-

Bigeye Introduces Metadata Metrics—Instant Data Observability for the Entire Data Warehouse

Data teams no longer need to choose between wide or deep coverage

SAN FRANCISCO--(BUSINESS WIRE)--Bigeye, the creators of the leading data observability platform, today announced the release of Metadata Metrics which provides instant coverage for the entire data warehouse from the moment customers connect.

Among data observability solutions, Bigeye is the only platform capable of broadly monitoring across tables and deeply into the most critical datasets, reducing the number of expensive outages affecting business-critical applications.

Instant data observability

Metadata Metrics scan existing query logs to automatically track key operational metrics, including the time since tables were last loaded, the number of rows inserted, and the number of read queries run on every dataset. Metadata Metrics take only minutes to set up, with zero manual configuration and almost no additional load to the warehouse.

Metadata Metrics provide customers with immediate insights into key operational attributes of every table including:

  1. Time since the table was last refreshed
  2. Number of rows inserted per day
  3. Number of queries run per day

With Metadata Metrics enabled, data teams will be the first to know about stale data, table updates that are too big or too small, or changes in table utilization, thanks to Bigeye’s best-in-class anomaly detection system.

T-Shaped Monitoring—wide and deep

Bigeye is the creator of T-shaped Monitoring, a unique approach to data observability that tracks fundamentals across all data while applying deeper monitoring on the most critical datasets, such as those used for financial planning, machine learning models, and executive-level dashboards. This approach ensures Bigeye customers are covered against the greatest number of “unknown unknown” data outages.

“We built Metadata Metrics so our customers can detect basic operational failures anywhere in their warehouses without lifting a finger,” said Kyle Kirwan, Bigeye CEO and co-founder. “Bigeye could already do deeper monitoring for our customers’ most critical tables better than any other platform. Now, we can also go really wide and monitor the basics on thousands of tables for them, instantly.”

Here’s how it works:

  1. Enable Metadata Metrics to track the basics across all data in the warehouse instantly.
  2. Go deep on each business-critical dataset using a blend of metrics that Bigeye suggests for each table from its library of 70+ pre-built data quality metrics.
  3. Take it even further by adding custom metrics with Templates and Virtual Tables to ensure custom business logic is monitored for defects.

T-Shaped Monitoring gives data teams peace of mind with monitoring across the entire warehouse, 24/7. With Metadata Metrics, it’s even faster to set up and deploy broad coverage without the configuration hassle. As a result, Bigeye customers can detect both simple problems, such as stale data and even the most subtle errors in any critical dataset.

Metadata Metrics is available to all Bigeye customers starting today.

About Bigeye

Bigeye is the data observability platform that brings data engineers, analysts, scientists, and stakeholders together to build trust in data. Companies like Instacart, Zoom, and Udacity use Bigeye to automate monitoring and anomaly detection and create SLAs to ensure data quality and reliable data pipelines. With complete API access, a user-friendly interface, and automated yet flexible customization, data teams can monitor quality, proactively detect and resolve issues, and ensure that every user can rely on the data. www.bigeye.com

Contacts

Alison Murdock
Bigeye
alison@trustedcmo.com
415.254.5497

Bigeye


Release Versions

Contacts

Alison Murdock
Bigeye
alison@trustedcmo.com
415.254.5497

More News From Bigeye

Bigeye Announces the Lineup for the Data Reliability Engineering Conference on May 25th and 26th

SAN FRANCISCO--(BUSINESS WIRE)--Bigeye, the creators of the leading data observability platform, today announced the full schedule for the Data Reliability Engineering Conference 2022 (DRE-Con), taking place on May 25th and 26th. The event will be held virtually and is free to attend. Data Reliability Engineering (DRE) is an emerging practice for keeping data fresh, high quality, and reliable while reducing the error-prone and repetitive tasks that often bog down data engineering teams. DRE-Con...

Bigeye Launches Dashboard and Issues to Create a Complete Data Quality Workflow

SAN FRANCISCO--(BUSINESS WIRE)--Bigeye, the creators of the leading data observability platform, today announced the release of Dashboard and Issues — a pair of integrated features that create a complete data quality workflow from a holistic understanding of the state of data quality to a smarter way to resolve issues. Bigeye enables data teams to detect and proactively resolve data quality and pipeline issues before the business is affected. The latest release puts even more tools into the han...

Bigeye Releases Deltas to Automatically Compare and Validate Datasets in Seconds

SAN FRANCISCO--(BUSINESS WIRE)--Bigeye, the creator of the leading data observability platform, today announced the release of Deltas, an industry-first solution that automatically compares and validates multiple versions of any dataset in seconds. Whether replicating data into a data warehouse, migrating from one cloud to another, or getting ready to promote data from staging to production, Deltas provides greater reliability in a fraction of the time. When moving data, all sorts of issues can...
Back to Newsroom