How Data Management is Essential for AI Success
Explore how effective data management is crucial for AI success in manufacturing. Learn to tackle challenges like data quality and governance with HiveMQ.
This extension seamlessly integrates MQTT data with your Data Lake, unlocking the full potential of IoT data analytics and MLOps.
Category: Data Integration
Version: Bundles with HiveMQ
License: Commercial
Provider: HiveMQ
Verified: Yes
Data lakes are centralized repositories that allow organizations to store vast amounts of raw and processed data in their native format. This type of storage system can handle large volumes of structured, semi-structured, and unstructured data. The HiveMQ Enterprise Data Lake Extension makes it possible to:
Forward MQTT messages directly to the data lake without the need for additional infrastructure.
Supports any Data Lake infrastructure that is S3 or Azure Blob compatible - Databricks, Snowflake, etc.
Convert MQTT messages into Parquet table rows with column mappings.
Utilize HiveMQ Data Hub to weed out bad/invalid data and ensure data integrity and quality across your IoT deployment.
Use mappings to store only the MQTT message elements needed. This helps optimize storage capacity and querying while saving unnecessary data storage costs.
The Data Lake Extension writes to popular object stores easily accessible from any data warehouse
HiveMQ’s MQTT platform is the ideal choice for exploiting the investment in your data lake by combining IoT data with other data. Unlock the power of IoT with these key features:
The HiveMQ Extension can be used to connect to a variety of data lakes and can support hybrid data lake environments - AWS S3, Azure Blob, Snowflake, Databricks, ...
Analyzing IoT data provides real-time insights into device performance, user behavior, and environmental conditions for swift decision-making.
Utilize data lake machine learning capabilities with real-time sensor data to build predictive models for pattern identification and trend analysis.
Use the data lake to store and analyze new and historical IoT data to identify trends and patterns over time.
HiveMQ extensions are plugins that provide seamless integration with streaming services, databases, data warehouses, and security services. There is a Custom SDK to build tailored extensions for specific integration needs.
Extensions usage scales along with the rest of the cluster and each enterprise extension is designed and tested for use in a cluster.
Extensions run on each cluster node, so if a node exits the cluster the extension will be present on the replacement node.
No separate nodes to manage. Easily manage cluster-wide configuration in a Kubernetes cluster with the HiveMQ Operator.
Top recommended resources to help you unlock the power of IoT with your data lake.
Explore how effective data management is crucial for AI success in manufacturing. Learn to tackle challenges like data quality and governance with HiveMQ.
Discover how HiveMQ's Enterprise Data Lake Extension offers effortless MQTT data integration into leading data lakes, eliminating extra infrastructure needs.
HiveMQ announced the general availability of the HiveMQ Enterprise Data Lake Extension to enable MQTT data integration into data lakes.
A webinar discussing MQTT data management with a focus on maximizing IoT data quality and integrity.
Learn how to measure the quality of your MQTT-based IoT data pipeline using HiveMQ Data Hub, an integrated policy engine in the broker.
New HiveMQ Splunk extension demo that natively forwards the MQTT data to Splunk for analysis and visualization of IoT data.
Choose between a fully-managed cloud or self-managed MQTT platform. Our MQTT experts can help you with your solution and demonstrate HiveMQ in action.