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Introducing Apache Mahout
Scalable Machine Learning for All! Grant Ingersoll
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Agenda What is Machine Learning? Mahout Definitions Types Applications
Why? How? Who?
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NOT! What is Machine Learning? Or?
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How about? Google News
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Or? Amazon.com
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Definition “Machine Learning is programming computers to optimize a performance criterion using example data or past experience” Intro. To Machine Learning by E. Alpaydin Subset of Artificial Intelligence Many other fields: comp sci., biology, math, psychology, etc.
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Characterizations Lots of Data Identifiable Features in that Data
Too big/costly for people to handle People still can help
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Types Supervised Unsupervised Semi-Supervised
Using labeled training data, create function that predicts output of unseen inputs Unsupervised Using unlabeled data, create function that predicts output Semi-Supervised Uses labeled and unlabeled data
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Classification/Categorization
Spam Filtering Named Entity Recognition Phrase Identification Sentiment Analysis Classification into a Taxonomy
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Clustering Find Natural Groupings Documents Search Results People
Genetic traits in groups Many, many more uses
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Collaborative Filtering
Recommend people and products User-User User likes X, you might too Item-Item People who bought X also bought Y
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Info. Retrieval Learning Ranking Functions
Learning Spelling Corrections User Click Analysis and Tracking
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Other Image Analysis Robotics Games
Higher level natural language processing Many, many others
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What is Apache Mahout? A Mahout is an elephant trainer/driver/keeper, hence… + Machine Learning = (and other distributed techniques)
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What? Hadoop brings: Thus, Mahout’s Goal is: Map/Reduce API HDFS
In other words, scalability and fault-tolerance Thus, Mahout’s Goal is: Scalable Machine Learning with Apache License
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Why Mahout? Many Open Source ML libraries either:
Lack Community Lack Documentation and Examples Lack Scalability Lack the Apache License ;-) Or are research-oriented Personal: Learn more ML Intelligent Apps are the Present and Future See the Hadoop talks tomorrow and Friday! Goal: Overcome gaps the Apache Way!
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Current Status Close to Initial release What’s in it:
Focused on examples, docs, bug fixes What’s in it: Simple Matrix/Vector library Taste Collaborative Filtering Clustering Canopy/K-Means/Fuzzy K-Means/Mean-shift Classifiers Naïve Bayes Complementary NB Evolutionary Integration with Watchmaker for fitness function
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How? Examples Taste Clustering Classification Evolutionary
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Taste: Movie Recommendations
Given ratings by users of movies, recommend other movies
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Clustering: Synthetic Control Data
Each clustering impl. has an example Job for running in <MAHOUT_HOME>/examples o.a.mahout.clustering.syntheticcontrol.* Outputs clusters… See output.txt, synthetic_control data
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Classification: NB and CNB Examples
20 Newsgroups Wikipedia
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Evolutionary Traveling Salesman Class Discovery
Class Discovery
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What’s Next? Release 0.1! Shared Amazon Images (others?) More Examples
Winnow/Perceptron (MAHOUT-85) Hbase and HAMA support Normalize I/O format for data Solr Integration (SOLR-769) Other Algorithms: SVM, Linear Regression, etc.
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When, Where, Who When? Now! Who? You! Where? Mahout is growing
We want Java programmers who: Are comfortable with math Like to work on large, hard problems Where?
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Resources “Programming Collective Intelligence” by Toby Segaran
“Data Mining - Practical Machine Learning Tools and Techniques” by Ian H. Witten and Eibe Frank Hadoop -
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