Simple machine learning library / 簡單易用的機器學習套件

Overview

FukuML

https://travis-ci.org/fukuball/fuku-ml.svg?branch=master https://codecov.io/github/fukuball/fuku-ml/coverage.svg?branch=master https://api.codacy.com/project/badge/grade/afc87eff27ab47d6b960ea7b3088c469

Simple machine learning library / 簡單易用的機器學習套件

Installation

$ pip install FukuML

Tutorial

Algorithm

  • Perceptron
    • Perceptron Binary Classification Learning Algorithm
    • Perceptron Multi Classification Learning Algorithm
    • Pocket Perceptron Binary Classification Learning Algorithm
    • Pocket Perceptron Multi Classification Learning Algorithm
  • Regression
    • Linear Regression Learning Algorithm
    • Linear Regression Binary Classification Learning Algorithm
    • Linear Regression Multi Classification Learning Algorithm
    • Ridge Regression Learning Algorithm
    • Ridge Regression Binary Classification Learning Algorithm
    • Ridge Regression Multi Classification Learning Algorithm
    • Kernel Ridge Regression Learning Algorithm
    • Kernel Ridge Regression Binary Classification Learning Algorithm
    • Kernel Ridge Regression Multi Classification Learning Algorithm
  • Logistic Regression
    • Logistic Regression Learning Algorithm
    • Logistic Regression Binary Classification Learning Algorithm
    • Logistic Regression One vs All Multi Classification Learning Algorithm
    • Logistic Regression One vs One Multi Classification Learning Algorithm
    • L2 Regularized Logistic Regression Learning Algorithm
    • L2 Regularized Logistic Regression Binary Classification Learning Algorithm
    • Kernel Logistic Regression Learning Algorithm
  • Support Vector Machine
    • Primal Hard Margin Support Vector Machine Binary Classification Learning Algorithm
    • Dual Hard Margin Support Vector Machine Binary Classification Learning Algorithm
    • Polynomial Kernel Support Vector Machine Binary Classification Learning Algorithm
    • Gaussian Kernel Support Vector Machine Binary Classification Learning Algorithm
    • Soft Polynomial Kernel Support Vector Machine Binary Classification Learning Algorithm
    • Soft Gaussian Kernel Support Vector Machine Binary Classification Learning Algorithm
    • Polynomial Kernel Support Vector Machine Multi Classification Learning Algorithm
    • Gaussian Kernel Support Vector Machine Multi Classification Learning Algorithm
    • Soft Polynomial Kernel Support Vector Machine Multi Classification Learning Algorithm
    • Soft Gaussian Kernel Support Vector Machine Multi Classification Learning Algorithm
    • Probabilistic Support Vector Machine Learning Algorithm
    • Least Squares Support Vector Machine Binary Classification Learning Algorithm
    • Least Squares Support Vector Machine Multi Classification Learning Algorithm
    • Support Vector Regression Learning Algorithm
  • Decision Tree
    • Decision Stump Binary Classification Learning Algorithm
    • AdaBoost Stump Binary Classification Learning Algorithm
    • AdaBoost Decision Tree Classification Learning Algorithm
    • Gradient Boost Decision Tree Regression Learning Algorithm
    • Decision Tree Classification Learning Algorithm
    • Decision Tree Regression Learning Algorithm
    • Random Forest Classification Learning Algorithm
    • Random Forest Regression Learning Algorithm
  • Neural Network
    • Neural Network Learning Algorithm
    • Neural Network Binary Classification Learning Algorithm
  • Accelerator
    • Linear Regression Accelerator
  • Feature Transform
    • Polynomial Feature Transform
    • Legendre Feature Transform
  • Validation
    • 10 Fold Cross Validation
  • Blending
    • Uniform Blending for Classification
    • Linear Blending for Classification
    • Uniform Blending for Regression
    • Linear Blending for Regression

Usage

>>> import numpy as np
# we need numpy as a base libray

>>> import FukuML.PLA as pla
# import FukuML.PLA to do Perceptron Learning

>>> your_input_data_file = '/path/to/your/data/file'
# assign your input data file, please check the data format: https://github.com/fukuball/fuku-ml/blob/master/FukuML/dataset/pla_binary_train.dat

>>> pla_bc = pla.BinaryClassifier()
# new a PLA binary classifier

>>> pla_bc.load_train_data(your_input_data_file)
# load train data

>>> pla_bc.set_param()
# set parameter

>>> pla_bc.init_W()
# init the W

>>> W = pla_bc.train()
# train by Perceptron Learning Algorithm to find best W

>>> test_data = 'Each feature of data x separated with spaces. And the ground truth y put in the end of line separated by a space'
# assign test data, format like this '0.97681 0.10723 0.64385 ........ 0.29556 1'

>>> prediction = pla_bc.prediction(test_data)
# prediction by trained W

>>> print prediction['input_data_x']
# print test data x

>>> print prediction['input_data_y']
# print test data y

>>> print prediction['prediction']
# print the prediction, will find out prediction is the same as pla_bc.test_data_y

For detail, please check https://github.com/fukuball/fuku-ml/blob/master/doc/sample_code.rst

Tests

python test_fuku_ml.py

PEP8

pep8 FukuML/*.py --ignore=E501

Donate

If you find fuku-ml useful, please consider a donation. Thank you!

  • bitcoin: 1BbihQU3CzSdyLSP9bvQq7Pi1z1jTdAaq9
  • eth: 0x92DA3F837bf2F79D422bb8CEAC632208F94cdE33

License

The MIT License (MIT)

Copyright (c) 2016 fukuball

Permission is hereby granted, free of charge, to any person obtaining a copy of this software and associated documentation files (the "Software"), to deal in the Software without restriction, including without limitation the rights to use, copy, modify, merge, publish, distribute, sublicense, and/or sell copies of the Software, and to permit persons to whom the Software is furnished to do so, subject to the following conditions:

The above copyright notice and this permission notice shall be included in all copies or substantial portions of the Software.

THE SOFTWARE IS PROVIDED "AS IS", WITHOUT WARRANTY OF ANY KIND, EXPRESS OR IMPLIED, INCLUDING BUT NOT LIMITED TO THE WARRANTIES OF MERCHANTABILITY, FITNESS FOR A PARTICULAR PURPOSE AND NONINFRINGEMENT. IN NO EVENT SHALL THE AUTHORS OR COPYRIGHT HOLDERS BE LIABLE FOR ANY CLAIM, DAMAGES OR OTHER LIABILITY, WHETHER IN AN ACTION OF CONTRACT, TORT OR OTHERWISE, ARISING FROM, OUT OF OR IN CONNECTION WITH THE SOFTWARE OR THE USE OR OTHER DEALINGS IN THE SOFTWARE.

Comments
  • Random Forest

    Random Forest

    http://www.cnblogs.com/xbf9xbf/p/4716834.html

    https://github.com/kevin-keraudren/randomforest-python

    https://github.com/chandarb/Python-Regression-Tree-Forest/blob/master/random_forest.py

    opened by fukuball 9
  • SVR 實作

    SVR 實作

    https://github.com/misaka-10032/ML/blob/master/hw3/handin/code/svr.py

    http://cvxopt.org/examples/tutorial/qp.html

    http://cvxopt.org/userguide/coneprog.html

    opened by fukuball 3
  • Bump numpy from 1.10.4 to 1.21.0

    Bump numpy from 1.10.4 to 1.21.0

    Bumps numpy from 1.10.4 to 1.21.0.

    Release notes

    Sourced from numpy's releases.

    v1.21.0

    NumPy 1.21.0 Release Notes

    The NumPy 1.21.0 release highlights are

    • continued SIMD work covering more functions and platforms,
    • initial work on the new dtype infrastructure and casting,
    • universal2 wheels for Python 3.8 and Python 3.9 on Mac,
    • improved documentation,
    • improved annotations,
    • new PCG64DXSM bitgenerator for random numbers.

    In addition there are the usual large number of bug fixes and other improvements.

    The Python versions supported for this release are 3.7-3.9. Official support for Python 3.10 will be added when it is released.

    :warning: Warning: there are unresolved problems compiling NumPy 1.21.0 with gcc-11.1 .

    • Optimization level -O3 results in many wrong warnings when running the tests.
    • On some hardware NumPy will hang in an infinite loop.

    New functions

    Add PCG64DXSM BitGenerator

    Uses of the PCG64 BitGenerator in a massively-parallel context have been shown to have statistical weaknesses that were not apparent at the first release in numpy 1.17. Most users will never observe this weakness and are safe to continue to use PCG64. We have introduced a new PCG64DXSM BitGenerator that will eventually become the new default BitGenerator implementation used by default_rng in future releases. PCG64DXSM solves the statistical weakness while preserving the performance and the features of PCG64.

    See upgrading-pcg64 for more details.

