aboutsummaryrefslogtreecommitdiff
path: root/src/cpu/kernels/softmax/generic/sve2/impl.cpp
diff options
context:
space:
mode:
Diffstat (limited to 'src/cpu/kernels/softmax/generic/sve2/impl.cpp')
-rw-r--r--src/cpu/kernels/softmax/generic/sve2/impl.cpp212
1 files changed, 212 insertions, 0 deletions
diff --git a/src/cpu/kernels/softmax/generic/sve2/impl.cpp b/src/cpu/kernels/softmax/generic/sve2/impl.cpp
new file mode 100644
index 0000000000..a8fb1d4adf
--- /dev/null
+++ b/src/cpu/kernels/softmax/generic/sve2/impl.cpp
@@ -0,0 +1,212 @@
+/*
+ * Copyright (c) 2021-2023 Arm Limited.
+ *
+ * SPDX-License-Identifier: MIT
+ *
+ * Permission is hereby granted, free of charge, to any person obtaining a copy
+ * of this software and associated documentation files (the "Software"), to
+ * deal in the Software without restriction, including without limitation the
+ * rights to use, copy, modify, merge, publish, distribute, sublicense, and/or
+ * sell copies of the Software, and to permit persons to whom the Software is
+ * furnished to do so, subject to the following conditions:
+ *
+ * The above copyright notice and this permission notice shall be included in all
+ * copies or substantial portions of the Software.
+ *
+ * THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR
+ * IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY,
+ * FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE
+ * AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER
+ * LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM,
+ * OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE
+ * SOFTWARE.
+ */
+
+#include "src/cpu/kernels/softmax/generic/sve2/impl.h"
+
+#include "arm_compute/core/Types.h"
+
+#include "src/core/NEON/wrapper/wrapper.h"
+
+namespace arm_compute
+{
+namespace cpu
+{
+/// TODO: (COMPMID-6505) Similar to Neon(TM), this implementation be converted to
+/// a single kernel that performs softmax operation. Leaving the SVE2 code here for
+/// future references. Implementation for Neon(TM) is introduced in COMPMID-6500
+template <typename ScalarType>
+void sve2_softmax_logits_1d_quantized(
+ const ITensor *in, const ITensor *max, void *const tmp, ITensor *out, float beta, bool is_log, const Window &window)
+{
+ const int start_x = in->info()->valid_region().anchor.x();
+ const int input_width = in->info()->valid_region().shape.x();
+
+ const float scale_beta = -beta * in->info()->quantization_info().uniform().scale;
+ const auto scale_beta_vec = svdup_n_f32(scale_beta);
+
+ Iterator in_it(in, window);
+ Iterator max_it(max, window);
+ Iterator out_it(out, window);
+ const auto all_true_pg = wrapper::svptrue<ScalarType>();
+ using SVEType = typename wrapper::traits::sve_vector<ScalarType>::type;
+
+ const int inc_1 = static_cast<int>(svcntw());
+ const int inc_2 = static_cast<int>(2 * svcntw());
