"python-package/vscode:/vscode.git/clone" did not exist on "ee5636f16be636e11dbe3e2960996f52cb846aec"
  1. 18 Jan, 2019 1 commit
  2. 16 Jan, 2019 1 commit
  3. 20 Dec, 2018 1 commit
  4. 10 Oct, 2018 1 commit
  5. 09 Oct, 2018 1 commit
    • Guolin Ke's avatar
      average predictions for constant features (#1735) · c920e634
      Guolin Ke authored
      * average predictions for constant features
      
      * fix possible numerical issues in std::log.
      
      * fix pylint
      
      * fix bugs in c_api
      
      * fix styles
      
      * clean code for multi class
      
      * rewrite test
      
      * fix pylint
      
      * skip test_constant_features
      
      * refine test
      
      * fix tests
      
      * fix tests
      
      * update FAQ
      
      * fix test
      
      * Update FAQ.rst
      c920e634
  6. 31 Jul, 2018 1 commit
  7. 14 Jun, 2018 1 commit
  8. 25 May, 2018 1 commit
  9. 20 May, 2018 1 commit
    • Guolin Ke's avatar
      Refine config object (#1381) · dc699574
      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.
      dc699574
  10. 11 May, 2018 2 commits
    • Nikita Titov's avatar
      [python] decode error description (#1362) · 899151fc
      Nikita Titov authored
      * decode error description
      
      * added break line char in log massages
      899151fc
    • Tsukasa OMOTO's avatar
      Shut up warnings (#1363) · 79d27770
      Tsukasa OMOTO authored
      * Shut up warnings
      
      - warning: 'void* memset(void*, int, size_t)' clearing an object of non-trivial type 'struct LightGBM::HistogramBinEntry'; use assignment or value-initialization instead [-Wclass-memaccess]
      - warning: 'void* memcpy(void*, const void*, size_t)' writing to an object of type 'class std::tuple<int, double, double>' with no trivial copy-assignment; use copy-assignment or copy-initialization instead [-Wclass-memaccess]
      
      * void*
      79d27770
  11. 18 Apr, 2018 1 commit
  12. 27 Feb, 2018 1 commit
    • ebernhardson's avatar
      Experimental support for HDFS (#1243) · 7e186a57
      ebernhardson authored
      * Read and write datsets from hdfs.
      * Only enabled when cmake is run with -DUSE_HDFS:BOOL=TRUE
      * Introduces VirtualFile(Reader|Writer) to asbtract VFS differences
      7e186a57
  13. 25 Dec, 2017 1 commit
  14. 17 Dec, 2017 1 commit
  15. 04 Oct, 2017 1 commit
  16. 22 Sep, 2017 1 commit
    • zhangjin's avatar
      Update dataset.cpp (#927) · e66a8a3c
      zhangjin authored
      While in parallel training, when one worker have 0 data, then it will not execute ConstructHistogram.
      if so, ptr_smaller_leaf_hist_data will not be 0 but the old data. that will get the wrong Histogram, and the wrong split info.
      e66a8a3c
  17. 18 Aug, 2017 3 commits
  18. 27 Jul, 2017 1 commit
  19. 21 May, 2017 1 commit
  20. 16 May, 2017 1 commit
  21. 15 May, 2017 1 commit
  22. 26 Apr, 2017 1 commit
  23. 17 Apr, 2017 2 commits
  24. 16 Apr, 2017 1 commit
    • Guolin Ke's avatar
      faster histogram sum up (#418) · 98c7c2a3
      Guolin Ke authored
      * some refactor.
      
      * two stage sum up to reduce sum up error.
      
      * add more two-stage sumup.
      
      * some refactor.
      
      * add alignment.
      
      * change name to aligned_allocator.
      
      * remove some useless sumup.
      
      * fix a warning.
      
      * add -march=native .
      
      * remove the padding of gradients.
      
      * no alignment.
      
      * fix test.
      
      * change KNumSumupGroup to 32768.
      
      * change gcc flags.
      98c7c2a3
  25. 09 Apr, 2017 1 commit
    • Huan Zhang's avatar
      Initial GPU acceleration support for LightGBM (#368) · 0bb4a825
      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
      0bb4a825
  26. 05 Apr, 2017 1 commit
  27. 28 Mar, 2017 1 commit
  28. 21 Mar, 2017 1 commit
  29. 13 Mar, 2017 1 commit
  30. 01 Mar, 2017 4 commits
  31. 25 Jan, 2017 1 commit
  32. 24 Jan, 2017 2 commits