Uncovering the Hidden Potential of Event-Driven Architecture: A Research
Agenda
- URL: http://arxiv.org/abs/2308.05270v1
- Date: Thu, 10 Aug 2023 01:03:47 GMT
- Title: Uncovering the Hidden Potential of Event-Driven Architecture: A Research
Agenda
- Authors: Luan Lazzari, Kleinner Farias
- Abstract summary: Event-driven architecture has been widely adopted in the software industry.
However, little is known about the effects of event-driven architecture on performance, stability, and software monitoring.
This article proposes an agenda for future research based on the scarcity of literature in the field of event-oriented architecture.
- Score: 1.5501208213584152
- License: http://creativecommons.org/licenses/by/4.0/
- Abstract: Event-driven architecture has been widely adopted in the software industry,
emerging as an alternative to modular development to support rapid adaptations
of constantly evolving systems. However, little is known about the effects of
event-driven architecture on performance, stability, and software monitoring,
among others. Consequently, professionals end up adopting it without any
empirical evidence about its impact. Even worse, the current literature lacks
studies that point to which emerging research directions need to be explored.
This article proposes an agenda for future research based on the scarcity of
literature in the field of event-oriented architecture. This agenda was derived
from a literature review and a case study carried out, as well as from the
authors' experience. Eight main topics were explored in this work: performance
analysis, empirical studies, architectural stability, challenges to adopting,
monitoring event streams, effects on software performance, broader challenges
for adoption, and better monitoring of event-driven architecture. The findings
reported help the researchers and developers in prioritizing the critical
difficulties for uncovering the hidden potential of event-driven architecture.
Finally, this article seeks to help researchers and professionals by proposing
an agenda as a starting point for their research.
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