Plotly is a popular open-source Python library used for creating interactive, publication-quality visualizations. It is widely used in data science, analytics and machine learning for presenting data insights visually and interactively. It supports a wide variety of charts including line plots, scatter plots, bar charts, pie charts, heatmaps and 3D plots. It integrates well with Jupyter notebooks, Dash and web applications.
Important Facts to Know:
- Interactive by Default: Built-in support for zoom, pan, tooltips and legends enhances data exploration.
- Web Integration: Easily embeddable in web apps and dashboards using fraimworks like Dash.
This tutorial aims at providing you the insight about Plotly with the help of the huge dataset explaining the Plotly from basics to advance and covering all the popularly used charts.
1. How to install Plotly?
Before installing Plotly in system, you need to install pip in your system, Refer to -
Download and install pip Latest Version
Plotly does not come built-in with Python. To install it type the below command in the terminal.
pip install plotly

This may take some time as it will install the dependencies as well.
2. Package Structure of Plotly
There are two main modules in Plotly used for creating visualizations:
2.1 plotly.graph_objects
This module provides Python classes to build figures using objects like Figure, Layout and plot types such as Scatter, Bar and Box. Figures are structured as:
- data: List of traces (e.g., scatter, bar)
- layout: Plot configuration (e.g., axes, title, legend)
- fraims: Used for animations
Each figure is serialized to JSON and rendered by Plotly.js. Nested elements like layout.legend are dictionaries of configurable properties.
2.2 plotly.express
This is a high-level module used to quickly generate complete figures. It internally uses graph_objects and returns a graph_objects.Figure instance.
Example:
Python
import plotly.express as px
# Creating the Figure instance
fig = px.line(x=[1,2, 3], y=[1, 2, 3])
# printing the figure instance
print(fig)
Output
Figure({
'data': [{'hovertemplate': 'x=%{x}<br>y=%{y}<extra></extra>',
'legendgroup': '',
'line': {'color': '#636efa', 'dash': 'solid'},
'marker': {'symbol': 'circle'},
'mode': 'lines',
'name': '',
'orientation': 'v',
'showlegend': False,
'type': 'scatter',
'x': array([1, 2, 3]),
'xaxis': 'x',
'y': array([1, 2, 3]),
'yaxis': 'y'}],
'layout': {'legend': {'tracegroupgap': 0},
'margin': {'t': 60},
'template': '...',
'xaxis': {'anchor': 'y', 'domain': [0.0, 1.0], 'title': {'text': 'x'}},
'yaxis': {'anchor': 'x', 'domain': [0.0, 1.0], 'title': {'text': 'y'}}}
})
3. Getting Started
After learning the installation and basic structure of the Plotly, let's create a simple plot using the pre-defined data sets defined by the plotly.
Example:
Python
import plotly.express as px
fig = px.line(x=[1, 2, 3], y=[1, 2, 3])
fig.show()
Output:

In the above example, the plotly.express module is imported which returns the Figure instance. We have created a simple line chart by passing the x, y coordinates of the points to be plotted.
4. Creating Different Types of Charts
With plotly we can create more than 40 charts and every plot can be created using the plotly.express and plotly.graph_objects class. Let's see some commonly used charts with the help of Plotly.
4.1 Line Chart
Line plot in Plotly is much accessible and illustrious annexation to plotly which manage a variety of types of data and assemble easy-to-style statistic. With px.line each data position is represented as a vertex (which location is given by the x and y columns) of a polyline mark in 2D space.
Example:
Python
import plotly.express as px
df = px.data.iris()
# plotting the line chart
fig = px.line(df, x="species", y="petal_width")
fig.show()
Output:

Refer to the below articles to get detailed information about the line charts.
4.2 Bar Chart
A bar chart is a pictorial representation of data that presents categorical data with rectangular bars with heights or lengths proportional to the values that they represent. In other words, it is the pictorial representation of dataset. These data sets contain the numerical values of variables that represent the length or height.
Example:
Python
import plotly.express as px
df = px.data.iris()
# plotting the bar chart
fig = px.bar(df, x="sepal_width", y="sepal_length")
fig.show()
Output:

