Overview
Syllabus
[] Stephano's preferred coffee
[] Takeaways
[] Stephano's MLOps Course
[] From Academia to AI Industry
[] Data science and platforms
[] Persistent MLOps challenges
[] Internal evangelization for success
[] Adapt communication skills to diverse individual needs
[] Key components of ML pipelines are essential
[] Create a generalizable AI training pipeline with Kubeflow
[] Consider cost-effective algorithms and deployment methods
[] Agree with dream platform; LLMs require simple microservice
[] Auto scaling: crucial, tricky, prone to issues
[] Auto-scaling issues with Apache Beam data pipelines
[] Guiding students through MLOps with practical experience
[] Bulletproof Problem Solving: Decision trees for problem analysis
[] Evaluate tools critically; appreciate educational opportunities
[] Wrap up
Taught by
MLOps.community