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Chapter 9 Pipeline and Vector Processing

Chapter 9 Pipeline and Vector Processing. Dr. Bernard Chen Ph.D. University of Central Arkansas Spring 2009. Parallel processing. A parallel processing system is able to perform concurrent data processing to achieve faster execution time

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Chapter 9 Pipeline and Vector Processing

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  1. Chapter 9 Pipeline and Vector Processing Dr. Bernard Chen Ph.D. University of Central Arkansas Spring 2009

  2. Parallel processing • A parallel processing system is able to perform concurrent data processing to achieve faster execution time • The system may have two or more ALUs and be able to execute two or more instructions at the same time • Goal is to increase the throughput– the amount of processing that can be accomplished during a given interval of time

  3. Parallel processing classification Single instruction stream, single data stream – SISD Single instruction stream, multiple data stream – SIMD Multiple instruction stream, single data stream – MISD Multiple instruction stream, multiple data stream – MIMD

  4. Single instruction stream, single data stream – SISD • Single control unit, single computer, and a memory unit • Instructions are executed sequentially. Parallel processing may be achieved by means of multiple functional units or by pipeline processing

  5. Single instruction stream, multiple data stream – SIMD • Represents an organization that includes many processing units under the supervision of a common control unit. • Includes multiple processing units with a single control unit. All processors receive the same instruction, but operate on different data.

  6. Multiple instruction stream, single data stream – MISD • Theoretical only • processors receive different instructions, but operate on same data.

  7. Multiple instruction stream, multiple data stream – MIMD • A computer system capable of processing several programs at the same time. • Most multiprocessor and multicomputer systems can be classified in this category

  8. Pipelining: Laundry Example Small laundry has one washer, one dryer and one operator, it takes 90 minutes to finish one load: Washer takes 30 minutes Dryer takes 40 minutes “operator folding” takes 20 minutes A B C D

  9. Sequential Laundry This operator scheduled his loads to be delivered to the laundry every 90 minutes which is the time required to finish one load. In other words he will not start a new task unless he is already done with the previous task The process is sequential. Sequential laundry takes 6 hours for 4 loads A B C D 6 PM Midnight 7 8 9 11 10 Time 30 40 20 30 40 20 30 40 20 30 40 20 T a s k O r d e r 90 min

  10. Efficiently scheduled laundry: Pipelined LaundryOperator start work ASAP Another operator asks for the delivery of loads to the laundry every 40 minutes!?. Pipelined laundry takes 3.5 hours for 4 loads 30 40 40 40 40 20 A B C D 6 PM Midnight 7 8 9 11 10 Time 40 40 40 T a s k O r d e r

  11. Pipelining Facts Multiple tasks operating simultaneously Pipelining doesn’t help latency of single task, it helps throughput of entire workload Pipeline rate limited by slowest pipeline stage Potential speedup = Number of pipe stages Unbalanced lengthsof pipe stages reduces speedup Time to “fill” pipeline and time to “drain” it reduces speedup 30 40 40 40 40 20 A B C D 6 PM 7 8 9 Time T a s k O r d e r The washer waits for the dryer for 10 minutes

  12. 9.2 Pipelining • Decomposes a sequential process into segments. • Divide the processor into segment processors each one is dedicated to a particular segment. • Each segment is executed in a dedicated segment-processor operates concurrently with all other segments. • Information flows through these multiple hardware segments.

  13. k segments 9.2 Pipelining • Instruction execution is divided into k segments or stages • Instruction exits pipe stage k-1 and proceeds into pipe stage k • All pipe stages take the same amount of time; called one processor cycle • Length of the processor cycle is determined by the slowest pipe stage

  14. 9.2 Pipelining • Suppose we want to perform the combined multiply and add operations with a stream of numbers: • Ai * Bi + Ci for i =1,2,3,…,7

  15. 9.2 Pipelining • The suboperations performed in each segment of the pipeline are as follows: • R1  Ai, R2  Bi • R3  R1 * R2 R4  Ci • R5  R3 + R4

  16. Pipeline Performance n:instructions k: stages in pipeline : clockcycle Tk: total time n is equivalent to number of loads in the laundry example k is the stages (washing, drying and folding. Clock cycle is the slowest task time n k

  17. SPEEDUP • • Consider a k-segment pipeline operating on n data sets. (In the above example, k = 3 and n = 4.) • > It takes k clock cycles to fill the pipeline and get the first result from the output of the pipeline. • After that the remaining (n - 1) results will come out at each clock cycle. • > It therefore takes (k + n - 1) clock cycles to complete the task.

  18. SPEEDUP • If we execute the same task sequentially in a single processing unit, it takes (k * n) clock cycles. • • The speedup gained by using the pipeline is: • S = k * n / (k + n - 1 )

  19. SPEEDUP • S = k * n / (k + n - 1 ) For n >> k (such as 1 million data sets on a 3-stage pipeline), • S ~ k • So we can gain the speedup which is equal to the number of functional units for a large data sets. This is because the multiple functional units can work in parallel except for the filling and cleaning-up cycles.

  20. Example: 6 tasks, divided into 4 segments

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