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Charted vs Matplotlib: What are the differences?

Comparison of Charted and Matplotlib

1. Flexibility in Data Visualization: One key difference between Charted and Matplotlib is the level of flexibility in data visualization options. Charted offers a more user-friendly and dynamic approach to creating visualizations, allowing users to quickly generate various types of charts with ease. In contrast, Matplotlib provides a greater degree of customization and control over the visual aspects of the plots, offering advanced features for creating complex and detailed visualizations.

2. Programming Language Compatibility: Another significant difference between Charted and Matplotlib lies in the programming languages they support. Charted is primarily designed to work with JavaScript and JSON data, making it a suitable choice for web-based data visualization projects. On the other hand, Matplotlib is a Python-based plotting library that integrates seamlessly with the extensive capabilities of Python for data manipulation and analysis, making it a preferred tool for scientific computing and data visualization tasks within the Python ecosystem.

3. Interactivity and Animation: In terms of interactivity and animation features, Charted focuses on providing real-time updates and interactive elements in its visualizations, allowing users to dynamically filter and explore data. In contrast, Matplotlib offers limited support for interactivity and animations out of the box, requiring additional libraries or tools to achieve similar interactive capabilities, which may add complexity to the visualization workflow.

4. Chart Types and Options: Charted emphasizes simplicity and ease of use by offering a streamlined selection of basic chart types such as line charts, bar charts, and scatter plots with intuitive configuration options. Matplotlib, on the other hand, provides a comprehensive range of chart types and customization options, enabling users to create a wide variety of plots including histograms, box plots, heatmaps, and more with fine-grained control over styling and layout.

5. Community and Documentation: A notable difference between Charted and Matplotlib is the availability of community support and documentation resources. Matplotlib benefits from a large and active community of users and contributors, resulting in extensive documentation, tutorials, and online forums that offer assistance and guidance for users at all skill levels. In contrast, Charted may have more limited community resources and documentation, potentially restricting the availability of in-depth support and resources for troubleshooting and feature exploration.

6. Integration with Ecosystem and Tools: The integration capabilities with other data analysis tools and ecosystems differ between Charted and Matplotlib. While Charted is designed to seamlessly integrate with web technologies and platforms, enabling easy incorporation into web applications and dashboards, Matplotlib's integration strengths lie within the Python ecosystem, where it can be used alongside popular data science libraries such as NumPy, Pandas, and scikit-learn for end-to-end data analysis and visualization workflows.

In Summary, Charted and Matplotlib offer distinct advantages in data visualization, with Charted focusing on user-friendliness and web-based applications, while Matplotlib provides extensive customization and integration options within the Python data science ecosystem.

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Pros of Charted
Pros of Matplotlib
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    • 10
      The standard Swiss Army Knife of plotting

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    Cons of Charted
    Cons of Matplotlib
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      • 5
        Lots of code

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      What is Charted?

      Charted is a tool for automatically visualizing data, created by the Product Science team at Medium. Provide the link to a data file and Charted returns a beautiful, interactive, and shareable chart of the data.

      What is Matplotlib?

      It is a Python 2D plotting library which produces publication quality figures in a variety of hardcopy formats and interactive environments across platforms. It can be used in Python scripts, the Python and IPython shells, the Jupyter notebook, web application servers, and four graphical user interface toolkits.

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      What companies use Charted?
      What companies use Matplotlib?
      See which teams inside your own company are using Charted or Matplotlib.
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      What tools integrate with Charted?
      What tools integrate with Matplotlib?
        No integrations found

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        What are some alternatives to Charted and Matplotlib?
        Pound
        Pound was developed to enable distributing the load among several Web-servers and to allow for a convenient SSL wrapper for those Web servers that do not offer it natively.
        D3.js
        It is a JavaScript library for manipulating documents based on data. Emphasises on web standards gives you the full capabilities of modern browsers without tying yourself to a proprietary framework.
        Chart.js
        Visualize your data in 6 different ways. Each of them animated, with a load of customisation options and interactivity extensions.
        Highcharts
        Highcharts currently supports line, spline, area, areaspline, column, bar, pie, scatter, angular gauges, arearange, areasplinerange, columnrange, bubble, box plot, error bars, funnel, waterfall and polar chart types.
        Plotly.js
        It is a standalone Javascript data visualization library, and it also powers the Python and R modules named plotly in those respective ecosystems (referred to as Plotly.py and Plotly.R). It can be used to produce dozens of chart types and visualizations, including statistical charts, 3D graphs, scientific charts, SVG and tile maps, financial charts and more.
        See all alternatives