    (gh-18906)

    Expired deprecations

    • The shape argument numpy.unravel_index cannot be passed as dims keyword argument anymore. (Was deprecated in NumPy 1.16.)

    ... (truncated)

    Commits
    • b235f9e Merge pull request #19283 from charris/prepare-1.21.0-release
    • 34aebc2 MAINT: Update 1.21.0-notes.rst
    • 493b64b MAINT: Update 1.21.0-changelog.rst
    • 07d7e72 MAINT: Remove accidentally created directory.
    • 032fca5 Merge pull request #19280 from charris/backport-19277
    • 7d25b81 BUG: Fix refcount leak in ResultType
    • fa5754e BUG: Add missing DECREF in new path
    • 61127bb Merge pull request #19268 from charris/backport-19264
    • 143d45f Merge pull request #19269 from charris/backport-19228
    • d80e473 BUG: Removed typing for == and != in dtypes
    • Additional commits viewable in compare view

    Dependabot compatibility score

    Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting @dependabot rebase.


    Dependabot commands and options

    You can trigger Dependabot actions by commenting on this PR:

    • @dependabot rebase will rebase this PR
    • @dependabot recreate will recreate this PR, overwriting any edits that have been made to it
    • @dependabot merge will merge this PR after your CI passes on it
    • @dependabot squash and merge will squash and merge this PR after your CI passes on it
    • @dependabot cancel merge will cancel a previously requested merge and block automerging
    • @dependabot reopen will reopen this PR if it is closed
    • @dependabot close will close this PR and stop Dependabot recreating it. You can achieve the same result by closing it manually
    • @dependabot ignore this major version will close this PR and stop Dependabot creating any more for this major version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this minor version will close this PR and stop Dependabot creating any more for this minor version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this dependency will close this PR and stop Dependabot creating any more for this dependency (unless you reopen the PR or upgrade to it yourself)
    • @dependabot use these labels will set the current labels as the default for future PRs for this repo and language
    • @dependabot use these reviewers will set the current reviewers as the default for future PRs for this repo and language
    • @dependabot use these assignees will set the current assignees as the default for future PRs for this repo and language
    • @dependabot use this milestone will set the current milestone as the default for future PRs for this repo and language

    You can disable automated security fix PRs for this repo from the Security Alerts page.

    dependencies 
    opened by dependabot[bot] 1
  • PLA中檢查data是否線性可分的方法

    PLA中檢查data是否線性可分的方法

    我在網上找的資料說,如果數據線性可分,那麼PLA一定會停止,最大步數為 對於R我們可以從數據集中得到,但是對於gamma,我們無法求得,所以我們只知道存在最大步數,但具體是多少無從得知。

    看你的code(PLA.py),似乎是能確定一個上界,可以請問下相關的理論證明麼

    if (self.tune_times > (2 * self.data_num)):
          print("Dataset not linear separable.")
          break
    
    opened by irexyc 1
  • Decision Tree

    Decision Tree

    https://github.com/michaeldorner/DecisionTrees/tree/master/03_Python%20Code

    https://github.com/gumption/Python_for_Data_Science/blob/master/4_Python_Simple_Decision_Tree.ipynb

    http://www.cnblogs.com/xbf9xbf/p/4716834.html

    opened by fukuball 1
  • Adaptive Boosting(Linear Aggregation)

    Adaptive Boosting(Linear Aggregation)

    https://github.com/haiqiong/machine-learning/blob/master/supervised/adaboost.py

    http://blog.csdn.net/maoersong/article/details/24776905

    http://hhtucode.blogspot.tw/2013/04/ml-adaboost-part-2.html

    https://github.com/mazefeng/ml

    http://www.cnblogs.com/xbf9xbf/p/4694364.html

    opened by fukuball 1
  • Logistic Regression L2 Regularization 實作

    Logistic Regression L2 Regularization 實作

    http://blog.smellthedata.com/2009/06/python-logistic-regression-with-l2.html

    http://aimotion.blogspot.tw/2011/11/machine-learning-with-python-logistic.html

    opened by fukuball 1
  • Bump numpy from 1.10.4 to 1.22.0

    Bump numpy from 1.10.4 to 1.22.0

    Bumps numpy from 1.10.4 to 1.22.0.

