Gartner Identifies Top Trends in Data and Analytics for 2025

Gartner, Inc. identified the top data and analytics (D&A) trends for 2025 that are driving the emergence of a wide range of challenges.

Dubai, United Arab Emirates, March 6, 2025 — Gartner, Inc. identified the top data and analytics (D&A) trends for 2025 that are driving the emergence of a wide range of challenges, including organizational and human issues.

“D&A is going from the domain of the few, to ubiquity,” said Gareth Herschel, VP Analyst at Gartner. “At the same time D&A leaders are under pressure not to do more with less, but to do a lot more with a lot more, and that can be even more challenging because the stakes are being raised. There are certain trends that will help D&A leaders meet the pressures, expectations and demands they are facing.”

The top D&A trends that leaders must navigate and incorporate into their D&A strategy include:

Highly Consumable Data Products

To capitalize on highly consumable data products, D&A leaders should focus on business-critical use cases, correlating and scaling products to alleviate data delivery challenges. Prioritizing the delivery of reusable and composable minimum viable data products is essential, allowing teams to enhance them over time. D&A leaders must also come to a consensus on key performance indicators between producing and consuming teams, which is vital for measuring data product success.

Metadata Management Solutions

Effective metadata management begins with technical metadata, and then expanding to include business metadata for enhanced context. By incorporating various metadata types, organizations can enable data catalogs, data lineage, and AI-driven use cases. Selecting tools that facilitate automated discovery and analysis of metadata is imperative.

Multimodal Data Fabric

Building a robust metadata management practice involves capturing and analyzing metadata across the entire data pipeline. Insights and automations from the data fabric support orchestration demands, improve operational excellence through DataOps, and enable data products.

Synthetic Data

Identifying areas where data is missing, incomplete, or costly to obtain is crucial for advancing AI initiatives. Synthetic data, either as variations of original data or replacements for sensitive data, ensures data privacy while facilitating AI development.

Agentic Analytics

Automating closed-loop business outcomes with AI agents for data analysis is transformative. Piloting use cases that connect insights to natural language interfaces and evaluating vendor roadmaps for digital workplace application integration are recommended. Establishing governance minimizes errors and hallucinations, while assessing data readiness through AI-ready data principles is essential.

AI Agents

AI agents are valuable for ad hoc, flexible, or complex adaptive automation needs. Beyond relying solely on large language models (LLMs), other analytics and AI forms are necessary. D&A leaders should enable AI agents to access and share data across applications seamlessly.

Small Language Models

Consideration of small language models over large language models is advised for more accurate, contextually appropriate AI outputs within specific domains. Providing data for retrieval of augmented generation or fine-tuning custom domain models is recommended, especially for on-premises use to handle sensitive data and reduce compute resources and costs.

Composite AI

Leveraging multiple AI techniques enhances AI’s impact and reliability. D&A teams should diversify beyond GenAI or LLMs, incorporating data science, machine learning, knowledge graphs, and optimization for comprehensive AI solutions.

Decision Intelligence Platforms

Transitioning from a data-driven to a decision-centric vision is crucial. Prioritizing urgent business decisions for modeling, aligning decision intelligence (DI) practices, and evaluating DI platforms are recommended steps. Rediscovering data science techniques and addressing ethics, legal, and compliance aspects of decision automation are essential for success.

Data & analytics leaders can learn more about how to evaluate their own effectiveness using the Gartner CDAO Effectiveness Diagnostic, an exclusive tool that allows CDAOs to understand their effectiveness as leaders and discover their strengths and areas for improvement.

About Gartner for Data & Analytics Leaders

Gartner for Data & Analytics Leaders provides actionable, objective insight to CDAOs and data & analytics leaders to help them accelerate their D&A strategy and operating model to increase business value. Additional information is available at https://www.gartner.com/en/data-analytics.

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About Gartner

Gartner, Inc. (NYSE: IT) delivers actionable, objective insight to executives and their teams. Our expert guidance and tools enable faster, smarter decisions and stronger performance on an organization’s mission-critical priorities. To learn more, visit gartner.com.


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