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telsoa014fcda012018-03-09 14:13:49 +00001//
2// Copyright © 2017 Arm Ltd. All rights reserved.
David Beckecb56cd2018-09-05 12:52:57 +01003// SPDX-License-Identifier: MIT
telsoa014fcda012018-03-09 14:13:49 +00004//
5
telsoa014fcda012018-03-09 14:13:49 +00006#include "RefLayerSupport.hpp"
David Beck3e9e1152018-10-17 14:17:50 +01007#include "RefBackendId.hpp"
David Beck3cc9a622018-10-12 10:38:31 +01008
Aron Virginas-Tarc9cc8042018-11-01 16:15:57 +00009#include <InternalTypes.hpp>
10#include <LayerSupportCommon.hpp>
telsoa014fcda012018-03-09 14:13:49 +000011#include <armnn/Types.hpp>
Derek Lamberti50db4e82019-03-13 14:16:15 +000012#include <armnn/Descriptors.hpp>
telsoa014fcda012018-03-09 14:13:49 +000013
David Beck111b5d92018-11-12 14:59:37 +000014#include <backendsCommon/BackendRegistry.hpp>
Francis Murtagh46c09d02019-05-28 08:15:28 +010015#include <backendsCommon/test/WorkloadTestUtils.hpp>
David Beck3e9e1152018-10-17 14:17:50 +010016
telsoa014fcda012018-03-09 14:13:49 +000017#include <boost/core/ignore_unused.hpp>
telsoa014fcda012018-03-09 14:13:49 +000018
Derek Lamberti50db4e82019-03-13 14:16:15 +000019#include <vector>
20#include <algorithm>
21#include <array>
22
telsoa014fcda012018-03-09 14:13:49 +000023using namespace boost;
24
25namespace armnn
26{
27
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +010028namespace
29{
30
31template<typename Float32Func, typename Uint8Func, typename ... Params>
32bool IsSupportedForDataTypeRef(Optional<std::string&> reasonIfUnsupported,
33 DataType dataType,
34 Float32Func floatFuncPtr,
35 Uint8Func uint8FuncPtr,
36 Params&&... params)
37{
38 return IsSupportedForDataTypeGeneric(reasonIfUnsupported,
39 dataType,
40 &FalseFunc<Params...>,
41 floatFuncPtr,
42 uint8FuncPtr,
narpra01db2b1602019-01-23 15:23:11 +000043 &FalseFunc<Params...>,
kevmay012b4d88e2019-01-24 14:05:09 +000044 &FalseFunc<Params...>,
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +010045 std::forward<Params>(params)...);
46}
47
48} // anonymous namespace
49
Derek Lamberti50db4e82019-03-13 14:16:15 +000050
51namespace
52{
53template<typename F>
54bool CheckSupportRule(F rule, Optional<std::string&> reasonIfUnsupported, const char* reason)
55{
56 bool supported = rule();
57 if (!supported && reason)
58 {
59 reasonIfUnsupported.value() += std::string(reason) + "\n"; // Append the reason on a new line
60 }
61 return supported;
62}
63
64struct Rule
65{
66 bool operator()() const
67 {
68 return m_Res;
69 }
70
71 bool m_Res = true;
72};
73
Derek Lamberti2a434a82019-03-20 13:07:57 +000074template<typename T>
75bool AllTypesAreEqualImpl(T t)
Derek Lamberti50db4e82019-03-13 14:16:15 +000076{
77 return true;
78}
79
80template<typename T, typename... Rest>
81bool AllTypesAreEqualImpl(T t1, T t2, Rest... rest)
82{
83 static_assert(std::is_same<T, TensorInfo>::value, "Type T must be a TensorInfo");
84
Derek Lamberti2a434a82019-03-20 13:07:57 +000085 return (t1.GetDataType() == t2.GetDataType()) && AllTypesAreEqualImpl(t2, rest...);
Derek Lamberti50db4e82019-03-13 14:16:15 +000086}
87
88struct TypesAreEqual : public Rule
89{
90 template<typename ... Ts>
91 TypesAreEqual(const Ts&... ts)
92 {
93 m_Res = AllTypesAreEqualImpl(ts...);
94 }
95};
96
97struct QuantizationParametersAreEqual : public Rule
98{
99 QuantizationParametersAreEqual(const TensorInfo& info0, const TensorInfo& info1)
100 {
101 m_Res = info0.GetQuantizationScale() == info1.GetQuantizationScale() &&
102 info0.GetQuantizationOffset() == info1.GetQuantizationOffset();
103 }
104};
105
106struct TypeAnyOf : public Rule
107{
108 template<typename Container>
109 TypeAnyOf(const TensorInfo& info, const Container& c)
110 {
111 m_Res = std::any_of(c.begin(), c.end(), [&info](DataType dt)
Francis Murtagh46c09d02019-05-28 08:15:28 +0100112 {
113 return dt == info.GetDataType();
114 });
115 }
116};
117
118struct BiasAndWeightsTypesMatch : public Rule
119{
120 BiasAndWeightsTypesMatch(const TensorInfo& biases, const TensorInfo& weights)
121 {
122 m_Res = biases.GetDataType() == GetBiasTypeFromWeightsType(weights.GetDataType()).value();
123 }
124};
125
126struct BiasAndWeightsTypesCompatible : public Rule
127{
128 template<typename Container>
129 BiasAndWeightsTypesCompatible(const TensorInfo& info, const Container& c)
130 {
131 m_Res = std::any_of(c.begin(), c.end(), [&info](DataType dt)
132 {
133 return dt == GetBiasTypeFromWeightsType(info.GetDataType()).value();
134 });
Derek Lamberti50db4e82019-03-13 14:16:15 +0000135 }
136};
137
138struct ShapesAreSameRank : public Rule
139{
140 ShapesAreSameRank(const TensorInfo& info0, const TensorInfo& info1)
141 {
142 m_Res = info0.GetShape().GetNumDimensions() == info1.GetShape().GetNumDimensions();
143 }
144};
145
Derek Lamberti5f400d62019-03-25 15:41:58 +0000146struct ShapesAreSameTotalSize : public Rule
147{
148 ShapesAreSameTotalSize(const TensorInfo& info0, const TensorInfo& info1)
149 {
150 m_Res = info0.GetNumElements() == info1.GetNumElements();
151 }
152};
153
Derek Lamberti50db4e82019-03-13 14:16:15 +0000154struct ShapesAreBroadcastCompatible : public Rule
155{
156 unsigned int CalcInputSize(const TensorShape& in, const TensorShape& out, unsigned int idx)
157 {
158 unsigned int offset = out.GetNumDimensions() - in.GetNumDimensions();
159 unsigned int sizeIn = (idx < offset) ? 1 : in[idx-offset];
160 return sizeIn;
161 }
162
163 ShapesAreBroadcastCompatible(const TensorInfo& in0, const TensorInfo& in1, const TensorInfo& out)
164 {
165 const TensorShape& shape0 = in0.GetShape();
166 const TensorShape& shape1 = in1.GetShape();
167 const TensorShape& outShape = out.GetShape();
168
169 for (unsigned int i=0; i < outShape.GetNumDimensions() && m_Res; i++)
170 {
171 unsigned int sizeOut = outShape[i];
172 unsigned int sizeIn0 = CalcInputSize(shape0, outShape, i);
173 unsigned int sizeIn1 = CalcInputSize(shape1, outShape, i);
174
175 m_Res &= ((sizeIn0 == sizeOut) || (sizeIn0 == 1)) &&
176 ((sizeIn1 == sizeOut) || (sizeIn1 == 1));
177 }
178 }
179};
180} // namespace
181
182
arovir011c7c81b2018-10-08 11:34:28 +0100183bool RefLayerSupport::IsActivationSupported(const TensorInfo& input,
184 const TensorInfo& output,
185 const ActivationDescriptor& descriptor,
186 Optional<std::string&> reasonIfUnsupported) const
187{
Derek Lamberti50db4e82019-03-13 14:16:15 +0000188 bool supported = true;
189
190 // Define supported types.
