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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#include "WorkloadData.hpp"
6
7#include "CpuTensorHandle.hpp"
telsoa014fcda012018-03-09 14:13:49 +00008
Matteo Martincigh21350152018-11-28 16:22:22 +00009#include <DataLayoutIndexed.hpp>
Matthew Bentham8800c002018-11-19 13:19:28 +000010
telsoa014fcda012018-03-09 14:13:49 +000011#include <algorithm>
Aron Virginas-Tarc9cc8042018-11-01 16:15:57 +000012#include <iomanip>
telsoa014fcda012018-03-09 14:13:49 +000013#include <string>
14#include <sstream>
telsoa014fcda012018-03-09 14:13:49 +000015
16#include <boost/format.hpp>
Aron Virginas-Tard4f0fea2019-04-09 14:08:06 +010017#include <boost/numeric/conversion/cast.hpp>
telsoa014fcda012018-03-09 14:13:49 +000018
Matteo Martincigh21350152018-11-28 16:22:22 +000019using namespace armnnUtils;
20
telsoa014fcda012018-03-09 14:13:49 +000021namespace armnn
22{
23
24//---------------------------------------------------------------
25DataType GetBiasDataType(DataType inputDataType)
26{
27 switch (inputDataType)
28 {
telsoa01c577f2c2018-08-31 09:22:23 +010029 case DataType::Float16:
30 return DataType::Float16;
telsoa014fcda012018-03-09 14:13:49 +000031 case DataType::Float32:
32 return DataType::Float32;
33 case DataType::QuantisedAsymm8:
34 return DataType::Signed32;
Ruomei Yan88d44b82019-05-23 14:29:06 +010035 case DataType::QuantisedSymm16:
36 return DataType::Signed32;
telsoa014fcda012018-03-09 14:13:49 +000037 default:
38 BOOST_ASSERT_MSG(false, "Invalid input data type");
39 return DataType::Float32;
40 }
41}
42
43namespace
44{
45
46//---------------------------------------------------------------
47//android ndk does not support std::to_string function.
48template <typename T>
49std::string to_string(T value)
50{
51 std::ostringstream os;
52 os << value;
53 return os.str();
54}
55
56//---------------------------------------------------------------
57void ValidatePointer(const void* ptr, std::string const& descName, std::string const& paramName)
58{
59 if (!ptr)
60 {
61 throw InvalidArgumentException(descName + ": Invalid null pointer. The " +
62 paramName + " parameter must be set.");
63 }
64}
65
66//---------------------------------------------------------------
67void ValidateTensorShapesMatch(const TensorInfo& first,
68 const TensorInfo& second,
69 std::string const& descName,
70 std::string const& firstName,
71 std::string const& secondName)
72{
73 if (first.GetShape() != second.GetShape())
74 {
75 throw InvalidArgumentException(descName + ": "
76 + firstName + " & " + secondName + " must have identical shapes");
77 }
78}
79
80//---------------------------------------------------------------
Sadik Armaganeff363d2019-04-05 15:25:46 +010081void ValidateNumInputs(const WorkloadInfo& workloadInfo, std::string const& descName, const unsigned int expectedSize)
telsoa014fcda012018-03-09 14:13:49 +000082{
Sadik Armaganeff363d2019-04-05 15:25:46 +010083 if (workloadInfo.m_InputTensorInfos.size() != expectedSize)
telsoa014fcda012018-03-09 14:13:49 +000084 {
85 throw InvalidArgumentException(descName +
Sadik Armaganeff363d2019-04-05 15:25:46 +010086 ": Requires exactly " + to_string(expectedSize) + "input(s). " +
telsoa014fcda012018-03-09 14:13:49 +000087 to_string(workloadInfo.m_InputTensorInfos.size()) + " have been provided.");
88 }
89}
90
91//---------------------------------------------------------------
Sadik Armaganeff363d2019-04-05 15:25:46 +010092void ValidateNumOutputs(const WorkloadInfo& workloadInfo, std::string const& descName, const unsigned int expectedSize)
telsoa014fcda012018-03-09 14:13:49 +000093{
Sadik Armaganeff363d2019-04-05 15:25:46 +010094 if (workloadInfo.m_OutputTensorInfos.size() != expectedSize)
telsoa014fcda012018-03-09 14:13:49 +000095 {
96 throw InvalidArgumentException(descName +
Sadik Armaganeff363d2019-04-05 15:25:46 +010097 ": Requires exactly " + to_string(expectedSize) + " output(s). " +
telsoa014fcda012018-03-09 14:13:49 +000098 to_string(workloadInfo.m_OutputTensorInfos.size()) + " has been provided.");
99 }
100}
101
102//---------------------------------------------------------------
103void ValidateTensorNumDimensions(const TensorInfo& tensor,
104 std::string const& descName,
105 unsigned int numDimensions,
106 std::string const& tensorName)
107{
108 if (tensor.GetNumDimensions() != numDimensions)
109 {
110 throw InvalidArgumentException(descName + ": Expected " + to_string(numDimensions) + " but got " +
111 to_string(tensor.GetNumDimensions()) + " dimensions for " +
112 tensorName + " tensor.");
113 }
114}
115
116//---------------------------------------------------------------
117void ValidateTensorDataType(const TensorInfo& tensor, DataType dataType,
118 const std::string& descName, std::string const& tensorName)
119{
120 if (tensor.GetDataType() != dataType)
121 {
122 throw InvalidArgumentException(descName + ": Expected data type " + GetDataTypeName(dataType) + " but got " +
123 GetDataTypeName(tensor.GetDataType()) + " for " + tensorName + " tensor.");
124 }
125}
126
127//---------------------------------------------------------------
Matteo Martincighe851b3d2019-05-28 14:31:20 +0100128void ValidateTensorQuantizationSpace(const TensorInfo& first,
129 const TensorInfo& second,
130 const std::string& descName,
131 std::string const& firstName,
132 std::string const& secondName)
133{
134 if (!first.IsQuantized() ||
135 !second.IsQuantized())
136 {
137 // Not a quantized type, ignore the validation
138 return;
139 }
140
141 DataType firstDataType = first.GetDataType();
142 DataType secondDataType = second.GetDataType();
143
144 if (firstDataType != secondDataType)
145 {
146 throw InvalidArgumentException(descName + ": " + firstName + " and " + secondName +
147 " must be of the same quantized type, " +
148 firstName + " is " + GetDataTypeName(firstDataType) + ", " +
149 secondName + " is " + GetDataTypeName(secondDataType));
150 }
151
152 if (!first.IsTypeSpaceMatch(second))
153 {
154 throw InvalidArgumentException(descName + ": " + firstName + " and " + secondName +
155 " must have the same quantization space, " +
156 firstName + " has offset " + to_string(first.GetQuantizationOffset()) +
157 " and scale " + to_string(first.GetQuantizationScale()) + ", " +
158 secondName + " has offset " + to_string(second.GetQuantizationOffset()) +
159 " and scale " + to_string(second.GetQuantizationScale()));
160 }
161}
162
163//---------------------------------------------------------------
telsoa014fcda012018-03-09 14:13:49 +0000164void ValidateBiasTensorQuantization(const TensorInfo& biasTensor, const TensorInfo& inputTensorInfo,
165 const TensorInfo& weightsTensorInfo, const std::string& descName)
166{
167 if (biasTensor.GetQuantizationOffset() != 0)
168 {
169 throw InvalidArgumentException(descName + ": Expected zero quantization offset for bias tensor but got " +
170 to_string(biasTensor.GetQuantizationOffset()));
171 }
172 const float expectedScale = inputTensorInfo.GetQuantizationScale() * weightsTensorInfo.GetQuantizationScale();
kevmay016c46dd32018-12-17 15:32:45 +0000173 if (std::abs(biasTensor.GetQuantizationScale() - expectedScale) > 0.00000001f)
telsoa014fcda012018-03-09 14:13:49 +0000174 {
175 // Print the float values with extra precision to see very small differences
176 std::stringstream msg;
177 msg << std::setprecision(10) << descName << ": Expected " << expectedScale <<
178 " quantization scale for bias tensor (the product of the input and weight scales), but got " <<
179 biasTensor.GetQuantizationScale();
180 throw InvalidArgumentException(msg.str());
181 }
182}
183
184//---------------------------------------------------------------
185void ValidateTensors(const std::vector<ITensorHandle*>& vec,
186 unsigned int numExpected,
187 const std::string& descName,
188 const std::string& varName)
189{
190 if (vec.empty() && numExpected > 0)
191 {
192 throw InvalidArgumentException(descName + ": Invalid empty " + varName + " array.");
193 }
194
195 for (unsigned int i = 0; i < numExpected; ++i)
196 {
197 if (!vec[i])
198 {
199 throw InvalidArgumentException(descName + ": Invalid NULL for " + varName + to_string(i));
200 }
201 }
202}
203
204//---------------------------------------------------------------
205void ValidateBroadcastTensorShapesMatch(const TensorInfo& first,
206 const TensorInfo& second,
207 const TensorInfo& output,
208 std::string const& descName,
209 std::string const& firstName,
210 std::string const& secondName)
211{
212 // Tensors must have the same number of dimensions in order to be explicit about which dimensions will get
213 // broadcasted.
214 if (first.GetNumDimensions() != second.GetNumDimensions())
215 {
216 throw InvalidArgumentException(descName + ": Tensors "
217 + firstName + " & " + secondName
218 + " must have the same number of dimensions in order to be broadcasted");
219 }
220 uint32_t numDims = first.GetNumDimensions();
221 std::vector<uint32_t> outputDims(numDims, 0u);
222 for (uint32_t i = 0; i < numDims; i++)
223 {
224 const bool dimsNotEqual = first.GetShape()[i] != second.GetShape()[i];
225 const bool dimsNotOne = (first.GetShape()[i] != 1) && (second.GetShape()[i] != 1);
226 if (dimsNotEqual && dimsNotOne)
227 {
228 throw InvalidArgumentException("Broadcasting is not possible for incompatible shapes");
229 }
230 outputDims[i] = std::max(first.GetShape()[i], second.GetShape()[i]);
231 }
232 TensorShape broadcastShape = TensorShape(boost::numeric_cast<unsigned int>(outputDims.size()), outputDims.data());
233 if (broadcastShape != output.GetShape())
234 {
235 throw InvalidArgumentException(descName + ": The tensor shape resulting from adding "
236 + firstName + " & " + secondName
237 + " does not match the output shape");
238 }
239}
240
241//---------------------------------------------------------------
242/// Validates that the output tensor's quantization scale is greater than the product
243/// of the two input tensors' quantization scales. This is a requirement of the implementation of
244/// the quantized multiplication.
