Can I start with automatic scheduling and switch to AI later?

Yes, and for many factories that's the right sequence. Getting finite capacity discipline in place first (clean master data, consistent planning rules, reliable routings and capacities) is valuable on its own and sets you up well for the next step. When your environment becomes more volatile or your KPI trade-offs get harder to manage with fixed rules, AI scheduling is a natural progression. And the barrier to getting started is lower than many factories expect: modern AI scheduling approaches like Phantasma's work from static production data (machines, routings, capacities, and products) rather than requiring years of historical records or complex live data integrations.

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Can I start with automatic scheduling and switch to AI later?
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