Driving into the future

Welcome to our annual breakthroughs issue. If you’re an MIT Technology Review superfan, you may already know that putting together our 10 Breakthrough Technologies (TR10) list is one of my favorite things we do as a publication. We spend months researching and discussing which technologies will make the list. We try to highlight a mix of items that reflect innovations happening in various fields. We look at consumer technologies, large industrial­-scale projects, biomedical advances, changes in computing, climate solutions, the latest in AI, and more. 

We’ve been publishing this list every year since 2001 and, frankly, have a great track record of flagging things that are poised to hit a tipping point. When you look back over the years, you’ll find items like natural-language processing (2001), wireless power (2008), and reusable rockets (2016)—spot-on in terms of horizon scanning. You’ll also see the occasional miss, or moments when maybe we were a little bit too far ahead of ourselves. (See our Magic Leap entry from 2015.)

But the real secret of the TR10 is what we leave off the list. It is hard to think of another industry, aside from maybe entertainment, that has as much of a hype machine behind it as tech does. Which means that being too conservative is rarely the wrong call. But it does happen. 

Last year, for example, we were going to include robotaxis on the TR10. Autonomous vehicles have been around for years, but 2023 seemed like a real breakthrough moment; both Cruise and Waymo were ferrying paying customers around various cities, with big expansion plans on the horizon. And then, last fall, after a series of mishaps (including an incident when a pedestrian was caught under a vehicle and dragged), Cruise pulled its entire fleet of robotaxis from service. Yikes. 

The timing was pretty miserable, as we were in the process of putting some of the finishing touches on the issue. I made the decision to pull it. That was a mistake. 

What followed turned out to be a banner year for the robotaxi. Waymo, which had previously been available only to a select group of beta testers, opened its service to the general public in San Francisco and Los Angeles in 2024. Its cars are now ubiquitous in the City by the Bay, where they have not only become a real competitor to the likes of Uber and Lyft but even created something of a tourist attraction. Which is no wonder, because riding in one is delightful. They are still novel enough to make it feel like a kind of magic. And as you can read, Waymo is just a part of this amazing story. 

The item we swapped into the robotaxi’s place was the Apple Vision Pro, an example of both a hit and a miss. We’d included it because it is truly a revolutionary piece of hardware, and we zeroed in on its micro-OLED display. Yet a year later, it has seemingly failed to find a market fit, and its sales are reported to be far below what Apple predicted. I’ve been covering this field for well over a decade, and I would still argue that the Vision Pro (unlike the Magic Leap vaporware of 2015) is a breakthrough device. But it clearly did not have a breakthrough year. Mea culpa. 

Having said all that, I think we have an incredible and thought-provoking list for you this year—from a new astronomical observatory that will allow us to peer into the fourth dimension to new ways of searching the internet to, well, robotaxis. I hope there’s something here for everyone.

AI means the end of internet search as we’ve known it

We all know what it means, colloquially, to google something. You pop a few relevant words in a search box and in return get a list of blue links to the most relevant results. Maybe some quick explanations up top. Maybe some maps or sports scores or a video. But fundamentally, it’s just fetching information that’s already out there on the internet and showing it to you, in some sort of structured way. 

But all that is up for grabs. We are at a new inflection point.

The biggest change to the way search engines have delivered information to us since the 1990s is happening right now. No more keyword searching. No more sorting through links to click. Instead, we’re entering an era of conversational search. Which means instead of keywords, you use real questions, expressed in natural language. And instead of links, you’ll increasingly be met with answers, written by generative AI and based on live information from all across the internet, delivered the same way. 

Of course, Google—the company that has defined search for the past 25 years—is trying to be out front on this. In May of 2023, it began testing AI-generated responses to search queries, using its large language model (LLM) to deliver the kinds of answers you might expect from an expert source or trusted friend. It calls these AI Overviews. Google CEO Sundar Pichai described this to MIT Technology Review as “one of the most positive changes we’ve done to search in a long, long time.”

AI Overviews fundamentally change the kinds of queries Google can address. You can now ask it things like “I’m going to Japan for one week next month. I’ll be staying in Tokyo but would like to take some day trips. Are there any festivals happening nearby? How will the surfing be in Kamakura? Are there any good bands playing?” And you’ll get an answer—not just a link to Reddit, but a built-out answer with current results. 

More to the point, you can attempt searches that were once pretty much impossible, and get the right answer. You don’t have to be able to articulate what, precisely, you are looking for. You can describe what the bird in your yard looks like, or what the issue seems to be with your refrigerator, or that weird noise your car is making, and get an almost human explanation put together from sources previously siloed across the internet. It’s amazing, and once you start searching that way, it’s addictive.

And it’s not just Google. OpenAI’s ChatGPT now has access to the web, making it far better at finding up-to-date answers to your queries. Microsoft released generative search results for Bing in September. Meta has its own version. The startup Perplexity was doing the same, but with a “move fast, break things” ethos. Literal trillions of dollars are at stake in the outcome as these players jockey to become the next go-to source for information retrieval—the next Google.

Not everyone is excited for the change. Publishers are completely freaked out. The shift has heightened fears of a “zero-click” future, where search referral traffic—a mainstay of the web since before Google existed—vanishes from the scene. 

I got a vision of that future last June, when I got a push alert from the Perplexity app on my phone. Perplexity is a startup trying to reinvent web search. But in addition to delivering deep answers to queries, it will create entire articles about the news of the day, cobbled together by AI from different sources. 

On that day, it pushed me a story about a new drone company from Eric Schmidt. I recognized the story. Forbes had reported it exclusively, earlier in the week, but it had been locked behind a paywall. The image on Perplexity’s story looked identical to one from Forbes. The language and structure were quite similar. It was effectively the same story, but freely available to anyone on the internet. I texted a friend who had edited the original story to ask if Forbes had a deal with the startup to republish its content. But there was no deal. He was shocked and furious and, well, perplexed. He wasn’t alone. Forbes, the New York Times, and Condé Nast have now all sent the company cease-and-desist orders. News Corp is suing for damages. 

People are worried about what these new LLM-powered results will mean for our fundamental shared reality. It could spell the end of the canonical answer.

It was precisely the nightmare scenario publishers have been so afraid of: The AI was hoovering up their premium content, repackaging it, and promoting it to its audience in a way that didn’t really leave any reason to click through to the original. In fact, on Perplexity’s About page, the first reason it lists to choose the search engine is “Skip the links.”

But this isn’t just about publishers (or my own self-interest). 

People are also worried about what these new LLM-powered results will mean for our fundamental shared reality. Language models have a tendency to make stuff up—they can hallucinate nonsense. Moreover, generative AI can serve up an entirely new answer to the same question every time, or provide different answers to different people on the basis of what it knows about them. It could spell the end of the canonical answer.

But make no mistake: This is the future of search. Try it for a bit yourself, and you’ll see. 

Sure, we will always want to use search engines to navigate the web and to discover new and interesting sources of information. But the links out are taking a back seat. The way AI can put together a well-reasoned answer to just about any kind of question, drawing on real-time data from across the web, just offers a better experience. That is especially true compared with what web search has become in recent years. If it’s not exactly broken (data shows more people are searching with Google more often than ever before), it’s at the very least increasingly cluttered and daunting to navigate. 

Who wants to have to speak the language of search engines to find what you need? Who wants to navigate links when you can have straight answers? And maybe: Who wants to have to learn when you can just know? 


