- 29 Jul, 2022 1 commit
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shiyu1994 authored
* initial work for boosting and evaluation with CUDA * fix compatibility with CPU code * fix creating objective without USE_CUDA_EXP * fix static analysis errors * fix static analysis errors
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- 23 Mar, 2022 1 commit
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shiyu1994 authored
* new cuda framework * add histogram construction kernel * before removing multi-gpu * new cuda framework * tree learner cuda kernels * single tree framework ready * single tree training framework * remove comments * boosting with cuda * optimize for best split find * data split * move boosting into cuda * parallel synchronize best split point * merge split data kernels * before code refactor * use tasks instead of features as units for split finding * refactor cuda best split finder * fix configuration error with small leaves in data split * skip histogram construction of too small leaf * skip split finding of invalid leaves stop when no leaf to split * support row wise with CUDA * copy data for split by column * copy data from host to CPU by column for data partition * add synchronize best splits for one leaf from multiple blocks * partition dense row data * fix sync best split from task blocks * add support for sparse row wise for CUDA * remove useless code * add l2 regression objective * sparse multi value bin enabled for CUDA * fix cuda ranking objective * support for number of items <= 2048 per query * speedup histogram construction by interleaving global memory access * split optimization * add cuda tree predictor * remove comma * refactor objective and score updater * before use struct * use structure for split information * use structure for leaf splits * return CUDASplitInfo directly after finding best split * split with CUDATree directly * use cuda row data in cuda histogram constructor * clean src/treelearner/cuda * gather shared cuda device functions * put shared CUDA functions into header file * change smaller leaf from <= back to < for consistent result with CPU * add tree predictor * remove useless cuda_tree_predictor * predict on CUDA with pipeline * add global sort algorithms * add global argsort for queries with many items in ranking tasks * remove limitation of maximum number of items per query in ranking * add cuda metrics * fix CUDA AUC * remove debug code * add regression metrics * remove useless file * don't use mask in shuffle reduce * add more regression objectives * fix cuda mape loss add cuda xentropy loss * use template for different versions of BitonicArgSortDevice * add multiclass metrics * add ndcg metric * fix cross entropy objectives and metrics * fix cross entropy and ndcg metrics * add support for customized objective in CUDA * complete multiclass ova for CUDA * separate cuda tree learner * use shuffle based prefix sum * clean up cuda_algorithms.hpp * add copy subset on CUDA * add bagging for CUDA * clean up code * copy gradients from host to device * support bagging without using subset * add support of bagging with subset for CUDAColumnData * add support of bagging with subset for dense CUDARowData * refactor copy sparse subrow * use copy subset for column subset * add reset train data and reset config for CUDA tree learner add deconstructors for cuda tree learner * add USE_CUDA ifdef to cuda tree learner files * check that dataset doesn't contain CUDA tree learner * remove printf debug information * use full new cuda tree learner only when using single GPU * disable all CUDA code when using CPU version * recover main.cpp * add cpp files for multi value bins * update LightGBM.vcxproj * update LightGBM.vcxproj fix lint errors * fix lint errors * fix lint errors * update Makevars fix lint errors * fix the case with 0 feature and 0 bin fix split finding for invalid leaves create cuda column data when loaded from bin file * fix lint errors hide GetRowWiseData when cuda is not used * recover default device type to cpu * fix na_as_missing case fix cuda feature meta information * fix UpdateDataIndexToLeafIndexKernel * create CUDA trees when needed in CUDADataPartition::UpdateTrainScore * add refit by tree for cuda tree learner * fix test_refit in test_engine.py * create set of large bin partitions in CUDARowData * add histogram construction for columns with a large number of bins * add find best split for categorical features on CUDA * add bitvectors for categorical split * cuda data partition split for categorical features * fix split tree with categorical feature * fix categorical feature splits * refactor cuda_data_partition.cu with multi-level templates * refactor CUDABestSplitFinder by grouping task information into struct * pre-allocate space for vector split_find_tasks_ in CUDABestSplitFinder * fix misuse of reference * remove useless changes * add support for path smoothing * virtual destructor for LightGBM::Tree * fix overlapped cat threshold in best split infos * reset histogram pointers in data partition and spllit finder in ResetConfig * comment useless parameter * fix reverse case when na is missing and default bin is zero * fix mfb_is_na and mfb_is_zero and is_single_feature_column * remove debug log * fix cat_l2 when one-hot fix gradient copy when data subset is used * switch shared histogram size according to CUDA version * gpu_use_dp=true when cuda test * revert modification in config.h * fix setting of gpu_use_dp=true in .ci/test.sh * fix linter errors * fix linter error remove useless change * recover main.cpp * separate cuda_exp and cuda * fix ci bash scripts add description for cuda_exp * add USE_CUDA_EXP flag * switch off USE_CUDA_EXP * revert changes in python-packages * more careful separation for USE_CUDA_EXP * fix CUDARowData::DivideCUDAFeatureGroups fix set fields for cuda metadata * revert config.h * fix test settings for cuda experimental version * skip some tests due to unsupported features or differences in implementation details for CUDA Experimental version * fix lint issue by adding a blank line * fix lint errors by resorting imports * fix lint errors by resorting imports * fix lint errors by resorting imports * merge cuda.yml and cuda_exp.yml * update python version in cuda.yml * remove cuda_exp.yml * remove unrelated changes * fix compilation warnings fix cuda exp ci task name * recover task * use multi-level template in histogram construction check split only in debug mode * ignore NVCC related lines in parameter_generator.py * update job name for CUDA tests * apply review suggestions * Update .github/workflows/cuda.yml Co-authored-by:
