Get in Touch

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

Number of participants


Price per participant

Testimonials (1)

Upcoming Courses

Related Categories