# Tag Info

27

In the context of a for statement, the in is just part of the grammar that makes up that compound statement, and so it is distinct from the operator in. The Python grammar specification defines a for statement like this: for_stmt ::= "for" target_list "in" expression_list ":" suite ["else" ":" suite] The point to make is that this ...

17

The word in in a for loop is part of a statement. Statements have no precedence. in the operator, on the other hand, is always going to be part of an expression. Precedence governs the relative priority between operators in expressions. In statements then, look for the expression parts in their documented grammar. For the for statement, the grammar is: ...

12

You can use zip_longest >>> from itertools import zip_longest >>> a = [1,1] >>> b = [2] >>> c = [3,3,3] >>> f,g,h=[[e for e in li if e is not None] for li in zip_longest(a,b,c)] >>> f [1, 2, 3] >>> g [1, 3] >>> h [3] If None is a potential valid value in the lists, use a sentinel ...

11

YOU SHOULD NORMALLY NOT DO THIS! Changing the Iterable you are looping over is not good! Explanation: As you can see l.pop() always takes the last item of l g.append() now adds the popped item to the end of g After 4 runs l doesnt have any items left. First Run: i = v l = [1,2,3,4,5,6,7] g = [8] Second Run: i = v l = [1,2,3,4,5,6] g = [8,7] Third ...

11

Wolfram Alpha is computing the modular inverse. That is, it's finding the integer x such that exp*x == 1 mod (p - 1)*(q - 1) This is not the same as the modulo operator %. Here, Python is simply calculating the remainder when 1/exp is divided by (p - 1)*(q - 1) when given the expression in your question. Copying the Python code from this answer, you can ...

11

In your example there are 40 other words which have exactly one context in common with the word 'monstrous'. In the similar function a Counter object is used to count the words with similar contexts and then the most common ones (default 20) are printed. Since all 40 have the same frequency the order can differ. From the doc of Counter.most_common: ...

10

Try with def which_switch(self): switch_on_list = [] for i in range(0, len(self.switches) - 1): if(self.switches[i]._state == True): switch_on_list.append(i) return switch_on_list But indeed, you should add a getter to your LightSwitch, and use this getter, because access an underscored variable is not very clean... For ...

9

You are comparing a tuple (True, True, True) against a list [True, True, True] Of course they're different. Try casting your list to tuple on-the-go, to compare: temp1 = [] for boolean in aggregate: temp1.append(boolean) if len(temp1) == len(propositions): break print temp1 print states[0] if tuple(temp1) == states[0]: print 'True' else: ...

9

Partition the box into a set of sub-boxes. Among the valid sub-boxes, choose which one to place your point in with probability proportional to their areas Pick a random point uniformly at random from within the chosen sub-box. This will generate samples from the uniform probability distribution on the valid region, based on the chain rule of ...

8

Use a list comprehension with a conditional >>> mydict = {'george':[1,2,3],'amber':[18,19]} >>> [i for i in mydict if 19 in mydict[i]] ['amber'] Here you get a list of all the keys that has in its value a list with the item 19. If you want only the first element you can use [i for i in mydict if 19 in mydict[i]][0] Another innovative ...

8

You can create a datetime for one week ago, then filter all jobs after that. from datetime import datetime, timedelta one_week_ago = datetime.today() - timedelta(days=7) jobs = Job.objects.filter(report_by_date__gte=one_week_ago)

8

The difference is that the result of slicing a list is a list x = [1, 2, 3] print(x[-1]) # --> 3 print(x[-1:]) # --> [3] The second case just happens to be a list of one element, but it's still a list. Note however that Python doesn't have a char type distinct from the str type and this means that both element access and slicing on str objects ...

8

BeautifulSoup parser is the way to go. >>> from bs4 import BeautifulSoup >>> s = '''<div> My profile <img width='300' height='300' src='http://domain.com/profile.jpg'> </div>''' >>> soup = BeautifulSoup(s, 'html.parser') >>> img = soup.select('img') >>> [i['src'] for i in img if i['src']] ...

8

I would use regex and operator. from operator import lt, gt import re operators = { ">": gt, "<": lt, } string = ">60" x = 3 op, n = re.findall(r'([><])(\d+)', string)[0] print(operators[op](x, int(n))) Depending on your string, the regex can be modified.

8

I'd use itertools.groupby to make a list of consecutive tuples containing positive/negative lists first, and then group into consecutive pairs. This can still be done in one pass through the list by taking advantage of generators: from itertools import groupby, zip_longest x = (list(v) for k,v in groupby(data, lambda x: x < 0)) l = list(zip_longest(x, ...

