YoVDO

Data Science Hands-On Crash Course

Offered By: freeCodeCamp

Tags

Data Science Courses Python Courses Unsupervised Learning Courses Linear Regression Courses Support Vector Machine (SVM) Courses Algorithms Courses Classification Courses Decision Trees Courses

Course Description

Overview

Dive into a comprehensive 2-3 hour crash course on data science fundamentals. Explore the theory and practical implementation of key algorithms used in the field. Begin with an introduction and setup, then progress through linear regression, classification, resampling and regularization, decision trees, support vector machines (SVM), and unsupervised learning. Each topic is covered in both theoretical and Python-based practical sessions. Access accompanying code and datasets on GitHub for hands-on practice. Gain a solid foundation in data science techniques and their real-world applications through this intensive, code-focused learning experience.

Syllabus

) Introduction.
) Setup.
) Linear regression (theory).
) Linear regression (Python).
) Classification (theory).
) Classifiaction (Python).
) Resampling & regularization (theory).
) Resampling and regularization (Python).
) Decision trees (theory).
) Decision trees (Python).
) SVM (theory).
) SVM (Python).
) Unsupervised learning (theory).
) Unsupervised learning (Python).
) Conclusion.


Taught by

freeCodeCamp.org

Related Courses

Information Theory
The Chinese University of Hong Kong via Coursera
Intro to Computer Science
University of Virginia via Udacity
Analytic Combinatorics, Part I
Princeton University via Coursera
Algorithms, Part I
Princeton University via Coursera
Divide and Conquer, Sorting and Searching, and Randomized Algorithms
Stanford University via Coursera