Efficient Parallel Functional Programming with Effects

Author:

Arora Jatin1ORCID,Westrick Sam1ORCID,Acar Umut A.1ORCID

Affiliation:

1. Carnegie Mellon University, USA

Abstract

Although functional programming languages simplify writing safe parallel programs by helping programmers to avoid data races, they have traditionally delivered poor performance. Recent work improved performance by using a hierarchical memory architecture that allows processors to allocate and reclaim memory independently without any synchronization, solving thus the key performance challenge afflicting functional programs. The approach, however, restricts mutation, or memory effects, so as to ensure "disentanglement", a low-level memory property that guarantees independence between different heaps in the hierarchy. This paper proposes techniques for supporting entanglement and for allowing functional programs to use mutation at will. Our techniques manage entanglement by distinguishing between disentangled and entangled objects and shielding disentangled objects from the cost of entanglement management. We present a semantics that formalizes entanglement as a property at the granularity of memory objects, and define several cost metrics to reason about and bound the time and space cost of entanglement. We present an implementation of the techniques by extending the MPL compiler for Parallel ML. The extended compiler supports all features of the Parallel ML language, including unrestricted effects. Our experiments using a variety of benchmarks show that MPL incurs a small time and space overhead compared to sequential runs, scales well, and is competitive with languages such as C++, Go, Java, OCaml. These results show that our techniques can marry the safety benefits of functional programming with performance.

Publisher

Association for Computing Machinery (ACM)

Subject

Safety, Risk, Reliability and Quality,Software

Reference83 articles.

1. 2011. Finagle: A Protocol-Agnostic RPC System. https://twitter.github.io/finagle/ 2011. Finagle: A Protocol-Agnostic RPC System. https://twitter.github.io/finagle/

2. 2015. Folly: Facebook Open-source Library. https://github.com/facebook/folly 2015. Folly: Facebook Open-source Library. https://github.com/facebook/folly

3. Umut A. Acar , Naama Ben-David , and Mike Rainey . 2017 . Contention in Structured Concurrency: Provably Efficient Dynamic Non-Zero Indicators for Nested Parallelism . In Proceedings of the 22Nd ACM SIGPLAN Symposium on Principles and Practice of Parallel Programming (PPoPP ’17) . 75–88. isbn:978-1-4503- 4493 - 4497 Umut A. Acar, Naama Ben-David, and Mike Rainey. 2017. Contention in Structured Concurrency: Provably Efficient Dynamic Non-Zero Indicators for Nested Parallelism. In Proceedings of the 22Nd ACM SIGPLAN Symposium on Principles and Practice of Parallel Programming (PPoPP ’17). 75–88. isbn:978-1-4503-4493-7

4. The Data Locality of Work Stealing

5. Heartbeat scheduling: provable efficiency for nested parallelism

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