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Qlik: Data Warehouse Automation

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Information is a key resource for any business. Easy access to data helps to gain market leadership in the digital age. It is possible to set up quick access to it with data warehouse automation, which simplifies and speeds up the data warehouse life cycle.

Qlik Data Integration automates the entire data warehouse lifecycle while speeding up access to ready-made analytical data. Data engineers have the ability to create models and new data marts, as well as add new data sources. Automation is provided at every stage of the pipeline from data modeling and real-time ingestion to data mart and control.

Advantages:

  1. Automation of data obtaining and updating in real time.

The universal solution provides a continuous process of uploading corporate data to storage in real time. CDC is the foundation for accelerating data movement from different enterprise sources into storage.

  1. Automated and continuous refinement

A modern approach to the process of creating and operating a data warehouse. Model-driven approach for rapidly designing, building and managing corporate data stores on premises or in the cloud.

  1. Trusted corporate data

Smart catalog creation for all corporate data. The security level allows to securely share all datasets, marts, etc. with other business users.

  1. Support for flexible architectures

It is quite common for organizations to implement both data lakes and data warehouses to meet different analytic needs. Qlik Compose combines warehouse and data lake automation in one unified user interface.

DataLabs is a Qlik Certified Partner. A high level of team competence and an individual approach allows to find a solution in any situation. You can get additional information by filling out the form at the link

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