Lynda : Lyon Neuroimaging Database and Applications (1) Institut des Sciences Cognitives UMR 5015 CNRS ; (2) parallel computing ENS-Lyon ; (3)Centre de.

Slides:



Advertisements
Similar presentations
Prof. Natalia Kussul, PhD. Andrey Shelestov, Lobunets A., Korbakov M., Kravchenko A.
Advertisements

Jens G Jensen Atlas Petabyte store Supporting Multiple Interfaces to Mass Storage Providing Tape and Mass Storage to Diverse Scientific Communities.
Peter Berrisford RAL – Data Management Group SRB Services.
Presentation at WebEx Meeting June 15,  Context  Challenge  Anticipated Outcomes  Framework  Timeline & Guidance  Comment and Questions.
SACNAS, Sept 29-Oct 1, 2005, Denver, CO What is Cyberinfrastructure? The Computer Science Perspective Dr. Chaitan Baru Project Director, The Geosciences.
Plateforme de Calcul pour les Sciences du Vivant SRB & gLite V. Breton.
Summary Role of Software (1 slide) ARCS Software Architecture (4 slides) SNS -- Caltech Interactions (3 slides)
Imaging, Medical Analysis and Grid Environments (IMAGE) June 3, 2015 Translating Imaging Science to the Emerging Grid Infrastructure Jeffrey S. Grethe.
Jean-Yves Nief, CC-IN2P3 Wilko Kroeger, SCCS/SLAC Adil Hasan, CCLRC/RAL HEPiX, SLAC October 11th – 13th, 2005 BaBar data distribution using the Storage.
Robust Tools for Archiving and Preserving Digital Data Joseph JaJa, Mike Smorul, and Mike McGann Institute for Advanced Computer Studies Department of.
Michael Marron, Ph.D., Director Division of Biomedical Technology National Center for Research Resources National Institutes of Health Department of Health.
Institut für Softwarewissenschaft - Universität WienP.Brezany 1 Toward Knowledge Discovery in Databases Attached to Grids Peter Brezany Institute for Software.
Generic policy rules and principles Jean-Yves Nief.
DATABASE MANAGEMENT SYSTEMS 2 ANGELITO I. CUNANAN JR.
IRODS usage at CC-IN2P3 Jean-Yves Nief. Talk overview What is CC-IN2P3 ? Who is using iRODS ? iRODS administration: –Hardware setup. iRODS interaction.
London, UK 21 May 2012 Janaina Mourao-Miranda, Machine Learning and Neuroimaging Lab, University College London, UK Pattern Recognition for Neuroimaging.
A.V. Bogdanov Private cloud vs personal supercomputer.
Key integrating concepts Groups Formal Community Groups Ad-hoc special purpose/ interest groups Fine-grained access control and membership Linked All content.
IRODS performance test and SRB system at KEK Yoshimi KEK Building data grids with iRODS 27 May 2008.
Presenter: Dipesh Gautam.  Introduction  Why Data Grid?  High Level View  Design Considerations  Data Grid Services  Topology  Grids and Cloud.
BIRN Update Carl Kesselman Professor of Industrial and Systems Engineering Information Sciences Institute Fellow Viterbi School of Engineering University.
The Data Grid: Towards an Architecture for the Distributed Management and Analysis of Large Scientific Dataset Caitlin Minteer & Kelly Clynes.
Odyssey A Reuse Environment based on Domain Models Prepared By: Mahmud Gabareen Eliad Cohen.
Jean-Yves Nief CC-IN2P3, Lyon HEPiX-HEPNT, Fermilab October 22nd – 25th, 2002.
Production Data Grids SRB - iRODS Storage Resource Broker Reagan W. Moore
Database Administration COMSATS INSTITUTE OF INFORMATION TECHNOLOGY, VEHARI.
Fisheries Oceanography Collaboration Software Donald Denbo NOAA/PMEL-UW/JISAO Presented by Nancy Soreide NOAA/PMEL AMS 2002/IIPS 10.3.
Distributed Database Systems Overview
Virtual Data Grid Architecture Ewa Deelman, Ian Foster, Carl Kesselman, Miron Livny.
1 4/23/2007 Introduction to Grid computing Sunil Avutu Graduate Student Dept.of Computer Science.
April 13 BEC Meeting BIRN Data Sharing Implementation From the BIRN DSTF Randy L. Gollub, Chair.
Facilitate Scientific Data Sharing by Sharing Informatics Tools and Standards Belinda Seto and James Luo National Institute of Biomedical Imaging and Bioengineering.
Chapter 1 Introduction to Databases. 1-2 Chapter Outline   Common uses of database systems   Meaning of basic terms   Database Applications  
CERN openlab V Technical Strategy Fons Rademakers CERN openlab CTO.
1 Computing Challenges for the Square Kilometre Array Mathai Joseph & Harrick Vin Tata Research Development & Design Centre Pune, India CHEP Mumbai 16.
Jian Gui WANG New Implementation of Agriculture Models APAN19---Jan New Implementations of Agriculture Models Using Mediate Architecture.
NA-MIC National Alliance for Medical Image Computing UCSD: Engineering Core 2 Portal and Grid Infrastructure.
The Global Land Cover Facility is sponsored by NASA and the University of Maryland.The GLCF is a founding member of the Federation of Earth Science Information.
Cooperative experiments in VL-e: from scientific workflows to knowledge sharing Z.Zhao (1) V. Guevara( 1) A. Wibisono(1) A. Belloum(1) M. Bubak(1,2) B.
GCRC Meeting 2004 BIRN Coordinating Center Software Development Vicky Rowley.
1 e-Science AHM st Aug – 3 rd Sept 2004 Nottingham Distributed Storage management using SRB on UK National Grid Service Manandhar A, Haines K,
Context: The Strategic Plan for Establishing the Network Integrated Biocollections Alliance Judith E. Skog, Office of the Assistant Director, Biological.
Biomedical Informatics Research Network BIRN Workflow Portal.
Biomedical Informatics Research Network The Storage Resource Broker & Integration with NMI Middleware Arcot Rajasekar, BIRN-CC SDSC October 9th 2002 BIRN.
Medical Imaging Lection 3. Basic Questions Imaging in Medical Sciences Transmission Imaging PACS and DICOM.
Rights Management for Shared Collections Storage Resource Broker Reagan W. Moore
The Storage Resource Broker and.
Biomedical Informatics Research Network BIRN Workflow Portal Shawn Murphy Michael Mendis.
High Risk 1. Ensure productive use of GRID computing through participation of biologists to shape the development of the GRID. 2. Develop user-friendly.
NA-MIC National Alliance for Medical Image Computing UCSD / BIRN Coordinating Center NAMIC Group Site PI: Mark H. Ellisman Site Project.
Collaborative Tools for the Grid V.N Alexandrov S. Mehmood Hasan.
GDB meeting - Lyon - 16/03/05 An example of data management in a Tier A/1 Jean-Yves Nief.
Cyberinfrastructure Overview of Demos Townsville, AU 28 – 31 March 2006 CREON/GLEON.
All Hands Meeting 2005 BIRN-CC: Building, Maintaining and Maturing a National Information Infrastructure to Enable and Advance Biomedical Research.
Collection-Based Persistent Archives Arcot Rajasekar, Richard Marciano, Reagan Moore San Diego Supercomputer Center Presented by: Preetham A Gowda.
A Shared Commitment to Digital Preservation and Access.
Data Infrastructure in the TeraGrid Chris Jordan Campus Champions Presentation May 6, 2009.
Virtual Laboratory Amsterdam L.O. (Bob) Hertzberger Computer Architecture and Parallel Systems Group Department of Computer Science Universiteit van Amsterdam.
Strategies for NIS Development
Similarities between Grid-enabled Medical and Engineering Applications
Problem: Ecological data needed to address critical questions are dispersed, heterogeneous, and complex Solution: An internet-based mechanism to discover,
Grid Computing.
University of Technology
Future Data Architecture Cloud Hosting at USGS
CC-IN2P3 Jean-Yves Nief, CC-IN2P3 HEPiX, SLAC
Grid Application Model and Design and Implementation of Grid Services
Future EU Grid Projects
Data Management Components for a Research Data Archive
Presentation transcript:

