COMPMID-3236: Implement CLQLSTMLayer

COMPMID-3081: Extend CLQLSTMLayer with enhancements

Change-Id: Idb7aaaacdba957e5ad61e94edeab2e898730a109
Signed-off-by: Michele Di Giorgio <michele.digiorgio@arm.com>
Reviewed-on: https://review.mlplatform.org/c/ml/ComputeLibrary/+/3057
Tested-by: Arm Jenkins <bsgcomp@arm.com>
Reviewed-by: Sang-Hoon Park <sang-hoon.park@arm.com>
Comments-Addressed: Arm Jenkins <bsgcomp@arm.com>
diff --git a/src/runtime/CL/functions/CLGEMMLowpMatrixMultiplyCore.cpp b/src/runtime/CL/functions/CLGEMMLowpMatrixMultiplyCore.cpp
index ef17f11..3465da9 100644
--- a/src/runtime/CL/functions/CLGEMMLowpMatrixMultiplyCore.cpp
+++ b/src/runtime/CL/functions/CLGEMMLowpMatrixMultiplyCore.cpp
@@ -303,11 +303,9 @@
 {
     ARM_COMPUTE_ERROR_ON_NULLPTR(a, b, output);
     ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(a, 1, DataType::QASYMM8, DataType::QASYMM8_SIGNED);
-    //DataType::QSYMM8_PER_CHANNEL supported only for weights
-    if(b->data_type() != DataType::QSYMM8_PER_CHANNEL)
-    {
-        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(a, b);
-    }
+    ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(b, 1, DataType::QASYMM8, DataType::QASYMM8_SIGNED, DataType::QSYMM8, DataType::QSYMM8_PER_CHANNEL);
+    ARM_COMPUTE_RETURN_ERROR_ON(a->data_type() == DataType::QASYMM8 && b->data_type() == DataType::QASYMM8_SIGNED);
+    ARM_COMPUTE_RETURN_ERROR_ON(a->data_type() == DataType::QASYMM8_SIGNED && b->data_type() == DataType::QASYMM8);
     ARM_COMPUTE_RETURN_ERROR_ON_MSG(gemm_info.is_a_reshaped(), "Matrix A already reshaped is not supported");
     ARM_COMPUTE_RETURN_ERROR_ON_MSG(gemm_info.is_b_reshaped(), "Matrix B already reshaped is not supported");
 
diff --git a/src/runtime/CL/functions/CLGEMMLowpOutputStage.cpp b/src/runtime/CL/functions/CLGEMMLowpOutputStage.cpp
index 2114d39..aff7f54 100644
--- a/src/runtime/CL/functions/CLGEMMLowpOutputStage.cpp
+++ b/src/runtime/CL/functions/CLGEMMLowpOutputStage.cpp
@@ -149,6 +149,13 @@
                     _kernel = std::move(k);
                     break;
                 }
+                case DataType::QSYMM16:
+                {
+                    auto k = arm_compute::support::cpp14::make_unique<CLGEMMLowpQuantizeDownInt32ToInt16ScaleByFixedPointKernel>();
+                    k->configure(input, bias, output, info.gemmlowp_multiplier, info.gemmlowp_shift, info.gemmlowp_min_bound, info.gemmlowp_max_bound);
+                    _kernel = std::move(k);
+                    break;
+                }
                 default:
                     ARM_COMPUTE_ERROR("Unsupported output data type.");
             }
@@ -188,6 +195,8 @@
                     return CLGEMMLowpQuantizeDownInt32ToUint8ScaleByFixedPointKernel::validate(input, bias, output, info.gemmlowp_min_bound, info.gemmlowp_max_bound);
                 case DataType::QASYMM8_SIGNED:
                     return CLGEMMLowpQuantizeDownInt32ToInt8ScaleByFixedPointKernel::validate(input, bias, output, info.gemmlowp_min_bound, info.gemmlowp_max_bound);
+                case DataType::QSYMM16:
+                    return CLGEMMLowpQuantizeDownInt32ToInt16ScaleByFixedPointKernel::validate(input, bias, output, info.gemmlowp_min_bound, info.gemmlowp_max_bound);
                 default:
                     return ARM_COMPUTE_CREATE_ERROR(ErrorCode::RUNTIME_ERROR, "Unsupported output data type.");
             }
diff --git a/src/runtime/CL/functions/CLQLSTMLayer.cpp b/src/runtime/CL/functions/CLQLSTMLayer.cpp
new file mode 100644
index 0000000..4b994d4
--- /dev/null
+++ b/src/runtime/CL/functions/CLQLSTMLayer.cpp
@@ -0,0 +1,853 @@
+/*
+ * Copyright (c) 2020 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 "arm_compute/runtime/CL/functions/CLQLSTMLayer.h"
+
+#include "arm_compute/core/KernelDescriptors.h"
+#include "arm_compute/core/QuantizationInfo.h"
+#include "arm_compute/core/Utils.h"
+#include "arm_compute/core/Validate.h"
+#include "arm_compute/core/utils/misc/InfoHelpers.h"
+#include "arm_compute/core/utils/quantization/AsymmHelpers.h"
+#include "arm_compute/runtime/CL/CLScheduler.h"
+
+namespace arm_compute
+{
+using namespace arm_compute::utils::info_helpers;
+namespace
+{
+Status validate_mm(GEMMLowpOutputStageInfo &gemmlowp_info, const ITensorInfo *mm_input, const ITensorInfo *mm_weights, const ITensorInfo *bias,
+                   float gemmlowp_scale, const TensorInfo *mm_res_info, const TensorInfo *outstage_tensor_info)
+{
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixMultiplyCore::validate(mm_input, mm_weights, nullptr, mm_res_info));
+    ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(gemmlowp_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpOutputStage::validate(mm_res_info, bias, outstage_tensor_info, gemmlowp_info));
+    return Status{};
+}
+} // namespace
+
+CLQLSTMLayer::CLQLSTMLayer(std::shared_ptr<IMemoryManager> memory_manager)
+{
+    _memory_group = MemoryGroup(std::move(memory_manager));
+}
+
+void CLQLSTMLayer::configure_mm(CLGEMMLowpMatrixMultiplyCore &mm, CLGEMMLowpOutputStage &outstage, GEMMLowpOutputStageInfo &gemmlowp_info,
+                                const ICLTensor *mm_input, const ICLTensor *mm_weights, const ICLTensor *bias,
+                                CLTensor *mm_res, CLTensor *outstage_res, float gemmlowp_scale,
+                                const TensorInfo &mm_res_info, const TensorInfo &outstage_tensor_info)
+{
+    _memory_group.manage(mm_res);
+    _memory_group.manage(outstage_res);
+
+    mm_res->allocator()->init(mm_res_info);
+    outstage_res->allocator()->init(outstage_tensor_info);
+
+    // Configure matrix-multiplication
+    mm.configure(mm_input, mm_weights, nullptr, mm_res);
+
+    // Configure output stage
+    quantization::calculate_quantized_multiplier(gemmlowp_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift);
+    outstage.configure(mm_res, bias, outstage_res, gemmlowp_info);
+    mm_res->allocator()->allocate();
+}
+
+void CLQLSTMLayer::configure(const ICLTensor *input,
+                             const ICLTensor *input_to_forget_weights, const ICLTensor *input_to_cell_weights, const ICLTensor *input_to_output_weights,
+                             const ICLTensor *recurrent_to_forget_weights, const ICLTensor *recurrent_to_cell_weights, const ICLTensor *recurrent_to_output_weights,
+                             const ICLTensor *forget_gate_bias, const ICLTensor *cell_bias, const ICLTensor *output_gate_bias,
+                             const ICLTensor *cell_state_in, const ICLTensor *output_state_in,
