AI

‘Embarrassing and wrong’: Google admits it lost control of image-generating AI

Comment

Image Credits: Adobe Firefly generative AI / composite by TechCrunch

Google has apologized (or come very close to apologizing) for another embarrassing AI blunder this week, an image-generating model that injected diversity into pictures with a farcical disregard for historical context. While the underlying issue is perfectly understandable, Google blames the model for “becoming” oversensitive. But the model didn’t make itself, guys.

The AI system in question is Gemini, the company’s flagship conversational AI platform, which when asked calls out to a version of the Imagen 2 model to create images on demand.

Recently, however, people found that asking it to generate imagery of certain historical circumstances or people produced laughable results. For instance, the Founding Fathers, who we know to be white slave owners, were rendered as a multi-cultural group, including people of color.

This embarrassing and easily replicated issue was quickly lampooned by commentators online. It was also, predictably, roped into the ongoing debate about diversity, equity, and inclusion (currently at a reputational local minimum), and seized by pundits as evidence of the woke mind virus further penetrating the already liberal tech sector.

Image Credits: An image generated by Twitter user Patrick Ganley.

It’s DEI gone mad, shouted conspicuously concerned citizens. This is Biden’s America! Google is an “ideological echo chamber,” a stalking horse for the left! (The left, it must be said, was also suitably perturbed by this weird phenomenon.)

But as anyone with any familiarity with the tech could tell you, and as Google explains in its rather abject little apology-adjacent post today, this problem was the result of a quite reasonable workaround for systemic bias in training data.

Say you want to use Gemini to create a marketing campaign, and you ask it to generate 10 pictures of “a person walking a dog in a park.” Because you don’t specify the type of person, dog, or park, it’s dealer’s choice — the generative model will put out what it is most familiar with. And in many cases, that is a product not of reality, but of the training data, which can have all kinds of biases baked in.

What kinds of people, and for that matter dogs and parks, are most common in the thousands of relevant images the model has ingested? The fact is that white people are over-represented in a lot of these image collections (stock imagery, rights-free photography, etc.), and as a result the model will default to white people in a lot of cases if you don’t specify.

That’s just an artifact of the training data, but as Google points out, “because our users come from all over the world, we want it to work well for everyone. If you ask for a picture of football players, or someone walking a dog, you may want to receive a range of people. You probably don’t just want to only receive images of people of just one type of ethnicity (or any other characteristic).”

Illustration of a group of people recently laid off and holding boxes.
Imagine asking for an image like this — what if it was all one type of person? Bad outcome! Image Credits: Getty Images / victorikart

Nothing wrong with getting a picture of a white guy walking a golden retriever in a suburban park. But if you ask for 10, and they’re all white guys walking goldens in suburban parks? And you live in Morocco, where the people, dogs, and parks all look different? That’s simply not a desirable outcome. If someone doesn’t specify a characteristic, the model should opt for variety, not homogeneity, despite how its training data might bias it.

This is a common problem across all kinds of generative media. And there’s no simple solution. But in cases that are especially common, sensitive, or both, companies like Google, OpenAI, Anthropic, and so on invisibly include extra instructions for the model.

I can’t stress enough how commonplace this kind of implicit instruction is. The entire LLM ecosystem is built on implicit instructions — system prompts, as they are sometimes called, where things like “be concise,” “don’t swear,” and other guidelines are given to the model before every conversation. When you ask for a joke, you don’t get a racist joke — because despite the model having ingested thousands of them, it has also been trained, like most of us, not to tell those. This isn’t a secret agenda (though it could do with more transparency), it’s infrastructure.

Where Google’s model went wrong was that it failed to have implicit instructions for situations where historical context was important. So while a prompt like “a person walking a dog in a park” is improved by the silent addition of “the person is of a random gender and ethnicity” or whatever they put, “the U.S. Founding Fathers signing the Constitution” is definitely not improved by the same.