Teresa Charlin18515e22019-04-24 10:17:46 +0100191 std::array<DataType,3> supportedTypes = {
Derek Lamberti50db4e82019-03-13 14:16:15 +0000192 DataType::Float32,
Teresa Charlin18515e22019-04-24 10:17:46 +0100193 DataType::QuantisedAsymm8,
194 DataType::QuantisedSymm16
Derek Lamberti50db4e82019-03-13 14:16:15 +0000195 };
196
197 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
198 "Reference activation: input type not supported.");
199
200 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
201 "Reference activation: output type not supported.");
202
203 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
204 "Reference activation: input and output types mismatched.");
205
206 supported &= CheckSupportRule(ShapesAreSameRank(input, output), reasonIfUnsupported,
207 "Reference activation: input and output shapes are of different rank.");
208
209
210 struct ActivationFunctionSupported : public Rule
211 {
212 ActivationFunctionSupported(const ActivationDescriptor& desc)
213 {
214 switch(desc.m_Function)
215 {
216 case ActivationFunction::Abs:
217 case ActivationFunction::BoundedReLu:
218 case ActivationFunction::LeakyReLu:
219 case ActivationFunction::Linear:
220 case ActivationFunction::ReLu:
221 case ActivationFunction::Sigmoid:
222 case ActivationFunction::SoftReLu:
223 case ActivationFunction::Sqrt:
224 case ActivationFunction::Square:
225 case ActivationFunction::TanH:
226 {
227 m_Res = true;
228 break;
229 }
230 default:
231 {
232 m_Res = false;
233 break;
234 }
235 }
236 }
237 };
238
239 // Function is supported
240 supported &= CheckSupportRule(ActivationFunctionSupported(descriptor), reasonIfUnsupported,
241 "Reference activation: function not supported.");
242
243 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100244}
245
246bool RefLayerSupport::IsAdditionSupported(const TensorInfo& input0,
247 const TensorInfo& input1,
248 const TensorInfo& output,
249 Optional<std::string&> reasonIfUnsupported) const
250{
Derek Lamberti50db4e82019-03-13 14:16:15 +0000251 bool supported = true;
252
Sadik Armagan2999a022019-04-09 14:20:12 +0100253 std::array<DataType,3> supportedTypes = {
Derek Lamberti50db4e82019-03-13 14:16:15 +0000254 DataType::Float32,
Sadik Armagan2999a022019-04-09 14:20:12 +0100255 DataType::QuantisedAsymm8,
256 DataType::QuantisedSymm16
Derek Lamberti50db4e82019-03-13 14:16:15 +0000257 };
258
259 supported &= CheckSupportRule(TypeAnyOf(input0, supportedTypes), reasonIfUnsupported,
260 "Reference addition: input 0 is not a supported type.");
261
262 supported &= CheckSupportRule(TypeAnyOf(input1, supportedTypes), reasonIfUnsupported,
263 "Reference addition: input 1 is not a supported type.");
264
265 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
266 "Reference addition: output is not a supported type.");
267
268 supported &= CheckSupportRule(TypesAreEqual(input0, input1), reasonIfUnsupported,
269 "Reference addition: input 0 and Input 1 types are mismatched");
270
271 supported &= CheckSupportRule(TypesAreEqual(input0, output), reasonIfUnsupported,
272 "Reference addition: input and output types are mismatched");
273
274 supported &= CheckSupportRule(ShapesAreBroadcastCompatible(input0, input1, output), reasonIfUnsupported,
275 "Reference addition: shapes are not suitable for implicit broadcast.");
276
277 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100278}
279
280bool RefLayerSupport::IsBatchNormalizationSupported(const TensorInfo& input,
281 const TensorInfo& output,
282 const TensorInfo& mean,
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100283 const TensorInfo& variance,
arovir011c7c81b2018-10-08 11:34:28 +0100284 const TensorInfo& beta,
285 const TensorInfo& gamma,
286 const BatchNormalizationDescriptor& descriptor,
287 Optional<std::string&> reasonIfUnsupported) const
288{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100289 ignore_unused(descriptor);
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100290
Matteo Martincighf5507132019-06-04 10:59:47 +0100291 std::array<DataType, 3> supportedTypes =
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100292 {
293 DataType::Float32,
Matteo Martincighf5507132019-06-04 10:59:47 +0100294 DataType::QuantisedAsymm8,
295 DataType::QuantisedSymm16
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100296 };
297
298 bool supported = true;
299
300 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
301 "Reference batch normalization: input is not a supported type.");
302
303 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
304 "Reference batch normalization: output is not a supported type.");
305
306 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
307 "Reference batch normalization: input and output types are mismatched");
308
309 supported &= CheckSupportRule(TypeAnyOf(mean, supportedTypes), reasonIfUnsupported,
310 "Reference batch normalization: mean is not a supported type.");
311
312 supported &= CheckSupportRule(TypeAnyOf(variance, supportedTypes), reasonIfUnsupported,
313 "Reference batch normalization: variance is not a supported type.");
314
315 supported &= CheckSupportRule(TypeAnyOf(beta, supportedTypes), reasonIfUnsupported,
316 "Reference batch normalization: beta is not a supported type.");
317
318 supported &= CheckSupportRule(TypeAnyOf(gamma, supportedTypes), reasonIfUnsupported,
319 "Reference batch normalization: gamma is not a supported type.");
320
321 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100322}
323
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +0000324bool RefLayerSupport::IsBatchToSpaceNdSupported(const TensorInfo& input,
325 const TensorInfo& output,
326 const BatchToSpaceNdDescriptor& descriptor,
327 Optional<std::string&> reasonIfUnsupported) const
328{
329 ignore_unused(descriptor);
330 return (IsSupportedForDataTypeRef(reasonIfUnsupported,
331 input.GetDataType(),
332 &TrueFunc<>,
333 &TrueFunc<>) &&
334 IsSupportedForDataTypeRef(reasonIfUnsupported,
335 output.GetDataType(),
336 &TrueFunc<>,
337 &TrueFunc<>));
338}
339
Jim Flynn906f9462019-05-10 13:55:21 +0100340bool RefLayerSupport::IsConcatSupported(const std::vector<const TensorInfo*> inputs,
341 const TensorInfo& output,
Jim Flynne242f2d2019-05-22 14:24:13 +0100342 const ConcatDescriptor& descriptor,
Jim Flynn906f9462019-05-10 13:55:21 +0100343 Optional<std::string&> reasonIfUnsupported) const
344{
Jim Flynne242f2d2019-05-22 14:24:13 +0100345 ignore_unused(descriptor);
346
347 bool supported = true;
