Key insights
Your success with AI depends on the strength of your data infrastructure. If your organization doesn’t have a solid foundation for managing, accessing, and using data, AI initiatives are unlikely to deliver the results you expect.
You may have already felt the pain of launching AI without the right data groundwork. Common roadblocks include fragmented data across silos, governance challenges, rising costs, and performance issues that slow down progress.
Scalable, secure, and unified data infrastructure can help overcome these hurdles and unlock AI’s full potential. Prioritizing this foundation sets you up for long-term success and smoother AI adoption.
You’re ready to harness the power of artificial intelligence (AI) — to automate, gain deeper insights, and make smarter decisions. But if your data infrastructure isn’t ready, AI may fall short of your expectations.
Without a robust foundation for managing, accessing, and using data, AI initiatives stall or underperform. Explore why data infrastructure is critical for AI implementation, and how tools like Microsoft Fabric and the Purview Hub are designed to help you build a data foundation — so your AI investments can truly pay off.
The role of data in artificial intelligence (AI)
Data serves as the lifeblood of artificial intelligence (AI) algorithms — particularly machine learning models — which depend on data for training, validation, and real-time decision-making. A well-structured data infrastructure provides accessible, high-quality, and comprehensive data. Without good data, AI initiatives may yield inaccurate results or fail altogether.
In addition, well-defined knowledge bases are crucial across AI applications. Agentic AI relies on the knowledge your organization provides.
Challenges without a solid data infrastructure
Organizations implementing any type of AI without first establishing a data foundation often encounter several obstacles, including data silos, governance issues, high costs and complexity, and performance bottlenecks. Disparate systems and platforms can lead to isolated data stores, limiting AI’s ability to analyze the full dataset. Without a unified approach to managing data, inconsistencies and compliance risks may emerge.
Data infrastructure as the foundation for artificial intelligence
To address these challenges, build a scalable, secure, and unified data infrastructure. Bridging data from operational and analytical systems lets AI draw insights from a comprehensive dataset.
For example, Microsoft Fabric integrates operational databases like SQL Server with analytical workloads, simplifying data workflows. Platforms like Fabric’s OneLake provide a unified data lake for an entire organization, breaking down silos and providing seamless access to all data sources.
OneLake supports open data formats, allowing integration with cloud platforms such as AWS, Google Cloud, and on-premises systems. AI requires the ability to scale storage and compute resources as data volumes grow. Microsoft Fabric addresses this by consolidating resources into a unified pool, providing efficient resource allocation.
Microsoft Fabric: Key features of data infrastructure
Microsoft Fabric exemplifies how a unified data platform can prepare your organization for AI implementation.
Key features include:
Unified data estate
Microsoft Fabric integrates data from multiple environments, offering a single pane of glass for managing analytical and operational data. This integration eliminates the need for custom connectors or multiple tools.
Integration with AI tools
Microsoft Fabric incorporates Azure Machine Learning features, enabling your organization to build, train, and deploy AI models without transferring data between platforms.
Unified data governance
With a centralized data governance framework, organizations can provide data consistency, quality, and compliance across the entire data lifecycle. This is critical for building reliable AI models and maintaining trust in AI-driven insights.
Microsoft Purview Hub is a centralized place in Microsoft Fabric that helps administrators manage and govern their organization’s Fabric data estate. It provides insights into sensitive data, item endorsement, and domains. Purview Hub serves as a gateway to more advanced capabilities in the Microsoft Purview portal such as data catalog, information protection, data loss prevention, and audit.
Security and compliance
The platform offers robust security features, including data encryption, access controls, and compliance with industry standards and regulations (such as GDPR and HIPAA). This helps protect sensitive data and increases trust in the integrity of AI solutions.
Scalability and performance
Microsoft Fabric is designed to handle large volumes of data with high performance and scalability. This is essential for training complex AI models requiring significant computational power and large datasets.
Data collaboration and democratization
Microsoft Fabric facilitates collaboration across different teams by providing tools for data sharing, versioning, and collaborative analytics. This empowers more users within your organization to work with data and contribute to AI projects.
Real-time intelligence
Microsoft Fabric supports real-time data ingestion and processing so you can leverage up-to-date data for AI applications. This is particularly important for use cases requiring immediate insights and actions.
Key benefits of a unified data infrastructure
Accessible data
Unified platforms allow your organization to access data regardless of its source. For example, Microsoft Fabric’s OneLake shortcuts enable organizations to work with external data without creating redundant copies.
Reduced latency
Efficient data pipelines reduce latency, allowing AI models to process and analyze data faster. This is particularly important for real-time AI applications, such as fraud detection or dynamic pricing.
Cost savings
Consolidating data management into a single platform eliminates the need for multiple vendors and tools, providing significant cost savings.
Enhanced collaboration
A single platform fosters collaboration across teams by providing a shared environment for data access, analysis, and modeling, accelerating innovation and speed of delivery.
With a regulated hub, you can centralize and organize all your business data, creating a foundation for innovative analytics.
Easier regulation compliance
A unified infrastructure simplifies implementing security policies and compliance with regulations like GDPR or HIPAA. Fabric, for instance, enforces consistent governance policies across its data estate.
Learn how you can save on data preparation time through unified workflows and Copilot automation. Watch our webinar on Microsoft Fabric to discover how.
Building a data infrastructure for AI
Organizations looking to build or enhance their data infrastructure should consider the following steps:
- Assess current capabilities — Conduct a thorough evaluation of existing data systems, identifying gaps in accessibility, integration, and scalability.
- Adopt a unified platform — Select a tool offering comprehensive features for data integration, management, and AI enablement.
- Focus on data governance — Implement robust governance frameworks to improve data quality, security, and compliance.
- Enable scalability — Verify the chosen platform can accommodate growing data volumes and support future AI initiatives.
- Invest in training and skills — Equip teams with the skills and knowledge needed to leverage the data infrastructure effectively.
Strong data is a strategic advantage
Building a robust data infrastructure is not just a technical necessity — it’s a strategic imperative. Organizations prioritizing data infrastructure gain a competitive edge by enabling faster innovation, better customer experiences, and more informed decision-making.
Contact us
Get your data in shape to unlock AI’s full potential. Complete the form below to connect with CLA.



