Product
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August 27, 2024

Announcing Bigeye Scorecards

Scorecards offer a high-level overview of your data’s health by data quality category, with the added benefit of historical data.

Adrianna Vidal

Elevate Your Enterprise’s Data Health Monitoring with Bigeye Scorecard

At Bigeye, we understand the challenges enterprises face in maintaining and reporting on data quality across vast, complex data ecosystems. That’s why we’re excited to introduce Scorecards, a powerful new feature designed to address the specific challenges our enterprise customers struggle with the most, providing a streamlined, efficient way to monitor and report on data health.

The Problem: Navigating Data Complexity in Enterprises

Enterprises deal with immense volumes of data, often spread across numerous databases, schemas, and tables. In addition to this, all of these objects are owned by individual teams with their own practices. Monitoring and understanding the health of this data can be overwhelming, especially when relying on traditional methods that require sifting through thousands of individual metrics and data quality checks.

Key challenges often include:

  • Fragmented Data Views: Traditional dashboards often provide granular details but lack a summarized, comprehensive view, making it difficult to understand overall data health.
  • Lack of Historical Context: Without historical data, it’s challenging to identify trends and recurring issues, hindering proactive data management.
  • Inefficient Reporting: Building custom reports to present data health to upper management is time-consuming and resource-intensive.

The Solution: Bigeye Scorecards

What Are Scorecards?

Scorecards offer a high-level overview of your data’s health by data quality category, with the added benefit of historical data. This enables enterprises to:

  • Aggregate Reporting: View data health at various levels—database, schema, table, and column—without the need to navigate through individual data quality rules and reports.
  • Perform Historical Analysis: Access historical data to track trends and identify recurring issues, allowing for proactive management.
  • Unified Measurement Across the Data Pipeline: Ensure everyone, from data engineers to business analysts, sees the same data quality measures, ensuring consistency throughout the entire data lifecycle.

How Scorecards Benefit Enterprises

Scorecards transform data health monitoring for enterprises in several key ways:

1. Simplified Data Health Monitoring

Scorecards aggregate individual data quality measures into a summarized view, making it easier to understand the overall health of your data. This high-level perspective is crucial for managers and executives who need to make informed decisions quickly.

2. Enhanced Reporting Efficiency

With Scorecards, enterprises can eliminate the need for custom-built reporting solutions. This feature provides self-serve access to comprehensive data health summaries, saving valuable time and resources. For example, a VP can quickly generate a data health summary for executive meetings without having to wait on numbers from their data team.

3. Proactive Data Management

The inclusion of historical data allows enterprises to identify trends and recurring issues, enabling more proactive management of data health. This historical perspective is something that other existing solutions lack.

4. Enterprise-Focused Design

Scorecards were built based entirely on customer feedback and the specific needs of large organizations, ensuring it meets the requirements of enterprise data management.

Get Started with Scorecards Today

We invite you to experience the transformative power of Scorecards. Join our upcoming webinar to see Scorecards in action and learn how they can elevate your data health monitoring to new heights. Or, request a demo here

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Resource
Monthly cost ($)
Number of resources
Time (months)
Total cost ($)
Software/Data engineer
$15,000
3
12
$540,000
Data analyst
$12,000
2
6
$144,000
Business analyst
$10,000
1
3
$30,000
Data/product manager
$20,000
2
6
$240,000
Total cost
$954,000
Role
Goals
Common needs
Data engineers
Overall data flow. Data is fresh and operating at full volume. Jobs are always running, so data outages don't impact downstream systems.
Freshness + volume
Monitoring
Schema change detection
Lineage monitoring
Data scientists
Specific datasets in great detail. Looking for outliers, duplication, and other—sometimes subtle—issues that could affect their analysis or machine learning models.
Freshness monitoringCompleteness monitoringDuplicate detectionOutlier detectionDistribution shift detectionDimensional slicing and dicing
Analytics engineers
Rapidly testing the changes they’re making within the data model. Move fast and not break things—without spending hours writing tons of pipeline tests.
Lineage monitoringETL blue/green testing
Business intelligence analysts
The business impact of data. Understand where they should spend their time digging in, and when they have a red herring caused by a data pipeline problem.
Integration with analytics toolsAnomaly detectionCustom business metricsDimensional slicing and dicing
Other stakeholders
Data reliability. Customers and stakeholders don’t want data issues to bog them down, delay deadlines, or provide inaccurate information.
Integration with analytics toolsReporting and insights

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