From AI-Curious to AI-First: Engineering Production AI Systems
Best AI papers explained - A podcast by Enoch H. Kang

Categories:
This discussion emphasizes that an AI-first organization is fundamentally an engineering challenge, not merely a research endeavor. It argues that a significant "production gap" exists, where many organizations experiment with AI but fail to achieve tangible business value due to a lack of operational maturity. The text presents a five-pillar roadmap for building production-grade AI systems, focusing on treating AI as software systems, understanding the true architecture of AI agents, mastering advanced retrieval (RAG) techniques, establishing LLM System Design (LLMOps) as a new discipline, and prioritizing deployment realities like cost, latency, and security. Ultimately, it contends that shipping reliable AI is the crucial differentiator, requiring investment in AI Engineer talent and a "ship to learn" culture.