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For 424 | the avoidance of doubt, this paragraph does not form part of the 425 | public licenses. 426 | 427 | Creative Commons may be contacted at creativecommons.org. -------------------------------------------------------------------------------- /README-pt-BR.md: -------------------------------------------------------------------------------- 1 | # Top-down learning path: Machine Learning for Software Engineers 2 | Inspired by [Google Interview University](https://github.com/jwasham/google-interview-university). 3 | 4 | _Se você gostou deste projeto, por favor me dê uma estrela_ ★ _e ajude a divulgar o material._ ;) 5 | 6 | 7 | Compartilhe no Twitter 8 | 9 | ## O que é? 10 | 11 | Este é meu plano de estudo para ir de desenvolvedor mobile (autodidata, sem diploma) para Engenheiro de Machine Learning. 12 | Meu principal objetivo era encontrar uma abordagem para estudar Machine Learning, que é principalmente hands-on (aprender fazendo) e abstrair a maioria da matemática para o iniciante. Esta abordagem não é convencional porque ela é uma abordagem top-down e resultados-primeiro projetada para engenheiros de software. 13 | 14 | Por favor, sinta-se livre para fazer qualquer contribuição que você achar que pode o tornar melhor. 15 | 16 | --- 17 | 18 | ## Tabela de conteúdo 19 | 20 | - [O que é?](#o-que-é) 21 | - [Por que usar?](#por-que-usar) 22 | - [Como usar](#como-usar) 23 | - [Siga-me](#siga-me) 24 | - [Não sinta que não é inteligente o bastante](#não-sinta-que-não-é-inteligente-o-bastante) 25 | - [Sobre Video Resources](#sobre-video-resources) 26 | - [Conhecimento prévio](#conhecimento-prévio) 27 | - [O Plano diário](#o-plano-diário) 28 | - [Motivação](#motivação) 29 | - [Visão geral do Machine Learning](#visão-geral-do-machine-learning) 30 | - [Maestria do Machine Learning](#maestria-do-machine-learning) 31 | - [Machine Learning é divertido](#machine-learning-é-divertido) 32 | - [Machine learning: um guia profundo, não técnico](#machine-learning-um-guia-profundo-não-técnico) 33 | - [Relatos e experiências](#relatos-e-experiências) 34 | - [Livros para iniciantes](#livros-para-iniciantes) 35 | - [Livros para prática](#livros-para-prática) 36 | - [Competições de conhecimento Kaggle](#competições-de-conhecimento-kaggle) 37 | - [Video Series](#video-series) 38 | - [MOOC](#mooc) 39 | - [Pesquisas](pesquisas) 40 | - [Torna-se um contribuidor Open Source](#torne-se-um-contribuidor-open-sourse) 41 | - [Communidades](#comunidades) 42 | - [My admired companies](#my-admired-companies) 43 | 44 | --- 45 | 46 | ## Por que usar? 47 | 48 | Eu estou seguindo este plano para me preparar para meu próximo futuro emprego: Engenheiro de Machine Learning. Venho construindo aplicativos nativos móveis (iOS/Android/Blackberry) desde 2011. Eu tenho um diploma de engenharia de Software, não um diploma de Ciência da Computação. Tenho um pouco de conhecimentos básicos sobre: cálculo, Álgebra Linear, matemática discreta, probabilidade e estatística na Universidade. 49 | 50 | Pense sobre meu interesse em Machine Learning: 51 | 52 | - [Posso aprender e arrumar um emprego em Machine Learning sem estudar mestrado e Phd em Ciência da Computação?](https://www.quora.com/Can-I-learn-and-get-a-job-in-Machine-Learning-without-studying-CS-Master-and-PhD) 53 | - *"Você pode, mas isto é muito mais difícil do que quando eu entrei no campo."* [Drac Smith](https://www.quora.com/Can-I-learn-and-get-a-job-in-Machine-Learning-without-studying-CS-Master-and-PhD/answer/Drac-Smith?srid=oT0p) 54 | 55 | - [Como eu consigo um emprego em Machine Learning como um programador de software que auto-estudou Machine Learning, mas nunca teve a chance de usar isso no trabalho?](https://www.quora.com/How-do-I-get-a-job-in-Machine-Learning-as-a-software-programmer-who-self-studies-Machine-Learning-but-never-has-a-chance-to-use-it-at-work) 56 | - *"Estou contratando especialistas de Machine Learning para minha equipe e seu MOOC não vai conseguir para você o trabalho (há melhores notícias abaixo). Na verdade, muitas pessoas com um mestrado em Machine Learning não terão o emprego porque eles (e a maioria que tomaram MOOC) não têm uma compreensão profunda que vai me ajudar a resolver os meus problemas."* [Ross C. Taylor](https://www.quora.com/How-do-I-get-a-job-in-Machine-Learning-as-a-software-programmer-who-self-studies-Machine-Learning-but-never-has-a-chance-to-use-it-at-work/answer/Ross-C-Taylor?srid=oT0p) 57 | 58 | - [Que habilidades são necessárias para trabalhos de Machine Learning?](http://programmers.stackexchange.com/questions/79476/what-skills-are-needed-for-machine-learning-jobs) 59 | - *"Primeiramente, você precisa ter um decente background de Ciência da Computação/Matemática. ML é um tópico avançado, então a maioria dos livros didáticos assumem que você tem esse background. Por segundo, Machine Learning é um tema muito geral com várias sub especialidades que exigem habilidades únicas. Você pode querer procurar o currículo de um programa de MS em Machine Learning para ver o curso, o currículo e livro didático."* [Uri](http://softwareengineering.stackexchange.com/a/79717) 60 | - *"Estatística, propabilidade, computação distribuída e estatística."* [Hydrangea](http://softwareengineering.stackexchange.com/a/79575) 61 | 62 | Eu me encontro em tempos difíceis. 63 | 64 | AFAIK, [Há dois lados para Machine Learning](http://machinelearningmastery.com/programmers-can-get-into-machine-learning/): 65 | - Prática de Machine Learning: Isto é sobre bancos de dados de consultas, limpeza de dados, escrevendo scripts para transformar dados e colagem de algoritmo e bibliotecas juntos e escrever código personalizado para espremer respostas confiáveis de dados para satisfazer as perguntas difíceis e mal definidas. É a porcaria da realidade. 66 | - Teoria de Machine Learning: Isto é sobre matemática e abstração e cenários idealizados e limites e beleza e informando o que é possível. É muito mais puro e mais limpo e removido da confusão da realidade. 67 | 68 | Eu acho que a melhor maneira para metodologia centrada na prática é algo como ['prática - aprendizagem - prática'](http://machinelearningmastery.com/machine-learning-for-programmers/#comment-358985), que significa onde estudantes primeiro vêm com alguns projetos existentes com problemas e soluções (prática) para se familiarizar com os métodos tradicionais na área e talvez também com sua metodologia.Depois de praticar com algumas experiências elementares, podem ir para os livros e estudar a teoria subjacente, que serve para guiar a sua futura prática avançada e reforçará a sua caixa de ferramentas de solução de problemas práticos. Estudar a teoria também melhora ainda mais sua compreensão sobre as experiências elementares e irá ajudá-los a adquirir experiências avançadas mais rapidamente. 69 | 70 | É um plano longo. Isso vai demorar anos para mim. Se você já está familiarizado com bastante disso já, você levará muito menos tempo. 71 | 72 | ## Como usar 73 | Tudo abaixo é uma estrutura de tópicos, e você deve enfrentar os itens em ordem de cima para baixo. 74 | 75 | Eu estou usando o especial Markdown do Github, incluindo a lista de tarefas para verificar o progresso. 76 | 77 | - [x] Crie um novo branch, então você poderá verificar itens como esse, apenas coloque um x entre os colchetes. 78 | 79 | [More about Github-flavored markdown](https://guides.github.com/features/mastering-markdown/#GitHub-flavored-markdown) 80 | 81 | ## Siga-me 82 | Eu sou um engenheiro de Software vietnamita que é realmente apaixonado e quer trabalhar nos EUA. 83 | 84 | Quanto eu trabalhei durante este plano? Aproximadamente 4 horas/noite após um dia longo no trabalho. 85 | 86 | Eu estou na jornada. 87 | 88 | | | 89 | |:---:| 90 | | USA as heck | 91 | 92 | ## Não sinta que não é inteligente o bastante 93 | Fico desencorajado por livros e cursos que me dizem que o quanto antes eu puder, cálculo multivariável, inferencial e álgebra linear são pré-requisitos. Ainda não sei como começar... 94 | 95 | - [What if I'm Not Good at Mathematics](http://machinelearningmastery.com/what-if-im-not-good-at-mathematics/) 96 | - [5 Techniques To Understand Machine Learning Algorithms Without the Background in Mathematics](http://machinelearningmastery.com/techniques-to-understand-machine-learning-algorithms-without-the-background-in-mathematics/) 97 | - [How do I learn machine learning?](https://www.quora.com/Machine-Learning/How-do-I-learn-machine-learning-1) 98 | 99 | ## Sobre Video Resources 100 | 101 | Alguns vídeos estão disponíveis apenas registrando-se em uma classe Coursera ou EdX. É de graça, mas às vezes as classes já não estão em sessão, então você tem que esperar uns meses, se não, não terá acesso. 102 | Eu vou estar adicionando mais vídeos de fontes públicas e substituindo os vídeos do curso on-line ao longo do tempo. Eu gosto de usar palestras de universidade. 103 | 104 | ## Conhecimento prévio 105 | 106 | Esta seção curta foram pré-requisitos/informações interessantes que eu queria aprender antes de começar o plano diário. 107 | 108 | - [ ] [What is the difference between Data Analytics, Data Analysis, Data Mining, Data Science, Machine Learning, and Big Data?](https://www.quora.com/What-is-the-difference-between-Data-Analytics-Data-Analysis-Data-Mining-Data-Science-Machine-Learning-and-Big-Data-1) 109 | - [ ] [Learning How to Learn](https://www.coursera.org/learn/learning-how-to-learn) 110 | - [ ] [Don't Break The Chain](http://lifehacker.com/281626/jerry-seinfelds-productivity-secret) 111 | - [ ] [How to learn on your own](https://metacademy.org/roadmaps/rgrosse/learn_on_your_own) 112 | 113 | ## O Plano Diário 114 | 115 | Cada assunto não requer um dia inteiro para ser capaz de compreendê-lo totalmente, e você pode fazer vários desses em um dia. 116 | 117 | Cada dia eu pego um assunto da lista abaixo, leia de capa a capa, tome nota, faça os exercícios e escreva uma implementação em Python ou R. 118 | 119 | # Motivação 120 | - [ ] [Dream](https://www.youtube.com/watch?v=g-jwWYX7Jlo) 121 | 122 | ## Visão geral do Machine learning 123 | - [ ] [A Visual Introduction to Machine Learning](http://www.r2d3.us/visual-intro-to-machine-learning-part-1/) 124 | - [ ] [A Gentle Guide to Machine Learning](https://blog.monkeylearn.com/a-gentle-guide-to-machine-learning/) 125 | - [ ] [Machine Learning basics for a newbie](https://www.analyticsvidhya.com/blog/2015/06/machine-learning-basics/) 126 | 127 | ## Maestria do Machine learning 128 | - [ ] [The Machine Learning Mastery Method](http://machinelearningmastery.com/machine-learning-mastery-method/) 129 | - [ ] [Machine Learning for