Software review: DEAP (Distributed Evolutionary Algorithm in Python) library
暂无分享,去创建一个
[1] Marc Parizeau,et al. Once you SCOOP, no need to fork , 2014, XSEDE '14.
[2] Matthieu Macret,et al. Automatic tuning of the op-1 synthesizer using a multi-objective genetic algorithm , 2013 .
[3] Shin Yoo,et al. GPGPGPU: Evaluation of Parallelisation of Genetic Programming Using GPGPU , 2017, SSBSE.
[4] Christopher. Simons,et al. Machine learning with Python , 2017 .
[5] Christian Inard,et al. Construction cost and energy performance of single family houses: From integrated design to automated optimization , 2016 .
[6] William B. Langdon,et al. A SIMD Interpreter for Genetic Programming on GPU Graphics Cards , 2007, EuroGP.
[7] Randal S. Olson,et al. Automating Biomedical Data Science Through Tree-Based Pipeline Optimization , 2016, EvoApplications.
[8] Gaël Varoquaux,et al. Scikit-learn: Machine Learning in Python , 2011, J. Mach. Learn. Res..
[9] Antonio J. Nebro,et al. jMetal: A Java framework for multi-objective optimization , 2011, Adv. Eng. Softw..
[10] Wes McKinney,et al. Data Structures for Statistical Computing in Python , 2010, SciPy.
[11] Shin Yoo,et al. FLUCCS: using code and change metrics to improve fault localization , 2017, ISSTA.
[12] Marc Parizeau,et al. DEAP: a python framework for evolutionary algorithms , 2012, GECCO '12.