Litcius/Paper detail

mpi4py.futures: MPI-Based Asynchronous Task Execution for Python

Marcin Rogowski, Samar Aseeri, David E. Keyes, Lisandro Dalcín

2022IEEE Transactions on Parallel and Distributed Systems42 citationsDOI

Abstract

We present mpi4py.futures, a lightweight, asynchronous task execution framework targeting the Python programming language and using the Message Passing Interface (MPI) for interprocess communication. mpi4py.futures follows the interface of the concurrent.futures package from the Python standard library and can be used as its drop-in replacement, while allowing applications to scale over multiple compute nodes. We discuss the design, implementation, and feature set of mpi4py.futures and compare its performance to other solutions on both shared and distributed memory architectures. On a shared-memory system, we show mpi4py.futures to consistently outperform Python's concurrent.futures with speedup ratios between 1.4X and 3.7X in throughput (tasks per second) and between 1.9X and 2.9X in bandwidth. On a Cray XC40 system, we compare mpi4py.futures to Dask – a well-known Python parallel computing package. Although we note more varied results, we show mpi4py.futures to outperform Dask in most scenarios.

Topics & Concepts

Computer sciencePython (programming language)Asynchronous communicationParallel computingFutures contractMessage passingOperating systemProgramming languageDistributed computingComputer networkFinancial economicsEconomicsParallel Computing and Optimization TechniquesAdvanced Data Storage TechnologiesDistributed and Parallel Computing Systems
mpi4py.futures: MPI-Based Asynchronous Task Execution for Python | Litcius