This is a collection of basic programming tools for numerical computation, including Fast Fourier Transforms, Spherical Harmonic Transforms, non-equispaced Fourier transforms, as well as some concrete applications like 4pi convolution on the sphere and gridding/degridding of radio interferometry data.
The code is written in C++17, but provides a simple and comprehensive Python interface.
- Python >= 3.6
- pybind11
- a C++17-capable compiler (tested with g++ version 7 or newer, clang++, MSVC 2019 and Intel icpx 2021.1.2)
The latest version of DUCC can be obtained by cloning the repository via
git clone https://gitlab.mpcdf.mpg.de/mtr/ducc.git
In the following, we assume a Debian-based distribution. For other distributions, the "apt" lines will need slight changes.
DUCC and its mandatory dependencies can be installed via:
sudo apt-get install git python3 python3-pip python3-dev python3-pybind11 pybind11-dev
pip3 install --user git+https://gitlab.mpcdf.mpg.de/mtr/ducc.git
NOTE: compilation of the code will take a significant amount of time (several minutes). Binary packages are deliberately not made available, since much better performance can be achieved by compiling the code specifically for the detected target CPU.
The interfaces of the DUCC components are expected to evolve over time; whenever
an interface changes in a manner that is not backwards compatible, the DUCC
version number will increase. As a consequence it might happen that one part of
a Python code may use an older version of DUCC while at the same time another
part requires a newer version. Since DUCC's version number is included in the
module name itself (the module is not called ducc
, but rather ducc<X>
),
this is not a problem, as multiple DUCC versions can be installed
simultaneously.
The latest patch levels of a given DUCC version will always be available at the
HEAD of the git branch with the respective name. In other words, if you need
the latest incarnation of DUCC 0, this will be on branch "ducc0" of the
git repository, and it will be installed as the package "ducc0".
Later versions will be maintained on new branches and will be installed as
"ducc1" and "ducc2", so that there will be no conflict with potentially
installed older versions.
This package provides Fast Fourier, trigonometric and Hartley transforms with a
simple Python interface. It is an evolution of pocketfft
and pypocketfft
which are currently used by numpy
and scipy
.
The central algorithms are derived from Paul Swarztrauber's FFTPACK code.
- supports fully complex and half-complex (i.e. complex-to-real and real-to-complex) FFTs, discrete sine/cosine transforms and Hartley transforms
- achieves very high accuracy for all transforms
- supports multidimensional arrays and selection of the axes to be transformed
- supports single, double, and long double precision
- makes use of CPU vector instructions when performing 2D and higher-dimensional transforms
- supports prime-length transforms without degrading to O(N**2) performance
- has optional multi-threading support for multidimensional transforms
- there is no internal caching of plans and twiddle factors, making the interface as simple as possible
- 1D transforms are significantly slower than those provided by FFTW (if FFTW's plan generation overhead is ignored)
- multi-D transforms in double precision perform fairly similar to FFTW with
FFTW_MEASURE; in single precision
ducc.fft
can be significantly faster.
This package provides efficient spherical harmonic trasforms (SHTs). Its code is derived from libsharp, with accelerated recurrence algorithms presented in https://www.jstage.jst.go.jp/article/jmsj/96/2/96_2018-019/_pdf.
This library provides Python bindings for the most important functionality
related to the HEALPix tesselation,
except for spherical harmonic transforms, which are covered by ducc.sht
.
The design goals are
- similarity to the interface of the HEALPix C++ library (while respecting some Python peculiarities)
- simplicity (no optional function parameters)
- low function calling overhead
Library for high-accuracy 4pi convolution on the sphere, which generates a
total convolution data cube from a set of sky and beam a_lm
and computes
interpolated values for a given list of detector pointings.
This code has evolved from the original
totalconvolver algorithm
via the conviqt code.
- the code uses
ducc.sht
SHTs andducc.fft
FFTs to compute the data cube - shared-memory parallelization is provided via standard C++ threads.
- for interpolation, the algorithm and kernel described in https://arxiv.org/abs/1808.06736 are used. This allows very efficient interpolation with user-adjustable accuracy.
Library for high-accuracy gridding/degridding of radio interferometry datasets
(code paper available at https://arxiv.org/abs/2010.10122).
This code has also been integrated into
wsclean
(https://arxiv.org/abs/1407.1943)
as the wgridder
component.
- shared-memory parallelization via standard C++ threads.
- kernel computation is performed on the fly, avoiding inaccuracies due to table lookup and reducing overall memory bandwidth
- uses the analytical gridding kernel presented in https://arxiv.org/abs/1808.06736
- uses the "improved W-stacking method" described in https://arxiv.org/abs/2101.11172
- in combination these two aspects allow extremely accurate gridding/degridding operations (L2 error compared to explicit DFTs can go below 1e-12) with reasonable resource consumption
Various unsorted functionality which will hopefully be categorized in the future.