    Release notes

    Sourced from numpy's releases.

    v1.22.0

    NumPy 1.22.0 Release Notes

    NumPy 1.22.0 is a big release featuring the work of 153 contributors spread over 609 pull requests. There have been many improvements, highlights are:

    • Annotations of the main namespace are essentially complete. Upstream is a moving target, so there will likely be further improvements, but the major work is done. This is probably the most user visible enhancement in this release.
    • A preliminary version of the proposed Array-API is provided. This is a step in creating a standard collection of functions that can be used across application such as CuPy and JAX.
    • NumPy now has a DLPack backend. DLPack provides a common interchange format for array (tensor) data.
    • New methods for quantile, percentile, and related functions. The new methods provide a complete set of the methods commonly found in the literature.
    • A new configurable allocator for use by downstream projects.

    These are in addition to the ongoing work to provide SIMD support for commonly used functions, improvements to F2PY, and better documentation.

    The Python versions supported in this release are 3.8-3.10, Python 3.7 has been dropped. Note that 32 bit wheels are only provided for Python 3.8 and 3.9 on Windows, all other wheels are 64 bits on account of Ubuntu, Fedora, and other Linux distributions dropping 32 bit support. All 64 bit wheels are also linked with 64 bit integer OpenBLAS, which should fix the occasional problems encountered by folks using truly huge arrays.

    Expired deprecations

    Deprecated numeric style dtype strings have been removed

    Using the strings "Bytes0", "Datetime64", "Str0", "Uint32", and "Uint64" as a dtype will now raise a TypeError.

    (gh-19539)

    Expired deprecations for loads, ndfromtxt, and mafromtxt in npyio

    numpy.loads was deprecated in v1.15, with the recommendation that users use pickle.loads instead. ndfromtxt and mafromtxt were both deprecated in v1.17 - users should use numpy.genfromtxt instead with the appropriate value for the usemask parameter.

    (gh-19615)

    ... (truncated)

    Commits

    Dependabot compatibility score

    Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting @dependabot rebase.


    Dependabot commands and options

    You can trigger Dependabot actions by commenting on this PR:

    • @dependabot rebase will rebase this PR
    • @dependabot recreate will recreate this PR, overwriting any edits that have been made to it
    • @dependabot merge will merge this PR after your CI passes on it
    • @dependabot squash and merge will squash and merge this PR after your CI passes on it
    • @dependabot cancel merge will cancel a previously requested merge and block automerging
    • @dependabot reopen will reopen this PR if it is closed
    • @dependabot close will close this PR and stop Dependabot recreating it. You can achieve the same result by closing it manually
    • @dependabot ignore this major version will close this PR and stop Dependabot creating any more for this major version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this minor version will close this PR and stop Dependabot creating any more for this minor version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this dependency will close this PR and stop Dependabot creating any more for this dependency (unless you reopen the PR or upgrade to it yourself)
    • @dependabot use these labels will set the current labels as the default for future PRs for this repo and language
    • @dependabot use these reviewers will set the current reviewers as the default for future PRs for this repo and language
    • @dependabot use these assignees will set the current assignees as the default for future PRs for this repo and language
    • @dependabot use this milestone will set the current milestone as the default for future PRs for this repo and language

    You can disable automated security fix PRs for this repo from the Security Alerts page.

    dependencies 
    opened by dependabot[bot] 0
  • Bump cvxopt from 1.1.8 to 1.2.7

    Bump cvxopt from 1.1.8 to 1.2.7

    Bumps cvxopt from 1.1.8 to 1.2.7.

    Dependabot compatibility score

    Dependabot will resolve any conflicts with this PR as long as you don't alter it yourself. You can also trigger a rebase manually by commenting @dependabot rebase.


    Dependabot commands and options

    You can trigger Dependabot actions by commenting on this PR:

    • @dependabot rebase will rebase this PR
    • @dependabot recreate will recreate this PR, overwriting any edits that have been made to it
    • @dependabot merge will merge this PR after your CI passes on it
    • @dependabot squash and merge will squash and merge this PR after your CI passes on it
    • @dependabot cancel merge will cancel a previously requested merge and block automerging
    • @dependabot reopen will reopen this PR if it is closed
    • @dependabot close will close this PR and stop Dependabot recreating it. You can achieve the same result by closing it manually
    • @dependabot ignore this major version will close this PR and stop Dependabot creating any more for this major version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this minor version will close this PR and stop Dependabot creating any more for this minor version (unless you reopen the PR or upgrade to it yourself)
    • @dependabot ignore this dependency will close this PR and stop Dependabot creating any more for this dependency (unless you reopen the PR or upgrade to it yourself)
    • @dependabot use these labels will set the current labels as the default for future PRs for this repo and language
    • @dependabot use these reviewers will set the current reviewers as the default for future PRs for this repo and language
    • @dependabot use these assignees will set the current assignees as the default for future PRs for this repo and language
    • @dependabot use this milestone will set the current milestone as the default for future PRs for this repo and language

