3 days ago
- Business
- South China Morning Post
The Great Data Convergence: Where analytics meets artificial intelligence
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In a nondescript conference room, a senior data architect at a Fortune 500 retailer pulls up a dashboard that would have been impossible to imagine just five years ago. She toggles between traditional business intelligence metrics and sophisticated artificial intelligence models, all drawing from the same vast pool of customer data. The seamless interaction between analytics and artificial intelligence isn't just impressive—it represents a fundamental shift in how companies approach their data strategy.
Though most people have thought of analytics and AI as belonging to completely separate worlds, those spheres are converging. Organizations are discovering that their most valuable asset—their data—can serve double duty. The same data that powers analytics is becoming the foundation for AI and machine learning models.
For instance, manufacturing teams analyzing equipment sensor data for maintenance scheduling now use those same data sets to train AI models that predict failures before they occur. Similarly, healthcare providers who previously used patient records purely for reporting now leverage this data to develop AI systems that help with potential diagnosis and treatment outcomes.
While this convergence isn't new, generative AI (gen AI) has created urgent demand for data that can both inform analytics and serve as a building block to build (and build upon) the latest gen AI models, such as Anthropic's Claude model family or Amazon's new Nova models. Gen AI has also highlighted the persistent challenges of harnessing an organization's data—and added some new ones. 'For AWS customers, getting data ready for generative AI isn't just a technical challenge—it's a strategic imperative,' says Swami Sivasubramanian, VP of AI & Data at AWS. 'Proprietary, high-quality data is the key differentiator in transforming generic AI into powerful, business-specific applications. To prepare for this AI-driven future, we're helping our customers build a robust, cloud-based data foundation with built-in security and privacy. That's the backbone of AI readiness.'
Data Challenges Old and New