All Projects → allmachinelearning → Machinelearning

allmachinelearning / Machinelearning

Machine learning resources

Projects that are alternatives of or similar to Machinelearning

Letslearnai.github.io
Lets Learn AI
Stars: ✭ 33 (-98.92%)
Mutual labels:  artificial-intelligence, machinelearning
Java Deep Learning Cookbook
Code for Java Deep Learning Cookbook
Stars: ✭ 156 (-94.87%)
Mutual labels:  artificial-intelligence, machinelearning
Hardhat Detector
A convolutional neural network implementation of a script that detects whether an individual is wearing a hardhat or not.
Stars: ✭ 41 (-98.65%)
Mutual labels:  artificial-intelligence, machinelearning
Machine Learning Flappy Bird
Machine Learning for Flappy Bird using Neural Network and Genetic Algorithm
Stars: ✭ 1,683 (-44.67%)
Mutual labels:  artificial-intelligence, machinelearning
Atari Model Zoo
A binary release of trained deep reinforcement learning models trained in the Atari machine learning benchmark, and a software release that enables easy visualization and analysis of models, and comparison across training algorithms.
Stars: ✭ 198 (-93.49%)
Mutual labels:  artificial-intelligence, machinelearning
Ai Series
📚 [.md & .ipynb] Series of Artificial Intelligence & Deep Learning, including Mathematics Fundamentals, Python Practices, NLP Application, etc. 💫 人工智能与深度学习实战,数理统计篇 | 机器学习篇 | 深度学习篇 | 自然语言处理篇 | 工具实践 Scikit & Tensoflow & PyTorch 篇 | 行业应用 & 课程笔记
Stars: ✭ 702 (-76.92%)
Mutual labels:  artificial-intelligence, machinelearning
Mariana
The Cutest Deep Learning Framework which is also a wonderful Declarative Language
Stars: ✭ 151 (-95.04%)
Mutual labels:  artificial-intelligence, machinelearning
Text summurization abstractive methods
Multiple implementations for abstractive text summurization , using google colab
Stars: ✭ 359 (-88.2%)
Mutual labels:  artificial-intelligence, machinelearning
Free Ai Resources
🚀 FREE AI Resources - 🎓 Courses, 👷 Jobs, 📝 Blogs, 🔬 AI Research, and many more - for everyone!
Stars: ✭ 192 (-93.69%)
Mutual labels:  artificial-intelligence, machinelearning
Nano Neuron
🤖 NanoNeuron is 7 simple JavaScript functions that will give you a feeling of how machines can actually "learn"
Stars: ✭ 2,050 (-32.61%)
Mutual labels:  artificial-intelligence, machinelearning
Best ai paper 2020
A curated list of the latest breakthroughs in AI by release date with a clear video explanation, link to a more in-depth article, and code
Stars: ✭ 2,140 (-29.65%)
Mutual labels:  artificial-intelligence, machinelearning
Igel
a delightful machine learning tool that allows you to train, test, and use models without writing code
Stars: ✭ 2,956 (-2.83%)
Mutual labels:  artificial-intelligence, machinelearning
Echotorch
A Python toolkit for Reservoir Computing and Echo State Network experimentation based on pyTorch. EchoTorch is the only Python module available to easily create Deep Reservoir Computing models.
Stars: ✭ 231 (-92.41%)
Mutual labels:  artificial-intelligence, machinelearning
ml-time-series-analysis-on-sales-data
Time Series Decomposition techniques and random forest algorithm on sales data
Stars: ✭ 34 (-98.88%)
Mutual labels:  machinelearning, datamining
Shufflenet
ShuffleNet in PyTorch. Based on https://arxiv.org/abs/1707.01083
Stars: ✭ 262 (-91.39%)
Mutual labels:  artificial-intelligence
Notebooks Statistics And Machinelearning
Jupyter Notebooks from the old UnsupervisedLearning.com (RIP) machine learning and statistics blog
Stars: ✭ 270 (-91.12%)
Mutual labels:  machinelearning
L2c
Learning to Cluster. A deep clustering strategy.
Stars: ✭ 262 (-91.39%)
Mutual labels:  artificial-intelligence
Deeplearningnotes
《深度学习》花书手推笔记
Stars: ✭ 257 (-91.55%)
Mutual labels:  artificial-intelligence
Strips
AI Automated Planning with STRIPS and PDDL in Node.js
Stars: ✭ 272 (-91.06%)
Mutual labels:  artificial-intelligence
Gophernotes
The Go kernel for Jupyter notebooks and nteract.
Stars: ✭ 3,100 (+1.91%)
Mutual labels:  artificial-intelligence

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

  台湾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!

  • 正常参与:请直接fork、pull都可以
  • 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。

如何开始项目协同合作

快速了解github协同工作

及时更新fork项目

贡献者 Contributors

Note that the project description data, including the texts, logos, images, and/or trademarks, for each open source project belongs to its rightful owner. If you wish to add or remove any projects, please contact us at [email protected].