All of the answers here are great; but only one of them (the most voted one) relates to how your code works. Others are relating to generators in general, and how they work.
So I won't repeat what generators are or what yields do; I think these are covered by great existing answers. However, after spending few hours trying to understand a similar code to yours, I'll break it down how it works.
Your code traverse a binary tree structure. Let's take this tree for example:
/ \ \
1 4 8
And another simpler implementation of a binary-search tree traversal:
for child in self.left:
for child in self.right:
The execution code is on the
Tree object, which implements
__iter__ as this:
while candidates statement can be replaced with
for element in tree; Python translate this to
it = iter(TreeObj) # returns iter(self.root) which calls self.root.__iter__()
for element in it:
.. process element ..
Node.__iter__ function is a generator, the code inside it is executed per iteration. So the execution would look like this:
- root element is first; check if it has left childs and
for iterate them (let's call it it1 because its the first iterator object)
- it has a child so the
for is executed. The
for child in self.left creates a new iterator from
self.left, which is a Node object itself (it2)
- Same logic as 2, and a new
iterator is created (it3)
- Now we reached the left end of the tree.
it3 has no left childs so it continues and
- On the next call to
next(it3) it raises
StopIteration and exists since it has no right childs (it reaches to the end of the function without yield anything)
it2 are still active - they are not exhausted and calling
next(it2) would yield values, not raise
- Now we are back to
it2 context, and call
next(it2) which continues where it stopped: right after the
yield child statement. Since it has no more left childs it continues and yields it's
The catch here is that every iteration creates sub-iterators to traverse the tree, and holds the state of the current iterator. Once it reaches the end it traverse back the stack, and values are returned in the correct order (smallest yields value first).
Your code example did something similar in a different technique: it populated a one-element list for every child, then on the next iteration it pops it and run the function code on the current object (hence the
I hope this contributed a little to this legendary topic. I spent several good hours drawing this process to understand it.