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ویرایش: 2024
نویسندگان: Dimitrios Sargiotis
سری:
ISBN (شابک) : 3031672674, 9783031672675
ناشر: Springer
سال نشر: 2024
تعداد صفحات: 553
زبان: English
فرمت فایل : PDF (درصورت درخواست کاربر به PDF، EPUB یا AZW3 تبدیل می شود)
حجم فایل: 26 مگابایت
در صورت تبدیل فایل کتاب Data Governance: A Guide به فرمت های PDF، EPUB، AZW3، MOBI و یا DJVU می توانید به پشتیبان اطلاع دهید تا فایل مورد نظر را تبدیل نمایند.
توجه داشته باشید کتاب حاکمیت داده: یک راهنما نسخه زبان اصلی می باشد و کتاب ترجمه شده به فارسی نمی باشد. وبسایت اینترنشنال لایبرری ارائه دهنده کتاب های زبان اصلی می باشد و هیچ گونه کتاب ترجمه شده یا نوشته شده به فارسی را ارائه نمی دهد.
Preface Acknowledgments Competing Interests Financial Interests Non-financial Interests Contents Abbreviations List of Figures List of Tables Chapter 1: Overview and Importance of Data Governance 1.1 Overview of Data Governance: Definition and Scope 1.2 The Pillars of Data Governance 1.2.1 Data Quality: Ensuring Accuracy, Completeness, and Reliability 1.2.2 Data Security: Protecting Data from Unauthorized Access and Breaches 1.2.3 Data Privacy: Complying with Regulations and Ethical Handling of Personal Data 1.2.4 Data Management: Efficient and Effective Use and Storage of Data 1.3 The Importance of Data Governance in Modern Organizations 1.3.1 Enhance Decision-Making Through Data Governance 1.3.2 Regulatory Compliance and Risk Management 1.3.3 Data Integration and Operational Efficiency 1.3.4 Building Trust and Credibility in Data 1.4 Key Components of a Data Governance Program 1.4.1 Data Governance Framework: Structure and Components 1.4.2 Data Stewards, Data Owners, and Governance Bodies 1.4.3 Policies and Standards: Development, Implementation, and Enforcement 1.4.4 Tools: Supporting Data Governance Efforts 1.5 Common Misconceptions About Data Governance 1.5.1 Debunking Myths and Clarifying Common Misunderstandings 1.5.2 Data Management: Clarifying the Differences 1.6 Challenges in Implementing Data Governance 1.6.1 Overcoming Resistance to Change 1.6.2 Addressing Data Quality Issues 1.6.3 Aligning Data Governance with Business Objectives 1.7 Success Stories: Data Governance in Action 1.8 Conclusion and Preview of the Next Chapter References Chapter 2: The Importance of Data Governance: Why It Matters in Today’s World 2.1 The Data-Driven Landscape: The Explosion of Data in the Digital Age 2.1.1 How Data Drives Business Decisions and Innovation 2.1.2 The Growing Need for Organized and Governed Data 2.2 Data Governance and Business Value 2.2.1 Enhancing Decision-Making with Quality Data 2.2.2 Improving Operational Efficiency Through Effective Data Management 2.2.3 Driving Business Growth and Innovation Through Strategic Data Utilization 2.3 Regulatory Compliance and Risk Management 2.3.1 Overview of Data-Related Regulations and European Agencies 2.3.2 The Role of Data Governance in Ensuring Compliance 2.3.3 Mitigating Risks Associated with Data Breaches and Noncompliance 2.4 Data Governance and Customer Trust: Building Customer Trust Through Responsible Data Practices 2.4.1 The Impact of Data Governance on Customer Relationships and Brand Reputation 2.5 Case Studies: The Cost of Poor Data Governance 2.6 Data Governance as a Competitive Advantage 2.7 Overcoming Challenges: Building a Culture of Data Governance 2.7.1 Building a Culture of Data Governance 2.8 Conclusion and Transition to Next Chapter References Chapter 3: Key Principles of Data Governance: Building a Strong Foundation 3.1 Understanding the Core Principles of Data Governance: Shaping Frameworks and Strategies 3.2 Principle of Data Quality 3.2.1 Strategies for Continuous Data Quality Assessment and Improvement 3.3 Principle of Data Transparency and Accessibility 3.4 Principle of Data Security 3.5 Principle of Compliance and Data Privacy 3.6 Principle of Data Stewardship 3.7 Principle of Data Lifecycle Management 3.8 Integrating Data Governance with Business Strategy 3.8.1 Case Studies 3.9 Overcoming Implementation Challenges 3.10 Real-World Examples: Principles in Practice 3.11 Conclusion and Look Ahead References Chapter 4: Data Governance Frameworks: Models and Best Practices 4.1 Introduction to Data Governance