上下文感知会话开发人员助手

N. Bradley, Thomas Fritz, Reid Holmes
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引用次数: 51

摘要

构建和维护现代软件系统需要开发人员执行跨越各种工具和信息源的各种任务。这些开发任务的横切性质要求开发人员维护复杂的心智模型,并迫使他们(a)手动将高级任务拆分为由各种工具支持的低级命令,以及(b)在每个工具中(重新)建立其当前上下文。在本文中,我们介绍Devy,一个会话开发助手(CDA),它使开发人员能够专注于他们的高级开发任务。Devy减少了开发人员需要执行的手动(通常是复杂的)低级命令的数量,使他们能够专注于高级任务。具体来说,Devy从开发人员的语音命令中推断出高级意图,并将其与自动生成的上下文模型相结合,以确定调用低级工具操作的适当工作流;在需要时,Devy还可以提示开发人员提供其他信息。通过对21个工业开发人员的混合方法评估,我们发现Devy提供了一个直观的界面,能够支持许多开发任务,同时帮助开发人员专注于他们的开发环境。虽然工业开发人员在很大程度上支持Devy启用的自动化,但他们也提供了对cda可以支持的其他几个任务和工作流的见解,以使他们能够更好地关注开发任务的重要部分。
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Context-Aware Conversational Developer Assistants
Building and maintaining modern software systems requires developers to perform a variety of tasks that span various tools and information sources. The crosscutting nature of these development tasks requires developers to maintain complex mental models and forces them (a) to manually split their high-level tasks into low-level commands that are supported by the various tools, and (b) to (re) establish their current context in each tool. In this paper we present Devy, a Conversational Developer Assistant (CDA) that enables developers to focus on their high-level development tasks. Devy reduces the number of manual, often complex, low-level commands that developers need to perform, freeing them to focus on their high-level tasks. Specifically, Devy infers high-level intent from developer's voice commands and combines this with an automatically-generated context model to determine appropriate workflows for invoking low-level tool actions; where needed, Devy can also prompt the developer for additional information. Through a mixed methods evaluation with 21 industrial developers, we found that Devy provided an intuitive interface that was able to support many development tasks while helping developers stay focused within their development environment. While industrial developers were largely supportive of the automation Devy enabled, they also provided insights into several other tasks and workflows CDAs could support to enable them to better focus on the important parts of their development tasks.
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