![NVIDIA GeForce RTX 3080 Up To 2X Faster Than RTX 2080 In OpenCL & CUDA Benchmarks - 60% Faster Than RTX 2080 Ti NVIDIA GeForce RTX 3080 Up To 2X Faster Than RTX 2080 In OpenCL & CUDA Benchmarks - 60% Faster Than RTX 2080 Ti](https://cdn.wccftech.com/wp-content/uploads/2020/09/NVIDIA-GeForce-RTX-3080-vs-GeForce-RTX-2080-Ti-vs-GeForce-RTX-2080_OpenCL-CUDA-Performance-Benchmarks.png)
NVIDIA GeForce RTX 3080 Up To 2X Faster Than RTX 2080 In OpenCL & CUDA Benchmarks - 60% Faster Than RTX 2080 Ti
![How To Install Nvidia Drivers and CUDA-10.0 for RTX 2080 Ti GPU on Ubuntu-16.04/18.04 | by Achintha Ihalage | Better Programming How To Install Nvidia Drivers and CUDA-10.0 for RTX 2080 Ti GPU on Ubuntu-16.04/18.04 | by Achintha Ihalage | Better Programming](https://miro.medium.com/max/1400/1*n0Ih3KFTd1mmV1dhjVFd3Q.png)
How To Install Nvidia Drivers and CUDA-10.0 for RTX 2080 Ti GPU on Ubuntu-16.04/18.04 | by Achintha Ihalage | Better Programming
![The New NVIDIA RTX 3080 Has Double The Number Of CUDA Cores, But Is There A 2x Performance Gain? - Forensic Focus The New NVIDIA RTX 3080 Has Double The Number Of CUDA Cores, But Is There A 2x Performance Gain? - Forensic Focus](https://blog.passware.com/wp-content/uploads/2020/12/cuda-cores-1024x544.png)
The New NVIDIA RTX 3080 Has Double The Number Of CUDA Cores, But Is There A 2x Performance Gain? - Forensic Focus
![Specification GeForce RTX 2080 Ti GAMING X TRIO | MSI Global - The Leading Brand in High-end Gaming & Professional Creation Specification GeForce RTX 2080 Ti GAMING X TRIO | MSI Global - The Leading Brand in High-end Gaming & Professional Creation](https://asset.msi.com/resize/image/global/product/product_1_20180919185540_5ba22b2ce7ec4.png62405b38c58fe0f07fcef2367d8a9ba1/1024.png)
Specification GeForce RTX 2080 Ti GAMING X TRIO | MSI Global - The Leading Brand in High-end Gaming & Professional Creation
![GeForce RTX 3080 with CUDA capability sm_86 is not compatible with the current PyTorch installation. · Issue #45028 · pytorch/pytorch · GitHub GeForce RTX 3080 with CUDA capability sm_86 is not compatible with the current PyTorch installation. · Issue #45028 · pytorch/pytorch · GitHub](https://user-images.githubusercontent.com/52276191/93667640-7ca4dc80-fac2-11ea-80de-47cbdcfa9cd5.png)