niluwin / mle-for-production-mlops

Machine Learning Engineering for Production (MLOps) is an online non-credit specialization authorized by DeepLearning.AI and offered through Coursera

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Machine Learning Engineering for Production (MLOps)

Specialization

Become a Machine Learning expert. Productionize your machine learning knowledge and expand your production engineering capabilities.

Skills: Managing Machine Learning Production Systems, Deployment Pipelines, Model Pipelines, Data Pipelines, Machine Learning Engineering for Production, Human-level Performance (HLP), Concept Drift, Model Baseline, Project Scoping and Design, ML Deployment Challenges, ML Metadata, Convolutional Neural Network

Level: Advanced

  • Some knowledge of AI / deep learning
  • Intermediate skills in Python
  • Experience with any deep learning framework (PyTorch, Keras, or TensorFlow)

About This Specialization

Understanding machine learning and deep learning concepts is essential, but if you’re looking to build an effective AI career, you need production engineering capabilities as well.

Effectively deploying machine learning models requires competencies more commonly found in technical fields such as software engineering and DevOps. Machine learning engineering for production combines the foundational concepts of machine learning with the functional expertise of modern software development and engineering roles.

The Machine Learning Engineering for Production (MLOps) Specialization covers how to conceptualize, build, and maintain integrated systems that continuously operate in production. In striking contrast with standard machine learning modeling, production systems need to handle relentless evolving data. Moreover, the production system must run non-stop at the minimum cost while producing the maximum performance. In this Specialization, you will learn how to use well-established tools and methodologies for doing all of this effectively and efficiently.

In this Specialization, you will become familiar with the capabilities, challenges, and consequences of machine learning engineering in production. By the end, you will be ready to employ your new production-ready skills to participate in the development of leading-edge AI technology to solve real-world problems.

Applied Learning Project

By the end, you'll be ready to

  • Design an ML production system end-to-end: project scoping, data needs, modeling strategies, and deployment requirements
  • Establish a model baseline, address concept drift, and prototype how to develop, deploy, and continuously improve a productionized ML application
  • Build data pipelines by gathering, cleaning, and validating datasets
  • Implement feature engineering, transformation, and selection with TensorFlow Extended
  • Establish data lifecycle by leveraging data lineage and provenance metadata tools and follow data evolution with enterprise data schemas
  • Apply techniques to manage modeling resources and best serve offline/online inference requests
  • Use analytics to address model fairness, explainability issues, and mitigate bottlenecks
  • Deliver deployment pipelines for model serving that require different infrastructures
  • Apply best practices and progressive delivery techniques to maintain a continuously operating production system

Courses in This Specialization

  • Course 1 - Introduction to Machine Learning in Production
  • Course 2 - Machine Learning Data Lifecycle in Production
  • Course 3 - Machine Learning Modeling Pipelines in Production
  • Course 4 - Deploying Machine Learning Models in Production

About

Machine Learning Engineering for Production (MLOps) is an online non-credit specialization authorized by DeepLearning.AI and offered through Coursera

License:MIT License