[SYCL] Add dask support for distributed (#10812)
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@ -31,6 +31,33 @@ template void InitHist(::sycl::queue qu,
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GHistRow<double, MemoryType::on_device>* hist,
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size_t size, ::sycl::event* event);
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/*!
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* \brief Copy histogram from src to dst
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*/
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template<typename GradientSumT>
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void CopyHist(::sycl::queue qu,
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GHistRow<GradientSumT, MemoryType::on_device>* dst,
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const GHistRow<GradientSumT, MemoryType::on_device>& src,
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size_t size) {
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GradientSumT* pdst = reinterpret_cast<GradientSumT*>(dst->Data());
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const GradientSumT* psrc = reinterpret_cast<const GradientSumT*>(src.DataConst());
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qu.submit([&](::sycl::handler& cgh) {
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cgh.parallel_for<>(::sycl::range<1>(2 * size), [=](::sycl::item<1> pid) {
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const size_t i = pid.get_id(0);
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pdst[i] = psrc[i];
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});
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}).wait();
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}
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template void CopyHist(::sycl::queue qu,
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GHistRow<float, MemoryType::on_device>* dst,
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const GHistRow<float, MemoryType::on_device>& src,
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size_t size);
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template void CopyHist(::sycl::queue qu,
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GHistRow<double, MemoryType::on_device>* dst,
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const GHistRow<double, MemoryType::on_device>& src,
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size_t size);
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/*!
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* \brief Compute Subtraction: dst = src1 - src2
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*/
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@ -36,6 +36,15 @@ void InitHist(::sycl::queue qu,
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GHistRow<GradientSumT, MemoryType::on_device>* hist,
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size_t size, ::sycl::event* event);
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/*!
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* \brief Copy histogram from src to dst
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*/
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template<typename GradientSumT>
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void CopyHist(::sycl::queue qu,
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GHistRow<GradientSumT, MemoryType::on_device>* dst,
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const GHistRow<GradientSumT, MemoryType::on_device>& src,
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size_t size);
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/*!
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* \brief Compute subtraction: dst = src1 - src2
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*/
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@ -39,6 +39,42 @@ class BatchHistRowsAdder: public HistRowsAdder<GradientSumT> {
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}
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};
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template <typename GradientSumT>
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class DistributedHistRowsAdder: public HistRowsAdder<GradientSumT> {
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public:
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void AddHistRows(HistUpdater<GradientSumT>* builder,
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std::vector<int>* sync_ids, RegTree *p_tree) override {
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builder->builder_monitor_.Start("AddHistRows");
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const size_t explicit_size = builder->nodes_for_explicit_hist_build_.size();
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const size_t subtaction_size = builder->nodes_for_subtraction_trick_.size();
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std::vector<int> merged_node_ids(explicit_size + subtaction_size);
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for (size_t i = 0; i < explicit_size; ++i) {
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merged_node_ids[i] = builder->nodes_for_explicit_hist_build_[i].nid;
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}
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for (size_t i = 0; i < subtaction_size; ++i) {
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merged_node_ids[explicit_size + i] =
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builder->nodes_for_subtraction_trick_[i].nid;
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}
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std::sort(merged_node_ids.begin(), merged_node_ids.end());
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sync_ids->clear();
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for (auto const& nid : merged_node_ids) {
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if ((*p_tree)[nid].IsLeftChild()) {
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builder->hist_.AddHistRow(nid);
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builder->hist_local_worker_.AddHistRow(nid);
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sync_ids->push_back(nid);
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}
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}
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for (auto const& nid : merged_node_ids) {
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if (!((*p_tree)[nid].IsLeftChild())) {
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builder->hist_.AddHistRow(nid);
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builder->hist_local_worker_.AddHistRow(nid);
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}
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}
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builder->builder_monitor_.Stop("AddHistRows");
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}
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};
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} // namespace tree
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} // namespace sycl
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} // namespace xgboost
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@ -61,6 +61,68 @@ class BatchHistSynchronizer: public HistSynchronizer<GradientSumT> {
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std::vector<::sycl::event> hist_sync_events_;
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};
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template <typename GradientSumT>
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class DistributedHistSynchronizer: public HistSynchronizer<GradientSumT> {
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public:
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void SyncHistograms(HistUpdater<GradientSumT>* builder,
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const std::vector<int>& sync_ids,
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RegTree *p_tree) override {
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builder->builder_monitor_.Start("SyncHistograms");
