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机器学习资源 Machine learning Resources

致力于分享最新最全面的机器学习资料,欢迎你成为贡献者!

快速开始学习:

其他有用的资料:


一个简洁明了的时间序列处理(分窗、特征提取、分类)库:Seglearn

计算机视觉这一年:这是最全的一份CV技术报告

深度学习(花书)中文版

深度学习最值得看的论文

最全面的深度学习自学资源集锦

Machine learning surveys

快速入门TensorFlow

自然语言处理数据集   Learning Machine Learning? Six articles you don’t want to miss

Getting started with machine learning documented by github


研究领域资源细分


开始学习:预备知识 Prerequisite


文档 notes


课程与讲座 Course and talk

机器学习 Machine Learning

  **大学应用深度学习课程

神经网络,机器学习,算法,人工智能等 30 门免费课程详细清单  

深度学习 Machine Learning

强化学习 Machine Learning


相关书籍 reference book

  • Hands on Machine Learning with Scikit-learn and Tensorflow

  • 入门读物 The Elements of Statistical Learning(英文第二版),The Elements of Statistical Learning.pdf

  • 机器学习, (@Prof. Zhihua Zhou/周志华教授)

  • 统计学习方法, (@Dr. Hang Li/李航博士)

  • 一些Kindle读物:

    • 利用Python进行数据分析

    • 跟老齐学Python:从入门到精通

    • Python与数据挖掘 (大数据技术丛书) - 张良均

    • Python学习手册

    • Python性能分析与优化

    • Python数据挖掘入门与实践

    • Python数据分析与挖掘实战(大数据技术丛书) - 张良均

    • Python科学计算(第2版)

    • Python计算机视觉编程 [美] Jan Erik Solem

    • python核心编程(第三版)

    • Python核心编程(第二版)

    • Python高手之路 - [法] 朱利安·丹乔(Julien Danjou)

    • Python编程快速上手 让繁琐工作自动化

    • Python编程:从入门到实践

    • Python3 CookBook中文版

    • 终极算法机器学习和人工智能如何重塑世界 - [美 ]佩德罗·多明戈斯

    • 机器学习系统设计 (图灵程序设计丛书) - [美]Willi Richert & Luis Pedro Coelho

    • 机器学习实践指南:案例应用解析(第2版) (大数据技术丛书) - 麦好

    • 机器学习实践 测试驱动的开发方法 (图灵程序设计丛书) - [美] 柯克(Matthew Kirk)

    • 机器学习:实用案例解析

  • 数学:

    • Algebra - Michael Artin

    • Algebra - Serge Lang

    • Basic Topology - M.A. Armstrong

    • Convex Optimization by Stephen Boyd & Lieven Vandenberghe

    • Functional Analysis by Walter Rudin

    • Functional Analysis, Sobolev Spaces and Partial Differential Equations by Haim Brezis

    • Graph Theory - J.A. Bondy, U.S.R. Murty

    • Graph Theory - Reinhard Diestel

    • Inside Interesting Integrals - Pual J. Nahin

    • Linear Algebra and Its Applications - Gilbert Strang

    • Linear and Nonlinear Functional Analysis with Applications - Philippe G. Ciarlet

    • Mathematical Analysis I - Vladimir A. Zorich

    • Mathematical Analysis II - Vladimir A. Zorich

    • Mathematics for Computer Science - Eric Lehman, F Thomson Leighton, Alber R Meyer

    • Matrix Cookbook, The - Kaare Brandt Petersen, Michael Syskind Pedersen

    • Measures, Integrals and Martingales - René L. Schilling

    • Principles of Mathematical Analysis - Walter Rudin

    • Probabilistic Graphical Models: Principles and Techniques - Daphne Koller, Nir Friedman

    • Probability: Theory and Examples - Rick Durrett

    • Real and Complex Analysis - Walter Rudin

    • Thomas' Calculus - George B. Thomas

    • 普林斯顿微积分读本 - Adrian Banner

  • Packt每日限免电子书精选:

    • Learning Data Mining with Python

    • Matplotlib for python developers

    • Machine Learing with Spark

    • Mastering R for Quantitative Finance

    • Mastering matplotlib

    • Neural Network Programming with Java

    • Python Machine Learning

    • R Data Visualization Cookbook

    • R Deep Learning Essentials

    • R Graphs Cookbook second edition

    • D3.js By Example

    • Data Analysis With R

    • Java Deep Learning Essentials

    • Learning Bayesian Models with R

    • Learning Pandas

    • Python Parallel Programming Cookbook

    • Machine Learning with R


其他 Miscellaneous


如何加入 How to contribute

如果你对本项目感兴趣,非常欢迎你加入!

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  • 如果要上传文件:请不要直接上传到项目中,否则会造成git版本库过大。正确的方法是上传它的超链接。如果你要上传的文件本身就在网络中(如paper都会有链接),直接上传即可;如果是自己想分享的一些文件、数据等,鉴于国内网盘的情况,请按照如下方式上传:
    • (墙内)目前没有找到比较好的方式,只能通过链接,或者自己网盘的链接来做。
    • (墙外)首先在UPLOAD直接上传(需要注册账号);上传成功后,在DOWNLOAD里找到你刚上传的文件,共享链接即可。

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及时更新fork项目

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machinelearning's Issues

Want to collaborate? Please add your Github account and email below.

Please add your Github account and email below.

Please mention that you want to be a maintainer If you have been a veteran in this area:

For machine learning, just add your info in this isssue;
For reinforcement learning, refer to this issue: allmachinelearning/ReinforcementLearning#4
For transfer learning, refer to this issue: allmachinelearning/TransferLearning#1
For Distributed System Design for Deep Learning, refer to this issue: allmachinelearning/Deep-Learning-System-Design#1
Also we recommend you use your School Mail or OfficialI Institution Mail.
If you want to be Slack member, refer to this issue: #10

Want to collaborate? Please add your Github account and email below.

Please add your Github account and email below.

Please mention that you want to be a maintainer If you have been a veteran in this area:

Also we recommend you use your School Mail or OfficialI Institution Mail.

STOP SPAMMING

Your project is spamming tagging my user name all over reddit.

add to organization members

Please add me to the members (and proper privileges) to the allmachinelearning organization so I can create new repository to contain uncovered topics.

Currently I only have write access to this repo only and I have no privileges to create new repos under this organization.

@jindongwang

链接有误

MachineLearning/notes/MLMaterials.md 中的“Coursera上国立**大学林轩田开的两门课” 后面的两个链接打不开,第一个链接的准确地址:
https://www.coursera.org/learn/ntumlone-mathematicalfoundations

https://www.coursera.org/learn/ntumlone-algorithmicfoundations
技法的课程 Coursera 没有了,YouTube 有,地址:
https://www.youtube.com/playlist?list=PLXVfgk9fNX2IQOYPmqjqWsNUFl2kpk1U2

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