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Architecting Your Business for an AI-Driven World

Many businesses are still thinking about AI as a way to enhance existing processes, but AI has matured beyond just another tool for automation or efficiency. A much larger transformation is taking place: AI agents are becoming the primary way businesses, customers, and employees interact, shifting the foundation of business operations from human-driven workflows to…

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Rethinking Business for an Agent-Driven World

Businesses are rapidly adopting AI agents to automate tasks, streamline workflows, and improve efficiency. But most are still using these agents within processes designed for human interactions rather than structuring their operations to be represented by AI agents. The real shift happening now is B-to-A-to-B, where businesses use AI agents as the primary interface for…

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The Agentic AI Era: Fueled by Knowledge Graphs

We’re starting to see AI transition from simple request-response interactions to a more dynamic and action-oriented paradigm. This new generation of agentic systems will soon operate with a rich contextual understanding, enabling conversational, context-aware interactions. These systems won’t merely process inputs; they will analyze the situation, draw insights from comprehensive contextual graphs, and autonomously take…

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Breaking RAG’s boundaries with graph innovation

Knowledge graphs are quickly evolving how we use large language models (LLMs). Traditional retrieval-augmented generation (RAG) helps by connecting models to external data sources so they can pull in relevant information. But there’s a catch: traditional RAG isn’t perfect. It can pull outdated, inconsistent, or irrelevant data, which leads to problems like hallucinations and inaccurate…

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RAG to riches: building toward graph-RAG

Retrieval-augmented generation (RAG) has proven to be a powerful method for connecting large language models (LLMs) to external data sources. By dynamically retrieving information from documents, databases, or APIs, RAG can enhance the relevance of a model’s output. However, traditional RAG isn’t without its limitations; it can expose systems to risks like hallucinations or outdated…

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