348 std::array<DataType,3> supportedTypes =
349 {
350 DataType::Float32,
351 DataType::QuantisedAsymm8,
352 DataType::QuantisedSymm16
353 };
354
355 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
356 "Reference concatenation: output type not supported");
357 for (const TensorInfo* input : inputs)
358 {
359 supported &= CheckSupportRule(TypeAnyOf(*input, supportedTypes), reasonIfUnsupported,
360 "Reference concatenation: input type not supported");
361
362 supported &= CheckSupportRule(TypesAreEqual(*input, output), reasonIfUnsupported,
363 "Reference concatenation: input and output types mismatched.");
364 }
365
366 return supported;
Jim Flynn906f9462019-05-10 13:55:21 +0100367}
368
arovir011c7c81b2018-10-08 11:34:28 +0100369bool RefLayerSupport::IsConstantSupported(const TensorInfo& output,
370 Optional<std::string&> reasonIfUnsupported) const
371{
Jim Flynne242f2d2019-05-22 14:24:13 +0100372 std::array<DataType,4> supportedTypes =
373 {
Nina Drozd58ef2c62019-05-16 12:09:18 +0100374 DataType::Float32,
375 DataType::Signed32,
376 DataType::QuantisedAsymm8,
377 DataType::QuantisedSymm16
378 };
379
380 return CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
381 "Reference constant: output is not a supported type.");
arovir011c7c81b2018-10-08 11:34:28 +0100382}
383
384bool RefLayerSupport::IsConvertFp16ToFp32Supported(const TensorInfo& input,
385 const TensorInfo& output,
386 Optional<std::string&> reasonIfUnsupported) const
387{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100388 return (IsSupportedForDataTypeGeneric(reasonIfUnsupported,
389 input.GetDataType(),
390 &TrueFunc<>,
391 &FalseInputFuncF32<>,
narpra01db2b1602019-01-23 15:23:11 +0000392 &FalseFuncU8<>,
kevmay012b4d88e2019-01-24 14:05:09 +0000393 &FalseFuncI32<>,
394 &FalseFuncU8<>) &&
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100395 IsSupportedForDataTypeGeneric(reasonIfUnsupported,
396 output.GetDataType(),
397 &FalseOutputFuncF16<>,
398 &TrueFunc<>,
narpra01db2b1602019-01-23 15:23:11 +0000399 &FalseFuncU8<>,
kevmay012b4d88e2019-01-24 14:05:09 +0000400 &FalseFuncI32<>,
401 &FalseFuncU8<>));
arovir011c7c81b2018-10-08 11:34:28 +0100402}
403
404bool RefLayerSupport::IsConvertFp32ToFp16Supported(const TensorInfo& input,
405 const TensorInfo& output,
406 Optional<std::string&> reasonIfUnsupported) const
407{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100408 return (IsSupportedForDataTypeGeneric(reasonIfUnsupported,
409 input.GetDataType(),
410 &FalseInputFuncF16<>,
411 &TrueFunc<>,
narpra01db2b1602019-01-23 15:23:11 +0000412 &FalseFuncU8<>,
kevmay012b4d88e2019-01-24 14:05:09 +0000413 &FalseFuncI32<>,
414 &FalseFuncU8<>) &&
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100415 IsSupportedForDataTypeGeneric(reasonIfUnsupported,
416 output.GetDataType(),
417 &TrueFunc<>,
418 &FalseOutputFuncF32<>,
narpra01db2b1602019-01-23 15:23:11 +0000419 &FalseFuncU8<>,
kevmay012b4d88e2019-01-24 14:05:09 +0000420 &FalseFuncI32<>,
421 &FalseFuncU8<>));
arovir011c7c81b2018-10-08 11:34:28 +0100422}
423
424bool RefLayerSupport::IsConvolution2dSupported(const TensorInfo& input,
425 const TensorInfo& output,
426 const Convolution2dDescriptor& descriptor,
427 const TensorInfo& weights,
428 const Optional<TensorInfo>& biases,
429 Optional<std::string&> reasonIfUnsupported) const
430{
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100431 bool supported = true;
432
433 // Define supported types.
434 std::array<DataType,3> supportedTypes = {
435 DataType::Float32,
436 DataType::QuantisedAsymm8,
437 DataType::QuantisedSymm16
438 };
439
440 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
Les Belld7f29082019-05-30 09:08:51 +0100441 "Reference convolution2d: input is not a supported type.");
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100442
443 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
Les Belld7f29082019-05-30 09:08:51 +0100444 "Reference convolution2d: output is not a supported type.");
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100445
446 supported &= CheckSupportRule(TypeAnyOf(weights, supportedTypes), reasonIfUnsupported,
Les Belld7f29082019-05-30 09:08:51 +0100447 "Reference convolution2d: weights is not a supported type.");
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100448
449 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
Les Belld7f29082019-05-30 09:08:51 +0100450 "Reference convolution2d: input and output types mismatched.");
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100451
452 supported &= CheckSupportRule(TypesAreEqual(input, weights), reasonIfUnsupported,
Les Belld7f29082019-05-30 09:08:51 +0100453 "Reference convolution2d: input and weights types mismatched.");
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100454
455 if (biases.has_value())
456 {
457 std::array<DataType,3> biasesSupportedTypes = {
458 DataType::Float32,
459 DataType::Signed32
460 };
461 supported &= CheckSupportRule(TypeAnyOf(biases.value(), biasesSupportedTypes), reasonIfUnsupported,
Les Belld7f29082019-05-30 09:08:51 +0100462 "Reference convolution2d: biases is not a supported type.");
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100463 }
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100464 ignore_unused(descriptor);
Mike Kelly2f80f6e2019-05-16 12:41:34 +0100465
466 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100467}
468
Nattapat Chaimanowongcfdcadf2018-12-06 11:54:33 +0000469bool RefLayerSupport::IsDebugSupported(const TensorInfo& input,
470 const TensorInfo& output,
Nattapat Chaimanowongcfdcadf2018-12-06 11:54:33 +0000471 Optional<std::string&> reasonIfUnsupported) const
472{
473 ignore_unused(output);
Nattapat Chaimanowongcfdcadf2018-12-06 11:54:33 +0000474 return IsSupportedForDataTypeRef(reasonIfUnsupported,
475 input.GetDataType(),
476 &TrueFunc<>,
477 &TrueFunc<>);
478}
479
arovir011c7c81b2018-10-08 11:34:28 +0100480bool RefLayerSupport::IsDepthwiseConvolutionSupported(const TensorInfo& input,
481 const TensorInfo& output,
482 const DepthwiseConvolution2dDescriptor& descriptor,
483 const TensorInfo& weights,
484 const Optional<TensorInfo>& biases,
485 Optional<std::string&> reasonIfUnsupported) const
486{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100487 ignore_unused(output);
488 ignore_unused(descriptor);
489 ignore_unused(weights);
490 ignore_unused(biases);
491 return IsSupportedForDataTypeRef(reasonIfUnsupported,
492 input.GetDataType(),
493 &TrueFunc<>,
