Login Sign Up

Machine Learning in Production

DeepLearning.AI via Coursera

Coursera based on 3,244 ratings

Share

0

Overview

In this Machine Learning in Production course, you will build intuition about designing a production ML system end-to-end: project scoping, data needs, modeling strategies, and deployment patterns and technologies. You will learn strategies for addressing common challenges in production like establishing a model baseline, addressing concept drift, and performing error analysis. Youll follow a framework for developing, deploying, and continuously improving a productionized ML application. Understanding machine learning and deep learning concepts is essential, but if youre looking to build...

Syllabus

  • Week 1: Overview of the ML Lifecycle and Deployment
    • This week covers a quick introduction to machine learning production systems focusing on their requirements and challenges. Next, the week focuses on deploying production systems and what is needed to do so robustly while facing constantly changing data.
  • Week 2: Modeling Challenges and Strategies
    • This week is about model strategies and key challenges in model development. It covers error analysis and strategies to work with different data types. It also addresses how to cope with class imbalance and highly skewed data sets.
  • Week 3: Data Definition and Baseline
    • This week is all about working with different data types and ensuring label consistency for classification problems. This leads to establishing a performance baseline for your model and discussing strategies to improve it given your time and resources constraints. This week also includes the final end-to-end project.
Machine Learning in Production
Go to Class

DeepLearning.AI via Coursera

11 hours 12 minutes

Paid Certificate Available

English

On-Demand

Intermediate

Instructor

Andrew Ng

Reviews

No reviews yet. Be the first to review!