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Python data visualisation

Project description

datavision

Python data visualisation

quick start

sudo apt-get -y install python
sudo apt-get -y install python-matplotlib
sudo pip install shijian
sudo pip install pyprel
sudo pip install datavision

git clone https://github.com/wdbm/datavision.git
cd datavision/
python examples_1.py
python examples_2.py
python example_data_1.py

setup

Ubuntu

sudo apt-get -y install python
sudo apt-get -y install python3
sudo apt-get -y install python-matplotlib
sudo apt-get -y install python3-matplotlib
sudo pip install shijian
sudo pip install pyprel
sudo pip install datavision

OS X

ruby -e "$(curl -fsSL https://raw.githubusercontent.com/Homebrew/install/master/install)"
brew install python3
pip3 install matplotlib
pip install shijian
pip install pyprel
pip install datavision

run

git clone https://github.com/wdbm/datavision.git
cd datavision/
python examples_1.py
python examples_2.py

introduction

qunti and zus lists

Qunti (群体, groups) are lists that act

  • as dictionaries that can contain duplicate keys and

  • as sets for the purposes of enabling set-like operations for qunti objects, such as symmetric difference, intersection and update operations.

Qunti are composed of multiple zu (组, group) objects.

qunti operations

In an update operation, one qunti is used to update another. Any zus in the updating qunti that are not in the updated qunti are appended to the updated qunti. Any zus that are in the updating qunti and the updated qunti replace the corresponding zus in the updated qunti.

The following example illustrates a qunti update operation in which an alpha zus is replaced and a delta zus is appended:

# example qunti update:
a = [['alpha', '10'], ['beta', '20'], ['gamma', '30'], ['gamma', '15']]
b = [['delta', '40'], ['alpha', '50']]
# update of a with b:
a = [['beta', '20'], ['gamma', '30'], ['gamma', '15'], ['delta', '40'], ['alpha', '50']]

The following example illustrates qunti symmetric difference, intersection and update operations. In the update operation, two old gamma zus are replaced by a single new gamma zu:

# example qunti symmetric difference, intersection and update:
a = [['alpha', '10'], ['beta', '20'], ['gamma', '30'], ['gamma', '15']]
b = [['delta', '40'], ['alpha', '50'], ['gamma', '25']]
# symmetric difference of a and b:
[['beta', '20'], ['delta', '40']]
# intersection of a and b:
[['alpha', '10'], ['gamma', '30'], ['gamma', '15'], ['alpha', '50'], ['gamma', '25']]
# update of a with b:
a = [['beta', '20'], ['delta', '40'], ['alpha', '50'], ['gamma', '25']]

data visualisation

Datavision provides utilities for data visualisation. It can visualise matrices as colormaps:

image0 image1 image2

It can visualise histograms:

It can visualise graphs and histograms in a terminal:

   │
   ┼+79.548                                                                 ○
   │
   │                                                                ○
   │
   │                                                        ○
   │
   │                                                ○
   ◽       ◽       ◽                       ○
   │                       ◽       ○
   │                       ○       ◽
───○┼──────○───────○───────────────────────◽────────────────────────────────┼───
   │ +0.046                                         ◽               +8.97638
   │
   │                                                        ◽
   │
   │                                                                ◽
   ┼-48.228
   │                                                                        ◽
   │
                         │
                         ┼+75503.2
                       ∘∘|∘
                      ∘||||∘
                      ||||||∘
                     ∘|||||||
                     ||||||||∘
                    ∘|||||||||
                    ||||||||||∘
                   ∘|||||||||||
                   |||||||||||∘
                  ∘||||||||||||
                  |||||||||||||∘
                  ||||||||||||||∘
                 ∘|||||||||||||||∘
                ∘|||||||||||||||||∘
               ∘|||||||||||||||||||∘
            ∘∘∘||||||||||┼+1603.2|||∘∘∘
──┼--------------------------------------------┼──
   -4.69099              │              +4.6147

It can plot all combinations of variables:

It can plot all parallel coordinates:

It can perform FFT:

prerequisites

Python 2 or Python 3

sudo apt-get -y install python
sudo apt-get -y install python3

matplotlib

sudo apt-get -y install python-matplotlib
sudo apt-get -y install python3-matplotlib

shijian

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