Method Not Magic
When ML is treated as unknowable, organisations stop measuring properly and failures get blamed on "AI behaviour" instead of weak method. This article dismantles the black-box mythology and replaces it with engineering discipline: experimental design, representative data, validation, monitoring, and explainability. ML can be audited, tested, and improved, if you run it like engineering.