Tagged In:
Analyze: Build and scale AI Modernize: Cloud-ready data Infuse: Operationalize AI Collect: Make data accessible Client stories
Related Tags
Newest by Date Newest by Title Oldest by Date Oldest by Title
Unlocking the power of data governance by understanding key challenges
In our last blog, we introduced Data Governance: what it is and why it is so important. In this blog...
Data architecture strategy for data quality
Poor data quality is one of the top barriers faced by organizations aspiring to be more data-driven. Ill-timed business decisions and misinformed business processes, missed revenue opportunities, failed business initiatives and complex data systems ...
How data, AI and automation can transform the enterprise
Today’s data leaders are expected to make organizations run more efficiently, improve business value, and foster innovation. Their role has expanded from providing business intelligence to management, to ensuring high-quality data is accessible and...
Maximize your data dividends with active metadata
Metadata management performs a critical role within the modern data management stack. It helps blur data silos, and empowers data and analytics teams to better understand the context and quality of data. This, in turn, builds trust in data and the ...
Four use cases defining the new wave of data management
A confluence of events in the data management and AI landscape is bearing down on companies, no matter their size, industry or geographical location. Some of these, such as the continued sprawl of data across multicloud environments have been looming...
Augmented data management: Data fabric versus data mesh
Data fabric and data mesh are emerging data management concepts that are meant to address the organizational change and complexities of understanding, governing and working with enterprise data in a hybrid multicloud ecosystem. The good news is that ...
Weaving the data fabric through IBM Global Financing
When your IT infrastructure suffers an outage, the last thing you want is high visibility and—even worse—revenue loss. But that’s exactly what happened to IBM in 2017. An aging and disparate internal IT ecosystem that had been starved of ...
DataStax and IBM partnership will scale the intelligence of your enterprise
The past decade has brought the Internet of Things (IoT) and a data revolution to the enterprise as ...
IBM recognized as a leader in Gartner’s 2020 Magic Quadrant for Data Integration Tools
With the publication of Gartner’s 2020 Magic Quadrant (MQ) for Data Integration Tools, the IBM...