List of the Top 3 Big Data Platforms for Apache Ranger in 2025

Reviews and comparisons of the top Big Data platforms with an Apache Ranger integration


Below is a list of Big Data platforms that integrates with Apache Ranger. Use the filters above to refine your search for Big Data platforms that is compatible with Apache Ranger. The list below displays Big Data platforms products that have a native integration with Apache Ranger.
  • 1
    PHEMI Health DataLab Reviews & Ratings

    PHEMI Health DataLab

    PHEMI Systems

    Empowering data insights with built-in privacy and trust.
    In contrast to many conventional data management systems, PHEMI Health DataLab is designed with Privacy-by-Design principles integral to its foundation, rather than as an additional feature. This foundational approach offers significant benefits, including: It allows analysts to engage with data while adhering to strict privacy standards. It incorporates a vast and adaptable library of de-identification techniques that can conceal, mask, truncate, group, and anonymize data effectively. It facilitates the creation of both dataset-specific and system-wide pseudonyms, enabling the linking and sharing of information without the risk of data leaks. It gathers audit logs that detail not only modifications made to the PHEMI system but also patterns of data access. It automatically produces de-identification reports that are accessible to both humans and machines, ensuring compliance with enterprise governance risk management. Instead of having individual policies for each data access point, PHEMI provides the benefit of a unified policy that governs all access methods, including Spark, ODBC, REST, exports, and beyond, streamlining data governance in a comprehensive manner. This integrated approach not only enhances privacy protection but also fosters a culture of trust and accountability within the organization.
  • 2
    Hadoop Reviews & Ratings

    Hadoop

    Apache Software Foundation

    Empowering organizations through scalable, reliable data processing solutions.
    The Apache Hadoop software library acts as a framework designed for the distributed processing of large-scale data sets across clusters of computers, employing simple programming models. It is capable of scaling from a single server to thousands of machines, each contributing local storage and computation resources. Instead of relying on hardware solutions for high availability, this library is specifically designed to detect and handle failures at the application level, guaranteeing that a reliable service can operate on a cluster that might face interruptions. Many organizations and companies utilize Hadoop in various capacities, including both research and production settings. Users are encouraged to participate in the Hadoop PoweredBy wiki page to highlight their implementations. The most recent version, Apache Hadoop 3.3.4, brings forth several significant enhancements when compared to its predecessor, hadoop-3.2, improving its performance and operational capabilities. This ongoing development of Hadoop demonstrates the increasing demand for effective data processing tools in an era where data drives decision-making and innovation. As organizations continue to adopt Hadoop, it is likely that the community will see even more advancements and features in future releases.
  • 3
    Apache Storm Reviews & Ratings

    Apache Storm

    Apache Software Foundation

    Unlock real-time data processing with unmatched speed and reliability.
    Apache Storm is a robust open-source framework designed for distributed real-time computations, enabling the reliable handling of endless streams of data, much like how Hadoop transformed the landscape of batch processing. This platform boasts a user-friendly interface, supports multiple programming languages, and offers an enjoyable user experience. Its wide-ranging applications encompass real-time analytics, ongoing computations, online machine learning, distributed remote procedure calls, and the processes of extraction, transformation, and loading (ETL). Notably, performance tests indicate that Apache Storm can achieve processing speeds exceeding one million tuples per second per node, highlighting its remarkable efficiency. Furthermore, the system is built to be both scalable and fault-tolerant, guaranteeing uninterrupted data processing while remaining easy to install and manage. Apache Storm also integrates smoothly with existing queuing systems and various database technologies, enhancing its versatility. Within a typical setup, data streams are managed and processed through a topology capable of complex operations, which facilitates the flexible repartitioning of data at different computation stages. For further insights, a detailed tutorial is accessible online, making it an invaluable resource for users. Consequently, Apache Storm stands out as an exceptional option for organizations eager to harness the power of real-time data processing capabilities effectively.
  • Previous
  • You're on page 1
  • Next