Programming support for autonomizing software

Wen-Chuan Lee, Peng Liu, Yingqi Liu, Shiqing Ma, X. Zhang
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Abstract

Most traditional software systems are not built with the artificial intelligence support (AI) in mind. Among them, some may require human interventions to operate, e.g., the manual specification of the parameters in the data processing programs, or otherwise, would behave poorly. We propose a novel framework called Autonomizer to autonomize these systems by installing the AI into the traditional programs. Autonomizeris general so it can be applied to many real-world applications. We provide the primitives and the run-time support, where the primitives abstract common tasks of autonomization and the runtime support realizes them transparently. With the support of Autonomizer, the users can gain the AI support with little engineering efforts. Like many other AI applications, the challenge lies in the feature selection, which we address by proposing multiple automated strategies based on the program analysis. Our experiment results on nine real-world applications show that the autonomization only requires adding a few lines to the source code.Besides, for the data-processing programs, Autonomizer improves the output quality by 161% on average over the default settings. For the interactive programs such as game/driving,Autonomizer achieves higher success rate with lower training time than existing autonomized programs.
对自动化软件的编程支持
大多数传统软件系统都没有考虑到人工智能支持(AI)。其中,有些可能需要人工干预才能操作,例如,在数据处理程序中手动指定参数,否则会表现不佳。我们提出了一个名为“自主器”的新框架,通过将人工智能安装到传统程序中来实现这些系统的自主。Autonomizeris是通用的,因此它可以应用于许多实际应用程序。我们提供原语和运行时支持,其中原语抽象通用的自治任务,而运行时支持透明地实现它们。在Autonomizer的支持下,用户可以以很少的工程努力获得人工智能支持。与许多其他人工智能应用程序一样,挑战在于特征选择,我们通过基于程序分析提出多种自动化策略来解决这一问题。我们在9个实际应用程序上的实验结果表明,自治只需要在源代码中添加几行代码。此外,对于数据处理程序,Autonomizer比默认设置平均提高了161%的输出质量。对于游戏/驾驶等交互式程序,Autonomizer比现有的自主程序在更短的训练时间内实现了更高的成功率。
本文章由计算机程序翻译,如有差异,请以英文原文为准。
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