Qwen3-VL 8B β€” Core AI (.aimodel)

Qwen/Qwen3-VL-8B-Instruct converted to Apple Core AI (.aimodel, macOS 27): image+text β†’ text fully on the GPU via Apple's coreai-pipelined engine, zero custom kernels. The 8B sibling of the Qwen3-VL 2B port β€” same recipe, with one one-line loader change for its untied LM head.

Mac-only. The 8.7 GB int8hu decoder exceeds the iPhone increased-memory jetsam ceiling (~6.4 GB class). For on-device iPhone use, see the 4B or 2B ports.

Part of the CoreAI-Model-Zoo; full card with the conversion design: zoo/qwen3-vl.md.

Use it

▢️ Run it (source) β€” the VLChat runner (GUI + CLI, one app for every vision-language model in the catalog):

git clone https://github.com/john-rocky/coreai-kit
open coreai-kit/Examples/VLChat/VLChat.xcodeproj
# β†’ Run, then pick "Qwen3-VL 8B" in the model picker

# agents / headless (macOS):
cd coreai-kit/Examples/VLChat
swift run vlchat-cli --model qwen3-vl-8b --image sample.jpg --prompt "What is in this image?"

πŸ’» Build with it β€” complete; the glue is kit API, copy-paste runs:

import CoreAIKit
import FoundationModels

let vlm = try await KitVisionModel(catalog: "qwen3-vl-8b")
let session = LanguageModelSession(model: vlm)
let image = try ImageFile.load(imageURL)  // any image file β†’ CGImage + EXIF orientation
let reply = try await session.respond(to: Prompt {
    prompt
    Attachment(image.cgImage, orientation: image.orientation)
})
// reply.content: the answer about the image, generated fully on-device

The take-home is Examples/VLChat/Sources/QuickStart.swift β€” this exact code as one typed function, no UI; the CLI is an argument shell over it, and the GUI drives the same KitVisionModel(catalog:) behind a LanguageModelSession. Multi-turn about the same image? Hold the LanguageModelSession and call respond(to:) per turn. The photo picker / file chooser is your app's own chrome β€” ImageFile.load (kit API) turns any image file into model input.

Integration checklist

  • SPM: https://github.com/john-rocky/coreai-kit β†’ product CoreAIKit
  • Info.plist: NSPhotoLibraryUsageDescription β€” only if you use PhotosPicker
  • Entitlements: none needed (macOS)
  • First run downloads the model β€” 10.5 GB (Mac) β€” then it loads from the local cache (Application Support; progress via the downloadProgress callback)
  • Measure in Release β€” Debug is ~3Γ— slower on per-token host work

Measured

platform prefill tok/s decode tok/s numerics
M4 Max (macOS 27 beta) 54.4 54.3 torch ladder vs fp32-HF incl. untied head + depth-27 ViT (vision cos 1.0001, 36/36 layers cos 1.000, decode 16/16) + engine ≑ python 24/24 on the 211-tok multimodal prompt

Decode is bandwidth-bound: the 8.7 GB int8hu decoder reads ~8.7 GB/token. Vision encode runs once per image. Cold GPU specialization ~16.5 s, warm load a few seconds.

Files

path what size
gpu-pipelined/qwen3_vl_8b_instruct_decode_int8hu_s1/ text decoder LanguageBundle (SHIP: int8 per-block-32 body + untied absmax int8 head; tokenizer + metadata included) 8.7 GB
gpu-pipelined/qwen3_vl_8b_instruct_vision/ fixed-grid vision encoder (448Γ—448 β†’ 196 tokens + DeepStack), fp16 1.1 GB

How it works (short version)

The text-only pipelined engine carries the VLM through an id-space trick β€” no engine code changes beyond the published static-inputs patch:

  • the vision encoder runs once per image; its embeddings ride 4 static graph inputs (rewritable owned MTLBuffers),
  • the prompt's <|image_pad|> ids become extension ids vocab + slot; the graph selects text-table vs image-embed rows per token and applies the three DeepStack adds the same way,
  • interleaved M-RoPE is derived in-graph from (ids, position) alone β€” image tokens self-locate, text tokens use a host-set shift; with zero embeds the same bundle is a plain Qwen3 text LLM.

The 8B differs from 2B/4B only in configuration: its LM head is untied (a separate lm_head.weight, quantized int8 absmax like the body) and its ViT is larger (depth 27, hidden 1152) β€” both absorbed by the config-driven overlay. Numerics are gated the zoo way: fp32-HF oracle β†’ torch ladder (36/36 layers) β†’ engine ≑ python 24/24.

Run it

Conversion is reproducible from the zoo: conversion/export_qwen3_vl_pipelined.py int8hu --hf-id Qwen/Qwen3-VL-8B-Instruct. For the run contract (S=1 prefill, COREAI_CHUNK_THRESHOLD=1), see knowledge/pipelined-engine.md.

License

Apache-2.0 (inherited from Qwen3-VL-8B-Instruct). Conversion code BSD-3-Clause (zoo repo).

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