Download presentation
Presentation is loading. Please wait.
Published byAmberlynn Harrison Modified over 9 years ago
1
Introducing Apache Mahout Scalable Machine Learning for All! Grant Ingersoll Lucid Imagination
2
Overview What is Machine Learning? Mahout
3
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.
4
Types 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
5
Characterizations Lots of Data Identifiable Features in that Data Too big/costly for people to handle –People still can help
6
Clustering Unsupervised Find Natural Groupings –Documents –Search Results –People –Genetic traits in groups –Many, many more uses
7
Example: Clustering Google News
8
Collaborative Filtering Unsupervised Recommend people and products –User-User User likes X, you might too –Item-Item People who bought X also bought Y
9
Example: Collab Filtering Amazon.com
10
Classification/Categorization Many, many types Spam Filtering Named Entity Recognition Phrase Identification Sentiment Analysis Classification into a Taxonomy
11
Example: NER NER? Excerpt from Yahoo News
12
Example: Categorization
13
Info. Retrieval Learning Ranking Functions Learning Spelling Corrections User Click Analysis and Tracking
14
Other Image Analysis Robotics Games Higher level natural language processing Many, many others
15
What is Apache Mahout? A Mahout is an elephant trainer/driver/keeper, hence… + Machine Learning = (and other distributed techniques)
16
What? Hadoop brings: –Map/Reduce API –HDFS –In other words, scalability and fault- tolerance Mahout brings: –Library of machine learning algorithms –Examples
17
Why Mahout? Many Open Source ML libraries either: –Lack Community –Lack Documentation and Examples –Lack Scalability –Lack the Apache License ;-) –Or are research-oriented
18
Why Mahout? Intelligent Apps are the Present and Future Thus, Mahout’s Goal is: –Scalable Machine Learning with Apache License
19
Current Status What’s in it: –Simple Matrix/Vector library –Taste Collaborative Filtering –Clustering Canopy/K-Means/Fuzzy K-Means/Mean-shift/Dirichlet –Classifiers Naïve Bayes Complementary NB –Evolutionary Integration with Watchmaker for fitness function
20
How? Examples –Taste –Clustering –Classification –Evolutionary
21
Taste: Movie Recommendations Given ratings by users of movies, recommend other movies http://lucene.apache.org/mahout/taste.html#demohttp://lucene.apache.org/mahout/taste.html#demo
22
Taste Demo http://localhost:8080/mahout-taste- webapp/RecommenderServlet?userI D=12&debug=truehttp://localhost:8080/mahout-taste- webapp/RecommenderServlet?userI D=12&debug=true http://localhost:8080/mahout-taste- webapp/RecommenderServlet?userI D=43&debug=true
23
Clustering: Synthetic Control Data http://archive.ics.uci.edu/ml/datasets/Synth etic+Control+Chart+Time+Serieshttp://archive.ics.uci.edu/ml/datasets/Synth etic+Control+Chart+Time+Series Each clustering impl. has an example Job for running in /examples –o.a.mahout.clustering.syntheticcontrol.* Outputs clusters…
24
Classification: NB and CNB Examples 20 Newsgroups –http://cwiki.apache.org/confluence/displa y/MAHOUT/TwentyNewsgroupshttp://cwiki.apache.org/confluence/displa y/MAHOUT/TwentyNewsgroups Wikipedia –http://cwiki.apache.org/confluence/displa y/MAHOUT/WikipediaBayesExamplehttp://cwiki.apache.org/confluence/displa y/MAHOUT/WikipediaBayesExample
25
Evolutionary Traveling Salesman –http://cwiki.apache.org/confluence/displa y/MAHOUT/Traveling+Salesman Class Discovery –http://cwiki.apache.org/confluence/displa y/MAHOUT/Class+Discovery
26
What’s Next? More Examples Winnow/Perceptron (MAHOUT-85) Text Clustering Association Rules (MAHOUT-108) Logistic Regression Solr Integration (SOLR-769) GSOC
27
When, Who When? Now! –Mahout is growing Who? You! –We want programmers who: Are comfortable with math Like to work on hard problems –We want others to: Kick the tires
28
Where? http://lucene.apache.org/mahout –Hadoop - http://hadoop.apache.org http://cwiki.apache.org/MAHOUT mahout-{user|dev}@lucene.apache.org –http://www.lucidimagination.com/search/p:mahout
29
Resources “Programming Collective Intelligence” by Segaran “Data Mining - Practical Machine Learning Tools and Techniques” by Witten and Frank “Taming Text” by Ingersoll and Morton
Similar presentations
© 2025 SlidePlayer.com. Inc.
All rights reserved.