494 &TrueFunc<>);
arovir011c7c81b2018-10-08 11:34:28 +0100495}
496
Nattapat Chaimanowong8a54ac02019-03-29 15:25:04 +0000497bool RefLayerSupport::IsDequantizeSupported(const TensorInfo& input,
498 const TensorInfo& output,
499 Optional<std::string&> reasonIfUnsupported) const
500{
Nattapat Chaimanowongafa4e3a2019-04-02 11:41:45 +0100501 bool supported = true;
502
503 std::array<DataType,2> supportedInputTypes = {
504 DataType::QuantisedAsymm8,
505 DataType::QuantisedSymm16
506 };
507
508 supported &= CheckSupportRule(TypeAnyOf(input, supportedInputTypes), reasonIfUnsupported,
509 "Reference dequantize: input type not supported.");
510
511 std::array<DataType,2> supportedOutputTypes = {
512 DataType::Float32,
513 };
514
515 supported &= CheckSupportRule(TypeAnyOf(output, supportedOutputTypes), reasonIfUnsupported,
516 "Reference dequantize: output type not supported.");
517
518 supported &= CheckSupportRule(ShapesAreSameTotalSize(input, output), reasonIfUnsupported,
519 "Reference dequantize: input and output shapes have different num total elements.");
520
521 return supported;
Nattapat Chaimanowong8a54ac02019-03-29 15:25:04 +0000522}
523
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +0000524bool RefLayerSupport::IsDetectionPostProcessSupported(const armnn::TensorInfo& input0,
525 const armnn::TensorInfo& input1,
526 const armnn::DetectionPostProcessDescriptor& descriptor,
527 armnn::Optional<std::string&> reasonIfUnsupported) const
528{
Aron Virginas-Tara37e1bd2019-06-06 16:08:30 +0100529 bool supported = true;
530
531 std::vector<DataType> supportedInputTypes =
532 {
533 DataType::Float32,
534 DataType::QuantisedAsymm8,
535 DataType::QuantisedSymm16
536 };
537
538 supported &= CheckSupportRule(TypeAnyOf(input0, supportedInputTypes), reasonIfUnsupported,
539 "Reference DetectionPostProcess: input 0 is not a supported type.");
540
541 supported &= CheckSupportRule(TypeAnyOf(input1, supportedInputTypes), reasonIfUnsupported,
542 "Reference DetectionPostProcess: input 1 is not a supported type.");
543
544 return supported;
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +0000545}
546
Pablo Tellof0bd6832019-04-26 17:58:13 +0100547bool RefLayerSupport::IsDilatedDepthwiseConvolutionSupported(const TensorInfo& input,
548 const TensorInfo& output,
549 const DepthwiseConvolution2dDescriptor& descriptor,
550 const TensorInfo& weights,
551 const Optional<TensorInfo>& biases,
552 Optional<std::string&> reasonIfUnsupported) const
553{
Aron Virginas-Taraece4ed2019-06-14 17:00:09 +0100554 return IsDepthwiseConvolutionSupported(input, output, descriptor, weights, biases, reasonIfUnsupported);
Pablo Tellof0bd6832019-04-26 17:58:13 +0100555}
556
Aron Virginas-Taraece4ed2019-06-14 17:00:09 +0100557bool RefLayerSupport::IsDivisionSupported(const TensorInfo& input0,
arovir011c7c81b2018-10-08 11:34:28 +0100558 const TensorInfo& input1,
559 const TensorInfo& output,
560 Optional<std::string&> reasonIfUnsupported) const
561{
Sadik Armagan2999a022019-04-09 14:20:12 +0100562 bool supported = true;
563
564 std::array<DataType,3> supportedTypes = {
565 DataType::Float32,
566 DataType::QuantisedAsymm8,
567 DataType::QuantisedSymm16
568 };
569
570 supported &= CheckSupportRule(TypeAnyOf(input0, supportedTypes), reasonIfUnsupported,
571 "Reference division: input 0 is not a supported type.");
572
573 supported &= CheckSupportRule(TypeAnyOf(input1, supportedTypes), reasonIfUnsupported,
574 "Reference division: input 1 is not a supported type.");
575
576 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
577 "Reference division: output is not a supported type.");
578
579 supported &= CheckSupportRule(TypesAreEqual(input0, input1), reasonIfUnsupported,
580 "Reference division: input 0 and Input 1 types are mismatched");
581
582 supported &= CheckSupportRule(TypesAreEqual(input0, output), reasonIfUnsupported,
583 "Reference division: input and output types are mismatched");
584
585 supported &= CheckSupportRule(ShapesAreBroadcastCompatible(input0, input1, output), reasonIfUnsupported,
586 "Reference division: shapes are not suitable for implicit broadcast.");
587
588 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100589}
590
FrancisMurtagh30cdfca2018-12-18 12:57:35 +0000591bool RefLayerSupport::IsEqualSupported(const TensorInfo& input0,
592 const TensorInfo& input1,
593 const TensorInfo& output,
594 Optional<std::string&> reasonIfUnsupported) const
595{
596 ignore_unused(input0);
597 ignore_unused(input1);
598 ignore_unused(output);
599 ignore_unused(reasonIfUnsupported);
600 return IsSupportedForDataTypeRef(reasonIfUnsupported,
601 input0.GetDataType(),
602 &TrueFunc<>,
603 &TrueFunc<>);
604}
605
arovir011c7c81b2018-10-08 11:34:28 +0100606bool RefLayerSupport::IsFakeQuantizationSupported(const TensorInfo& input,
607 const FakeQuantizationDescriptor& descriptor,
608 Optional<std::string&> reasonIfUnsupported) const
609{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100610 ignore_unused(descriptor);
611 return IsSupportedForDataTypeRef(reasonIfUnsupported,
612 input.GetDataType(),
613 &TrueFunc<>,
614 &FalseFuncU8<>);
arovir011c7c81b2018-10-08 11:34:28 +0100615}
616
617bool RefLayerSupport::IsFloorSupported(const TensorInfo& input,
618 const TensorInfo& output,
619 Optional<std::string&> reasonIfUnsupported) const
620{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100621 ignore_unused(output);
James Conroy83735b12019-05-30 16:36:59 +0100622 bool supported = true;
623
James Conroyb40d7102019-06-04 12:32:09 +0100624 std::array<DataType,2> supportedTypes =
James Conroy83735b12019-05-30 16:36:59 +0100625 {
James Conroyb40d7102019-06-04 12:32:09 +0100626 DataType::Float32,
627 DataType::QuantisedSymm16
James Conroy83735b12019-05-30 16:36:59 +0100628 };
629
630 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
631 "Reference Floor: input type not supported.");
632
633 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
634 "Reference Floor: output type not supported.");
635
636 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100637}
638
639bool RefLayerSupport::IsFullyConnectedSupported(const TensorInfo& input,
640 const TensorInfo& output,
641 const TensorInfo& weights,
642 const TensorInfo& biases,
643 const FullyConnectedDescriptor& descriptor,
644 Optional<std::string&> reasonIfUnsupported) const
645{
Francis Murtagh46c09d02019-05-28 08:15:28 +0100646 bool supported = true;
647
648 // Define supported types.
