pytorch
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Proposed refactoring or deprecation
Motivation
Lightning has a utility defined for all gather with gradients here: https://github.com/PyTorchLightning/pytorch-lightning/blob/d515bcac969c2a485ada673e302bfac51f142331/pytorch_lightning/utilities/distributed.py#L200-L222
However, this is already available in torch dist
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Change tensor.data
to tensor.detach()
due to
pytorch/pytorch#6990 (comment)
tensor.detach()
is more robust than tensor.data
.
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能出一个视频教程嘛
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New Operator
Describe the operator
Why is this operator necessary? What does it accomplish?
This is a frequently used operator in tensorflow/keras
Can this operator be constructed using existing onnx operators?
If so, why not add it as a function?
I don't know.
Is this operator used by any model currently? Which one?
Are you willing to contribute it?
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Motivated by huggingface/transformers#12789 in Transformers, one welcoming change would be replacing assertions with proper exceptions. The only type of assertions we should keep are those used as sanity checks.
Currently, there is a total of 87 files with the assert
statements (located under datasets
and src/datasets
), so when working on this, to manage the PR s
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Is your feature request related to a problem? Please describe.
I typically used compressed datasets (e.g. gzipped) to save disk space. This works fine with AllenNLP during training because I can write my dataset reader to load the compressed data. However, the predict
command opens the file and reads lines for the Predictor
. This fails when it tries to load data from my compressed files.
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Currently, the
EncoderDecoderModel
class in PyTorch automatically creates thedecoder_input_ids
based on thelabels
provided by the user (similar to how this is done for T5/BART). This should also be implemented forTFEncoderDecoderModel
, because currently users should manually providedecoder_input_ids
to the model.One can take a look at the TF implementation