Skip to content
2000

A New Non-Stigmergic-Ant Algorithm to Make Load Balancing Resilient in Big Data Processing for Enterprises

image of A New Non-Stigmergic-Ant Algorithm to Make Load Balancing Resilient in Big Data Processing for Enterprises

Due to the continuous evolution of the Big Data phenomenon, data processing in Business Big Data Analytics (BBDA) needs new advanced load balancing techniques. This chapter proposes a new algorithm based on a nonstigmergic approach to address these concerns. The algorithm imitates a specific species of ants that communicate by the acoustics in situations of threats. Besides, the research methodology in this study presents a methodic filtration of the relevant metrics before carrying out the benchmarking trials of several ant-colony algorithms (i.e., makespan, response time, throughput, memory and CPU utilization, etc.). The experimentations' outcomes show the effectiveness of the proposed approach that might empower the research efforts in big data analytics, business intelligence, and intelligent autonomous software agents. The main objective of this research is to contribute to reinforcing the resilience of the Big Data processing environment for enterprises.

/content/books/9789815036091.chap16
dcterms_subject,pub_keyword
-contentType:Journal
10
5
Chapter
content/books/9789815036091
Book
false
en
Loading
This is a required field
Please enter a valid email address
Approval was a Success
Invalid data
An Error Occurred
Approval was partially successful, following selected items could not be processed due to error
Please enter a valid_number test