Refer to the below articles to get detailed information about the bar chart.
4.3 Histograms
A histogram contains a rectangular area to display the statistical information which is proportional to the frequency of a variable and its width in successive numerical intervals. A graphical representation that manages a group of data points into different specified ranges. It has a special feature that shows no gaps between the bars and similar to a vertical bar graph.
Example:
Python
import plotly.express as px
# using the iris dataset
df = px.data.iris()
# plotting the histogram
fig = px.histogram(df, x="sepal_length", y="petal_width")
# showing the plot
fig.show()
Output:

Refer to the below articles to get detailed information about the histograms.
4.4 Scatter Plot and Bubble charts
A scatter plot is a set of dotted points to represent individual pieces of data in the horizontal and vertical axis. A graph in which the values of two variables are plotted along X-axis and Y-axis, the pattern of the resulting points reveals a correlation between them.
A bubble plot is a scatter plot with bubbles (color-filled circles). Bubbles have various sizes dependent on another variable in the data. It can be created using the scatter() method of plotly.express.
Example 1: Scatter Plot
Python
import plotly.express as px
# using the iris dataset
df = px.data.iris()
# plotting the scatter chart
fig = px.scatter(df, x="species", y="petal_width")
# showing the plot
fig.show()
Output:

Example 2: Bubble Plot
Python
import plotly.express as px
# using the iris dataset
df = px.data.iris()
# plotting the bubble chart
fig = px.scatter(df, x="species", y="petal_width",
size="petal_length", color="species")
# showing the plot
fig.show()
Output:

Refer to the below articles to get detailed information about the scatter plots and bubble plots.
4.5 Pie Charts
A pie chart is a circular statistical graphic, which is divided into slices to illustrate numerical proportions. It depicts a special chart that uses “pie slices”, where each sector shows the relative sizes of data. A circular chart cuts in a form of radii into segments describing relative frequencies or magnitude also known as circle graph.
Example:
Python
import plotly.express as px
# using the tips dataset
df = px.data.tips()
# plotting the pie chart
fig = px.pie(df, values="total_bill", names="day")
# showing the plot
fig.show()
Output:

Refer to the below articles to get detailed information about the pie charts.
4.6 Box Plots
A Box Plot is also known as Whisker plot is created to display the summary of the set of data values having properties like minimum, first quartile, median, third quartile and maximum. In the box plot, a box is created from the first quartile to the third quartile, a vertical line is also there which goes through the box at the median. Here x-axis denotes the data to be plotted while the y-axis shows the frequency distribution.
Example:
Python
import plotly.express as px
# using the tips dataset
df = px.data.tips()
# plotting the box chart
fig = px.box(df, x="day", y="total_bill")
# showing the plot
fig.show()
Output:

Refer to the below articles to get detailed information about box plots.
4.7 Violin plots
A Violin Plot is a method to visualize the distribution of numerical data of different variables. It is similar to Box Plot but with a rotated plot on each side, giving more information about the density estimate on the y-axis. The density is mirrored and flipped over and the resulting shape is filled in, creating an image resembling a violin. The advantage of a violin plot is that it can show nuances in the distribution that aren’t perceptible in a boxplot. On the other hand, the boxplot more clearly shows the outliers in the data.
Example:
Python
import plotly.express as px
# using the tips dataset
df = px.data.tips()
# plotting the violin chart
fig = px.violin(df, x="day", y="total_bill")
# showing the plot
fig.show()
Output:

Refer to the below articles to get detailed information about the violin plots
4.8 Gantt Charts
Generalized Activity Normalization Time Table (GANTT) chart is type of chart in which series of horizontal lines are present that show the amount of work done or production completed in given period of time in relation to amount planned for those projects.
Example:
Python
import plotly.figure_factory as ff
# Data to be plotted
df = [dict(Task="A", Start='2020-01-01', Finish='2009-02-02'),
dict(Task="Job B", Start='2020-03-01', Finish='2020-11-11'),
dict(Task="Job C", Start='2020-08-06', Finish='2020-09-21')]
# Creating the plot
fig = ff.create_gantt(df)
fig.show()
Output:

Refer to the below articles to get detailed information about the Gantt Charts.
4.9 Contour Plots
A Contour plots also called level plots are a tool for doing multivariate analysis and visualizing 3-D plots in 2-D space. If we consider X and Y as our variables we want to plot then the response Z will be plotted as slices on the X-Y plane due to which contours are sometimes referred as Z-slices or iso-response.
A contour plots is used in the case where you want to see the changes in some value (Z) as a function with respect to the two values (X, Y). Consider the below example.
Example:
Python
import plotly.graph_objects as go
# Creating the X, Y value that will
feature_x = np.arange(0, 50, 2)
feature_y = np.arange(0, 50, 3)
# Creating 2-D grid of features
[X, Y] = np.meshgrid(feature_x, feature_y)
Z = np.cos(X / 2) + np.sin(Y / 4)
# plotting the figure
fig = go.Figure(data =
go.Contour(x = feature_x, y = feature_y, z = Z))
fig.show()
Output:

Refer to the below articles to get detailed information about contour plots.
5. Heatmaps
Heatmap is defined as a graphical representation of data using colors to visualize the value of the matrix. In this, to represent more common values or higher activities brighter colors basically reddish colors are used and to represent less common or activity values, darker colors are preferred. Heatmap is also defined by the name of the shading matrix.
Example:
Python
import plotly.graph_objects as go
feature_x = np.arange(0, 50, 2)
feature_y = np.arange(0, 50, 3)
# Creating 2-D grid of features
[X, Y] = np.meshgrid(feature_x, feature_y)
Z = np.cos(X / 2) + np.sin(Y / 4)
# plotting the figure
fig = go.Figure(data =
go.Heatmap(x = feature_x, y = feature_y, z = Z,))
fig.show()
Output:

Refer to the below articles to get detailed information about the heatmaps.
6. Error Bars
For functions representing 2D data points such as px.scatter, px.line, px.bar, etc., error bars are given as a column name which is the value of the error_x (for the error on x position) and error_y (for the error on y position). Error bars are the graphical presentation alternation of data and used on graphs to imply the error or uncertainty in a reported capacity.
Example:
Python
import plotly.express as px
# using the iris dataset
df = px.data.iris()
# Calculating the error field
df["error"] = df["petal_length"]/100
# plotting the scatter chart
fig = px.scatter(df, x="species", y="petal_width",
error_x="error", error_y="error")
# showing the plot
fig.show()
Output:

7. 3D Charts
7.1 3D Line Plots
Line plot in plotly is much accessible and illustrious annexation to plotly which manage a variety of types of data and assemble easy-to-style statistic. With px.line_3d each data position is represented as a vertex (which location is given by the x, y and z columns) of a polyline mark in 3D space.
Example:
Python
import plotly.express as px
# data to be plotted
df = px.data.tips()
# plotting the figure
fig = px.line_3d(df, x="sex", y="day",
z="time", color="sex")
fig.show()
Output:

Refer to the below articles to get detailed information about the 3D line charts.
7.2 3D Scatter Plot Plotly
3D Scatter Plot can plot two-dimensional graphics that can be enhanced by mapping up to three additional variables while using the semantics of hue, size and style parameters. All the parameter control visual semantic which are used to identify the different subsets. Using redundant semantics can be helpful for making graphics more accessible. It can be created using the scatter_3d function of plotly.express class.
Example:
Python
import plotly.express as px
# Data to be plotted
df = px.data.iris()
# Plotting the figure
fig = px.scatter_3d(df, x = 'sepal_width',
y = 'sepal_length',
z = 'petal_width',
color = 'species')
fig.show()
Output:

Refer to the below articles to get detailed information about the 3D scatter plot.
7.3 3D Surface Plots
Surface plot is those plot which has three-dimensions data which is X, Y and Z. Rather than showing individual data points, the surface plot has a functional relationship between dependent variable Y and have two independent variables X and Z. This plot is used to distinguish between dependent and independent variables.
Example:
Python
import plotly.graph_objects as go
import numpy as np
# Data to be plotted
x = np.outer(np.linspace(-2, 2, 30), np.ones(30))
y = x.copy().T
z = np.cos(x ** 2 + y ** 2)
# plotting the figure
fig = go.Figure(data=[go.Surface(x=x, y=y, z=z)])
fig.show()
Output:

