# Water quality information dissemination at real-time in South Africa   using language modelling

**Authors:** Laing Lourens, Arijit Patra, Luqmaan Hassim, Faheem Sima, Avashlin, Moodley, Pulkit Sharma

arXiv: 1812.09745 · 2018-12-27

## TL;DR

This paper introduces a conversational AI model that provides real-time water quality information to users in South Africa, utilizing natural language understanding and a chatbot interface for localized information dissemination.

## Contribution

It develops a neural embedding-based chatbot system tailored for water quality info dissemination in resource-limited settings, integrating multiple data sources.

## Key findings

- Effective in local water quality information search
- Demonstrated utility for real-time dissemination
- Applicable to resource-constrained environments

## Abstract

We present a conversational model to apprise users with limited access to computational resources about water quality and real-time accessibility for a given location. We used natural language understanding through neural embedding driven approaches. This was integrated with a chatbot interface to accept user queries and decide on action output based on entity recognition from such input query and online information from standard databases and governmental and non-governmental resources. We present results of attempts made for some South African use cases, and demonstrate utility for information search and dissemination at a local level.

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Source: https://tomesphere.com/paper/1812.09745