Тёмный

LangGraph: Function Calling, JSON Mode, & Structured Response Using Ollama, LLaMA3.1 

Mukul Tripathi
Подписаться 785
Просмотров 462
50% 1

Unlock the power of AI with this in-depth tutorial on function calling and tool integration using LangChain and the latest LLaMA3.1 model. In this video, we dive into how function calling is revolutionizing agentic flows and enhancing real-time data retrieval. Learn how to leverage structured outputs with Pydantic schemas for seamless evaluation, and get a sneak peek into using LangGraph for full state-managed workflows in our upcoming videos. Whether you're a developer or an AI enthusiast, this video is packed with practical insights and demonstrations. Don't miss out - watch now and elevate your AI projects to the next level!
🔗 Links & Resources:
Github:
github.com/Tea...
Watch full series on LangGraph here:
• AI Workflows: LangGrap...

Опубликовано:

 

9 сен 2024

Поделиться:

Ссылка:

Скачать:

Готовим ссылку...

Добавить в:

Мой плейлист
Посмотреть позже
Комментарии : 3   
@MsLouis666
@MsLouis666 Месяц назад
Hello ! Nice work, do you plan sharing the code ? :)
@MukulTripathi
@MukulTripathi Месяц назад
Hello! Thank you and yes I do. Currently it's all hosted locally in my personal gittea instance. I will be sharing it on GitHub soon. I will update the description section once I'm done.
@MukulTripathi
@MukulTripathi Месяц назад
Repo is in the description now!
Далее
This RAG AI Agent with n8n + Supabase is the Real Deal
16:27
Пришёл к другу на ночёвку 😂
01:00
Optimize Your AI Models
11:43
Просмотров 9 тыс.
Introduction to LlamaIndex with Python (2024)
39:57
Просмотров 13 тыс.
Building AI Agents from Scratch, Simplified
33:56
Просмотров 22 тыс.