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Learner Reviews & Feedback for Data Processing and Optimization with Generative AI by Microsoft

4.0
stars
11 ratings

About the Course

This course focuses on advanced methods for data cleaning, preparation, and optimization using AI-assisted tools. You'll learn to generate synthetic data, address privacy concerns and data limitations in your projects. Discover how to leverage AI to identify and resolve complex data quality issues, ensuring your datasets are primed for analysis. Upon completion of this course, you'll be able to: Generate synthetic data using generative AI models Implement advanced data cleaning techniques with AI assistance Optimize datasets for improved analysis efficiency Apply ethical considerations in data processing and synthetic data generation...
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1 - 3 of 3 Reviews for Data Processing and Optimization with Generative AI

By Jesal P

•

Mar 21, 2025

Please include more practical on synthetic data generation, data cleaning and feature engineering. It was hell lot of theories especially from Ethical considerations of GenAI.

By Susmit S B

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Oct 29, 2024

All datasets are removed

By John J

•

Feb 6, 2025

This course should be called "Groundhog's Day: A Redundant Repetition of Concepts Related to Fake Data And Ethics." It could have been done in 3 modules. And I don't really see how it was addressing data optimization at all. No data processing course should be so focused on generating fake data that it becomes the main focus of the course. I have taken many courses on Coursera, and this one is bad enough that I might rethink my future investments. Not that the intent is bad, but the content was more than overly redundant, the quiz question confusing and sometimes the expected answers were logically the wrong answers when weighed against the other options. And the course had more to do with fake data and ethics than data processing or optimization. Do better Microsoft. This does not make me feel like Data Processing or Optimization were addressed at all. It feels like a bait and switch.