The Pantomath Blog

Featured

Learn more
May 9, 2024
The 5 Pillars of Data Observability

Take a deep dive into the The 5 Pillars of Data Observability, and End-to-end data observability.

Learn more
May 29, 2024
Overcoming Data Lineage Challenges with True End-to-End Data Observability

Learn about the data lineage challenges and how data pipeline traceability can provide a complete understanding of the data's journey to improve quality and reliability.

Learn more
May 13, 2025
SLA Accuracy in ServiceNow: Are You Tracking the Signal or the Noise?

Here’s the uncomfortable truth: the way most organizations manage data incidents in ServiceNow is broken. Pantomath's Somesh Saxena gives his thoughts.

Recent

Learn more
January 8, 2025
Data in Motion Series, Part 1: What is Data in Motion?

Traditional platforms treat data as a static resource which no longer works for today's data demands. Learn more about the importance of monitoring BOTH data at rest and data in motion.

Learn more
November 4, 2024
Why Data Observability is Essential for Generative AI (GenAI)

Discover the real-world benefits and how companies can optimize GenAI applications by implementing robust data observability practices.

Learn more
October 10, 2024
Why Most Data Observability Platforms Fall Short

In boardrooms across the globe, executives are grappling with a painful truth: the data tools they've invested in aren't delivering on their promises. Learn why in this blog.

Learn more
September 18, 2024
The 5 Most Common Data Management Pitfalls

There are five common mistakes that teams often make on their journey toward data observability. Learn how to avoid them!

Learn more
August 7, 2024
10 Essential Metrics for Effective Data Observability

You can’t simply implement data observability and then hope for the best. Learn about the top 10 essential metrics to make your business thrive.

Learn more
July 26, 2024
The Evolution of Data Quality: Why Data Observability is Key

Data quality has a long history, dating back at least to mainframes in the 1960s. Learn about the path Data Quality has taken, and where it's headed.

Automated data operations across your data stack

Request a Demo