Develop Successful Deep Learning Projects with This 10 Steps Formula
Offered By: Prodramp via YouTube
Course Description
Overview
Learn a 10-step formula for developing successful deep learning projects in this 22-minute video. Understand how to define the problem, prepare data, choose the right method, apply a baseline approach, select appropriate architecture, implement effective training strategies, prevent overfitting through regularization, enhance results with data augmentation, add model interpretability, and deploy and monitor your model. Follow this comprehensive guide to navigate the complexities of deep learning projects and improve your chances of success.
Syllabus
Content Intro
1. Understand & Define The problem
2. Prepare your data
3. Choosing right method
4. Applying Baseline Approach
5. Using Appropriate Architecture
6. Appropriate Training Strategy
7. Stop Overfitting with Regularization
8. Enhance through Augmentation
9. Add Model Interpretability
10. Deploy and Monitor Model
Conclusion
Taught by
Prodramp
Related Courses
Advanced Machine Learning AlgorithmsFractal Analytics via Coursera AWS Engenheiro de ML AWS Associate 2.1: Como definir uma estratégia de modelagem (Português) | AWS ML Engineer Associate 2.1 Choose a Modeling Approach (Portuguese)
Amazon Web Services via AWS Skill Builder AWS Flash - Operationalize Generative AI Applications (FMOps/LLMOps)
Amazon Web Services via AWS Skill Builder AWS ML Engineer Associate 2.1 Choose a Modeling Approach (Japanese)
Amazon Web Services via AWS Skill Builder AWS ML Engineer Associate 2.1 Choose a Modeling Approach (Korean)
Amazon Web Services via AWS Skill Builder