Comments (2)
The implementation in our code is according to Eq. (7) in the original paper, which is quite general since it just needs an assumption that each task output follows a Gaussian distribution and it does not need to know what type of loss function for each task. In some cases, you can deduce it again according to the loss functions you use (like Eq. (10) in the original UW paper).
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Related Issues (20)
- How to export saved models to other formats, such as onnx, mnn, etc HOT 2
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