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VizDB A tool to support Exploration of large databases By using Human Visual System To analyze mid-size to large data Data Mining Techniques  Implements several data mining techniques  Pixel-oriented Techniques (Spiral, Axes, and Grouping Techniques)  Parallel Coordinates  Stick Figures Exploration of unto a million data values Concept The basic idea for visualizing the data is to map the distances to colors and represent each data value by one or multiple colored pixels.  Interactivity is the key !  Requirement  Feedback required when query returns unexpected results  Interactivity allows immediate feedback from a modified query  Configurable tool, that allows various forms of data visualization techniques  Using the human vision system for pattern recognition Basic Technique      Sort query data w.r.t. the relevance and map relevance factors to colors Highest relevance factor in the center Yellow-Green-Blue-Red-Black in decreasing order of relevance. Separate window for each selection predicate in the query Multiple windows make multi-dimensional visualization Mapping 2-D To The Axes  Visualization of inherently 2D or 3D data is not dealt with in VizDB  Where no inherent 2D semantics of data exist, VizDB is a valuable tool. Use of two axes for two dimensions. Positive as well as negative values displayed.  Some space may be wasted .. (Why?) Grouping  Each area is arranged in a rectangular spiral shape according to relevance factors  Coloring is similar to the previous method  Grouping allows data similar in one dimension to be grouped together. Data in multiple dimensions are represented as clusters of pixels  Good for larger dimensionality Interactive Data Exploration  Dynamic Query Modification Techniques  Feedback on the results – Change in color means change in values that are “relevant” – Change in structure means overall distribution of data has changed  Sliders for discrete as well as continuous values  Initial Query is SQL or “Gradi” Calibrations Calculation of “relevance” factor can be calibrated by the user  Starting and ending values for various numeric data  – Eg: Blood samples count What about complex queries?  Multiple layers of windows for complex queries using nested AND and OR operators  Data that satisfies ALL joins is yellow. The rest is colored according to number of criteria met  Works well with the relational databases Implementations  C++ with Motif using X Windows on HP 7xx  Currently being ported to Linux (I couldn’t get this working! ) Adding new techniques  More Info Viz. Techniques can be integrated with the system. New  Latest version supports Parallel coordinates, Stick Figures, Pan and zoom Stuff !! techniques Applications Molecular Biology - to find possible docking regions by identifying sets surface points with distinct characteristics.  Database of geographical data  Environmental Data  NASA Earth observation data  Future Work  Automatic generation of queries that Cool !! correspond to data in specific regions (Select some data, and the SQL query that matches that data will get generated..  Time series visualization Thank You The presentation slides are available at http://filebox.vt.edu/users/adatey/research/Viz DB.ppt A small color picture that shows different techniques http://filebox.vt.edu/users/adatey/research/Vis DBHandout.eps