649 std::array<DataType,3> supportedTypes =
650 {
651 DataType::Float32,
652 DataType::QuantisedAsymm8,
653 DataType::QuantisedSymm16
654 };
655
656 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
657 "Reference Fully Connected: input type not supported.");
658
659 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
660 "Reference Fully Connected: output type not supported.");
661
662 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
663 "Reference Fully Connected: input and output types mismatched.");
664
665 supported &= CheckSupportRule(TypeAnyOf(weights, supportedTypes), reasonIfUnsupported,
666 "Reference Fully Connected: weights type not supported.");
667
668 supported &= CheckSupportRule(TypesAreEqual(input, weights), reasonIfUnsupported,
669 "Reference Fully Connected: input and weight types mismatched.");
670
671 if (descriptor.m_BiasEnabled)
672 {
673 // Defined supported types for bias
674 std::array<DataType, 2>
675 supportedBiasTypes =
676 {
677 DataType::Float32,
678 DataType::Signed32
679 };
680
681 supported &= CheckSupportRule(TypeAnyOf(biases, supportedBiasTypes), reasonIfUnsupported,
682 "Reference Fully Connected: bias type not supported.");
683
684 supported &= CheckSupportRule(BiasAndWeightsTypesMatch(biases, weights), reasonIfUnsupported,
685 "Reference Fully Connected: bias and weight types mismatch.");
686
687 supported &= CheckSupportRule(BiasAndWeightsTypesCompatible(weights, supportedBiasTypes), reasonIfUnsupported,
688 "Reference Fully Connected: bias type inferred from weights is incompatible.");
689
690 }
691
692 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100693}
694
narpra014951d842019-01-18 16:53:53 +0000695bool RefLayerSupport::IsGatherSupported(const armnn::TensorInfo& input0,
696 const armnn::TensorInfo& input1,
697 const armnn::TensorInfo& output,
698 armnn::Optional<std::string&> reasonIfUnsupported) const
699{
700 ignore_unused(input1);
701 ignore_unused(output);
702 return IsSupportedForDataTypeRef(reasonIfUnsupported,
703 input0.GetDataType(),
704 &TrueFunc<>,
705 &TrueFunc<>);
706}
707
FrancisMurtagh878f0232018-12-19 10:56:15 +0000708bool RefLayerSupport::IsGreaterSupported(const TensorInfo& input0,
709 const TensorInfo& input1,
710 const TensorInfo& output,
711 Optional<std::string&> reasonIfUnsupported) const
712{
713 ignore_unused(input0);
714 ignore_unused(input1);
715 ignore_unused(output);
716 ignore_unused(reasonIfUnsupported);
717 return IsSupportedForDataTypeRef(reasonIfUnsupported,
718 input0.GetDataType(),
719 &TrueFunc<>,
720 &TrueFunc<>);
721}
722
arovir011c7c81b2018-10-08 11:34:28 +0100723bool RefLayerSupport::IsInputSupported(const TensorInfo& input,
724 Optional<std::string&> reasonIfUnsupported) const
725{
Narumol Prangnawaratb6441e42019-06-04 11:22:00 +0100726 return true;
arovir011c7c81b2018-10-08 11:34:28 +0100727}
728
729bool RefLayerSupport::IsL2NormalizationSupported(const TensorInfo& input,
730 const TensorInfo& output,
731 const L2NormalizationDescriptor& descriptor,
732 Optional<std::string&> reasonIfUnsupported) const
733{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100734 ignore_unused(descriptor);
Ferran Balaguerd73d14f2019-06-10 10:29:54 +0100735 // Define supported types
Ferran Balaguerc6138d82019-06-13 17:23:50 +0100736 std::array<DataType, 3> supportedTypes =
Ferran Balaguerd73d14f2019-06-10 10:29:54 +0100737 {
738 DataType::Float32,
Ferran Balaguerc6138d82019-06-13 17:23:50 +0100739 DataType::QuantisedAsymm8,
Ferran Balaguerd73d14f2019-06-10 10:29:54 +0100740 DataType::QuantisedSymm16
741 };
742
743 bool supported = true;
744
745 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
746 "Reference L2normalization: input type not supported.");
747
748 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
749 "Reference L2normalization: output type not supported.");
750
751 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
752 "Reference L2normalization: input and output types mismatched.");
753
754 supported &= CheckSupportRule(ShapesAreSameTotalSize(input, output), reasonIfUnsupported,
755 "Reference L2normalization: input and output shapes have different "
756 "num total elements.");
757
758 return supported;
arovir011c7c81b2018-10-08 11:34:28 +0100759}
760
761bool RefLayerSupport::IsLstmSupported(const TensorInfo& input,
762 const TensorInfo& outputStateIn,
763 const TensorInfo& cellStateIn,
764 const TensorInfo& scratchBuffer,
765 const TensorInfo& outputStateOut,
766 const TensorInfo& cellStateOut,
767 const TensorInfo& output,
768 const LstmDescriptor& descriptor,
769 const TensorInfo& inputToForgetWeights,
770 const TensorInfo& inputToCellWeights,
771 const TensorInfo& inputToOutputWeights,
772 const TensorInfo& recurrentToForgetWeights,
773 const TensorInfo& recurrentToCellWeights,
774 const TensorInfo& recurrentToOutputWeights,
775 const TensorInfo& forgetGateBias,
776 const TensorInfo& cellBias,
777 const TensorInfo& outputGateBias,
778 const TensorInfo* inputToInputWeights,
779 const TensorInfo* recurrentToInputWeights,
780 const TensorInfo* cellToInputWeights,
781 const TensorInfo* inputGateBias,
782 const TensorInfo* projectionWeights,
783 const TensorInfo* projectionBias,
784 const TensorInfo* cellToForgetWeights,
785 const TensorInfo* cellToOutputWeights,
786 Optional<std::string&> reasonIfUnsupported) const
787{
telsoa01c577f2c2018-08-31 09:22:23 +0100788 ignore_unused(descriptor);
789 ignore_unused(inputToForgetWeights);
790 ignore_unused(inputToCellWeights);
791 ignore_unused(inputToOutputWeights);
792 ignore_unused(recurrentToForgetWeights);
793 ignore_unused(recurrentToCellWeights);
794 ignore_unused(recurrentToOutputWeights);
795 ignore_unused(forgetGateBias);
796 ignore_unused(cellBias);
797 ignore_unused(outputGateBias);
798 ignore_unused(inputToInputWeights);
799 ignore_unused(recurrentToInputWeights);
800 ignore_unused(cellToInputWeights);
801 ignore_unused(inputGateBias);
802 ignore_unused(projectionWeights);
803 ignore_unused(projectionBias);
804 ignore_unused(cellToForgetWeights);
805 ignore_unused(cellToOutputWeights);
Nattapat Chaimanowongeb2b3292019-05-07 12:02:30 +0100806
807 bool supported = true;
808
809 std::array<DataType,2> supportedTypes = {
Conor Kennedyb9971c92019-05-07 07:14:23 +0100810 DataType::Float32,
811 DataType::QuantisedSymm16