+                             ICLTensor *cell_state_out, ICLTensor *output_state_out,
+                             const LSTMParams<ICLTensor> &lstm_params)
+{
+    ARM_COMPUTE_UNUSED(forget_gate_bias);
+    ARM_COMPUTE_UNUSED(cell_bias);
+    ARM_COMPUTE_UNUSED(output_gate_bias);
+    ARM_COMPUTE_ERROR_ON_NULLPTR(input, input_to_forget_weights, input_to_cell_weights, input_to_output_weights,
+                                 recurrent_to_forget_weights, recurrent_to_cell_weights, recurrent_to_output_weights,
+                                 forget_gate_bias, cell_bias, output_gate_bias, cell_state_in, output_state_in, cell_state_out, output_state_out);
+
+    // Set lstm parameters
+    LSTMParams<ITensorInfo> lstm_params_info{};
+    build_lstm_params_tensor_info(lstm_params, &lstm_params_info);
+
+    // Validate
+    ARM_COMPUTE_ERROR_THROW_ON(CLQLSTMLayer::validate(input->info(), input_to_forget_weights->info(), input_to_cell_weights->info(), input_to_output_weights->info(),
+                                                      recurrent_to_forget_weights->info(), recurrent_to_cell_weights->info(), recurrent_to_output_weights->info(),
+                                                      forget_gate_bias->info(), cell_bias->info(), output_gate_bias->info(),
+                                                      cell_state_in->info(), output_state_in->info(), cell_state_out->info(), output_state_out->info(), lstm_params_info));
+
+    const int batch_size = input->info()->dimension(1);
+    const int num_units  = input_to_output_weights->info()->dimension(1);
+
+    const UniformQuantizationInfo qinput           = input->info()->quantization_info().uniform();
+    const UniformQuantizationInfo qcell_state_in   = cell_state_in->info()->quantization_info().uniform();
+    const UniformQuantizationInfo qoutput_state_in = output_state_in->info()->quantization_info().uniform();
+
+    _projection_bias             = lstm_params.projection_bias();
+    _input_to_forget_weights     = input_to_forget_weights;
+    _input_to_cell_weights       = input_to_cell_weights;
+    _input_to_output_weights     = input_to_output_weights;
+    _recurrent_to_forget_weights = recurrent_to_forget_weights;
+    _recurrent_to_cell_weights   = recurrent_to_cell_weights;
+    _recurrent_to_output_weights = recurrent_to_output_weights;
+    _projection_weights          = lstm_params.projection_weights();
+
+    _has_cifg       = lstm_params.has_cifg_opt();
+    _has_projection = lstm_params.has_projection();
+    _has_peephole   = lstm_params.has_peephole_opt();
+
+    // Calculate and decompose effective scales for optimizing matmul calculation
+    const int32_t cell_shift = log2(qcell_state_in.scale);
+
+    // Calculate quantized parameters for clipping.
+    int16_t quantized_cell_clip = 0;
+    if(lstm_params.cell_clip() > 0.0f)
+    {
+        quantized_cell_clip = quantize_qsymm16(lstm_params.cell_clip(), qcell_state_in);
+    }
+    _has_cell_clipping = quantized_cell_clip > 0;
+
+    // Precompute effective bias for optimizing the matmul computations.
+    if(!_has_cifg)
+    {
+        _input_to_input_weights     = lstm_params.input_to_input_weights();
+        _recurrent_to_input_weights = lstm_params.recurrent_to_input_weights();
+
+        _input_to_input_reduction.configure(_input_to_input_weights, &_input_to_input_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true));
+        _recurrent_to_input_reduction.configure(_recurrent_to_input_weights, &_recurrent_to_input_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true));
+    }
+    _input_to_forget_reduction.configure(input_to_forget_weights, &_input_to_forget_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true));
+    _recurrent_to_forget_reduction.configure(recurrent_to_forget_weights, &_recurrent_to_forget_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true));
+    _input_to_cell_reduction.configure(input_to_cell_weights, &_input_to_cell_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true));
+    _recurrent_to_cell_reduction.configure(recurrent_to_cell_weights, &_recurrent_to_cell_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true));
+    _input_to_output_reduction.configure(input_to_output_weights, &_input_to_output_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true));
+    _recurrent_to_output_reduction.configure(recurrent_to_output_weights, &_recurrent_to_output_eff_bias, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true));
+    if(_projection_bias != nullptr)
+    {
+        _projection_reduction.configure(_projection_weights, &_projection_reduction_res, GEMMLowpReductionKernelInfo(num_units, false, lstm_params.hidden_state_zero(), true));
+        _projection_bias_add.configure(ArithmeticOperation::ADD, _projection_bias, &_projection_reduction_res, &_projection_eff_bias, ConvertPolicy::SATURATE);
+    }
+
+    // Pre-transpose weights to be used in GEMM.
+    _transpose_input_to_forget_weights.configure(input_to_forget_weights, &_input_to_forget_weights_transposed);
+    _transpose_input_to_cell_weights.configure(input_to_cell_weights, &_input_to_cell_weights_transposed);
+    _transpose_input_to_output_weights.configure(input_to_output_weights, &_input_to_output_weights_transposed);
+    _transpose_recurrent_to_forget_weights.configure(recurrent_to_forget_weights, &_recurrent_to_forget_weights_transposed);
+    _transpose_recurrent_to_cell_weights.configure(recurrent_to_cell_weights, &_recurrent_to_cell_weights_transposed);
+    _transpose_recurrent_to_output_weights.configure(recurrent_to_output_weights, &_recurrent_to_output_weights_transposed);
+    if(!_has_cifg)
+    {
+        _transpose_input_to_input_weights.configure(lstm_params.input_to_input_weights(), &_input_to_input_weights_transposed);
+        _transpose_recurrent_to_input_weights.configure(lstm_params.recurrent_to_input_weights(), &_recurrent_to_input_weights_transposed);
+    }
+    if(_has_projection)
+    {
+        _transpose_projection_weights.configure(_projection_weights, &_projection_weights_transposed);
+    }
+
+    GEMMLowpOutputStageInfo gemmlowp_info;
+    gemmlowp_info.type               = GEMMLowpOutputStageType::QUANTIZE_DOWN_FIXEDPOINT;
+    gemmlowp_info.gemmlowp_min_bound = std::numeric_limits<int16_t>::lowest();
+    gemmlowp_info.gemmlowp_max_bound = std::numeric_limits<int16_t>::max();
+    gemmlowp_info.output_data_type   = DataType::QSYMM16;
+
+    const TensorInfo mm_out_info(TensorShape(num_units, batch_size), 1, DataType::S32);
+    // Forget gate.
