Data Visualization with Python and Matplotlib
Data Visualization with Python and Matplotlib, available at $49.99, has an average rating of 4.1, with 60 lectures, based on 467 reviews, and has 4421 subscribers.
You will learn about Visualize multiple forms of both 2D and 3D graphs, like line graphs, scatter plots, bar charts, and more Load data from files or from internet sources for data visualization. Create live graphs Customize graphs, modifying colors, lines, fonts, and more Visualize Geographical data on maps This course is ideal for individuals who are Students should not take this course without a basic understanding of Python. or Students seeking to learn a variety of ways to visually display data or Students who seek to gain a deep understanding of options for visualizing data. or Students should not take this course if they are only looking for a brief summary of how to quickly display data. It is particularly useful for Students should not take this course without a basic understanding of Python. or Students seeking to learn a variety of ways to visually display data or Students who seek to gain a deep understanding of options for visualizing data. or Students should not take this course if they are only looking for a brief summary of how to quickly display data. .
Enroll now: Data Visualization with Python and Matplotlib
Summary
Title: Data Visualization with Python and Matplotlib
Price: $49.99
Average Rating: 4.1
Number of Lectures: 60
Number of Published Lectures: 59
Number of Curriculum Items: 60
Number of Published Curriculum Objects: 59
Original Price: $89.99
Quality Status: approved
Status: Live
What You Will Learn
- Visualize multiple forms of both 2D and 3D graphs, like line graphs, scatter plots, bar charts, and more
- Load data from files or from internet sources for data visualization.
- Create live graphs
- Customize graphs, modifying colors, lines, fonts, and more
- Visualize Geographical data on maps
Who Should Attend
- Students should not take this course without a basic understanding of Python.
- Students seeking to learn a variety of ways to visually display data
- Students who seek to gain a deep understanding of options for visualizing data.
- Students should not take this course if they are only looking for a brief summary of how to quickly display data.
Target Audiences
- Students should not take this course without a basic understanding of Python.
- Students seeking to learn a variety of ways to visually display data
- Students who seek to gain a deep understanding of options for visualizing data.
- Students should not take this course if they are only looking for a brief summary of how to quickly display data.
More and more people are realising the vast benefits and uses of analysing big data. However, the majority of people lack the skills and the time needed to understand this data in its original form. That’s where data visualisation comes in; creating easy to read, simple to understand graphs, charts and other visual representations of data. Python 3 and Matplotlib are the most easily accessible and efficient to use programs to do just this.
Learn Big Data Python
Visualise multiple forms of 2D and 3D graphs; line graphs, scatter plots, bar charts, etc.
Load and organise data from various sources for visualisation
Create and customise live graphs
Add finesse and style to make your graphs visually appealling
Python Data Visualisation made Easy
With over 58 lectures and 6 hours of content, this course covers almost every major chart that Matplotlib is capable of providing. Intended for students who already have a basic understanding of Python, you’ll take a step-by-step approach to create line graphs, scatter plots, stack plots, pie charts, bar charts, 3D lines, 3D wire frames, 3D bar charts, 3D scatter plots, geographic maps, live updating graphs, and virtually anything else you can think of!
Starting with basic functions like labels, titles, window buttons and legends, you’ll then move onto each of the most popular types of graph, covering how to import data from both a CSV and NumPy. You’ll then move on to more advanced features like customised spines, styles, annotations, averages and indicators, geographical plotting with Basemap and advanced wireframes.
This course has been specially designed for students who want to learn a variety of ways to visually display python data. On completion of this course, you will not only have gained a deep understanding of the options available for visualising data, but you’ll have the know-how to create well presented, visually appealing graphs too.
Tools Used
Python 3:Python is a general purpose programming language which a focus on readability and concise code, making it a great language for new coders to learn. Learning Python gives a solid foundation for learning more advanced coding languages, and allows for a wide variety of applications.
Matplotlib:Matplotlib is a plotting library that works with the Python programming language and its numerical mathematics extension ‘NumPy’. It allows the user to embed plots into applications using various general purpose toolkits (essentially, it’s what turns the data into the graph).
IDLE:IDLE is an Integrated Development Environment for Python; i.e where you turn the data into the graph. Although you can use any other IDE to do so, we recommend the use of IDLE for this particular course.
Course Curriculum
Chapter 1: Course Introduction
Lecture 1: Introduction
Lecture 2: Getting Matplotlib And Setting Up
Chapter 2: Different types of basic Matplotlib charts
Lecture 1: Section Intro
Lecture 2: Basic matplotlib graph
Lecture 3: Labels, titles and window buttons
Lecture 4: Legends
Lecture 5: Bar Charts
Lecture 6: Histograms
Lecture 7: Scatter Plots
Lecture 8: Stack Plots
Lecture 9: Pie Chart
Lecture 10: Loading data from a CSV
Lecture 11: Loading data with NumPy
Lecture 12: Section Outro
Chapter 3: Basic Customization Options
Lecture 1: Section Intro
Lecture 2: Getting Stock Prices For Our Data Set
Lecture 3: Parsing stock prices from the internet*
Lecture 4: Plotting basic stock data*
Lecture 5: Modifying labels and adding a grid*
Lecture 6: Converting from unix time and adjusting subplots*
Lecture 7: Customizing ticks*
Lecture 8: Fills and Alpha*
Lecture 9: Add, remove, and customize spines*
Lecture 10: Candlestick OHLC charts*
Lecture 11: Styles with Matplotlib*
Lecture 12: Creating our own Style*
Lecture 13: Live Graphs*
Lecture 14: Adding and placing text*
Lecture 15: Annotating a specific plot*
Lecture 16: Dynamic annotation of last price*
Lecture 17: Section Outro
Chapter 4: Advanced Customization Options
Lecture 1: Section Intro
Lecture 2: Basic subplot additions*
Lecture 3: Subplot2grid *
Lecture 4: Incorporating changes to candlestick graph*
Lecture 5: Creating moving averages with our data*
Lecture 6: Adding a High minus Low indicator to graph*
Lecture 7: Customizing the dates that show*
Lecture 8: Label and Tick customizations*
Lecture 9: Share X axis*
Lecture 10: Multi Y axis*
Lecture 11: Customizing Legends*
Lecture 12: Section Outro
Chapter 5: Geographical Plotting with Basemap
Lecture 1: Section Intro
Lecture 2: Downloading and installing Basemap
Lecture 3: Basic basemap example
Lecture 4: Customizing the projection
Lecture 5: More customization, like colors, fills, and forms of boundaries
Lecture 6: Plotting Coordinates*
Lecture 7: Connecting Coordinates*
Lecture 8: Section Outro
Chapter 6: 3D graphing
Lecture 1: Section Intro
Lecture 2: Basic 3D graph example using wire_frame
Lecture 3: 3D scatter plots
Lecture 4: 3D Bar Charts
Lecture 5: More advanced Wireframe example
Lecture 6: Section outro
Chapter 7: Course Conclusion
Lecture 1: Conclusion
Chapter 8: Bonus Material
Lecture 1: Bonus Lecture
Instructors
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Stone River eLearning
Over 1,000,000 Happy Students
Rating Distribution
- 1 stars: 11 votes
- 2 stars: 22 votes
- 3 stars: 70 votes
- 4 stars: 175 votes
- 5 stars: 189 votes
Frequently Asked Questions
How long do I have access to the course materials?
You can view and review the lecture materials indefinitely, like an on-demand channel.
Can I take my courses with me wherever I go?
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