The Power of the React Loop: Zero-to-Production Guide

Introduction Most LLM systems are fundamentally reactive: you ask a question, they generate an answer, and that’s it. If the first answer is wrong, there’s no self-correction. If the task requires multiple steps, there’s no iteration. If results don’t meet expectations, there’s no refinement. The React Loop changes this paradigm entirely. It transforms a static, one-shot LLM system into a dynamic, iterative agent that can: Sense its environment and gather context Reason about what actions to take Act by executing tools and generating responses Observe the results of its actions Evaluate whether it succeeded or needs to try again Learn from outcomes to improve future iterations The core insight: ...

December 28, 2025 · 32 min · 6782 words · martinuke0

Top AI Agentic Workflow Patterns — A Practical Guide

Introduction Agentic workflows move AI beyond one-shot prompting into iterative, autonomous problem-solving by letting agents plan, act, observe, and refine—much like a human tackling a complex task. This shift yields more reliable, adaptable, and goal-directed systems for real-world, multi-step problems. In this article I explain the five core agentic workflow patterns (Reflection, Tool Use, ReAct, Planning, and Multi-Agent), show how they combine, give practical implementation guidance, example architectures, and discuss trade-offs and evaluation strategies. ...

December 18, 2025 · 7 min · 1482 words · martinuke0
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