+    const TensorInfo forget_gate_outstage_info(mm_out_info.tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.forget_intermediate_scale(), 0));
+    const float      input_to_forget_scale = input_to_forget_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.forget_intermediate_scale();
+    configure_mm(_mm_input_to_forget, _input_to_forget_outstage, gemmlowp_info,
+                 input, &_input_to_forget_weights_transposed, &_input_to_forget_eff_bias,
+                 &_mm_input_to_forget_res, &_input_to_forget_outstage_res, input_to_forget_scale,
+                 mm_out_info, forget_gate_outstage_info);
+
+    const float recurrent_to_forget_scale = recurrent_to_forget_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.forget_intermediate_scale();
+    configure_mm(_mm_recurrent_to_forget, _recurrent_to_forget_outstage, gemmlowp_info,
+                 output_state_in, &_recurrent_to_forget_weights_transposed, &_recurrent_to_forget_eff_bias,
+                 &_mm_recurrent_to_forget_res, &_recurrent_to_forget_outstage_res, recurrent_to_forget_scale,
+                 mm_out_info, forget_gate_outstage_info);
+
+    _accumulate_input_recurrent_forget.configure(ArithmeticOperation::ADD, &_input_to_forget_outstage_res, &_recurrent_to_forget_outstage_res, &_recurrent_to_forget_outstage_res, ConvertPolicy::SATURATE);
+    _input_to_forget_outstage_res.allocator()->allocate();
+
+    if(_has_peephole)
+    {
+        _memory_group.manage(&_mul_cell_to_forget_res);
+        _pixelwise_mul_cell_to_forget.configure(cell_state_in, lstm_params.cell_to_forget_weights(), &_mul_cell_to_forget_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO);
+        _cell_to_forget_outstage_res.allocator()->init(TensorInfo(_mul_cell_to_forget_res.info()->tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.forget_intermediate_scale(), 0)));
+        _memory_group.manage(&_cell_to_forget_outstage_res);
+        const float cell_to_forget_scale = std::pow(2, cell_shift) * lstm_params.cell_to_forget_weights()->info()->quantization_info().uniform().scale / lstm_params.forget_intermediate_scale();
+        quantization::calculate_quantized_multiplier(cell_to_forget_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift);
+        _cell_to_forget_outstage.configure(&_mul_cell_to_forget_res, nullptr, &_cell_to_forget_outstage_res, gemmlowp_info);
+        _mul_cell_to_forget_res.allocator()->allocate();
+        _accumulate_cell_forget.configure(ArithmeticOperation::ADD, &_recurrent_to_forget_outstage_res, &_cell_to_forget_outstage_res, &_recurrent_to_forget_outstage_res, ConvertPolicy::SATURATE);
+        _cell_to_forget_outstage_res.allocator()->allocate();
+    }
+
+    // Output quantization info of Sigmoid and Tanh activations
+    const QuantizationInfo sigmoid_tanh_outqinfo(1.f / 32768.f, 0);
+
+    const TensorInfo forget_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    _memory_group.manage(&_forget_gate);
+    _forget_gate.allocator()->init(forget_gate_info);
+    _forget_gate_sigmoid.configure(&_recurrent_to_forget_outstage_res, &_forget_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC));
+    _recurrent_to_forget_outstage_res.allocator()->allocate();
+
+    // Modulation gate.
+    const TensorInfo cell_outstage_info(mm_out_info.tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.cell_intermediate_scale(), 0));
+    const float      input_to_cell_scale = input_to_cell_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.cell_intermediate_scale();
+    configure_mm(_mm_input_to_cell, _input_to_cell_outstage, gemmlowp_info,
+                 input, &_input_to_cell_weights_transposed, &_input_to_cell_eff_bias,
+                 &_mm_input_to_cell_res, &_input_to_cell_outstage_res, input_to_cell_scale,
+                 mm_out_info, cell_outstage_info);
+
+    const float recurrent_to_cell_scale = recurrent_to_cell_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.cell_intermediate_scale();
+    configure_mm(_mm_recurrent_to_cell, _recurrent_to_cell_outstage, gemmlowp_info,
+                 output_state_in, &_recurrent_to_cell_weights_transposed, &_recurrent_to_cell_eff_bias,
+                 &_mm_recurrent_to_cell_res, &_recurrent_to_cell_outstage_res, recurrent_to_cell_scale,
+                 mm_out_info, cell_outstage_info);
+
+    _accumulate_input_recurrent_modulation.configure(ArithmeticOperation::ADD, &_input_to_cell_outstage_res, &_recurrent_to_cell_outstage_res, &_recurrent_to_cell_outstage_res, ConvertPolicy::SATURATE);
+    _input_to_cell_outstage_res.allocator()->allocate();
+
+    const TensorInfo cell_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    _memory_group.manage(&_cell_gate);
+    _cell_gate.allocator()->init(cell_gate_info);
+    _cell_gate_tanh.configure(&_recurrent_to_cell_outstage_res, &_cell_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f));
+    _recurrent_to_cell_outstage_res.allocator()->allocate();
+
+    // Input gate.
+    const TensorInfo input_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    _input_gate.allocator()->init(input_gate_info);
+    _memory_group.manage(&_input_gate);
+    if(_has_cifg)
+    {
+        _ones.allocator()->init(*_forget_gate.info());
+        _input_gate_sub.configure(ArithmeticOperation::SUB, &_ones, &_forget_gate, &_input_gate, ConvertPolicy::SATURATE);
+        _ones.allocator()->allocate();
+    }
+    else
+    {
+        const TensorInfo input_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.input_intermediate_scale(), 0));
+        const float      input_to_input_scale = _input_to_input_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.input_intermediate_scale();
+        configure_mm(_mm_input_to_input, _input_to_input_outstage, gemmlowp_info,
+                     input, &_input_to_input_weights_transposed, &_input_to_input_eff_bias,
+                     &_mm_input_to_input_res, &_input_to_input_outstage_res, input_to_input_scale,
+                     mm_out_info, input_outstage_info);
+
+        const float recurrent_to_input_scale = _recurrent_to_input_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.input_intermediate_scale();
+        configure_mm(_mm_recurrent_to_input, _recurrent_to_input_outstage, gemmlowp_info,
+                     input, &_recurrent_to_input_weights_transposed, &_recurrent_to_input_eff_bias,
+                     &_mm_recurrent_to_input_res, &_recurrent_to_input_outstage_res, recurrent_to_input_scale,
+                     mm_out_info, input_outstage_info);
+        _accumulate_input_recurrent_input.configure(ArithmeticOperation::ADD, &_input_to_input_outstage_res, &_recurrent_to_input_outstage_res, &_recurrent_to_input_outstage_res, ConvertPolicy::SATURATE);
+        _input_to_input_outstage_res.allocator()->allocate();
+
+        if(_has_peephole)
+        {
+            _memory_group.manage(&_mul_cell_to_input_res);
+            _pixelwise_mul_cell_to_input.configure(cell_state_in, lstm_params.cell_to_input_weights(), &_mul_cell_to_input_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO);
+            const float cell_to_input_scale = std::pow(2, cell_shift) * lstm_params.cell_to_input_weights()->info()->quantization_info().uniform().scale / lstm_params.input_intermediate_scale();
+            quantization::calculate_quantized_multiplier(cell_to_input_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift);
+            _cell_to_input_outstage_res.allocator()->init(TensorInfo(_mul_cell_to_input_res.info()->tensor_shape(), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.input_intermediate_scale(), 0)));
+            _memory_group.manage(&_cell_to_input_outstage_res);
+            _cell_to_input_outstage.configure(&_mul_cell_to_input_res, nullptr, &_cell_to_input_outstage_res, gemmlowp_info);
+            _mul_cell_to_input_res.allocator()->allocate();
+            _accumulate_cell_input.configure(ArithmeticOperation::ADD, &_recurrent_to_input_outstage_res, &_cell_to_input_outstage_res, &_recurrent_to_input_outstage_res, ConvertPolicy::SATURATE);
+            _cell_to_input_outstage_res.allocator()->allocate();
+        }
+
+        _input_gate_tanh.configure(&_recurrent_to_input_outstage_res, &_input_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f));
+        _recurrent_to_input_outstage_res.allocator()->allocate();
+    }
+    // Cell.
