InvokeAI/invokeai/backend/ip_adapter
2023-09-20 20:18:33 -04:00
..
__init__.py chore: flake8 cleanup 2023-09-05 12:07:12 +12:00
attention_processor.py Address flake8 error. 2023-09-18 16:33:16 -04:00
ip_adapter.py Switch to using torch 2.0 attention for IP-Adapter (more memory-efficient). 2023-09-18 16:30:53 -04:00
README.md (minor) Update documentation to reflect that a bug was fixed in InvokeAI/ip_adapter_sdxl_vit_h by e178288fb6 2023-09-20 20:18:33 -04:00
resampler.py Remove need for the image_encoder param in IPAdapter.initialize(). 2023-09-14 14:14:35 -04:00

IP-Adapter Model Formats

The official IP-Adapter models are released here: h94/IP-Adapter

This official model repo does not integrate well with InvokeAI's current approach to model management, so we have defined a new file structure for IP-Adapter models. The InvokeAI format is described below.

CLIP Vision Models

CLIP Vision models are organized in `diffusers`` format. The expected directory structure is:

ip_adapter_sd_image_encoder/
├── config.json
└── model.safetensors

IP-Adapter Models

IP-Adapter models are stored in a directory containing two files

  • image_encoder.txt: A text file containing the model identifier for the CLIP Vision encoder that is intended to be used with this IP-Adapter model.
  • ip_adapter.bin: The IP-Adapter weights.

Sample directory structure:

ip_adapter_sd15/
├── image_encoder.txt
└── ip_adapter.bin

Why save the weights in a .safetensors file?

The weights in ip_adapter.bin are stored in a nested dict, which is not supported by safetensors. This could be solved by splitting ip_adapter.bin into multiple files, but for now we have decided to maintain consistency with the checkpoint structure used in the official h94/IP-Adapter repo.

InvokeAI Hosted IP-Adapters

Image Encoders:

IP-Adapters: