Which quant should I pick?

Pick your GPU and a model, and we'll rank its quants from highest to lowest quality — with the fit verdict, size, an estimated speed, and a plain-English note on what you give up at each step down. No account needed.

1 · Your GPU

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Search for your card above (Apple Silicon routes to unified memory automatically). Without a GPU we'll still show sizes and the quality guidance below.

Used to judge partial CPU offload when a quant overflows VRAM.

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2 · Model & context

Lower precision shrinks the KV cache (fits more context).

Kimi-Linear-48B-A3B-Instruct quants, ranked

Full model page & downloads →
Pick your GPU above to see which of these fit, plus estimated speeds. Sizes and the quality guidance below don't need a rig.
  1. GGUF · Q4_K_M Community default
    28.00 GB

    The community default: minor quality loss versus Q5/Q6, usually unnoticeable outside edge tasks, at a much smaller size.

    Note: Bartowski Q4_K_M quant of Kimi-Linear-48B-A3B-Instruct (49.123B-A3B MoE) — hero-lane lead rung, DR-21. MIT.

  2. GGUF · IQ4_XS
    24.65 GB

    An i-quant that packs 4-bit weights tighter than Q4_K_S — similar quality in community reports and a smaller file, though slightly heavier to decode on some runtimes.

    Note: Bartowski IQ4_XS quant of Kimi-Linear-48B-A3B-Instruct (49.123B-A3B MoE) — hero-lane low-bit rung, DR-21. MIT.

Verdicts and sizes match this model's page exactly. Speeds are roofline estimates (a range, not a promise). Quality notes reflect community experience, not measured benchmarks.