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const size_t nbins = builder->hist_builder_.GetNumBins();
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for (int node = 0; node < builder->nodes_for_explicit_hist_build_.size(); node++) {
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const auto entry = builder->nodes_for_explicit_hist_build_[node];
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auto& this_hist = builder->hist_[entry.nid];
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// // Store posible parent node
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auto& this_local = builder->hist_local_worker_[entry.nid];
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common::CopyHist(builder->qu_, &this_local, this_hist, nbins);
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if (!(*p_tree)[entry.nid].IsRoot()) {
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const size_t parent_id = (*p_tree)[entry.nid].Parent();
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auto sibling_nid = entry.GetSiblingId(p_tree, parent_id);
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auto& parent_hist = builder->hist_local_worker_[parent_id];
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auto& sibling_hist = builder->hist_[sibling_nid];
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common::SubtractionHist(builder->qu_, &sibling_hist, parent_hist,
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this_hist, nbins, ::sycl::event());
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builder->qu_.wait_and_throw();
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// Store posible parent node
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auto& sibling_local = builder->hist_local_worker_[sibling_nid];
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common::CopyHist(builder->qu_, &sibling_local, sibling_hist, nbins);
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}
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}
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builder->ReduceHists(sync_ids, nbins);
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ParallelSubtractionHist(builder, builder->nodes_for_explicit_hist_build_, p_tree);
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ParallelSubtractionHist(builder, builder->nodes_for_subtraction_trick_, p_tree);
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builder->builder_monitor_.Stop("SyncHistograms");
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}
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void ParallelSubtractionHist(HistUpdater<GradientSumT>* builder,
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const std::vector<ExpandEntry>& nodes,
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const RegTree * p_tree) {
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const size_t nbins = builder->hist_builder_.GetNumBins();
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for (int node = 0; node < nodes.size(); node++) {
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const auto entry = nodes[node];
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if (!((*p_tree)[entry.nid].IsLeftChild())) {
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auto& this_hist = builder->hist_[entry.nid];
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if (!(*p_tree)[entry.nid].IsRoot()) {
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const size_t parent_id = (*p_tree)[entry.nid].Parent();
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auto& parent_hist = builder->hist_[parent_id];
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auto& sibling_hist = builder->hist_[entry.GetSiblingId(p_tree, parent_id)];
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common::SubtractionHist(builder->qu_, &this_hist, parent_hist,
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sibling_hist, nbins, ::sycl::event());
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builder->qu_.wait_and_throw();
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}
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}
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}
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}
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private:
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std::vector<::sycl::event> hist_sync_events_;
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};
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} // namespace tree
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} // namespace sycl
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} // namespace xgboost
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@ -22,6 +22,30 @@ using ::sycl::ext::oneapi::plus;
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using ::sycl::ext::oneapi::minimum;
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using ::sycl::ext::oneapi::maximum;
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template <typename GradientSumT>
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void HistUpdater<GradientSumT>::ReduceHists(const std::vector<int>& sync_ids,
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size_t nbins) {
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if (reduce_buffer_.size() < sync_ids.size() * nbins) {
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reduce_buffer_.resize(sync_ids.size() * nbins);
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}
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for (size_t i = 0; i < sync_ids.size(); i++) {
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auto& this_hist = hist_[sync_ids[i]];
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const GradientPairT* psrc = reinterpret_cast<const GradientPairT*>(this_hist.DataConst());
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qu_.memcpy(reduce_buffer_.data() + i * nbins, psrc, nbins*sizeof(GradientPairT)).wait();
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}
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auto buffer_vec = linalg::MakeVec(reinterpret_cast<GradientSumT*>(reduce_buffer_.data()),
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2 * nbins * sync_ids.size());
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auto rc = collective::Allreduce(ctx_, buffer_vec, collective::Op::kSum);
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SafeColl(rc);
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for (size_t i = 0; i < sync_ids.size(); i++) {
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auto& this_hist = hist_[sync_ids[i]];
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GradientPairT* psrc = reinterpret_cast<GradientPairT*>(this_hist.Data());
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qu_.memcpy(psrc, reduce_buffer_.data() + i * nbins, nbins*sizeof(GradientPairT)).wait();
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}
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}
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template <typename GradientSumT>
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void HistUpdater<GradientSumT>::SetHistSynchronizer(
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HistSynchronizer<GradientSumT> *sync) {
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@ -492,6 +516,7 @@ void HistUpdater<GradientSumT>::InitData(
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// initialize histogram collection
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uint32_t nbins = gmat.cut.Ptrs().back();
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hist_.Init(qu_, nbins);
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hist_local_worker_.Init(qu_, nbins);
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hist_buffer_.Init(qu_, nbins);
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size_t buffer_size = kBufferSize;
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@ -87,7 +87,10 @@ class HistUpdater {
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protected:
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friend class BatchHistSynchronizer<GradientSumT>;
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friend class DistributedHistSynchronizer<GradientSumT>;
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friend class BatchHistRowsAdder<GradientSumT>;
