本影片未以 中文(繁體) 提供。本影片以 English (US) 提供。

Real-time data streams with Apache Kafka and Spark

This action-packed session will show you how to keep up with the ever-increasing stream of data that developers are tasked with processing. From ingestion through real-time stream processing, Alena will teach you how Azure Databricks and HDInsight can keep up with your distributed streaming workflow. You'll learn how to make a fast, flexible, scalable, and resilient data workflow using frameworks like Apache Kafka and Spark Structured Streaming. You'll use these systems to process data from multiple real-time sources, process machine learning tasks, and how to effectively experiment with the real-time streams with real-world examples and code.

相關影片

Leveraging Azure Databricks to minimize time to insight by combining Batch and Stream processing pipelines

Leveraging Azure Databricks to minimize time to insight by combining Batch and Stream processing pipelines

The Developer Data Scientist – Creating New Analytics Driven Applications using Apache Spark with Azure Databricks

The Developer Data Scientist – Creating New Analytics Driven Applications using Apache Spark with Azure Databricks

Machine learning at scale

Machine learning at scale