Meta's Inference Fleet Transformation: 35% Custom Silicon by Year-End
Meta is executing the most aggressive custom silicon transition in tech history. MTIA v2 is deployed across 16 data center regions. MTIA v3 (Iris) entered broad deployment in February 2026. The target: 35% of inference on custom chips by year-end, with a 44% TCO reduction vs. GPUs.
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