IJ
IJCRM
International Journal of Contemporary Research in Multidisciplinary
ISSN: 2583-7397
Open Access • Peer Reviewed
Impact Factor: 5.67

International Journal of Contemporary Research In Multidisciplinary, 2025;4(1):294-304

High-Performance Real-Time Data Store

Author Name: Bhuvan Chandra Sarakam;  

1. Student, Doctor of Business Administration, Belhaven University, Jackson, Mississippi, USA

Paper Type: research paper
Article Information
Paper Received on: 2024-12-12
Paper Accepted on: 2025-02-25
Paper Published on: 2025-03-05
Abstract:

This paper presents Druid, an open-source, distributed data store designed specifically for real-time analytical processing of massive datasets. Druid combines the efficiency of a column-oriented storage model with the flexibility and scalability of a shared-nothing architecture, enabling high-performance ingestion, exploration, and aggregation of time-series data. The system is optimized for sub-second query latency, even when dealing with large-scale data, by utilizing advanced indexing techniques such as inverted indices, bloom filters, and bitmap indexes. The multi-tiered node architecture of Druid plays a crucial role in enabling low-latency query processing and ensuring high availability across distributed environments. Real-time data ingestion is coupled with the ability to execute complex analytical queries over both real-time and historical data, making Druid particularly well-suited for applications requiring quick insights into time-sensitive data. Druid’s architecture allows for horizontal scalability, where clusters can expand or contract based on workload demands, and its fault-tolerant design ensures high availability even in the event of node failures. By supporting advanced aggregation and filtering techniques, Druid caters to interactive data exploration and visualisation applications, often found in industries such as finance, telecommunications, and e-commerce, where rapid data processing and decision-making are essential. Druid offers a powerful, scalable solution for modern analytical workloads that require real-time data processing and low-latency query execution. Its combination of distributed architecture, time-series optimisation, and high performance makes it a robust platform for large-scale, data-driven applications across a wide range of industries.

Keywords:

Sustainable development, online freelancing, economic aspect, social inclusion, environmental benefits, gig economy.

How to Cite this Article:

Bhuvan Chandra Sarakam. High-Performance Real-Time Data Store. International Journal of Contemporary Research in Multidisciplinary. 2025: 4(1):294-304


Download PDF