Best Data Integration Tools for DataHub

Find and compare the best Data Integration tools for DataHub in 2025

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

  • 1
    AWS Glue Reviews
    See Tool
    Learn More
    AWS Glue is a fully managed data integration solution that simplifies the process of discovering, preparing, and merging data for purposes such as analytics, machine learning, and application development. By offering all the necessary tools for data integration, AWS Glue enables users to begin analyzing their data and leveraging it for insights within minutes rather than taking months. The concept of data integration encompasses various activities like identifying and extracting data from multiple sources, enhancing, cleaning, normalizing, and consolidating that data, as well as organizing and loading it into databases, data warehouses, and data lakes. Different users, each utilizing various tools, often manage these tasks. Operating within a serverless environment, AWS Glue eliminates the need for infrastructure management, automatically provisioning, configuring, and scaling the resources essential for executing data integration jobs. This efficiency allows organizations to focus more on data-driven decision-making without the overhead of manual resource management.
  • 2
    dbt Reviews

    dbt

    dbt Labs

    $50 per user per month
    Version control, quality assurance, documentation, and modularity enable data teams to work together similarly to software engineering teams. It is crucial to address analytics errors with the same urgency as one would for bugs in a live product. A significant portion of the analytic workflow is still performed manually. Therefore, we advocate for workflows to be designed for execution with a single command. Data teams leverage dbt to encapsulate business logic, making it readily available across the organization for various purposes including reporting, machine learning modeling, and operational tasks. The integration of continuous integration and continuous deployment (CI/CD) ensures that modifications to data models progress smoothly through the development, staging, and production phases. Additionally, dbt Cloud guarantees uptime and offers tailored service level agreements (SLAs) to meet organizational needs. This comprehensive approach fosters a culture of reliability and efficiency within data operations.
  • 3
    Alibaba Cloud Data Integration Reviews
    Alibaba Cloud Data Integration serves as a robust platform for data synchronization that allows for both real-time and offline data transfers among a wide range of data sources, networks, and geographical locations. It effectively facilitates the synchronization of over 400 different pairs of data sources, encompassing RDS databases, semi-structured and unstructured storage (like audio, video, and images), NoSQL databases, as well as big data storage solutions. Additionally, the platform supports real-time data interactions between various data sources, including popular databases such as Oracle and MySQL, along with DataHub. Users can easily configure offline tasks by defining specific triggers down to the minute, which streamlines the process of setting up periodic incremental data extraction. Furthermore, Data Integration seamlessly collaborates with DataWorks data modeling to create a cohesive operations and maintenance workflow. Utilizing the computational power of Hadoop clusters, the platform facilitates the synchronization of HDFS data with MaxCompute, ensuring efficient data management across multiple environments. By providing such extensive capabilities, it empowers businesses to enhance their data handling processes considerably.
  • 4
    Apache NiFi Reviews

    Apache NiFi

    Apache Software Foundation

    A user-friendly, robust, and dependable system for data processing and distribution is offered by Apache NiFi, which facilitates the creation of efficient and scalable directed graphs for routing, transforming, and mediating data. Among its various high-level functions and goals, Apache NiFi provides a web-based user interface that ensures an uninterrupted experience for design, control, feedback, and monitoring. It is designed to be highly configurable, loss-tolerant, and capable of low latency and high throughput, while also allowing for dynamic prioritization of data flows. Additionally, users can alter the flow in real-time, manage back pressure, and trace data provenance from start to finish, as it is built with extensibility in mind. You can also develop custom processors and more, which fosters rapid development and thorough testing. Security features are robust, including SSL, SSH, HTTPS, and content encryption, among others. The system supports multi-tenant authorization along with internal policy and authorization management. Also, NiFi consists of various web applications, such as a web UI, web API, documentation, and custom user interfaces, necessitating the configuration of your mapping to the root path for optimal functionality. This flexibility and range of features make Apache NiFi an essential tool for modern data workflows.
  • Previous
  • You're on page 1
  • Next