245void ValidateTensorQuantizationMultiplier(const TensorInfo& inputTensor1, const TensorInfo& inputTensor2,
246 const TensorInfo& outputTensorInfo, std::string const& descName,
247 const std::string& inputTensor1Name, const std::string& inputTensor2Name, const std::string& outputTensorName)
248{
249 if (outputTensorInfo.GetDataType() == DataType::QuantisedAsymm8)
250 {
251 if (outputTensorInfo.GetQuantizationScale() <=
252 inputTensor1.GetQuantizationScale() * inputTensor2.GetQuantizationScale())
253 {
254 std::stringstream msg;
255 msg << descName << ": Quantization scale of " << outputTensorName << " is not greater than " <<
256 "the product of the " << inputTensor1Name << " and " << inputTensor2Name << " tensors";
257 throw InvalidArgumentException(msg.str());
258 }
259 }
260}
261
Sadik Armaganeff363d2019-04-05 15:25:46 +0100262//---------------------------------------------------------------
263void ValidateDataTypes(const TensorInfo& info,
264 const std::vector<armnn::DataType>& supportedTypes,
265 std::string const& descName)
266{
267 auto iterator = std::find(supportedTypes.begin(), supportedTypes.end(), info.GetDataType());
268 if (iterator == supportedTypes.end())
269 {
270 throw InvalidArgumentException(descName + ": " + " Tensor type is not supported.");
271 }
272}
273
telsoa014fcda012018-03-09 14:13:49 +0000274} //namespace
275
276void QueueDescriptor::ValidateInputsOutputs(const std::string& descName,
277 unsigned int numExpectedIn, unsigned int numExpectedOut) const
278{
279 ValidateTensors(m_Inputs, numExpectedIn, descName, "input");
280 ValidateTensors(m_Outputs, numExpectedOut, descName, "output");
281}
282
283//---------------------------------------------------------------
284void MemCopyQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
285{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100286 ValidateNumInputs(workloadInfo, "MemCopyQueueDescriptor", 1);
287 ValidateNumOutputs(workloadInfo, "MemCopyQueueDescriptor" , 1);
telsoa014fcda012018-03-09 14:13:49 +0000288
289 if (workloadInfo.m_InputTensorInfos.size() != workloadInfo.m_OutputTensorInfos.size())
290 {
291 throw InvalidArgumentException(boost::str(
292 boost::format("Number of input infos (%1%) does not match the number of output infos (%2%)")
293 % workloadInfo.m_InputTensorInfos.size() % workloadInfo.m_OutputTensorInfos.size()));
294 }
295
296 for (std::size_t i = 0; i < workloadInfo.m_InputTensorInfos.size(); ++i)
297 {
298 if (workloadInfo.m_InputTensorInfos[i].GetNumElements() !=
299 workloadInfo.m_OutputTensorInfos[i].GetNumElements())
300 {
301 throw InvalidArgumentException(boost::str(
302 boost::format("Number of elements for tensor input and output %1% does not match")
303 % i ));
304 }
305 }
306
307 if (m_Inputs.size() != m_Outputs.size())
308 {
309 throw InvalidArgumentException(boost::str(
310 boost::format("Number of inputs (%1%) does not match the number of outputs (%2%)")
311 % m_Inputs.size() % m_Outputs.size()));
312 }
313
314 for (unsigned int i = 0; i < m_Inputs.size(); ++i)
315 {
316 if (!m_Inputs[i])
317 {
318 throw InvalidArgumentException(boost::str(boost::format("Invalid null input %1%") % i));
319 }
320
321 if (!m_Outputs[i])
322 {
323 throw InvalidArgumentException(boost::str(boost::format("Invalid null output %1%") % i));
324 }
325 }
326}
327
328//---------------------------------------------------------------
329void ActivationQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
330{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100331 ValidateNumInputs(workloadInfo, "ActivationQueueDescriptor", 1);
332 ValidateNumOutputs(workloadInfo, "ActivationQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000333 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
334 workloadInfo.m_OutputTensorInfos[0],
335 "ActivationQueueDescriptor",
336 "input",
337 "output");
Nattapat Chaimanowongae2c5f02019-04-24 16:19:57 +0100338
339 std::vector<DataType> supportedTypes = {
340 DataType::Float32,
341 DataType::Float16,
Teresa Charlin18515e22019-04-24 10:17:46 +0100342 DataType::QuantisedAsymm8,
343 DataType::QuantisedSymm16
Nattapat Chaimanowongae2c5f02019-04-24 16:19:57 +0100344 };
345
346 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
347 supportedTypes,
348 "ActivationQueueDescriptor");
349
350 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
351 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
352 "ActivationQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +0000353}
354
355//---------------------------------------------------------------
356void SoftmaxQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
357{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100358 ValidateNumInputs(workloadInfo, "SoftmaxQueueDescriptor", 1);
359 ValidateNumOutputs(workloadInfo, "SoftmaxQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000360
361 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
362 workloadInfo.m_OutputTensorInfos[0],
363 "SoftmaxQueueDescriptor",
364 "input",
365 "output");
nikraj01248683f2019-05-29 16:46:50 +0100366
367 std::vector<DataType> supportedTypes =
368 {
369 DataType::Float16,
370 DataType::Float32,
371 DataType::QuantisedAsymm8,
372 DataType::QuantisedSymm16
373 };
374
375 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
376 supportedTypes,
377 "SoftmaxQueueDescriptor");
378
379 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
380 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
381 "SoftmaxQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +0000382}
383
384//---------------------------------------------------------------
385void SplitterQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
386{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100387 ValidateNumInputs(workloadInfo, "SplitterQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000388
Ruomei Yan25339c32019-05-28 16:48:20 +0100389 // Check the supported data types
390 std::vector<DataType> supportedTypes =
391 {
392 DataType::Float32,
393 DataType::Float16,
394 DataType::Boolean,
395 DataType::Signed32,
396 DataType::QuantisedAsymm8,
397 DataType::QuantisedSymm16
398 };
399
400 for (unsigned long i = 0; i < workloadInfo.m_OutputTensorInfos.size(); ++i)
401 {
402 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[i],
403 supportedTypes,
404 "SplitterQueueDescriptor");
405 }
406 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
407 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
408 "SplitterQueueDescriptor");
409
telsoa014fcda012018-03-09 14:13:49 +0000410 if (workloadInfo.m_OutputTensorInfos.size() <= 0)
411 {
412 throw InvalidArgumentException("SplitterQueueDescriptor: At least one output needs to be provided.");
413 }
414
415 if (workloadInfo.m_OutputTensorInfos.size() != m_ViewOrigins.size())
416 {
417 throw InvalidArgumentException(
418 "SplitterQueueDescriptor: Number of split windows "
419 "has to match number of workloadInfo.m_OutputTensorInfos. "
420 "Number of windows: " +
421 to_string(m_ViewOrigins.size()) +
422 ". Number of workloadInfo.m_OutputTensorInfos: " + to_string(workloadInfo.m_OutputTensorInfos.size()));
423 }
424
telsoa01c577f2c2018-08-31 09:22:23 +0100425 //The dimensionality of all the windows has to match the dimensionality (not shape) of the input.
telsoa014fcda012018-03-09 14:13:49 +0000426 std::size_t inputDims = workloadInfo.m_InputTensorInfos[0].GetNumDimensions();
427 for(unsigned int w = 0; w < m_ViewOrigins.size(); ++w )
428 {
telsoa01c577f2c2018-08-31 09:22:23 +0100429 //Checks that the dimensionality of input is same as the split windows.
telsoa014fcda012018-03-09 14:13:49 +0000430 ViewOrigin const& e = m_ViewOrigins[w];
431 if (e.m_Origin.size() != inputDims)
432 {
433 throw InvalidArgumentException("SplitterQueueDescriptor: Window origin have to "
434 "have the same dimensionality as the input tensor. "
435 "Window origin (index: " +
436 to_string(w) + ") has " + to_string(e.m_Origin.size()) +
437 " dimensions, the input "
438 "tensor has " +
439 to_string(inputDims) + " dimensions.");
440 }
441 for (unsigned int i = 0; i < e.m_Origin.size(); ++i)
442 {
443 if (e.m_Origin[i] + workloadInfo.m_OutputTensorInfos[w].GetShape()[i] >
444 workloadInfo.m_InputTensorInfos[0].GetShape()[i])
445 {
446 throw InvalidArgumentException("SplitterQueueDescriptor: Window extent coordinates have to "
447 "be smaller or equal than the size of the input in that coord.");
448 }
449 }
450 }
451}
452
453//---------------------------------------------------------------
Jim Flynne242f2d2019-05-22 14:24:13 +0100454void ConcatQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
telsoa014fcda012018-03-09 14:13:49 +0000455{
Jim Flynne242f2d2019-05-22 14:24:13 +0100456 ValidateNumOutputs(workloadInfo, "ConcatQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000457
458 if (m_Inputs.size() <= 0)
459 {
Jim Flynne242f2d2019-05-22 14:24:13 +0100460 throw InvalidArgumentException("ConcatQueueDescriptor: At least one input needs to be provided.");
telsoa014fcda012018-03-09 14:13:49 +0000461 }
462 if (m_Outputs.size() <= 0)
463 {
Jim Flynne242f2d2019-05-22 14:24:13 +0100464 throw InvalidArgumentException("ConcatQueueDescriptor: At least one output needs to be provided.");
telsoa014fcda012018-03-09 14:13:49 +0000465 }
466
467 if (workloadInfo.m_InputTensorInfos.size() <= 0)
468 {
Jim Flynne242f2d2019-05-22 14:24:13 +0100469 throw InvalidArgumentException("ConcatQueueDescriptor: At least one TensorInfo input needs to be provided.");
telsoa014fcda012018-03-09 14:13:49 +0000470 }
471 if (workloadInfo.m_OutputTensorInfos.size() <= 0)
472 {
Jim Flynne242f2d2019-05-22 14:24:13 +0100473 throw InvalidArgumentException("ConcatQueueDescriptor: At least one TensorInfo output needs to be provided.");
telsoa014fcda012018-03-09 14:13:49 +0000474 }
475
Nikhil Raj8599a412018-11-19 14:51:07 +0000476 if(m_Parameters.GetConcatAxis() > workloadInfo.m_InputTensorInfos[0].GetShape().GetNumDimensions())
477 {
478 throw InvalidArgumentException("Invalid Concatenation Axis provided");
479 }
480
481 if (workloadInfo.m_InputTensorInfos[0].GetShape().GetNumDimensions() - m_Parameters.GetConcatAxis() == 1)
482 {
483 return;
484 }
485
telsoa014fcda012018-03-09 14:13:49 +0000486 if (workloadInfo.m_InputTensorInfos.size() != m_ViewOrigins.size())
487 {
488 throw InvalidArgumentException(
Jim Flynne242f2d2019-05-22 14:24:13 +0100489 "ConcatQueueDescriptor: Number of split windows "
telsoa014fcda012018-03-09 14:13:49 +0000490 "has to match number of workloadInfo.m_InputTensorInfos. "
491 "Number of windows: " +
492 to_string(m_ViewOrigins.size()) +
493 ". Number of workloadInfo.m_InputTensorInfos: " + to_string(workloadInfo.m_InputTensorInfos.size()));
494 }
495
telsoa01c577f2c2018-08-31 09:22:23 +0100496 //The dimensionality of all the windows has to match the dimensionality (not shape) of the output.
