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From D2K to SEASR Overview September 27, 2007 Loretta Auvil Automated Learning Group, NCSA University of Illinois, Urbana-Champaign ALG Mission The specific mission of the Automated Learning Group is: • To collaborate with researchers to develop novel computer methods and the scientific foundation for using historical data to improve future decision making • To work closely with industrial, government, and academic partners to explore new application areas for such methods, and • To transfer the resulting software technology into real world applications Knowledge Discovery Process Required Effort for each KDD Step Arrows indicate the direction we want the effort to go. 60 Effort (%) 50 40 30 20 10 0 Objectives Determination Data Preparation Data Mining Interpretation/ Evaluation Three Primary Paradigms • Predictive Modeling – supervised learning approach where classification or prediction of one of the attributes is desired. – Classification is the prediction of predefined classes • e.g. Naive Bayesian, Decision Trees, and Neural Networks – Regression is the prediction of continuous data • e.g. Neural Networks, and Decision (Regression) Trees • Discovery – unsupervised learning approach for exploratory data analysis. – e.g. Association Rules, Link Analysis, Clustering, and Self Organizing Maps • Deviation Detection – identifying outliers in the data. – e.g. Visualization D2K- Framework for Data Analysis • • • • • • • • • Provides scalable environment from the Desktop to Web Services Employs a visual programming system for data/work flow paradigm Provides capability to build custom applications Provides capability to access data management tools Contains data mining algorithms for prediction and discovery Provides data transformations for standard operations Integrated environment for models and visualization Supports an extensible interface for creating one’s own algorithms Provides access to distributed computing capabilities D2K Components • • • • D2K Infrastructure • Itinerary Execution engine D2K-Driven Applications • Applications that make use of the D2K Infrastructure • Toolkit is a D2K-Driven app D2K Server • Special kind of D2K-Driven app • Wraps the infrastructure to provide remote itinerary and module execution • Used by the Toolkit to distribute module execution D2K Web Service • Provides a generic programmatic interface for executing itineraries • Communicates with D2K Servers over socket connections using D2K Specific protocols. D2K Streamline (D2K SL) • • • • • • Provides step by step interface to guide user in data analysis Supports return to earlier steps to run different parameters Uses the D2K infrastructure transparently Uses same D2K modules Provides way to capture different experiments Define templates that can be reused in different experiments D2K Web Service Architecture • Any web enabled client can connect to and use the D2K Web Service by sending SOAP messages over HTTP. • Itineraries and modules are stored on the web service machine and loaded over the network by the D2K Servers. • Job results are also stored in the web service tier. – Results are returned to clients upon request. • A relational database is used by the web service to lookup accounts, itineraries, servers, and jobs. • Remote D2K Servers handle itinerary processing. If possible, modules should load any data from remote locations. Creating Customer Value Prediction Industrial Manufacturer Computed customer buying propensities Achieved 25% conquest customer sales lift by executing directed cross/upsell resulting in $65 million in incremental revenue Discovery Automotive manufacturer Identified patterns of inappropriate warranty work in dealer channel Targeted $200M+ of potentially unnecessary annual expense Monitoring Department store retailer Watched POS transaction flow for unusual variations Deterred inappropriate behavior and fraudulent transactions Resulted in savings of over $125 million Applications Examples Comparative Genomics Harris A. Lewin explains that Evolution Highway allows one to look " . . . at the whole genome at once - multiple chromosomes across multiple species. The insights wouldn't have come so quickly if we couldn't throw the data at this framework from NCSA.” Science, Vol. 309, Issue 5734, Pages 613-617, 22 July 2005 Music Analysis Astronomy J. Stephen Downie, The Scientific Evaluation of Music Information Retrieval Systems: Foundations and Future, Computer Music Journal, Vol. 28, No. 2, Pages 12-23 Summer 2004 Nicholas M. Ball, Robert J. Brunner, Adam D. Myers, and David Tcheng, Robust Machine Learning Applied to Astronomical Data Sets. I. Star-Galaxy Classification of the Sloan Digital Sky Survey DR3 Using Decision Trees, The Astrophysical Journal, Vol. 650, Part 1, Pages 497–509, 2006 D2K- Lineage NCSA RiverGlass One Llama Engagements ● D2K Streamline ● D2K / Data to Knowledge DataMining ● T2K / ThemeWeaver TextMining ● Full Multi-language ● I2K / Image to Knowledge ImageMining ● M2K / Music to Knowledge Audio Mining ● MAIDS / Mining Alarming Incidents from Data Streams StreamMining ● RiverGlass Recon™ WebAcquire Future Research, Technology, Applications ● RiverGlass Detect™ InferenceEng. Fed.Query ● RiverGlass Detect™ MotionMining ● MotionMining ● One Llama Media ● GeoSpatial Music Analysis GeoSpatial ● Sensors/RFID Sensors/RFID ● Multimedia Multimedia Interface Visualization 1996 1997 1998 1999 2000 2001 2002 2003 2004 2005 2006 2007 2008 2009 RiverGlass, Inc. D2K ToolKit 1. 