Self host Gemma 4: Deploy LLMs on Cloud Run GPUs
Apr 18, 2026•Channel
AI Analysis
Data from YouTube Data API v3•Updated Just now
Video Overview
Video Details
Published2 months ago
Duration48:03
Video IDnjWyDHKYeVA
Languageen-US
CategoryScience & Technology
PrivacyPublic
Made for KidsNo
Video TypeRegular Video
Performance Metrics
Views10.2K
Likes386
Comments17
Engagement Rate3.93%
Likes per 100 views3.77
Comments per 1K views1.66
Description
GCP credit → https://goo.gle/handson-ep7-lab1
Lab → https://goo.gle/guardians
In this episode, we deploy Google's Gemma 4 model to Cloud Run two completely different ways, each with real trade-offs you need to understand before choosing one for production.
🔨 Ollama — model baked into the container. Instant cold starts. Rebuild to update.
⚡ vLLM — model mounted from Cloud Storage via FUSE. Slower first boot, but swap models without redeploying.
Both use Cloud Run GPUs, scale to zero, and ship through automated CI/CD with Cloud Build.
We build both. You decide which fits. 👇
📦 CI/CD with Cloud Build
🖥️ GPU accelerated serverless inference
🔄 Baked in vs. decoupled model architecture
🚀 Scale to zero
⚖️ Cold start speed vs. production agility
Chapters:
0:00 - Intro
6:08 - Getting started with Agentverse lab
7:57 - Laying the foundations of the citadel
16:07 - Forging the power core: Self hosted LLMs
28:02 - Forging the citadel's central core: Deploy vLLM
43:59 - Summary
More resources:
Cloud Run GPU documentation → https://goo.gle/4sEbTvG
Ollama documentation → https://goo.gle/3Qdi64w
vLLM documentation → https://goo.gle/4cvvxE9
Cloud Storage FUSE → https://goo.gle/4cQAb0V
Watch more Hands on AI → https://www.youtube.com/watch?v=qCBreTfjFHQ&list=PLIivdWyY5sqKnJOvP89yF8t9mWuzMTcbM
🔔 Subscribe to Google Cloud Tech → https://goo.gle/GoogleCloudTech
#Gemma4 #CloudRun
Speakers: Ayo Adedeji, Annie Wang
Products Mentioned: Agent Development Kit, Gemini API, Cloud Run