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Python wrapper for the Highcharts Gantt visualization library.

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Highcharts Gantt for Python

High-end Gantt chart visualization for the Python ecosystem

Highcharts Gantt for Python is an extension to the Highcharts Stock for Python library, and provides a Python wrapper for the fantastic Highcharts Gantt JavaScript data visualization library. Highcharts Gantt for Python also supports

  • Highcharts Core (JS) - the core Highcharts data visualization library
  • Highcharts Stock (JS) - the Highcharts extension providing time series and asset price data visualization
  • The Highcharts Export Server - enabling the programmatic creation of static (downloadable) data visualizations

In order to integrate Highcharts Gantt for Python into the Python ecosystem, the library features native integration with:

  • Jupyter Labs/Notebook. You can now produce high-end and interactive plots and renders using the full suite of Highcharts visualization capabilities.
  • Pandas. Automatically produce data visualizations from your Pandas dataframes
  • PySpark. Automatically produce data visualizations from data in a PySpark dataframe.
  • Asana. You can generate Gantt charts from your Asana projects using one simple method call.
  • Monday.com. Produce Gantt charts automatically from your Monday.com projects.
  • JIRA. Generate Gantt charts from your Atlassian JIRA Cloud projects.

COMPLETE DOCUMENTATION: http://gantt-docs.highchartspython.com/en/latest/index.html


Installation

To install Highcharts Gantt for Python, just execute:

$ pip install highcharts-gantt

Why Highcharts for Python?

Odds are you are aware of Highcharts Gantt. If not, why not? It is the world's most popular, most powerful, category-defining JavaScript data visualization library and - in particular - for time and resource allocation data.

If you are building a web or mobile app/dashboard that will be visualizing time/resource data, you should absolutely take a look at the Highcharts suite of solutions. Just take a look at some of their fantastic Highcharts Gantt demo visualizations.

Highcharts Gantt is a JavaScript library, and is an extension of the Highcharts Stock JavaScript library. It is written in JavaScript, and is specifically used to configure and render data visualizations in a web browser (or other JavaScript-executing, like mobile app) environment. As a JavaScript library, its audience is JavaScript developers. But what about the broader ecosystem of Python developers and data scientists?

Python is increasingly used as the technology of choice for data science and for the backends of leading enterprise-grade applications. In other words, Python is often the backend that delivers data and content to the front-end...which then renders it using JavaScript and HTML.

There are numerous Python frameworks (Django, Flask, Tornado, etc.) with specific capabilities to simplify integration with Javascript frontend frameworks (React, Angular, VueJS, etc.). But facilitating that with Highcharts has historically been very difficult. Part of this difficulty is because the Highcharts JavaScript suite - while supporting JSON as a serialization/deserialization format - leverages JavaScript object literals to expose the full power and interactivity of its data visualizations. And while it's easy to serialize JSON from Python, serializing and deserializing to/from JavaScript object literal notation is much more complicated. This means that Python developers looking to integrate with Highcharts typically had to either invest a lot of effort, or were only able to leverage a small portion of Highcharts' rich functionality.

So I wrote the Highcharts for Python toolkit to bridge that gap, and Highcharts Gantt for Python to provide full support for the Highcharts Gantt library extension.

Highcharts Gantt for Python provides support for the Highcharts Gantt extension, which is designed to provide extensive data visualization capabilities optimized for project, time, and resource allocation data visualization with robust interactivity. For ease of use, it also includes the full functionality of Highcharts for Python as well.

Key Highcharts Gantt for Python Features

  • Clean and consistent API. No reliance on "hacky" code, dict and JSON serialization, or impossible to maintain / copy-pasted "spaghetti code".

  • Comprehensive Highcharts support. Every single Highcharts chart type and every single configuration option is supported in Highcharts Gantt for Python. This includes the over 70 data visualization types supported by Highcharts Core, and the 50+ visualizations supported by Highcharts Stock and the multiple Gantt visualizations available in Highcharts Gantt, with full support for the rich JavaScript formatter (JS callback functions) capabilities that are often needed to get the most out of Highcharts' visualization and interaction capabilities.

    Note

    See Also:

  • Simple JavaScript Code Generation. With one method call, produce production-ready JavaScript code to render your interactive visualizations using Highcharts' rich capabilities.

  • Easy Chart Download. With one method call, produce high-end static visualizations that can be downloaded or shared as files with your audience. Produce static charts using the Highsoft-provided Highcharts Export Server, or using your own private export server as needed.

  • Consistent Code Style. For Python developers, switching between Pythonic code conventions and JavaScript code conventions can be...annoying. So Highcharts for Python applies Pythonic syntax with automatic conversion between Pythonic snake_case notation and JavaScript camelCase styles.


Highcharts Gantt for Python vs Alternatives

For a discussion of Highcharts Gantt for Python in comparison to alternatives, please see the COMPLETE DOCUMENTATION: http://gantt-docs.highchartspython.com/en/latest/index.html


Hello World, and Basic Usage

1. Import Highcharts Gantt for Python

# BEST PRACTICE!
# PRECISE LOCATION PATTERN
# This method of importing Highcharts Gantt for Python objects yields the fastest
# performance for the import statement. However, it is more verbose and requires
# you to navigate the extensive Highcharts Gantt for Python API.

