Launching into Machine Learning
Offered By: Pluralsight
Course Description
Overview
Starting from a history of machine learning, we discuss why neural networks today perform so well in a variety of problems. We then discuss how to set up a supervised learning problem and find a good solution using gradient descent. This involves creating datasets that permit generalization; we talk about methods of doing so in a repeatable way so as to support experimentation.
Starting from a history of machine learning, we discuss why neural networks today perform so well in a variety of problems. We then discuss how to set up a supervised learning problem and find a good solution using gradient descent. This involves creating datasets that permit generalization; we talk about methods of doing so in a repeatable way so as to support experimentation.
Starting from a history of machine learning, we discuss why neural networks today perform so well in a variety of problems. We then discuss how to set up a supervised learning problem and find a good solution using gradient descent. This involves creating datasets that permit generalization; we talk about methods of doing so in a repeatable way so as to support experimentation.
Taught by
Google Cloud
Related Courses
Advanced Machine LearningThe Open University via FutureLearn Advanced Machine Learning and Signal Processing
IBM via Coursera Applied Data Science for Data Analysts
Databricks via Coursera Apply Creative Machine Learning
Institute of Coding via FutureLearn Aprendizaje Automático con Python
IBM via Coursera