Fabric demo May 2023
GitHub - PluripotentAGI/PolyGPT-alpha: Use PolyGPT today 🚀
Josephrp
Tonic
Josephrp - Overview
princepspolycap (princepspolycap) / Repositories · GitHub
Speaking — Rachel Gogel
Chris Harvey on LinkedIn: #venturecapital
cases
Steve Mills on Twitter
X
Kevaby on Twitter
Reverse Prompt Lookup: How to Get Prompts From AI Images (Image-to-Prompt)
An Animated Chef Leads You Through an Immersive 5-Course Meal at This Chicago Dinner Experience
Skullmapping
Matthew Hipp on LinkedIn: #hiring #musicindustry #recordlabel #opportunities | 53 comments
HTI Book | Chapter 4
Springer - International Publisher Science, Technology, Medicine | Springer — International Publisher
Publish a book | Publish your research | Springer Nature
Instructions for Authors: Manuscript Guidelines | Springer — International Publisher
A call for an open debate on open science (opinion)
Three Questions To Ask Yourself Before Launching A Generative AI Project
The Friendship Bracelet Movement: Business Lessons From Taylor Swift
Leveraging AI And VR In The Recruitment Space
Constraint on local definitions of quantum internal energy
X
Pavel on X
Rafi on X
HopeCard public beta goes live connecting Web2 and Web3 for crypto users
Artificial General Intelligence (AGI) Is One Prompt Away
Historically, the two were separate endeavors. AI represented, for example, search-and-calculate algorithms like chess programs that could beat humans, while ML represented statistical techniques to predict responses to new inputs from a training dataset.
The confusion between AI and ML came about because of deep learning, an extension of neural networks to allow for hierarchical connections between layers of neurons, and trained on exponentially more data than before.
Deep learning (DL) was a major innovation and many began to elevate DL out of ML and equate it with AI.
The real interesting G is in artificial general intelligence (AGI). An AGI is more than a generative tool.
It is a person. You might think of it as a digital person or a silicon-based person rather than our more familiar carbon-based people, but it’s literally a person. It has sentience and consciousness. It can generate new knowledge. It can think and feel and joke and love. It has rights. It’s alive.
This is exactly what people used to mean by “AI” until AI beat humans at chess and Go and art and poetry and we kept moving the goalpost. This aspirational “true” AI is now called AGI.
This is what is meant by “the alignment problem.” Unaligned AGI’s may enslave us or kill us, perhaps even thinking it is for our own good. Hinton raises another possibility: they will be so good at persuasion, they’ll be able to convince us to do anything.
We have always been “just one program” away from AGI. But now we know that we are “just one prompt” away.
Words that deserve wider use
The Commoditization of the Software Stack: How Application-First Cloud Services are Changing the Game
Bitcoin: Will these reasons expedite mass adoption?