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months = ['January',
          'February',
          'March',
          'April',
          'May',
          'June',
          'July',
          'August',
          'September',
          'October',
          'November',
          'December']

def valid_month(month):
    if month:
        cap_month = month.capitalize()
        if cap_month in months:
            return cap_month

so above is python code that creates a list of months and basically prints what the user enters if it's valid month or not. the above code is nice.

below is another version similar to the above but I guess better or more user-friendly. but I'm not sure how this works exactly I haven't seen python dictionaries in this manner could someone go through this code and explain it to me thanks a lot I appreciate.

months_abbvs = dict((m[:3].lower(), m) for m in months)

def valid_month(month):
    if month:
        short_month = month[:3].lower()
        return month_abbvs.get(short_month)
share|improve this question
1  
in first code , months is a list not a dictionary –  naveen yadav Sep 5 '13 at 19:37

3 Answers 3

up vote 5 down vote accepted

It may help to print out what you get from that extra step:

>>> months_abbvs
{'apr': 'April',
 'aug': 'August',
 'dec': 'December',
 'feb': 'February',
 'jan': 'January',
 'jul': 'July',
 'jun': 'June',
 'mar': 'March',
 'may': 'May',
 'nov': 'November',
 'oct': 'October',
 'sep': 'September'}

So, you have a mapping of lowercased abbreviations to full month names.

How does that work? Well, first, let's look at what the expression does:

>>> m = 'December'
>>> m[:3].lower()
'dec'
>>> m[:3].lower(), m
('dec', 'December')

So, the comprehension just does that for each month:

>>> [(m[:3].lower(), m) for m in months]
[('jan', 'January'),
 ('feb', 'February'),
 ('mar', 'March'),
 ('apr', 'April'),
 ('may', 'May'),
 ('jun', 'June'),
 ('jul', 'July'),
 ('aug', 'August'),
 ('sep', 'September'),
 ('oct', 'October'),
 ('nov', 'November'),
 ('dec', 'December')]

As explained in more detail in the tutorial, a comprehension is basically shorthand for a loop. In particular, this:

>>> m2 = [<expression with m> for m in months]

… is equivalent to:

>>> m2 = []
>>> for m in months:
...     m2.append(<expression with m>)

Using a generator expression instead of a list comprehension just means the sequence is built as a lazy iterator instead of a list.

And then passing the result (either way) to dict builds a dictionary mapping the first value of each tuple to the second.


You could write this all a bit more readably as a dictionary comprehension:

months_abbvs = {m[:3].lower(): m for m in months}

Even better, instead of writing m[:3].lower() repeatedly, give it a nice name and use that:

def abbreviate(m):
    return m[:3].lower()
months_abbvs = {abbreviate(m): m for m in months}

And then:

def valid_month(month):
    if month:
        short_month = abbreviate(month)
        return month_abbvs.get(short_month)

Now, what you do with your input in the new version is:

short_month = month[:3].lower()
return month_abbvs.get(short_month)

Since month_abbvs is a dict (you can tell that by printing it out, or just from the fact that it was created by calling dict on something), the get method is dict.get. So, as explained in the linked docs, month_abbvs.get(short_month) is the same as months_abbvs[short_month], except that if the key short_month is not found, you will get None, instead of raising an exception.

So, if given 'October', you'll set short_month to 'oct'. And then you look it up in the abbreviation dictionary, which returns 'October'. If given 'OCT' or 'october' or 'octal digit string', you'll also return the same thing. Since any non-empty string is truthy, if you've done something like if valid_month('October'):, it will be true.

But, if given, say, 'Muhammed', you'll set short_month to 'muh'. And then you look that up, and it isn't there. As explained above, the get method returns None for unknown keys, so you will return None. Since None is falsey, if you've done something like if valid_month('Muhammed'):, it will not be true.

