美文网首页默认收藏夹ai学习机器学习和人工智能入门
葵花宝典之机器学习:全网最重要的AI资源都在这里了(大牛,研究机

葵花宝典之机器学习:全网最重要的AI资源都在这里了(大牛,研究机

作者: AI科技大本营 | 来源:发表于2017-08-09 15:37 被阅读152次

    翻译 | AI科技大本营(rgznai100)

    参与 | Joe,焦燕

    2000年早期,Robbie Allen在写一本关于网络和编程的书的时候,深有感触。他发现,互联网很不错,但是资源并不完善。那时候,博客已经开始流行起来。但是,Youtube还不是很普遍,Quora、 Twitter和播客同样用者甚少。

    在他转向人工智能和机器学习10年过后,局面发生了天翻地覆的变化:网上资源非相当丰富,以至于很多人出现了选择困难,不知道该从哪里开始(和停止)学习!

    为了使大家能够更加便利地使用这些资源,Robbie Allen浏览查看各种各样的资源,把它们打包整理了出来。AI科技大本营在此借花献佛,和大家共同分享这些资源。通过它们,你将会对人工智能和机器学习有一个基本的认知。

    这些资源内容安排如下:知名研究者,研究机构,视频课程,YouTube,博客,媒体作家,书籍,Quora主题栏,Reddit,Github库,播客, 实事通讯媒体、会议、论文。

    如果你也有好的资源是这里没有列出的,欢迎评论区一起交流!

    研究者

    大多数知名的人工智能研究者在网络上的曝光率还是很高的。下面列举了20位知名学者,以及他们的个人网站链接,维基百科链接,推特主页,Google学术主页,Quora主页。他们中相当一部分人在Reddit或Quora上面参与了问答。

    Sebastian Thrun

    个人官网:

    http://robots.stanford.edu/

    Wikipedia:

    https://en.wikipedia.org/wiki/Sebastian_Thrun

    Twitter:

    https://twitter.com/SebastianThrun

    Google Scholar:

    https://scholar.google.com/citations?user=7K34d7cAAAAJ&hl=en&oi=ao

    Quora:

    https://www.quora.com/profile/Sebastian-Thrun

    Reddit AMA:

    https://www.reddit.com/r/IAmA/comments/v59z3/iam_sebastian_thrun_stanford_professor_google_x/

    Yann LeCun

    个人官网:

    http://yann.lecun.com/

    Wikipedia:

    https://en.wikipedia.org/wiki/Sebastian_Thrun

    Twitter:

    https://twitter.com/ylecun?

    Google Scholar:

    https://scholar.google.com/citations?user=WLN3QrAAAAAJ&hl=en

    Quora:

    https://www.quora.com/profile/Yann-LeCun

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/3y4zai/ama_nando_de_freitas/

    Nando de Freitas

    个人官网:

    http://www.cs.ubc.ca/~nando/

    Wikipedia:

    https://en.wikipedia.org/wiki/Nando_de_Freitas

    Twitter:

    https://twitter.com/NandoDF

    Google Scholar:

    https://scholar.google.com/citations?user=nzEluBwAAAAJ&hl=en

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/3y4zai/ama_nando_de_freitas/

    Andrew Ng

    个人官网:

    http://www.andrewng.org/

    Wikipedia:

    https://en.wikipedia.org/wiki/Andrew_Ng

    Twitter:

    https://twitter.com/AndrewYNg

    Google Scholar:

    https://scholar.google.com/citations?use

    Quora:

    https://www.quora.com/profile/Andrew-Ng"

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/32ihpe/ama_andrew_ng_and_adam_coates/

    Daphne Koller

    个人官网:

    http://ai.stanford.edu/users/koller/

    Wikipedia:

    https://en.wikipedia.org/wiki/Daphne_Koller

    Twitter:

    https://twitter.com/DaphneKoller?lang=en

    Google Scholar:

    https://scholar.google.com/citations?user=5Iqe53IAAAAJ

    Quora:

    https://www.quora.com/profile/Daphne-Koller

    Quora Session:

    https://www.quora.com/session/Daphne-Koller/1

    Adam Coates

    个人官网:

    http://cs.stanford.edu/~acoates/

    Twitter:

    https://twitter.com/adampaulcoates

    Google Scholar:

    https://scholar.google.com/citations?user=bLUllHEAAAAJ&hl=en"

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/32ihpe/ama_andrew_ng_and_adam_coates/

