Bigeye 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 capable of broadly monitoring across tables and deeply into the most critical datasets, reducing the number of expensive outages affecting business-critical applications.
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:
- Time since the table was last refreshed
- Number of rows inserted per day
- 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.
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:
- Enable Metadata Metrics to track the basics across all data in the warehouse instantly.
- 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.
- 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.
The Latest
New research from ServiceNow and ThoughtLab reveals that less than 30% of banks feel their transformation efforts are meeting evolving customer digital needs. Additionally, 52% say they must revamp their strategy to counter competition from outside the sector. Adapting to these challenges isn't just about staying competitive — it's about staying in business ...
Leaders in the financial services sector are bullish on AI, with 95% of business and IT decision makers saying that AI is a top C-Suite priority, and 96% of respondents believing it provides their business a competitive advantage, according to Riverbed's Global AI and Digital Experience Survey ...
SLOs have long been a staple for DevOps teams to monitor the health of their applications and infrastructure ... Now, as digital trends have shifted, more and more teams are looking to adapt this model for the mobile environment. This, however, is not without its challenges ...
Modernizing IT infrastructure has become essential for organizations striving to remain competitive. This modernization extends beyond merely upgrading hardware or software; it involves strategically leveraging new technologies like AI and cloud computing to enhance operational efficiency, increase data accessibility, and improve the end-user experience ...
AI sure grew fast in popularity, but are AI apps any good? ... If companies are going to keep integrating AI applications into their tech stack at the rate they are, then they need to be aware of AI's limitations. More importantly, they need to evolve their testing regiment ...
If you were lucky, you found out about the massive CrowdStrike/Microsoft outage last July by reading about it over coffee. Those less fortunate were awoken hours earlier by frantic calls from work ... Whether you were directly affected or not, there's an important lesson: all organizations should be conducting in-depth reviews of testing and change management ...
In MEAN TIME TO INSIGHT Episode 11, Shamus McGillicuddy, VP of Research, Network Infrastructure and Operations, at EMA discusses Secure Access Service Edge (SASE) ...
On average, only 48% of digital initiatives enterprise-wide meet or exceed their business outcome targets according to Gartner's annual global survey of CIOs and technology executives ...
Artificial intelligence (AI) is rapidly reshaping industries around the world. From optimizing business processes to unlocking new levels of innovation, AI is a critical driver of success for modern enterprises. As a result, business leaders — from DevOps engineers to CTOs — are under pressure to incorporate AI into their workflows to stay competitive. But the question isn't whether AI should be adopted — it's how ...
The mobile app industry continues to grow in size, complexity, and competition. Also not slowing down? Consumer expectations are rising exponentially along with the use of mobile apps. To meet these expectations, mobile teams need to take a comprehensive, holistic approach to their app experience ...