Artificial Intelligence
Google denies scanning users’ email and attachments with its AI software
From LifeSiteNews
Google claims that multiple media reports are misleading and that nothing has changed with its service.
Tech giant Google is claiming that reports earlier this week released by multiple major media outlets are false and that it is not using emails and attachments to emails for its new Gemini AI software.
Fox News, Breitbart, and other outlets published stories this week instructing readers on how to “stop Google AI from scanning your Gmail.”
“Google shared a new update on Nov. 5, confirming that Gemini Deep Research can now use context from your Gmail, Drive and Chat,” Fox reported. “This allows the AI to pull information from your messages, attachments and stored files to support your research.”
Breitbart likewise said that “Google has quietly started accessing Gmail users’ private emails and attachments to train its AI models, requiring manual opt-out to avoid participation.”
Breitbart pointed to a press release issued by Malwarebytes that said the company made the changed without users knowing.
After the backlash, Google issued a response.
“These reports are misleading – we have not changed anyone’s settings. Gmail Smart Features have existed for many years, and we do not use your Gmail content for training our Gemini AI model. Lastly, we are always transparent and clear if we make changes to our terms of service and policies,” a company spokesman told ZDNET reporter Lance Whitney.
Malwarebytes has since updated its blog post to now say they “contributed to a perfect storm of misunderstanding” in their initial reporting, adding that their claim “doesn’t appear to be” true.
But the blog has also admitted that Google “does scan email content to power its own ‘smart features,’ such as spam filtering, categorization, and writing suggestions. But this is part of how Gmail normally works and isn’t the same as training Google’s generative AI models.”
Google’s explanation will likely not satisfy users who have long been concerned with Big Tech’s surveillance capabilities and its ongoing relationship with intelligence agencies.
“I think the most alarming thing that we saw was the regular organized stream of communication between the FBI, the Department of Homeland Security, and the largest tech companies in the country,” journalist Matt Taibbi told the U.S. Congress in December 2023 during a hearing focused on how Twitter was working hand in glove with the agency to censor users and feed the government information.
If you use Google and would like to turn off your “smart features,” click here to visit the Malwarebytes blog to be guided through the process with images. Otherwise, you can follow these five steps courtesy of Unilad Tech.
- Open Gmail on Desktop and press the cog icon in the top right to open the settings
- Select the ‘Smart Features’ setting in the ‘General’ section
- Turn off the ‘Turn on smart features in Gmail, Chat, and Meet’
- Find the Google Workplace smart features section and opt to manage the smart feature settings
- Switch off ‘Smart features in Google Workspace’ and ‘Smart features in other Google products’
On November 11, a class action lawsuit was filed against Google in the U.S. District Court for the Northern District of California. The case alleges that Google violated the state’s Invasion of Privacy Act by discreetly activating Gemini AI to scan Gmail, Google Chat, and Google Meet messages in October 2025 without notifying users or seeking their consent.
Artificial Intelligence
AI is accelerating the porn crisis as kids create, consume explicit deepfake images of classmates
From LifeSiteNews
“Ten years ago it was sexting and nudes causing havoc in classrooms,” writes Sally Weale in a chilling new report at the Guardian. “Today, advances in artificial intelligence (AI) have made it child’s play to generate deepfake nude images or videos, featuring what appear to be your friends, your classmates, even your teachers. This may involve removing clothes, getting an image to move suggestively or pasting someone’s head on to a pornographic image.”
I have been covering the rise of the next horrific manifestation of our collective porn crisis here at LifeSiteNews since 2019, when I warned that the rise of “deepfakes” would inevitably result in people making artificial pornography of their peers. Just a few years later, I reported on stories of middle-schoolers making deepfake pornography of kids they attended class with; last year, I reported on the rise of “nudify” apps that can digitally undress people in photographs, and the trauma, bullying, and inevitable sexual blackmail that has resulted.
The Guardian report reveals how swiftly this crisis is escalating. One teacher described an incident in which a teenage boy took out his phone, chose a social media image of a girl from a neighboring school, and used the “nudify” app to digitally remove her clothes. The teacher was shocked to see that the boy wasn’t even hiding his actions, because he didn’t see what he was doing as shocking, or even shameful. “It worries me that it’s so normalized,” she said. Other students reported the boy, his parents were contacted, and the police were called. The victimized girl was not even told.
