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Anurag Singh is a technology leader with deep expertise in generative AI, machine learning, and large-scale analytics architecture. With over 15 years of experience, he specializes in building enterprise AI solutions, MLOps pipelines, and scalable data platforms. Anurag is a frequent speaker and writer on topics such as lakehouse architecture, vector search, and responsible AI deployment.

April 6, 2026

Best Data Governance Tools for Enterprises: 2026 Guide

For years, data governance was viewed as a background concern. Teams had bigger priorities to tackle and more pertinent problems to solve. Then AI agents came into the fold and started generating business decisions from inconsistent data, and suddenly, governance…

Best Agentic AI Tools for Enterprises

As AI agents move beyond the helpful copilot phase and into more powerful applications, enterprises are responding with global adoption. Agentic AI is everywhere, from analytics and finance to customer service and operations. It's changing how organizations go from asking…

March 30, 2026

Why AI Agent Governance is the Latest Priority for Enterprises

Over the past year alone, AI tools that once surfaced insights and handed them to a human for action have begun carrying out those actions themselves. Sixty-two percent of organizations are now experimenting with AI agents, according to McKinsey's latest…

February 1, 2022

A Business-Oriented Semantic Layer for Your Databricks Lakehouse

A semantic layer strategy lays the foundation for a scalable business intelligence and enterprise AI program and complements the power of modern cloud data platforms.  Key benefits include: Business metrics stay consistent across the organization.  Analysts can access a broader…

January 21, 2022

How A Semantic Layer simplifies Your Data Architecture

*This post was originally published by the author, Anurag Singh. You can view the original post here. Making data accessible to everyone within an organization is a challenge that most companies face. For example, data scientists generate forecasts and predictions…