Or, hmm, what's the general recommendation for unit testing something that doesn't necessarily have deterministic behavior? For instance, how do you verify the behavior of roll_six_sided_die()?
Even simple properties like "always returns an integer larger than zero and smaller than seven" is hard to test conclusively if you just test it in a loop a hundred times but it returns 7 on the 101th call
from hypothesis import given
import hypothesis.strategies as st
@given(st.integers(), st.integers())
def test_ints_are_commutative(x, y):
assert x + y == y + x
And in Hypothesis, if there's a generated input that fails, by default it saves that input so it remembers to try it later
A really intelligent analysis might even be able to tell you that return randomInteger() % 6 returns 0 through 5 with even distribution, assuming that randomInteger() has even distribution*
There's languages that have "dependent typing", Idris is an example of one. it's basically haskell with that added in. However, funnily enough, the easiest one to try is probably... perl6
(*bad example because in the vast majority of system architectures, the total number of values representable as integers is not divisible by six, so %6 would have a slight bias in favor of lower numbers)
A bulletproof analysis engine that works in all cases can't exist, of course, since that would solve the halting problem. You could solve the collatz conjecture by asking the engine "what are all the possible return values of find_first_number_larger_than_ten_whose_hailstone_sequence_loops_forever?"
the halting problem always reminds me of stealth war games (mostly Commandos) where the enemy says HALT! in German, which makes me want to have an "alarming problem" too
(Bad example because a bulletproof analysis engine might return "that function never returns any value, ever" but it doesn't say anything about the truth of the collatz conjecture because there still might be a number whose hailstone sequence trends upwards forever without ever repeating)
FWIW, I spoke with some CPython core developers at PyCon and found out the real reason why the dict ordering thing was not documented/guaranteed in Python 3.6.
They all wanted it that way, except for one core dev, who wanted the opposite. i.e. for dict keys to be intentionally shuffled.
Of course that is an insane idea (makes the dict less useful, and slower, for what benefit exactly?) but they decided to make the ordering just an "implementation detail" so as not to disregard the contrary opinion entirely.
I edited the post into shape to cut out fluff and try to get at the heart of what I thought the OP was actually asking about, do you think the edit was too gratuitous?
Introducing randomness isn't always an automatic loss in speed. Quicksort gets faster if you pick a pivot at random instead of just using the leftmost element :-)
Major Python releases are like the transition of epochs in the Mayan calendar that periodically predictably cause societal upheaval and/or natural disasters*
(*If, in fact, the Mayans believed this, and wasn't just something that anthropologists and/or doomsday cults made up for fun)
The ordering is so incredibly useful in ordinary Python code. If there exists some possible optimization that would lose the ordering guarantee, I would rather they create a new class for that like collections.SpeedyDict
> "for the ancient Maya, it was a huge celebration to make it to the end of a whole cycle". She considers the portrayal of December 2012 as a doomsday or cosmic-shift event to be "a complete fabrication and a chance for a lot of people to cash in"
Ok, so it counts as societal upheaval only if you also count football riots as societal upheaval
A lot of cars get overturned but everyone goes to work the next day
I think the ordering is useful for metaprogramming, and anything else you should be explicit about-- but whatever is more performant should be the default
Heck, arguments about "What if functions don't need the ordering and what to opt-out for perf reasons" are valid
I just disagree that ordering as an implicit guarantee is a point for usability. I only know of one other language that works that way, and it's PHP :o
Re: easy/performant, the other day I pondered whether making in-place-add a mutable operation was worth the surprise that newbies get when they discover this little oddity:
>>> def f(seq):
... seq += [23]
...
>>> def g(seq):
... seq = seq + [42]
...
>>> a = [1]
>>> b = [2]
>>> f(a)
>>> g(b)
>>> a
[1, 23]
>>> b
[2]
Being able to turn += into .extend behind the scenes is more performant than concatenating up a whole new list object, but it violates a pretty reasonable assumption about how assignment-like statements work
collections.Counter is even worse. In a point release, they changed the implementation from returning a new counter, to modifying the existing counter. Or vice-versa, I forget.
right, it was between 3.2 and 3.3. new counter created in 3.2 and changed to augmented assignment in place in 3.3.
the thing is, there was no way to "deprecate" it. because in Python2 (and Python <3.3) the Counter.__iadd__ simply didn't exist, so augmented assignment falls back to using __add__.
