- 13 Feb, 2023 1 commit
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James Lamb authored
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- 21 Mar, 2021 1 commit
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Nikita Titov authored
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- 22 Jan, 2021 1 commit
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Nikita Titov authored
* move all submodules to external_libs folder * Update .Rbuildignore * Update MANIFEST.in * Update .appveyor.yml * Update CMakeLists.txt * Update build_r.R * Update test.sh * Update setup.py * Update CMakeLists.txt * Update test.sh * Update setup.py * Update conf.py * Update MANIFEST.in * Update LightGBM.vcxproj * continue * test * test * Update setup.py * hotfix * revert CI tests
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- 03 Jan, 2021 1 commit
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Nikita Titov authored
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- 29 Dec, 2020 1 commit
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James Lamb authored
* [python-package] remove unused Eigen files (fixes #3684) * more changes * add EIGEN_MPL2_ONLY in VS solution file * fix VS project * remove EIGEN_MPL2_ONLY define in linear_tree_learner Co-authored-by:Nikita Titov <nekit94-12@hotmail.com>
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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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- 11 Dec, 2020 1 commit
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James Lamb authored
* cut size * more size cuts * testing install * fmt is header-only
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- 08 Dec, 2020 1 commit
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Alberto Ferreira authored
* Fix LightGBM models locale sensitivity and improve R/W performance. When Java is used, the default C++ locale is broken. This is true for Java providers that use the C API or even Python models that require JEP. This patch solves that issue making the model reads/writes insensitive to such settings. To achieve it, within the model read/write codebase: - C++ streams are imbued with the classic locale - Calls to functions that are dependent on the locale are replaced - The default locale is not changed! This approach means: - The user's locale is never tampered with, avoiding issues such as https://github.com/microsoft/LightGBM/issues/2979 with the previous approach https://github.com/microsoft/LightGBM/pull/2891 - Datasets can still be read according the user's locale - The model file has a single format independent of locale Changes: - Add CommonC namespace which provides faster locale-independent versions of Common's methods - Model code makes conversions through CommonC - Cleanup unused Common methods - Performance improvements. Use fast libraries for locale-agnostic conversion: - value->string: https://github.com/fmtlib/fmt - string->double: https://github.com/lemire/fast_double_parser (10x faster double parsing according to their benchmark) Bugfixes: - https://github.com/microsoft/LightGBM/issues/2500 - https://github.com/microsoft/LightGBM/issues/2890 - https://github.com/ninia/jep/issues/205 (as it is related to LGBM as well) * Align CommonC namespace * Add new external_libs/ to python setup * Try fast_double_parser fix #1 Testing commit e09e5aad828bcb16bea7ed0ed8322e019112fdbe If it works it should fix more LGBM builds * CMake: Attempt to link fmt without explicit PUBLIC tag * Exclude external_libs from linting * Add exernal_libs to MANIFEST.in * Set dynamic linking option for fmt. * linting issues * Try to fix lint includes * Try to pass fPIC with static fmt lib * Try CMake P_I_C option with fmt library * [R-package] Add CMake support for R and CRAN * Cleanup CMakeLists * Try fmt hack to remove stdout * Switch to header-only mode * Add PRIVATE argument to target_link_libraries * use fmt in header-only mode * Remove CMakeLists comment * Change OpenMP to PUBLIC linking in Mac * Update fmt submodule to 7.1.2 * Use fmt in header-only-mode * Remove fmt from CMakeLists.txt * Upgrade fast_double_parser to v0.2.0 * Revert "Add PRIVATE argument to target_link_libraries" This reverts commit 3dd45dde7b92531b2530ab54522bb843c56227a7. * Address James Lamb's comments * Update R-package/.Rbuildignore Co-authored-by:James Lamb <jaylamb20@gmail.com> * Upgrade to fast_double_parser v0.3.0 - Solaris support * Use legacy code only in Solaris * Fix lint issues * Fix comment * Address StrikerRUS's comments (solaris ifdef). * Change header guards Co-authored-by:
James Lamb <jaylamb20@gmail.com>
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- 24 Nov, 2020 1 commit
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Nikita Titov authored
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- 19 Nov, 2020 1 commit
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James Lamb authored
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- 15 Jul, 2018 1 commit
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Nikita Titov authored
* fixed paths in python-package installation * less cd commands at CI * hotfix * added copying missed file from windows directory * not copy filters file * refined paths in nuget creation script * removed filters file from MANIFEST.in
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- 10 Sep, 2017 1 commit
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Nikita Titov authored
* travis cleanup * removed precompiled files in windows folder from sdist command * removed rubbish from install folder * added compute folder
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- 08 Sep, 2017 1 commit
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Nikita Titov authored
* disabled logs from compilers; fixed #874 * fixed safe clear_fplder * added windows folder to manifest.in * added windows folder to build * added library path * added compilation with MSBuild from .sln-file * fixed unknown PlatformToolset returns exitcode 0 * hotfix * updated Readme * removed return * added installation with mingw test to appveyor * let's test appveyor with both VS 2015 and VS 2017; but MinGW isn't installed on VS 2017 image * fixed built-in name 'file' * simplified appveyor * removed excess data_files * fixed unreadable paths * separated exceptions for cmake and mingw * refactored silent_call * don't create artifacts with VS 2015 and mingw * be more precise with python versioning in Travis * removed unnecessary if statement * added classifiers for PyPI and python versions badge * changed python version in travis * added support of scikit-learn 0.18.x * added more python versions to Travis * added more python versions to Appveyor * reduced number of tests in Travis * Travis trick is not needed anymore * attempt to fix according to https://github.com/Microsoft/LightGBM/pull/880#discussion_r137438856
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- 13 Jul, 2017 1 commit
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Joshua Adelman authored
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- 20 Jun, 2017 1 commit
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Guolin Ke authored
* add make command to the python package. * Update README.rst * Update README.rst * Update README.rst * fix tests. * fix unix build * update readme * fix setup.py * update travis * Update .travis.yml * Update test.py * some fixes. * check the 64-bit python * fix build. * refine MANIFEST.in * update Manifest.in * add more build options. * Add fatal in cmake * fix a endif. * fix bugs. * fix pep8 * add test for the pip package build * add test pip install in travis. * fix version with pre-compile dll * fix readme.rst * update readme
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