Lynda : Lyon Neuroimaging Database and Applications (1) Institut des Sciences Cognitives UMR 5015 CNRS ; (2) parallel computing ENS-Lyon ; (3)Centre de Calcul IN2P3 Lynda : Lyon Neuroimaging Database and Applications Christian Scheiber 1, Eric Boix 2, Eddy Caron 2, Jean-Yves Nief 3 & Pascal Calvat 3 (1) Institut des Sciences Cognitives UMR 5015 CNRS ; (2) parallel computing ENS-Lyon ; (3)Centre de Calcul IN2P3 A support to develop and manage the information technology necessary to meet the needs of collaborative, distributed research in the field of neuroimaging devoted to neuroscience. Lynda applications will include (1) interregional quality control and standardization of imaging procedure from different imaging systems from the same modality (2) meta analysis of previous neuroimaging experiments (3) joint projects at regional, national or international level. Research Protocol Experimental Design Neuroscientist SRB Meta Data Experimental Design 2005 – fMRI line fMRI CERMEP 1.5T system Storage Resource Broker (CC-IN2P3) - Save Time and increase security - From anywhere… manage your data - Large (fMRI, MEG, MRI..) data can be safety stored - 24 hour maintenance & accessibility to your data - Easier data/results sharing with coworkers - Lowering costs PC – software - maintenance - Meta-Analysis are feasible & encouraged - National & International research results can be handle Objectives Lynda synopsis from RawData to Results 1 st Phase : fMRI testbed Conclusion Interactive System Batch Preparation fMRI processing wrapper Lynda is already accessible to the scientific community in Lyon and few tests-centers for fMRI and or SPECT/PET data Develop cyberinfrastructure that enables sharing and collaborative use of distributed biomedical databases and data collections, analysis and modeling software, and visualization tools. Encourage collaborations among members of diverse research institutions and scientific domains that traditionally conducted independent investigations. Soon: join the BIRN project Biomedical Informatics Research Network, NIH, USA SRB an efficient & already robust solution Data Processing of fMRI time series and More… SPM – SPM// - PSPM Neuroscientist A distributed file system (Data Grid), based on a client-server architecture. It’s also more: It provides a way to access files and computers based on their attributes rather than just their names or physical locations. It replicates, synchronizes, archives, and connects heterogeneous resources in a logical manner using abstraction mechanisms. Scalable solution: the system can be resized in order to meet the increasing needs of the project (right now, 600,000 files stored in SRB). Tape storage system (CC-IN2P3) As a first phase Lynda will support the regional network of neuroscience research units and institutions but designed to be a partner of other international similar projects such as Bioinformatics Research Network (BIRN) in the US. Lynda is developed with a bottom-up strategy, i.e that it will immediately contribute to optimize (1) raw data transmission and storage from imaging systems (2) database resources and (3) computing resources for the NeuroScience community and their national and/or international collaborators. Linux farm (CC-IN2P3)