14c594e2b79117a061c4952d8cc8a6da.ppt
- Количество слайдов: 21
Focus Study: Mining on the Grid with ADa. M Sara Graves Sandra Redman Information Technology and Systems Center and Information Technology Research Center University of Alabama in Huntsville National Space Science and Technology Center 256 -961 -7806 sgraves@itsc. uah. edu sredman@itsc. uah. edu www. itsc. uah. edu
Data Mining • Automated discovery of patterns, anomalies from vast • observational data sets Derived knowledge for decision making, predictions and disaster response http: //datamining. itsc. uah. edu
Creating a Successful Environment for Data Mining l l Provide scientists with the capabilities to allow the flexibility of creative scientific analysis Provide data mining benefits of l l l Automation of the analysis process Reducing data volume Provide a framework to allow a well defined structure to the entire process Provide a suite of mining algorithms for creative analysis that can adapt to new hypotheses Provide capabilities to add science algorithms to the environment Exploit emerging technologies in computational and data grids, high-performance networks, and collaborative environments
Challenges for Next-generation Mining • Develop and document common/standard interfaces for interoperability of data and services • Design new data models for handling • real-time/streaming input • data fusion/integration • Design and develop distributed standardized catalog capabilities • Develop advanced resource allocation and load balancing techniques • Exploit the grid concept for enhanced data mining functionality • Develop more intelligent and intuitive user interfaces • Integrate with collaborative environments • Develop ontologies of scientific data, processes and data mining techniques for multiple domains • Support language and system independent components • Incorporate data mining into science and engineering curricula
Algorithm Development and Mining System (ADa. M) - System Overview l l l l Consists of over 100 interoperable mining and image processing components Each component is provided with a C++ application programming interface (API), an executable in support of scripting tools (e. g. Perl, Python, Tcl, Shell) ADa. M components are lightweight and autonomous, and have been used successfully in a grid environment (NASA IPG, Tera. Grid, lab) ADa. M has several translation components that provide data level interoperability with other mining systems (such as WEKA and Orange), and point tools (such as lib. SVM and svm. Light) Web service interfaces in development Executes in multiple environments (e. g. workstation, cluster, grid, on-board, etc. ) NMI Integration Testbed test cases
MEAD Modeling Environment for Atmospheric Discovery l l l One of the NSF PACI Alliance research Expeditions ensure intense collaboration among technology developers and application scientists and focus on the deployment of infrastructure that supports computational science and engineering and science in a variety of disciplines MEAD’s focus is on retrospective analysis of hurricanes and severe storms using the Tera. Grid, integrating computation, grid workflow management, data management, model coupling, data analysis/mining, and visualization
MEAD Mining Example: Mesocyclone Detection Algorithm l Science Objective: – l To investigate different thunderstorm cell interactions favorable for subsequent tornado (mesocyclone) formation Goals: – – – Develop a mesocyclone detection algorithm (in both 2 D and 3 D) Develop an algorithm to track the temporal evolution of the mesocyclone features Investigate the use of clustering techniques to: l l Summarize differences in simulation runs Provide an overview of all the simulations
Approach l Mining Approach – – – l Use idealized WRF model simulations with different initial conditions Create a large parameter space of thunderstorm cell interaction and storm behavior Mine this search space for patterns and trends Grid Approach – – Application scripts developed in Python and tested on linux; modified for Globus environment by writing a simple Globus RSL file Application scripts constructed to run each combination of tools in parallel on a different node on the grid
Example MEAD Workflow Initial Setup Initial Data and Parameters Model Execution Multiple WRF Models (Weather) Inter-model communications Multiple ROMS Models (Ocean) Initial Data and Parameters Model Results Post Run Analysis Data Mining (ADa. M) Model Results Visualization Grid environment supports the demanding computational, data storage and post analysis requirements
Using the Tera. Grid l l Excellent user documentation at http: //www. teragrid. org/userinfo/ Account Management - Procedures vary per site – – l Programming Environment – Know your systems – – – l Get account at each site Obtain certificate (from one of several sites, X. 509 or KX. 509) Establish Distinguished Name in grid-mapfile at each site Create certificate proxy (grid-proxy-int, My. Proxy, kinit) Compilers (you have a number of choices) Environment Variables (Soft. Env) Message Passing (several flavors available) Executing Jobs – – Condor-G Globus
WRF Initializations • 230 WRF runs were made, + two control (single-cell) • Each corresponded to a particular arrangement of a pair of initial storm cells Matrix of WRF simulations • In figure at left: • Each square: 1 simulation • 1 st storm in the middle; • 2 nd at one of blue squares • Center cell stronger Slide Source: Brian Jewett
Example: Tracking Results
Mesocyclone Detection and Tracking Results Features with time durations of a single time step are filtered out
Summary – Mesocyclone Detection l l l Number of mesocyclones with higher duration tend to be associated with initializations where the second cell is closer to the first Mesocyclones found in the storm simulations are sensitive to the particular arrangement of a pair of initial storm cells (secondary storm placement at 45 degrees to the primary storm) Clustering techniques are useful – – l Summarize differences in simulation runs Provide an overview of all the simulations Limitations of Clustering algorithms – – Investigated K-Means, Dbscan, Maximin and Hiearchical Clustering Algorithms K-Means clustering quality is inferior but provides useful cluster centers or profiles
LEAD Linked Environments for Atmospheric Discovery A cyberinfrastructure for mesoscale meteorology – – – real-time, on-demand, and dynamically adaptive needs for mesoscale weather research High volume data sets and streams Computationally demanding numerical models and data assimilation systems
LEAD NSF Information Technology Research (ITR) program Multi-Disciplinary team contributing expertise in meteorological applications, analysis tools, forecast tools, data distribution and management, portal development, workflow orchestration, education and outreach
LEAD An integrated framework for identifying, accessing, preparing, assimilating, predicting, managing, analyzing, mining, and visualizing meteorological data, independent of format and physical location Dynamic workflow orchestration and data management are key elements
LEAD GWSTBs Grid and Web Services Testbeds – – – Local User Environment – customized portal, control of information flows, collaboration tools, managing processes Productivity Environment – models, tools, and algorithms Data Services Environment – data transport, data formatting, and interoperability Distributed Technologies Environment – workflow infrastructure to autonomously acquire resources and adapt to changing plans Data Archive – recent and historical data, products, and tools
The Portal as a Grid Access Point l The Portal Server provides the users Grid Context. OGCE or Grid. Sphere Grid Portal Server https SOAP & WS-Security Open Grid Service Architecture Layer Registries and Name binding Reservations And Scheduling Policy Security Administration & Monitoring Event Service Logging Data Management Service Accounting Service Grid Orchestration Web Services Resource Framework – Web Services Notification Physical Resource Layer
Services Oriented Architecture l l User interfaces with portal via browser Portal provides tools for users to build and launch workflows Portlets (JSR-168) provide interface between user and grid services Applications can be wrapped as services via a Portal Factory Service Generator – – – l Requires application, script to run it, input parameters, output parameters Write an App. Service document and upload to Portal Factory Service Generator (in portal) Service is created as well as the portal client interface Security model integral to design
Data Integration and Mining: From Global Information to Local Knowledge Emergency Response Bioinformatics Precision Agriculture Urban Environments Weather Prediction