nshen7/multimodal-cell-matching
Solution to one of the problems in 2021 NeurIPS Competition: A self-supervised contrastive learning model to learn matched cell modality embeddings in 10X Multiome data. Implemented in Python&PyTorch.
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Jan 20, 2024
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