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Solutions Architect's Handbook

You're reading from   Solutions Architect's Handbook Kick-start your career with architecture design principles, strategies, and generative AI techniques

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Product type Paperback
Published in Mar 2024
Publisher Packt
ISBN-13 9781835084236
Length 578 pages
Edition 3rd Edition
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Authors (2):
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Neelanjali Srivastav Neelanjali Srivastav
Author Profile Icon Neelanjali Srivastav
Neelanjali Srivastav
Saurabh Shrivastava Saurabh Shrivastava
Author Profile Icon Saurabh Shrivastava
Saurabh Shrivastava
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Toc

Table of Contents (20) Chapters Close

Preface 1. Solutions Architects in Organizations 2. Principles of Solution Architecture Design FREE CHAPTER 3. Cloud Migration and Cloud Architecture Design 4. Solution Architecture Design Patterns 5. Cloud-Native Architecture Design Patterns 6. Performance Considerations 7. Security Considerations 8. Architectural Reliability Considerations 9. Operational Excellence Considerations 10. Cost Considerations 11. DevOps and Solution Architecture Framework 12. Data Engineering for Solution Architecture 13. Machine Learning Architecture 14. Generative AI Architecture 15. Rearchitecting Legacy Systems 16. Solution Architecture Document 17. Learning Soft Skills to Become a Better Solutions Architect 18. Other Books You May Enjoy
19. Index

Working with data science and machine learning

ML is all about working with data. The quality of the training data is crucial to the success of an ML model. High-quality data leads to a more accurate ML model and the right prediction.

Data often has multiple issues, such as missing values, noise, bias, outliers, and so on. Exploring the data makes us aware of this, providing us with necessary information on data quality and cleanliness, interesting patterns in the data, and likely paths forward once you start modeling. Data science includes data collection, data preparation, analysis, preprocessing, and feature engineering.

Data preparation is the first step in building an ML model. It is time consuming and constitutes up to 80% of the time spent on ML development. Data preparation has always been considered tedious and resource intensive due to the inherent nature of data being “dirty” and not ready for ML in its raw form. “Dirty” data could include...

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