BOOKS - OS AND DB - Data Mining and Data Warehousing Principles and Practical Techniq...
Data Mining and Data Warehousing Principles and Practical Techniques - Parteek Bhatia 2019 PDF Cambridge University Press BOOKS OS AND DB
2 TON

Views
90021

Telegram
 
Data Mining and Data Warehousing Principles and Practical Techniques
Author: Parteek Bhatia
Year: 2019
Format: PDF
File size: 39.2 MB
Language: ENG



Pay with Telegram STARS
Book Description: Data Mining and Data Warehousing Principles and Practical Techniques In today's fast-paced digital world, data has become an essential part of our lives. From social media platforms to e-commerce websites, we generate vast amounts of data every day. This data can be used to gain insights into human behavior patterns, preferences, and trends. However, analyzing and making sense of this data requires specialized techniques and technologies known as data mining and data warehousing. In his book, "Data Mining and Data Warehousing Principles and Practical Techniques author [Author Name] provides a comprehensive guide to these two interconnected fields, offering readers a deep understanding of their fundamental concepts and practical applications. The book begins by exploring the evolution of technology and its impact on modern knowledge development. The author emphasizes the need for a personal paradigm that can help us understand the technological process of developing modern knowledge and its basis for the survival of humanity and the unification of people in a warring state. With this perspective, the reader is introduced to the concept of data mining and data warehousing, which are critical components of modern data analysis. Chapter 1: Introduction to Data Mining and Data Warehousing The first chapter provides an overview of data mining and data warehousing, explaining how they differ from traditional data processing methods. The author discusses the importance of data mining and data warehousing in today's digital world, highlighting their role in helping organizations make informed decisions based on large datasets. The chapter concludes with a discussion on the future of data mining and data warehousing, outlining the challenges and opportunities that lie ahead.
''

You may also be interested in:

Data Mining Theories, Algorithms, and Examples
Dark Web: Exploring and Data Mining
Data Mining Applications in Engineering and Medicine
Artificial Intelligence and Data Mining in Healthcare
Data Mining for the Social Sciences An Introduction
Practical Data Mining Techniques and Applications
Text Mining Approaches for Biomedical Data
Linear Algebra Tools for Data Mining
Data Mining and Analysis in the Engineering Field
Cluster Analysis and Data Mining An Introduction
Learn Data Mining Through Excel, 2nd Ed.
Programming Skills for Data Science Start Writing Code to Wrangle, Analyze, and Visualize Data with R (Addison-Wesley Data & Analytics Series) 1st Edition - Fiunal
Data Analytics for Absolute Beginners: Make Decisions Using Every Variable: (Introduction to Data, Data Visualization, Business Intelligence and Machine … Science, Python and Statistics for Begi
Python Data Science The Ultimate Handbook for Beginners on How to Explore NumPy for Numerical Data, Pandas for Data Analysis, IPython, Scikit-Learn and Tensorflow for Machine Learning and Business
Bio-Inspired Optimization for Medical Data Mining
Applications of Data Mining in Engineering, Management and Medicine
Data Mining in Time Series and Streaming Databases
Mathematical Analysis for Machine Learning and Data Mining
Bio-Inspired Optimization for Medical Data Mining
Introduction to Data Mining, Global 2nd Edition
Data Mining with R Learning with Case Studies, Second Edition
Introduction to Algorithms for Data Mining and Machine Learning
Data Mining and Predictive Analytics, 2nd Edition
Bio-Inspired Optimization for Medical Data Mining
Ultimate Pandas for Data Manipulation and Visualization Efficiently Process and Visualize Data with Python|s Most Popular Data Manipulation Library
Ultimate Pandas for Data Manipulation and Visualization Efficiently Process and Visualize Data with Python|s Most Popular Data Manipulation Library
The Elements of Statistical Learning: Data Mining, Inference, and Prediction
Knowledge Discovery in the Social Sciences: A Data Mining Approach
Классификация, регрессия и другие алгоритмы Data Mining с использованием R
Data Mining Concepts, Models, Methods, and Algorithms, Third Edition
Predictive Analytics and Data Mining Concepts and Practice with RapidMiner
Data Mining with Python Theory, Application, and Case Studies
Fuzzy Systems and Data Mining II Proceedings of FSDM 2016
Machine Learning and Data Mining Annual Volume 2023
Методы и модели анализа данных OLAP и Data Mining
Mining Social Media: Finding Stories in Internet Data
Data Mining with Python Theory, Application, and Case Studies
Machine Learning and Data Mining Annual Volume 2023
Mining Social Media Finding Stories in Internet Data
Practical Data Science with Jupyter Explore Data Cleaning, Pre-processing, Data Wrangling, Feature Engineering and Machine Learning using Python and Jupyter