8

On my Linux system (Ubuntu 12.04) this works fine: cut -f 9- -d " " tmp.tmp >newfile.out -f 9- specifies fields 9 onwards; -d " " specifies space-delimited. My guess would be that this is pretty fast (since cut is a tool exactly for this purpose). It could probably be done in a couple of lines of Python but might be a little bit slower(?); doing it in ...

8

Use the dict constructor: In [1]: lst = [['hate', '10'], ['would', '5'], ['hello', '10'], ['pigeon', '1'], ['adore', '10']] In [2]: dict(lst) Out[2]: {'adore': '10', 'hate': '10', 'hello': '10', 'pigeon': '1', 'would': '5'} Note that from your edit it seems you need the values to be integers rather than strings (e.g. '10'), in which case you can cast ...

8

When you export a variable from the shell, what you are really doing is adding it to the POSIX "environment" array that all child processes inherit. But the POSIX environment is a flat array of name=value strings; it cannot itself contain arrays. So Bash doesn't even attempt to put arrays there. It will let you export an array variable, and doing so even ...

8

You can use dictionary comprehension and try something like this: Python-2.7+ or Python-3.x >>> a = [{u'Key': 'color', u'Value': 'red'}, {u'Key': 'size', u'Value': 'large'}] >>> b = {i['Key']:i['Value'] for i in a} >>> b {'color': 'red', 'size': 'large'} Python-2.6 b = dict((i['Key'], i['Value']) for i in a)

8

Use collections.Counter and map: >>> from collections import Counter >>> Counter(map(len, lis)) Counter({2: 3, 4: 3, 1: 1})

8

You can iterate instnace attributes using vars, dir, ...: >>> def auto_str(cls): ... def __str__(self): ... return '%s(%s)' % ( ... type(self).__name__, ... ', '.join('%s=%s' % item for item in vars(self).items()) ... ) ... cls.__str__ = __str__ ... return cls ... >>> @auto_str ... class ...

7

First of all, I believe the problem you're encountering is because you're normalizing your probabilities incorrectly. This line is incorrect: a = np.exp(l) / scipy.misc.logsumexp(l) You're dividing a probability by a log probability, which makes no sense. Instead you probably want a = np.exp(l - scipy.misc.logsumexp(l)) If you do that, you find a = ...

7

Your zip function implementation is recursive. At some point l1[1:] or l2[1:] will become empty, and attempts to access the first element will fail with IndexError. Check if both l1 and l2 are nonempty and return empty list if they are: def zip(l1, l2): if not (l1 and l2): return [] return [(l1[0], l2[0])] + zip(l1[1:], l2[1:]) Or you ...

7

It happens to work because '\d' doesn't correspond to a special character like '\n' or '\t' do. Sometimes a raw string turns out the same as the regular string version. Generally, though, raw strings will ensure that you don't get any surprises in your expression.

7

Since your dict is composed of both strings and lists of strings, you first need to flatten those elements to a common type of string: import collections d = {"a":["MRS","VAL"],"b":"PRS","c":"MRS","d":"NTS"} def flatten(l): for el in l: if isinstance(el, collections.Iterable) and not isinstance(el, basestring): for sub in ...

7

Make a new list which contains the first two lists. z = [x, y] This will make each element of z a reference to the original list. If you don't want that to happen you can do the following. from copy import copy z = [] z.append(copy(x)) z.append(copy(y)) print z

7

with open('ProjectEuler11Data.txt') as numbers: data = numbers.readlines() lines = [line.split() for line in data] I am not sure why you need different variable names for each line when you can have an array with all lines at the end. You can now simply access the individual lines by line[0], line[1] and so on.

7

if you replace %r with %s it should get rid of it. %r shows the representation of the object which should reprsent a value that can be copied and pasted in the python shell to reproduce the object. %s will show the value of the object cast to a string. As described in the docs https://docs.python.org/2/library/stdtypes.html#string-formatting and repr ...

7

You could map the lists to tuples so they can be used as keys and use a Counter dict to do the counting: from collections import Counter count = Counter(map(tuple, d.values()))

7

It's quite easy to vectorize what you're doing: import numpy as np #generate dummy data nrows=6 ncols=11 nframes=3 threshold=0.3 data=np.random.rand(nrows,ncols,nframes) CM_tilde = np.mean(data, axis=1) N = data.shape[1] all_CMs2 = np.mean(np.where(data < (CM_tilde[:,None,:]+threshold),data,CM_tilde[:,None,:]),axis=1) data_cm2 = data - ...

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