Welcome to the fourth course in Building Cloud Computing Solutions at Scale Specialization! In this course, you will build upon the Cloud computing and data engineering concepts introduced in the first three courses to apply Machine Learning Engineering to real-world projects. First, you will develop Machine Learning Engineering applications and use software development best practices to create Machine Learning Engineering applications.
Then, you will learn to use AutoML to solve problems more efficiently than traditional machine learning approaches alone. Finally, you will dive into emerging topics in Machine Learning including MLOps, Edge Machine Learning, and AI APIs.
This course is ideal for beginners as well as intermediate students interested in applying Cloud computing to data science, machine learning, and data engineering. Students should have beginner-level Linux and intermediate-level Python skills. For your project in this course, you will build a Flask web application that serves out Machine Learning predictions
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Q1. What is a key difference between Data Science and ML Engineering?
Q2. Why is an advantage of using a widely used ML Platform?
Q3. What is an advantage of Flask for ML Engineering?
Q4. How can ML Engineering used?
Q5. What is Continuous Delivery?
Q6. What would be an example of an ML application?
Q7. Why would a Microservice be valuable for ML?
Q8. What is an example of a Machine Learning Engineering platform?
Q9. What problems do Machine Learning platforms solve?
Q10. What advantage could a ML platform create for deployment?
Q1. What is AutoML?
Q2. What type of problem could you solve with Cloud AutoML?
Q3. Why would an organization want to use AutoML vs tuning Hyperparameters themselves?
Q4. What is Ludwig?
Q5. What is an advantage of AutoML?
Q6. How could AutoML help explainability of a model?
Q7. Where is a popular location designed to download pre-trained models?
Q8. Which are examples of AutoML systems?
Q9. What is an example of a ML model deployment target for AutoML?
Q10. What is an example of an AutoML solution by Apple?
Q1. What is MLOps?
Q2. What advantage does an AI API offer?
Q3. What is a use case for Edge ML?
Q4. What is an advantage of small edge inference?
Q5. What is a sentiment analysis API?
Q6. What is an advantage of medical AI APIs?
Q7. Why would a company shift resources from Data Science to MLOps
Q8. What is one thing MLOps does?
Q9. Why would a company care about “Data Drift”?
Q10. Why would an MLOPs practitioner need to know Continuous Integration?
I hope this Cloud Machine Learning Engineering and MLOps Quiz Answers would be useful for you to learn something new from the Course. If it helped you, don’t forget to bookmark our site for more Quiz Answers.
This course is intended for audiences of all experiences who are interested in learning about new skills in a business context; there are no prerequisite courses.
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