Osaurus

Ornith-1.0-9B · JANG_4M

Official OsaurusAI JANG_4M build of deepreinforce-ai/Ornith-1.0-9B (MIT) — a vision-language model on a Qwen3.5 hybrid backbone. Mixed-precision affine (JANG_4M); runs on Apple Silicon via Osaurus.

  • ~6.3 GB (from ~18.8 GB bf16) bundle.
  • JANG_4M: 8-bit affine attention + 4-bit affine MLP (mixed precision, group-size 64); embeddings/head per-module; vision tower kept fp16.
  • Vision-language (image + text → text).

Architecture

Family qwen3_5 (dense, hybrid)
Text layers 32 — 24 Gated-DeltaNet (linear-attention) + 8 full-attention
MoE / dims hidden 4096 · untied lm_head
Vision ViT tower (model.visual) preserved fp16
Cache hybrid (GDN state + KV for attention layers)
Parsers reasoning qwen3 · tools qwen

Running it

JANG bundles use the Qwen3.5 RMSNorm +1 scale_shift applied at runtime, so load them in Osaurus (or the vMLX runtime), which handles it automatically:

osaurus run OsaurusAI/Ornith-1.0-9B-JANG_4M

Note: a plain mlx_lm.generate will not be coherent on a JANG bundle — it omits the +1 norm shift. Use the Osaurus / vMLX runtime (or vmlx_engine.loaders.load_jang), which applies it.

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