Building Production-Grade GenAI Architectures: A Practical Framework for Scalable, Governed, and Enterprise-Ready AI Systems This independent research paper explores the architectural principles, design patterns, and governance considerations required to build production-grade Generative AI systems. As organizations move from experimentation to deployment, Generative AI solutions must address challenges related to scalability, reliability, observability, security, governance, compliance, cost optimization, and responsible AI practices. This paper presents a practical framework for designing enterprise-ready GenAI architectures that balance innovation with operational excellence. Key topics covered include: • Core components of modern GenAI architectures• Foundation models, LLMs, and model selection strategies• Retrieval-Augmented Generation (RAG) architecture patterns• Agent orchestration and multi-agent systems• Prompt engineering and context management• Security, governance, and responsible AI controls• Evaluation, monitoring, and observability frameworks• Scalability, reliability, and cost optimization techniques• Enterprise deployment patterns and cloud architectures• Future trends in agentic and autonomous AI systems The paper is intended for AI engineers, machine learning practitioners, software architects, technical leaders, AI governance professionals, and organizations seeking to deploy Generative AI solutions responsibly and at scale. This publication represents independent research and professional analysis based on publicly available technical literature, industry best practices, enterprise deployment experiences, and emerging standards in artificial intelligence governance and engineering. Author: Suganya Purushothaman Keywords: Generative AI, GenAI Architecture, Large Language Models, Retrieval-Augmented Generation, AI Agents, AI Governance, Responsible AI, AI Security, LLMOps, Enterprise AI.
Suganya Purushothaman (Tue,) studied this question.
Synapse has enriched 5 closely related papers on similar clinical questions. Consider them for comparative context: