Machine Learning: Difference between revisions

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{{ai}}
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{{headerbox}}<font size=5>AI and reinforcement learning meetup at Noisebridge Wednesdays at 8pm.</font>
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*[https://www.meetup.com/noisebridge/events/kpsdrsyccqblb/ AI and Reinforcement Learning Meetup page]
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*'''WHEN:''' Wednesdays at 8:00pm
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*'''WHERE:''' 272 Capp St. (Church classroom)
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*'''WHO:''' Anyone interested in learning about artificial intelligence, machine learning and related topics.
*'''CHANNELS:''' Join the [https://www.noisebridge.net/mailman/listinfo/ml|https://www.noisebridge.net/mailman/listinfo/ml] mailing list. #ai on [[Discord]] and [[Slack]]
* '''MAINTAINERS:''' TJ/[[User:Culteejen]], [[User:Ryan_L]]
* '''NOTES:''' [[Machine Learning/Meeting Notes|Meeting Notes]]
{{boxend}}


=== Join the Mailing List ===
=== Join the Mailing List ===
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https://www.noisebridge.net/mailman/listinfo/ml
https://www.noisebridge.net/mailman/listinfo/ml


=== Next Meeting===
== History ==
Machine Learning groups have been perennial at Noisebridge, accumulating knowledge, projects and meeting notes since 2008.
* Some of our info links may be outdated, so let us know if anything is wrong and edit the [[wiki]] as needed.


*When: Thursday, February 13, 2014 @ 6:30pm
=== Past Teachers ===
*Where: 2169 Mission St. (Church classroom)
*Andy McMurry
*Topic: Bayesian Inference for everyone
*Details:
*Who: Sam Tepper


=== Learn about Data Science and Machine Learning ===
=== Learn about Data Science and Machine Learning ===
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===== Classes =====
===== Classes =====
*[https://www.coursera.org/course/ml Coursera Machine Learning Course with Andrew Ng]
*[https://www.coursera.org/course/ml Coursera Machine Learning Course with Andrew Ng]
*[https://www.coursera.org/course/compneuro Coursera Computational Neuroscience Course with Adrienne Fairhall]
*[https://www.coursera.org/course/compneuro Coursera Computational Neuroscience Course with Rajesh P N Rao and Adrienne Fairhall]
*[http://ocw.mit.edu/courses/electrical-engineering-and-computer-science/6-867-machine-learning-fall-2006/ MIT Machine Learning Class with Tommi Jaakkola]
*[http://ocw.mit.edu/courses/electrical-engineering-and-computer-science/6-867-machine-learning-fall-2006/ MIT Machine Learning Class with Tommi Jaakkola]
*[http://cs229.stanford.edu/materials.html Stanford CS229]
*[http://cs229.stanford.edu/materials.html Stanford CS229]
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*[http://ocw.mit.edu/courses/mathematics/18-06-linear-algebra-spring-2010/ Linear Algebra with Gilbert Strang]
*[http://ocw.mit.edu/courses/mathematics/18-06-linear-algebra-spring-2010/ Linear Algebra with Gilbert Strang]
*[https://www.youtube.com/playlist?list=PL6Xpj9I5qXYEcOhn7TqghAJ6NAPrNmUBH Neural Networks Class with Hugo Larochelle]
*[https://www.youtube.com/playlist?list=PL6Xpj9I5qXYEcOhn7TqghAJ6NAPrNmUBH Neural Networks Class with Hugo Larochelle]
*[https://introtodeeplearning.com/ MIT Introduction to Deep Learning]
* [https://course.fast.ai/ Practical Deep Learning for Coders - Fast.ai ]


==== Books ====
==== Books ====
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*[http://www.cis.temple.edu/~latecki/Courses/CIS2033-Spring12/A_modern_intro_probability_statistics_Dekking05.pdf Modern Introduction to Probability and Statistics (Kraaikamp and Meester)]
*[http://www.cis.temple.edu/~latecki/Courses/CIS2033-Spring12/A_modern_intro_probability_statistics_Dekking05.pdf Modern Introduction to Probability and Statistics (Kraaikamp and Meester)]
*[http://web4.cs.ucl.ac.uk/staff/D.Barber/textbook/090310.pdf Bayesian Reasoning and Machine Learning]
*[http://web4.cs.ucl.ac.uk/staff/D.Barber/textbook/090310.pdf Bayesian Reasoning and Machine Learning]
*[https://github.com/chandanverma07/Ebooks/blob/master/Deep%20Learning%20with%20Python%2C%20Fran%C3%A7ois%20Chollet.pdf Deep Learning with Python François Chollet]


==== Tutorials ====
==== Tutorials ====
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*[http://scikit-learn.org/stable/tutorial/basic/tutorial.html Introduction to ML with scikits.learn]
*[http://scikit-learn.org/stable/tutorial/basic/tutorial.html Introduction to ML with scikits.learn]
*[http://www.sagemath.org/doc/tutorial/ Learn how to use SAGE]
*[http://www.sagemath.org/doc/tutorial/ Learn how to use SAGE]
*[https://skillcombo.com/topic/machine-learning/ Online Machine Learning Courses]


==== Noisebridge ML Class Slides ====
==== Noisebridge ML Class Slides ====
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** Collective Intelligence & Recommendation Engines
** Collective Intelligence & Recommendation Engines


=== [[Machine Learning/Meeting Notes|Meeting Notes]]===


[[Category:Events]]
[[Category:Events]]
[[Category:Projects]]
[[Category:Projects]]

Latest revision as of 18:03, 29 November 2023

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AI and reinforcement learning meetup at Noisebridge Wednesdays at 8pm.

