Course Outline

Introduction

  • Overview of Python and its Powerful Ecosystem for Data Analysis

Getting Started

  • Setting up the development environment
  • Installing Python, Numpy, and Pandas
  • Installing Jupyter

Python Programming for Data Analysis

  • Overview of Python syntax
  • Writing and running Python code

Working with Data

  • Importing a dataset
  • Cleaning the data

The Python Data Frame

  • Understanding data frames
  • Manipulating data in a date frame

Gaining Insights from Data

  • Summarizing the data
  • Generating reports
  • Visualizing data

Saving Your Python Code

  • Saving your code in a version control repository
  • Allowing others to access your code

Improving Your Code

  • Testing your code and fixing the errors
  • Tightening your code using an iterative approach

Taking Your Code to Production

  • Uploading your code to a website
  • Automating the executing of your code

Python Programming Best Practices

Summary and Conclusion

Requirements

  • Programming experience in any language

Audience

  • Developers
  • Beginning data scientists
  • Business analysis with technical skills
 28 Hours

Testimonials (4)

Related Courses

ArcGIS for Spatial Analysis

14 Hours

ArcMap in ArcGIS

14 Hours

ArcGIS Pro for Spatial Analysis

14 Hours

ArcGIS with Python Scripting

14 Hours

QGIS for Geographic Information System

21 Hours

Advanced Data Analysis with TIBCO Spotfire

14 Hours

Introduction to Spotfire

14 Hours

AI-Driven Data Analysis with TIBCO Spotfire X

14 Hours

Data Analysis with SQL, Python and Spotfire

14 Hours

Sensu: Beginner to Advanced

14 Hours

Monitoring Your Resources with Munin

7 Hours

Automated Monitoring with Zabbix

14 Hours

Fluentd for Log Data Unification

14 Hours

Nagios Certified Administrator Preparation

21 Hours

Advanced Nagios

21 Hours

Related Categories