The Rip Current with Jacob Ward

Jacob Ward

The Rip Current covers the big, invisible forces carrying us out to sea, from tech to politics to greed to beauty to culture to human weirdness. The currents are strong, but with a little practice we can learn to spot them from the beach, and get across them safely. Veteran journalist Jacob Ward has covered technology, science and business for NBC News, CNN, PBS, and Al Jazeera. He's written for The New Yorker, The New York Times Magazine, Wired, and is the former Editor in Chief of Popular Science magazine.

  1. 2D AGO

    Why So Many People Hate AI — and Why 2026 Is the Breaking Point

    Happy New Year! I’ve been off for the holiday — we cranked through a bake-off, a dance party, a family hot tub visit, and a makeshift ball drop in the living room of a snowy cabin — and I’m feeling recharged for (at least some portion of) 2026. So let’s get to it. I woke to reports that “safeguard failures” in Elon Musk’s Grok led to the generation of child sexual exploitative material (Reuters) — a euphemism that barely disguises how awful this is. I was on CBS News to talk about it this morning, but I made the point that the real question isn’t how did this happen? It’s how could it not? AI systems are built by vacuuming up the worst and best of human behavior and recombining it into something that feels intelligent, emotional, and intimate. I explored that dynamic in The Loop — and we’re now seeing it play out in public, at scale. The New York Times threw a question at all of us this morning: Why Do Americans Hate AI? (NYT). One data point surprised me: as recently as 2022, people in many other countries were more optimistic than Americans when it came to the technology. Huh! But the answer to the overall question seems to signal that we’ve all learned something from the social media era and from the recent turn toward a much more realistic assessment of technology companies’ roles in our lives: For most people, the benefits are fuzzy, while the threats — to jobs, dignity, and social stability — are crystal clear. Layer onto that a dated PR playbook (“we’re working on it”), a federal government openly hostile to regulation, and headlines promising mass job displacement, and the distrust makes a lot of sense. Of course, this is why states are stepping in. The rise of social media and the simultaneous correlated crisis in political discord, health misinformation, and depression rates left states holding the bag, and they’re clearly not going to let that happen again. California’s new AI laws — addressing deepfake pornography, AI impersonation of licensed professionals, chatbot safeguards for minors, and transparency in AI-written police reports — are a direct response to the past and the future. But if you think the distaste for AI’s influence is powerful here, I think we haven’t even gotten started in the rest of the world. Here’s a recent episode that has me more convinced of it than ever: a stadium in India became the scene of a violent protest when Indian football fans who’d paid good money for time with Lionel Messi were kept from seeing the soccer star by a crowd of VIPs clustered around him for selfies. The resulting (and utterly understandable) outpouring of anger made me think hard about what happens when millions of outsourced jobs disappear overnight. I think those fans’ rage at being excluded from a promised reward, bought with the money they work so hard for, is a preview. So yes — Americans distrust AI. But the real question is how deep those feelings go, and how much unrest this technology is quietly banking up, worldwide. That’s the problem we’ll be reckoning with all year long.

    14 min
  2. 2D AGO

    AI Has Us Lying to One Another (and It's Changing How We Think)

