Can I make this: a = pipe_pings['ser_no'] == pipe_pings['ser_no'].shift(1) b = pipe_pings['CTRY_NM'] == pipe_pings['CTRY_NM'].shift(1) matching = a == b a one liner?
I tired doing a = pipe_pings['ser_no'] == pipe_pings['ser_no'].shift(1) and pipe_pings['CTRY_NM'] == pipe_pings['CTRY_NM'].shift(1) but his doesn't work so I had to separate it out into 3 lines
so matching = (pipe_pings['ser_no'] == pipe_pings['ser_no'].shift(1)) == (pipe_pings['CTRY_NM'] == pipe_pings['CTRY_NM'].shift(1))unless the two parentheses evaluate to False, in which case NaN?
@idjaw Yup - you might want more cookies btw... just helped myself to some 5 mins ago - and a bit of coffee and sugar - hope you don't mind k thx bai :p
In comments on the main SO site [mcve] automatically expands to [Minimal, Complete, and Verifiable example](http://stackoverflow.com/help/mcve). Sadly, that doesn't work here in Chat, or in SO answers.
@Morgan'Venti'Thrappuccino <guess> range can be really fast if it uses C registers, which are integers in traditional architectures. Also, doing comparisons on floats is slower than with ints, and a range loop has to do a comparison on every loop.
When I make gifs I often need to iterate through N evenly spaced numbers between 0 and 1. I usually just do for i in range(0, steps): x = float(i)/steps; do_thing_with_x(x)
Maybe you should spend some time using an embedded system with no / expensive float support. You find you can often avoid floats if you don't really need them. :)
Several of the early systems I worked on needed to use library code for float stuff, and didn't have much RAM so you learned to avoid floats as much as possible. And even by the Amiga era adding float support to a small assembler program could easily double the size of the executable and its RAM footprint.
What Andras said. And maybe you should try to explain better why you want Nan. FWIW, a more Pythonic option to NaN is None, but I guess NaN is kind of appropriate in a Numpy context.
And at least your question hasn't been down-voted.
@PM2Ring this 'Since each serial number is a different machine, it doesn't make sense to have a logical comparison at these locations.' doesn't explain it?
@Morgan'Venti'Thrappuccino if you have a better alternative or suggestion, I open to here it.
@dustin It's not very clear to me. And I suspect it's even worse to people reading your question.
FWIW, the point of putting a question on hold as unclear isn't to punish the person who asked the question. It's to prevent people from writing misdirected answers based on wild guesses.
So what should bool(np.array([0,1])) return? True, because it's nonempty? False, because not all the elements are Truelike? True, because at least one element is truelike?
The whole point of a vectorized object is to allow operations to be performed on the elements in bulk. Where that extrapolation would be ambiguous, we (and by "we" I mean the numpy community) avoid the problem. ISTM this is far and away the best solution.
I guess that makes sense. I'll admit to not using Pandas/numpy, but it just seems weird to me. I guess I'm just not in the mindset of vectorized objects.
Every now and then I see a user avatar that looks familiar, and I figure they're just using the image of an actor they like. To figure out where it's from, I do an image search, but sometimes it doesn't show up as an actor's picture but just an image associated with several different people of wildly different names. This is deeply mysterious to me.
If I am reading in multiple csv files that look like name_pings, is there a way to loop through it? As an example, it looks like: mttt_pings = pd.read_csv('moved_pings_mach_mttt.csv', sep = ',')
You can use glob.glob to select the files you want, and then you can make a dictionary with the name of the file (or some part of it) as the key and the dataframe as the value.
@dsm I had a friend suggest: `if len(sys.argv) != 2: print("Usage: {} CSVDIR".format(sys.argv[0])) sys.exit(1) os.chdir(sys.argv[1])` but I don't understand it.
I wanted to post a link to the scene where Finn is alone in the empty streets and says "yo, is everyone in church, worshipping glob?" but there are only potato-quality versions on youtube.
@dustin: that code doesn't have much to do with looping over files. sys.argv contains the command line arguments, and that code checks to see whether there is 1 argument (the 0th element contains the name of the program, so sys.argv will have length 2) and if there is, it changes to that directory. No looping is done there, although it might set you up to loop over the directory.
Greasemonkey troubleshooting, final update: reinstalled and all my scripts magically reappeared with no additional effort on my part. Best possible outcome.
@Morgan'Venti'Thrappuccino It is satisfying. And rather addictive for a game with no time limit or scoring. I had to stop playing it. :) But I might get back into it...
Most of the games in the collection are designed so each puzzle has exactly one solution, which can be logically derived with a minimal amount of guess-and-check. I've long since mined Net and Loopy of all the solving techniques I can think of, and can play both of them with 99% success, but Light Up has remained elusive.
On the limited samples I've seen of people shadowing modules with their own script, I'm predicting that turtle and requests will be the most common offenders.
Not too badly. We've agreed on reasonable compromises across the board, and I've warned them that I'm probably going to port some of the functionality in the c++ N-dim datacube library I wrote to xarray. I'm going to miss the agent model, admittedly, but it might give me motivation to turn my toy version in Julia into a full-fledged code. (Likelihood: low. I have books to read!)
@DSM - Can't imagine the PR would be poorly received! At any rate, xarray is looking quite nice. I really need to start doing more than playing with it.
Need to write an efficient segy reader/writer with xarray as the in-memory format... Python's been missing that forever, though only us odd seismic-ish geo folks notice.
(Blatantly stealing Matt Hall's idea with that one... Maybe he'll beat me to it!)
I couldn't do it when I was here, but I should really start posting my various data extraction routines (such as from Statistics Canada and other government sources) to github. In some ways StatsCan is great, and in others they make you want to tear your hair out. It'll take a while to regenerate some of the data reconciliation tools, though.. we had to write our own quadratic optimization codes because of limitations in the best software which commercial entities could use for free :-/
Optimization is always far more nasty in practice than it looks at the surface... I really wish scipy.optimize was better, but I'm not the one to improve it
Also, I can't really write the segy reader I mentioned for the same reason as you... I can sake by on maintining projects that I started before I got here and are completely outside my domain, but that would be too close to what I actually do to every fly.
I guess that's the trade-off.. either work in something I'm not interested in, or not be able to release my code, or work somewhere where I can release my code but it will go under in six months because they have no income. :-)