70-774 Exam Dumps
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| Certification Provider: | Microsoft |
|---|---|
| Exam Code / Number: | 70-774 |
| Exam Name: | Perform Cloud Data Science with Azure Machine Learning |
| Exam Questions: | 65 |
| Last Updated: | Jul 08, 2026 |
| Corresponding Certification: | MCSA-Machine Learning |
(256 Up Votes)Microsoft 70-774 Exam Syllabus Topics:
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Reference: https://www.microsoft.com/en-us/learning/exam-70-774.aspx
Microsoft 070-774 exam tests a candidate’s knowledge of Azure Machine Learning as well as their ability to use it to solve real-world problems. It requires the candidate to be proficient in working with large datasets, understanding machine learning concepts and techniques, and building, testing, and deploying predictive models. 70-774 exam also requires the candidate to have the skills and knowledge to use Azure Machine Learning to work with different data types, manage data workflows, and design and implement efficient data storage solutions.
Overview about Overview about MICROSOFT 70-774 Exam
- Length of Examination: 120 minutes
- Registration Fee: 165 USD
- Number of Questions: 40-60
- Passing Score: 70-80%
- Format: Multiple choice, multiple answer
One of the key topics covered in the 070-774 certification exam is predictive modeling. This includes understanding how to use Azure Machine Learning to build, train, and deploy machine learning models using a variety of algorithms and techniques. Candidates must also be able to evaluate and optimize their models to ensure they are performing at their best.