Unless we go entirely immutable, we're always going to have a distinction between mutating and rebinding operations, so that surprise can be moved around like an air bubble under carpet but not eliminated.
i figure x = x + [2] and x.append(2) is the sort of thing they're still going to spot, though.. not sure playing games with x += [2]is going to help much.
Now list/tuple multiplication I'd be willing to get rid of, and I've already given my rant on how bad the naming of specialmethods is, there's definitely a lot I'd change were I BDFAD.
Future dictators may unlock the basement door, but first have to take a day long seminar on Chesterton's Fence
@enderland Because they're a frivolous addition the language when, like me, you can deduce the types of parameters and return values through machismo and gumption
and sanity checking, if I want a method to only accept a specific type, not having to add silly checks in the function (which kind of feels unpythonic to do I guess)
I was about to say "If I was writing my own language I'd probably name it __plus__ over __add__" but then I remembered that I did write my own language and I did not name it something other than __add__
But would the typing module have existed in the first place, had annotations never been born? It's an "It's a Wonderful Life" scenario with the opposite conclusion
Any opinions on mixed formatting to clarify nested formatting strings? "%-9s %-{}s %6.4f%% (%{}i/%{}i) total TEs: %{}i" is easier for my brain to parse than "{{:<9}} {{:<{}}} {{:6.4}}% ({{:{}}}/{{:{}}}) total TEs: {{:{}}}"
It's unfortunate when guidelines like that force retagging of existing questions. I got one of my 7-year old answers reformatted to Python3 the other day, and I thought, "well here is someone's new career"
I don't know anything about pandas but if you were to ask "How do I get the first element from each list in a list of lists?" I'd say [seq[0] for seq in list_of_lists]
concatenating a series of lists onto a single line with no separator character makes it pretty hard to parse the file back into useful types. If you have control over how the data is written, consider writing the data in a different way.
Putting newlines between lists would be helpful, at a minimum.
@TemporalWolf Wellllll, in this specific instance yes, since you can use "][" as a defacto list separator. But it doesn't work in the general case of "parsing concatenated list literal values that can contain arbitrary data" because then you get corner cases like "[1, '][', 3]" and you need to write up a whole formal parser to exclude square brackets inside quotes
@Gary Take the different bits of info and go play around with everything. When you get your file written to in a single column, then read the file in as a list if items, where each item is each line from your file.
Yes, but why not also help provide insight on better ways to handle file operations by indicating a more helpful way to write to the file to make parsing easier and more idiomatic?
Rather than introducing some strange parsing around the string?
I'm going to take a wild stab in the dark and suggest
import json
result = []
with open("data.txt") as file:
for line in file:
result.append(json.loads(line)[0])
Which on my machine, given a newline-separated file of lists, populates result with the values [0.029296875, 0.001953125, <...21 values snipped...>, 0.0263671875, 0.0263671875]
My readme is as follows: If you want 500Hz sampling rate but are using 1khz bandwidth, then throw away 3 out of 4 samples. This way you will have the same noise as 2khz data rate, but 500Hz data rate.
If you have a list, I suggest not using pandas dataframe attributes on it, because lists are not pandas dataframes and so you will only get an AttributeError if you try.
And many people learn advanced frameworks atop python (without learning python first). If some of those people actually learn to get by with the framework, they won't think to use vanilla python to solve trivial problems.
Split a string on whitespace? Let me see...django,scikit,pandas...OK, this'll do!
IMO there's nothing wrong with that, as long as you keep learning. I learned numpy before Python. And I only learned numpy because it was a "free" matlab, originally.
Just convince yourself that the OP has an excellent justification for turning their csv into a dataframe, and they're going to do lots of complex operations on the data that definitely require numpy, as soon as your back is turned
I don't have anything against people learning advanced frameworks, but doesn't it feel like killing the last morsels of your soul when yet again you have to explain what TypeError: 'NoneType' object is not callable means?
The most recent Stack Overflow election brought up some great new moderators, including Andy, who has for the past ~3 years been running a comment flag bot to automatically flag comments for removal. Since the end of the election, Andy graciously turned off the bot until we determined how best to...