Newsletters




Qlik Enhances its Open Lakehouse with Real-Time Transformations and Extensive Integrations


Qlik, a global leader in data integration, data quality, analytics, and artificial intelligence (AI), is introducing new capabilities in Qlik Open Lakehouse that bring streaming ingestion and real-time transformations to its managed, Apache Iceberg–based lakehouse.

According to Qlik, with these additions, teams can ingest high-volume events from Apache Kafka, Amazon Kinesis, and Amazon Simple Storage Service (Amazon S3) into governed Iceberg tables and apply transformations as the data lands.

Data quality, lineage, cataloging, and the Qlik Trust Score are applied automatically. The data is immediately available to analytics, applications, and ML teams, with ingestion and transformation offloaded to cost-effective compute.

Qlik also expanded its Iceberg ecosystem integrations with support for Snowflake Open Catalog, enhanced Apache Spark compatibility, and zero copy mirroring to Databricks and Amazon Redshift, alongside the already available mirroring to Snowflake, to simplify hybrid lakehouse and warehouse designs.

“The next phase of AI is operational,” said Drew Clarke, EVP product and technology at Qlik. “It runs on fresh, governed data, not nightly batches. By adding streaming ingestion and on-the-fly transformations to Open Lakehouse, teams get access to an open and trusted enterprise data foundation in their own cloud, built on Iceberg and integrated with the engines they already use. It shortens time to action and turns AI from pilots into performance.”

Qlik Open Lakehouse now unifies real-time ingest, on-the-fly transforms, optimization, and governance so data is usable on arrival. It connects to hundreds of sources and adds real-time pipelines without depending on warehouse compute for ingestion or streaming transformations. Data writes once to Apache Iceberg in the customer’s account and is queryable by range of engines including Snowflake, Amazon Athena, Amazon SageMaker Studio, Apache Spark, Trino, Presto and more, with data quality, lineage, and Trust Score built in, the company said.

Open Lakehouse manages Apache Iceberg tables on Amazon S3 inside the customer’s environment. Streaming pipelines write events and apply transforms as data flows, with automatic compaction and metadata updates to sustain performance. Governance in Qlik Talend Cloud enforces data quality and lineage and keeps the catalog current. Zero-copy mirroring makes the same Iceberg datasets available in Snowflake, Databricks, and Amazon Redshift without extra copies.

The new streaming ingestion and streaming transformations capabilities for Qlik Open Lakehouse are planned for general availability in Q1 2026 for Qlik Talend Cloud customers.

Support for Snowflake Open Catalog, enhanced Apache Spark compatibility, and zero-copy mirroring to Databricks and Amazon Redshift are expected to roll out in phases beginning as early as Q1 2026, with regional timing announced as features become available.

For more information about this news, visit www.qlik.com.


Sponsors