KNIME Advanced Luck: A Guide to KNIME Analytics Platform for Advanced Users

KNIME Advanced Luck: A Guide to KNIME Analytics Platform for Advanced Users

English | ASIN: B07H8HWH28 | 2018 | PDF | 222 Pages | 9 MB

This book is the sequel to the introductory book KNIME Beginner's Luck. Building upon the reader's first experience with KNIME, this book presents some more advanced features, like looping, selecting workflow paths, flow variables, reading and writing data from and to a database, accessing REST services and Google Sheets, and more.
All new concepts, nodes, and features are demonstrated through examples and knowledge is reinforced with exercises. All example workflows, exercise solutions, and data sets are available in the book.
The goal of this book is to elevate your data analysis from a basic exploratory level to a more professionally organized and complex structure.
This book shows you how to:
- access databases (chapter 2)
- access data from the web, via REST services, Google Sheets, or web crawling (chapters 3)
- how to deal with Date&Time objects as well as how to use time series dedicated nodes (chapter 4)
- how control your data flow in the workflow by means of parameters (flow variables), loops, and switches (chapters 5, 6, and 7)
use some advanced concepts in BIRT, one of the reporting tools integrated with the KNIME Analytics Platform (chapter 8)


[Fast Download] KNIME Advanced Luck: A Guide to KNIME Analytics Platform for Advanced Users

Related eBooks:
Automate the Boring Stuff with Python: Practical Programming for Total Beginners
Making Sense of NoSQL: A guide for managers and the rest of us
Pentaho Analytics for MongoDB
Data Mining and Data Warehousing: Principles and Practical Techniques
Microsoft Azure SQL Data Warehouse - Architecture and SQL
Beginning SQL Queries: From Novice to Professional
Cost-Based Oracle Fundamentals
Pandas Cookbook
Common Table Expressions Joes 2 Pros?
Beginning SQL Server 2008 for Developers (From Novice to Professional)
Expert Apache Cassandra Administration
Oracle Database Performance and Scalability: A Quantitative Approach
Copyright Disclaimer:
This site does not store any files on its server. We only index and link to content provided by other sites. Please contact the content providers to delete copyright contents if any and email us, we'll remove relevant links or contents immediately.