PHOTONAI is a high-level Python API designed to simplify and accelerate machine learning model development. It functions as a unifying framework allowing the user to easily access and combine algorithms from different toolboxes into custom algorithm sequences. It is especially designed to support the iterative model development process and automates the repetitive training, hyperparameter optimization and evaluation tasks. Importantly, the workflow ensures unbiased performance estimates while still allowing the user to fully customize the machine learning analysis. PHOTONAI extends existing solutions with a novel pipeline implementation supporting more complex data streams, feature combinations, and algorithm selection. Metrics and results can be conveniently visualized using the PHOTONAI Explorer and predictive models are shareable in a standardized format for further external validation or application. A growing add-on ecosystem allows researchers to offer data modality specific algorithms to the community and enhance machine learning in the areas of the life sciences. Its practical utility is demonstrated on an exemplary medical machine learning problem, achieving a state-of-the-art solution in few lines of code. Source code is publicly available on Github, while examples and documentation can be found at www.photon-ai.com.
翻译:PHOTONAI是一个高层次的Python API,旨在简化和加速机器学习模型开发,作为一个统一框架,使用户能够方便地获取不同工具箱的算法并将其结合到自定义算法序列中,特别旨在支持迭代模型开发过程,并使重复培训、超参数优化和评价工作自动化。重要的是,工作流程确保了不偏向的性能估计,同时仍然允许用户对机器学习分析进行全面定制。PHOTONAI扩展现有解决方案,通过新的管道实施,支持更复杂的数据流、特征组合和算法选择。使用PHOTONAI 探索器和预测模型的计量和结果可以方便地以标准格式分享,供进一步的外部验证或应用。增加的生态系统使研究人员能够向社区提供数据模式的具体算法,并加强生命科学领域的机学。它的实际效用表现在示范性医疗机器学习问题上,在几行代码中实现最先进的解决方案。源码可在Github上公开查阅,同时可在www.photo-tona.com找到实例和文件。