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@ -88,10 +88,6 @@ void SparseApplyFtrlPSKernel::ReInit(const std::vector<AddressPtr> &inputs) {
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bool SparseApplyFtrlPSKernel::Execute(const std::vector<AddressPtr> &inputs, const std::vector<AddressPtr> &workspace,
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const std::vector<AddressPtr> &outputs) {
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ReInit(inputs);
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int *indices = reinterpret_cast<int *>(inputs[4]->addr);
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for (size_t i = 0; i < inputs[4]->size / sizeof(int); i++) {
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indices[i] -= row_offset_;
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}
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return Launch(inputs, workspace, outputs);
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}
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@ -86,10 +86,6 @@ bool SparseApplyLazyAdamPSKernel::Execute(const std::vector<AddressPtr> &inputs,
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const std::vector<AddressPtr> &workspace,
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const std::vector<AddressPtr> &outputs) {
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ReInit(inputs);
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int *indices = reinterpret_cast<int *>(inputs[10]->addr);
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for (size_t i = 0; i < inputs[10]->size / sizeof(int); i++) {
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indices[i] -= row_offset_;
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}
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return Launch(inputs, workspace, outputs);
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}
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@ -511,28 +511,27 @@ void ParameterServer<T>::UpdateWeights() {
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MS_EXCEPTION_IF_NULL(optimizer);
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std::shared_ptr<OptimizerInfo> optim_info = optim_infos_[key];
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if (optim_info == nullptr) {
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continue;
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}
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const std::vector<kernel::AddressPtr> &inputs = optim_info->inputs();
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const std::vector<kernel::AddressPtr> &workspaces = optim_info->workspaces();
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const std::vector<kernel::AddressPtr> &outputs = optim_info->outputs();
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if (optim_info != nullptr) {
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const std::vector<kernel::AddressPtr> &inputs = optim_info->inputs();
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const std::vector<kernel::AddressPtr> &workspaces = optim_info->workspaces();
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const std::vector<kernel::AddressPtr> &outputs = optim_info->outputs();
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std::shared_ptr<std::vector<std::shared_ptr<std::vector<size_t>>>> shapes =
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std::make_shared<std::vector<std::shared_ptr<std::vector<size_t>>>>();
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std::shared_ptr<std::vector<size_t>> indices_shape = std::make_shared<std::vector<size_t>>();
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indices_shape->emplace_back(optim_info->indice_size());
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shapes->push_back(indices_shape);
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std::shared_ptr<std::vector<std::shared_ptr<std::vector<size_t>>>> shapes =
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std::make_shared<std::vector<std::shared_ptr<std::vector<size_t>>>>();
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std::shared_ptr<std::vector<size_t>> indices_shape = std::make_shared<std::vector<size_t>>();
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indices_shape->emplace_back(optim_info->indice_size());
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shapes->push_back(indices_shape);
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if (original_optim_inputs_shape_.count(key) != 0) {
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for (auto &input_shapes : *(original_optim_inputs_shape_[key])) {
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shapes->push_back(input_shapes);
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if (original_optim_inputs_shape_.count(key) != 0) {
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for (auto &input_shapes : *(original_optim_inputs_shape_[key])) {
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shapes->push_back(input_shapes);
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}
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}
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optimizer->ReInit(shapes);
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optim_info->ComputeMean(shapes, worker_num_, pserver_num_, rank_id_);
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optimizer->Execute(inputs, workspaces, outputs);
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optim_info->Reset();
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}
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optimizer->ReInit(shapes);
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optim_info->ComputeMean(shapes, worker_num_, pserver_num_, rank_id_);
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optimizer->Execute(inputs, workspaces, outputs);
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optim_info->Reset();
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if (!is_embedding_[key]) {
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tokens_[key] = worker_num_;
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}
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@ -545,23 +544,26 @@ template <typename T>
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void ParameterServer<T>::AccumGrad(const Keys &keys, const Values &values, const Lengths &lengths) {
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std::unique_lock<std::mutex> lock(mutex_);
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const Key &key = keys[0];
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std::shared_ptr<OptimizerInfo> optim_info = optim_infos_[key];
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bool no_sparse_grad = values.size() == 1 && values[0] == -100;
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if (!no_sparse_grad) {
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std::shared_ptr<OptimizerInfo> optim_info = optim_infos_[key];
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// Create or update the optimizer info
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if (optim_info == nullptr) {
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const std::shared_ptr<OptimizerInfoBuilder> &builder = optim_info_builders_[weight_key_to_optims_[key]];
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std::shared_ptr<kernel::ps::PServerKernel> pserver_kernel = optimizers_[key];
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if (pserver_kernel == nullptr) {
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MS_LOG(EXCEPTION) << "no optimizer found for key " << key << " optim name " << weight_key_to_optims_[key];