telsoa014fcda012018-03-09 14:13:49 +0000497 std::size_t outputDims = workloadInfo.m_OutputTensorInfos[0].GetNumDimensions();
498 for(unsigned int w = 0; w < m_ViewOrigins.size(); ++w )
499 {
telsoa01c577f2c2018-08-31 09:22:23 +0100500 //Checks that the dimensionality of output is same as the split windows.
telsoa014fcda012018-03-09 14:13:49 +0000501 ViewOrigin const& e = m_ViewOrigins[w];
502 if (e.m_Origin.size() != outputDims)
503 {
Jim Flynne242f2d2019-05-22 14:24:13 +0100504 throw InvalidArgumentException("ConcatQueueDescriptor: Window origin have to "
telsoa014fcda012018-03-09 14:13:49 +0000505 "have the same dimensionality as the output tensor. "
506 "Window origin (index: " +
507 to_string(w) + ") has " + to_string(e.m_Origin.size()) +
508 " dimensions, the output "
509 "tensor has " +
510 to_string(outputDims) + " dimensions.");
511 }
telsoa01c577f2c2018-08-31 09:22:23 +0100512 //Checks that the merge windows are within the output tensor.
telsoa014fcda012018-03-09 14:13:49 +0000513 for (unsigned int i = 0; i < e.m_Origin.size(); ++i)
514 {
515 if (e.m_Origin[i] + workloadInfo.m_InputTensorInfos[w].GetShape()[i]
516 > workloadInfo.m_OutputTensorInfos[0].GetShape()[i])
517 {
Jim Flynne242f2d2019-05-22 14:24:13 +0100518 throw InvalidArgumentException("ConcatQueueDescriptor: Window extent coordinates have to "
telsoa014fcda012018-03-09 14:13:49 +0000519 "be smaller or equal than the size of the output in that coord.");
520 }
521 }
522 }
Jim Flynncbb66aa2019-05-15 13:03:54 +0100523
524 // Check the supported data types
525 std::vector<DataType> supportedTypes =
526 {
527 DataType::Float32,
528 DataType::Float16,
529 DataType::Boolean,
530 DataType::Signed32,
531 DataType::QuantisedAsymm8,
532 DataType::QuantisedSymm16
533 };
534
535 for (unsigned long i = 0; i < workloadInfo.m_InputTensorInfos.size(); ++i)
536 {
537 ValidateDataTypes(workloadInfo.m_InputTensorInfos[i],
538 supportedTypes,
Jim Flynne242f2d2019-05-22 14:24:13 +0100539 "ConcatQueueDescriptor");
Jim Flynncbb66aa2019-05-15 13:03:54 +0100540 }
541 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
542 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
Jim Flynne242f2d2019-05-22 14:24:13 +0100543 "ConcatQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +0000544}
545
546//---------------------------------------------------------------
547void FullyConnectedQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
548{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100549 ValidateNumInputs(workloadInfo, "FullyConnectedQueueDescriptor", 1);
550 ValidateNumOutputs(workloadInfo, "FullyConnectedQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000551 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "FullyConnectedQueueDescriptor", 2, "output");
552
553 if (!(workloadInfo.m_InputTensorInfos[0].GetNumDimensions() == 2 ||
554 workloadInfo.m_InputTensorInfos[0].GetNumDimensions() == 4))
555 {
556 throw InvalidArgumentException("FullyConnectedQueueDescriptor: Input tensor must have 2 or 4 dimensions.");
557 }
558
559 if (m_Weight == nullptr)
560 {
561 throw InvalidArgumentException("FullyConnectedQueueDescriptor: Weight tensor descriptor is missing.");
562 }
563
564 ValidateTensorNumDimensions(m_Weight->GetTensorInfo(), "FullyConnectedQueueDescriptor", 2, "weight");
565
566 if (m_Parameters.m_BiasEnabled)
567 {
568 if (m_Bias == nullptr)
569 {
570 throw InvalidArgumentException("FullyConnectedQueueDescriptor: Bias is enabled but "
571 "bias value tensor descriptor is missing.");
572 }
573
telsoa01c577f2c2018-08-31 09:22:23 +0100574 // Validates type and quantization values.
telsoa014fcda012018-03-09 14:13:49 +0000575 ValidateBiasTensorQuantization(m_Bias->GetTensorInfo(),
576 workloadInfo.m_InputTensorInfos[0], m_Weight->GetTensorInfo(), "FullyConnectedQueueDescriptor");
577
578 ValidateTensorDataType(m_Bias->GetTensorInfo(),
579 GetBiasDataType(workloadInfo.m_InputTensorInfos[0].GetDataType()),
580 "FullyConnectedQueueDescriptor", "bias");
581
582 ValidateTensorNumDimensions(m_Bias->GetTensorInfo(), "FullyConnectedQueueDescriptor", 1, "bias");
583 }
584
585 ValidateTensorQuantizationMultiplier(workloadInfo.m_InputTensorInfos[0], m_Weight->GetTensorInfo(),
586 workloadInfo.m_OutputTensorInfos[0], "FullyConnectedQueueDescriptor", "input", "weights", "output");
Francis Murtagh46c09d02019-05-28 08:15:28 +0100587
588 // Check the supported data types
589 std::vector<DataType> supportedTypes =
590 {
591 DataType::Float32,
592 DataType::Float16,
593 DataType::QuantisedAsymm8,
594 DataType::QuantisedSymm16
595 };
596
597 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
598 supportedTypes,
599 "FullyConnectedQueueDescriptor");
600
601 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
602 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
603 "FullyConnectedQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +0000604}
605
606//---------------------------------------------------------------
607void NormalizationQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
608{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100609 ValidateNumInputs(workloadInfo, "NormalizationQueueDescriptor", 1);
610 ValidateNumOutputs(workloadInfo, "NormalizationQueueDescriptor", 1);
Matteo Martincigh2fc70c52019-06-05 14:12:48 +0100611
612 // Check the supported data types
613 std::vector<DataType> supportedTypes =
614 {
615 DataType::Float16,
616 DataType::Float32,
617 DataType::QuantisedAsymm8
618 };
619
620 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
621 supportedTypes,
622 "NormalizationQueueDescriptor");
623
624 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
625 { workloadInfo.m_InputTensorInfos[0].GetDataType() },
626 "NormalizationQueueDescriptor");
627
telsoa014fcda012018-03-09 14:13:49 +0000628 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
629 workloadInfo.m_OutputTensorInfos[0],
630 "NormalizationQueueDescriptor",
631 "input",
632 "output");
633}
634
635void AdditionQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
636{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100637 ValidateNumInputs(workloadInfo, "AdditionQueueDescriptor", 2);
638 ValidateNumOutputs(workloadInfo, "AdditionQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000639
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +0100640 std::vector<DataType> supportedTypes = {
641 DataType::Float32,
Sadik Armagan2999a022019-04-09 14:20:12 +0100642 DataType::QuantisedAsymm8,
Jim Flynn82fbe7c2019-04-02 15:19:08 +0100643 DataType::QuantisedSymm16,
644 DataType::Float16
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +0100645 };
646
647 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
648 supportedTypes,
649 "AdditionQueueDescriptor");
650
651 ValidateDataTypes(workloadInfo.m_InputTensorInfos[1],
652 supportedTypes,
653 "AdditionQueueDescriptor");
654
655 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
656 supportedTypes,
657 "AdditionQueueDescriptor");
658
telsoa014fcda012018-03-09 14:13:49 +0000659 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
660 workloadInfo.m_InputTensorInfos[1],
661 workloadInfo.m_OutputTensorInfos[0],
662 "AdditionQueueDescriptor",
663 "first input",
664 "second input");
telsoa014fcda012018-03-09 14:13:49 +0000665}
666
667//---------------------------------------------------------------
668void MultiplicationQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
669{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100670 ValidateNumInputs(workloadInfo, "MultiplicationQueueDescriptor", 2);
671 ValidateNumOutputs(workloadInfo, "MultiplicationQueueDescriptor", 1);
surmeh01bceff2f2018-03-29 16:29:27 +0100672
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +0100673 std::vector<DataType> supportedTypes = {
674 DataType::Float32,
Sadik Armagan2999a022019-04-09 14:20:12 +0100675 DataType::QuantisedAsymm8,