Programmers](http://machinelearningmastery.com/machine-learning-for-programmers/) 130 | - [ ] [Applied Machine Learning with Machine Learning Mastery](http://machinelearningmastery.com/start-here/) 131 | - [ ] [Python Machine Learning Mini-Course](http://machinelearningmastery.com/python-machine-learning-mini-course/) 132 | - [ ] [Machine Learning Algorithms Mini-Course](http://machinelearningmastery.com/machine-learning-algorithms-mini-course/) 133 | 134 | ## Machine learning é divertido 135 | - [ ] [Machine Learning is Fun!](https://medium.com/@ageitgey/machine-learning-is-fun-80ea3ec3c471#.37ue6caww) 136 | - [ ] [Part 2: Using Machine Learning to generate Super Mario Maker levels](https://medium.com/@ageitgey/machine-learning-is-fun-part-2-a26a10b68df3#.kh7qgvp1b) 137 | - [ ] [Part 3: Deep Learning and Convolutional Neural Networks](https://medium.com/@ageitgey/machine-learning-is-fun-part-3-deep-learning-and-convolutional-neural-networks-f40359318721#.44rhxy637) 138 | - [ ] [Part 4: Modern Face Recognition with Deep Learning](https://medium.com/@ageitgey/machine-learning-is-fun-part-4-modern-face-recognition-with-deep-learning-c3cffc121d78#.3rwmq0ddc) 139 | - [ ] [Part 5: Language Translation with Deep Learning and the Magic of Sequences](https://medium.com/@ageitgey/machine-learning-is-fun-part-5-language-translation-with-deep-learning-and-the-magic-of-sequences-2ace0acca0aa#.wyfthap4c) 140 | 141 | ## Machine learning: um guia profundo, não técnico 142 | - [ ] [Overview, goals, learning types, and algorithms](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide/) 143 | - [ ] [Data selection, preparation, and modeling](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-2/) 144 | - [ ] [Model evaluation, validation, complexity, and improvement](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-3/) 145 | - [ ] [Model performance and error analysis](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-4/) 146 | - [ ] [Unsupervised learning, related fields, and machine learning in practice](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-5/) 147 | 148 | ## Relatos e experiências 149 | - [ ] [Machine Learning in a Week](https://medium.com/learning-new-stuff/machine-learning-in-a-week-a0da25d59850#.tk6ft2kcg) 150 | - [ ] [Machine Learning in a Year](https://medium.com/learning-new-stuff/machine-learning-in-a-year-cdb0b0ebd29c#.hhcb9fxk1) 151 | - [ ] [Learning Path : Your mentor to become a machine learning expert](https://www.analyticsvidhya.com/learning-path-learn-machine-learning/) 152 | - [ ] [You Too Can Become a Machine Learning Rock Star! No PhD](https://backchannel.com/you-too-can-become-a-machine-learning-rock-star-no-phd-necessary-107a1624d96b#.g9p16ldp7) 153 | - [ ] How to become a Data Scientist in 6 months: A hacker’s approach to career planning 154 | - [Video](https://www.youtube.com/watch?v=rIofV14c0tc) 155 | - [Slide](http://www.slideshare.net/TetianaIvanova2/how-to-become-a-data-scientist-in-6-months) 156 | - [ ] [5 Skills You Need to Become a Machine Learning Engineer](http://blog.udacity.com/2016/04/5-skills-you-need-to-become-a-machine-learning-engineer.html) 157 | - [ ] [Are you a self-taught machine learning engineer? If yes, how did you do it & how long did it take you?](https://www.quora.com/Are-you-a-self-taught-machine-learning-engineer-If-yes-how-did-you-do-it-how-long-did-it-take-you) 158 | - [ ] [How can one become a good machine learning engineer?](https://www.quora.com/How-can-one-become-a-good-machine-learning-engineer) 159 | 160 | ## Livros para iniciantes 161 | - [ ] [Data Smart: Using Data Science to Transform Information into Insight 1st Edition](https://www.amazon.com/Data-Smart-Science-Transform-Information/dp/111866146X) 162 | - [ ] [Data Science for Business: What you need to know about data mining and data analytic-thinking](https://www.amazon.com/Data-Science-Business-Data-Analytic-Thinking/dp/1449361323/) 163 | - [ ] [Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die](https://www.amazon.com/Predictive-Analytics-Power-Predict-Click/dp/1118356853) 164 | 165 | ## Livros para prática 166 | - [ ] [Machine Learning for Hackers](https://www.amazon.com/Machine-Learning-Hackers-Drew-Conway/dp/1449303714) 167 | - [GitHub repository](https://github.com/johnmyleswhite/ML_for_Hackers) 168 | - [ ] [Python Machine Learning](https://www.amazon.com/Python-Machine-Learning-Sebastian-Raschka-ebook/dp/B00YSILNL0) 169 | - [GitHub repository](https://github.com/rasbt/python-machine-learning-book) 170 | - [ ] [Programming Collective Intelligence: Building Smart Web 2.0 Applications](https://www.amazon.com/Programming-Collective-Intelligence-Building-Applications-ebook/dp/B00F8QDZWG) 171 | - [ ] [Machine Learning: An Algorithmic Perspective, Second Edition](https://www.amazon.com/Machine-Learning-Algorithmic-Perspective-Recognition/dp/1466583282) 172 | - [GitHub repository](https://github.com/alexsosn/MarslandMLAlgo) 173 | - [Resource repository](http://seat.massey.ac.nz/personal/s.r.marsland/MLbook.html) 174 | - [ ] [Introduction to Machine Learning with Python: A Guide for Data Scientists](http://shop.oreilly.com/product/0636920030515.do) 175 | - [GitHub repository](https://github.com/amueller/introduction_to_ml_with_python) 176 | - [ ] [Data Mining: Practical Machine Learning Tools and Techniques, Third Edition](https://www.amazon.com/Data-Mining-Practical-Techniques-Management/dp/0123748569) 177 | - Teaching material 178 | - [Slides for Chapters 1-5 (zip)](http://www.cs.waikato.ac.nz/ml/weka/Slides3rdEd_Ch1-5.zip) 179 | - [Slides for Chapters 6-8 (zip)](http://www.cs.waikato.ac.nz/ml/weka/Slides3rdEd_Ch6-8.zip) 180 | - [ ] [Machine Learning in Action](https://www.amazon.com/Machine-Learning-Action-Peter-Harrington/dp/1617290181/) 181 | - [GitHub repository](https://github.com/pbharrin/machinelearninginaction) 182 | - [ ] [An Introduction to Statistical Learning](http://www-bcf.usc.edu/~gareth/ISL/) 183 | 184 | ## Competições de conhecimento Kaggle 185 | - [ ] [Kaggle Competitions: How and where to begin?](https://www.analyticsvidhya.com/blog/2015/06/start-journey-kaggle/) 186 | - [ ] [How a Beginner Used Small Projects To Get Started in Machine Learning and Compete on Kaggle](http://machinelearningmastery.com/how-a-beginner-used-small-projects-to-get-started-in-machine-learning-and-compete-on-kaggle) 187 | - [ ] [Master Kaggle By Competing Consistently](http://machinelearningmastery.com/master-kaggle-by-competing-consistently/) 188 | 189 | 190 | ## Video Series 191 | - [ ] [Machine Learning for Hackers](https://www.youtube.com/playlist?list=PL2-dafEMk2A4ut2pyv0fSIXqOzXtBGkLj) 192 | - [ ] [Fresh Machine Learning](https://www.youtube.com/playlist?list=PL2-dafEMk2A6Kc7pV6gHH-apBFxwFjKeY) 193 | - [ ] [Machine Learning Recipes with Josh Gordon](https://www.youtube.com/playlist?list=PLOU2XLYxmsIIuiBfYad6rFYQU_jL2ryal) 194 | - [ ] [Everything You Need to know about Machine Learning in 30 Minutes or Less](https://vimeo.com/43547079) 195 | 196 | ## MOOC 197 | - [ ] [Udacity's Intro to Machine Learning](https://www.udacity.com/course/intro-to-machine-learning--ud120) 198 | - [Udacity Intro to Machine Learning Review](http://hamelg.blogspot.com/2014/12/udacity-intro-to-machine-learning-review.html) 199 | - [ ] [Udacity's Supervised, Unsupervised & Reinforcement](https://www.udacity.com/course/machine-learning--ud262) 200 | - [ ] [Machine Learning Foundations: A Case Study Approach](https://www.coursera.org/learn/ml-foundations) 201 | - [ ] [Coursera's Machine Learning](https://www.coursera.org/learn/machine-learning) 202 | - [Video only](https://www.youtube.com/playlist?list=PLZ9qNFMHZ-A4rycgrgOYma6zxF4BZGGPW) 203 | - [Coursera Machine Learning review](https://rayli.net/blog/data/coursera-machine-learning-review/) 204 | - [Coursera: Machine Learning Roadmap](https://metacademy.org/roadmaps/cjrd/coursera_ml_supplement) 205 | 206 | ## Pesquisas 207 | - [ ] [Machine Learning for Developers](https://xyclade.github.io/MachineLearning/) 208 | - [ ] [Machine Learning Advice for Developers](https://dev.to/thealexlavin/machine-learning-advice-for-developers) 209 | - [ ] [Machine Learning For Complete Beginners](http://pythonforengineers.com/machine-learning-for-complete-beginners/) 210 | - [ ] [Machine Learning Self-study Resources](https://ragle.sanukcode.net/articles/machine-learning-self-study-resources/) 211 | - [ ] [Level-Up Your Machine Learning](https://metacademy.org/roadmaps/cjrd/level-up-your-ml) 212 | - [ ] [Enough Machine Learning to Make Hacker News Readable Again](https://speakerdeck.com/pycon2014/enough-machine-learning-to-make-hacker-news-readable-again-by-ned-jackson-lovely) 213 | 214 | ## Torne-se um contribuidor Open Sourse 215 | - [ ] [tensorflow/magenta: Magenta: Music and Art Generation with Machine Intelligence](https://github.com/tensorflow/magenta) 216 | - [ ] [tensorflow/tensorflow: Computation using data flow graphs for scalable machine learning](https://github.com/tensorflow/tensorflow) 217 | - [ ] [cmusatyalab/openface: Face recognition with deep neural networks.](https://github.com/cmusatyalab/openface) 218 | - [ ] [tensorflow/models/syntaxnet: Neural Models of Syntax.](https://github.com/tensorflow/models/tree/master/syntaxnet) 219 | 220 | ## Comunidades 221 | - ### Quora 222 | - [Machine Learning](https://www.quora.com/topic/Machine-Learning) 223 | - [Statistics](https://www.quora.com/topic/Statistics-academic-discipline) 224 | - [Data Mining](https://www.quora.com/topic/Data-Mining) 225 | 226 | - ### Reddit 227 | - [Machine Learning](https://www.reddit.com/r/machinelearning) 228 | 229 | - ### [Data Tau](http://www.datatau.com/) 230 | 231 | ## My admired companies 232 | - [ ] [ELSA - Your virtual pronunciation coach](https://www.elsanow.io/home) 233 | -------------------------------------------------------------------------------- /README-zh-CN.md: -------------------------------------------------------------------------------- 1 | # 自上而下的学习路线: 软件工程师的机器学习 2 | 3 | 4 | 灵感来源于 [谷歌面试学习手册](https://github.com/jwasham/google-interview-university/blob/master/README-cn.md) 5 | 6 | 7 | > * 原文地址:[Machine Learning for Software Engineers](https://github.com/ZuzooVn/machine-learning-for-software-engineers) 8 | > * 原文作者:[ZuzooVn(Nam Vu)](https://github.com/ZuzooVn) 9 | > * 翻译:[lsvih](https://github.com/lsvih) 10 | 11 | 12 | ## 这是? 13 | 14 | 这是本人为期数月的学习计划。我正要从一名移动端软件开发者(自学,无计科文凭)转型成为一名机器学习工程师。 15 | 16 | 我的主要目标是找到一种以实践为主的学习方法,并为初学者抽象掉大多数的数学概念。 17 | 这种学习方法是非传统的,因为它是专门为软件工程师所设计的自上而下、以结果为导向的学习方法。 18 | 19 | 如果您想让它更好的话,随时欢迎您的贡献。 