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CARMA: A Comprehensive Management Framework for High-Performance Reconfigurable Computing

CARMA: A Comprehensive Management Framework for High-Performance Reconfigurable Computing. Ian A. Troxel, Aju M. Jacob, Alan D. George, Raj Subramaniyan, and Matthew A. Radlinski High-performance Computing and Simulation (HCS) Research Laboratory

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CARMA: A Comprehensive Management Framework for High-Performance Reconfigurable Computing

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  1. CARMA: A Comprehensive Management Framework for High-Performance Reconfigurable Computing Ian A. Troxel, Aju M. Jacob, Alan D. George, Raj Subramaniyan, and Matthew A. Radlinski High-performance Computing and Simulation (HCS) Research Laboratory Department of Electrical and Computer Engineering University of Florida Gainesville, FL

  2. CARMA Motivation • Key missing pieces in RC for HPC • Dynamic RC fabric discovery and management • Coherent multitasking, multi-user environment • Robust job scheduling and management • Design for fault tolerance and scalability • Heterogeneous system support • Device independent programming model • Debug and system health monitoring • System performance monitoring into the RC fabric • Increased RC device and system usability • Our proposed Comprehensive Approach to Reconfigurable Management Architecture (CARMA) attempts to unify existing technologies as well as fill in missing pieces CARMA (Holy Fire by Alex Grey)

  3. CARMA Framework Overview • CARMA seeks to integrate: • Graphical user interface • Flexible programming model • COTS application mapper(s) • Handel-C, Impulse-C, Viva, System Generator, etc. • Graph-based job description • DAGMan, Condensed Graphs, etc. • Robust management tool • Distributed, scalable job scheduling • Checkpointing, rollback and recovery • Distributed configuration management • Multilevel monitoring service (GEMS) • Networks, hosts, and boards • Monitoring down into RC Fabric • Device independent middleware API • Multiple types of RC boards • PCI (many), network-attached, Pilchard • Multiple high-speed networks • SCI, Myrinet, GigE, InfiniBand, etc.

  4. Application Mapper Evaluation • Evaluating on basis of ease of use, performance, hardware device independence, programming model, parallelization support, resource targeting, network support, stand-alone mapping, etc. • C-Based tools • Celoxica - SDK (Handel-C) • Provides access to in-house boards: ADM-XRC (x1), Tarari (x4), RC1000 (x4) • Good deal of success after lessons learned • Hardware design focused • Impulse Accelerated Technologies – Impulse-C • Provides an option for hardware independence • Built upon open source Streams-C from LANL • Supports ANSI standard C • Graphical tools • StarBridge Systems - Viva • Nallatech – Fuse / DIMEtalk • Annapolis Micro Systems - CoreFire • Xilinx - ISE compulsory • Evaluating the role of Jbits, System Generator, and XHWIF • Evaluations still ongoing • Programming model a fundamental issue to be addressed Streams-C c/o LANL

  5. CARMA Interface • Simple graphical user interface • Preliminary basis for graphical user interface via the Simple Web Interface Link Library (SWILL) from the University of Chicago* • User view for authentication and job submission/status • Administration view for system status and maintenance • Applications supported • Single or multiple tasks per job (via CARMA DAGs**) • CARMA registered (via CARMA API and DAGs) or not • Provides security, fault tolerance • Sequential andparallel(hand-coded or via MPI) • C-based application mappers supported • CARMA middleware API provides architecture independence • Any code that can link to the CARMA API library can be executed (Handel-C and ADM-XRC API tested to date) • Bit files must be registered with the CARMA Configuration Manager (CM) • All other mappers can use “not CARMA registered” mode • Plans for linking Streams/Impulse-C, System Generator, et al. * http://systems.cs.uchicago.edu/swill/ ** Similar to Condor DAGs

  6. CARMA User Interface

  7. CARMA Job Manager (JM) CARMA DAG Example • Prototyping effort (CARMA interoperability) • Completed first version of CARMA JM • Task-based execution via Condor-like DAGs • Separate processes and message queues for fault-tolerance • Checkpointing enabled with rollback in progress • Links to all other CARMA components • Fully distributed multi-node operation with job/task migration • Links to CARMA monitor and GEMS to make scheduling decisions • Tradeoff studies and analyses underway • External extensions to COTS tools (COTS plug and play) • Expand upon preliminary work @ GWU/GMU* • Striving for “plug and play” approach to JM • CARMA Monitor provides board info. (via ELIM) • Working to link to CARMA CM • Tradeoff studies and analysis underway • Integration of other CARMA components in progress c/o GWU/GMU * Kris Gaj, Tarek El-Ghazawi, et al., “Effective Utilization and Reconfiguration of Distributed Hardware Resources Using Job Management Systems,” Reconfigurable Architecture Workshop 2003, Nice, France, April 2003.

