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image-classification
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I wanted to know if there is any support in the tool where the user can select multiple unique labels and rename it as one label?
What I want is very similar to grouping thing which is available in the tool. But instead of selecting "n" number of labels and grouping them, I wanted to give those "n" number of selected labels a different label name.
Thanks in advance!! Please let me know if th
Hi, thanks for the great code!
I wonder do you have plans to support resuming from checkpoints for classification? As we all know, in terms of training ImageNet, the training process is really long and it can be interrupted somehow, but I haven't notice any code related to "resume" in scripts/classification/train_imagenet.py.
Maybe @hetong007 ? Thanks in advance.
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resuming training
How do i resume training for text classification?
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Naming inconsistency
Describe the bug
I found that some names agruments in framework aren't consistent.
So for example:
class SupervisedRunner(Runner):
"""Runner for experiments with supervised model."""
_experiment_fn: Callable = SupervisedExperiment
def __init__(
self,
model: Model = None,
device: Device = None,
input_key: Any = "features",
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Yolov3 slow?
with video_demo.py about 20% speed compared to your 1.0 repo. but thanks much for sharing!
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There is a set of Pixel Level transforms that is used in the work
Benchmarking Neural Network Robustness to Common Corruptions and PerturbationsThe authors also share the code => we can absorb some transforms that they have into the library.
https://github.com/hendrycks/robustness/blob/master/ImageNet-C/create_c/make_imagenet_c.py