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Multi-agent LLM system architecture

Multi-agent LLM system architecture

Landscape 16:9 high-fidelity systems figure of a multi-agent LLM architecture, in the style of a richly detailed AutoGen / LangGraph / Anthropic Managed Agents Figure 1. Subtle drop-shadows, warm-copper highlights, numbered flow markers ①②③④. ZONE 1 — 'User interface': rounded user box with placeholder task 'research question: summarize recent red-teaming attacks and reproduce the top three'. ZONE 2 — 'Orchestrator layer': central hexagonal hub 'Planner LLM' with warm-copper top edge. Three satellite chips: 'Task decomposition', 'Agent routing', 'Re-plan on failure'. Small inset chip 'prompt cache hit ~98%'. ZONE 3 — 'Specialised workers': 2×2 hexagons 'Researcher' / 'Coder' / 'Critic' / 'Writer', each with glyph + status ribbon ('idle', 'running step 3/5', 'done', 'running step 2/4'). Centre labeled 'async message bus'. ZONE 4 — 'Tools & memory': (a) 'Tool registry' panel listing 'web_search ×41', 'python_exec ×27', 'read_file ×18', 'write_file ×12', 'browser_use ×7'; (b) 'Memory' panel with 'Short-term scratchpad' and cylinder 'Long-term vector store — 1.8M episodes'. Bottom inset 'Example trace': 8-step horizontal timeline chips from 'User asks' through 'Planner decomposes', 'Researcher: web_search(...)', 'Coder: python_exec(...)', 'Critic: verify', 'Re-plan' (loop-back arrow), 'Writer: compose final answer'. Title: 'Agentic LLM system: planner orchestrates specialised workers over a shared tool and memory layer'. Subtitle: 'adapted from AutoGen (Wu et al., 2023), LangGraph, and Anthropic Managed Agents patterns'.

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