8 Immensely Powerful No-code Tools to Supercharge Your DS Projects

8 powerful no-code data science tools in a single frame.

Personally, I am a big fan of no-code tools. They are extremely useful in eliminating repetitive code across projects—thereby boosting productivity.

The below visual depicts 8 powerful (and my favorite) no-code tools for data science tasks:

They automate many redundant steps in data science projects and help you perform data science tasks without any code.

Let’s discuss them one by one.

  • Gigasheet:

    • Browser-based no-code tool to analyze data at scale.

    • Use AI to conduct data analysis

    • It’s like a combination of Excel + Pandas with no scale limitations.

    • You can analyze datasets as large as 1B rows.

    • Get started: Gigasheet.

  • Mito:

    • Create a spreadsheet interface in Jupyter Notebook.

    • Use Mito AI to conduct data analysis.

    • Automatically generates Python code for each analysis

    • Get started: Mitosheet.

  • PivotTableJS:

    • Create Pivot tables, aggregations, and charts using drag-and-drop.

    • Add heatmaps to tables.

    • Works within Jupyter Notebook.

    • Get started: PivotTableJS.

  • Drawdata:

    • Draw any 2D scatter dataset by dragging the mouse.

    • Export the data as DataFrame, CSV, or JSON.

    • Create a histogram and line plot by dragging the mouse.

    • Get started: Drawdata.

  • PyGWalker:

    • Open a tableau-style interface in Jupyter notebook

    • Analyze a DataFrame as you would in Tableau.

    • Get started: PyGWalker.

  • Visual Python:

    • A GUI-based Python code generator.

    • Import libraries, perform data I/O, create plots, write code for ML models, etc. by clicking buttons.

    • Get started: Visual Python.

  • Tensorflow Playground:

    • Provides an elegant UI to build, train, and visualize neural networks.

    • Browser-based tool.

    • Change data, model architecture, hyperparameters, etc., by clicking buttons.

    • Get started: Tensorflow Playground.

  • ydata-profiling:

    • Generate a standardized EDA report for your dataset.

    • Works in a Jupyter notebook

    • Covers info about missing values, data statistics, correlation, data interactions, etc.

    • Get started: ydata-profiling.

👉 Over to you: Which cool no-code tools did I miss?

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