Python micro framework for building nature-inspired algorithms.
Project description
Nature-inspired algorithms are a very popular tool for solving optimization problems. Numerous variants of nature-inspired algorithms have been developed since the beginning of their era. To prove their versatility, those were tested in various domains on various applications, especially when they are hybridized, modified or adapted. However, implementation of nature-inspired algorithms is sometimes a difficult, complex and tedious task. In order to break this wall, NiaPy is intended for simple and quick use, without spending time for implementing algorithms from scratch.
Free software: MIT license
Documentation: https://niapy.readthedocs.io/en/stable/
Python versions: 3.6.x, 3.7.x or 3.8.x (backward compatibility with 2.7.x)
Dependencies: click
Mission
Our mission is to build a collection of nature-inspired algorithms and create a simple interface for managing the optimization process. NiaPy offers:
numerous benchmark functions implementations,
use of various nature-inspired algorithms without struggle and effort with a simple interface,
easy comparison between nature-inspired algorithms, and
export of results in various formats such as Pandas DataFrame, JSON or even Excel (only when using Python >= 3.6).
Installation
To install NiaPy, run this command in your terminal:
$ pip install NiaPy
This is the preferred method to install NiaPy, as it will always install the most recent stable release.
To install NiaPy with conda, use:
conda install -c niaorg niapy
To install NiaPy on Fedora, use:
yum install python3-niapy
In case you want to install directly from the source code, use:
$ git clone https://github.com/NiaOrg/NiaPy.git
$ cd NiaPy
$ python setup.py install
Usage
After installation, you can import NiaPy as any other Python module:
$ python
>>> import NiaPy
>>> NiaPy.__version__
Let’s go through a basic and advanced example.
Basic Example
Let’s say, we want to try out Gray Wolf Optimizer algorithm against Pintér benchmark function. Firstly, we have to create new file, with name, for example basic_example.py. Then we have to import chosen algorithm from NiaPy, so we can use it. Afterwards we initialize GreyWolfOptimizer class instance and run the algorithm. Given bellow is complete source code of basic example.
from NiaPy.algorithms.basic import GreyWolfOptimizer
from NiaPy.task import StoppingTask
# we will run 10 repetitions of Grey Wolf Optimizer against Pinter benchmark function
for i in range(10):
task = StoppingTask(D=10, nFES=1000, benchmark='pinter')
algorithm = GreyWolfOptimizer(NP=20)
best = algorithm.run(task)
print(best[-1])
Given example can be run with python basic_example.py command and should give you similar output as following:
0.27046073106003377
50.89301186976975
1.089147452727528
1.18418058254198
102.46876441081712
0.11237241605812048
1.8869331711450696
0.04861881403346098
2.5748611081742325
135.6754069530421
Advanced Example
In this example we will show you how to implement your own benchmark function and use it with any of implemented algorithms. First let’s create new file named advanced_example.py. As in the previous examples we wil import algorithm we want to use from NiaPy module.
For our custom benchmark function, we have to create new class. Let’s name it MyBenchmark. In the initialization method of MyBenchmark class we have to set Lower and Upper bounds of the function. Afterwards we have to implement a function which returns evaluation function which takes two parameters D (as dimension of problem) and sol (as solution of problem). Now we should have something similar as is shown in code snippet bellow.
from NiaPy.task import StoppingTask, OptimizationType
from NiaPy.benchmarks import Benchmark
from NiaPy.algorithms.basic import ParticleSwarmAlgorithm
# our custom benchmark class
class MyBenchmark(Benchmark):
def __init__(self):
Benchmark.__init__(self, -10, 10)
def function(self):
def evaluate(D, sol):
val = 0.0
for i in range(D): val += sol[i] ** 2
return val
return evaluate
Now, all we have to do is to initialize our algorithm as in previous examples and pass as benchmark parameter, instance of our MyBenchmark class.
for i in range(10):
task = StoppingTask(D=20, nGEN=100, optType=OptimizationType.MINIMIZATION, benchmark=MyBenchmark())
# parameter is population size
algo = GreyWolfOptimizer(NP=20)
# running algorithm returns best found minimum
best = algo.run(task)
# printing best minimum
print(best[-1])
Now we can run our advanced example with following command: python advanced_example.py. The results should be similar to those bellow.
7.606465129178389e-09
5.288697102580944e-08
6.875762169124336e-09
1.386574251424837e-08
2.174923591233085e-08
2.578545710051624e-09
1.1400628541972142e-08
2.99387377733644e-08
7.029492316948289e-09
7.426212520156997e-09
For more usage examples please look at examples folder.
More advanced examples can also be found in the NiaPy-examples repository.
Cite us
Are you using NiaPy in your project or research? Please cite us!
Plain format
Vrbančič, G., Brezočnik, L., Mlakar, U., Fister, D., & Fister Jr., I. (2018). NiaPy: Python microframework for building nature-inspired algorithms. Journal of Open Source Software, 3(23), 613\. <https://doi.org/10.21105/joss.00613>
Bibtex format
@article{NiaPyJOSS2018, author = {Vrban{\v{c}}i{\v{c}}, Grega and Brezo{\v{c}}nik, Lucija and Mlakar, Uro{\v{s}} and Fister, Du{\v{s}}an and {Fister Jr.}, Iztok}, title = {{NiaPy: Python microframework for building nature-inspired algorithms}}, journal = {{Journal of Open Source Software}}, year = {2018}, volume = {3}, issue = {23}, issn = {2475-9066}, doi = {10.21105/joss.00613}, url = {https://doi.org/10.21105/joss.00613} }
RIS format
TY - JOUR T1 - NiaPy: Python microframework for building nature-inspired algorithms AU - Vrbančič, Grega AU - Brezočnik, Lucija AU - Mlakar, Uroš AU - Fister, Dušan AU - Fister Jr., Iztok PY - 2018 JF - Journal of Open Source Software VL - 3 IS - 23 DO - 10.21105/joss.00613 UR - http://joss.theoj.org/papers/10.21105/joss.00613
Contributing
We encourage you to contribute to NiaPy! Please check out the Contributing to NiaPy guide for guidelines about how to proceed.
Everyone interacting in NiaPy’s codebases, issue trackers, chat rooms and mailing lists is expected to follow the NiaPy code of conduct.
Licence
This package is distributed under the MIT License. This license can be found online at http://www.opensource.org/licenses/MIT.
Disclaimer
This framework is provided as-is, and there are no guarantees that it fits your purposes or that it is bug-free. Use it at your own risk!
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