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stefmolin/data-morph: Morph an input dataset of 2D points into select shapes, while preserving the summary statistics to a given number of decimal points through simulated annealing. It is intended to be used as a teaching tool to illustrate the importance of data visualization.

Data Morph transforms an input dataset of 2D points into select shapes, while preserving the summary statistics to a given number of decimal points through simulated annealing. It is intended to be used as a teaching tool to illustrate the importance of data visualization (see the Data Morph in the Classroom section for ideas).


Data Morph can be installed from PyPI using pip:

$ python -m pip install data-morph-ai

Alternatively, Data Morph can be installed with conda by specifying the conda-forge channel:

$ conda install -c conda-forge data-morph-ai

Once installed, Data Morph can be used on the command line or as an importable Python package. Below are some examples; be sure to check out the documentation for more information.

Run data-morph on the command line:

$ data-morph --start-shape panda --target-shape star

This produces the animation in the newly-created morphed_data directory within your current working directory (shown above). More examples, including how to run multiple transformations in parallel, can be found in the documentation.

See all available CLI options by passing in --help or consulting the CLI reference in the documentation:

The DataMorpher class performs the morphing from a Dataset to a Shape. Any pandas.DataFrame with numeric columns x and y can be a Dataset. Use the DataLoader to create the Dataset from a file or use a built-in dataset:

from data_morph.data.loader import DataLoader

dataset = DataLoader.load_dataset('panda')

For morphing purposes, all target shapes are placed/sized based on aspects of the Dataset class. All shapes are accessible via the ShapeFactory class:

from data_morph.shapes.factory import ShapeFactory

shape_factory = ShapeFactory(dataset)
target_shape = shape_factory.generate_shape('star')

With the Dataset and Shape created, here is a minimal example of morphing:

from data_morph.morpher import DataMorpher

morpher = DataMorpher(
    decimals=2,
    in_notebook=False,  # whether you are running in a Jupyter Notebook
    output_dir='data_morph/output',
)

result = morpher.morph(start_shape=dataset, target_shape=target_shape)

Note that the result variable in the above code block is a pandas.DataFrame of the data after completing the specified iterations of the simulated annealing process. The DataMorpher.morph() method is also saving plots to visualize the output periodically and make an animation; these end up in data_morph/output, which we set as DataMorpher.output_dir.

In this example, we morphed the built-in panda Dataset into the star Shape. Be sure to try out the other built-in options:

Data Morph in the Classroom

Data Morph is intended to be used as a teaching tool to illustrate the importance of data visualization. Here are some potential classroom activities for instructors:

If you end up using Data Morph in your classroom, I would love to hear about it. Please send me a message detailing how you used it and how it went.

This code has been altered by Stefanie Molin (@stefmolin) to work for other input datasets by parameterizing the target shapes with information from the input shape. The original code works for a specific dataset called the "Datasaurus" and was created for the paper Same Stats, Different Graphs: Generating Datasets with Varied Appearance and Identical Statistics through Simulated Annealing by Justin Matejka and George Fitzmaurice (ACM CHI 2017).

The paper and video can be found on the Autodesk Research website here. The version of the code placed on GitHub at jmatejka/same-stats-different-graphs, served as the starting point for the Data Morph codebase, which is on GitHub at stefmolin/data-morph.

Read more about the creation of Data Morph here and here.

If you use this software, please cite both Data Morph (DOI: 10.5281/zenodo.7834197) and Same Stats, Different Graphs: Generating Datasets with Varied Appearance and Identical Statistics through Simulated Annealing by Justin Matejka and George Fitzmaurice (ACM CHI 2017).

Please consult the contributing guidelines.


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