Skip to content
New issue

Have a question about this project? Sign up for a free GitHub account to open an issue and contact its maintainers and the community.

By clicking “Sign up for GitHub”, you agree to our terms of service and privacy statement. We’ll occasionally send you account related emails.

Already on GitHub? Sign in to your account

Compose cannot work with both Decollated and MultiSampleTrait transforms #8186

Open
ziw-liu opened this issue Oct 31, 2024 · 0 comments · May be fixed by #8187
Open

Compose cannot work with both Decollated and MultiSampleTrait transforms #8186

ziw-liu opened this issue Oct 31, 2024 · 0 comments · May be fixed by #8187

Comments

@ziw-liu
Copy link

ziw-liu commented Oct 31, 2024

Describe the bug
If Compose is used with the following types of transforms, the third transform will not get the expected input:

  1. Decollated, which splits the input. This transform looks like:
Callable[dict[str, Tensor], list[dict[str, Tensor]]]
  1. MultiSampleTrait, which further splits the input. Note that the accumulated effect is now:
Callable[dict[str, Tensor], list[list[dict[str, Tensor]]]]
  1. MapTransform, which expect a dict[str, Tensor] from the caller (Compose in this case), will error.

To Reproduce
Code snippet:

import torch
from monai.transforms import Compose, RandSpatialCropSamplesd, Resized, Decollated

transform = Compose(
    [
        Decollated(keys=["img"]),
        RandSpatialCropSamplesd(
            keys=["img"],
            roi_size=(1, 192, 192),
            num_samples=2,
            max_roi_size=(1, 320, 320),
            random_center=True,
            random_size=True,
        ),
        Resized(keys=["img"], spatial_size=(1, 224, 224)),
    ]
)

img = {"img": torch.rand(3, 1, 1, 512, 512)}

transform(img)

This will error:

  File ".../python3.11/site-packages/monai/transforms/spatial/dictionary.py", line 846, in __call__
    d = dict(data)
        ^^^^^^^^^^
ValueError: dictionary update sequence element #0 has length 1; 2 is required

Expected behavior
Right now I can get around this by inserting a custom transform that flattens the nested list. But Compose should handle this just like it handles usual MultiSampleTrait transforms.

Environment

================================
Printing MONAI config...
================================
MONAI version: 1.4.0
Numpy version: 1.26.4
Pytorch version: 2.5.0+cu124
MONAI flags: HAS_EXT = False, USE_COMPILED = False, USE_META_DICT = False
MONAI rev id: 46a5272196a6c2590ca2589029eed8e4d56ff008
MONAI __file__: /hpc/mydata/<username>/anaconda/2022.05/x86_64/envs/viscy/lib/python3.11/site-packages/monai/__init__.py

Optional dependencies:
Pytorch Ignite version: NOT INSTALLED or UNKNOWN VERSION.
ITK version: NOT INSTALLED or UNKNOWN VERSION.
Nibabel version: NOT INSTALLED or UNKNOWN VERSION.
scikit-image version: 0.24.0
scipy version: 1.14.0
Pillow version: 10.4.0
Tensorboard version: 2.17.1
gdown version: NOT INSTALLED or UNKNOWN VERSION.
TorchVision version: 0.20.0+cu124
tqdm version: 4.66.5
lmdb version: NOT INSTALLED or UNKNOWN VERSION.
psutil version: 6.0.0
pandas version: 2.2.2
einops version: NOT INSTALLED or UNKNOWN VERSION.
transformers version: NOT INSTALLED or UNKNOWN VERSION.
mlflow version: NOT INSTALLED or UNKNOWN VERSION.
pynrrd version: NOT INSTALLED or UNKNOWN VERSION.
clearml version: NOT INSTALLED or UNKNOWN VERSION.

For details about installing the optional dependencies, please visit:
    https://docs.monai.io/en/latest/installation.html#installing-the-recommended-dependencies


================================
Printing system config...
================================
System: Linux
Linux version: Rocky Linux 8.10 (Green Obsidian)
Platform: Linux-4.18.0-553.16.1.el8_10.x86_64-x86_64-with-glibc2.28
Processor: x86_64
Machine: x86_64
Python version: 3.11.9
Process name: python
Command: ['python', '-c', 'import monai; monai.config.print_debug_info()']
Open files: [popenfile(path='/home/<username>/.vscode-server/data/logs/20241031T101853/remoteagent.log', fd=19, position=5336, mode='a', flags=33793), popenfile(path='/home/<username>/.vscode-server/data/logs/20241031T101853/ptyhost.log', fd=20, position=4686, mode='a', flags=33793)]
Num physical CPUs: 16
Num logical CPUs: 16
Num usable CPUs: 16
CPU usage (%): [8.5, 8.5, 3.5, 8.1, 3.9, 3.9, 3.2, 4.6, 5.0, 18.6, 23.9, 3.5, 3.5, 3.6, 4.3, 4.6]
CPU freq. (MHz): 2935
Load avg. in last 1, 5, 15 mins (%): [0.6, 0.5, 1.4]
Disk usage (%): 93.3
Avg. sensor temp. (Celsius): UNKNOWN for given OS
Total physical memory (GB): 503.8
Available memory (GB): 440.0
Used memory (GB): 27.3

================================
Printing GPU config...
================================
Num GPUs: 1
Has CUDA: True
CUDA version: 12.4
cuDNN enabled: True
NVIDIA_TF32_OVERRIDE: None
TORCH_ALLOW_TF32_CUBLAS_OVERRIDE: None
cuDNN version: 90100
Current device: 0
Library compiled for CUDA architectures: ['sm_50', 'sm_60', 'sm_70', 'sm_75', 'sm_80', 'sm_86', 'sm_90']
GPU 0 Name: NVIDIA A40
GPU 0 Is integrated: False
GPU 0 Is multi GPU board: False
GPU 0 Multi processor count: 84
GPU 0 Total memory (GB): 44.7
GPU 0 CUDA capability (maj.min): 8.6
KumoLiu added a commit to KumoLiu/MONAI that referenced this issue Nov 1, 2024
Signed-off-by: YunLiu <[email protected]>
KumoLiu added a commit to KumoLiu/MONAI that referenced this issue Nov 1, 2024
Signed-off-by: YunLiu <[email protected]>
@KumoLiu KumoLiu linked a pull request Nov 1, 2024 that will close this issue
7 tasks
Sign up for free to join this conversation on GitHub. Already have an account? Sign in to comment
Labels
None yet
Projects
None yet
Development

Successfully merging a pull request may close this issue.

1 participant