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Sep 7, 2021 - Python
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regression
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ngupta23
commented
Oct 24, 2021
Include
- functions from functional API,
- overview of object oriented approach
- Common arguments that are used with each function/method
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ingbeeedd
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It's hard to find even if you look at doxygen.
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danielkelshaw
commented
Apr 30, 2020
Hi @JavierAntoran @stratisMarkou,
First of all, thanks for making all of this code available - it's been great to look through!
Im currently spending some time trying to work through the Weight Uncertainty in Neural Networks in order to implement Bayes-by-Backprop. I was struggling to understand the difference between your implementation of `Bayes-by-Bac
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Hi I would like to propose a better implementation for 'test_indices':
We can remove the unneeded np.array casting:
Cleaner/New:
test_indices = list(set(range(len(texts))) - set(train_indices))
Old:
test_indices = np.array(list(set(range(len(texts))) - set(train_indices)))