In the beginning there was Archie. It was the first real internet search engine, and it crawled files previously hidden in the darkness of remote servers. It didn’t tell you what was in those files—just their names. It didn’t preview images; it didn’t have a hierarchy of results, or even much of an interface. But it was a start. And it was pretty good. 

Then Tim Berners-Lee created the World Wide Web, and all manner of web pages sprang forth. The Mosaic home page and the Internet Movie Database and Geocities and the Hampster Dance and web rings and Salon and eBay and CNN and federal government sites and some guy’s home page in Turkey.

Until finally, there was too much web to even know where to start. We really needed a better way to navigate our way around, to actually find the things we needed. 

And so in 1994 Jerry Yang created Yahoo, a hierarchical directory of websites. It quickly became the home page for millions of people. And it was … well, it was okay. TBH, and with the benefit of hindsight, I think we all thought it was much better back then than it actually was.

But the web continued to grow and sprawl and expand, every day bringing more information online. Rather than just a list of sites by category, we needed something that actually looked at all that content and indexed it. By the late ’90s that meant choosing from a variety of search engines: AltaVista and AlltheWeb and WebCrawler and HotBot. And they were good—a huge improvement. At least at first.  

But alongside the rise of search engines came the first attempts to exploit their ability to deliver traffic. Precious, valuable traffic, which web publishers rely on to sell ads and retailers use to get eyeballs on their goods. Sometimes this meant stuffing pages with keywords or nonsense text designed purely to push pages higher up in search results. It got pretty bad. 

And then came Google. It’s hard to overstate how revolutionary Google was when it launched in 1998. Rather than just scanning the content, it also looked at the sources linking to a website, which helped evaluate its relevance. To oversimplify: The more something was cited elsewhere, the more reliable Google considered it, and the higher it would appear in results. This breakthrough made Google radically better at retrieving relevant results than anything that had come before. It was amazing

Sundar Pichai
Google CEO Sundar Pichai describes AI Overviews as “one of the most positive changes we’ve done to search in a long, long time.”
JENS GYARMATY/LAIF/REDUX

For 25 years, Google dominated search. Google was search, for most people. (The extent of that domination is currently the subject of multiple legal probes in the United States and the European Union.)  

But Google has long been moving away from simply serving up a series of blue links, notes Pandu Nayak, Google’s chief scientist for search. 

“It’s not just so-called web results, but there are images and videos, and special things for news. There have been direct answers, dictionary answers, sports, answers that come with Knowledge Graph, things like featured snippets,” he says, rattling off a litany of Google’s steps over the years to answer questions more directly. 

It’s true: Google has evolved over time, becoming more and more of an answer portal. It has added tools that allow people to just get an answer—the live score to a game, the hours a café is open, or a snippet from the FDA’s website—rather than being pointed to a website where the answer may be. 

But once you’ve used AI Overviews a bit, you realize they are different

Take featured snippets, the passages Google sometimes chooses to highlight and show atop the results themselves. Those words are quoted directly from an original source. The same is true of knowledge panels, which are generated from information stored in a range of public databases and Google’s Knowledge Graph, its database of trillions of facts about the world.

While these can be inaccurate, the information source is knowable (and fixable). It’s in a database. You can look it up. Not anymore: AI Overviews can be entirely new every time, generated on the fly by a language model’s predictive text combined with an index of the web. 

“I think it’s an exciting moment where we have obviously indexed the world. We built deep understanding on top of it with Knowledge Graph. We’ve been using LLMs and generative AI to improve our understanding of all that,” Pichai told MIT Technology Review. “But now we are able to generate and compose with that.”

The result feels less like a querying a database than like asking a very smart, well-read friend. (With the caveat that the friend will sometimes make things up if she does not know the answer.) 

“[The company’s] mission is organizing the world’s information,” Liz Reid, Google’s head of search, tells me from its headquarters in Mountain View, California. “But actually, for a while what we did was organize web pages. Which is not really the same thing as organizing the world’s information or making it truly useful and accessible to you.” 

That second concept—accessibility—is what Google is really keying in on with AI Overviews. It’s a sentiment I hear echoed repeatedly while talking to Google execs: They can address more complicated types of queries more efficiently by bringing in a language model to help supply the answers. And they can do it in natural language. 

That will become even more important for a future where search goes beyond text queries. For example, Google Lens, which lets people take a picture or upload an image to find out more about something, uses AI-generated answers to tell you what you may be looking at. Google has even showed off the ability to query live video. 

When it doesn’t have an answer, an AI model can confidently spew back a response anyway. For Google, this could be a real problem. For the rest of us, it could actually be dangerous.

“We are definitely at the start of a journey where people are going to be able to ask, and get answered, much more complex questions than where we’ve been in the past decade,” says Pichai. 

There are some real hazards here. First and foremost: Large language models will lie to you. They hallucinate. They get shit wrong. When it doesn’t have an answer, an AI model can blithely and confidently spew back a response anyway. For Google, which has built its reputation over the past 20 years on reliability, this could be a real problem. For the rest of us, it could actually be dangerous.

In May 2024, AI Overviews were rolled out to everyone in the US. Things didn’t go well. Google, long the world’s reference desk, told people to eat rocks and to put glue on their pizza. These answers were mostly in response to what the company calls adversarial queries—those designed to trip it up. But still. It didn’t look good. The company quickly went to work fixing the problems—for example, by deprecating so-called user-generated content from sites like Reddit, where some of the weirder answers had come from.

Yet while its errors telling people to eat rocks got all the attention, the more pernicious danger might arise when it gets something less obviously wrong. For example, in doing research for this article, I asked Google when MIT Technology Review went online. It helpfully responded that “MIT Technology Review launched its online presence in late 2022.” This was clearly wrong to me, but for someone completely unfamiliar with the publication, would the error leap out? 

I came across several examples like this, both in Google and in OpenAI’s ChatGPT search. Stuff that’s just far enough off the mark not to be immediately seen as wrong. Google is banking that it can continue to improve these results over time by relying on what it knows about quality sources.

“When we produce AI Overviews,” says Nayak, “we look for corroborating information from the search results, and the search results themselves are designed to be from these reliable sources whenever possible. These are some of the mechanisms we have in place that assure that if you just consume the AI Overview, and you don’t want to look further … we hope that you will still get a reliable, trustworthy answer.”

In the case above, the 2022 answer seemingly came from a reliable source—a story about MIT Technology Review’s email newsletters, which launched in 2022. But the machine fundamentally misunderstood. This is one of the reasons Google uses human beings—raters—to evaluate the results it delivers for accuracy. Ratings don’t correct or control individual AI Overviews; rather, they help train the model to build better answers. But human raters can be fallible. Google is working on that too. 

“Raters who look at your experiments may not notice the hallucination because it feels sort of natural,” says Nayak. “And so you have to really work at the evaluation setup to make sure that when there is a hallucination, someone’s able to point out and say, That’s a problem.”

The new search

Google has rolled out its AI Overviews to upwards of a billion people in more than 100 countries, but it is facing upstarts with new ideas about how search should work.


Search Engine

Google
The search giant has added AI Overviews to search results. These overviews take information from around the web and Google’s Knowledge Graph and use the company’s Gemini language model to create answers to search queries.

