1.0.6 • Published 11 months ago

@inb/oeb-widgets-graphs v1.0.6

Weekly downloads
-
License
Apache-2.0
Repository
github
Last release
11 months ago

npm install size NPM License

Documentation

The package is build with Lint Elements components and javascript modules.

It has some dependencies associated for the functionalities:

  • html2canvas
  • jspdf
  • pareto-frontier
  • simple-statistics
  • plotly.js

:point_right: About You can see the complete documentation here


Project structure

  • /src. Where the main application files are hosted.
  • /src/demo. Live demo of applications functionalities and a .json file to simulate real data.

Build Setup

Download the package and install dependencies:

npm install

Serve with hot reload at localhost:

npm run dev

Build package for production:

npm run build

Usage

import '@inb/oeb-widgets-graphs/dist/oeb-widgets-graphs.es.js';

Then just declare the element with the variables that contain the data to be able to build the corresponding graph.

<widget-element
  :data=graphData
  :type=graphType>
</widget-element>

Graphs types

Bar plot

Bar plot shows the results of a benchmarking challenge that uses one single evaluation metric in the form of a Barplot. Challenge participants are shown in the X axis, while the value of their metric is shown in the Y axis. Bar plot live demo

Bar plot structure

You can see an example of a structure to display bar graphs within the "demo" section of the application. Bar plot structure example


Scatter plot

Scatter plot displays the results of scientific benchmarking experiments in graph format, and apply various classification methods to transform them to tabular format. Scatter plot live demo

Scatter plot classification

  • Square quartiles - divide the plotting area in four squares by getting the 2nd quartile of the X and Y metrics.

Square quartiles.

  • Diagonal quartiles - divide the plotting area with diagonal lines by assigning a score to each participant based in the distance to the 'optimal performance'.

Diagonal quartiles.

  • Clustering - group the participants using the K-means clustering algorithm and sort the clusters according to the performance. Clustering.

Scatter plot structure

You can see an example of a structure to display bar graphs within the "demo" section of the application. Scatter plot structure example


Box plot

Box plot shiw the results of a benchmarking challenge that uses a graphical representation of the distribution of a dataset on a seven-number summary of datapoints. The challenge metrics is represented in Y axis by default. Box plot live demo

Box plot classification

The result of the plot can be ordened by maximum or minimum median value. This is an alt text.

Box plot structure

You can see an example of a structure to display bar graphs within the "demo" section of the application. Box plot structure example


Radar plot

A radar chart is an informative visual tool in which multiple variables (three or more) are compared on a two-dimensional plane. To do this, we will create different axes that come from a common central point. In most cases, all axes are evenly distributed and drawn evenly relative to each other. Radar plot live demo

Radar plot structure

You can see an example of a structure to display bar graphs within the "demo" section of the application. Radar plot structure example.