    You can disable automated security fix PRs for this repo from the Security Alerts page.

    dependencies 
    opened by dependabot[bot] 0
  • Installation Error

    Installation Error

    Collecting FukuML Downloading FukuML-0.4.1-py2.py3-none-any.whl (1.4MB) 100% |████████████████████████████████| 1.4MB 490kB/s Collecting cvxopt==1.1.8 (from FukuML) Downloading cvxopt-1.1.8.tar.gz (5.3MB) 100% |████████████████████████████████| 5.3MB 167kB/s Collecting scikit-learn==0.17.1 (from FukuML) Downloading scikit_learn-0.17.1-cp27-cp27mu-manylinux1_x86_64.whl (17.6MB) 100% |████████████████████████████████| 17.6MB 69kB/s Collecting scipy==0.17.0 (from FukuML) Downloading scipy-0.17.0-cp27-cp27mu-manylinux1_x86_64.whl (39.5MB) 100% |████████████████████████████████| 39.5MB 36kB/s Collecting numpy==1.10.4 (from FukuML) Downloading numpy-1.10.4-cp27-cp27mu-manylinux1_x86_64.whl (15.0MB) 100% |████████████████████████████████| 15.0MB 79kB/s Requirement already satisfied: pep8==1.7.0 in /mnt/disk1/anaconda2/lib/python2.7/site-packages (from FukuML) Building wheels for collected packages: cvxopt Running setup.py bdist_wheel for cvxopt ... error Complete output from command /mnt/disk1/anaconda2/bin/python -u -c "import setuptools, tokenize;file='/tmp/pip-build-Yide8J/cvxopt/setup.py';f=getattr(tokenize, 'open', open)(file);code=f.read().replace('\r\n', '\n');f.close();exec(compile(code, file, 'exec'))" bdist_wheel -d /tmp/tmpr_lP_apip-wheel- --python-tag cp27: running bdist_wheel running build running build_py creating build creating build/lib.linux-x86_64-2.7 creating build/lib.linux-x86_64-2.7/cvxopt copying src/python/coneprog.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/modeling.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/printing.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/cvxprog.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/info.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/init.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/msk.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/solvers.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/misc.py -> build/lib.linux-x86_64-2.7/cvxopt running build_ext building 'base' extension creating build/temp.linux-x86_64-2.7 creating build/temp.linux-x86_64-2.7/src creating build/temp.linux-x86_64-2.7/src/C gcc -pthread -fno-strict-aliasing -g -O2 -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/mnt/disk1/anaconda2/include/python2.7 -c src/C/base.c -o build/temp.linux-x86_64-2.7/src/C/base.o gcc -pthread -fno-strict-aliasing -g -O2 -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/mnt/disk1/anaconda2/include/python2.7 -c src/C/dense.c -o build/temp.linux-x86_64-2.7/src/C/dense.o gcc -pthread -fno-strict-aliasing -g -O2 -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/mnt/disk1/anaconda2/include/python2.7 -c src/C/sparse.c -o build/temp.linux-x86_64-2.7/src/C/sparse.o src/C/sparse.c: In function ‘sparse_concat’: src/C/sparse.c:368:30: warning: variable ‘blk_ncols’ set but not used [-Wunused-but-set-variable] int_t blk_nrows = 0, blk_ncols = 0; ^ gcc -pthread -shared -L/mnt/disk1/anaconda2/lib -Wl,-rpath=/mnt/disk1/anaconda2/lib,--no-as-needed build/temp.linux-x86_64-2.7/src/C/base.o build/temp.linux-x86_64-2.7/src/C/dense.o build/temp.linux-x86_64-2.7/src/C/sparse.o -L/usr/lib -L/mnt/disk1/anaconda2/lib -lm -llapack -lblas -lpython2.7 -o build/lib.linux-x86_64-2.7/cvxopt/base.so /usr/bin/ld: 找不到 -llapack collect2: error: ld returned 1 exit status error: command 'gcc' failed with exit status 1


