Best Data Observability Tools for Metabase

Find and compare the best Data Observability tools for Metabase in 2026

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

  • 1
    DataHub Reviews
    See Tool
    Learn More
    In the realm of contemporary data platforms, the ability to see and understand your data is crucial—it's what separates proactive management from reactive crisis handling. DataHub offers an all-encompassing data observability solution that empowers teams to identify, analyze, and rectify data-related challenges before they disrupt business operations. With features that allow you to oversee data freshness, volume, schema alterations, and quality metrics throughout your entire data landscape, DataHub employs smart anomaly detection to recognize typical patterns and notify you of any irregularities. When problems do surface, the lineage graph in DataHub serves as a powerful debugging resource, allowing you to trace issues from their symptoms back to their origin within intricate multi-hop data pipelines. Gain immediate insight into the impact of an upstream failure: which dashboards, reports, and machine learning models are affected? Seamlessly integrate with incident management processes to assign issues to the appropriate stakeholders and monitor the progress of their resolution.
  • 2
    Metaplane Reviews

    Metaplane

    Metaplane

    $825 per month
    In 30 minutes, you can monitor your entire warehouse. Automated warehouse-to-BI lineage can identify downstream impacts. Trust can be lost in seconds and regained in months. With modern data-era observability, you can have peace of mind. It can be difficult to get the coverage you need with code-based tests. They take hours to create and maintain. Metaplane allows you to add hundreds of tests in minutes. Foundational tests (e.g. We support foundational tests (e.g. row counts, freshness and schema drift), more complicated tests (distribution shifts, nullness shiftings, enum modifications), custom SQL, as well as everything in between. Manual thresholds can take a while to set and quickly become outdated as your data changes. Our anomaly detection algorithms use historical metadata to detect outliers. To minimize alert fatigue, monitor what is important, while also taking into account seasonality, trends and feedback from your team. You can also override manual thresholds.
  • Previous
  • You're on page 1
  • Next
MongoDB Logo MongoDB