yes because i get a timeout error where i try to run this code. and I do nto know what is the Input number. when i tried with 3 it does give the answer :) till 1000 i am gettign the answer. for eg: you can try this, 1000 will give answer as 1023 but if you increae the N to 10000 you get a error killed
tutorialspoint.com/execute_python_online.php
T=1
#T = int(raw_input())
for test in range(T):
#N=int(raw_input())
#N= N + 1
N=1000
lst = []
x= list(itertools.combinations(range(1,N+1),2))
were you able to open the link? what my understanding is it will be continuous integers like if it said 3 the i should understand that there are three points , and I need to find the longest path between each combinations using xor. 1,2 1,3 and 2,3
@gecko i guess combinations are getting generated within time, it is the time required to calculate teh xor by going through each combination which is taking time. this is my assumption
@just10minutes Correct. And if you think about the code I posted, you will realize that you can directly calculate the biggest XOR without running through any combinations.
Although if you are supporting really large numbers, you may want to use bit shifts to get the floor(log base 2) instead of relying on the floating point math module.
Code explanation: If the biggest number is one less than a power of 2, e.g. 3, 7, 15, then the biggest difference will be between that number and 1. But if the biggest number is not one less than a power of two, then you can always find two numbers (including that number or below) that will XOR together to be one less than the next higher power of two. So find the next higher power of two, subtract 1, and if that's the same as the number, subtract another one.
@PatrickMaupin the previous code just ran fine with sample input of 3, when submitted 1st actual input gave as wrong answer and next two threw error as memory
https://gist.github.com/anonymous/ada8694290f61456e439 here is the code and result
@just10minutes Of course if you do that you will have memory and time errors. The point of the exercise is to show you two different ways to calculate the same thing, and show you a way to verify that they both do, in fact, calculate the same thing. You can pick the slower, larger one, or the faster, smaller one, or (as you have done now) keep using them both. Your choice...
@PatrickMaupin but apart from memory issue it gave answer as wrong. so does it mean there is something else also needs to be done? Thanks a lot for your support till now, you can ignore the problem if you want
@just10minutes I was looking for the longest route to the last island, but re-reading your description, I think that's wrong. I think the function is merely:
Thank you @PatrickMaupin, yes this above one passed teh first output, atleast this is better than my code, looks like i need further more faster way as second input gave Time limit exceeded error
stackoverflow.com/questions/9320109/… this has similar question but i did not understand the logic yet, Ill be very frank I am not from maths or science background but interested in learning new thing by practicing :) I am from Finance background
It's everything I've ever thought it would be (though, of course, it's sub-par compared to when I use a decent OS like OS X where I just type one command instead of having to build everything myself BUT NEVER MIND)
Hi, does anybody have any experience with jupyter notebooks? How to run code defined in one notebook in another? The second answer from here stackoverflow.com/questions/16966280/… seemed good but it is deprecated.
I am currently trying to put some calculated data into a storage object and pickle it for later usage. My storage object saves some data in my own custom classes. So far, so good. Now when I unpickle the storage object, I first have to import all those classes, to avoid attribute errors.
This really is a stupid concept for me. Is there some way to move the class definitions into the pickle object?
Hi, has anybody used the ipython magic %run with option -n? it seems to be not working: I run an ipython notebook but the guarded with if name == "main": is still run.
actually the %run -n wouldn't work very well as the functions are imported to the calling notebooks namespace, so I can't import multiple different notebooks with same function names
@Shepherd, also there is an official gitter channel for ipython. If you have very specific questions you may want to ask there as well.
@AnttiHaapala, okay, It was a stupid mistake: I defined the additional classes in my script, so when unpickling, python tried to import the classes from __main__ in my second script, which obviously won't work
Oops, I've been using the word "ancillary" to mean "redundant" for the last couple decades, when it really means "providing necessary support to the primary activities or operation of an organization, institution, industry, or system."
Gah. I've just been running some timeit tests on string concatenation using + vs .join. I first had a brief look around at older questions on this topic, but they were mostly using even more ancient versions of Python than my 2.6.6, or the timing tests were flawed due to not separating the source string construction from the concatenation process. I was rather surprised by the results.
Unless the strings are very large (eg 5000 chars), and you're concatenating more than 100 strings, + in a for loop is actually faster than doing append() in the for loop and doing ''.join() on the resulting list. Thankfully, ''.join() on a list comprehension is faster than the + loop.
And then I found this old answer by Alex Martelli, which cheered me up immensely. :)
I was doing all this as a followup to a comment I made yesterday:
Concatenating strings in a loop is very inefficient in Python. Remember that Python strings are immutable, so every time you add a new string to s in your for loop a new string object is allocated, the substrings are copied to it, and the old string object that was bound to s is destroyed. The string .join method (as used in Bhargav Rao's answer) operates at C speed, which is much faster than an explicit Python loop, and it can allocate a single destination string object, since it knows how large the destination needs to be, so it bypasses all that inefficiency. — PM 2Ring21 hours ago
Oops. Sorry, I forgot about that. :) I used xrange partly out of habit and partly because I was responding to a Python 2 question... even though that OP uses range
@JonClements You wouldn't use the code like that -- it's merely a modified version of a test that PM was already running. But snagging a bound method so you don't have to look it up over and over is something I use all the time -- and saves a lot of time compared to the unmodified loop.
Hey, Antti, I finally asked an SO question. Don't know if you care or already saw it, but it seems the sort of thing you might be interested in...
@JonClements I was just trying to prove that building a list and using .join to concatenate a bunch of strings is better than using +. Unfortunately, timeit didn't agree with me... See chat.stackoverflow.com/transcript/message/26042598#26042598 etc
if you do not have tp_alloc it will use default alloc, and pytype_genericnew will happily use that, so your object will be garbage if __init__ is overridden in a subclass
the docs do not say what is the return value of init
@PeterVaro also do notice the following of tp_init: "This function corresponds to the __init__() method of classes. Like __init__(), it is possible to create an instance without calling __init__(), and it is possible to reinitialize an instance by calling its __init__() method again."
@AnttiHaapala btw that's not true => you do want to cast function pointers for several reasons -- what you never ever ever never ever ever never never ever should do is to call a miscasted function pointer
(that's UB)
(but that's just a side note, not realted to the problem)
@PeterVaro the rule 1 is "never ever cast function pointers", and the rule 2 is except when using stupid code written by others or possibly to int func() ;)
Even if he fixes the name collision, why not just do return random.randint(0,10)? Even if he does that, why not just delete the function altogether and call randint inline?
@PeterVaro btw: "If we didn’t care whether the initial values were NULL, we could have used PyType_GenericNew() as our new method, as we did before. PyType_GenericNew() initializes all of the instance variable members to NULL."
Yes. One of my co-workers gets a csv file every month she has to edit by hand. This file can be up to 3000+ lines. So I've been instructed to try and write a program that will do this automatically. Commonly, some lines in this file will have returns in very random places whenever each line just needs to be straight across. — l1thalyesterday
@PeterVaro "The type object structure extends the PyVarObject structure. The ob_size field is used for dynamic types (created by type_new(), usually called from a class statement). Note that PyType_Type (the metatype) initializes tp_itemsize, which means that its instances (i.e. type objects) must have the ob_size field."
@PeterVaro you should get better examples (and if you took these examples from stackoverflow, you should downvote them) :P