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e-Science and Grid The VL-e approach

e-Science and Grid The VL-e approach. L.O. (Bob) Hertzberger Computer Architecture and Parallel Systems Group Department of Computer Science Universiteit van Amsterdam bob@science.uva.nl. Background information experimental sciences. Experiments become increasingly more complex

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e-Science and Grid The VL-e approach

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  1. e-Science and GridThe VL-e approach L.O. (Bob) Hertzberger Computer Architecture and Parallel Systems GroupDepartment of Computer ScienceUniversiteit van Amsterdam bob@science.uva.nl

  2. Background informationexperimental sciences • Experiments become increasingly more complex • Driven by detector developments • Resolution increases • Automation & robotization increases • Results in an increase in amount and complexity of data • Something has to be done to harness this development • Virtualization of experimental resources: e-Science

  3. The Application data crisis • Scientific experiments start to generate lots of data • medical imaging (fMRI): ~ 1 GByte per measurement (day) • Bio-informatics queries: 500 GByte per database • Satellite world imagery: ~ 5 TByte/year • Current particle physics: 1 PByte per year • LHC physics (2007): 10-30 PByte per year • Data is often very distributed

  4. Paradigm shift in Life science • Past experiments where hypothesis driven • Evaluate hypothesis • Complement existing knowledge • Present experiments are data driven • Discover knowledge from large amounts of data • Apply statistical techniques

  5. The what of e-Science • e-Science is the application domain “Science” of Grid & Web • More thanonly coping with data explosion • A multi-disciplinary activity combining human expertise & knowledge between: • A particular domain scientist • ICT scientist • e-Science demands a different approach to experimentation becausecomputer is integrated part of experiment • Consequence is a radical change in design for experimentation • e-Science should apply and integrate Web/Grid methods where and whenever possible

  6. GT1 GT2 OGSI Started far apart in apps & tech Have been converging WSRF WSDL 2, WSDM WSDL, WS-* HTTP Grid and Web ServicesConvergence Grid Web Definition of Web Service Resource Framework(WSRF) makes explicit distinction between “service” and stateful entities acting upon service i.e. the “resources” Means that Grid and Web communities can move forward on a common base Ref: Foster

  7. Grid service ‘offerings’ • Capability to run programs and scripts on remote sites on demand • Ability to exchange and replicate large bulk-data sets • Replica location services for files based on logical names • Job monitoring using a distributed relational information system • Resource brokering and transparent access to remote facilities • Management of user groups, roles and access rights

  8. Relation to European Grid infrastructures • Common European e-Infrastructure middleware (EGEE) for core grid services • Based on successful EU DataGrid, CrossGrid, and LCG software suite • Already deployed worldwide on a O(100) site production facility • Support through EGEE Regional Operations Centre (SARA and NIKHEF) EGEE: Enabling Grids for E-science in Europe (EU FP6)

  9. Levels of Grid abstraction Semantic/Knowledge Web/Grid Information Web/Grid Data Grid Computational Grid

  10. e-Science Objectives • It should enhance the scientific process by: • Stimulating collaborationby sharing data & information • Improve re-use of data & information • Combing data and information from different modalities • Sensor data & information fusion • Realize the combination of real life & (model based) simulation experiments • It should result in: • Computer aided support for rapid prototyping of ideas • Stimulate the creativity process • It should realize that by creating & applying: • New computing methodologies and an infrastructure stimulating this • We try to do this via the Virtual Lab for e-Science (VL-e) project

  11. Virtual Lab for e-Science research Philosophy • Multidisciplinary research & development of related ICT infrastructure • Generic application support • Application cases are drivers for computer & computational science and engineering research

  12. Grid/Web Services Harness multi-domain distributed resources VL-e project Data Intensive Science/ HEP Bio- Informatics Medical Diagnosis & Imaging Bio- Diversity Food Informatics Dutch Telescience VL-e Application Oriented Services Management of comm. & computing

  13. Virtual Lab for e-Science research Philosophy • Multidisciplinary research and development of related ICT infrastructure • Generic application support • Application cases are drivers for computer & computational science and engineering research • Problem solving partly generic and partly specific • Re-use of components via generic solutions whenever possible

