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Best AI models that run on 4× Strix Halo cluster (512 GB unified)

Cheapest 512 GB unified-memory rig on Earth.

AMD · rack of 4 mini-PCs, 10 GbE fabric
4× Strix Halo cluster (512 GB unified)
512 GB 384 GB usable 256 GB/s $12k
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What models fit this build

4× Strix Halo cluster (512 GB unified) has 384 GB of usable memory. Here's which open-weights model sizes fit at each quant, at ~8K context with an FP8 KV cache.

Largest comfortable fit: ~670B MoE at Q2 (~282 GB).

Model size Q2Q4Q5Q8
7–8B Fits Fits Fits Fits
13–14B Fits Fits Fits Fits
30–32B Fits Fits Fits Fits
70–72B Fits Fits Fits Fits
~120B MoE Fits Fits Fits Fits
~235B MoE Fits Fits Fits Fits
~670B MoE Fits Won't fit Won't fit Won't fit
1T+ MoE Won't fit Won't fit Won't fit Won't fit

✓ = the weights + FP8 KV cache fit within this build's usable memory at ~8K context. Longer context needs more — size any model in the picker →

Our picks for this build

Sourced from the State of Local AI snapshot — the model + quant + backend we'd actually deploy on this hardware today, with the recipe in the setup guide below.

Recommended

Qwen 3.6 35B-A3B (MoE)

35 B · 3B active Apache 2.0 🤗

Apr 2026 release. 35B / 3B active MoE — beats Gemma 4-31B on agentic coding, matches Sonnet on most vision tasks. Native 262 K context (extensible to 1 M), ~18 GB at Q4. The new local-coding king under 200 B.

≥22 GB Q4 96 t/s
  • HLE21.4%
  • TB251.5%
  • SWE-Pro49.5%
  • SWE-Ver73.4%

Coding: r/LocalLLaMA's pick for fast local coding on a 24 GB card at Q4_K_M — 3B active so it's snappy. Vibes-codes 'perfectly fine' in OpenCode/Claude Code per multiple weekly-megathreads. Simon Willison's pelican test (April 2026): 'Qwen3.6-35B-A3B on my laptop drew me a better pelican than Claude Opus 4.7' — still resonating in the community.

Agent: Solid in 5-15 tool-hop loops in Cline. Long-horizon (60+ min) Open-Claude sessions still lose thread — 3B active is a ceiling on planning. Note: Qwen-self-reported TB2 51.5 vs community 23-24% — gap is harness-driven (Terminus-2 vs little-coder agent).

Also runs well

Qwen 3.5 397B-A17B (MoE)

397 B · 17B active Apache 2.0 🤗

Feb 17 2026 flagship. 397B / 17B-active hybrid GDN-MoE — was the open-weights coding king pre-Qwen 3.6 (SWE-V 76.4, LCB v6 83.6, AIME26 91.3). First Qwen open-weights with native vision. ~25 tok/s on a 256 GB M3 Ultra with offload.

≥262 GB Q4 31 t/s
  • HLE37.6%
  • TB252.5%
  • SWE-Pro50.9%
  • SWE-Ver76.4%

Coding: From mid-Feb through April 2026 this was the local-coding king — daily-driver in Cline, Roo Code, Aider, Open-Claude, Continue via llama-server or vLLM. Now decisively dethroned by Qwen 3.6 27B (SWE-Ver 77.2 vs 76.4) and Qwen 3.6 35B-A3B on every coding eval per Qwen's own comparison table. Still a heavyweight generalist.

Agent: First 200B+ open MoE genuinely usable for autonomous loops — TAU2-Bench 86.7, TB2 52.5, MCP-Mark 46.1. Pair with 256 GB M3 Ultra (Q4 ~25 tok/s) or a multi-H100 box. Open-Claude users have largely moved to GLM-5.1 / Kimi K2.6 / DeepSeek V4 for new long-horizon work.

Also runs well

DeepSeek V4-Flash 284B (MoE)

284 B · 13B active MIT 🤗

Apr 2026 release. 284 B / 13 B active, 1 M-token context. ~57% Terminal-Bench. The agent-grade DeepSeek that fits a quad Pro 6000 build (or Mac Studio M3 Ultra 256) at Q4.

