Best Data Quality Software for Okta

Find and compare the best Data Quality software for Okta in 2026

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

  • 1
    DataHub Reviews
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    Organizations face significant financial losses due to data quality challenges, leading to poor decision-making, unsuccessful initiatives, and eroded customer trust. Instead of relying on conventional reactive methods, DataHub offers a proactive approach to data quality management within your data ecosystem, enabling the identification of potential issues before they affect downstream users. You can set quality assertions on your datasets, such as completeness assessments, freshness service level agreements (SLAs), schema checks, and statistical anomaly identification, receiving immediate notifications when any discrepancies arise. Monitor quality metrics over time to detect trends in degradation and uncover root causes through comprehensive lineage tracking. DataHub presents quality indicators at the point of data discovery, ensuring users are fully informed about the datasets before they make any commitments. Additionally, it facilitates collaboration on data quality challenges with built-in incident management and ownership assignment features.
  • 2
    Satori Reviews
    Satori is a Data Security Platform (DSP) that enables self-service data and analytics for data-driven companies. With Satori, users have a personal data portal where they can see all available datasets and gain immediate access to them. That means your data consumers get data access in seconds instead of weeks. Satori’s DSP dynamically applies the appropriate security and access policies, reducing manual data engineering work. Satori’s DSP manages access, permissions, security, and compliance policies - all from a single console. Satori continuously classifies sensitive data in all your data stores (databases, data lakes, and data warehouses), and dynamically tracks data usage while applying relevant security policies. Satori enables your data use to scale across the company while meeting all data security and compliance requirements.
  • 3
    Revefi Data Operations Cloud Reviews
    Experience a seamless zero-touch copilot designed to enhance data quality, spending efficiency, performance metrics, and overall usage. Your data team will be promptly informed about any analytics failures or operational bottlenecks, ensuring no critical issues go unnoticed. We swiftly identify anomalies and notify you instantly, allowing you to maintain high data quality and prevent downtime. As performance metrics shift negatively, you will receive immediate alerts, enabling proactive measures. Our solution bridges the gap between data utilization and resource distribution, helping you to minimize costs and allocate resources effectively. We provide a detailed breakdown of your spending across various dimensions such as warehouse, user, and query, ensuring transparency and control. If spending patterns begin to deviate unfavorably, you'll be notified right away. Gain valuable insights into underutilized data and its implications for your business's value. Revel in the benefits of Revefi, which vigilantly monitors for waste and highlights opportunities to optimize usage against resources. With automated monitoring integrated into your data warehouse, manual data checks become a thing of the past. This allows you to identify root causes and resolve issues within minutes, preventing any adverse effects on your downstream users, thus enhancing overall operational efficiency. In this way, you can maintain a competitive edge by ensuring that your data-driven decisions are based on accurate and timely information.
  • 4
    Collate Reviews
    Collate is a metadata platform powered by AI that equips data teams with automated tools for discovery, observability, quality, and governance, utilizing agent-based workflows for efficiency. It is constructed on the foundation of OpenMetadata and features a cohesive metadata graph, providing over 90 seamless connectors for gathering metadata from various sources like databases, data warehouses, BI tools, and data pipelines. This platform not only offers detailed column-level lineage and data profiling but also implements no-code quality tests to ensure data integrity. The AI agents play a crucial role in streamlining processes such as data discovery, permission-sensitive querying, alert notifications, and incident management workflows on a large scale. Furthermore, the platform includes real-time dashboards, interactive analyses, and a shared business glossary that cater to both technical and non-technical users, facilitating the management of high-quality data assets. Additionally, its continuous monitoring and governance automation help uphold compliance with regulations such as GDPR and CCPA, which significantly minimizes the time taken to resolve data-related issues and reduces the overall cost of ownership. This comprehensive approach to data management not only enhances operational efficiency but also fosters a culture of data stewardship across the organization.
  • 5
    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.
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