20 | 21 | --- 22 | 23 | ## 目录 24 | 25 | - [这是?](#这是) 26 | - [为何要用到它?](#为何要用到它) 27 | - [如何使用它?](#如何使用它) 28 | - [Follow me](#follow-me) 29 | - [别认为自己不够聪明](#别认为自己不够聪明) 30 | - [关于视频资源](#关于视频资源) 31 | - [预备知识](#预备知识) 32 | - [每日计划](#每日计划) 33 | - [动机](#动机) 34 | - [机器学习概论](#机器学习概论) 35 | - [掌握机器学习](#掌握机器学习) 36 | - [有趣的机器学习](#有趣的机器学习) 37 | - [机器学习简介](#机器学习简介) 38 | - [一本深入的机器学习指南](#一本深入的机器学习指南) 39 | - [故事与经验](#故事与经验) 40 | - [机器学习算法](#机器学习算法) 41 | - [入门书籍](#入门书籍) 42 | - [实用书籍](#实用书籍) 43 | - [Kaggle知识竞赛](#kaggle知识竞赛) 44 | - [系列视频](#系列视频) 45 | - [MOOC](#mooc) 46 | - [资源](#资源) 47 | - [成为一名开源贡献者](#成为一名开源贡献者) 48 | - [游戏](#游戏) 49 | - [播客](#播客) 50 | - [社区](#社区) 51 | - [相关会议](#相关会议) 52 | - [面试问题](#面试问题) 53 | - [我崇拜的公司](#我崇拜的公司) 54 | 55 | --- 56 | 57 | ## 为何要用到它? 58 | 59 | 我会为了我未来的工作————机器学习工程师 遵循这份计划。自2011年以来,我一直进行着移动端应用的开发(包括安卓、iOS与黑莓)。我有软件工程的文凭,但没有计算机科学的文凭。我仅仅在大学的时候学习过一点基础科学,包括微积分、线性代数、离散数学、概率论与统计。 60 | 我认真思考过我在机器学习方面的兴趣: 61 | - [我能在没有计科硕士、博士文凭的情况下找到一份关于机器学习的工作吗?](https://www.quora.com/Can-I-learn-and-get-a-job-in-Machine-Learning-without-studying-CS-Master-and-PhD) 62 | - *"你当然可以,但是我想进入这个领域则无比艰难。"* [Drac Smith](https://www.quora.com/Can-I-learn-and-get-a-job-in-Machine-Learning-without-studying-CS-Master-and-PhD/answer/Drac-Smith?srid=oT0p) 63 | - [我是一名软件工程师,我自学了机器学习,我如何在没有相关经验的情况下找到一份关于机器学习的工作?](https://www.quora.com/How-do-I-get-a-job-in-Machine-Learning-as-a-software-programmer-who-self-studies-Machine-Learning-but-never-has-a-chance-to-use-it-at-work) 64 | - *"我正在为我的团队招聘机器学习专家,但你的MOOC并不会给你带来工作机会。事实上,大多数机器学习方向的硕士也并不会得到工作机会,因为他们(与大多数上过MOOC的人一样)并没有深入地去理解。他们都没法帮助我的团队解决问题。"* [Ross C. Taylor](https://www.quora.com/How-do-I-get-a-job-in-Machine-Learning-as-a-software-programmer-who-self-studies-Machine-Learning-but-never-has-a-chance-to-use-it-at-work/answer/Ross-C-Taylor?srid=oT0p) 65 | - [找一份机器学习相关的工作需要掌握怎样的技能?](http://programmers.stackexchange.com/questions/79476/what-skills-are-needed-for-machine-learning-jobs) 66 | - *"首先,你得有正儿八经的计科或数学专业背景。ML是一个比较先进的课题,大多数的教材都会直接默认你有以上背景。其次,机器学习是一个集成了许多子专业的奇技淫巧的课题,你甚至会想看看MS的机器学习课程,去看看他们的授课、课程和教材。"* [Uri](http://softwareengineering.stackexchange.com/a/79717) 67 | - *"统计,假设,分布式计算,然后继续统计。"* [Hydrangea](http://softwareengineering.stackexchange.com/a/79575) 68 | 69 | 我深陷困境。 70 | 71 | 据我所知, [机器学习有两个方向](http://machinelearningmastery.com/programmers-can-get-into-machine-learning/): 72 | - 实用机器学习: 这个方向主要是查询数据库、数据清洗、写脚本来转化数据,把算法和库结合起来再加上一些定制化的代码,从数据中挤出一些准确的答案来证明一些困难且模糊不清的问题。实际上它非常混乱。 73 | - 理论机器学习: 这个方向主要是关于数学、抽象、理想状况、极限条件、典型例子以及一切可能的特征。这个方向十分的干净、整洁,远离混乱的现实。 74 | 75 | 我认为对于以实践为主的人来说,做好的方法就是 [“练习--学习--练习”](http://machinelearningmastery.com/machine-learning-for-programmers/#comment-358985),这意味着每个学生一开始就能参与一些现有项目与一些问题,并练习(解决)它们以熟悉传统的方法是怎么做的。在有了一些简单的练习经验之后,他们就可以开始钻进书里去学习理论知识。这些理论知识将帮助他们在将来进行更进一步的训练,充实他们解决实际问题的工具箱。学习理论知识还会加深他们对那些简单练习的理解,帮助他们更快地获得进阶的经验。 76 | 77 | 这是一个很长的计划,它花去了我一年的时间。如果你已经对它有所了解了,它将会让你省去很多时间。 78 | 79 | ## 如何使用它? 80 | 以下的内容全部是概要,你需要从上往下来解决这些项目。 81 | 82 | 我使用的是Github独特的flavored markdown的任务列表来检查我计划的进展。 83 | 84 | - [x] 创建一个新的分支,然后你可以这样来标出你已经完成的项目,只需要在框中填写一个x即可:[x] 85 | 86 | [了解更多有关 Github-flavored markdown的知识](https://guides.github.com/features/mastering-markdown/#GitHub-flavored-markdown) 87 | 88 | ## Follow me 89 | 我是一名非常非常想去美国工作的越南软件工程师。 90 | 91 | 我在这份计划中花多少时间?在每天的艰辛工作完成后,每晚花4小时。 92 | 93 | 我已经在实现梦想的旅途中了。 94 | 95 | - Twitter: [@Nam Vu](https://twitter.com/zuzoovn) 96 | 97 | | | 98 | |:---:| 99 | | USA as heck | 100 | 101 | ## 别认为自己不够聪明 102 | 当我打开书本,发现他们告诉我多元微积分、统计与推理、线性代数是学习机器学习的先决条件的时候,我非常沮丧。因为我不知道从哪儿开始… 103 | 104 | - [我数学不好怎么办](http://machinelearningmastery.com/what-if-im-not-good-at-mathematics/) 105 | - [没有数学专业背景而理解机器学习算法的5种技巧](http://machinelearningmastery.com/techniques-to-understand-machine-learning-algorithms-without-the-background-in-mathematics/) 106 | - [我是如何学习机器学习的?](https://www.quora.com/Machine-Learning/How-do-I-learn-machine-learning-1) 107 | 108 | ## 关于视频资源 109 | 110 | 部分视频只有在Coursera、EdX的课程注册了才能观看。虽然它们是免费的,但有些时间段这些课程并不开放,你可能需要等上一段时间(可能是好几个月)。我将会加上更多的公开的视频源来代替这些在线课程的视频。我很喜欢大学的讲座。 111 | 112 | ## 预备知识 113 | 114 | 这个小章节是一些在每日计划开始前我想去了解的一些预备知识与一些有趣的信息。 115 | 116 | - [ ] [Data Analytics,Data Analysis,数据挖掘,数据科学,机器学习,大数据的区别是什么?](https://www.quora.com/What-is-the-difference-between-Data-Analytics-Data-Analysis-Data-Mining-Data-Science-Machine-Learning-and-Big-Data-1) 117 | - [ ] [学习如何去学习](https://www.coursera.org/learn/learning-how-to-learn) 118 | - [ ] [不要斩断锁链](http://lifehacker.com/281626/jerry-seinfelds-productivity-secret) 119 | - [ ] [如何自学](https://metacademy.org/roadmaps/rgrosse/learn_on_your_own) 120 | 121 | ## 每日计划 122 | 123 | 每个主题都不需要用一整天来完全理解它们,你可以每天完成它们中的多个。 124 | 125 | 每天我都会从下面的列表中选一个出来,一遍又一遍的读,做笔记,练习,用Python或R语言实现它。 126 | 127 | # 动机 128 | - [ ] [梦](https://www.youtube.com/watch?v=g-jwWYX7Jlo) 129 | 130 | ## 机器学习概论 131 | - [ ] [形象的机器学习简介](http://www.r2d3.us/visual-intro-to-machine-learning-part-1/) 132 | - [ ] [一份温柔的机器学习指南](https://blog.monkeylearn.com/a-gentle-guide-to-machine-learning/) 133 | - [ ] [为开发者准备的机器学习简介](http://blog.algorithmia.com/introduction-machine-learning-developers/) 134 | - [ ] [菜鸟的机器学习基础](https://www.analyticsvidhya.com/blog/2015/06/machine-learning-basics/) 135 | - [ ] [你如何向非计算机专业的人来解释机器学习与数据挖掘?](https://www.quora.com/How-do-you-explain-Machine-Learning-and-Data-Mining-to-non-Computer-Science-people) 136 | - [ ] [在罩子下的机器学习,博文简单明了地介绍了机器学习的原理](https://georgemdallas.wordpress.com/2013/06/11/big-data-data-mining-and-machine-learning-under-the-hood/) 137 | - [ ] [机器学习是什么?它是如何工作的呢?](https://www.youtube.com/watch?v=elojMnjn4kk&list=PL5-da3qGB5ICeMbQuqbbCOQWcS6OYBr5A&index=1) 138 | - [ ] [深度学习——一份非技术性的简介](http://www.slideshare.net/AlfredPong1/deep-learning-a-nontechnical-introduction-69385936) 139 | 140 | ## 掌握机器学习 141 | - [ ] [掌握机器学习的方法](http://machinelearningmastery.com/machine-learning-mastery-method/) 142 | - [ ] [程序员的机器学习](http://machinelearningmastery.com/machine-learning-for-programmers/) 143 | - [ ] [掌握并运用机器学习](http://machinelearningmastery.com/start-here/) 144 | - [ ] [Python机器学习小课程](http://machinelearningmastery.com/python-machine-learning-mini-course/) 145 | - [ ] [机器学习算法小课程](http://machinelearningmastery.com/machine-learning-algorithms-mini-course/) 146 | 147 | ## 有趣的机器学习 148 | - [ ] [机器学习真有趣!](https://medium.com/@ageitgey/machine-learning-is-fun-80ea3ec3c471#.37ue6caww) 149 | - [ ] [Part 2: 使用机器学习来创造超级马里奥的关卡](https://medium.com/@ageitgey/machine-learning-is-fun-part-2-a26a10b68df3#.kh7qgvp1b) 150 | - [ ] [Part 3: 深度学习与卷积神经网络](https://medium.com/@ageitgey/machine-learning-is-fun-part-3-deep-learning-and-convolutional-neural-networks-f40359318721#.44rhxy637) 151 | - [ ] [Part 4: 现代人脸识别与深度学习](https://medium.com/@ageitgey/machine-learning-is-fun-part-4-modern-face-recognition-with-deep-learning-c3cffc121d78#.3rwmq0ddc) 152 | - [ ] [Part 5: 翻译与深度学习和序列的魔力](https://medium.com/@ageitgey/machine-learning-is-fun-part-5-language-translation-with-deep-learning-and-the-magic-of-sequences-2ace0acca0aa#.wyfthap4c) 153 | - [ ] [Part 6: 如何使用深度学习进行语音识别](https://medium.com/@ageitgey/machine-learning-is-fun-part-6-how-to-do-speech-recognition-with-deep-learning-28293c162f7a#.lhr1nnpcy) 154 | - [ ] [Part 7: 使用生成式对抗网络创造 8 像素艺术](https://medium.com/@ageitgey/abusing-generative-adversarial-networks-to-make-8-bit-pixel-art-e45d9b96cee7) 155 | 156 | ## [机器学习简介](https://triskell.github.io/2016/11/15/Inky-Machine-Learning.html)(用手指沾上墨水来书写机器学习简介) 157 | - [ ] [Part 1 : 什么是机器学习?](https://triskell.github.io/2016/10/23/What-is-Machine-Learning.html) 158 | - [ ] [Part 2 : 监督学习与非监督学习](https://triskell.github.io/2016/11/13/Supervised-Learning-and-Unsupervised-Learning.html) 159 | 160 | ## 一本深入的机器学习指南 161 | - [ ] [概述,目标,学习类型和算法](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide/) 162 | - [ ] [数据的选择,准备与建模](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-2/) 163 | - [ ] [模型的评估,验证,复杂性与改进](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-3/) 164 | - [ ] [模型性能与误差分析](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-4/) 165 | - [ ] [无监督学习,相关领域与实践中的机器学习](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-5/) 166 | 167 | ## 故事与经验 168 | - [ ] [一周的机器学习](https://medium.com/learning-new-stuff/machine-learning-in-a-week-a0da25d59850#.tk6ft2kcg) 169 | - [ ] [一年的机器学习](https://medium.com/learning-new-stuff/machine-learning-in-a-year-cdb0b0ebd29c#.hhcb9fxk1) 170 | - [ ] [我是如何在3天内写出我的第一个机器学习程序的](http://blog.adnansiddiqi.me/how-i-wrote-my-first-machine-learning-program-in-3-days/) 171 | - [ ] [学习路径:你成为机器学习专家的导师](https://www.analyticsvidhya.com/learning-path-learn-machine-learning/) 172 | - [ ] [不是PhD你也可以成为机器学习的摇滚明星](https://backchannel.com/you-too-can-become-a-machine-learning-rock-star-no-phd-necessary-107a1624d96b#.g9p16ldp7) 173 | - [ ] 如何6个月成为一名数据科学家:一名黑客的职业规划 174 | - [视频](https://www.youtube.com/watch?v=rIofV14c0tc) 175 | - [幻灯片](http://www.slideshare.net/TetianaIvanova2/how-to-become-a-data-scientist-in-6-months) 176 | - [ ] [5个你成为机器学习工程师必须要掌握的技能](http://blog.udacity.com/2016/04/5-skills-you-need-to-become-a-machine-learning-engineer.html) 177 | - [ ] [你是一个自学成才的机器学习工程师吗?你是怎么做的?花了多长时间?](https://www.quora.com/Are-you-a-self-taught-machine-learning-engineer-If-yes-how-did-you-do-it-how-long-did-it-take-you) 178 | - [ ] [一个人如何成为一名优秀的机器学习工程师?](https://www.quora.com/How-can-one-become-a-good-machine-learning-engineer) 179 | - [ ] [一个专注于机器学习的学术假期](http://karlrosaen.com/ml/) 180 | 181 | ## 机器学习算法 182 | - [ ] [用“士兵”来表示10种机器学习算法](https://www.analyticsvidhya.com/blog/2015/12/10-machine-learning-algorithms-explained-army-soldier/) 183 | - [ ] [Top10的数据挖掘算法](https://rayli.net/blog/data/top-10-data-mining-algorithms-in-plain-english/) 184 | - [ ] [介绍10种机器学习的术语](http://blog.aylien.com/10-machine-learning-terms-explained-in-simple/) 185 | - [ ] [机器学习算法之旅](http://machinelearningmastery.com/a-tour-of-machine-learning-algorithms/) 186 | - [ ] [机器学习工程师需要知道的10种算法](https://gab41.lab41.org/the-10-algorithms-machine-learning-engineers-need-to-know-f4bb63f5b2fa#.ofc7t2965) 187 | - [ ] [比较监督学习算法](http://www.dataschool.io/comparing-supervised-learning-algorithms/) 188 | - [收集的最简化、可执行的机器学习算法](https://github.com/rushter/MLAlgorithms) 189 | 190 | ## 入门书籍 191 | - [ ] [《Data Smart: Using Data Science to Transform Information into Insight》第 1 版](https://www.amazon.com/Data-Smart-Science-Transform-Information/dp/111866146X) 192 | - [ ] [《Data Science for Business: What you need to know about data mining and data analytic-thinking》](https://www.amazon.com/Data-Science-Business-Data-Analytic-Thinking/dp/1449361323/) 193 | - [ ] [《Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die》](https://www.amazon.com/Predictive-Analytics-Power-Predict-Click/dp/1118356853) 194 | 195 | ## 实用书籍 196 | - [ ] [Hacker 的机器学习](https://www.amazon.com/Machine-Learning-Hackers-Drew-Conway/dp/1449303714) 197 | - [GitHub repository(R)](https://github.com/johnmyleswhite/ML_for_Hackers) 198 | - [GitHub repository(Python)](https://github.com/carljv/Will_it_Python) 199 | - [ ] [Python 