@wim on a Mac, obviously, neither. My Homebrew Python 3.7 installed /usr/local/bin/python3.7 and /usr/local/bin/python3.7m which are both symlinks into ../Cellar/python/3.7.7/bin which in turn further symlinks into ../Frameworks/Python.framework/Versions/3.7/bin where python3.7 and python3.7m are not the same inode, but identical files
never heard; the poor grammar on pypi.org/project/webbot raises some doubts about its author's abilities though of course this is purely circumstantial
@wim my memory is hazy on the specifics ... en.wikipedia.org/wiki/Talk:Hard_link talks about hardlinks to directories specifically but that's a pretty special case, and (by itself) an inherent part of the file system design
hmm, what that answer calls a pitfall I call a feature (and the expected behaviour)
one nice use-case for hardlinks that uses that pitfall/feature is safer bulk renaming
it's better than mv because you still have the original fnames there in case you accidentally screwed up the target names. and it's better than cp + rm because so much faster (and you don't need the extra disk space).
@Kevin here it is (from the yesterday's discussion about floats and float('nan')
from dataclasses import field
@staticmethod
def float_field(field_name: Optional[str] = None, **config_options: Any) -> float:
if field_name:
config_options["field_name"] = field_name
if "decoder" not in config_options:
config_options["decoder"] = Codecs.float_decoder
return field(default=float("nan"), metadata=config(**config_options))
mypy will say Returning Any from function declared to return "float"
but if you inspect the signature of the field, it says
# NOTE: Actual return type is 'Field[_T]', but we want to help type checkers
# to understand the magic that happens at runtime.
@overload # `default` and `default_factory` are optional and mutually exclusive.
def field(*, default: _T,
init: bool = ..., repr: bool = ..., hash: Optional[bool] = ..., compare: bool = ...,
metadata: Optional[Mapping[str, Any]] = ...) -> _T: ...
> If the default value of a field is specified by a call to field(), then the class attribute for this field will be replaced by the specified default value.
If you have a dataclass with a field and that field has a default value, then the field is replaced by the default value. But that doesn't mean fieldreturns the default value. That happens in the @dataclass decorator
@dataclass
class Foo:
x: int = field(default=3)
print(Foo.x) # output: 3
@Naz Type checkers don't understand the distinction between attributes and slots/fields. Such constructs are either faked (claiming a Field[T] is a T) or handled via special cases /plugins (e.g. for property)
As far as I can tell, it's a problem with Python's annotation specification. It includes certain shortcuts that make these distinctions ambiguous.
It can't be "it". You need to be clear on what you're asking.
Do you have code that currently plots a graph but has broken axis labels? Or is it a case that it just doesn't plot anything? I already asked what the other 2 variables are, which you haven't answered. I don't think I've actually seen a 3D time series but I could be easily mistaken on that
peak_total_kms, lean_total_kms,odo_as_of_month_end
0 0 NA
0 0 NA
0 0 NA
0 0 NA
0 0 NA
0 0 NA
0 0 NA
1749 940 NA
1995 769 NA
747 718 NA
111 115 NA
2282 1162 NA
1611 1738 20648
1536 2610 NA
1821 1845 NA
603 868 31356
i have 3 columns here, i want to create a 4th column which says scaling factor. Means if the value in the third column is not null then i want to add the first two columns till that row where 3rd column value is not null and create a 4th column which is 3rd column value divided by sum of 1st and 2nd columns till that row
can anyone help with python script for this?
example i want is 20648/(1749+940+1995+769.....till the 20648 row values)
@unknown14 it's borked when I try recreate that DF. Can you post as df.to_json() or something so that we don't have to faff with getting the column names to work locally, please?
@unknown14 it was my fault for asking for to_json but longer code snippets should be hosted off-site generally and linked to the room. But again, that was my fault for asking, sorry
yes i mean i just want 4th column populated with 3rd column non null value divided by sum of all the values in 1st and 2nd column till that row number of 3rd column @roganjosh
peak_total_kms lean_total_kms odo_as_of_month_end scaling 0 0 NA 0 0 0 NA 0 0 0 NA 0 0 0 NA 0 0 0 NA 0 0 0 NA 0 0 0 NA 0 1749 940 NA 0 1995 769 NA 0 747 718 NA 0 111 115 NA 0 2282 1162 NA 0 1611 1738 20648 1.481524001
@JonClements@roganjosh, this is how my output should look
@roganjosh ok got it. Also one more thing, can i append 1.48 everywhere above wherever we see NAN. likewise 3.37 between 1.48 and 3.37 wherever i have NANs
I did one more approach. Did this:- df['Total_kms'] = df['peak_total_kms'] + df['lean_total_kms'] df['CUMSUM'] = df['Total_kms'].cumsum() df['scaling'] = df['odo_as_of_month_end']/df['CUMSUM']
@roganjosh
now i am trying to append the 1.48 in NAs above it and average of 1.48 and 3.37 in between for NAs
Was wondering if a starting point is: df['scaling'] = df['odo_as_of_month_end'].cumsum()/ df[['peak_total_kms', 'lean_total_kms']].sum(1).cumsum()... but I'm still not clear...
