DCAILGNIDec 22, 2023

Towards Message Brokers for Generative AI: Survey, Challenges, and Opportunities

arXiv:2312.14647v213 citationsh-index: 84Has CodeACM Computing Surveys
Originality Synthesis-oriented
AI Analysis

It tackles the problem of data communication bottlenecks for developers and researchers in Generative AI, but it is incremental as it focuses on surveying existing technologies.

This survey analyzes traditional and modern message brokers to address the need for robust data communication infrastructures in Generative AI, aiming to guide future innovations and infrastructural advancements.

In today's digital world, Generative Artificial Intelligence (GenAI) such as Large Language Models (LLMs) is becoming increasingly prevalent, extending its reach across diverse applications. This surge in adoption has sparked a significant increase in demand for data-centric GenAI models, highlighting the necessity for robust data communication infrastructures. Central to this need are message brokers, which serve as essential channels for data transfer within various system components. This survey aims to delve into a comprehensive analysis of traditional and modern message brokers, offering a comparative study of prevalent platforms. Our study considers numerous criteria including, but not limited to, open-source availability, integrated monitoring tools, message prioritization mechanisms, capabilities for parallel processing, reliability, distribution and clustering functionalities, authentication processes, data persistence strategies, fault tolerance, and scalability. Furthermore, we explore the intrinsic constraints that the design and operation of each message broker might impose, recognizing that these limitations are crucial in understanding their real-world applicability. Finally, this study examines the enhancement of message broker mechanisms specifically for GenAI contexts, emphasizing the criticality of developing a versatile message broker framework. Such a framework would be poised for quick adaptation, catering to the dynamic and growing demands of GenAI in the foreseeable future. Through this dual-pronged approach, we intend to contribute a foundational compendium that can guide future innovations and infrastructural advancements in the realm of GenAI data communication.

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