Best Data Quality Software for Microsoft Teams

Find and compare the best Data Quality software for Microsoft Teams in 2024

Use the comparison tool below to compare the top Data Quality software for Microsoft Teams on the market. You can filter results by user reviews, pricing, features, platform, region, support options, integrations, and more.

  • 1
    Foundational Reviews
    Identify code issues and optimize code in real-time. Prevent data incidents before deployment. Manage code changes that impact data from the operational database all the way to the dashboard. Data lineage is automated, allowing for analysis of every dependency, from the operational database to the reporting layer. Foundational automates the enforcement of data contracts by analyzing each repository, from upstream to downstream, directly from the source code. Use Foundational to identify and prevent code and data issues. Create controls and guardrails. Foundational can be configured in minutes without requiring any code changes.
  • 2
    DataTrust Reviews
    DataTrust accelerates test cycles and reduces the cost of delivery through continuous integration and continuous distribution (CI/CD). It is a powerful tool for data validation, data reconciliation, and data observability at a large scale. It is code-free and easy to use. Re-usable scenarios allow you to perform comparisons, validations and reconciliations. Automate your testing process and be alerted to any issues that arise. Interactive executive reports that provide insights into the quality dimension. Filters to customize drill-down reports. Compare row counts for multiple tables at the schema level. Checksum data comparisons can be performed for multiple tables. Rapid generation of business rule using ML. Flexibility in accepting, modifying, or discarding rules as required. Reconciling data across multiple sources. DataTrust solutions offer a full suite of applications for analyzing source and target datasets.
  • 3
    Sifflet Reviews
    Automate the automatic coverage of thousands of tables using ML-based anomaly detection. 50+ custom metrics are also available. Monitoring of metadata and data. Comprehensive mapping of all dependencies between assets from ingestion to reporting. Collaboration between data consumers and data engineers is enhanced and productivity is increased. Sifflet integrates seamlessly with your data sources and preferred tools. It can run on AWS and Google Cloud Platform as well as Microsoft Azure. Keep an eye on your data's health and notify the team if quality criteria are not being met. In a matter of seconds, you can set up the basic coverage of all your tables. You can set the frequency, criticality, and even custom notifications. Use ML-based rules for any anomaly in your data. There is no need to create a new configuration. Each rule is unique because it learns from historical data as well as user feedback. A library of 50+ templates can be used to complement the automated rules.
  • 4
    Validio Reviews
    Get a clear view of your data assets: popularity, usage, and schema coverage. Get important insights into your data assets, such as popularity and utilization. Find and filter data based on tags and descriptions in metadata. Get valuable insights about your data assets, such as popularity, usage, quality, and schema cover. Drive data governance and ownership throughout your organization. Stream-lake-warehouse lineage to facilitate data ownership and collaboration. Lineage maps are automatically generated at the field level to help understand the entire data ecosystem. Anomaly detection is based on your data and seasonality patterns. It uses automatic backfilling from historical data. Machine learning thresholds are trained for each data segment and not just metadata.
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