Akka, Spark or Kafka? Selecting The Right Streaming Engine For the Job
About This Webinar
For many businesses, the batch-oriented architecture of Big Data–where data is captured in large, scalable stores, then processed later–is simply too slow: a new breed of “Fast Data” architectures has evolved to be stream-oriented, where data is processed as it arrives, providing businesses with a competitive advantage.
There are many stream processing tools, so which ones should you choose? It helps to consider several factors in the context of your applications:
Low latency: How low (or high) is needed?
High volume: How much volume must be handled?
Integration with other tools: Which ones and how?
Data processing: What kinds? In bulk? As individual events?
In this talk by Dean Wampler, PhD., VP of Fast Data Engineering at Lightbend, we’ll look at the criteria you need to consider when selecting technologies, plus specific examples of how four streaming tools–Akka Streams, Kafka Streams, Apache Flink and Apache Spark serve particular needs and use cases when working with continuous streams of data.
Видео Akka, Spark or Kafka? Selecting The Right Streaming Engine For the Job канала Lightbend
For many businesses, the batch-oriented architecture of Big Data–where data is captured in large, scalable stores, then processed later–is simply too slow: a new breed of “Fast Data” architectures has evolved to be stream-oriented, where data is processed as it arrives, providing businesses with a competitive advantage.
There are many stream processing tools, so which ones should you choose? It helps to consider several factors in the context of your applications:
Low latency: How low (or high) is needed?
High volume: How much volume must be handled?
Integration with other tools: Which ones and how?
Data processing: What kinds? In bulk? As individual events?
In this talk by Dean Wampler, PhD., VP of Fast Data Engineering at Lightbend, we’ll look at the criteria you need to consider when selecting technologies, plus specific examples of how four streaming tools–Akka Streams, Kafka Streams, Apache Flink and Apache Spark serve particular needs and use cases when working with continuous streams of data.
Видео Akka, Spark or Kafka? Selecting The Right Streaming Engine For the Job канала Lightbend
Показать
Комментарии отсутствуют
Информация о видео
Другие видео канала
Comparing Kafka Streams, Akka Streams and Spark Streaming: what to use when | Rock the JVMBootstrapping Microservices using Akka, Kafka ans Spark by Alex SilvaAkka A to Z: The Industry's Choice For Fast Data & Microservices ArchitecturesBuilding Streaming Microservices with Apache Kafka - Tim BerglundRabbitMQ & KafkaHow Science is Taking the Luck out of Gambling - with Adam KucharskiBuild Real-Time Streaming ETL Pipelines with Akka Streams, Alpakka and Apache KafkaWhen and How to Use the Actor Model An Introduction to Akka NET ActorsApache Kafka vs. Integration Middleware (MQ, ETL, ESB) - Friends, Enemies or Frenemies?Functional stream processing with Scala - Fs2 Crash CourseApache Kafka Crash CourseThe History of Apache Kafka with Neha NarkhedeTAST00: Kafka is no longer king for big data (Pulsar is the winner)Hadoop vs Spark | Which One to Choose? | Hadoop Training | Spark Training | EdurekaMassTransit Starting with MediatorIs Programming Right For You? The mindset you NEEDStreaming Microservices with Akka Streams and Kafka StreamsIntroduction to Akka Actors with JavaSending HTTP Requests with Scala & Akka HTTP | Rock the JVMDistributed processing with Akka Cluster & Kafka