Jim Flynn82fbe7c2019-04-02 15:19:08 +0100676 DataType::QuantisedSymm16,
677 DataType::Float16
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +0100678 };
679
680 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
681 supportedTypes,
682 "MultiplicationQueueDescriptor");
683
684 ValidateDataTypes(workloadInfo.m_InputTensorInfos[1],
685 supportedTypes,
686 "MultiplicationQueueDescriptor");
687
688 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
689 supportedTypes,
690 "MultiplicationQueueDescriptor");
691
surmeh01bceff2f2018-03-29 16:29:27 +0100692 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
693 workloadInfo.m_InputTensorInfos[1],
694 workloadInfo.m_OutputTensorInfos[0],
695 "MultiplicationQueueDescriptor",
696 "first input",
697 "second input");
telsoa014fcda012018-03-09 14:13:49 +0000698}
699
700void BatchNormalizationQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
701{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100702 ValidateNumInputs(workloadInfo, "BatchNormalizationQueueDescriptor", 1);
703 ValidateNumOutputs(workloadInfo, "BatchNormalizationQueueDescriptor", 1);
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100704
705 const TensorInfo& input = workloadInfo.m_InputTensorInfos[0];
706 const TensorInfo& output = workloadInfo.m_OutputTensorInfos[0];
707
708 std::vector<DataType> supportedTypes =
709 {
710 DataType::Float16,
711 DataType::Float32,
Matteo Martincighf5507132019-06-04 10:59:47 +0100712 DataType::QuantisedAsymm8,
713 DataType::QuantisedSymm16
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100714 };
715
716 ValidateDataTypes(input, supportedTypes, "BatchNormalizationQueueDescriptor");
717 ValidateDataTypes(output, supportedTypes, "BatchNormalizationQueueDescriptor");
718
719 ValidateDataTypes(output, { input.GetDataType() }, "BatchNormalizationQueueDescriptor");
720
721 ValidateTensorQuantizationSpace(input, output, "BatchNormalizationQueueDescriptor", "input", "output");
722
telsoa014fcda012018-03-09 14:13:49 +0000723 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
724 workloadInfo.m_OutputTensorInfos[0],
725 "BatchNormalizationQueueDescriptor",
726 "input",
727 "output");
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100728
729 ValidatePointer(m_Mean, "BatchNormalizationQueueDescriptor", "mean");
telsoa014fcda012018-03-09 14:13:49 +0000730 ValidatePointer(m_Variance, "BatchNormalizationQueueDescriptor", "variance");
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100731 ValidatePointer(m_Beta, "BatchNormalizationQueueDescriptor", "beta");
732 ValidatePointer(m_Gamma, "BatchNormalizationQueueDescriptor", "gamma");
telsoa014fcda012018-03-09 14:13:49 +0000733
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100734 const TensorInfo& mean = m_Mean->GetTensorInfo();
735 const TensorInfo& variance = m_Variance->GetTensorInfo();
736 const TensorInfo& beta = m_Beta->GetTensorInfo();
737 const TensorInfo& gamma = m_Gamma->GetTensorInfo();
telsoa014fcda012018-03-09 14:13:49 +0000738
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100739 ValidateTensorNumDimensions(mean, "BatchNormalizationQueueDescriptor", 1, "mean");
740 ValidateTensorNumDimensions(variance, "BatchNormalizationQueueDescriptor", 1, "variance");
741 ValidateTensorNumDimensions(beta, "BatchNormalizationQueueDescriptor", 1, "beta");
742 ValidateTensorNumDimensions(gamma, "BatchNormalizationQueueDescriptor", 1, "gamma");
telsoa014fcda012018-03-09 14:13:49 +0000743
Matteo Martincigh3122bd52019-06-03 16:54:25 +0100744 ValidateTensorShapesMatch(mean, variance, "BatchNormalizationQueueDescriptor", "mean", "variance");
745 ValidateTensorShapesMatch(mean, beta, "BatchNormalizationQueueDescriptor", "mean", "beta");
746 ValidateTensorShapesMatch(mean, gamma, "BatchNormalizationQueueDescriptor", "mean", "gamma");
telsoa014fcda012018-03-09 14:13:49 +0000747}
748
749void Convolution2dQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
750{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100751 ValidateNumInputs(workloadInfo, "Convolution2dQueueDescriptor", 1);
752 ValidateNumOutputs(workloadInfo, "Convolution2dQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000753
754 ValidateTensorNumDimensions(workloadInfo.m_InputTensorInfos[0], "Convolution2dQueueDescriptor", 4, "input");
755 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "Convolution2dQueueDescriptor", 4, "output");
756
757 ValidatePointer(m_Weight, "Convolution2dQueueDescriptor", "weight");
758 ValidateTensorNumDimensions(m_Weight->GetTensorInfo(), "Convolution2dQueueDescriptor", 4, "weight");
759 ValidateTensorDataType(m_Weight->GetTensorInfo(), workloadInfo.m_InputTensorInfos[0].GetDataType(),
760 "Convolution2dQueueDescriptor", "weight");
761 if (m_Parameters.m_BiasEnabled)
762 {
763 ValidateTensorNumDimensions(m_Bias->GetTensorInfo(), "Convolution2dQueueDescriptor", 1, "bias");
764 ValidateTensorDataType(m_Bias->GetTensorInfo(),
765 GetBiasDataType(workloadInfo.m_InputTensorInfos[0].GetDataType()),
766 "Convolution2dQueueDescriptor", "bias");
767 ValidateBiasTensorQuantization(m_Bias->GetTensorInfo(),
768 workloadInfo.m_InputTensorInfos[0], m_Weight->GetTensorInfo(), "Convolution2dQueueDescriptor");
769 }
770
771 ValidateTensorQuantizationMultiplier(workloadInfo.m_InputTensorInfos[0], m_Weight->GetTensorInfo(),
772 workloadInfo.m_OutputTensorInfos[0], "Convolution2dQueueDescriptor", "input", "weights", "output");
773}
774
775void DepthwiseConvolution2dQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
776{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100777 ValidateNumInputs(workloadInfo, "DepthwiseConvolution2dQueueDescriptor", 1);
778 ValidateNumOutputs(workloadInfo, "DepthwiseConvolution2dQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000779
780 ValidateTensorNumDimensions(
781 workloadInfo.m_InputTensorInfos[0], "DepthwiseConvolution2dQueueDescriptor", 4, "input");
782 ValidateTensorNumDimensions(
783 workloadInfo.m_OutputTensorInfos[0], "DepthwiseConvolution2dQueueDescriptor", 4, "output");
784
785 ValidatePointer(m_Weight, "DepthwiseConvolution2dQueueDescriptor", "weight");
786 ValidateTensorNumDimensions(m_Weight->GetTensorInfo(), "DepthwiseConvolution2dQueueDescriptor", 4, "weight");
787
Bruno Goncalves22972f02019-04-26 21:03:24 -0300788 if (m_Parameters.m_DilationX < 1 || m_Parameters.m_DilationY < 1 )
789 {
790 throw InvalidArgumentException(
791 boost::str(boost::format("DepthwiseConvolution2dQueueDescriptor: dilationX (provided %1%) "
792 "and dilationY (provided %2%) cannot be smaller than 1.")
793 % m_Parameters.m_DilationX % m_Parameters.m_DilationX));
794 }
795
Nikhil Rajcec6b652018-10-12 13:51:57 +0100796 const unsigned int channelIndex = (m_Parameters.m_DataLayout == DataLayout::NCHW) ? 1 : 3;
797
Matteo Martincigh747ef822018-12-18 09:26:39 +0000798 // Expected weight shape: [ M, I, H, W ] - This shape does NOT depend on the data layout
799 // inputChannels * channelMultiplier should be equal to outputChannels.
telsoa014fcda012018-03-09 14:13:49 +0000800 const unsigned int numWeightChannelMultiplier = m_Weight->GetTensorInfo().GetShape()[0];
Matteo Martincigh747ef822018-12-18 09:26:39 +0000801 const unsigned int numWeightInputChannels = m_Weight->GetTensorInfo().GetShape()[1];
Nikhil Rajcec6b652018-10-12 13:51:57 +0100802 const unsigned int numWeightOutputChannels = workloadInfo.m_OutputTensorInfos[0].GetShape()[channelIndex];
telsoa014fcda012018-03-09 14:13:49 +0000803 if (numWeightChannelMultiplier * numWeightInputChannels != numWeightOutputChannels)
804 {
805 throw InvalidArgumentException(
806 boost::str(boost::format("DepthwiseConvolution2dQueueDescriptor: output_channels (provided %1%) should be "
807 "equal to input_channels (provided %2%) multiplied by channel_multiplier "
808 "(provided %3%).")