In other words, it makes the function more lenient—which may be an improvement, or may be a bad thing (or may be a little of both—maybe you wanted 'OCT' to work, but not 'octal digit string').

share|improve this answer
    
wheres does the get method come from in month_abbvs.get(short_month) –  muhammed Sep 5 '13 at 23:49
    
also could you briefly explain the whole comprehension concept not familiar with fully on how it works here –  muhammed Sep 5 '13 at 23:50
    
@muhammed: I'll edit the answer to explain a bit, and add some links. And thanks for clarifying the parts you needed explained. –  abarnert Sep 5 '13 at 23:54
months_abbvs = dict((m[:3].lower(), m) for m in months)
# months_abbvs = { 'jan':'January', 'feb':'February',... }
# the actual operation is two-step:
#     1. [(m[:3].lower(),m) for m in months] list comprehension over the "months" list which:
#     1.1. [m[:3].lower()] take first three letters of each item in the list, apply lowercase()
#     1.2. [(m[:3].lower,m)] return a tuple of (1.1, item)
#     2. [dict(...)] build a dictionary from the list comprehension
#     2.2. for each tuple returned from (1.2), create a key:value pair in the dict

def valid_month(month):
    if month:
        short_month = month[:3].lower()
        # get first three letters as lowercase string
        return month_abbvs.get(short_month)
        # 1. [month_abbvs.get(short_month)] perform dict.get(key)
        # 2. return result of 1 (None if no such key exists)

The reason this is more efficient is that dict uses a hashset for its internal representation, so finding whether a key exists in it or not is an (amortized) O(1) operation, whereas doing the same over a list is a worst-case-scenario O(n) operation for a list of size n.

As per @abarnert's comment, this also makes it more user-friendly to code, as you get away with simply doing a dict.get(key) and not worrying about iteration logic in your code. The condition becomes a "True/False" question, rather than a "Is it True for either of the cases in this set [...]?"

share|improve this answer
    
I don't think that efficiency is relevant here. The change is a major change to the semantics of the function, and the point was apparently to make it "more user-friendly", so the semantics, rather than the performance, are what matters. –  abarnert Sep 5 '13 at 19:46
    
Also, if performance were what mattered here, it would be a lot simpler—and a little faster, too—to just change months into a set by replacing the square brackets with curly braces, and leave everything else unchanged. –  abarnert Sep 5 '13 at 19:46
    
@abarnert agreed. I'm guessing the code in the question is from some online course... I also guessed (maybe incorrectly?) that the question was asking "what is happening in this code?" rather than why, hence the breakdown in the code section. It's rough, but I think it describes the process itself accurately. –  Nisan.H Sep 5 '13 at 19:52
    
Your new edit says "you get away with simply doing a dict.get(key) and not worrying about iteration logic"… but his original version didn't worry about iteration logic either; it just did a cap_month in months check. So, that comment is wrong. –  abarnert Sep 5 '13 at 21:31

The other two questions explain in detail how the code works, but I'd like to draw your attention to one particular facet of how the code is designed: it has tests to avoid exceptions, and if those tests fail, the code stops executing, such that execution falls off the end of the function text, and returns None.

A simpler way to write the code is to eliminate the checks, and handle the exceptions:

def valid_month(month):
    if month:
        # this will raise an exception if month is not a string
        short_month = month[:3].lower() 
        return month_abbvs.get(short_month)

becomes:

def valid_month(month):
    try:
        return month_abbvs.get(month[:3].lower())
    except KeyError, AttributeError: # or Exception to catch everything
        return None

Which gives us one main line to comprehend, which is a bit easier in this case. Obviously, the more checks, the more simplicity this gives us.


def valid_month(month):
    if month:
        cap_month = month.capitalize()
        if cap_month in months:
            return cap_month

becomes:

def valid_month(month):
    try:
        cap_month = month.capitalize()
        if cap_month and cap_month in months:
            return cap_month
    except AttributeError:
        return None

Which doesn't buy us very much in this case. It's good to be able to employ both styles.

share|improve this answer
    
Thanks this is actually very helpful. –  muhammed Sep 5 '13 at 20:32
    
@muhammed You're welcome! –  Marcin Sep 5 '13 at 20:35
    
This isn't right. month_abbvs.get(…) will never raise a KeyError. And nothing will raise an AttributeError unless month is not a sequence, which is not at all the same test as if month:, which tests for (among other things) an empty string. –  abarnert Sep 5 '13 at 21:29
    
@abarnert try month=['foo'];month.capitalize() and tell me what you get. –  Marcin Sep 5 '13 at 21:43
    
@Marcin: Yes, in addition to skipping some of the tests he used to do, you've also added tests for completely different problems that his original code didn't test for. –  abarnert Sep 5 '13 at 22:08

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