Nattapat Chaimanowongeb2b3292019-05-07 12:02:30 +0100812 };
813
814 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
815 "Reference Lstm: input is not a supported type.");
816
817 supported &= CheckSupportRule(TypesAreEqual(input, outputStateIn), reasonIfUnsupported,
818 "Reference Lstm: input and outputStateIn types are mismatched");
819
820 supported &= CheckSupportRule(TypesAreEqual(input, cellStateIn), reasonIfUnsupported,
821 "Reference Lstm: input and cellStateIn types are mismatched");
822
823 supported &= CheckSupportRule(TypesAreEqual(input, scratchBuffer), reasonIfUnsupported,
824 "Reference Lstm: input and scratchBuffer types are mismatched");
825
826 supported &= CheckSupportRule(TypesAreEqual(input, outputStateOut), reasonIfUnsupported,
827 "Reference Lstm: input and outputStateOut types are mismatched");
828
829 supported &= CheckSupportRule(TypesAreEqual(input, cellStateOut), reasonIfUnsupported,
830 "Reference Lstm: input and cellStateOut types are mismatched");
831
832 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
833 "Reference Lstm: input and output types are mismatched");
834
835 return supported;
telsoa01c577f2c2018-08-31 09:22:23 +0100836}
837
saoste012df12b32018-11-28 16:57:20 +0000838bool RefLayerSupport::IsMaximumSupported(const TensorInfo& input0,
839 const TensorInfo& input1,
840 const TensorInfo& output,
841 Optional<std::string&> reasonIfUnsupported) const
842{
Sadik Armagan2999a022019-04-09 14:20:12 +0100843 bool supported = true;
844
845 std::array<DataType,3> supportedTypes = {
846 DataType::Float32,
847 DataType::QuantisedAsymm8,
848 DataType::QuantisedSymm16
849 };
850
851 supported &= CheckSupportRule(TypeAnyOf(input0, supportedTypes), reasonIfUnsupported,
852 "Reference maximum: input 0 is not a supported type.");
853
854 supported &= CheckSupportRule(TypeAnyOf(input1, supportedTypes), reasonIfUnsupported,
855 "Reference maximum: input 1 is not a supported type.");
856
857 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
858 "Reference maximum: output is not a supported type.");
859
860 supported &= CheckSupportRule(TypesAreEqual(input0, input1), reasonIfUnsupported,
861 "Reference maximum: input 0 and Input 1 types are mismatched");
862
863 supported &= CheckSupportRule(TypesAreEqual(input0, output), reasonIfUnsupported,
864 "Reference maximum: input and output types are mismatched");
865
866 supported &= CheckSupportRule(ShapesAreBroadcastCompatible(input0, input1, output), reasonIfUnsupported,
867 "Reference maximum: shapes are not suitable for implicit broadcast.");
868
869 return supported;
saoste012df12b32018-11-28 16:57:20 +0000870}
871
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100872bool RefLayerSupport::IsMeanSupported(const TensorInfo& input,
873 const TensorInfo& output,
874 const MeanDescriptor& descriptor,
875 Optional<std::string&> reasonIfUnsupported) const
narpra0132b90462018-09-13 11:07:48 +0100876{
narpra011e4c31d2018-09-28 11:07:51 +0100877 ignore_unused(output);
878 ignore_unused(descriptor);
879 return IsSupportedForDataTypeRef(reasonIfUnsupported,
880 input.GetDataType(),
881 &TrueFunc<>,
882 &TrueFunc<>);
narpra0132b90462018-09-13 11:07:48 +0100883}
884
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100885bool RefLayerSupport::IsMergerSupported(const std::vector<const TensorInfo*> inputs,
Nikhil Raj8599a412018-11-19 14:51:07 +0000886 const TensorInfo& output,
Jim Flynne242f2d2019-05-22 14:24:13 +0100887 const MergerDescriptor& descriptor,
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100888 Optional<std::string&> reasonIfUnsupported) const
889{
Jim Flynne242f2d2019-05-22 14:24:13 +0100890 return IsConcatSupported(inputs, output, descriptor, reasonIfUnsupported);
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100891}
892
Matteo Martincigh992d6dc2019-01-10 17:34:20 +0000893bool RefLayerSupport::IsMemCopySupported(const TensorInfo &input,
894 const TensorInfo &output,
895 Optional<std::string &> reasonIfUnsupported) const
896{
897 ignore_unused(output);
kevmay012b4d88e2019-01-24 14:05:09 +0000898 return IsSupportedForDataTypeGeneric(reasonIfUnsupported,
899 input.GetDataType(),
900 &TrueFunc<>,
901 &TrueFunc<>,
902 &TrueFunc<>,
903 &FalseFuncI32<>,
904 &TrueFunc<>);
Matteo Martincigh992d6dc2019-01-10 17:34:20 +0000905}
906
Éanna Ó Catháin20e58802018-12-04 10:29:06 +0000907bool RefLayerSupport::IsMinimumSupported(const TensorInfo& input0,
908 const TensorInfo& input1,
909 const TensorInfo& output,
910 Optional<std::string&> reasonIfUnsupported) const
911{
Sadik Armagan2999a022019-04-09 14:20:12 +0100912 bool supported = true;
913
914 std::array<DataType,3> supportedTypes = {
915 DataType::Float32,
916 DataType::QuantisedAsymm8,
917 DataType::QuantisedSymm16
918 };
919
920 supported &= CheckSupportRule(TypeAnyOf(input0, supportedTypes), reasonIfUnsupported,
921 "Reference minimum: input 0 is not a supported type.");
922
923 supported &= CheckSupportRule(TypeAnyOf(input1, supportedTypes), reasonIfUnsupported,
924 "Reference minimum: input 1 is not a supported type.");
925
926 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
927 "Reference minimum: output is not a supported type.");
928
929 supported &= CheckSupportRule(TypesAreEqual(input0, input1), reasonIfUnsupported,
930 "Reference minimum: input 0 and Input 1 types are mismatched");
931
932 supported &= CheckSupportRule(TypesAreEqual(input0, output), reasonIfUnsupported,
933 "Reference minimum: input and output types are mismatched");
934
935 supported &= CheckSupportRule(ShapesAreBroadcastCompatible(input0, input1, output), reasonIfUnsupported,
936 "Reference minimum: shapes are not suitable for implicit broadcast.");
937
938 return supported;
Éanna Ó Catháin20e58802018-12-04 10:29:06 +0000939}
940
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100941bool RefLayerSupport::IsMultiplicationSupported(const TensorInfo& input0,
942 const TensorInfo& input1,
943 const TensorInfo& output,
944 Optional<std::string&> reasonIfUnsupported) const
945{
Sadik Armagan2999a022019-04-09 14:20:12 +0100946 bool supported = true;
947
948 std::array<DataType,3> supportedTypes = {
949 DataType::Float32,
950 DataType::QuantisedAsymm8,
951 DataType::QuantisedSymm16
952 };
953
954 supported &= CheckSupportRule(TypeAnyOf(input0, supportedTypes), reasonIfUnsupported,
