Skip to content

Latest commit

 

History

History
42 lines (36 loc) · 1.67 KB

README.md

File metadata and controls

42 lines (36 loc) · 1.67 KB

Slides and jupyter notebook tutorial on Machine Learning and Data Science introduction.

GDG Settat

  1. Objectives
  2. Machine Learning
  3. Types of Learning
    1. Supervised Learnojg
    2. Unsupervised Learning
    3. Reinforcment Learning
    4. Regression and Classification
  4. EDA: Exploratory Data Analysis
    1. Load Data
    2. Collect general information
    3. Data Visualisation
    4. Correlation Matirx
    5. More on EDA
  5. On to Modelling
    1. Split Data
    2. K-NN Algorithm
    3. Evaluating Model Performences
    4. Define Euclidian Distance
    5. 1NN with Euclidian Distance
    6. 3NN with Euclidian Distance
    7. General KNN with Different Distances
  6. Comparing with Sklearn
  7. Summary
  8. Where to Go Next?

Ressources: