Описание
- An overview of the data science pipeline along with an example illustrating the key points, implemented in Julia
- Options for Julia IDEs
- Programming structures and functions
- Engineering tasks, such as importing, cleaning, formatting and storing data, as well as performing data preprocessing
- Data visualization and some simple yet powerful statistics for data exploration purposes
- Dimensionality reduction and feature evaluation
- Machine learning methods, ranging from unsupervised (different types of clustering) to supervised ones (decision trees, random forests, basic neural networks, regression trees, and Extreme Learning Machines)
- Graph analysis including pinpointing the connections among the various entities and how they can be mined for useful insights.
Each chapter concludes with a series of questions and exercises to reinforce what you learned. The last chapter of the book will guide you in creating a data science application from scratch using Julia.
INFORMATION PAGE:
Отзывы
Отзывов пока нет.