KFA2 GeForce RTX 3080 EX Gamer (1-Click OC) in Geekbench 6 (OpenCL, Vulkan, Metal)

Here you can see how fast the KFA2 GeForce RTX 3080 EX Gamer (1-Click OC) is in Geekbench 6 (OpenCL, Vulkan, Metal). The performance of the graphics card in benchmarks or games primarily depends on the GPU architecture, the number of texture shaders and the memory size. The KFA2 GeForce RTX 3080 EX Gamer (1-Click OC) has 10 GB GDDR6X memory.
%%name_pure%%

GPU

Based on: NVIDIA GeForce RTX 3080
GPU Chip: GA102-200-K1-A1 (Ampere)
Streaming Multiprocessors: 68
Shader: 8704
Raytracing Cores: 68

Memory

Memory Size: 10 GB
Memory Type: GDDR6X
Memory Clock: 1.188 GHz
Memory bandwidth: 760 GB/s
Memory Interface: 320 bit

Benchmark results

Geekbench 6 (OpenCL, Vulkan, Metal)

Geekbench 6 is a cross-platform benchmark for main processors, which also carries out 3 different graphics benchmarks and outputs them in the form of a numerical value.

Geekbench 6 - OpenCL

KFA2 GeForce RTX 3080 EX Gamer (1-Click OC) KFA2 GeForce RTX 3080 EX Gamer (1-Click OC)
10 GB GDDR6X
173192
NVIDIA GeForce RTX 3080 NVIDIA GeForce RTX 3080
Average of gpu group
177506

Geekbench 6 - Vulkan

KFA2 GeForce RTX 3080 EX Gamer (1-Click OC) KFA2 GeForce RTX 3080 EX Gamer (1-Click OC)
10 GB GDDR6X
150853
NVIDIA GeForce RTX 3080 NVIDIA GeForce RTX 3080
Average of gpu group
125304


More benchmarks for the graphics card
KFA2 GeForce RTX 3080 EX Gamer (1-Click OC)

In order to determine the performance of a graphics card, so-called "benchmarks" are carried out. The benchmark software carries out special calculations to determine the performance of a graphics card. We use so-called theoretical or synthetic benchmarks (e.g. 3D Mark) as well as real game benchmarks. To ensure real comparability of the results, we pay attention to the correct execution of the benchmarks as well as the condition of the graphics card and the system.

We use the following benchmarks to measure the performance of a graphics card:


GPUs by group

Here we have listed more GPU groups for you:



back to index
Facebook
Twitter