Nikita Titov <nekit94-08@mail.ru> * Update .github/workflows/cuda.yml Co-authored-by:
Nikita Titov <nekit94-08@mail.ru> * update header * remove useless TODOs * remove [TODO(shiyu1994): constrain the split with min_data_in_group] and record in #5062 * #include <LightGBM/utils/log.h> for USE_CUDA_EXP only * fix include order * fix include order * remove extra space * address review comments * add warning when cuda_exp is used together with deterministic * add comment about gpu_use_dp in .ci/test.sh * revert changing order of included headers Co-authored-by:
Yu Shi <shiyu1994@qq.com> Co-authored-by:
Nikita Titov <nekit94-08@mail.ru>
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- 18 Jan, 2021 1 commit
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James Lamb authored
* [R-package] enable use of trees with linear models at leaves (fixes #3319) * remove problematic pragmas * fix tests * try to fix build scripts * try fixing pragma check * more pragma checks * ok fix pragma stuff for real * empty commit * regenerate documentation * try skipping test * uncomment CI * add note on missing value types for R * add tests on saving and re-loading booster
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- 28 Dec, 2020 1 commit
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Nikita Titov authored
* small code and docs refactoring * Update CMakeLists.txt * Update .vsts-ci.yml * Update test.sh * continue * continue * revert stable sort for all-unique values
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- 24 Dec, 2020 1 commit
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Belinda Trotta authored
* Add Eigen library. * Working for simple test. * Apply changes to config params. * Handle nan data. * Update docs. * Add test. * Only load raw data if boosting=gbdt_linear * Remove unneeded code. * Minor updates. * Update to work with sk-learn interface. * Update to work with chunked datasets. * Throw error if we try to create a Booster with an already-constructed dataset having incompatible parameters. * Save raw data in binary dataset file. * Update docs and fix parameter checking. * Fix dataset loading. * Add test for regularization. * Fix bugs when saving and loading tree. * Add test for load/save linear model. * Remove unneeded code. * Fix case where not enough leaf data for linear model. * Simplify code. * Speed up code. * Speed up code. * Simplify code. * Speed up code. * Fix bugs. * Working version. * Store feature data column-wise (not fully working yet). * Fix bugs. * Speed up. * Speed up. * Remove unneeded code. * Small speedup. * Speed up. * Minor updates. * Remove unneeded code. * Fix bug. * Fix bug. * Speed up. * Speed up. * Simplify code. * Remove unneeded code. * Fix bug, add more tests. * Fix bug and add test. * Only store numerical features * Fix bug and speed up using templates. * Speed up prediction. * Fix bug with regularisation * Visual studio files. * Working version * Only check nans if necessary * Store coeff matrix as an array. * Align cache lines * Align cache lines * Preallocation coefficient calculation matrices * Small speedups * Small speedup * Reverse cache alignment changes * Change to dynamic schedule * Update docs. * Refactor so that linear tree learner is not a separate class. * Add refit capability. * Speed up * Small speedups. * Speed up add prediction to score. * Fix bug * Fix bug and speed up. * Speed up dataload. * Speed up dataload * Use vectors instead of pointers * Fix bug * Add OMP exception handling. * Change return type of LGBM_BoosterGetLinear to bool * Change return type of LGBM_BoosterGetLinear back to int, only parameter type needed to change * Remove unused internal_parent_ property of tree * Remove unused parameter to CreateTreeLearner * Remove reference to LinearTreeLearner * Minor style issues * Remove unneeded check * Reverse temporary testing change * Fix Visual Studio project files * Restore LightGBM.vcxproj.filters * Speed up * Speed up * Simplify code * Update docs * Simplify code * Initialise storage space for max num threads * Move Eigen to include directory and delete unused files * Remove old files. * Fix so it compiles with mingw * Fix gpu tree learner * Change AddPredictionToScore back to const * Fix python lint error * Fix C++ lint errors * Change eigen to a submodule * Update comment * Add the eigen folder * Try to fix build issues with eigen * Remove eigen files * Add eigen as submodule * Fix include paths * Exclude eigen files from Python linter * Ignore eigen folders for pydocstyle * Fix C++ linting errors * Fix docs * Fix docs * Exclude eigen directories from doxygen * Update manifest to include eigen * Update build_r to include eigen files * Fix compiler warnings * Store raw feature data as float * Use float for calculating linear coefficients * Remove eigen directory from GLOB * Don't compile linear model code when building R package * Fix doxygen issue * Fix lint issue * Fix lint issue * Remove uneeded code * Restore delected lines * Restore delected lines * Change return type of has_raw to bool * Update docs * Rename some variables and functions for readability * Make tree_learner parameter const in AddScore * Fix style issues * Pass vectors as const reference when setting tree properties * Make temporary storage of serial_tree_learner mutable so we can make the object's methods const * Remove get_raw_size, use num_numeric_features instead * Fix typo * Make contains_nan_ and any_nan_ properties immutable again * Remove data_has_nan_ property of tree * Remove temporary test code * Make linear_tree a dataset param * Fix lint error * Make LinearTreeLearner a separate class * Fix lint errors * Fix lint error * Add linear_tree_learner.o * Simulate omp_get_max_threads if openmp is not available * Update PushOneData to also store raw data. * Cast size to int * Fix bug in ReshapeRaw * Speed up code with multithreading * Use OMP_NUM_THREADS * Speed up with multithreading * Update to use ArrayToString * Fix tests * Fix test * Fix bug introduced in merge * Minor updates * Update docs
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- 20 Sep, 2020 1 commit
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Chip Kerchner authored
* Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * Initial CUDA work * redirect log to python console (#3090) * redir log to python console * fix pylint * Apply suggestions from code review * Update basic.py * Apply suggestions from code review Co-authored-by:
Nikita Titov <nekit94-08@mail.ru> * Update c_api.h * Apply suggestions from code review * Apply suggestions from code review * super-minor: better wording Co-authored-by:
Nikita Titov <nekit94-08@mail.ru> Co-authored-by:
StrikerRUS <nekit94-12@hotmail.com> * re-order includes (fixes #3132) (#3133) * Revert "re-order includes (fixes #3132) (#3133)" (#3153) This reverts commit 656d2676 . * Missing change from previous rebase * Minor cleanup and removal of development scripts. * Only set gpu_use_dp on by default for CUDA. Other minor change. * Fix python lint indentation problem. * More python lint issues. * Big lint cleanup - more to come. * Another large lint cleanup - more to come. * Even more lint cleanup. * Minor cleanup so less differences in code. * Revert is_use_subset changes * Another rebase from master to fix recent conflicts. * More lint. * Simple code cleanup - add & remove blank lines, revert unneccessary format changes, remove added dead code. * Removed parameters added for CUDA and various bug fix. * Yet more lint and unneccessary changes. * Revert another change. * Removal of unneccessary code. * temporary appveyor.yml for building and testing * Remove return value in ReSize * Removal of unused variables. * Code cleanup from reviewers suggestions. * Removal of FIXME comments and unused defines. * More reviewers comments cleanup. * More reviewers comments cleanup. * More reviewers comments cleanup. * Fix config variables. * Attempt to fix check-docs failure * Update Paramster.rst for num_gpu * Removing test appveyor.yml * Add CUDA_RESOLVE_DEVICE_SYMBOLS to libraries to fix linking issue. * Fixed handling of data elements less than 2K. * More reviewers comments cleanup. * Removal of TODO and fix printing of int64_t * Add cuda change for CI testing and remove cuda from device_type in python. * Missed one change form previous check-in * Removal AdditionConfig and fix settings. * Limit number of GPUs to one for now in CUDA. * Update Parameters.rst for previous check-in * Whitespace removal. * Cleanup unused code. * Changed uint/ushort/ulong to unsigned int/short/long to help Windows based CUDA compiler work. * Lint change from previous check-in. * Changes based on reviewers comments. * More reviewer comment changes. * Adding warning for is_sparse. Revert tmp_subset code. Only return FeatureGroupData if not is_multi_val_ * Fix so that CUDA code will compile even if you enable the SCORE_T_USE_DOUBLE define. * Reviewer comment cleanup. * Replace warning with Log message. Removal of some of the USE_CUDA. Fix typo and removal of pragma once. * Remove PRINT debug for CUDA code. * Allow to use of multiple GPUs for CUDA. * More multi-GPUs enablement for CUDA. * More code cleanup based on reviews comments. * Update docs with latest config changes. Co-authored-by:
Gordon Fossum <fossum@us.ibm.com> Co-authored-by:
ChipKerchner <ckerchne@linux.vnet.ibm.com> Co-authored-by:
Guolin Ke <guolin.ke@outlook.com> Co-authored-by:
Nikita Titov <nekit94-08@mail.ru> Co-authored-by:
StrikerRUS <nekit94-12@hotmail.com> Co-authored-by:
James Lamb <jaylamb20@gmail.com>
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- 13 Apr, 2019 1 commit
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Nikita Titov authored
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- 11 Apr, 2019 1 commit
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Nikita Titov authored
* added all necessary includes - fixed build/include_what_you_use error * fixed the order of includes (build/include_order)
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- 26 Mar, 2019 1 commit
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Nikita Titov authored
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- 20 May, 2018 1 commit
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Guolin Ke authored
* [WIP] refine config * [wip] ready for the auto code generate * auto generate config codes * use with to open file * fix bug * fix pylint * fix bug * fix pylint * fix bugs. * tmp for failed test. * fix tests. * added nthreads alias * added new aliases from new config.h * fixed duplicated alias * refactored parameter_generator.py * added new aliases from config.h and removed remaining old names * fix bugs & some miss alias * added aliases * add more descriptions. * add comment.
