Production Machine Learning Systems

Course Modality

Instructor-led (classroom)

Course Level

Advanced

Course Time

8 hours

Course Language

English

Course Overview

In the second course of this specialization, we will dive into the components and best practices of a high-performing ML system in production environments

Prerequisites

 Basic SQL, familiarity with Python and TensorFlow

Why The DataTech Labs ?

Self-Paced Online Video

A 360-degree learning approach that you can adapt to your learning style

A 360-degree learning approach that you can adapt to your learning style

Engage and learn more with these live and highly-interactive classes alongside your peers

24/7 Teaching Assistance

24/7 Teaching Assistance Keep engaged with integrated teaching

Online Practice Labs

Projects provide you with sample work to show prospective employers.

Applied Projects

Real-world projects relevant to what you’re learning throughout the program

Learner Social Forums

A support team focused on helping you succeed alongside a peer community

Get In Touch

Course Curriculum

Welcome to the course

In this module we will preview the topics covered in the course and how to use Qwiklabs to complete each of your labs using Google Cloud Platform.

Welcome to the course

In this module we will preview the topics covered in the course and how to use Qwiklabs to complete each of your labs using Google Cloud Platform.

Architecting Production ML Systems

In this module, we’ll talk about what else a production ML system needs to do and how you can meet those needs. We’ll then review some important, high-level, design decisions around training and model serving that you’ll need to make in order to get the right performance profile for your model.

Ingesting data for Cloud-based analytics and ML

In this module, we’ll talk about how to bring your data to the cloud. There are many ways to bring your data into cloud to power your machine learning models. We’ll first review why your data needs to be on the cloud to get the advantages of scale and using fully-managed services and what options you have to bring your data over. 

Designing Adaptable ML systems

In this module, we’ll learn how to recognize the ways that our model is dependent on our data, make cost-conscious engineering decisions, know when to roll back our models to earlier versions, debug the causes of observed model behavior and implement a pipeline that is immune to one type of dependency.

Designing High-performance ML systems

In this module, you will learn how to identify performance considerations for machine learning models. 

Machine learning models are not all identical. For some models, you will be focused on improving I/O performance, and on others, you will be focused on squeezing out more computational speed.

Hybrid ML systems

Understand the tools and systems available and when to leverage hybrid machine learning models.

Recommended Exams

Machine Learning Engineer

Professional Machine Learning EngineerBETA

A Professional Machine Learning Engineer designs, builds, and productionizes ML models to solve business challenges using Google Cloud technologies and knowledge of proven ML models and techniques. The ML Engineer is proficient in all aspects of model architecture, data pipeline interaction, and metrics interpretation and needs familiarity with application development, infrastructure management, data engineering, and security.

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