Skip to content

Latest commit

 

History

History
74 lines (54 loc) · 1.86 KB

readme.md

File metadata and controls

74 lines (54 loc) · 1.86 KB

Course Structure

Week 1

Python and ML fundamentals

  1. Python refresher
  2. Data types and structure
  3. Introduction to Numpy, Pandas, and Matplotlib:
  4. Handling missing data with Pandas:
  5. Data visualization techniques using Matplotlib and Seaborn
  6. Feature scaling and normalization with Numpy and Scikit-learn.
  7. Execute a high-level end-to-end machine learning project using various ML packages.

Week 2

Statistics and Unsupervised Methods

  1. K-means clustering
  2. Gaussian Mixture Model
  3. Principal component analysis (PCA)
  4. Singular Value Decomposition (SVD)
  5. t-Distributed Stochastic Neighbor Embedding (t-SNE)

Week 3

Overview of machine learning concepts

  1. Applications and examples
  2. Types of machine learning
  3. Parametric and non-parametric models
  4. Python libraries
  5. Optimization Methods and Gradient Descent
  6. Linear regression
  7. Evaluation metrics for regression
  8. Polynomial regression
  9. Bias-variance tradeoff
  10. Regularization techniques (LASSO, Ridge)

Week 4

Supervised methods: Regression and Classification

  1. Logistic regression
  2. Evaluation metrics for classification
  3. Support vector machines (SVM):
  4. Decision trees and random forests
  5. K-nearest neighbors (KNN)
  6. Cross-validation
  7. Grid search and random search for hyperparameter tuning

Week 5

Deep learning methods

  1. Introduction to Autoencoders
  2. Neural network architecture
  3. Activation functions
  4. Backpropagation
  5. Training a neural network with TensorFlow and Keras

Week 6

Computer vision and advanced methods

  1. CNN architecture
  2. Convolution and pooling layers
  3. Applications in computer vision
  4. Generative models
  5. Deep unsupervised learning

Course Textbook/Resources/Materials Müller, A. C., & Guido, S. (2016). Introduction to Machine Learning with Python: A Guide for Data Scientists. O’Reilly Media, Incorporated.