    Jürgen Schmidhuber

    个人官网:

    http://people.idsia.ch/~juergen/

    Wikipedia:

    https://en.wikipedia.org/wiki/J%C3%BCrgen_Schmidhuber

    Google Scholar:

    https://scholar.google.com/citations?user=gLnCTgIAAAAJ&hl=en

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/2xcyrl/i_am_j%C3%BCrgen_schmidhuber_ama/

    Geoffrey Hinton

    个人官网:

    Wikipedia:

    https://en.wikipedia.org/wiki/Geoffrey_Hinton

    Google Scholar:

    http://www.cs.toronto.edu/~hinton/

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/2lmo0l/ama_geoffrey_hinton/

    Terry Sejnowski

    个人官网:

    http://www.salk.edu/scientist/terrence-sejnowski/

    Wikipedia:

    https://en.wikipedia.org/wiki/Terry_Sejnowski

    Twitter:

    https://twitter.com/sejnowski?lang=en

    Google Scholar:

    https://scholar.google.com/citations?user=m1qAiOUAAAAJ&hl=en

    Reddit AMA:

    https://www.reddit.com/r/IAmA/comments/2id4xd/we_are_barb_oakley_terry_sejnowski_instructors_of/

    Michael Jordan

    个人官网:

    https://people.eecs.berkeley.edu/~jordan/

    Wikipedia:

    https://en.wikipedia.org/wiki/Michael_I._Jordan

    Google Scholar:

    https://scholar.google.com/citations?user=yxUduqMAAAAJ&hl=en"

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/2fxi6v/ama_michael_i_jordan/

    Peter Norvig

    个人官网:

    http://norvig.com/

    Wikipedia:

    https://en.wikipedia.org/wiki/Peter_Norvig

    Google Scholar:

    https://scholar.google.com/citations?user=Ol0vcWgAAAAJ&hl=en

    Reddit AMA:

    https://www.reddit.com/r/blog/comments/b8aln/peter_norvig_answers_your_questions_ask_me/

    Yoshua Bengio

    个人官网:

    http://www.iro.umontreal.ca/~bengioy/yoshua_en/

    Wikipedia:

    https://en.wikipedia.org/wiki/Yoshua_Bengio

    Google Scholar:

    https://scholar.google.com/citations?user=kukA0LcAAAAJ&hl=en

    Quora:

    https://www.quora.com/profile/Yoshua-Bengio

    Reddit AMA:

    http://www.reddit.com/r/MachineLearning/comments/1ysry1/ama_yoshua_bengio/

    Ina Goodfellow

    个人官网:

    http://www.iangoodfellow.com/

    Wikipedia:

    https://en.wikipedia.org/wiki/Ian_Goodfellow

    Twitter:

    https://twitter.com/goodfellow_ian

    Google Scholar:

    https://scholar.google.com/citations?user=iYN86KEAAAAJ&hl=en

    Quora:

    https://www.quora.com/profile/Ian-Goodfellow

    Quora Session:

    https://www.quora.com/session/Ian-Goodfellow/1

    Andrej Karpathy

    个人官网:

    http://karpathy.github.io/

    Twitter:

    https://twitter.com/karpathy

    Google Scholar:

    https://scholar.google.com/citations?user=l8WuQJgAAAAJ&hl=en

    Quora:

    https://www.quora.com/profile/Andrej-Karpathy

    Quora Session:

    https://www.quora.com/session/Andrej-Karpathy/1

    Richard Socher

    个人官网:

    http://www.socher.org/

    Twitter:

    https://twitter.com/RichardSocher

    Google Scholar:

    https://scholar.google.com/citations?user=FaOcyfMAAAAJ&hl=en

    Interview:

    http://www.kdnuggets.com/2015/10/metamind-mastermind-richard-socher-deep-learning-interview.html

    Demis Hassabis

    个人官网:

    http://demishassabis.com/

    Wikipedia:

    https://en.wikipedia.org/wiki/Demis_Hassabis

    Twitter:

    https://twitter.com/demishassabis

    Google Scholar:

    https://scholar.google.com/citations?user=dYpPMQEAAAAJ&hl=en

    Interview:

    https://www.bloomberg.com/features/2016-demis-hassabis-interview-issue/

    Christopher Manning

    个人官网:

    https://nlp.stanford.edu/~manning/

    Twitter:

    https://twitter.com/chrmanning

    Google Scholar:

    https://scholar.google.com/citations?user=1zmDOdwAAAAJ&hl=en"

