Conal Elliott, Target, USA United States, gives the third presentation in the second panel, Functional Programming Techniques, in the ICFP 2017 conference.
Parallel programming, whether imperative or functional, has long focused on arrays as the central data type. Meanwhile, typed functional programming has explored a variety of data types, including lists and various forms of trees. Generic functional programming decomposes these data types into a small set of fundamental building blocks: sum, product, composition, and their associated identities. Definitions over these few fundamental type constructions then automatically assemble into algorithms for an infinite set of data types--some familiar and some new. This paper presents generic functional formulations for two important and well-known classes of parallel algorithms: parallel scan (generalized prefix sum) and Fast Fourier Transform (FFT). Notably, arrays play no role in these formulations. Consequent benefits include a simpler and more compositional style, much use of common algebraic patterns--such as Functor, Applicative, Foldable, and Traversable--and freedom from possibility of run-time indexing errors. The functional generic style also clearly reveals deep commonality among what otherwise appears to be quite different algorithms. Instantiating the generic formulations to "top-down" and "bottom-up" trees as well as "bushes", two well-known algorithms for each of parallel scan and FFT naturally emerge, as well as two possibly new algorithms.