Iterables, Iterators, and Generators

Iteration is fundamental to data processing. And when scanning datasets that don't fit in memory, we need a way to fetch the items lazily, that is, one at a time and on demand. This is what the Iterator pattern is about. 

Every generator is an iterator: generators fully implement the iterator interface. But an iterator retrieves items from a collection, while a generator can produce items "out of thin air".

Every collection in Python is iterable, and iterators are used internally to support:

  • for loop
  • Collection types construction and extension
  • Looping over text files line by line
  • List, dict, and set comprehensions
  • Tuple unpacking
  • Unpacking actual parameters with * in function calls

We'll get started studying how the iter(...) function makes sequence iterable.

1. Sentence Take #1: A Sequence of Words.

end ...

猜你喜欢

转载自www.cnblogs.com/neozheng/p/12392754.html
今日推荐