    Fei-Fei Li

    个人官网:

    http://vision.stanford.edu/people.html

    Wikipedia:

    https://en.wikipedia.org/wiki/Fei-Fei_Li

    Twitter:

    https://twitter.com/drfeifei

    Google Scholar:

    https://scholar.google.com/citations?user=1zmDOdwAAAAJ&hl=en"

    Ted Talk:

    https://www.ted.com/talks/fei_fei_li_how_we_re_teaching_computers_to_understand_pictures/transcript?language=en

    François Chollet

    个人官网:

    https://scholar.google.com/citations?user=VfYhf2wAAAAJ&hl=en

    Twitter:

    https://twitter.com/fchollet

    Google Scholar:

    https://scholar.google.com/citations?user=VfYhf2wAAAAJ&hl=en

    Quora:

    https://www.quora.com/profile/Fran%C3%A7ois-Chollet

    Quora Session:

    https://www.quora.com/session/Fran%C3%A7ois-Chollet/1

    Dan Jurafsky

    个人官网:

    https://web.stanford.edu/~jurafsky/

    Wikipedia:

    https://en.wikipedia.org/wiki/Daniel_Jurafsky

    Twitter:

    https://twitter.com/jurafsky

    Google Scholar:

    https://scholar.google.com/citations?user=uZg9l58AAAAJ&hl=en

    Oren Etzioni

    个人官网:

    http://allenai.org/team/orene/

    Wikipedia:

    https://en.wikipedia.org/wiki/Oren_Etzioni

    Twitter:

    https://twitter.com/etzioni

    Google Scholar:

    https://scholar.google.com/citations?user=XF6Yk98AAAAJ&hl=en

    Quora:

    https://scholar.google.com/citations?user

    Reddit AMA:

    https://www.reddit.com/r/IAmA/comments/2hdc09/im_oren_etzioni_head_of_paul_allens_institute_for/

    机构

    网络上有大量的知名机构致力于推进人工智能领域的研究和发展。

    以下列出的是同时拥有官方网站/博客和推特账号的机构。

    OpenAI

    官网:https://openai.com/

    Twitter:https://twitter.com/OpenAI

    DeepMind

    官网:https://deepmind.com/

    Twitter:https://twitter.com/DeepMindA

    Google Research

    官网:https://research.googleblog.com/

    Twitter:https://twitter.com/googleresearch

    AWS AI

    官网:https://aws.amazon.com/blogs/ai/

    Twitter:https://twitter.com/awscloud

    Facebook AI Research

    官网:https://research.fb.com/category/facebook-ai-research-fair/

    Microsoft Research

    官网:https://www.microsoft.com/en-us/research/

    Twitter:https://twitter.com/MSFTResearch

    Baidu Research

    官网:http://research.baidu.com/

    Twitter:https://twitter.com/baiduresearch?lang=en

    IntelAI

    官网:https://software.intel.com/en-us/ai

    Twitter:https://twitter.com/IntelAI

    AI2

    官网:http://allenai.org/

    Twitter:https://twitter.com/allenai_org

    Partnership on AI

    官网:https://www.partnershiponai.org/

    Twitter:https://twitter.com/partnershipai

    视频课程

    以下列出的是一些免费的视频课程和教程。

    Coursera — Machine Learning (Andrew Ng):

    https://www.coursera.org/learn/machine-learning#syllabus

    Coursera — Neural Networks for Machine Learning (Geoffrey Hinton):

    https://www.coursera.org/learn/neural-networks

    Udacity — Intro to Machine Learning (Sebastian Thrun):

    https://classroom.udacity.com/courses/ud120

    Udacity — Machine Learning (Georgia Tech):

    https://www.udacity.com/course/machine-learning--ud262

    Udacity — Deep Learning (Vincent Vanhoucke):

    https://www.udacity.com/course/deep-learning--ud730

    Machine Learning (mathematicalmonk):

    https://www.youtube.com/playlist?list=PLD0F06AA0D2E8FFBA

    Practical Deep Learning For Coders (Jeremy Howard & Rachel Thomas):

    http://course.fast.ai/start.html

    Stanford CS231n — Convolutional Neural Networks for Visual Recognition (Winter 2016) :

