Visible to the public Staging Beyond Terms: Prospects and Challenges

TitleStaging Beyond Terms: Prospects and Challenges
Publication TypeConference Paper
Year of Publication2016
AuthorsInoue, Jun, Kiselyov, Oleg, Kameyama, Yukiyoshi
Conference NameProceedings of the 2016 ACM SIGPLAN Workshop on Partial Evaluation and Program Manipulation
Date PublishedJanuary 2016
PublisherACM
Conference LocationNew York, NY, USA
ISBN Number978-1-4503-4097-7
KeywordsFirst-class modules, Functional programming, Multi-stage programming, pubcrawl, pubcrawl170201, science of security, Type optimization, type systems
Abstract

Staging is a program generation paradigm with a clean, well-investigated semantics which statically ensures that the generated code is always well-typed and well-scoped. Staging is often used for specializing programs to the known properties or parts of data to improve efficiency, but so far it has been limited to generating terms. This short paper describes our ongoing work on extending staging, with its strong safety guarantees, to generation of non-terms, focusing on ML-style modules. The purpose is to map out the promises and challenges, then to pose a question to solicit the community's expertise in evaluating how essential our extensions are for the purpose of applying staging beyond the realm of terms. We demonstrate our extensions' use in specializing functor applications to eliminate its (currently large) overhead in OCaml. We explain the challenges that those extensions bring in and identify a promising line of attack. Unexpectedly, however, it turns out that we can avoid module generation altogether by representing modules, possibly containing abstract types, as polymorphic records. With the help of first-class modules, module specialization reduces to ordinary term specialization, which can be done with conventional staging. The extent to which this hack generalizes is unclear. Thus we have a question to the community: is there a compelling use case for module generation? With these insights and questions, we offer a starting point for a long-term program in the next stage of staging research.

URLhttps://dl.acm.org/doi/10.1145/2847538.2847548
DOI10.1145/2847538.2847548
Citation Keyinoue_staging_2016