Machine learning can improve results in studying subatomic particles, and Kubeflow can help run machine learning workloads.
- Using machine learning can improve results in studying subatomic particles, as demonstrated by the jet energy regression example
- Kubeflow can help run machine learning workloads
- Challenges in implementing the demo included finding the correct version of the Triton server image and customizing TensorBoard
- Possible improvements include profile replication across multiple clusters, making pipelines namespace, and adding limit range resources to profiles