Skip to content Skip to site navigation Skip to service navigation

Artificial Intelligence and Machine Learning Basics for Non-Technical Professionals

New session times will be displayed below upon confirmation.

Most Technology Training classes will be delivered online until further notice.

Before each sesson, Tech Training will provide a Zoom link for live online classes, along with any required class materials.

 


This course provides a fun and non-technical introduction to Artificial Intelligence and Machine Learning. It provides the vocabulary and basics for this exciting new world.

Prerequisite: Basic programming knowledge preferred

This Artificial Intelligence (AI) and Machine Learning (ML) class helps in awareness about AI and ML patterns and use cases in real world. You will get an understanding of ML concepts like Supervised and Unsupervised learning techniques and usages. We will discuss the difference between AI vs ML vs Deep Learning (DL) along with usage patterns. We will help you expand your vocabulary in AI to understand techniques like Classification, Clustering and Regression. Finally, we would do a ML demo to illustrate few tools and next steps.

 

In this course, you will have an opportunity to learn how to:

  • Describe Supervised and Unsupervised learning techniques and usages
  • Compare AI vs ML vs DL
  • Understand techniques like Classification, Clustering and Regression
  • Discuss how to identify which kinds of technique to be applied for specific use case
  • Understand the popular Machine offerings like Amazon Machine Learning, TensorFlow, Azure Machine Learning, Spark mlib, Python and R etc.
  • Understand the relation between Data Engineering and Data Science
  • Understand the Data Science process
  • Discuss Machine Learning use cases in different domains
  • Identify when to use or not use Machine Learning
  • Define how to form a ML team for success
  • Understand usage of tools through a ML Demo and hands-on labs.

 

Topic Outline:

  • Course Introduction
  • History and background of AI and ML
  • Compare AI vs ML vs DL
  • Describe Supervised and Unsupervised learning techniques and usages
  • Machine Learning patterns
    - Classification
    - Clustering
    - Regression
  • Gartner Hype Cycle for Emerging Technologies
  • Machine Learning offerings in Industry
  • Discuss Machine Learning use cases in different domains
  • Understand the Data Science process to apply to ML use cases
  • Understand the relation between Data Engineering and Data Science
  • Identify the different roles needed for successful ML project
  • Hands-on: Create account for Microsoft Azure Machine Learning Studio
  • Demo: ML using Azure ML studio
  • Demo: ML using Scikit-learn
  • References and Next steps

Custom training workshops are available for this program

Technology training sessions structured around individual or group learning objectives. Learn more about custom training


University IT Technology Training sessions are available to a wide range of participants, including Stanford University staff, faculty, students, and employees of Stanford Hospitals & Clinics, such as Stanford Health Care, Stanford Health Care Tri-Valley, Stanford Medicine Partners, and Stanford Medicine Children's Health.

Additionally, some of these programs are open to interested individuals not affiliated with Stanford, allowing for broader community engagement and learning opportunities.