st186 / Datascience-Path

A datascience curiculum

Geek Repo:Geek Repo

Github PK Tool:Github PK Tool

Datascience-Path

A datascience curiculum

Data Science

My personal path to a self-taught education in Data Science!

Curriculum


Refresher Module

Mathematics

Courses Duration Effort
MIT OCW Mathematics for Computer Science

Core Concepts

Linear Algebra

Courses Duration Effort
Linear Algebra - Foundations to Frontiers 15 weeks 8 hours/week
Applications of Linear Algebra Part 1 5 weeks 4 hours/week
Applications of Linear Algebra Part 2 4 weeks 5 hours/week

Probability and Statistics

Courses Duration Effort
Introduction to Probability 16 weeks 12 hours/week
Foundations of Data Analysis - Part 1: Statistics Using R 6 weeks 3-6 hours/week
Foundations of Data Analysis - Part 2: Inferential Statistics 6 weeks 3-6 hours/week

Data Analysis Tools

Courses Duration Effort
Python for Data Analysis, 2nd Edition

Introduction to Data Science

Courses Duration Effort
Introduction to Data Science 8 weeks 10-12 hours/week
Data Science - CS109 from Harvard 12 weeks 5-6 hours/week
The Analytics Edge 12 weeks 10-15 hours/week

Artificial Intelligence

Machine Learning

Courses Duration Effort
Statistical Learning 9 weeks 5 hours/week
Stanford's Machine Learning Course 11 weeks 8-12 hours/week
Hands-On Machine Learning with Scikit-Learn and TensorFlow

Deep Learning

Courses Duration Effort
Deep Learning Book
Creative Tensorflow 60 hours

Modules to Come

  • Intro
  • My undergraduate CS program
  • Data Wrangling
  • Big Data / Spark
  • Projects / Kaggle
  • Specializations
  • Blog
  • Software Engineering
  • Back End development
  • Additional Resources

Credits

About

A datascience curiculum