List of Debezium Integrations
This is a list of platforms and tools that integrate with Debezium. This list is updated as of April 2025.
-
1
PubSub+ Platform
Solace
Empowering seamless data exchange with reliable, innovative solutions.Solace specializes in Event-Driven Architecture (EDA) and boasts two decades of expertise in delivering highly dependable, robust, and scalable data transfer solutions that utilize the publish & subscribe (pub/sub) model. Their technology facilitates the instantaneous data exchange that underpins many daily conveniences, such as prompt loyalty rewards from credit cards, weather updates on mobile devices, real-time tracking of aircraft on the ground and in flight, as well as timely inventory notifications for popular retail stores and grocery chains. Additionally, the technology developed by Solace is instrumental for numerous leading stock exchanges and betting platforms worldwide. Beyond their reliable technology, exceptional customer service is a significant factor that attracts clients to Solace and fosters long-lasting relationships. The combination of innovative solutions and dedicated support ensures that customers not only choose Solace but also continue to rely on their services over time. -
2
Materialize
Materialize
Transform data streams effortlessly with familiar SQL simplicity.Materialize is a cutting-edge reactive database that facilitates the incremental updating of views, making it easier for developers to engage with streaming data using familiar SQL syntax. This platform stands out due to its capability to directly interface with various external data sources without necessitating extensive pre-processing steps. Users can connect to live streaming sources like Kafka and Postgres databases, as well as utilize change data capture (CDC) mechanisms, while also having the option to access historical data from files or S3 storage. Materialize allows for the execution of queries, the performance of joins, and the transformation of diverse data sources through standard SQL, resulting in dynamically updated Materialized views. As new data flows in, queries remain active and are consistently refreshed, empowering developers to easily create real-time applications or data visualizations. Additionally, the process of building applications that leverage streaming data is simplified, often requiring minimal SQL code, which greatly boosts development efficiency. Ultimately, with Materialize, developers can dedicate their efforts to crafting innovative solutions instead of getting overwhelmed by intricate data management challenges, thus unlocking new possibilities in data-driven projects. -
3
Artie
Artie
Simplify data management and boost efficiency effortlessly today!To address latency challenges and reduce resource usage, only the updated data should be transmitted to the intended destination. Change data capture (CDC) is a powerful technique for efficiently synchronizing information. By leveraging log-based replication, real-time data duplication can be achieved without affecting the performance of the primary database. This enables the rapid establishment of a complete solution without the necessity for continuous pipeline oversight. Consequently, data teams can redirect their efforts towards more impactful projects. The implementation of Artie is simple and involves only a few straightforward steps. Artie manages the backfilling of historical records and continuously sends new updates to the specified table as they occur, ensuring high levels of data consistency and reliability. In the event of an outage, Artie utilizes Kafka offsets to resume from the last recorded point, maintaining data integrity without requiring a full re-synchronization. This effective methodology not only simplifies data management but also significantly boosts overall operational efficiency. Moreover, by automating routine tasks, teams can allocate their time and resources toward innovation and strategic growth initiatives. -
4
GlassFlow
GlassFlow
Empower your data workflows with seamless, serverless solutions.GlassFlow represents a cutting-edge, serverless solution designed for crafting event-driven data pipelines, particularly suited for Python developers. It empowers users to construct real-time data workflows without the burdens typically associated with conventional infrastructure platforms like Kafka or Flink. By simply writing Python functions for data transformations, developers can let GlassFlow manage the underlying infrastructure, which offers advantages such as automatic scaling, low latency, and effective data retention. The platform effortlessly connects with various data sources and destinations, including Google Pub/Sub, AWS Kinesis, and OpenAI, through its Python SDK and managed connectors. Featuring a low-code interface, it enables users to quickly establish and deploy their data pipelines within minutes. Moreover, GlassFlow is equipped with capabilities like serverless function execution, real-time API connections, alongside alerting and reprocessing functionalities. This suite of features positions GlassFlow as a premier option for Python developers seeking to optimize the creation and oversight of event-driven data pipelines, significantly boosting their productivity and operational efficiency. As the dynamics of data management continue to transform, GlassFlow stands out as an essential instrument in facilitating smoother data processing workflows, thereby catering to the evolving needs of modern developers. -
5
Kestra
Kestra
Empowering collaboration and simplicity in data orchestration.Kestra serves as a free, open-source event-driven orchestrator that enhances data operations and fosters better collaboration among engineers and users alike. By introducing Infrastructure as Code to data pipelines, Kestra empowers users to construct dependable workflows with assurance. With its user-friendly declarative YAML interface, individuals interested in analytics can easily engage in the development of data pipelines. Additionally, the user interface seamlessly updates the YAML definitions in real-time as modifications are made to workflows through the UI or API interactions. This means that the orchestration logic can be articulated in a declarative manner in code, allowing for flexibility even when certain components of the workflow undergo changes. Ultimately, Kestra not only simplifies data operations but also democratizes the process of pipeline creation, making it accessible to a wider audience.
- Previous
- You're on page 1
- Next