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Applied Data Science Using PySpark
Learn the End-to-End Predictive Model-Building Cycle
Taschenbuch von Ramcharan Kakarla (u. a.)
Sprache: Englisch

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Beschreibung
Discover the capabilities of PySpark and its application in the realm of data science. This comprehensive guide with hand-picked examples of daily use cases will walk you through the end-to-end predictive model-building cycle with the latest techniques and tricks of the trade.

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.

By the end of this book, you will have seen the flexibility and advantages of PySpark in data science applications. This book is recommended to those who want to unleash the power of parallel computing by simultaneously working with big datasets.

What You Will Learn

Build an end-to-end predictive model
Implement multiple variable selection techniques
Operationalize models
Master multiple algorithms and implementations

Who This Book is For

Data scientists and machine learning and deep learning engineers who want to learn and use PySpark for real-time analysis of streamingdata.
Discover the capabilities of PySpark and its application in the realm of data science. This comprehensive guide with hand-picked examples of daily use cases will walk you through the end-to-end predictive model-building cycle with the latest techniques and tricks of the trade.

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.

By the end of this book, you will have seen the flexibility and advantages of PySpark in data science applications. This book is recommended to those who want to unleash the power of parallel computing by simultaneously working with big datasets.

What You Will Learn

Build an end-to-end predictive model
Implement multiple variable selection techniques
Operationalize models
Master multiple algorithms and implementations

Who This Book is For

Data scientists and machine learning and deep learning engineers who want to learn and use PySpark for real-time analysis of streamingdata.
Über den Autor

Ramcharan Kakarla is currently lead data scientist at Comcast residing in Philadelphia. He is a passionate data science and artificial intelligence advocate with five+ years of experience. He holds a master's degree from Oklahoma State University with specialization in data mining. Prior to OSU, he received his bachelor's in electrical and electronics engineering from Sastra University in India. He was born and raised in the coastal town of Kakinada, India. He started his career working as a performance engineer with several Fortune 500 clients including State Farm and British Airways. In his current role he is focused on building data science solutions and frameworks leveraging big data. He has published several papers and posters in the field of predictive analytics. He served as SAS Global Ambassador for the year 2015.

Sundar Krishnan is passionate about artificial intelligence and data science with more than five years of industrial experience. He has tremendous experience in building and deploying customer analytics models and designing machine learning workflow automation. Currently, he is associated with Comcast as a lead data scientist. Sundar was born and raised in Tamil Nadu, India and has a bachelor's degree from Government College of Technology, Coimbatore. He completed his master's at Oklahoma State University, Stillwater. In his spare time, he blogs about his data science works on Medium.

Zusammenfassung

Covers industry-standard methods and procedures all implemented with examples

Includes how to transition data science solutions from traditional languages to PySpark

Includes handpicked tips and tricks that can help in your day-to-day work

Inhaltsverzeichnis

Chapter 1: Setting up the Pyspark Environment .- Chapter 2: Basic Statistics and Visualizations.- Chapter 3: :Variable Selection.- Chapter 4: Introduction to different supervised machine algorithms, implementations & Fine-tuning techniques.- Chapter 5: Model Validation and selecting the best model.- Chapter 6: Unsupervised and recommendation algorithms.- Chapter 7:End to end modeling pipelines.- Chapter 8: Productionalizing a machine learning model.- Chapter 9: Experimentations.- Chapter 10:Other Tips: Optional.

Details
Erscheinungsjahr: 2020
Fachbereich: Programmiersprachen
Genre: Informatik
Rubrik: Naturwissenschaften & Technik
Medium: Taschenbuch
Seiten: 436
Inhalt: XXVI
410 S.
190 s/w Illustr.
410 p. 190 illus.
ISBN-13: 9781484264997
ISBN-10: 1484264991
Sprache: Englisch
Ausstattung / Beilage: Paperback
Einband: Kartoniert / Broschiert
Autor: Kakarla, Ramcharan
Alla, Sridhar
Krishnan, Sundar
Auflage: 1st ed.
Hersteller: Apress
Apress L.P.
Maße: 254 x 178 x 24 mm
Von/Mit: Ramcharan Kakarla (u. a.)
Erscheinungsdatum: 18.12.2020
Gewicht: 0,815 kg
preigu-id: 118921583
Über den Autor

Ramcharan Kakarla is currently lead data scientist at Comcast residing in Philadelphia. He is a passionate data science and artificial intelligence advocate with five+ years of experience. He holds a master's degree from Oklahoma State University with specialization in data mining. Prior to OSU, he received his bachelor's in electrical and electronics engineering from Sastra University in India. He was born and raised in the coastal town of Kakinada, India. He started his career working as a performance engineer with several Fortune 500 clients including State Farm and British Airways. In his current role he is focused on building data science solutions and frameworks leveraging big data. He has published several papers and posters in the field of predictive analytics. He served as SAS Global Ambassador for the year 2015.

Sundar Krishnan is passionate about artificial intelligence and data science with more than five years of industrial experience. He has tremendous experience in building and deploying customer analytics models and designing machine learning workflow automation. Currently, he is associated with Comcast as a lead data scientist. Sundar was born and raised in Tamil Nadu, India and has a bachelor's degree from Government College of Technology, Coimbatore. He completed his master's at Oklahoma State University, Stillwater. In his spare time, he blogs about his data science works on Medium.

Zusammenfassung

Covers industry-standard methods and procedures all implemented with examples

Includes how to transition data science solutions from traditional languages to PySpark

Includes handpicked tips and tricks that can help in your day-to-day work

Inhaltsverzeichnis

Chapter 1: Setting up the Pyspark Environment .- Chapter 2: Basic Statistics and Visualizations.- Chapter 3: :Variable Selection.- Chapter 4: Introduction to different supervised machine algorithms, implementations & Fine-tuning techniques.- Chapter 5: Model Validation and selecting the best model.- Chapter 6: Unsupervised and recommendation algorithms.- Chapter 7:End to end modeling pipelines.- Chapter 8: Productionalizing a machine learning model.- Chapter 9: Experimentations.- Chapter 10:Other Tips: Optional.

Details
Erscheinungsjahr: 2020
Fachbereich: Programmiersprachen
Genre: Informatik
Rubrik: Naturwissenschaften & Technik
Medium: Taschenbuch
Seiten: 436
Inhalt: XXVI
410 S.
190 s/w Illustr.
410 p. 190 illus.
ISBN-13: 9781484264997
ISBN-10: 1484264991
Sprache: Englisch
Ausstattung / Beilage: Paperback
Einband: Kartoniert / Broschiert
Autor: Kakarla, Ramcharan
Alla, Sridhar
Krishnan, Sundar
Auflage: 1st ed.
Hersteller: Apress
Apress L.P.
Maße: 254 x 178 x 24 mm
Von/Mit: Ramcharan Kakarla (u. a.)
Erscheinungsdatum: 18.12.2020
Gewicht: 0,815 kg
preigu-id: 118921583
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