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Single program, multiple data

From Wikipedia, the free encyclopedia
Computing technique used to achieve parallelism
"SPMD" redirects here. For the membrane technology, seeSemipermeable membrane device.
This articleis missing information about GPUs. Please expand the article to include this information. Further details may exist on thetalk page.(November 2019)

Incomputing,single program, multiple data (SPMD) is a term that has been used to refer to computational models for exploitingparallelism whereby multiple processors cooperate in the execution of a program in order to obtain results faster.

The term SPMD was introduced in 1983 and was used to denote two different computational models:

  1. by Michel Auguin (University of Nice Sophia-Antipolis) and François Larbey (Thomson/Sintra),[1][2][3] as a "fork-and-join" and data-parallel approach where theparallel tasks ("single program") are split-up and run simultaneouslyin lockstep on multipleSIMD processors with different inputs, and
  2. by Frederica Darema (IBM),[4][5][6] where "all (processors)processes  begin executing the same program... but through synchronization directives ... self-schedule themselves to execute different instructions and act on different data" and enablingMIMD parallelization of a given program, and is a more general approach thandata-parallel and more efficient than the fork-and-join for parallel execution on general purpose multiprocessors.

The (IBM) SPMD is the most common style of parallel programming and can be considered a subcategory of MIMD in that it refers toMIMD execution of a given ("single") program.[7] It is also a prerequisite for research concepts such asactive messages anddistributed shared memory.

Flynn's taxonomy
Single data stream
Multiple data streams
SIMD subcategories[8]
See also

SPMD vs SIMD

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An example of "Single program, multiple data"

In SPMD parallel execution, multiple autonomous processors simultaneously execute the same program at independent points, rather than in thelockstep thatSIMD orSIMT imposes on different data. With SPMD, tasks can be executed on general purposeCPUs. In SIMD the same operation (instruction) is applied on multiple data to manipulate data streams (a version of SIMD isvector processing where the data are organized as vectors). Another class of processors,GPUs encompass multiple SIMD streams processing. SPMD and SIMD are not mutually exclusive; SPMD parallel execution can include SIMD, or vector, or GPU sub-processing. SPMD has been used for parallel programming of both message passing and shared-memory machine architectures.

Distributed memory

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Ondistributed memory computer architectures, SPMD implementations usually employmessage passing programming. A distributed memory computer consists of a collection of interconnected, independent computers, called nodes. For parallel execution, each node starts its own program and communicates with other nodes by sending and receiving messages, calling send/receive routines for that purpose. Otherparallelization directives such asBarriersynchronization may also be implemented by messages. The messages can be sent by a number of communication mechanisms, such asTCP/IP overEthernet, or specialized high-speed interconnects such asInfiniBand orOmni-Path. For distributed memory environments, serial sections of the program can be implemented by identical computation of the serial section on all nodes rather than computing the result on one node and sending it to the others, if that improves performance by reducing communication overhead.

Nowadays, the programmer is isolated from the details of the message passing by standard interfaces, such asPVM andMPI.

Distributed memory is the programming style used on parallel supercomputers from homegrownBeowulf clusters to the largest clusters on theTeragrid, as well as presentGPU-based supercomputers.

Shared memory

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On ashared memory machine (a computer with several interconnectedCPUs that access the same memory space), the sharing can be implemented in the context of either physically shared memory or logically shared (but physically distributed) memory; in addition to the shared memory, the CPUs in the computer system can also include local (or private) memory. For either of these contexts, synchronization can be enabled with hardware enabled primitives (such ascompare-and-swap, orfetch-and-add. For machines that do not have such hardware support, locks can be used and data can be "exchanged" across processors (or, more generally,processes orthreads) by depositing the sharable data in a shared memory area. When the hardware does not support shared memory, packing the data as a "message" is often the most efficient way to program (logically) shared memory computers with large number of processors, where the physical memory is local to processors and accessing the memory of another processor takes longer. SPMD on a shared memory machine can be implemented by standard processes (heavyweight) or threads (lightweight).

