--- license: mit library_name: diffusers pipeline_tag: unconditional-image-generation tags: - diffusers - jit - image-generation - class-conditional widget: - output: url: demo.png language: - en --- # JiT-H/32 (Diffusers) This repository is self-contained: model weights and a custom `diffusers` pipeline (`JiTPipeline`) are both included, so no external code repo is required. ## Available Checkpoints (All 6) The JiT paper reports six ImageNet checkpoints across 256 and 512 resolutions. Use the following relative paths with `JiTPipeline.from_pretrained(...)`. | Checkpoint | Relative path | Resolution | Pre-trained dataset | Recommended CFG | Recommended interval | Recommended noise_scale | FID-50K | |---|---|---|---|---:|---|---:|---:| | JiT-B/16 | `./JiT-B-16` | 256x256 | ImageNet 256x256 | 3.0 | `[0.1, 1.0]` | 1.0 | 3.66 | | JiT-L/16 | `./JiT-L-16` | 256x256 | ImageNet 256x256 | 2.4 | `[0.1, 1.0]` | 1.0 | 2.36 | | JiT-H/16 | `./JiT-H-16` | 256x256 | ImageNet 256x256 | 2.2 | `[0.1, 1.0]` | 1.0 | 1.86 | | JiT-B/32 | `./JiT-B-32` | 512x512 | ImageNet 512x512 | 3.0 | `[0.1, 1.0]` | 2.0 | 4.02 | | JiT-L/32 | `./JiT-L-32` | 512x512 | ImageNet 512x512 | 2.5 | `[0.1, 1.0]` | 2.0 | 2.53 | | JiT-H/32 | `./JiT-H-32` | 512x512 | ImageNet 512x512 | 2.3 | `[0.1, 1.0]` | 2.0 | 1.94 | Source: [Back to Basics: Let Denoising Generative Models Denoise (arXiv:2511.13720)](https://arxiv.org/html/2511.13720). ## Demo Image ![JiT-H/32 test inference](demo_images/jit_h32_test_inference.png) ## One-Stop Diffusers Inference ```python from pathlib import Path import sys import torch repo_dir = Path(".").resolve() sys.path.insert(0, str(repo_dir)) from jit_diffusers import JiTPipeline device = "cuda" if torch.cuda.is_available() else "cpu" pipe = JiTPipeline.from_pretrained("./JiT-H-32").to(device) pipe.transformer = pipe.transformer.to(device=device, dtype=torch.bfloat16 if device == "cuda" else torch.float32) pipe.transformer.eval() generator = torch.Generator(device=device).manual_seed(42) output = pipe( class_labels=[207], num_inference_steps=50, guidance_scale=2.3, guidance_interval_min=0.1, guidance_interval_max=1.0, noise_scale=2.0, t_eps=5e-2, sampling_method="heun", generator=generator, output_type="pil", ) image = output.images[0] output_path = Path("./demo_images/jit_h32_test_inference.png") output_path.parent.mkdir(parents=True, exist_ok=True) image.save(output_path) print(f"Saved image to: {output_path}") ``` ## Ready-to-Run Commands (All 6 Checkpoints) Run these from this repository root (`models/BiliSakura/JiT-diffusers`). ```bash # 256x256 checkpoints python run_jit_diffusers_inference.py --model_path ./JiT-B-16 --output_path ./demo_images/jit_b16_test_inference.png --class_label 207 --seed 42 --steps 50 --cfg 3.0 --interval_min 0.1 --interval_max 1.0 --noise_scale 1.0 --t_eps 5e-2 --solver heun python run_jit_diffusers_inference.py --model_path ./JiT-L-16 --output_path ./demo_images/jit_l16_test_inference.png --class_label 207 --seed 42 --steps 50 --cfg 2.4 --interval_min 0.1 --interval_max 1.0 --noise_scale 1.0 --t_eps 5e-2 --solver heun python run_jit_diffusers_inference.py --model_path ./JiT-H-16 --output_path ./demo_images/jit_h16_test_inference.png --class_label 207 --seed 42 --steps 50 --cfg 2.2 --interval_min 0.1 --interval_max 1.0 --noise_scale 1.0 --t_eps 5e-2 --solver heun # 512x512 checkpoints python run_jit_diffusers_inference.py --model_path ./JiT-B-32 --output_path ./demo_images/jit_b32_test_inference.png --class_label 207 --seed 42 --steps 50 --cfg 3.0 --interval_min 0.1 --interval_max 1.0 --noise_scale 2.0 --t_eps 5e-2 --solver heun python run_jit_diffusers_inference.py --model_path ./JiT-L-32 --output_path ./demo_images/jit_l32_test_inference.png --class_label 207 --seed 42 --steps 50 --cfg 2.5 --interval_min 0.1 --interval_max 1.0 --noise_scale 2.0 --t_eps 5e-2 --solver heun python run_jit_diffusers_inference.py --model_path ./JiT-H-32 --output_path ./demo_images/jit_h32_test_inference.png --class_label 207 --seed 42 --steps 50 --cfg 2.3 --interval_min 0.1 --interval_max 1.0 --noise_scale 2.0 --t_eps 5e-2 --solver heun ```