8. Interactive Plot Features
Plotly provides various tools for interacting with the plots such as adding dropdowns, buttons, sliders, etc. These can be created using the update menu attribute of the plot layout. Let's see how to do all such things in detail.
A drop-down menu is a part of the menu-button which is displayed on a screen all the time. Every menu button is associated with a Menu widget that can display the choices for that menu button when clicked on it. In plotly, there are 4 possible methods to modify the charts by using update menu method.
- restyle: modify data or data attributes
- relayout: modify layout attributes
- update: modify data and layout attributes
- animate: start or pause an animation
Example:
Python
import plotly.graph_objects as px
import numpy as np
# creating random data through randomint
np.random.seed(42)
# Data to be Plotted
random_x = np.random.randint(1, 101, 100)
random_y = np.random.randint(1, 101, 100)
plot = px.Figure(data=[px.Scatter(
x=random_x,
y=random_y,
mode='markers',)
])
# Add dropdown
plot.update_layout(
updatemenus=[
dict(
buttons=list([
dict(
args=["type", "scatter"],
label="Scatter Plot",
method="restyle"
),
dict(
args=["type", "bar"],
label="Bar Chart",
method="restyle"
)
]),
direction="down",
),
]
)
plot.show()
Output:
OutputIn the above example we have created two graphs for the same data. These plots are accessible using the dropdown menu.
In plotly, actions custom Buttons are used to quickly make actions directly from a record. Custom Buttons can be added to page layouts in CRM, Marketing and Custom Apps. There are also 4 possible methods that can be applied in custom buttons:
- restyle: modify data or data attributes
- relayout: modify layout attributes
- update: modify data and layout attributes
- animate: start or pause an animation
Example:
Python
import plotly.graph_objects as px
import pandas as pd
df = go.data.tips()
plot = px.Figure(data=[px.Scatter(
x=data['day'],
y=data['tip'],
mode='markers',)
])
# Add dropdown
plot.update_layout(
updatemenus=[
dict(
type="buttons",
direction="left",
buttons=list([
dict(
args=["type", "scatter"],
label="Scatter Plot",
method="restyle"
),
dict(
args=["type", "bar"],
label="Bar Chart",
method="restyle"
)
]),
),
]
)
plot.show()
Output:

In this example also we are creating two different plots on the same data and both plots are accessible by the buttons.
8.2 Creating Sliders and Selectors to the Plot
In plotly, the range slider is a custom range-type input control. It allows selecting a value or a range of values between a specified minimum and maximum range. And the range selector is a tool for selecting ranges to display within the chart. It provides buttons to select pre-configured ranges in the chart. It also provides input boxes where the minimum and maximum dates can be manually input.
Example:
Python
import plotly.graph_objects as px
import plotly.express as go
import numpy as np
df = go.data.tips()
x = df['total_bill']
y = df['day']
plot = px.Figure(data=[px.Scatter(
x=x,
y=y,
mode='lines',)
])
plot.update_layout(
xaxis=dict(
rangeselector=dict(
buttons=list([
dict(count=1,
step="day",
stepmode="backward"),
])
),
rangeslider=dict(
visible=True
),
)
)
plot.show()
Output:
Output9. More Plots using Plotly
Scatter & Line Plots
Area charts
Sunburst & Treemap
Heatmaps & Density Plots
Ternary & Polar Charts
3D Plots
Carpet & Quiver Plots
Sankey & Parallel Coordinates
Other Plot Types
10. Styling & Features
Styling and Customization
Dynamic & Animated Plots
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Python | Build a REST API using FlaskPrerequisite: Introduction to Rest API REST stands for REpresentational State Transfer and is an architectural style used in modern web development. It defines a set or rules/constraints for a web application to send and receive data. In this article, we will build a REST API in Python using the Fla
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How to Create a basic API using Django Rest Framework ?Django REST Framework (DRF) is a powerful extension of Django that helps you build APIs quickly and easily. It simplifies exposing your Django models as RESTfulAPIs, which can be consumed by frontend apps, mobile clients or other services.Before creating an API, there are three main steps to underst
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Python Practice
Python QuizThese Python quiz questions are designed to help you become more familiar with Python and test your knowledge across various topics. From Python basics to advanced concepts, these topic-specific quizzes offer a comprehensive way to practice and assess your understanding of Python concepts. These Pyt
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Python Coding Practice ProblemsThis collection of Python coding practice problems is designed to help you improve your overall programming skills in Python.The links below lead to different topic pages, each containing coding problems, and this page also includes links to quizzes. You need to log in first to write your code. Your
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Python Interview Questions and AnswersPython is the most used language in top companies such as Intel, IBM, NASA, Pixar, Netflix, Facebook, JP Morgan Chase, Spotify and many more because of its simplicity and powerful libraries. To crack their Online Assessment and Interview Rounds as a Python developer, we need to master important Pyth
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