Jason brownlee machine learning mini course notes and examples are gathered through subscribed emails from https://machinelearningmastery.com
- Applied Machine Learning With Weka
- XGBoost With Python Mini-Course
- Deep Learning With Python Mini-Course
- Be a machine learning engineer
- Better results by structuring your problem
- Catalog of machine learning algorithms
- Combine predictions with ensemble methods
- Deep learning for sequence prediction
- Kick your math envy
- Machine learning has a trap
- Machine learning without a single line of code
- Nonlinear algorithms for when you need performance
- Practical machine learning problems
- Related fields of study
- Standard machine learning terms
- Start with simple linear algorithms
- Visualize your data with Pandas
- What is deep learning?
- How To Talk About Data in Machine Learning
- The Principle That Underpins All Algorithms
- Parametric and Nonparametric Algorithms
- Bias, Variance and the Trade-off
- Linear Regression Algorithm
- Logistic Regression Algorithm
- Linear Discriminant Analysis Algorithm
- Classification and Regression Trees
- Naive Bayes Algorithm
- K-Nearest Neighbors Algorithm
- Learning Vector Quantization
- Support Vector Machines
- Bagging and Random Forest
- Boosting and AdaBoost
- 4 Prediction Models and 3 Types of Gradient Descent
- Attentional LSTMs, BPTT in Keras, and Long Sequences
- AWS commands, Keras metrics and LSTM tests
- Deep Learning for Natural Language Processing Courses
- Differencing, One Hot Encoding and Validation Sets
- Get great results by being systematic
- Multivariate Forecasting, Mini-Course and Stacked LSTMs
- RNNs, Adam Optimization and Data Scaling
- Sequence Prediction, RNN Unrolling and NLP Books
- Training Data Size, Hyperparameters and Why One Hot Encode
Author:
IMAGE CREDITS: https://machinelearningmastery.com
About him https://machinelearningmastery.com/about/
Most of the content I have used from Jason Brownlee emails which I have subscribed through https://machinelearningmastery.com.
And also you will find most of the stuff from here also https://machinelearningmastery.com/start-here/#faq