  14. Application pull Grid/ Web Services Harness multi-domain distributed resources Application Specific Part Application Specific Part Application Specific Part Potential Generic part Potential Generic part Potential Generic part Management of comm. & computing Virtual Laboratory Application Oriented Services Management of comm. & computing Management of comm. & computing

  15. Generic e-Science aspects • Virtual Reality Visualization & user interfaces • Imaging • Modeling & Simulation • Interactive Problem Solving • Data & information management • Data modeling • dynamic work flow management • Content (knowledge) management • Semantic aspects • Meta data modeling • Ontologies • Wrapper technology • Design for Experimentation

  16. Virtual Lab for e-Science research Philosophy • Multidisciplinary research and development of related ICT infrastructure • Generic application support • Application cases are drivers for computer & computational science and engineering research • Problem solving partly generic and partly specific • Re-use of components via generic solutions whenever possible • Rationalization of experimental process among others the experimental pipeline • Reproducible & comparable

  17. parameters/settings, algorithms, intermediate results, … software packages, algorithms … Parameter settings, Calibrations, Protocols … raw data processed data presentation acquisition processing sensors,amplifiers imaging devices,, … conversion, filtering,analyses, simulation, … visualization, animationinteractive exploration, … Rationalization of the experiment and processes via protocols Metadata Issues for a reproducible scientific experiment experiment interpretation Much of this is lost when an experiment is completed.

  18. Domain specific Applications SWMS High level workflow services User support Engine Knowledge Information e-Science framework Computing tasks Data management Generic Grid middleware Grid infrastructure Scientific Workflow Management Systems in an e-Science environment • Functionalities: • Automating experiment routines; • Rapid prototyping of experimental computing systems; • Hiding integration details between resources; • Managing experiment lifecycle; • Cross different layers of middleware for managing: • Data; • Computing; • Information; • Knowledge.

  19. Virtual Lab for e-Science research Philosophy • Multidisciplinary research and development of related ICT infrastructure • Generic application support • Application cases are drivers for computer & computational science and engineering research • Problem solving partlygeneric and partly specific • Re-use of components via generic solutions whenever possible • Rationalization of experimental process • Reproducible & comparable • Two research experimentation environments • Proof of concept for application experimentation • Rapid prototyping for computer & computational science experimentation

  20. The VL-e infrastructure Application specific service Medical Application Telescience Bio ASP Application Potential Generic service & Virtual Lab. services Virtual Lab. rapid prototyping (interactive simulation) Test & Cert. VL-software Virtual Laboratory Additional Grid Services (OGSA services) Test & Cert. Grid Middleware Grid Middleware Grid & Network Services Network Service (lambda networking) Test & Cert. Compatibility Surfnet VL-e Certification Environment VL-e Experimental Environment VL-e Proof of Concept Environment

  21. Infrastructure for Applications • Applications are a driving force of the PoC • Experience shows applications value stability • Foster two-way interaction to make this happen

  22. VL-e PoC environment • Latest certified stable software environment of core grid and VL-e services • Core infrastructure built around clusters and storage at SARA and NIKHEF (‘production’ quality) • Good basis for Tier-1 • Controlled extension to other platforms and distributions • On the user end: install needed servers: user interface systems, storage elements for data disclosure, grid-secured DB access • Focus on stability and scalability

  23. Hosted services for VL-e • Key services and resources are offered centrally for all applications in VL-e • Mass data and number crunching on the large resources at SARA • Storage for data replication & distribution • Persistent ‘strategic’ storage on tape • Resource brokers, resource discovery, user group management

  24. Why such a complex scheme? • “software is part of the infrastructure” • stability of core software needed to develop the new scientific applications • enable distributed systems management (who runs what version when?) “the grid is one big error amplifier” “computers make mistakes like humans, only much, much faster”

  25. Building a scalable infrastructure With good code, stable releases & supportyou can build large working systems, useful to science

  26. Conclusions • e-Science is a lot more more than trying to cope with data explosion alone • Implementation of e-Science systems requires further rationalization and standardization of experimentation process • e-Science success demands the realization of an environment allowing • application driven experimentation & • rapid dissemination of feed back of these new methods • We try to do that via development of Proof of Concept • Good basis for HEP Tier-1

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