Best Real-Time Data Streaming Tools in Europe - Page 3

Find and compare the best Real-Time Data Streaming tools in Europe in 2025

Use the comparison tool below to compare the top Real-Time Data Streaming tools in Europe on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Apache Flink Reviews

    Apache Flink

    Apache Software Foundation

    Apache Flink serves as a powerful framework and distributed processing engine tailored for executing stateful computations on both unbounded and bounded data streams. It has been engineered to operate seamlessly across various cluster environments, delivering computations with impressive in-memory speed and scalability. Data of all types is generated as a continuous stream of events, encompassing credit card transactions, sensor data, machine logs, and user actions on websites or mobile apps. The capabilities of Apache Flink shine particularly when handling both unbounded and bounded data sets. Its precise management of time and state allows Flinkā€™s runtime to support a wide range of applications operating on unbounded streams. For bounded streams, Flink employs specialized algorithms and data structures optimized for fixed-size data sets, ensuring remarkable performance. Furthermore, Flink is adept at integrating with all previously mentioned resource managers, enhancing its versatility in various computing environments. This makes Flink a valuable tool for developers seeking efficient and reliable stream processing solutions.
  • 2
    Baidu AI Cloud Stream Computing Reviews
    Baidu Stream Computing (BSC) offers an efficient platform for processing streaming data in real-time, characterized by minimal latency, robust throughput, and high precision. It seamlessly integrates with Spark SQL, allowing users to execute complex business logic via straightforward SQL queries, making it user-friendly. Additionally, BSC supports comprehensive life cycle management for streaming computing tasks, ensuring effective oversight. The platform is deeply integrated with various Baidu AI Cloud storage solutions, serving as both upstream and downstream components in stream processing, including Baidu Kafka, RDS, BOS, IOT Hub, Baidu ElasticSearch, TSDB, SCS, among others. Furthermore, BSC provides extensive job monitoring capabilities, enabling users to track performance metrics and establish alert rules to safeguard their operations, thereby enhancing overall efficiency and reliability in data handling.
  • 3
    Hitachi Streaming Data Platform Reviews
    Hitachi is a Japan company and produces a software product named Hitachi Streaming Data Platform. Hitachi Streaming Data Platform is a type of Real-Time data streaming software, and provides features like data enrichment, data wrangling / data prep, multiple data source support, process automation, real-time analysis / reporting, and visualization dashboards. Hitachi Streaming Data Platform includes training through documentation. Hitachi Streaming Data Platform includes phone support support. Some alternatives to Hitachi Streaming Data Platform are SQLstream, Confluent, and DeltaStream.
  • 4
    Cloudera DataFlow Reviews
    Cloudera DataFlow for the Public Cloud (CDF-PC) is a versatile, cloud-based data distribution solution that utilizes Apache NiFi, enabling developers to seamlessly connect to diverse data sources with varying structures, process that data, and deliver it to a wide array of destinations. This platform features a flow-oriented low-code development approach that closely matches the preferences of developers when creating, developing, and testing their data distribution pipelines. CDF-PC boasts an extensive library of over 400 connectors and processors that cater to a broad spectrum of hybrid cloud services, including data lakes, lakehouses, cloud warehouses, and on-premises sources, ensuring efficient and flexible data distribution. Furthermore, the data flows created can be version-controlled within a catalog, allowing operators to easily manage deployments across different runtimes, thereby enhancing operational efficiency and simplifying the deployment process. Ultimately, CDF-PC empowers organizations to harness their data effectively, promoting innovation and agility in data management.