AIoT-Driven Business Forecasting Models in Emerging Markets: Multi-Sector Case Studies from Bangladesh
Description
Emerging economies face significant challenges in business forecasting due to data fragmentation, limited analytics infrastructure, and reactive decision-making processes. This study investigates the application of Artificial Intelligence of Things (AIoT) systems to enhance business forecasting capabilities across multiple sectors in Bangladesh. We present a comprehensive AIoT framework that integrates real-time IoT sensor data with advanced machine learning algorithms to enable predictive analytics and intelligent decision-making. Through three longitudinal case studies spanning manufacturing, retail, and financial services sectors, we demonstrate the transformative potential of AIoT implementation. Results indicate substantial improvements in forecasting accuracy (average increase of 19%), operational efficiency (cost reduction of 10-15%), and sustainability metrics. The textile manufacturing case achieved 93% demand forecast accuracy (up from 75%) and 70% reduction in downtime. The retail chain reduced stockouts by 75% while improving forecast accuracy to 90%. The fintech application enhanced loan default prediction accuracy to 89% while reducing non-performing loans by 42%. These findings underscore AIoT's viability as a strategic enabler of predictive intelligence in resource-constrained emerging markets, offering actionable insights for business leaders, policymakers, and researchers focused on digital transformation in developing economies.
Files
Steps to reproduce
This research contributes to the growing body of literature on AIoT applications in business contexts while addressing a critical gap: empirical evidence from emerging market implementations. The multi-sector approach provides comparative insights that transcend industry-specific findings, offering generalizable principles for AIoT adoption in resource-constrained environments.
Institutions
- North South UniversityDhaka Division, Dhaka