    Failed building wheel for cvxopt Running setup.py clean for cvxopt Failed to build cvxopt Installing collected packages: cvxopt, scikit-learn, scipy, numpy, FukuML Running setup.py install for cvxopt ... error Complete output from command /mnt/disk1/anaconda2/bin/python -u -c "import setuptools, tokenize;file='/tmp/pip-build-Yide8J/cvxopt/setup.py';f=getattr(tokenize, 'open', open)(file);code=f.read().replace('\r\n', '\n');f.close();exec(compile(code, file, 'exec'))" install --record /tmp/pip-vV2hrJ-record/install-record.txt --single-version-externally-managed --compile: running install running build running build_py creating build creating build/lib.linux-x86_64-2.7 creating build/lib.linux-x86_64-2.7/cvxopt copying src/python/coneprog.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/modeling.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/printing.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/cvxprog.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/info.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/init.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/msk.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/solvers.py -> build/lib.linux-x86_64-2.7/cvxopt copying src/python/misc.py -> build/lib.linux-x86_64-2.7/cvxopt running build_ext building 'base' extension creating build/temp.linux-x86_64-2.7 creating build/temp.linux-x86_64-2.7/src creating build/temp.linux-x86_64-2.7/src/C gcc -pthread -fno-strict-aliasing -g -O2 -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/mnt/disk1/anaconda2/include/python2.7 -c src/C/base.c -o build/temp.linux-x86_64-2.7/src/C/base.o gcc -pthread -fno-strict-aliasing -g -O2 -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/mnt/disk1/anaconda2/include/python2.7 -c src/C/dense.c -o build/temp.linux-x86_64-2.7/src/C/dense.o gcc -pthread -fno-strict-aliasing -g -O2 -DNDEBUG -g -fwrapv -O3 -Wall -Wstrict-prototypes -fPIC -I/mnt/disk1/anaconda2/include/python2.7 -c src/C/sparse.c -o build/temp.linux-x86_64-2.7/src/C/sparse.o src/C/sparse.c: In function ‘sparse_concat’: src/C/sparse.c:368:30: warning: variable ‘blk_ncols’ set but not used [-Wunused-but-set-variable] int_t blk_nrows = 0, blk_ncols = 0; ^ gcc -pthread -shared -L/mnt/disk1/anaconda2/lib -Wl,-rpath=/mnt/disk1/anaconda2/lib,--no-as-needed build/temp.linux-x86_64-2.7/src/C/base.o build/temp.linux-x86_64-2.7/src/C/dense.o build/temp.linux-x86_64-2.7/src/C/sparse.o -L/usr/lib -L/mnt/disk1/anaconda2/lib -lm -llapack -lblas -lpython2.7 -o build/lib.linux-x86_64-2.7/cvxopt/base.so /usr/bin/ld: 找不到 -llapack collect2: error: ld returned 1 exit status error: command 'gcc' failed with exit status 1

    ----------------------------------------
    

    Command "/mnt/disk1/anaconda2/bin/python -u -c "import setuptools, tokenize;file='/tmp/pip-build-Yide8J/cvxopt/setup.py';f=getattr(tokenize, 'open', open)(file);code=f.read().replace('\r\n', '\n');f.close();exec(compile(code, file, 'exec'))" install --record /tmp/pip-vV2hrJ-record/install-record.txt --single-version-externally-managed --compile" failed with error code 1 in /tmp/pip-build-Yide8J/cvxopt/

    opened by share123321 5
  • 其他課程

    其他課程

    https://www.youtube.com/watch?v=g-PvXUjD6qg&list=PLlJy-eBtNFt6EuMxFYRiNRS07MCWN5UIA&index=1

    https://www.youtube.com/playlist?list=PLDVUyNKQkt3ro0GUDynHp5ekOAoUZrCsl

    https://www.youtube.com/view_play_list?p=A89DCFA6ADACE599

    opened by fukuball 0
Releases(v0.4.1)
  • v0.4.1(May 1, 2017)

  • v0.4.0(Apr 29, 2017)

  • v0.3.6(Nov 7, 2016)

  • v0.3.3(Oct 28, 2016)

  • v0.3.2(Sep 21, 2016)

  • v0.3.0(Jun 27, 2016)

    • Probabilistic Support Vector Machine Learning Algorithm
    • Least Squares Support Vector Machine Learning Algorithm
    • Support Vector Regression Learning Algorithm
    • Decision Stump Binary Classification Learning Algorithm
    • AdaBoost Stump Binary Classification Learning Algorithm
    • Decision Tree Classification Learning Algorithm
    • Decision Tree Regression Learning Algorithm
    Source code(tar.gz)
    Source code(zip)
  • v0.2.7(Jun 19, 2016)