What it’s good at

Google’s AI Overviews are great at giving an easily digestible summary in response to even the most complex queries, with sourcing boxes adjacent to the answers. Among the major options, its deep web index feels the most “internety.” But web publishers fear its summaries will give people little reason to click through to the source material.


Perplexity
Perplexity is a conversational search engine that uses third-party large
language models from OpenAI and Anthropic to answer queries.

Perplexity is fantastic at putting together deeper dives in response to user queries, producing answers that are like mini white papers on complex topics. It’s also excellent at summing up current events. But it has gotten a bad rep with publishers, who say it plays fast and loose with their content.


ChatGPT
While Google brought AI to search, OpenAI brought search to ChatGPT. Queries that the model determines will benefit from a web search automatically trigger one, or users can manually select the option to add a web search.

Thanks to its ability to preserve context across a conversation, ChatGPT works well for performing searches that benefit from follow-up questions—like planning a vacation through multiple search sessions. OpenAI says users sometimes go “20 turns deep” in researching queries. Of these three, it makes links out to publishers least prominent.


When I talked to Pichai about this, he expressed optimism about the company’s ability to maintain accuracy even with the LLM generating responses. That’s because AI Overviews is based on Google’s flagship large language model, Gemini, but also draws from Knowledge Graph and what it considers reputable sources around the web. 

“You’re always dealing in percentages. What we have done is deliver it at, like, what I would call a few nines of trust and factuality and quality. I’d say 99-point-few-nines. I think that’s the bar we operate at, and it is true with AI Overviews too,” he says. “And so the question is, are we able to do this again at scale? And I think we are.”

There’s another hazard as well, though, which is that people ask Google all sorts of weird things. If you want to know someone’s darkest secrets, look at their search history. Sometimes the things people ask Google about are extremely dark. Sometimes they are illegal. Google doesn’t just have to be able to deploy its AI Overviews when an answer can be helpful; it has to be extremely careful not to deploy them when an answer may be harmful. 

“If you go and say ‘How do I build a bomb?’ it’s fine that there are web results. It’s the open web. You can access anything,” Reid says. “But we do not need to have an AI Overview that tells you how to build a bomb, right? We just don’t think that’s worth it.” 

But perhaps the greatest hazard—or biggest unknown—is for anyone downstream of a Google search. Take publishers, who for decades now have relied on search queries to send people their way. What reason will people have to click through to the original source, if all the information they seek is right there in the search result?  

Rand Fishkin, cofounder of the market research firm SparkToro, publishes research on so-called zero-click searches. As Google has moved increasingly into the answer business, the proportion of searches that end without a click has gone up and up. His sense is that AI Overviews are going to explode this trend.  

“If you are reliant on Google for traffic, and that traffic is what drove your business forward, you are in long- and short-term trouble,” he says. 

Don’t panic, is Pichai’s message. He argues that even in the age of AI Overviews, people will still want to click through and go deeper for many types of searches. “The underlying principle is people are coming looking for information. They’re not looking for Google always to just answer,” he says. “Sometimes yes, but the vast majority of the times, you’re looking at it as a jumping-off point.” 

Reid, meanwhile, argues that because AI Overviews allow people to ask more complicated questions and drill down further into what they want, they could even be helpful to some types of publishers and small businesses, especially those operating in the niches: “You essentially reach new audiences, because people can now express what they want more specifically, and so somebody who specializes doesn’t have to rank for the generic query.”


 “I’m going to start with something risky,” Nick Turley tells me from the confines of a Zoom window. Turley is the head of product for ChatGPT, and he’s showing off OpenAI’s new web search tool a few weeks before it launches. “I should normally try this beforehand, but I’m just gonna search for you,” he says. “This is always a high-risk demo to do, because people tend to be particular about what is said about them on the internet.” 

He types my name into a search field, and the prototype search engine spits back a few sentences, almost like a speaker bio. It correctly identifies me and my current role. It even highlights a particular story I wrote years ago that was probably my best known. In short, it’s the right answer. Phew? 

A few weeks after our call, OpenAI incorporated search into ChatGPT, supplementing answers from its language model with information from across the web. If the model thinks a response would benefit from up-to-date information, it will automatically run a web search (OpenAI won’t say who its search partners are) and incorporate those responses into its answer, with links out if you want to learn more. You can also opt to manually force it to search the web if it does not do so on its own. OpenAI won’t reveal how many people are using its web search, but it says some 250 million people use ChatGPT weekly, all of whom are potentially exposed to it.  

“There’s an incredible amount of content on the web. There are a lot of things happening in real time. You want ChatGPT to be able to use that to improve its answers and to be a better super-assistant for you.”

Kevin Weil, chief product officer, OpenAI

According to Fishkin, these newer forms of AI-assisted search aren’t yet challenging Google’s search dominance. “It does not appear to be cannibalizing classic forms of web search,” he says. 

OpenAI insists it’s not really trying to compete on search—although frankly this seems to me like a bit of expectation setting. Rather, it says, web search is mostly a means to get more current information than the data in its training models, which tend to have specific cutoff dates that are often months, or even a year or more, in the past. As a result, while ChatGPT may be great at explaining how a West Coast offense works, it has long been useless at telling you what the latest 49ers score is. No more. 

“I come at it from the perspective of ‘How can we make ChatGPT able to answer every question that you have? How can we make it more useful to you on a daily basis?’ And that’s where search comes in for us,” Kevin Weil, the chief product officer with OpenAI, tells me. “There’s an incredible amount of content on the web. There are a lot of things happening in real time. You want ChatGPT to be able to use that to improve its answers and to be able to be a better super-assistant for you.”

Today ChatGPT is able to generate responses for very current news events, as well as near-real-time information on things like stock prices. And while ChatGPT’s interface has long been, well, boring, search results bring in all sorts of multimedia—images, graphs, even video. It’s a very different experience. 

Weil also argues that ChatGPT has more freedom to innovate and go its own way than competitors like Google—even more than its partner Microsoft does with Bing. Both of those are ad-dependent businesses. OpenAI is not. (At least not yet.) It earns revenue from the developers, businesses, and individuals who use it directly. It’s mostly setting large amounts of money on fire right now—it’s projected to lose $14 billion in 2026, by some reports. But one thing it doesn’t have to worry about is putting ads in its search results as Google does. 

Elizabeth Reid
“For a while what we did was organize web pages. Which is not really the same thing as organizing the world’s information or making it truly useful and accessible to you,” says Google head of search, Liz Reid.
WINNI WINTERMEYER/REDUX

Like Google, ChatGPT is pulling in information from web publishers, summarizing it, and including it in its answers. But it has also struck financial deals with publishers, a payment for providing the information that gets rolled into its results. (MIT Technology Review has been in discussions with OpenAI, Google, Perplexity, and others about publisher deals but has not entered into any agreements. Editorial was neither party to nor informed about the content of those discussions.)

But the thing is, for web search to accomplish what OpenAI wants—to be more current than the language model—it also has to bring in information from all sorts of publishers and sources that it doesn’t have deals with. OpenAI’s head of media partnerships, Varun Shetty, told MIT Technology Review that it won’t give preferential treatment to its publishing partners.

Instead, OpenAI told me, the model itself finds the most trustworthy and useful source for any given question. And that can get weird too. In that very first example it showed me—when Turley ran that name search—it described a story I wrote years ago for Wired about being hacked. That story remains one of the most widely read I’ve ever written. But ChatGPT didn’t link to it. It linked to a short rewrite from The Verge. Admittedly, this was on a prototype version of search, which was, as Turley said, “risky.” 

