Machine Learning: Difference between revisions
Jump to navigation
Jump to search
No edit summary |
No edit summary |
||
(3 intermediate revisions by the same user not shown) | |||
Line 1: | Line 1: | ||
{{ai}} | {{ai}} | ||
{{boxstart}}<font size=5>AI and reinforcement learning meetup at Noisebridge Wednesdays at 7pm. | |||
*[https://www.meetup.com/noisebridge/events/kpsdrsyccqblb/ AI and Reinforcement Learning Meetup page]</font> | |||
*'''WHEN:''' Wednesdays at 7:00pm | |||
*'''WHERE:''' 272 Capp St. (Church classroom) | |||
'''MAINTAINERS:''' [[TJ]], [[User:Ryan_L]] | |||
{{boxend}} | |||
=== Join the Mailing List === | === Join the Mailing List === | ||
Line 5: | Line 14: | ||
https://www.noisebridge.net/mailman/listinfo/ml | https://www.noisebridge.net/mailman/listinfo/ml | ||
=== | == Historical Teachers == | ||
*Who: Andy McMurry | *Who: Andy McMurry | ||
Revision as of 23:56, 7 December 2021
Noisebridge | About | Visit | 272 | Manual | Contact | Guilds | Resources | Events | Projects | 5MoF | Meetings | Donate | (Edit) |
Guilds | Meta | Code | Electronics | Fabrication | Games | Sewing | Music | AI | Neuro | Philosophy | Funding | Art | Security | Ham | Brew | (Edit) |
AI | Machine Learning | Botbridge | DreamTeam | ML Tools | (Edit) |
AI and reinforcement learning meetup at Noisebridge Wednesdays at 7pm.
MAINTAINERS: TJ, User:Ryan_L |
Join the Mailing List
https://www.noisebridge.net/mailman/listinfo/ml
Historical Teachers
- Who: Andy McMurry
Learn about Data Science and Machine Learning
Classes
- Coursera Machine Learning Course with Andrew Ng
- Coursera Computational Neuroscience Course with Rajesh P N Rao and Adrienne Fairhall
- MIT Machine Learning Class with Tommi Jaakkola
- Stanford CS229
- Carnegie Mellon Machine Learning Course with Tom Mitchell
- Linear Algebra with Gilbert Strang
- Neural Networks Class with Hugo Larochelle
Books
- Elements of Statistical Learning
- Pattern Recognition and Machine Learning
- Information Theory, Inference, and Learning Algorithms
- Interactive Data Visualization for the Web (D3)
- Introduction to R
- Introduction to Probability (Grinstead and Snell)
- Modern Introduction to Probability and Statistics (Kraaikamp and Meester)
- Bayesian Reasoning and Machine Learning
Tutorials
Noisebridge ML Class Slides
- Intro to Machine Learning
- A Brief Tour of Statistics
- Generalized Linear Models
- Neural Nets Workshop
- Support Vector Machines
- Random Forests
- Independent Components Analysis
- Deep Nets
Code and SourceForge Site
- We have a Sourceforge Project
- We have a git repository on the project page, accessible as:
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
- 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
- Small Group Subproblems
- Fundraising
- Noisebridge Machine Learning Course
- Kaggle Social Network Contest
- KDD Competition 2010
- HIV
Datasets and Websites
- UCI Machine Learning Repository
- DataSF.org
- Infochimps
- Face Recognition Databases
- Time Series Data Library
- Data Q&A Forum
- Metaoptimize
- Quora ML Page
- A ton of Weather Data
- MLcomp
- Upload your algorithm and objectively compare it's performance to other algorithms
- Social Security Death Master File!
- SIPRI Social Databases
- Wealth of information on international arms transfers and peace missions.
- Amazon AWS Public Datasets
- UCDP/PRIO Armed Conflict Datasets
- Socrata Government Datasets
- US City Census Data
- Yahoo Labs Datasets
Software Tools
Generic ML Libraries
- 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
- Theano
- Symbolic Expressions and Transparent GPU Integration
- Caffe
- Convolutional Neural Networks on GPU
- Neurolab
- Has support for recurrent neural nets
Online ML
- MOA (Massive Online Analysis)
- Offshoot of weka, has all online-algorithms
- Jubatus
- Distributed Online ML
- DOGMA
- MATLAB-based online learning stuff
- libol
- oll
- scw-learning
Graphical Models
- 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
- Beautiful Soup
- Screen-scraping tools
- SALLY
- Tool for embedding strings into vector spaces
- Gensim
- Topic modeling
Collaborative Filtering
- PREA
- Personalized Recommendation Algorithms Toolkit
- SVDFeature
- Collaborative Filtering and Ranking Toolkit
Computer Vision
- 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
- Friture
- Real-time spectrogram generation
- pyo
- Real-time audio signal processing
- PYMir
- A library for reading mp3's into python, and doing analysis
- PRAAT
- Speech analysis toolkit
- Sound Analysis Pro
- Tool for analyzing animal sounds
- Luscinia
- Software for archiving, measuring, and analyzing bioacoustic data
- List of Sound Tools for Python
- Jasper
- Voice-control anything!
Data Visualization
- 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
- Mahout
- Hadoop cluster based ML package.
- STAR: Cluster
- Easily build your own Python computing cluster on Amazon EC2
Database Stuff
Neural Simulation
Other
Presentations and other Materials
- Awesome Machine Learning Applications -- A list of cool applications of ML
- Hands-on Machine Learning, a presentation jbm gave on 2009-01-07.
- http://www.youtube.com/user/StanfordUniversity#g/c/A89DCFA6ADACE599 Stanford Machine Learning online course videos]
- Media:Brief_statistics_slides.pdf, a presentation given on statistics for the machine learning group
- LinkedIn discussion on good resources for data mining and predictive analytics
- Face Recognition Algorithms
- Max Welling's ML classnotes
Topics to Learn and Teach
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 [1]
- A basic decision tree builder, recursive and using entropy metrics
- Unsupervised Learning
- Hidden Markov Models
- Clustering: PCA, k-Means, Expectation-Maximization
- Graphical Modeling
- Generative Models: gaussian distribution, multinomial distributions, HMMs, Naive Bayes
- Deep Belief Networks & Restricted Boltzmann Machines
- 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 [2]
- Information Theory: Entropy, Mutual Information, Gaussian Channels
- Estimation of Misclassification [3]
- No-Free Lunch Theorem [4]
- Machine Learning SDK's
- Applications
- Collective Intelligence & Recommendation Engines