Course Outline
Introduction to Azure Data Lake Storage Gen2
- Overview of Azure Data Lake Storage Gen2
- Key features and benefits
- Azure Data Lake Storage Gen1 vs. Azure Blob Storage
Setting up Azure Data Lake Storage Gen2
- Account creation and configuration
- Understanding the hierarchical namespace
- Data import and export strategies
Security and Access Control
- Implementing authentication and authorization
- Managing access with Azure Active Directory (Azure AD)
- Data encryption methods and best practices
Managing Data and Cost Optimization
- Data lifecycle management with storage tiers
- Performance tuning and optimization
- Cost management and optimization strategies
Integrating with Analytics Services
- Introduction to analytics frameworks compatible with Azure Data Lake Storage Gen2
- Use cases with Azure Databricks, Azure HDInsight, and Azure Synapse Analytics
- Building ETL pipelines using Azure Data Factory
Developer Tools and APIs
- Overview of available APIs and SDKs
- Developing applications using the Azure Data Lake Storage Gen2 API
- Automation and orchestration of tasks
Monitoring, Troubleshooting, and Best Practices
- Tools and techniques for monitoring storage and access patterns
- Troubleshooting common issues
- Best practices for managing and scaling Azure Data Lake Storage Gen2
Summary and Next Steps
Requirements
- Basic understanding of cloud computing principles
- Fundamental knowledge of data storage solutions and databases
Audience
- Data engineers
- Cloud professionals
- Data scientists
Custom Corporate Training
Training solutions designed exclusively for businesses.
- Customized Content: We adapt the syllabus and practical exercises to the real goals and needs of your project.
- Flexible Schedule: Dates and times adapted to your team's agenda.
- Format: Online (live), In-company (at your offices), or Hybrid.
Price per private group, online live training, starting from 3200 € + VAT*
Contact us for an exact quote and to hear our latest promotions
Testimonials (3)
I liked that it was practical. Loved to apply the theoretical knowledge with practical examples.
Aurelia-Adriana - Allianz Services Romania
Course - Python and Spark for Big Data (PySpark)
The fact that we were able to take with us most of the information/course/presentation/exercises done, so that we can look over them and perhaps redo what we didint understand first time or improve what we already did.
Raul Mihail Rat - Accenture Industrial SS
Course - Python, Spark, and Hadoop for Big Data
The combination of theory and practice with tools like Databricks
Graciela Saud - Servicio de Impuestos Internos
Course - Spark for Developers
Machine Translated