Data Visualization with Python
Data Visualization with Python, available at $19.99, with 41 lectures, and has 280 subscribers.
You will learn about What is Data Visualization Plot Style Simple Plot Types of Plot Multiple Plots Line Plot Scattering in Matplotlib Labeling Plots Scatter Plots Matplotlib Glitches Colors in Scattering Plot Vs Scatter Plot Bar Plotting Multiple Bar Plot Stacked and Sub Plots Histogram Plot Data Set Data Distribution Subplot This course is ideal for individuals who are For those who is interested in data visualization It is particularly useful for For those who is interested in data visualization.
Enroll now: Data Visualization with Python
Summary
Title: Data Visualization with Python
Price: $19.99
Number of Lectures: 41
Number of Published Lectures: 41
Number of Curriculum Items: 41
Number of Published Curriculum Objects: 41
Original Price: $199.99
Quality Status: approved
Status: Live
What You Will Learn
- What is Data Visualization
- Plot Style
- Simple Plot
- Types of Plot
- Multiple Plots
- Line Plot
- Scattering in Matplotlib
- Labeling Plots
- Scatter Plots
- Matplotlib Glitches
- Colors in Scattering
- Plot Vs Scatter Plot
- Bar Plotting
- Multiple Bar Plot
- Stacked and Sub Plots
- Histogram Plot
- Data Set
- Data Distribution
- Subplot
Who Should Attend
- For those who is interested in data visualization
Target Audiences
- For those who is interested in data visualization
Data visualization is a crucial part of data analysis that helps communicate insights and findings effectively. Python is a popular programming language for data visualization because of its extensive libraries, making it a popular choice among data scientists, researchers, and analysts. This course on Data Visualization with Python will provide an in-depth understanding of different visualization techniques and tools available in Python.
The course will begin with an introduction to data visualization and its importance in data analysis. The course will then move on to cover the basics of Python programming, which will include data types, variables, loops, conditional statements, functions, and modules. Participants who are already familiar with Python programming can skip this section.
The course will then focus on the different libraries available for data visualization in Python. The first library that will be covered is Matplotlib, which is a widely used library for creating static visualizations in Python. Participants will learn how to create different types of plots, including line charts, bar charts, scatter plots, histograms, and heat maps. The course will also cover customization options in Matplotlib, such as controlling the font size, colors, and axis labels.
Next, the course will cover Seaborn, a library built on top of Matplotlib that provides a higher-level interface for creating statistical visualizations. Participants will learn how to create complex visualizations such as distribution plots, categorical plots, and regression plots. Seaborn provides a variety of color palettes, making it easy to customize the visualizations. The course will also cover the built-in datasets in Seaborn, which makes it easy to create sample visualizations quickly.
The course will then move on to Plotly, a library that allows the creation of interactive visualizations in Python. Participants will learn how to create a wide range of interactive charts, including line charts, scatter plots, and 3D surface plots. Plotly is a cloud-based service that allows users to share and collaborate on visualizations. The course will also cover customization options in Plotly and creating custom dashboards, making it easy to explore and visualize data.
Bokeh will also be covered in the course, which is another Python library that allows the creation of interactive visualizations. Participants will learn how to create interactive data applications and dashboards. Bokeh has a wide range of visualizations, including line charts, scatter plots and heat maps. Bokeh provides a range of customization options, including color palettes, font styles, and axes formatting. The course will also cover handling large datasets and streaming data in Bokeh.
The course will also cover geospatial visualization using Geopandas, a library that allows users to work with geospatial data in Python. Participants will learn how to create maps and visualize spatial data. The library provides a variety of plots, including choropleth maps, point maps, and line maps.
In addition to the libraries mentioned above, the course will also cover Altair, ggplot, and Plotnine. Altair is a declarative library for creating visualizations, which means that users specify the data and the chart type, and the library generates the visualization automatically. ggplot is a library that is inspired by the R ggplot2 library and allows users to create complex visualizations easily. Plotnine is a library that is based on ggplot and provides a Pythonic interface for creating visualizations.
The course will also cover best practices for data visualization, including choosing the right chart type for the data, labeling the axes, and adding titles, and legends. Participants will also learn how to design effective data visualizations by using color schemes, typography, and layout.
The course will include hands-on exercises and projects, where participants will work on real-world datasets and create visualizations using different libraries in Python. Participants will also learn how to present their findings and insights effectively using visualizations.
AD Chauhdry
Course Curriculum
Chapter 1: Introduction
Lecture 1: What is Data Visualization
Lecture 2: Plot Style
Chapter 2: Simple Plot
Lecture 1: Types of Plot
Lecture 2: Matplotlib inline
Lecture 3: Plotting a Figure
Lecture 4: Sin Plot
Lecture 5: Multiple Plots of Sin and Cos
Chapter 3: Line Plot
Lecture 1: Styling Line Plot
Lecture 2: Change Type of Line
Chapter 4: Scattering and Labelling in Matplotlib
Lecture 1: Labeling Plots
Lecture 2: Labeling Plots in Python
Lecture 3: Legends Plotting
Lecture 4: Matplotlib Gotches
Lecture 5: Matplotlib Glotches in Python
Lecture 6: Scatter Plots
Lecture 7: Scattering of Sin Plot
Chapter 5: Colors Scheme in Scattering and Line Plot
Lecture 1: Colors in Scattering
Lecture 2: Scatter and Line Plot
Lecture 3: Customization of Scatter Plot
Lecture 4: Colors Scheme of Line and Scatter Plots
Lecture 5: Example
Lecture 6: Plot Vs Scatter Plot
Chapter 6: Bar Plotting
Lecture 1: Bar Plotting
Lecture 2: List Data
Lecture 3: Labeling of Bar Plot
Lecture 4: Multiple Bar Plot
Lecture 5: Multiple Bar Plot in Python
Lecture 6: Plot by Bar Plot
Lecture 7: Adding Labels in Bar Plot
Chapter 7: Stacked and Sub Plots
Lecture 1: Multiple Line Plots
Lecture 2: Stacked Bar Plot
Lecture 3: Stacked Bar Plot in Python
Lecture 4: Sub Plots
Lecture 5: Labeling Stacked Plots
Chapter 8: Histogram in Matplotlib
Lecture 1: Histogram Plot
Lecture 2: Histogram in Matplotlib
Lecture 3: Legend Histogram
Lecture 4: Data Set
Lecture 5: Data Distribution
Lecture 6: Subplot of Histogram
Lecture 7: Color Scheme in Histogram
Instructors
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AD Chauhdry
Researcher, Mathematician, and Data Scientist
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