Data Quality Monitoring with Bigeye: Practical Strategies for Reliable Analytics
Uitgelicht
|
33,99 |
Naar shop
|
|
36,73 |
Naar shop
|
|
36,73 |
Naar shop
|
Beschrijving
Bol
**Data Quality Monitoring with Bigeye: Practical Strategies for Reliable Analytics** is a practical guide for engineers, data leaders, and analytics teams who want to build trust in their data and reduce the operational cost of bad data. It explains the core dimensions of data quality-such as accuracy, completeness, timeliness, and consistency-while showing how modern observability goes beyond traditional profiling to provide continuous, automated monitoring across complex data systems. The book also examines the business impact of poor data quality, from flawed decisions to compliance risk, and makes the case for a proactive, scalable approach to protecting analytics reliability. Readers will learn how to design and deploy effective monitoring with Bigeye across cloud, on-premises, and hybrid environments. The book covers architecture and integration patterns, practical monitor design using statistical methods and anomaly detection, and strategies for tuning alerts, reducing noise, and managing incidents efficiently. It also explores how to connect Bigeye with orchestration platforms, warehouses, BI tools, and governance systems to create a unified workflow that turns data quality from a reactive burden into an automated, measurable practice. Beyond implementation, the book addresses essential enterprise concerns such as security, privacy, and compliance, including guidance for handling sensitive data and aligning with standards like SOC 2 and GDPR. Real-world examples demonstrate how organizations can support cross-team collaboration, scale monitoring across domains, and prove ROI through improved trust and faster resolution times. Looking ahead, the book also highlights emerging approaches such as AI-assisted monitoring and self-healing data pipelines, helping readers build a more resilient and future-ready analytics foundation.
**Data Quality Monitoring with Bigeye: Practical Strategies for Reliable Analytics** is a practical guide for engineers, data leaders, and analytics teams who want to build trust in their data and reduce the operational cost of bad data. It explains the core dimensions of data quality-such as accuracy, completeness, timeliness, and consistency-while showing how modern observability goes beyond traditional profiling to provide continuous, automated monitoring across complex data systems. The book also examines the business impact of poor data quality, from flawed decisions to compliance risk, and makes the case for a proactive, scalable approach to protecting analytics reliability. Readers will learn how to design and deploy effective monitoring with Bigeye across cloud, on-premises, and hybrid environments. The book covers architecture and integration patterns, practical monitor design using statistical methods and anomaly detection, and strategies for tuning alerts, reducing noise, and managing incidents efficiently. It also explores how to connect Bigeye with orchestration platforms, warehouses, BI tools, and governance systems to create a unified workflow that turns data quality from a reactive burden into an automated, measurable practice. Beyond implementation, the book addresses essential enterprise concerns such as security, privacy, and compliance, including guidance for handling sensitive data and aligning with standards like SOC 2 and GDPR. Real-world examples demonstrate how organizations can support cross-team collaboration, scale monitoring across domains, and prove ROI through improved trust and faster resolution times. Looking ahead, the book also highlights emerging approaches such as AI-assisted monitoring and self-healing data pipelines, helping readers build a more resilient and future-ready analytics foundation.
AmazonPagina's: 240, Paperback, Independently published
Prijshistorie
* Prijshistorie bevat geen data van Amazon, Amazon Marketplace.
Prijzen voor het laatst bijgewerkt op: