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Seattle Skeptics on AI

Tag: LLM infrastructure

Target Architecture for Generative AI: Data, Models, and Orchestration
Target Architecture for Generative AI: Data, Models, and Orchestration

Tamara Weed, Jan, 30 2026

A practical guide to building a working generative AI architecture focused on data quality, orchestration, and feedback loops-not just big models. Learn what actually works in enterprise settings and how to avoid the most common failures.

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Science & Research

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generative AI architecture data for AI AI orchestration LLM infrastructure RAG systems

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