X
Blog | Data Governance | Insights | Resources

Why are Data Catalog and Data Management Companies the New Acquisition Target? 

At the end of May, Salesforce announced that they were acquiring Informatica for about $8 billion. The acquisition demonstrated Salesforce’s intent to enhance its data capabilities and bolster its position in the hyper-evolving AI sector. By integrating Informatica’s offerings, Salesforce aims to provide the in-depth data understanding needed for autonomous AI agents.

On May 12th, ServiceNow acquired data.world. KM World reported “the deal is expected to enhance ServiceNow’s Workflow Data Fabric and AI Platform with stronger metadata management and governance layers—both increasingly critical for scaling AI use across enterprises.” In the spirit of full disclosure, data.world is one of our data catalog partners at Lovelytics and shares common customers with Lovelytics.

This recent surge in mergers and acquisitions within the data catalog and metadata management sector underscores a pivotal shift in the AI technology landscape. Clearly stated,  metadata is no longer a backend concern or a vehicle to enable data democratization for data consumers. It is now also viewed as the backbone enabler for AI success.

Metadata Management: The Unsung Hero of AI

It is my opinion that effective metadata management is a critical enabler for AI systems, providing the context, lineage, and governance necessary for accurate and ethical AI operations. Effective metadata management fosters data quality management capabilities and enhances model training, essential requirements for AI accuracy and reliability.

For years, organizations have struggled to find critical business value from their investments in metadata management capabilities. Extensive data catalog implementations that were a key technological component of robust metadata strategies were implemented to improve data searchability, enhance data quality, and ensure compliance with regulatory requirements. Now with the desire for organizations to rapidly innovate and integrate AI into their business practices, leaning into these metadata investments will hopefully drive the full potential of their AI initiatives.

Clearly, the metadata management market is becoming red hot and I have been receiving a number of inquiries from data leaders across our client base about how they now view the integration of data catalogs no longer as a tool to inform their data users about business definitions or schema characteristics, but instead as an enabler to drive lineage capabilities but to also drive evaluation of AI use cases. Effective AI use case evaluation is a key component in executing AI governance. Data availability, ethical, privacy, sensitivity and quality evaluations are critical to assessing AI use case viability and business value.

Conclusion: Metadata Management as the Foundation for AI Success

The latest mergers and acquisitions in the data catalog application space highlight the critical role of metadata management in achieving AI success. As organizations strive to harness the power of AI, investing in robust metadata management strategies will be essential to ensure data quality, compliance, and the effective operation of AI systems.

To gain a deeper understanding from the front lines of why data catalogs are critical for AI success, I reached out to Prukalpa Sankar, Co-founder of Atlan. 

“We’re thrilled to partner with Lovelytics, a firm that understands the critical role of context in today’s enterprise. In an AI-native world, data alone isn’t enough; you need a unified, intelligent platform for context and governance. That’s what Atlan’s metadata lakehouse delivers: it acts as the central control plane, unifying context from across the entire data + AI estate, including the Databricks Data Intelligence Platform. This allows enterprises to cross the AI Value Chasm – moving from AI experimentation to scaled AI in production.”

Ready to Unlock the Full Potential of AI with Metadata?

At Lovelytics, we help organizations turn metadata into a competitive advantage—enabling smarter AI, stronger governance, and better business outcomes. Visit our homepage to learn how we can help you future-proof your data strategy.

Author

Related Posts

Ago 04 2025

How Lovelytics and Databricks Partnered to Migrate and Automate Databricks’ Internal Reporting to AI/BI

Introduction: What is AI/BI and Why It’s a Game-Changer For years, BI tools have helped organizations analyze and visualize data, but the landscape has shifted....
Jul 31 2025

Announcing the Geospatial AI Accelerator, Our Latest Brickbuilder 

Built on Databricks to unlock AI-driven insights from geospatial data We’re excited to announce the launch of the Geospatial AI Accelerator by Lovelytics, our latest...
Jul 31 2025

Agentic AI: Building Secure, Ethical, and Governed AI Agents 

A practical guide for business and technology leaders Introduction: When AI Acts Autonomously, Can You Trust It? AI agents capable of independent decision-making...
Jul 23 2025

Why Data Literacy Is Critical to Enable a Data-Driven Culture

In the age of digital transformation, nearly every organization I have encountered in practice has expressed a desire to be “data-driven”. But there's a critical...
Jul 21 2025

Why Integrating Data Observability is No Longer Optional

In the modern data-driven enterprise, data is no longer just a byproduct of operations, it’s a key strategic asset.  Unfortunately, as data pipelines grow in...
Jul 01 2025

Agentic AI: The Future of Intelligent Business Automation

Artificial intelligence (AI) is no longer just a tool for augmenting human decision-making—it is rapidly evolving into an autonomous, self-learning force that is...
Jun 30 2025

Three Emerging GenAI Patterns Reshaping the Enterprise: Insights from DAIS 2025

The 2025 Databricks Data + AI Summit showcased the rapid evolution of Generative AI (GenAI) in the enterprise. One of the most anticipated moments was the chat between...
Jun 24 2025

The Invisible Handbrake: How Poor Governance and Misaligned Processes Undermine Business Enablement

The Business Enablement Mirage Organizations today are racing to enable their businesses through digital transformation, AI-powered insights, and connected workflows....
Jun 23 2025

From Productivity Paradox to GenAI Acceleration: Key Takeaways from DAIS 2025

Historical Perspective on Innovation: From Dynamos to AI Agents In the late 19th century, the promise of electrification captured the imagination of industrialists....
Jun 16 2025

Garbage in, SQL out

Introduction Enterprises are rapidly exploring how to integrate Generative AI (GenAI) into core operations, with large language models (LLMs) at the center of this...