3 research outputs found
Parallel Astronomical Data Processing with Python: Recipes for multicore machines
High performance computing has been used in various fields of astrophysical
research. But most of it is implemented on massively parallel systems
(supercomputers) or graphical processing unit clusters. With the advent of
multicore processors in the last decade, many serial software codes have been
re-implemented in parallel mode to utilize the full potential of these
processors. In this paper, we propose parallel processing recipes for multicore
machines for astronomical data processing. The target audience are astronomers
who are using Python as their preferred scripting language and who may be using
PyRAF/IRAF for data processing. Three problems of varied complexity were
benchmarked on three different types of multicore processors to demonstrate the
benefits, in terms of execution time, of parallelizing data processing tasks.
The native multiprocessing module available in Python makes it a relatively
trivial task to implement the parallel code. We have also compared the three
multiprocessing approaches - Pool/Map, Process/Queue, and Parallel Python. Our
test codes are freely available and can be downloaded from our website.Comment: 15 pages, 7 figures, 1 table, "for associated test code, see
http://astro.nuigalway.ie/staff/navtejs", Accepted for publication in
Astronomy and Computin