Skip to content

Latest commit

 

History

History
18 lines (13 loc) · 564 Bytes

File metadata and controls

18 lines (13 loc) · 564 Bytes
description
According to a 2019 report, 85% of AI projects fail to deliver on their intended promises to business. Why do so many projects fail?

Overview

{% embed url="https://youtu.be/c5bZO95kKY8" caption="Overview - ML Projects" %}

Summary

  • ML is still research, therefore it is very challenging to aim for 100% success rate.
  • Many ML projects are technically infeasible or poorly scoped.
  • Many ML projects never make the leap into production.
  • Many ML projects have unclear success criteria.
  • Many ML projects are poorly managed.