mxnet
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Add a new API for converting a model to external data. Today the conversion happens in 2 steps
external_data_helper.convert_model_to_external_data(<model>, <all_tensors_to_one_file>, <size_threshold>) save_model(model, output_path)
We want to add another api which combines the 2 steps
`
save_model_to_external_data(, <output_
Current pytorch implementation ignores the argument split_f in the function train_batch_ch13 as shown below.
def train_batch_ch13(net, X, y, loss, trainer, devices):
if isinstance(X, list):
# Required for BERT Fine-tuning (to be covered later)
X = [x.to(devices[0]) for x in X]
else:
X = X.to(devices[0])
...Todo: Define the argument `
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Jan 18, 2021 - Jupyter Notebook
Can I know what is the size of the Kinetics 400 dataset used to reproduce the result in this repo?
There are many links in Kinetics that have expired. As as result, everyone might not be using the same Kinetics dataset. As a reference, the statistics of the Kinetics dataset used in PySlowFast can be found here, https://github.com/facebookresearch/video-nonlocal-net/blob/master/DATASET.md. However, I cannot seem to find similar information for gluoncv. Will you guys be sharing the statistics and
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Jan 9, 2021 - Jupyter Notebook
resuming training
How do i resume training for text classification?
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Oct 24, 2020
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Jan 27, 2021 - Python
I have the same hardware envs, same network, but I could not get the result as you, almost half as you. Any best practices and experience? thanks very much! for bytePS with 1 instance and 8 GPU, I have similar testing result.
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Feb 8, 2021
[Error Message] Improve error message in SentencepieceTokenizer when arguments are not expected.
Description
While using tokenizers.create with the model and vocab file for a custom corpus, the code throws an error and is not able to generate the BERT vocab file
Error Message
ValueError: Mismatch vocabulary! All special tokens specified must be control tokens in the sentencepiece vocabulary.
To Reproduce
from gluonnlp.data import tokenizers
tokenizers.create('spm', model_p
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Description
(A clear and concise description of what the feature is.)
util.cumsumimplementation https://github.com/awslabs/gluon-ts/blob/master/src/gluonts/mx/util.py#L326 does not scale undermx.ndarraycumsumis 2-5 times slower thannd.cumsumunder bothmx.symandmx.ndarray, and even fails for large 4-dim input
Sample test
Code
# import ...
def test_
Yolo Model
Description
Implement a YOLO model and add it to the DJL model zoo
References
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Description
This is a documentation bug. The parameter of API
mxnet.test_utils.check_numeric_gradientis not consistent between signature and Parameter section. There is a parametercheck_epsin the Parameter section, but it is not in the signature.Link to document: https://mxnet.apache.org/versions/1.6/api/python/docs/api/mxnet/test_utils/index.html#mxnet.test_utils.check_numeric_gra