Category: AI SEO

  • How AI Perception Drift Will Redefine SEO Strategies by 2026

    How AI Perception Drift Will Redefine SEO Strategies by 2026

    I’m always fascinated by how technology evolves, especially when it comes to AI models. Recently, I stumbled upon some compelling data showing how these AI systems are reshaping brand hierarchies and influencing buyer decisions at an unprecedented speed.

    AI models like ChatGPT, Gemini, and Claude have become a part of our daily interactions, from search to content creation and product recommendations.

    According to a survey conducted by Responsive, a significant 80% of tech buyers now use generative AI to research vendors just as often as they use traditional search methods. This shift in how buyers build trust with AI-driven discovery tools quietly determines which brands stay top-of-mind and which fade into oblivion.

    At Previsible, we’ve been analyzing this intriguing phenomenon through what we call LLM perception drift. It’s a new metric revealing how AI models are dynamically organizing brands within specific categories over time. (Disclosure: I am the CEO and co-founder of Previsible.)

    Our case study on project management software, comparing data from September to October 2025, highlights just how quickly AI brand perception can change. This volatility is set to become the next major metric for SEO strategies.

    Key insights

    • The concept of LLM perception drift is emerging as a crucial visibility metric in SEO and B2B marketing.
    • Brands like Atlassian gained prominence, while others like Trello and Slack saw declines, indicating the dynamic nature of AI perception.
    • Understanding AI brand perception is pivotal for marketers aiming to grasp authority and relevance in language models.
    • By 2026, maintaining digital visibility will hinge on AI brand signal stability as LLMs rapidly evolve.

    A subtle shake-up inside the AI mind

    Evertune’s AI brand score provides insights into how likely a model is to recommend a brand without specific prompting. It measures both visibility and ranking within AI responses.

    September to October shifts highlight considerable changes in the internal brand landscape of AI models. Notably, Slack saw a significant decline, while Atlassian experienced a boost.

    This seemingly simple reshuffle reveals a deeper transformation in AI’s nonspecific brand awareness, altering how the model discerns and prioritizes brands despite market stability.

    The meaning behind the drift

    We’re seeing two main forces driving these shifts:

    Category entanglement

    Rather than declining, categories are blurring — project management tools are being integrated into broader conceptual frameworks.

    • Operations
    • Digital transformation
    • Workflow orchestration
    • Enterprise productivity
    • IT consulting

    Names like Deloitte and KPMG rise alongside Smartsheet and Atlassian.

    Ecosystem advantage

    Brands with multi-product ecosystems are getting noticed more. Atlassian’s lift, for example, stems from its robust documentation and integration abilities. Brands like Microsoft, Google, and Amazon are also seeing positive movement.

    Models increasingly prefer brands that span multiple ecosystems, echoing entity-based SEO patterns but at a faster, more volatile pace.

    Dig deeper: Alignment for LLM visibility is incredibly complex, but doable


    New entrants, new patterns

    We observe emerging trends in newer brands like Celoxis and Workfront, showcasing how fine-tuned LLMs draw from diverse datasets.

    • SaaS directories
    • GitHub repositories
    • Technical documentation
    • Reviews
    • Community content

    For smaller B2B brands, this represents a gateway to visibility without needing to dominate traditional SEO metrics.

    Why this shift matters for B2B discovery – and why it’s speeding up

    Traditional SEO focuses on visible search results, whereas LLMs synthesize knowledge based on associations and contextual richness.