机器学习](https://www.amazon.com/Python-Machine-Learning-Sebastian-Raschka-ebook/dp/B00YSILNL0) 200 | - [GitHub repository](https://github.com/rasbt/python-machine-learning-book) 201 | - [ ] [集体智慧编程: 创建智能 Web 2.0 应用](https://www.amazon.com/Programming-Collective-Intelligence-Building-Applications-ebook/dp/B00F8QDZWG) 202 | - [ ] [机器学习: 算法视角,第二版](https://www.amazon.com/Machine-Learning-Algorithmic-Perspective-Recognition/dp/1466583282) 203 | - [GitHub repository](https://github.com/alexsosn/MarslandMLAlgo) 204 | - [Resource repository](http://seat.massey.ac.nz/personal/s.r.marsland/MLbook.html) 205 | - [ ] [Python 机器学习简介: 数据科学家指南](http://shop.oreilly.com/product/0636920030515.do) 206 | - [GitHub repository](https://github.com/amueller/introduction_to_ml_with_python) 207 | - [ ] [数据挖掘: 机器学习工具与技术实践,第 3 版](https://www.amazon.com/Data-Mining-Practical-Techniques-Management/dp/0123748569) 208 | - Teaching material 209 | - [1-5 章幻灯片(zip)](http://www.cs.waikato.ac.nz/ml/weka/Slides3rdEd_Ch1-5.zip) 210 | - [6-8 章幻灯片(zip)](http://www.cs.waikato.ac.nz/ml/weka/Slides3rdEd_Ch6-8.zip) 211 | - [ ] [Machine Learning in Action](https://www.amazon.com/Machine-Learning-Action-Peter-Harrington/dp/1617290181/) 212 | - [GitHub repository](https://github.com/pbharrin/machinelearninginaction) 213 | - [ ] [Reactive Machine Learning Systems(MEAP)](https://www.manning.com/books/reactive-machine-learning-systems) 214 | - [GitHub repository](https://github.com/jeffreyksmithjr/reactive-machine-learning-systems) 215 | - [ ] [An Introduction to Statistical Learning](http://www-bcf.usc.edu/~gareth/ISL/) 216 | - [GitHub repository(R)](http://www-bcf.usc.edu/~gareth/ISL/code.html) 217 | - [GitHub repository(Python)](https://github.com/JWarmenhoven/ISLR-python) 218 | - [视频](http://www.dataschool.io/15-hours-of-expert-machine-learning-videos/) 219 | - [ ] [使用 Python 构建机器学习系统](https://www.packtpub.com/big-data-and-business-intelligence/building-machine-learning-systems-python) 220 | - [GitHub repository](https://github.com/luispedro/BuildingMachineLearningSystemsWithPython) 221 | - [ ] [学习 scikit-learn: 用 Python 进行机器学习](https://www.packtpub.com/big-data-and-business-intelligence/learning-scikit-learn-machine-learning-python) 222 | - [GitHub repository](https://github.com/gmonce/scikit-learn-book) 223 | - [ ] [Probabilistic Programming & Bayesian Methods for Hackers](https://camdavidsonpilon.github.io/Probabilistic-Programming-and-Bayesian-Methods-for-Hackers/) 224 | - [ ] [Probabilistic Graphical Models: Principles and Techniques](https://www.amazon.com/Probabilistic-Graphical-Models-Principles-Computation/dp/0262013193) 225 | - [ ] [Machine Learning: Hands-On for Developers and Technical Professionals](https://www.amazon.com/Machine-Learning-Hands-Developers-Professionals/dp/1118889061) 226 | - [Machine Learning Hands-On for Developers and Technical Professionals review](https://blogs.msdn.microsoft.com/querysimon/2015/01/01/book-review-machine-learning-hands-on-for-developers-and-technical-professionals/) 227 | - [GitHub repository](https://github.com/jasebell/mlbook) 228 | - [ ] [从数据中学习](https://www.amazon.com/Learning-Data-Yaser-S-Abu-Mostafa/dp/1600490069) 229 | - [在线教程](https://work.caltech.edu/telecourse.html) 230 | - [ ] [强化学习——简介(第 2 版)](https://webdocs.cs.ualberta.ca/~sutton/book/the-book-2nd.html) 231 | - [GitHub repository](https://github.com/ShangtongZhang/reinforcement-learning-an-introduction) 232 | - [ ] [使用TensorFlow(MEAP)进行机器学习](https://www.manning.com/books/machine-learning-with-tensorflow) 233 | - [GitHub repository](https://github.com/BinRoot/TensorFlow-Book) 234 | 235 | ## Kaggle知识竞赛 236 | - [ ] [Kaggle竞赛:怎么样,在哪里开始?](https://www.analyticsvidhya.com/blog/2015/06/start-journey-kaggle/) 237 | - [ ] [一个初学者如何用一个小项目在机器学习入门并在Kaggle竞争](http://machinelearningmastery.com/how-a-beginner-used-small-projects-to-get-started-in-machine-learning-and-compete-on-kaggle) 238 | - [ ] [如何竞争Kaggle的Master](http://machinelearningmastery.com/master-kaggle-by-competing-consistently/) 239 | 240 | ## 系列视频 241 | - [ ] [Machine Learning for Hackers](https://www.youtube.com/playlist?list=PL2-dafEMk2A4ut2pyv0fSIXqOzXtBGkLj) 242 | - [ ] [Fresh Machine Learning](https://www.youtube.com/playlist?list=PL2-dafEMk2A6Kc7pV6gHH-apBFxwFjKeY) 243 | - [ ] [Josh Gordon 的机器学习菜谱](https://www.youtube.com/playlist?list=PLOU2XLYxmsIIuiBfYad6rFYQU_jL2ryal) 244 | - [ ] [在 30 分钟以内了解机器学习的一切](https://vimeo.com/43547079) 245 | - [ ] [一份友好的机器学习简介](https://www.youtube.com/watch?v=IpGxLWOIZy4) 246 | - [ ] [Nuts and Bolts of Applying Deep Learning - Andrew Ng](https://www.youtube.com/watch?v=F1ka6a13S9I) 247 | - [ ] BigML Webinar 248 | - [视频](https://www.youtube.com/watch?list=PL1bKyu9GtNYHcjGa6ulrvRVcm1lAB8he3&v=W62ehrnOVqo) 249 | - [资源](https://bigml.com/releases) 250 | - [ ] [mathematicalmonk's Machine Learning tutorials](https://www.youtube.com/playlist?list=PLD0F06AA0D2E8FFBA) 251 | - [ ] [Machine learning in Python with scikit-learn](https://www.youtube.com/playlist?list=PL5-da3qGB5ICeMbQuqbbCOQWcS6OYBr5A) 252 | - [GitHub repository](https://github.com/justmarkham/scikit-learn-videos) 253 | - [博客](http://blog.kaggle.com/author/kevin-markham/) 254 | - [ ] [播放清单 - YouTuBe 上最热门的机器学习、神经网络、深度学习视频](https://www.analyticsvidhya.com/blog/2015/07/top-youtube-videos-machine-learning-neural-network-deep-learning/) 255 | - [ ] [16 个必看的机器学习教程](https://www.analyticsvidhya.com/blog/2016/10/16-new-must-watch-tutorials-courses-on-machine-learning/) 256 | - [ ] [DeepLearning.TV](https://www.youtube.com/channel/UC9OeZkIwhzfv-_Cb7fCikLQ) 257 | - [ ] [Learning To See](https://www.youtube.com/playlist?list=PLiaHhY2iBX9ihLasvE8BKnS2Xg8AhY6iV) 258 | - [ ] [神经网络课程 - Université de Sherbrooke](https://www.youtube.com/playlist?list=PL6Xpj9I5qXYEcOhn7TqghAJ6NAPrNmUBH) 259 | - [ ] [2016年的21个深度学习视频课程](https://www.analyticsvidhya.com/blog/2016/12/21-deep-learning-videos-tutorials-courses-on-youtube-from-2016/) 260 | - [ ] [2016年的30个顶级的机器学习与人工智能视频教程 Top Videos, Tutorials & Courses on Machine Learning & Artificial Intelligence from 2016](https://www.analyticsvidhya.com/blog/2016/12/30-top-videos-tutorials-courses-on-machine-learning-artificial-intelligence-from-2016/) 261 | - [ ] [程序员的深度学习实战](http://course.fast.ai/index.html) 262 | 263 | ## MOOC 264 | - [ ] [edX 的人工智能导论](https://www.edx.org/course/introduction-artificial-intelligence-ai-microsoft-dat263x) 265 | - [ ] [Udacity的机器学习导论](https://www.udacity.com/course/intro-to-machine-learning--ud120) 266 | - [复习Udacity机器学习导论](http://hamelg.blogspot.com/2014/12/udacity-intro-to-machine-learning-review.html) 267 | - [ ] [Udacity的监督学习、非监督学习及深入](https://www.udacity.com/course/machine-learning--ud262) 268 | - [ ] [Machine Learning Foundations: A Case Study Approach](https://www.coursera.org/learn/ml-foundations) 269 | - [ ] [Coursera的机器学习](https://www.coursera.org/learn/machine-learning) 270 | - [视频](https://www.youtube.com/playlist?list=PLZ9qNFMHZ-A4rycgrgOYma6zxF4BZGGPW) 271 | - [复习Coursera机器学习](https://rayli.net/blog/data/coursera-machine-learning-review/) 272 | - [Coursera的机器学习路线图](https://metacademy.org/roadmaps/cjrd/coursera_ml_supplement) 273 | - [ ] [机器学习提纯](https://code.tutsplus.com/courses/machine-learning-distilled) 274 | - [ ] [BigML training](https://bigml.com/training) 275 | - [ ] [Coursera的神经网络课程](https://www.coursera.org/learn/neural-networks) 276 | - 由Geoffrey Hinton(神经网络的先驱)执教 277 | - [ ] [使用TensorFlow创建深度学习应用](https://www.kadenze.com/courses/creative-applications-of-deep-learning-with-tensorflow/info) 278 | - [ ] [描述统计学概论](https://www.udacity.com/course/intro-to-descriptive-statistics--ud827) 279 | - [ ] [推理统计学概论](https://www.udacity.com/course/intro-to-inferential-statistics--ud201) 280 | - [ ] [6.S094: 自动驾驶的深度学习](http://selfdrivingcars.mit.edu/) 281 | - [ ] [6.S191: 深度学习简介](http://introtodeeplearning.com/index.html) 282 | - [ ] [Coursera 深度学习教程](https://www.coursera.org/specializations/deep-learning) 283 | 284 | ## 资源 285 | - [ ] [一个月学会机器学习](https://elitedatascience.com/machine-learning-masterclass) 286 | - [ ] [一份“非技术性”的机器学习与人工智能指南](https://medium.com/@samdebrule/a-humans-guide-to-machine-learning-e179f43b67a0#.cpzf3a5c0) 287 | - [ ] [Google机器学习工程师最佳实践教程](http://martin.zinkevich.org/rules_of_ml/rules_of_ml.pdf) 288 | - [ ] [Hacker News的《软件工程师的机器学习》](https://news.ycombinator.com/item?id=12898718) 289 | - [ ] [开发者的机器学习](https://xyclade.github.io/MachineLearning/) 290 | - [ ] [为人类🤖👶准备的机器学习](https://medium.com/machine-learning-for-humans/why-machine-learning-matters-6164faf1df12) 291 | - [ ] [给开发者的关于机器学习的建议](https://dev.to/thealexlavin/machine-learning-advice-for-developers) 292 | - [ ] [机器学习入门](http://pythonforengineers.com/machine-learning-for-complete-beginners/) 293 | - [ ] [为新手准备的机器学习入门教程](https://medium.com/@suffiyanz/getting-started-with-machine-learning-f15df1c283ea#.yjtiy7ei9) 294 | - [ ] [初学者如何自学机器学习](https://elitedatascience.com/learn-machine-learning) 295 | - [ ] [机器学习自学资源](https://ragle.sanukcode.net/articles/machine-learning-self-study-resources/) 296 | - [ ] [提升你的机器学习技能](https://metacademy.org/roadmaps/cjrd/level-up-your-ml) 297 | - [ ] [一份'坦诚'的机器学习指南](https://medium.com/axiomzenteam/an-honest-guide-to-machine-learning-2f6d7a6df60e#.ib12a1yw5) 298 | - [ ] 用机器学习让Hacker News更具可读性 299 | - [视频](https://www.youtube.com/watch?v=O7IezJT9uSI) 300 | - [幻灯片](https://speakerdeck.com/pycon2014/enough-machine-learning-to-make-hacker-news-readable-again-by-ned-jackson-lovely) 301 | - [ ] [深入机器学习](https://github.com/hangtwenty/dive-into-machine-learning) 302 | - [ ] [软件工程师的{机器、深度}学习](https://speakerdeck.com/pmigdal/machine-deep-learning-for-software-engineers) 303 | - [ ] [深度学习入门](https://deeplearning4j.org/deeplearningforbeginners.html) 304 | - [ ] [深度学习基础](https://github.com/pauli-space/foundations_for_deep_learning) 305 | - [ ] [机器学习思维导图/小抄](https://github.com/dformoso/machine-learning-mindmap) 306 | - 大学中的机器学习课程 307 | - [ ] [斯坦福](http://ai.stanford.edu/courses/) 308 | - [ ] [机器学习夏令营](http://mlss.cc/) 309 | - [ ] [牛津](https://www.cs.ox.ac.uk/people/nando.defreitas/machinelearning/) 310 | - [ ] [剑桥](http://mlg.eng.cam.ac.uk/) 311 | - Flipboard的主题 312 | - [机器学习](https://flipboard.com/topic/machinelearning) 313 | - [深度学习](https://flipboard.com/topic/deeplearning) 314 | - [人工智能](https://flipboard.com/topic/artificialintelligence) 315 | - Medium的主题 316 | - [机器学习](https://medium.com/tag/machine-learning/latest) 317 | - [深度学习](https://medium.com/tag/deep-learning) 318 | - [人工智能](https://medium.com/tag/artificial-intelligence) 319 | - 每月文章Top10 320 | - 机器学习 321 | - [2016年7月](https://medium.mybridge.co/top-ten-machine-learning-articles-for-the-past-month-9c1202351144#.lyycen64y) 322 | - [2016年8月](https://medium.mybridge.co/machine-learning-top-10-articles-for-the-past-month-2f3cb815ffed#.i9ee7qkjz) 