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

    (class link):http://cs231n.stanford.edu/

    Stanford CS224n — Natural Language Processing with Deep Learning (Winter 2017) :

    https://www.youtube.com/playlist?list=PL3FW7Lu3i5Jsnh1rnUwq_TcylNr7EkRe6

    (class link):http://web.stanford.edu/class/cs224n/

    Oxford Deep NLP 2017 (Phil Blunsom et al.):

    https://github.com/oxford-cs-deepnlp-2017/lectures

    Reinforcement Learning (David Silver):

    http://www0.cs.ucl.ac.uk/staff/d.silver/web/Teaching.html

    Practical Machine Learning Tutorial with Python (sentdex):

    https://www.youtube.com/watch?list=PLQVvvaa0QuDfKTOs3Keq_kaG2P55YRn5v&v=OGxgnH8y2NM

    YouTube

    以下,我列举了一些YoutTube频道和用户,它们的主要内容是人工智能或者机器学习。这里按照受欢迎程度列举如下:

    sentdex (225K subscribers, 21M views):

    https://www.youtube.com/user/sentdex

    Artificial Intelligence A.I. (7M views):

    https://www.youtube.com/channel/UC-XbFeFFzNbAUENC8Ofpn3g

    Siraj Raval (140K subscribers, 5M views):

    https://www.youtube.com/channel/UCWN3xxRkmTPmbKwht9FuE5A

    Two Minute Papers (60K subscribers, 3.3M views):

    https://www.youtube.com/user/keeroyz

    DeepLearning.TV (42K subscribers, 1.7M views):

    https://www.youtube.com/channel/UC9OeZkIwhzfv-_Cb7fCikLQ

    Data School (37K subscribers, 1.8M views):

    https://www.youtube.com/user/dataschool

    Machine Learning Recipes with Josh Gordon (324K views):

    https://www.youtube.com/playlist?list=PLOU2XLYxmsIIuiBfYad6rFYQU_jL2ryal

    Artificial Intelligence — Topic (10K subscribers):

    https://www.youtube.com/channel/UC9pXDvrYYsHuDkauM2fLllQ

    Allen Institute for Artificial Intelligence (AI2) (1.6K subscribers, 69K views):

    https://www.youtube.com/channel/UCEqgmyWChwvt6MFGGlmUQCQ

    Machine Learning at Berkeley (634 subscribers, 48K views):

    https://www.youtube.com/channel/UCXweTmAk9K-Uo9R6SmfGtjg

    Understanding Machine Learning — Shai Ben-David (973 subscribers, 43K views):

    https://www.youtube.com/channel/UCR4_akQ1HYMUcDszPQ6jh8Q

    Machine Learning TV (455 subscribers, 11K views):

    https://www.youtube.com/channel/UChIaUcs3tho6XhyU6K6KMrw

    博客

    Andrej Karpathy

    博客:http://karpathy.github.io/

    Twitter:https://twitter.com/karpathy

    i am trask

    博客:http://iamtrask.github.io/

    Twitter:https://twitter.com/iamtrask

    Christopher Olah

    博客:http://colah.github.io/

    Twitter:https://twitter.com/ch402

    Top Bots

    博客:http://www.topbots.com/

    Twitter:https://twitter.com/topbots

    WildML

    博客:http://www.wildml.com/

    Twitter:https://twitter.com/dennybritz

    Distill

    博客:http://distill.pub/

    Twitter:https://twitter.com/distillpub

    Machine Learning Mastery

    博客:http://machinelearningmastery.com/blog/

    Twitter:https://twitter.com/TeachTheMachine

    FastML

    博客:http://fastml.com/

    Twitter:https://twitter.com/fastml_extra

    Adventures in NI

    博客:https://joanna-bryson.blogspot.de/

    Twitter:https://twitter.com/j2bryson

    Sebastian Ruder

    博客:http://sebastianruder.com/

    Twitter:https://twitter.com/seb_ruder

    Unsupervised Methods

    博客:http://unsupervisedmethods.com/

    Twitter:https://twitter.com/RobbieAllen

    Explosion

    博客:https://explosion.ai/blog/

    Twitter:https://twitter.com/explosion_ai

    Tim Dettwers

    博客:http://timdettmers.com/

    Twitter:https://twitter.com/Tim_Dettmers

    When trees fall...

