The Analytics Data Management exam evaluates a candidate's knowledge and skills in managing data for analytics purposes. This certification assesses proficiency in data collection, integration, storage, governance, and analysis to support data-driven decision-making processes.
Skills Required
Data Collection: Understanding methods for gathering data from various sources.
Data Integration: Ability to combine data from different sources into a unified view.
Data Storage: Knowledge of data storage solutions, including databases, data lakes, and warehouses.
Data Governance: Understanding of data quality, privacy, and security practices.
Data Analysis: Proficiency in analyzing data to derive insights and support decision-making.
Data Visualization: Skills in creating visual representations of data to communicate findings.
Data Management Tools: Familiarity with tools and platforms used in data management and analytics.
Who should take the exam?
Data Analysts: Professionals responsible for analyzing data and deriving insights.
Data Engineers: Individuals managing data pipelines and infrastructure.
Business Intelligence Specialists: Experts developing and maintaining BI solutions.
Data Scientists: Researchers working with large datasets to create predictive models.
IT Professionals: Individuals involved in data management and governance.
Database Administrators: DBAs managing data storage solutions.
Students: Individuals studying data science, analytics, or related fields.
Course Outline
The Analytics Data Management exam covers the following topics :-
Module 1: Introduction to Data Management
Overview of data management concepts
Importance of data management in analytics
Key roles and responsibilities
Module 2: Data Collection and Integration
Methods for collecting data from various sources
Data integration techniques and tools
Handling structured and unstructured data
Module 3: Data Storage Solutions
Databases, data warehouses, and data lakes
Cloud-based vs. on-premises storage solutions
Choosing the right storage solution for analytics
Module 4: Data Governance and Quality
Principles of data governance
Ensuring data quality and consistency
Data privacy and security best practices
Module 5: Data Analysis Techniques
Descriptive, diagnostic, predictive, and prescriptive analytics
Tools and languages for data analysis (e.g., SQL, Python, R)
Data preparation and cleaning
Module 6: Data Visualization
Principles of effective data visualization
Tools for creating visualizations (e.g., Tableau, Power BI)
Communicating insights through visual storytelling
Module 7: Advanced Data Management Practices
Big data technologies (e.g., Hadoop, Spark)
Real-time data processing and analytics
Machine learning integration with data management
Module 8: Case Studies and Practical Applications
Real-world examples of data management in various industries
Best practices and lessons learned
Hands-on projects and exercises
Module 9: Future Trends in Data Management
Emerging technologies and their impact on data management
The role of AI and machine learning in data analytics