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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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Lab technicians discussing

Agentic AI: Building on Trust, Accuracy, and Human Collaboration

Agentic AI has taken center stage in today’s AI conversations, sparking both excitement and a need for clarity about its true capabilities. Many examples being shared today are closer to advanced automation systems or AI-enhanced workflows. These technologies have already transformed industries, improving trust and accuracy in critical processes, but they represent the beginning of…

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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 It can pull outdated, inconsistent, or irrelevant data, which leads to problems like hallucinations and inaccurate…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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