Course Outline

Day 1 

  • Data Science: an overview
  • Practical part: Let’s get started with Python - Basic features of the language 
  • The data science life cycle - part 1
  • Practical part: Working with structured data - the Pandas library

Day 2 

  • The data science life cycle - part 2
  • Practical part: dealing with real data
  • Data visualisation
  • Practical part: the Matplotlib library

Day 3

  • SQL - part 1
  • Practical part: Creating a MySql database with tables, inserting data and performing simple queries 
  • SQL part 2
  • Practical part: Integrating MySql and Python 

Day 4

  • Supervised learning part 1
  • Practical part: regression
  • Supervised learning part 2
  • Practical part: classification

Day 5

  • Supervised learning part 3
  • Practical part: building a spam filter
  • Unsupervised learning
  • Practical part: Clustering images with k-means

Requirements

  • An understanding of mathematics and statistics.
  • Some programming experience, preferably in Python.

Audience

  • Professionals interested in making a career change 
  • People curious about Data Science and Data Analytics
  35 Hours

Number of participants



Price per participant

Related Courses

Big Data Business Intelligence for Telecom and Communication Service Providers

  35 Hours

MATLAB Fundamentals, Data Science & Report Generation

  35 Hours

Related Categories