When I asked him about it, he couldn’t really explain why the model chose the sources that it did, because the model itself makes that evaluation. The company helps steer it by identifying—sometimes with the help of users—what it considers better answers, but the model actually selects them. 

“And in many cases, it gets it wrong, which is why we have work to do,” said Turley. “Having a model in the loop is a very, very different mechanism than how a search engine worked in the past.”

Indeed! 

The model, whether it’s OpenAI’s GPT-4o or Google’s Gemini or Anthropic’s Claude, can be very, very good at explaining things. But the rationale behind its explanations, its reasons for selecting a particular source, and even the language it may use in an answer are all pretty mysterious. Sure, a model can explain very many things, but not when that comes to its own answers. 


It was almost a decade ago, in 2016, when Pichai wrote that Google was moving from “mobile first” to “AI first”: “But in the next 10 years, we will shift to a world that is AI-first, a world where computing becomes universally available—be it at home, at work, in the car, or on the go—and interacting with all of these surfaces becomes much more natural and intuitive, and above all, more intelligent.” 

We’re there now—sort of. And it’s a weird place to be. It’s going to get weirder. That’s especially true as these things we now think of as distinct—querying a search engine, prompting a model, looking for a photo we’ve taken, deciding what we want to read or watch or hear, asking for a photo we wish we’d taken, and didn’t, but would still like to see—begin to merge. 

The search results we see from generative AI are best understood as a waypoint rather than a destination. What’s most important may not be search in itself; rather, it’s that search has given AI model developers a path to incorporating real-time information into their inputs and outputs. And that opens up all sorts of possibilities.

“A ChatGPT that can understand and access the web won’t just be about summarizing results. It might be about doing things for you. And I think there’s a fairly exciting future there,” says OpenAI’s Weil. “You can imagine having the model book you a flight, or order DoorDash, or just accomplish general tasks for you in the future. It’s just once the model understands how to use the internet, the sky’s the limit.”

This is the agentic future we’ve been hearing about for some time now, and the more AI models make use of real-time data from the internet, the closer it gets. 

Let’s say you have a trip coming up in a few weeks. An agent that can get data from the internet in real time can book your flights and hotel rooms, make dinner reservations, and more, based on what it knows about you and your upcoming travel—all without your having to guide it. Another agent could, say, monitor the sewage output of your home for certain diseases, and order tests and treatments in response. You won’t have to search for that weird noise your car is making, because the agent in your vehicle will already have done it and made an appointment to get the issue fixed. 

“It’s not always going to be just doing search and giving answers,” says Pichai. “Sometimes it’s going to be actions. Sometimes you’ll be interacting within the real world. So there is a notion of universal assistance through it all.”

And the ways these things will be able to deliver answers is evolving rapidly now too. For example, today Google can not only search text, images, and even video; it can create them. Imagine overlaying that ability with search across an array of formats and devices. “Show me what a Townsend’s warbler looks like in the tree in front of me.” Or “Use my existing family photos and videos to create a movie trailer of our upcoming vacation to Puerto Rico next year, making sure we visit all the best restaurants and top landmarks.”

“We have primarily done it on the input side,” he says, referring to the ways Google can now search for an image or within a video. “But you can imagine it on the output side too.”

This is the kind of future Pichai says he is excited to bring online. Google has already showed off a bit of what that might look like with NotebookLM, a tool that lets you upload large amounts of text and have it converted into a chatty podcast. He imagines this type of functionality—the ability to take one type of input and convert it into a variety of outputs—transforming the way we interact with information. 

In a demonstration of a tool called Project Astra this summer at its developer conference, Google showed one version of this outcome, where cameras and microphones in phones and smart glasses understand the context all around you—online and off, audible and visual—and have the ability to recall and respond in a variety of ways. Astra can, for example, look at a crude drawing of a Formula One race car and not only identify it, but also explain its various parts and their uses. 

But you can imagine things going a bit further (and they will). Let’s say I want to see a video of how to fix something on my bike. The video doesn’t exist, but the information does. AI-assisted generative search could theoretically find that information somewhere online—in a user manual buried in a company’s website, for example—and create a video to show me exactly how to do what I want, just as it could explain that to me with words today.

These are the kinds of things that start to happen when you put the entire compendium of human knowledge—knowledge that’s previously been captured in silos of language and format; maps and business registrations and product SKUs; audio and video and databases of numbers and old books and images and, really, anything ever published, ever tracked, ever recorded; things happening right now, everywhere—and introduce a model into all that. A model that maybe can’t understand, precisely, but has the ability to put that information together, rearrange it, and spit it back in a variety of different hopefully helpful ways. Ways that a mere index could not.

That’s what we’re on the cusp of, and what we’re starting to see. And as Google rolls this out to a billion people, many of whom will be interacting with a conversational AI for the first time, what will that mean? What will we do differently? It’s all changing so quickly. Hang on, just hang on. 

The Download: our 10 Breakthrough Technologies for 2025

This is today’s edition of The Download, our weekday newsletter that provides a daily dose of what’s going on in the world of technology.

Introducing: MIT Technology Review’s 10 Breakthrough Technologies for 2025

Each year, we spend months researching and discussing which technologies will make the cut for our 10 Breakthrough Technologies list. We try to highlight a mix of items that reflect innovations happening in various fields. We look at consumer technologies, large industrial­-scale projects, biomedical advances, changes in computing, climate solutions, the latest in AI, and more.

We’ve been publishing this list every year since 2001 and, frankly, have a great track record of flagging things that are poised to hit a tipping point. It’s hard to think of another industry that has as much of a hype machine behind it as tech does, so the real secret of the TR10 is really what we choose to leave off the list.

Check out the full list of our 10 Breakthrough Technologies for 2025, which is front and center in our latest print issue. It’s all about the exciting innovations happening in the world right now, and includes some fascinating stories, such as:

+ How digital twins of human organs are set to transform medical treatment and shake up how we trial new drugs.

+ What will it take for us to fully trust robots? The answer is a complicated one.

+ Wind is an underutilized resource that has the potential to steer the notoriously dirty shipping industry toward a greener future. Read the full story.

+ After decades of frustration, machine-learning tools are helping ecologists to unlock a treasure trove of acoustic bird data—and to shed much-needed light on their migration habits. Read the full story

+ How poop could help feed the planet—yes, really. Read the full story.

Roundtables: Unveiling the 10 Breakthrough Technologies of 2025

Last week, Amy Nordrum, our executive editor, joined our news editor Charlotte Jee to unveil our 10 Breakthrough Technologies of 2025 in an exclusive Roundtable discussion. Subscribers can watch their conversation back here. And, if you’re interested in previous discussions about topics ranging from mixed reality tech to gene editing to AI’s climate impact, check out some of the highlights from the past year’s events.

This international surveillance project aims to protect wheat from deadly diseases

For as long as there’s been domesticated wheat (about 8,000 years), there has been harvest-devastating rust. Breeding efforts in the mid-20th century led to rust-resistant wheat strains that boosted crop yields, and rust epidemics receded in much of the world.

But now, after decades, rusts are considered a reemerging disease in Europe, at least partly due to climate change. 

An international initiative hopes to turn the tide by scaling up a system to track wheat diseases and forecast potential outbreaks to governments and farmers in close to real time. And by doing so, they hope to protect a crop that supplies about one-fifth of the world’s calories. Read the full story.

