text='ldap:alberthwang,eeid:67739|ldap:meng,eeid:107,building:CL5'
sample=[
dict(item.split(':') for item in part.split(','))
for part in text.split('|')]
print(sample)
# [{'eeid': '67739', 'ldap': 'alberthwang'}, {'building': 'CL5', 'eeid': '107', 'ldap': 'meng'}]
print(sample[1]['building'])
# CL5
- List comprehensions are a very convenient way to construct
lists such as this.
- A dict can be constructed from an iterable of key-value pairs. The iterable used above was a generator expression.
str is a built-in type, so assigning a string to str overwrites
the builtin. It's better to choose some other variable name to avoid
future surprising bugs.
I read and write list comprehensions backwards:
[ expression # (3)
for variable in # (2)
iterable # (1)
]
(1): First, understand the iterable. In the solution above, this is text.split('|').
(2): for variable in causes variable to be assigned to the values in iterable, one at a time.
(3): Finally, expression can be any Python expression, (usually) using variable.
The syntax for generator expressions is almost the same. The difference between a list comprehension and a generator expression is that a list comprehension returns a list, while a generator expression returns an iterator -- an object that yields its contents on-demand (as it is looped over, or when next is called) instead of generating all the items at once as is the case with lists.
A list can consume a lot of memory if the list is long.
A generator expression will consume less memory (and can even be infinite) because not all elements have to exist in memory at the same time.