+    // TODO(COMPMID-3396): Perform multiplication in the quantized domain in CLPixelWiseMultiplicationKernel
+    _pixelwise_mul_forget_cell.configure(&_forget_gate, cell_state_in, &_forget_gate, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO);
+    const float      cell_gate_scale      = _cell_gate.info()->quantization_info().uniform().scale;
+    const float      mul_input_cell_scale = cell_gate_scale * std::pow(2, 15 + cell_shift);
+    const TensorInfo mul_input_cell_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(mul_input_cell_scale, 0));
+    _memory_group.manage(&_mul_input_cell_res);
+    _mul_input_cell_res.allocator()->init(mul_input_cell_info);
+    _pixelwise_mul_input_cell.configure(&_input_gate, &_cell_gate, &_mul_input_cell_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO);
+    _cell_gate.allocator()->allocate();
+    _add_forget_cell.configure(ArithmeticOperation::ADD, &_forget_gate, &_mul_input_cell_res, cell_state_out, ConvertPolicy::SATURATE);
+    _mul_input_cell_res.allocator()->allocate();
+    _forget_gate.allocator()->allocate();
+    if(_has_cell_clipping)
+    {
+        _cell_clip.configure(cell_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_cell_clip, quantized_cell_clip));
+    }
+    // Output gate.
+    const TensorInfo output_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.output_intermediate_scale(), 0));
+    const float      input_to_output_scale = input_to_output_weights->info()->quantization_info().uniform().scale * qinput.scale / lstm_params.output_intermediate_scale();
+    configure_mm(_mm_input_to_output, _input_to_output_outstage, gemmlowp_info,
+                 input, &_input_to_output_weights_transposed, &_input_to_output_eff_bias,
+                 &_mm_input_to_output_res, &_input_to_output_outstage_res, input_to_output_scale,
+                 mm_out_info, output_outstage_info);
+
+    const float recurrent_to_output_scale = recurrent_to_output_weights->info()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.output_intermediate_scale();
+    configure_mm(_mm_recurrent_to_output, _recurrent_to_output_outstage, gemmlowp_info,
+                 output_state_in, &_recurrent_to_output_weights_transposed, &_recurrent_to_output_eff_bias,
+                 &_mm_recurrent_to_output_res, &_recurrent_to_output_outstage_res, recurrent_to_output_scale,
+                 mm_out_info, output_outstage_info);
+
+    _accumulate_input_recurrent_output.configure(ArithmeticOperation::ADD, &_recurrent_to_output_outstage_res, &_input_to_output_outstage_res, &_recurrent_to_output_outstage_res, ConvertPolicy::SATURATE);
+    _input_to_output_outstage_res.allocator()->allocate();
+
+    if(_has_peephole)
+    {
+        // TODO(COMPMID-3396): Perform multiplication in the quantized domain in CLPixelWiseMultiplicationKernel
+        // Here we are not using the output stage because all operations are done in float
+        // const float cell_to_output_scale = std::pow(2, cell_shift) * lstm_params.cell_to_output_weights()->info()->quantization_info().uniform().scale / lstm_params.output_intermediate_scale();
+        // quantization::calculate_quantized_multiplier(cell_to_output_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift);
+        _memory_group.manage(&_mul_cell_to_output_res);
+        _pixelwise_mul_cell_to_output.configure(cell_state_out, lstm_params.cell_to_output_weights(), &_mul_cell_to_output_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO);
+        _accumulate_cell_to_output.configure(ArithmeticOperation::ADD, &_recurrent_to_output_outstage_res, &_mul_cell_to_output_res, &_recurrent_to_output_outstage_res, ConvertPolicy::SATURATE);
+        _mul_cell_to_output_res.allocator()->allocate();
+    }
+
+    const TensorInfo output_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    _memory_group.manage(&_output_gate);
+    _output_gate.allocator()->init(output_gate_info);
+    _output_gate_sigmoid.configure(&_recurrent_to_output_outstage_res, &_output_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC));
+    _recurrent_to_output_outstage_res.allocator()->allocate();
+
+    // Hidden.
+    _hidden_tanh.configure(cell_state_out, &_input_gate, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f));
+    // TODO(COMPMID-3396): Perform multiplication in the quantized domain in CLPixelWiseMultiplicationKernel
+    _memory_group.manage(&_hidden_mul_res);
+    const TensorInfo hidden_mul_res(_input_gate.info()->tensor_shape(), 1, DataType::S32);
+    _hidden_mul_res.allocator()->init(hidden_mul_res);
+    _pixelwise_mul_hidden.configure(&_output_gate, &_input_gate, &_hidden_mul_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO);
+    _output_gate.allocator()->allocate();
+    _input_gate.allocator()->allocate();
+    const float hidden_state_scale = std::pow(2, -15) / lstm_params.hidden_state_scale() * std::pow(2, -15);
+    quantization::calculate_quantized_multiplier(hidden_state_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift, /* ignore_epsilon */ true);
+    gemmlowp_info.gemmlowp_offset  = lstm_params.hidden_state_zero();
+    gemmlowp_info.output_data_type = output_state_in->info()->data_type();
+    _hidden_outstage.configure(&_hidden_mul_res, nullptr, output_state_out, gemmlowp_info);
+    _hidden_mul_res.allocator()->allocate();
+
+    // Projection.
