MLOps 106 – Scaling AI Workloads

John Enoh · November 30, 2025

(Weeks 11–12 | Lec 6 Hrs / Lab 18 Hrs / Ext 0 Hrs | 24 Total Hrs | 1.0 Credit Hrs)
Students will:

  • Scale training and inference across cloud and edge
  • Optimize compute, memory, and network resources
  • Implement batch and streaming pipelines
  • Manage cost-efficient scaling strategies

Prerequisite: MLOps 105 – Monitoring, Drift & Feedback Loops
Tools: AWS SageMaker, Azure ML, Google Vertex AI

About Instructor

John Enoh

121 Courses

Not Enrolled
This course is currently closed

Course Includes

  • 10 Lessons

Ratings and Reviews

0.0
Avg. Rating
0 Ratings
5
0
4
0
3
0
2
0
1
0
What's your experience? We'd love to know!
No Reviews Found!
Show more reviews
What's your experience? We'd love to know!