QnAMaker: Data to Bot in 2 Minutes
Having a bot for seamless conversations is a much-desired feature that products and services today seek for their websites and mobile apps. These bots help reduce traffic received by human support significantly by handling frequent and directly answerable known questions. Many such services have hug...
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Zusammenfassung: | Having a bot for seamless conversations is a much-desired feature that
products and services today seek for their websites and mobile apps. These bots
help reduce traffic received by human support significantly by handling
frequent and directly answerable known questions. Many such services have huge
reference documents such as FAQ pages, which makes it hard for users to browse
through this data. A conversation layer over such raw data can lower traffic to
human support by a great margin. We demonstrate QnAMaker, a service that
creates a conversational layer over semi-structured data such as FAQ pages,
product manuals, and support documents. QnAMaker is the popular choice for
Extraction and Question-Answering as a service and is used by over 15,000 bots
in production. It is also used by search interfaces and not just bots. |
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DOI: | 10.48550/arxiv.2003.08553 |