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Anthony Barbier6ff3b192017-09-04 18:44:23 +01001/*
Gunes Bayir3a1e1252023-01-03 21:26:09 +00002 * Copyright (c) 2016-2023 Arm Limited.
Anthony Barbier6ff3b192017-09-04 18:44:23 +01003 *
4 * SPDX-License-Identifier: MIT
5 *
6 * Permission is hereby granted, free of charge, to any person obtaining a copy
7 * of this software and associated documentation files (the "Software"), to
8 * deal in the Software without restriction, including without limitation the
9 * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or
10 * sell copies of the Software, and to permit persons to whom the Software is
11 * furnished to do so, subject to the following conditions:
12 *
13 * The above copyright notice and this permission notice shall be included in all
14 * copies or substantial portions of the Software.
15 *
16 * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
17 * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
18 * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
19 * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
20 * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
21 * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
22 * SOFTWARE.
23 */
Michalis Spyrouf4643372019-11-29 16:17:13 +000024#ifndef ARM_COMPUTE_ITENSORINFO_H
25#define ARM_COMPUTE_ITENSORINFO_H
Anthony Barbier6ff3b192017-09-04 18:44:23 +010026
27#include "arm_compute/core/Coordinates.h"
28#include "arm_compute/core/Strides.h"
29#include "arm_compute/core/TensorShape.h"
30#include "arm_compute/core/Types.h"
31#include "arm_compute/core/Utils.h"
Georgios Pinitasd8734b52017-12-22 15:27:52 +000032#include "arm_compute/core/utils/misc/Utility.h"
Sang-Hoon Park68dd25f2020-10-19 16:00:11 +010033#include "support/ICloneable.h"
Anthony Barbier6ff3b192017-09-04 18:44:23 +010034
35#include <cstddef>
36
37namespace arm_compute
38{
39/** Store the tensor's metadata */
Georgios Pinitas283c1792017-11-10 18:14:06 +000040class ITensorInfo : public misc::ICloneable<ITensorInfo>
Anthony Barbier6ff3b192017-09-04 18:44:23 +010041{
42public:
Giorgio Arena61b6e242021-09-23 12:40:39 +010043 using TensorDimsState = std::vector<int>;
SiCong Lif44bbc52022-08-29 18:25:51 +010044 /** An id that uniquely identifies an ITensorInfo within some domain (e.g. a workload)
45 */
46 using Id = int32_t;
47 /** An invalid tensor id within a domain */
Gunes Bayir3a1e1252023-01-03 21:26:09 +000048 static constexpr Id invalid_tensor_id = 0;
Sang-Hoon Park668ccdc2021-02-03 10:32:59 +000049 /** Get the value representing dynamic dimension state
50 *
51 * @return Value representing dynamic dimension state
52 *
53 */
54 static constexpr int32_t get_dynamic_state_value()
55 {
56 return _dynamic_dimension;
57 }
58 /** Get the value representing static dimension state
59 *
60 * @return Value representing static dimension state
61 *
62 */
63 static constexpr int32_t get_static_state_value()
64 {
65 return _static_dimension;
66 }
Anthony Barbier6ff3b192017-09-04 18:44:23 +010067 /** Default virtual destructor */
68 virtual ~ITensorInfo() = default;
69 /** Set the data type to the specified value.
70 *
71 * @warning This resets the format to UNKNOWN.
72 *
73 * @param[in] data_type The new data type.
Georgios Pinitas283c1792017-11-10 18:14:06 +000074 *
75 * @return Reference to this ITensorInfo object
Anthony Barbier6ff3b192017-09-04 18:44:23 +010076 */
Georgios Pinitas283c1792017-11-10 18:14:06 +000077 virtual ITensorInfo &set_data_type(DataType data_type) = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +010078 /** Set the number of channels to the specified value.
79 *
80 * @warning This resets the format to UNKNOWN.
81 *
82 * @param[in] num_channels New number of channels.
Georgios Pinitas283c1792017-11-10 18:14:06 +000083 *
84 * @return Reference to this ITensorInfo object
Anthony Barbier6ff3b192017-09-04 18:44:23 +010085 */
Georgios Pinitas283c1792017-11-10 18:14:06 +000086 virtual ITensorInfo &set_num_channels(int num_channels) = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +010087 /** Set the format of an already initialized tensor.
