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Deploy & Optimize ML Services Confidently

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Deploy & Optimize ML Services Confidently

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Gain insight into a topic and learn the fundamentals.
Intermediate level

Recommended experience

2 hours to complete
Flexible schedule
Learn at your own pace

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There is 1 module in this course

Take your machine learning skills beyond the notebook and into production. In this short, practical course, you’ll learn how to turn trained models into reliable RESTful inference services, automate deployment pipelines, and monitor real-time performance like a professional MLOps engineer. You’ll build a /predict API using FastAPI, integrate it with GitHub Actions for CI/CD, and then simulate traffic with Locust to evaluate latency and optimize for a 100 ms SLA target.

Whether you’re an aspiring MLOps engineer or a data scientist ready to bridge into deployment, this course gives you the hands-on confidence to deliver production-grade ML services that scale. You’ll strengthen the technical and analytical skills that modern AI teams need — automation, performance optimization, and service reliability — to stay competitive in the evolving ML operations landscape. By the end, you’ll not only deploy your own model confidently but also gain the credibility to manage real-world ML systems end-to-end.

Take your machine learning skills beyond the notebook and into production. In this short, practical course, you’ll learn how to turn trained models into reliable RESTful inference services, automate deployment pipelines, and monitor real-time performance like a professional MLOps engineer. You’ll build a /predict API using FastAPI, integrate it with GitHub Actions for CI/CD, and then simulate traffic with Locust to evaluate latency and optimize for a 100 ms SLA target. Whether you’re an aspiring MLOps engineer or a data scientist ready to bridge into deployment, this course gives you the hands-on confidence to deliver production-grade ML services that scale. You’ll strengthen the technical and analytical skills that modern AI teams need — automation, performance optimization, and service reliability — to stay competitive in the evolving ML operations landscape. By the end, you’ll not only deploy your own model confidently but also gain the credibility to manage real-world ML systems end-to-end.

What's included

7 videos3 readings5 assignments

7 videosTotal 31 minutes
  • Welcome and Course Overview3 minutes
  • From Model to Service — The RESTful Inference Journey 5 minutes
  • Continuous Integration — Testing for Confidence 3 minutes
  • What Does “Good Performance” Really Mean?5 minutes
  • Measuring Latency — Tools, Process, and Why It Matters6 minutes
  • Optimize with Confidence — Scaling and Container Tweaks6 minutes
  • Congratulations and Continuous Learning Journey 4 minutes
3 readingsTotal 17 minutes
  • Deploying Scikit-Learn Models as REST APIs with Fast API: A Developer’s Guide6 minutes
  • P50 vs P95 vs P99 Latency: What These Percentiles Actually Mean (And How to Use Them)5 minutes
  • How P90, P95, and P99 Shape System Performance6 minutes
5 assignmentsTotal 101 minutes
  • Graded Quiz: Inference Service Confidence Challenge 20 minutes
  • HOL: Build Your Inference API25 minutes
  • HOL: Automate, Build and Deploy with GitHub Actions 20 minutes
  • Practice Quiz: From Notebook to Production6 minutes
  • Hands-On Activity: Load Test, Optimize, and Validate Your ML Service30 minutes

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