+    if(_has_projection)
+    {
+        const TensorInfo              projection_outstage_info(*output_state_out->info());
+        const UniformQuantizationInfo qprojection      = _projection_weights->info()->quantization_info().uniform();
+        const float                   projection_scale = qprojection.scale * lstm_params.hidden_state_scale() / qoutput_state_in.scale;
+        gemmlowp_info.gemmlowp_offset                  = qoutput_state_in.offset;
+        gemmlowp_info.gemmlowp_min_bound               = std::numeric_limits<int8_t>::lowest();
+        gemmlowp_info.gemmlowp_max_bound               = std::numeric_limits<int8_t>::max();
+        gemmlowp_info.output_data_type                 = DataType::QASYMM8_SIGNED;
+
+        configure_mm(_mm_projection, _projection_outstage, gemmlowp_info,
+                     output_state_out, &_projection_weights_transposed, &_projection_eff_bias,
+                     &_mm_projection_res, &_projection_outstage_res, projection_scale,
+                     mm_out_info, projection_outstage_info);
+
+        _accumulate_projection.configure(ArithmeticOperation::ADD, &_projection_outstage_res, output_state_out, output_state_out, ConvertPolicy::SATURATE);
+        _projection_outstage_res.allocator()->allocate();
+
+        int8_t quantized_projection_clip{ 0 };
+        if(lstm_params.projection_clip() > 0.0f)
+        {
+            quantized_projection_clip = utility::clamp<int8_t>(lstm_params.projection_clip() / qprojection.scale, -128, 127);
+        }
+
+        if(quantized_projection_clip > 0)
+        {
+            _projection_clip.configure(output_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_projection_clip, quantized_projection_clip));
+            _has_projection_clipping = true;
+        }
+    }
+}
+
+Status CLQLSTMLayer::validate(const ITensorInfo *input,
+                              const ITensorInfo *input_to_forget_weights, const ITensorInfo *input_to_cell_weights, const ITensorInfo *input_to_output_weights,
+                              const ITensorInfo *recurrent_to_forget_weights, const ITensorInfo *recurrent_to_cell_weights, const ITensorInfo *recurrent_to_output_weights,
+                              const ITensorInfo *forget_gate_bias, const ITensorInfo *cell_bias, const ITensorInfo *output_gate_bias,
+                              const ITensorInfo *cell_state_in, const ITensorInfo *output_state_in,
+                              const ITensorInfo *cell_state_out, const ITensorInfo *output_state_out,
+                              const LSTMParams<ITensorInfo> &lstm_params)
+{
+    ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(input, input_to_forget_weights, input_to_cell_weights, input_to_output_weights, recurrent_to_forget_weights, recurrent_to_cell_weights,
+                                        recurrent_to_output_weights, forget_gate_bias, cell_bias, output_gate_bias, cell_state_in, output_state_in, cell_state_out, output_state_out);
+
+    ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input, 1, DataType::QASYMM8_SIGNED);
+    ARM_COMPUTE_RETURN_ERROR_ON_MSG(input->num_dimensions() != 2, "Input must have exactly 2 dimensions");
+
+    const unsigned int input_size  = input->dimension(0);
+    const unsigned int batch_size  = input->dimension(1);
+    const unsigned int num_units   = input_to_output_weights->dimension(1);
+    const unsigned int output_size = recurrent_to_output_weights->dimension(0);
+
+    ARM_COMPUTE_RETURN_ERROR_ON(input_to_output_weights->num_dimensions() != 2);
+    ARM_COMPUTE_RETURN_ERROR_ON(input_to_output_weights->dimension(0) != input_size);
+    ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(input_to_output_weights, input_to_forget_weights, input_to_cell_weights);
+    ARM_COMPUTE_RETURN_ERROR_ON(recurrent_to_output_weights->num_dimensions() != 2);
+    ARM_COMPUTE_RETURN_ERROR_ON(recurrent_to_output_weights->dimension(1) != num_units);
+    ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(recurrent_to_output_weights, recurrent_to_forget_weights, recurrent_to_cell_weights);
+    ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(input_to_forget_weights, 1, DataType::QSYMM8);
+    ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input_to_forget_weights, input_to_cell_weights, input_to_output_weights,
+                                                       recurrent_to_forget_weights, recurrent_to_cell_weights, recurrent_to_output_weights);
+
+    ARM_COMPUTE_RETURN_ERROR_ON(forget_gate_bias->num_dimensions() != 1);
+    ARM_COMPUTE_RETURN_ERROR_ON(forget_gate_bias->dimension(0) != num_units);
+    ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(forget_gate_bias, cell_bias, output_gate_bias);
+    ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(forget_gate_bias, 1, DataType::S32);
+    ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(forget_gate_bias, cell_bias, output_gate_bias);
+
+    ARM_COMPUTE_RETURN_ERROR_ON(cell_state_in->num_dimensions() != 2);
+    ARM_COMPUTE_RETURN_ERROR_ON(cell_state_in->dimension(0) != num_units);
+    ARM_COMPUTE_RETURN_ERROR_ON(cell_state_in->dimension(1) != batch_size);
+    ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(cell_state_in, 1, DataType::QSYMM16);
+
+    ARM_COMPUTE_RETURN_ERROR_ON(output_state_in->num_dimensions() != 2);
+    ARM_COMPUTE_RETURN_ERROR_ON(output_state_in->dimension(0) != output_size);
+    ARM_COMPUTE_RETURN_ERROR_ON(output_state_in->dimension(1) != batch_size);
+    ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input, output_state_in);
+
+    // Check whether peephole weights are all there or none
+    if(lstm_params.has_peephole_opt())
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_output_weights());
+        ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_forget_weights(), 1, DataType::QSYMM16);
+        ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.cell_to_forget_weights()->num_dimensions() != 1);
+        ARM_COMPUTE_RETURN_ERROR_ON(lstm_params.cell_to_forget_weights()->dimension(0) != num_units);
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_output_weights());
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_output_weights());
+
+        if(!lstm_params.has_cifg_opt())
+        {
+            ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(lstm_params.cell_to_input_weights());
+            ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_input_weights());
+            ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(lstm_params.cell_to_forget_weights(), lstm_params.cell_to_input_weights());
+        }
+    }
+
+    const UniformQuantizationInfo qinput           = input->quantization_info().uniform();
+    const UniformQuantizationInfo qcell_state_in   = cell_state_in->quantization_info().uniform();
+    const UniformQuantizationInfo qoutput_state_in = output_state_in->quantization_info().uniform();
+
+    // Calculate and decompose effective scales for optimizing matmul calculation
+    const int32_t cell_shift = log2(qcell_state_in.scale);
+    ARM_COMPUTE_RETURN_ERROR_ON(cell_shift > -9);
+
+    // Calculate quantized parameters for clipping.
+    int16_t quantized_cell_clip = 0;
+    if(lstm_params.cell_clip() > 0.0f)
+    {
+        quantized_cell_clip = quantize_qsymm16(lstm_params.cell_clip(), qcell_state_in);
+    }
+
+    // Precompute effective bias for optimizing the matmul computations.
+    const TensorInfo eff_bias_info(TensorShape(num_units), 1, DataType::S32);
+    if(!lstm_params.has_cifg_opt())
+    {
+        ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(lstm_params.input_to_input_weights(), &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)));
+        ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(lstm_params.recurrent_to_input_weights(), &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset,
+                                                                               true)));
+    }
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(input_to_forget_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(recurrent_to_forget_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(input_to_cell_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(recurrent_to_cell_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(input_to_output_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qinput.offset, true)));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(recurrent_to_output_weights, &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, -qoutput_state_in.offset, true)));
+    if(lstm_params.projection_bias() != nullptr)
+    {
+        ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixAReductionKernel::validate(lstm_params.projection_weights(), &eff_bias_info, GEMMLowpReductionKernelInfo(num_units, false, lstm_params.hidden_state_zero(),
+                                                                               true)));
+        ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, lstm_params.projection_bias(), &eff_bias_info, &eff_bias_info, ConvertPolicy::SATURATE));
+    }
+
+    const TensorInfo input_weights_transposed(TensorShape(num_units, input_size), 1, input_to_forget_weights->data_type(), input_to_forget_weights->quantization_info());
+    const TensorInfo recurrent_weights_transposed(TensorShape(num_units, output_size), 1, recurrent_to_forget_weights->data_type(), recurrent_to_forget_weights->quantization_info());
+
+    // Validate weights transpose
+    ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(input_to_forget_weights, &input_weights_transposed));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(input_to_cell_weights, &input_weights_transposed));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(input_to_output_weights, &input_weights_transposed));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(recurrent_to_forget_weights, &recurrent_weights_transposed));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(recurrent_to_cell_weights, &recurrent_weights_transposed));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(recurrent_to_output_weights, &recurrent_weights_transposed));
+    if(!lstm_params.has_cifg_opt())
+    {
+        ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(lstm_params.input_to_input_weights(), &input_weights_transposed));
+        ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(lstm_params.recurrent_to_input_weights(), &recurrent_weights_transposed));
+    }
+    if(lstm_params.has_projection())
+    {
+        ARM_COMPUTE_RETURN_ON_ERROR(CLTranspose::validate(lstm_params.projection_weights(), &recurrent_weights_transposed));
+    }
+
+    GEMMLowpOutputStageInfo gemmlowp_info;
+    gemmlowp_info.type               = GEMMLowpOutputStageType::QUANTIZE_DOWN_FIXEDPOINT;
+    gemmlowp_info.gemmlowp_min_bound = std::numeric_limits<int16_t>::lowest();
+    gemmlowp_info.gemmlowp_max_bound = std::numeric_limits<int16_t>::max();
+    gemmlowp_info.output_data_type   = DataType::QSYMM16;
+
+    // Forget gate.
+    const TensorInfo forget_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.forget_intermediate_scale(), 0));
+    const TensorInfo mm_out_info(TensorShape(num_units, batch_size), 1, DataType::S32);
+    const float      input_to_forget_scale = input_to_forget_weights->quantization_info().uniform().scale * qinput.scale / lstm_params.forget_intermediate_scale();
+    validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, input_to_forget_scale, &mm_out_info, &forget_outstage_info);
+
+    const float recurrent_to_forget_scale = recurrent_to_forget_weights->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.forget_intermediate_scale();
+    validate_mm(gemmlowp_info, input, &recurrent_weights_transposed, &eff_bias_info, recurrent_to_forget_scale, &mm_out_info, &forget_outstage_info);
+
+    ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &forget_outstage_info, &forget_outstage_info, &forget_outstage_info, ConvertPolicy::SATURATE));
+
+    if(lstm_params.has_peephole_opt())
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_forget_weights(), 1, DataType::QSYMM16);
+        ARM_COMPUTE_RETURN_ON_ERROR(CLPixelWiseMultiplicationKernel::validate(cell_state_in, lstm_params.cell_to_forget_weights(), &mm_out_info, 1.f, ConvertPolicy::SATURATE,
+                                                                              RoundingPolicy::TO_ZERO));
+        const float cell_to_forget_scale = std::pow(2, cell_shift) * lstm_params.cell_to_forget_weights()->quantization_info().uniform().scale / lstm_params.forget_intermediate_scale();
+        ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(cell_to_forget_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift));
+        ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpOutputStage::validate(&mm_out_info, nullptr, &forget_outstage_info, gemmlowp_info));
+        ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &forget_outstage_info, &forget_outstage_info, &forget_outstage_info, ConvertPolicy::SATURATE));
+    }
+
+    // Output quantization info of Sigmoid and Tanh activations
+    const QuantizationInfo sigmoid_tanh_outqinfo(1.f / 32768.f, 0);
+
+    const TensorInfo forget_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    ARM_COMPUTE_RETURN_ON_ERROR(CLActivationLayer::validate(&forget_outstage_info, &forget_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)));
+
+    // Modulation gate.
+    const TensorInfo cell_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.cell_intermediate_scale(), 0));
+    const float      input_to_cell_scale = input_to_cell_weights->quantization_info().uniform().scale * qinput.scale / lstm_params.cell_intermediate_scale();
+    validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, input_to_cell_scale, &mm_out_info, &cell_outstage_info);
+
+    const float recurrent_to_cell_scale = recurrent_to_cell_weights->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.cell_intermediate_scale();
+    validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, recurrent_to_cell_scale, &mm_out_info, &cell_outstage_info);
+
+    ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &cell_outstage_info, &cell_outstage_info, &cell_outstage_info, ConvertPolicy::SATURATE));
+
+    const TensorInfo cell_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    ARM_COMPUTE_RETURN_ON_ERROR(CLActivationLayer::validate(&cell_outstage_info, &cell_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f)));
+
+    // Input gate.
+    const TensorInfo input_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    if(lstm_params.has_cifg_opt())
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_MSG(lstm_params.input_gate_bias() != nullptr, "Input gate bias must not be present when CIFG is used");
+        ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::SUB, &input_gate_info, &forget_gate_info, &forget_gate_info, ConvertPolicy::SATURATE));
+    }
+    else
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_NULLPTR(lstm_params.input_to_input_weights(), lstm_params.recurrent_to_input_weights(), lstm_params.input_gate_bias());
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input_to_forget_weights, lstm_params.input_to_input_weights(), lstm_params.recurrent_to_input_weights());
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(input_to_forget_weights, lstm_params.input_to_input_weights());
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(recurrent_to_forget_weights, lstm_params.recurrent_to_input_weights());
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(forget_gate_bias, lstm_params.input_gate_bias());
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(forget_gate_bias, lstm_params.input_gate_bias());
+
+        ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpMatrixMultiplyCore::validate(input, lstm_params.input_to_input_weights(), nullptr, &mm_out_info));
+        const TensorInfo input_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.input_intermediate_scale(), 0));
+        const float      input_to_input_scale = lstm_params.input_to_input_weights()->quantization_info().uniform().scale * qinput.scale / lstm_params.input_intermediate_scale();
+        validate_mm(gemmlowp_info, input, lstm_params.input_to_input_weights(), &eff_bias_info, input_to_input_scale, &mm_out_info, &input_outstage_info);
+
+        const float recurrent_to_input_scale = lstm_params.recurrent_to_input_weights()->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.input_intermediate_scale();
+        validate_mm(gemmlowp_info, input, lstm_params.recurrent_to_input_weights(), &eff_bias_info, recurrent_to_input_scale, &mm_out_info, &input_outstage_info);
+
+        ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &input_outstage_info, &input_outstage_info, &input_outstage_info, ConvertPolicy::SATURATE));
+
+        if(lstm_params.has_peephole_opt())
+        {
+            ARM_COMPUTE_RETURN_ON_ERROR(CLPixelWiseMultiplicationKernel::validate(cell_state_in, lstm_params.cell_to_input_weights(), &input_outstage_info, 1.f, ConvertPolicy::SATURATE,
+                                                                                  RoundingPolicy::TO_ZERO));
+            const float cell_to_input_scale = std::pow(2, cell_shift) * lstm_params.cell_to_input_weights()->quantization_info().uniform().scale / lstm_params.input_intermediate_scale();
+            ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(cell_to_input_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift));
+            ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpOutputStage::validate(&input_outstage_info, &eff_bias_info, &input_outstage_info, gemmlowp_info));
+            ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &input_outstage_info, &input_outstage_info, &input_outstage_info, ConvertPolicy::SATURATE));
+        }
+
+        ARM_COMPUTE_RETURN_ON_ERROR(CLActivationLayer::validate(&input_outstage_info, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f)));
+    }
+    // Cell.