809 % numWeightOutputChannels % numWeightInputChannels % numWeightChannelMultiplier));
810 }
811
812 if (m_Parameters.m_BiasEnabled)
813 {
814 ValidatePointer(m_Bias, "DepthwiseConvolution2dQueueDescriptor", "bias");
815 ValidateTensorNumDimensions(m_Bias->GetTensorInfo(), "DepthwiseConvolution2dQueueDescriptor", 1, "bias");
816 ValidateBiasTensorQuantization(m_Bias->GetTensorInfo(),
817 workloadInfo.m_InputTensorInfos[0], m_Weight->GetTensorInfo(), "DepthwiseConvolution2dQueueDescriptor");
818
819 ValidateTensorDataType(m_Bias->GetTensorInfo(),
820 GetBiasDataType(workloadInfo.m_InputTensorInfos[0].GetDataType()),
821 "DepthwiseConvolution2dQueueDescriptor", "bias");
822 }
823
824 ValidateTensorQuantizationMultiplier(workloadInfo.m_InputTensorInfos[0], m_Weight->GetTensorInfo(),
825 workloadInfo.m_OutputTensorInfos[0], "DepthwiseConvolution2dQueueDescriptor", "input", "weights", "output");
Ruomei Yan88d44b82019-05-23 14:29:06 +0100826
827 // Check the supported data types
828 std::vector<DataType> supportedTypes = {
829 DataType::Float32,
830 DataType::QuantisedAsymm8,
831 DataType::QuantisedSymm16,
832 DataType::Float16
833 };
834
835 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
836 supportedTypes,
837 "DepthwiseConvolution2dQueueDescriptor");
838
839 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
840 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
841 "DepthwiseConvolution2dQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +0000842}
843
844void PermuteQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
845{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100846 ValidateNumInputs(workloadInfo, "PermuteQueueDescriptor", 1);
847 ValidateNumOutputs(workloadInfo, "PermuteQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000848
849 const PermutationVector& mapping = m_Parameters.m_DimMappings;
850
851 const TensorInfo& input = workloadInfo.m_InputTensorInfos[0];
852 const TensorInfo& output = workloadInfo.m_OutputTensorInfos[0];
853
854 ValidateTensorNumDimensions(input, "PermuteQueueDescriptor", mapping.GetSize(), "input");
855 ValidateTensorNumDimensions(output, "PermuteQueueDescriptor", mapping.GetSize(), "output");
856
857 for (unsigned int i = 0; i < mapping.GetSize(); ++i)
858 {
859 if (input.GetShape()[i] != output.GetShape()[mapping[i]])
860 {
861 throw InvalidArgumentException("PermuteQueueDescriptor: src dimension " + to_string(i) +
862 " (=" + to_string(input.GetShape()[i]) + ") " +
863 "must match dst dimension " + to_string(mapping[i]) +
864 " (=" + to_string(output.GetShape()[mapping[i]]) + ")");
865 }
866 }
867}
868
869void Pooling2dQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
870{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100871 ValidateNumInputs(workloadInfo, "Pooling2dQueueDescriptor", 1);
872 ValidateNumOutputs(workloadInfo, "Pooling2dQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000873
874 ValidateTensorNumDimensions(workloadInfo.m_InputTensorInfos[0], "Pooling2dQueueDescriptor", 4, "input");
875 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "Pooling2dQueueDescriptor", 4, "output");
Teresa Charlina3b20472019-06-06 11:12:32 +0100876
877 std::vector<DataType> supportedTypes =
878 {
879 DataType::Float32,
880 DataType::Float16,
881 DataType::QuantisedAsymm8
882 };
883
884 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
885 supportedTypes,
886 "Pooling2dQueueDescriptor");
887
888 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
889 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
890 "Pooling2dQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +0000891}
892
893void ResizeBilinearQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
894{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100895 ValidateNumInputs(workloadInfo, "ResizeBilinearQueueDescriptor", 1);
896 ValidateNumOutputs(workloadInfo, "ResizeBilinearQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000897
898 ValidateTensorNumDimensions(workloadInfo.m_InputTensorInfos[0], "ResizeBilinearQueueDescriptor", 4, "input");
899 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "ResizeBilinearQueueDescriptor", 4, "output");
900
telsoa01c577f2c2018-08-31 09:22:23 +0100901 // Resizes bilinear only changes width and height: batch and channel count must match.
telsoa014fcda012018-03-09 14:13:49 +0000902 {
903 const unsigned int inputBatchSize = workloadInfo.m_InputTensorInfos[0].GetShape()[0];
904 const unsigned int outputBatchSize = workloadInfo.m_OutputTensorInfos[0].GetShape()[0];
905 if (inputBatchSize != outputBatchSize)
906 {
907 throw InvalidArgumentException(
908 boost::str(boost::format("ResizeBilinearQueueDescriptor: Input batch size (%1%) "
909 "does not match output batch size (%2%)") % inputBatchSize % outputBatchSize));
910 }
911 }
912
913 {
Matthew Bentham8800c002018-11-19 13:19:28 +0000914 DataLayoutIndexed dimensionIndices(m_Parameters.m_DataLayout);
James Conroy59540822018-10-11 12:39:05 +0100915 const unsigned int inputChannelCount =
Matthew Bentham8800c002018-11-19 13:19:28 +0000916 workloadInfo.m_InputTensorInfos[0].GetShape()[dimensionIndices.GetChannelsIndex()];
James Conroy59540822018-10-11 12:39:05 +0100917 const unsigned int outputChannelCount =
Matthew Bentham8800c002018-11-19 13:19:28 +0000918 workloadInfo.m_OutputTensorInfos[0].GetShape()[dimensionIndices.GetChannelsIndex()];
telsoa014fcda012018-03-09 14:13:49 +0000919 if (inputChannelCount != outputChannelCount)
920 {
921 throw InvalidArgumentException(
922 boost::str(boost::format("ResizeBilinearQueueDescriptor: Input channel count (%1%) "
923 "does not match output channel count (%2%)") % inputChannelCount % outputChannelCount));
924 }
925 }
926}
927
928void FakeQuantizationQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
929{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100930 ValidateNumInputs(workloadInfo, "FakeQuantizationQueueDescriptor", 1);
931 ValidateNumOutputs(workloadInfo, "FakeQuantizationQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000932
933 ValidateTensorNumDimensions(workloadInfo.m_InputTensorInfos[0], "FakeQuantizationQueueDescriptor", 2, "input");
934 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "FakeQuantizationQueueDescriptor", 2, "output");
935 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
936 workloadInfo.m_OutputTensorInfos[0],
937 "FakeQuantizationQueueDescriptor",
938 "input",
939 "output");
940 if (m_Parameters.m_Min > m_Parameters.m_Max)
941 {
942 throw InvalidArgumentException("FakeQuantizationQueueDescriptor: min cannot be greater than max");
943 }
944
945}
946
947void L2NormalizationQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
948{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100949 ValidateNumInputs(workloadInfo, "L2NormalizationQueueDescriptor", 1);
950 ValidateNumOutputs(workloadInfo, "L2NormalizationQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000951
952 ValidateTensorNumDimensions(workloadInfo.m_InputTensorInfos[0], "L2NormalizationQueueDescriptor", 4, "input");
953 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "L2NormalizationQueueDescriptor", 4, "output");
954 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
955 workloadInfo.m_OutputTensorInfos[0],
956 "L2NormalizationQueueDescriptor",
957 "input",
958 "output");
959}
960
961void ConstantQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
962{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100963 ValidateNumInputs(workloadInfo, "ConstantQueueDescriptor", 0);
964 ValidateNumOutputs(workloadInfo, "ConstantQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000965
966 if (!m_LayerOutput)
967 {
968 throw InvalidArgumentException("ConstantQueueDescriptor: No const input specified");
969 }
970
971 ValidateTensorShapesMatch(m_LayerOutput->GetTensorInfo(),
972 workloadInfo.m_OutputTensorInfos[0],
973 "ConstantQueueDescriptor",
974 "constant",
975 "output");
Nina Drozd58ef2c62019-05-16 12:09:18 +0100976
977 // Check the supported data types
978 std::vector<DataType> supportedTypes =
Nina Drozd2f2778f2019-05-27 10:37:05 +0100979 {
980 DataType::Float32,
981 DataType::Float16,
982 DataType::Signed32,
983 DataType::QuantisedAsymm8,
984 DataType::QuantisedSymm16
985 };
Nina Drozd58ef2c62019-05-16 12:09:18 +0100986
987 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0], supportedTypes, "ConstantQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +0000988}
989
990void ReshapeQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
991{
Sadik Armaganeff363d2019-04-05 15:25:46 +0100992 ValidateNumInputs(workloadInfo, "ReshapeQueueDescriptor", 1);
993 ValidateNumOutputs(workloadInfo, "ReshapeQueueDescriptor", 1);
telsoa014fcda012018-03-09 14:13:49 +0000994
995 if (workloadInfo.m_InputTensorInfos[0].GetNumElements() != workloadInfo.m_OutputTensorInfos[0].GetNumElements())
996 {
997 throw InvalidArgumentException("ReshapeQueueDescriptor: Input tensor has " +
998 to_string(workloadInfo.m_InputTensorInfos[0].GetNumElements()) + " but output tensor has " +
999 to_string(workloadInfo.m_OutputTensorInfos[0].GetNumElements()) + " elements.");
1000 }
Nina Drozd2f2778f2019-05-27 10:37:05 +01001001
1002 // Check the supported data types
1003 std::vector<DataType> supportedTypes =
1004 {
1005 DataType::Float32,
1006 DataType::Float16,
Nina Drozd8ed4b8c2019-05-29 10:41:04 +01001007 DataType::QuantisedAsymm8,
1008 DataType::QuantisedSymm16
Nina Drozd2f2778f2019-05-27 10:37:05 +01001009 };
1010
1011 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0], supportedTypes, "ReshapeQueueDescriptor");
1012 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0], supportedTypes, "ReshapeQueueDescriptor");
telsoa014fcda012018-03-09 14:13:49 +00001013}
1014
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00001015void SpaceToBatchNdQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1016{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001017 ValidateNumInputs(workloadInfo, "SpaceToBatchNdQueueDescriptor", 1);
