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
90022

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:

Advanced Data Analytics with AWS Explore Data Analysis Concepts in the Cloud to Gain Meaningful Insights and Build Robust Data Engineering Workflows Across Diverse Data Sources
Advanced Data Analytics with AWS: Explore Data Analysis Concepts in the Cloud to Gain Meaningful Insights and Build Robust Data Engineering Workflows Across Diverse Data Sources (English Edition)
The Data Revolution Big Data, Open Data, Data Infrastructures and Their Consequences
Transactions on Large-Scale Data- and Knowledge-Centered Systems LIV: Special Issue on Data Management - Principles, Technologies, and Applications (Lecture Notes in Computer Science Book 14160)
Data Modeling Made Simple with Embarcadero ER/Studio Data Architect Adapting to Agile Data Modeling in a Big Data World
Modern Data Architectures with Python: A practical guide to building and deploying data pipelines, data warehouses, and data lakes with Python
Implementing Data Mesh: Principles and Practice to Design, Build, and Implement Data Mesh
Amazon Redshift The Definitive Guide Jump-Start Analytics Using Cloud Data Warehousing
Google BigQuery The Definitive Guide Data Warehousing, Analytics, and Machine Learning at Scale, First Edition
Intelligent Data Analysis From Data Gathering to Data Comprehension (The Wiley Series in Intelligent Signal and Data Processing)
Implementing Data Mesh Design, Build, and Implement Data Contracts, Data Products, and Data Mesh
Implementing Data Mesh Design, Build, and Implement Data Contracts, Data Products, and Data Mesh
Data Science from Scratch Want to become a Data Scientist? This guide for beginners will walk you through the world of Data Science, Big Data, Machine Learning and Deep Learning
Getting Started with DuckDB: A practical guide for accelerating your data science, data analytics, and data engineering workflows
Data Science With Rust A Comprehensive Guide - Data Analysis, Machine Learning, Data Visualization & More
Data Science With Rust A Comprehensive Guide - Data Analysis, Machine Learning, Data Visualization & More
Data Science With Rust: A Comprehensive Guide - Data Analysis, Machine Learning, Data Visualization and More
Hands-On Data Preprocessing in Python: Learn how to effectively prepare data for successful data analytics
Data Mining
Data Stewardship An Actionable Guide to Effective Data Management and Data Governance Second Edition
The Data Mindset Playbook: A book about data for people who don|t want to read about data
Essential Data Analytics, Data Science, and AI A Practical Guide for a Data-Driven World
Data Analytics Principles, Tools, and Practices A Complete Guide for Advanced Data Analytics Using the Latest Trends, Tools
Data Virtualization in the Cloud Era Data Lakes and Data Federation At Scale
Data Virtualization in the Cloud Era Data Lakes and Data Federation At Scale
Text Data Mining
Data Mining Applications with R
Secure Data Mining
The Big Data Agenda Data Ethics and Critical Data Studies
Data Mining and Analytics in Healthcare
Machine Learning and Data Mining
Data Mining учебный курс
Data Mining Algorithms Explained Using R
Web Data Mining with Python
Data Mining учебный курс
Data Mining Concepts and Techniques
Swarm Intelligence in Data Mining
Text Mining Approaches for Biomedical Data
Social Media Data Mining and Analytics