≥192 GB Q4 13 t/s
  • HLE29.4%
  • TB256.9%
  • SWE-Pro52.6%
  • SWE-Ver79.0%

Coding: Now #4 on OpenRouter coding by weekly token volume (637B) — MiMo V2.5 entered above it but adoption is real and growing. Native provider support in Cline, Roo Code, Kilo Code. r/LocalLLaMA's pick to replace Claude Haiku in tool-calling pipelines.

Agent: TB2 56.9 makes it a credible short-loop driver. Reliable for 15-30 min loops; ceiling well below V4-Pro. Competitive on OpenRouter usage with Claude Sonnet 4.6.

Setup guide for 4× Strix Halo cluster (512 GB unified)

Every known recipe for running a model on this build — sourced from the State of Local AI 2026-07-05 snapshot (2026-07-05). Pick the one that matches your model + quant, then follow the linked original write-up.

Recipes for 4× Strix Halo cluster (512 GB unified)
ModelDecode tok/sPrompt processingRecipeRuns
qwen3-6-35b-a3b-moe@ Q8_0 on llama.cpp~50@ 4KFrame.work Community
qwen3-5-397b-a17b-moe@ Q-family GGUF (HIP+RPC, np2, ctx 200k) on llama.cppvisorcraft/strix-halo-llm-perf (Qwen3.5-397B RPC shape-control, 2026-02-21)
deepseek-v4-flash-284b-moe@ Q4_K-class across 4 nodes on llama.cpp RPC (4x Framework Desktop / Strix mainboards)frame.work llama.cpp RPC multi-node recipe (extended to 4 nodes)
mimo-v2-5-310b-a15b-moe@ Q4_K_M (~178 GB) / Q5_K_M (~213 GB) on llama.cpp RPC (4x Framework Desktop / Strix mainboards)bartowski MiMo-V2.5 GGUF (Q4_K_M/Q5) + frame.work llama.cpp RPC 4-node

Want to compare this against other builds? Open the live picker (Q2 / Q4 / Q5 / Q8 toggles) or see best build by budget.

See all recipes

Every open-weights model that fits, ranked by composite score

Composite blends benchmark averages (60 %) with editorial 0-5 ratings (40 %). Closed-frontier references mix into the ranking and stay amber-tinted.