88 *
89 * @note If the data type has already been configured (i.e. not UNKNOWN) it
90 * must match the new format. If data type hasn't been configured it will
91 * be based on the format.
92 *
93 * @param[in] format Single-plane format of the tensor.
Georgios Pinitas283c1792017-11-10 18:14:06 +000094 *
95 * @return Reference to this ITensorInfo object
Anthony Barbier6ff3b192017-09-04 18:44:23 +010096 */
Georgios Pinitas283c1792017-11-10 18:14:06 +000097 virtual ITensorInfo &set_format(Format format) = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +010098 /** Set the shape of an already initialized tensor.
99 *
100 * @warning Changing the shape requires to recompute the strides and is
101 * therefore only possible if the tensor hasn't been allocated yet.
102 *
103 * @param[in] shape New tensor shape.
Georgios Pinitas283c1792017-11-10 18:14:06 +0000104 *
105 * @return Reference to this ITensorInfo object
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100106 */
Diego Lopez Recas35ceeb22017-12-04 18:56:10 +0000107 virtual ITensorInfo &set_tensor_shape(const TensorShape &shape) = 0;
Georgios Pinitasb14a0f02021-01-08 03:14:31 +0000108 /** Set the state for each dimension of the tensor
109 *
110 * This sets the state of each dimension of the shape in terms of dynamic behavior using -1 where appropriate.
111 * The index in the state is a 1 to 1 mapping with the shape dimension index.
112 * For example if you want to express [?, 3, 3] as a dynamic input then [-1, 3, 3] has to be set as a state
113 *
114 * @param[in] state Tensor dimensions state
115 *
116 * @return Reference to this ITensorInfo object
117 */
118 virtual ITensorInfo &set_tensor_dims_state(const TensorDimsState &state) = 0;
Georgios Pinitas283c1792017-11-10 18:14:06 +0000119 /** Set the quantization settings (scale and offset) of the tensor.
Anthony Barbierf202e502017-11-23 18:02:04 +0000120 *
121 * @param[in] quantization_info QuantizationInfo containing the scale and offset
122 *
123 * @return Reference to this ITensorInfo object
124 */
Diego Lopez Recas35ceeb22017-12-04 18:56:10 +0000125 virtual ITensorInfo &set_quantization_info(const QuantizationInfo &quantization_info) = 0;
Isabella Gottardid17a6772018-02-27 17:41:55 +0000126 /** Set the data layout of the tensor.
127 *
128 * @param[in] data_layout DataLayout containing the layout data information.
129 *
130 * @return Reference to this ITensorInfo object
131 */
132 virtual ITensorInfo &set_data_layout(const DataLayout &data_layout) = 0;
Georgios Pinitas30902ed2017-11-14 15:32:57 +0000133 /** Resets the padding settings of the tensor.
134 *
135 * @return Reference to this ITensorInfo object
136 */
137 virtual ITensorInfo &reset_padding() = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100138 /** Update the offset to the first element and the strides to automatically computed values.
139 *
140 * @note The padding used by this method is really conservative so that the tensor can be used for most functions.
141 *
142 * @return True if the strides or the offset to the first element have changed.
143 */
144 virtual bool auto_padding() = 0;
Ramy Elgammald2d93612022-12-22 15:21:03 +0000145 /** Set the lock paddings flag of the tensor.
146 * It should be set to True, when the tensor could be mapped to camera or frame buffer.
147 *
148 * @return Reference to this ITensorInfo object
149 */
150 virtual ITensorInfo &set_lock_paddings(bool flag) = 0;
151 /** Get the lock paddings flag value
152 *
153 * @return lock paddings flag value
154 */
155 virtual bool lock_paddings() const = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100156 /** Update the offset to the first element, the strides and the total size.
157 *
158 * @note This function can only increase the offset, strides and total size.
159 *
160 * @param[in] padding Padding around the XY plane in number of elements.
161 *
162 * @return True if the strides, offset and total size have changed.
