Python basically has no requirements for computer hardware. When downloading the python installation program, pay attention to whether your computer is a 64-bit system or a 32-bit system, and then download the corresponding python installation program.
If you simply learn Python, an ordinary computer will be fine, and several basic machine learning algorithms will be fine. If you want to learn deep learning, you can use 1080ti or Titan XP on a desktop without a computer, leaving room for upgrades in other configurations. The notebook should be more powerful, preferably with a solid-state drive, support 16G of memory or above, and a graphics card of NVIDIA 1060 or above.
In fact, what computer to buy depends on your actual situation. If you are a student, I suggest an ordinary laptop. There is no need to spend a lot of money to worry about this matter; if you are an office worker and have a certain amount of money, For basics, you can choose higher-end products, such as Mac.
Having said that, python supports cross-platform and mainstream systems. As for which one you prefer, it depends on your personal preference.
Related learning recommendations: python tutorial
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