2,724 research outputs found
AutoParallel: A Python module for automatic parallelization and distributed execution of affine loop nests
The last improvements in programming languages, programming models, and
frameworks have focused on abstracting the users from many programming issues.
Among others, recent programming frameworks include simpler syntax, automatic
memory management and garbage collection, which simplifies code re-usage
through library packages, and easily configurable tools for deployment. For
instance, Python has risen to the top of the list of the programming languages
due to the simplicity of its syntax, while still achieving a good performance
even being an interpreted language. Moreover, the community has helped to
develop a large number of libraries and modules, tuning them to obtain great
performance.
However, there is still room for improvement when preventing users from
dealing directly with distributed and parallel computing issues. This paper
proposes and evaluates AutoParallel, a Python module to automatically find an
appropriate task-based parallelization of affine loop nests to execute them in
parallel in a distributed computing infrastructure. This parallelization can
also include the building of data blocks to increase task granularity in order
to achieve a good execution performance. Moreover, AutoParallel is based on
sequential programming and only contains a small annotation in the form of a
Python decorator so that anyone with little programming skills can scale up an
application to hundreds of cores.Comment: Accepted to the 8th Workshop on Python for High-Performance and
Scientific Computing (PyHPC 2018
- …