1 / 9

CompSci 296.2 Self-Managing Systems

CompSci 296.2 Self-Managing Systems. Shivnath Babu. Reminder. Slides and 2-page writeup due today Thursday: Control-theory paper Student presentations from next month Feb 21 (next Tuesday): Progress talk, <= 5 minutes Feb 23: Speaker from Cisco Feb 28: Speaker from IBM Tivoli. Oceano.

lashunda
Download Presentation

CompSci 296.2 Self-Managing Systems

An Image/Link below is provided (as is) to download presentation Download Policy: Content on the Website is provided to you AS IS for your information and personal use and may not be sold / licensed / shared on other websites without getting consent from its author. Content is provided to you AS IS for your information and personal use only. Download presentation by click this link. While downloading, if for some reason you are not able to download a presentation, the publisher may have deleted the file from their server. During download, if you can't get a presentation, the file might be deleted by the publisher.

E N D

Presentation Transcript


  1. CompSci 296.2 Self-Managing Systems Shivnath Babu

  2. Reminder • Slides and 2-page writeup due today • Thursday: Control-theory paper • Student presentations from next month • Feb 21 (next Tuesday): Progress talk, <= 5 minutes • Feb 23: Speaker from Cisco • Feb 28: Speaker from IBM Tivoli

  3. Oceano • Setting: Computing utility • Goal: Automatic SLA management • Challenges: Peak load >> average load, shared • Simple solution: overprovision • Solution: • Domain • Events: Monitoring, correlation • Control actions: Dynamic server allocation, throttling

  4. Oceano: Mechanisms • Figure 2 • Monitoring: detect events • Aggregation and correlation of events • Events  control actions

  5. Discussion • Strong points? • Weak points? • How does Oceano differ from related work? • How does Oceano deal with overload? • Content-based throttling • Allocating a Dolphin • Experiments

  6. Autonomic Reservoir Optimization on Grids • Prototype application: placement and operation of oil wells to maximize revenue • Proof of concept for: • New paradigm of application deployment • Peer-to-peer interactions among application modules, Grid services, resources, and data • Autonomic optimization • Self-optimizing behavior within and across components

  7. Components • Reservoir simulation (IPARS) • Optimization services (VFSA) • Economic modeling • Real-time data • Historical archives • Experts (collaborative portals)

  8. Interactions and Implementation • Figure 3 • Pawn: Figure 5 • Implementing reservoir optimization using Pawn

  9. Discussion • What does this work show? • Did they pick the right application? • How “autonomic” is this work?

More Related