Course Summary
This course is designed to help learners apply machine learning techniques in real-world projects. It covers a variety of topics such as data preparation, model selection, and evaluation of model performance.Key Learning Points
- Learn how to apply machine learning techniques to real-world projects
- Discover how to prepare data, select models, and evaluate model performance
- Gain hands-on experience with machine learning tools and technologies
Related Topics for further study
Learning Outcomes
- Apply machine learning techniques to real-world projects
- Prepare data, select models, and evaluate model performance
- Gain hands-on experience with machine learning tools and technologies
Prerequisites or good to have knowledge before taking this course
- Basic understanding of machine learning concepts
- Familiarity with programming languages such as Python
Course Difficulty Level
IntermediateCourse Format
- Self-paced
- Online
- Hands-on
- Project-based
Similar Courses
- Applied Machine Learning
- Advanced Machine Learning
Related Education Paths
Notable People in This Field
- AI expert
- AI researcher
Related Books
Description
In the third course of the Deep Learning Specialization, you will learn how to build a successful machine learning project and get to practice decision-making as a machine learning project leader.
Outline
- ML Strategy (1)
- Why ML Strategy
- Orthogonalization
- Single Number Evaluation Metric
- Satisficing and Optimizing Metric
- Train/Dev/Test Distributions
- Size of the Dev and Test Sets
- When to Change Dev/Test Sets and Metrics?
- Why Human-level Performance?
- Avoidable Bias
- Understanding Human-level Performance
- Surpassing Human-level Performance
- Improving your Model Performance
- Andrej Karpathy Interview
- Connect with your Mentors and Fellow Learners on Discourse!
- Lectures in PDF
- Machine Learning Flight Simulator
- Bird Recognition in the City of Peacetopia (Case Study)
- ML Strategy (2)
- Carrying Out Error Analysis
- Cleaning Up Incorrectly Labeled Data
- Build your First System Quickly, then Iterate
- Training and Testing on Different Distributions
- Bias and Variance with Mismatched Data Distributions
- Addressing Data Mismatch
- Transfer Learning
- Multi-task Learning
- What is End-to-end Deep Learning?
- Whether to use End-to-end Deep Learning
- Ruslan Salakhutdinov Interview
- Lectures in PDF
- Acknowledgments
- Autonomous Driving (Case Study)
Summary of User Reviews
Discover the exciting world of machine learning with this comprehensive course on Coursera. Students have praised the course for its hands-on approach and easy-to-follow explanations. Many users have also found the course to be an excellent resource for building real-world projects.Key Aspect Users Liked About This Course
Hands-on approachPros from User Reviews
- Easy-to-follow explanations
- Excellent resource for building real-world projects
- In-depth coverage of machine learning concepts
- Engaging assignments and quizzes
- Great for beginners and experienced learners alike
Cons from User Reviews
- Some sections may be too technical for beginners
- Course material can be a bit dry at times
- Limited interaction with the instructor
- No certificate of completion for the audit option
- Some assignments may be too challenging for beginners