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// Create or update the optimizer info
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if (optim_info == nullptr) {
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const std::shared_ptr<OptimizerInfoBuilder> &builder = optim_info_builders_[weight_key_to_optims_[key]];
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std::shared_ptr<kernel::ps::PServerKernel> pserver_kernel = optimizers_[key];
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if (pserver_kernel == nullptr) {
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MS_LOG(EXCEPTION) << "no optimizer found for key " << key << " optim name " << weight_key_to_optims_[key];
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}
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MS_EXCEPTION_IF_NULL(pserver_kernel);
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OptimizerInfo *optim =
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builder->Build(pserver_kernel, weights_[key], keys, values, lengths, optim_inputs_shape_[key], worker_num_);
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optim_info.reset(optim);
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optim_infos_[key] = optim_info;
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} else {
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optim_info->Update(values, lengths);
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optim_info->Accumulate(values, lengths);
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}
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MS_EXCEPTION_IF_NULL(pserver_kernel);
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OptimizerInfo *optim =
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builder->Build(pserver_kernel, weights_[key], keys, values, lengths, optim_inputs_shape_[key], worker_num_);
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optim_info.reset(optim);
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optim_infos_[key] = optim_info;
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} else {
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optim_info->Update(values, lengths);
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optim_info->Accumulate(values, lengths);
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}
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grads_accum_counter_[key] += 1;
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@ -112,7 +112,7 @@ class WorkerProxy : public ::ps::KVWorker<T> {
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std::unique_ptr<::ps::Customer> general_customer_;
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std::unordered_map<::ps::Key, std::shared_ptr<std::vector<::ps::Range>>> embedding_table_ranges_;
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std::unordered_map<int, std::vector<::ps::KVPairs<T>>> lookup_results_;
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std::unordered_map<int, ::ps::KVPairs<T>> gathered_response_;
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std::unordered_map<int, std::map<int, ::ps::KVPairs<T>>> gathered_response_;
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std::mutex mutex_;
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Slicer lookup_slicer_;
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Slicer sparse_slicer_;
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@ -337,12 +337,19 @@ int WorkerProxy<T>::AddGeneralRspCB(const ::ps::SArray<::ps::Key> &keys, ::ps::S
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int ts = general_customer_->NewRequest(::ps::kServerGroup);
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const auto &callback = [this, ts, keys, vals, lens, cb]() mutable {
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mutex_.lock();
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auto &kvs = gathered_response_[ts];
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std::map<int, ::ps::KVPairs<T>> server_kvs = gathered_response_[ts];
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mutex_.unlock();
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*vals = kvs.vals;
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if (lens) {
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*lens = kvs.lens;
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vals->clear();
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for (auto kvs : server_kvs) {
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for (auto val : kvs.second.vals) {
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vals->push_back(val);
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}
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if (lens) {
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for (auto len : kvs.second.lens) {
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lens->push_back(len);
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}
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}
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}
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mutex_.lock();
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@ -464,43 +471,50 @@ void WorkerProxy<T>::SparseSlicer(int timestamp, const ::ps::KVPairs<T> &send, c
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}
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}
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size_t indices_size = indice_ids.size();
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int slice_segment_size = indices_size * segment_size;
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T *src_grad_data = new T[slice_segment_size];
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int *src_indice_data = new int[indices_size];
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PrepareSparseGradient(begin, end, distinct_ids, indice_to_grads, indice_data, segment_size, src_grad_data,
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src_indice_data);
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if (indices_size > 0) {
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int slice_segment_size = indices_size * segment_size;
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T *src_grad_data = new T[slice_segment_size];
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int *src_indice_data = new int[indices_size];
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PrepareSparseGradient(begin, end, distinct_ids, indice_to_grads, indice_data, segment_size, src_grad_data,
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src_indice_data);
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// Reduce the sparse gradient and indice
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T *new_grad = new T[slice_segment_size];
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int *new_indices = new int[indices_size];
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mindspore::kernel::SparseGradient<int> unique_sparse_grad({new_grad, new_indices, indices_size});
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Util::ReduceSparseGradient(src_grad_data, src_indice_data, indices_size, segment_size, first_dim_size,
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outer_dim_size, &unique_sparse_grad);
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// Reduce the sparse gradient and indice
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T *new_grad = new T[slice_segment_size];
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int *new_indices = new int[indices_size];
