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I've got the following code.

sum_review = reduce(add,[book['rw'] for book in books])
sum_rating = reduce(add,[book['rg'] for book in books])
items = len(books)
avg_review = sum_review/items
avg_rating = sum_rating/items

What I'd like is this.

sum_review,sum_rating = reduce(add,([book['rw'],[book['rg']) for book in books])
items = len(books)
avg_review = sum_review/items
avg_rating = sum_rating/items

Obviously this doesn't work. How can I solve this redundancy, without a regular loop?

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6 Answers 6

up vote 3 down vote accepted

There are two typical approaches to simplify code:

  1. Top-down: get the values first and then transpose them with zip(*iterable). It's also cool because it only iterates the collection once:

    values = ((book["rw"], book["rg"]) for book in books)
    avg_review, avg_rating = [sum(xs) / len(books) for xs in zip(*values)]
    
  2. Bottom-up: create a function to abstract the operation:

    get_avg = lambda xs, attr: sum(x[attr] for x in xs) / len(xs)
    avg_review = get_avg(books, "rw")
    avg_rating = get_avg(books, "rg")
    
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+1 Answered the question, and I'd agree that the readability lost is not worthwhile. –  marr75 Dec 27 '10 at 16:18
    
I won't use this, but I accept it since it answers the question. –  pdknsk Dec 27 '10 at 16:36
    
edited to add the two classical approaches –  tokland Dec 28 '12 at 19:55

I'd avoid using reduce here. For something so simple use sum:

sum_review = sum(book['rw'] for book in books)
sum_rating = sum(book['rg'] for book in books)

In my opinion this simpler version doesn't need refactoring to remove redundancy. With just two items (rw and rg) I think it's best to just leave it as it is.

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I did not know about sum. –  pdknsk Dec 27 '10 at 15:35

You should prefer clarity over optimization. In 3 years of using Python, I have only had to profile to discover performance bottlenecks twice. Your original code is clear and efficient. Compressing the first two lines into one hurts readability and barely impacts performance.

If I had to revise your code, it would like this:

avg_review = sum(book['rw'] for book in books) / len(books)
avg_rating = sum(book['rg'] for book in books) / len(books)

(That's five lines of code down to two with an improvement of clarity.)

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I don't understand why you think the OP is at all concerned about "optimization" or "performance". –  Karl Knechtel Dec 27 '10 at 16:15
    
@Karl Knechtel: He's worried about the redundancy of two loops (hidden in the list comprehensions). He realizes he can code a single loop explicitly to remove the need to loop twice. (At least, that's how I interpret his question. He could be concerned with just repetition, but I many Python questions on StackOverflow boil down to "how can I optimize this?") –  Steven Rumbalski Dec 27 '10 at 16:23
    
This is exactly what I changed the code to after learning about sum in the first reply. And yes, I wanted to reduce two loops to one, but the solutions given so far made me consider otherwise. –  pdknsk Dec 27 '10 at 16:38
sum_review, sum_rating = reduce(lambda a,b: (a[0] + b[0], a[1]+b[1]), ((book['rw'], book['rg']) for book in books), (0,0) )
items = len(books)
avg_review = sum_review/items
avg_rating = sum_rating/items

(tested)

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How can I solve this redundancy

By making a function, of course:

def average_value(items, key):
  values = [x[key] for x in items]
  return sum(items) / len(items)

avg_review, avg_rating = average_value(books, 'rw'), average_value(books, 'rg')
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I you really want a one-liner for that, then this could do the job (untested):

sum_review, sum_rating = [reduce(add, [book[t] for book in books] for t in ('rw', 'rg')]

However, the readability is questionable...

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