Now Available—The NVIDIA AI Blueprint for Building Data Flywheels

Today, we released the NVIDIA AI Blueprint for building data flywheels—a reference workflow that automates continuous optimization of AI agents. It establishes a self-reinforcing data flywheel, using log data and up-to-date business knowledge to refine and redeploy more accurate, efficient models over time.

The data flywheel blueprint leverages NVIDIA NeMo™ microservices for model customization and evaluation.

Highlights from this release include:

  • Self-improving agentic workflows—Convert production traffic into training and evaluation data and automatically trigger retraining and redeployment pipelines.
  • Automated model evaluation and fine-tuning—Continuously benchmark existing and new candidate models for accuracy and ingest real-world data from prompt-completion logs to fine-tune models.
  • Performance-optimized model selection—Promote smaller, faster models that match larger ones in accuracy and reduce inference latency and cost.
  • Seamless deployment and routing—Admins can evaluate and seamlessly deploy and manage candidate models as NVIDIA NIM™ microservices.
  • End-to-end microservice architecture—Leverage a modular, scalable system of NVIDIA NeMo and NIM microservices, purpose-built for production-grade AI agent optimization.

Get started:

📖Read our new technical blog to explore how our newest AI blueprint can help enable self-improving AI agents by automating model optimization.

📺 Watch our new how-to demo to see the data flywheel blueprint in action.

⬇️ Download the data flywheel blueprint to get started.