Practicing and exploring
Test your knowledge and understanding by answering some questions, get some hands-on practice, and explore this chapter's topics with deeper research.
Exercise 19.1 – Test your knowledge
Answer the following questions:
- What are the four main steps of the machine learning lifecycle?
- What are the three sub-steps of the modeling step?
- Why do models need to be retrained after deployment?
- Why must you split your dataset into a training dataset and a testing dataset?
- What are some of the differences between clustering and classification machine learning tasks?
- What class must you instantiate to perform any machine learning task?
- What is the difference between a label and a feature?
- What does
IDataView
represent? - What does the
count
parameter in the[KeyType(count: 10)]
attribute represent? - What does the score represent with matrix factorization?