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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.

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CompSci 296.2 Self-Managing Systems

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  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?

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