@unknown14 do you understand how my code actually works? I already backfilled in the code you're using. I think it would be better that you answer that one yourself rather than cargo-culting the whole thing
@unknown14 I'm trying to follow your discussion but it's too long, there are screenshots of code, and sounds hard to repro. Can you please post this as a question? Include the code that declares the MCVE dataframe. roganjosh can post his answer and we can take it from there.
@roganjosh: it sounds interesting, but when code, date MCVE and discussions go on for that long, its' best to drive it to a question. Easier for me to pick up the MCVE all in one place. And you get to post your answer. Better for reuse, also. I'll see if I can polish your code.
@roganjosh Your code has quirky idioms, like what is df['groups'] = pd.factorize(df['odo_as_of_month_end'])[0] supposed to do? Instead of a groupby or what?
@smci below is my code which also helped me give answer df['Total_kms'] = df['peak_total_kms'] + df['lean_total_kms'] df['CUMSUM'] = df['Total_kms'].cumsum() df['scaling'] = df['odo_as_of_month_end']/df['CUMSUM'] df['sacling'] = df.scaling.interpolate()
@unknown14 I can't follow you guys' discussion, no MCVE, details scattered in comments... will you please post it as a question on SO with an MCVE code and data, already? (no screenshots)
And I had enough to go on to put forth an answer. You mentioned screenshots, smci - I'm the only person that posted a screenshot in this, after answering
perhaps there is an issue with Pandas versions but I think that was just a miscommunication
@roganjosh I completely can't follow that without seeing an MCVE. And if there does turn out to be an issue with pandas, even more reason to post it as a question. Then people can link to/from the pandas github if one is eventually created. Or other people can help figure out the syptoms (pandas minor version number 1.0.3 v 1.0.2 v 1.0.1? package dependencies? etc.) Anyway all I'm saying is when a Q&A interaction gets beyond the coherence point, best taken to an actual question. Better for reuse
@smci maybe they should post as a question on main. They can copy/paste my approach over and I'll be happy to see how it can be improved. But I don't think it needs revisiting in chat; I think there's enough info for someone to improve on my approach if they know it, without starting from asking the OP for details from scratch
@roganjosh and unknown14, here's how to read in pandas data in the format you showed: comma-separated header, but space-separated data rows. And without the huge flabby waste of space and newlines that is json. One column per row will not work when you have tons of columns. Here's the code to read in:
import pandas as pd
from io import StringIO # don't use pd.compat.StringIO anymore, it's deprecated
dat = """peak_total_kms, lean_total_kms,odo_as_of_month_end
0 0 NA
0 0 NA
0 0 NA
0 0 NA
0 0 NA
0 0 NA
0 0 NA
1749 940 NA
1995 769 NA
747 718 NA
111 115 NA
2282 1162 NA
1611 1738 20648
1536 2610 NA
1821 1845 NA
603 868 31356
"""
# You have mixed separators: commmas on the headers, but space-separated everywhere else
@smci just a copy to unknown14's message to the clipboard and doing df = pd.read_clipboard(sep=r'[\s,]+') is also sufficient without the extra stuff there
@roganjosh But that's very convoluted code like I said, very hard to read. You're hacking around the pd.factorize()na_sentinel value. Are you aware that df['odo_as_of_month_end'].isna() and df['odo_as_of_month_end'].unique() exist and do what you need?
@JonClements Ok that's even better. (except the corner case where the data rows were to have commas inside a single column, which mercifully this doesn't). Oh and engine='python' is slower performance, not that that matters here.
