婆罗门
精华
|
战斗力 鹅
|
回帖 0
注册时间 2007-3-22
|
TL;DR advice
Best GPU overall: RTX 2070
GPUs to avoid: Any Tesla card; any Quadro card; any Founders Edition card; Titan RTX, Titan V, Titan XP
Cost-efficient but expensive: RTX 2070
Cost-efficient and cheap: RTX 2060, GTX 1060 (6GB).
I have little money: GTX 1060 (6GB)
I have almost no money: GTX 1050 Ti (4GB).Alternatively: CPU (prototyping) + AWS/TPU (training); or Colab.
I do Kaggle: RTX 2070. If you do not have enough money go for a GTX 1060 (6GB) or GTX Titan (Pascal) from eBay for prototyping and AWS for final training. Use fastai library.
I am a competitive computer vision or machine translation researcher: GTX 2080 Ti with the blower fan design. If you train very large networks get RTX Titans.
I am an NLP researcher: RTX 2080 Ti use 16-bit.
I want to build a GPU cluster: This is really complicated, you can get some ideas from my multi-GPU blog post.
I started deep learning and I am serious about it: Start with an RTX 2070. Buy more RTX 2070 after 6-9 months and you still want to invest more time into deep learning. Depending on what area you choose next (startup, Kaggle, research, applied deep learning) sell your GPU and buy something more appropriate after about two years.
I want to try deep learning, but I am not serious about it: GTX 1050 Ti (4 or 2GB). This often fits into your standard desktop and does not require a new PSU. If it fits, do not buy a new computer! Which GPU(s) to Get for Deep Learning: My Experience and Advice for Using GPUs in Deep Learning
https://timdettmers.com/2019/04/03/which-gpu-for-deep-learning/
这是没有出super系列之前写的,那么现在最佳推荐应该是RTX 2070=2060s
|
评分
-
查看全部评分
|