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Requires that libcudnn7 is installed above. sudo apt-get install -no-install-recommends \ The training scripts and filter are a couple of years old now and we therefore need to accommodate them. Here we are installing both CUDA 10.0, 10.1. Install development and runtime libraries (~4GB). I didn't have this problem in the last build on a different PC. For example in my first build the BIOS was set to use the onboard graphics card first and changing it to use the offboard card got it working. If you have a message saying there is no device then you need to troubleshoot this stage. Do not proceed if you do not see a table output.
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REBOOT, then check that GPUs are visible using the command: nvidia-smi. Install NVIDIA driver sudo apt-get install -no-install-recommends nvidia-driver-450 I do not think it should matter though if it is your main GPU or if there is a monitor connected. I have a GeForce GTX 1050TI GPU that is not my main GPU and there is no monitor connected to it. My starting point is a fresh install of Xubuntu 20.04. PLEASE TAKE CARE AND ONLY FOLLOW IF YOU KNOW WHAT YOU ARE DOING. THIS GUIDE IS OFFERED AS IS WITH NO GUARANTEES IT WILL WORK FOR YOU. The only reason I went with Xubuntu in the end was because I was also investigating a new USB capture device for VHS but the instructions below will work with Server. Final run through with the new GPU was on Xubuntu 20.04. First I tried it on Ubuntu Server 20.04 and 18.04. I had a couple of spare computers (one server and one pc) so I was able to build this from scratch and let it run.Generating the datasets took a good few hours and training just one model took nearly the whole day. The rest is used up generating the model. The training scripts download about 42GB worth of videos and 9GB worth of images. I then went through it again with a GeForce GTX 1050TI 4GB card and
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It did proceed to use the CPU but was very slow. Only to get to the final ffmpeg upscaling for it to tell me I neededĪ capability of 6.0. The way through this once with a GeForce GT710 (capability of 3.5) A CUDA enabled GPU with a capability of at least 6.0.I have not tested many other videos and I also have quite a lot to learn about SR like if I feed it different training material will I get a better result. Bear in mind that my test was upscaling from 640x360 flv file to 1920x1080 mp4. I felt on my test videos that lanczos did an ever so slightly better job. Before proceeding it is worth saying that I was not overly impressed by the result. I realise this question is pretty old now but it still comes up quite high in search results so I would like to document how I got the "sr" to work (August 2020) in case it can help someone else.
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