Update The installation UI for
10.1 changed. The following works:
- Deselect driver installation (pressing
options -> root install path to a non-sudo directory.
A on the line marked with a
+ to access advanced options. Deselect
create symbolic link, and change the
toolkit install path.
- Now installation should work without root permissions
Thank you very much for the hints in the question! I just want to complete it with an approach that worked for me, also inspired in this gist and that hopefully helps in situations where a valid driver is installed, and installing a more recent CUDA on Linux without root permissions is still needed.
TL;DR: Here are the steps to install CUDA9+CUDNN7 on Debian, and installing a pre-compiled version of TensorFlow1.4 on Python2.7 to test that everything works. Everything without root privileges and via terminal. Should also work for other CUDA, CUDNN, TensorFlow and Python versions on other Linux systems too.
Go to NVIDIA's official release web for CUDA (as for Nov. 2017, CUDA9 is out): https://developer.nvidia.com/cuda-downloads.
Under your Linux distro, select the
runfile (local)option. Note that the
sudo indication present in the installation instructions is deceiving, since it is possible to run this installer without root permissions. On a server, one easy way is to copy the
<LINK> of the
Download button and, in any location of your home directory, run
wget <LINK>. It will download the
chmod +x <INSTALLER> to make it executable, and execute it
accept the EULA,
say no to driver installation, and enter a
<CUDA> location under your home directory to install the toolkit and a
<CUDASAMPLES> for the samples.
Not asked here but recommended: Download a compatible CUDNN file from the official web (you need to sign in). In my case, I downloaded the
cudnn-9.0-linux-x64-v7.tgz, compatible with CUDA9 into the
<CUDNN> folder. Uncompress it:
tar -xzvf ....
Optional: compile the samples.
cd <CUDASAMPLES> && make. There are some very nice examples there and a very good starting point to write some CUDA scripts of yourself.
(If you did 5.): Copy the CUDNN required files into CUDA, and grant reading permission to user (not sure if needed):
cp -P <CUDNN>/cuda/include/cudnn.h <CUDA>/include/
cp -P cudnn9/cuda/lib64/libcudnn* cuda9/lib64
chmod a+r cuda9/include/cudnn.h cuda9/lib64/libcudnn*
- Add the library to your environment. This is typically done adding this following two lines to your
~/.bashrc file (in this example, the
<CUDA> directory was
FOR QUICK TESTING OR TENSORFLOW USERS
The quickest way to get a TensorFlow compatible with CUDA9 and CUDNN7 (and a very quick way to test this) is to download a precompiled
wheel file and install it with
pip install <WHEEL>. Most of the versions you need, can be found in mind's repo (thanks a lot guys). A minimal test that confirms that CUDNN is also working involves the use of
import tensorflow as tf
x = tf.nn.conv2d(tf.ones([1,1,10,1]), tf.ones([1,5,1,1]), strides=[1, 1, 1, 1], padding='SAME')
with tf.Session() as sess:
sess.run(x) # this should output a tensor of shape (1,1,10,1) with [3,4,5,5,5,5,5,5,4,3]
In my case, the wheel I installed required Intel's MKL library, as explained here. Again, from terminal and without root users, this are the steps I followed to install the library and make TensorFlow find it (reference):
git clone https://github.com/01org/mkl-dnn.git
cd mkl-dnn/scripts && ./prepare_mkl.sh && cd ..
mkdir -p build && cd build
cmake -D CMAKE_INSTALL_PREFIX:PATH=<TARGET_DIR_IN_HOME> ..
make # this takes a while
make doc # do this optionally if you have
make test # also takes a while
make install # installs into <TARGET_DIR_IN_HOME>
- add the following to your
Hope this helps!