Sarcouncil Journal of Engineering and Computer Sciences
Sarcouncil Journal of Engineering and Computer Sciences
An Open access peer reviewed international Journal
Publication Frequency- Monthly
Publisher Name-SARC Publisher
ISSN Online- 2945-3585
Country of origin-PHILIPPINES
Impact Factor- 3.7
Language- English
Keywords
- Engineering and Technologies like- Civil Engineering, Construction Engineering, Structural Engineering, Electrical Engineering, Mechanical Engineering, Computer Engineering, Software Engineering, Electromechanical Engineering, Telecommunication Engineering, Communication Engineering, Chemical Engineering
Editors

Dr Hazim Abdul-Rahman
Associate Editor
Sarcouncil Journal of Applied Sciences

Entessar Al Jbawi
Associate Editor
Sarcouncil Journal of Multidisciplinary

Rishabh Rajesh Shanbhag
Associate Editor
Sarcouncil Journal of Engineering and Computer Sciences

Dr Md. Rezowan ur Rahman
Associate Editor
Sarcouncil Journal of Biomedical Sciences

Dr Ifeoma Christy
Associate Editor
Sarcouncil Journal of Entrepreneurship And Business Management
Predictive Analytics for Dynamic Field Technician Routing in Telecommunications Service Provisioning
Keywords: Predictive analytics, field technician routing, telecommunications provisioning, machine learning optimization, dynamic resource allocation.
Abstract: The telecommunications industry faces increasing challenges in effectively managing field technician deployment for service provisioning amid rising network complexity and customer expectations. Traditional static scheduling techniques fail to account for real-time operational realities, resulting in inefficient resource utilization and suboptimal service delivery. This research proposes and validates a comprehensive predictive analytics framework that transforms field technician routing through integration of disparate data streams including real-time network telemetry, historical service patterns, weather conditions, traffic data, and customer information. The system employs advanced machine learning algorithms—including LSTM networks for demand forecasting, deep reinforcement learning for routing optimization, and spatiotemporal clustering for pattern recognition—to predict demand patterns and dynamically optimize technician assignments. Implementation leverages modern event-driven APIs using GraphQL and gRPC protocols with Apache Kafka streaming, enabling seamless integration with existing operational and business support systems while maintaining backward compatibility. Field deployment results demonstrate substantial operational improvements across multiple dimensions including service delivery times, technician utilization rates, first-time resolution rates, fuel consumption, and customer satisfaction scores. The framework successfully handles significant demand spikes while maintaining service quality through cloud-native auto-scaling infrastructure. This work makes significant contributions by demonstrating practical integration of advanced analytics with legacy telecommunications systems, providing comprehensive empirical validation across multiple operational dimensions, and offering honest assessment of implementation challenges and system limitations to guide future deployments.
Author
- Krishna Dornala
- Resource Logistics Inc. USA