In order to train, you need a base model on which to train.
Make sure the trainer is installed properly first. See SETUP.md for more details.
You can either download one manually, or alternatively EveryDream2 can automatically download a model from the Hugging Face hub for you.
It's strongly suggested to simple use automatic download. The quick start here is you can simply use resume_ckpt
of stabilityai/stable-diffusion-2-1
to make a SD2.1 768 model, or panopstor/EveryDream
for SD1.5 models.
If you are ok with the base SD1.5 and SD2.1 models, you can use those values and skip reading this document. SD1.5 is already set in train.json via "resume_ckpt": "panopstor/EveryDream"
and you can stop reading this document if you just want to train SD1.5.
See below for more details *if you downloaded an SD1.x or SD2.x based model off the internet that you want to use as a base. Do NOT continue reading this document if you are just trying to train based on SD1.5.
If you want to continue training based off some .ckpt
or .safetensors
file you downloaded off the internet, then you need to convert it to a "diffusers format" folder. When you finish you should see something like this, come back to reference this picture as you go through the steps below:
(this picture is just an EXAMPLE)
Run these commands one time to prepare them. It's very important to use the correct YAML!
For SD1.x models, use this (note it will spill a lot of warnings to the console, but its fine):
python utils/convert_original_stable_diffusion_to_diffusers.py --scheduler_type ddim ^
--original_config_file v1-inference.yaml ^
--image_size 512 ^
--checkpoint_path my_sd15_model.ckpt ^
--to_safetensors ^
--prediction_type epsilon ^
--dump_path "ckpt_cache/my_sd15_model"
...where my_sd15_model.ckpt
is the filename you want to convert to prepare for training and my_sd15_model
is all you need to set resume_ckpt
to in your config file.
Almost the same exact thing for safetensors except one extra from_safetensors
argument and make sure the file extension is .safetensors
:
python utils/convert_original_stable_diffusion_to_diffusers.py --scheduler_type ddim ^
--original_config_file v1-inference.yaml ^
--image_size 512 ^
--checkpoint_path my_sd15_model.safetensors ^
--from_safetensors ^
--to_safetensors ^
--prediction_type epsilon ^
--dump_path "ckpt_cache/my_sd15_model"
And for any SD2.1 768 models (uses v2-v yaml and "v_prediction" prediction type):
python utils/convert_original_stable_diffusion_to_diffusers.py --scheduler_type ddim ^
--original_config_file v2-inference-v.yaml ^
--image_size 768 ^
--checkpoint_path my_sd21_model.ckpt ^
--prediction_type v_prediction ^
--upcast_attention True ^
--dump_path "ckpt_cache/my_sd21_model"
Note the v2-inference-v.yaml
and v_prediction
. This is because the SD2.1 768 model uses a different yaml and prediction type than the SD1.X models.
And finally the SD2.0 512 base model (generally not recommended base model, no one tunes this either):
python utils/convert_original_stable_diffusion_to_diffusers.py --scheduler_type ddim ^
--original_config_file v2-inference.yaml ^
--image_size 512 ^
--checkpoint_path 512-base-ema.ckpt ^
--prediction_type epsilon ^
--upcast_attn True ^
--dump_path "ckpt_cache/512-base-ema"
If you have other models, you need to know the base model that was used for them, in particular use the correct yaml (original_config_file) or it will not properly convert. Make sure to put some sort of name in the dump_path after "ckpt_cache/" so you can reference it later.
All of the above is one time. After running, you will use resume_ckpt
and just name the file without "ckpt_cache/"
ex.
train.json
{
...
"resume_ckpt": "my_sd15_model",
...
}
or using the CLI arg:
python train.py --resume_ckpt "my_sd21_model" ...
If you don't want the hassle of downloading and converting ckpt files, you can pass a Hugging Face "repo id" for resume-ckpt
and the model will be automatically downloaded from Huggingface if it exists.
For example, to use Stable Diffusion 2.1, you can pass the repo id stabilityai/stable-diffusion-2-1
for resume_ckpt
:
train.json
{
...
"resume_ckpt": "stabilityai/stable-diffusion-2-1",
...
}
or with the CLI arg:
python train.py --resume_ckpt stabilityai/stable-diffusion-2-1 ...
You can use any model on Huggingface which is saved in 🧨diffusers format, which is the vast majority of models on this list. For example, to resume training using nitrosocke's Modern Disney model as a starting point, use nitrosocke/mo-di-diffusion
as the repo id:
python train.py --resume_ckpt nitrosocke/mo-di-diffusion ...
You can check if a 🧨diffusers format model is available by checking the "Files" tab for a bunch of folders with names like feature_extractor
, unet
, and vae
.
If the model requires you to sign a license agreement (rare), you may need to login to the Hugging Face hub before downloads will work. You can do this by running the following command in the terminal window before you start training:
huggingface-cli login
When prompted, paste a Hugging Face User Access Token into the terminal window (you may not see anything appear to show that you've pasted something), and then press Enter.
To get an Access Token you'll need to create a Hugging Face account if you don't have one already. Login to your account and click
New token
on your User Access Tokens page to create an Access Token that you can then copy and paste into the terminal window.
Note that on Windows you may have to right-click the terminal window -> Paste, rather than just using ctrl-V. You also may not see anything appear in the terminal to indicate that you've pasted something - just press Enter anyway. If downloading doesn't work after setting a token, double-check you have agreed to the license agreement and try running
huggingface-cli login
again.
Alternatively, you can set the environment variable HF_API_TOKEN
to your Access Token. On Windows:
set HF_API_TOKEN=<token>
On Linux:
export HF_API_TOKEN=<token>
Replace <token>
with the Access Token you got from your Hugging Face User Access Tokens page
By default the downloaded Hugging Face files are stored in the Hugging Face cache folder. On Windows this is at C:\Users\username\.cache\huggingface\hub
. On Linux it is at ~/.cache/huggingface/hub
.
You can set the environment variable HUGGINGFACE_HUB_CACHE
to change this. Eg, to put the cache on Z:\stable-diffusion-big-files\huggingface-hub-cache
(on Windows):
set HUGGINGFACE_HUB_CACHE=Z:\stable-diffusion-big-files\huggingface-hub-cache\
Make sure to do this before running train.py
.
If the model you want to download is not stored in the root folder under the huggingface repo id (rare), you can pass --hf_repo_subfolder
to set the subfolder where it should be downloaded from.