    • Polynomial Kernel Support Vector Machine Multi Classification Learning Algorithm
    • Gaussian Kernel Support Vector Machine Multi Classification Learning Algorithm
    • Soft Polynomial Kernel Support Vector Machine Multi Classification Learning Algorithm
    • Soft Gaussian Kernel Support Vector Machine Multi Classification Learning Algorithm
    Source code(tar.gz)
    Source code(zip)
  • v0.2.6(Jun 16, 2016)

    • Kernel Ridge Regression Learning Algorithm
    • Kernel Ridge Regression Binary Classification Learning Algorithm
    • Least Squares Support Vector Machine Learning Algorithm
    Source code(tar.gz)
    Source code(zip)
  • v0.2.5(Jun 15, 2016)

  • v0.2.4(Jun 13, 2016)

  • v0.2.3(Jun 10, 2016)

  • v0.2.2(Jun 9, 2016)

  • v0.2.0(May 29, 2016)

    • Soft Polynomial Kernel Support Vector Machine Binary Classification Learning Algorithm
    • Soft Gaussian Kernel Support Vector Machine Binary Classification Learning Algorithm
    Source code(tar.gz)
    Source code(zip)
  • v0.1.8(May 28, 2016)

    • Primal Hard Margin Support Vector Machine Binary Classification Learning Algorithm
    • Dual Hard Margin Support Vector Machine Binary Classification Learning Algorithm
    • Polynomial Kernel Support Vector Machine Binary Classification Learning Algorithm
    • Gaussian Kernel Support Vector Machine Binary Classification Learning Algorithm
    Source code(tar.gz)
    Source code(zip)
  • v0.1.7(May 17, 2016)

  • v0.1.6(Apr 29, 2016)

    • Ridge Regression Learning Algorithm
    • Ridge Regression Binary Classification Learning Algorithm
    • Ridge Regression Multi Classification Learning Algorithm
    • setParam method
    Source code(tar.gz)
    Source code(zip)
  • v0.1.5(Apr 9, 2016)

  • v0.1.4(Apr 3, 2016)

  • v0.1.3(Feb 24, 2016)

    • Pocket Perceptron Multi Classification Learning Algorithm
    • Pocket Perceptron Multi Classification Learning Algorithm with Linear Regression Accelerator
    Source code(tar.gz)
    Source code(zip)
  • v0.1.2(Feb 14, 2016)

  • v0.1.1(Feb 14, 2016)

    • Logistic Regression One vs All Multi Classification Learning Algorithm
    • Logistic Regression One vs All Multi Classification Learning Algorithm with Linear Regression Accelerator
    • Logistic Regression One vs One Multi Classification Learning Algorithm
    • Logistic Regression One vs One Multi Classification Learning Algorithm with Linear Regression Accelerator
    Source code(tar.gz)
    Source code(zip)
  • v0.1.0(Feb 10, 2016)

  • v0.0.9(Feb 9, 2016)

  • v0.0.8(Feb 9, 2016)

  • v0.0.7(Feb 9, 2016)

  • v0.0.6(Jan 24, 2016)

  • v0.0.5(Jan 21, 2016)

  • v0.0.4(Jan 19, 2016)

    • Use OOP to refactor the code
    • Perceptron Learning Algorithm for Binary Classification
    • Pocket Perceptron Learning Algorithm for Binary Classification
    Source code(tar.gz)
    Source code(zip)
  • v0.0.3(Jan 18, 2016)

Owner
Fukuball Lin
我是林志傑,網路上常用的名字是 Fukuball。我使用 PHP 及 Python,最近對機器學習感到興趣。 / 我也是一個快樂的吉他手~ www.fukuball.com
Fukuball Lin
NVIDIA container runtime

nvidia-container-runtime A modified version of runc adding a custom pre-start hook to all containers. If environment variable NVIDIA_VISIBLE_DEVICES i

NVIDIA Corporation 938 Jan 06, 2023
FedML: A Research Library and Benchmark for Federated Machine Learning

FedML: A Research Library and Benchmark for Federated Machine Learning 📄 https://arxiv.org/abs/2007.13518 News 2021-02-01 (Award): #NeurIPS 2020# Fed

FedML-AI 2.3k Jan 08, 2023
code for Image Manipulation Detection by Multi-View Multi-Scale Supervision

MVSS-Net Code and models for ICCV 2021 paper: Image Manipulation Detection by Multi-View Multi-Scale Supervision Update 22.02.17, Pretrained model for

dong_chengbo 131 Dec 30, 2022
Natural Posterior Network: Deep Bayesian Predictive Uncertainty for Exponential Family Distributions

Natural Posterior Network This repository provides the official implementation o

Oliver Borchert 54 Dec 06, 2022
Weakly-Supervised Semantic Segmentation Network with Deep Seeded Region Growing (CVPR 2018).

