Data & AI

23rd Feb 2021

Why Data Fabric is the key to next-gen Data Management?

Share:

Why Data Fabric is the key to next-gen Data Management?

We live in an era when the speed of business and innovation is unprecedented. Innovation, however, cannot be realized without a solid data management strategy.

Data is a platform through which businesses gain a competitive advantage and succeed and thrive, but to meet customer and business needs, it is imperative that data is delivered quickly (in near-real-time). With the prevalence of Internet of Things (IoT), smartphones and cloud, the volume of data is incredibly high and continues to rise; types and sources of data are aplenty too, making data management more challenging than ever.

Companies today have their data in multiple on-premise sites and public/private clouds as they move into a hybrid environment. Data is structured and unstructured and is held in different formats (relational databases, SaaS applications, file systems, data lakes, data stores, to name a few). Further, myriad technologies—changed data capture (CDC), real-time streaming, batch ETL or ELT processing, to name a few—are required to process the data. With more than 70 percent of companies leveraging data integration tools, they find it challenging to quickly ingest, integrate, analyze, and share the data.

As a consequence, data professionals, an IDC study finds, spend 75% of the time on tasks other than data analysis, hampering companies from gaining maximum value from their data in timely fashion.

What is the Solution?

Data fabric is one way for organizations to manage the collection, integration, governance and sharing of data.

A common question is: What is a data fabric?

It is a distributed data management platform with the main objective of combining data access, storage, preparation, security, and analytics tools in a compliant way to ensure data management tasks are easier and efficient. The data fabric stack includes the data collection and storage layer, data services layer, transformation layer and analytics layer.

Following are some of the key benefits of data fabric:

  • Provides greater scalability to adapt to rising data volumes, data sources, et cetera
  • Offers built-in data quality, data governance and data preparation capabilities
  • Offers data ingestion and data integration
  • Supports Big Data use cases
  • Enables data sharing with internal and external stakeholders through API support

It used to be that organizations wanted all their data in a single data warehouse, but data has become increasingly distributed. Data fabric is purposely created to address the siloed data, enabling easy access and integration of data.

The Capabilities of a Data Fabric Solution

It is essential that a data fabric has the following attributes for enterprises to gain the maximum value from their data.

Full visibility: Companies must be able to measure the responsiveness of data, data availability, data reliability and the risks associated with it in a unified workspace

Data semantics: Data fabric should enable consumers of data to define business value and identify the single source of truth irrespective of structure, deployment platform and database technology for consistent analytics experience

Zero data movement: Intelligent data virtualization provides a logical data layer for representation of data from multiple, varied sources without the need to copy or transfer data

Platform and application-agnostic: Data fabric must be able to quickly integrate with a data platform or business intelligence (BI)/machine learning application as per the choice of data consumers and managers alike

Data engineering: Data fabric should be able to identify scenarios and have the speed of thought to anticipate and adapt to a data consumer’s needs, while reducing the complexities associated with data management

Data Fabric – the key to next-gen Data Management

Data fabrics have emerged as the need of the hour as the support for operational data management and integration becomes complex for databases.

In fact, data fabric is the layer which supports key business applications, particularly those running artificial intelligence (AI) and machine learning (ML) workloads. It means, for organizations that aim to reap the benefits of implementing AI, leveraging a data fabric will help accelerate the ability to adopt AI products.

Is Your Application Secure? We’re here to help. Talk to our experts Now

Read More

Digital transformation leads the strategic agenda for most companies and IT leaders. Data is a critical part of a successful digital transformation journey as it helps create new business propositions, enable new customer touchpoints, optimize operates and more. Data fabric is the enabler for organizations to achieve these with its advanced data integration and analytical capabilities, and by providing connectors for hybrid systems.

As organizations aim to stay updated on emerging technologies and trends to gain a competitive edge, the demand for data fabric will only get stronger.

Author

Suhith Kumar

Suhith Kumar is a digital marketer working with Indium Software. Suhith writes and is an active participant in conversations on technology. When he’s not writing, he’s exploring the latest developments in the tech world.

Share:

Latest Blogs

Manual Testing in the AI Era: From Test Execution to Quality Strategy 

Quality Engineering

3rd Apr 2026

Manual Testing in the AI Era: From Test Execution to Quality Strategy 

Read More
Tool Invocation Reliability Across GPT-5.2 and Claude Agent Systems

Intelligent Automation

23rd Mar 2026

Tool Invocation Reliability Across GPT-5.2 and Claude Agent Systems

Read More
4 Coordination Overheads in Multi-agent Workflows at Enterprise Scale

Intelligent Automation

23rd Mar 2026

4 Coordination Overheads in Multi-agent Workflows at Enterprise Scale

Read More

Related Blogs

5 Failure Modes in Agent Memory Compression for Long Context Reasoning

Data & AI

17th Mar 2026

5 Failure Modes in Agent Memory Compression for Long Context Reasoning

Every time you resume a conversation where it left off, you rely on memory. AI...

Read More
3 Agent Memory Models for Long Context Reasoning in 2026 

Data & AI

10th Mar 2026

3 Agent Memory Models for Long Context Reasoning in 2026 

What Are Agent Memory Models?  Agent memory models are specialized architectural frameworks that enable AI...

Read More
High-Speed Vector Indexing for Low-Latency RAG Pipelines 

Data & AI

10th Mar 2026

High-Speed Vector Indexing for Low-Latency RAG Pipelines 

In production-scale RAG systems that deliver consistent low-latency performance, retrieval speed and caching strategy become...

Read More