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  "documentTitle": "Reinventing with a Digital Core",
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      "text": "Once transactional platforms are in place, organizations need to connect them to analytics using real-time data pipelines, with Data Lakes and AI platforms in between. But what often holds organizations back from achieving this state is the sheer complexity, fragmentation and manual nature of their data processes. Over time, they build up various databases and applications, each with unique structures, making data merging and integration highly labor-intensive and prone to error. Generative AI and LLMs are changing this by breaking down these barriers, automating the discovery of logical connections across datasets and streamlining data consolidation.",
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      "text": "Adding a layer of semantics to this brain then transforms it into an enterprise cognitive brain. This layer helps both people and AI understand and interact with data, based on what they want to do. The goal is to create systems that work together and share data across the company, no matter what the functions or applications are, like Salesforce Einstein for CRM, Joule for SAP operations and Microsoft Copilot.",
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