Cloud Run is an ideal platform for hosting AI applications – for example, you can use Cloud Run with AI frameworks like LangChain or Firebase Genkit to orchestrate calls to AI models on Vertex AI, vector databases, and other APIs. In this session, we’ll dive deep into building AI agents on Cloud Run to solve complex tasks and explore several techniques, including tool calling, multi-agent systems, memory state management, and code execution. We’ll showcase interactive examples using popular frameworks.
talk-data.com
Topic
Cloud Run
Google Cloud Run
serverless
containers
google_cloud
2
tagged
Activity Trend
1
peak/qtr
2020-Q1
2026-Q1
Top Events
Filtering by:
Harrison Chase
×
by
Harjot Gill
(CodeRabbit)
,
Steren Giannini
(Google Cloud)
,
Harrison Chase
(LangChain)
,
Wietse Venema
(Google Cloud)
by
Steren Giannini
(Google Cloud)
,
Harrison Chase
(LangChain)
,
Wietse Venema
(Google Cloud)
,
Thomas Menard
(L'Oréal)
LangChain is the most popular open-source framework for building LLM-based apps. Google Cloud is the easiest place to deploy LangChain apps to production. In this session technical practitioners will learn how to combine LangChain on Cloud Run with Cloud SQL's pgvector for vector storage and Vertex Endpoints to create generative AI applications.
Click the blue “Learn more” button above to tap into special offers designed to help you implement what you are learning at Google Cloud Next 25.