Modeltg/sppTTFT @ 100KHLETB2SWE-ProSWE-VerAiderLCBGPQAMMLU-ProScore
Qwen 3 235B-A22B (MoE)235 B · 22 B active · moe🤗
24 t/s710 pp4.0 min70.7%81.1%84.4%4964
Qwen 3 Next 80B-A3B (MoE)80 B · 3 B active · moe🤗
92 t/s1,480 pp2.0 min78.4%77.2%82.7%4920
4.4 t/s410 pp7.0 min77.6%4689
Qwen 3.5 9B9 B · dense🤗
84 t/s3,400 pp50 s65.6%81.7%82.5%4623
GLM-4.5-Air 106B (MoE)106 B · 12 B active · moe🤗
23 t/s1,480 pp2.0 min57.6%4488
DeepSeek V4-Flash 284B (MoE)284 B · 13 B active · moe🤗
13 t/s710 pp4.0 min29.4%56.9%52.6%79.0%91.6%88.1%86.4%4379
9.6 t/s710 pp4.0 min26.7%71.9%89.0%87.0%86.8%4372
DiffusionGemma 26B-A4B26 B · 4 B active · diffusion-moe🤗
96 t/s920 pp3.0 min69.1%73.2%77.6%4358
Mistral Small 4 119B-A6B (MoE)119 B · 6 B active · moe🤗
46 t/s1,480 pp2.0 min71.2%4301
Qwen 3.5 397B-A17B (MoE)397 B · 17 B active · moe🤗
31 t/s710 pp4.0 min37.6%52.5%50.9%76.4%83.6%88.4%87.8%4300
32 t/s920 pp3.0 min24.0%59.3%53.5%77.2%83.9%87.8%86.2%4280
Qwen 3 32B32 B · dense🤗
27 t/s920 pp3.0 min65.7%65.5%4278
8.0 t/s410 pp7.0 min57.5%65.2%84.0%4171
Phi-4 14B14 B · dense🤗
55 t/s1,950 pp1.4 min56.1%70.4%4160
Qwen 3.6 35B-A3B (MoE)35 B · 3 B active · moe🤗
96 t/s920 pp3.0 min21.4%51.5%49.5%73.4%80.4%86.0%85.2%4084
Qwen 3.5 122B-A10B (MoE)122 B · 10 B active · moe🤗
28 t/s1,480 pp2.0 min25.3%49.4%72.0%78.9%86.6%86.7%4021
Tencent Hy3 295B-A21B (MoE)295 B · 21 B active · moe🤗
25 t/s710 pp4.0 min25.5%54.4%57.9%78.0%90.4%87.4%3971
Llama 4 Maverick 400B-A17B (MoE)400 B · 17 B active · moe🤗
31 t/s710 pp4.0 min43.4%69.8%80.5%3905
23 t/s1,480 pp2.0 min18.3%31.0%60.5%81.2%79.2%83.7%3839
Llama 3.1 405B405 B · dense🤗
7.2 t/s710 pp4.0 min51.1%73.4%3762
64 t/s1,950 pp1.4 min5.2%72.0%78.8%77.2%3759
28 t/s920 pp3.0 min19.5%42.9%35.7%52.0%80.0%84.3%85.2%3697
Xiaomi MiMo V2.5 310B-A15B (MoE)310 B · 15 B active · moe🤗
35 t/s710 pp4.0 min65.8%56.1%3690
MiniMax M2.7 230B-A10B (MoE)230 B · 10 B active · moe🤗
53 t/s710 pp4.0 min45.1%56.2%78.0%3620
MiniMax M3 428B-A23B (MoE)428 B · 23 B active · moe🤗
23 t/s710 pp4.0 min59.0%3579
GPT-OSS 120B120 B · 5 B active · moe🤗
55 t/s1,480 pp2.0 min18.5%18.7%16.2%62.4%87.8%80.9%90.0%3573
36 t/s920 pp3.0 min45.3%66.0%3361
Gemma 3 27B27 B · dense🤗
32 t/s920 pp3.0 min42.4%67.5%3321
Llama 4 Scout 109B-A17B (MoE)109 B · 17 B active · moe🤗
17 t/s1,480 pp2.0 min32.8%57.2%74.3%3315
4.6 t/s410 pp7.0 min32.6%72.2%3174
Gemma 4 26B-A4B (MoE)26 B · 4 B active · moe🤗
96 t/s920 pp3.0 min8.7%34.2%13.8%17.4%77.1%82.3%82.6%3060
Qwen 3 Coder 30B-A3B (MoE)30 B · 3 B active · moe🤗
96 t/s920 pp3.0 min50.3%3042
Llama 3.3 70B70 B · dense🤗
8.0 t/s410 pp7.0 min28.8%50.5%68.9%2990
Llama 3.1 8B8 B · dense🤗
95 t/s3,400 pp50 s34.6%49.0%2527
Qwen 3 8B8 B · dense🤗
95 t/s3,400 pp50 s2.8%47.0%65.5%2325
25 t/s1,480 pp2.0 min44
Mistral Large 3 675B-A41B (MoE)675 B · 41 B active · moe🤗
4.5 t/s240 pp12.0 min42
Cohere Command A+ 218B-A25B (MoE)218 B · 25 B active · moe🤗
21 t/s710 pp4.0 min39
Gemini 3.1 ProGoogle DeepMind · closed125 t/s2.1 min44.7%80.2%54.2%80.6%91.7%94.3%91.0%
ChatGPT 5.5OpenAI · closed61 t/s1.6 min52.2%82.0%58.6%88.7%88.0%93.6%
Claude Sonnet 5Anthropic · closed57.4%80.4%63.2%
Claude Opus 4.8Anthropic · closed59 t/s2.9 min57.9%69.2%88.6%93.6%
Open in the live picker (Q2 / Q4 / Q5 / Q8 toggles) → Compare 4× Strix Halo cluster (512 GB unified) with another build → Try other hardware → Submit a benchmark for 4× Strix Halo cluster (512 GB unified) ↗

Last updated 2026-07-11