Thank you for sending your enquiry! One of our team members will contact you shortly.
Thank you for sending your booking! One of our team members will contact you shortly.
Course Outline
Foundations of Data-Intensive Platform Engineering
- Introduction to data-intensive applications.
- Challenges in platform engineering for big data.
- Overview of data processing architectures.
Data Modeling and Management
- Principles of data modeling for scalability.
- Data storage options and optimization strategies.
- Managing data lifecycle in a distributed environment.
Big Data Processing Frameworks
- Overview of big data processing tools (Hadoop, Spark, Flink).
- Batch versus stream processing.
- Setting up a big data processing pipeline.
Real-Time Analytics Platforms
- Architecting for real-time analytics.
- Stream processing engines (Kafka Streams, Apache Storm).
- Building real-time dashboards and visualizations.
Data Pipeline Orchestration
- Workflow management with Apache Airflow and other tools.
- Automating data pipelines to enhance efficiency.
- Monitoring and alerting for data pipelines.
Platform Security and Compliance
- Security best practices for data platforms.
- Ensuring data privacy and regulatory compliance.
- Implementing secure data access controls.
Performance Tuning and Optimization
- Techniques for optimizing data throughput and latency.
- Scaling strategies for data-intensive platforms.
- Performance benchmarking and monitoring.
Case Studies and Best Practices
- Analyzing successful data platform implementations.
- Lessons learned from industry leaders.
- Emerging trends in data-intensive platform engineering.
Capstone Project
- Designing a platform solution for a data-intensive application.
- Implementing a prototype of the data processing pipeline.
- Evaluating the platform's performance and scalability.
Summary and Next Steps
Requirements
- Knowledge of fundamental data structures and algorithms.
- Programming experience with Java, Scala, or Python.
- Familiarity with core database concepts and SQL.
Audience
- Software developers.
- Data engineers.
- Technical leads.
21 Hours
Testimonials (1)
About the microservices and how to maintenance kubernetes