Join the Mailing List[edit]

https://www.noisebridge.net/mailman/listinfo/ml

History[edit]

Machine Learning groups have been perennial at Noisebridge, accumulating knowledge, projects and meeting notes since 2008.

  • Some of our info links may be outdated, so let us know if anything is wrong and edit the wiki as needed.

Past Teachers[edit]

  • Andy McMurry

Learn about Data Science and Machine Learning[edit]

Classes[edit]

Books[edit]

Tutorials[edit]

Noisebridge ML Class Slides[edit]

Code and SourceForge Site[edit]

    git clone git://ml-noisebridge.git.sourceforge.net/gitroot/ml-noisebridge/ml-noisebridge
  • Send an email to the list if you want to become an administrator on the site to get write access to the git repo!

Future Talks and Topics, Ideas[edit]

  • Random Forests in R
  • Restricted Boltzmann Machines (Mike S, some day)
  • Analyzing brain cells (Mike S)
  • Deep Nets w/ Stacked Autoencoders (Mike S, some day)
  • Generalized Linear Models (Mike S, Erin L? some day)
  • Graphical Models
  • Working with the Kinect
  • Computer Vision with OpenCV

Projects[edit]

Datasets and Websites[edit]

Software Tools[edit]

Generic ML Libraries[edit]

  • Weka
    • a collection of data mining tools and machine learning algorithms.
  • scikits.learn
    • Machine learning Python package
  • scikits.statsmodels
    • Statistical models to go with scipy
  • PyBrain
    • Does feedforward, recurrent, SOM, deep belief nets.
  • LIBSVM
    • c-based SVM package
  • PyML
  • MDP
    • Modular framework, has lots of stuff!
  • VirtualBox Virtual Box Image with Pre-installed Libraries listed here
  • sympy Does symbolic math
  • Waffles
    • Open source C++ set of machine learning command line tools.
  • RapidMiner
  • Mobile Robotic Programming Toolkit
  • nitime
    • NeuroImaging in Python, has some good time series analysis stuff and multi-variate response fitting.
  • Pandas
    • Data analysis workflow in python
  • PyTables
    • Adds querying capabilities to HDF5 files
  • statsmodels
    • Regression, time series analysis, statistics stuff for python
  • Vowpal Wabbit
    • "Intrinsically Fast" implementation of gradient descent for large datasets
  • Shogun
    • Fast implementations of SVMs
  • MLPACK
    • High performance scalable ML Library
  • Torch
    • MATLAB-like environment for state-of-the art ML libraries written in LUA

Deep Nets[edit]

  • Theano
    • Symbolic Expressions and Transparent GPU Integration
  • Caffe
    • Convolutional Neural Networks on GPU
  • Neurolab
    • Has support for recurrent neural nets

Online ML[edit]

Graphical Models[edit]

  • BUGS
    • MCMC for Bayesian Models
  • JAGS
    • Hierarchical Bayesian Models
  • Stan
    • A graphical model compiler
  • Jayes
    • Bayesian networks in Java
  • ToPS
    • Probabilistic models of sequences
  • PyMC
    • Bayesian Models in Python

Text Stuff[edit]

Collaborative Filtering[edit]

  • PREA
    • Personalized Recommendation Algorithms Toolkit
  • SVDFeature
    • Collaborative Filtering and Ranking Toolkit

Computer Vision[edit]

  • OpenCV
    • Computer Vision Library
    • Has ML component (SVM, trees, etc)
    • Online tutorials here
  • DARWIN
    • Generic C++ ML and Computer Vision Library
  • PetaVision
    • Developing a real-time, full-scale model of the primate visual cortex.

Audio Processing[edit]

Data Visualization[edit]

  • Orange
    • Strong data visualization component
  • Gephi
    • Graph Visualization
  • ggplot
    • Nice plotting package for R
  • MayaVi2
    • 3D Scientific Data Visualization
  • Cytoscape
    • A JavaScript graph library for analysis and visualisation
  • plot.ly
    • Web-based plotting
  • D3 Ebook
    • Has a good list of HTML/CSS/Javascript data visualization tools.
  • plotly
    • Python plotting tool

Cluster Computing[edit]

  • Mahout
    • Hadoop cluster based ML package.
  • STAR: Cluster
    • Easily build your own Python computing cluster on Amazon EC2

Database Stuff[edit]

  • MADlib
    • Machine learning algorithms for in-database data
  • Manta
    • Distributed object storage

Neural Simulation[edit]

Other[edit]

Presentations and other Materials[edit]

Topics to Learn and Teach[edit]

NBML Course - Noisebridge Machine Learning Curriculum (work-in-progress)

CS229 - The Stanford Machine learning Course @ noisebridge

  • Supervised Learning
    • Linear Regression
    • Linear Discriminants
    • Neural Nets/Radial Basis Functions
    • Support Vector Machines
    • Classifier Combination [2]
    • A basic decision tree builder, recursive and using entropy metrics
  • Reinforcement Learning
    • Temporal Difference Learning
  • Math, Probability & Statistics
    • Metric spaces and what they mean
    • Fundamentals of probabilities
    • Decision Theory (Bayesian)
    • Maximum Likelihood
    • Bias/Variance Tradeoff, VC Dimension
    • Bagging, Bootstrap, Jacknife [3]
    • Information Theory: Entropy, Mutual Information, Gaussian Channels
    • Estimation of Misclassification [4]
    • No-Free Lunch Theorem [5]
  • Machine Learning SDK's
    • OpenCV ML component (SVM, trees, etc)
    • Mahout a Hadoop cluster based ML package.
    • Weka a collection of data mining tools and machine learning algorithms.
  • Applications
    • Collective Intelligence & Recommendation Engines