    ```json
{
  "alt": "Bar chart showing AI brand score volatility for companies like Atlassian, Slack, Microsoft.",
  "caption": "AI Brand Score Volatility: Atlassian excels with a +5.5 score, contrasting Slack's dip to -8.1. Discover how leading companies fluctuate in AI perception.",
  "description": "The image is a bar chart depicting the volatility of AI brand scores among various tech companies. Atlassian shows a significant positive change of +5.5, while Slack experiences a decline to -8.1. Other companies included in the chart are Asana, Monday.com, Microsoft, ClickUp, Wrike, Trello, Smartsheet, Google, Deloitte, KPMG, Amazon, Adobe, and Ernst & Young (EY). The bars, displayed horizontally, represent scores ranging from -10 to +10. The chart provides insights into the fluctuation of AI perceptions for these brands, useful for market analysis and strategic planning."
}
```

    This means that brand recall in AI systems relies on deeper semantic connections, and these can fluctuate significantly over short periods.

    Understanding and leveraging this LLM perception drift is crucial — being consistently recognized in AI outputs is now as vital as traditional search rank.

    Dig deeper: Why AI availability is the new battleground for brands

    A new AI optimization KPI: AI brand signal stability

    In working with B2B clients, we’re focusing on AI brand signal stability as an emerging metric — tracking how consistently a brand’s presence is maintained in AI outputs.

    Fluctuations suggest fragile brand perception, influenced by data changes and model retraining, while stable scores indicate strong semantic grounding.

    In coming years, AI brand signal stability will be essential alongside share of voice and traditional SEO metrics.

    From project management to every B2B vertical

    This transformation isn’t limited to project management — it’s happening across all B2B sectors.

    The recalibration of category contexts by AI models alters the buying journey, influencing brand appearance in AI-generated content.

    The rise or fall of brand attention affects which brands occupy summative or comparative outputs, making AI memory a new realm of marketing focus.

    Dig deeper: LLM perception match: The hurdle before fanout and why it matters

    The next frontier of optimization

    This shift marks SEO’s evolution — from focusing on search indices to emphasizing model memory optimization. Our goals now include measuring how AI interprets and recalls brand identity.

    It’s about ensuring that AI systems correctly interpret and represent brands across their expansive digital landscapes.

    This demands new strategies and tools tailored to how dynamic perception systems function, rather than treating them as static outcomes.

    Evertune’s dataset highlights more than monthly position changes — it showcases a quick shift in AI’s category perception, which marketing teams must monitor to stay competitive.

    By 2026, brand appearance in AI-generated summaries will play a bigger role in decision-making than traditional metrics like pageviews or clicks. Brands that effectively manage their model-driven visibility will set themselves apart as AI becomes a mainstay in digital research.


    Inspired by this post on Search Engine Land.


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  • Navigating the AI Shift in Digital Marketing

    Navigating the AI Shift in Digital Marketing

    I’ve witnessed firsthand how AI agents are taking over traditional browsing methods by executing tasks directly. This shift makes web clicks and the funnels that depend on them increasingly obsolete.

    In this evolving landscape, it’s crucial for brands like mine to optimize for machine users. Becoming favorable to AI systems will determine which brands succeed moving forward.


    Inspired by this post on Try Profound Blog.


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  • Unleashing AI in Google Search Console for Dynamic Reporting

    Unleashing AI in Google Search Console for Dynamic Reporting

    Imagine being able to simply type what data you want in a report, and, voilà, Google creates it for you on the spot. That’s exactly what’s happening with Google’s new experimental feature in Search Console!

    Recently, I learned about Google’s exciting “AI-powered configuration” update within the Search Console Performance report. This experimental feature allows you to request a specific report, and Google will instantly configure it for you. Not everyone can access it just yet, but it’s definitely something to keep an eye on.

    I immediately thought of the AI-powered advisors Google offers for Ads and Analytics. Now, similar technology is being harnessed for Search Console. According to Google, this AI-powered configuration lets you describe the analysis you want in everyday language. Your description is then transformed into appropriate filters and settings, configuring the report instantly!

    Curious about how it looks? There’s a GIF demonstration that perfectly showcases how it generates reports based on your questions, making the process seem almost magical.

    The cool part is that this feature streamlines your analysis by handling several key elements. First, it automatically selects metrics like Clicks, Impressions, Average CTR, and Average Position based on your query.

    It also applies filters to narrow down data by different factors such as query, page, country, device, search appearance, or date range. Additionally, you can set up complex comparisons without having to fiddle with manual setup.

    ```json
{
  "alt": "Graphical data report showing impressions, CTR, and average position over three months.",
  "caption": "Explore your engagement data with this interactive report showcasing impressions, CTR, and average position trends over the past three months.",
  "description": "This image features a data report interface displaying key metrics such as 1 million impressions, a 0.2% click-through rate (CTR), and an average position of 16.9 over a three-month period. The graphical line chart illustrates fluctuations in impressions, visualized in purple and blue lines against a white grid. Additional data tabs show countries, devices, and search appearance metrics. This analysis tool is ideal for tracking digital marketing performance and engagement patterns."
}
```

    Although the rollout is currently slow, Google plans to expand this feature over time. But, being early days, the feature does have some limitations. It’s solely meant for configuration tasks and doesn’t perform actions like sorting tables or exporting data.

