Sep 9–12, 2019

AI for managers

Nicholas Cifuentes-Goodbody (The Data Incubator)
Monday, Sep 9 & Tuesday, Sep 10,
9:00am - 5:00pm
Location: 111
Secondary topics:  Ethics, Security, and Privacy
SOLD OUT

Participants should plan to attend both days of this 2-day training course. To attend training courses, you must register for a Platinum or Training pass; does not include access to tutorials on Tuesday.

Nicholas Cifuentes-Goodbody leads you through a nontechnical overview of AI and data science. You’ll learn how to apply common techniques in organization and common pitfalls. You’ll pick up the language and develop a framework to effectively engage with technical experts and use their input and analysis for your business’s strategic priorities and decision making.

What you'll learn, and how you can apply it

  • Identify and prioritize which projects your company should pursue and identify potential pitfalls in your projects before you start
  • Learn to communicate business objectives to data professionals and translate data science insights for business professionals and decision makers
  • Understand the business implications of technical decisions
  • Be able to assess the risk-reward trade-offs of different projects

Who is this presentation for?

  • You're a business professional who wants to learn about big data.
  • You work with data scientists or analysts regularly.
  • You manage teams or projects with a significant data component.
  • You find yourself translating between data and management.

Level

Beginner

Outline

Introduction to AI and data science

  • Terms and definitions: What does machine learning mean?
  • Historical context and present day
  • Drivers for AI and data science
  • What’s so different about big data?
  • AI is eating the world
  • Making AI practical

Algorithms and techniques

  • Data formats, databases, and schemas
  • Evaluating model performance and validating models
  • Terminology: Regression, classification, supervised, and unsupervised
  • Advanced models: Random forests, support vector machines, deep learning, and neural networks

Industry use cases

  • Finance
  • Healthcare
  • Industrial
  • Technology

AI within the organization

  • Maturity levels for AI
  • Evaluating good projects for AI
  • Build versus buy and hire versus train
  • Skills, tools, and platforms needed for AI
  • Structuring data and AI initiatives within your organization: Successful and cautionary tales

Common pitfalls and fallacies in AI and data science

  • AI and data science in the headlines: The good, the bad, and the ugly
  • Legal and regulatory implications
  • Litigation and liabilities of bad data science
  • Common fallacies in data science and AI
  • Lying with statistics and how to spot it

About your instructor

Photo of Nicholas Cifuentes-Goodbody

Nicholas Cifuentes-Goodbody is a data scientist in residence at the Data Incubator. He’s taught English in France, Spanish in Qatar, and now data science all over the world. Previously, he was at Williams College, Hamad bin Khalifa University (Qatar), and the University of Southern California. He earned his PhD at Yale University. He lives in Los Angeles with his amazing wife and their adorable pit bull.

Conference registration

Get the Platinum pass or the Training pass to add this course to your package.

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Comments

Picture of Nicholas Cifuentes-Goodbody
Nicholas Cifuentes-Goodbody | Data Scientist in Residence
09/03/2019 9:09am PDT

Hi everyone. Looking forward to meeting you all in San Jose.

There is nothing that you need to download in preparation for our course. Just bring something to take notes. After the conference, I will post the slides on our training page. If you have questions before next week, please feel free to share them here.

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