/DSF5

Data Science Fundamentals 5 course at the University of Bern

Primary LanguageJupyter NotebookCreative Commons Zero v1.0 UniversalCC0-1.0

Introduction to Machine Learning and Data Analysis

Open In Colab

Introduction to Machine Learning and Data Analysis

Learning outcomes:

  • Overview of machine learning pipelines and their implementation with scikit-learn
  • Regression and Classification: linear models and logistic regression
  • Decision trees & random forest models
  • Clustering with K-means and Gaussian mixtures
  • Principal component analysis (PCA) and non-linear embeddings (t-SNE and UMAP)
  • Artificial Neural networks as general fitters, fully connected nets used to classify the fashion-MNIST dataset
  • Scikit-learn and clustering maps, Q&A

Our wepgabe is dsl.unibe.ch