955 "Reference multiplication: input 0 is not a supported type.");
956
957 supported &= CheckSupportRule(TypeAnyOf(input1, supportedTypes), reasonIfUnsupported,
958 "Reference multiplication: input 1 is not a supported type.");
959
960 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
961 "Reference multiplication: output is not a supported type.");
962
963 supported &= CheckSupportRule(TypesAreEqual(input0, input1), reasonIfUnsupported,
964 "Reference multiplication: input 0 and Input 1 types are mismatched");
965
966 supported &= CheckSupportRule(TypesAreEqual(input0, output), reasonIfUnsupported,
967 "Reference multiplication: input and output types are mismatched");
968
969 supported &= CheckSupportRule(ShapesAreBroadcastCompatible(input0, input1, output), reasonIfUnsupported,
970 "Reference multiplication: shapes are not suitable for implicit broadcast.");
971
972 return supported;
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +0100973}
974
975bool RefLayerSupport::IsNormalizationSupported(const TensorInfo& input,
976 const TensorInfo& output,
977 const NormalizationDescriptor& descriptor,
978 Optional<std::string&> reasonIfUnsupported) const
Nina Drozd661dfa72018-10-02 11:14:17 +0100979{
Nina Drozd661dfa72018-10-02 11:14:17 +0100980 ignore_unused(descriptor);
Matteo Martincigh2fc70c52019-06-05 14:12:48 +0100981
982 // Define supported types
Matteo Martincigh6aeb7712019-06-05 17:23:29 +0100983 std::array<DataType, 4> supportedTypes =
Matteo Martincigh2fc70c52019-06-05 14:12:48 +0100984 {
985 DataType::Float16,
986 DataType::Float32,
Matteo Martincigh6aeb7712019-06-05 17:23:29 +0100987 DataType::QuantisedAsymm8,
988 DataType::QuantisedSymm16
Matteo Martincigh2fc70c52019-06-05 14:12:48 +0100989 };
990
991 bool supported = true;
992
993 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
994 "Reference normalization: input type not supported.");
995
996 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
997 "Reference normalization: output type not supported.");
998
999 supported &= CheckSupportRule(ShapesAreSameTotalSize(input, output), reasonIfUnsupported,
1000 "Reference normalization: input and output shapes have different "
1001 "num total elements.");
1002
1003 return supported;
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001004}
1005
1006bool RefLayerSupport::IsOutputSupported(const TensorInfo& output,
1007 Optional<std::string&> reasonIfUnsupported) const
1008{
Narumol Prangnawaratb6441e42019-06-04 11:22:00 +01001009 return true;
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001010}
1011
1012bool RefLayerSupport::IsPadSupported(const TensorInfo& input,
1013 const TensorInfo& output,
1014 const PadDescriptor& descriptor,
1015 Optional<std::string&> reasonIfUnsupported) const
1016{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001017 ignore_unused(output);
1018 ignore_unused(descriptor);
jimfly01f6ba7472018-12-04 10:09:52 +00001019 return IsSupportedForDataTypeRef(reasonIfUnsupported,
1020 input.GetDataType(),
1021 &TrueFunc<>,
1022 &TrueFunc<>);
Nina Drozd661dfa72018-10-02 11:14:17 +01001023}
1024
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001025bool RefLayerSupport::IsPermuteSupported(const TensorInfo& input,
1026 const TensorInfo& output,
1027 const PermuteDescriptor& descriptor,
1028 Optional<std::string&> reasonIfUnsupported) const
1029{
1030 ignore_unused(output);
1031 ignore_unused(descriptor);
1032 return IsSupportedForDataTypeRef(reasonIfUnsupported,
1033 input.GetDataType(),
1034 &TrueFunc<>,
1035 &TrueFunc<>);
1036}
1037
1038bool RefLayerSupport::IsPooling2dSupported(const TensorInfo& input,
1039 const TensorInfo& output,
1040 const Pooling2dDescriptor& descriptor,
1041 Optional<std::string&> reasonIfUnsupported) const
1042{
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001043 ignore_unused(descriptor);
Teresa Charlina3b20472019-06-06 11:12:32 +01001044 bool supported = true;
1045
1046 // Define supported output and inputs types.
Teresa Charlin0434df62019-06-06 13:40:35 +01001047 std::array<DataType,3> supportedTypes =
Teresa Charlina3b20472019-06-06 11:12:32 +01001048 {
1049 DataType::Float32,
Teresa Charlin0434df62019-06-06 13:40:35 +01001050 DataType::QuantisedAsymm8,
1051 DataType::QuantisedSymm16
Teresa Charlina3b20472019-06-06 11:12:32 +01001052 };
1053
1054 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
1055 "Reference poolind2d: input is not a supported type.");
1056
1057 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
1058 "Reference poolind2d: output is not a supported type.");
1059
1060 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
1061 "Reference poolind2d: input and output types are mismatched.");
1062
1063 return supported;
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001064}
1065
Derek Lamberti5f400d62019-03-25 15:41:58 +00001066bool RefLayerSupport::IsQuantizeSupported(const TensorInfo& input,
1067 const TensorInfo& output,
1068 Optional<std::string&> reasonIfUnsupported) const
1069{
1070 bool supported = true;
1071
1072 // Define supported output types.
1073 std::array<DataType,2> supportedInputTypes = {
1074 DataType::Float32,
1075 };
1076
1077 supported &= CheckSupportRule(TypeAnyOf(input, supportedInputTypes), reasonIfUnsupported,
1078 "Reference quantize: input type not supported.");
1079
1080 // Define supported output types.
1081 std::array<DataType,2> supportedOutputTypes = {
1082 DataType::QuantisedAsymm8,
1083 DataType::QuantisedSymm16
1084 };
1085 supported &= CheckSupportRule(TypeAnyOf(output, supportedOutputTypes), reasonIfUnsupported,
1086 "Reference quantize: output type not supported.");
1087
1088 supported &= CheckSupportRule(ShapesAreSameTotalSize(input, output), reasonIfUnsupported,
1089 "Reference quantize: input and output shapes have different num total elements.");
1090
1091 return supported;
1092}
1093
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001094bool RefLayerSupport::IsReshapeSupported(const TensorInfo& input,
Matteo Martincigh992d6dc2019-01-10 17:34:20 +00001095 const ReshapeDescriptor& descriptor,
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001096 Optional<std::string&> reasonIfUnsupported) const
1097{
Matteo Martincigh992d6dc2019-01-10 17:34:20 +00001098 ignore_unused(descriptor);
Nina Drozd2f2778f2019-05-27 10:37:05 +01001099 // Define supported output types.