163 */
164 virtual bool extend_padding(const PaddingSize &padding) = 0;
165 /** Return the size of the requested dimension
166 *
167 * @param[in] index Index of the dimension
168 *
169 * @return Dimension of the requested dimension
170 */
171 virtual size_t dimension(size_t index) const = 0;
Isabella Gottardid56e7702018-02-28 14:29:36 +0000172 /** Return the size of the requested data layout dimension
173 *
174 * @param[in] dimension DataLayoutDimension of the dimension
175 *
176 * @return Dimension of the requested dimension
177 */
178 virtual size_t dimension(DataLayoutDimension dimension) const = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100179 /** The strides in bytes for accessing each dimension of the tensor
180 *
181 * @return Strides in bytes for each tensor dimension
182 */
183 virtual const Strides &strides_in_bytes() const = 0;
184 /** The offset from the beginning of the memory allocation to the first element of the tensor.
185 * This can be used to access efficiently elements in a 2D tensor
186 *
187 * @return The offset in bytes to access the first element of the tensor.
188 */
189 virtual size_t offset_first_element_in_bytes() const = 0;
190 /** The offset in bytes from the beginning of the memory allocation to access the element at position (x, y, z ...)
191 *
192 * @param[in] pos Vector with the coordinates of the element to access.
193 * The size of this vector must be equal to the number of dimensions of the tensor
194 *
195 * @return Offset in bytes from the beginning of the memory allocation to access the element (x, y, z, ...)
196 */
Michalis Spyrou7c60c992019-10-10 14:33:47 +0100197 virtual int32_t offset_element_in_bytes(const Coordinates &pos) const = 0;
Vidhya Sudhan Loganathan7485d5a2018-07-04 09:34:00 +0100198
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100199 /** Element size in bytes calculated as data_size() * num_channels()
200 *
201 * @return The size of one element in bytes
202 */
203 virtual size_t element_size() const = 0;
204 /** The number of dimensions of the tensor (rank)
205 *
206 * @return The number of dimensions of the tensor (rank)
207 */
208 virtual size_t num_dimensions() const = 0;
209 /** The number of channels for each tensor element
210 *
211 * @return The number of channels for each tensor element
212 */
213 virtual size_t num_channels() const = 0;
214 /** Size for each dimension of the tensor
215 *
216 * @return A vector with the size for each dimension of the tensor
217 */
218 virtual const TensorShape &tensor_shape() const = 0;
Georgios Pinitasb14a0f02021-01-08 03:14:31 +0000219 /** State of each dimension of the tensor shape
220 *
221 * @return A vector with the state for each dimension of the tensor, where -1 specifies dynamic dimension
222 */
223 virtual const TensorDimsState &tensor_dims_state() const = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100224 /** Data type used for each element of the tensor
225 *
226 * @return Tensor data type
227 */
228 virtual DataType data_type() const = 0;
229 /** Colour format of the image
230 *
231 * @return Colour format of the image
232 */
233 virtual Format format() const = 0;
234 /** Returns the total size of the tensor in bytes.
235 *
236 * @return Total size of the tensor in bytes.
237 */
238 virtual size_t total_size() const = 0;
239 /** Padding of tensor.
240 *
241 * @return Padding.
242 */
243 virtual PaddingSize padding() const = 0;
244 /** Checks if the tensor has been allocated with padding or not.
245 *
246 * @return True if padding is allocated in the tensor, otherwise false.
247 */
248 virtual bool has_padding() const = 0;
249 /** Flag indicating whether the size of the tensor can be changed.
250 *
251 * @return True if the tensor size can be changed.
252 */
253 virtual bool is_resizable() const = 0;
Georgios Pinitas49be2e32019-09-02 13:18:55 +0100254 /** Flag indicating whether the shape of the tensor is dynamic, meaning that it can change on kernel/function execution.
255 *
256 * @return True if its dynamic else false
257 */
258 virtual bool is_dynamic() const = 0;
Giorgio Arena63e0beb2021-09-24 14:04:27 +0100259 /** Flag indicating whether the values of the tensor are constant, meaning that they can change on kernel/function execution.
260 *
261 * @return True if values are constant else false
262 */
263 virtual bool are_values_constant() const = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100264 /** Set the flag whether the tensor size can be changed.
265 *
266 * @param[in] is_resizable Flag that marks the tensor if it can be changed or not.
Georgios Pinitasa3b1b462017-11-16 19:24:39 +0000267 *
268 * @return Reference to this ITensorInfo object
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100269 */
Georgios Pinitasa3b1b462017-11-16 19:24:39 +0000270 virtual ITensorInfo &set_is_resizable(bool is_resizable) = 0;
Giorgio Arena63e0beb2021-09-24 14:04:27 +0100271 /** Set the flag whether the tensor values can change during kernel/function execution.
272 *
273 * @param[in] are_values_constant Flag that marks the tensor values if they can be changed or not.
274 *
275 * @return Reference to this ITensorInfo object
276 */
277 virtual ITensorInfo &set_are_values_constant(bool are_values_constant) = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100278 /** Valid region of the tensor. All elements in the valid region have defined values, i.e. are not undefined.
279 *
280 * @return The valid region.
281 */
282 virtual ValidRegion valid_region() const = 0;
283 /** Set the valid region of the tensor.
284 *
285 * @param[in] valid_region Valid region to set.
286 */
Diego Lopez Recas35ceeb22017-12-04 18:56:10 +0000287 virtual void set_valid_region(const ValidRegion &valid_region) = 0;
Michel Iwaniec00633802017-10-12 14:14:15 +0100288
289 /** Get the quantization settings (scale and offset) of the tensor.
290 *
291 * @return A QuantizationInfo containing the scale and offset.
292 */
293 virtual QuantizationInfo quantization_info() const = 0;
Isabella Gottardid17a6772018-02-27 17:41:55 +0000294 /** Get the data layout of the tensor.
295 *
296 * @return A DataLayout containing the layout data information.
297 */
298 virtual DataLayout data_layout() const = 0;
SiCong Lif44bbc52022-08-29 18:25:51 +0100299 /** Get the workload tensor id of the tensor.
300 *
301 * @return Workload tensor id of the tensor
302 */
303 virtual Id id() const = 0;
304 /** Set the tensor id
305 */
306 virtual ITensorInfo &set_id(ITensorInfo::Id id) = 0;
307 /** Check if the tensor id is valid
308 */
309 bool has_valid_id() const
310 {
311 return id() != invalid_tensor_id;
312 }
Diego Lopez Recas0021d752017-12-18 14:42:56 +0000313 /** If infos are broadcast compatible tensor info's, return the broadcasted shape and the intersection of
314 * the broadcasted valid regions of the tensors.
315 *
316 * Two tensor info's are broadcast compatible if their shapes are broadcast compatible.
317 *
318 * Two tensor shapes are broadcast compatible if for each dimension, they're equal or one of them is 1.
319 *
320 * If two shapes are compatible, each dimension in the broadcasted shape is the max of the original dimensions.
321 *
322 * @param[in] infos Tensor info's.
323 *
324 * @return The broadcasted shape and valid region, or an empty shape and valid region if the info's are
325 * not broadcast compatible.
326 */
327 template <typename... Infos>
328 static std::pair<TensorShape, ValidRegion> broadcast_shape_and_valid_region(const Infos &... infos)
329 {
330 TensorShape bc_shape = TensorShape::broadcast_shape(infos.tensor_shape()...);
331 ValidRegion bc_valid_region{ Coordinates(), bc_shape };
332
333 auto broadcast_valid_region = [&bc_valid_region](const ITensorInfo & info)
334 {
335 if(info.num_dimensions() != 0)
336 {
337 for(size_t d = 0; d < bc_valid_region.shape.num_dimensions(); ++d)
338 {
339 const bool is_broadcast = (info.tensor_shape()[d] == 1);
340
341 const int anchor_max = std::max(bc_valid_region.anchor[d], info.valid_region().anchor[d]);
342 const size_t valid_min = std::min(bc_valid_region.shape[d], info.valid_region().shape[d]);
343
344 if(!is_broadcast || (valid_min == 0))
345 {
346 bc_valid_region.anchor.set(d, anchor_max);
347 bc_valid_region.shape.set(d, valid_min);
348 }
349 }
350 }
351 };
352
353 utility::for_each(broadcast_valid_region, infos...);
354
355 return std::pair<TensorShape, ValidRegion>(bc_shape, bc_valid_region);
356 }
Sang-Hoon Park668ccdc2021-02-03 10:32:59 +0000357
358private:
359 static constexpr int32_t _dynamic_dimension = -1;
360 static constexpr int32_t _static_dimension = 0;
Anthony Barbier6ff3b192017-09-04 18:44:23 +0100361};
Georgios Pinitas49be2e32019-09-02 13:18:55 +0100362} // namespace arm_compute
Michalis Spyrouf4643372019-11-29 16:17:13 +0000363#endif /*ARM_COMPUTE_TENSORINFO_H */