MLOps Masterclass - Theory to DevOps to Cloud-Native to AutoML

MLOps Masterclass - Theory to DevOps to Cloud-Native to AutoML

Pragmatic AI Labs via YouTube Direct link

Platform Automation solves the complexity of the data science industry

8 of 39

8 of 39

Platform Automation solves the complexity of the data science industry

Class Central Classrooms beta

YouTube videos curated by Class Central.

Classroom Contents

MLOps Masterclass - Theory to DevOps to Cloud-Native to AutoML

Automatically move to the next video in the Classroom when playback concludes

  1. 1 Intro
  2. 2 Noah Gift Background
  3. 3 Why do we need MLOPs?
  4. 4 Where the data science industry is headed?
  5. 5 Without DevOps you don't have MLOps
  6. 6 Continuous delivery is enabled by the Cloud and IAC
  7. 7 DataOps is like the water hookup in your home
  8. 8 Platform Automation solves the complexity of the data science industry
  9. 9 MLOPs Feedback loop
  10. 10 Create Once, but Deploy Everywhere. Good Example is Google AutoML
  11. 11 MLOps isn't data centric or model centric there is no silver bullet
  12. 12 MLOps use cases: Autonomous Driving is a good example
  13. 13 How to invest in technology: Primary and Secondary and Research
  14. 14 AWS and Azure are the leaders in the cloud
  15. 15 Secondary considerations: Splunk, Snowflake, BigQuery, Iguazio, etc
  16. 16 Leverage learning platform and metacognition
  17. 17 Key certifications
  18. 18 NFSOps is using managed file systems to build new cloud-native workflows
  19. 19 Kubernetes is the new gold standard for many distributed systems
  20. 20 Sagemaker has many use cases
  21. 21 Azure ML Studio
  22. 22 Google Vertex AI
  23. 23 Iguazio MLRun
  24. 24 Current issues in distributed systems
  25. 25 Apple Create ML Demo
  26. 26 Databricks Spark Clusters
  27. 27 MLFlow
  28. 28 What is DevOps?
  29. 29 Creating a new Github repo
  30. 30 Developering with AWS Cloud9
  31. 31 Setup Github Actions
  32. 32 Walkthrough of Python MLOps cookbook example using a sklearn project
  33. 33 Pushing sklearn flask microservice to Amazon ECR
  34. 34 Setup AWS App Runner for MLOps Microservice inference
  35. 35 Setup Continuous Delivery of MLOps Microservice using AWS Code Build
  36. 36 Comparing MLOps Platforms Databricks, Sagemaker and MLRun
  37. 37 Deploying MLRun open source MLOps with Colab Notebook
  38. 38 Comparing MLOps Platforms Databricks, Sagemaker and MLRun
  39. 39 Deploying MLRun open source MLOps with Colab Notebook

Never Stop Learning.

Get personalized course recommendations, track subjects and courses with reminders, and more.

Someone learning on their laptop while sitting on the floor.