SelectZero is designed to ensure the highest level of data integrity through real-time, automated data quality validations. By generating, executing, and monitoring validations continuously, it detects inconsistencies and issues, providing instant alerts to prevent flawed data from impacting critical business processes. With comprehensive oversight and customizable validation rules, the platform guarantees that your data consistently meets defined standards before it’s used for analysis or decision-making. The platform not only safeguards data quality but also enhances operational efficiency, empowering your business to make informed, confident decisions with trustworthy data.
Data quality rules
SelectZero leverages SQL-based test cases to perform dynamic data validations, offering a highly flexible and powerful framework for ensuring data quality. Users can easily create a wide range of validations, from business rule checks and unit tests to regression tests and ad-hoc validations, tailored to specific needs and workflows. By incorporating trend analysis and customizable thresholds, SelectZero allows for early detection of deviations in data, using a variety of models to predict and monitor trends over time. Additionally, users can conduct comprehensive data reconciliation processes, comparing different data sets at a granular, columnar level to quickly identify mismatches or inconsistencies. This ensures that data remains accurate and reliable across various use cases, supporting both routine data management and critical decision-making processes.
Automated test generation
With automated test generation, users can take advantage of an AI-powered assistant to streamline the creation of data validation and quality checks. The AI assistant can provide intelligent suggestions for test cases by analyzing the data catalog, helping users quickly implement relevant tests without needing to write them from scratch. Additionally, users can define data quality rules using natural language, which are automatically converted into test cases, making it easier for non-technical users to contribute to data quality management. For more advanced needs, users have the flexibility to create custom SQL templates that can include custom parameters or metadata-driven variables. These templates can be used to efficiently generate test cases in bulk, reducing manual effort and increasing consistency across data validation processes. This combination of AI assistance, natural language input, and custom SQL templates empowers users to automate and scale their testing processes while ensuring that data quality rules are accurately enforced across large datasets.