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Tag: LLM patterns

Prompt Chaining vs Agentic Planning: Which LLM Pattern Fits Your Task?
Prompt Chaining vs Agentic Planning: Which LLM Pattern Fits Your Task?

Tamara Weed, Jan, 24 2026

Prompt chaining and agentic planning are two ways to make LLMs handle complex tasks. One is simple and cheap. The other is smart but costly. Learn which one fits your use case-and why most teams get it wrong.

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