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mindspore::kernel::SparseGradient<int> unique_sparse_grad({new_grad, new_indices, indices_size});
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Util::ReduceSparseGradient(src_grad_data, src_indice_data, indices_size, segment_size, first_dim_size,
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outer_dim_size, &unique_sparse_grad);
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// Update the length of reduce sparse gradient and indice
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::ps::SArray<int> reduced_lens;
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reduced_lens.CopyFrom(kvs.lens);
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reduced_lens[grad_index] = unique_sparse_grad.indices_size_ * segment_size;
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reduced_lens[indice_index] = unique_sparse_grad.indices_size_;
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// Update the length of reduce sparse gradient and indice
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::ps::SArray<int> reduced_lens;
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reduced_lens.CopyFrom(kvs.lens);
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reduced_lens[grad_index] = unique_sparse_grad.indices_size_ * segment_size;
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reduced_lens[indice_index] = unique_sparse_grad.indices_size_;
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// Build the sparse value to be sent
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size_t total_size = 0;
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for (auto size : reduced_lens) {
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total_size += size;
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// Build the sparse value to be sent
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size_t total_size = 0;
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for (auto size : reduced_lens) {
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total_size += size;
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}
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::ps::SArray<T> reduced_data(total_size, 0);
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BuildSparseValue(reduced_lens, grad_index, indice_index, data, unique_sparse_grad.value_,
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unique_sparse_grad.indices_, &reduced_data);
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kvs.lens = reduced_lens;
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kvs.vals = reduced_data;
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}
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::ps::SArray<T> reduced_data(total_size, 0);
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BuildSparseValue(reduced_lens, grad_index, indice_index, data, unique_sparse_grad.value_,
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unique_sparse_grad.indices_, &reduced_data);
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kvs.lens = reduced_lens;
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kvs.vals = reduced_data;
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if (indices_size <= 0) {
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sliced->at(i).first = false;
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} else {
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sliced->at(i).first = true;
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expected_result_count_[timestamp] += 1;
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::ps::SArray<T> no_keys;
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::ps::SArray<T> no_vals;
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::ps::SArray<T> no_lens;
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no_keys.push_back(key);
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no_vals.push_back(-100);
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kvs.vals = no_vals;
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kvs.lens = no_lens;
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}
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sliced->at(i).first = true;
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expected_result_count_[timestamp] += 1;
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}
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}
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@ -554,8 +568,8 @@ void WorkerProxy<T>::BuildSparseValue(const ::ps::SArray<int> &lengths, const si
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}
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// Fill the reduced indice
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int indice_offset = grad_offset + lengths[grad_index];
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data_size = lengths[indice_index] * sizeof(T);
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int indice_offset = grad_offset + data_size;
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T *indice_data = reduced_data->data() + indice_offset;
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T *convert = new T[lengths[indice_index]];
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for (int i = 0; i < lengths[indice_index]; i++) {
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@ -656,7 +670,7 @@ void WorkerProxy<T>::ProcessLookupResult(const ::ps::Message &msg) {
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lookup_results_[ts].push_back(kvs);
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mutex_.unlock();
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}
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if (lookup_customer_->NumResponse(ts) == expected_result_count_[ts] - 1) {
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if (lookup_customer_->NumResponse(ts) + 1 == server_num_) {
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const auto &cb = lookup_callbacks_[ts];
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cb();
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lookup_callbacks_.erase(ts);
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@ -676,15 +690,8 @@ void WorkerProxy<T>::ProcessResponse(const ::ps::Message &msg) {
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kvs.lens = msg.data[2];
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}
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mutex_.lock();
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for (auto key : kvs.keys) {
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gathered_response_[ts].keys.push_back(key);
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}
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for (auto val : kvs.vals) {
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gathered_response_[ts].vals.push_back(val);
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}
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for (auto len : kvs.lens) {
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gathered_response_[ts].lens.push_back(len);
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}
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int rsp_server_rank = ::ps::Postoffice::Get()->IDtoRank(msg.meta.sender);
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gathered_response_[ts][rsp_server_rank] = kvs;
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mutex_.unlock();
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if (general_customer_->NumResponse(ts) + 1 == server_num_) {
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const auto &cb = general_callbacks_[ts];
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