1018 ValidateNumOutputs(workloadInfo, "SpaceToBatchNdQueueDescriptor", 1);
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00001019
1020 ValidateTensorNumDimensions(workloadInfo.m_InputTensorInfos[0], "SpaceToBatchNdQueueDescriptor", 4, "input");
1021 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "SpaceToBatchNdQueueDescriptor", 4, "output");
1022
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00001023 if (m_Parameters.m_BlockShape.size() != 2)
1024 {
Nattapat Chaimanowong3ea76d52018-11-09 14:10:38 +00001025 throw InvalidArgumentException("Block Shape must contain 2 spatial dimensions");
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00001026 }
1027
1028 if (m_Parameters.m_BlockShape.size() != m_Parameters.m_PadList.size())
1029 {
Nattapat Chaimanowong3ea76d52018-11-09 14:10:38 +00001030 throw InvalidArgumentException("Pad List must contain the same number of dimensions as Block Shape.");
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00001031 }
1032
1033 const TensorShape inputShape = workloadInfo.m_InputTensorInfos[0].GetShape();
1034
1035 std::pair<unsigned int, unsigned int> heightPad = m_Parameters.m_PadList[0];
1036 std::pair<unsigned int, unsigned int> widthPad = m_Parameters.m_PadList[1];
1037
Matthew Bentham8800c002018-11-19 13:19:28 +00001038 DataLayoutIndexed dimensionIndices(m_Parameters.m_DataLayout);
1039 unsigned int inputHeight = inputShape[dimensionIndices.GetHeightIndex()]
Nattapat Chaimanowong3ea76d52018-11-09 14:10:38 +00001040 + heightPad.first + heightPad.second;
1041
Matthew Bentham8800c002018-11-19 13:19:28 +00001042 unsigned int inputWidth = inputShape[dimensionIndices.GetWidthIndex()]
Nattapat Chaimanowong3ea76d52018-11-09 14:10:38 +00001043 + widthPad.first + widthPad.second;
1044
1045 unsigned int numInputElements = inputShape[0] * inputHeight * inputWidth
Matthew Bentham8800c002018-11-19 13:19:28 +00001046 * inputShape[dimensionIndices.GetChannelsIndex()];
Nattapat Chaimanowong3ea76d52018-11-09 14:10:38 +00001047
1048 if (workloadInfo.m_OutputTensorInfos[0].GetNumElements() != numInputElements)
1049 {
1050 throw InvalidArgumentException("SpaceToBatchNdQueueDescriptor: Input tensor has " +
1051 to_string(numInputElements) + " after padding but output tensor has " +
1052 to_string(workloadInfo.m_OutputTensorInfos[0].GetNumElements()) + " elements.");
1053 }
1054
1055 if (inputHeight % m_Parameters.m_BlockShape[0] != 0 || inputWidth % m_Parameters.m_BlockShape[1] != 0)
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00001056 {
1057 throw InvalidArgumentException(
1058 "Input shape after padding must be divisible by Block Shape in all spatial dimensions");
1059 }
nikraj01120522a2019-05-31 11:33:07 +01001060
1061 std::vector<DataType> supportedTypes =
1062 {
1063 DataType::Float16,
1064 DataType::Float32,
1065 DataType::QuantisedAsymm8,
1066 DataType::QuantisedSymm16
1067 };
1068
1069 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
1070 supportedTypes,
1071 "SpaceToBatchNdQueueDescriptor");
1072
1073 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
1074 {workloadInfo.m_InputTensorInfos[0].GetDataType()},
1075 "SpaceToBatchNdQueueDescriptor");
Nattapat Chaimanowong207ef9a2018-11-02 10:57:25 +00001076}
1077
telsoa014fcda012018-03-09 14:13:49 +00001078void FloorQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1079{
James Conroy83735b12019-05-30 16:36:59 +01001080 const std::string floorQueueDescString = "FloorQueueDescriptor";
1081
1082 ValidateNumInputs(workloadInfo, floorQueueDescString, 1);
1083 ValidateNumOutputs(workloadInfo, floorQueueDescString, 1);
1084
1085 std::vector<DataType> supportedTypes =
1086 {
James Conroyb40d7102019-06-04 12:32:09 +01001087 DataType::Float32,
1088 DataType::QuantisedSymm16
James Conroy83735b12019-05-30 16:36:59 +01001089 };
1090
1091 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0], supportedTypes, floorQueueDescString);
1092 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0], supportedTypes, floorQueueDescString);
telsoa014fcda012018-03-09 14:13:49 +00001093
1094 if (workloadInfo.m_InputTensorInfos[0] != workloadInfo.m_OutputTensorInfos[0])
1095 {
James Conroy83735b12019-05-30 16:36:59 +01001096 throw InvalidArgumentException(floorQueueDescString + ": Input and output tensor infos do not match.");
telsoa014fcda012018-03-09 14:13:49 +00001097 }
1098}
1099
telsoa01c577f2c2018-08-31 09:22:23 +01001100void LstmQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1101{
1102 ValidateTensorNumDimensions(workloadInfo.m_InputTensorInfos[0], "LstmQueueDescriptor", 2, "input");
1103 ValidateTensorNumDimensions(workloadInfo.m_OutputTensorInfos[0], "LstmQueueDescriptor", 2, "output");
Nattapat Chaimanowongeb2b3292019-05-07 12:02:30 +01001104
1105 std::vector<DataType> supportedTypes = {
Conor Kennedyb9971c92019-05-07 07:14:23 +01001106 DataType::Float16,
Nattapat Chaimanowongeb2b3292019-05-07 12:02:30 +01001107 DataType::Float32,
Conor Kennedyb9971c92019-05-07 07:14:23 +01001108 DataType::QuantisedSymm16
Nattapat Chaimanowongeb2b3292019-05-07 12:02:30 +01001109 };
1110
1111 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
1112 supportedTypes,
1113 "LstmQueueDescriptor");
1114
1115 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
1116 supportedTypes,
1117 "LstmQueueDescriptor");
telsoa01c577f2c2018-08-31 09:22:23 +01001118}
1119
1120void ConvertFp32ToFp16QueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1121{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001122 ValidateNumInputs(workloadInfo, "ConvertFp32ToFp16QueueDescriptor", 1);
1123 ValidateNumOutputs(workloadInfo, "ConvertFp32ToFp16QueueDescriptor", 1);
telsoa01c577f2c2018-08-31 09:22:23 +01001124
1125 if (workloadInfo.m_InputTensorInfos[0].GetDataType() != DataType::Float32)
1126 {
1127 throw InvalidArgumentException("ConvertFp32ToFp16QueueDescriptor: Input tensor type must be Float32.");
1128 }
1129
1130 if (workloadInfo.m_OutputTensorInfos[0].GetDataType() != DataType::Float16)
1131 {
1132 throw InvalidArgumentException("ConvertFp32ToFp16QueueDescriptor: Output tensor type must be Float16.");
1133 }
1134
1135 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1136 workloadInfo.m_OutputTensorInfos[0],
1137 "ConvertFp32ToFp16QueueDescriptor",
1138 "input",
1139 "output");
1140}
1141
1142void ConvertFp16ToFp32QueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1143{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001144 ValidateNumInputs(workloadInfo, "ConvertFp16ToFp32QueueDescriptor", 1);
1145 ValidateNumOutputs(workloadInfo, "ConvertFp16ToFp32QueueDescriptor", 1);
telsoa01c577f2c2018-08-31 09:22:23 +01001146
1147 if (workloadInfo.m_InputTensorInfos[0].GetDataType() != DataType::Float16)
1148 {
1149 throw InvalidArgumentException("ConvertFp16ToFp32QueueDescriptor: Input tensor type must be Float16.");
1150 }
1151 if (workloadInfo.m_OutputTensorInfos[0].GetDataType() != DataType::Float32)
1152 {
1153 throw InvalidArgumentException("ConvertFp16ToFp32QueueDescriptor: Output tensor type must be Float32.");
1154 }
1155
1156 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1157 workloadInfo.m_OutputTensorInfos[0],
1158 "ConvertFp16ToFp32QueueDescriptor",
1159 "input",
1160 "output");
1161}
1162
Francis Murtaghe7a86a42018-08-29 12:42:10 +01001163void DivisionQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1164{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001165 ValidateNumInputs(workloadInfo, "DivisionQueueDescriptor", 2);
1166 ValidateNumOutputs(workloadInfo, "DivisionQueueDescriptor", 1);
Francis Murtaghe7a86a42018-08-29 12:42:10 +01001167
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001168 std::vector<DataType> supportedTypes = {
1169 DataType::Float32,
Sadik Armagan2999a022019-04-09 14:20:12 +01001170 DataType::QuantisedAsymm8,
Jim Flynn82fbe7c2019-04-02 15:19:08 +01001171 DataType::QuantisedSymm16,
1172 DataType::Float16
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001173 };
1174
1175 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
1176 supportedTypes,
1177 "DivisionQueueDescriptor");
1178
1179 ValidateDataTypes(workloadInfo.m_InputTensorInfos[1],
1180 supportedTypes,
1181 "DivisionQueueDescriptor");
1182
1183 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
1184 supportedTypes,
1185 "DivisionQueueDescriptor");
1186
Francis Murtaghe7a86a42018-08-29 12:42:10 +01001187 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1188 workloadInfo.m_InputTensorInfos[1],
1189 workloadInfo.m_OutputTensorInfos[0],
1190 "DivisionQueueDescriptor",
1191 "first input",
1192 "second input");
1193}
1194
David Beckc2044fe2018-09-05 15:00:38 +01001195void SubtractionQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1196{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001197 ValidateNumInputs(workloadInfo, "SubtractionQueueDescriptor", 2);
1198 ValidateNumOutputs(workloadInfo, "SubtractionQueueDescriptor", 1);
David Beckc2044fe2018-09-05 15:00:38 +01001199
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001200 std::vector<DataType> supportedTypes = {
1201 DataType::Float32,
Sadik Armagan2999a022019-04-09 14:20:12 +01001202 DataType::QuantisedAsymm8,
Jim Flynn82fbe7c2019-04-02 15:19:08 +01001203 DataType::QuantisedSymm16,
1204 DataType::Float16
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001205 };
1206
1207 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
1208 supportedTypes,
1209 "SubtractionQueueDescriptor");
1210
1211 ValidateDataTypes(workloadInfo.m_InputTensorInfos[1],
1212 supportedTypes,
1213 "SubtractionQueueDescriptor");
1214
1215 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
1216 supportedTypes,
1217 "SubtractionQueueDescriptor");
1218
David Beckc2044fe2018-09-05 15:00:38 +01001219 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1220 workloadInfo.m_InputTensorInfos[1],
1221 workloadInfo.m_OutputTensorInfos[0],
1222 "SubtractionQueueDescriptor",
1223 "first input",
1224 "second input");
1225}
1226
