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[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
Axis titles are set using the nested `title.text` property of the x or y axis. Here is an example of creating a new figure and using `update_xaxes` and `update_yaxes`, with magic underscore notation, to set the axis titles.
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extension: .md
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wide_df
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```
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### Bar chart in Dash
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[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
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nbconvert_exporter: python
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version: 3.7.6
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plotly:
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description: Creating and Updating Figures with Plotly's Python graphing library
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print("\n\n")
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```
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### Representing Figures in Dash
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[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
## Combined statistical representations with distplot figure factory
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The distplot [figure factory](/python/figure-factories/) displays a combination of statistical representations of numerical data, such as histogram, kernel density estimation or normal curve, and rug plot.
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#### Reference
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For more info on `ff.create_distplot()`, see the [full function reference](https://plotly.com/python-api-reference/generated/plotly.figure_factory.create_distplot.html)
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For more info on `ff.create_distplot()`, see the [full function reference](https://plotly.com/python-api-reference/generated/plotly.figure_factory.create_distplot.html)
[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
Please check out our [Troubleshooting guide](/python/troubleshooting/) if you run into any problems with JupyterLab.
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Please check out our [Troubleshooting guide](/python/troubleshooting/) if you run into any problems with JupyterLab, particularly if you are using multiple python environments inside Jupyter.
[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
With `go.Scatter`, you can easily color your plot based on a predefined data split. By coloring the training and the testing data points with different colors, you can easily see if whether the model generalizes well to the test data or not.
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***Trendlines**: `px.scatter` supports [built-in trendlines with accessible model output](/python/linear-fits/).
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***Animations**: many PX functions support [simple animation support via the `animation_frame` and `animation_group` arguments](/python/animations/).
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### Plotly Express in Dash
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[Dash](https://plotly.com/dash/) is the best way to build analytical apps in Python using Plotly figures. To run the app below, run `pip install dash`, click "Download" to get the code and run `python app.py`.
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Get started with [the official Dash docs](https://dash.plotly.com/installation) and **learn how to effortlessly [style](https://plotly.com/dash/design-kit/) & [deploy](https://plotly.com/dash/app-manager/) apps like this with <aclass="plotly-red"href="https://plotly.com/dash/">Dash Enterprise</a>.**
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