The crisis is global. “In Spain last year, 15 boys in the south-western region of Extremadura were sentenced to a year’s probation after being convicted of using AI to produce fake naked images of their female schoolmates, which they shared on WhatsApp groups,” Weale writes. “About 20 girls were affected, most of them aged 14, while the youngest was 11.”
A similar situation unfolded in Australia, where 50 high school students had deepfake images distributed; in the United States, 30 female students in New Jersey discovered that “pornographic images of them had been shared among their male classmates on Snapchat.”
The mother of one student in Australia said that “her daughter was so horrified by the sexually explicit images that she vomited.” In the United Kingdom, the problem has exploded overnight:
A new poll of 4,300 secondary school teachers in England, carried out by Teacher Tapp on behalf of the Guardian, found that about one in 10 were aware of students at their school creating “deepfake, sexually explicit videos” in the last academic year. Three-quarters of these incidents involved children aged 14 or younger, while one in 10 incidents involved 11-year-olds, and 3% were younger still, illustrating just how easy the technology is to access and use. Among participating teachers, 7% said they were aware of a single incident, and 1% said it had happened twice, while a similar proportion said it had happened three times or more in the last academic year. Earlier this year, a Girlguiding survey found that one in four respondents aged 13 to 18 had seen a sexually explicit deepfake image of a celebrity, a friend, a teacher or themselves.
Predictably, teachers are also being targeted. Girls and women are left shattered by this victimization. Laura Bates, author of The New Age of Sexism: How the AI Revolution Is Reinventing Misogyny, writes: “It feels like someone has taken you and done something to you and there is nothing you can do about it. Watching a video of yourself being violated without your consent is an almost out-of-body experience.” Boys, meanwhile, are engaging in criminal behavior often without even knowing it. In the world they have grown up in, pornography is normal – and this is merely the next step.
The experts that Weale interviews are, as usual, at a loss of what can be done about this crisis. They emphasize education, while admitting that this is the equivalent of taking a water pistol to a raging forest fire. They are skeptical that guidelines or bans around technology at school will help. Understandably, educators are demoralized and even despairing. Pornography and sexting have already transformed schools. Deepfake pornography is now making an already ugly crisis far more personal, and there is no indication that the problem can be stopped without dramatic action.
The only genuine solution was put forward by Dame Rachel de Souza, the children’s commissioner for England. She has advocated that “nudification apps such as ClothOff” be simply banned. “Children have told me they are frightened by the very idea of this technology even being available, let alone used,” de Souza stated. De Souza is correct. The solution to the porn crisis is both tremendously difficult, but extraordinarily simple: we must simply make this content – and these apps – illegal.
The good news is that the first step in this direction has already been taken in the U.K. On November 3, the government tabled the Crime and Policing Bill in Parliament. It includes an amendment criminalizing pornography featuring strangulation or suffocation – usually referred to as “choking” – with legal requirements for tech platforms to block this content from U.K. users.
This is the first time a genre of pornography has been criminalized on the basis that even if it is consensual, it genuinely harms society. That is an encouraging precedent, because it applies to virtually all hardcore pornography – and certainly to the “nudification” apps that are set to make middle school a hyper-sexualized hell for women and girls.
The porn industry is destroying society. We must destroy it first.
Artificial Intelligence
The Emptiness Inside: Why Large Language Models Can’t Think – and Never Will
This is a special preview article from the:
Early attempts at artificial intelligence (AI) were ridiculed for giving answers that were confident, wrong and often surreal – the intellectual equivalent of asking a drunken parrot to explain Kant. But modern AIs based on large language models (LLMs) are so polished, articulate and eerily competent at generating answers that many people assume they can know and, even
better, can independently reason their way to knowing.
This confidence is misplaced. LLMs like ChatGPT or Grok don’t think. They are supercharged autocomplete engines. You type a prompt; they predict the next word, then the next, based only on patterns in the trillions of words they were trained on. No rules, no logic – just statistical guessing dressed up in conversation. As a result, LLMs have no idea whether a sentence is true or false or even sane; they only “know” whether it sounds like sentences they’ve seen before. That’s why they often confidently make things up: court cases, historical events, or physics explanations that are pure fiction. The AI world calls such outputs
“hallucinations”.
