- Machine Learning in Java
- AshishSingh Bhatia Bostjan Kaluza
- 71字
- 2021-06-10 19:30:06
Summary
In this chapter, we refreshed our knowledge of machine learning basics. We revisited the workflow of applied machine learning and clarified the main tasks, methods, and algorithms. We learned about different types for regression and how to evaluate them. We also explored cross-validation and where it is applied.
In the next chapter, we will learn about Java libraries, the tasks that they can perform, and different platforms for machine learning.
推薦閱讀
- 數據展現的藝術
- Practical Ansible 2
- 計算機圖形學
- Linux Mint System Administrator’s Beginner's Guide
- HBase Design Patterns
- 機器自動化控制器原理與應用
- 空間傳感器網絡復雜區域智能監測技術
- RPA:流程自動化引領數字勞動力革命
- Pig Design Patterns
- Machine Learning Algorithms(Second Edition)
- Linux Shell編程從初學到精通
- Mastering Predictive Analytics with scikit:learn and TensorFlow
- Microsoft Dynamics CRM 2013 Marketing Automation
- Advanced Deep Learning with Keras
- Getting Started with Tableau 2018.x