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/stares in smart glasses
/stares in smart glasses
WebP is a raster graphics file format developed by Google intended as a replacement for JPEG, PNG, and GIF file formats. It supports both lossy and lossless compression, as well as animation and alpha transparency. Google announced the WebP format in September 2010, and released the first stable version of its supporting library in April 2018.
The format has spotty support across applications and some vulnerabilities were discovered that required patch efforts last year. It’s not clear why you should do anything.
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Humans are really bad at determining whether a chat is with a human or a bot
Eliza is not indistinguishable from a human at 22%.
Passing the Turing test stood largely out of reach for 70 years precisely because Humans are pretty good at spotting counterfeit humans.
This is a monumental achievement.
As long as no one messes with their open source contributions… (ditto for MS)
To the one person who upvoted this: We should be friends.
Aye, I’d wager Claude would be closer to 58-60. And with the model probing Anthropic’s publishing, we could get to like ~63% on average in the next couple years? Those last few % will be difficult for an indeterminate amount of time, I imagine. But who knows. We’ve already blown by a ton of “limitations” that I thought I might not live long enough to see.
Participants only said other humans were human 67% of the time.
On the other hand, the human participant scored 67 percent, while GPT-3.5 scored 50 percent, and ELIZA, which was pre-programmed with responses and didn’t have an LLM to power it, was judged to be human just 22 percent of the time.
54% - 67% is the current gap, not 54 to 100.
/looks around - That doesn’t seem to be the case. A.I. has a better chance of repositioning the social locus of control.
Thank you, I seldom see my own thoughts laid out so clearly. As a practitioner of the Dark Arts (marketing), this union of commerce and art is a foul bargain. I think it’s time the two had some time apart to work on themselves.
I’ve consulted the oracles, and we’re going with 2006.
It seems to me that we’ve reached a crossroads. I’ve been very aware of the data mining, garden walls, data trading, privacy violations, security issues, ownership issues, etc. - for roughly 30 years. I regularly make the choice to be exploited for the benefits I extract, largely because the data they’ve gotten from me thus far I don’t highly value. But the necessity to develop strategies to keep the devil’s bargain beneficial has reached a fevered pitch. I want to train my own AI and public AIs. I want to explore the vast higher dimensional semantic spaces of generative models without API charges. APIs are vanishing as we speak, anyway, companies fearful of their data being extracted without compensation. Can’t really sit on the Open/Closed fence anymore.
I understand this perspective, because the text, image, audio, and video generators all default to the most generic solution. I challenge you to explore past the surface with the simple goal of examining something you enjoy from new angles. All of the interesting work in generative AI is being done at the edges of the models’ semantic spaces. Avoid getting stuck in workflows. Try new ones regularly and compare their efficacies. I’m constantly finding use cases that I end up putting to practical use - sometimes immediately, sometimes six months later when the need arises.
I just meant I work for a corporation. I produce videos for marketing, been doing it for 25 years.
What tasks are you thinking about?
I am legion.