What is the artificial intelligence development language?
I believe that what people have talked about the most in recent years is artificial intelligence. AlphaGO’s victory over the world Go champion made the topic of artificial intelligence explode again. In fact, artificial intelligence technology has long been reflected in many areas of our lives, such as image recognition, robotics, search engines, autonomous driving technology, etc., all of which have performed well. It is a good choice to start learning artificial intelligence now, so do you know what language is needed to learn artificial intelligence?
Understand what python is
Since we are discussing Python , then first you need to understand what Python is. Python is a computer programming language and a dynamic, object-oriented scripting language. It was originally designed for writing automated scripts (shells). With the continuous updates of the version and the addition of new language features, it is increasingly used For the development of independent, large-scale projects.
The reason why Python is the preferred language for artificial intelligence
With the help of artificial intelligence and data science, the Python language has climbed to the top position of the programming language ecological chain. It can be said that Python and AI is already closely tied together. The advantage of Python is that it is rich in resources, has solid numerical algorithms, icons, and data processing infrastructure, and can establish a very good ecological environment. Python's packaging capabilities, composability, and embeddability are very good, and it can integrate various complexities. Wrapped in a Python module, exposing a beautiful interface. And Python also has a rich and powerful class library. It is often nicknamed the glue language, which can easily connect various modules made in other languages (especially C/C) together.
To learn artificial intelligence, you must first learn a programming language, and Python is your first choice. It is very wise to start learning artificial intelligence now. Liewei Technology hopes that everyone can make a difference in the field of artificial intelligence as soon as possible.
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