Ignacio Riesgo & Natale Vinto
Developer Experience, Platform Engineering and AI powered Apps
#1about 2 minutes
Navigating the overwhelming wave of generative AI adoption
The rapid rise of generative AI requires breaking down complex problems and fostering team collaboration to manage the challenges.
#2about 4 minutes
How to choose the right foundation model for your business
Selecting a foundation model involves balancing open versus closed source options while addressing critical questions from compliance, legal, and business stakeholders.
#3about 3 minutes
Improving model accuracy by using your own enterprise data
Incorporating your unique enterprise data into foundation models is essential for overcoming inaccuracy and managing intellectual property risks.
#4about 2 minutes
Understanding the new roles in AI-powered development teams
The shift to AI introduces new roles like citizen data scientists and creates overlapping responsibilities between data scientists, developers, and platform engineers.
#5about 3 minutes
Understanding the new AI developer stack and MLOps workflow
The modern AI development process combines the traditional developer loop with a new data and machine learning flow, creating a comprehensive MLOps cycle.
#6about 2 minutes
Using Red Hat tools across the AI development lifecycle
Red Hat's portfolio, including RHEL AI, InstructLab, and OpenShift AI, provides a comprehensive toolset for model builders, developers, and platform engineers.
#7about 6 minutes
Demo of a data scientist's workflow in OpenShift AI
A data scientist uses Jupyter Notebooks within OpenShift AI to download a base model like Stable Diffusion from Hugging Face and perform initial tests.
#8about 3 minutes
Demo of fine-tuning a model with custom data
The base model is fine-tuned with custom image data and the entire training process is automated using a Kubeflow pipeline for consistency and repeatability.
#9about 4 minutes
Demo of scaffolding an AI app with Developer Hub
Red Hat Developer Hub, based on Backstage, uses software templates to automatically scaffold a new application, including the repository, CI/CD pipeline, and connection to the model's API.
#10about 2 minutes
Demo of the final context-aware generative AI application
The final application successfully uses the fine-tuned model via its API to generate custom, context-aware images, completing the end-to-end MLOps workflow.
Related jobs
Jobs that call for the skills explored in this talk.
Matching moments
1:00:16 MIN
Supporting a global developer community in the age of AI
WeAreDevelopers LIVE – Web Scraping, Agents, Actors and more
04:13 MIN
The impact of GenAI on team collaboration and culture
The Future of Developer Experience with GenAI: Driving Engineering Excellence
06:28 MIN
How generative AI is shaping developer experience
Developer Experience in the Age of AI
03:18 MIN
Using AI to reimagine the developer experience
AI Pair Programming with GitHub Copilot at SAP: Looking Back, Looking Forward!
06:46 MIN
Navigating the challenges of GenAI adoption
The Future of Developer Experience with GenAI: Driving Engineering Excellence
10:48 MIN
Integrating GenAI components and execution strategy
Beyond GPT: Building Unified GenAI Platforms for the Enterprise of Tomorrow
18:03 MIN
GenAI applications and emerging professional roles
Enter the Brave New World of GenAI with Vector Search
27:10 MIN
Implementing generative AI in development teams effectively
Exploring LLMs across clouds
Featured Partners
Related Videos
Supercharge your cloud-native applications with Generative AI
Cedric Clyburn
The State of GenAI & Machine Learning in 2025
Alejandro Saucedo
The AI-Ready Stack: Rethinking the Engineering Org of the Future
Jan Oberhauser, Mirko Novakovic, Alex Laubscher & Keno Dreßel
The Future of Developer Experience with GenAI: Driving Engineering Excellence
Daniel Tao, Kathrin Schwan, Faris Haddad & Florian Schaudel
AI-Augmented DevOps with Platform Engineering
Romano Roth
The internal developer platform and golden paths: Scaffolding for cloud-native development
Natale Vinto
DevOps for AI: running LLMs in production with Kubernetes and KubeFlow
Aarno Aukia
Building Products in the era of GenAI
Julian Joseph
Related Articles
View all articles



From learning to earning
Jobs that call for the skills explored in this talk.


MLOps / DevOps Engineer (AI/ML & GenAI) Ubicación: España
Talent Connect
Municipality of Madrid, Spain
Bash
Azure
DevOps
Python
Docker
+9







Ingeniero/a Red Hat (OpenShift)
Alten
Retortillo de Soria, Spain
Remote
Ansible
Openshift
Terraform
Kubernetes
+2