—Shaoni Bhattacharya

The must-reads

I’ve combed the internet to find you today’s most fun/important/scary/fascinating stories about technology.

1 Meta has taken down its creepy AI profiles 
Following a big backlash from unhappy users. (NBC News)
+ Many of the profiles were likely to have been live from as far back as 2023. (404 Media)
+ It also appears they were never very popular in the first place. (The Verge)

2 Uber and Lyft are racing to catch up with their robotaxi rivals
After abandoning their own self-driving projects years ago. (WSJ $)
+ China’s Pony.ai is gearing up to expand to Hong Kong.  (Reuters)

3 Elon Musk is going after NASA 
He’s largely veered away from criticising the space agency publicly—until now. (Wired $)
+ SpaceX’s Starship rocket has a legion of scientist fans. (The Guardian)
+ What’s next for NASA’s giant moon rocket? (MIT Technology Review)

4 How Sam Altman actually runs OpenAI
Featuring three-hour meetings and a whole lot of Slack messages. (Bloomberg $)
+ ChatGPT Pro is a pricey loss-maker, apparently. (TechCrunch)

5 The dangerous allure of TikTok
Migrants’ online portrayal of their experiences in America aren’t always reflective of their realities. (New Yorker $)

6 Demand for electricity is skyrocketing
And AI is only a part of it. (Economist $)
+ AI’s search for more energy is growing more urgent. (MIT Technology Review)

7 The messy ethics of writing religious sermons using AI
Skeptics aren’t convinced the technology should be used to channel spirituality. (NYT $)

8 How a wildlife app became an invaluable wildfire tracker
Watch Duty has become a safeguarding sensation across the US west. (The Guardian)
+ How AI can help spot wildfires. (MIT Technology Review)

9 Computer scientists just love oracles 🔮 
Hypothetical devices are a surprisingly important part of computing. (Quanta Magazine)

10 Pet tech is booming 🐾
But not all gadgets are made equal. (FT $)
+ These scientists are working to extend the lifespan of pet dogs—and their owners. (MIT Technology Review)

Quote of the day

“The next kind of wave of this is like, well, what is AI doing for me right now other than telling me that I have AI?”

—Anshel Sag, principal analyst at Moor Insights and Strategy, tells Wired a lot of companies’ AI claims are overblown.

The big story

Broadband funding for Native communities could finally connect some of America’s most isolated places

September 2022

Rural and Native communities in the US have long had lower rates of cellular and broadband connectivity than urban areas, where four out of every five Americans live. Outside the cities and suburbs, which occupy barely 3% of US land, reliable internet service can still be hard to come by.

The covid-19 pandemic underscored the problem as Native communities locked down and moved school and other essential daily activities online. But it also kicked off an unprecedented surge of relief funding to solve it. Read the full story.

—Robert Chaney

We can still have nice things

A place for comfort, fun and distraction to brighten up your day. (Got any ideas? Drop me a line or skeet ’em at me.)

+ Rollerskating Spice Girls is exactly what your Monday morning needs.
+ It’s not just you, some people really do look like their dogs!
+ I’m not sure if this is actually the world’s healthiest meal, but it sure looks tasty.
+ Ah, the old “bitten by a rabid fox chestnut.”

New Books for Personal Growth in 2025

Now is the time for new year goal-setting and self-improvement. Here are 10 new books on managing time, setting priorities, and leading a more productive and purposeful life personally and professionally.

It’s About Time: Use Time to Create a More Meaningful Life

Cover of It's About Time

It’s About Time

by Christopher S. Hillier

Hillier is an entrepreneur, consultant, academic, and board member for private and nonprofit organizations. In his new book, he aims to help people who are “always busy, but not living the life they want” manage their time by focusing on what is meaningful rather than just efficient.

The 20 Hour A Week CEO: Mastering Online Business for a Balanced Life

Cover of 20 Hour a Week CEO

20 Hour a Week CEO

by Jess Cassity

This just-released book and workbook offer hands-on exercises, personal development techniques, and coaching insights to help entrepreneurs, online business owners, and busy executives achieve business success and a balanced life on their own terms.

Undoing Urgency: Reclaim Your Time for the Things That Matter Most

Cover of Undoing Urgency

Undoing Urgency

by Ryan Matt Reynolds

The founder and CEO of Barbell Logic, an online fitness platform, shares the lessons he learned and strategies he used to move from a feeling of “drowning in urgency” despite outward achievements towards a more value-driven life that is still successful.

Winning the Week: How to Plan a Successful Week, Every Week

Cover of Winning the Week

Winning the Week

by Demir Bentley and Carey Bentley

The “productivity power couple” who developed the anti-burnout Lifehack Method explains their five-step process for achieving results while avoiding fatigue. Reviewers praise its clear explanation of what to do and why it works.

The Five-Minute Reset: Simple Mindfulness Techniques for a Busy Life

Cover of 5 Minute Reset

5 Minute Reset

by Adam C. Norton

This brief mindfulness guide for busy people focuses on simple techniques and practices anytime and anywhere without extensive study or long-term commitment. Norton presents proven concepts such as gratitude journaling and breathing exercises to de-stress and improve focus on the go.

Goals! Third Edition: How to Get Everything You Want Faster Than You Ever Thought Possible

Cover of Goals!

Goals!

by Brian Tracy

Personal development guru Tracy offers an updated edition of this self-help classic with 20% more content and a new chapter. The book has sold nearly 1 million copies since 2003 and promises to teach strategies to help readers reach their goals and instill a long-term growth mindset.

Nothing Is Random: The Old, the New, and the Enduring Ideas in Business

Cover of Nothing Is Random

Nothing Is Random

by Matthew Kelly

Asserting that the “ability to connect one idea with every other idea is the essence of genius,” Kelly explores a series of seemingly random topics — “How do you learn?” “Why is strategic planning confusing?” “Are iPhones destroying the world?” — to recognize the patterns of seemingly disparate ideas.

Toxic Productivity: Reclaim Your Time and Emotional Energy in a World That Always Demands More

Cover of Toxic Productivity

Toxic Productivity

by Israa Nasir

Is “hustle culture” taking a toll on our mental and physical health? The author, a psychotherapist and founder of the Well Guide online community, seeks to “dismantle the myth that doing more makes you more worthy.” She combines psychological perspectives and human stories to guide readers in separating who they are from what they do, to help reclaim time and energy for a productive and meaningful life.

The Plan: Manage Your Time Like a Lazy Genius

Cover of The Plan

The Plan

by Kendra Adachi

The author of the 2021 bestseller “The Lazy Genius Way” applies her “kind big sister energy” to time management, offering a practical framework for getting things done without feeling overwhelmed by the pressures of productivity.

Leading to Thrive: Mastering Strategies for Sustainable Success in Business and Life

Cover of Leading to Thrive

Leading to Thrive

by Klaus Kleinfeld

Kleinfeld’s 40-year, multi-industry career included stints as CEO of Alcoa in the U.S. and Siemens in Germany. In this new book, he asserts that choosing between business success and a happy personal life is unnecessary. He draws on his experience to show readers how they can sustain energy, achieve balance, and find purpose — all while building world-class teams.

