NODES 2024 - Using Graphs to Fine-Tune Agents

  Рет қаралды 180

Neo4j

Neo4j

Күн бұрын

At its core, agents have models taking in information and deciding the next steps the agent should take. Currently, models are limited in the amount of context able to be retrieved, affecting the performance of agents running over enterprise-level chains. This session aims to highlight how to leverage graphs to store weights highlighting successful and failed agent executions. When in production, agents will perform RAG over this execution graph to retrieve successful executions as context to decide on the next steps, making enterprise-level agents reliable.
with Julian Saks
Get certified with GraphAcademy: dev.neo4j.com/...
Neo4j AuraDB dev.neo4j.com/...
Knowledge Graph Builder dev.neo4j.com/...
Neo4j GenAI dev.neo4j.com/...

Пікірлер
Visualizing transformers and attention | Talk for TNG Big Tech Day '24
57:45
How Much Tape To Stop A Lamborghini?
00:15
MrBeast
Рет қаралды 257 МЛН
Creative Justice at the Checkout: Bananas and Eggs Showdown #shorts
00:18
Fabiosa Best Lifehacks
Рет қаралды 33 МЛН
Tuna 🍣 ​⁠@patrickzeinali ​⁠@ChefRush
00:48
albert_cancook
Рет қаралды 18 МЛН
Multi-Agent AI EXPLAINED: How Magentic-One Works
16:39
Sam Witteveen
Рет қаралды 16 М.
GraphRAG: The Marriage of Knowledge Graphs and RAG: Emil Eifrem
19:15
Why Agent Frameworks Will Fail (and what to use instead)
19:21
Dave Ebbelaar
Рет қаралды 94 М.
Should You Use gRPC Instead of REST?
19:11
ArjanCodes
Рет қаралды 18 М.
It’s time to move on from Agile Software Development (It's not working)
11:07
How Much Tape To Stop A Lamborghini?
00:15
MrBeast
Рет қаралды 257 МЛН