| import pytest | |
| import torch | |
| # huggingface_openphenom_model_dir = "." | |
| huggingface_modelpath = "recursionpharma/OpenPhenom" | |
| from .huggingface_mae import MAEModel | |
| def huggingface_model(): | |
| # This step downloads the model to a local cache, takes a bit to run | |
| huggingface_model = MAEModel.from_pretrained(huggingface_modelpath) | |
| huggingface_model.eval() | |
| return huggingface_model | |
| def test_model_predict(huggingface_model, C, return_channelwise_embeddings): | |
| example_input_array = torch.randint( | |
| low=0, | |
| high=255, | |
| size=(2, C, 256, 256), | |
| dtype=torch.uint8, | |
| device=huggingface_model.device, | |
| ) | |
| huggingface_model.return_channelwise_embeddings = return_channelwise_embeddings | |
| embeddings = huggingface_model.predict(example_input_array) | |
| expected_output_dim = 384 * C if return_channelwise_embeddings else 384 | |
| assert embeddings.shape == (2, expected_output_dim) | |