Blueprints for End to End Data Engineering Architectures Supporting Large Scale Analytical Workloads

Authors

  • Srikanth Reddy Keshireddy
  • Harsha Vardhan Reddy Kavuluri

Keywords:

data engineering, large-scale analytics, distributed processing

Abstract

This article presents a comprehensive blueprint for designing end-to-end data engineering architectures capable of supporting large-scale analytical workloads across modern enterprise environments. It highlights how scalable ingestion layers, distributed processing engines, metadata-driven governance frameworks, and lakehouse-based storage systems collectively enable continuous, high-throughput data movement while maintaining consistency and analytical readiness. By integrating workflow orchestration, adaptive execution models, and performance-optimized serving layers, the proposed architecture ensures resilience under heavy load conditions and delivers reliable, low-latency insights for operational intelligence, strategic decision-making, and AI-driven applications. The findings emphasize that future-ready data ecosystems must be built on principles of elasticity, interoperability, and end-to-end automation to meet the rising demands of large-volume analytics.

Downloads

Published

2020-06-30

How to Cite

[1]
Srikanth Reddy Keshireddy and Harsha Vardhan Reddy Kavuluri, “Blueprints for End to End Data Engineering Architectures Supporting Large Scale Analytical Workloads”, International Journal of Communication and Computer Technologies, vol. 8, no. 1, pp. 25–31, Jun. 2020.

Issue

Section

Articles