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Reconfigurable Computing Systems: An Overview

Reconfigurable Computing Systems: An Overview. Presented by: Gurwant Kaur Koonar Vijay Pandya 14 th March 2003. Introduction.

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Reconfigurable Computing Systems: An Overview

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  1. Reconfigurable Computing Systems:An Overview Presented by: Gurwant Kaur Koonar Vijay Pandya 14th March 2003

  2. Introduction • Reconfigurable Computing (RC) is an emerging paradigm for digital systems design. The key feature of which is the ability to perform computations in hardware to achieve performance of ASIC and flexibility of GP processors. • Technology improvements have made possible new programmable logic devices (FPGAs, CPLDs). • Objective of the talk: Give an overview and the hardware architectures of reconfigurable computing, and the software that targets these machines, such as compilation tools.

  3. Definition • Reconfigurable Computing (RC) is a computing paradigm in which algorithms are implemented as a temporally and spatially ordered set of very complex tasks. These tasks are executed on a large set of interconnected programmable hardware elements

  4. Definition(cont’d) • computing paradigm - defines the basic RC computing model without reference to implementation. • very complex tasks – commonly referred to as configurations RC tasks require more time than general purpose computing instructions and more area than the typical general purpose execution unit. • Spatial and temporal partitioning – algorithms are decomposed into tasks in both the space and time domains. • hardware elements - at their core RC devices consist of a very large set of simple programmable elements collectively called Reconfigurable Execution Unit (REU)

  5. General Characteristics of RC Stored configuration algorithms No software Pipeline architectures are common Real-time applications Advantages Flexible Configurable Cost comparable to GPP Hardware is readily available Shorter development cycle than ASICs Parallelism Algorithm parallelism exploited in custom architecture Problem specific operators and control High-performance Reduced memory dependence and exploit fine-grained algorithm parallelism. Timesharing Hardware can be time multiplexed by multiple applications

  6. Disadvantages • Additional area requirements • Configuration memory (internal/external), Internal switches and other hardware overhead • Time Overhead • Device configuration, and internal switches

  7. Traditional Computing • Using Application-Specific Integrated Circuits (ASICs) to “hard-wire” an algorithm in hardware.  • Extremely fast • Require less Silicon area • Less power hungry than GP architectures • Extremely inflexible • Expensive both in design and fabrication • Errors are difficult to correct • Examples:Consumer Electronics, Telecommunications, Automotive Industry 

  8. Traditional Computing(Cont'd) • General-purpose hardware, combined with application-specific software • Extremely flexible due to versatile instruction set. • Much less expensive to develop. • Poor performance compared to ASICs. • Errors can be dynamically patched. • Examples: Commodity PC hardware running commercial software. 

  9. Reasons for Poor Software Performance • Fetching of instructions • Interpretation of instructions • Scheduling of instructions • Wrong mix of hardware resources to suit a particular application’s needs • Therefore Reconfigurable computing is intended to fill the gap between HW and SW.

  10. Flexibility and Efficiency Tradeoffs

  11. Can we call FPGA’s to be Reconfigurable Processing unit ? • Traditional FPGAs are configurable, but not run-time reconfigurable • Traditional FPGAs expect to read their configuration out of a serial EEPROM, one bit at a time. • Therefore, FPGA must be reprogrammed in its entirety and that its previous internal state cannot be captured beforehand.

  12. Features for Reconfigurable Hardware • On-the-Fly Reprogrammability • Partial Reprogrammability • Externally-Visible Internal State

  13. Kress ALU Array-III(KrAA-III) • instruction level parallelism • transparently scalable • fast routing and placement (seconds only) • dynamically and partially reconfigurable (microseconds) • suitable for full custom design • on microprocessor chip: much higher acceleration than by caches • on microprocessor chip: fast and low power by full custom design • acceleration by massive run time to compile time migration

  14. Kress ALU Array-III(KrAA-III) • KrAA-III consists of PEs called rDPU-III (reconfigurable DataPath Unit III) arranged in a NEWS network. • Figure shows the KrAAIII chip containing 9 rDPUs.

  15. Basic Architecture of today’s commercial reconfigurable processor

  16. Devices which combined FPGA with Standard processor core • Triscend’s E5 and A7 • Altera’s two Excalibur families • Atmel’s FPSLIC • Chameleon Systems’ CS2000

  17. It is used to develop reconfigurable processor technology for domain of handheld and wearable computing. To investigate new trade offs between performance, power consumption and system cost It is an international research effort lead by Swiss Federal Institute of Technology Zippy Architecture

  18. Reconfigurable Computing Merging Efficiency and Versatility

  19. Hardware Design steps

  20. ExamplesSPLASH IIMulti FPGA parallel computer with orchestrated systolic communications to perform inter- FPGA data transfer

  21. GarpFor general purpose loop acceleration

  22. CMC Rapid Prototyping Platform

  23. RC Applications • RC has demonstrated >10x performance density advantage over microprocessors and DSPs • Pattern matching • Data encryption • Data compression • Video and image processing • Commercial Push • Handheld devices - PDAs, mobile Phones, specialized tools • Networks - telecom switches, network routers, network bridges • High-performance Computing – super computers, medical appliances, robot navigation and planning • Defense – Ballistic Missiles, KV navigation, Spacecraft processing

