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LEARNING CASCADING BY MICHAEL

COVERT, VICTORIA LOEWENGART

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LEARNING CASCADING BY MICHAEL COVERT, VICTORIA

LOEWENGART PDF

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About the Author

Michael Covert

Michael Covert, CEO, Analytics Inside LLC, has significant experience in a variety of business and technical roles. Michael is a mathematician and computer scientist and is involved in machine learning, deep learning, predictive analytics, graph theory, and big data. He earned a bachelor's of science degree in mathematics with honors and distinction from The Ohio State University. He also attended it as a PhD student, specializing in machine learning and high-performance computing. Michael is a Cloudera Hadoop Certified Developer. Michael served as the vice president of performance management in Whittman-Hart, Inc., based in Chicago, and as the chief operating officer of Infinis, Inc., a business intelligence consulting company based in Columbus, Ohio. Infinis merged with Whittman-Hart in 2005. Prior to working at Infinis, Michael was the vice president of product development and chief technology officer at Alta Analytics, and the producer of data mining and visualization software. In addition to this, he has served in technology management roles for Claremont Technology Group, Inc., where he was the director of advanced technology.

Victoria Loewengart

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LEARNING CASCADING BY MICHAEL COVERT, VICTORIA

LOEWENGART PDF

Download: LEARNING CASCADING BY MICHAEL COVERT, VICTORIA LOEWENGART PDF

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Build reliable, robust, and high-performance big data applications using the Cascading application development efficientlyAbout This Book

Understand how Cascading fits into the big data landscape and hides the complexity of MapReduce to

enable the development of streamlined, maintainable, and concise applications

Develop a real-life Cascading application that can be easily customized for your specific needs

Learn basic and advanced features of Cascading through a practical, hands-on approach with step-by-step

instructions and code samples

Who This Book Is For

This book is intended for software developers, system architects and analysts, big data project managers, and data scientists who wish to deploy big data solutions using the Cascading framework. You must have a basic understanding of the big data paradigm and should be familiar with Java development techniques.

What You Will Learn

Familiarize yourself with tuples, pipes, taps, and flows and build your first Cascading application

Discover how to design, develop, and use custom operations

Design, develop, use, and reuse code with subassemblies and Cascades

Acquire the skills you need to integrate Cascading with external systems

Gain expertise in testing, QA, and performance tuning to run an efficient and successful Cascading project

Explore project management methodologies and steps to develop workable solutions

Discover the future of big data frameworks and understand how Cascading can help your software to

evolve with it

Uncover sources of additional information and other tools that can make development tasks a lot easier

In Detail

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Sales Rank: #1584870 in eBooks

Michael Covert, CEO, Analytics Inside LLC, has significant experience in a variety of business and technical roles. Michael is a mathematician and computer scientist and is involved in machine learning, deep learning, predictive analytics, graph theory, and big data. He earned a bachelor's of science degree in mathematics with honors and distinction from The Ohio State University. He also attended it as a PhD student, specializing in machine learning and high-performance computing. Michael is a Cloudera Hadoop Certified Developer. Michael served as the vice president of performance management in Whittman-Hart, Inc., based in Chicago, and as the chief operating officer of Infinis, Inc., a business intelligence consulting company based in Columbus, Ohio. Infinis merged with Whittman-Hart in 2005. Prior to working at Infinis, Michael was the vice president of product development and chief technology officer at Alta Analytics, and the producer of data mining and visualization software. In addition to this, he has served in technology management roles for Claremont Technology Group, Inc., where he was the director of advanced technology.

Victoria Loewengart

Victoria Loewengart, COO, Analytics Inside LLC, is an innovative software systems architect with a proven record of bringing emerging technologies to clients through discovery, design, and integration. Additionally, Victoria spent a large part of her career developing software technologies that extract information from unstructured text. Victoria has published numerous articles on topics ranging from text analytics to intelligence analysis and cyber security. Her book An Introduction to Hacking & Crimeware: A Pocket Guide was published by IT Governance, UK, in January 2012. Victoria earned a bachelor's degree in computer science from Purdue University and a master's degree in intelligence studies from the American Military University.

Most helpful customer reviews

1 of 1 people found the following review helpful. loved it!!

By Abhishek Srivastava

Its a great introduction to a awesome framework. I loved the book and I also loved the framework. This book provides good introduction and goes in depth as well.

Only criticism I have is that this book did not talk about how to build Cascading apps using Maven, Gradle etc. This is a really important step when learning any jvm language technology these days.

1 of 1 people found the following review helpful. Great Book

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has a lot of helpful tips and suggestions to steer you away from pitfalls. Definitely has my vote.

0 of 0 people found the following review helpful. A good book on Cascading!

By Krishnan

A good book on Cascading. Ideal for novice on bigdata and data processing using Hadoop (Hadoop basics also explained well).

Highly Recommended!

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LEARNING CASCADING BY MICHAEL COVERT, VICTORIA

LOEWENGART PDF

Merely attach your device computer system or gadget to the net hooking up. Get the modern-day technology to make your downloading Learning Cascading By Michael Covert, Victoria Loewengart completed. Even you don't wish to read, you could straight shut the book soft documents as well as open Learning Cascading By Michael Covert, Victoria Loewengart it later. You could likewise conveniently get the book all over, considering that Learning Cascading By Michael Covert, Victoria Loewengart it is in your device. Or when being in the workplace, this Learning Cascading By Michael Covert, Victoria Loewengart is likewise suggested to check out in your computer system device.

About the Author

Michael Covert

Michael Covert, CEO, Analytics Inside LLC, has significant experience in a variety of business and technical roles. Michael is a mathematician and computer scientist and is involved in machine learning, deep learning, predictive analytics, graph theory, and big data. He earned a bachelor's of science degree in mathematics with honors and distinction from The Ohio State University. He also attended it as a PhD student, specializing in machine learning and high-performance computing. Michael is a Cloudera Hadoop Certified Developer. Michael served as the vice president of performance management in Whittman-Hart, Inc., based in Chicago, and as the chief operating officer of Infinis, Inc., a business intelligence consulting company based in Columbus, Ohio. Infinis merged with Whittman-Hart in 2005. Prior to working at Infinis, Michael was the vice president of product development and chief technology officer at Alta Analytics, and the producer of data mining and visualization software. In addition to this, he has served in technology management roles for Claremont Technology Group, Inc., where he was the director of advanced technology.

Victoria Loewengart

Victoria Loewengart, COO, Analytics Inside LLC, is an innovative software systems architect with a proven record of bringing emerging technologies to clients through discovery, design, and integration. Additionally, Victoria spent a large part of her career developing software technologies that extract information from unstructured text. Victoria has published numerous articles on topics ranging from text analytics to intelligence analysis and cyber security. Her book An Introduction to Hacking & Crimeware: A Pocket Guide was published by IT Governance, UK, in January 2012. Victoria earned a bachelor's degree in computer science from Purdue University and a master's degree in intelligence studies from the American Military University.

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