Best Data Management Software for Apache Mesos

Find and compare the best Data Management software for Apache Mesos in 2024

Use the comparison tool below to compare the top Data Management software for Apache Mesos on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Riak TS Reviews
    Riak®, TS is an enterprise-grade NoSQL Time Series Database that is specifically designed for IoT data and Time Series data. It can ingest, transform, store, and analyze massive amounts of time series information. Riak TS is designed to be faster than Cassandra. Riak TS masterless architecture can read and write data regardless of network partitions or hardware failures. Data is evenly distributed throughout the Riak ring. By default, there are three copies of your data. This ensures that at least one copy is available for reading operations. Riak TS is a distributed software system that does not have a central coordinator. It is simple to set up and use. It is easy to add or remove nodes from a cluster thanks to the masterless architecture. Riak TS's masterless architecture makes it easy for you to add or remove nodes from your cluster. Adding nodes made of commodity hardware to your cluster can help you achieve predictable and almost linear scale.
  • 2
    Kapacitor Reviews

    Kapacitor

    InfluxData

    $0.002 per GB per hour
    Kapacitor, a native data processing engine in InfluxDB 1.x, is an integral component of the InfluxDB 2.0 platform. Kapacitor is able to process both batch and stream data from InfluxDB. It can also act on these data in real time via its programming language TICKscript. Modern applications need more than operator alerts and dashboarding. They also require the ability to trigger actions. Kapacitor's alerting system uses a publish-subscribe design. Alerts are sent to topics, and subscribers subscribe to a topic. Kapacitor is very flexible and can be used to control your environment. It can perform tasks such as stock reordering and auto-scaling. Kapacitor has a simple plugin architecture (or interface) that allows it integrate with any anomaly detector engine.
  • 3
    Apache Spark Reviews

    Apache Spark

    Apache Software Foundation

    Apache Spark™, a unified analytics engine that can handle large-scale data processing, is available. Apache Spark delivers high performance for streaming and batch data. It uses a state of the art DAG scheduler, query optimizer, as well as a physical execution engine. Spark has over 80 high-level operators, making it easy to create parallel apps. You can also use it interactively via the Scala, Python and R SQL shells. Spark powers a number of libraries, including SQL and DataFrames and MLlib for machine-learning, GraphX and Spark Streaming. These libraries can be combined seamlessly in one application. Spark can run on Hadoop, Apache Mesos and Kubernetes. It can also be used standalone or in the cloud. It can access a variety of data sources. Spark can be run in standalone cluster mode on EC2, Hadoop YARN and Mesos. Access data in HDFS and Alluxio.
  • 4
    witboost Reviews
    witboost allows your company to become data-driven, reduce time-to market, it expenditures, and overheads by using a modular, scalable and efficient data management system. There are a number of modules that make up witboost. These modules are building blocks that can be used as standalone solutions to solve a specific problem or to create the ideal data management system for your company. Each module enhances a specific function of data engineering and can be combined to provide the perfect solution for your specific needs. This will ensure a fast and seamless implementation and reduce time-to market, time-to value and, consequently, the TCO of your data engineering infrastructure. Smart Cities require digital twins to anticipate needs and avoid unforeseen issues, gather data from thousands of sources, and manage telematics that is ever more complicated.
  • 5
    Apache Flink Reviews

    Apache Flink

    Apache Software Foundation

    Apache Flink is a distributed processing engine and framework for stateful computations using unbounded and bounded data streams. Flink can be used in all cluster environments and perform computations at any scale and in-memory speed. A stream of events can be used to produce any type of data. All data, including credit card transactions, machine logs, sensor measurements, and user interactions on a website, mobile app, are generated as streams. Apache Flink excels in processing both unbounded and bound data sets. Flink's runtime can run any type of application on unbounded stream streams thanks to its precise control of state and time. Bounded streams are internal processed by algorithms and data structure that are specifically designed to process fixed-sized data sets. This results in excellent performance. Flink can be used with all of the resource managers previously mentioned.
  • Previous
  • You're on page 1
  • Next