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Packaging and Distribution for Local Apps
Packaging and Distribution for Local Apps Local AI becomes real when it leaves a developer machine. A prototype can assume the right drivers, the right permissions, and a patient user who tolerates rough edges. A shipped local app cannot. Packaging and distribution decide whether a local system behaves like dependable infrastructure or like a fragile […]
Security for Model Files and Artifacts
Security for Model Files and Artifacts Local AI changes a basic assumption in modern software: the most valuable dependency might be a large binary artifact that behaves like both code and data. Model weights, adapters, vector indexes, prompt templates, tool schemas, and cached context are not passive files. They influence what the system will do. […]
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