I was told to refer the "Zen of Python", and There should be one-- and preferably only one --obvious way to do it. makes me ask the question, Why are open() and close methods on file present if one can use the with statement?
@AndrasDeak That's not what I said, and I'm not talking about python. It was a stupid templating language. if x or y worked exactly as you'd expect, but z = x or y always set z to true.
@python_learner because with is simpler many times but not all times. When I build parsers or programs which need to perform async file operations: open and close within methods sometimes makes more sense than with (because there might be a long list of complex operations I will perform between opening the file and then appending to it or just closing it). Other times, using a with that just calls the functions within its block makes more sense.
The Zen of Python is a great guide but its just a guide - its never going to fit all situations perfectly
@python_learner The with statement was introduced in Python 2.5. You still need to call the open method explicitly when you open a file in a with statement. But the context manager calls the file object's close method implicitly when you exit the with block. It couldn't call that method if it didn't exist. ;) Note that the Zen of Python says "Explicit is better than implicit", OTOH, it also says that "Practicality beats purity". :)
@python_learner Note that having one obvious way does not preclude having other, non-obvious ways. If you want to scope a file to a block, the obvious way is with (since it represents a block). If you want to explicitly manage a file, the obvious way is close (since it is called explicitly).
Phew, took a while but I was finally able to organize my pandas canonicals. I used the same topic arrangement as in the user manual, fits pretty good. Hopefully it becomes more useful as a resource/dupe target locator. cc @smci
If there's interest we should make a larger list of stack overflow dupe targets (not just ones written by me) organized in the same way, I'm sure it'd be super useful for closing dupes faster
Which protocols can be implemented with more than one dundermethod? I can think of 3, am I missing any? 1) bool: __bool__ or __len__ 2) iter: __iter__ or __getitem__ 3) !=: __ne__ or __eq__
Hi guys, is there any tutorials that show how to limit panda pivot table output. right now when i index a catagory column, its showing multiple value columns when i only want 1
output has that as index, with multiple other cols (value columns )
basically, i am trying to do a basic value count in a pivot table at this time, i am trying to replicate this. df['col1'].value_counts(), but using Pivot_table
@msulol if you only want the frequency of values for a single column - that's what value_counts() is for... I'm still not sure what you're trying to do here... if you don't want grouping then don't use pivot or gorupby
hi, i was hoping to get other colums of data added in as well but wanted the primary count of the original index. also anothr goal of mines is to slice the pivot table data (filter by date ranges), so i thought Pivot_table was best approach for output on excelsheet
@msulol you're going to have to come up with a [mcve] to clarify exactly what you're after... There's also a useful post on the site explaining how to ask good pandas related questions - it'd be worth having a look at: stackoverflow.com/questions/20109391/…
@MisterMiyagi meh... that's not a mod editable page - so you'd have to post on it MSO and I can slap a status-review tag on it to push it into the staff's tracker thingy...
There is an answer to this question, and was able to answer it within minutes. The title might be slightly unspecific but overall the task was clear, and I was able to provide a good answer.
@cs95 all means "there's no element to the contrary". Any means "there is an element that qualifies". If there are no elements the former is true, the latter is not
you can also rationalise these inductively. Starting with some container, removing those elements which does not decide the outcome obviously does not change the outcome. E.g. removing a True from all([..., True, True]) -> all([..., True]).
That means all([True, True]) -> all([True]) -> all([]) must have the same result.
@AndrasDeak Wow that's really cool. I was wondering, what the two bright start next to the moon were. I wish I had a telescope. One day I'm gonna get one :)