blob: f862d04b22865e089bfea0771a3a13646e64a1a5 [file] [log] [blame]
giuros0192fd9432018-12-03 17:30:00 +00001/*
Michele Di Giorgiod9eaf612020-07-08 11:12:57 +01002 * Copyright (c) 2018-2020 Arm Limited.
giuros0192fd9432018-12-03 17:30:00 +00003 *
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 */
24#include "arm_compute/core/NEON/kernels/NEElementwiseOperationKernel.h"
25
26#include "arm_compute/core/CPP/Validate.h"
giuros0192fd9432018-12-03 17:30:00 +000027#include "arm_compute/core/Helpers.h"
28#include "arm_compute/core/IAccessWindow.h"
Georgios Pinitasddb93bb2020-10-02 16:38:59 +010029#include "src/core/NEON/NEAsymm.h"
30#include "src/core/NEON/NEFixedPoint.h"
31#include "src/core/NEON/wrapper/wrapper.h"
giuros0192fd9432018-12-03 17:30:00 +000032
giuros0192fd9432018-12-03 17:30:00 +000033#include <arm_neon.h>
giuros0192fd9432018-12-03 17:30:00 +000034#include <map>
giuros0192fd9432018-12-03 17:30:00 +000035
36namespace arm_compute
37{
giuros0192fd9432018-12-03 17:30:00 +000038namespace
39{
40float32x4x4_t load_quantized(const uint8_t *input1_ptr, const int32x4_t &offset, const float32x4_t &scale)
41{
42 qasymm8x16_t x = vld1q_u8(input1_ptr);
43 const float32x4x4_t out =
44 {
45 {
46 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vreinterpretq_s32_u32(vmovl_u16(vget_low_u16(vmovl_u8(vget_low_u8(x))))), offset)), scale),
47 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vreinterpretq_s32_u32(vmovl_u16(vget_high_u16(vmovl_u8(vget_low_u8(x))))), offset)), scale),
48 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vreinterpretq_s32_u32(vmovl_u16(vget_low_u16(vmovl_u8(vget_high_u8(x))))), offset)), scale),
49 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vreinterpretq_s32_u32(vmovl_u16(vget_high_u16(vmovl_u8(vget_high_u8(x))))), offset)), scale),
50 }
51 };
52 return out;
53}
54
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +000055float32x4x4_t load_quantized_signed(const int8_t *input1_ptr, const int32x4_t &offset, const float32x4_t &scale)
56{
57 qasymm8x16_signed_t x = vld1q_s8(input1_ptr);
58 const float32x4x4_t out =
59 {
60 {
61 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vmovl_s16(vget_low_s16(vmovl_s8(vget_low_s8(x)))), offset)), scale),
62 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vmovl_s16(vget_high_s16(vmovl_s8(vget_low_s8(x)))), offset)), scale),
63 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vmovl_s16(vget_low_s16(vmovl_s8(vget_high_s8(x)))), offset)), scale),
64 vmulq_f32(vcvtq_f32_s32(vsubq_s32(vmovl_s16(vget_high_s16(vmovl_s8(vget_high_s8(x)))), offset)), scale),
65 }
66 };
67 return out;
68}
69
George Wortd88590f2018-12-12 17:39:58 +000070void store_quantized(uint8_t *output_ptr, const uint32x4x4_t &out)
71{
72 const uint8x8_t pa = vqmovn_u16(vcombine_u16(vqmovn_u32(out.val[0]), vqmovn_u32(out.val[1])));
73 const uint8x8_t pb = vqmovn_u16(vcombine_u16(vqmovn_u32(out.val[2]), vqmovn_u32(out.val[3])));
74 vst1q_u8(output_ptr, vcombine_u8(pa, pb));
75}
76
77void store_quantized(uint8_t *output_ptr, const int32x4x4_t &out)
78{
79 const uint8x8_t pa = vqmovun_s16(vcombine_s16(vqmovn_s32(out.val[0]), vqmovn_s32(out.val[1])));
80 const uint8x8_t pb = vqmovun_s16(vcombine_s16(vqmovn_s32(out.val[2]), vqmovn_s32(out.val[3])));
81 vst1q_u8(output_ptr, vcombine_u8(pa, pb));
82}
83
giuros0192fd9432018-12-03 17:30:00 +000084void store_quantized(uint8_t *output_ptr, const float32x4x4_t &rf, const float32x4_t &offset, const float32x4_t &invscale)
85{
86 int32x4x4_t out =
87 {
Georgios Pinitasd57891a2019-02-19 18:10:03 +000088 {
89 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[0], invscale)),
90 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[1], invscale)),
91 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[2], invscale)),
92 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[3], invscale)),
93 }
giuros0192fd9432018-12-03 17:30:00 +000094 };
George Wortd88590f2018-12-12 17:39:58 +000095 store_quantized(output_ptr, out);
giuros0192fd9432018-12-03 17:30:00 +000096}
97
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +000098void store_quantized_signed(int8_t *output_ptr, const int32x4x4_t &out)
99{
100 const int8x8_t pa = vqmovn_s16(vcombine_s16(vqmovn_s32(out.val[0]), vqmovn_s32(out.val[1])));
101 const int8x8_t pb = vqmovn_s16(vcombine_s16(vqmovn_s32(out.val[2]), vqmovn_s32(out.val[3])));
102 vst1q_s8(output_ptr, vcombine_s8(pa, pb));
103}
104
105void store_quantized_signed(int8_t *output_ptr, const float32x4x4_t &rf, const float32x4_t &offset, const float32x4_t &invscale)
106{
107 int32x4x4_t out =
108 {
109 {
110 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[0], invscale)),
111 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[1], invscale)),
112 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[2], invscale)),
113 vcvtq_s32_f32(vmlaq_f32(offset, rf.val[3], invscale)),
114 }
115 };
116 store_quantized_signed(output_ptr, out);
117}
118
giuros0192fd9432018-12-03 17:30:00 +0000119template <ArithmeticOperation op, typename ScalarType>
George Wortd88590f2018-12-12 17:39:58 +0000120inline ScalarType elementwise_arithm_op_scalar(const ScalarType &a, const ScalarType &b)
giuros0192fd9432018-12-03 17:30:00 +0000121{
122 auto res = ScalarType(0);
123
124 switch(op)
125 {
126 case ArithmeticOperation::MAX:
127 res = std::max(a, b);
128 break;
129 case ArithmeticOperation::MIN:
130 res = std::min(a, b);
131 break;
132 case ArithmeticOperation::SQUARED_DIFF:
133 {
134 res = (a - b) * (a - b);
135 break;
136 }
giuros01d5134362019-05-14 16:12:53 +0100137 case ArithmeticOperation::PRELU:
138 {
139 res = (a > 0 ? a : a * b);
140 break;
141 }
George Worta1e7e282019-01-15 11:00:29 +0000142 case ArithmeticOperation::DIV:
143 {
144 res = a / b;
Georgios Pinitas18134222020-09-03 21:00:23 +0100145 if(std::is_integral<ScalarType>::value)
146 {
147 res = (b == 0) ? 0 : res;
148 if(static_cast<int32_t>(a) % static_cast<int32_t>(b) != 0 && ((a < 0) != (b < 0)))
149 {
150 --res;
151 }
152 }
George Worta1e7e282019-01-15 11:00:29 +0000153 break;
154 }
Usama Arif81e671e2019-05-13 13:33:14 +0100155 case ArithmeticOperation::POWER:
156 {
157 res = std::pow(a, b);
158 break;
159 }
giuros0192fd9432018-12-03 17:30:00 +0000160 default:
161 ARM_COMPUTE_ERROR("NOT_SUPPORTED!");
162 }
163 return res;
164}
165
George Wortd88590f2018-12-12 17:39:58 +0000166template <ArithmeticOperation op>
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100167inline uint8_t elementwise_arithm_op_quantized_scalar(const float &a, const float &b, UniformQuantizationInfo qinfo)
George Wortd88590f2018-12-12 17:39:58 +0000168{
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100169 return quantize_qasymm8(elementwise_arithm_op_scalar<op>(a, b), qinfo);
George Wortd88590f2018-12-12 17:39:58 +0000170}
171
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +0000172template <ArithmeticOperation op>
173inline int8_t elementwise_arithm_op_quantized_signed_scalar(const float &a, const float &b, UniformQuantizationInfo qinfo)
174{
175 return quantize_qasymm8_signed(elementwise_arithm_op_scalar<op>(a, b), qinfo);
176}
177
giuros01d5134362019-05-14 16:12:53 +0100178template <ArithmeticOperation op, typename VectorType>
179inline typename VectorType::type elementwise_arithm_op(const typename VectorType::type &a, const typename VectorType::type &b)
giuros0192fd9432018-12-03 17:30:00 +0000180{
giuros01d5134362019-05-14 16:12:53 +0100181 using vec_type = typename VectorType::type;
182 using scalar_type = typename VectorType::scalar_type;
183 using tag_type = typename VectorType::tag_type;
184
185 vec_type res = wrapper::vdup_n(static_cast<scalar_type>(0), tag_type{});
giuros0192fd9432018-12-03 17:30:00 +0000186
187 switch(op)
188 {
189 case ArithmeticOperation::MAX:
190 res = wrapper::vmax(a, b);
191 break;
192 case ArithmeticOperation::MIN:
193 res = wrapper::vmin(a, b);
194 break;
195 case ArithmeticOperation::SQUARED_DIFF:
196 {
giuros01d5134362019-05-14 16:12:53 +0100197 const vec_type tmp = wrapper::vsub(a, b);
198 res = wrapper::vmul(tmp, tmp);
giuros0192fd9432018-12-03 17:30:00 +0000199 break;
200 }
giuros01d5134362019-05-14 16:12:53 +0100201 case ArithmeticOperation::PRELU:
202 {
203 const vec_type zero = wrapper::vdup_n(static_cast<scalar_type>(0), tag_type{});
204 const vec_type tmp = wrapper::vmul(a, b);
205 const auto gt = wrapper::vcgt(a, zero);
206
207 res = wrapper::vbsl(gt, a, tmp);
208 break;
209 }
210
giuros0192fd9432018-12-03 17:30:00 +0000211 default:
212 ARM_COMPUTE_ERROR("NOT_SUPPORTED!");
213 }
214
215 return res;
216}
217
George Worta1e7e282019-01-15 11:00:29 +0000218template <>
Georgios Pinitas18134222020-09-03 21:00:23 +0100219inline int32x4_t elementwise_arithm_op<ArithmeticOperation::DIV, typename wrapper::traits::neon_vector<int32_t, 4>>(const int32x4_t &a, const int32x4_t &b)
