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metadata
license: mit
pipeline_tag: text-to-image
base_model: runwayml/stable-diffusion-v1-5
tags:
  - ropedia-academy
  - advanced
  - gpu
  - todo
  - embodied-ai
  - track-a
  - track-b

Stable Diffusion — LoRA / DreamBooth 🚧 not trained yet

Teach Stable Diffusion a new concept with LoRA / DreamBooth, then generate.

Status — documented recipe (placeholder). A production-grade pipeline from Ropedia Academy for an advanced, GPU-heavy task. Everything below — base model, objective, dataset, config, the exact evaluation — is specified; the weights / metrics / figures land here automatically when you run the notebook on a GPU (one click below). Try the trained models live in the Ropedia demos Space.

At a glance

Base model runwayml/stable-diffusion-v1-5 (or SDXL)
Task text-to-image fine-tuning
Training objective LoRA / DreamBooth fine-tuning of the diffusion UNet on new concepts.
Track LM · Language & multimodal
Built on huggingface/diffusers
Notebook Open In Colab
Compute / storage / time GPU required — see the Compute · storage · time table in the notebook

Dataset

  • Source: Your subject/style images (a few–dozens).

Training config

GPU-scale — the notebook ships a demo profile (free Colab T4) and a full profile, with an exact Compute · storage · time table. Hyperparameters (optimizer, steps, batch, LoRA rank, …) are in the training cell.

Evaluation results

Pending — run the notebook on a GPU to fill this in. This lab reports FID · CLIP score (+ CLIP-I/DINO for subjects) on a held-out split (see its Evaluate cell).

Inference example

No weights are published yet. After a GPU run, load the checkpoint/adapter the notebook saves (it also has a ready inference cell). Base model: runwayml/stable-diffusion-v1-5 (or SDXL).

How to fill this repo

  1. Open the notebook in ColabRuntime → GPU → Run all (runs the real pipeline).
  2. Run its Publish to the Hugging Face Hub step (or HfApi().upload_folder(...)) — the checkpoint + metrics.json + figures replace this placeholder.
  • Train / run on a GPU · [ ] upload weights · [ ] add metrics.json · [ ] add figures · [ ] swap in the real results card

Limitations

Not yet trained — no numbers to report. The pipeline is GPU-heavy (see the compute table); on free Colab use the demo-scale settings. This is an educational, reproducible recipe, not a tuned production release.

License

Code: MIT (this repository). The base model (huggingface/diffusers) and dataset are each under their own licenses — check the upstream source before redistribution.

Citation

@misc{ropedia_academy,
  title  = {Ropedia Academy: an interactive course on embodied & spatial AI},
  author = {Ropedia Academy},
  year   = {2026},
  howpublished = {\url{https://chaoyue0307.github.io/ropedia-academy/}}
}

Method / original work: Rombach et al., Latent Diffusion, CVPR 2022; Hu et al., LoRA, 2021.

Related assets


Documented placeholder in the Ropedia Academy collection — train it on a GPU to publish the real model. Contributions welcome on GitHub.