[...] Anyone inclined to dismiss the idea that AI could take over creative jobs 
as scaremongering should know: it is already happening. [....]


<https://www.theguardian.com/commentisfree/2023/jan/02/robot-leonardo-da-vinci-masterpiece-ai-human-creativity-artists>

This month, the internet was flooded with stunningly ethereal digital art 
portraits, thanks to the work of the latest artificial intelligence-assisted 
application to go viral: Lensa. Users uploaded their photographs to the app and 
then – for a small fee – it used AI to transform their profile pictures into, 
say, a magical elfin warrior princess version of themselves, in no time at all.

This year has seen a breakthrough for AI-driven image generators, which are now 
better than ever in quality, speed and affordability. The AI models are 
“trained” on millions of pieces of image and text data scraped from publicly 
available content online, and as in the case of Microsoft-backed DALL-E, can 
turn short text prompts such as “Ronald McDonald performing open heart surgery” 
into unique images.

Anyone can now produce professional-looking images tailored to their desires, 
without having any training in art or design themselves. If that sounds great 
to you, you might not be one of the millions of humans whose livelihoods depend 
on being able to exchange those skills for money.

Those working in the more cognitive creative industries have long felt that 
they had nothing to fear from automation. After all, how could a computer ever 
recreate the aura of a masterpiece by Leonardo da Vinci, or possess the unique 
skill set required to devise a compelling visual marketing campaign for a 
luxury brand?

Early images generated with these tools were full of glitches that marked them 
out as machine-made. But as the results have become more convincing, creatives 
have grown more concerned. On the frontlines of this debate are gig workers 
such as graphic artists and commercial illustrators, who take art commissions 
based on client specifications.

Anyone inclined to dismiss the idea that AI could take over creative jobs as 
scaremongering should know: it is already happening. This winter, San Francisco 
Ballet used the independent research lab Midjourney to create the visual 
campaign for its production of The Nutcracker (although a representative for 
the ballet said that, despite using AI, nearly 30 human designers, producers, 
and creatives were also employed in the campaign’s making).

Another threat to artist livelihoods comes from these tools’ ability to create 
imagery “in the style of” specific artists. This functionality is fun when used 
to conjure up quirky visions of how Van Gogh might have painted Rishi Sunak 
riding into No 10 on a unicorn, but when it comes to living artists who have 
spent years developing their own distinctive style, the AI’s uncanny ability to 
mimic, without credit or compensation, becomes problematic.

Earlier this year, fantasy art illustrator Greg Rutkowski found out that his 
name was one of the most popular prompts on the AI platform Stable Diffusion – 
more popular than Picasso or Leonardo. “The only thing that could at least stop 
feeding the algorithm is to stop posting your work on the internet, which is 
impossible in our industry,” says Rutkowski.

The legal recourse for artists who feel these tools are infringing on their 
copyright is knotty and unclear. In the EU, lawyers are contesting the legality 
of using images under copyright for training AI models but as the UK bids to 
become an industry leader, it has already proposed a bill to allow carte 
blanche AI training for commercial purposes. Meanwhile it remains unclear if 
traditional copyright even applies here, as it is difficult to copyright a 
visual style.
Open AI’s representation of ‘A sea otter in the style of Girl With a Pearl 
Earing by Vermeer’.
Open AI’s representation of ‘A sea otter in the style of Girl With a Pearl 
Earing by Vermeer’. Photograph: OpenAI/AFP/Getty Images

While these issues have only recently garnered mainstream attention, there are 
factions of artists who predicted this when the field was still in its infancy, 
and have been working to develop solutions. Among them are Berlin-based artists 
Mat Dryhurst and Holly Herndon, who have created a search function that anyone 
can use to see whether their work has been scraped for a 150-terabyte dataset 
called LAION, which is used to train most AI image generators. Their 
organisation, Spawning, is also developing another tool that would allow 
artists to set permissions on how their style and likeness can be used by the 
algorithms, including the option to opt out entirely.

Both Stability AI – the organisation behind Stable Diffusion – and LAION have 
committed to partner with Spawning to honour consent requests made in advance 
of the next training of Stable Diffusion, and a recent update to the tool 
removed the ability to write prompts that specify an artist by name.

There are other flaws in the vast open datasets on which the AI models are 
trained, which limit its potential. Deficiencies in the diversity of the data, 
as well as biases held by the humans who originally labelled the images it 
learns from, have unwittingly coded the models with harmful stereotypes and 
representations. Some users are finding that Lensa creates overly sexualised 
female avatars, exaggerates racial phenotypes in its outputs, and has 
difficulty reading mixed-race features. Such issues might give pause to anyone 
thinking of using the technology for commercial purposes – at least until the 
training datasets are improved.
The Guardian view on ChatGPT: an eerily good human impersonator | Editorial
Read more

Many artists remain unfazed, and in fact believe the technology could open up 
possibilities for them to make better work, or at least to work more 
efficiently. Though she has not used it yet, the UK-based illustrator Michelle 
Thompson sees potential in the idea of using AI both to develop concepts and to 
refine artistic outputs. “I see it less as a threat and more of an 
opportunity,” she said, adding: “Like everything else, there will always be 
artists who can use the tools better.”

These tools are only as good as the datasets they are trained on. Human 
imagination, on the other hand, has no limit. For Dryhurst, AI models “could 
attempt to make a pale version of something we did years ago,” but that 
“doesn’t account for what we might do next”.

For those watching closely, the visual outputs of these widely available AI 
tools are already getting repetitive, and even untrained eyes will learn soon 
to recognise the hand of the machine. Some of the most interesting and 
conceptually rich work being made with AI is still coming from artists such as 
Mario Klingemann and Anna Ridler, who are customising their own training 
datasets, and curating the machine outputs in imaginative ways.

The kind of artificial intelligence we might imagine replacing artists – an 
entirely autonomous creative robot capable of human-like imagination and 
expression – does not yet exist, but it is coming. And as AI becomes more 
ubiquitous, artists, illustrators and designers will ultimately be set apart 
not by if, but by how, they use the technology.

    Naomi Rea is European market editor at Artnet News, an online art industry 
newswire
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