

Security Management
Data Security and Warehousing
Overview:
Introduction:
Data security and warehousing address the dual objectives of protecting sensitive organizational information and efficiently managing large datasets in centralized systems. Data security ensures that information remains confidential, intact, and available, while data warehousing focuses on organizing and storing data for effective retrieval and analysis. This training program equips participants with the skills to establish secure, compliant, and efficient data management and warehousing solutions.
Program Objectives:
By the end of this program, participants will be able to:
-
Recognize key practices for securing data in warehousing systems.
-
Explore the architectural and technical requirements of data warehousing.
-
Manage data processing and quality within warehouse systems.
-
Analyze agile methods for dynamic data warehousing projects.
-
Identify the essential components of effective data warehouses.
Targeted Audience:
-
Data security and IT professionals.
-
Data warehouse architects and administrators.
-
Business intelligence analysts.
-
Compliance and risk management officers.
-
Professionals involved in data governance and management.
Program Outline:
Unit 1:
Data Security Foundations:
-
Key principles of protecting data in warehousing systems.
-
Standards and regulations: ISO/IEC 17728 and GDPR for data security.
-
How to manage access controls and user permissions in warehouses.
-
The lifecycle of a dataset and its security implications.
-
Challenges in securing data within large-scale systems.
Unit 2:
Data Warehouse Architecture and Infrastructure:
-
The technical structure of data warehouses.
-
Requirements for hardware, operating systems, and database software.
-
Automation processes in warehousing tasks for operational efficiency.
-
Architectural models including conceptual, logical, and physical data models.
-
How to address scalability and compatibility in warehouse systems.
Unit 3:
Data Processing and Quality Management:
-
Processes for data extraction, transformation, and loading (ETL).
-
Techniques for ensuring data accuracy and quality.
-
Dimensional modeling methods for data organization.
-
Methods for matching datasets to user requirements.
-
Big data processing techniques within cloud-based warehousing environments.
Unit 4:
Agile Methods in Data Warehousing:
-
Frameworks for adopting the Agile Manifesto for flexible data projects.
-
How to apply the Scrum framework for iterative warehousing development.
-
The role of Extreme Programming (XP) in warehousing tasks.
-
Lean principles in software and process optimization.
Unit 5:
Building and Optimizing Data Warehouses:
-
Core features and functionalities of data warehouses.
-
Key activities for differentiating data warehouses from data marts.
-
Key components of an efficient data warehouse system.
-
Dimensional analysis process for enhanced data categorization.
-
Importance of aligning requirements with the design and maintenance of data warehouses.