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Data Analysis, Simulations and Visualization on the Sphere
...Gorski et al., 2005, Ap.J., 622, p.759
Full software documentation available at https://healpix.sourceforge.io/documentation.php
Wiki Pages: https://sourceforge.net/p/healpix/wiki/Home
Exchanging Data with HEALPix (in FITS files): https://sourceforge.net/p/healpix/wiki/Exchanging%20Data%20with%20HEALPix/
GDL and FL users should read https://sourceforge.net/p/healpix/wiki/HEALPix%20and%20GDL/
XParallax viu is a free software tool for automated astrometric data reduction of astronomic CCD images.
It helps astronomers to perform an accurate astrometric reduction of dozens ore even hundreds of images which can be used in subsequent data analysis process. Fit headers generated by this software are fully compatible with other commonly used image utilities like SAO DS9 or Aladin Sky Atlas.
Next-generation sequencing short reads aligner based on Intel® MIC
Latest Code in GitHub:
https://github.com/aquaskyline/MICA-aligner
To better utilize MIC-enabled computers for NGS data analysis, we developed a new short-read aligner MICA that is optimized in view of MIC’s limitation and the extra parallelism inside each MIC core. Experiments on aligning 150bp paired-end reads show that MICA using one MIC board is ~4.85 times faster than the CPU-(multi-core)-based BWA-MEM and about the same speed as the GPU-based SOAP3-dp. Furthermore, MICA’s simplicity allows very efficient scale-up when multiple MIC boards are used in a node (3 cards gives a 14-fold speedup over 6-core BWA-MEM).