220{
221 return vcvtq_s32_f32(vfloorq_f32(wrapper::vdiv(vcvtq_f32_s32(a), vcvtq_f32_s32(b))));
222}
223
224template <>
giuros01d5134362019-05-14 16:12:53 +0100225inline float32x4_t elementwise_arithm_op<ArithmeticOperation::DIV, typename wrapper::traits::neon_vector<float, 4>>(const float32x4_t &a, const float32x4_t &b)
George Worta1e7e282019-01-15 11:00:29 +0000226{
227 return wrapper::vdiv(a, b);
228}
229
Usama Arif81e671e2019-05-13 13:33:14 +0100230template <>
giuros01d5134362019-05-14 16:12:53 +0100231inline float32x4_t elementwise_arithm_op<ArithmeticOperation::POWER, typename wrapper::traits::neon_vector<float, 4>>(const float32x4_t &a, const float32x4_t &b)
Usama Arif81e671e2019-05-13 13:33:14 +0100232{
233 return wrapper::vpow(a, b);
234}
235
George Worta1e7e282019-01-15 11:00:29 +0000236#ifdef __ARM_FEATURE_FP16_VECTOR_ARITHMETIC
237template <>
Michele Di Giorgiob3a0a602019-06-13 15:35:00 +0100238inline float16x8_t elementwise_arithm_op<ArithmeticOperation::DIV, typename wrapper::traits::neon_vector<float16_t, 8>>(const float16x8_t &a, const float16x8_t &b)
George Worta1e7e282019-01-15 11:00:29 +0000239{
240 return wrapper::vdiv(a, b);
241}
Usama Arif81e671e2019-05-13 13:33:14 +0100242
243template <>
Michele Di Giorgiob3a0a602019-06-13 15:35:00 +0100244inline float16x8_t elementwise_arithm_op<ArithmeticOperation::POWER, typename wrapper::traits::neon_vector<float16_t, 8>>(const float16x8_t &a, const float16x8_t &b)
Usama Arif81e671e2019-05-13 13:33:14 +0100245{
246 return wrapper::vpow(a, b);
247}
George Worta1e7e282019-01-15 11:00:29 +0000248#endif // __ARM_FEATURE_FP16_VECTOR_ARITHMETIC
249
giuros0192fd9432018-12-03 17:30:00 +0000250template <ArithmeticOperation op>
George Wortd88590f2018-12-12 17:39:58 +0000251inline float32x4x4_t elementwise_arithm_op(const float32x4x4_t &a, const float32x4x4_t &b)
giuros0192fd9432018-12-03 17:30:00 +0000252{
giuros01d5134362019-05-14 16:12:53 +0100253 using neon_vector_float = wrapper::traits::neon_vector<float, 4>;
giuros0192fd9432018-12-03 17:30:00 +0000254 float32x4x4_t out =
255 {
Georgios Pinitasd57891a2019-02-19 18:10:03 +0000256 {
giuros01d5134362019-05-14 16:12:53 +0100257 elementwise_arithm_op<op, neon_vector_float>(a.val[0], b.val[0]),
258 elementwise_arithm_op<op, neon_vector_float>(a.val[1], b.val[1]),
259 elementwise_arithm_op<op, neon_vector_float>(a.val[2], b.val[2]),
260 elementwise_arithm_op<op, neon_vector_float>(a.val[3], b.val[3]),
Georgios Pinitasd57891a2019-02-19 18:10:03 +0000261 }
giuros0192fd9432018-12-03 17:30:00 +0000262 };
263 return out;
264}
265
giuros01d5134362019-05-14 16:12:53 +0100266template <ArithmeticOperation op, typename ScalarType, typename VectorType>
267inline typename VectorType::type elementwise_arithm_op_broadcast(const typename VectorType::type &a, const ScalarType &broadcast_value, const bool reorder)
George Wortd88590f2018-12-12 17:39:58 +0000268{
giuros01d5134362019-05-14 16:12:53 +0100269 using tag_type = typename VectorType::tag_type;
270 using vec_type = typename VectorType::type;
271
272 vec_type broadcast_vector = wrapper::vdup_n(broadcast_value, tag_type{});
273 return elementwise_arithm_op<op, VectorType>(reorder ? broadcast_vector : a, reorder ? a : broadcast_vector);
George Wortd88590f2018-12-12 17:39:58 +0000274}
275
276template <ComparisonOperation op, typename InputScalarType>
277inline uint8_t elementwise_comp_op_scalar(const InputScalarType &a, const InputScalarType &b)
278{
279 bool res = false;
280
281 switch(op)
282 {
283 case ComparisonOperation::Equal:
284 res = (a == b);
285 break;
286 case ComparisonOperation::NotEqual:
287 res = (a != b);
288 break;
289 case ComparisonOperation::Greater:
290 res = (a > b);
291 break;
292 case ComparisonOperation::GreaterEqual:
293 res = (a >= b);
294 break;
295 case ComparisonOperation::Less:
296 res = (a < b);
297 break;
298 case ComparisonOperation::LessEqual:
299 res = (a <= b);
300 break;
301 default:
302 ARM_COMPUTE_ERROR("NOT_SUPPORTED!");
303 }
304 return res ? ~static_cast<uint8_t>(0) : static_cast<uint8_t>(0);
305}
306
307template <ComparisonOperation op>
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100308inline uint8_t elementwise_comp_op_quantized_scalar(const float &a, const float &b, UniformQuantizationInfo qinfo)
George Wortd88590f2018-12-12 17:39:58 +0000309{
310 ARM_COMPUTE_UNUSED(qinfo);
311 return elementwise_comp_op_scalar<op>(a, b);
312}
313
314template <ComparisonOperation op, typename InputVectorType, typename OutputVectorType>
315inline OutputVectorType elementwise_comp_op(const InputVectorType &a, const InputVectorType &b)
316{
317 OutputVectorType res = { 0, 0, 0, 0 };
318
319 switch(op)
320 {
321 case ComparisonOperation::Equal:
322 res = wrapper::vceq(a, b);
323 break;
324 case ComparisonOperation::NotEqual:
325 res = wrapper::vnot(wrapper::vceq(a, b));
326 break;
327 case ComparisonOperation::Greater:
328 res = wrapper::vcgt(a, b);
329 break;
330 case ComparisonOperation::GreaterEqual:
331 res = wrapper::vcge(a, b);
332 break;
333 case ComparisonOperation::Less:
334 res = wrapper::vcgt(b, a);
335 break;
336 case ComparisonOperation::LessEqual:
337 res = wrapper::vcge(b, a);
338 break;
339 default:
340 ARM_COMPUTE_ERROR("NOT_SUPPORTED!");
341 }
342
343 return res;
344}
345
346template <ComparisonOperation op>
347inline uint32x4x4_t elementwise_comp_op(const float32x4x4_t &a, const float32x4x4_t &b)
348{
349 uint32x4x4_t out =
350 {
Georgios Pinitasd57891a2019-02-19 18:10:03 +0000351 {
352 elementwise_comp_op<op, float32x4_t, uint32x4_t>(a.val[0], b.val[0]),
353 elementwise_comp_op<op, float32x4_t, uint32x4_t>(a.val[1], b.val[1]),
354 elementwise_comp_op<op, float32x4_t, uint32x4_t>(a.val[2], b.val[2]),
355 elementwise_comp_op<op, float32x4_t, uint32x4_t>(a.val[3], b.val[3])
356 }
George Wortd88590f2018-12-12 17:39:58 +0000357 };
358 return out;
359}
360
361template <ComparisonOperation op, typename InputScalarType, typename InputVectorType, typename OutputVectorType>
362inline OutputVectorType elementwise_comp_op_broadcast(const InputVectorType &a, const InputScalarType &broadcast_value, const bool reorder)
363{
364 InputVectorType broadcast_vector = wrapper::vdup_n(broadcast_value, wrapper::traits::vector_128_tag());
365 return elementwise_comp_op<op, InputVectorType, OutputVectorType>(reorder ? broadcast_vector : a, reorder ? a : broadcast_vector);
366}
367
368template <ArithmeticOperation op, typename ScalarType, typename VectorType>
369inline int elementwise_arithm_op_loop(int window_start_x, int window_end_x, int window_step_x,
370 const ScalarType *input1_ptr, const ScalarType *input2_ptr, ScalarType *output_ptr)
371{
372 int x = window_start_x;
373 for(; x <= (window_end_x - window_step_x); x += window_step_x)
374 {
375 const auto a = wrapper::vloadq(input1_ptr + x);
376 const auto b = wrapper::vloadq(input2_ptr + x);
giuros01d5134362019-05-14 16:12:53 +0100377 wrapper::vstore(output_ptr + x, elementwise_arithm_op<op, VectorType>(a, b));
George Wortd88590f2018-12-12 17:39:58 +0000378 }
379 return x;
380}
381
382template <ArithmeticOperation op>
383inline int elementwise_arithm_op_quantized_loop(int window_start_x, int window_end_x, int window_step_x,
384 const uint8_t *input1_ptr, const uint8_t *input2_ptr, uint8_t *output_ptr,
385 int32x4_t voffset1, int32x4_t voffset2, float32x4_t vscale1, float32x4_t vscale2,
386 float32x4_t voffseto, float32x4_t invvscaleo)
387{
388 int x = window_start_x;
389 for(; x <= (window_end_x - window_step_x); x += window_step_x)
390 {
391 // Get inputs and compute output
392 const float32x4x4_t af = load_quantized(input1_ptr + x, voffset1, vscale1);
393 const float32x4x4_t bf = load_quantized(input2_ptr + x, voffset2, vscale2);
394 const float32x4x4_t rf = elementwise_arithm_op<op>(af, bf);
395 store_quantized(output_ptr + x, rf, voffseto, invvscaleo);
396 }
397 return x;
398}
399
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +0000400template <ArithmeticOperation op>
401inline int elementwise_arithm_op_quantized_singed_loop(int window_start_x, int window_end_x, int window_step_x,
402 const int8_t *input1_ptr, const int8_t *input2_ptr, int8_t *output_ptr,
403 int32x4_t voffset1, int32x4_t voffset2, float32x4_t vscale1, float32x4_t vscale2,
404 float32x4_t voffseto, float32x4_t invvscaleo)
405{
406 int x = window_start_x;
407 for(; x <= (window_end_x - window_step_x); x += window_step_x)
408 {
409 // Get inputs and compute output
410 const float32x4x4_t af = load_quantized_signed(input1_ptr + x, voffset1, vscale1);
411 const float32x4x4_t bf = load_quantized_signed(input2_ptr + x, voffset2, vscale2);
412 const float32x4x4_t rf = elementwise_arithm_op<op>(af, bf);
413 store_quantized_signed(output_ptr + x, rf, voffseto, invvscaleo);
414 }
415 return x;
416}
417