Frameworks 4.2 Overview of Popular Data Governance Frameworks 4.3 Designing a Data Governance Framework 4.4 Best Practices in Framework Implementation 4.5 Integrating Technology with Frameworks 4.6 Measuring the Effectiveness of your Framework—Data Governance Template 4.7 Case Studies: Frameworks in Action 4.8 Adapting Frameworks to Changing Data Landscapes 4.9 The Future of Data Governance Frameworks 4.10 Conclusion and Transition to the Next Chapter References Chapter 5: Data Quality Management: Ensuring Accuracy and Reliability 5.1 Introduction to Data Quality Management 5.2 Dimensions of Data Quality 5.3 Establishing Data Quality Standards 5.4 Data Quality Assessment Techniques 5.5 Data Cleansing and Improvement Strategies 5.6 Role of Technology in Data Quality Management 5.7 Building a Culture of Data Quality 5.8 Case Studies: Transforming Data Quality 5.9 Overcoming Common Data Quality Challenges 5.10 Conclusion and Next Steps References Chapter 6: Data Security and Privacy: Protecting Sensitive Information 6.1 Introduction to Data Security and Privacy 6.2 Key Concepts in Data Security 6.3 Data Privacy Laws and Regulations 6.4 Developing a Data Security and Privacy Strategy 6.5 Implementing Security Measures 6.6 Privacy by Design and Default 6.7 Managing Data Breaches and Incidents 6.8 Case Studies: Security and Privacy Challenges and Solutions 6.9 Balancing Data Accessibility with Security and Privacy 6.10 Conclusion and Preview of the Next Chapter References Chapter 7: Data Governance Policies and Standards: Development and Implementation 7.1 Introduction to Data Governance Policies and Standards 7.2 Developing Data Governance Policies 7.3 Key Elements of Data Governance Standards 7.4 Aligning Policies with Organizational Goals 7.5 Best Practices in Policy Development and Standardization 7.6 Communication and Training 7.7 Implementing and Enforcing Policies and Standards 7.8 Managing Change and Policy Evolution 7.9 Case Studies: Policies and Standards in Action 7.10 Conclusion References Chapter 8: Roles and Responsibilities in Data Governance: Building an Effective Team 8.1 Introduction to Data Governance Roles and Responsibilities 8.2 Key Data Governance Roles 8.3 Establishing a Data Governance Committee 8.4 Cross-Functional Collaboration in Data Governance 8.5 Training and Skill Development 8.6 Building and Sustaining an Effective Data Governance Team 8.7 Case Studies: Successful Data Governance Teams 8.8 Overcoming Common Challenges in Team Dynamics 8.9 Measuring Team Effectiveness 8.10 Conclusion References Chapter 9: Data Governance Tools and Technologies: Navigating the Options 9.1 Introduction to Data Governance Tools and Technologies 9.2 Data Quality Tools 9.3 Data Security and Privacy Tools 9.4 Metadata Management Tools 9.5 Data Cataloging and Inventory Tools: Enhancing Data Management 9.6 Master and Reference Data Management Tools: Empowering Data Consistency 9.7 Data Integration and ETL Tools: Streamlining Data Movement and Transformation 9.8 Evaluating and Selecting Data Governance Tools: Making Informed Choices 9.9 Case Studies: Tools in Practice—Real-World Examples 9.10 Future Trends in Data Governance Technology: Shaping Tomorrow’s Data Governance Landscape 9.11 Conclusion: Navigating the Data Governance Journey References Chapter 10: Data Governance in Different Industries: Case Studies and Applications 10.1 Introduction to Data Governance Across Industries 10.2 Data Governance in Healthcare 10.3 Data Governance in Finance and Banking 10.4 Data Governance in Retail and E-Commerce 10.5 Data Governance in Government and Public Sector 10.6 Data Governance in Technology and Telecommunications 10.7 Data Governance in Manufacturing and Logistics 10.8 Emerging Industries and Data Governance 10.9 Lessons Learned and Best Practices 10.10 Conclusion and Industry-Specific Considerations References Chapter 11: Overcoming Challenges in Data Governance: Strategies for Success 11.1 Introduction to Data Governance Challenges 11.2 Challenge of Organizational Culture and Change Management 11.3 Data Quality Issues 11.4 Aligning Data Governance with Business Objectives 11.5 Managing Data Governance in Complex Environments 11.6 Regulatory Compliance and