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Main Authors: Eltigani, Hiba, Haroon, Rukhshan, Kocak, Asli, Faisal, Abdullah Bin, Martin, Noah, Dogar, Fahad
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2505.08894
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author Eltigani, Hiba
Haroon, Rukhshan
Kocak, Asli
Faisal, Abdullah Bin
Martin, Noah
Dogar, Fahad
author_facet Eltigani, Hiba
Haroon, Rukhshan
Kocak, Asli
Faisal, Abdullah Bin
Martin, Noah
Dogar, Fahad
contents Recent advances in generative AI, such as ChatGPT, have transformed access to information in education, knowledge-seeking, and everyday decision-making. However, in many developing regions, access remains a challenge due to the persistent digital divide. To help bridge this gap, we developed WaLLM - a custom AI chatbot over WhatsApp, a widely used communication platform in developing regions. Beyond answering queries, WaLLM offers several features to enhance user engagement: a daily top question, suggested follow-up questions, trending and recent queries, and a leaderboard-based reward system. Our service has been operational for over 6 months, amassing over 14.7K queries from approximately 100 users. In this paper, we present WaLLM's design and a systematic analysis of logs to understand user interactions. Our results show that 55% of user queries seek factual information. "Health and well-being" was the most popular topic (28%), including queries about nutrition and disease, suggesting users view WaLLM as a reliable source. Two-thirds of users' activity occurred within 24 hours of the daily top question. Users who accessed the "Leaderboard" interacted with WaLLM 3x as those who did not. We conclude by discussing implications for culture-based customization, user interface design, and appropriate calibration of users' trust in AI systems for developing regions.
format Preprint
id arxiv_https___arxiv_org_abs_2505_08894
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle WaLLM -- Insights from an LLM-Powered Chatbot deployment via WhatsApp
Eltigani, Hiba
Haroon, Rukhshan
Kocak, Asli
Faisal, Abdullah Bin
Martin, Noah
Dogar, Fahad
Human-Computer Interaction
Artificial Intelligence
Computers and Society
Recent advances in generative AI, such as ChatGPT, have transformed access to information in education, knowledge-seeking, and everyday decision-making. However, in many developing regions, access remains a challenge due to the persistent digital divide. To help bridge this gap, we developed WaLLM - a custom AI chatbot over WhatsApp, a widely used communication platform in developing regions. Beyond answering queries, WaLLM offers several features to enhance user engagement: a daily top question, suggested follow-up questions, trending and recent queries, and a leaderboard-based reward system. Our service has been operational for over 6 months, amassing over 14.7K queries from approximately 100 users. In this paper, we present WaLLM's design and a systematic analysis of logs to understand user interactions. Our results show that 55% of user queries seek factual information. "Health and well-being" was the most popular topic (28%), including queries about nutrition and disease, suggesting users view WaLLM as a reliable source. Two-thirds of users' activity occurred within 24 hours of the daily top question. Users who accessed the "Leaderboard" interacted with WaLLM 3x as those who did not. We conclude by discussing implications for culture-based customization, user interface design, and appropriate calibration of users' trust in AI systems for developing regions.
title WaLLM -- Insights from an LLM-Powered Chatbot deployment via WhatsApp
topic Human-Computer Interaction
Artificial Intelligence
Computers and Society
url https://arxiv.org/abs/2505.08894