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Multi-Cloud Networking Design Checklist

Dataversity

As a principal solutions architect, I always start my cloud architecture discussions with the “triangle of truth,” or “holy trinity” of architecture principles for cloud: stability, agility, and security. You must have these three things. The rub is that hitting any two vertices of those pillars is pretty straightforward.

Agile 246
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Scaling Data Access Governance

Dataversity

The rise of data lakes and adjacent patterns such as the data lakehouse has given data teams increased agility and the ability to leverage major amounts of data. Constantly evolving data privacy legislation and the impact of major cybersecurity breaches has led to the call for responsible data […].

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Data Portability May Save Your Cloud Workloads

Dataversity

Efforts to alleviate this – from, say, moving workloads to a cost-effective environment/on-prem or re-architecting to save costs – become difficult, as organizations often find themselves strapped for technical agility.

Agile 228
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What is Data Architecture? A Look at Importance, Types, & Components

Astera

What is Data Architecture? Data architecture is a structured framework for data assets and outlines how data flows through its IT systems. It provides a foundation for managing data, detailing how it is collected, integrated, transformed, stored, and distributed across various platforms.

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Seamless Data Exchange: Best Practices for Modern Businesses

Dataversity

The rapid pace of digital transformation has amplified the demand for efficient and seamless data exchange mechanisms that allow businesses to remain agile, make informed decisions, and maintain a competitive edge.

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Data Integrity, the Basis for Reliable Insights

Sisense

Now that we know what data integrity is, we should discuss what we do when we find data that hasn’t met our standards. When data is unavailable, we need to choose systems that support continuous data availability. Incomplete data, such as data that has been deleted or was never generated, can be difficult to handle.

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Transform Your Data Strategy with a Nimble Data Fabric

Domo

Breaking down data silos: the CIO’s dilemma Enterprise data is often stuck in silos—scattered across business systems, SaaS applications, and data warehouses. This fragmentation creates “BI breadlines,” where data requests pile up and slow down progress. Maximize investments : Get the most out of your CDW investments.