Data Engineering (Information Course - Non-Certification Course)
This comprehensive Data Engineering course is designed to equip students with the knowledge and skills necessary to navigate the complexities of modern data environments. Covering a broad range of topics, from foundational concepts like data modeling and SQL to advanced subjects such as big data technologies and machine learning integration, the course offers a thorough exploration of data engineering. Students will gain insights into the entire data lifecycle, including data ingestion, processing, storage, analysis, and visualization, ensuring they are well-prepared to handle real-world data challenges.
One of the course’s standout features is its emphasis on industry relevance. By incorporating case studies from finance, healthcare, and e-commerce, students can see firsthand how data engineering principles are applied in various sectors. This practical approach is complemented by modules on the latest tools and platforms, such as Apache Spark, Hadoop, AWS, Azure, and Google Cloud, which are essential for modern data engineering tasks. Additionally, the course underscores the importance of data governance, privacy, and security, providing best practices and compliance strategies for regulations like GDPR and HIPAA. With detailed sections on building data pipelines and operationalizing machine learning models, students will be adept at integrating AI and ML into their data engineering processes, making them valuable assets in any data-driven organization.
(Information Course - Non-Certification Course)
Curriculum
- 8 Sections
- 17 Lessons
- 0m Duration
Section 1: Introduction to Data Engineering
- Chapter 1: Overview of Data Engineering
- Chapter 2: Data Ecosystem and Workflow
Section 2: Data Modeling and Architecture
- Chapter 3: Data Modeling Basics
- Chapter 4: Data Warehouse and Data Lake
Section 3: ETL (Extract, Transform, Load) Processes
- Chapter 5: ETL Fundamentals
- Chapter 6: Data Transformation and Cleaning
Section 4: Big Data Technologies
- Chapter 7: Introduction to Big Data
- Chapter 8: Hadoop Ecosystem
- Chapter 9: Spark and Real-Time Processing
Section 5: Data Storage and Management
- Chapter 10: Relational Databases and SQL
- Chapter 11: NoSQL Databases
Section 6: Data Governance and Security
- Chapter 12: Data Governance
- Chapter 13: Data Security and Privacy
Section 7: Advanced Topics in Data Engineering
- Chapter 14: Cloud Data Engineering
- Chapter 15: Machine Learning and AI Integration
Section 8: Case Studies and Real-World Applications
- Chapter 16: Industry Case Studies
- Chapter 17: Project and Capstone