Roberto Carratalá & Cedric Clyburn
Self-Hosted LLMs: From Zero to Inference
#1about 3 minutes
The rise of self-hosted open source AI models
Self-hosting large language models offers developers greater privacy, cost savings, and control compared to third-party cloud AI services.
#2about 2 minutes
Key benefits of local LLM deployment for developers
Running models locally improves the development inner loop, provides full data privacy, and allows for greater customization and control over the AI stack.
#3about 3 minutes
Comparing open source tools for serving LLMs
Explore different open source tools like Ollama for local development, vLLM for scalable production, and Podman AI Lab for containerized AI applications.
#4about 3 minutes
How to select the right open source LLM
Navigate the vast landscape of open source models by understanding different model families, their specific use cases, and naming conventions.
#5about 3 minutes
Using quantization to run large models locally
Model quantization compresses LLMs to reduce their memory footprint, enabling them to run efficiently on consumer hardware like laptops with CPUs or GPUs.
#6about 1 minute
Strategies for integrating local LLMs with your data
Learn three key methods for connecting local models to your data: Retrieval-Augmented Generation (RAG), local code assistants, and building agentic applications.
#7about 6 minutes
Demo: Building a RAG system with local models
Use Podman AI Lab to serve a local LLM and connect it to AnythingLLM to create a question-answering system over your private documents.
#8about 5 minutes
Demo: Setting up a local AI code assistant
Integrate a self-hosted LLM with the Continue VS Code extension to create a private, offline-capable AI pair programmer for code generation and analysis.
#9about 4 minutes
Demo: Building an agentic app with external tools
Create an agentic application that uses a local LLM with external tools via the Model Context Protocol (MCP) to perform complex, multi-step tasks.
#10about 1 minute
Conclusion and the future of open source AI
Self-hosting provides a powerful, private, and customizable alternative to third-party services, highlighting the growing potential of open source AI for developers.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
01:40 MIN
Addressing data privacy and security in AI systems
Graphs and RAGs Everywhere... But What Are They? - Andreas Kollegger - Neo4j
12:42 MIN
Running large language models locally with Web LLM
Generative AI power on the web: making web apps smarter with WebGPU and WebNN
02:58 MIN
Understanding the benefits of self-hosting large language models
Unveiling the Magic: Scaling Large Language Models to Serve Millions
04:01 MIN
Testing Spring AI applications with local LLMs
What's (new) with Spring Boot and Containers?
04:31 MIN
Leveraging private data with local and small AI models
Decoding Trends: Strategies for Success in the Evolving Digital Domain
02:11 MIN
Using local AI models for code assistance
Building APIs in the AI Era
05:39 MIN
The benefits and challenges of running AI models locally
WeAreDevelopers LIVE - Is AI replacing developers?, Stopping bots, AI on device & more
06:44 MIN
The developer's journey for building AI applications
Supercharge your cloud-native applications with Generative AI
Featured Partners
Related Videos
Unveiling the Magic: Scaling Large Language Models to Serve Millions
Patrick Koss
Inside the Mind of an LLM
Emanuele Fabbiani
Unlocking the Power of AI: Accessible Language Model Tuning for All
Cedric Clyburn & Legare Kerrison
Exploring LLMs across clouds
Tomislav Tipurić
Three years of putting LLMs into Software - Lessons learned
Simon A.T. Jiménez
One AI API to Power Them All
Roberto Carratalá
DevOps for AI: running LLMs in production with Kubernetes and KubeFlow
Aarno Aukia
Efficient deployment and inference of GPU-accelerated LLMs
Adolf Hohl
Related Articles
View all articles
.png?w=240&auto=compress,format)

.gif?w=240&auto=compress,format)
From learning to earning
Jobs that call for the skills explored in this talk.






webLyzard
Vienna, Austria
DevOps
Docker
PostgreSQL
Kubernetes
Elasticsearch
+2
![Phd Position On "human-centered Design And Evaluation Of Learning Analytics And Ai Tools In Edu[...]](https://wearedevelopers-develop.imgix.net/develop/public/default-job-listing-cover.png?w=400&ar=3.55&fit=crop&crop=entropy&auto=compress,format)
Phd Position On "human-centered Design And Evaluation Of Learning Analytics And Ai Tools In Edu[...]
Universidad De Valladolid
Municipality of Valladolid, Spain
€17K
Data analysis
Machine Learning

Llm-modell
München, Germany
Remote
Senior
Keras
PyTorch
Tensorflow
Kubernetes
+1

NLP People
Municipality of Valencia, Spain
Intermediate
GIT
Linux
NoSQL
NumPy
Keras
+11