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Saturday Night logs working remotely for a US based agency - > Was working on a kernel-adapter base level architecture to map any agent at will for the multi-agentic system. > The above architecture was inspired from the HEXAGONAL architecture ( the ports and adapters architecture ). > Wired...

52,037 просмотров • 11 дней назад •via X (Twitter)

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