0

Machine Setting:

  • GPU: GeForce RTX 3060

  • Driver Version: 460.73.01

  • CUDA Driver Veresion: 11.2

  • Tensorflow: tensorflow-gpu 1.14.0

  • CUDA Runtime Version: 10.0

  • cudnn: 7.4.1

Note:

  1. CUDA Runtime and cudnn version fits the guide from Tensorflow official documentation.
  2. I've also tried for TensorFlow-gpu = 2.0, still the same problem.

Problem:

I am using Tensorflow for an objection detection task. My situation is that the program will stuck at

2021-06-05 12:16:54.099778: I tensorflow/stream_executor/platform/default/dso_loader.cc:42] Successfully opened dynamic library libcublas.so.10

for several minutes.

And then stuck at next loading process

2021-06-05 12:21:22.212818: I tensorflow/stream_executor/platform/default/dso_loader.cc:42] Successfully opened dynamic library libcudnn.so.7

for even longer time. You may check log.txt for log details.

After waiting for around 30 mins, the program will start to running and WORK WELL.

However, whenever program invoke self.session.run(...), it will load the same two library related to cuda (libcublas and libcudnn) again, which is time-wasted and annoying.

I am confused that where the problem comes from and how to resolve it. Anyone could help?

Discussion Issue on Github

===================================

Update

After @talonmies 's help, the problem was resolved by resetting the environment with correct version matching among GPU, CUDA, cudnn and tensorflow. Now it works smoothly.

2
  • 2
    The version Tensorflow you have doesn't have any native binary support for your GPU. As a result, there is JIT recompilation of everything tensorflow delay loads. That isn't fast. Upgrade to a version of Tensorflow with native support for your GPU or live with it are your two options
    – talonmies
    Jun 5, 2021 at 7:55
  • @talonmies Thx a lot for your help. I've reset the environment with correct version matching among GPU, CUDA, cudnn and tensorflow. Now it works smoothly.
    – alanzzz
    Jun 11, 2021 at 8:07

1 Answer 1

1

Generally, if there are any incompatibility between TF, CUDA and cuDNN version you can observed this behavior.

For GeForce RTX 3060, support starts from CUDA 11.x. Once you upgrade to TF2.4 or TF2.5 your issue will be resolved.

For the benefit of community providing tested built configuration

enter image description here

CUDA Support Matrix

enter image description here

1
  • Thx for help :)
    – alanzzz
    Jun 15, 2021 at 13:48

Your Answer

By clicking “Post Your Answer”, you agree to our terms of service, privacy policy and cookie policy

Not the answer you're looking for? Browse other questions tagged or ask your own question.