--- license: apache-2.0 base_model: Tongyi-MAI/Z-Image-Turbo tags: - core-ai - coreai - text-to-image - diffusion-transformer - on-device - macos pipeline_tag: text-to-image library_name: coreai --- # Z-Image-Turbo — Core AI (macOS) Alibaba Tongyi-MAI **[Z-Image-Turbo](https://huggingface.co/Tongyi-MAI/Z-Image-Turbo)** (6B, Apache-2.0) — a Single-Stream Diffusion Transformer (S3-DiT) — converted to **Core AI** and generating images entirely on the Mac GPU. A Qwen3-4B text encoder conditions a 34-block DiT that denoises in 8 FlowMatchEuler steps with classifier-free guidance; a 16-channel VAE decodes. Photoreal by default. **One DiT graph covers 256², 512² and 1024², and any prompt length** — both the image-token and caption axes are dynamic, at a ~5–9 % cost over static shapes. ## What's here | file | role | size | | --- | --- | --- | | `zimage_dit_..._dyncap_dynimg_iofp32.aimodel` | the DiT — any resolution, any prompt length | 11 GB | | `zimage_encoder_seq64_full_bf16_ids_iofp32.aimodel` | Qwen3 encoder → **penultimate** hidden; `embed_tokens` is *inside* the graph | 7.3 GB | | `zimage_vae_{256,512,1024}_fp32.aimodel` | 16ch VAE decoder (per-size) | 189 MB each | | `glue/` | RoPE tables + a `t_embedder` graph | 2.4 MB | | `tokenizer/` | Qwen2 BPE | 15 MB | **Weights are bf16; the graph boundaries are fp32** (`--io-fp32`). That is not a preference: a Swift host cannot fill or read a bfloat16 `NDArray`, and bf16 is the only dtype this DiT is numerically safe in. Casting at the boundary costs ~15 % per forward and *improves* fidelity (PSNR 39.5 → 42.6 dB) because nothing rounds on the way in. The `glue/` is what keeps a host from re-implementing the reference: `RopeEmbedder` is a per-axis table lookup, so three tables reproduce it exactly at any resolution and prompt length, and the timestep MLP ships as a 2 MB graph. **bf16, not int8.** On this compute-bound graph weight-only int8 is *slower* than bf16 (2.35 vs 0.89 s/forward at 512²) because it dequantizes back to 16-bit and runs the same matmul — it only wins on bandwidth-bound shapes and on footprint. bf16 is also what keeps the port numerically near the fp32 reference. ## Speed & fidelity (M4 Max, vs the fp32 `diffusers` reference) | | s/forward | denoise (8 steps, CFG = 16 forwards) | PSNR | | --- | --- | --- | --- | | 256² | 0.36 | 5.8 s | 35.6 dB | | 512² | 1.12 | 17.9 s | **42.6 dB** | | 1024² | 4.36 | 69.7 s | 42.3 dB | Per-step velocity correlation vs the reference is ≥ 0.9997 at every step and both CFG branches. PSNR is not comparable across prompts: a texture-heavy oil-painting prompt scores 27.7 dB while being visually indistinguishable from the reference. ## Usage Run it in [CoreAIImageGen](https://github.com/john-rocky/coreai-model-zoo/tree/main/apps/CoreAIImageGen) (macOS): pick "Z-Image-Turbo 512" or "… 1024" → Download & Load → Generate. The host loop is [`ZImagePipeline.swift`](https://github.com/john-rocky/coreai-model-zoo/blob/main/apps/CoreAIImageGen/Sources/ZImagePipeline.swift); the Python twin is [`conversion/zimage/pipeline_engine.py`](https://github.com/john-rocky/coreai-model-zoo/blob/main/conversion/zimage/pipeline_engine.py). Both agree with the fp32 reference to ~42.6 dB. The DiT graph takes host-prepped inputs (patchify, RoPE, pad masks) and returns the velocity; the sampler loop lives on the host: ```python # per step, for cond and uncond: # ins = build_native_inputs(rm, latent, cap) # patchify + RoPE + pad masks # v = dit(**ins, adaln=t_embedder(t * t_scale)) # Core AI graph # vel = unpatchify(v[:, :n_img]) # noise_pred = -(pos + guidance * (pos - neg)) # Z-Image CFG is NEGATED # latent += dsigma[s] * noise_pred # FlowMatchEuler # image = vae(latent) # unscale: z/0.3611 + 0.1159 ``` Three details each cost a wrong image: 1. the DiT conditions on the encoder's **penultimate** hidden state (`hidden_states[-2]`); 2. the CFG is **negated**: `-(pos + g·(pos − neg))`, not `neg + g·(pos − neg)`; 3. captions are padded to a multiple of **32** with a *learned* pad token that is **real attention context** — `n_cap = round_up(L, 32)` must match, and cond/uncond generally have different `n_cap` (hence the dynamic caption axis). ## Notes - **macOS only.** fp16 sends this DiT all-NaN at sampler step 2 (depth-driven, at every resolution); bf16 is exact — and `coreai-build compile` refuses a bf16 module, which iOS needs for graphs this size. Full analysis in the [port notes](https://github.com/john-rocky/coreai-model-zoo/blob/main/knowledge/zimage-port.md). - The text-encoder graph is fixed at **64 chat-templated tokens** (≈ 35–40 words). - `guidance=0` skips CFG — half the work, a different composition, still clean at 256². - Weights are **not redistributed as source**: the graphs are produced from the original Apache-2.0 checkpoint by the conversion scripts in the zoo. License: Apache-2.0 (inherited from Z-Image-Turbo).