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- 09 Apr, 2017 1 commit
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Huan Zhang authored
* add dummy gpu solver code * initial GPU code * fix crash bug * first working version * use asynchronous copy * use a better kernel for root * parallel read histogram * sparse features now works, but no acceleration, compute on CPU * compute sparse feature on CPU simultaneously * fix big bug; add gpu selection; add kernel selection * better debugging * clean up * add feature scatter * Add sparse_threshold control * fix a bug in feature scatter * clean up debug * temporarily add OpenCL kernels for k=64,256 * fix up CMakeList and definition USE_GPU * add OpenCL kernels as string literals * Add boost.compute as a submodule * add boost dependency into CMakeList * fix opencl pragma * use pinned memory for histogram * use pinned buffer for gradients and hessians * better debugging message * add double precision support on GPU * fix boost version in CMakeList * Add a README * reconstruct GPU initialization code for ResetTrainingData * move data to GPU in parallel * fix a bug during feature copy * update gpu kernels * update gpu code * initial port to LightGBM v2 * speedup GPU data loading process * Add 4-bit bin support to GPU * re-add sparse_threshold parameter * remove kMaxNumWorkgroups and allows an unlimited number of features * add feature mask support for skipping unused features * enable kernel cache * use GPU kernels withoug feature masks when all features are used * REAdme. * REAdme. * update README * fix typos (#349) * change compile to gcc on Apple as default * clean vscode related file * refine api of constructing from sampling data. * fix bug in the last commit. * more efficient algorithm to sample k from n. * fix bug in filter bin * change to boost from average output. * fix tests. * only stop training when all classes are finshed in multi-class. * limit the max tree output. change hessian in multi-class objective. * robust tree model loading. * fix test. * convert the probabilities to raw score in boost_from_average of classification. * fix the average label for binary classification. * Add boost_from_average to docs (#354) * don't use "ConvertToRawScore" for self-defined objective function. * boost_from_average seems doesn't work well in binary classification. remove it. * For a better jump link (#355) * Update Python-API.md * for a better jump in page A space is needed between `#` and the headers content according to Github's markdown format [guideline](https://guides.github.com/features/mastering-markdown/) After adding the spaces, we can jump to the exact position in page by click the link. * fixed something mentioned by @wxchan * Update Python-API.md * add FitByExistingTree. * adapt GPU tree learner for FitByExistingTree * avoid NaN output. * update boost.compute * fix typos (#361) * fix broken links (#359) * update README * disable GPU acceleration by default * fix image url * cleanup debug macro * remove old README * do not save sparse_threshold_ in FeatureGroup * add details for new GPU settings * ignore submodule when doing pep8 check * allocate workspace for at least one thread during builing Feature4 * move sparse_threshold to class Dataset * remove duplicated code in GPUTreeLearner::Split * Remove duplicated code in FindBestThresholds and BeforeFindBestSplit * do not rebuild ordered gradients and hessians for sparse features * support feature groups in GPUTreeLearner * Initial parallel learners with GPU support * add option device, cleanup code * clean up FindBestThresholds; add some omp parallel * constant hessian optimization for GPU * Fix GPUTreeLearner crash when there is zero feature * use np.testing.assert_almost_equal() to compare lists of floats in tests * travis for GPU
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- 09 Jan, 2017 1 commit
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Guolin Ke authored
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- 18 Dec, 2016 1 commit
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Guolin Ke authored
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- 13 Dec, 2016 1 commit
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Guolin Ke authored
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- 05 Aug, 2016 1 commit
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Guolin Ke authored
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