hy3-gguf — GGUF weights for Tencent Hy3 (tencent/Hy3)

GGUF-format weights for tencent/Hy3 (HYV3ForCausalLM, model_type: hy_v3), a 295B-parameter / 21B-active-parameter Mixture-of-Experts model from Tencent's Hunyuan ("Hy") team (tencent/Hy3).

These files were produced by the hy3 converter (hy3-convert) and are meant to be run with the hy3 inference engine, a from-scratch C/Metal/CUDA implementation.

⚠️ This GGUF does NOT work with llama.cpp

Despite the .gguf extension, these files are only usable by the hy3 engine. llama.cpp, ollama, LM Studio, text-generation-webui, koboldcpp, and any other llama.cpp-based tool cannot load these files. Three independent reasons:

  1. Unknown architecture. The metadata declares general.architecture = "hy_v3". llama.cpp only knows hunyuan-moe, hunyuan-dense, hunyuan_vl — loading aborts with unknown model architecture: 'hy_v3'.
  2. Custom metadata keys. All hyperparameters use the hy_v3.* prefix (hy_v3.block_count, hy_v3.expert_count, …), which llama.cpp does not look up.
  3. Non-fused expert tensors. Experts are stored one tensor per expert (blk.N.ffn_gate_exps.0.gate_proj.weight, …1…, … — 46080 tensors), whereas llama.cpp expects experts fused into a single stacked 3D tensor per layer. This is a fundamentally different on-disk layout.

This is a custom GGUF readable only by the hy3 loader. Do not open issues against llama.cpp for these files.

How to run

Use the hy3 engine: https://github.com/yuhai-china/hy3

git clone https://github.com/yuhai-china/hy3
cd hy3
make            # macOS builds the Metal backend automatically

# download a GGUF from this repo, then:
./run_metal.sh -m /path/to/hy3_q4k_mixed.gguf -p "The capital of France is" -experts 8

Testing scope: the hy3 engine's performance work and benchmarks were developed and verified only on macOS / Apple Silicon (Metal backend), measured on an M2 Ultra (~20–27 tok/s decode depending on -experts). The CPU and CUDA backends exist in the source but were not exercised as part of that work — treat them as untested.

Files / quantization

The mixed-precision GGUF follows this scheme (see hy3_convert.c):

Tensor group Type
Routed experts (ffn_{gate,up,down}_exps) — the bulk of the model Q4_K
Attention q/k/v/o projections, shared-expert & dense FFN, output.weight Q8_0
Norms, router (ffn_gate_inp), biases F32
token_embd.weight F16

Model facts

Architecture HYV3ForCausalLM (hy_v3)
Layers 80 (layer 0 dense, layers 1–79 MoE)
Hidden size 4096
Attention 64 heads, GQA with 8 KV heads, head_dim 128
Experts 192 routed (top-8 activated) + 1 shared (always active)
Expert intermediate size 1536
Dense (layer 0) intermediate size 13312
Vocab size 120832 (120818 real tokens + padding)
RoPE theta 11158840, rotate_half pairing
QK norm per-head RMSNorm on Q and K, before RoPE
MoE routing sigmoid(router_logits); top-8 by sigmoid + expert_bias, combined using unbiased sigmoid weights, renormalized to sum 1, scaled by router_scaling_factor = 2.826

The engine supports a runtime top-k experts override (-experts 1..8) to trade quality for speed. On a small 13-question code/reasoning eval (greedy, no-think): experts=8 → 10/13, experts=4 → 7/13. Default is 8.

Chat template

Hy3 is instruction-tuned and expects the Hunyuan V3 chat format (the hy3 engine applies it automatically; use --raw to bypass). Single user turn, no-think:

<|hy_begin_of_sentence:opensource|><|reasoning_mode:opensource|>reasoning_effort:no_think<|hy_User:opensource|>{prompt}<|hy_Assistant:opensource|><think:opensource></think:opensource>

Generation stops on <|hy_eos:opensource|> (120025), <|hy_endofsentence|> (120001), or <|hy_EOT|> (120008).

License & attribution

Weights derive from tencent/Hy3; refer to the upstream repository for the governing model license. This is an unofficial community conversion, not affiliated with or endorsed by Tencent.

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