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Seaborn for Intermediates

Elevate your Seaborn skills to professional level and unlock senior Data Science roles!

4.5
Intermediate

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Seaborn for Intermediates
4 Modules

Course Curriculum

4 Modules · 14 Chapters · 14 Topics · 89 Sub-topics

01
Foundation
3 Chapters · 3 Topics · 18 Sub-topics
Introduction to Seaborn
1 Topics
Getting Started with Seaborn
6 Sub-topics
What is Seaborn and Why Use It
Seaborn vs Matplotlib
Installing Seaborn
Importing Seaborn and Initial Setup
Understanding Seaborn's Philosophy
Overview of Seaborn Plot Types
First Steps with Seaborn
1 Topics
Creating Your First Plots
6 Sub-topics
Loading Built-in Datasets
Creating Your First Scatter Plot
Creating Your First Line Plot
Understanding Figure and Axes
Basic Plot Customization
Saving Your First Plot
Seaborn Plot Interface
1 Topics
Understanding Plot Functions
6 Sub-topics
Understanding Figure-Level vs Axes-Level Functions
Using relplot() - The Relational Plot Function
Using displot() - The Distribution Plot Function
Using catplot() - The Categorical Plot Function
When to Use Each Interface Type
Converting Between Interface Types
02
Plot Types
5 Chapters · 5 Topics · 31 Sub-topics
Distribution Plots
1 Topics
Visualizing Data Distributions
7 Sub-topics
Histograms with histplot()
Kernel Density Estimation with kdeplot()
Empirical Cumulative Distribution with ecdfplot()
Rug Plots for Data Density
Combining Multiple Distribution Plots
Bivariate Distribution Plots
Customizing Bins and Bandwidth
Categorical Plots Part 1
1 Topics
Basic Categorical Visualizations
5 Sub-topics
Strip Plots with stripplot()
Swarm Plots with swarmplot()
Box Plots with boxplot()
Violin Plots with violinplot()
Understanding Categorical Data Representation
Categorical Plots Part 2
1 Topics
Advanced Categorical Visualizations
5 Sub-topics
Bar Plots with barplot()
Count Plots with countplot()
Point Plots with pointplot()
Adding Error Bars and Confidence Intervals
Comparing Multiple Categories
Relational Plots
1 Topics
Exploring Relationships in Data
7 Sub-topics
Scatter Plots with scatterplot()
Line Plots with lineplot()
Using Hue for Color Encoding
Using Size for Point Scaling
Using Style for Marker Variation
Adding Multiple Semantic Mappings
Customizing Markers and Lines
Regression Plots
1 Topics
Statistical Regression Visualization
7 Sub-topics
Linear Regression with regplot()
Advanced Regression with lmplot()
Adding Confidence Intervals
Polynomial Regression Visualization
LOWESS Smoothing
Residual Plots with residplot()
Logistic Regression Visualization
03
Customization
3 Chapters · 3 Topics · 20 Sub-topics
Color Palettes Part 1
1 Topics
Understanding Color in Visualization
6 Sub-topics
Understanding Color in Data Visualization
Qualitative Color Palettes
Sequential Color Palettes
Diverging Color Palettes
Using color_palette()
Built-in Palette Names
Styling and Themes
1 Topics
Customizing Plot Appearance
7 Sub-topics
Understanding Seaborn Themes
Using set_theme() for Global Styling
Built-in Styles (darkgrid, whitegrid, dark, white, ticks)
Context Settings (paper, notebook, talk, poster)
Font Scaling with set_context()
Customizing RC Parameters
Temporarily Overriding Styles with axes_style()
Axes and Figure Customization
1 Topics
Fine-Tuning Plot Elements
7 Sub-topics
Working with Matplotlib Axes in Seaborn
Setting Titles and Labels
Customizing Tick Labels and Positions
Adding Grids and Spines
Setting Axis Limits and Scales
Rotating Labels for Readability
Creating Subplots with Seaborn
04
Advanced Techniques
3 Chapters · 3 Topics · 20 Sub-topics
Multi-Plot Grids Part 1
1 Topics
Creating Multi-Panel Visualizations
6 Sub-topics
Understanding FacetGrid
Creating Grids with FacetGrid()
Mapping Functions to Grids
Using Row and Column Variables
Customizing Grid Layout
Adding Legends to Grids
Working with DataFrames
1 Topics
Data Preparation for Seaborn
7 Sub-topics
Long-Form vs Wide-Form Data
Preparing Data for Seaborn
Using the data Parameter
Column-Based Plotting with x and y
Handling Missing Values
Using Index as Plot Variable
Melting and Reshaping Data for Seaborn
Best Practices and Optimization
1 Topics
Professional Visualization Development
7 Sub-topics
Code Organization for Visualization
Reusable Plotting Functions
Plot Validation and Testing
Performance Optimization Tips
Memory Management
Documentation and Commenting
Version Control for Visualizations

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