323 | - [2016年9月](https://medium.mybridge.co/machine-learning-top-10-in-september-6838169e9ee7#.4jbjcibft) 324 | - [2016年10月](https://medium.mybridge.co/machine-learning-top-10-articles-for-the-past-month-35c37825a943#.td5im1p5z) 325 | - [2016年11月](https://medium.mybridge.co/machine-learning-top-10-articles-for-the-past-month-b499e4213a34#.7k39i08tv) 326 | - [2016年](https://medium.mybridge.co/machine-learning-top-10-of-the-year-v-2017-7552599935c0#.wtx2mchqn) 327 | - 算法 328 | - [2016年9月](https://medium.mybridge.co/algorithm-top-10-articles-in-september-8a0e6afb0807#.hgjzuyxdb) 329 | - [2016年10月-11月](https://medium.mybridge.co/algorithm-top-10-articles-v-november-e73cba2fa87e#.kothimkhb) 330 | - [全面的数据科学家的资源](http://www.datasciencecentral.com/group/resources/forum/topics/comprehensive-list-of-data-science-resources) 331 | - [DigitalMind的人工智能资源](http://blog.digitalmind.io/post/artificial-intelligence-resources) 332 | - [令人惊叹的机器学习](https://github.com/josephmisiti/awesome-machine-learning) 333 | - [CreativeAi的机器学习](http://www.creativeai.net/?cat%5B0%5D=machine-learning) 334 | 335 | ## 成为一名开源贡献者 336 | - [ ] [tensorflow/magenta: Magenta: 用机器智能生成音乐与艺术](https://github.com/tensorflow/magenta) 337 | - [ ] [tensorflow/tensorflow: 使用数据流图进行计算进行可扩展的机器学习](https://github.com/tensorflow/tensorflow) 338 | - [ ] [cmusatyalab/openface: 使用深层神经网络进行面部识别](https://github.com/cmusatyalab/openface) 339 | - [ ] [tensorflow/models/syntaxnet: 神经网络模型语法](https://github.com/tensorflow/models/tree/master/syntaxnet) 340 | 341 | ## 游戏 342 | - [Halite:AI编程游戏](https://halite.io/) 343 | - [Vindinium: 挑战AI编程](http://vindinium.org/) 344 | - [Video Game AI比赛](http://www.gvgai.net/) 345 | - [愤怒的小鸟AI比赛](https://aibirds.org/) 346 | - [The AI Games](http://theaigames.com/) 347 | - [Fighting Game AI Competition](http://www.ice.ci.ritsumei.ac.jp/~ftgaic/) 348 | - [CodeCup](http://www.codecup.nl/intro.php) 349 | - [星际争霸AI学生锦标赛](http://sscaitournament.com/) 350 | - [AIIDE星际争霸AI竞赛](http://www.cs.mun.ca/~dchurchill/starcraftaicomp/) 351 | - [CIG星际争霸AI竞赛](https://sites.google.com/site/starcraftaic/) 352 | - [CodinGame - AI Bot Games](https://www.codingame.com/training/machine-learning) 353 | 354 | ## 播客 355 | - ### 适合初学者的播客: 356 | - [Talking Machines](http://www.thetalkingmachines.com/) 357 | - [Linear Digressions](http://lineardigressions.com/) 358 | - [Data Skeptic](http://dataskeptic.com/) 359 | - [This Week in Machine Learning & AI](https://twimlai.com/) 360 | 361 | - ### “更多”进阶的播客: 362 | - [Partially Derivative](http://partiallyderivative.com/) 363 | - [O’Reilly Data Show](http://radar.oreilly.com/tag/oreilly-data-show-podcast) 364 | - [Not So Standard Deviation](https://soundcloud.com/nssd-podcast) 365 | 366 | - ### 盒子外的播客: 367 | - [Data Stories](http://datastori.es/) 368 | 369 | ## 社区 370 | - Quora 371 | - [机器学习](https://www.quora.com/topic/Machine-Learning) 372 | - [统计学](https://www.quora.com/topic/Statistics-academic-discipline) 373 | - [数据挖掘](https://www.quora.com/topic/Data-Mining) 374 | 375 | - Reddit 376 | - [机器学习](https://www.reddit.com/r/machinelearning) 377 | - [计算机视觉](https://www.reddit.com/r/computervision) 378 | - [自然语言处理](https://www.reddit.com/r/languagetechnology) 379 | - [数据科学](https://www.reddit.com/r/datascience) 380 | - [大数据](https://www.reddit.com/r/bigdata) 381 | - [统计学](https://www.reddit.com/r/statistics) 382 | 383 | - [Data Tau](http://www.datatau.com/) 384 | 385 | - [Deep Learning News](http://news.startup.ml/) 386 | 387 | - [KDnuggets](http://www.kdnuggets.com/) 388 | 389 | ## 相关会议 390 | - ([NIPS](https://nips.cc/)) 391 | - ([ICLR](http://www.iclr.cc/doku.php?id=ICLR2017:main&redirect=1)) 392 | - ([AAAI](http://www.aaai.org/Conferences/AAAI/aaai17.php)) 393 | - ([IEEE CIG](http://www.ieee-cig.org/)) 394 | - ([IEEE ICMLA](http://www.icmla-conference.org/)) 395 | - ([ICML](https://2017.icml.cc/)) 396 | 397 | ## 面试问题 398 | - [ ] [如何准备机器学习职位的面试](http://blog.udacity.com/2016/05/prepare-machine-learning-interview.html) 399 | - [ ] [40个机器学习与数据科学的面试问题](https://www.analyticsvidhya.com/blog/2016/09/40-interview-questions-asked-at-startups-in-machine-learning-data-science) 400 | - [ ] [21个必须要知道的数据科学问题与回答](http://www.kdnuggets.com/2016/02/21-data-science-interview-questions-answers.html) 401 | - [ ] [Top 50 机器学习面试问题与回答](http://career.guru99.com/top-50-interview-questions-on-machine-learning/) 402 | - [ ] [机器学习面试问题](https://resources.workable.com/machine-learning-engineer-interview-questions) 403 | - [ ] [常用的机器学习面试问题](http://www.learn4master.com/machine-learning/popular-machine-learning-interview-questions) 404 | - [ ] [机器学习面试问题有哪些相同的?](https://www.quora.com/What-are-some-common-Machine-Learning-interview-questions) 405 | - [ ] [什么是评价一个机器学习研究者的最好的问题?](https://www.quora.com/What-are-the-best-interview-questions-to-evaluate-a-machine-learning-researcher) 406 | - [ ] [机器学习面试问题大搜集](http://analyticscosm.com/machine-learning-interview-questions-for-data-scientist-interview/) 407 | - [ ] [121个需要掌握的问题与回答](https://learn.elitedatascience.com/mlqa-welcome) 408 | 409 | 410 | ## 我崇拜的公司 411 | - [ ] [ELSA - 你虚拟的口语教练](https://www.elsanow.io/home) 412 | -------------------------------------------------------------------------------- /README.md: -------------------------------------------------------------------------------- 1 | # Top-down learning path: Machine Learning for Software Engineers 2 | 3 |
14 | 15 | Inspired by [Google Interview University](https://github.com/jwasham/google-interview-university). 16 | 17 | Translations: [Brazilian Portuguese](https://github.com/ZuzooVn/machine-learning-for-software-engineers/blob/master/README-pt-BR.md) | [中文版本](https://github.com/ZuzooVn/machine-learning-for-software-engineers/blob/master/README-zh-CN.md) 18 | 19 | [How I (Nam Vu) plan to become a machine learning engineer](https://www.codementor.io/zuzoovn/how-i-plan-to-become-a-machine-learning-engineer-a4metbcuk) 20 | 21 | ## What is it? 22 | 23 | This is my multi-month study plan for going from mobile developer (self-taught, no CS degree) to machine learning engineer. 24 | 25 | My main goal was to find an approach to studying Machine Learning that is mainly hands-on and abstracts most of the Math for the beginner. 26 | This approach is unconventional because it’s the top-down and results-first approach designed for software engineers. 27 | 28 | Please, feel free to make any contributions you feel will make it better. 29 | 30 | --- 31 | 32 | ## Table of Contents 33 | 34 | - [What is it?](#what-is-it) 35 | - [Why use it?](#why-use-it) 36 | - [How to use it](#how-to-use-it) 37 | - [Follow me](#follow-me) 38 | - [Don't feel you aren't smart enough](#dont-feel-you-arent-smart-enough) 39 | - [About Video Resources](#about-video-resources) 40 | - [Prerequisite Knowledge](#prerequisite-knowledge) 41 | - [The Daily Plan](#the-daily-plan) 42 | - [Motivation](#motivation) 43 | - [Machine learning overview](#machine-learning-overview) 44 | - [Machine learning mastery](#machine-learning-mastery) 45 | - [Machine learning is fun](#machine-learning-is-fun) 46 | - [Inky Machine Learning](#inky-machine-learning) 47 | - [Machine Learning: An In-Depth Guide](#machine-learning-an-in-depth-guide) 48 | - [Stories and experiences](#stories-and-experiences) 49 | - [Machine Learning Algorithms](#machine-learning-algorithms) 50 | - [Beginner Books](#beginner-books) 51 | - [Practical Books](#practical-books) 52 | - [Kaggle knowledge competitions](#kaggle-knowledge-competitions) 53 | - [Video Series](#video-series) 54 | - [MOOC](#mooc) 55 | - [Resources](#resources) 56 | - [Becoming an Open Source Contributor](#becoming-an-open-source-contributor) 57 | - [Games](#games) 58 | - [Podcasts](#podcasts) 59 | - [Communities](#communities) 60 | - [Conferences](#conferences) 61 | - [Interview Questions](#interview-questions) 62 | - [My admired companies](#my-admired-companies) 63 | 64 | --- 65 | 66 | ## Why use it? 67 | 68 | I'm following this plan to prepare for my near-future job: Machine learning engineer. I've been building native mobile applications (Android/iOS/Blackberry) since 2011. I have a Software Engineering degree, not a Computer Science degree. I have an itty-bitty amount of basic knowledge about: Calculus, Linear Algebra, Discrete Mathematics, Probability & Statistics from university. 69 | Think about my interest in machine learning: 70 | - [Can I learn and get a job in Machine Learning without studying CS Master and PhD?](https://www.quora.com/Can-I-learn-and-get-a-job-in-Machine-Learning-without-studying-CS-Master-and-PhD) 71 | - *"You can, but it is far more difficult than when I got into the field."* [Drac Smith](https://www.quora.com/Can-I-learn-and-get-a-job-in-Machine-Learning-without-studying-CS-Master-and-PhD/answer/Drac-Smith?srid=oT0p) 72 | - [How do I get a job in Machine Learning as a software programmer who self-studies Machine Learning, but never has a chance to use it at work?](https://www.quora.com/How-do-I-get-a-job-in-Machine-Learning-as-a-software-programmer-who-self-studies-Machine-Learning-but-never-has-a-chance-to-use-it-at-work) 73 | - *"I'm hiring machine learning experts for my team and your MOOC will not get you the job (there is better news below). In fact, many people with a master's in machine learning will not get the job because they (and most who have taken MOOCs) do not have a deep understanding that will help me solve my problems."* [Ross C. Taylor](https://www.quora.com/How-do-I-get-a-job-in-Machine-Learning-as-a-software-programmer-who-self-studies-Machine-Learning-but-never-has-a-chance-to-use-it-at-work/answer/Ross-C-Taylor?srid=oT0p) 74 | - [What skills are needed for machine learning jobs?](http://programmers.stackexchange.com/questions/79476/what-skills-are-needed-for-machine-learning-jobs) 75 | - *"First, you need to have a decent CS/Math background. ML is an advanced topic so most textbooks assume that you have that background. Second, machine learning is a very general topic with many sub-specialties requiring unique skills. You may want to browse the curriculum of an MS program in Machine Learning to see the course, curriculum and textbook."* [Uri](http://softwareengineering.stackexchange.com/a/79717) 76 | - *"Probability, distributed computing, and Statistics."* [Hydrangea](http://softwareengineering.stackexchange.com/a/79575) 77 | 78 | I find myself in times of trouble. 79 | 80 | AFAIK, [There are two sides to machine learning](http://machinelearningmastery.com/programmers-can-get-into-machine-learning/): 81 | - Practical Machine Learning: This is about querying databases, cleaning data, writing scripts to transform data and gluing algorithm and libraries together and writing custom code to squeeze reliable answers from data to satisfy difficult and ill-defined questions. It’s the mess of reality. 