As the Google SVP Prabhakar Raghavan put it:

First, our tuning to ensure that Gemini showed a range of people failed to account for cases that should clearly not show a range. And second, over time, the model became way more cautious than we intended and refused to answer certain prompts entirely — wrongly interpreting some very anodyne prompts as sensitive.

These two things led the model to overcompensate in some cases, and be over-conservative in others, leading to images that were embarrassing and wrong.

I know how hard it is to say “sorry” sometimes, so I forgive Raghavan for stopping just short of it. More important is some interesting language in there: “The model became way more cautious than we intended.”

Now, how would a model “become” anything? It’s software. Someone — Google engineers in their thousands — built it, tested it, iterated on it. Someone wrote the implicit instructions that improved some answers and caused others to fail hilariously. When this one failed, if someone could have inspected the full prompt, they likely would have found the thing Google’s team did wrong.

Google blames the model for “becoming” something it wasn’t “intended” to be. But they made the model! It’s like they broke a glass, and rather than saying “we dropped it,” they say “it fell.” (I’ve done this.)

Mistakes by these models are inevitable, certainly. They hallucinate, they reflect biases, they behave in unexpected ways. But the responsibility for those mistakes does not belong to the models — it belongs to the people who made them. Today that’s Google. Tomorrow it’ll be OpenAI. The next day, and probably for a few months straight, it’ll be X.AI.

These companies have a strong interest in convincing you that AI is making its own mistakes. Don’t let them.

More TechCrunch

Creative Artists Agency (CAA), one of the top entertainment and sports talent agencies, is hoping to be at the forefront of AI protection services for celebrities in Hollywood. With many…

Hollywood agency CAA aims to help stars manage their own AI likenesses

Expedia says Rathi Murthy and Sreenivas Rachamadugu, respectively its CTO and senior vice president of core services product & engineering, are no longer employed at the travel booking company. In…

Expedia says two execs dismissed after ‘violation of company policy’

Welcome back to TechCrunch’s Week in Review. This week had two major events from OpenAI and Google. OpenAI’s spring update event saw the reveal of its new model, GPT-4o, which…

OpenAI and Google lay out their competing AI visions

When Jeffrey Wang posted to X asking if anyone wanted to go in on an order of fancy-but-affordable office nap pods, he didn’t expect the post to go viral.

With AI startups booming, nap pods and Silicon Valley hustle culture are back

OpenAI’s Superalignment team, responsible for developing ways to govern and steer “superintelligent” AI systems, was promised 20% of the company’s compute resources, according to a person from that team. But…

OpenAI created a team to control ‘superintelligent’ AI — then let it wither, source says

A new crop of early-stage startups — along with some recent VC investments — illustrates a niche emerging in the autonomous vehicle technology sector. Unlike the companies bringing robotaxis to…

VCs and the military are fueling self-driving startups that don’t need roads

When the founders of Sagetap, Sahil Khanna and Kevin Hughes, started working at early-stage enterprise software startups, they were surprised to find that the companies they worked at were trying…

Deal Dive: Sagetap looks to bring enterprise software sales into the 21st century

Keeping up with an industry as fast-moving as AI is a tall order. So until an AI can do it for you, here’s a handy roundup of recent stories in the world…

This Week in AI: OpenAI moves away from safety

After Apple loosened its App Store guidelines to permit game emulators, the retro game emulator Delta — an app 10 years in the making — hit the top of the…

Adobe comes after indie game emulator Delta for copying its logo

Meta is once again taking on its competitors by developing a feature that borrows concepts from others — in this case, BeReal and Snapchat. The company is developing a feature…

Meta’s latest experiment borrows from BeReal’s and Snapchat’s core ideas

Welcome to Startups Weekly! We’ve been drowning in AI news this week, with Google’s I/O setting the pace. And Elon Musk rages against the machine.

