Execution Traces and Data Redistribution - PowerPoint PPT Presentation

1 / 8
About This Presentation
Title:

Execution Traces and Data Redistribution

Description:

Mainly for access to 'published' resources read-only model. Chimera : A Virtual Data System ... Using Execution Trace. User has to specify explicitly whenever ... – PowerPoint PPT presentation

Number of Views:33
Avg rating:3.0/5.0
Slides: 9
Provided by: Ada5166
Category:

less

Transcript and Presenter's Notes

Title: Execution Traces and Data Redistribution


1
Execution Traces and Data Redistribution
  • Presented By
  • Sandip Tikar

2
Data Grid
  • Data Grid Motivations.
  • Replica Management
  • - For better performance or availability to
    accesses
  • - Mainly for access to published
    resources read-only model
  • Chimera A Virtual Data System

3
Execution Traces
  • What is Execution Trace ?
  • - Nothing but a log of problem run.
  • Why it is needed ?
  • - For Numerical Reproducibility.

4
(No Transcript)
5
Execution Traces in GradSolve
  • GradSolve a RPC System.
  • Staging of input data.
  • Storing of Execution Trace.
  • Using Execution Trace.
  • User has to specify explicitly whenever he want
    to use
  • Execution Traces.

6
Our Approach
  • Automatic Discovery.
  • Storage of Execution Traces
  • - Validity.
  • - How many traces to be saved for a
    problem?
  • - Cleanup Routine.
  • What if Same problem runs with different Data
    Distribution ?

7
Data Redistribution
  • How to aggregate different data segments from
    different data distributions to form new
    distribution?
  • Cost analysis for aggregation of data.

8
References
  • GradSolve RPC for High Performance Computing on
    the Grid
  • S. Vadhiyar, Jack Dongarra.
  • A Service-Oriented Grid Computing Platform and
    Its Framewor
  • Wei Jie, Tianyi Zang, Terence Hung Zhou Lei
  • Replica Selection in the Globus Data Grid
  • Sudharshan vazhkudai, Steven Tuecke, Ian
    Foster
  • Chimera A Virtual Data System for Representing,
    Querying and Automating Data Derivation.
  • Ian Foster, Jans Vockler , Michael Wilde ,
    Yong Zhao.
Write a Comment
User Comments (0)
About PowerShow.com