EdgeMLOps: Enabling MLOps for Edge AI
Tuesday, June 20, 2023
Red Rock Ballroom A
MLOps provides a managed and optimized workflow for training, deploying and operating machine learning models and applications. More and more, ML models are now deployed at the Edge for use cases in manufacturing, logistics, healthcare and smart homes and cities. Edge deployments bring in unique challenges like resource constraints, limited bandwidth and unreliable networks. Existing cloud & enterprise MLOps needs to be adapted for Edge to overcome these constraints and maximize efficiency. This presentation will cover the unique challenges for machine learning and inference at the Edge, techniques and processes to overcome these challenges and how the MLOps workflow can be modified to adapt them. Data Scientists, MLOps Engineers and architects will benefit from understanding the unique challenges and best practices for ML at the Edge.