@piRSquared: re this pivot duplicate, I was about to mark it as duplicate, just trying to figure out what should be done with the row,col-indices on the output
dfp.drop('value', axis=1, level=0) is wrong, dfp.drop('value', axis=1, level=1) doesn't do anything
I have a insanely huge computing task that looks like python can't handle it
maybe someone can give me a hand and help me
figuring out how to make it work
def Jacobsthal(n):
dp = [0] * (n + 1)
# base case
dp[0] = 0
dp[1] = 1
for i in range(2, n+1):
dp[i] = dp[i - 1] + 2 * dp[i - 2]
return dp[n]
n = 1545123211
print("Jacobsthal number:", Jacobsthal(n))
Actually, the n number I need to use for the calculations is way bigger than that one, but anyway, that number is enough for the script to run out of memory
And that version of the script is the best one actually, because the recursive style simply blows the callstack
@Frondor: you're accumulating a giant list of intermediate values but only returning the last. You only need to keep track of the last two values. But (1) there's a direct formula for the nth Jacobsthal number, so you don't need any iteration at all, and (2) the number for that n would have over 465 million digits. Not sure how useful that's going to be.
If it's a coding challenge, though, probably they don't expect you to materialize such an enormously large object, but they've asked for something else (like the result modulo some large number) and you're supposed to come up with a non-brute force way to solve it.
Yeah, that's it. Totally. In the first part of the exercise I was even generating a 10gb file of replacement strings, then I realized that I was over-complicating things
I'll start blaming COBOL for this common rookie mistake
> More complex conditions can be "abbreviated" by removing repeated conditions and variables. For example, a > b AND a > c OR a = d can be shortened to a > b AND c OR = d
@IMCoins agree with Andras, it's ridiculous. I'm kinda upset that I can't flag my own comments as unwelcoming. I should be able to turn myself over to the police
When you import something, python checks the directory <your_python>/Lib/site_packages. Check which version of python your IDE is running, see if the package is installed properly in the good python.
Go to Command line / prompt > Activate your virtualenv > (venv) pip list
Or instead of pip list, do whatever you did above, which seems much better than my lazy check :-p
Or, if you aren't sure if you really need a virtualenv for this project, then I suppose you should be reading the Pycharm docs for that. I'm not so familiar with it, others might be.
@Skullomania does that work in real life? "The McD's down the street was closed, so I figured I'd walk into this 5 star restraunt instead. Where's my $1 burger?"
I think we may be also be mixing up conda environments and Python venvs, which are very similar in purpose but not the same thing. I'd create a new conda environment for your project, install tensorflow there, and then point PyCharm at that conda env.
Not exactly. A virtual environment is more like a separate space for a project into which libraries can be be installed. You "activate" the environment by running a script (usually named 'activate', or passing 'activate' as an argument to another script), which sets environment variables and paths so that simply typing python gets you the right interpreter.
If you're working at the console, you activate the environment (if you're not already using a shortcut which does that activation for you). In PyCharm, you set the configuration to point at the environment (both venvs and conda envs are supported), and then it will successfully detect the libraries which have been installed into that environment.
Looks like it. If you open up a shell and do conda activate MNIST_Fashion_3, you'll then be "in" that environment (in that if you just type Python and/or pip, you'll get the MNIST_Fashion_3 version), and can install programs there.
"Installing package tensorflow", okay, I think I got it. :)
so do people generally have mostly one big virtualenv for all of their ML stuff, for example?
does the amount of packages/libraries installed in a virtualenv affect the runtime of anything once the env is activated?
or it is simply an advantage to have as many as possible in there since you can then not worry about having to add to it and simply using "import" on anything that's contained in the env
Some people have a standard env for "daily" work that they play in and separate envs when it comes time to go to production; some people like to keep even small projects entirely self-contained. It varies.
Number of packages installed doesn't affect runtime.
because it seems weird that I had -already- installed Tensorflow, yet that to be able to import it into a Python project, I need to reinstall it all over again into a new env
people doing their more "self-contained" env have a trick to not reinstall again but rather just point to a package ?
That's because your Pycharm had a separate environment. Sometimes you don't need one, as DSM explained.
If you were simply playing with a non-venv python interpreter (unlike current Pycharm project), then you'd've been successfully able to import tensorflow.
You can try and print the return of the plt methods. Jupyter has a convenient way to displaying an image if it finds one from either Seaborn, matplotlib, pandas, maybe cv2...
The list is not complete, or if it is, it's not intentional.
@payne some environments do some work for you. ipython --matplotlib will enable interactive mode (plt.ion()), notebooks will inline figures (%matplotlib inline may or may not be needed)
You can enable interactive mode yourself or use the blocking plt.show call
Hmmmm. Let's say that I agree on the fact that it infantilizes new USERS. And that it should be called users, and not contributors. To me, in general, the only "good" thing is the reminder below the username asking people to "take into consideration" the fact that the user is new, and to remind him the rules or such.
Still option 2 for me. The left is left-aligned. The currency in the middle is at the same place, and the numbers, being right-aligned, gives us a by a quick glance their quantity (how high they are).
If you have mixed euros, yen, dollars and such, I recommend you to take option 3 though. Because you don't want the user to lose time searching for which currency affects which number.
^^ I disagree, option 2 or rather 2.5 (separate column / justification for currency, so that they align nicely one below the other) would be better then
Keyword arguments either have an already defined value, or are optional. It is more user friendly to just specify which optional parameter you want doing my_optional_param=this_value than calling your function and giving all the previous optional arguments.
It is also a different way of calling basic arguments.
Just checking == vs IS difference, and found below code: for i in range(250, 260): a = i; print "%i: %s" % (i, a is int(str(i))); Can anyone tell me, why it didn't work with (i, a is i) OR why we need to use int(str()) ?
There is a simple rule of thumb to tell you when to use == or is.
== is for value equality. Use it when you would like to know if two objects have the same value.
is is for reference equality. Use it when you would like to know if two references refer to the same object.
In general, when you ...
Is it just me or is this unclear garbage? The two top answers (one of which is accepted) intersect the keys of the dicts, and then there are one or two that actually intersect dictionaries, and then there's one that intersects nested dictionaries, which seems to be closest to what the OP asked for
@payne Suppose you have list a pair such as arr = [(0, 'A'), (1, 'B'), (2, 'C'), (3, 'D'), (4, 'E')], and want to explicitly say you don't care about the first element... when iterating (python-style) on the array, you will do for _, value in arr: print value to explictly say to the reader : At each iteration of this loop, I receive two elements that are decomposed into two variables, one of which I don't care what to do with.
What is this sorcery? How can regex match objects implement __getitem__ without being iterable?
>>> import re
>>> match = re.match('', '')
>>> match[0]
''
>>> list(match)
Traceback (most recent call last):
File "<stdin>", line 1, in <module>
TypeError: '_sre.SRE_Match' object is not iterable
It's not like they have an __iter__ method that throws that exception either
Starting a thread of various videos today in HK and Shenzhen as the world’s strongest storm #TyphoonManghkut wiping our cities. (Videos are not mine but collected from messages doing the rounds w WhatsApp and WeChat) https://t.co/FXU5ITrFqN