    Okay, honest admission here: I don’t fully know what I think about this topic yet. A podcast producer (thanks Nancy!) once told me “let them watch you think out loud,” and I’m taking her to heart — because the thing I’m worried about is already happening to me. Lately, I’ve been leaning hard on AI tools, God help me. Not to write for me — a little, sure, but for the most part I still do that myself — but to help me quickly get acclimated to unfamiliar worlds. The latest unfamiliar world is online marketing, which I do not understand AT ALL but now need to master to survive as an independent journalist. And here’s the problem: the advice these systems give isn’t neutral, because first of all it’s not really “advice,” it’s just statistically relevant language regurgitated as advice, and second, because it just vacuums up the language wherever it can find it, its suggestions come with online values baked in. I know this — I wrote a whole fucking book about it — but I lose track of it in my desperation to learn quickly. I’m currently trying to analyze who it is that follows me on TikTok, and why, so I can try to port some of those people (or at least those types of people) over to Substack and YouTube, where one can actually make a living filing analysis like this. One of the metrics I was told to prioritize? Disagreement in the comments. Not understanding, learning, clarity, the stuff I’m after in my everyday work. Fighting. Comments in which people want to argue with me are “good,” according to ChatGPT. Thoughtful consensus? Statistically irrelevant. Here’s the added trouble. It’s one thing to read that and filter out what’s unhelpful. It’s another thing to do so in a world where all of us are supposed to pretend we had this thought ourselves. AI isn’t just helping us work faster. It’s quietly training us to behave differently — and to hide how that training happens. We’re all pretending this output is “ours,” because the unspoken promise of AI right now is that you can get help and still take the credit. (I believe this is a fundamental piece of the marketing that no one’s saying out loud, but everyone is implying.) And the danger isn’t just dishonesty toward others. It’s that we start believing our own act. There’s a huge canon of scientific literature showing that lying about a thing causes us to internalize the lie over time. The Harvard psychologist Daniel Schachter wrote a sweeping review of the science in 1999 entitled “The Seven Sins of Memory,” in which he synthesized a range of studies that showed that memory is us building a belief on the prior belief, not drawing on a perfect replay of reality, and that repetition and suggestion can implant or strengthen false beliefs that feel subjectively true. Throw us enough ideas and culturally condition us to hide where we got them, and eventually we’ll come to believe they were our own. (And to be clear, I knew a little about the reconstructive nature of memory, but ChatGPT brought me Schachter’s paper. So there you go.) What am I suggesting here? I know we’re creating a culture where machine advice is passed off as human judgment. I don’t know whether the answer is transparency, labeling, norms, regulation, or something else entirely. So I guess I’m starting with transparency. In any event, I do know this: lying about how we did or learned something makes us less discerning thinkers. And AI’s current role in our lives is built on that lie. Thinking out loud. Feedback welcome. Thanks!

    13 min
  3. 12/19/2025

    Did Weed Just Escape the Culture War?

    Here’s one I truly didn’t see coming: the Trump administration just made the most scientifically meaningful shift in U.S. marijuana policy in years. No, weed isn’t suddenly legal everywhere. But moving marijuana from Schedule I — alongside heroin — to Schedule III is a very big deal. That single bureaucratic change cracks open something that’s been locked shut for half a century: real research. For years, I’ve covered the strange absurdities of marijuana science in America. If you were a federally funded researcher — which almost every serious scientist is — you weren’t allowed to study the weed people actually use. Instead, you had to rely on a single government-approved grow operation producing products that didn’t resemble what’s sold in dispensaries. As a result, commercialization raced ahead while our understanding lagged far behind. That’s how we ended up with confident opinions, big business, and weak data. We know marijuana can trigger severe psychological effects in a meaningful number of people. We know it can cause real physical distress for others. What we don’t know — because we’ve blocked ourselves from knowing — is who’s at risk, why, and how to use it safely at scale. Meanwhile, the argument that weed belongs in the same category as drugs linked to violence and mass death has always collapsed under scrutiny. Alcohol, linked to more than 178,000 deaths per year in the United States alone, does far more damage, both socially and physically, yet sits comfortably in legal daylight. If this reclassification sticks, the excuse phase is over. States making billions from legal cannabis now need to fund serious, independent research. I didn’t expect this administration to make a science-forward move like this — but here we are. Here’s hoping we can finish the job and finally understand what we’ve been pretending to regulate for decades. Covering earlier regulatory changes for Al Jazeera in 2016...

