In this paper, we present a pure-Python open-source library, called PyPop7,
for black-box optimization (BBO). It provides a unified and modular interface
for more than 60 versions and variants of different black-box optimization
algorithms, particularly population-based optimizers, which can be classified
into 12 popular families: Evolution Strategies (ES), Natural Evolution
Strategies (NES), Estimation of Distribution Algorithms (EDA), Cross-Entropy
Method (CEM), Differential Evolution (DE), Particle Swarm Optimizer (PSO),
Cooperative Coevolution (CC), Simulated Annealing (SA), Genetic Algorithms
(GA), Evolutionary Programming (EP), Pattern Search (PS), and Random Search
(RS). It also provides many examples, interesting tutorials, and full-fledged
API documentations. Through this new library, we expect to provide a
well-designed platform for benchmarking of optimizers and promote their
real-world applications, especially for large-scale BBO. Its source code and
documentations are available at
https://github.com/Evolutionary-Intelligence/pypop and
https://pypop.readthedocs.io/en/latest, respectively.Comment: 5 page