Shared memorymultiprocessing (bothsymmetric multiprocessing, SMP, andnon-uniform memory access, NUMA) presents the programmer with a common memory space and the possibility to parallelize execution. With the (IBM) SPMD model the cooperating processors (or processes) take different paths through the program, using parallel directives (parallelization and synchronization directives, which can utilize compare-and-swap and fetch-and-add operations on shared memory synchronization variables), and perform operations on data in the shared memory ("shared data"); the processors (or processes) can also have access and perform operations on data in their local memory ("private data"). In contrast, with fork-and-join approaches, the program starts executing on one processor and the execution splits in a parallel region, which is started when parallel directives are encountered; in a parallel region, the processors execute a parallel task on different data. A typical example is the parallel DO loop, where different processors work on separate parts of the arrays involved in the loop. At the end of the loop, execution is synchronized (with soft- or hard-barriers[6]), and processors (processes) continue to the next available section of the program to execute. The (IBM) SPMD has been implemented in the current standard interface for shared memory multiprocessing,OpenMP, which uses multithreading, usually implemented by lightweight processes, calledthreads.

Combination of levels of parallelism

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Current computers allow exploiting many parallel modes at the same time for maximum combined effect. A distributed memory program usingMPI may run on a collection of nodes. Each node may be a shared memory computer and execute in parallel on multiple CPUs using OpenMP. Within each CPU, SIMD vector instructions (usually generated automatically by the compiler) andsuperscalar instruction execution (usually handled transparently by the CPU itself), such aspipelining and the use of multiple parallel functional units, are used for maximum single CPU speed.

History

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The acronym SPMD for "Single-Program Multiple-Data" has been used to describe two different computational models for exploiting parallel computing, and this is due to both terms being natural extensions of Flynn's taxonomy.[7] The two respective groups of researchers were unaware of each other's use of the term SPMD to independently describe different models of parallel programming.

The term SPMD was proposed first in 1983 by Michel Auguin (University of Nice Sophia-Antipolis) and François Larbey (Thomson/Sintra) in the context of the OPSILA parallel computer and in the context of a fork-and-join and data parallel computational model approach.[1] This computer consisted of a master (controller processor) and SIMD processors (or vector processor mode as proposed by Flynn). In Auguin's SPMD model, the same (parallel) task ("same program") is executed on different (SIMD) processors ("operating in lock-step mode"[1] acting on a part ("slice") of the data-vector. Specifically, their 1985 paper[2] and others[3][1] stated:

We consider the SPMD (Single Program, Multiple Data) operating mode. This mode allows simultaneous execution of the same task (one per processor) but prevents data exchange between processors. Data exchanges are only performed under SIMD mode by means of vector assignments. We assume synchronizations are summed-up to switchings (sic) between SIMD and SPMD operatings [sic] modes using global fork-join primitives.

Starting around the same timeframe (in late 1983 – early 1984), the SPMD term was proposed by Frederica Darema (at IBM at that time, and part of the RP3 group) to define a different SPMD computational model that she proposed,[6][5][4] as a programming model which in the intervening years has been applied to a wide range of general-purpose high-performance computers (including RP3 - the 512-processor IBM Research Parallel Processor Prototype) and has led to the current parallel computing standards. The (IBM) SPMD programming model assumes a multiplicity of processors which operate cooperatively, all executing the same program but can take different paths through the program based on parallelization directives embedded in the program:[6][5][4][9][10]

All processes participating in the parallel computation are created at the beginning of the execution and remain in existence until the end ... [the processors/processes] execute different instructions and act on different data ... the job [(work)] to be done by each process is allocated dynamically ... [i.e. the processes] self-schedule themselves to execute different instructions and act on different data [thus self-assign themselves to cooperate in execution of serial and parallel tasks (as well as replicate tasks) in the program.]