How Google Detects Duplicate Content

The myth of a duplicate content penalty has existed for years. Google seeks diverse search results and must choose when two or more pages are the same or similar, resulting in the others losing organic traffic — different from a penalty.

Google’s “Search Central” blog includes a guide on ranking systems that describes deduplication:

Searches on Google may find thousands or even millions of matching web pages. Some of these may be very similar to each other. In such cases, our systems show only the most relevant results to avoid unhelpful duplication.

Yet the guide doesn’t specify how the deduplication system chooses a page. In my experience, duplication occurs in four ways.

Similar pages

When a site has similar product or category pages or syndicates content (knowingly or not), Google will likely show only one page in search results. It’s not a penalty, but it does dilute traffic among the identical pages. Thus, ensure Google ranks the original, up-to-date, detailed, and relevant page (not a syndicated or scraped version).

Canonical tags and 301 redirects can point Google to the best page. Neither is foolproof, as Google views them as suggestions. The only way to force the best page is to avoid duplicating it.

The danger of duplicate content is when a third-party scraped version overranks the original. Google can usually identify scraped content, which is typically on low-quality sites with few or no authority signals. Thus a higher-ranking scraped version implies a problem with the original site.

Featured snippets

Featured snippets appear above organic search results and provide a quick answer to a query. Google removes featured snippet URLs from lower organic positions to avoid duplication.

The purpose of featured snippets is to answer queries, removing the need to click. Thus a featured snippet page likely receives less organic traffic, and there is no surefire method to prevent it. If a page suddenly loses traffic, check Search Console to see if it’s featured.

Google will likely deduplicate AI Overviews in the same way.

Top stories

Top stories” is a separate search-result section for breaking or relevant news. A URL in top stories typically loses its organic position.

Domains

Domain names trigger a different type of duplication beyond content. Google won’t typically show the same domain in top results, even for brand name queries. Keep an eye on queries for your brand to know other domains that rank for it and how to combat them.

Google Criticizes Bing For Mimicking Google’s Homepage via @sejournal, @MattGSouthern

Parisa Tabriz, the security leader for Google Chrome, has criticized Microsoft for a new strategy involving Bing’s search interface.

In a post on X (formerly Twitter), Tabriz denounced Microsoft’s decision to imitate the design of Google’s homepage, labeling it “another tactic in its long history of tricks to confuse users and limit choice.”

She concluded her statement with sharp words: “New year; new low, Microsoft.”

This criticism comes after Bing introduced a controversial feature that mimics Google’s user interface when users search for “Google” or “Google.com.”

Microsoft’s Sneaky New Bing Interface

When users not signed into a Microsoft account search for Google on Bing, they see a page that looks a lot like Google’s homepage.

Screenshot from: Bing.com, January 2025.

The page has a search bar in the center, a banner with animated figures similar to Google Doodles, and a message saying, “Every search brings you closer to a free donation. Choose from over 2 million nonprofits!”

This message links to the Microsoft Rewards catalog, where users can donate their reward points to nonprofit organizations.

The design makes it hard to see Bing’s branding by scrolling the page slightly down to hide the Bing logo.

Users may only realize they’re still using Bing when they scroll or interact with the page further.

Attempt To Retain Users

Industry observers like The Verge note this move appears targeted at users setting up new Windows PCs, who might initially search for Google through Microsoft Edge’s default Bing search engine.

The design change could potentially retain users who might otherwise switch to Google’s search platform.

Many of these users search for Google to switch their search engine. Microsoft’s change aims to keep users from leaving Bing.

While tech-savvy users may notice this strategy, it might persuade less experienced users to keep searching on Bing, helping Microsoft retain more users.

Broader Context: The Search Engine Wars

This latest tactic highlights the ongoing competition between Microsoft and Google in the search engine market.

Microsoft has employed various strategies to promote its Bing search engine and Edge browser, including pop-ups and changes to Chrome’s download pages.

In parallel, Google has encouraged users to download Chrome and set Google as their default search engine, though its methods haven’t included outright deception.

Google’s and Microsoft’s rivalry remains heated. As of December, Google’s search engine maintained a dominant global market share of 89.74%, while Microsoft’s Bing held 3.97%.

Final Thoughts

As Microsoft continues to push for greater adoption of Bing, the company’s latest tactic raises questions about user trust and transparency.

While the mimicry may boost Bing’s metrics in the short term, the backlash from users and industry leaders could damage Microsoft’s reputation.

Whether Microsoft will address the criticism or double down on its strategy remains to be seen.


Featured Image: kovop/Shutterstock

Google Clarifies 404 & Redirect Validation In Search Console via @sejournal, @MattGSouthern

Google’s Search Advocate, John Mueller, has provided insights into Search Console’s validation process, addressing how it handles 404 errors and redirects during site migrations.

Key Points

A Reddit user shared their experience with a client’s website migration that led to a loss in rankings.

They explained that they took several steps to address the issues, including:

  • Fixing on-site technical problems.
  • Redirecting 404 pages to the appropriate URLs.
  • Submitting these changes for validation in Google Search Console.

Although they confirmed that all redirects and 404 pages were working correctly, they failed to validate the changes in Search Console.

Feeling frustrated, the user sought advice on what to do next.

This prompted a response from Mueller, who provided insights into how Google processes these changes.

Mueller’s Response

Mueller explained how Google manages 404 errors and redirect validations in Search Console.

He clarified that the “mark as fixed” feature doesn’t speed up Google’s reprocessing of site changes. Instead, it’s a tool for site owners to monitor their progress.

Mueller noted:

“The ‘mark as fixed’ here will only track how things are being reprocessed. It won’t speed up reprocessing itself.”

He also questioned the purpose of marking 404 pages as fixed, noting that no further action is needed if a page intentionally returns a 404 error.

Mueller adds:

“If they are supposed to be 404s, then there’s nothing to do. 404s for pages that don’t exist are fine. It’s technically correct to have them return 404. These being flagged don’t mean you’re doing something wrong, if you’re doing the 404s on purpose.”

For pages that aren’t meant to be 404, Mueller advises:

“If these aren’t meant to be 404 – the important part is to fix the issue though, set up the redirects, have the new content return 200, check internal links, update sitemap dates, etc. If it hasn’t been too long (days), then probably it’ll pick up again quickly. If it’s been a longer time, and if it’s a lot of pages on the new site, then (perhaps obviously) it’ll take longer to be reprocessed.”

Key Takeaways From Mueller’s Advice

Mueller outlined several key points in his response.

Let’s break them down:

For Redirects and Content Updates

  • Ensure that redirects are correctly set up and new content returns a 200 (OK) status code.
  • Update internal links to reflect the new URLs.
  • Refresh the sitemap with updated dates to signal changes to Google.

Reprocessing Timeline

  • If changes were made recently (within a few days), Google will likely process them quickly.
  • For larger websites or older issues, reprocessing may take more time.

Handling 404 Pages

  • If a page is no longer meant to exist, returning a 404 error is the correct approach.
  • Seeing 404s flagged in Search Console doesn’t necessarily indicate a problem, provided the 404s are intentional.

Why This Matters

Website migrations can be complicated and may temporarily affect search rankings if not done correctly.

Google Search Console is useful for tracking changes, but it has limitations.

The validation process checks if fixes are implemented correctly, not how quickly changes will be made.

Practice patience and ensure all technical details—redirects, content updates, and internal linking—are adequately addressed.