Weakly-Supervised Semantic Segmentation Network with Deep Seeded Region Growing (CVPR2018) By Zilong Huang, Xinggang Wang, Jiasi Wang, Wenyu Liu and J

Zilong Huang 245 Dec 13, 2022
This repository contains the source code and data for reproducing results of Deep Continuous Clustering paper

Deep Continuous Clustering Introduction This is a Pytorch implementation of the DCC algorithms presented in the following paper (paper): Sohil Atul Sh

Sohil Shah 197 Nov 29, 2022
This repository contains demos I made with the Transformers library by HuggingFace.

Transformers-Tutorials Hi there! This repository contains demos I made with the Transformers library by 🤗 HuggingFace. Currently, all of them are imp

3.5k Jan 01, 2023
Official PyTorch implementation of the preprint paper "Stylized Neural Painting", accepted to CVPR 2021.

Official PyTorch implementation of the preprint paper "Stylized Neural Painting", accepted to CVPR 2021.

Zhengxia Zou 1.5k Dec 28, 2022
Multi-resolution SeqMatch based long-term Place Recognition

MRS-SLAM for long-term place recognition In this work, we imply an multi-resolution sambling based visual place recognition method. This work is based

METASLAM 6 Dec 06, 2022
AirPose: Multi-View Fusion Network for Aerial 3D Human Pose and Shape Estimation

AirPose AirPose: Multi-View Fusion Network for Aerial 3D Human Pose and Shape Estimation Check the teaser video This repository contains the code of A

Robot Perception Group 41 Dec 05, 2022
Learning to Draw: Emergent Communication through Sketching

Learning to Draw: Emergent Communication through Sketching This is the official code for the paper "Learning to Draw: Emergent Communication through S

19 Jul 22, 2022
Code for paper "ASAP-Net: Attention and Structure Aware Point Cloud Sequence Segmentation"

ASAP-Net This project implements ASAP-Net of paper ASAP-Net: Attention and Structure Aware Point Cloud Sequence Segmentation (BMVC2020). Overview We i

Hanwen Cao 26 Aug 25, 2022
Keyword-BERT: Keyword-Attentive Deep Semantic Matching

project discription An implementation of the Keyword-BERT model mentioned in my paper Keyword-Attentive Deep Semantic Matching (Plz cite this github r

1 Nov 14, 2021
Official implementation of the NeurIPS 2021 paper Online Learning Of Neural Computations From Sparse Temporal Feedback

Online Learning Of Neural Computations From Sparse Temporal Feedback This repository is the official implementation of the NeurIPS 2021 paper Online L

Lukas Braun 3 Dec 15, 2021
[NeurIPS'20] Self-supervised Co-Training for Video Representation Learning. Tengda Han, Weidi Xie, Andrew Zisserman.

CoCLR: Self-supervised Co-Training for Video Representation Learning This repository contains the implementation of: InfoNCE (MoCo on videos) UberNCE

Tengda Han 271 Jan 02, 2023
PyTorch implementations of neural network models for keyword spotting

Honk: CNNs for Keyword Spotting Honk is a PyTorch reimplementation of Google's TensorFlow convolutional neural networks for keyword spotting, which ac

Castorini 475 Dec 15, 2022
Weakly Supervised Posture Mining with Reverse Cross-entropy for Fine-grained Classification

Fine-grainedImageClassification Weakly Supervised Posture Mining with Reverse Cross-entropy for Fine-grained Classification We trained model here: lin

ZhenchaoTang 14 Oct 21, 2022
Datasets and pretrained Models for StyleGAN3 ...

Datasets and pretrained Models for StyleGAN3 ... Dear arfiticial friend, this is a collection of artistic datasets and models that we have put togethe

lucid layers 34 Oct 06, 2022
Supervised forecasting of sequential data in Python.

Supervised forecasting of sequential data in Python. Intro Supervised forecasting is the machine learning task of making predictions for sequential da

The Alan Turing Institute 54 Nov 15, 2022
EvoJAX is a scalable, general purpose, hardware-accelerated neuroevolution toolkit

EvoJAX: Hardware-Accelerated Neuroevolution EvoJAX is a scalable, general purpose, hardware-accelerated neuroevolution toolkit. Built on top of the JA

Google 598 Jan 07, 2023