+    ARM_COMPUTE_RETURN_ON_ERROR(CLPixelWiseMultiplicationKernel::validate(&forget_gate_info, cell_state_in, &forget_gate_info, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLPixelWiseMultiplicationKernel::validate(&input_gate_info, cell_state_in, &cell_gate_info, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO));
+    ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &forget_gate_info, &cell_gate_info, cell_state_out, ConvertPolicy::SATURATE));
+    if(quantized_cell_clip > 0)
+    {
+        ARM_COMPUTE_RETURN_ON_ERROR(CLActivationLayer::validate(cell_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_cell_clip,
+                                                                                                             quantized_cell_clip)));
+    }
+    // Output gate.
+    const TensorInfo output_outstage_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, QuantizationInfo(lstm_params.output_intermediate_scale(), 0));
+    const float      input_to_output_scale = input_to_output_weights->quantization_info().uniform().scale * qinput.scale / lstm_params.output_intermediate_scale();
+    validate_mm(gemmlowp_info, input, &input_weights_transposed, &eff_bias_info, input_to_output_scale, &mm_out_info, &output_outstage_info);
+
+    const float recurrent_to_output_scale = recurrent_to_output_weights->quantization_info().uniform().scale * qoutput_state_in.scale / lstm_params.output_intermediate_scale();
+    validate_mm(gemmlowp_info, output_state_in, &recurrent_weights_transposed, &eff_bias_info, recurrent_to_output_scale, &mm_out_info, &output_outstage_info);
+
+    ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &output_outstage_info, &output_outstage_info, &output_outstage_info, ConvertPolicy::SATURATE));
+    if(lstm_params.has_peephole_opt())
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_DATA_TYPE_CHANNEL_NOT_IN(lstm_params.cell_to_output_weights(), 1, DataType::QSYMM16);
+        // TODO(COMPMID-3395): Perform multiplication in the quantized domain in NEPixelWiseMultiplicationKernel
+        // Here we are not using the output stage because all operations are done in float
+        // const float cell_to_output_scale = std::pow(2, cell_shift) * lstm_params.cell_to_output_weights()->quantization_info().uniform().scale / lstm_params.output_intermediate_scale();
+        // ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(cell_to_output_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift));
+        ARM_COMPUTE_RETURN_ON_ERROR(CLPixelWiseMultiplicationKernel::validate(cell_state_out, lstm_params.cell_to_output_weights(), &output_outstage_info, 1.f, ConvertPolicy::SATURATE,
+                                                                              RoundingPolicy::TO_ZERO));
+        ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, &output_outstage_info, &output_outstage_info, &output_outstage_info, ConvertPolicy::SATURATE));
+    }
+
+    const TensorInfo output_gate_info(TensorShape(num_units, batch_size), 1, DataType::QSYMM16, sigmoid_tanh_outqinfo);
+    ARM_COMPUTE_RETURN_ON_ERROR(CLActivationLayer::validate(&output_outstage_info, &output_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LOGISTIC)));
+
+    // Hidden.
+    ARM_COMPUTE_RETURN_ON_ERROR(CLActivationLayer::validate(cell_state_out, &input_gate_info, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::TANH, 1.f, 1.f)));
+    const TensorInfo hidden_mul_res(TensorShape(num_units, batch_size), 1, DataType::S32);
+    ARM_COMPUTE_RETURN_ON_ERROR(CLPixelWiseMultiplicationKernel::validate(&output_gate_info, &input_gate_info, &hidden_mul_res, 1.f, ConvertPolicy::SATURATE, RoundingPolicy::TO_ZERO));
+    const float hidden_state_scale = std::pow(2, -15) / lstm_params.hidden_state_scale() * std::pow(2, -15);
+    ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(hidden_state_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift, /* ignore_epsilon */ true));
+    gemmlowp_info.gemmlowp_offset = lstm_params.hidden_state_zero();
+    ARM_COMPUTE_RETURN_ON_ERROR(CLGEMMLowpOutputStage::validate(&hidden_mul_res, nullptr, output_state_out, gemmlowp_info));
+
+    // Projection.
+    if(lstm_params.has_projection())
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(recurrent_to_forget_weights, lstm_params.projection_weights());
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(forget_gate_bias, lstm_params.projection_bias());
+
+        const UniformQuantizationInfo qprojection      = lstm_params.projection_weights()->quantization_info().uniform();
+        const float                   projection_scale = qprojection.scale * lstm_params.hidden_state_scale() / qoutput_state_in.scale;
+        ARM_COMPUTE_RETURN_ON_ERROR(quantization::calculate_quantized_multiplier(projection_scale, &gemmlowp_info.gemmlowp_multiplier, &gemmlowp_info.gemmlowp_shift));
+        gemmlowp_info.gemmlowp_offset    = qoutput_state_in.offset;
+        gemmlowp_info.gemmlowp_min_bound = std::numeric_limits<int8_t>::lowest();
+        gemmlowp_info.gemmlowp_max_bound = std::numeric_limits<int8_t>::max();
+        gemmlowp_info.output_data_type   = DataType::QASYMM8_SIGNED;
+
+        const TensorInfo projection_outstage_info(*output_state_out);
+        validate_mm(gemmlowp_info, output_state_out, &recurrent_weights_transposed, &eff_bias_info, input_to_output_scale, &mm_out_info, &projection_outstage_info);
+
+        ARM_COMPUTE_RETURN_ON_ERROR(CLSaturatedArithmeticOperationKernel::validate(ArithmeticOperation::ADD, output_state_out, output_state_out, output_state_out, ConvertPolicy::SATURATE));
+
+        int8_t quantized_projection_clip{ 0 };
+        if(lstm_params.projection_clip() > 0.0f)
+        {
+            quantized_projection_clip = quantize_qasymm8_signed(lstm_params.projection_clip(), qprojection);
+        }
+
+        if(quantized_projection_clip > 0)
+        {
+            ARM_COMPUTE_RETURN_ON_ERROR(CLActivationLayer::validate(output_state_out, nullptr, ActivationLayerInfo(ActivationLayerInfo::ActivationFunction::LU_BOUNDED_RELU, -quantized_projection_clip,
+                                                                                                                   quantized_projection_clip)));
+        }
+    }
+
+    if(cell_state_out->total_size() > 0)
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(cell_state_in, cell_state_out);
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(cell_state_in, cell_state_out);
+    }
+
+    if(output_state_out->total_size() > 0)
+    {
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_DATA_TYPES(input, output_state_out);
+        ARM_COMPUTE_RETURN_ERROR_ON_MISMATCHING_SHAPES(output_state_in, output_state_out);
+    }
+
+    return Status{};
+}
+
+void CLQLSTMLayer::run()
+{
+    prepare();
+
+    // Acquire all the temporaries
+    MemoryGroupResourceScope scope_mg(_memory_group);
+
+    // Forget gate.
