ADOPTION OF AI-ENABLED PREDICTIVE ANALYTICS FOR LIBRARY RESOURCE MANAGEMENT BY ACADEMIC LIBRARIANS AT KASHIM IBRAHIM LIBRARY, AHMADU BELLO UNIVERSITY, ZARIA

##plugins.themes.academic_pro.article.main##

Mustapha Abubakar Jumare,Jamila Ahmed,Zainab Yusuf

Abstract

This study examines the adoption of AI-enabled predictive analytics for library resource


management by academic librarians at Kashim Ibrahim Library (KIL), Ahmadu Bello


University (ABU), Zaria. The research adopted a survey design to collect quantitative data


from the entire population of 203 academic librarians through a self-structured questionnaire.


The instrument was designed to assess the extent of AI adoption, perceived benefits, and


challenges faced by librarians in integrating AI-powered tools into library resource


management. Data were collected via an online survey platform. The findings reveal that while


there is significant potential for AI-enabled predictive analytics to enhance resource allocation


and decision-making, its adoption at KIL remains limited. Key benefits include improved


resource planning, but challenges such as lack of technical expertise, funding constraints, and


inadequate infrastructure hinder full implementation. The study concludes by recommending


that KIL invest in technological infrastructure, develop comprehensive AI training programs


for staff, and establish an institutional policy on AI adoption to facilitate the integration of


predictive analytics in resource management.

##plugins.themes.academic_pro.article.details##

Author Biography

Mustapha Abubakar Jumare,Jamila Ahmed,Zainab Yusuf, Federal Polytechc Kaltungo, Gombe State

Mustapha Abubakar Jumare

Federal Polytechc Kaltungo,

Gombe State

Similar Articles

<< < 2 3 4 5 6 7 

You may also start an advanced similarity search for this article.