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friend class DistributedHistRowsAdder<GradientSumT>;
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struct SplitQuery {
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bst_node_t nid;
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@ -183,6 +186,8 @@ class HistUpdater {
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RegTree* p_tree,
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const USMVector<GradientPair, MemoryType::on_device>& gpair);
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void ReduceHists(const std::vector<int>& sync_ids, size_t nbins);
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inline static bool LossGuide(ExpandEntry lhs, ExpandEntry rhs) {
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if (lhs.GetLossChange() == rhs.GetLossChange()) {
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return lhs.GetNodeId() > rhs.GetNodeId(); // favor small timestamp
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@ -230,6 +235,8 @@ class HistUpdater {
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common::ParallelGHistBuilder<GradientSumT> hist_buffer_;
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/*! \brief culmulative histogram of gradients. */
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common::HistCollection<GradientSumT, MemoryType::on_device> hist_;
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/*! \brief culmulative local parent histogram of gradients. */
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common::HistCollection<GradientSumT, MemoryType::on_device> hist_local_worker_;
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/*! \brief TreeNode Data: statistics for each constructed node */
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std::vector<NodeEntry<GradientSumT>> snode_host_;
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@ -258,6 +265,8 @@ class HistUpdater {
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USMVector<bst_float, MemoryType::on_device> out_preds_buf_;
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bst_float* out_pred_ptr = nullptr;
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std::vector<GradientPairT> reduce_buffer_;
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::sycl::queue qu_;
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};
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@ -51,7 +51,8 @@ void QuantileHistMaker::SetPimpl(std::unique_ptr<HistUpdater<GradientSumT>>* pim
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param_,
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int_constraint_, dmat));
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if (collective::IsDistributed()) {
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LOG(FATAL) << "Distributed mode is not yet upstreamed for sycl";
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(*pimpl)->SetHistSynchronizer(new DistributedHistSynchronizer<GradientSumT>());
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(*pimpl)->SetHistRowsAdder(new DistributedHistRowsAdder<GradientSumT>());
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} else {
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(*pimpl)->SetHistSynchronizer(new BatchHistSynchronizer<GradientSumT>());
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(*pimpl)->SetHistRowsAdder(new BatchHistRowsAdder<GradientSumT>());
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@ -306,11 +306,12 @@ def _check_distributed_params(kwargs: Dict[str, Any]) -> None:
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raise TypeError(msg)
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if device and device.find(":") != -1:
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raise ValueError(
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"Distributed training doesn't support selecting device ordinal as GPUs are"
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" managed by the distributed frameworks. use `device=cuda` or `device=gpu`"
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" instead."
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)
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if device != "sycl:gpu":
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raise ValueError(
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"Distributed training doesn't support selecting device ordinal as GPUs are"
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" managed by the distributed frameworks. use `device=cuda` or `device=gpu`"
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" instead."
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)
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if kwargs.get("booster", None) == "gblinear":
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raise NotImplementedError(
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@ -17,5 +17,6 @@ dependencies:
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- pytest
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- pytest-timeout
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- pytest-cov
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- dask
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- dpcpp_linux-64
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- onedpl-devel
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42
tests/python-sycl/test_sycl_simple_dask.py
Normal file
42
tests/python-sycl/test_sycl_simple_dask.py
Normal file
@ -0,0 +1,42 @@
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from xgboost import dask as dxgb
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from xgboost import testing as tm
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from hypothesis import given, strategies, assume, settings, note
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import dask.array as da
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import dask.distributed
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def train_result(client, param, dtrain, num_rounds):
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result = dxgb.train(
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client,
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param,
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dtrain,
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num_rounds,
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verbose_eval=False,
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evals=[(dtrain, "train")],
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)
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return result
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class TestSYCLDask:
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# The simplest test verify only one node training.
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def test_simple(self):
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cluster = dask.distributed.LocalCluster(n_workers=1)
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client = dask.distributed.Client(cluster)
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param = {}
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param["tree_method"] = "hist"
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param["device"] = "sycl"
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param["verbosity"] = 0
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param["objective"] = "reg:squarederror"
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# X and y must be Dask dataframes or arrays
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num_obs = 1e4
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num_features = 20
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X = da.random.random(size=(num_obs, num_features), chunks=(1000, num_features))
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y = da.random.random(size=(num_obs, 1), chunks=(1000, 1))
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dtrain = dxgb.DaskDMatrix(client, X, y)
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result = train_result(client, param, dtrain, 10)
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assert tm.non_increasing(result["history"]["train"]["rmse"])
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