  8. CARMA CM Design • Builds upon previous design concepts* • Execution Manager (EM) • Forks tasks from JM and returns results to JM • Requests and releases configurations • Configuration Manager (CM) • Manages configuration transport and caching • Loads, unloads configurations via BIM • Board Interface Module (BIM) • Provides board independence • Allows for configuration temporal locality benefits • Communication Module • Handles all inter-node communication Board Interface Module (BIM) • Configures and interfaces with diverse set of RC boards • Numerous PCI-based boards • Various interfaces for network attached RC • Instantiated at startup • Provides hardware independence to higher layers • Separate BIM for each supported board • Simple standard interface to boards for remote nodes • Enhances security by authenticating data and configurations * U. of Glasgow (Rage), Imperial College in UK, U. Washington, among others

  9. Global view of the system at all times Jobs submitted locally GRMAN Network LAPP LAPP LAPP MAP Requests, Statistics Requests, Statistics LAPP MAP LJM LJM Tasks, Configurations LRMAN LRMAN … LRMON LRMON Local Sys Local Sys Server houses configurations Global view of the system at all times Jobs submitted locally Jobs submitted locally GRMAN Network LAPP LAPP LAPP LAPP Network LAPP MAP Requests, Statistics Requests, Statistics LAPP MAP LAPP MAP LAPP MAP Requests Requests LJM LJM LJM LJM Configuration Pointers LRMAN LRMAN LRMAN LRMAN Configurations LRMON LRMON Configurations LRMON … LRMON … Local Sys Local Sys Local Sys Local Sys Server brokers configurations Distributed CM Management Schemes Jobs submitted “centrally” APP Global view of the system at all times APP MAP GJM GRMAN Results, Statistics Network Tasks, States … LRMON LRMON Local Sys Local Sys Client-Server (CS) Master-Worker (MW) Client-Broker (CB) Simple Peer-to-Peer (SPP) Note: More in-depth results for distributed CM appeared at ERSA’04

  10. CM System Recommendations Scalability projected up to 4096 nodes • Performed analytic scalability analysis based on 16-node experimental results • Dual 2.4GHz Xeons and a Tarari CPX2100 HPC board in a 64/66 PCI slot • Gigabit Ethernet and 5.3 Gbps Scalable Coherent Interface (SCI) control and data networks respectively • Flat system of 4096 has very high completion times (~5 minutes for SPP and ~83 hrs for CS) • Layered hierarchy needed for reasonable completion times (~2.5 sec for SPP over SPP at 4096 nodes) • CS reduces network traffic by sacrificing response time and SPP improves response time by increasing network utilization Conclusions • CARMA CM design imposes very little overhead on the system • Hierarchical scheme needed to scale to systems of thousands of nodes (traditional MW will not work) • Multiple servers for CS scheme don’t reduce the server bottleneck for system sizes greater than 32 • SPP over CS (group size 8) best overall performance for systems larger than 512 nodes * Schemes with completion latency values greater than 5 seconds excluded

  11. CARMA Monitoring Services • Monitoring service • Statistics Collector • Gathers local and remote information • Updates GEMS* and local values • Query Processor • Processes task scheduling requests from JM • Maintains local information • Round-Robin Database • Compact way to store performance logs • Supports simple query interface • CARMA Diagnostic • System watchdog alerts based on defined heuristics of failure conditions • Provides system monitoring and debug • Initial monitor version is complete • Studying FPGA monitoring options • Increasing the scheduling options • Tradeoff studies and analyses underway * Gossip-Enabled Monitoring Service (GEMS); developed by HCS Lab for robust, scalable, multilevel monitoring of resource health and performance. For more info. see http://www.hcs.ufl.edu/gems

  12. CARMA End-to-End Service Description • Functionality demonstrated to date • Graphical user interface • Job/task scheduling based on board requirements and configuration temporal locality • Parallel and serial jobs • CARMA registered and non-registered tasks • Remote execution and result retrieval • Configuration caching and management • Mixed RC and “CPU-only” tasks • Heterogeneous board execution (3 types thus far) • System and RC device monitoring • Inter-node communication via SCI or TCP/IP/GigE • Fault-tolerant design • Processes can be restarted while running • Virtually no system impact from CARMA overhead despite use of unoptimized code • Less than 5MB RAM per node • Less than 0.1% processor utilization on a 2.4 GHz Xeon server • Less than 200 Kbps network utilization CARMA Execution Stages

  13. CARMA Framework Verification N-Queens Test Par. Add Test • Several test jobs executed concurrently • Parallel Add Test composed of • ADD.exe, a “CPU-only” task to add two numbers • AddOne.bit, an RC task to increment input value • Parallel N-Queens Test composed of • ADD.exe, a “CPU-only” task to add two numbers • NQueens.bit, an RC1000 task to calculate a subset of the total number of solutions for an N×N board • 4 RC1000s and 4 Tararis communicating via MPI • Parallel Sieve of Erasthones (on Tarari) • Parallel Monte Carlo Pi Generator (on Tarari) • Blowfish encrypt/decrypt (on ADM-XRC) Example System Setup These simple applications used to test CARMA’s functionality, while CARMA’s services have wider applicability to problems of greater size and complexity.

  14. Conclusions • First working version of CARMA complete & tested • Numerous features supported • Simple GUI front-end interface • Coherent multitasking, multi-user environment • Dynamic RC fabric discovery and management • Robust job scheduling and management • Fault-tolerant and scalable services by design • Performance monitoring down into the RC fabric • Heterogeneous board support with hardware independence • Linking to COTS job management service • Initial testing shows the framework to be sound with very little overhead imposed upon the system

  15. Future Work and Acknowledgements • Continue to fill in additional CARMA features • Include support for other boards, application mappers, and languages • Complete JM rollback feature and finish linkage to LSF • Include broker and caching mechanisms for the peer-to-peer distributed CM scheme • Include more intelligent scheduling algorithms (e.g. Last Release Time) • Expand RC device monitoring and include debug and opt. mechanisms • Enhance security including secure data transfer and authentication • Deploy on a large-scale test facility • Develop CARMA instantiations for other RC domains • Distributed shared-memory machines with RC (e.g. SGI Altix) • Embedded RC systems (e.g. satellite/aircraft systems, munitions) • We wish to thank the following for supporting this research: • Department of Defense • Xilinx • Celoxica • Alpha Data • Tarari • Key vendors of our HPC cluster resources (Intel, AMD, Cisco, Nortel)

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