About Lesson
Create a machine learning model to classify images and explore how a limited data set can lead to bias.
Learning objectives:
– Describe the impact of data on the accuracy of a machine learning (ML) model
– Explain the need for both training and test data
– Explain how bias can influence the predictions generated by an ML model
Key vocabulary:
Artificial intelligence (AI), machine learning (ML), supervised learning, classification, training data, test data, accuracy, bias, data bias, societal bias
Lesson structure:
– The three different types of machine learning
– Supermarket AI application
– Training a model
– Bias
– Student timetable model
– Reducing bias