George Wortd88590f2018-12-12 17:39:58 +0000418template <ArithmeticOperation op, typename ScalarType, typename VectorType>
419inline int elementwise_arithm_op_broadcast_loop(int window_start_x, int window_end_x, int window_step_x,
420 const ScalarType *non_broadcast_input_ptr, const ScalarType &broadcast_value, ScalarType *output_ptr, const bool reorder)
421{
422 int x = window_start_x;
423 for(; x <= (window_end_x - window_step_x); x += window_step_x)
424 {
425 const auto a = wrapper::vloadq((non_broadcast_input_ptr + x));
giuros01d5134362019-05-14 16:12:53 +0100426 wrapper::vstore(output_ptr + x, elementwise_arithm_op_broadcast<op, ScalarType, VectorType>(a, broadcast_value, reorder));
George Wortd88590f2018-12-12 17:39:58 +0000427 }
428 return x;
429}
430
431template <ArithmeticOperation op>
432inline int elementwise_arithm_op_quantized_broadcast_loop(int window_start_x, int window_end_x, int window_step_x,
433 const uint8_t *non_broadcast_input_ptr, float32x4x4_t broadcast_vector, uint8_t *output_ptr,
434 int32x4_t voffset_non_broadcast, float32x4_t vscale_non_broadcast,
435 float32x4_t voffseto, float32x4_t invvscaleo, bool reorder)
436{
437 int x = window_start_x;
438 for(; x <= (window_end_x - window_step_x); x += window_step_x)
439 {
440 const float32x4x4_t af = load_quantized(non_broadcast_input_ptr + x, voffset_non_broadcast, vscale_non_broadcast);
441 const float32x4x4_t rf = elementwise_arithm_op<op>(reorder ? broadcast_vector : af, reorder ? af : broadcast_vector);
442 store_quantized(output_ptr + x, rf, voffseto, invvscaleo);
443 }
444 return x;
445}
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +0000446template <ArithmeticOperation op>
447inline int elementwise_arithm_op_quantized_signed_broadcast_loop(int window_start_x, int window_end_x, int window_step_x,
448 const int8_t *non_broadcast_input_ptr, float32x4x4_t broadcast_vector, int8_t *output_ptr,
449 int32x4_t voffset_non_broadcast, float32x4_t vscale_non_broadcast,
450 float32x4_t voffseto, float32x4_t invvscaleo, bool reorder)
451{
452 int x = window_start_x;
453 for(; x <= (window_end_x - window_step_x); x += window_step_x)
454 {
455 const float32x4x4_t af = load_quantized_signed(non_broadcast_input_ptr + x, voffset_non_broadcast, vscale_non_broadcast);
456 const float32x4x4_t rf = elementwise_arithm_op<op>(reorder ? broadcast_vector : af, reorder ? af : broadcast_vector);
457 store_quantized_signed(output_ptr + x, rf, voffseto, invvscaleo);
458 }
459 return x;
460}
George Wortd88590f2018-12-12 17:39:58 +0000461
462template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
Michele Di Giorgio1c76c1d2020-08-28 13:25:31 +0100463inline int elementwise_comp_op_8_loop(int window_start_x, int window_end_x, int window_step_x,
464 const InputScalarType *input1_ptr, const InputScalarType *input2_ptr, uint8_t *output_ptr)
465{
466 int x = window_start_x;
467 for(; x <= (window_end_x - window_step_x); x += window_step_x)
468 {
469 const auto a = wrapper::vloadq(input1_ptr + x);
470 const auto b = wrapper::vloadq(input2_ptr + x);
471 const auto res = elementwise_comp_op<op, InputVectorType, uint8x16_t>(a, b);
472 wrapper::vstore(output_ptr + x, res);
473 }
474 return x;
475}
476
477template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
George Wortd88590f2018-12-12 17:39:58 +0000478inline int elementwise_comp_op_16_loop(int window_start_x, int window_end_x, int window_step_x,
479 const InputScalarType *input1_ptr, const InputScalarType *input2_ptr, uint8_t *output_ptr)
480{
481 int x = window_start_x;
482 for(; x <= (window_end_x - window_step_x); x += window_step_x)
483 {
484 const auto a = wrapper::vloadq(input1_ptr + x);
485 const auto b = wrapper::vloadq(input2_ptr + x);
486 const auto res = elementwise_comp_op<op, InputVectorType, uint16x8_t>(a, b);
487 wrapper::vstore(output_ptr + x, wrapper::vmovn(res));
488 }
489 return x;
490}
491
492template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
493inline int elementwise_comp_op_32_loop(int window_start_x, int window_end_x, int window_step_x,
494 const InputScalarType *input1_ptr, const InputScalarType *input2_ptr, uint8_t *output_ptr)
495{
496 int x = window_start_x;
497 for(; x <= (window_end_x - window_step_x); x += window_step_x)
498 {
499 auto a = wrapper::vloadq(input1_ptr + x);
500 auto b = wrapper::vloadq(input2_ptr + x);
501 const auto res = elementwise_comp_op<op, InputVectorType, uint32x4_t>(a, b);
502 a = wrapper::vloadq(input1_ptr + x + 4);
503 b = wrapper::vloadq(input2_ptr + x + 4);
504 const auto res2 = elementwise_comp_op<op, InputVectorType, uint32x4_t>(a, b);
505 wrapper::vstore(output_ptr + x, wrapper::vmovn(wrapper::vcombine(wrapper::vmovn(res), wrapper::vmovn(res2))));
506 }
507 if(x <= window_end_x - 4)
508 {
509 const auto a = wrapper::vloadq(input1_ptr + x);
510 const auto b = wrapper::vloadq(input2_ptr + x);
511 const auto res = elementwise_comp_op<op, InputVectorType, uint32x4_t>(a, b);
512 for(int i = 0; i < 4; i++)
513 {
514 *(output_ptr + x + i) = wrapper::vgetlane(res, i);
515 }
516 x = +4;
517 }
518 return x;
519}
520
521template <ComparisonOperation op>
522inline int elementwise_comp_op_quantized_loop(int window_start_x, int window_end_x, int window_step_x,
523 const uint8_t *input1_ptr, const uint8_t *input2_ptr, uint8_t *output_ptr,
524 int32x4_t voffset1, int32x4_t voffset2, float32x4_t vscale1, float32x4_t vscale2,
525 float32x4_t voffseto, float32x4_t invvscaleo)
526{
527 ARM_COMPUTE_UNUSED(voffseto, invvscaleo);
528 int x = window_start_x;
529 for(; x <= (window_end_x - window_step_x); x += window_step_x)
530 {
531 const float32x4x4_t af = load_quantized(input1_ptr + x, voffset1, vscale1);
532 const float32x4x4_t bf = load_quantized(input2_ptr + x, voffset2, vscale2);
533 const uint32x4x4_t rf = elementwise_comp_op<op>(af, bf);
534 store_quantized(output_ptr + x, rf);
535 }
536 return x;
537}
538
morgolock74a16962020-01-15 11:40:49 +0000539template <ComparisonOperation op>
540inline int elementwise_comp_op_quantized_signed_loop(int window_start_x, int window_end_x, int window_step_x,
541 const int8_t *input1_ptr, const int8_t *input2_ptr, uint8_t *output_ptr,
542 int32x4_t voffset1, int32x4_t voffset2, float32x4_t vscale1, float32x4_t vscale2,
543 float32x4_t voffseto, float32x4_t invvscaleo)
544{
545 ARM_COMPUTE_UNUSED(voffseto, invvscaleo);
546 int x = window_start_x;
547 for(; x <= (window_end_x - window_step_x); x += window_step_x)
548 {
549 const float32x4x4_t af = load_quantized_signed(input1_ptr + x, voffset1, vscale1);
550 const float32x4x4_t bf = load_quantized_signed(input2_ptr + x, voffset2, vscale2);
551 const uint32x4x4_t rf = elementwise_comp_op<op>(af, bf);
552 store_quantized(output_ptr + x, rf);
553 }
554 return x;
555}
556
George Wortd88590f2018-12-12 17:39:58 +0000557template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
Michele Di Giorgio1c76c1d2020-08-28 13:25:31 +0100558inline int elementwise_comp_op_broadcast_8_loop(int window_start_x, int window_end_x, int window_step_x,
559 const InputScalarType *non_broadcast_input_ptr, const InputScalarType &broadcast_value, uint8_t *output_ptr, const bool reorder)
560{
561 int x = window_start_x;
562 for(; x <= (window_end_x - window_step_x); x += window_step_x)
563 {
564 const auto a = elementwise_comp_op_broadcast<op, InputScalarType, InputVectorType, uint8x16_t>(wrapper::vloadq((non_broadcast_input_ptr + x)), broadcast_value, reorder);
565 wrapper::vstore(output_ptr + x, a);
566 }
567 return x;
568}
569
570template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
George Wortd88590f2018-12-12 17:39:58 +0000571inline int elementwise_comp_op_broadcast_16_loop(int window_start_x, int window_end_x, int window_step_x,
572 const InputScalarType *non_broadcast_input_ptr, const InputScalarType &broadcast_value, uint8_t *output_ptr, const bool reorder)
573{
574 int x = window_start_x;
575 for(; x <= (window_end_x - window_step_x); x += window_step_x)
576 {
577 const auto a = elementwise_comp_op_broadcast<op, InputScalarType, InputVectorType, uint16x8_t>(wrapper::vloadq((non_broadcast_input_ptr + x)), broadcast_value, reorder);
578 wrapper::vstore(output_ptr + x, wrapper::vmovn(a));
579 }
580 return x;
581}
582
583template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
584inline int elementwise_comp_op_broadcast_32_loop(int window_start_x, int window_end_x, int window_step_x,
585 const InputScalarType *non_broadcast_input_ptr, const InputScalarType &broadcast_value, uint8_t *output_ptr, const bool reorder)
586{
587 int x = window_start_x;
588 for(; x <= (window_end_x - window_step_x); x += window_step_x)
589 {
590 const auto a = elementwise_comp_op_broadcast<op, InputScalarType, InputVectorType, uint32x4_t>(wrapper::vloadq(non_broadcast_input_ptr + x), broadcast_value, reorder);
