Optimisation of dynamic, hybrid signal function networks (2008)
| Venue: | In Trends in Functional Programming (TFP ’08 |
| Citations: | 3 - 3 self |
BibTeX
@TECHREPORT{Sculthorpe08optimisationof,
author = {Neil Sculthorpe and Henrik Nilsson},
title = {Optimisation of dynamic, hybrid signal function networks},
institution = {In Trends in Functional Programming (TFP ’08},
year = {2008}
}
OpenURL
Abstract
Abstract: Functional Reactive Programming (FRP) is an approach to reactive programming where systems are structured as networks of functions operating on signals. FRP is based on the synchronous data-flow paradigm and supports both continuous-time and discrete-time signals (hybrid systems). What sets FRP apart from most other languages for similar applications is its support for systems with dynamic structure and for higher-order data-flow constructs. This raises a range of implementation challenges. This paper contributes towards advancing the state of the art of FRP implementation by studying the notion of signal change and change propagation in a setting of hybrid signal function networks with dynamic structure. To sidestep some problems of certain previous FRP implementations that are structured using arrows, we suggest working with a notion of composable, multi-input and multi-output signal functions. A clear conceptual distinction is also made between continuous-time and discrete-time signals. We then show how establishing change-related properties of the signal functions in a network allows such networks to be simplified (static optimisation) and can help reducing the amount of computation needed for executing the networks (dynamic optimisation). Interestingly, distinguishing between continuous-time and discrete-time signals allows us to characterise the change-related properties of signal functions more precisely than what we otherwise would have been able to, which is helpful for optimisation.







