MLops into Raspberry Pi 5
One of the tools I use most for practicing MLOps, both for designing pipelines and APIs (for inference), is the Raspberry Pi. Today, I spent several hours trying to install Visual Studio Code to complement my iPad Pro as a development tool. Why this setup? 🤔 Improve programming skills—I am a big fan of using Weights & Biases (W&B) to monitor the resource usage of each service I create. Using the Raspberry Pi as a server allows me to test Edge computing deployments. For scalable prototype development, it’s a great way to test artifacts and the lifecycle of models. When designing a model from hyperparameters, it helps me fine-tune grid search or Bayesian methods efficiently to optimize experimentation. Running MLflow on Edge computing enables optimization in model registry and updates. Using Docker and Kubernetes helps ensure clean code before committing changes. There are many more reasons, but these are the main ones. Now, how do you set up Raspberry Pi to unlock its full power for MLOps? ...