The notionprocess generalized the termprocessor in the sense that multiple processes can execute on a processor (to for example exploit larger degrees of parallelism for more efficiency and load-balancing). The (IBM) SPMD model was proposed by Darema as an approach different and more efficient than the fork-and-join that was pursued by all others in the community at that time; it is also more general than just "data-parallel" computational model and can encompass fork-and-join (as a subcategory implementation). The original context of the (IBM) SPMD was the RP3 computer (the 512-prosessor IBM Research Parallel Processor Prototype), which supported general purpose computing, with both distributed and (logically) shared memory.[9] The (IBM) SPMD model was implemented by Darema and IBM colleagues into the EPEX (Environment for Parallel Execution), one of the first prototype programming environments.[6][5][4][9][10][11] The effectiveness of the (IBM) SPMD was demonstrated for a wide class of applications,[9][4] and was implemented in the IBM FORTRAN in 1988,[12] the first vendor-product in parallel programming; and inMPI (1991 and on),OpenMP (1997 and on), and other environments which have adopted and cite the (IBM) SPMD Computational Model.

By the late 1980s, there were many distributed computers with proprietary message passing libraries. The first SPMD standard wasPVM. The current de facto standard isMPI.

TheCray parallel directives were a direct predecessor ofOpenMP.

References

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  1. ^abcdM. Auguin; F. Larbey (1983). "OPSILA: an advanced SIMD for numerical analysis and signal processing".Microprocessing and microprogramming: EUROMICRO ; Symposium. proceedings ; Microcomputers: developments in industry, business and education. 13-16 Sep 1983. Amsterdam: North-Holland.ISBN 0-444-86742-2.
  2. ^abM. Auguin; F. Labrey (1985). "A Multi-processor SIMD Machine: OPSILA". In K. Waldschmidt; B. Myhrhaug (eds.).Microcomputers, usage and design. Amsterdam: North-Holland.ISBN 0-444-87835-1.
  3. ^abAuguin, M.; Boeri, F.; Dalban, J.P; Vincent-Carrefour, A. (1987). "Experience Using a SIMD/SPMD Multiprocessor Architecture".Multiprocessing and Microprogramming.21 (1–5):171–178.doi:10.1016/0165-6074(87)90034-2.
  4. ^abcdeDarema, Frederica (2001). "The SPMD Model: Past, Present and Future".Recent Advances in Parallel Virtual Machine and Message Passing Interface. Lecture Notes in Computer Science. Vol. 2131. p. 1.doi:10.1007/3-540-45417-9_1.ISBN 978-3-540-42609-7.
  5. ^abcdF. Darema-Rogers; D. A. George; V. A. Norton; G. F. Pfister (23 January 1985). "A VM Parallel Environment". IBM Research Report RC 11225 (Report). IBM T. J. Watson Research Center.
  6. ^abcdeDarema, F.; George, D.A.; Norton, V.A.; Pfister, G.F. (1988). "A single-program-multiple-data computational model for EPEX/FORTRAN".Journal of Parallel Computing.7:11–24.doi:10.1016/0167-8191(88)90094-4.
  7. ^abFlynn, Michael (1972)."Some Computer Organizations and Their Effectiveness"(PDF).IEEE Transactions on Computers.C-21 (9):948–960.doi:10.1109/TC.1972.5009071.S2CID 18573685.
  8. ^Flynn, Michael J. (September 1972)."Some Computer Organizations and Their Effectiveness"(PDF).IEEE Transactions on Computers.C-21 (9):948–960.doi:10.1109/TC.1972.5009071.
  9. ^abcdDarema, Frederica (1988). "Applications environment for the IBM Research Parallel Processor Prototype (RP3)".Supercomputing. Lecture Notes in Computer Science. Vol. 297. pp. 80–95.doi:10.1007/3-540-18991-2_6.ISBN 978-3-540-18991-6.
  10. ^abDarema, Frederica (1986). "Parallel Applications Development for Shared Memory Systems". IBM Research Report RC12229 (Report). Yorktown Heights, NY: IBM T. J. Watson Research Center.
  11. ^J. M. Stone; F. Darema-Rogers; V. A. Norton; G. F. Pfister (30 September 1985). "Introduction to the VM/EPEX Fortran Preprocessor". IBM Research Report RC11407 (Report). Yorktown Heights, NY: IBM T. J. Watson Research Center.
  12. ^Toomey, L. J.; Plachy, E. C.; Scarborough, R. G.; Sahulka, R. J.; Shaw, J. F.; Shannon, A. W. (1988). "IBM Parallel FORTRAN".IBM Systems Journal.27 (4):416–435.doi:10.1147/sj.274.0416.

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