Best Big Data Software for Docker

Find and compare the best Big Data software for Docker in 2025

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

  • 1
    Deepnote Reviews
    Deepnote is building the best data science notebook for teams. Connect your data, explore and analyze it within the notebook with real-time collaboration and versioning. Share links to your projects with other analysts and data scientists on your team, or present your polished, published notebooks to end users and stakeholders. All of this is done through a powerful, browser-based UI that runs in the cloud.
  • 2
    IRI Voracity Reviews

    IRI Voracity

    IRI, The CoSort Company

    IRI Voracity is an end-to-end software platform for fast, affordable, and ergonomic data lifecycle management. Voracity speeds, consolidates, and often combines the key activities of data discovery, integration, migration, governance, and analytics in a single pane of glass, built on Eclipse™. Through its revolutionary convergence of capability and its wide range of job design and runtime options, Voracity bends the multi-tool cost, difficulty, and risk curves away from megavendor ETL packages, disjointed Apache projects, and specialized software. Voracity uniquely delivers the ability to perform data: * profiling and classification * searching and risk-scoring * integration and federation * migration and replication * cleansing and enrichment * validation and unification * masking and encryption * reporting and wrangling * subsetting and testing Voracity runs on-premise, or in the cloud, on physical or virtual machines, and its runtimes can also be containerized or called from real-time applications or batch jobs.
  • 3
    Astro Reviews
    Astronomer is the driving force behind Apache Airflow, the de facto standard for expressing data flows as code. Airflow is downloaded more than 4 million times each month and is used by hundreds of thousands of teams around the world. For data teams looking to increase the availability of trusted data, Astronomer provides Astro, the modern data orchestration platform, powered by Airflow. Astro enables data engineers, data scientists, and data analysts to build, run, and observe pipelines-as-code. Founded in 2018, Astronomer is a global remote-first company with hubs in Cincinnati, New York, San Francisco, and San Jose. Customers in more than 35 countries trust Astronomer as their partner for data orchestration.
  • 4
    jethro Reviews
    Data-driven decision making has led to a surge in business data and an increase in demand for its analysis. IT departments are now looking to move away from expensive Enterprise Data Warehouses (EDW), and towards more cost-effective Big Data platforms such as Hadoop or AWS. The Total Cost of Ownership (TCO), for these new platforms, is approximately 10 times lower. They are not suitable for interactive BI applications as they lack the same performance and user concurrency as legacy EDWs. Jethro was created precisely for this purpose. Customers use Jethro to perform interactive BI with Big Data. Jethro is a transparent middle-tier that does not require any changes to existing apps and data. It is self-driving and requires no maintenance. Jethro is compatible to BI tools such as Microstrategy, Qlik and Tableau and is data source agnostic. Jethro meets the needs of business users by allowing thousands of concurrent users to run complex queries across billions of records.
  • 5
    Wavo Reviews
    We have created a revolutionary platform for big data that collects all information about a business and provides a single source to make informed decisions. Each music business has hundreds upon hundreds of data sources. They are scattered and siloed. Our platform connects them to create a foundation of high-quality data that can be used in all aspects of music business operations. Record labels and agencies need a sophisticated data management system and governance system to ensure that their data is always available, relevant, and easily accessible. This will allow them to work efficiently and securely, as well as uncover valuable insights that no one else can. Machine learning is used to tag data as they are added to Wavo's Big Data Platform. This makes it easy to drill-down and access important information. This allows everyone in a music industry to activate and deliver business-ready data that is backed up and organized for immediate benefit.
  • Previous
  • You're on page 1
  • Next