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. You’ll follow a framework for developing, deploying, and continuously improving a productionized ML application.
Machine Learning in Production
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3,363 reviews
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What you'll learn
Identify key components of the ML project lifecycle, pipeline & select the best deployment & monitoring patterns for different production scenarios.
Optimize model performance and metrics by prioritizing disproportionately important examples that represent key slices of a dataset.
Solve production challenges regarding structured, unstructured, small, and big data, how label consistency is essential, and how you can improve it.
Skills you'll gain
- MLOps (Machine Learning Operations)
- Continuous Deployment
- Data Maintenance
- Application Deployment
- Data Integrity
- Unstructured Data
- Model Training
- Data Synthesis
- Data Quality
- Model Evaluation
- Data Collection
- Data Validation
- Data Preprocessing
- Model Optimization
- System Monitoring
- Machine Learning
- Continuous Monitoring
- Applied Machine Learning
Tools you'll learn
Details to know

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There are 3 modules in this course
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Felipe M.

Jennifer J.

Larry W.

Chaitanya A.
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Reviewed on May 20, 2021
Practical and well-structured advices throughout the lifecycle of ML. Examples from real world problems & experiences make the advices more tangible and helps to reflect on own problems.
Reviewed on Mar 4, 2023
Good refresher if you already work in ML. A bit longish and could have been shortened.I found the code provided useful to remind the use of KerasIn short, solid but not super mandatory
Reviewed on Jun 11, 2022
Good intro on key concept in MLOps. Would recommend it to anyone who is stepping into this field as well as for ML Hobbists to understand the main challenges of a ML production system



