One utility to get all the algorithms fast and ready into your project, analyze their visualizations for your specific test case (not nature of increase but actual running time) and study their implementation for academic purposes. 👍
This library is under active development. ⭐ Star the repo for updates.Read the full doumentation here API Docs
pip3 install gopy
or
pip install gopy
You can test this by making a python file test.py
Example: Bubble Sort
from gopy.sorting import bubble
print(bubble.sort([5,4,3,2,1]))
Output:
[1,2,3,4,5]
Example: Linear Search
from gopy.search import lsearch
print(lsearch.search(3,[5,4,3,2,1]))
Output:
2
Example: Binary Search
from gopy.search import bsearch
print(bsearch.search(30,[5,4,3,2,1]))
Output:
Not Found
Although on paper one algorithm might prove better than other but it's mostly based on nature of order of increase in running time with respect to input size. However, in practice an algorithm having higher runtime complexity than others may actually have a smaller runtime for your specific test case. With gopy, you can test each algorithm's behavior for your specific input and test case and compare actual running times in practice.
eg:
test for knuth_morris_pratt
from gopy.profile import profile
from gopy.strings.knuth_morris_pratt import match
print(profile('match("ABCDAADDABCABAB","A")'))
This will make in depth visualizations in your browser for the kmp algorithm.
List of implementationsAny form of contribution is welcome 😄
If this project helps you, consider supporting