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Journal ArticleDOI

Scheduling multithreaded computations by work stealing

TLDR
This paper gives the first provably good work-stealing scheduler for multithreaded computations with dependencies, and shows that the expected time to execute a fully strict computation on P processors using this scheduler is 1:1.
Abstract
This paper studies the problem of efficiently schedulling fully strict (i.e., well-structured) multithreaded computations on parallel computers. A popular and practical method of scheduling this kind of dynamic MIMD-style computation is “work stealing,” in which processors needing work steal computational threads from other processors. In this paper, we give the first provably good work-stealing scheduler for multithreaded computations with dependencies.Specifically, our analysis shows that the expected time to execute a fully strict computation on P processors using our work-stealing scheduler is T1/P + O(T ∞ , where T1 is the minimum serial execution time of the multithreaded computation and (T ∞ is the minimum execution time with an infinite number of processors. Moreover, the space required by the execution is at most S1P, where S1 is the minimum serial space requirement. We also show that the expected total communication of the algorithm is at most O(PT ∞( 1 + nd)Smax), where Smax is the size of the largest activation record of any thread and nd is the maximum number of times that any thread synchronizes with its parent. This communication bound justifies the folk wisdom that work-stealing schedulers are more communication efficient than their work-sharing counterparts. All three of these bounds are existentially optimal to within a constant factor.

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Proceedings ArticleDOI

Presto: distributed machine learning and graph processing with sparse matrices

TL;DR: Presto is built, a distributed system that extends R and addresses many of its limitations, and shows the promise of this approach: many important machine learning and graph algorithms can be expressed in a single framework and are substantially faster than those in Hadoop and Spark.
Proceedings ArticleDOI

Adaptive work stealing with parallelism feedback

TL;DR: The performance of A-Steal is analyzed using "trim analysis," which allows us to prove that the thread scheduler performs poorly on at most a small number of time steps, while exhibiting near-optimal behavior on the vast majority.

Concurrent Data Structures

Mark Moir, +1 more
TL;DR: Sun Microsystems Laboratories 1.1 Designing Concurrent Data Structures • Blocking Techniques • Nonblocking Techniques • Complexity Measures • Correctness • Verification Techniques • Tools of the Trade
Proceedings ArticleDOI

Analytical Modeling of Pipeline Parallelism

TL;DR: This paper develops an analytical model for pipeline parallelism based on queueing theory that is useful to both characterize the performance and efficiency of existing implementations and to guide the design of new pipeline algorithms.
Book ChapterDOI

Sylvan: Multi-Core Decision Diagrams

TL;DR: Sylvan as discussed by the authors implements parallel operations on list decision diagrams, a variant of multi-valued decision diagrams that is useful for symbolic model checking, and combines parallel operations with parallelization on a higher level, by partitioning the transition relation.
References
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Journal ArticleDOI

Cilk: An Efficient Multithreaded Runtime System

TL;DR: It is shown that on real and synthetic applications, the “work” and “critical-path length” of a Cilk computation can be used to model performance accurately, and it is proved that for the class of “fully strict” (well-structured) programs, the Cilk scheduler achieves space, time, and communication bounds all within a constant factor of optimal.
Journal ArticleDOI

Bounds for certain multiprocessing anomalies

TL;DR: In this paper, precise bounds are derived for several anomalies of this type in a multiprocessing system composed of many identical processing units operating in parallel, and they show that an increase in the number of processing units can cause an increased total length of time needed to process a fixed set of tasks.
Proceedings ArticleDOI

The implementation of the Cilk-5 multithreaded language

TL;DR: Cilk-5's novel "two-clone" compilation strategy and its Dijkstra-like mutual-exclusion protocol for implementing the ready deque in the work-stealing scheduler are presented.
Journal ArticleDOI

The Parallel Evaluation of General Arithmetic Expressions

TL;DR: It is shown that arithmetic expressions with n ≥ 1 variables and constants; operations of addition, multiplication, and division; and any depth of parenthesis nesting can be evaluated in time 4 log 2 + 10(n - 1) using processors which can independently perform arithmetic operations in unit time.
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