Build, Optimize, Run: The Developer's Guide to Local Gen AI on NVIDIA RTX AI PCs

NVIDIA Developer · Advanced ·🏭 MLOps & LLMOps ·1mo ago
The AI PC ecosystem is exploding. Developers are now running local, high-performance AI workloads. This technical session dives into how NVIDIA accelerates the top open-source software stack—from the different quantization techniques, training recipes, as well as inference frameworks and tools like Ollama, ComfyUI and custom pipelines. Crucially, we will move beyond simple inference to address the architecture of reliable, local agentic workflows. Join us to learn about the technical intricacies and considerations to develop robust, local AI workflows on NVIDIA RTX. Access resources for AI on NVIDIA RTX PCs: https://developer.nvidia.com/ai-apps-for-rtx-pcs
Watch on YouTube ↗ (saves to browser)
Sign in to unlock AI tutor explanation · ⚡30

Related AI Lessons

Day 2: Set Up and Configure Jupyter Notebook Server | KodeKloud MLOps Journey
Learn to set up and configure a Jupyter Notebook Server for MLOps, a crucial step in streamlining your machine learning workflow
Medium · Machine Learning
Day 2: Set Up and Configure Jupyter Notebook Server | KodeKloud MLOps Journey
Learn to set up and configure a Jupyter Notebook Server for MLOps, enabling data scientists to collaborate and work efficiently
Medium · Data Science
Day 2: Set Up and Configure Jupyter Notebook Server | KodeKloud MLOps Journey
Learn to set up and configure a Jupyter Notebook Server for MLOps, a crucial step in data science and machine learning workflows
Medium · Python
Day 2: Set Up and Configure Jupyter Notebook Server | KodeKloud MLOps Journey
Learn to set up and configure a Jupyter Notebook Server for MLOps, a crucial step in data science and machine learning workflows
Medium · DevOps
Up next
Brevitas Quantization Library - Pablo Monteagudo Lago, AMD
PyTorch
Watch →