Listen and read

Step into an infinite world of stories

  • Listen and read as much as you want
  • Over 400 000+ titles
  • Bestsellers in 10+ Indian languages
  • Exclusive titles + Storytel Originals
  • Easy to cancel anytime
Subscribe now
Details page - Device banner - 894x1036

Model Evaluation: Evaluating the Performance and Accuracy of Data Warehouse Models

1 Ratings

1

Duration
4H 16min
Language
English
Format
Category

Non-Fiction

In the world of data warehousing, the accuracy and performance of models are crucial for effective data analysis and decision-making. "Model Evaluation" is a comprehensive book that provides a detailed overview of the evaluation process for data warehouse models. From understanding the basics of data warehousing to evaluating the performance of different types of models, this book covers the key concepts, techniques, and best practices for evaluating the accuracy and performance of data warehouse models.

The book begins with an introduction to data warehousing and its importance in modern organizations. It then delves into the various types of data warehouse models, including relational, dimensional, and multi-dimensional models, and their unique features and use cases. The book explores the challenges and considerations in evaluating the performance and accuracy of these different types of models, including data quality, data completeness, data consistency, and data timeliness.

"Model Evaluation" provides a comprehensive overview of the different evaluation techniques and methodologies used in data warehousing, such as benchmarking, performance metrics, data profiling, and data validation. It covers the best practices for evaluating the accuracy of data warehouse models, including data validation and verification techniques, data profiling and cleansing methods, and statistical analysis.

The book also discusses the importance of metadata in the evaluation process and how it can provide context and understanding of the data in the data warehouse. It covers topics such as data definitions, data models, data sources, and data transformations, and how they can impact the accuracy and performance of the data warehouse models.

© 2024 Brian Murray (Audiobook): 9798347768059

Release date

Audiobook: 27 November 2024

Others also enjoyed ...

  1. Machine Learning and Predictive Modeling: Turning Data into Action Chuck Sherman
  2. Data Miner: Clear Introduction to the Fundamentals of Data Mining Chuck Sherman
  3. Fundamentals of Data Engineering: Plan and Build Robust Data Systems Matt Housley
  4. Insight Engine: Harnessing the Power of Data Science: Unlocking Predictive Analytics and Business Intelligence Zoe Thompson
  5. Data Warehousing: Unlocking the Power of Data for Strategic Insights and Informed Decisions Brian Murray
  6. Data Lake: Comprehensive Strategies for Architecting, Managing, and Leveraging Data Lakes for Scalable Analytics, Enhanced Data Integration, and Advanced Insights Across Modern Enterprises Allan Murray
  7. Edge Computing: Revolutionizing Data Processing at the Network Edge James Ferry
  8. Data Engineering Guide for Beginners: Understanding the Core Components and Strategies for Effective Data Management Allan Murray
  9. A Guide to Data Science in the Big Data Era: Big Data Explained: A Comprehensive Guide to Data Science Applications Alexander Clarke
  10. Data Science and Analytics Essentials: The Revolution of Decision-Making: Leveraging Data in the Digital Age Daniel Richards
  11. Data Science with Python for Beginners: A Beginner's Guide to Unraveling Insights with Python Brian Paul
  12. Data and Databases: Learn Data Analytics, Data Mining, and Operating Systems (2 in 1) Jonathan Rigdon
  13. Generative Deep Learning: Teaching Machines To Paint, Write, Compose, and Play (2nd Edition) David Foster
  14. Algorithms: 3 books in 1 : Practical Guide To Learn Algorithms for Beginners + Design Algorithms to Solve Common Problems + Advanced Data Structures for Algorithms Andy Vickler
  15. Text Analytics: Practical Steps to Sort Data David Feldspar
  16. Machine Learning and Statistical Modeling: The Art and Science of Machine Learning and Statistical Modeling Sam Green
  17. Quantum Mechanics and Quantum Information Theory: Understanding the Fundamentals and Potential Applications of Quantum Mechanics and Quantum Information Theory Daniel Garfield
  18. Data Science For Dummies: 2nd Edition Lillian Pierson
  19. Kubernetes Unleashed: Navigating the World of Automated Deployment and Scaling Rebecca Park
  20. Computational Thinking Peter J. Denning
  21. Recurrent Neural Networks: Advanced Architectures, Optimization Strategies, and Innovative Applications for Mastering Sequential Data Analysis Saimon Carrie
  22. Text Analytics: Python, Models, and Lexicons David Feldspar
  23. AI and Genius Machines Scientific American
  24. AI for beginners: Begin your AI developer journey in 2024 Et Tu Code
  25. When Machines Learn: AI and the Transformation of Society Lars Meyer
  26. The Future of Investing: AI and Technology Opportunities Await: Identify Lucrative Opportunities in AI and Tech Sectors Michael Davis
  27. Deep Learning: Guide to Machine Learning and Artificial Intelligence David Feldspar
  28. Machine learning - The Dark Side Of AI: the genie is out of the lamp - and he's not going back Devon Zander
  29. Competing in the Age of AI: Strategy and Leadership When Algorithms and Networks Run the World Karim R. Lakhani
  30. The Deep Learning Revolution Terrence J. Sejnowski
  31. How Smart Machines Think Sean Gerrish
  32. Lean Software Development: Transforming Principles into Practices for Software Excellence Steve Abrams
  33. AI as Author: Exploring the Future of Publishing Nathan Venture, D
  34. AI Value Creators: Beyond the Generative AI User Mindset Rob Thomas
  35. Supercommunicators Summary PETER CELLIER
  36. The Apple II Age: How the Computer Became Personal Laine Nooney
  37. Algorithms: Discover The Computer Science and Artificial Intelligence Used to Solve Everyday Human Problems, Optimize Habits, Learn Anything and Organize Your Life Trust Genics
  38. Lean Leadership and Management: A Practical Guide to Streamlining Success Jacob Richardson
  39. MACHINE LEARNING AND ARTIFICIAL INTELLIGENCE: A Comprehensive Guide to Understanding and Implementing ML and AI (2023 Beginner Crash Course) Carl Dennis
  40. PHP: 3 books in 1: PHP Basics for Beginners + PHP Security and Session Management + Advanced PHP Functions Andy Vickler
  41. Introduction to Artificial Intelligence - A Comprehensive Guide Ruchini Kaushalya
  42. Artificial Intelligence for People in a Hurry: How You Can Benefit from the Next Industrial Revolution Bob Mather