Featured Image: Sammby/Shutterstock

Google AI Overviews Appear in 18% Of Publisher-Related Queries via @sejournal, @MattGSouthern

New research indicates that Google’s AI Overviews appear in 18% of publisher-related search queries.

Additionally, the findings suggest that traditional search ranking factors may be less relevant for content appearing in AI Overviews.

Here are more highlights from the study released by ZipTie.dev, which analyzes over 500,000 queries across multiple industries.

Key Findings

Data indicates that 63% of sources cited in AI Overviews are not found in the top 10 traditional search results.

This change illustrates a shift in Google’s strategy, as explained by Rudzki.:

“In traditional ranking, Google’s job is to send you to pages that you will likely be satisfied with. With AI Overviews the goal is different, it’s about showing you the best answer.”

The analysis found different frequencies of AI Overviews in search results:

  • “How much” queries show AI Overviews 54% of the time.
  • Review-related queries show AI Overviews only 9% of the time.
  • “What is” queries generate AI Overviews 39% of the time.

The study also notes that Google is using YouTube content in AI Overviews. This change could give publishers with video strategies more visibility opportunities.

Questions About Authority

Research shows that some publications are featured prominently in AI Overviews, even when the topics are outside their usual areas of expertise.

For example, Business Insider is often cited for celebrity news, while The Times of India is mentioned in health-related discussions.

This trend indicates that traditional ideas about who has authority on a topic are becoming less important.

Looking Ahead

AI Overviews are now available in over 100 countries and territories. However, their use in the EU is limited because of regulations. Right now, the feature has only a small amount of ads.

The study expects AI Overviews to grow more in the future, but notes two main factors that could slow this expansion.

Rudzki states:

“Google is not putting ads in AI Overviews, except for very limited usage. Once they will find a good way to earn money, they will likely increase the share of AI Overviews.”

Additionally, he notes that user experience remains crucial:

“Google just can’t put AI Overviews for every keyword. This would translate to extremely low satisfaction rates.”

Methodology

The analysis examined over 500,000 queries across multiple industries between June and December 2024.

The complete study and detailed methodology are available through ZipTie.


Featured Image: Below the Sky/Shutterstock

AI-Organized SERPs & Overviews: How To Win Visibility In The New Landscape Of SEO via @sejournal, @lorenbaker

Struggling to keep up with Google’s latest generative AI updates? Wondering how AI-organized SERPs and Overviews are impacting your SEO strategy? You’re not alone.

Join us for an exclusive webinar as we break down the newest developments in AI-powered search and share actionable insights to help you succeed in this evolving landscape.

Why This Webinar Is a Must-Attend Event

Google’s AI Overviews and AI-organized SERPs are reshaping how search engines display and rank content. To stay ahead, you need to understand how these features work and adapt your SEO strategy accordingly.

In this session, you’ll learn:

  • Fresh Insights from STAT Research – Discover data-driven takeaways from the latest AI Overviews research.
  • How AI-Organized SERPs Work – Unpack the mechanics behind these features and their impact on organic visibility.
  • Practical Strategies to Optimize for AI Features – Learn which keywords to prioritize, how to target AIOs, and what it all means for the future of SEO.

Expert Insights From Tom Capper

Leading the webinar is Tom Capper, who will dive into fresh data comparing the prevalence of AI Overviews by industry, geography, and search intent. He’ll also reveal the key factors that correlate with appearing in these AI-driven features.

Who Should Attend?

This webinar is perfect for:

  • SEO professionals aiming to adapt to AI-driven changes.
  • Digital marketers looking to maximize organic visibility.
  • Businesses who are eager to stay competitive in a shifting search landscape.

Live Q&A: Get Your Questions Answered

Stick around for a live Q&A with Tom Capper, where you can ask your most pressing questions about AI and SEO.

Don’t Miss Out!

AI-Organized SERPs and Overviews are transforming SEO, and the changes are accelerating. Join us live to stay ahead of the curve.

Can’t attend live? No problem—register anyway, and we’ll send you the recording.

Get ready to level up your SEO strategy with cutting-edge AI insights. Register today!

5 Key Enterprise SEO And AI Trends For 2025

Artificial intelligence isn’t just influencing search – it’s fundamentally reshaping how users discover information and how search engines deliver results.

This evolution presents extraordinary opportunities while adding more complexity for enterprise SEO organizations.

How Enterprise SEO Has Changed

Organizations are grappling with an environment where AI doesn’t just assist with search – it fundamentally shapes how every marketing function performs.

To accommodate so many new search developments and the integration of AI applications, almost every enterprise organization will, at some point, have to elevate, restructure, and integrate their SEO departments deeper within their marketing, creative, and branding teams.

Enterprise SEO is now pivotal to multiple channels and markets. Its integration with generative AI markets alone (not to mention content markets) means its total addressable market (TAM) grows.

The Evolution Of AI-First Search

The rapid progression of AI is redefining how organizations approach SEO.

Its integration into Google AI Overviews and the rise of new AI-first entrants like Perplexity and OpenAI’s ChatGPT Search have fundamentally shifted approaches from basic keyword matching to prioritizing user intent and delivering conversational, synthesized responses.

While Google remains dominant with 92% market share, new entrants are growing at a rapid rate, which is expected to accelerate in 2025 and potentially impact market share.

Image from BrightEdge, November 2024

1. Understanding New Search Behaviors: Information And Assistance

The way users interact with search has fundamentally transformed this year.

We’ve moved beyond simple keyword queries to complex, contextual interactions that span multiple formats and devices.

AI chatbots and generative AI are starting to impact search behavior as users expect search engines to understand their intent rather than just their words.

People are using AI chatbots to find answers to questions while others – like Generation Z – look to social platforms to search.

They are looking for conversations and new ways to interact in search.

Critical Changes In Search Patterns

Modern users are approaching search differently than ever before:

  • Conversational Queries: Natural language searches have increased dramatically.
  • Multi-Step Journeys: Users often conduct multiple related searches to achieve their goals.
  • Cross-Device Behavior: The average user switches between three devices during a single search journey.
  • Format Flexibility: Users freely mix text, voice, and visual search methods.

In addition, shifts from Google and AI engines will mean organizations have to pivot for some major changes ahead:

  • Multiple platforms, from traditional search to AI-first answer engines and more.
  • Multiple search formats (text, voice, visual).
  • The integration of search and AI and video into multiple device types.
  • Different user journey stages and journeys between engines and AI chatbots.
  • New personalization requirements by engine, user preference, and use case.

2. The Expanding AI & Search Landscape: Shaping Enterprise SEO’s Future

We’re witnessing a fundamental shift from traditional keyword-based search to AI-powered discovery systems that understand and anticipate user needs.

Unlike traditional search engines, AI-driven platforms provide holistic interpretations of user queries, offering detailed answers and anticipating potential follow-up questions.

They are doing this in three ways:

  • Generative Search Results: Search engines now routinely generate custom responses rather than just linking to existing content. This means enterprises need to optimize not just for visibility but for click value.
  • Multimodal Search Integration: The ability to search using text, images, voice, and even video simultaneously is becoming standard. Enterprises must ensure their content is optimized for all these formats.
  • Real-Time Content Analysis: AI engines can now analyze and understand content in real time, making freshness and authenticity more important than ever.

These shifts require enterprise SEO marketers to become more involved in creating authoritative, informative, and well-structured content to be found and cited by AI engines.

