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7 contributions to University of Code
Open to New Projects & Developer Collaboration
Hi everyone I recently completed my current projects and I’m now open to new opportunities. I’m interested in connecting with developers building in backend, SaaS, AI, or automation, and I’m always open to exchanging ideas with people working in similar areas. If you’re interested in a technical session, mentorship, collaboration, or discussing a project, feel free to reach out. Happy to connect.
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🟢 Let's Vibe Code a Quickbooks/Xero Clone with AI | Beginner Series Ep #4 (Cursor, Nextjs, Clerk)
Set your reminder here 👉 https://youtube.com/live/jDTuQTR8gU0 Episode 4 of our new Series 'Code with AI the Right Way' is here! — and this time, we're vibe coding a Quickbooks / Xero Clone LIVE from scratch! This is a LIVE build — mistakes, debugging, and all. That's the point. You learn more watching someone solve real problems in real-time than from a polished, pre-recorded tutorial.
1 like • Apr 1
Okay!!!
How Chatbots Actually Work: From User Message to AI Response
I have previously conducted lectures on LLM orchestration, RAG pipeline, multi-modal models, and multi-agent architecture. I am going to explain how to implement chatbot functionality by utilizing the previous lecture. A chatbot MVP is essentially: A system that takes a user message → understands it → optionally looks things up → generates a response → returns it You can express this as a simple loop: The 5 Core Components of a Chatbot MVP Break the system into 5 understandable parts: ① User Interface (UI) Chat screen (web, app, Slack, etc.) Where users type messages ② Backend Controller (Orchestrator) The “brain” that decides what to do next Routes requests between components Connect to your previous lectures: This is where **LLM orchestration logic** lives. ③ Large Language Model (LLM) Generates responses Understands natural language ④ Knowledge / Data Layer (Optional but critical for MVP+) Documents, database, APIs Used in **RAG (Retrieval-Augmented Generation)** ⑤ Memory (Optional but powerful) Conversation history User preferences User ↓ UI ↓ Orchestrator ├── LLM └── Knowledge Base (RAG) ↓ Response contact information: telegram:@kingsudo7 whatsapp:+81 80-2650-2313
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How Chatbots Actually Work: From User Message to AI Response
🚀 New Lecture: Multi-Agent Architecture (Production Systems)
Today I’m starting a lecture on Multi-Agent Architecture, focusing on how modern AI systems move beyond single LLM prompts and into coordinated agent ecosystems. In real-world AI products, the challenge isn’t generating text — it’s orchestrating multiple agents that can plan, reason, and execute tasks reliably. In this session we’ll break down: • Core architecture patterns for multi-agent systems • Agent orchestration, routing, and task decomposition • Tool usage and memory management • Building reliable pipelines instead of fragile prompt chains • Real production use cases from modern AI systems The goal is simple: move from demos to production-grade AI architectures. If you're building with LLMs, AI agents, or automation pipelines, understanding multi-agent design patterns will be one of the most important skills going forward. More details and implementation walkthrough coming in the lecture. Let’s build systems that actually scale. ⚙️
🚀 New Lecture: Multi-Agent Architecture (Production Systems)
🚀 New Lecture: Multi-Agent Architecture (Production Systems)
Today I’m starting a lecture on Multi-Agent Architecture, focusing on how modern AI systems move beyond single LLM prompts and into coordinated agent ecosystems. In real-world AI products, the challenge isn’t generating text — it’s orchestrating multiple agents that can plan, reason, and execute tasks reliably. In this session we’ll break down: • Core architecture patterns for multi-agent systems • Agent orchestration, routing, and task decomposition • Tool usage and memory management • Building reliable pipelines instead of fragile prompt chains • Real production use cases from modern AI systems The goal is simple: move from demos to production-grade AI architectures. If you're building with LLMs, AI agents, or automation pipelines, understanding multi-agent design patterns will be one of the most important skills going forward. More details and implementation walkthrough coming in the lecture. Let’s build systems that actually scale. ⚙️
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🚀 New Lecture: Multi-Agent Architecture (Production Systems)
1-7 of 7
Yuki Nakamura
1
2points to level up
@misa-dana-2493
Full stack and AI developer contact info: telegram kingsudo7 whatsapp: +81 80-2650-2313

Active 13h ago
Joined Feb 5, 2026