Applied Data Science Using PySpark Learn the End-to-End Predictive Model-Building Cycle
Publication details: Apress 2024Description: xxvi, 410pISBN:- 9781484283738
- 005.7/KAK/KRI
| Item type | Current library | Call number | Status | Notes | Date due | Barcode |
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Symbiosis Institute of Computer Studies and Research Programming Language | 005.7/KAK/KRI (Browse shelf(Opens below)) | Available | Data scientists and machine learning and deep learning engineers who want to learn and use PySpark for real-time analysis of streamingdata. | SICSR-B-19647 |
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Applied Data Science Using PySpark is divided unto six sections which walk you through the book. In section 1, you start with the basics of PySpark focusing on data manipulation. We make you comfortable with the language and then build upon it to introduce you to the mathematical functions available off the shelf. In section 2, you will dive into the art of variable selection where we demonstrate various selection techniques available in PySpark. In section 3, we take you on a journey through machine learning algorithms, implementations, and fine-tuning techniques. We will also talk about different validation metrics and how to use them for picking the best models. Sections 4 and 5 go through machine learning pipelines and various methods available to operationalize the model and serve it through Docker/an API. In the final section, you will cover reusable objects for easy experimentation and learn some tricks that can help you optimize your programs and machine learning pipelines.
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