+    _mm_input_to_forget.run();
+    _input_to_forget_outstage.run();
+
+    _mm_recurrent_to_forget.run();
+    _recurrent_to_forget_outstage.run();
+    CLScheduler::get().enqueue(_accumulate_input_recurrent_forget);
+
+    if(_has_peephole)
+    {
+        CLScheduler::get().enqueue(_pixelwise_mul_cell_to_forget);
+        _cell_to_forget_outstage.run();
+        CLScheduler::get().enqueue(_accumulate_cell_forget);
+    }
+
+    _forget_gate_sigmoid.run();
+
+    // Modulation gate.
+    _mm_input_to_cell.run();
+    _input_to_cell_outstage.run();
+
+    _mm_recurrent_to_cell.run();
+    _recurrent_to_cell_outstage.run();
+    CLScheduler::get().enqueue(_accumulate_input_recurrent_modulation);
+
+    _cell_gate_tanh.run();
+
+    // Input gate
+    if(_has_cifg)
+    {
+        CLScheduler::get().enqueue(_input_gate_sub);
+    }
+    else
+    {
+        _mm_input_to_input.run();
+        _input_to_input_outstage.run();
+        _mm_recurrent_to_input.run();
+        _recurrent_to_input_outstage.run();
+        CLScheduler::get().enqueue(_accumulate_input_recurrent_input);
+
+        if(_has_peephole)
+        {
+            CLScheduler::get().enqueue(_pixelwise_mul_cell_to_input);
+            _cell_to_input_outstage.run();
+            CLScheduler::get().enqueue(_accumulate_cell_input);
+        }
+
+        _input_gate_tanh.run();
+    }
+
+    // Cell.
+    CLScheduler::get().enqueue(_pixelwise_mul_forget_cell);
+    CLScheduler::get().enqueue(_pixelwise_mul_input_cell);
+    CLScheduler::get().enqueue(_add_forget_cell);
+    if(_has_cell_clipping)
+    {
+        _cell_clip.run();
+    }
+
+    // Output gate.
+    _mm_input_to_output.run();
+    _input_to_output_outstage.run();
+    _mm_recurrent_to_output.run();
+    _recurrent_to_output_outstage.run();
+    CLScheduler::get().enqueue(_accumulate_input_recurrent_output);
+    if(_has_peephole)
+    {
+        CLScheduler::get().enqueue(_pixelwise_mul_cell_to_output);
+        CLScheduler::get().enqueue(_accumulate_cell_to_output);
+    }
+
+    _output_gate_sigmoid.run();
+
+    // Hidden.
+    _hidden_tanh.run();
+    CLScheduler::get().enqueue(_pixelwise_mul_hidden);
+    _hidden_outstage.run();
+
+    // Projection.
+    if(_has_projection)
+    {
+        _mm_projection.run();
+        _projection_outstage.run();
+        CLScheduler::get().enqueue(_accumulate_projection);
+        if(_has_projection_clipping)
+        {
+            _projection_clip.run();
+        }
+    }
+}
+
+void CLQLSTMLayer::prepare()
+{
+    if(!_is_prepared)
+    {
+        // Pre-transpose weights to be used in GEMM.
+        _input_to_forget_weights_transposed.allocator()->allocate();
+        _input_to_cell_weights_transposed.allocator()->allocate();
+        _input_to_output_weights_transposed.allocator()->allocate();
+        _recurrent_to_forget_weights_transposed.allocator()->allocate();
+        _recurrent_to_cell_weights_transposed.allocator()->allocate();
+        _recurrent_to_output_weights_transposed.allocator()->allocate();
+        _transpose_input_to_forget_weights.run();
+        _transpose_input_to_cell_weights.run();
+        _transpose_input_to_output_weights.run();
+        _transpose_recurrent_to_forget_weights.run();
+        _transpose_recurrent_to_cell_weights.run();
+        _transpose_recurrent_to_output_weights.run();
+
+        // Precompute effective biases
+        if(_has_cifg)
+        {
+            _ones.map(true);
+            std::fill_n(reinterpret_cast<int16_t *>(_ones.buffer()), _ones.info()->total_size() / _ones.info()->element_size(), 32767);
+            _ones.unmap();
+        }
+        else
+        {
+            _input_to_input_eff_bias.allocator()->allocate();
+            _recurrent_to_input_eff_bias.allocator()->allocate();
+            CLScheduler::get().enqueue(_input_to_input_reduction);
+            CLScheduler::get().enqueue(_recurrent_to_input_reduction);
+
+            _input_to_input_weights_transposed.allocator()->allocate();
+            _recurrent_to_input_weights_transposed.allocator()->allocate();
+            _transpose_input_to_input_weights.run();
+            _transpose_recurrent_to_input_weights.run();
+            _input_to_input_weights->mark_as_unused();
+            _recurrent_to_input_weights->mark_as_unused();
+        }
+        _input_to_forget_eff_bias.allocator()->allocate();
+        _recurrent_to_forget_eff_bias.allocator()->allocate();
+        _input_to_cell_eff_bias.allocator()->allocate();
+        _recurrent_to_cell_eff_bias.allocator()->allocate();
+        _input_to_output_eff_bias.allocator()->allocate();
+        _recurrent_to_output_eff_bias.allocator()->allocate();
+        CLScheduler::get().enqueue(_input_to_forget_reduction);
+        CLScheduler::get().enqueue(_recurrent_to_forget_reduction);
+        CLScheduler::get().enqueue(_input_to_cell_reduction);
+        CLScheduler::get().enqueue(_recurrent_to_cell_reduction);
+        CLScheduler::get().enqueue(_input_to_output_reduction);
+        CLScheduler::get().enqueue(_recurrent_to_output_reduction);
+
+        if(_has_projection)
+        {
+            if(_projection_bias != nullptr)
+            {
+                _projection_eff_bias.allocator()->allocate();
+                CLScheduler::get().enqueue(_projection_reduction);
+                _projection_bias->mark_as_unused();
+            }
+
+            _projection_weights_transposed.allocator()->allocate();
+            _transpose_projection_weights.run();
+            _projection_weights->mark_as_unused();
+        }
+
+        // Mark weights as unused
+        _input_to_forget_weights->mark_as_unused();
+        _input_to_cell_weights->mark_as_unused();
+        _input_to_output_weights->mark_as_unused();
+        _recurrent_to_forget_weights->mark_as_unused();
+        _recurrent_to_cell_weights->mark_as_unused();
+        _recurrent_to_output_weights->mark_as_unused();
+
+        CLScheduler::get().queue().finish();
+        _is_prepared = true;
+    }
+}
+
+} // namespace arm_compute