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No grab available #22

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Ruangq opened this issue Jun 25, 2022 · 6 comments
Open

No grab available #22

Ruangq opened this issue Jun 25, 2022 · 6 comments

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@Ruangq
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Ruangq commented Jun 25, 2022

I have a problem. When I use the model I trained to predict, the success rate of grabbing is very low, about 0.003.
I hope you can give me some help to solve this problem.

@Ruangq
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Ruangq commented Jun 25, 2022

My environment is tensorflow2.4,cuda11.1, python3.7

@MartinSmeyer
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Do you run your training on a Nvidia 30XX GPU? In that case, you might try the environment posted in #19

@xlim1996
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@Ruangq Hi, you can try my environment file in #19. In my case is that TensorFlow 2.4 and 2.6 didn't work on my laptop. only TensorFlow 2.5 works well with cuda11.2 /11.3 on my laptop. Btw, don't use conda to install TensorFlow.

@Ruangq
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Ruangq commented Jul 14, 2022

@xlim1996
Hello, During my training, the following situation occurred.
But the training can be carried out normally and the loss is reduced normally.
my GPU is A40.
image

@Ruangq
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Ruangq commented Jul 14, 2022

Will this affect the training results and how to solve this problem? @xlim1996
I used the environment file of #19.

@xlim1996
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@Ruangq
hi,
I didn't retrain the model. So I'm unable to answer your question.
But the environment file works well for using contact graspnet. You may need to ask others who have experience of the retraining model.

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