Statistics for Artificial Intelligence, Machine Learning, and Data Science

Type

Supplementary courses

Attendance

Online

Posté le

Méthodes d'études

Full Time

Fees

Regular fees: 575 USD

This online course will give students a high-level overview of some of the most common concepts in statistics that make AI and ML possible. Indeed, many of the newest algorithms, such as neural networks, random forests, and k-nearest neighbors, use statistics not only to build a model but also to evaluate its accuracy. The course will cover two broad areas of statistics: inference and prediction. The inference portion will introduce common statistical concepts that allow us to understand a population and test hypotheses (such as performing A/B tests and calculating and interpreting p-values). The prediction section will begin with the simplest of algorithms (linear regression) and gradually touch upon more advanced topics such as random forests and cross-validation. Real-world examples will be used from the fields of healthcare, genetics, marketing, and manufacturing.

What you will learn

  • Common statistical tools used in AI and ML algorithms
  • How to derive conclusions from statistical studies

 

More Information

Type

Supplementary courses

Attendance

Online

Posté le

Méthodes d'études

Full Time

Fees

Regular fees: 575 USD