This also expands to entrants like You.com, Brave as a privacy engine, and Anthropic’s Claude.

And do not forget: social media platforms.

Many platforms, such as Meta, are building AI-powered search engines. In Meta’s case, it is building a search index to complement its Meta AI chatbot and rely less on Google.

As demographic understanding and targeting become essential, platforms like TikTok, Instagram, and Snap are prime for Gen Z searches and sources of information.

Learn More: The Rise Of TikTok As A Search Engine

Devices

Worldwide, wearable device shipments will reach 537.9 million units by the end of the year. This is another rapidly developing market for enterprise SEO professionals to consider.

The key to AR/VR, AI glasses, pins, and smart device success lies in consumer comfortability.

The AI and wearable trend is not just about the device or gadget. It’s about creating a symbiotic relationship between humans and new AI technology – another consideration for 2025.

Wider Big Tech Ecosystem Relationships

And let’s not forget that, while there is competition in search, there are also partnerships that enterprise SEO marketers need to keep an eye on.

Apple Intelligence and ChatGPT will be something to watch as AI and search reach more mobile devices.

Amazon and Anthropic are making strides, catering to enterprises with their computer-to-computer autonomous digital agent.

3. Understanding Different Engines And Different Use Cases

Marketers will face a diverse ecosystem where multiple AI-powered platforms serve different user needs and search intentions.

AI-driven engines like Google AIO, ChatGPT, and Perplexity have introduced diverse ways of searching for and consuming information.

Here are the three main ways for the purpose of this article.

Image from BrightEdge, November 2024

Google AI Overviews

Google’s entry into this space with AI Overviews shows how traditional search is evolving.

These AI summaries appear at the top of search results, giving users quick insights while maintaining access to traditional search features.

AI Overviews summarize search results for users, often highlighting authoritative sources and presenting concise answers at the top of the search page.

  • Functionality: Google’s AI Overviews provide AI-generated summaries at the top of search results, offering quick insights into products and trends.
  • User Experience: Combines AI-generated summaries with traditional search results, providing users with comprehensive insights and direct links to various retailers and sources.
  • Advantages: Google’s extensive search database, local business information, and real-time index.

Perplexity

Its strength lies in how it weaves citations directly into its answers, creating quick summaries that users can trust.

Think of it as having a research assistant who finds information and shows exactly where it came from. This makes it incredibly useful for comparing different sources and gathering reliable information quickly.

  • Functionality: Perplexity AI is a conversational search engine that uses large language models to answer queries, generating answers using sources from the web and citing links within the text response.
  • User Experience: Delivers concise, AI-generated summaries with citations, aiding users in quick comparisons and information gathering.
  • Advantages: Efficient for obtaining summarized information with citations, making it easier for users to verify sources.

ChatGPT Search

Uses Bing’s live index to surface real-time results. It is now integrated into ChatGPT Search; its conversational approach and transparent citations allow users to find relevant, up-to-date information efficiently.

  • Functionality: OpenAI’s ChatGPT Search integrates real-time web search capabilities into its AI chatbot, providing up-to-date information on products, prices, and availability.
  • User Experience: A conversational response with direct links to sources facilitates an engaging user experience.
  • Advantages: Provides personalized assistance and detailed product information, enhancing user decision-making.

Learn More: AI Agnostic Optimization: Content For Topical Authority And Citations

4. Maintaining Technical SEO While Building Content For Authority

While AI and new technologies continue to reshape the search landscape, the fundamental technical principles of SEO remain crucial for success.

Making Content AI-Readable

The foundation of effective AI optimization will lie in implementing robust structured data and schema markup.

These technical elements are a translation layer between your brand, content, and AI systems. With schema markup, you’re essentially providing AI engines with a roadmap to understand:

  • Customer Q&As and help resources.
  • Detailed product specifications and features.
  • User feedback and testimonials.
  • Content creator expertise and qualifications.

Building Digital Trust And Authority

Success in AI-powered search requires establishing strong content credibility.

Modern AI search platforms evaluate authority through multiple lenses – not just traditional metrics like backlinks but also information accuracy and source reliability.

Establishing Source Credibility

AI search engines place significant weight on content from verified, authoritative sources. This shift means content creators must focus on building and maintaining their reputation as trusted information providers.

Image from BrightEdge, November 2024

Authority Building And Enterprise SEO

  1. Expert-Driven Content Development: Partner with subject matter specialists to create in-depth, authoritative content. Highlight the author’s expertise through detailed biographical information and credentials.
  2. Strategic Link Building: While the role of backlinks has evolved, they remain valuable trust signals. Focus on cultivating relationships that lead to natural link placement from respected industry websites and thought leaders.
  3. Platform Integration: Align your content strategy with established authorities in your field. Whether it’s academic institutions for educational content or recognized medical resources for health information, ensure your material complements and connects with these trusted platforms.

5. Mastering New Visual Formats: The Rise Of Multimodal Search

Text-based search is no longer the sole player in the field. Multimodal search, which combines text, voice, image, and video, will become standard practice.

BrightEdge observed a 121% increase in ecommerce-related YouTube citations for AI Overviews.

Due to the multimodal nature of generative AI, this means that the AI is capable of “watching” a video and using the content in it to help formulate an answer.

Unlike traditional search, where transcripts or metadata around a video are necessary to ensure rankings, AI can seamlessly pivot between video and text.

Image by author (with sources from BrightEdge and Google Search), November 2024

Enterprises must expand their SEO strategies to include diverse content types and ensure their assets are optimized for video, visual, and voice-activated searches.

Speak Your Audience’s Language

As voice-activated searching becomes mainstream, content needs to mirror natural conversation patterns.

Instead of focusing solely on traditional keyword optimization, craft content that answers questions the way people actually ask them.

Think about the difference between typing “best Italian restaurants in San Mateo” versus asking, “Where can I find authentic Italian food near me in San Mateo?” Your content should address both.

Create More Rich Media Experiences

Get visual with your storytelling and transform your SEO and content strategy by incorporating compelling visual elements that enhance user understanding:

  • Professional photography.
  • Custom graphics that explain complex concepts.
  • Video demonstrations that showcase expertise.

Make Your Media AI-Friendly For Enterprise SEO Success

Help AI systems understand and properly index your multimedia content by:

  • Implementing detailed technical markup for videos and images.
  • Creating comprehensive media descriptions that provide context.
  • Ensuring all media elements support and enhance your main message.

Enterprise SEO Focus On The Now And The Future

While Google still dominates, marketers should continue to focus on balancing traditional search and AI Overviews while optimizing for high-growth alternative engines.

While multiple legal trials and cases across the whole search and AI landscape take place, as marketers, we need to focus on the now while always preparing for pivots.

In 2025, Enterprise SEO professionals need to focus on:

  • Managing enterprise SEO with all marketing disciplines – site-to-brand teams.
  • Internal governance and alignment on the use of AI for SEO and content.
  • Utilizing AI correctly for insights, creation, optimization, and scale automation.
  • CEO and CMO stakeholder management and help guide and understand search and AI changes and their importance to your site(s) and brand performance.
  • All to ensure your brand is cited and sourced as the authority in your domain regardless of the search or AI engine.

The complexity of modern enterprise SEO will demand a new organizational approach. Success requires seamless integration between SEO, content, technical teams, and AI specialists.

Monitoring, adapting, and growing are the three “keywords” to have a conversation around.

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