Litcius/Paper detail

Real-Time Big Data Analytics for Data Stream Challenges: An Overview

Alaa Abdelraheem Hassan, Tarig Mohammed Hassan

2022European Journal of Information Technologies and Computer Science11 citationsDOIOpen Access PDF

Abstract

The conventional approach of evaluating massive data is inappropriate for real-time analysis; therefore, analysing big data in a data stream remains a critical issue for numerous applications. It is critical in real-time big data analytics to process data at the point where they are arriving at a quick reaction and good decision making, necessitating the development of a novel architecture that allows for real-time processing at high speed and low latency. Processing and anlayzing a data stream in real-time is critical for a variety of applications; however, handling a large amount of data from a variety of sources, such as sensor networks, web traffic, social media, video streams, and other sources, is a considerable difficulty. The main goal of this paper is to give an overview of the current architecture for real time big data analytics, real-time data stream processing methods available, including their system architectures Lambda, kappa, and delta large data stream processing.

Topics & Concepts

Stream processingComputer scienceBig dataAnalyticsData stream miningVariety (cybernetics)Data streamReal-time dataLatency (audio)Data analysisArchitectureData scienceProcess (computing)Low latency (capital markets)Real-time computingData miningDistributed computingWorld Wide WebComputer networkArtificial intelligenceOperating systemVisual artsArtTelecommunicationsData Stream Mining TechniquesAnomaly Detection Techniques and Applications