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  "documentTitle": "Rise of Agentic AI Report",
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  "notes": "The diagram uses a central box for the AI agent with various inputs and outputs labeled A-F.",
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      "text": "Source: Capgemini Research Institute analysis. Note: Short-term memory for in-context learning. Long-term memory enables the agent to retain and recall vast information over extended periods, leveraging an external vector store for fast retrieval.",
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      "text": "Figure 2. Anatomy of a typical AI agent workflow",
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