Startups Weekly: It’s the dawning of the age of AI — plus,  Musk is raging against the machine

IndieBio’s Bay Area incubator is about to debut its 15th cohort of biotech startups. We took special note of a few, which were making some major, bordering on ludicrous, claims…

IndieBio’s SF incubator lineup is making some wild biotech promises

YouTube TV has announced that its multiview feature for watching four streams at once is now available on Android phones and tablets. The Android launch comes two months after YouTube…

YouTube TV’s ‘multiview’ feature is now available on Android phones and tablets

Featured Article

Two Santa Cruz students uncover security bug that could let millions do their laundry for free

CSC ServiceWorks provides laundry machines to thousands of residential homes and universities, but the company ignored requests to fix a security bug.

2 days ago
Two Santa Cruz students uncover security bug that could let millions do their laundry for free

TechCrunch Disrupt 2024 is just around the corner, and the buzz is palpable. But what if we told you there’s a chance for you to not just attend, but also…

Harness the TechCrunch Effect: Host a Side Event at Disrupt 2024

Decks are all about telling a compelling story and Goodcarbon does a good job on that front. But there’s important information missing too.

Pitch Deck Teardown: Goodcarbon’s $5.5M seed deck

Slack is making it difficult for its customers if they want the company to stop using its data for model training.

Slack under attack over sneaky AI training policy

A Texas-based company that provides health insurance and benefit plans disclosed a data breach affecting almost 2.5 million people, some of whom had their Social Security number stolen. WebTPA said…

Healthcare company WebTPA discloses breach affecting 2.5 million people

Featured Article

Microsoft dodges UK antitrust scrutiny over its Mistral AI stake

Microsoft won’t be facing antitrust scrutiny in the U.K. over its recent investment into French AI startup Mistral AI.

2 days ago
Microsoft dodges UK antitrust scrutiny over its Mistral AI stake

Ember has partnered with HSBC in the U.K. so that the bank’s business customers can access Ember’s services from their online accounts.

Embedded finance is still trendy as accounting automation startup Ember partners with HSBC UK

Kudos uses AI to figure out consumer spending habits so it can then provide more personalized financial advice, like maximizing rewards and utilizing credit effectively.

Kudos lands $10M for an AI smart wallet that picks the best credit card for purchases

The EU’s warning comes after Microsoft failed to respond to a legally binding request for information that focused on its generative AI tools.

EU warns Microsoft it could be fined billions over missing GenAI risk info

The prospects for troubled banking-as-a-service startup Synapse have gone from bad to worse this week after a United States Trustee filed an emergency motion on Wednesday.  The trustee is asking…

A US Trustee wants troubled fintech Synapse to be liquidated via Chapter 7 bankruptcy, cites ‘gross mismanagement’

U.K.-based Seraphim Space is spinning up its 13th accelerator program, with nine participating companies working on a range of tech from propulsion to in-space manufacturing and space situational awareness. The…

Seraphim’s latest space accelerator welcomes nine companies

OpenAI has reached a deal with Reddit to use the social news site’s data for training AI models. In a blog post on OpenAI’s press relations site, the company said…

OpenAI inks deal to train AI on Reddit data

X users will now be able to discover posts from new Communities that are trending directly from an Explore tab within the section.

X pushes more users to Communities

For Mark Zuckerberg’s 40th birthday, his wife got him a photoshoot. Zuckerberg gives the camera a sly smile as he sits amid a carefully crafted re-creation of his childhood bedroom.…

Mark Zuckerberg’s makeover: Midlife crisis or carefully crafted rebrand?

Strava announced a slew of features, including AI to weed out leaderboard cheats, a new ‘family’ subscription plan, dark mode and more.

Strava taps AI to weed out leaderboard cheats, unveils ‘family’ plan, dark mode and more

We all fall down sometimes. Astronauts are no exception. You need to be in peak physical condition for space travel, but bulky space suits and lower gravity levels can be…

Astronauts fall over. Robotic limbs can help them back up.

Microsoft will launch its custom Cobalt 100 chips to customers as a public preview at its Build conference next week, TechCrunch has learned. In an analyst briefing ahead of Build,…

Microsoft’s custom Cobalt chips will come to Azure next week