Resource-intensive computations are a major factor that limits the effectiveness of automated machine learning solutions. In the paper, we propose a modular approach that can be used to increase the quality of evolutionary optimization for modelling pipelines with a graph-based structure. It consists of several stages - parallelization, caching and evaluation. Heterogeneous and remote resources can be involved in the evaluation stage. The conducted experiments confirm the correctness and effectiveness of the proposed approach. The implemented algorithms are available as a part of the open-source framework FEDOT.
翻译:资源密集型计算是限制自动机器学习解决方案有效性的一个主要因素。在文件中,我们提议采用模块化方法,以提高以图表为基础的结构建模管道的进化优化质量,包括几个阶段----平行、缓存和评价。在评价阶段,可以使用多种和远程资源。进行的实验证实了拟议方法的正确性和有效性。已实施的算法作为开放源框架FEDOT的一部分提供。