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This scenario has been included in a later PR (#27), so this PR isn't relevant anymore. |
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NOTE: Please merge Added LLM-finetune scenario local execution #25 before this PR, since this builds on the shared code (ci/Dockerfile.train and src/train/pytrain/pipeline_executor.py)
New working scenario code located in scenarios/mri-tumor-segmentation.
Two new files (join_img.py and private_train_vision.py) have been added to src/train/pytrain for supporting such scenarios.
Few additional libraries included in Dockerfile for training container (ci/Dockerfile.train).
Currently using Pytorch instead of Onnx due to compatibility issue with certain NN layers (eg. bilinear interpolate)