Data observability platform provider Bigeye introduced a new product this week, Metadata Metrics.
Bigeye says it provides instant data observability for an entire data warehouse allowing for fast detection of data quality issues.
Metadata is an essential part of data warehousing, as it is data that gives insight into the contents and processes of a data warehouse and is used for its management and maintenance. More specifically, Bigeye mentions its Metadata Metrics solution can give insights into operational attributes of tables, including time since the table was last refreshed, number of rows inserted per day, and number of queries run per day. Bigeye’s anomaly detection system, enabled with Metadata Metrics, allows for the detection of stale data, table updates that are too big or small, and changes in table utilization.
“Metadata Metrics scans 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 takes only minutes to set up, with zero manual configuration and almost no additional load to the warehouse,” the company stated in a press release.
Metadata is a rapidly growing element in data warehouse management that observability platforms aim to assist enterprises with taming. As business applications become larger and more complex, IT and data professionals can use insights from warehouse metadata in order to detect and amend problems within their applications. Bigeye claims to be the only platform capable of broadly monitoring across tables and deeply into the most critical datasets, reducing the number of expensive outages affecting these business-critical applications.
In a blog post discussing the new product, Bigeye CEO and co-founder Kyle Kirwin explains the company’s signature T-shaped Monitoring, or wide and deep monitoring, which he says is “a unique approach to data observability that tracks fundamentals across all your 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 you’re covered against even the unknown unknowns.” He says customers who enable Metadata Metrics can do a deep dive into a dataset with the product’s blend of suggested metrics for each table from a library of more than 70 pre-built data quality metrics. They can then go further by adding their own custom metrics with templates and virtual tables.
“We built Metadata Metrics so our customers can detect basic operational failures anywhere in their warehouses without lifting a finger,” said Kirwan. “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.”
Metadata Metrics is now available to all existing Bigeye customers. For more information on available pre-built metrics, read the technical documentation at this link.
Related Items:
Observability and AIOps Tools Rise with Big MELT Data
Bigeye Observes $45 Million in Funding
Bigeye Spawns Automated Data Quality Monitoring from Uber Roots
April 18, 2024
- SAS Viya Expands Generative AI Capabilities with New Data Maker and Industry-Specific Assistants
- Moveworks Partners with Microsoft to Deliver Secure, Scalable Generative AI Solutions to Customers
- Rockset Announces 2024 Index Conference, Industry Event for Engineers Building Search, Analytics, and AI Applications at Scale
- SAS Advances Industry Solutions with Packaged AI Models
- Altair Acquires Cambridge Semantics, Powering Next-Gen Enterprise Data Fabrics and GenAI
- SAS Adds to Its Trustworthy AI Offerings with Model Cards and AI Governance Services
- Fujitsu and Oracle Collaborate to Deliver Sovereign Cloud and AI Capabilities in Japan
- Kore.ai Introduces Experience Optimization Platform V11.0, Accelerating AI Deployment
- Volumez Expands Collaboration with AWS, Joins ISV Accelerate Program
- AI Squared Raises $13.8M to Accelerate Widespread AI Adoption Within Organizations
- Hazelcast Sets New Standards for AI Workloads with Platform 5.4 Enhancements
April 17, 2024
- Immuta Launches Domains Policy Enforcement Capability to Simplify Enterprise-wide Data Security and Governance
- ThoughtSpot Makes Embedding AI-Powered Analytics Easy and Ubiquitous for Everyone
- Cribl Ushers in a New Era of Data Storage Simplicity with Cribl Lake
- Neo4j Welcomes New GQL International Standard in Major Milestone for Database Industry
- General Assembly Report: Tech Firms Pay Top Dollar to Secure Competent AI Professionals
- Appen Named a Leader in Everest Group’s Data Annotation and Labeling Solutions for AI/ML PEAK Matrix Assessment 2024
- Loft Labs Raises $24M in Series A Funding to Enhance Multi-Cloud and AI Infrastructure Capabilities
- Hitachi Vantara Unveils Virtual Storage Platform One, Providing the Data Foundation for Unified Hybrid Cloud Storage
April 16, 2024
Most Read Features
Sorry. No data so far.
Most Read News In Brief
Sorry. No data so far.
Most Read This Just In
Sorry. No data so far.
Sponsored Partner Content
-
Get your Data AI Ready – Celebrate One Year of Deep Dish Data Virtual Series!
-
Supercharge Your Data Lake with Spark 3.3
-
Learn How to Build a Custom Chatbot Using a RAG Workflow in Minutes [Hands-on Demo]
-
Overcome ETL Bottlenecks with Metadata-driven Integration for the AI Era [Free Guide]
-
Gartner® Hype Cycle™ for Analytics and Business Intelligence 2023
-
The Art of Mastering Data Quality for AI and Analytics
Sponsored Whitepapers
Contributors
Featured Events
-
Call & Contact Center Expo
April 24 - April 25Las Vegas NV United States -
AI & Big Data Expo North America 2024
June 5 - June 6Santa Clara CA United States -
AI Hardware & Edge AI Summit 2024
September 10 - September 12San Jose CA United States -
CDAO Government 2024
September 18 - September 19Washington DC United States