    博客:http://blog.wtf.sg/

    Twitter:https://twitter.com/tanshawn

    ML@B

    博客:https://ml.berkeley.edu/blog/

    Twitter:https://twitter.com/berkeleyml

    媒体作家

    以下是一些人工智能领域方向顶尖的媒体作家。

    Robbie Allen:

    https://medium.com/@robbieallen

    Erik P.M. Vermeulen:

    https://medium.com/@erikpmvermeulen

    Frank Chen:

    https://medium.com/@withfries2

    azeem:

    https://medium.com/@azeem

    Sam DeBrule:

    https://medium.com/@samdebrule

    Derrick Harris:

    https://medium.com/@derrickharris

    Yitaek Hwang:

    https://medium.com/@yitaek

    samim:

    https://medium.com/@samim

    Paul Boutin:

    https://medium.com/@Paul_Boutin

    Mariya Yao:

    https://medium.com/@thinkmariya

    Rob May:

    https://medium.com/@robmay

    Avinash Hindupur:

    https://medium.com/@hindupuravinash

    书籍

    以下列出的是关于机器学习、深度学习和自然语言处理的书。这些书都是免费的,可以通过网络获取或者下载。

    机器学习

    Understanding Machine Learning From Theory to Algorithms:

    http://www.cs.huji.ac.il/~shais/UnderstandingMachineLearning/understanding-machine-learning-theory-algorithms.pdf

    Machine Learning Yearning:

    http://www.mlyearning.org/

    A Course in Machine Learning:

    http://ciml.info/

    Machine Learning:

    https://www.intechopen.com/books/machine_learning

    Neural Networks and Deep Learning:

    http://neuralnetworksanddeeplearning.com/

    Deep Learning Book:

    http://www.deeplearningbook.org/

    Reinforcement Learning: An Introduction:

    http://incompleteideas.net/sutton/book/the-book-2nd.html

    Reinforcement Learning:

    https://www.intechopen.com/books/reinforcement_learning

    自然语言处理

    Speech and Language Processing (3rd ed. draft):

    https://web.stanford.edu/~jurafsky/slp3/

    Natural Language Processing with Python:

    http://www.nltk.org/book/

    An Introduction to Information Retrieval:

    https://nlp.stanford.edu/IR-book/html/htmledition/irbook.html

    数学

    Introduction to Statistical Thought:

    http://people.math.umass.edu/~lavine/Book/book.pdf

    Introduction to Bayesian Statistics:

    https://www.stat.auckland.ac.nz/~brewer/stats331.pdf

    Introduction to Probability:

    https://www.dartmouth.edu/~chance/teaching_aids/books_articles/probability_book/amsbook.mac.pdf

    Think Stats: Probability and Statistics for Python programmers:

    http://greenteapress.com/wp/think-stats-2e/

    The Probability and Statistics Cookbook:

    http://statistics.zone/

    Linear Algebra:

    http://joshua.smcvt.edu/linearalgebra/book.pdf

    Linear Algebra Done Wrong:

    http://www.math.brown.edu/~treil/papers/LADW/book.pdf

    Linear Algebra, Theory And Applications:

    https://math.byu.edu/~klkuttle/Linearalgebra.pdf

    Mathematics for Computer Science:

    https://courses.csail.mit.edu/6.042/spring17/mcs.pdf

    Calculus:

    https://ocw.mit.edu/ans7870/resources/Strang/Edited/Calculus/Calculus.pdf

    Calculus I for Computer Science and Statistics Students:

    http://www.math.lmu.de/~philip/publications/lectureNotes/calc1_forInfAndStatStudents.pdf

    Quora

    Quora对于人工智能和机器学习来说是一个非常好的资源。许多业界最顶尖的研究者会对Quora上某些问题进行回答。以下,我列举了主要的人工智能相关的主题,你可以订阅如果你想跟进这些内容。

    Computer-Science (5.6M followers):

    https://www.quora.com/topic/Computer-Science

    Machine-Learning (1.1M followers):

    https://www.quora.com/topic/Machine-Learning

    Artificial-Intelligence (635K followers):

    https://www.quora.com/topic/Artificial-Intelligence

    Deep-Learning (167K followers):

    https://www.quora.com/topic/Deep-Learning

    Natural-Language-Processing (155K followers):

    https://www.quora.com/topic/Natural-Language-Processing

    Classification-machine-learning (119K followers):

    https://www.quora.com/topic/Classification-machine-learning

    Artificial-General-Intelligence (82K followers)

    https://www.quora.com/topic/Artificial-General-Intelligence

    Convolutional-Neural-Networks-CNNs (25K followers):

    https://www.quora.com/topic/Artificial-General-Intelligence

    Computational-Linguistics (23K followers):

    https://www.quora.com/topic/Computational-Linguistics

    Recurrent-Neural-Networks (17.4K followers):

    https://www.quora.com/topic/Recurrent-Neural-Networks

    Reddit

    Reddit上的人工智能社区并没有Quora上的那么大,但是,Reddit上面依然有一些值得关注的资源。Reddit有助于跟进最新的业界动态和研究进展,而Quora便于进行问答交流。以下通过关注量列举了主要的人工智能领域的subreddits。

