To install NPBench, simply execute:
python -m pip install -r requirements.txt
python -m pip install .
You can then run a subset of the benchmarks with NumPy, Numba, and DaCe and plot the speedup of DaCe and Numba against NumPy:
python -m pip install numba
python -m pip install dace
python quickstart.py
python plot_results.py
Currently, the following frameworks are supported (in alphabetical order):
- CuPy
- DaCe
- Numba
- NumPy
- Pythran
Support will also be added shortly for:
- Legate
Please note that the NPBench setup only installs NumPy. To run benchmarks with other frameworks, you have to install them separately. Below, we provide some tips about installing each of the above frameworks:
If you already have CUDA installed, then you can install CuPy with pip:
python -m pip install cupy-cuda<version>
For example, if you have CUDA 11.1, then you should install CuPy with:
python -m pip install cupy-cuda111
For more installation options, consult the CuPy installation guide.
DaCe can be install with pip:
python -m pip install dace
However, you may want to install the latest version from the GitHub repository.
To run NPBench with DaCe, you have to select as framework (see details below)
either dace_cpu
or dace_gpu
.
Numba can be installed with pip:
python -m pip install numba
If you use Anaconda on an Intel-based machine, then you can install an optimized version of Numba that uses Intel SVML:
conda install -c numba icc_rt
For more installation options, please consult the Numba installation guide.
Pythran can be install with pip and Anaconda. For detailed installation options, please consult the Pythran installation guide.
To run individual bencharks, you can use the run_benchmark
script:
python run_benchmark.py -b <benchmark> -f <framework>
The available benchmarks are listed in the bench_info
folder.
The supported frameworks are listed in the framework_info
folder.
Please use the corresponding JSON filenames.
For example, to run adi
with NumPy, execute the following:
python run_benchmark.py -b adi -f numpy
You can run all the available benchmarks with a specific framework using the run_framework
script:
python run_framework.py -f <framework>
Each benchmark has four different presets; S
, M
, L
, and paper
.
The S
, M
, and L
presets have been selected so that NumPy finishes execution
in about 10, 100, and 1000ms respectively in a machine with two 16-core Intel Xeon
Gold 6130 processors.
Exception to that are atax
, bicg
, mlp
, mvt
, and trisolv
, which have been
tuned for 5, 20 and 100ms approximately due to very high memory requirements.
The paper
preset is the problem sizes used in the NPBench paper.
By default, the provided python scripts execute the benchmarks using the S
preset.
You can select a different preset with the optional -p
flag:
python run_benchmark.py -b gemm -f numpy -p L
After running some benchmarks with different frameworks, you can generate plots of the speedups and line-count differences (experimental) against NumPy:
python plot_results.py
python plot_lines.py
It is possible to use the NPBench infrastructure with your own benchmarks and frameworks. For more information on this functionality please read the documentation for benchmarks and frameworks.
NPBench is a collection of scientific Python/NumPy codes from various domains that we adapted from the following sources:
- Azimuthal Integration from pyFAI
- Navier-Stokes from CFD Python
- Cython tutorial for NumPy users
- Quantum Transport simulation from OMEN
- CRC-16-CCITT algorithm from oysstu
- Numba tutorial
- Mandelbrot codes From Python to Numpy
- N-Body simulation from nbody-python
- PolyBench/C
- Pythran benchmarks
- Stockham-FFT
- Weather stencils from gt4py