Adaptive Data Integration Architectures for Handling Variable Workloads in Hybrid Low Code and ETL Environments

Authors

  • Srikanth Reddy Keshireddy Senior Software Engineer, Keen Info Tek Inc., United States
  • Harsha Vardhan Reddy Kavuluri WISSEN Infotech INC, United States

Keywords:

adaptive integration, low-code workflows, ETL performance, workload variability

Abstract

This study evaluates adaptive data integration architectures designed to manage unpredictable and highly variable workloads across hybrid low-code and ETL environments. By applying dynamic routing, interval compression, and resource-aware scheduling, the proposed framework demonstrated significant improvements in throughput, latency stability, and error-handling efficiency across simulated workload scenarios. The integration of lightweight low-code preprocessing with high-volume ETL transformations enabled smoother task distribution, reduced bottleneck formation, and more consistent execution behavior under stress conditions. Overall, the results confirm that adaptive execution models provide a resilient and scalable foundation for modern enterprise data pipelines facing continuous variability in ingestion patterns.

Downloads

Published

2019-03-22

How to Cite

Srikanth Reddy Keshireddy, & Harsha Vardhan Reddy Kavuluri. (2019). Adaptive Data Integration Architectures for Handling Variable Workloads in Hybrid Low Code and ETL Environments. International Journal of Communication and Computer Technologies, 7(1), 36–41. Retrieved from https://ijccts.org/index.php/pub/article/view/286

Issue

Section

Research Article

Most read articles by the same author(s)