591 const auto b = elementwise_comp_op_broadcast<op, InputScalarType, InputVectorType, uint32x4_t>(wrapper::vloadq(non_broadcast_input_ptr + x + 4), broadcast_value, reorder);
592 wrapper::vstore(output_ptr + x, wrapper::vmovn(wrapper::vcombine(wrapper::vmovn(a), wrapper::vmovn(b))));
593 }
594 if(x <= window_end_x - 4)
595 {
596 const auto a = elementwise_comp_op_broadcast<op, InputScalarType, InputVectorType, uint32x4_t>(wrapper::vloadq((non_broadcast_input_ptr + x)), broadcast_value, reorder);
597 for(int i = 0; i < 4; i++)
598 {
599 *(output_ptr + x + i) = wrapper::vgetlane(a, i);
600 }
601 x = +4;
602 }
603 return x;
604}
605
606template <ComparisonOperation op>
607inline int elementwise_comp_op_quantized_broadcast_loop(int window_start_x, int window_end_x, int window_step_x,
608 const uint8_t *non_broadcast_input_ptr, float32x4x4_t broadcast_vector, uint8_t *output_ptr,
609 int32x4_t voffset_non_broadcast, float32x4_t vscale_non_broadcast,
610 float32x4_t voffseto, float32x4_t invvscaleo, bool reorder)
611{
612 ARM_COMPUTE_UNUSED(voffseto, invvscaleo);
613 int x = window_start_x;
614 for(; x <= (window_end_x - window_step_x); x += window_step_x)
615 {
616 const float32x4x4_t af = load_quantized(non_broadcast_input_ptr + x, voffset_non_broadcast, vscale_non_broadcast);
617 const uint32x4x4_t rf = elementwise_comp_op<op>(reorder ? broadcast_vector : af, reorder ? af : broadcast_vector);
618 store_quantized(output_ptr + x, rf);
619 }
620 return x;
621}
622
Michele Di Giorgio81870c02020-04-30 12:02:20 +0100623template <ComparisonOperation op>
624inline int elementwise_comp_op_quantized_signed_broadcast_loop(int window_start_x, int window_end_x, int window_step_x,
625 const int8_t *non_broadcast_input_ptr, float32x4x4_t broadcast_vector, uint8_t *output_ptr,
626 int32x4_t voffset_non_broadcast, float32x4_t vscale_non_broadcast,
627 float32x4_t voffseto, float32x4_t invvscaleo, bool reorder)
628{
629 ARM_COMPUTE_UNUSED(voffseto, invvscaleo);
630 int x = window_start_x;
631 for(; x <= (window_end_x - window_step_x); x += window_step_x)
632 {
633 const float32x4x4_t af = load_quantized_signed(non_broadcast_input_ptr + x, voffset_non_broadcast, vscale_non_broadcast);
634 const uint32x4x4_t rf = elementwise_comp_op<op>(reorder ? broadcast_vector : af, reorder ? af : broadcast_vector);
635 store_quantized(output_ptr + x, rf);
636 }
637 return x;
638}
639
George Wortd88590f2018-12-12 17:39:58 +0000640template <typename InputScalarType, typename OutputScalarType, typename InputVectorType>
641void elementwise_op(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window,
642 OutputScalarType (*scalar_func)(const InputScalarType &, const InputScalarType &),
643 int (*broadcast_func)(int, int, int, const InputScalarType *, const InputScalarType &, OutputScalarType *, const bool),
644 int (*neon_func)(int, int, int, const InputScalarType *, const InputScalarType *, OutputScalarType *))
giuros0192fd9432018-12-03 17:30:00 +0000645{
646 // Create input windows
647 Window input1_win = window.broadcast_if_dimension_le_one(in1->info()->tensor_shape());
648 Window input2_win = window.broadcast_if_dimension_le_one(in2->info()->tensor_shape());
649
650 // Clear X Dimension on execution window as we handle manually
651 Window win = window;
652 win.set(Window::DimX, Window::Dimension(0, 1, 1));
653
Michalis Spyroue8c0c432019-01-22 11:08:31 +0000654 const int window_step_x = std::min(16 / static_cast<int>(sizeof(OutputScalarType)), 8);
giuros0192fd9432018-12-03 17:30:00 +0000655 const auto window_start_x = static_cast<int>(window.x().start());
656 const auto window_end_x = static_cast<int>(window.x().end());
657 const bool is_broadcast_across_x = (input1_win.x().step() == 0) || (input2_win.x().step() == 0);
658
659 if(is_broadcast_across_x)
660 {
giuros0192fd9432018-12-03 17:30:00 +0000661 const bool is_broadcast_input_2 = input2_win.x().step() == 0;
662 Window broadcast_win = is_broadcast_input_2 ? input2_win : input1_win;
663 Window non_broadcast_win = !is_broadcast_input_2 ? input2_win : input1_win;
664 const ITensor *broadcast_tensor = is_broadcast_input_2 ? in2 : in1;
665 const ITensor *non_broadcast_tensor = !is_broadcast_input_2 ? in2 : in1;
666
667 // Clear X Dimension on execution window as we handle manually
668 non_broadcast_win.set(Window::DimX, Window::Dimension(0, 1, 1));
669
670 Iterator broadcast_input(broadcast_tensor, broadcast_win);
671 Iterator non_broadcast_input(non_broadcast_tensor, non_broadcast_win);
672 Iterator output(out, win);
673
Michalis Spyroua4f378d2019-04-26 14:54:54 +0100674 execute_window_loop(win, [&](const Coordinates &)
giuros0192fd9432018-12-03 17:30:00 +0000675 {
George Wortd88590f2018-12-12 17:39:58 +0000676 auto output_ptr = reinterpret_cast<OutputScalarType *>(output.ptr());
677 const auto non_broadcast_input_ptr = reinterpret_cast<const InputScalarType *>(non_broadcast_input.ptr());
678 const InputScalarType broadcast_value = *reinterpret_cast<const InputScalarType *>(broadcast_input.ptr());
giuros0192fd9432018-12-03 17:30:00 +0000679
George Wortd88590f2018-12-12 17:39:58 +0000680 int x = (*broadcast_func)(window_start_x, window_end_x, window_step_x, non_broadcast_input_ptr, broadcast_value, output_ptr, !is_broadcast_input_2);
giuros0192fd9432018-12-03 17:30:00 +0000681 for(; x < window_end_x; ++x)
682 {
683 const auto a = *(non_broadcast_input_ptr + x);
George Wortd88590f2018-12-12 17:39:58 +0000684 *(output_ptr + x) = (*scalar_func)(!is_broadcast_input_2 ? broadcast_value : a, !is_broadcast_input_2 ? a : broadcast_value);
giuros0192fd9432018-12-03 17:30:00 +0000685 }
686 },
687 broadcast_input, non_broadcast_input, output);
688 }
689 else
690 {
691 // Clear X Dimension on execution window as we handle manually
692 input1_win.set(Window::DimX, Window::Dimension(0, 1, 1));
693 input2_win.set(Window::DimX, Window::Dimension(0, 1, 1));
694
695 Iterator input1(in1, input1_win);
696 Iterator input2(in2, input2_win);
697 Iterator output(out, win);
698
Michalis Spyroua4f378d2019-04-26 14:54:54 +0100699 execute_window_loop(win, [&](const Coordinates &)
giuros0192fd9432018-12-03 17:30:00 +0000700 {
George Wortd88590f2018-12-12 17:39:58 +0000701 auto output_ptr = reinterpret_cast<OutputScalarType *>(output.ptr());
702 const auto input1_ptr = reinterpret_cast<const InputScalarType *>(input1.ptr());
703 const auto input2_ptr = reinterpret_cast<const InputScalarType *>(input2.ptr());
giuros0192fd9432018-12-03 17:30:00 +0000704
George Wortd88590f2018-12-12 17:39:58 +0000705 int x = (*neon_func)(window_start_x, window_end_x, window_step_x, input1_ptr, input2_ptr, output_ptr);
giuros0192fd9432018-12-03 17:30:00 +0000706 for(; x < window_end_x; ++x)
707 {
708 const auto a = *(input1_ptr + x);
709 const auto b = *(input2_ptr + x);
George Wortd88590f2018-12-12 17:39:58 +0000710 *(output_ptr + x) = (*scalar_func)(a, b);
giuros0192fd9432018-12-03 17:30:00 +0000711 }
giuros0192fd9432018-12-03 17:30:00 +0000712 },
713 input1, input2, output);
714 }
715}
716
George Wortd88590f2018-12-12 17:39:58 +0000717void elementwise_op_quantized(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window,
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100718 uint8_t (*scalar_func)(const float &, const float &, UniformQuantizationInfo),
George Wortd88590f2018-12-12 17:39:58 +0000719 int (*broadcast_func)(int, int, int, const uint8_t *, float32x4x4_t, uint8_t *, int32x4_t, float32x4_t,
720 float32x4_t, float32x4_t, const bool),
721 int (*neon_func)(int, int, int, const uint8_t *, const uint8_t *, uint8_t *,
722 int32x4_t, int32x4_t, float32x4_t, float32x4_t,
723 float32x4_t, float32x4_t))
giuros0192fd9432018-12-03 17:30:00 +0000724{
725 // Create input windows
726 Window input1_win = window.broadcast_if_dimension_le_one(in1->info()->tensor_shape());
727 Window input2_win = window.broadcast_if_dimension_le_one(in2->info()->tensor_shape());
728
729 // Clear X Dimension on execution window as we handle manually
730 Window win = window;
731 win.set(Window::DimX, Window::Dimension(0, 1, 1));
732
733 const int window_step_x = 16;
734 const auto window_start_x = static_cast<int>(window.x().start());
735 const auto window_end_x = static_cast<int>(window.x().end());
736 const bool is_broadcast_across_x = (input1_win.x().step() == 0) || (input2_win.x().step() == 0);
737
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100738 const UniformQuantizationInfo output_qinfo = out->info()->quantization_info().uniform();
giuros0192fd9432018-12-03 17:30:00 +0000739
740 // Output quantization info (add 0.5 to round toward the nearest integer - 0.5 rounds away from zero)
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100741 const float32x4_t voffseto = vdupq_n_f32(output_qinfo.offset + 0.5f);
742 const float32x4_t invvscaleo = vdupq_n_f32(1.f / output_qinfo.scale);
giuros0192fd9432018-12-03 17:30:00 +0000743