+ const int inc_3 = static_cast<int>(3 * svcntw());
+
+ execute_window_loop(
+ window,
+ [&](const Coordinates &)
+ {
+ /* Get pointers */
+ const auto in_ptr = reinterpret_cast<const ScalarType *>(in_it.ptr()) + start_x;
+ const auto out_ptr = reinterpret_cast<ScalarType *>(out_it.ptr()) + start_x;
+ const auto tmp_ptr = reinterpret_cast<float *>(tmp);
+
+ float sum{};
+
+ /* Compute exponentials and sum */
+ {
+ /* Get max value */
+ const auto max_val = *reinterpret_cast<const ScalarType *>(max_it.ptr());
+ const auto vec_max = wrapper::svdup_n(max_val);
+
+ /* Init sum to zero */
+ auto vec_sum_0 = svdup_n_f32(0.f);
+ auto vec_sum_1 = svdup_n_f32(0.f);
+ auto vec_sum_2 = svdup_n_f32(0.f);
+ auto vec_sum_3 = svdup_n_f32(0.f);
+
+ /* Loop over row and compute exponentials and sum */
+ int x = 0;
+ svbool_t pg = wrapper::svwhilelt<ScalarType>(x, input_width);
+ svbool_t pg_0 = svunpklo(svunpklo(pg));
+ svbool_t pg_1 = svunpkhi(svunpklo(pg));
+ svbool_t pg_2 = svunpklo(svunpkhi(pg));
+ svbool_t pg_3 = svunpkhi(svunpkhi(pg));
+ do
+ {
+ const auto vec_elements = svld1(pg, in_ptr + x);
+ const auto vec_elements_sub = svreinterpret_u8(svsub_z(pg, vec_max, vec_elements));
+
+ auto vec_elements_flt_0 = svcvt_f32_z(pg_0, svunpklo(svunpklo(vec_elements_sub)));
+ auto vec_elements_flt_1 = svcvt_f32_z(pg_1, svunpkhi(svunpklo(vec_elements_sub)));
+ auto vec_elements_flt_2 = svcvt_f32_z(pg_2, svunpklo(svunpkhi(vec_elements_sub)));
+ auto vec_elements_flt_3 = svcvt_f32_z(pg_3, svunpkhi(svunpkhi(vec_elements_sub)));
+
+ if (is_log)
+ {
+ vec_elements_flt_0 = svmul_f32_z(pg_0, vec_elements_flt_0, scale_beta_vec);
+ vec_elements_flt_1 = svmul_f32_z(pg_1, vec_elements_flt_1, scale_beta_vec);
+ vec_elements_flt_2 = svmul_f32_z(pg_2, vec_elements_flt_2, scale_beta_vec);
+ vec_elements_flt_3 = svmul_f32_z(pg_3, vec_elements_flt_3, scale_beta_vec);
+ vec_sum_0 = svadd_f32_m(pg_0, vec_sum_0, svexp_f32_z(pg_0, vec_elements_flt_0));
+ vec_sum_1 = svadd_f32_m(pg_1, vec_sum_1, svexp_f32_z(pg_1, vec_elements_flt_1));
+ vec_sum_2 = svadd_f32_m(pg_2, vec_sum_2, svexp_f32_z(pg_2, vec_elements_flt_2));
+ vec_sum_3 = svadd_f32_m(pg_3, vec_sum_3, svexp_f32_z(pg_3, vec_elements_flt_3));
+ }
+ else
+ {
+ vec_elements_flt_0 = svexp_f32_z(pg_0, svmul_f32_z(pg_0, vec_elements_flt_0, scale_beta_vec));
+ vec_elements_flt_1 = svexp_f32_z(pg_1, svmul_f32_z(pg_1, vec_elements_flt_1, scale_beta_vec));
+ vec_elements_flt_2 = svexp_f32_z(pg_2, svmul_f32_z(pg_2, vec_elements_flt_2, scale_beta_vec));
+ vec_elements_flt_3 = svexp_f32_z(pg_3, svmul_f32_z(pg_3, vec_elements_flt_3, scale_beta_vec));
+ vec_sum_0 = svadd_f32_m(pg_0, vec_sum_0, vec_elements_flt_0);
+ vec_sum_1 = svadd_f32_m(pg_1, vec_sum_1, vec_elements_flt_1);
+ vec_sum_2 = svadd_f32_m(pg_2, vec_sum_2, vec_elements_flt_2);
+ vec_sum_3 = svadd_f32_m(pg_3, vec_sum_3, vec_elements_flt_3);
