Data Visualization
Interactive Visualization Library
★ 4.8
Statistical Data Visualization
★ 4.7
pip install plotlypip install seabornpip install plotlypip install seabornPython data engineers use Plotly to build interactive charts for pipeline monitoring dashboards, data quality reports, and stakeholder-facing analytics. Plotly Express integrates directly with Pandas DataFrames, making it straightforward to visualise query results, model outputs, and trend data. The Dash framework extends Plotly into full web applications with dropdowns, sliders, and callbacks — enabling data teams to build internal tools without a separate frontend.
Python data engineers use Seaborn to quickly visualize relationships in pipeline data during EDA. A single `sns.heatmap(df.corr())` or `sns.pairplot(df)` call reveals correlation structure and feature distributions that guide transformation decisions — making Seaborn the standard for exploratory data analysis in Jupyter notebooks.
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