--- title: TEXTUAL_INVERSION --- # :material-file-document-plus-outline: TEXTUAL_INVERSION ## **Personalizing Text-to-Image Generation** You may personalize the generated images to provide your own styles or objects by training a new LDM checkpoint and introducing a new vocabulary to the fixed model as a (.pt) embeddings file. Alternatively, you may use or train HuggingFace Concepts embeddings files (.bin) from and its associated notebooks. ## **Training** To train, prepare a folder that contains images sized at 512x512 and execute the following: ### WINDOWS As the default backend is not available on Windows, if you're using that platform, set the environment variable `PL_TORCH_DISTRIBUTED_BACKEND` to `gloo` ```bash python3 ./main.py --base ./configs/stable-diffusion/v1-finetune.yaml \ --actual_resume ./models/ldm/stable-diffusion-v1/model.ckpt \ -t \ -n my_cat \ --gpus 0 \ --data_root D:/textual-inversion/my_cat \ --init_word 'cat' ``` During the training process, files will be created in `/logs/[project][time][project]/` where you can see the process. Conditioning contains the training prompts inputs, reconstruction the input images for the training epoch samples, samples scaled for a sample of the prompt and one with the init word provided. On a RTX3090, the process for SD will take ~1h @1.6 iterations/sec. !!! note According to the associated paper, the optimal number of images is 3-5. Your model may not converge if you use more images than that. Training will run indefinitely, but you may wish to stop it (with ctrl-c) before the heat death of the universe, when you find a low loss epoch or around ~5000 iterations. Note that you can set a fixed limit on the number of training steps by decreasing the "max_steps" option in configs/stable_diffusion/v1-finetune.yaml (currently set to 4000000) ## **Run the Model** Once the model is trained, specify the trained .pt or .bin file when starting dream using ```bash python3 ./scripts/dream.py --embedding_path /path/to/embedding.pt ``` Then, to utilize your subject at the dream prompt ```bash dream> "a photo of *" ``` This also works with image2image ```bash dream> "waterfall and rainbow in the style of *" --init_img=./init-images/crude_drawing.png --strength=0.5 -s100 -n4 ``` For .pt files it's also possible to train multiple tokens (modify the placeholder string in `configs/stable-diffusion/v1-finetune.yaml`) and combine LDM checkpoints using: ```bash python3 ./scripts/merge_embeddings.py \ --manager_ckpts /path/to/first/embedding.pt \ [,[...]] \ --output_path /path/to/output/embedding.pt ``` Credit goes to rinongal and the repository Please see [the repository](https://github.com/rinongal/textual_inversion) and associated paper for details and limitations.