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MLOps1 (Azure): Deploying AI & ML Models in Production using Microsoft Azure Machine Learning
edX
Course
Intermediate
Free to Audit
Certificate

MLOps1 (Azure): Deploying AI & ML Models in Production using Microsoft Azure Machine Learning

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Most data science projects fail. There are various reasons why, but one of the primary reasons is the challenge of deployment. One piece to the deployment puzzle is understanding how data engineers can effectively work with data scientists to monitor and iterate on model performance, which is why we developed this course: MLOps1 (Azure) - Deploying AI & ML Models in Production using Microsoft Azure Machine Learning

6 hrs/week4 weeksEnglish2,990 enrolled
Free to Audit

About this Course

This is the second of three courses in the Machine Learning Operations Program using Azure Machine Learning. Data Science, AI, and Machine Learning projects can deliver an amazing return on investment. But, in practice, most projects that look great in the lab (and would work if implemented!) never see the light of day. They could save or make the organization millions of dollars but never make it all the way into production. What’s going on? It turns out that making decisions in a whole new way is a big challenge to implement--for many technical, business andhuman-naturereasons. After decades of experience though, our team has learned how to turn this around and actually get working models into production the great majority of the time. A key part of deployment is excellence in data engineering, and is why we developed this course: MLOps1 (Azure): Deploying AI & ML Models in Production using Microsoft Azure Machine Learning. You will get hands on experience with topics like data pipelines, data and model “versioning”, model storage, data artifacts, and more. Most importantly, by the end of this course, you will know... What data engineers need to know to work effectively with data scientists How to embed a predictive model in a pipeline that takes in data and outputs predictions automatically How to moniter the model’s performance and follow best practices 3b:T220d

What You'll Learn

  • What data engineers need to know in order to work effectively with data scientists
  • How to use a machine learning model to make predictions
  • How to embed that model in a pipeline that takes in data and outputs predictions automatically
  • How to measure the performance of the model and the pipeline, and how to log those metrics
  • How to follow best practices for “versioning” the model and the data
  • How to track and store model and data artifacts

Prerequisites

  • Predictive Analytics: Basic Modeling Techniques
  • Participants should be comfortable working with Python in a cloud-based environment, and will gain maximum benefit if they have some familiarity with software development, including git, logging, testing, debugging, code optimization and security.

Instructors

J

John Elder, IV

Chairman of the Board and Founder

P

Peter Bruce

Chief Learning Officer

S

Shree Taylor

Vice President, Government Analytics & Innovation

B

Bryce Pilcher

Senior Data Engineer

Topics

Machine Learning
Software Versioning
Microsoft Azure
Data Engineering
Forecasting
Return On Investment
Artificial Intelligence
Operations
Data Science

Course Info

PlatformedX
LevelIntermediate
PacingUnknown
CertificateAvailable
PriceFree to Audit

Skills

تعلم الآلة
إدارة إصدارات البرمجيات
Microsoft Azure
هندسة البيانات
التنبؤ
Return On Investment
Artificial Intelligence
Operations
Data Science

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