计算机科学
工作流程
Python(编程语言)
机器学习
可用性
人工智能
标杆管理
文档
模块化设计
软件
领域(数学)
人工神经网络
深度学习
软件工程
因子(编程语言)
多样性(控制论)
模块化(生物学)
数据挖掘
正确性
程序设计语言
模块化程序设计
化学信息学
大数据
桥接(联网)
计算机体系结构
深层神经网络
调试
工作台
训练集
作者
David Graff,Nathan K. Morgan,Jackson Burns,Anna C. Doner,Brian Li,Shih‐Cheng Li,Joel Manu,Angiras Menon,Hao‐Wei Pang,Haoyang Wu,Akshat Shirish Zalte,Jonathan W. Zheng,Connor W. Coley,William H. Green,Kevin P. Greenman
标识
DOI:10.1021/acs.jcim.5c02332
摘要
Accurate prediction of molecular properties is essential for computational design in many areas of chemistry. Deep learning has been used in these prediction tasks for a wide variety of molecular properties, and the availability of user-friendly open-source software implementing such architectures has democratized access to these methods. chemprop is one of the most popular examples of such software in this field. It implements a directed message-passing neural network (D-MPNN) architecture, enabling end-to-end learning of molecular properties directly from molecular graphs without the need for handcrafted descriptors or fingerprints. The original chemprop release was intended for use primarily via a command line interface, rather than programmatic use via a Python API. As the field has evolved, the need for increased modularity and usability in Python-based workflows has become clear. We completed a ground-up rewrite of chemprop that addresses this need, providing improvements in speed, extensibility, and overall user experience. We have conducted extensive benchmarking to demonstrate algorithmic parity with the original implementation, while seeing improvements of about a factor of 2 in execution time and a factor of 3 in memory usage. chemprop v2 effectively scales to multiple GPUs, which enables the training of more and larger models. chemprop v2 also includes some new features. Extensive Jupyter notebook tutorials and new documentation for all major functionality were also added. chemprop v2 preserves the predictive accuracy of its predecessor and enhances modularity, speed, and usability, empowering researchers to pursue computational molecular design more effectively.
科研通智能强力驱动
Strongly Powered by AbleSci AI