A “ripple” that arrives too late or too soon, can have an impact the exact opposite of what is hoped.

Liset M de la Prida @LMPrida
Our latest paper with @acnavasolive & @adrubio1999 is out in @CommsBio A machine learning toolbox for the analysis of ripples across species https://nature.com/articles/s42003-024-05871-w In collaboration w @perpl_lab & @SAbbaspoor we found that AI algorithm trained in 🐁 could be applied to https://pic.twitter.com/MRVTgUOSkN
Replying to @LMPrida @acnavasolive and 4 others

Please look at all networks and processes in the real world on the Internet. They all can chain for many steps, affect billions. Statements or prompts out of context from a seemly safe source, can have large consequences. “Signals” or “messages” might be better than “ripples”.
 

Just being out of date, or without links and details for verification with reasonable time and effort – can change a safe source into a broken one. The AIs still are not open verifiable lossless or correctable by users — for all humans. Organizations, governments (organizations), industries (organizations), topic groups (organizations) all are making up and maintaining their own rules – mostly without feedback mechanisms of any sort. Let alone global open verifiable auditable ones with best in world, current methods.

A “ripple” that arrives too late or too soon, can have an impact the exact opposite of what is intended.

 
Richard Collins, The Internet Foundation
Richard K Collins

About: Richard K Collins

Director, The Internet Foundation Studying formation and optimized collaboration of global communities. Applying the Internet to solve global problems and build sustainable communities. Internet policies, standards and best practices.


Leave a Reply

Your email address will not be published. Required fields are marked *