Nina Drozd8ed4b8c2019-05-29 10:41:04 +01001100 std::array<DataType,4> supportedOutputTypes =
Nina Drozd2f2778f2019-05-27 10:37:05 +01001101 {
1102 DataType::Float32,
1103 DataType::Float16,
Nina Drozd8ed4b8c2019-05-29 10:41:04 +01001104 DataType::QuantisedAsymm8,
1105 DataType::QuantisedSymm16
Nina Drozd2f2778f2019-05-27 10:37:05 +01001106 };
1107 return CheckSupportRule(TypeAnyOf(input, supportedOutputTypes), reasonIfUnsupported,
1108 "Reference reshape: input type not supported.");
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001109}
1110
1111bool RefLayerSupport::IsResizeBilinearSupported(const TensorInfo& input,
Sadik Armaganc625f002018-12-17 11:32:16 +00001112 const TensorInfo& output,
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001113 Optional<std::string&> reasonIfUnsupported) const
1114{
Sadik Armaganc625f002018-12-17 11:32:16 +00001115 ignore_unused(output);
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001116 return IsSupportedForDataTypeRef(reasonIfUnsupported,
1117 input.GetDataType(),
1118 &TrueFunc<>,
1119 &TrueFunc<>);
1120}
1121
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +00001122bool RefLayerSupport::IsRsqrtSupported(const TensorInfo& input,
1123 const TensorInfo& output,
1124 Optional<std::string&> reasonIfUnsupported) const
1125{
nikraj010421e7f2019-06-14 09:40:34 +01001126 bool supported = true;
nikraj0124d73212019-06-14 14:20:40 +01001127 std::array<DataType,3> supportedTypes =
nikraj010421e7f2019-06-14 09:40:34 +01001128 {
1129 DataType::Float32,
nikraj0124d73212019-06-14 14:20:40 +01001130 DataType::QuantisedAsymm8,
1131 DataType::QuantisedSymm16
nikraj010421e7f2019-06-14 09:40:34 +01001132 };
1133
1134 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
1135 "Reference rsqrt: input type not supported");
1136
1137 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
1138 "Reference rsqrt: output type not supported");
1139
1140 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
1141 "Reference rsqrt: input and output types not matching");
1142
1143 supported &= CheckSupportRule(ShapesAreSameTotalSize(input, output), reasonIfUnsupported,
1144 "Reference Rsqrt: input and output shapes have different number of total elements");
1145
1146 return supported;
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +00001147}
1148
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001149bool RefLayerSupport::IsSoftmaxSupported(const TensorInfo& input,
1150 const TensorInfo& output,
1151 const SoftmaxDescriptor& descriptor,
1152 Optional<std::string&> reasonIfUnsupported) const
1153{
1154 ignore_unused(output);
nikraj01248683f2019-05-29 16:46:50 +01001155 bool supported = true;
1156 std::array<DataType,3> supportedTypes =
1157 {
1158 DataType::Float32,
1159 DataType::QuantisedAsymm8,
1160 DataType::QuantisedSymm16
1161 };
1162
1163 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
1164 "Reference concatenation: output type not supported");
1165
1166 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
1167 "Reference concatenation: input type not supported");
1168
1169 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
1170 "Reference concatenation: input type not supported");
1171
1172 return supported;
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001173}
1174
Nattapat Chaimanowong3ea76d52018-11-09 14:10:38 +00001175bool RefLayerSupport::IsSpaceToBatchNdSupported(const TensorInfo& input,
1176 const TensorInfo& output,
1177 const SpaceToBatchNdDescriptor& descriptor,
1178 Optional<std::string&> reasonIfUnsupported) const
1179{
1180 ignore_unused(output);
nikraj01120522a2019-05-31 11:33:07 +01001181 bool supported = true;
1182 std::array<DataType,3> supportedTypes =
1183 {
1184 DataType::Float32,
1185 DataType::QuantisedAsymm8,
1186 DataType::QuantisedSymm16
1187 };
1188
1189 supported &= CheckSupportRule(TypeAnyOf(input, supportedTypes), reasonIfUnsupported,
1190 "Reference SpaceToBatchNd: input type not supported");
1191
1192 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
1193 "Reference SpaceToBatchNd: output type not supported");
1194
1195 supported &= CheckSupportRule(TypesAreEqual(input, output), reasonIfUnsupported,
1196 "Reference SpaceToBatchNd: input and output types are mismatched");
1197
1198 return supported;
Nattapat Chaimanowong3ea76d52018-11-09 14:10:38 +00001199}
1200
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001201bool RefLayerSupport::IsSplitterSupported(const TensorInfo& input,
1202 const ViewsDescriptor& descriptor,
1203 Optional<std::string&> reasonIfUnsupported) const
1204{
1205 ignore_unused(descriptor);
1206 return IsSupportedForDataTypeRef(reasonIfUnsupported,
1207 input.GetDataType(),
1208 &TrueFunc<>,
1209 &TrueFunc<>);
1210}
1211
Narumol Prangnawarat15eb5832019-05-20 15:31:05 +01001212bool RefLayerSupport::IsSplitterSupported(const TensorInfo& input,
1213 const std::vector<std::reference_wrapper<TensorInfo>>& outputs,
1214 const ViewsDescriptor& descriptor,
1215 Optional<std::string&> reasonIfUnsupported) const
1216{
1217 ignore_unused(descriptor);
1218 ignore_unused(outputs);
1219 return IsSupportedForDataTypeRef(reasonIfUnsupported,
1220 input.GetDataType(),
1221 &TrueFunc<>,
1222 &TrueFunc<>);
1223}
1224
Nattapat Chaimanowong1216b582018-11-23 15:33:41 +00001225bool RefLayerSupport::IsStridedSliceSupported(const TensorInfo& input,
1226 const TensorInfo& output,
1227 const StridedSliceDescriptor& descriptor,
1228 Optional<std::string&> reasonIfUnsupported) const
1229{
1230 ignore_unused(output);
1231 ignore_unused(descriptor);
1232 return IsSupportedForDataTypeRef(reasonIfUnsupported,
1233 input.GetDataType(),
1234 &TrueFunc<>,
1235 &TrueFunc<>);
1236}
1237
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001238bool RefLayerSupport::IsSubtractionSupported(const TensorInfo& input0,
1239 const TensorInfo& input1,
1240 const TensorInfo& output,
1241 Optional<std::string&> reasonIfUnsupported) const
1242{
Sadik Armagan2999a022019-04-09 14:20:12 +01001243 bool supported = true;
1244
1245 std::array<DataType,3> supportedTypes = {
1246 DataType::Float32,
1247 DataType::QuantisedAsymm8,
1248 DataType::QuantisedSymm16
1249 };
1250
1251 supported &= CheckSupportRule(TypeAnyOf(input0, supportedTypes), reasonIfUnsupported,
1252 "Reference subtraction: input 0 is not a supported type.");
1253
1254 supported &= CheckSupportRule(TypeAnyOf(input1, supportedTypes), reasonIfUnsupported,
1255 "Reference subtraction: input 1 is not a supported type.");
1256
1257 supported &= CheckSupportRule(TypeAnyOf(output, supportedTypes), reasonIfUnsupported,
1258 "Reference subtraction: output is not a supported type.");
1259
1260 supported &= CheckSupportRule(TypesAreEqual(input0, input1), reasonIfUnsupported,
1261 "Reference subtraction: input 0 and Input 1 types are mismatched");
1262
1263 supported &= CheckSupportRule(TypesAreEqual(input0, output), reasonIfUnsupported,
1264 "Reference subtraction: input and output types are mismatched");
1265
1266 supported &= CheckSupportRule(ShapesAreBroadcastCompatible(input0, input1, output), reasonIfUnsupported,
1267 "Reference subtraction: shapes are not suitable for implicit broadcast.");
1268
1269 return supported;
Aron Virginas-Tarb5acbb72018-10-15 11:11:51 +01001270}
1271
arovir011c7c81b2018-10-08 11:34:28 +01001272} // namespace armnn