The Ultimate Python Data Visualization Course- Step By Step

Posted By: ELK1nG

The Ultimate Python Data Visualization Course- Step By Step
Published 10/2024
MP4 | Video: h264, 1920x1080 | Audio: AAC, 44.1 KHz
Language: English | Size: 1.25 GB | Duration: 4h 34m

Master Data Visualization with Python: A Complete Step-by-Step Guide to Unlocking the Power of Your Data

What you'll learn

Introduction to Python for Data Visualization

Installing Required Libraries (Matplotlib, Seaborn, Plotly, etc.)

Basic Plotting: Line Plots, Scatter Plots, and Bar Charts

Customizing Plots: Titles, Labels, and Legends

Creating Subplots for Multiple Charts

Adding Annotations and Text to Plots

Saving and Exporting Charts for Different Formats

Customizing Aesthetics with Seaborn Themes and Styles

Creating Pair Plots, Heatmaps, and Violin Plots

Visualizing Relationships with Seaborn (Categorical, Linear, and Non-linear)

Creating Interactive Line, Bar, and Scatter Plots

Building Interactive Dashboards with Plotly Dash

Visualizing Time Series Data

Optimizing Performance for Large Data Visualizations

Principles of Effective Data Storytelling

Using Color Effectively in Data Visualizations

Requirements

No Prior Experience Required

Description

Unlock the power of your data with 'The Ultimate Python Data Visualization Course- Step By Step.' This comprehensive course is designed to take you from a beginner to an expert in Python data visualization. You'll learn how to create stunning and informative visuals that communicate your data's story effectively.Starting with the basics, you'll delve into Python's powerful libraries like Matplotlib, Seaborn, and Plotly. Each section of the course builds on the previous one, ensuring a solid understanding of core concepts before moving on to more advanced techniques. You'll work on real-world projects and practical examples that bring theory to life and equip you with skills you can apply immediately.This Course Include:Introduction to Data VisualizationIntroduction to Python for Data VisualizationThe Importance of Data Visualization and TypessInstalling Required Libraries (Matplotlib, Seaborn, Plotly, etc.)Getting Started with MatplotlibBasic Plotting: Line Plots, Scatter Plots, and Bar ChartsCustomizing Plots: Titles, Labels, and LegendsWorking with Colors, Markers, and Line StylesCreating Subplots for Multiple ChartsAdvanced Matplotlib TechniquesCustomizing Plot Axes and TicksAdding Annotations and Text to PlotsCreating Histograms and Density PlotsWorking with 3D Plots in MatplotlibSaving and Exporting Charts for Different FormatsData Visualization with SeabornCreating Pair Plots, Heatmaps, and Violin PlotsCustomizing Aesthetics with Seaborn Themes and StylesVisualizing Relationships with Seaborn (Categorical, Linear, and Non-linear)Interactive Visualizations with PlotlyCreating Interactive Line, Bar, and Scatter PlotsVisualizing Geospatial Data with PlotlyBuilding Interactive Dashboards with Plotly DashVisualizing Data with Pandas and Other LibrariesUsing Pandas for Quick Data VisualizationVisualizing Time Series DataData Visualization with Altair and BokehCreating Interactive Visualizations with AltairVisualizing Large DatasetsWorking with Big Data: Challenges and StrategiesVisualizing Data with Dask and VaexOptimizing Performance for Large Data VisualizationsVisual Storytelling and Design PrinciplesPrinciples of Effective Data StorytellingUsing Color Effectively in Data VisualizationsTypography and Layout for Enhanced ClarityDesigned for data analysts, business professionals, and aspiring data scientists, this course provides the tools to make data-driven decisions with confidence. Unlock your data’s potential with this comprehensive, step-by-step guide and become a visualization expert.Enroll now in this transformative journey and start making your data speak volumes!

Overview

Section 1: Introduction to Data Visualization

Lecture 1 Introduction to Python for Data Visualization

Lecture 2 The Importance of Data Visualization and Typess

Lecture 3 Installing Required Libraries (Matplotlib, Seaborn, Plotly, etc.)

Section 2: Getting Started with Matplotlib

Lecture 4 Basic Plotting: Line Plots, Scatter Plots, and Bar Charts

Lecture 5 Customizing Plots: Titles, Labels, and Legends

Lecture 6 Working with Colors, Markers, and Line Styles

Lecture 7 Creating Subplots for Multiple Charts

Section 3: Advanced Matplotlib Techniques

Lecture 8 Customizing Plot Axes and Ticks

Lecture 9 Adding Annotations and Text to Plots

Lecture 10 Creating Histograms and Density Plots

Lecture 11 Working with 3D Plots in Matplotlib

Lecture 12 Saving and Exporting Charts for Different Formats

Section 4: Data Visualization with Seaborn

Lecture 13 Creating Pair Plots, Heatmaps, and Violin Plots

Lecture 14 Customizing Aesthetics with Seaborn Themes and Styles

Lecture 15 Visualizing Relationships with Seaborn (Categorical, Linear, and Non-linear)

Section 5: Interactive Visualizations with Plotly

Lecture 16 Creating Interactive Line, Bar, and Scatter Plots

Lecture 17 Visualizing Geospatial Data with Plotly

Lecture 18 Building Interactive Dashboards with Plotly Dash

Section 6: Visualizing Data with Pandas and Other Libraries

Lecture 19 Using Pandas for Quick Data Visualization

Lecture 20 Visualizing Time Series Data

Lecture 21 Data Visualization with Altair and Bokeh

Lecture 22 Creating Interactive Visualizations with Altair

Section 7: Visualizing Large Datasets

Lecture 23 Working with Big Data: Challenges and Strategies

Lecture 24 Visualizing Data with Dask and Vaex

Lecture 25 Optimizing Performance for Large Data Visualizations

Section 8: Visual Storytelling and Design Principles

Lecture 26 Principles of Effective Data Storytelling

Lecture 27 Using Color Effectively in Data Visualizations

Lecture 28 Typography and Layout for Enhanced Clarity

Anyone interested in Python programming, Python scripting, machine learning, data science and data visualization.,Those who are interested to learn data science or data visualization application.