BOOKS - OS AND DB - Data Mining for Business Analytics Concepts, Techniques, and Appl...
Data Mining for Business Analytics Concepts, Techniques, and Applications with XLMiner, 3rd Edition - Galit Shmueli and Peter C. Bruce 2016 PDF Wiley BOOKS OS AND DB
ECO~26 kg CO²

2 TON

Views
91590

Telegram
 
Data Mining for Business Analytics Concepts, Techniques, and Applications with XLMiner, 3rd Edition
Author: Galit Shmueli and Peter C. Bruce
Year: 2016
Format: PDF
File size: 154 MB
Language: ENG



Pay with Telegram STARS
''

You may also be interested in:

Essential Data Analytics, Data Science, and AI A Practical Guide for a Data-Driven World
It|s All Analytics, Part III: The Applications of AI, Analytics, and Data Science (It|s All Analytics, 3)
Python for Data Analytics A Beginners Guide for Learning Python Data Analytics from A-Z
Data Mining Approaches for Big Data and Sentiment Analysis in Social Media
Data Mining and Exploration From Traditional Statistics to Modern Data Science
Augmented Analytics: Enabling Analytics Transformation for Data-Informed Decisions
Augmented Analytics Enabling Analytics Transformation for Data-Informed Decisions (Final Release)
Augmented Analytics Enabling Analytics Transformation for Data-Informed Decisions (Final Release)
Marketing Data Science: Modeling Techniques in Predictive Analytics with R and Python (FT Press Analytics)
Handbook of Research on Big Data and the IoT (Advances in Data Mining and Database Management (ADMDM))
Data Mining and Data Warehousing Principles and Practical Techniques
Data Fusion and Data Mining for Power System Monitoring
Augmented Analytics Enabling Analytics Transformation for Data-Informed Decisions (3rd Early Release)
Augmented Analytics Enabling Analytics Transformation for Data-Informed Decisions (3rd Early Release)
Augmented Analytics Enabling Analytics Transformation for Data-Informed Decisions (3rd Early Release)
Statistical and Machine-Learning Data Mining Techniques for Better Predictive Modeling and Analysis of Big Data, Third Edition
Programming Skills for Data Science Start Writing Code to Wrangle, Analyze, and Visualize Data with R (Addison-Wesley Data & Analytics Series) 1st Edition - Fiunal
Statistics, Data Mining and Machine Learning in Astronomy A Practical Python Guide for the Analysis of Survey Data, Updated Ed
Automated Data Analysis Using Excel (Chapman & Hall/CRC Data Mining and Knowledge Discovery Series) Second Edition
People Analytics & Text Mining with R
Applications of Emerging Technologies and AI ML Algorithms: International Conference on Data Analytics in Public Procurement and Supply Chain (ICDAPS2022) (Asset Analytics)
Big Data Governance Modern Data Management Principles for Hadoop, NoSQL & Big Data Analytics
Business Analytics with SAS Studio Deliver Business Intelligence by Combining SQL Processing
Data Analytics and Machine Learning: Navigating the Big Data Landscape (Studies in Big Data, 145)
Data Analytics and AI (Data Analytics Applications)
Organized Complexity in Business: Understanding, Concepts and Tools (Future of Business and Finance)
Big Data Management Data Governance Principles for Big Data Analytics, 1st Edition
Real-Time Data Analytics for Large Scale Sensor Data Volume Six
Data Strategy: How to Profit from a World of Big Data, Analytics and the Internet of Things
Analytics in a Big Data World The Essential Guide to Data Science and its Applications
Data Pipelines Pocket Reference Moving and Processing Data for Analytics (Final)
Data Analytics for Absolute Beginners A Deconstructed Guide to Data Literacy, Second Edition
IBM Cloud Pak for Data: An enterprise platform to operationalize data, analytics, and AI
Multi-dimensional Urban Sensing Using Crowdsensing Data (Data Analytics)
Agile Data Science Building Data Analytics Applications with Hadoop
Data Analytics and Machine Learning Navigating the Big Data Landscape
Data Analytics and Machine Learning Navigating the Big Data Landscape
Agile Data Science 2.0 Building Full-Stack Data Analytics Applications with Spark
Big Data and Analytics for Beginners: Navigating the World of Data-Driven Decision Making