
Sign up to save your podcasts
Or


🛠️ Building Iterative AI Agents with LangGraph and Gemini
This tutorial provides a step-by-step guide to building an iterative AI workflow agent using the LangGraph library and Google's Gemini 1.5 Flash model. It explains the core concepts of LangGraph, including State, Nodes, and Edges, highlighting how conditional edges enable cyclical workflows for iterative refinement. The guide details the prerequisites and setup process, such as obtaining a Gemini API key and installing necessary libraries. A significant portion is dedicated to designing and implementing the agent's workflow as a graph with distinct nodes for routing, analysis, research, response generation, and validation. Finally, it covers running, testing, and observing the agent's execution through streaming, and suggests potential extensions for further development.
🛠️ AI Unraveled Builder's Toolkit - Build & Deploy AI Projects—Without the Guesswork: E-Book + Video Tutorials + Code Templates for Aspiring AI Engineers
You tune in daily for the latest AI breakthroughs, but what if you could start building them yourself? We've heard your requests for practical guides, and now we're delivering! Introducing AI Unraveled: The Builder's Toolkit, a comprehensive and continuously expanding collection of AI tutorials. Each guide comes with detailed, illustrated PDF instructions and a complementary audio explanation, designed to get you building – from your first OpenAI agent to advanced AI applications. This exclusive resource is a one-time purchase, providing lifetime access to every new tutorial we add weekly. Your support directly fuels our daily mission to keep you informed and ahead in the world of AI.
Start building today: Get Full access to the AI Unraveled Builder's Toolkit (Videos + Audios + E-books) at https://djamgatech.com/product/ai-unraveled-the-builders-toolkit-practical-ai-tutorials-projects-e-book-audio/
By Etienne Noumen4.7
1313 ratings
🛠️ Building Iterative AI Agents with LangGraph and Gemini
This tutorial provides a step-by-step guide to building an iterative AI workflow agent using the LangGraph library and Google's Gemini 1.5 Flash model. It explains the core concepts of LangGraph, including State, Nodes, and Edges, highlighting how conditional edges enable cyclical workflows for iterative refinement. The guide details the prerequisites and setup process, such as obtaining a Gemini API key and installing necessary libraries. A significant portion is dedicated to designing and implementing the agent's workflow as a graph with distinct nodes for routing, analysis, research, response generation, and validation. Finally, it covers running, testing, and observing the agent's execution through streaming, and suggests potential extensions for further development.
🛠️ AI Unraveled Builder's Toolkit - Build & Deploy AI Projects—Without the Guesswork: E-Book + Video Tutorials + Code Templates for Aspiring AI Engineers
You tune in daily for the latest AI breakthroughs, but what if you could start building them yourself? We've heard your requests for practical guides, and now we're delivering! Introducing AI Unraveled: The Builder's Toolkit, a comprehensive and continuously expanding collection of AI tutorials. Each guide comes with detailed, illustrated PDF instructions and a complementary audio explanation, designed to get you building – from your first OpenAI agent to advanced AI applications. This exclusive resource is a one-time purchase, providing lifetime access to every new tutorial we add weekly. Your support directly fuels our daily mission to keep you informed and ahead in the world of AI.
Start building today: Get Full access to the AI Unraveled Builder's Toolkit (Videos + Audios + E-books) at https://djamgatech.com/product/ai-unraveled-the-builders-toolkit-practical-ai-tutorials-projects-e-book-audio/

1,639 Listeners

334 Listeners

225 Listeners

207 Listeners

498 Listeners

197 Listeners

158 Listeners

154 Listeners

228 Listeners

616 Listeners

109 Listeners

53 Listeners

173 Listeners

55 Listeners

96 Listeners