Releases
v0.1.25
0.1.25 — 2024-07-05
Features
Image encoders are imported now only from timm models.
Add enc_out_indices
to model classes, to enable selecting which layers to use as the encoder outputs.
Removed
Removed SAM and DINOv2 original implementation image-encoders from this repo. These can be found from timm models these days.
Removed cellseg_models_pytorch.training
module which was left unused after example notebooks were updated.
Examples
Updated example notebooks.
Added new example notebooks utilizing UNI foundation model from the MahmoodLab.
Added new example notebooks utilizing the Prov-GigaPath foundation model from the Microsoft Research.
NOTE: These examples use the huggingface model hub to load the weights. Permission to use the model weights is required to run these examples.
Chore
Update timm version to above 1.0.0.
Breaking changes
Lose support for python 3.9
The self.encoder
in each model is new, thus, models with trained weights from previous versions of the package will not work with this version.
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