82 | - Theoretical Machine Learning: This is about math and abstraction and idealized scenarios and limits and beauty and informing what is possible. It is a whole lot neater and cleaner and removed from the mess of reality. 83 | 84 | I think the best way for practice-focused methodology is something like ['practice — learning — practice'](http://machinelearningmastery.com/machine-learning-for-programmers/#comment-358985), that means where students first come with some existing projects with problems and solutions (practice) to get familiar with traditional methods in the area and perhaps also with their methodology. After practicing with some elementary experiences, they can go into the books and study the underlying theory, which serves to guide their future advanced practice and will enhance their toolbox of solving practical problems. Studying theory also further improves their understanding on the elementary experiences, and will help them acquire advanced experiences more quickly. 85 | 86 | It's a long plan. It's going to take me years. If you are familiar with a lot of this already it will take you a lot less time. 87 | 88 | ## How to use it 89 | Everything below is an outline, and you should tackle the items in order from top to bottom. 90 | 91 | I'm using Github's special markdown flavor, including tasks lists to check progress. 92 | 93 | - [x] Create a new branch so you can check items like this, just put an x in the brackets: [x] 94 | 95 | [More about Github-flavored markdown](https://guides.github.com/features/mastering-markdown/#GitHub-flavored-markdown) 96 | 97 | ## Follow me 98 | I'm a Vietnamese Software Engineer who is really passionate and wants to work in the USA. 99 | 100 | How much did I work during this plan? Roughly 4 hours/night after a long, hard day at work. 101 | 102 | I'm on the journey. 103 | 104 | - Twitter: [@Nam Vu](https://twitter.com/zuzoovn) 105 | 106 | | | 107 | |:---:| 108 | | USA as heck | 109 | 110 | ## Don't feel you aren't smart enough 111 | I get discouraged from books and courses that tell me as soon as I open them that multivariate calculus, inferential statistics and linear algebra are prerequisites. I still don’t know how to get started… 112 | 113 | - [What if I’m Not Good at Mathematics](http://machinelearningmastery.com/what-if-im-not-good-at-mathematics/) 114 | - [5 Techniques To Understand Machine Learning Algorithms Without the Background in Mathematics](http://machinelearningmastery.com/techniques-to-understand-machine-learning-algorithms-without-the-background-in-mathematics/) 115 | - [How do I learn machine learning?](https://www.quora.com/Machine-Learning/How-do-I-learn-machine-learning-1) 116 | 117 | ## About Video Resources 118 | 119 | Some videos are available only by enrolling in a Coursera or EdX class. It is free to do so, but sometimes the classes 120 | are no longer in session so you have to wait a couple of months, so you have no access. I'm going to be adding more videos 121 | from public sources and replacing the online course videos over time. I like using university lectures. 122 | 123 | ## Prerequisite Knowledge 124 | 125 | This short section were prerequisites/interesting info I wanted to learn before getting started on the daily plan. 126 | 127 | - [ ] [What is the difference between Data Analytics, Data Analysis, Data Mining, Data Science, Machine Learning, and Big Data?](https://www.quora.com/What-is-the-difference-between-Data-Analytics-Data-Analysis-Data-Mining-Data-Science-Machine-Learning-and-Big-Data-1) 128 | - [ ] [Learning How to Learn](https://www.coursera.org/learn/learning-how-to-learn) 129 | - [ ] [Don’t Break The Chain](http://lifehacker.com/281626/jerry-seinfelds-productivity-secret) 130 | - [ ] [How to learn on your own](https://metacademy.org/roadmaps/rgrosse/learn_on_your_own) 131 | 132 | ## The Daily Plan 133 | 134 | Each subject does not require a whole day to be able to understand it fully, and you can do multiple of these in a day. 135 | 136 | Each day I take one subject from the list below, read it cover to cover, take notes, do the exercises and write an implementation in Python or R. 137 | 138 | # Motivation 139 | - [ ] [Dream](https://www.youtube.com/watch?v=g-jwWYX7Jlo) 140 | 141 | ## Machine learning overview 142 | - [ ] [A Visual Introduction to Machine Learning](http://www.r2d3.us/visual-intro-to-machine-learning-part-1/) 143 | - [ ] [A Gentle Guide to Machine Learning](https://blog.monkeylearn.com/a-gentle-guide-to-machine-learning/) 144 | - [ ] [Introduction to Machine Learning for Developers](http://blog.algorithmia.com/introduction-machine-learning-developers/) 145 | - [ ] [Machine Learning basics for a newbie](https://www.analyticsvidhya.com/blog/2015/06/machine-learning-basics/) 146 | - [ ] [How do you explain Machine Learning and Data Mining to non Computer Science people?](https://www.quora.com/How-do-you-explain-Machine-Learning-and-Data-Mining-to-non-Computer-Science-people) 147 | - [ ] [Machine Learning: Under the hood. Blog post explains the principles of machine learning in layman terms. Simple and clear](https://georgemdallas.wordpress.com/2013/06/11/big-data-data-mining-and-machine-learning-under-the-hood/) 148 | - [ ] [What is machine learning, and how does it work?](https://www.youtube.com/watch?v=elojMnjn4kk&list=PL5-da3qGB5ICeMbQuqbbCOQWcS6OYBr5A&index=1) 149 | - [ ] [Deep Learning - A Non-Technical Introduction](http://www.slideshare.net/AlfredPong1/deep-learning-a-nontechnical-introduction-69385936) 150 | 151 | ## Machine learning mastery 152 | - [ ] [The Machine Learning Mastery Method](http://machinelearningmastery.com/machine-learning-mastery-method/) 153 | - [ ] [Machine Learning for Programmers](http://machinelearningmastery.com/machine-learning-for-programmers/) 154 | - [ ] [Applied Machine Learning with Machine Learning Mastery](http://machinelearningmastery.com/start-here/) 155 | - [ ] [Python Machine Learning Mini-Course](http://machinelearningmastery.com/python-machine-learning-mini-course/) 156 | - [ ] [Machine Learning Algorithms Mini-Course](http://machinelearningmastery.com/machine-learning-algorithms-mini-course/) 157 | 158 | ## Machine learning is fun 159 | - [ ] [Machine Learning is Fun!](https://medium.com/@ageitgey/machine-learning-is-fun-80ea3ec3c471#.37ue6caww) 160 | - [ ] [Part 2: Using Machine Learning to generate Super Mario Maker levels](https://medium.com/@ageitgey/machine-learning-is-fun-part-2-a26a10b68df3#.kh7qgvp1b) 161 | - [ ] [Part 3: Deep Learning and Convolutional Neural Networks](https://medium.com/@ageitgey/machine-learning-is-fun-part-3-deep-learning-and-convolutional-neural-networks-f40359318721#.44rhxy637) 162 | - [ ] [Part 4: Modern Face Recognition with Deep Learning](https://medium.com/@ageitgey/machine-learning-is-fun-part-4-modern-face-recognition-with-deep-learning-c3cffc121d78#.3rwmq0ddc) 163 | - [ ] [Part 5: Language Translation with Deep Learning and the Magic of Sequences](https://medium.com/@ageitgey/machine-learning-is-fun-part-5-language-translation-with-deep-learning-and-the-magic-of-sequences-2ace0acca0aa#.wyfthap4c) 164 | - [ ] [Part 6: How to do Speech Recognition with Deep Learning](https://medium.com/@ageitgey/machine-learning-is-fun-part-6-how-to-do-speech-recognition-with-deep-learning-28293c162f7a#.lhr1nnpcy) 165 | - [ ] [Part 7: Abusing Generative Adversarial Networks to Make 8-bit Pixel Art](https://medium.com/@ageitgey/abusing-generative-adversarial-networks-to-make-8-bit-pixel-art-e45d9b96cee7) 166 | 167 | ## [Inky Machine Learning](https://triskell.github.io/2016/11/15/Inky-Machine-Learning.html) 168 | - [ ] [Part 1: What is Machine Learning ?](https://triskell.github.io/2016/10/23/What-is-Machine-Learning.html) 169 | - [ ] [Part 2: Supervised Learning and Unsupervised Learning](https://triskell.github.io/2016/11/13/Supervised-Learning-and-Unsupervised-Learning.html) 170 | 171 | ## Machine Learning: An In-Depth Guide 172 | - [ ] [Overview, goals, learning types, and algorithms](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide/) 173 | - [ ] [Data selection, preparation, and modeling](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-2/) 174 | - [ ] [Model evaluation, validation, complexity, and improvement](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-3/) 175 | - [ ] [Model performance and error analysis](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-4/) 176 | - [ ] [Unsupervised learning, related fields, and machine learning in practice](http://www.innoarchitech.com/machine-learning-an-in-depth-non-technical-guide-part-5/) 177 | 178 | ## Stories and experiences 179 | - [ ] [Machine Learning in a Week](https://medium.com/learning-new-stuff/machine-learning-in-a-week-a0da25d59850#.tk6ft2kcg) 180 | - [ ] [Machine Learning in a Year](https://medium.com/learning-new-stuff/machine-learning-in-a-year-cdb0b0ebd29c#.hhcb9fxk1) 181 | - [ ] [How I wrote my first Machine Learning program in 3 days](http://blog.adnansiddiqi.me/how-i-wrote-my-first-machine-learning-program-in-3-days/) 182 | - [ ] [Learning Path : Your mentor to become a machine learning expert](https://www.analyticsvidhya.com/learning-path-learn-machine-learning/) 183 | - [ ] [You Too Can Become a Machine Learning Rock Star! No PhD](https://backchannel.com/you-too-can-become-a-machine-learning-rock-star-no-phd-necessary-107a1624d96b#.g9p16ldp7) 184 | - [ ] How to become a Data Scientist in 6 months: A hacker’s approach to career planning 185 | - [Video](https://www.youtube.com/watch?v=rIofV14c0tc) 186 | - [Slide](http://www.slideshare.net/TetianaIvanova2/how-to-become-a-data-scientist-in-6-months) 187 | - [ ] [5 Skills You Need to Become a Machine Learning Engineer](http://blog.udacity.com/2016/04/5-skills-you-need-to-become-a-machine-learning-engineer.html) 188 | - [ ] [Are you a self-taught machine learning engineer? If yes, how did you do it & how long did it take you?](https://www.quora.com/Are-you-a-self-taught-machine-learning-engineer-If-yes-how-did-you-do-it-how-long-did-it-take-you) 189 | - [ ] [How can one become a good machine learning engineer?](https://www.quora.com/How-can-one-become-a-good-machine-learning-engineer) 190 | - [ ] [A Learning Sabbatical focused on Machine Learning](http://karlrosaen.com/ml/) 191 | 192 | ## Machine Learning Algorithms 193 | - [ ] [10 Machine Learning Algorithms Explained to an ‘Army Soldier’](https://www.analyticsvidhya.com/blog/2015/12/10-machine-learning-algorithms-explained-army-soldier/) 194 | - [ ] [Top 10 data mining algorithms in plain English](https://rayli.net/blog/data/top-10-data-mining-algorithms-in-plain-english/) 195 | - [ ] [10 Machine Learning Terms Explained in Simple English](http://blog.aylien.com/10-machine-learning-terms-explained-in-simple/) 196 | - [ ] [A Tour of Machine Learning Algorithms](http://machinelearningmastery.com/a-tour-of-machine-learning-algorithms/) 197 | - [ ] [The 10 Algorithms Machine Learning Engineers Need to Know](https://gab41.lab41.org/the-10-algorithms-machine-learning-engineers-need-to-know-f4bb63f5b2fa#.ofc7t2965) 198 | - [ ] [Comparing supervised learning algorithms](http://www.dataschool.io/comparing-supervised-learning-algorithms/) 199 | - [ ] [Machine Learning Algorithms: A collection of minimal and clean implementations of machine learning algorithms](https://github.com/rushter/MLAlgorithms) 200 | 201 | ## Beginner Books 202 | - [ ] [Data Smart: Using Data Science to Transform Information into Insight 1st Edition](https://www.amazon.com/Data-Smart-Science-Transform-Information/dp/111866146X) 203 | - [ ] [Data Science for Business: What you need to know about data mining and data analytic-thinking](https://www.amazon.com/Data-Science-Business-Data-Analytic-Thinking/dp/1449361323/) 204 | - [ ] [Predictive Analytics: The Power to Predict Who Will Click, Buy, Lie, or Die](https://www.amazon.com/Predictive-Analytics-Power-Predict-Click/dp/1118356853) 205 | 206 | ## Practical Books 207 | - [ ] [Machine Learning for Hackers](https://www.amazon.com/Machine-Learning-Hackers-Drew-Conway/dp/1449303714) 208 | - [GitHub repository(R)](https://github.com/johnmyleswhite/ML_for_Hackers) 209 | - [GitHub repository(Python)](https://github.com/carljv/Will_it_Python) 210 | - [ ] [Python Machine Learning](https://www.amazon.com/Python-Machine-Learning-Sebastian-Raschka-ebook/dp/B00YSILNL0) 211 | - [GitHub repository](https://github.com/rasbt/python-machine-learning-book) 212 | - [ ] [Programming Collective Intelligence: Building Smart Web 2.0 Applications](https://www.amazon.com/Programming-Collective-Intelligence-Building-Applications-ebook/dp/B00F8QDZWG) 213 | - [ ] [Machine Learning: An Algorithmic Perspective, Second Edition](https://www.amazon.com/Machine-Learning-Algorithmic-Perspective-Recognition/dp/1466583282) 214 | - [GitHub repository](https://github.com/alexsosn/MarslandMLAlgo) 215 | - [Resource repository](http://seat.massey.ac.nz/personal/s.r.marsland/MLbook.html) 216 | - [ ] [Introduction to Machine Learning with Python: A Guide for Data Scientists](http://shop.oreilly.com/product/0636920030515.do) 217 | - [GitHub repository](https://github.com/amueller/introduction_to_ml_with_python) 218 | - [ ] [Data Mining: Practical Machine Learning Tools and Techniques, Third Edition](https://www.amazon.com/Data-Mining-Practical-Techniques-Management/dp/0123748569) 219 | - Teaching material 220 | - [Slides for Chapters 1-5 (zip)](http://www.cs.waikato.ac.nz/ml/weka/Slides3rdEd_Ch1-5.zip) 221 | - [Slides for Chapters 6-8 (zip)](http://www.cs.waikato.ac.nz/ml/weka/Slides3rdEd_Ch6-8.zip) 222 | - [ ] [Machine Learning in Action](https://www.amazon.com/Machine-Learning-Action-Peter-Harrington/dp/1617290181/) 223 | - [GitHub repository](https://github.com/pbharrin/machinelearninginaction) 224 | - [ ] [Reactive Machine Learning Systems(MEAP)](https://www.manning.com/books/reactive-machine-learning-systems) 225 | - [GitHub repository](https://github.com/jeffreyksmithjr/reactive-machine-learning-systems) 226 | - [ ] [An Introduction to Statistical Learning](http://www-bcf.usc.edu/~gareth/ISL/) 227 | - [GitHub repository(R)](http://www-bcf.usc.edu/~gareth/ISL/code.html) 228 | - [GitHub repository(Python)](https://github.com/JWarmenhoven/ISLR-python) 229 | - [Videos](http://www.dataschool.io/15-hours-of-expert-machine-learning-videos/) 230 | - [ ] [Building Machine Learning Systems with Python](https://www.packtpub.com/big-data-and-business-intelligence/building-machine-learning-systems-python) 231 | - [GitHub repository](https://github.com/luispedro/BuildingMachineLearningSystemsWithPython) 232 | - [ ] [Learning scikit-learn: Machine Learning in Python](https://www.packtpub.com/big-data-and-business-intelligence/learning-scikit-learn-machine-learning-python) 233 | - [GitHub repository](https://github.com/gmonce/scikit-learn-book) 234 | - [ ] [Probabilistic Programming & Bayesian Methods for Hackers](https://camdavidsonpilon.github.io/Probabilistic-Programming-and-Bayesian-Methods-for-Hackers/) 235 | - [ ] [Probabilistic Graphical Models: Principles and Techniques](https://www.amazon.com/Probabilistic-Graphical-Models-Principles-Computation/dp/0262013193) 236 | - [ ] [Machine Learning: Hands-On for Developers and Technical Professionals](https://www.amazon.com/Machine-Learning-Hands-Developers-Professionals/dp/1118889061) 237 | - [Machine Learning Hands-On for Developers and Technical Professionals review](https://blogs.msdn.microsoft.com/querysimon/2015/01/01/book-review-machine-learning-hands-on-for-developers-and-technical-professionals/) 238 | - [GitHub repository](https://github.com/jasebell/mlbook) 239 | - [ ] [Learning from Data](https://www.amazon.com/Learning-Data-Yaser-S-Abu-Mostafa/dp/1600490069) 240 | - [Online tutorials](https://work.caltech.edu/telecourse.html) 241 | - [ ] [Reinforcement Learning: An Introduction (2nd Edition)](https://webdocs.cs.ualberta.ca/~sutton/book/the-book-2nd.html) 242 | - [GitHub repository](https://github.com/ShangtongZhang/reinforcement-learning-an-introduction) 243 | - [ ] [Machine Learning with TensorFlow(MEAP)](https://www.manning.com/books/machine-learning-with-tensorflow) 244 | - [GitHub repository](https://github.com/BinRoot/TensorFlow-Book) 245 | 246 | ## Kaggle knowledge competitions 247 | - [ ] [Kaggle Competitions: How and where to begin?](https://www.analyticsvidhya.com/blog/2015/06/start-journey-kaggle/) 248 | - [ ] [How a Beginner Used Small Projects To Get Started in Machine Learning and Compete on Kaggle](http://machinelearningmastery.com/how-a-beginner-used-small-projects-to-get-started-in-machine-learning-and-compete-on-kaggle) 249 | - [ ] [Master Kaggle By Competing Consistently](http://machinelearningmastery.com/master-kaggle-by-competing-consistently/) 250 | 251 | ## Video Series 252 | - [ ] [Machine Learning for Hackers](https://www.youtube.com/playlist?list=PL2-dafEMk2A4ut2pyv0fSIXqOzXtBGkLj) 253 | - [ ] [Fresh Machine Learning](https://www.youtube.com/playlist?list=PL2-dafEMk2A6Kc7pV6gHH-apBFxwFjKeY) 254 | - [ ] [Machine Learning Recipes with Josh Gordon](https://www.youtube.com/playlist?list=PLOU2XLYxmsIIuiBfYad6rFYQU_jL2ryal) 255 | - [ ] [Everything You Need to know about Machine Learning in 30 Minutes or Less](https://vimeo.com/43547079) 256 | - [ ] [A Friendly Introduction to Machine Learning](https://www.youtube.com/watch?v=IpGxLWOIZy4) 257 | - [ ] [Nuts and Bolts of Applying Deep Learning - Andrew Ng](https://www.youtube.com/watch?v=F1ka6a13S9I) 258 | - [ ] BigML Webinar 259 | - [Video](https://www.youtube.com/watch?list=PL1bKyu9GtNYHcjGa6ulrvRVcm1lAB8he3&v=W62ehrnOVqo) 260 | - [Resources](https://bigml.com/releases) 261 | - [ ] [mathematicalmonk's Machine Learning tutorials](https://www.youtube.com/playlist?list=PLD0F06AA0D2E8FFBA) 262 | - [ ] [Machine learning in Python with scikit-learn](https://www.youtube.com/playlist?list=PL5-da3qGB5ICeMbQuqbbCOQWcS6OYBr5A) 263 | - [GitHub repository](https://github.com/justmarkham/scikit-learn-videos) 264 | - [Blog](http://blog.kaggle.com/author/kevin-markham/) 265 | - [ ] [My playlist – Top YouTube Videos on Machine Learning, Neural Network & Deep Learning](https://www.analyticsvidhya.com/blog/2015/07/top-youtube-videos-machine-learning-neural-network-deep-learning/) 266 | - [ ] [16 New Must Watch Tutorials, Courses on Machine Learning](https://www.analyticsvidhya.com/blog/2016/10/16-new-must-watch-tutorials-courses-on-machine-learning/) 267 | - [ ] [DeepLearning.TV](https://www.youtube.com/channel/UC9OeZkIwhzfv-_Cb7fCikLQ) 268 | - [ ] [Learning To See](https://www.youtube.com/playlist?list=PLiaHhY2iBX9ihLasvE8BKnS2Xg8AhY6iV) 269 | - [ ] [Neural networks class - Université de Sherbrooke](https://www.youtube.com/playlist?list=PL6Xpj9I5qXYEcOhn7TqghAJ6NAPrNmUBH) 270 | - [ ] [21 Deep Learning Videos, Tutorials & Courses on Youtube from 2016](https://www.analyticsvidhya.com/blog/2016/12/21-deep-learning-videos-tutorials-courses-on-youtube-from-2016/) 271 | - [ ] [30 Top Videos, Tutorials & Courses on Machine Learning & Artificial Intelligence from 2016](https://www.analyticsvidhya.com/blog/2016/12/30-top-videos-tutorials-courses-on-machine-learning-artificial-intelligence-from-2016/) 272 | - [ ] [Practical Deep Learning For Coders](http://course.fast.ai/index.html) 273 | 274 | ## MOOC 275 | - [ ] [edX's Introduction to Artificial Intelligence (AI)](https://www.edx.org/course/introduction-artificial-intelligence-ai-microsoft-dat263x) 276 | - [ ] [Udacity’s Intro to Machine Learning](https://www.udacity.com/course/intro-to-machine-learning--ud120) 277 | - [Udacity Intro to Machine Learning Review](http://hamelg.blogspot.com/2014/12/udacity-intro-to-machine-learning-review.html) 278 | - [ ] [Udacity’s Supervised, Unsupervised & Reinforcement](https://www.udacity.com/course/machine-learning--ud262) 279 | - [ ] [Machine Learning Foundations: A Case Study Approach](https://www.coursera.org/learn/ml-foundations) 280 | - [ ] [Coursera’s Machine Learning](https://www.coursera.org/learn/machine-learning) 281 | - [Video only](https://www.youtube.com/playlist?list=PLZ9qNFMHZ-A4rycgrgOYma6zxF4BZGGPW) 282 | - [Coursera Machine Learning review](https://rayli.net/blog/data/coursera-machine-learning-review/) 283 | - [Coursera: Machine Learning Roadmap](https://metacademy.org/roadmaps/cjrd/coursera_ml_supplement) 284 | - [ ] [Machine Learning Distilled](https://code.tutsplus.com/courses/machine-learning-distilled) 285 | - [ ] [BigML training](https://bigml.com/training) 286 | - [ ] [Coursera’s Neural Networks for Machine Learning](https://www.coursera.org/learn/neural-networks) 287 | - Taught by Geoffrey Hinton, a pioneer in the field of neural networks 288 | - [ ] [Machine Learning - CS - Oxford University](https://www.cs.ox.ac.uk/people/nando.defreitas/machinelearning/) 289 | - [ ] [Creative Applications of Deep Learning with TensorFlow](https://www.kadenze.com/courses/creative-applications-of-deep-learning-with-tensorflow/info) 290 | - [ ] [Intro to Descriptive Statistics](https://www.udacity.com/course/intro-to-descriptive-statistics--ud827) 291 | - [ ] [Intro to Inferential Statistics](https://www.udacity.com/course/intro-to-inferential-statistics--ud201) 292 | - [ ] [6.S094: Deep Learning for Self-Driving Cars](http://selfdrivingcars.mit.edu/) 293 | - [ ] [6.S191: Introduction