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Open-weight models reach consumer hardware via efficiency, not scale

Sparse attention, mixture-of-experts, and four-bit quantization have made open-weight models viable on consumer hardware without requiring massive RAM increases.

1 min read

Open-weight models are now running on consumer hardware in mid-2026, but not because RAM budgets exploded. The shift happened through sparse attention, mixture-of-experts (MoE) routing, latent key-value compression, multi-token prediction, and four-bit quantization working together to compress what ...

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Method & sources
Source type
Primary publication (lab/vendor blog) — our analysis + implication
Source link
r/localllama
Published
UTC
Byline
By the gotcontext.ai team (editorial standards)
Correction?
corrections@gotcontext.ai

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