# Import classes using precise module indications. For example:
from highcharts_gantt.chart import Chart
from highcharts_gantt.global_options.shared_options import SharedGanttOptions
from highcharts_gantt.options import HighchartsGanttOptions
from highcharts_gantt.options.plot_options.gantt import GanttOptions
from highcharts_gantt.options.series.gantt import GanttSeries

# CATCH-ALL PATTERN
# This method of importing Highcharts Gantt for Python classes has relatively slow
# performance because it imports hundreds of different classes from across the entire
# library. This is also a known anti-pattern, as it obscures the namespace within the
# library. Both may be acceptable to you in your use-case, but do use at your own risk.

# Import objects from the catch-all ".highcharts" module.
from highcharts_gantt import highcharts

# You can now access specific classes without individual import statements.
highcharts.Chart
highcharts.SharedGanttOptions
highcharts.HighchartsGanttOptions
highcharts.GanttOptions
highcharts.GanttSeries

2. Create Your Chart

# from a JavaScript file
my_chart = highcharts.Chart.from_js_literal('my_js_literal.js')

# from a JSON file
my_chart = highcharts.Chart.from_json('my_json.json')

# from a Python dict
my_chart = highcharts.Chart.from_dict(my_dict_obj)

# from a Pandas dataframe
my_chart = highcharts.Chart.from_pandas(df,
                                        property_map = {
                                            'x': 'transactionDate',
                                            'y': 'invoiceAmt',
                                            'id': 'id'
                                        },
                                        series_type = 'line')

# from a PySpark dataframe
my_chart = highcharts.Chart.from_pyspark(df,
                                         property_map = {
                                             'x': 'transactionDate',
                                             'y': 'invoiceAmt',
                                             'id': 'id'
                                         },
                                         series_type = 'line')

# from a CSV
my_chart = highcharts.Chart.from_csv('/some_file_location/filename.csv'
                                     column_property_map = {
                                        'x': 0,
                                        'y': 4,
                                        'id': 14
                                     },
                                     series_type = 'line')

# from a HighchartsOptions configuration object
my_chart = highcharts.Chart.from_options(my_options)

# from a Series configuration
my_chart = highcharts.Chart.from_series(my_series)

3. Configure Global Settings (optional)

# Import SharedGanttOptions
from highcharts_gantt.global_options.shared_options import SharedGanttOptions

# from a JavaScript file
my_global_settings = SharedGanttOptions.from_js_literal('my_js_literal.js')

# from a JSON file
my_global_settings = SharedGanttOptions.from_json('my_json.json')

# from a Python dict
my_global_settings = SharedGanttOptions.from_dict(my_dict_obj)

# from a HighchartsOptions configuration object
my_global_settings = SharedGanttOptions.from_options(my_options)

4. Configure Your Chart / Global Settings

from highcharts_gantt.options.title import Title
from highcharts_gantt.options.credits import Credits

# Using dicts
my_chart.title = {
    'align': 'center'
    'floating': True,
    'text': 'The Title for My Chart',
    'use_html': False,
}

my_chart.credits = {
    'enabled': True,
    'href': 'https://www.highcharts.com/',
    'position': {
        'align': 'center',
        'vertical_align': 'bottom',
        'x': 123,
        'y': 456
    },
    'style': {
        'color': '#cccccc',
        'cursor': 'pointer',
        'font_size': '9px'
    },
    'text': 'Chris Modzelewski'
}

# Using direct objects
from highcharts_gantt.options.title import Title
from highcharts_gantt.options.credits import Credits

my_title = Title(text = 'The Title for My Chart', floating = True, align = 'center')
my_chart.options.title = my_title

my_credits = Credits(text = 'Chris Modzelewski', enabled = True, href = 'https://www.highcharts.com')
my_chart.options.credits = my_credits

5. Generate the JavaScript Code for Your Chart

Now having configured your chart in full, you can easily generate the JavaScript code that will render the chart wherever it is you want it to go:

# as a string
js_as_str = my_chart.to_js_literal()

# to a file (and as a string)
js_as_str = my_chart.to_js_literal(filename = 'my_target_file.js')

6. Generate the JavaScript Code for Your Global Settings (optional)

# as a string
global_settings_js = my_global_settings.to_js_literal()

# to a file (and as a string)
global_settings_js = my_global_settings.to_js_literal('my_target_file.js')

7. Generate a Static Version of Your Chart

# as in-memory bytes
my_image_bytes = my_chart.download_chart(format = 'png')

# to an image file (and as in-memory bytes)
my_image_bytes = my_chart.download_chart(filename = 'my_target_file.png',
                                         format = 'png')

Questions and Issues

You can ask questions and report issues on the project's Github Issues Page


Contributing

We welcome contributions and pull requests! For more information, please see the Contributor Guide <https://gantt-docs.highchartspython.com/en/latest/contributing.html>. And thanks to all those who've already contributed!


Testing

We use TravisCI for our build automation and ReadTheDocs for our documentation.

Detailed information about our test suite and how to run tests locally can be found in our Testing Reference.

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