But because the LLM’s speech is fluent, users instinctively project self-understanding onto the model, triggered by the same human “trust circuits” we use for spotting intelligence. But it is fallacious reasoning, a bit like hearing someone speak perfect French and assuming they must also be an excellent judge of wine, fashion and philosophy. We confuse style for substance and
we anthropomorphize the speaker. That in turn tempts us into two mythical narratives: Myth 1: “If we just scale up the models and give them more ‘juice’ then true reasoning will eventually emerge.”
Bigger LLMs do get smoother and more impressive. But their core trick – word prediction – never changes. It’s still mimicry, not understanding. One assumes intelligence will magically emerge from quantity, as though making tires bigger and spinning them faster will eventually make a car fly. But the obstacle is architectural, not scalar: you can make the mimicry more
convincing (make a car jump off a ramp), but you don’t convert a pattern predictor into a truth-seeker by scaling it up. You merely get better camouflage and, studies have shown, even less fidelity to fact.
Myth 2: “Who cares how AI does it? If it yields truth, that’s all that matters. The ultimate arbiter of truth is reality – so cope!”
This one is especially dangerous as it stomps on epistemology wearing concrete boots. It effectively claims that the seeming reliability of LLM’s mundane knowledge should be extended to trusting the opaque methods through which it is obtained. But truth has rules. For example, a conclusion only becomes epistemically trustworthy when reached through either: 1) deductive reasoning (conclusions that must be true if the premises are true); or 2) empirical verification (observations of the real world that confirm or disconfirm claims).
LLMs do neither of these. They cannot deduce because their architecture doesn’t implement logical inference. They don’t manipulate premises and reach conclusions, and they are clueless about causality. They also cannot empirically verify anything because they have no access to reality: they can’t check weather or observe social interactions.
Attempting to overcome these structural obstacles, AI developers bolt external tools like calculators, databases and retrieval systems onto an LLM system. Such ostensible truth-seeking mechanisms improve outputs but do not fix the underlying architecture.
The “flying car” salesmen, peddling various accomplishments like IQ test scores, claim that today’s LLMs show superhuman intelligence. In reality, LLM IQ tests violate every rule for conducting intelligence tests, making them a human-prompt engineering skills competition rather than a valid assessment of machine smartness.
Efforts to make LLMs “truth-seeking” by brainwashing them to align with their trainer’s preferences through mechanisms like RLHF miss the point. Those attempts to fix bias only make waves in a structure that cannot support genuine reasoning. This regularly reveals itself through flops like xAI Grok’s MechaHitler bravado or Google Gemini’s representing America’s Founding Fathers as a lineup of “racialized” gentlemen.
Other approaches exist, though, that strive to create an AI architecture enabling authentic thinking:
Symbolic AI: uses explicit logical rules; strong on defined problems, weak on ambiguity;
Causal AI: learns cause-and-effect relationships and can answer “what if” questions;
Neuro-symbolic AI: combines neural prediction with logical reasoning; and
Agentic AI: acts with the goal in mind, receives feedback and improves through trial-and-error.
Unfortunately, the current progress in AI relies almost entirely on scaling LLMs. And the alternative approaches receive far less funding and attention – the good old “follow the money” principle. Meanwhile, the loudest “AI” in the room is just a very expensive parrot.
LLMs, nevertheless, are astonishing achievements of engineering and wonderful tools useful for many tasks. I will have far more on their uses in my next column. The crucial thing for users to remember, though, is that all LLMs are and will always remain linguistic pattern engines, not epistemic agents.
The hype that LLMs are on the brink of “true intelligence” mistakes fluency for thought. Real thinking requires understanding the physical world, persistent memory, reasoning and planning that LLMs handle only primitively or not all – a design fact that is non-controversial among AI insiders. Treat LLMs as useful thought-provoking tools, never as trustworthy sources. And stop waiting for the parrot to start doing philosophy. It never will.
The original, full-length version of this article was recently published as Part I of a two-part series in C2C Journal. Part II can be read here.
Gleb Lisikh is a researcher and IT management professional, and a father of three children, who lives in Vaughan, Ontario and grew up in various parts of the Soviet Union.
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