List of DataHub Integrations

This is a list of platforms and tools that integrate with DataHub. This list is updated as of June 2026.

  • 1
    Feast Reviews & Ratings

    Feast

    Tecton

    Empower machine learning with seamless offline data integration.
    Facilitate real-time predictions by utilizing your offline data without the hassle of custom pipelines, ensuring that data consistency is preserved between offline training and online inference to prevent any discrepancies in outcomes. By adopting a cohesive framework, you can enhance the efficiency of data engineering processes. Teams have the option to use Feast as a fundamental component of their internal machine learning infrastructure, which allows them to bypass the need for specialized infrastructure management by leveraging existing resources and acquiring new ones as needed. Should you choose to forego a managed solution, you have the capability to oversee your own Feast implementation and maintenance, with your engineering team fully equipped to support both its deployment and ongoing management. In addition, your goal is to develop pipelines that transform raw data into features within a separate system and to integrate seamlessly with that system. With particular objectives in mind, you are looking to enhance functionalities rooted in an open-source framework, which not only improves your data processing abilities but also provides increased flexibility and customization to align with your specific business needs. This strategy fosters an environment where innovation and adaptability can thrive, ensuring that your machine learning initiatives remain robust and responsive to evolving demands.
  • 2
    MariaDB Reviews & Ratings

    MariaDB

    MariaDB

    Empowering enterprise data management with versatility and scalability.
    The MariaDB Platform stands out as a robust open-source database solution tailored for enterprise use. It is versatile enough to handle transactional, analytical, and hybrid workloads while accommodating both relational and JSON data formats. Its scalability ranges from single databases to extensive data warehouses and fully distributed SQL systems capable of processing millions of transactions every second, enabling interactive analytics on vast datasets. Additionally, MariaDB offers deployment options on standard hardware as well as across major public cloud services, including its own fully managed cloud database, MariaDB SkySQL. For further details, you can explore MariaDB.com, which offers comprehensive insights into its features and capabilities. Overall, MariaDB is designed to meet the diverse needs of modern data management.
  • 3
    Iceberg Reviews & Ratings

    Iceberg

    Elevent

    Empower your sponsorship negotiations with data-driven market insights.
    Refrain from presuming the sponsorship costs that brands face; instead, seek out verifiable information through market analyses, much like what is done in the real estate industry. Our cutting-edge tool seamlessly collaborates with our valuation service, delivering an in-depth look at actual sponsorship deals for similar assets within your market, which includes sports, music, and venue-naming rights, thereby facilitating accurate comparisons among various sectors. Regardless of whether you are a service provider, a prominent sponsor, or a title partner, we offer vital data to improve your sponsorship negotiations. Utilize existing comparable agreements to bolster your negotiation tactics. Elevent features a vast and anonymized database filled with thousands of genuine sponsorship contracts, allowing users to set a dependable pricing structure for sponsorship agreements throughout North America. This empowers you to make well-informed choices rooted in actual market conditions, ensuring you are prepared for effective negotiations. By leveraging our platform, you can gain a competitive edge and navigate the sponsorship landscape with greater confidence.
  • 4
    Apache Airflow Reviews & Ratings

    Apache Airflow

    The Apache Software Foundation

    Effortlessly create, manage, and scale your workflows!
    Airflow is an open-source platform that facilitates the programmatic design, scheduling, and oversight of workflows, driven by community contributions. Its architecture is designed for flexibility and utilizes a message queue system, allowing for an expandable number of workers to be managed efficiently. Capable of infinite scalability, Airflow enables the creation of pipelines using Python, making it possible to generate workflows dynamically. This dynamic generation empowers developers to produce workflows on demand through their code. Users can easily define custom operators and enhance libraries to fit the specific abstraction levels they require, ensuring a tailored experience. The straightforward design of Airflow pipelines incorporates essential parametrization features through the advanced Jinja templating engine. The era of complex command-line instructions and intricate XML configurations is behind us! Instead, Airflow leverages standard Python functionalities for workflow construction, including date and time formatting for scheduling and loops that facilitate dynamic task generation. This approach guarantees maximum flexibility in workflow design. Additionally, Airflow’s adaptability makes it a prime candidate for a wide range of applications across different sectors, underscoring its versatility in meeting diverse business needs. Furthermore, the supportive community surrounding Airflow continually contributes to its evolution and improvement, making it an ever-evolving tool for modern workflow management.