У нас вы можете посмотреть бесплатно Ep6 Build an AI Engineering Team with CrewAI | Multi-Agent System in Python или скачать в максимальном доступном качестве, видео которое было загружено на ютуб. Для загрузки выберите вариант из формы ниже:
Если кнопки скачивания не
загрузились
НАЖМИТЕ ЗДЕСЬ или обновите страницу
Если возникают проблемы со скачиванием видео, пожалуйста напишите в поддержку по адресу внизу
страницы.
Спасибо за использование сервиса ClipSaver.ru
Build a real-world AI Engineering Team using CrewAI In this tutorial, you’ll learn how to design and run a multi-agent AI system that mirrors a real software engineering workflow — from architecture design to backend development, frontend UI, and automated testing. We’ll create an EngineeringTeam using CrewAI where each AI agent has a clearly defined role: Engineering Lead Backend Engineer Frontend Engineer (Gradio UI) QA Test Engineer This is a zero-to-production workflow showing how multiple LLM-powered agents collaborate to build a complete Python application — fully automated. If you want to master CrewAI multi-agent system design, this video is for you. 🧠 What You’ll Learn How CrewAI multi-agent systems work Designing AI agents with real engineering roles Automating system design, coding, UI creation, and testing YAML-based agent & task orchestration Running CrewAI locally with multiple LLM providers Building an end-to-end AI engineering pipeline 🛠 Tech Stack Used CrewAI Python Gradio (Frontend UI) OpenAI / Anthropic / Google GenAI LiteLLM UV package manager 🔗 Source Code & Video 📂 Code Repository 👉 [https://github.com/matinict/MyCrewAi/...](https://github.com/matinict/MyCrewAi/...) 🎥 Video Link 👉 [ • Ep6 Build an AI Engineering Team with Crew... ]( • Ep6 Build an AI Engineering Team with Crew... ) ⏱ Chapters (12-Min Video) 00:00 – Intro Welcome to PlayOwnAI & overview of the AI Engineering Team 00:30 – What We’re Building Real-world AI engineering workflow using CrewAI 01:15 – Engineering Team Roles Explained Engineering Lead, Backend Engineer, Frontend Engineer, QA Engineer 02:10 – Creating a CrewAI Project Using `crewai create crew EngineeringTeam` 03:20 – Project Structure Overview Folders, configs, and outputs 04:10 – Environment Variables Setup Setting API keys with `.env` 05:10 – Agents Configuration (agents.yaml) Roles, goals, backstories, and LLM selection 06:30 – Task Pipeline (tasks.yaml) Design → Code → Frontend → Tests 07:50 – EngineeringTeam Crew Class How agents and tasks are orchestrated 09:00 – Running the AI Engineering Pipeline Installing dependencies & running `crewai run` 10:20 – Output Review Backend code, Gradio UI, and unit tests 11:20 – Final Thoughts & Use Cases Extending this system for real-world products 🔥 Why This Matters This tutorial demonstrates how AI agents can collaborate like a real engineering team, dramatically speeding up development while maintaining structure and quality. Perfect for: AI Engineers Automation Builders Startup Founders CrewAI Learners Multi-Agent System Designers 👍 If you found this helpful, like, subscribe, and turn on notifications for more advanced AI engineering content from PlayOwnAI. 🔍 SEO Keywords CrewAI tutorial, AI engineering team, multi-agent AI system, CrewAI Python, AI automation workflow, Gradio UI, LLM agents, PlayOwnAI, AI software development