Plotly is an ideal tool for using Python as a data visualization dashboard. 1. It supports the Dash framework and can develop interactive web applications without front-end knowledge; 2. You can prepare data through pandas and build a page structure with html and dcc modules; 3. Use callback functions to implement interactive logic such as selecting different indicators on the drop-down menu; 4. Optimization includes clear layout, fast response speed, multi-dimensional filtering and mobile adaptation; 5. Beginners suggest gradually improving the functions from the simplest version.
If you want to use Python as a data visualization dashboard, Plotly is a very suitable choice. It is not difficult to get started with, and it is powerful, suitable for the needs of beginners to advanced users.

What is Plotly Dashboard?
Simply put, Plotly's Dashboard is to concentrate multiple charts, indicators, and controls in one page for easy viewing and interaction. It is not like a static chart that can only be viewed, but can click buttons, select time ranges, and refresh data dynamically. For example, you can create a sales monitoring panel to see the sales changes in different regions and product categories in real time.
Plotly itself supports the Dash framework, which is one of its core advantages. Dash encapsulates both the front-end and the back-end. You only need to write Python code to create web applications, and you don’t need to understand HTML or JavaScript.

How to start building a basic Dashboard?
To start, you must first install several libraries: plotly
, dash
, and pandas
. You can install it with pip:
-
pip install dash pandas plotly
Then, the basic process is like this:

- Prepare your data (usually pandas DataFrame)
- Create a Dash application instance
- Use html and dcc modules to build a page structure
- Add callback functions to implement interactive logic
Here is a simple example: display a bar chart and add a drop-down menu to select different metrics.
import dash from dash import dcc, html, callback_context import plotly.express as px import pandas as pd df = pd.DataFrame({ 'Category': ['A', 'B', 'C'], 'Value 1': [10, 20, 30], 'Value 2': [15, 25, 35] }) app = dash.Dash(__name__) app.layout = html.Div([ dcc.Dropdown( id='metric-choice', options=[{'label': col, 'value': col} for col in df.columns[1:]], value=df.columns[1] ), dcc.Graph(id='bar-chart') ]) @app.callback( dash.dependencies.Output('bar-chart', 'figure'), [dash.dependencies.Input('metric-choice', 'value')] ) def update_chart(metric): fig = px.bar(df, x='category', y=metric) return fig if __name__ == '__main__': app.run_server(debug=True)
Although this code is simple, it already contains the basic structure and interaction mechanism of Dash.
How to make Dashboard more practical?
Charts alone are not enough. A truly useful Dashboard should consider the following points:
- Clear layout : Use
html.Div
,html.H1
and other tags to type reasonably, and don’t let all the content be squeezed together. - Fast response speed : If the data volume is large, it is recommended to do aggregation processing first or use a caching mechanism to avoid recalculating every click.
- Multi-dimensional filtering : In addition to the drop-down box, you can also add controls such as date selectors and check boxes to allow users to flexibly filter data.
- Mobile adaptation : Although Dash is not a responsive design by default, it can improve the experience through CSS frameworks (such as dash-bootstrap-components).
A tip: If your chart is updated frequently, you can add prevent_initial_call=True
to the callback to prevent unnecessary requests when the page is loaded.
A last little suggestion
When you first start learning, you don’t have to pursue a very complicated interface that starts with it. First run the simplest version, and then gradually add functions. For example, first get a chart to move, then add controls, change data sources, and beautify styles.
Basically that's it. Dashboard is not complicated, but the details are easy to ignore, just take it slowly.
The above is the detailed content of Python Dashboards with Plotly. For more information, please follow other related articles on the PHP Chinese website!

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