This repository contains training material related to Azure and Machine Learning
Перейти к файлу
microsoft-github-policy-service[bot] 5ffe9948a6
Auto merge mandatory file pr
This pr is auto merged as it contains a mandatory file and is opened for more than 10 days.
2023-03-28 16:45:54 +00:00
agendas fixed more links 2019-10-23 18:38:15 +00:00
devops Merged PR 206466: Release Gates 2019-05-01 07:45:29 +00:00
hackathon Start folder restructuring (not done yet) 2019-03-01 10:51:27 -08:00
images Merged PR 206466: Release Gates 2019-05-01 07:45:29 +00:00
presenter updated links 2019-10-23 18:34:46 +00:00
slides Renamed Azure Machine Learning Service.pptx to AML_service.pptx 2019-04-12 00:58:02 +00:00
.gitignore Add pre-requisites to README landing page 2019-03-21 11:09:50 -07:00
README.md Update README.md 2021-01-14 08:44:36 -08:00
SECURITY.md Microsoft mandatory file 2023-01-24 16:42:25 +00:00
_config.yml Added file _config.yml 2019-04-30 23:20:43 +00:00

README.md

Disclaimer: This repository is not actively maintained anymore. For an up-to-date introduction to AzureML, please see the official product documentation and example notebooks.

Introduction

Welcome to the ACE-team training on Azure Machine Learning (AML) service.

The material presented here is a deep-dive which combine real-world data science scenarios with many different technologies including Azure Databricks (ADB), Azure Machine Learning (AML) Services and Azure DevOps, with the goal of creating, deploying, and maintaining end-to-end data science and AI solutions.

Anomaly Detection in structured data

  • The data scientist has been tasked to develop a predictive maintenance (PdM) solution for a large set of production machines on a manufacturing floor.

  • The data scientist was asked to create a PdM solution that is executed weekly, to develop a maintenance schedule for the next week.

  • Previous experience suggests that anomalies in the telemetry data collected on each machine are indicative of impending catastrophic failures. The data scientist was therefore asked to include anomaly detection in their solution.

  • The organization also asked for a real-time anomaly detection service, to enable immediate machine inspection before the beginning of the next maintenance cycle.

Note: Anomaly detection can also be performed on unstructured data. One example is to detect unusual behavior in videos, like a car driving on a sidewalk, or violation of safety protocols on a manufacturing floor. If you are interested in this use case, please go to this repo: https://github.com/Microsoft/MLOps_VideoAnomalyDetection

Agendas

Please go to this page to find alternative agendas around the above use-cases.

References

Pre-requisites

Knowledge/Skills

You will need this basic knowledge:

  1. Basic data science and machine learning concepts.
  2. Moderate skills in coding with Python and machine learning using Python.
  3. Familiarity with Jupyter Notebooks and/or Databricks Notebooks.
  4. Familiarity with Azure databricks.
  5. Basic skills using Git version control.

If you do not have any of the above pre-requisites, please find below links:

  1. To Watch: Data Science for Beginners
  2. To Watch: Get Started with Azure Machine Learning
  3. To Watch: Python for Data Science: Introduction
  4. To Watch: Jupyter Notebook Tutorial: Introduction, Setup, and Walkthrough
  5. To Do: Go to [https://notebooks.azure.com/] and create and run a Jupyter notebook with Python
  6. To Watch: Azure Databricks: A brief introduction
  7. To Read (10 mins): Git Handbook

Infrastructure

  1. An Azure Subscription (unless provided to you).
  2. If you are not provided with a managed lab environment (course invitation will specify), then follow these instructions for configuring your development environment prior to the course or if you do it on your own. You will need an Azure Subscription (unless one is provided to you). Pay particular attention to version numbers, such as the version of the Spark runtime.

Contribute

We invite everybody to contribute.