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Cooperative Computing: A Computing Model for Large Networks of Embedded Systems Cristian Borcea, Phillip Stanley-Marbell, Kiran Nagaraja, Liviu Iftode Rutgers University
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Networks of Embedded Systems (NES) Today Characteristics Limited resources Large scale Heterogeneous Volatile Unattended Example: Networks of Sensors Applications: data collection/dissemination Research: ad-hoc routing
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Next Generation NES More powerful systems ( processor, memory, network ) More demanding applications ( object tracking ) How to execute user-defined distributed applications ? computing model system architecture
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Traditional Distributed Computing Assumptions functionally homogeneous nodes assumes stable configuration fixed addressing scheme exact results Inadequate for NES
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The Cooperative Computing Model Distributed computation on large scale ad-hoc networks The set of nodes involved in computation: identified by their properties discovered using application controlled routing Partial execution acceptable when a certain Quality of Result ( QoR ) is met
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Application Example Compute the average temperature over red nodes QoR: average over at least 3 red nodes Red nodes used for computation Blue and green nodes used as intermediate hops
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System Architecture Smart Messages ( SMs ) migrate through the network searching for target nodes execute on each node Minimal System Support admission scheduling and execution synchronization communication, but no routing
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Smart Messages SignatureResource TableCode BricksData Bricks Code and data bricks Signature-based authentication for access control Resource table: estimated resource requirements for admission control
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System Support Operating System Hardware Tag Space Virtual Machine Admission Manager
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Tag Space Tasks create, delete, read, write tags Tags discarded when lifetime expires.................. Temperature QxwyZ 7200 80 Name Signature Lifetime Data
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Admission At arrival SM presents its resource requirements tags to be created/accessed estimated memory requirements, execution time, network traffic Each admitted SM generates a new task
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Execution Tag Space red tag ? Computation: sum=5+2 sum=5 sum=7 c2c1d1d2c1c2d1d2 c1 c2 d1 d2 Task1 Node red=2
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Scheduling and Synchronization FIFO scheduling Non-preemptive execution with resource protection Update-based synchronization on tags
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Self-Routing Routing done entirely by the application SMs carry code and data for routing Tag space stores signed routing information
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Self-Routing Example Network Red tag ? rRedval c1c2d1d2 c1 d1 c2 d2 c2 d2 rRed Task1 Spy SM sent Spy SM returns Task2 c2d2 c2d2 c1c2d1d2 Tag Space Tag Space Node iNode j
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Prototype Software Infrastructure uClinux Admission Manager Modified KVM Message Queue Tag Space Temporary Receive SM Send SM uCsimm & Bluetooth
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Contributions Cooperative Computing: distributed computing model for networks of embedded systems System architecture: Smart Messages active carriers of data integrate computation and communication application controlled routing ( self-routing ) http://discolab.rutgers.edu/projects/sm.htm Accepted as position summary at HotOS VIII
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Future Work Evaluate the tradeoffs between flexibility and overhead of migration Define a partially successful execution Enforce more complex security policies Simulate various applications and routing algorithms Integrate energy in the model
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