+ }
+
+ svst1_f32(pg_0, tmp_ptr + x, vec_elements_flt_0);
+ svst1_f32(pg_1, tmp_ptr + x + inc_1, vec_elements_flt_1);
+ svst1_f32(pg_2, tmp_ptr + x + inc_2, vec_elements_flt_2);
+ svst1_f32(pg_3, tmp_ptr + x + inc_3, vec_elements_flt_3);
+
+ x += wrapper::svcnt<ScalarType>();
+ pg = wrapper::svwhilelt<ScalarType>(x, input_width);
+ pg_0 = svunpklo(svunpklo(pg));
+ pg_1 = svunpkhi(svunpklo(pg));
+ pg_2 = svunpklo(svunpkhi(pg));
+ pg_3 = svunpkhi(svunpkhi(pg));
+ } while (svptest_any(all_true_pg, pg));
+
+ /* Reduce sum */
+ const auto vec_sum = svadd_f32_z(all_true_pg, svadd_f32_z(all_true_pg, vec_sum_0, vec_sum_1),
+ svadd_f32_z(all_true_pg, vec_sum_2, vec_sum_3));
+ sum = svaddv_f32(all_true_pg, vec_sum);
+
+ /* Run remaining elements */
+ x = 0;
+ if (is_log)
+ {
+ sum = std::log(sum);
+ }
+ else
+ {
+ sum = 256.f / sum;
+ }
+ }
+
+ /* Normalize exponentials */
+ {
+ constexpr bool is_qasymm8_signed = std::is_same<ScalarType, qasymm8_signed_t>::value;
+ /* Loop over row and compute softmax */
+ int x = 0;
+ svbool_t pg = wrapper::svwhilelt<ScalarType>(x, input_width);
+ svbool_t pg_0 = svunpklo(svunpklo(pg));
+ svbool_t pg_1 = svunpkhi(svunpklo(pg));
+ svbool_t pg_2 = svunpklo(svunpkhi(pg));
+ svbool_t pg_3 = svunpkhi(svunpkhi(pg));
+ do
+ {
+ auto vec_in_0 = svld1_f32(pg_0, tmp_ptr + x);
+ auto vec_in_1 = svld1_f32(pg_1, tmp_ptr + x + inc_1);
+ auto vec_in_2 = svld1_f32(pg_2, tmp_ptr + x + inc_2);
+ auto vec_in_3 = svld1_f32(pg_3, tmp_ptr + x + inc_3);
+
+ svfloat32_t res_0{};
+ svfloat32_t res_1{};
+ svfloat32_t res_2{};
+ svfloat32_t res_3{};
+
+ if (is_log)
+ {
+ res_0 = svsub_f32_z(pg_0, vec_in_0, svdup_n_f32(sum));
+ res_1 = svsub_f32_z(pg_1, vec_in_1, svdup_n_f32(sum));
+ res_2 = svsub_f32_z(pg_2, vec_in_2, svdup_n_f32(sum));
+ res_3 = svsub_f32_z(pg_3, vec_in_3, svdup_n_f32(sum));
+ }
+ else
+ {
+ res_0 = svmul_f32_z(pg_0, vec_in_0, svdup_n_f32(sum));
+ res_1 = svmul_f32_z(pg_1, vec_in_1, svdup_n_f32(sum));
+ res_2 = svmul_f32_z(pg_2, vec_in_2, svdup_n_f32(sum));
+ res_3 = svmul_f32_z(pg_3, vec_in_3, svdup_n_f32(sum));
+
+ if (is_qasymm8_signed)
+ {
+ const auto offset_vec = svdup_n_f32(128.f);
+ res_0 = svsub_z(pg_0, res_0, offset_vec);
+ res_1 = svsub_z(pg_1, res_1, offset_vec);
+ res_2 = svsub_z(pg_2, res_2, offset_vec);
+ res_3 = svsub_z(pg_3, res_3, offset_vec);
+ }
+ }
+
+ // Store value
+ const auto out = convert_float_to_int<SVEType>(res_0, res_1, res_2, res_3);
+ svst1(pg, out_ptr + x, out);
+ x += wrapper::svcnt<ScalarType>();
+ pg = wrapper::svwhilelt<ScalarType>(x, input_width);
+ pg_0 = svunpklo(svunpklo(pg));
+ pg_1 = svunpkhi(svunpklo(pg));
+ pg_2 = svunpklo(svunpkhi(pg));
+ pg_3 = svunpkhi(svunpkhi(pg));
+ } while (svptest_any(all_true_pg, pg));
+ }
+ },
+ in_it, max_it, out_it);
+}
+} // namespace cpu
+} // namespace arm_compute