744 if(is_broadcast_across_x)
745 {
746 // Select the broadcast input on the X axis
747 const bool is_broadcast_input_2 = input2_win.x().step() == 0;
748 Window broadcast_win = is_broadcast_input_2 ? input2_win : input1_win;
749 Window non_broadcast_win = !is_broadcast_input_2 ? input2_win : input1_win;
750 const ITensor *broadcast_tensor = is_broadcast_input_2 ? in2 : in1;
751 const ITensor *non_broadcast_tensor = !is_broadcast_input_2 ? in2 : in1;
752
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100753 const UniformQuantizationInfo broadcast_qinfo = broadcast_tensor->info()->quantization_info().uniform();
754 const UniformQuantizationInfo non_broadcast_qinfo = non_broadcast_tensor->info()->quantization_info().uniform();
giuros0192fd9432018-12-03 17:30:00 +0000755
756 const int32x4_t voffset_non_broadcast = vdupq_n_s32(non_broadcast_qinfo.offset);
757 const float32x4_t vscale_non_broadcast = vdupq_n_f32(non_broadcast_qinfo.scale);
758
759 // Clear X Dimension on execution window as we handle manually
760 non_broadcast_win.set(Window::DimX, Window::Dimension(0, 1, 1));
761
762 Iterator broadcast_input(broadcast_tensor, broadcast_win);
763 Iterator non_broadcast_input(non_broadcast_tensor, non_broadcast_win);
764 Iterator output(out, win);
765
Michalis Spyroua4f378d2019-04-26 14:54:54 +0100766 execute_window_loop(win, [&](const Coordinates &)
giuros0192fd9432018-12-03 17:30:00 +0000767 {
768 const auto non_broadcast_input_ptr = reinterpret_cast<const uint8_t *>(non_broadcast_input.ptr());
769 const auto output_ptr = reinterpret_cast<uint8_t *>(output.ptr());
770
771 const uint8_t broadcast_value = *reinterpret_cast<const uint8_t *>(broadcast_input.ptr());
Michele Di Giorgio81870c02020-04-30 12:02:20 +0100772 const float32x4x4_t broadcast_vector = vdequantize(vdupq_n_u8(broadcast_value), broadcast_qinfo);
giuros0192fd9432018-12-03 17:30:00 +0000773
George Wortd88590f2018-12-12 17:39:58 +0000774 int x = (*broadcast_func)(window_start_x, window_end_x, window_step_x, non_broadcast_input_ptr, broadcast_vector, output_ptr,
775 voffset_non_broadcast, vscale_non_broadcast, voffseto, invvscaleo, !is_broadcast_input_2);
giuros0192fd9432018-12-03 17:30:00 +0000776 for(; x < window_end_x; ++x)
777 {
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100778 const float afs = dequantize_qasymm8(*(non_broadcast_input_ptr + x), non_broadcast_qinfo);
779 const float bfs = dequantize_qasymm8(broadcast_value, broadcast_qinfo);
780 *(output_ptr + x) = (*scalar_func)(!is_broadcast_input_2 ? bfs : afs, !is_broadcast_input_2 ? afs : bfs, output_qinfo);
giuros0192fd9432018-12-03 17:30:00 +0000781 }
782 },
783 broadcast_input, non_broadcast_input, output);
784 }
785 else
786 {
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100787 const UniformQuantizationInfo input1_qinfo = in1->info()->quantization_info().uniform();
788 const UniformQuantizationInfo input2_qinfo = in2->info()->quantization_info().uniform();
789
giuros0192fd9432018-12-03 17:30:00 +0000790 // Input1 quantization info
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100791 const int32x4_t voffset1 = vdupq_n_s32(input1_qinfo.offset);
792 const float32x4_t vscale1 = vdupq_n_f32(input1_qinfo.scale);
giuros0192fd9432018-12-03 17:30:00 +0000793
794 // Input2 quantization info
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100795 const int32x4_t voffset2 = vdupq_n_s32(input2_qinfo.offset);
796 const float32x4_t vscale2 = vdupq_n_f32(input2_qinfo.scale);
giuros0192fd9432018-12-03 17:30:00 +0000797
798 // Clear X Dimension on execution window as we handle manually
799 input1_win.set(Window::DimX, Window::Dimension(0, 1, 1));
800 input2_win.set(Window::DimX, Window::Dimension(0, 1, 1));
801
giuros0192fd9432018-12-03 17:30:00 +0000802 Iterator input1(in1, input1_win);
803 Iterator input2(in2, input2_win);
804 Iterator output(out, win);
805
Michalis Spyroua4f378d2019-04-26 14:54:54 +0100806 execute_window_loop(win, [&](const Coordinates &)
giuros0192fd9432018-12-03 17:30:00 +0000807 {
808 const auto input1_ptr = reinterpret_cast<const uint8_t *>(input1.ptr());
809 const auto input2_ptr = reinterpret_cast<const uint8_t *>(input2.ptr());
810 const auto output_ptr = reinterpret_cast<uint8_t *>(output.ptr());
811
George Wortd88590f2018-12-12 17:39:58 +0000812 int x = (*neon_func)(window_start_x, window_end_x, window_step_x, input1_ptr, input2_ptr, output_ptr, voffset1, voffset2,
813 vscale1, vscale2, voffseto, invvscaleo);
giuros0192fd9432018-12-03 17:30:00 +0000814 for(; x < window_end_x; ++x)
815 {
Georgios Pinitas4c5469b2019-05-21 13:32:43 +0100816 const float afs = dequantize_qasymm8(*(input1_ptr + x), input1_qinfo);
817 const float bfs = dequantize_qasymm8(*(input2_ptr + x), input2_qinfo);
818 *(output_ptr + x) = (*scalar_func)(afs, bfs, output_qinfo);
giuros0192fd9432018-12-03 17:30:00 +0000819 }
820 },
821 input1, input2, output);
822 }
823}
824
morgolock74a16962020-01-15 11:40:49 +0000825void elementwise_comp_quantized_signed(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window,
826 uint8_t (*scalar_func)(const float &, const float &, UniformQuantizationInfo),
Michele Di Giorgio81870c02020-04-30 12:02:20 +0100827 int (*broadcast_func)(int, int, int, const int8_t *, float32x4x4_t, uint8_t *, int32x4_t, float32x4_t,
828 float32x4_t, float32x4_t, const bool),
morgolock74a16962020-01-15 11:40:49 +0000829 int (*neon_func)(int, int, int, const int8_t *, const int8_t *, uint8_t *,
830 int32x4_t, int32x4_t, float32x4_t, float32x4_t,
831 float32x4_t, float32x4_t))
832{
833 // Create input windows
834 Window input1_win = window.broadcast_if_dimension_le_one(in1->info()->tensor_shape());
835 Window input2_win = window.broadcast_if_dimension_le_one(in2->info()->tensor_shape());
836
837 // Clear X Dimension on execution window as we handle manually
838 Window win = window;
839 win.set(Window::DimX, Window::Dimension(0, 1, 1));
840
Michele Di Giorgio81870c02020-04-30 12:02:20 +0100841 const int window_step_x = 16;
842 const auto window_start_x = static_cast<int>(window.x().start());
843 const auto window_end_x = static_cast<int>(window.x().end());
844 const bool is_broadcast_across_x = (input1_win.x().step() == 0) || (input2_win.x().step() == 0);
845
846 const UniformQuantizationInfo output_qinfo = out->info()->quantization_info().uniform();
morgolock74a16962020-01-15 11:40:49 +0000847
848 const float32x4_t voffseto = vdupq_n_f32(output_qinfo.offset);
849 const float32x4_t invvscaleo = vdupq_n_f32(1.f / output_qinfo.scale);
Michele Di Giorgio81870c02020-04-30 12:02:20 +0100850
851 if(is_broadcast_across_x)
852 {
853 // Select the broadcast input on the X axis
854 const bool is_broadcast_input_2 = input2_win.x().step() == 0;
855 Window broadcast_win = is_broadcast_input_2 ? input2_win : input1_win;
856 Window non_broadcast_win = !is_broadcast_input_2 ? input2_win : input1_win;
857 const ITensor *broadcast_tensor = is_broadcast_input_2 ? in2 : in1;
858 const ITensor *non_broadcast_tensor = !is_broadcast_input_2 ? in2 : in1;
859
860 const UniformQuantizationInfo broadcast_qinfo = broadcast_tensor->info()->quantization_info().uniform();
861 const UniformQuantizationInfo non_broadcast_qinfo = non_broadcast_tensor->info()->quantization_info().uniform();
862
863 const int32x4_t voffset_non_broadcast = vdupq_n_s32(non_broadcast_qinfo.offset);
864 const float32x4_t vscale_non_broadcast = vdupq_n_f32(non_broadcast_qinfo.scale);
865
866 // Clear X Dimension on execution window as we handle manually
867 non_broadcast_win.set(Window::DimX, Window::Dimension(0, 1, 1));
868
869 Iterator broadcast_input(broadcast_tensor, broadcast_win);
870 Iterator non_broadcast_input(non_broadcast_tensor, non_broadcast_win);
871 Iterator output(out, win);
872
873 execute_window_loop(win, [&](const Coordinates &)
874 {
875 const auto non_broadcast_input_ptr = reinterpret_cast<const int8_t *>(non_broadcast_input.ptr());
876 const auto output_ptr = reinterpret_cast<uint8_t *>(output.ptr());
877
878 const int8_t broadcast_value = *reinterpret_cast<const int8_t *>(broadcast_input.ptr());
879 const float32x4x4_t broadcast_vector = vdequantize(vdupq_n_s8(broadcast_value), broadcast_qinfo);
880
881 int x = (*broadcast_func)(window_start_x, window_end_x, window_step_x, non_broadcast_input_ptr, broadcast_vector, output_ptr,
882 voffset_non_broadcast, vscale_non_broadcast, voffseto, invvscaleo, !is_broadcast_input_2);
883 for(; x < window_end_x; ++x)
884 {
885 const float afs = dequantize_qasymm8_signed(*(non_broadcast_input_ptr + x), non_broadcast_qinfo);
886 const float bfs = dequantize_qasymm8_signed(broadcast_value, broadcast_qinfo);
887 *(output_ptr + x) = (*scalar_func)(!is_broadcast_input_2 ? bfs : afs, !is_broadcast_input_2 ? afs : bfs, output_qinfo);
888 }
889 },
890 broadcast_input, non_broadcast_input, output);
