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While training I got training terminate error . Epoch 00001: LearningRateScheduler setting learning rate to 0.001. 1/10 [==>...........................] - ETA: 4:08 - loss: nanBatch 0: Invalid loss, terminating training Epoch 00001: saving model to ssd512_URPC2018_epoch-01.h5 Process finished with exit code 0
#378
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rupalandge opened this issue
Mar 4, 2021
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a question that is specific to this SSD implementation.
You will only get help if you adhere to the following guidelines:
Before you open an issue, search the open and closed issues first. Your problem/question might already have been solved/answered before.
If you're getting unexpected behavior from code I wrote, open an issue and I'll try to help. If you're getting unexpected behavior from code you wrote, you'll have to fix it yourself. E.g. if you made a ton of changes to the code or the tutorials and now it doesn't work anymore, that's your own problem. I don't want to spend my time debugging your code.
Make sure you're using the latest master. If you're 30 commits behind and have a problem, the only answer you'll likely get is to pull the latest master and try again.
Read the documentation. All of it. If the answer to your problem/question can be found in the documentation, you might not get an answer, because, seriously, you could really have figured this out yourself.
If you're asking a question, it must be specific to this SSD implementation. General deep learning or object detection questions will likely get closed without an answer. E.g. a question like "How do I get the mAP of an SSD for my own dataset?" has nothing to do with this particular SSD implementation, because computing the mAP works the same way for any object detection model. You should ask such a question in an appropriate forum or on the Data Science section of StackOverflow instead.
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The text was updated successfully, but these errors were encountered:
rupalandge
changed the title
while training I am getting error training terminate .
while training I am getting error training terminate . Epoch 00001: LearningRateScheduler setting learning rate to 0.001. 1/10 [==>...........................] - ETA: 4:08 - loss: nanBatch 0: Invalid loss, terminating training Epoch 00001: saving model to ssd512_URPC2018_epoch-01.h5 Process finished with exit code 0
Mar 4, 2021
rupalandge
changed the title
while training I am getting error training terminate . Epoch 00001: LearningRateScheduler setting learning rate to 0.001. 1/10 [==>...........................] - ETA: 4:08 - loss: nanBatch 0: Invalid loss, terminating training Epoch 00001: saving model to ssd512_URPC2018_epoch-01.h5 Process finished with exit code 0
While training I got training terminate error . Epoch 00001: LearningRateScheduler setting learning rate to 0.001. 1/10 [==>...........................] - ETA: 4:08 - loss: nanBatch 0: Invalid loss, terminating training Epoch 00001: saving model to ssd512_URPC2018_epoch-01.h5 Process finished with exit code 0
Mar 4, 2021
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The text was updated successfully, but these errors were encountered: