How to access NVIDIA Quadro K4000 from my remote desktop Windows 10? - tensorflow

I have been trying to access my NVIDIA Quadro K4000 GPU from my remote desktop Windows 10. I need to use it for TensorFlow object detection version 2.9 or greater. For TensorFlow 2.9 or higher I have installed CUDA and cuDNN 11.2 and visual studio 2019 according to the build configuration. It runs perfectly on my local PC and shows the local GPU on my laptop after running this code:
import tensorflow as tf
import os
gpus = tf.config.experimental.list_physical_devices('GPU')
for gpu in gpus:
tf.config.experimental.set_memory_growth(gpu, True)
tf.config.list_physical_devices('GPU')
[PhysicalDevice(name='/physical_device:GPU:0', device_type='GPU')]
But this line of code doesnot show any GPU device when I connect to my remote desktop with NVIDIA Quadro K4000 GPU.
This line of code returns null value:
tf.config.list_physical_devices('GPU')
I have tried everything from editing path variable to editing with 'gpedit.msc' from Run command. I cannot use my GPU remotely. I am stuck for long time.
Please help me.
Tried editing all these. but in vain

I solved the issue. I was unaware about the compute capability of my GPU and the version of CUDA and cuDNN I was using on the system. It took me two days for this but now I have access to my Tensorflow-GPU version 2.0.0.

Related

Using the RTX 3070 laptop GPU for CNN model training with a windows system

I'm trying to use my laptop RTX 3070 GPU for CNN model training because I have to employ a exhastive grid search to tune the hyper parameters. I tried many different methods however, I could not get it done. Can anyone kindly point me in the right direction?
I followed the following procedure.
The procedure:
Installed the NVIDIA CUDA Toolkit 11.2
Installed NVIDIA cuDNN 8.1 by downloading and pasting the files (bin,include,lib) into the NVIDIA GPU Computing Toolkit/CUDA/V11.2
Setup the environment variable by including the path in the system path for both bin and libnvvm.
Installed tensorflow 2.11 and python 3.8 in a new conda environment.
However, I was unable to setup the system to use the GPU that is available. The code seems to be only using the CPU and when I query the following request I get the below output.
query:
import tensorflow as tf
print("TensorFlow version:", tf.__version__)
print("Num GPUs Available: ", len(tf.config.list_physical_devices('GPU')))
Output:
TensorFlow version: 2.11.0
Num GPUs Available: 0
Am I missing something here or anyone has the same issue like me?
You should use DirectML plugin. From tensorflow 2.11 Gpu support has been dropped for native windows. you need to use DirectML plugin.
You can follow the tutorial here to install

Anaconda installed CUDA CUdnn and Tensorflow, Why doesn't find the GPU?

I'm using Anaconda prompt to install:
Tensorflow 2.10.0
cudatoolkit 11.3.1
cudnn 8.2.1
I'm using Windows 11 and a RTX 3070 Nvidia graphic card. And all the drives have been updated.
And I tried downloading another version of CUDA and CUdnn in exe.file directly from CUDA website. And
added the directories into system path.The folder looks like this:
But whenever I type in:
import tensorflow as tf
print("Num GPUs Available: ", len(tf.config.experimental.list_physical_devices('GPU')))
It gives me Num GPUs Available: 0
And surely it eats my CPU for computing everything.
It once succeeded when I used Colab and use GPU as the accelerator then created a session using my GPU. That time the GPU load has been maximized. But later don't know how, I can't use my own GPU for training in Colab or even their default free GPU.
Please help. ChatGPT doesn't give me correct information since it only referred to knowledge before 2020. It keeps asking me to install 'tensorflow-gpu' which has already been removed.

Tensorflow (CUDA 11.2) not detecting GPU on a AMD Radeon Vega 8 (Envy Laptop) using Python 3.7

Has anyone been able to make tensorflow detect the GPU using python 3.7?
How did you do it? I've downloaded cuDNN 8.1, CUDA 11.2, then pip installed tensorflow using pip install tensorflow-gpu==2.5 I've added another environment variable for cuDNN's bin, however I am still getting this result Num GPUs Available 0. Does Tensorflow (CUDA 11.2) even work with the AMD Radeon Vega 8?
No it does not, because cuDNN is a product of NVIDIA and so is CUDA. NVIDIA designs their own GPUs and their product will look for those GPUs. In order for tensorflow to detect the GPU you will have to use one of NVIDIA's GPU.

Trying to use NVIDIA Geforce 920M to run Tensorflow codes

I have a Samsung notebook Windows 10 with 8GB of Ram, an Intel Graphics 5500 GPU and a Geforce 920M. I have been trying to use my NVIDIA to run code on Jupyter Notebook using Tensorflow. My Tensorflow codes do not run on the version
tensorflow 2.0, so I had to install previous versions of tensorflow. I installed CUDDA 9.0, tensorflow_gpu-1.12.0, and cuDNN 7, and it didn't work, then I tried to install tensorflow_gpu-1.5.0 with Anaconda, and it worked using the Intel GPU instead of mine NVIDIA, in that one moment I modified the settings in the NVIDIA Control Panel for my Geforce, but still the Intel GPU is being used instead of my NVIDIA. Why is this happening?
Try installing Nvidia's CUDA. Afterwards, when you run Tensorflow, it should run on your GPU.

GCP GPU is not detected in Keras

I'm running the UNet Keras model on a GCP instance with one NVIDIA Tesla P4GPU. But it does not detect the GPU. Instead it runs on the CPU. p.s. I installed drivers & tensorflow-gpu buy it wont work. How to fix this issue?
I tensorflow/stream_executor/cuda/cuda_diagnostics.cc:156] kernel driver does not appear to be running on this host (instance-1): /proc/driver/nvidia/version does not exist
Num GPUs Available: 0
You need to first install the driver. Follow this instruction