891 }
892 else
morgolock74a16962020-01-15 11:40:49 +0000893 {
894 const UniformQuantizationInfo input1_qinfo = in1->info()->quantization_info().uniform();
895 const UniformQuantizationInfo input2_qinfo = in2->info()->quantization_info().uniform();
896
897 // Input1 quantization info
898 const int32x4_t voffset1 = vdupq_n_s32(input1_qinfo.offset);
899 const float32x4_t vscale1 = vdupq_n_f32(input1_qinfo.scale);
900
901 // Input2 quantization info
902 const int32x4_t voffset2 = vdupq_n_s32(input2_qinfo.offset);
903 const float32x4_t vscale2 = vdupq_n_f32(input2_qinfo.scale);
904
905 // Clear X Dimension on execution window as we handle manually
906 input1_win.set(Window::DimX, Window::Dimension(0, 1, 1));
907 input2_win.set(Window::DimX, Window::Dimension(0, 1, 1));
908
909 Iterator input1(in1, input1_win);
910 Iterator input2(in2, input2_win);
911 Iterator output(out, win);
912
913 execute_window_loop(win, [&](const Coordinates &)
914 {
915 const auto input1_ptr = reinterpret_cast<const int8_t *>(input1.ptr());
916 const auto input2_ptr = reinterpret_cast<const int8_t *>(input2.ptr());
917 const auto output_ptr = reinterpret_cast<uint8_t *>(output.ptr());
918
919 int x = (*neon_func)(window_start_x, window_end_x, window_step_x, input1_ptr, input2_ptr, output_ptr, voffset1, voffset2,
920 vscale1, vscale2, voffseto, invvscaleo);
921 for(; x < window_end_x; ++x)
922 {
923 const float afs = dequantize_qasymm8_signed(*(input1_ptr + x), input1_qinfo);
924 const float bfs = dequantize_qasymm8_signed(*(input2_ptr + x), input2_qinfo);
925 *(output_ptr + x) = (*scalar_func)(afs, bfs, output_qinfo);
926 }
927 },
928 input1, input2, output);
929 }
930}
931
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +0000932void elementwise_op_quantized_signed(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window,
933 int8_t (*scalar_func)(const float &, const float &, UniformQuantizationInfo),
934 int (*broadcast_func)(int, int, int, const int8_t *, float32x4x4_t, int8_t *, int32x4_t, float32x4_t,
935 float32x4_t, float32x4_t, const bool),
936 int (*neon_func)(int, int, int, const int8_t *, const int8_t *, int8_t *,
937 int32x4_t, int32x4_t, float32x4_t, float32x4_t,
938 float32x4_t, float32x4_t))
939{
940 // Create input windows
941 Window input1_win = window.broadcast_if_dimension_le_one(in1->info()->tensor_shape());
942 Window input2_win = window.broadcast_if_dimension_le_one(in2->info()->tensor_shape());
943
944 // Clear X Dimension on execution window as we handle manually
945 Window win = window;
946 win.set(Window::DimX, Window::Dimension(0, 1, 1));
947
948 const int window_step_x = 16;
949 const auto window_start_x = static_cast<int>(window.x().start());
950 const auto window_end_x = static_cast<int>(window.x().end());
951 const bool is_broadcast_across_x = (input1_win.x().step() == 0) || (input2_win.x().step() == 0);
952
953 const UniformQuantizationInfo output_qinfo = out->info()->quantization_info().uniform();
954
morgolocka3598052019-12-31 12:20:47 +0000955 const float32x4_t voffseto = vdupq_n_f32(output_qinfo.offset);
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +0000956 const float32x4_t invvscaleo = vdupq_n_f32(1.f / output_qinfo.scale);
957
958 if(is_broadcast_across_x)
959 {
960 // Select the broadcast input on the X axis
961 const bool is_broadcast_input_2 = input2_win.x().step() == 0;
962 Window broadcast_win = is_broadcast_input_2 ? input2_win : input1_win;
963 Window non_broadcast_win = !is_broadcast_input_2 ? input2_win : input1_win;
964 const ITensor *broadcast_tensor = is_broadcast_input_2 ? in2 : in1;
965 const ITensor *non_broadcast_tensor = !is_broadcast_input_2 ? in2 : in1;
966
967 const UniformQuantizationInfo broadcast_qinfo = broadcast_tensor->info()->quantization_info().uniform();
968 const UniformQuantizationInfo non_broadcast_qinfo = non_broadcast_tensor->info()->quantization_info().uniform();
969
970 const int32x4_t voffset_non_broadcast = vdupq_n_s32(non_broadcast_qinfo.offset);
971 const float32x4_t vscale_non_broadcast = vdupq_n_f32(non_broadcast_qinfo.scale);
972
973 // Clear X Dimension on execution window as we handle manually
974 non_broadcast_win.set(Window::DimX, Window::Dimension(0, 1, 1));
975
976 Iterator broadcast_input(broadcast_tensor, broadcast_win);
977 Iterator non_broadcast_input(non_broadcast_tensor, non_broadcast_win);
978 Iterator output(out, win);
979
980 execute_window_loop(win, [&](const Coordinates &)
981 {
982 const auto non_broadcast_input_ptr = reinterpret_cast<const int8_t *>(non_broadcast_input.ptr());
983 const auto output_ptr = reinterpret_cast<int8_t *>(output.ptr());
984
985 const int8_t broadcast_value = *reinterpret_cast<const int8_t *>(broadcast_input.ptr());
Sheri Zhang5eaf57c2020-05-04 21:38:17 +0100986 const float32x4x4_t broadcast_vector = vdequantize(vdupq_n_s8(broadcast_value), broadcast_qinfo);
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +0000987
988 int x = (*broadcast_func)(window_start_x, window_end_x, window_step_x, non_broadcast_input_ptr, broadcast_vector, output_ptr,
989 voffset_non_broadcast, vscale_non_broadcast, voffseto, invvscaleo, !is_broadcast_input_2);
990 for(; x < window_end_x; ++x)
991 {
992 const float afs = dequantize_qasymm8_signed(*(non_broadcast_input_ptr + x), non_broadcast_qinfo);
993 const float bfs = dequantize_qasymm8_signed(broadcast_value, broadcast_qinfo);
994 *(output_ptr + x) = (*scalar_func)(!is_broadcast_input_2 ? bfs : afs, !is_broadcast_input_2 ? afs : bfs, output_qinfo);
995 }
996 },
997 broadcast_input, non_broadcast_input, output);
998 }
999 else
1000 {
1001 const UniformQuantizationInfo input1_qinfo = in1->info()->quantization_info().uniform();
1002 const UniformQuantizationInfo input2_qinfo = in2->info()->quantization_info().uniform();
1003
1004 // Input1 quantization info
1005 const int32x4_t voffset1 = vdupq_n_s32(input1_qinfo.offset);
1006 const float32x4_t vscale1 = vdupq_n_f32(input1_qinfo.scale);
1007
1008 // Input2 quantization info
1009 const int32x4_t voffset2 = vdupq_n_s32(input2_qinfo.offset);
1010 const float32x4_t vscale2 = vdupq_n_f32(input2_qinfo.scale);
1011
1012 // Clear X Dimension on execution window as we handle manually
1013 input1_win.set(Window::DimX, Window::Dimension(0, 1, 1));
1014 input2_win.set(Window::DimX, Window::Dimension(0, 1, 1));
1015
1016 Iterator input1(in1, input1_win);
1017 Iterator input2(in2, input2_win);
1018 Iterator output(out, win);
1019
1020 execute_window_loop(win, [&](const Coordinates &)
1021 {
1022 const auto input1_ptr = reinterpret_cast<const int8_t *>(input1.ptr());
1023 const auto input2_ptr = reinterpret_cast<const int8_t *>(input2.ptr());
1024 const auto output_ptr = reinterpret_cast<int8_t *>(output.ptr());
1025
1026 int x = (*neon_func)(window_start_x, window_end_x, window_step_x, input1_ptr, input2_ptr, output_ptr, voffset1, voffset2,
1027 vscale1, vscale2, voffseto, invvscaleo);
1028 for(; x < window_end_x; ++x)
1029 {
1030 const float afs = dequantize_qasymm8_signed(*(input1_ptr + x), input1_qinfo);
1031 const float bfs = dequantize_qasymm8_signed(*(input2_ptr + x), input2_qinfo);
1032 *(output_ptr + x) = (*scalar_func)(afs, bfs, output_qinfo);
1033 }
1034 },
1035 input1, input2, output);
1036 }
1037}
1038
George Wortd88590f2018-12-12 17:39:58 +00001039template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
Michele Di Giorgio1c76c1d2020-08-28 13:25:31 +01001040void elementwise_comp_op_8(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
1041{
1042 elementwise_op<InputScalarType, uint8_t, InputVectorType>(in1, in2, out, window,
1043 &elementwise_comp_op_scalar<op, InputScalarType>,
1044 &elementwise_comp_op_broadcast_8_loop<op, InputScalarType, InputVectorType>,
1045 &elementwise_comp_op_8_loop<op, InputScalarType, InputVectorType>);
1046}
1047
1048template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
George Wortd88590f2018-12-12 17:39:58 +00001049void elementwise_comp_op_16(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
giuros0192fd9432018-12-03 17:30:00 +00001050{
George Wortd88590f2018-12-12 17:39:58 +00001051 elementwise_op<InputScalarType, uint8_t, InputVectorType>(in1, in2, out, window,
1052 &elementwise_comp_op_scalar<op, InputScalarType>,
1053 &elementwise_comp_op_broadcast_16_loop<op, InputScalarType, InputVectorType>,
1054 &elementwise_comp_op_16_loop<op, InputScalarType, InputVectorType>);
1055}
1056
1057template <ComparisonOperation op, typename InputScalarType, typename InputVectorType>
1058void elementwise_comp_op_32(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
1059{
1060 elementwise_op<InputScalarType, uint8_t, InputVectorType>(in1, in2, out, window,
1061 &elementwise_comp_op_scalar<op, InputScalarType>,
1062 &elementwise_comp_op_broadcast_32_loop<op, InputScalarType, InputVectorType>,