Evolving Legal Requirements 11.7 Technology and Tool Integration Challenges 11.8 Skill Gaps and Training Needs 11.9 Data Security and Privacy Concerns 11.10 Case Studies: Overcoming Data Governance Challenges 11.11 Conclusion References Chapter 12: Future Trends in Data Governance: Preparing for Tomorrow 12.1 Introduction to Future Trends in Data Governance 12.2 The Rise of Artificial Intelligence and Machine Learning 12.3 Increasing Importance of Data Ethics 12.4 Impact of Big Data and IoT 12.5 Cloud Governance 12.6 Evolving Regulatory Landscape 12.7 Enhanced Focus on Data Literacy 12.8 Decentralization and Blockchain in Data Governance 12.9 Predictive Analytics in Data Governance 12.10 Preparing for the Future 12.11 Conclusion: The Evolving Landscape of Data Governance References Chapter 13: Establishing a Data Governance Culture: Change Management and Leadership 13.1 Introduction to Data Governance Culture 13.2 The Role of Leadership in Data Governance 13.3 Change Management Principles in Data Governance 13.4 Communicating the Value of Data Governance 13.5 Building Data Governance into Organizational DNA 13.6 Training and Empowerment 13.7 Developing Data Governance Champions 13.8 Incentivizing and Rewarding Compliance 13.9 Overcoming Cultural Barriers 13.10 Continuous Improvement and Adaptation 13.11 Conclusion References Chapter 14: Measuring the Impact of Data Governance: Metrics and Key Performance Indicators 14.1 Introduction to Measuring Data Governance Impact 14.2 Defining Relevant Metrics and KPIs 14.3 Metrics for Data Quality 14.4 Compliance and Risk Management Metrics 14.5 Metrics for Data Usage and Business Impact 14.6 Tracking and Reporting Mechanisms 14.7 Balancing Quantitative and Qualitative Measures 14.8 Case Studies: Measuring Success in Data Governance 14.9 Continuous Improvement Through Metrics 14.10 Conclusion 14.10.1 Metrics for Data Quality 14.10.2 Compliance and Risk Management Metrics 14.10.3 Metrics for Data Usage and Business Impact 14.10.4 Tracking and Reporting Mechanisms 14.10.5 Balancing Quantitative and Qualitative Measures 14.10.6 Case Studies: Measuring Success in Data Governance 14.10.7 Continuous Improvement through Metrics References Chapter 15: Legal and Regulatory Considerations in Data Governance 15.1 Introduction to Legal and Regulatory Aspects 15.2 Global Data Protection and Privacy Laws 15.3 Navigating Industry-Specific Regulations 15.4 Cross-Border Data Transfer and Compliance 15.5 Developing a Compliance-Oriented Data Governance Framework 15.6 Data Governance in the Context of Legal Discovery and Audits 15.7 Cybersecurity Laws and Regulations 15.8 Case Studies: Legal and Regulatory Compliance 15.9 Future Legal and Regulatory Trends 15.10 Conclusion References Chapter 16: Data Stewardship and Ownership: Best Practices 16.1 Introduction to Data Stewardship and Ownership 16.2 Defining Roles and Responsibilities 16.3 Best Practices in Data Stewardship 16.4 Establishing Data Ownership 16.5 Collaboration Between Stewards and Owners 16.6 Training and Empowerment 16.7 Accountability and Performance Measurement 16.8 Case Studies: Effective Stewardship and Ownership 16.9 Overcoming Common Challenges 16.10 Conclusion References Chapter 17: Data Governance Maturity Models: Assessing and Enhancing Your Program 17.1 Introduction to Data Governance Maturity Models 17.2 Overview of Common Data Governance Maturity Models 17.3 Assessing Your Current Maturity Level 17.4 Developing a Roadmap for Maturity Advancement 17.5 Key Factors Influencing Data Governance Maturity 17.6 Aligning Maturity Improvement with Business Objectives 17.7 Case Studies: Maturity Model Implementation 17.8 Challenges in Advancing Maturity 17.9 Continuous Improvement in Data Governance 17.10 Conclusion References Chapter 18: Conclusion: The Evolving Landscape of Data Governance 18.1 Reflection on the Journey of Data Governance 18.2 The Current State of Data Governance 18.3 Major Takeaways from the Book 18.4 The Future of Data Governance 18.5 Preparing for Ongoing Changes 18.6 The Role of Leadership and Culture 18.7 Final Thoughts on Building a Resilient Data Governance Framework 18.8 Encouraging a Community of Practice 18.9 Closing Remarks References References