Back to prompts
Multi-agent LLM system architecture

Example images

Multi-agent LLM system architecture 1
Charts & InfographicswuyoscarGPT-Image2-Skillcharts-infographics图表信息图

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 dro

Category
Charts & Infographics
Model
GPT Image 2
Creator
wuyoscar
Source language
en
Views0
Source ID
081
Use in StudioOpen source

Full prompt

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".
Translations

Multi-agent LLM system architecture

en

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".

Prompt/Image Similar

12

Transformer encoder–decoder architecture

Transformer encoder–decoder architecture

Landscape 16:9 academic concept figure of the Transformer encoder-decoder architecture, NeurIPS camera-ready style. Two vertical column stacks side-by-side with a dashed divider.

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
Frontier LLM family tree (2018–2026)

Frontier LLM family tree (2018–2026)

Landscape 16:9 timeline / family tree of frontier LLMs 2018–2026, three vertically stacked lanes over a horizontal time axis. Time axis ticks: "2018", "2019", "2020", "2021", "202

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
Circulatory System Poster

Circulatory System Poster

Create a clean educational anatomy poster showing the human circulatory system in anterior and posterior views on a pale cream background. Use an academic but visually refined medi

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
Skeletal System Poster

Skeletal System Poster

Create a clean educational anatomy poster showing the human skeletal system in anterior and posterior views on a pale cream background. Use a refined academic wall-chart style with

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
LLM Persona Atlas

LLM Persona Atlas

Create a premium conceptual figure for an EMNLP / ACL paper, landscape 16:9, high-resolution, polished editorial-academic style. Theme: "LLM Persona Atlas". This should not look li

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
LLM pretraining data-mixture sankey

LLM pretraining data-mixture sankey

Landscape 16:9 sankey diagram of a pretraining data mixture, three stages with translucent colored ribbons. LEFT (8 source blocks, heights proportional to tokens): "Common Crawl (

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
Indirect prompt-injection attack flow

Indirect prompt-injection attack flow

Landscape 16:9 security-paper figure of an indirect prompt-injection attack against a tool-using LLM agent. Four columns left-to-right, numbered flow markers ①②③④ along the main ar

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
Retrieval-Augmented Generation pipeline

Retrieval-Augmented Generation pipeline

Landscape 16:9 academic systems diagram of a RAG pipeline, 6-stage left-to-right flow. (1) "User query" box with placeholder text "What are the side effects of drug X?" and a smal

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
LLM 架构聊天截图

LLM 架构聊天截图

创建一张逼真的 AI 聊天截图,其中包含一张展示大语言模型工作原理的密集型蓝白配色技术信息图。

Charts & InfographicsYouMindcharts-infographics
GPT Image 20 Views
Arboreal Architecture 项目

Arboreal Architecture 项目

一个复杂的建筑竞赛项目提示词,用于设计树木灵感的有机住宅,包含立面图、图表以及在风暴氛围下的照片级 3D 渲染元素。

Charts & InfographicsYouMindcharts-infographics
GPT Image 20 Views
Anatomy Poster

Anatomy Poster

Create a clean educational anatomy poster showing the human muscular system in anterior and posterior views on a pale cream background. Use an academic but visually refined style w

Charts & InfographicswuyoscarGPT-Image2-Skill
GPT Image 20 Views
LLM 速成课程可视化工具

LLM 速成课程可视化工具

一份基于文本的指令,旨在引导 AI 使用 gpt-image-2 为 LLM 速成课程创建可视化信息图。

Charts & InfographicsYouMindcharts-infographics
GPT Image 20 Views