to Deep Learning](http://introtodeeplearning.com/index.html) 294 | - [ ] [Coursera’s Deep Learning](https://www.coursera.org/specializations/deep-learning) 295 | 296 | ## Resources 297 | - [ ] [Absolute Beginning into Machine Learning](https://hackernoon.com/absolute-beginning-into-machine-learning-e90ceda5a4bc) 298 | - [ ] [Learn Machine Learning in a Single Month](https://elitedatascience.com/machine-learning-masterclass) 299 | - [ ] [The Non-Technical Guide to Machine Learning & Artificial Intelligence](https://medium.com/@samdebrule/a-humans-guide-to-machine-learning-e179f43b67a0#.cpzf3a5c0) 300 | - [ ] [Best practices rule book for Machine Learning engineering from Google](http://martin.zinkevich.org/rules_of_ml/rules_of_ml.pdf) 301 | - [ ] [Machine Learning for Software Engineers on Hacker News](https://news.ycombinator.com/item?id=12898718) 302 | - [ ] [Machine Learning for Developers](https://xyclade.github.io/MachineLearning/) 303 | - [ ] [Machine Learning for Humans🤖👶](https://medium.com/machine-learning-for-humans/why-machine-learning-matters-6164faf1df12) 304 | - [ ] [Machine Learning Advice for Developers](https://dev.to/thealexlavin/machine-learning-advice-for-developers) 305 | - [ ] [Machine Learning For Complete Beginners](http://pythonforengineers.com/machine-learning-for-complete-beginners/) 306 | - [ ] [Getting Started with Machine Learning: For absolute beginners and fifth graders](https://medium.com/@suffiyanz/getting-started-with-machine-learning-f15df1c283ea#.yjtiy7ei9) 307 | - [ ] [How to Learn Machine Learning: The Self-Starter Way](https://elitedatascience.com/learn-machine-learning) 308 | - [ ] [Machine Learning Self-study Resources](https://ragle.sanukcode.net/articles/machine-learning-self-study-resources/) 309 | - [ ] [Level-Up Your Machine Learning](https://metacademy.org/roadmaps/cjrd/level-up-your-ml) 310 | - [ ] [An Honest Guide to Machine Learning](https://medium.com/axiomzenteam/an-honest-guide-to-machine-learning-2f6d7a6df60e#.ib12a1yw5) 311 | - [ ] Enough Machine Learning to Make Hacker News Readable Again 312 | - [Video](https://www.youtube.com/watch?v=O7IezJT9uSI) 313 | - [Slide](https://speakerdeck.com/pycon2014/enough-machine-learning-to-make-hacker-news-readable-again-by-ned-jackson-lovely) 314 | - [ ] [Dive into Machine Learning](https://github.com/hangtwenty/dive-into-machine-learning) 315 | - [ ] [{Machine, Deep} Learning for software engineers](https://speakerdeck.com/pmigdal/machine-deep-learning-for-software-engineers) 316 | - [ ] [Deep Learning For Beginners](https://deeplearning4j.org/deeplearningforbeginners.html) 317 | - [ ] [Foundations for deep learning](https://github.com/pauli-space/foundations_for_deep_learning) 318 | - [ ] [Machine Learning Mindmap / Cheatsheet](https://github.com/dformoso/machine-learning-mindmap) 319 | - Machine Learning courses in Universities 320 | - [ ] [Stanford](http://ai.stanford.edu/courses/) 321 | - [ ] [Machine Learning Summer Schools](http://mlss.cc/) 322 | - [ ] [Oxford](https://www.cs.ox.ac.uk/people/nando.defreitas/machinelearning/) 323 | - [ ] [Cambridge](http://mlg.eng.cam.ac.uk/) 324 | - Flipboard Topics 325 | - [Machine learning](https://flipboard.com/topic/machinelearning) 326 | - [Deep learning](https://flipboard.com/topic/deeplearning) 327 | - [Artificial Intelligence](https://flipboard.com/topic/artificialintelligence) 328 | - Medium Topics 329 | - [Machine learning](https://medium.com/tag/machine-learning/latest) 330 | - [Deep learning](https://medium.com/tag/deep-learning) 331 | - [Artificial Intelligence](https://medium.com/tag/artificial-intelligence) 332 | - Monthly top 10 articles 333 | - Machine Learning 334 | - [July 2016](https://medium.mybridge.co/top-ten-machine-learning-articles-for-the-past-month-9c1202351144#.lyycen64y) 335 | - [August 2016](https://medium.mybridge.co/machine-learning-top-10-articles-for-the-past-month-2f3cb815ffed#.i9ee7qkjz) 336 | - [September 2016](https://medium.mybridge.co/machine-learning-top-10-in-september-6838169e9ee7#.4jbjcibft) 337 | - [October 2016](https://medium.mybridge.co/machine-learning-top-10-articles-for-the-past-month-35c37825a943#.td5im1p5z) 338 | - [November 2016](https://medium.mybridge.co/machine-learning-top-10-articles-for-the-past-month-b499e4213a34#.7k39i08tv) 339 | - [Year 2016](https://medium.mybridge.co/machine-learning-top-10-of-the-year-v-2017-7552599935c0#.wtx2mchqn) 340 | - Algorithms 341 | - [September 2016](https://medium.mybridge.co/algorithm-top-10-articles-in-september-8a0e6afb0807#.hgjzuyxdb) 342 | - [October-November 2016](https://medium.mybridge.co/algorithm-top-10-articles-v-november-e73cba2fa87e#.kothimkhb) 343 | - [Comprehensive list of data science resources](http://www.datasciencecentral.com/group/resources/forum/topics/comprehensive-list-of-data-science-resources) 344 | - [DigitalMind's Artificial Intelligence resources](http://blog.digitalmind.io/post/artificial-intelligence-resources) 345 | - [Awesome Machine Learning](https://github.com/josephmisiti/awesome-machine-learning) 346 | - [CreativeAi's Machine Learning](http://www.creativeai.net/?cat%5B0%5D=machine-learning) 347 | 348 | ## Games 349 | - [Halite: A.I. Coding Game](https://halite.io/) 350 | - [Vindinium: A.I. Programming Challenge](http://vindinium.org/) 351 | - [General Video Game AI Competition](http://www.gvgai.net/) 352 | - [Angry Birds AI Competition](https://aibirds.org/) 353 | - [The AI Games](http://theaigames.com/) 354 | - [Fighting Game AI Competition](http://www.ice.ci.ritsumei.ac.jp/~ftgaic/) 355 | - [CodeCup](http://www.codecup.nl/intro.php) 356 | - [Student StarCraft AI Tournament](http://sscaitournament.com/) 357 | - [AIIDE StarCraft AI Competition](http://www.cs.mun.ca/~dchurchill/starcraftaicomp/) 358 | - [CIG StarCraft AI Competition](https://sites.google.com/site/starcraftaic/) 359 | - [CodinGame - AI Bot Games](https://www.codingame.com/training/machine-learning) 360 | 361 | ## Becoming an Open Source Contributor 362 | - [ ] [tensorflow/magenta: Magenta: Music and Art Generation with Machine Intelligence](https://github.com/tensorflow/magenta) 363 | - [ ] [tensorflow/tensorflow: Computation using data flow graphs for scalable machine learning](https://github.com/tensorflow/tensorflow) 364 | - [ ] [cmusatyalab/openface: Face recognition with deep neural networks.](https://github.com/cmusatyalab/openface) 365 | - [ ] [tensorflow/models/syntaxnet: Neural Models of Syntax.](https://github.com/tensorflow/models/tree/master/syntaxnet) 366 | 367 | ## Podcasts 368 | - ### Podcasts for Beginners: 369 | - [Talking Machines](http://www.thetalkingmachines.com/) 370 | - [Linear Digressions](http://lineardigressions.com/) 371 | - [Data Skeptic](http://dataskeptic.com/) 372 | - [This Week in Machine Learning & AI](https://twimlai.com/) 373 | - [Machine Learning Guide](http://ocdevel.com/podcasts/machine-learning) 374 | 375 | - ### "More" advanced podcasts 376 | - [Partially Derivative](http://partiallyderivative.com/) 377 | - [O’Reilly Data Show](http://radar.oreilly.com/tag/oreilly-data-show-podcast) 378 | - [Not So Standard Deviation](https://soundcloud.com/nssd-podcast) 379 | 380 | - ### Podcasts to think outside the box: 381 | - [Data Stories](http://datastori.es/) 382 | 383 | ## Communities 384 | - Quora 385 | - [Machine Learning](https://www.quora.com/topic/Machine-Learning) 386 | - [Statistics](https://www.quora.com/topic/Statistics-academic-discipline) 387 | - [Data Mining](https://www.quora.com/topic/Data-Mining) 388 | 389 | - Reddit 390 | - [Machine Learning](https://www.reddit.com/r/machinelearning) 391 | - [Computer Vision](https://www.reddit.com/r/computervision) 392 | - [Natural Language](https://www.reddit.com/r/languagetechnology) 393 | - [Data Science](https://www.reddit.com/r/datascience) 394 | - [Big Data](https://www.reddit.com/r/bigdata) 395 | - [Statistics](https://www.reddit.com/r/statistics) 396 | 397 | - [Data Tau](http://www.datatau.com/) 398 | 399 | - [Deep Learning News](http://news.startup.ml/) 400 | 401 | - [KDnuggets](http://www.kdnuggets.com/) 402 | 403 | ## Conferences 404 | - Neural Information Processing Systems ([NIPS](https://nips.cc/)) 405 | - International Conference on Learning Representations ([ICLR](http://www.iclr.cc/doku.php?id=ICLR2017:main&redirect=1)) 406 | - Association for the Advancement of Artificial Intelligence ([AAAI](http://www.aaai.org/Conferences/AAAI/aaai17.php)) 407 | - IEEE Conference on Computational Intelligence and Games ([CIG](http://www.ieee-cig.org/)) 408 | - IEEE International Conference on Machine Learning and Applications ([ICMLA](http://www.icmla-conference.org/)) 409 | - International Conference on Machine Learning ([ICML](https://2017.icml.cc/)) 410 | - International Joint Conferences on Artificial Intelligence ([IJCAI](http://www.ijcai.org/)) 411 | - Association for Computational Linguistics ([ACL](http://acl2017.org/)) 412 | 413 | ## Interview Questions 414 | - [ ] [How To Prepare For A Machine Learning Interview](http://blog.udacity.com/2016/05/prepare-machine-learning-interview.html) 415 | - [ ] [40 Interview Questions asked at Startups in Machine Learning / Data Science](https://www.analyticsvidhya.com/blog/2016/09/40-interview-questions-asked-at-startups-in-machine-learning-data-science) 416 | - [ ] [21 Must-Know Data Science Interview Questions and Answers](http://www.kdnuggets.com/2016/02/21-data-science-interview-questions-answers.html) 417 | - [ ] [Top 50 Machine learning Interview questions & Answers](http://career.guru99.com/top-50-interview-questions-on-machine-learning/) 418 | - [ ] [Machine Learning Engineer interview questions](https://resources.workable.com/machine-learning-engineer-interview-questions) 419 | - [ ] [Popular Machine Learning Interview Questions](http://www.learn4master.com/machine-learning/popular-machine-learning-interview-questions) 420 | - [ ] [What are some common Machine Learning interview questions?](https://www.quora.com/What-are-some-common-Machine-Learning-interview-questions) 421 | - [ ] [What are the best interview questions to evaluate a machine learning researcher?](https://www.quora.com/What-are-the-best-interview-questions-to-evaluate-a-machine-learning-researcher) 422 | - [ ] [Collection of Machine Learning Interview Questions](http://analyticscosm.com/machine-learning-interview-questions-for-data-scientist-interview/) 423 | - [ ] [121 Essential Machine Learning Questions & Answers](https://learn.elitedatascience.com/mlqa-welcome) 424 | 425 | 426 | ## My admired companies 427 | - [ ] [ELSA - Your virtual pronunciation coach](https://www.elsanow.io/home) 428 | --------------------------------------------------------------------------------