2023 CPU & GPU ladder chart (latest version)

 
  
 
  
 
  
 
  
 
  
 
  
 
  
 
  
来源:架构师技术联盟
https://zhuanlan.zhihu.com/p/109042798utm_source=wechat_session&utm_medium=social&s_r=0

In today's computer world, the performance of CPU, GPU and graphics card has become an important indicator of computer performance. Today we have an in-depth look at the CPU, GPU and graphics card ladder charts.

First of all, the CPU serves as the brain of the computer and is responsible for processing various tasks. Its performance is mainly determined by the number of cores, main frequency and cache size. Among them, the number of cores and main frequency determine the processing speed of the CPU, and the cache size has a greater impact on some tasks that require a lot of calculations. When choosing a CPU, you need to weigh these factors based on your usage needs.

As a chip dedicated to graphics processing, GPU plays an increasingly important role in modern computers. Its performance is mainly determined by the number of stream processors, frequency and memory bandwidth. The number and frequency of stream processors determine the computing power of the GPU, and the memory bandwidth affects the data transfer speed. When choosing a GPU, you need to choose the product that best suits you based on your usage needs.

The graphics card also plays an important role as a bridge that transmits the calculation results of the GPU to the monitor. Its performance is mainly determined by the memory capacity, bandwidth and memory interface width. Video memory capacity and bandwidth determine the amount of data the graphics card can handle, and the memory interface width affects the data transfer speed. When choosing a graphics card, you need to choose the product that best suits you based on your needs.

In order to make it easier for everyone to compare the performance of different products, the industry often uses a ladder diagram to display it. The ladder chart is a chart compiled based on a large amount of test data and user reviews, which can visually display the performance gap between different products. When choosing a CPU, GPU, and graphics card, you can refer to these ladder charts to choose the product that best suits you.

1. A must-read guide for assembling a desktop computer: Performance Ladder Chart

Precautions:

  • 1. The performance of processors of the same model is not exactly the same. (power issue)

  • 2. If you put a high-end desktop processor in a notebook, the performance will decrease. (power issue)

  • 3. This graph is not entirely based on running scores. Depending on the TDP, the factor of Turbo Frequency Durability is taken into consideration.

  • 4. Those that do not belong to the Core and Ryzen architectures have poor performance.

  • 5. The same height in the ladder does not mean that it is equivalent to running a certain application.


Desktop CPU ladder chart:

2023 Desktop CPU Ladder Chart Performance List 

56f755f62a01141583bbd8b0594a055c.png

Desktop graphics card ladder chart:

2023 Desktop Graphics Ladder Chart Performance Ranking 

58af058db4c015444132e149fda1f069.png

2023 NVIDIA Desktop Professional Graphics Card Ladder

cf5d8995bc941dd5ff8f050a69025566.png


2. A must-see guide when purchasing a laptop: Performance Ladder Chart

2023 Laptop CPU Performance Ranking Chart 

d79aaa9a2ad1e9a811022e27e47a0318.png


2023 Comparative Performance Ladder Chart Ranking of Laptop Mobile Graphics Cards and Desktop Graphics Cards 

283a762fbcd37c3cc58a9d879c4b84f1.png


2023 NVIDIA Notebook Professional Graphics Card Performance Ladder (Official Version)

dfc3cfc1e13e39dff9a06140357144ed.png

关注公众号【机器学习与AI生成创作】,更多精彩等你来读
卧剿,6万字!30个方向130篇!CVPR 2023 最全 AIGC 论文!一口气读完

深入浅出stable diffusion:AI作画技术背后的潜在扩散模型论文解读

深入浅出ControlNet,一种可控生成的AIGC绘画生成算法! 

经典GAN不得不读:StyleGAN

 戳我,查看GAN的系列专辑~!
一杯奶茶,成为AIGC+CV视觉的前沿弄潮儿!

最新最全100篇汇总!生成扩散模型Diffusion Models
ECCV2022 | 生成对抗网络GAN部分论文汇总

CVPR 2022 | 25+方向、最新50篇GAN论文

 ICCV 2021 | 35个主题GAN论文汇总

超110篇!CVPR 2021最全GAN论文梳理

超100篇!CVPR 2020最全GAN论文梳理
拆解组新的GAN:解耦表征MixNMatch

StarGAN第2版:多域多样性图像生成
附下载 | 《可解释的机器学习》中文版

附下载 |《TensorFlow 2.0 深度学习算法实战》

附下载 |《计算机视觉中的数学方法》分享
《基于深度学习的表面缺陷检测方法综述》

《零样本图像分类综述: 十年进展》

《基于深度神经网络的少样本学习综述》
《礼记·学记》有云:独学而无友,则孤陋而寡闻
点击一杯奶茶,成为AIGC+CV视觉的前沿弄潮儿!,加入 AI生成创作与计算机视觉 知识星球!

Guess you like

Origin blog.csdn.net/lgzlgz3102/article/details/132820320