  24. RC Implementations • Hardware • Catalina Research Incorporated - http://www.catalinaresearch.com/Chameleon • Annapolis Microsystems - http://www.annapmicro.com/Wildstar • Alpha Data Parallel Systems - http://www.alpha-data.com Tools • Celoxica - http://www.celoxica.com • Star Bridge Systems - http://www.starbridgesystems.com • Annapolis Microsystems - http://www.annapmicro.com/CoreFire

  25. Content • Coupling Approaches (Reconfigurable Hardware with General Processor) • Granularity of the FPGA as an RCS • Implementation Approaches • Compile Time Reconfiguration • Run Time Reconfiguration • Some more advantages • Challenges • Software like Design environment

  26. Coupling Approaches for Reconfigurable Hardware (RH) RH can be coupled to GP as: • A functional unit (Tight Coupling) • A Co-processor • An Attached processing unit • A Standalone processing unit (Loosely coupled)

  27. Coupling Approaches Cont’d • As a Functional Unit: • Within a host processor (General purpose: GP) • Uses data-path of a host machine • As a Coprocessor: • Without constant supervision of the GP • GP initializes the RH • Independent parallel computation • Less communication overhead

  28. Coupling Approaches Cont’d • As an attached processing unit: • Behaves as an additional processor • Memory Cache not visible • Independent Computation but high communication overhead • As a Standalone: • The most loosely coupled to GP • Infrequent Communication with the GP • Independent computation for very long period of time

  29. Different levels of coupling Workstation Attached Processing Unit Coprocessor Standalone Processing Unit I/O Interface CPU Memory Caches FU

  30. Pros and Cons of different coupling approaches • The tight integration • Very less communication overhead • RH can not operate “alone” for long period of time • Amount of Reconfig. Logic is limited • The loose integration • Greater parallelism • Higher communication overhead

  31. Logic Block Granularity • Referred to the size and complexity of the CLB • Fine grained logic block • Less complex, Altera Flex 10k consists of single 4 input LUT with flip-flop • Useful for bit-level manipulation • Exceed the performance of GP in case of operation on variable bit data width • Smaller area, high amount of computation (Compact) • Encryption and image processing application

  32. Logic Block Granularity cont’d • Coarse grained logic block • Larger granularity of the CLB • Helps perform more complex operations • Four 2-bit inputs (GARP) and multiplier in each logic block for 4 x 4 multiplication • Finite State Machine • Word-width (16 bit) data path circuits implementation in Very coarse-grained structure • Logic block closer to small processor

  33. Implementation Approaches • Compile Time Reconfiguration (CTR) • Static implementation strategy • Single system wide configuration • Configuration doesn’t change during computation • Similar to using ASIC for application acceleration • Run Time Reconfiguration (RTR) • Dynamic implementation strategy • Multiple time-exclusive configurations • Dynamic hardware allocation (run-time)

  34. RTR • Main Task: Dividing algorithm into time-exclusive segments • Global RTR • Allocates whole FPGA resources for each configuration • Single system wide configuration for each phase • Local RTR • Locally reconfigure subsets of logic at run-time • Partial reconfiguration, flexibility • Functional division of labor

  35. RTR Cont’d Global RTR LOAD A EXE. A LOAD B EXE. B LOAD C EXE. C Local RTR A A D B EXE. EXE. C

  36. Implementation Issues • Temporal partitions a iterative process • Possibly inefficient usage of FPGA resources in global RTR • Simulation • Efficient usage of hardware in local RTR • Current CAD tools: poor match for local RTR • (Examples of Local RTR: RRANN-2 and DISC )

  37. Power Savings in RC system • Exploitation of numerical properties of an application • Higher number of operations per clock due to deep pipelines • Sensor/actuator pre-conditioning and “glue logic” functions on chip

  38. Some Challenges • Access to the development of RCS restricted to hardware developers • Run-time environment, RTR scheduling • Difficulties in routing for RC hardware having large number of CLBs • Connection scheme in multi-FPGA system

  39. Software Aspect • Software like design environment • System C (Synopsys), Handel C (Celoxica) • Hardware-Software co-design (ARM Rapid Prototyping Platform (RPP) • Generation of detail gate level description (netlist) by HLL (High level language) • Technology mapping, Placement and Routing • Generation of .bit files (language of the FPGA)

  40. Software Aspect Cont’d • Programming language/HDL • SoC consists 50 to 90% software • Wide acceptability of C/C++ • Simulation timing • Simulation takes long time in current CAD tools • C/C++ debugger very efficient

  41. RC1000 Celoxica platform • DK1 design suite (handel C) • RC1000 plug-in card, PCI bus interfacing • Xilinx Virtex-1000 FPGA (1 million gates) • Design Flow Handel C Source Files Generate VHDL/Verilog Simulate & netlist Compile Generate EDIF (netlist) Place & Route Tools Generation BitStream

  42. Hardware-Software Co-design Amdahl’s Law T = 1 (1 – a) + a / s T = Overall speedup a = Fraction of the original program that could be enhanced by transferring to h/w s = Speedup obtained for particular fraction of program

  43. Summary • RCS to bridge the gap between Software and hardware (flexibility and performance) • FPGA ideal candidate for an RH • Spatial Execution • Reprogrammability • Design time • Design and synthesis flow for CAD tools • Hybrid Architecture • Recent advancement in CAD tools

  44. Questions?????????????

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