Artificial Intelligence (AI) / Machine Learning (ML)-based systems are widely sought-after commercial solutions that can automate and augment core business services. Intelligent systems can improve the quality of services offered and support scalability through automation. In this paper we describe our experience in engineering an exploratory system for assessing the quality of essays supplied by customers of a specialized recruitment support service. The problem domain is challenging because the open-ended customer-supplied source text has considerable scope for ambiguity and error, making models for analysis hard to build. There is also a need to incorporate specialized business domain knowledge into the intelligent processing systems. To address these challenges, we experimented with and exploited a number of cloud-based machine learning models and composed them into an application-specific processing pipeline. This design allows for modification of the underlying algorithms as more data and improved techniques become available. We describe our design, and the main challenges we faced, namely keeping a check on the quality control of the models, testing the software and deploying the computationally expensive ML models on the cloud.
翻译:以人工智能(AI)/机器学习(ML)为基础的系统是广泛寻求的商业解决办法,可以使核心业务服务自动化并增加其数量; 智能系统可以提高所提供服务的质量,并通过自动化支持可扩展性; 本文介绍我们在工程方面的经验,以设计一套探索性系统,评估专门招聘支助服务客户提供的论文的质量; 问题领域具有挑战性,因为开放客户提供的源文本有很大的模糊性和错误范围,使分析模型难以建立; 还需要将专门的商业领域知识纳入智能处理系统; 为了应对这些挑战,我们试验并开发了一些云基机学习模型,并将这些模型组成一个具体应用的处理管道; 随着更多的数据和技术的出现,这一设计允许修改基本算法; 我们描述了我们的设计,以及我们面临的主要挑战,即对模型的质量控制进行检查,测试软件,并在云层上部署计算昂贵的 ML模型。