I have a question. Some of my colleagues are obsessed about typing and started to add annotation to old code. The question is could adding type annotations theoretically slow down execution? (yes, it's already slow cause it's python, but)
FWIW, if you are worried about performance then use from __future__ import annotations.
With it annotations are only parsed, not evaluated. Since Python caches that result across runs, it means even the tiny cost is only paid the first time a file is imported.
Being worried about performance and using python is a weird combination :D I was just seeking arguments to stop them (colleagues) annotate whole project and do something useful instead.
Hi all, what's considered the standard design pattern for storing instance state, undoing? (if this is pickleable, so much the better). I have a (Wordle solver) class with 5 state variables (1 string, 1 list, 1 dict, 2 pandas dataframes). It has 3 methods that modify state (filter pandas dataframe of candidate words). I searched but didn't find a decent solution.
@Kevin @rb3652 Was that a programming problem, or a math problem? (Assuming the former, cos if the latter, I doubt they let you use linalg solver). What were the expressions you used as an upper-bound on the terms y_1, ..., y_4?
...like do you consider the square of each of those distances y_i? but how to make sure they're underestimates
Hi All, Is there a better way to write the below code s = pd.Series([1,1,2,3,3]) for i ,j in s.iteritems(): try: if s[i+1] == j: s[i] = 'X' else: s[i] = 'O' except: s[i] = 'O'
basically I am trying to assign for the last element of the group. Meaning in the series mentioned the expected o/p is : [X,O,O,X,O]
s.diff() == 0 gets you close but you would have to move the first False to the last position. What numpy.roll would do, except for Series, and I can't seem to find a pandas implementation for that. So perhaps a different approach is better.
import pandas as pd
import numpy as np
s = pd.Series([1,1,2,3,3])
comparison = s.shift(-1) == s # is next item equal to current item
result = np.where(comparison, "X", "O") #apologies to those who hate np.where, feel free to use something else :P
When I am trying to run my code, I am getting the error saying connection refused. So, I tried rotating the user agent and the method has some errors.
I have tried various methods to get requests by rotating user-agents. This is the following program.
def parse(self, response):
l...
@ShruthiRavishankar If they are blocking you, that's a good sign that you aren't meant to roast their servers by scraping in such a volume. Apparently, they have an API as well.
@Aran-Fey yes, it's working. You will be blocked anyway if you're planning to spam website with mad amount of requests, but if your task is to scrape some data switching user-agent (and some other HTTP headers) is a working method.
Each line has varying spaces, so not sure how to capture that in Python. So there is no predefined structure for the file. Any hint what to do in this scenario please? Can Python work this out?
What you should do is put more lines of this into a pastebin or something. Then when you give us a link, also include how it should end up. That way, we aren't guessing what you want.
@AndrasDeak--СлаваУкраїні. I should have elaborated more. Sorry for that.
@MisterMiyagi. I don't see why the following test failed requirement that, "any DoS time that is within 100ms of the verified time an accurate result" 2021-02-09 13:11:20.981 2021-02-09 13:11:20.982 2021-02-09 13:11:20.989
But the following passes: 2021-02-09 13:11:21.082 2021-02-09 13:11:21.082 2021-02-09 13:11:21.090
So I am not sure if this will help me to solve the issue or not but I will try.
As @MisterMiyagi also said, time is usually or infact mostly a fixed length string which I guess you already know so just open the log.txt file using with open and go by each line and slice every line for upto that number which holds the timestamp value in every line and use that at your discretion. datetime.datetime will also let you convert timestamps to whatever value you want. But something tells me you might have already tried this full approach.
@Avv Which is kind of correct, however I was talking about parsing the timestamp from your text file rather than what you do with time which is what you are asking I guess?
Is there any way we can "Defend" the opening of a question? In particular this one: https://stackoverflow.com/questions/62429677/how-to-use-str-replace-to-replace-multiple-pairs-at-once/62429824#62429824
Because both answers flagged as duplicates do not suffice, since the first one is for python, and OP asks about pandas (where the function replace does work for multiple pairs) and the second answer that could answer it, also doesn't fully address OP's issue
@CeliusStingher there's no "answers flagged as duplicates". The dupe targets are questions. The pandas dupe target has 6 answers. Is the second top voted one not exactly what your answer does?