Michelle Brachman, Christopher Bygrave, et al.
AAAI 2022
In the realm of business automation, digital assistants/chatbots are emerging as the primary method for making automation software accessible to users in various business sectors. Access to automation primarily occurs through APIs and RPAs. To effectively convert APIs and RPAs into chatbots on a larger scale, it is crucial to establish an automated process for generating data and training models that can recognize user intentions, identify questions for conversational slot filling, and provide recommendations for subsequent actions. In this paper, we present a technique for enhancing and generating natural language conversational artifacts from API specifications using large language models (LLMs). The goal is to utilize LLMs in the “build” phase to assist humans in creating skills for digital assistants. As a result, the system doesn't need to rely on LLMs during conversations with business users, leading to efficient deployment. Experimental results highlight the effectiveness of our proposed approach. Our system is deployed in the IBM Watson Orchestrate product for general availability.
Michelle Brachman, Christopher Bygrave, et al.
AAAI 2022
siyu huo, Hagen Völzer, et al.
BPM 2021
Neil Thompson, Martin Fleming, et al.
IAAI 2024
Vladimir Lipets, Alexander Zadorojniy
MTCSPTA 2021