Nattapat Chaimanowong5a4304a2018-11-28 10:44:37 +00001227void MaximumQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1228{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001229 ValidateNumInputs(workloadInfo, "MaximumQueueDescriptor", 2);
1230 ValidateNumOutputs(workloadInfo, "MaximumQueueDescriptor", 1);
Nattapat Chaimanowong5a4304a2018-11-28 10:44:37 +00001231
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001232 std::vector<DataType> supportedTypes = {
1233 DataType::Float32,
Sadik Armagan2999a022019-04-09 14:20:12 +01001234 DataType::QuantisedAsymm8,
1235 DataType::QuantisedSymm16
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001236 };
1237
1238 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
1239 supportedTypes,
1240 "MaximumQueueDescriptor");
1241
1242 ValidateDataTypes(workloadInfo.m_InputTensorInfos[1],
1243 supportedTypes,
1244 "MaximumQueueDescriptor");
1245
1246 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
1247 supportedTypes,
1248 "MaximumQueueDescriptor");
1249
Nattapat Chaimanowong5a4304a2018-11-28 10:44:37 +00001250 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1251 workloadInfo.m_InputTensorInfos[1],
1252 workloadInfo.m_OutputTensorInfos[0],
1253 "MaximumQueueDescriptor",
1254 "first input",
1255 "second input");
1256}
1257
narpra01a6bf9122018-09-10 09:50:09 +01001258void MeanQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1259{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001260 ValidateNumInputs(workloadInfo, "MeanQueueDescriptor", 1);
1261 ValidateNumOutputs(workloadInfo, "MeanQueueDescriptor", 1);
narpra01eb061912018-09-10 17:35:27 +01001262
1263 const TensorInfo& input = workloadInfo.m_InputTensorInfos[0];
1264 const TensorInfo& output = workloadInfo.m_OutputTensorInfos[0];
1265
narpra0132b90462018-09-13 11:07:48 +01001266 if (m_Parameters.m_KeepDims)
narpra01eb061912018-09-10 17:35:27 +01001267 {
1268 ValidateTensorNumDimensions(output, "MeanQueueDescriptor", input.GetNumDimensions(), "output");
1269 }
narpra0132b90462018-09-13 11:07:48 +01001270 else if (m_Parameters.m_Axis.empty())
narpra01eb061912018-09-10 17:35:27 +01001271 {
1272 ValidateTensorNumDimensions(output, "MeanQueueDescriptor", 1, "output");
1273 }
1274 else
1275 {
narpra0132b90462018-09-13 11:07:48 +01001276 auto outputDim = input.GetNumDimensions() - boost::numeric_cast<unsigned int>(m_Parameters.m_Axis.size());
narpra01eb061912018-09-10 17:35:27 +01001277 ValidateTensorNumDimensions(output,
1278 "MeanQueueDescriptor",
1279 outputDim > 0 ? outputDim : 1,
1280 "output");
1281 }
narpra01a6bf9122018-09-10 09:50:09 +01001282}
1283
jimfly012c9322a2018-09-19 10:59:49 +01001284void PadQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1285{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001286 ValidateNumInputs(workloadInfo, "PadQueueDescriptor", 1);
1287 ValidateNumOutputs(workloadInfo, "PadQueueDescriptor", 1);
jimfly012c9322a2018-09-19 10:59:49 +01001288
1289 const TensorInfo& input = workloadInfo.m_InputTensorInfos[0];
Nina Drozd661dfa72018-10-02 11:14:17 +01001290 const TensorInfo& output = workloadInfo.m_OutputTensorInfos[0];
1291
jimfly012c9322a2018-09-19 10:59:49 +01001292 // input and output should have the same number of dimensions
1293 ValidateTensorNumDimensions(output, "PadQueueDescriptor", input.GetNumDimensions(), "output");
1294 // there should be entry in the pad list for each dimension in the input tensor
1295 if (m_Parameters.m_PadList.size() != input.GetNumDimensions()) {
1296 throw InvalidArgumentException("Pad List should contain the same number of entries as there"
1297 " are dimensions in the input tensor that is " +
1298 to_string(input.GetNumDimensions()) + " entries " +
1299 " not " + to_string(m_Parameters.m_PadList.size()) + " entries.");
1300 }
1301}
1302
Derek Lambertia9cca6a2019-03-25 15:41:58 +00001303void QuantizeQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1304{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001305 ValidateNumInputs(workloadInfo, "QuantizeQueueDescriptor", 1);
1306 ValidateNumOutputs(workloadInfo, "QuantizeQueueDescriptor", 1);
Derek Lambertia9cca6a2019-03-25 15:41:58 +00001307
1308
1309 if (workloadInfo.m_InputTensorInfos[0].GetDataType() != DataType::Float32)
1310 {
1311 throw InvalidArgumentException("Quantize only accepts Float32 inputs.");
1312 }
1313
1314 if (workloadInfo.m_OutputTensorInfos[0].GetDataType() != DataType::QuantisedAsymm8 &&
1315 workloadInfo.m_OutputTensorInfos[0].GetDataType() != DataType::QuantisedSymm16)
1316 {
1317 throw InvalidArgumentException("Output of quantized layer must be quantized type.");
1318 }
1319}
1320
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +00001321void BatchToSpaceNdQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1322{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001323 ValidateNumInputs(workloadInfo, "BatchToSpaceNdQueueDescriptor", 1);
1324 ValidateNumOutputs(workloadInfo, "BatchToSpaceNdQueueDescriptor", 1);
Éanna Ó Catháin4e1e1362018-11-12 11:36:34 +00001325}
1326
Conor Kennedy430b5d82018-11-14 15:28:28 +00001327void StridedSliceQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1328{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001329 ValidateNumInputs(workloadInfo, "StridedSliceQueueDescriptor", 1);
1330 ValidateNumOutputs(workloadInfo, "StridedSliceQueueDescriptor", 1);
Conor Kennedy430b5d82018-11-14 15:28:28 +00001331
1332 const TensorInfo& input = workloadInfo.m_InputTensorInfos[0];
Matteo Martincighe851b3d2019-05-28 14:31:20 +01001333 const TensorInfo& output = workloadInfo.m_OutputTensorInfos[0];
1334
1335 std::vector<DataType> supportedTypes =
1336 {
1337 DataType::Float16,
1338 DataType::Float32,
Matteo Martincigh42666a12019-05-29 08:53:41 +01001339 DataType::QuantisedAsymm8,
1340 DataType::QuantisedSymm16
Matteo Martincighe851b3d2019-05-28 14:31:20 +01001341 };
1342
1343 ValidateDataTypes(input, supportedTypes, "StridedSliceQueueDescriptor");
1344 ValidateDataTypes(output, supportedTypes, "StridedSliceQueueDescriptor");
1345
1346 ValidateDataTypes(output, { input.GetDataType() }, "StridedSliceQueueDescriptor");
1347
1348 ValidateTensorQuantizationSpace(input, output, "StridedSliceQueueDescriptor", "input", "output");
1349
Conor Kennedy430b5d82018-11-14 15:28:28 +00001350 const uint32_t rank = input.GetNumDimensions();
1351
Nattapat Chaimanowonga0d28442018-11-21 16:48:17 +00001352 if (rank > 4)
1353 {
1354 throw InvalidArgumentException(
1355 "StridedSliceLayer: Input tensors with rank greater than 4 are not supported");
1356 }
1357
Conor Kennedy430b5d82018-11-14 15:28:28 +00001358 // Begin, End & Stride length must be of rank(input0)
1359 if (m_Parameters.m_Begin.size() != rank)
1360 {
1361 throw InvalidArgumentException("StridedSliceLayer: Begin length must be of rank input0("
1362 + to_string(rank) + ")");
1363 }
1364
1365 if (m_Parameters.m_End.size() != rank)
1366 {
1367 throw InvalidArgumentException("StridedSliceLayer: End length must be of rank input0("
1368 + to_string(rank) + ")");
1369 }
1370
1371 if (m_Parameters.m_Stride.size() != rank)
1372 {
1373 throw InvalidArgumentException("StridedSliceLayer: Stride length must be of rank input0("
1374 + to_string(rank) + ")");
1375 }
1376
1377 // Stride entries must be non-zero
1378 for (auto& stride : m_Parameters.m_Stride)
1379 {
1380 if (stride == 0)
1381 {
1382 throw InvalidArgumentException("StridedSliceLayer: Stride entries must be non-zero");
1383 }
1384 }
1385}
1386
kevmay0190539692018-11-29 08:40:19 +00001387void MinimumQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1388{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001389 ValidateNumInputs(workloadInfo, "MinimumQueueDescriptor", 2);
1390 ValidateNumOutputs(workloadInfo, "MinimumQueueDescriptor", 1);
kevmay0190539692018-11-29 08:40:19 +00001391
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001392 std::vector<DataType> supportedTypes = {
1393 DataType::Float32,
Sadik Armagan2999a022019-04-09 14:20:12 +01001394 DataType::QuantisedAsymm8,
1395 DataType::QuantisedSymm16
Sadik Armagan2e6dc3a2019-04-03 17:48:18 +01001396 };
1397
1398 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
1399 supportedTypes,
1400 "MinimumQueueDescriptor");
1401
1402 ValidateDataTypes(workloadInfo.m_InputTensorInfos[1],
1403 supportedTypes,
1404 "MinimumQueueDescriptor");
1405
1406 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
1407 supportedTypes,
1408 "MinimumQueueDescriptor");
1409
kevmay0190539692018-11-29 08:40:19 +00001410 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1411 workloadInfo.m_InputTensorInfos[1],
1412 workloadInfo.m_OutputTensorInfos[0],
1413 "MinimumQueueDescriptor",
1414 "first input",
1415 "second input");
1416}
1417
Nattapat Chaimanowonga9a1cf12018-12-03 16:06:49 +00001418void DebugQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1419{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001420 ValidateNumInputs(workloadInfo, "DebugQueueDescriptor", 1);
1421 ValidateNumOutputs(workloadInfo, "DebugQueueDescriptor", 1);
Nattapat Chaimanowonga9a1cf12018-12-03 16:06:49 +00001422}
1423
FrancisMurtagh30cdfca2018-12-18 12:57:35 +00001424void EqualQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1425{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001426 ValidateNumInputs(workloadInfo, "EqualQueueDescriptor", 2);
1427 ValidateNumOutputs(workloadInfo, "EqualQueueDescriptor", 1);
FrancisMurtagh30cdfca2018-12-18 12:57:35 +00001428
1429 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1430 workloadInfo.m_InputTensorInfos[1],
1431 workloadInfo.m_OutputTensorInfos[0],
1432 "EqualQueueDescriptor",
1433 "first input",
1434 "second input");
kevmay012b4d88e2019-01-24 14:05:09 +00001435
1436 if (workloadInfo.m_OutputTensorInfos[0].GetDataType() != DataType::Boolean)
1437 {
1438 throw InvalidArgumentException("EqualQueueDescriptor: Output tensor type must be Boolean.");
1439 }
FrancisMurtagh30cdfca2018-12-18 12:57:35 +00001440}
1441
