/tensorflow/c/c_test_util.cc
+++ b/tensorflow/c/c_test_util.cc
@@ -216,6 +216,13 @@ TF_Operation* Min(TF_Operation* l, TF_Operation* r, TF_Graph* graph,
   return MinWithDevice(l, r, graph, /*op_device=*/"", s, name);
 }
 
+TF_Operation* Mul(TF_Operation* l, TF_Operation* r, TF_Graph* graph,
+                  TF_Status* s, const char* name) {
+  TF_Operation* op;
+  BinaryOpHelper("Mul", l, r, graph, s, name, &op, "", true);
+  return op;
+}
+
 TF_Operation* Add(TF_Output l, TF_Output r, TF_Graph* graph, TF_Status* s,
                   const char* name) {
   TF_OperationDescription* desc = TF_NewOperation(graph, "AddN", name);
diff --git a/tensorflow/c/c_test_util.h b/tensorflow/c/c_test_util.h
index c16aba666ee69..38313d647ca93 100644
--- a/tensorflow/c/c_test_util.h
+++ b/tensorflow/c/c_test_util.h
@@ -80,6 +80,9 @@ TF_Operation* Add(TF_Output l, TF_Output r, TF_Graph* graph, TF_Status* s,
 TF_Operation* Min(TF_Operation* l, TF_Operation* r, TF_Graph* graph,
                   TF_Status* s, const char* name = "min");
 
+TF_Operation* Mul(TF_Operation* l, TF_Operation* r, TF_Graph* graph,
+                  TF_Status* s, const char* name = "mul");
+
 // If `op_device` is non-empty, set the created op on that device.
 TF_Operation* MinWithDevice(TF_Operation* l, TF_Operation* r, TF_Graph* graph,
                             const string& op_device, TF_Status* s,
diff --git a/tensorflow/cc/framework/scope.cc b/tensorflow/cc/framework/scope.cc
index 62a889181e787..8c886f31711eb 100644
--- a/tensorflow/cc/framework/scope.cc
+++ b/tensorflow/cc/framework/scope.cc
@@ -37,6 +37,11 @@ Scope& Scope::operator=(const Scope& other) {
   return *this;
 }
 
+namespace {
+const char kScopeSeparator[] = "/";
+const char kSuffixSeparator[] = "_";
+}  // namespace
+
 Scope::Impl::Impl(Graph* graph, Status* status, NameMap* name_map,
                   ShapeRefiner* refiner, bool disable_shape_inference)
     : graph_(graph),
@@ -308,19 +313,23 @@ string Scope::Impl::GetUniqueName(const string& prefix,
     return prefix;
   }
   auto entry = name_map_->find(prefix);
-  string unique_name = prefix;
   if (entry == name_map_->end()) {
     name_map_->insert({prefix, 0});
-  } else {
-    unique_name = strings::StrCat(unique_name, "_", ++entry->second);
+    return prefix;
   }
+  string unique_name;
+  do {
+    unique_name = strings::StrCat(prefix, kSuffixSeparator, ++entry->second);
+  } while (name_map_->find(unique_name) != name_map_->end());
+  name_map_->insert({unique_name, 0});
   return unique_name;
 }
 
 string Scope::Impl::GetNameForOp(const string& default_name) const {
   const string unique_name =
       GetUniqueName(default_name, true /* check_single_use */);
-  const string sep = name_.empty() || unique_name.empty() ? "" : "/";
+  const string sep =
+      name_.empty() || unique_name.empty() ? "" : kScopeSeparator;
   return strings::StrCat(name_, sep, unique_name);
 }
 
@@ -345,7 +354,8 @@ Scope Scope::NewSubScope(const string& child_scope_name) const {
   }
   const string unique_name =
       impl()->GetUniqueName(child_scope_name, false /* check_single_use */);
-  const string sep = impl()->name_.empty() || unique_name.empty() ? "" : "/";
+  const string sep =
+      impl()->name_.empty() || unique_name.empty() ? "" : kScopeSeparator;
   return Scope(new Impl(*this, Impl::Tags::ScopeName(),
                         strings::StrCat(impl()->name_, sep, unique_name),
                         false /* copy_names */));
@@ -412,7 +422,7 @@ CompositeOpScopes Scope::GetCompositeOpScopes(
   if (!impl()->single_use_scope()) {
     Scope child = NewSubScope(impl()->op_name_.empty() ? composite_op_name
                                                        : impl()->op_name_);
-    const string child_op_sep = impl()->name_.empty() ? "" : "_";
+    const string child_op_sep = impl()->name_.empty() ? "" : kSuffixSeparator;
     const string child_name =
         strings::StrCat(impl()->name_, child_op_sep, child.impl()->name_);
     return {child,
@@ -435,7 +445,13 @@ class InternalScope {
   static Scope NewScope(Graph* graph, Status* status, ShapeRefiner* refiner) {
     Scope::Impl::NameMap* name_map = new Scope::Impl::NameMap;
     for (const Node* node : graph->nodes()) {
-      (*name_map)[node->name()] = 0;
+      const string& name = node->name();
+      (*name_map)[name] = 0;
+      // Add all name prefixes ('/' separated).
+      size_t idx = -1;
+      while ((idx = name.find(kScopeSeparator, idx + 1)) != string::npos) {
+        (*name_map)[name.substr(0, idx)] = 0;
+      }
     }
     // We provide null destructors for these shared ptrs (except for name_map)
     // since the caller owns them and doesn't want the scope to destroy them.
diff --git a/tensorflow/cc/framework/scope_internal.h b/tensorflow/cc/framework/scope_internal.h
index 8efcfed20d0b8..58adaef2e942a 100644
--- a/tensorflow/cc/framework/scope_internal.h
+++ b/tensorflow/cc/framework/scope_internal.h
@@ -34,8 +34,7 @@ class Scope::Impl {
   // name that has not been used so far in a scope will get no suffix. Later
   // uses of the same name will get suffixes _1, _2, _3, etc. Multiple scopes
   // can share the same NameMap. For instance, a new scope created using
-  // WithControlDependencies() should would share the same NameMap with the
-  // parent.
+  // WithControlDependencies() would share the same NameMap with the parent.
   typedef std::unordered_map<string, int> NameMap;
 
   Impl(const std::shared_ptr<Graph>& graph,
diff --git a/tensorflow/cc/framework/scope_test.cc b/tensorflow/cc/framework/scope_test.cc
index 9eca9d3face34..b40b345eb8423 100644
--- a/tensorflow/cc/framework/scope_test.cc
+++ b/tensorflow/cc/framework/scope_test.cc
@@ -26,6 +26,16 @@ TEST(ScopeTest, BasicNames) {
   EXPECT_EQ(root.GetUniqueNameForOp("mul"), "mul");
 }
 
+TEST(ScopeTest, OpAndScopeNameCollision) {
+  Scope root = Scope::NewRootScope();
+  EXPECT_EQ(root.GetUniqueNameForOp("foo"), "foo");
+  EXPECT_EQ(root.GetUniqueNameForOp("foo"), "foo_1");
+  EXPECT_EQ(root.GetUniqueNameForOp("foo_1"), "foo_1_1");
+  EXPECT_EQ(root.GetUniqueNameForOp("foo_2"), "foo_2");
+  EXPECT_EQ(root.GetUniqueNameForOp("foo"), "foo_3");
+  EXPECT_EQ(root.GetUniqueNameForOp("foo_2"), "foo_2_1");
+}
+
 TEST(ScopeTest, HierarchicalNames) {
   Scope root = Scope::NewRootScope();
   Scope child = root.NewSubScope("child");