Context As A System
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I sit down with Augstin Da Fieno Delucci, co-founder of Trilogica Global and former Director of Global Data and AI at Microsoft, to unpack a shift that changes how global teams should think about AI: treating context as a system, not a prompt.
We’ve all gotten better at generation, better models, better prompting, better fine-tuning. Agustin argues that progress is real, but it hits a ceiling when the surrounding architecture has no memory of what “good performance” looks like across markets. When context gets rebuilt from scratch each cycle, content performance becomes unpredictable, even if everything passes QA. We explore how to move beyond linguistic correctness and brand compliance as the finish line, and start aiming for resonance: the words, framing, and emotional register that actually drive action for a specific audience.
Then we get practical. We talk about “simulation before shipping” using tools many teams already have, including semantic analysis, cultural inference, sentiment analysis, social listening, and vector databases that store market knowledge for retrieval. We also dig into what’s still emerging: the feedback loop that continuously refines audience models with real outcomes so your system gets sharper over time.