Agent engineering represents a new discipline for turning non-deterministic LLM agents into reliable production systems. This approach emphasizes iterative shipping, production observability, evaluation, runtime infrastructure, memory, and performance measurement—highlighting how teams operationalize agents beyond "it works on my machine."
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