Box-X is a Tool-box for Efficient Build and Debug in Python.
Especially, have done a lot of optimization for Scientific Computing and Computer Vision.
So, all Tools are divided into 2 parts by wether the tool is general used:
General Python Tool: Tools could be used anywhere in Python
Scientific Computing and Computer Vision Tool: Those tools are useful in Scientific Computing and Computer Vision field
P.S. boxx supports both Python 2/3 on Linux | macOS | Windows.
2. Install
Via git and pip
pip install git+https://github.com/DIYer22/boxx
From source
git clone https://github.com/DIYer22/boxx
cd boxx/
python setup.py install
If no git
pip install boxx -U
💡 Note:
Recommended to install via git or source because PyPI mirrors may has a big delay.
Please ensure boxx's version > 0.9.1. Otherwise, please install from source.
3. Tutorial
Box-X's Tutorial is a Jupyter Notebook file that allows run examples while view Tutorial.
There are 3 methods to view/run this Tutorial
Method 1: Executable Interactive Online Notebook
We use Binder to run Tutorial Notebook in an executable interactive online jupyer environment.
That's mean you can run code in notebook rightnow in your browser without download or install anything.
General Python Tool on left, Scientific Computing and Computer Vision Tool on right.
💡 Note:Click the GIF or image will restart GIF and see more clearer GIF or image
General Python Tool
▶ p/x is better way to print(x)
p/x will print(x) and return x
💡 Note:p/x is easy to print value in expression.
▶ Use g.name = x or g.name/x to transport variable to Python interactive console
💡 Note:
gg is the meaning of "to Global and log", has same usage as g, but gg will print the transported variable.
if variable name exists in console before, the variable's value will be covered by new value.
▶ g() to transport all vars that in the function to Python interactive console
💡 Note:g() is a useful tool for debug. import boxx.g is convenient way to use g() instead of from boxx import g;g()(import boxx.gg is avaliable too)
▶ with p, with g, with gg are mulit variables version of p, g, gg that work under "with statement"
Only act on interested variables which is under "with statement"
💡 Note:
with p, with g, with gg only act on assignment variables under "with statement".
If variable's name exists in locals() before and id(variable) not change ,variable may not be detected
Scientific Computing and Computer Vision
Useful tools in Scientific Computing and Computer Vision field. All tools support array-like types, include numpy, torch.tensor, mxnet.ndarray, PIL.Image .etc
💡 Note: If you are using ssh to execute code on a remote server, it is recommended that ssh plus -X make visualized plt charts can be transferred to the local and display, like ssh -x user@host.
▶ loga to visualization matrix and tensor
loga is short of "log array", loga will show many attributes of array-like object.
💡 Note:loga analysis array-like object by it's shape, max, min, mean, and distribute. Support numpy, torch.tensor, mxnet.ndarray, PIL.Image .etc
▶ show is easy to do imshow, even images are in complex struct
show could find every image in complex struct and imshow they.
💡 Note: if args inculde function(like torgb). those functions will process all numpys befor imshow.
▶ tree for visualization complex struct
like tree command in shell, boxx.tree could visualization any struct in tree struct view.
💡 Note:tree support types include list, tuple, dict, numpy, torch.tensor/Dataset/DataLoader, mxnet.ndarray, PIL.Image.etc
▶ boxx debug tool matrix
How many vars \ Operation
print
transport
print & transport
Single variable
p/x
g.name/x
gg.name/x
Multi variables
with p:
with g:
with gg:
All locals()
p()
g()
gg()
All locals()_2
import boxx.p
import boxx.g
import boxx.gg
💡 Note:
transport mean "transport variable to Python interactive console"
All locals() mean operation will act on all variables in the function or module
All locals()_2 : when boxx are not imported, import boxx.{operation} is a convenient way to execution operation
▶ what to know "What's this?"
💡 Note:what(x) will show "what is x?" by pretty print it's Self, Document, Father Classes, Inner Struct and Attributes. It is a supplement of help(x).
▶ timeit is convenient timing tool
💡 Note:timeit will timing code block under "with statement" and print spend time in blue color.
▶ mapmp is Multi Process version of map
mapmp is the meaning of "MAP for Multi Process", has the same usage as map but faster.
💡 Note:
pool parameter in mapmp mean the number of Process, the default is the number of CPUs in the system.
In multi process programs, display processing progress is troublesome. printfreq parameter in mapmp can handle this problem.
Like map, mapmp support muliti args to as input to function, like mapmp(add, list_1, list_2).
It's better to run multi process under __name__ == '__main__' environment.
If you speed up the numpy program, note that in the MKL version of numpy, multiple processes will be slower. You can run boxx.testNumpyMultiprocessing() to test how friendly the current environment is to a multi-process numpy.
▶ heatmap to show the time heat map of your code
💡 Note:heatmap also support python code string.
▶ performance could statistic function calls and visualize code performance
💡 Note:performance also support python code string.
5. Acknowledgments
Thanks to Xiaodong Xu, Guodong Wu, Haoqiang Fan, Pengfei Xiong for their suggestions
I develop boxx in Spyder IDE, Spyder is a awesome Scientific Python Development Environment with Powerful Qt-IPython