Learn Why Data Quality Metrics
Matter for Unstructured Data
Founder & CEO, DQLabs
Data Build Tool (DBT) is an open-source command-line tool that helps data analysts and engineers transform raw data into usable datasets by applying transformations directly within a data warehouse. It allows users to define SQL-based models, schedule, run, and document transformations, and manage data pipelines efficiently. DBT is particularly focused on simplifying the development, testing, and deployment of data transformation workflows.
DQLabs provides the ability to connect to both dbt core and dbt cloud. Integrating DQLabs with DBT ensures trustworthy data throughout every stage of their data pipelines starting from the transformation process and continuing all the way into production environments. The benefits include automated data quality checks, real-time monitoring, data validation and improved governance. This integration helps organizations maintain high-quality data pipelines, reduce errors, and ensure that the data used for business decisions is trustworthy.
DBT handles large-scale transformations in SQL, which can be resource-intensive. Over time, as datasets grow and more transformations are added, query performance can degrade.
Integrating DQLabs’ data quality platform allows organizations to track query performance over time by monitoring factors such as execution time, resource usage, and performance bottlenecks. This helps identify slow-running queries or inefficient transformations, which could negatively impact the overall performance of BI reporting and dashboards. DQLabs’ ability to detect issues like performance degradation, query failures, or inefficiencies ensures that the DBT models continue to run efficiently, especially as data volumes grow.