I'm a bit confused: I know that dictionary.items() was originally created a list of key-value pairs, and that dictionary.iteritems() was created an iterator generator. And I also know that in Python 3 items is also producing a generator.. But in Python 2.7? I timeit them, and they are pretty much the same..
Join calculates the length and then it adds the items, so ''.join() on a list is essentially 2 times faster than on a generator. Once you already have the list/generators.
But of course, creating the list is also something you need to think about.
But all things being equal, ''.join() is faster on lists.
I guess you could write a join that doesn't precalculate the resulting string length, and instead just iteratively appends to an initially empty string. That would make generators as fast as lists. But I suspect both would be slower than the implementation we have now.
Do you mean, "is [the hypothetical join I mentioned that iterately appends] slower [than the real python 3 implementation]?", or "is [join for generators in python 3] slower [than join for lists in python 3]?"?
Ok, but would that change the implementation of join? You're still allocating X bytes worth of whatever the data structure for strings is, and then populating it.
I was just messing around when I came across this quirk. And I wanted to make sure I am not crazy.
The following code (works in 2.x and 3.x):
from timeit import timeit
print ('gen: %s' % timeit('"-".join(str(n) for n in range(1000))', number=10000))
print ('list: %s' % timeit('"-".join([str(n) ...
I was just messing around when I came across this quirk. And I wanted to make sure I am not crazy.
The following code (works in 2.x and 3.x):
from timeit import timeit
print ('gen: %s' % timeit('"-".join(str(n) for n in range(1000))', number=10000))
print ('list: %s' % timeit('"-".join([str(n) ...
Some of the Tags on StackOverflow have little icons near them. What about the Python tag?
I really don't have much else to add to this post, it seems pretty summed up in that first sentence, but here is a short motivational speech on the matter:
Not all tags need an icon, I understand that. Som...
hi im trying to get the collision detection working. I think it has something to do with line 107
import pygame, sys, math, socket, pickle
class Shot(object):
def __init__(self, x, y, angle):
self.x = x
self.y = y
self.angle = angle
class Ship(object):
def __ini...
Hi, got a really weird question that not sure if it's entirely fit for the QA format. Basically, I'm doing some comparisons on A* algorithms of different sizes (working on my thesis, this isn't a hw q). So I have a line of code that goes 'for size in [10,20,30,etc]: astar(problem(size))'.
The really weird part is, I'm getting certain results (iteration-runtimes) when I have certain numbers in SIZE list, and different numbers when it's not. Meaning, the addition of a number to that list is affecting the results from other ones... Anyone have thoughts on fixing that? I'm stumped.
Definitely some nondeterminism going on here, I get 330 options cost: 123 loops: 845 running it once, and then later I get 330 options cost: 126 loops: 736
Interestingly, this has behavior which varies among executions:
for SIZE in [330]:
themap = Map(SIZE)
for cls, tag in [(NormalAgent, 'nooptions'),
(OptionAgent, 'options')]:
agent = cls()
path, i = astar(agent, themap, (0,0), SIZE)
print SIZE,tag, 'cost:', path.accumulated,'loops:', i
But this one has behavior which remains the same among executions:
SIZE = 330
themap = Map(SIZE)
for cls, tag in [(NormalAgent, 'nooptions'),
(OptionAgent, 'options')]:
agent = cls()
path, i = astar(agent, themap, (0,0), SIZE)
print SIZE,tag, 'cost:', path.accumulated,'loops:', i
heappop takes the smallest cost-path tuple from the priority queue. If more than one tuple are tied for the smallest cost, then heappop chooses the one with the smallest path. Without any __gt__, __lt__, etc, operators, the "smallest" path is the one with the lowest id.
> Use of the word "Python" in the names of user groups and conferences that are free to join or attend (Ex., "Dallas Python Users Group") -- Allowed if for the Python programming language. Other uses require permission.
> Derived logos must always be sufficiently different from the Python logos to allow the community to tell the difference. For example, if you want to create a derived logo for a local Python user group, you might be able to insert an unaltered Python logo graphic into the local group's name in a way that does not cause confusion.
> But confusingly similar derived logos are not allowed. This includes entwining Python logos with other logos, or connecting them together in a confusing manner. Logos that simply change the colors or fonts are not allowed.
> Use of derived logos for user groups and conferences -- Allowed if used to refer to the Python programming language. Commercial user groups and for-profit conferences require permission from the PSF.
Ask the PSF for explicit permission; it may be that it is indeed insufficiently different.
It asks you to do so explicitly, actually:
> We recommend contacting the PSF for permission for all derived logos to avoid placing a confusing logo into wide-spread use. Contacting us is not a requirement for the specific non-commercial uses listed above, or when using freely distributable derived logos that have already been approved by the PSF. However, obtaining permission from the PSF is required in all other uses of a derived logo.
The Boston Python user group is actually quite prominent.
And I am pretty certain that several east-coast Pythonistas I know (Barry Warsaw, Jeremy Hylton, Tres Seaver) will have been at Python Boston events; if that logo is allowed, so is sopython.