Julia package for the xtensor-julia library, the Julia bindings for xtensor.
-
xtensoris a C++ library for multi-dimensional arrays enabling numpy-style broadcasting and lazy computing. -
xtensor-juliaenables inplace use of julia arrays in C++ with all the benefits fromxtensor- C++ universal function and broadcasting
- STL - compliant APIs.
- A broad coverage of numpy APIs (see the numpy to xtensor cheat sheet).
The Julia bindings for xtensor are based on the CxxWrap.jl C++ library.
Installation
using Pkg; Pkg.add("Xtensor");
Documentation
To get started with using Xtensor.jl and xtensor-julia, check out the full documentation
http://xtensor-julia.readthedocs.io/
Usage
xtensor-julia offers two container types wrapping julia arrays inplace to provide an xtensor semantics
jltensorjlarray.
Both containers enable the numpy-style APIs of xtensor (see the numpy to xtensor cheat sheet).
-
On the one hand,
jlarrayhas a dynamic number of dimensions. It can be reshaped dynamically and the new shape is reflected on the Julia side. -
On the other hand
jltensorhas a compile time number of dimensions, specified with a template parameter. Shapes ofjltensorinstances are stack allocated, makingjltensora significantly faster expression thanjlarray.
Example 1: Use an algorithm of the C++ standard library with Julia array.
C++ code
#include <numeric> // Standard library import for std::accumulate #include <cxx_wrap.hpp> // libcxxwrap import to define Julia bindings #include "xtensor-julia/jltensor.hpp" // Import the jltensor container definition #include "xtensor/xmath.hpp" // xtensor import for the C++ universal functions double sum_of_sines(xt::jltensor<double, 2> m) { auto sines = xt::sin(m); // sines does not actually hold values. return std::accumulate(sines.cbegin(), sines.cend(), 0.0); } JLCXX_MODULE define_julia_module(jlcxx::Module& mod) { mod.method("sum_of_sines", sum_of_sines); }
Julia Code
using xtensor_julia_test arr = [[1.0 2.0] [3.0 4.0]] s = sum_of_sines(arr) s
Outputs
Example 2: Create a numpy-style universal function from a C++ scalar function
C++ code
#include <cxx_wrap.hpp> #include "xtensor-julia/jlvectorize.hpp" double scalar_func(double i, double j) { return std::sin(i) - std::cos(j); } JLCXX_MODULE define_julia_module(jlcxx::Module& mod) { mod.method("vectorized_func", xt::jlvectorize(scalar_func)); }
Julia Code
using xtensor_julia_test x = [[ 0.0 1.0 2.0 3.0 4.0] [ 5.0 6.0 7.0 8.0 9.0] [10.0 11.0 12.0 13.0 14.0]] y = [1.0, 2.0, 3.0, 4.0, 5.0] z = vectorized_func(x, y) z
Outputs
[[-0.540302 1.257618 1.89929 0.794764 -1.040465],
[-1.499227 0.136731 1.646979 1.643002 0.128456],
[-1.084323 -0.583843 0.45342 1.073811 0.706945]]
Building the HTML Documentation
xtensor-julia's documentation is built with three tools
While doxygen must be installed separately, you can install breathe by typing
Breathe can also be installed with mamba (or conda)
mamba install -c conda-forge breathe
Finally, build the documentation with
from the docs subdirectory.
Dependencies on xtensor, xtensor-julia, and CxxWrap
Xtensor.jl depends on xtensor-julia, xtensor and CxxWrap libraries
Xtensor.jl |
xtensor |
xtensor-julia |
CxxWrap |
|---|---|---|---|
| master | >=0.24.2,<0.25 | 0.10.2 | >=0.12.0,<0.13 |
| 0.9.1 | >=0.24.2,<0.25 | 0.10.2 | >=0.12.0,<0.13 |
| 0.9.0 | >=0.24.0,<0.25 | 0.10.1 | >=0.11.2,<0.12 |
These dependencies are automatically resolved when using the Julia package manager.
License
We use a shared copyright model that enables all contributors to maintain the copyright on their contributions.
This software is licensed under the BSD-3-Clause license. See the LICENSE file for details.