Astera today announced the launch of Centerprise AI, the agentic evolution of its enterprise data management platform. Centerprise AI embeds proprietary agentic harness across the full data management stack, enabling data teams to design, test, and deploy their data assets, warehouses, pipelines, data models, and analytics in a single platform.
Ever since AI-driven analytics burst onto the scene, product leaders have been racing to adopt it. Promoted as a way to stay ahead of the curve, AI analytics bring the promise of streamlined processes, personalized recommendations, and a more efficient user experience. But AI advancements aren’t without pitfalls, chief among them inaccuracies caused by AI hallucinations and pilot projects not making it to production.
Kong and Persistent Systems partner to make migrating off old API management platforms faster and lower risk Legacy API management platforms were built for a different era. They weren't designed for microservices, multi-cloud deployments, or AI workloads. They're expensive, rigid, and hold engineering teams back. The problem is that migration has always felt hard. APIs are load-bearing infrastructure. Policies are complex. Risk is real. So the old platform stays, and the technical debt compounds.
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A dashboard inside an EHR, claims tool, or finance portal is not just reporting. It sits inside a decision path. That changes the bar. With embedded analytics in regulated industries, teams need access control, audit logs, clear metric logic, and a user experience that fits the workflow. Speed matters. So does usability. But compliance-by-design cannot sit after the fact. It has to be built in from the start.
AI is at the center of every conversation around operational efficiency, while at the same time being sidelined. In a recent Harvard Business Review Analytic Services survey, only 18% of organizations report that AI is integrated within most of their workflows; twice as many run it as a standalone tool alongside the work. That gap—between AI that assists and AI that operates—is the defining problem of enterprise AI agents.