Efficient tree-traversals: reconciling parallelism and dense data representations

Author:

Koparkar Chaitanya1,Rainey Mike2,Vollmer Michael3,Kulkarni Milind4ORCID,Newton Ryan R.4

Affiliation:

1. Indiana University, USA

2. Carnegie Mellon University, USA

3. University of Kent, UK

4. Purdue University, USA

Abstract

Recent work showed that compiling functional programs to use dense, serialized memory representations for recursive algebraic datatypes can yield significant constant-factor speedups for sequential programs. But serializing data in a maximally dense format consequently serializes the processing of that data, yielding a tension between density and parallelism. This paper shows that a disciplined, practical compromise is possible. We present Parallel Gibbon, a compiler that obtains the benefits of dense data formats and parallelism. We formalize the semantics of the parallel location calculus underpinning this novel implementation strategy, and show that it is type-safe. Parallel Gibbon exceeds the parallel performance of existing compilers for purely functional programs that use recursive algebraic datatypes, including, notably, abstract-syntax-tree traversals as in compilers.

Funder

National Science Foundation

Engineering and Physical Sciences Research Council

Publisher

Association for Computing Machinery (ACM)

Subject

Safety, Risk, Reliability and Quality,Software

Reference47 articles.

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