Skip to content

Data Science – End 2 End Course covering Machine Learning, Data Analytics, Deep Learning, NLP (Natural Language Processing), Reinforcement Learning, Computer Vision, and Data Engineering – Databases and Big Data tools (Hadoop, Spark)

Notifications You must be signed in to change notification settings

datawisdomx/DataScienceCourse

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 
 
 
 
 
 
 

Repository files navigation

DataScienceCourse

The Objective of this course is to teach students how to do an End-2-End data science project

  • From Problem definition, data sourcing, wrangling and modelling
  • To analyzing, visualizing and deploying & maintaining the models
  • It will cover the main principles/tools that are required for data science

This course is for anyone interested in learning data science – analyst, programmer, non-technical professional, student, etc

The End 2 End Data science course will be divided into 4 parts

  • Part 1 is a Beginner’s course that covers basic Machine Learning and Data Analytics
  • Part 2 will cover Intermediate and Advanced machine learning techniques – Deep Learning and NLP (Natural Language Processing)
  • Part 3 will cover Advanced machine learning techniques - Reinforcement Learning and Computer Vision
  • Part 4 will cover Data Engineering – Databases and Big Data tools (Hadoop, Spark)

Parts 2,3,4 of the course will be published later

Throughout the course detailed lectures covering the maths/logic of the algorithms, python code examples and online resources are provided to support the learning process

Repository for the Data Science course. Each part of the course will have a separate folder with sub folders containing lectures, code and other files.

About

Data Science – End 2 End Course covering Machine Learning, Data Analytics, Deep Learning, NLP (Natural Language Processing), Reinforcement Learning, Computer Vision, and Data Engineering – Databases and Big Data tools (Hadoop, Spark)

Topics

Resources

Stars

Watchers

Forks

Packages

No packages published

Languages