FrancisMurtagh878f0232018-12-19 10:56:15 +00001442void GreaterQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1443{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001444 ValidateNumInputs(workloadInfo, "GreaterQueueDescriptor", 2);
1445 ValidateNumOutputs(workloadInfo, "GreaterQueueDescriptor", 1);
FrancisMurtagh878f0232018-12-19 10:56:15 +00001446
1447 ValidateBroadcastTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1448 workloadInfo.m_InputTensorInfos[1],
1449 workloadInfo.m_OutputTensorInfos[0],
1450 "GreaterQueueDescriptor",
1451 "first input",
1452 "second input");
kevmay012b4d88e2019-01-24 14:05:09 +00001453
1454 if (workloadInfo.m_OutputTensorInfos[0].GetDataType() != DataType::Boolean)
1455 {
1456 throw InvalidArgumentException("GreaterQueueDescriptor: Output tensor type must be Boolean.");
1457 }
FrancisMurtagh878f0232018-12-19 10:56:15 +00001458}
1459
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +00001460void RsqrtQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1461{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001462 ValidateNumInputs(workloadInfo, "RsqrtQueueDescriptor", 1);
1463 ValidateNumOutputs(workloadInfo, "RsqrtQueueDescriptor", 1);
Mohamed Nour Abouelseouda1d3c6a2018-12-27 12:39:16 +00001464 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1465 workloadInfo.m_OutputTensorInfos[0],
1466 "RsqrtQueueDescriptor",
1467 "input",
1468 "output");
1469}
1470
narpra01b89b05f2019-01-16 09:53:09 +00001471void GatherQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1472{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001473 ValidateNumInputs(workloadInfo, "GatherQueueDescriptor", 2);
1474 ValidateNumOutputs(workloadInfo, "GatherQueueDescriptor", 1);
narpra014951d842019-01-18 16:53:53 +00001475
1476 const TensorInfo& indices = workloadInfo.m_InputTensorInfos[1];
1477
1478 if (indices.GetDataType() != DataType::Signed32)
1479 {
1480 throw InvalidArgumentException("GatherQueueDescriptor: Indices tensor type must be int32.");
1481 }
1482
1483 const TensorInfo& params = workloadInfo.m_InputTensorInfos[0];
1484 const TensorInfo& output = workloadInfo.m_OutputTensorInfos[0];
1485 unsigned int paramsDim = params.GetNumDimensions();
1486 unsigned int indicesDim = indices.GetNumDimensions();
1487 unsigned int outputDim = paramsDim - 1 + indicesDim;
1488
1489 ValidateTensorNumDimensions(output, "GatherQueueDescriptor", outputDim, "output");
narpra01b89b05f2019-01-16 09:53:09 +00001490}
1491
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001492void DetectionPostProcessQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1493{
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001494 const std::string& descriptorName = " DetectionPostProcessQueueDescriptor";
1495 ValidateNumInputs(workloadInfo, descriptorName, 2);
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001496
1497 if (workloadInfo.m_OutputTensorInfos.size() != 4)
1498 {
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001499 throw InvalidArgumentException(descriptorName + ": Requires exactly four outputs. " +
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001500 to_string(workloadInfo.m_OutputTensorInfos.size()) + " has been provided.");
1501 }
1502
1503 if (m_Anchors == nullptr)
1504 {
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001505 throw InvalidArgumentException(descriptorName + ": Anchors tensor descriptor is missing.");
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001506 }
1507
1508 const TensorInfo& boxEncodingsInfo = workloadInfo.m_InputTensorInfos[0];
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001509 const TensorInfo& scoresInfo = workloadInfo.m_InputTensorInfos[1];
1510 const TensorInfo& anchorsInfo = m_Anchors->GetTensorInfo();
1511
1512 const TensorInfo& detectionBoxesInfo = workloadInfo.m_OutputTensorInfos[0];
Narumol Prangnawarat6d302bf2019-02-04 11:46:26 +00001513 const TensorInfo& detectionClassesInfo = workloadInfo.m_OutputTensorInfos[1];
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001514 const TensorInfo& detectionScoresInfo = workloadInfo.m_OutputTensorInfos[2];
1515 const TensorInfo& numDetectionsInfo = workloadInfo.m_OutputTensorInfos[3];
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001516
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001517 ValidateTensorNumDimensions(boxEncodingsInfo, descriptorName, 3, "box encodings");
1518 ValidateTensorNumDimensions(scoresInfo, descriptorName, 3, "scores");
1519 ValidateTensorNumDimensions(anchorsInfo, descriptorName, 2, "anchors");
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001520
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001521 const std::vector<DataType> supportedInputTypes =
1522 {
1523 DataType::Float32,
1524 DataType::QuantisedAsymm8,
1525 DataType::QuantisedSymm16
1526 };
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001527
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001528 ValidateDataTypes(boxEncodingsInfo, supportedInputTypes, descriptorName);
1529 ValidateDataTypes(scoresInfo, supportedInputTypes, descriptorName);
1530 ValidateDataTypes(anchorsInfo, supportedInputTypes, descriptorName);
1531
1532 ValidateTensorNumDimensions(detectionBoxesInfo, descriptorName, 3, "detection boxes");
1533 ValidateTensorNumDimensions(detectionScoresInfo, descriptorName, 2, "detection scores");
1534 ValidateTensorNumDimensions(detectionClassesInfo, descriptorName, 2, "detection classes");
1535 ValidateTensorNumDimensions(numDetectionsInfo, descriptorName, 1, "num detections");
1536
1537 // NOTE: Output is always Float32 regardless of input type
1538 ValidateTensorDataType(detectionBoxesInfo, DataType::Float32, descriptorName, "detection boxes");
1539 ValidateTensorDataType(detectionScoresInfo, DataType::Float32, descriptorName, "detection scores");
1540 ValidateTensorDataType(detectionClassesInfo, DataType::Float32, descriptorName, "detection classes");
1541 ValidateTensorDataType(numDetectionsInfo, DataType::Float32, descriptorName, "num detections");
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001542
1543 if (m_Parameters.m_NmsIouThreshold <= 0.0f || m_Parameters.m_NmsIouThreshold > 1.0f)
1544 {
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001545 throw InvalidArgumentException(descriptorName + ": Intersection over union threshold "
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001546 "must be positive and less than or equal to 1.");
1547 }
1548 if (scoresInfo.GetShape()[2] != m_Parameters.m_NumClasses + 1)
1549 {
Aron Virginas-Tar6331f912019-06-03 17:10:02 +01001550 throw InvalidArgumentException(descriptorName + ": Number of classes with background "
Narumol Prangnawaratbc67cef2019-01-31 15:31:54 +00001551 "should be equal to number of classes + 1.");
1552 }
1553}
1554
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +00001555void DequantizeQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1556{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001557 ValidateNumInputs(workloadInfo, "DequantizeQueueDescriptor", 1);
1558 ValidateNumOutputs(workloadInfo, "DequantizeQueueDescriptor", 1);
Nattapat Chaimanowonge4294fd2019-03-28 09:56:53 +00001559
1560 if (workloadInfo.m_InputTensorInfos[0].GetDataType() != DataType::QuantisedAsymm8 &&
1561 workloadInfo.m_InputTensorInfos[0].GetDataType() != DataType::QuantisedSymm16)
1562 {
1563 throw InvalidArgumentException("Input to dequantize layer must be quantized type.");
1564 }
1565
1566 if (workloadInfo.m_OutputTensorInfos[0].GetDataType() != DataType::Float32)
1567 {
1568 throw InvalidArgumentException("Output of dequantize layer must be Float32 type.");
1569 }
1570}
1571
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +01001572void MergeQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1573{
Sadik Armaganeff363d2019-04-05 15:25:46 +01001574 ValidateNumInputs(workloadInfo, "MergeQueueDescriptor", 2);
1575 ValidateNumOutputs(workloadInfo, "MergeQueueDescriptor", 1);
Nattapat Chaimanowong1f886302019-04-05 13:37:19 +01001576
1577 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1578 workloadInfo.m_InputTensorInfos[1],
1579 "MergeQueueDescriptor",
1580 "input0",
1581 "input1");
1582
1583 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1584 workloadInfo.m_OutputTensorInfos[0],
1585 "MergeQueueDescriptor",
1586 "input0",
1587 "output");
1588
1589 const DataType dataType = workloadInfo.m_InputTensorInfos[0].GetDataType();
1590 ValidateTensorDataType(workloadInfo.m_InputTensorInfos[1], dataType, "MergeQueueDescriptor", "input1");
1591 ValidateTensorDataType(workloadInfo.m_OutputTensorInfos[0], dataType, "MergeQueueDescriptor", "output");
1592}
1593
Sadik Armaganeff363d2019-04-05 15:25:46 +01001594void SwitchQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1595{
1596 ValidateNumInputs(workloadInfo, "SwitchQueueDescriptor", 2);
1597 ValidateNumOutputs(workloadInfo, "SwitchQueueDescriptor", 2);
1598
1599 std::vector<DataType> supportedTypes = {
1600 DataType::Float32,
1601 DataType::QuantisedAsymm8,
1602 DataType::QuantisedSymm16
1603 };
1604
1605 ValidateDataTypes(workloadInfo.m_InputTensorInfos[0],
1606 supportedTypes,
1607 "SwitchQueueDescriptor");
1608
1609 ValidateDataTypes(workloadInfo.m_InputTensorInfos[1],
1610 supportedTypes,
1611 "SwitchQueueDescriptor");
1612
1613 ValidateDataTypes(workloadInfo.m_OutputTensorInfos[0],
1614 supportedTypes,
1615 "SwitchQueueDescriptor");
1616
1617 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1618 workloadInfo.m_OutputTensorInfos[0],
1619 "SwitchQueueDescriptor",
1620 "input0",
1621 "output0");
1622
1623 ValidateTensorShapesMatch(workloadInfo.m_InputTensorInfos[0],
1624 workloadInfo.m_OutputTensorInfos[1],
1625 "SwitchQueueDescriptor",
1626 "input0",
1627 "output1");
1628}
1629
Matteo Martincigh49124022019-01-11 13:25:59 +00001630void PreCompiledQueueDescriptor::Validate(const WorkloadInfo& workloadInfo) const
1631{
1632 // This is internally generated so it should not need validation.
1633}
1634
Nattapat Chaimanowonga0d28442018-11-21 16:48:17 +00001635} //namespace armnn