1063 &elementwise_comp_op_32_loop<op, InputScalarType, InputVectorType>);
1064}
1065
giuros01d5134362019-05-14 16:12:53 +01001066template <ArithmeticOperation op, typename VectorType>
George Wortd88590f2018-12-12 17:39:58 +00001067void elementwise_arithm_op(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
1068{
giuros01d5134362019-05-14 16:12:53 +01001069 using scalar_type = typename VectorType::scalar_type;
1070
1071 elementwise_op<scalar_type, scalar_type, VectorType>(in1, in2, out, window,
1072 &elementwise_arithm_op_scalar<op, scalar_type>,
1073 &elementwise_arithm_op_broadcast_loop<op, scalar_type, VectorType>,
1074 &elementwise_arithm_op_loop<op, scalar_type, VectorType>);
George Wortd88590f2018-12-12 17:39:58 +00001075}
1076
1077template <ArithmeticOperation op>
1078void elementwise_arithm_op_quantized(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
1079{
1080 elementwise_op_quantized(in1, in2, out, window, &elementwise_arithm_op_quantized_scalar<op>,
1081 &elementwise_arithm_op_quantized_broadcast_loop<op>,
1082 &elementwise_arithm_op_quantized_loop<op>);
1083}
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +00001084template <ArithmeticOperation op>
1085void elementwise_arithm_op_quantized_signed(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
1086{
1087 elementwise_op_quantized_signed(in1, in2, out, window, &elementwise_arithm_op_quantized_signed_scalar<op>,
1088 &elementwise_arithm_op_quantized_signed_broadcast_loop<op>,
1089 &elementwise_arithm_op_quantized_singed_loop<op>);
1090}
George Wortd88590f2018-12-12 17:39:58 +00001091
1092template <ComparisonOperation op>
1093void elementwise_comp_op_quantized(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
1094{
1095 elementwise_op_quantized(in1, in2, out, window, &elementwise_comp_op_quantized_scalar<op>,
1096 &elementwise_comp_op_quantized_broadcast_loop<op>,
1097 &elementwise_comp_op_quantized_loop<op>);
1098}
1099
morgolock74a16962020-01-15 11:40:49 +00001100template <ComparisonOperation op>
1101void elementwise_comp_op_quantized_signed(const ITensor *in1, const ITensor *in2, ITensor *out, const Window &window)
1102{
Michele Di Giorgio81870c02020-04-30 12:02:20 +01001103 elementwise_comp_quantized_signed(in1, in2, out, window, &elementwise_comp_op_quantized_scalar<op>,
1104 &elementwise_comp_op_quantized_signed_broadcast_loop<op>,
1105 &elementwise_comp_op_quantized_signed_loop<op>);
morgolock74a16962020-01-15 11:40:49 +00001106}
1107
George Wortd88590f2018-12-12 17:39:58 +00001108std::function<void(const ITensor *, const ITensor *, ITensor *, const Window &)>
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001109configure_func(const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output,
George Wortd88590f2018-12-12 17:39:58 +00001110 std::map<std::string, NEElementwiseOperationKernel::ElementwiseFunction *> map_function)
1111{
1112 std::string function_to_call("op_");
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001113 function_to_call += string_from_data_type(input1->data_type()) + "_";
1114 function_to_call += string_from_data_type(input2->data_type()) + "_";
1115 function_to_call += string_from_data_type(output->data_type());
George Wortd88590f2018-12-12 17:39:58 +00001116
1117 auto it = map_function.find(function_to_call);
1118
1119 if(it != map_function.end())
1120 {
1121 auto func = it->second;
1122 return [func](const ITensor * input1, const ITensor * input2, ITensor * output, const Window & window)
1123 {
1124 func(input1, input2, output, window);
1125 };
1126 }
1127 return nullptr;
1128}
1129
1130template <ArithmeticOperation op>
1131std::function<void(const ITensor *, const ITensor *, ITensor *, const Window &)>
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001132configure_arithm_func(const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output)
George Wortd88590f2018-12-12 17:39:58 +00001133{
1134 static std::map<std::string, NEElementwiseOperationKernel::ElementwiseFunction *> map_function =
1135 {
giuros01d5134362019-05-14 16:12:53 +01001136 { "op_F32_F32_F32", &elementwise_arithm_op<op, typename wrapper::traits::neon_vector<float, 4>> },
1137 { "op_S16_S16_S16", &elementwise_arithm_op<op, typename wrapper::traits::neon_vector<int16_t, 8>> },
1138 { "op_S32_S32_S32", &elementwise_arithm_op<op, typename wrapper::traits::neon_vector<int32_t, 4>> },
Michalis Spyrou8d4d1b82019-11-28 11:31:23 +00001139 { "op_QASYMM8_QASYMM8_QASYMM8", &elementwise_arithm_op_quantized<op> },
1140 { "op_QASYMM8_SIGNED_QASYMM8_SIGNED_QASYMM8_SIGNED", &elementwise_arithm_op_quantized_signed<op> }
George Wortd88590f2018-12-12 17:39:58 +00001141 };
1142#ifdef __ARM_FEATURE_FP16_VECTOR_ARITHMETIC
giuros01d5134362019-05-14 16:12:53 +01001143 map_function["op_F16_F16_F16"] = &elementwise_arithm_op<op, typename wrapper::traits::neon_vector<float16_t, 8>>;
George Wortd88590f2018-12-12 17:39:58 +00001144#endif /* __ARM_FEATURE_FP16_VECTOR_ARITHMETIC */
1145
1146 return configure_func(input1, input2, output, map_function);
1147}
1148
1149template <ComparisonOperation op>
1150std::function<void(const ITensor *input1, const ITensor *input2, ITensor *output, const Window &window)>
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001151configure_comp_func(const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output)
George Wortd88590f2018-12-12 17:39:58 +00001152{
1153 static std::map<std::string, NEElementwiseOperationKernel::ElementwiseFunction *> map_function =
1154 {
Michele Di Giorgio1c76c1d2020-08-28 13:25:31 +01001155 { "op_U8_U8_U8", &elementwise_comp_op_8<op, uint8_t, uint8x16_t> },
George Wortd88590f2018-12-12 17:39:58 +00001156 { "op_F32_F32_U8", &elementwise_comp_op_32<op, float, float32x4_t> },
1157 { "op_S16_S16_U8", &elementwise_comp_op_16<op, int16_t, int16x8_t> },
1158 { "op_S32_S32_U8", &elementwise_comp_op_32<op, int32_t, int32x4_t> },
morgolock74a16962020-01-15 11:40:49 +00001159 { "op_QASYMM8_SIGNED_QASYMM8_SIGNED_U8", &elementwise_comp_op_quantized_signed<op> },
George Wortd88590f2018-12-12 17:39:58 +00001160 { "op_QASYMM8_QASYMM8_U8", &elementwise_comp_op_quantized<op> }
1161 };
1162#ifdef __ARM_FEATURE_FP16_VECTOR_ARITHMETIC
1163 map_function["op_F16_F16_U8"] = &elementwise_comp_op_16<op, float16_t, float16x8_t>;
1164#endif /* __ARM_FEATURE_FP16_VECTOR_ARITHMETIC */
1165
1166 return configure_func(input1, input2, output, map_function);
1167}
1168} // namespace
1169
1170NEElementwiseOperationKernel::NEElementwiseOperationKernel()
1171 : _function(nullptr), _input1(nullptr), _input2(nullptr), _output(nullptr)
1172{
1173}
1174
1175Status NEElementwiseOperationKernel::validate_arguments_common(const ITensorInfo &input1, const ITensorInfo &input2, const ITensorInfo &output)
1176{
George Wortd88590f2018-12-12 17:39:58 +00001177 ARM_COMPUTE_RETURN_ERROR_ON_CPU_F16_UNSUPPORTED(&input1);
giuros0192fd9432018-12-03 17:30:00 +00001178 ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(&input1, &input2);
1179
1180 const TensorShape out_shape = TensorShape::broadcast_shape(input1.tensor_shape(), input2.tensor_shape());
1181
1182 ARM_COMPUTE_RETURN_ERROR_ON_MSG(out_shape.total_size() == 0, "Inputs are not broadcast compatible");
1183
1184 // Validate in case of configured output
1185 if(output.total_size() > 0)
1186 {
giuros0192fd9432018-12-03 17:30:00 +00001187 ARM_COMPUTE_RETURN_ERROR_ON_MSG(detail::have_different_dimensions(out_shape, output.tensor_shape(), 0),
1188 "Wrong shape for output");
1189 }
1190
1191 return Status{};
1192}
giuros0192fd9432018-12-03 17:30:00 +00001193
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001194void NEElementwiseOperationKernel::configure_common(const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output)
giuros0192fd9432018-12-03 17:30:00 +00001195{
1196 ARM_COMPUTE_ERROR_ON_NULLPTR(input1, input2, output);
giuros0192fd9432018-12-03 17:30:00 +00001197
1198 // Configure kernel window
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001199 const std::pair<TensorShape, ValidRegion> broadcast_pair = ITensorInfo::broadcast_shape_and_valid_region(*input1, *input2);
giuros0192fd9432018-12-03 17:30:00 +00001200 const TensorShape &out_shape = broadcast_pair.first;
1201 const ValidRegion &valid_region = broadcast_pair.second;
1202
1203 // Auto initialize output if not initialized
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001204 auto_init_if_empty(*output, out_shape, 1, input1->data_type());
giuros0192fd9432018-12-03 17:30:00 +00001205
1206 Window win = calculate_max_window(valid_region);
1207
giuros0192fd9432018-12-03 17:30:00 +00001208 INEKernel::configure(win);
1209}
1210
Georgios Pinitas0499dff2020-07-31 22:21:38 +01001211void NEElementwiseOperationKernel::run_op(ITensorPack &tensors, const Window &window, const ThreadInfo &info)
giuros0192fd9432018-12-03 17:30:00 +00001212{