    /r/MachineLearning (111K readers):

    https://www.reddit.com/r/MachineLearning

    /r/robotics/ (43K readers):

    https://www.reddit.com/r/robotics/

    /r/artificial (35K readers):

    https://www.reddit.com/r/artificial

    /r/datascience (34K readers):

    https://www.reddit.com/r/datascience

    /r/learnmachinelearning (11K readers):

    https://www.reddit.com/r/learnmachinelearning

    /r/computervision (11K readers):

    https://www.reddit.com/r/computervision

    /r/MLQuestions (8K readers):

    https://www.reddit.com/r/MLQuestions

    /r/LanguageTechnology (7K readers):

    https://www.reddit.com/r/LanguageTechnology

    /r/mlclass (4K readers):

    https://www.reddit.com/r/mlclass

    /r/mlpapers (4K readers):

    https://www.reddit.com/r/mlpapers

    Github

    人工智能领域最令人激动的原因之一是大多数项目都是开源的,而且可以通过Github获得。如果你需要一些Python或Jupyter Notebooks实现的示例算法,在Github上有大量的这类教育资源。

    Machine Learning (6K repos):

    https://github.com/search?o=desc&q=topic%3Amachine-learning+&s=stars&type=Repositories&utf8=%E2%9C%93

    Deep Learning (3K repos):

    https://github.com/search?q=topic%3Adeep-learning&type=Repositories

    Tensorflow (2K repos):

    https://github.com/search?q=topic%3Atensorflow&type=Repositories

    Neural Network (1K repos):

    https://github.com/search?q=topic%3Atensorflow&type=Repositories

    NLP (1K repos):

    https://github.com/search?utf8=%E2%9C%93&q=topic%3Anlp&type=Repositories

    播客

    对人工智能进行报道的播客数量在不断地增加,一部分关注最新的动态,一部分关注人工智能教育。

    ConcerningAI

    官网:

    https://concerning.ai/

    iTunes:

    https://itunes.apple.com/us/podcast/concerning-ai-artificial-intelligence/id1038719211

    This Week in Machine Learning and AI

    官网:

    https://twimlai.com/

    iTunes:

    https://itunes.apple.com/us/podcast/this-week-in-machine-learning/id1116303051?mt=2

    The AI Podcast

    官网:

    https://blogs.nvidia.com/ai-podcast/

    iTunes:

    https://itunes.apple.com/us/podcast/the-ai-podcast/id1186480811

    Data Skeptic

    官网:

    http://dataskeptic.com/

    iTunes:

    https://itunes.apple.com/us/podcast/the-data-skeptic-podcast/id890348705

    Linear Digressions

    官网:

    https://itunes.apple.com/us/podcast/linear-digressions/id941219323

    iTunes:

    https://itunes.apple.com/us/podcast/linear-digressions/id941219323?mt=2

    Partially Dervative

    官网:

    http://partiallyderivative.com/

    iTunes:

    https://itunes.apple.com/us/podcast/partially-derivative/id942048597?mt=2

    O'Reilly Data Show

    官网:

    http://radar.oreilly.com/tag/oreilly-data-show-podcast

    iTunes:

    https://itunes.apple.com/us/podcast/oreilly-data-show/id944929220

    Learning Machines 101

    官网:

    http://www.learningmachines101.com/

    iTunes:

    https://itunes.apple.com/us/podcast/learning-machines-101/id892779679?mt=2

    The Talking Machines

    官网:

    http://www.thetalkingmachines.com/

    iTunes:

    https://itunes.apple.com/us/podcast/talking-machines/id955198749?mt=2

    Artificial Intelligence in Industry

    官网:

    http://techemergence.com/

    iTunes:

    https://itunes.apple.com/us/podcast/artificial-intelligence-in-industry-with-dan-faggella/id670771965?mt=2

