Can I learn programming if my English is not good?
Can I learn programming if my English is not good? I believe this is a confusion faced by many people who are learning programming but do not speak English well. So does English affect the learning of programming?
#In fact, it is indeed difficult to learn programming if English is not good, but you can also learn programming as long as you don't understand it at all.
Because in the actual programming process, the words used in programming are simple and easy to understand, and it is not very difficult to learn.
But it’s best to understand the basic English words. For example, define a variable in C language: int a; here is an int and the letter a. If you know these two words If you don’t understand, it’s best to look in an English dictionary.
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