George Wortd88590f2018-12-12 17:39:58 +00001213 ARM_COMPUTE_UNUSED(info, window);
giuros0192fd9432018-12-03 17:30:00 +00001214 ARM_COMPUTE_ERROR_ON_UNCONFIGURED_KERNEL(this);
1215 ARM_COMPUTE_ERROR_ON_INVALID_SUBWINDOW(INEKernel::window(), window);
George Wortd88590f2018-12-12 17:39:58 +00001216 ARM_COMPUTE_ERROR_ON(_function == nullptr);
Georgios Pinitas0499dff2020-07-31 22:21:38 +01001217 _function(tensors.get_const_tensor(TensorType::ACL_SRC_0),
1218 tensors.get_const_tensor(TensorType::ACL_SRC_1),
1219 tensors.get_tensor(TensorType::ACL_DST), window);
giuros0192fd9432018-12-03 17:30:00 +00001220}
1221
1222/** Arithmetic operators (min, max, squared_diff) */
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001223void NEArithmeticOperationKernel::configure(ArithmeticOperation op, const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output)
giuros0192fd9432018-12-03 17:30:00 +00001224{
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001225 ARM_COMPUTE_ERROR_THROW_ON(validate_arguments(*input1, *input2, *output));
George Wortd88590f2018-12-12 17:39:58 +00001226 configure_common(input1, input2, output);
giuros0192fd9432018-12-03 17:30:00 +00001227 switch(op)
1228 {
1229 case ArithmeticOperation::MAX:
George Wortd88590f2018-12-12 17:39:58 +00001230 _function = configure_arithm_func<ArithmeticOperation::MAX>(input1, input2, output);
giuros0192fd9432018-12-03 17:30:00 +00001231 break;
1232 case ArithmeticOperation::MIN:
George Wortd88590f2018-12-12 17:39:58 +00001233 _function = configure_arithm_func<ArithmeticOperation::MIN>(input1, input2, output);
giuros0192fd9432018-12-03 17:30:00 +00001234 break;
1235 case ArithmeticOperation::SQUARED_DIFF:
George Wortd88590f2018-12-12 17:39:58 +00001236 _function = configure_arithm_func<ArithmeticOperation::SQUARED_DIFF>(input1, input2, output);
giuros0192fd9432018-12-03 17:30:00 +00001237 break;
giuros01d5134362019-05-14 16:12:53 +01001238 case ArithmeticOperation::PRELU:
1239 _function = configure_arithm_func<ArithmeticOperation::PRELU>(input1, input2, output);
1240 break;
giuros0192fd9432018-12-03 17:30:00 +00001241 default:
1242 ARM_COMPUTE_ERROR("NOT_SUPPORTED!");
1243 }
1244}
1245
George Wortd88590f2018-12-12 17:39:58 +00001246Status NEArithmeticOperationKernel::validate_arguments(const ITensorInfo &input1, const ITensorInfo &input2, const ITensorInfo &output)
1247{
Michele Di Giorgio1c76c1d2020-08-28 13:25:31 +01001248 ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(&input1, 1, DataType::QASYMM8, DataType::QASYMM8_SIGNED, DataType::S16, DataType::F16, DataType::S32, DataType::F32);
George Wortd88590f2018-12-12 17:39:58 +00001249 // Validate in case of configured output
1250 if(output.total_size() > 0)
1251 {
1252 ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(&input1, &output);
1253 }
1254 return validate_arguments_common(input1, input2, output);
1255}
1256
giuros0192fd9432018-12-03 17:30:00 +00001257Status NEArithmeticOperationKernel::validate(ArithmeticOperation op, const ITensorInfo *input1, const ITensorInfo *input2, const ITensorInfo *output)
1258{
1259 ARM_COMPUTE_UNUSED(op);
1260 ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(input1, input2, output);
George Wortd88590f2018-12-12 17:39:58 +00001261 ARM_COMPUTE_RETURN_ON_ERROR(validate_arguments(*input1, *input2, *output));
giuros0192fd9432018-12-03 17:30:00 +00001262 return Status{};
1263}
1264
George Worta1e7e282019-01-15 11:00:29 +00001265/** The division operator */
1266
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001267void NEDivisionOperationKernel::configure(const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output)
George Worta1e7e282019-01-15 11:00:29 +00001268{
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001269 ARM_COMPUTE_ERROR_THROW_ON(validate_arguments(*input1, *input2, *output));
George Worta1e7e282019-01-15 11:00:29 +00001270 configure_common(input1, input2, output);
1271 _function = configure_arithm_func<ArithmeticOperation::DIV>(input1, input2, output);
1272}
1273
1274Status NEDivisionOperationKernel::validate_arguments(const ITensorInfo &input1, const ITensorInfo &input2, const ITensorInfo &output)
1275{
Georgios Pinitas18134222020-09-03 21:00:23 +01001276 ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(&input1, 1, DataType::S32, DataType::F16, DataType::F32);
George Worta1e7e282019-01-15 11:00:29 +00001277 return NEArithmeticOperationKernel::validate_arguments(input1, input2, output);
1278}
1279
1280Status NEDivisionOperationKernel::validate(const ITensorInfo *input1, const ITensorInfo *input2, const ITensorInfo *output)
1281{
1282 ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(input1, input2, output);
1283 ARM_COMPUTE_RETURN_ON_ERROR(validate_arguments(*input1, *input2, *output));
1284 return Status{};
1285}
1286
Usama Arif81e671e2019-05-13 13:33:14 +01001287/** The power operator */
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001288void NEPowerOperationKernel::configure(const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output)
Usama Arif81e671e2019-05-13 13:33:14 +01001289{
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001290 ARM_COMPUTE_ERROR_THROW_ON(validate_arguments(*input1, *input2, *output));
Usama Arif81e671e2019-05-13 13:33:14 +01001291 configure_common(input1, input2, output);
1292 _function = configure_arithm_func<ArithmeticOperation::POWER>(input1, input2, output);
1293}
1294
1295Status NEPowerOperationKernel::validate_arguments(const ITensorInfo &input1, const ITensorInfo &input2, const ITensorInfo &output)
1296{
1297 ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(&input1, 1, DataType::F16, DataType::F32);
1298 return NEArithmeticOperationKernel::validate_arguments(input1, input2, output);
1299}
1300
1301Status NEPowerOperationKernel::validate(const ITensorInfo *input1, const ITensorInfo *input2, const ITensorInfo *output)
1302{
1303 ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(input1, input2, output);
1304 ARM_COMPUTE_RETURN_ON_ERROR(validate_arguments(*input1, *input2, *output));
1305 return Status{};
1306}
1307
George Wortd88590f2018-12-12 17:39:58 +00001308/** Comparison operators (equal, not equal, less than, greater than, less than or equal, greater than or equal) */
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001309void NEComparisonOperationKernel::configure(ComparisonOperation op, const ITensorInfo *input1, const ITensorInfo *input2, ITensorInfo *output)
giuros0192fd9432018-12-03 17:30:00 +00001310{
Michalis Spyrouce0c6752020-06-18 10:14:57 +01001311 ARM_COMPUTE_ERROR_THROW_ON(validate_arguments(*input1, *input2, *output));
George Wortd88590f2018-12-12 17:39:58 +00001312 configure_common(input1, input2, output);
1313 switch(op)
1314 {
1315 case ComparisonOperation::Equal:
1316 _function = configure_comp_func<ComparisonOperation::Equal>(input1, input2, output);
1317 break;
1318 case ComparisonOperation::NotEqual:
1319 _function = configure_comp_func<ComparisonOperation::NotEqual>(input1, input2, output);
1320 break;
1321 case ComparisonOperation::Greater:
1322 _function = configure_comp_func<ComparisonOperation::Greater>(input1, input2, output);
1323 break;
1324 case ComparisonOperation::GreaterEqual:
1325 _function = configure_comp_func<ComparisonOperation::GreaterEqual>(input1, input2, output);
1326 break;
1327 case ComparisonOperation::Less:
1328 _function = configure_comp_func<ComparisonOperation::Less>(input1, input2, output);
1329 break;
1330 case ComparisonOperation::LessEqual:
1331 _function = configure_comp_func<ComparisonOperation::LessEqual>(input1, input2, output);
1332 break;
1333 default:
1334 ARM_COMPUTE_ERROR("NOT_SUPPORTED!");
1335 }
1336}
1337
1338Status NEComparisonOperationKernel::validate_arguments(const ITensorInfo &input1, const ITensorInfo &input2, const ITensorInfo &output)
1339{
Michele Di Giorgio1c76c1d2020-08-28 13:25:31 +01001340 ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(&input1, 1, DataType::U8, DataType::QASYMM8, DataType::QASYMM8_SIGNED, DataType::S16, DataType::F16, DataType::S32, DataType::F32);
George Wortd88590f2018-12-12 17:39:58 +00001341 // Validate in case of configured output
1342 if(output.total_size() > 0)
1343 {
1344 ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(&output, 1, DataType::U8);
1345 }
1346 return validate_arguments_common(input1, input2, output);
1347}
1348
1349Status NEComparisonOperationKernel::validate(ComparisonOperation op, const ITensorInfo *input1, const ITensorInfo *input2, const ITensorInfo *output)
1350{
1351 ARM_COMPUTE_UNUSED(op);
1352 ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(input1, input2, output);
1353 ARM_COMPUTE_RETURN_ON_ERROR(validate_arguments(*input1, *input2, *output));
1354 return Status{};
giuros0192fd9432018-12-03 17:30:00 +00001355}
1356} // namespace arm_compute