The Intelligence Life Cycle and the Limitations of AI


Details
Agenda
We'll gather beginning at 6:30 in the Alessi Kitchen (La Cucina) for some food and non-alcoholic beverages. A little after 7 we'll convene in the dining room for the presentation followed by...?
The presentation will last for 45 minutes to an hour. After that we have several options for people that are able to stay:
- Take a break and continue the discussion as a group in the meeting room
- Adjorn to the kitchen for small group discussions
- Head to a bar :)
Doctor Quintana's presentation:
“The Intelligence Life Cycle and the Limitations of AI”
Abstract
What is the Intelligence Life Cycle? How do we define Data, Information, and Knowledge? Are they the same? These terms have been used interchangeably, but while they are close, they are not the same.
The Intelligence Life Cycle (ILC) consists of four blocks: “Data, Information, Knowledge, and Wisdom.”
This presentation offers clear, precise, and simple definitions of these terms using an axiomatic model that allows us to show the scope and limitations of AI. The ILC model helps explain some of the pitfalls when addressing Big Data. A brief exposition of the major developments of AI and Data is also discussed.
How are advances in LLM and, in particular, in GPT going to impact IT professionals? What is the minimum knowledge of data processing and analysis that the knowledge workers of the 21st century need to remain competitive?
We are witnessing a shift from Know-How to the What and Why. In the era of automation and AI, we need more WISDOM than KNOWLEDGE.
Objective 1 - Axiomatic hypothesis to demonstrate the Scopes and Limitations of AI
Objective 2 - Eliminate the confusion regarding the use of the terms Data, Information, and Knowledge, which, while similar, are not the same.
Objective 3 - Explain and define the different blocks of the ILC: Data, Information, Knowledge, Wisdom, and the role of AI in the ILC.
Objective 4 - Using the ILC model, present my theory of The Intelligence Life Cycle.
BIO
http://www.linkedin.com/in/FrankQuintanaDataArchitect
Doctor Quintana has been involved in optimization and mathematical modeling since the 90s. He is a former IT University professor at the Technological University of America in South Florida where he taught Databases, Data Mining, and Knowledge Discovery. He worked as a research engineer at Memorial University of Newfoundland. He also worked as a consultant in the role of a technical team leader and software architect for EDS. He was one of the software architects who built and designed "The Benefit System for the Veteran Affairs of Canada."
COVID-19 safety measures

The Intelligence Life Cycle and the Limitations of AI