IJCSIT

Service-as-Software: A Modular Framework for Building Autonomous Agent-Based

© 2025 by IJCSIT

Volume 1 Issue 2

Year of Publication : 2025

Author : Aditya Patil, Apurva Srivastava, Amruta Hebli, Alokita Garg, Pavan Hebli

: XXXXXXXX

Citation :

Aditya Patil, Apurva Srivastava, Amruta Hebli, Alokita Garg, Pavan Hebli, 2025. "Service-as-Software: A Modular Framework for Building Autonomous Agent-Based" International Journal of Computer Science & Information Technology  Volume 1, Issue 2: 1-11.

Abstract :

Large Language Models (LLMs) have driven a basic change in agent-based systems from basic tool-augmentated designs to complex multi-agent frameworks [17, 23]. The architectural development of current agent-based systems from process automation to intelligent service providers is investigated in this article [13]. We present a new classification system specifying their responsibilities, capacities, and interactions inside multi-agent systems separating between active and passive core-agents [1, 7, 8]. Our framework presents a methodical approach to agent system design by defining fundamental components like LLM integration, planning modules [21], memory systems [14], action execution, and security mechanisms [24]. We investigate several multi-agent designs with an eye towards hybrid system work distribution, synchronising techniques, and communication protocols [17, 30]. We show the practical implementation of the framework and investigate its economic consequences by means of study of real-world applications in corporate environments [22]. This work advances knowledge of agent-based systems by offering architectural rules for creating scalable, safe, and effective multi-agent solutions for next-generation business applications [26, 29].

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Keywords :

LLM-Based Agents, Multi-Agent Systems, Service-As-Software, Core-Agent Architecture, Enterprise AI.