2. Workspace Resource Panel 3. Modules 4. Models 5. Itineraries 6. Visualizations 7. Generated Visualizations 8. Generated Models 9. Component Information 10. Toolbar 11. Console D2K Basic • Set of D2K Modules to perform data mining techniques – Prediction • Decision Trees – C4.5 Decision Tree, Continuous Decision Tree, SQL Rain Forest Decision Tree • Naïve Bayesian Classification and SQL Naïve Bayesian Classification • Neural Networks – Discovery • Rule Association – Apriori, FP Growth, Htree • Clustering – Hierarchical Agglomerative, Kmeans, Coverage, etc. • Includes visualizations for many of the modeling approaches • Includes a set of data transformations – Attribute selection, binning, filtering, attribute construction • Includes optimization strategy for searching parameter space D2K Modules Input Module: Loads data from the outside world. – Flat files, database, etc. Data Prep Module: Performs functions to select, clean, or transform the data – Binning, Normalizing, Feature Selection, etc. Compute Module: Performs main algorithmic computations. – Naïve Bayesian, Decision Tree, Apriori, FP Growth, etc. User Input Module: Requires interaction with the user. – Data Selection, Input and Output selection, etc. Output Module: Saves data to the outside world. – Flat files, databases, etc. Visualization Module: Provides visual feedback to the user. – Naïve Bayesian, Rule Association, Decision Tree, Parallel Coordinates, 2D Scatterplot, 3D Surface Plot D2K Module Icon Description Module Progress Bar Appears during execution to show the percentage of time that this module executed over the entire execution time. It is green when the module is executing and red when not. Input Port Rectangular shapes on the left side of the module represent the inputs for the module. They are colored according to the data type that they represent Properties Symbol If a “P” is shown in the lower left corner of the module, then the module has properties that can be set before execution. Output Port Rectangular shapes on the right side of the module represent the outputs for the module. They are colored according to the data type that they represent. D2K Demo SEASR: Research, Development, & Technology Transfer Model SEASR: The Data Problem Structured Vs. Unstructured 20% Today, 80% of business is conducted on unstructured information – Gartner Group 80% of the information needed is in the Open Source – NIA Structured Data Workers spend 80% of the time gathering information – STIC, EMF Cave paintings, Bone tools 40,000 WritingBCE 3500 BCE 80% Unstructured Data 0 C.E. Paper 105 Printing 1450 Computing 1950 Internet (DARPA) Late 1960s The Web 1993 1999 GIGABYTES Electricity, Telephone 1870 Transistor 1947 www.fastsearch.com SEASR Software Environment for the Advancement of Scholarly Research (SEASR) – addresses the challenges of transforming information into knowledge by constructing the software bridges that are required to move from the unstructured and semistructured data world to the structured data world. – aims to make collections more useful by integrating two well-known research and development frameworks NCSA’s Data-To-Knowledge (D2K) and IBM’s Unstructured Information Management Architecture (UIMA) into an easily usable environment that researchers in any discipline can easily learn and adapt for their own unstructured data analysis. SEASR: Architecture • • • • • • SEASR’s advanced informatics tools will expand the technical capabilities of what is now available in the field by: connecting data sources that are currently incompatible, whether due to different formats or protocols offering all project components as open source, to enable users to modify and add to tools allowing users to write analytic engines in their programming language of choice installing on all hardware footprints, so that the tools can be brought to data sets where they are housed creating a repository for components that will support sharing and publishing among users enabling scalability so that components may run on a large variety of hardware footprints, including shared memory processors and clusters SEASR Applications NoraVis OpenLaszlo DISCUS SEASR FeatureLens M2K QuickTime™ and a TIFF (Uncompressed) decompressor are needed to see this picture. NoraVis OpenLaszlo FeatureLens: n-gram patterns Create by Anthony Don at http://www.cs.umd.edu/hcil/textvis/featurelens/. Getting the “Band” Together • June 2007 – Band formation – Project start date – More use ideas and framework discussions • December – First ‘gig” – Framework and data app demonstration • Vocals - Research Technology – John Unsworth, Stephen Downie, Tim Wentling – Dan Roth, Jiawei Han, Kevin Chang, Cheng Xiang Zhai • Percussions & Bass - SEASR Development – Loretta Auvil, Tara Bazler, Duane Searsmith, Andrew Shirk, Students • Lead – Designers/Developer/Applications Areas – Humanities – M2K, Nora/Monk and Others (we heard about yesterday/today)) • Need Groupies! (Advisors, Researchers, Developers, and Application Drivers) – Loretta Auvil SEASR: How can I participate? • Collaborate on application development or ontology creation • Contribute to component development for analytics or data access • Participate in visualization and UI design • Serve as an advisor Contact Loretta Auvil ([email protected]) SEASR Engineering Knowledge for the Humanities Thank You