@smci I think he's aware of that... in fact, there's been over solutions offered as starting points including mine that just needed a quick backfill to then correct columns after... everyone seems happy :)
ahh poop... you know when you create a copy of something so you can copy and paste stuff from it, then change one of 'em, but get confused so you copy and paste a bit from the copy back over the original instead of the other way around... I might have just done that and broken something... facepalms
@JonClements It's hard for the rest of us afterwards to wade through it, when I type rj's first solution, the line df['totals'] = df.groupby('groups') errors out with ValueError: Length of values does not match length of index. Just suggestion for next time. I hear you
@smci understand that, but it's just been for now a back and fro chat - if you'd have joined the room a day/two later you'd never had known to want to do that... if you want to work on making it a great Q&A that isn't already covered with various other techniques (eg: not a dupe - as it does remind me of something) - then please feel free. For now though, everyone's moved on to other bits
arghghg... yep I definitely broke something somewhere along the line... bbiab before I get moaned at :p
@JonClements Right. I was giving roganjosh some advice to avoid the hack around pd.factorize() returning a 2D array where the first column is na_sentinel value. Thats what df['odo_as_of_month_end'].isna() is for. And df[df['odo_as_of_month_end'].notna()] ['odo_as_of_month_end'] or whatever to get the non-NA values. (shouldn't use `unique(), there could be duplicate values)
@roganjosh Ok I'll do it. Why did you only assign df.loc[df['groups'] == 0, 'groups'] = np.nan and not df['groups'] == 1, or everywhere df['odo_as_of_month_end'].notna() ?
@roganjosh Because in the original input, odo_as_of_month_end was everywhere NA except for the rows with values 20648.0, 31356.0. But you only set 'groups' to nan for the first row, not the second, why?
I don't think he wants the cartesian product exactly, because the cartesian product produces tuples where elements can appear in any order. The if a <= b <= c <= d <= e conditional in the question indicate that he wants the elements in ascending order
And a half-wag at the accepted answer for providing code that doesn't produce exactly the same output as the code in the question (although it can still be used as a basis for doing so)
OP doesn't want a list of tuples of integers representing the results of rolling 3 d4s, OP wants a list of lists of strings representing the results of rolling N d6s, for each N from 1 through 5 inclusive
@roganjosh Ok right, pd.factorize(...)[0] is just an obfuscated way of saying df['odo_as_of_month_end'].notna(). But here's a neat way to partition the df into groups according as the third column isn't NA: df['odo_as_of_month_end'].notna().shift(1).cumsum()
@Kevin thanks for reworking the question. The somewhat vague relation between question and answer is not affected by your changes. And maybe there is a better place for other answers now :)
@roganjosh Just I couldn't recognize your idiom to create groups and partition according as third column is NA. So that we can then do aggregation. Sometimes .apply() is the right tool for the job, it's not to be avoided.
If I run object detection it gets completed correctly without returning False at the end of the video, however in my flask app everytime the video ends it throws an exception which means there are no frames whereas it shouldn't because the base obj detection tensorflow code is same : here is the apstebin : pastebin.com/kByf7Wnt
Note the use of df.groupby(..., group_keys=False) so the result of the grouped_df.apply preserves the row-index of the original df, so we can directly assign it back into df['scaling'].
I couldn't find a good way of doing the bfill all in one go, then this would only need three lines. Anyway this is good enough.
@roganjosh ^ Actually, thanks, you reminded me how to do df.groupby(..., group_keys=False) so the result preserves the row-index of the original df, and can be directly assigned back. That's not at all obvious from the doc, or questions with highly-voted obsolete answers like this
@unknown14: yes please do post and self-answer the question on SO, it was useful and interesting, and a a reusable resource, we each have solutions we can post.
I just saw that [wxpython] and [wxpython-phoenix] are defined the same namely as "a Python wrapper for the cross-platform C++ GUI API wxWidgets", I tried to find a differentiation in the tag wiki but only one of them is defined. Wouldn't it be good to show the difference in the tag info or are they (meanwhile) synonyms to each other?
i am banned from asking questions but i do not understand why. the ban happend after my last question, but it got positives upvotes? what can i do and where?
sorry if this is the wrong place i mainly asked python questions
it just says You have reached your question limit and the help side just say i should improve my question. but i dont know how if they already have upvotes. in the history i dont see that i have deleted a question, so probably i don't :(
@user3680510 "question limit" sounds like a rate limit, not question ban. Question ban is "we are no longer accepting questions from this account" or at least it used to be
I already asked for the distinguishing feature between [wxpython] and [wxpython-phoenix], I tried to find out myself by reading some of the questions and looking up some wxPython pages. To me it seems that [wxpython-phoenix] addresses the new version wxPython 4, do you agree with this conclusion?
@Wolf it would seem so. A rewrite of wxpython from scratch, but ultimately just a new version. In my experience we don't keep track of library versions, see e.g. django, pandas, numpy. With this reasoning the tags should be synonyms. But I don't use or know wxpython.