    Machine Learning Guide

    官网

    http://ocdevel.com/podcasts/machine-learning

    https://itunes.apple...iTunes:

    https://itunes.apple.com/us/podcast/machine-learning-guide/id1204521130?mt=2

    时事通讯媒体

    如果你想了解最新的业界消息和学术进展,这里有大量的时事通讯媒体供你选择。

    The Exponential View:

    https://www.getrevue.co/profile/azeem

    AI Weekly:

    http://aiweekly.co/

    Deep Hunt:

    https://deephunt.in/

    O’Reilly Artificial Intelligence Newsletter:

    http://www.oreilly.com/ai/newsletter.html

    Machine Learning Weekly:

    http://mlweekly.com/

    Data Science Weekly Newsletter:

    https://www.datascienceweekly.org/

    Machine Learnings:

    http://subscribe.machinelearnings.co/

    Artificial Intelligence News:

    http://aiweekly.co/

    When trees fall…:

    https://meetnucleus.com/p/GVBR82UWhWb9

    WildML:

    https://meetnucleus.com/p/PoZVx95N9RGV

    Inside AI:

    https://inside.com/technically-sentient

    Kurzweil AI:

    http://www.kurzweilai.net/create-account

    Import AI:

    https://jack-clark.net/import-ai/

    The Wild Week in AI:

    https://www.getrevue.co/profile/wildml

    Deep Learning Weekly:

    http://www.deeplearningweekly.com/

    Data Science Weekly:

    https://www.datascienceweekly.org/

    KDnuggets Newsletter:

    http://www.kdnuggets.com/news/subscribe.html?qst

    会议

    随着人工智能的崛起,与人工智能相关的会议也在逐渐增加。这里列举一些主要的会议。

    学术会议

    NIPS (Neural Information Processing Systems):

    https://nips.cc/

    ICML (International Conference on Machine Learning):

    https://2017.icml.cc

    KDD (Knowledge Discovery and Data Mining):

    http://www.kdd.org/

    ICLR (International Conference on Learning Representations):

    http://www.iclr.cc/

    ACL (Association for Computational Linguistics):

    http://acl2017.org/

    EMNLP (Empirical Methods in Natural Language Processing):

    http://emnlp2017.net/

    CVPR (Computer Vision and PatternRecognition):

    http://cvpr2017.thecvf.com/

    ICCF(InternationalConferenceonComputerVision):

    http://iccv2017.thecvf.com/

    专业会议

    O’Reilly Artificial Intelligence Conference:

    https://conferences.oreilly.com/artificial-intelligence/

    Machine Learning Conference (MLConf):

    http://mlconf.com/

    AI Expo (North America, Europe, World):

    https://www.ai-expo.net/

    AI Summit:

    https://theaisummit.com/

    AI Conference:

    https://aiconference.ticketleap.com/helloworld/

    论文

    arXiv.org上特定领域论文集:

    Artificial Intelligence:

    https://arxiv.org/list/cs.AI/recent

    Learning (Computer Science):

    https://arxiv.org/list/cs.LG/recent

    Machine Learning (Stats):

    https://arxiv.org/list/stat.ML/recent

    NLP:

    https://arxiv.org/list/cs.CL/recent

    Computer Vision:

    https://arxiv.org/list/cs.CV/recent

    Semantic Scholar搜索结果:

    Neural Networks (179K results):

    https://www.semanticscholar.org/search?q=%22neural%20networks%22&sort=relevance&ae=false

    Machine Learning (94K results):

    https://www.semanticscholar.org/search?q=%22machine%20learning%22&sort=relevance&ae=false

    Natural Language (62K results):

    https://www.semanticscholar.org/search?q=%22natural%20language%22&sort=relevance&ae=false

    Computer Vision (55K results):

    https://www.semanticscholar.org/search?q=%22natural%20language%22&sort=relevance&ae=false

    Deep Learning (24K results):

    https://www.semanticscholar.org/search?q=%22deep%20learning%22&sort=relevance&ae=false

    此外,一个很好的资源是Andrej Karpathy维护的一个用于搜索论文的项目。

    http://www.arxiv-sanity.com/

    作者:Robbie Allen

    原文:https://unsupervisedmethods.com/my-curated-list-of-ai-and-machine-learning-resources-from-around-the-web-9a97823b8524

    关注该公众号

    相关文章

      网友评论

        本文标题:葵花宝典之机器学习:全网最重要的AI资源都在这里了(大牛,研究机

        本文链接:https://www.haomeiwen.com/subject/zjhqrxtx.html