    13 min
  4. 12/15/2025

    AI Isn’t Just a Money Risk Anymore — It’s Bigger than That

    For most of modern history, regulation in Western democracies has focused on two kinds of harm: people dying and people losing money. But with AI, that’s beginning to change. This week, the headlines point toward a new understanding that more is at stake than our physical health and our wallets: governments are starting to treat our psychological relationship with technology as a real risk. Not a side effect, not a moral panic, not a punchline to jokes about frivolous lawyers. Increasingly, I’m seeing lawmakers understand that it’s a core threat. There is, for instance, the extraordinary speech from the new head of MI6, Britain’s intelligence agency. Instead of focusing only on missiles, spies, or nation-state enemies, she warned that AI and hyper-personalized technologies are rewriting the nature of conflict itself — blurring peace and war, state action and private influence, reality and manipulation. When the person responsible for assessing existential threats starts talking about perception and persuasion, that stuff has moved from academic hand-wringing to real danger. Then there’s the growing evidence that militant groups are using AI to recruit, radicalize, and persuade — often more effectively than humans can. Researchers have now shown that AI-generated political messaging can outperform human persuasion. That matters, because most of us still believe we’re immune to manipulation. We’re not. Our brains are programmable, and AI is getting very good at learning our instructions. That same playbook is showing up in the behavior of our own government. Federal agencies are now mimicking the president’s incendiary online style, deploying AI-generated images and rage-bait tactics that look disturbingly similar to extremist propaganda. It’s no coincidence that the Oxford University Press crowned “rage bait” its word of the year. Outrage is no longer a side effect of the internet — it’s a design strategy. What’s different now is the regulatory response. A coalition of 42 U.S. attorneys general has formally warned AI companies about psychologically harmful interactions, including emotional dependency and delusional attachment to chatbots and “companions.” This isn’t about fraud or physical injury. It’s about damage to people’s inner lives — something American law has traditionally been reluctant to touch. At the same time, the Trump administration is trying to strip states of their power to regulate AI at all, even as states are the only ones meaningfully responding to these risks. That tension — between lived harm and promised utopia — is going to define the next few years. We can all feel that something is wrong. Not just economically, but cognitively. Trust, truth, childhood development, shared reality — all of it feels under pressure. The question now is whether regulation catches up before those harms harden into the new normal. Mentioned in This Article: Britain caught in ‘space between peace and war’, says new head of MI6 | UK security and counter-terrorism | The Guardian https://www.theguardian.com/uk-news/2025/dec/15/britain-caught-in-space-between-peace-and-war-new-head-of-mi6-warns Islamic State group and other extremists are turning to AI | AP News https://apnews.com/article/islamic-state-group-artificial-intelligence-deepfakes-ba201d23b91dbab95f6a8e7ad8b778d5 ‘Virality, rumors and lies’: US federal agencies mimic Trump on social media | Donald Trump | The Guardian https://www.theguardian.com/us-news/2025/dec/15/trump-agencies-style-social-media US state attorneys-general demand better AI safeguards https://www.ft.com/content/4f3161cc-b97a-496e-b74e-4d6d2467d59c

    11 min
  5. 12/10/2025

    AI Is Even More Biased Than We Are: Mahzarin Banaji on the Disturbing Truth Behind LLMs

