Instructions to use benc0/SeedVR2-7B-mlx-int8 with libraries, inference providers, notebooks, and local apps. Follow these links to get started.
- Libraries
- MLX
How to use benc0/SeedVR2-7B-mlx-int8 with MLX:
# Download the model from the Hub pip install huggingface_hub[hf_xet] huggingface-cli download --local-dir SeedVR2-7B-mlx-int8 benc0/SeedVR2-7B-mlx-int8
- Notebooks
- Google Colab
- Kaggle
- Local Apps Settings
- LM Studio
license: apache-2.0
library_name: mlx
base_model: ByteDance-Seed/SeedVR2-7B
tags:
- mlx
- mflux
- mlx-swift
- super-resolution
- image-upscaling
- diffusion
- quantized
- apple-silicon
pipeline_tag: image-to-image
SeedVR2-7B (MLX) β int8
Runtime-agnostic int8-quantized MLX-format weights for SeedVR2-7B, ByteDance's one-step diffusion super-resolution / restoration model (ICLR 2026), for on-device upscaling on Apple Silicon.
Not tied to any single package β these load into:
mflux(Python MLX, actively maintained; also the parity reference these weights were validated against),seedvr2-mlx-swift(MLX-Swift; archived/read-only since Jun 2026 but functional β MIT-licensed and forkable),- or any MLX code that reconstructs the same module tree (see Format notes below).
fp16 base: SeedVR2-7B-mlx Β· sharp checkpoint: SeedVR2-7B-sharp-mlx Β· 3B family: mlx-community/SeedVR2-3B-mlx
- Files:
transformer.safetensors(DiT, int8, ~8.8 GB vs 16.5 GB fp16) Β·vae.safetensors(3D-causal-conv VAE, fp16) Β·pos_emb.safetensors(precomputed text embedding) Β·config.json. - Architecture (vs 3B): vid_dim 3072 (2560), 24 heads (20), 36 layers (32), all layers multimodal, plain MLP (SwiGLU), rope_dim 64.
- Quality: int8
t_outcosine vs fp16 = 0.9999481; reload round-trip bit-exact (cosine 1.0). (int4 degrades this model family badly β use int8 on-device.)
Usage β Python (MLX / mflux)
import json, mlx.core as mx, mlx.nn as nn
from mlx.utils import tree_unflatten
from mflux.models.seedvr2.model.seedvr2_transformer.transformer import SeedVR2Transformer
from mflux.models.seedvr2.weights.seedvr2_weight_definition import SeedVR2WeightDefinition
cfg = json.load(open("config.json"))
tx = SeedVR2Transformer(**cfg["transformer_overrides"])
q = cfg["quantization"] # {"bits": 8, "group_size": 64}
nn.quantize(tx, group_size=q["group_size"], bits=q["bits"],
class_predicate=SeedVR2WeightDefinition.quantization_predicate)
tx.update(tree_unflatten(list(mx.load("transformer.safetensors").items())))
mx.eval(tx.parameters())
The full pipeline (VAE, scheduler, pre/post-processing) lives in mflux: mflux-upscale-seedvr2 --model seedvr2-7b --image-path input.png --resolution 2x (note: mflux's built-in downloader fetches the PyTorch source weights and converts on the fly; loading these pre-converted files uses the snippet above).
Usage β Swift
import SeedVR2MLX // github.com/xocialize/seedvr2-mlx-swift (archived/read-only, MIT β fork to maintain)
let upscaler = try SeedVR2Upscaler(directory: weightsDir) // detects int8 from config, applies quantize on load
let out = upscaler.upscale(processedImage: img, seed: 42) // [-1,1], dims padded to /16
Format notes (for other MLX runtimes)
- Key naming: mflux module hierarchy, flattened with
mlx.utils.tree_flatten(e.g.blocks.17.attn.proj_qkv_vid.weight). Deterministic mapping back to ByteDance's original PyTorch names: mfluxsrc/mflux/models/seedvr2/weights/seedvr2_weight_mapping.py. - Layouts: MLX conventions throughout β VAE conv weights are
(O, *K, I). - Config:
config.json["transformer_overrides"]carries the 7B dims (vid_dim 3072, heads 24, num_layers 36, mm_layers 36, rope_dim 64, β¦) and must be passed to the transformer constructor. - Conditioning:
pos_emb.safetensors(58Γ5120, fp16) is the precomputed embedding of the fixed prompt β the text encoder is eliminated from this port, so it is a mandatorytxtinput. - Quantization format: standard MLX affine group quantization (bits 8, group 64). Each quantized Linear stores packed
weight(U32) +scales/biases(F16). Only Linears with in-dim divisible by 64 are quantized βvid_in.proj(in-dim 132) and the whole VAE stay fp16. Declared inconfig.jsonso loaders can rebuild the module structure beforeupdate().
Provenance & license
Chain: ByteDance Seed β SeedVR2: One-Step Video Restoration via Diffusion Adversarial Post-Training (ICLR 2026, arXiv:2506.05301), ByteDance-Seed/SeedVR, Apache-2.0 β PyTorch fp16 redistribution numz/SeedVR2_comfyUI (seedvr2_ema_7b_fp16.safetensors; independently verified bitwise against ByteDance's original fp32 seedvr2_ema_7b.pth β all 1128 tensors identical after fp32βfp16 cast) β MLX reference impl filipstrand/mflux β export + int8 conversion via xocialize/seedvr2-mlx tooling. These are format/precision-converted weight artifacts (not a new model); Apache-2.0 applies. Credit ByteDance Seed (original), cite the paper.