    This week I sat down with the woman who permanently rewired my understanding of human nature — and now she’s turning her attention to the nature of the machines we’ve gone crazy for. Harvard psychologist Mahzarin Banaji coined the term “implicit bias” and has conducted research for decades into the blind spots we don’t admit even to ourselves. The work that blew my hair back shows how prejudice has and hasn’t changed since 2007. Take one of the tests here — I was deeply disappointed by my results. More recently, she’s been running new experiments on today’s large language models. What has she learned? They’re far more biased than humans. Sometimes twice or three times as biased. They show shocking behavior — like a model declaring “I am a white male” or demonstrating literal self-love toward its own company. And as their most raw and objectionable responses are papered over, our ability to understand just how prejudiced they really are is being whitewashed, she says. In this conversation, Banaji explains: Why LLMs amplify bias instead of neutralizing it How guardrails and “alignment” may hide what the model really thinks Why kids, judges, doctors, and lonely users are uniquely exposed How these systems form a narrowing “artificial hive mind” And why we may not be mature enough to automate judgement at all Banaji is working at the very cutting edge of the science, and delivers a clear and unsettling picture of what AI is amplifying in our minds. 00:00 — AI Will Warp Our Decisions Banaji on why future decision-making may “suck” if we trust biased systems. 01:20 — The Woman Who Changed How We Think About Bias Jake introduces Banaji’s life’s work charting the hidden prejudices wired into all of us. 03:00 — When Internet Language Revealed Human Bias How early word-embedding research mirrored decades of psychological findings. 05:30 — AI Learns the One-Drop Rule CLIP models absorb racial logic humans barely admit. 07:00 — The Moment GPT Said “I Am a White Male” Banaji recounts the shocking early answer that launched her LLM research. 10:00 — The Rise of Guardrails… and the Disappearance of Honesty Why the cleaned-up versions of models may tell us less about their true thinking. 12:00 — What “Alignment” Gets Fatally Wrong The Silicon Valley fantasy of “universal human values” collides with actual psychology. 15:00 — When AI Corrects Itself in Stupid Ways The Gemini fiasco, and why “fixing” bias often produces fresh distortions. 17:00 — Should We Even Build AGI? Banaji on why specialized models may be safer than one general mind. 19:00 — Can We Automate Judgment When We Don’t Know Ourselves? The paradox at the heart of AI development. 21:00 — Machines Can Be Manipulated Just Like Humans Cialdini’s persuasion principles work frighteningly well on LLMs. 23:00 — Why AI Seems So Trustworthy (and Why That’s Dangerous) The credibility illusion baked into every polished chatbot. 25:00 — The Discovery of Machine “Self-Love” How models prefer themselves, their creators, and their own CEOs. 28:00 — The Hidden Line of Code That Made It All Make Sense What changes when a model is told its own name. 31:00 — Artificial Hive Mind: What 70 LLMs Have in Common The narrowing of creativity across models and why it matters. 34:00 — Why LLM Bias Is More Extreme Than Human Bias Banaji explains effect sizes that blow past anything seen in psychology. 37:00 — A Global Problem: From U.S. Race Bias to India’s Caste Bias How Western-built models export prejudice worldwide. 40:00 — The Loan Officer Problem: When “Truth to the Data” Is Immoral A real-world example of why bias-blind AI is dangerous. 43:00 — Bayesian Hypocrisy: Humans Do It… and AI Does It More Models replicate our irrational judgments — just with sharper edges. 48:00 — Are We Mature Enough to Hand Off Our Thinking? Banaji on the risks of relying on a mind we didn’t design and barely understand. 50:00 — The Big Question: Can AI Ever Make Us More Rational?

    1h 7m
  6. 12/10/2025

    Australia Just Rebooted Childhood — And the World Is Watching

    Australia just imposed a blanket ban on social media for kids under the age of 16. It’s not just the strictest tech policy of any democracy — it’s stricter than China’s laws. No TikTok, no Instagram, no SnapChat, that’s it. And while Washington dithers behind a 1998 law written before Google existed, other countries are gearing up to copy Australia’s homework (Malaysia imposes a similar ban on January 1st). What happens now — the enforcement mess, the global backlash, the accidental creation of the largest clean “control group” in tech-history — could reshape how we think about childhood, mental health, and what governments owe the developing brain. 00:00 — Australia’s historic under-16 social-media ban 01:10 — What counts as “social media” under the law? 02:04 — Why platforms — not kids — get fined 03:01 — How the U.S. is still stuck with COPPA (from 1998!) 04:28 — Why age 13 was always a fiction 05:15 — Psychologists on the teenage brain: “all gas, no brakes” 07:02 — Malaysia and the EU consider following Australia’s lead 08:00 — Nighttime curfews and other global experiments 09:11 — Albanese’s pitch: reclaiming “a real childhood” 10:20 — Could isolation leave Aussie teens behind socially? 11:22 — Why Australia is suddenly stricter than China 12:40 — Age-verification chaos: the AI that thinks my uncle is 12 13:40 — The enforcement black box 14:10 — Australia as the first real longitudinal control group 15:18 — If mental-health outcomes improve, everything changes 16:05 — The end of the “wild west” era of social platforms?

    10 min
5
out of 5
27 Ratings

About

The Rip Current covers the big, invisible forces carrying us out to sea, from tech to politics to greed to beauty to culture to human weirdness. The currents are strong, but with a little practice we can learn to spot them from the beach, and get across them safely. Veteran journalist Jacob Ward has covered technology, science and business for NBC News, CNN, PBS, and Al Jazeera. He's written for The New Yorker, The New York Times Magazine, Wired, and is the former Editor in Chief of Popular Science magazine.

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