    The feature currently only supports the Performance report for Search results and isn’t available for Discover or News reports. Also, since the AI might occasionally misinterpret requests, I recommend reviewing the suggested filters to make sure they align with your needs before diving into data analysis.

    Honestly, I’m excited about this tool because it could potentially unveil insights in reports that were otherwise challenging to discover using standard filters. While most of us still need to wait for this feature to be accessible, it’s worth a try once available to explore new data insights.

    If you’re looking for more information, head over to the Google help documentation. There’s plenty to learn and get familiar with!


    Inspired by this post on Search Engine Land.


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  • Unleashing PESO Power: Enhance AI Search Visibility

    Unleashing PESO Power: Enhance AI Search Visibility

    As I delve into the evolving world of AI and brand discovery, I’ve noticed how AI is transforming the way people find and perceive brands.

    More and more, users are leaning towards AI-driven platforms like ChatGPT, Perplexity, and Google’s AI Overviews, rather than traditional search engines to get their answers.

    These AI tools provide synthesized summaries instead of regular search results, prompting me as a marketer to rethink how we can achieve visibility.

    SEO remains important but now extends far beyond on-page strategies. It’s about how frequently I’m able to ensure our brand is mentioned and discussed across various digital arenas.

    This is where the PESO model comes into play. PESO, which stands for paid, earned, shared, and owned media, is becoming increasingly critical in my strategy for generative search visibility.

    By balancing these media types, I can create a ‘visibility engine’ that fuels trust signals and contextual cues, enabling AI to include our brand in its summaries.

    Generative search visibility is about ensuring our brand’s presence in AI-generated responses on various platforms.

    These AI systems pull from a wealth of data, ranging from news to forums, and being consistently cited in recent and reliable content increases our chances of being noticed.

    With PESO, I’m reminded that AI doesn’t see our marketing silos. It’s about reinforcing our brand across these channels to enhance our presence in AI results.

    Let’s explore how each PESO component influences AI visibility.

    Paid media, albeit indirect in AI summaries, boosts the authority and engagement signals AI systems recognize by driving traffic to well-crafted content.

    Earned media is crucial as up to 89% of AI citations come from such sources. Being featured in high-authority articles can elevate our brand’s credibility and reach.

    Shared media’s role cannot be overlooked. Engagement across platforms like LinkedIn influences AI by indicating trending and credible topics.

    Owned media remains a stronghold, with structured data and clear formatting ensuring our web content is AI-accessible, responding to major queries effectively.

    Applying PESO towards generative engine optimization includes understanding audience inquiries, reinforcing messages, monitoring content appearance, and auditing for trust signals, which are essential steps for me to enhance our brand’s AI visibility.

    The PESO model is far beyond just media balance. It’s a strategic lever allowing me to build trust and visibility, adapting as AI systems change how users discover information.

    Through consistency and meaningful content across PESO channels, I can ensure our brand isn’t left out of these vital AI-driven conversations.


    Inspired by this post on Search Engine Land.


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  • How New AI Models Are Disrupting My SEO Strategies

    How New AI Models Are Disrupting My SEO Strategies

    I’ve noticed a startling trend with the latest AI models: they’re wreaking havoc on my SEO workflows. The recent benchmark results show that there’s a significant 9% drop in SEO accuracy with newer models like Claude, Gemini, and GPT.

    It turns out, these AI models aren’t just glitching—it’s all part of how they’re optimized now for deeper reasoning rather than giving quick, straightforward answers.

    Last year, it was easy to think that newer meant better. But the results from our AI SEO benchmark with Claude Opus 4.5, Gemini 3 Pro, and ChatGPT-5.1 Thinking make it clear: newer models aren’t just failing to improve, they’re actually less effective.

    ```json
{
  "alt": "Previsible.io reports a 7.8% decrease in SEO task performance for new AI models, November 2025.",
  "caption": "New benchmark by Previsible.io reveals a 7.8% drop in SEO efficiency of the newest AI models, challenging industry standards.",
  "description": "An infographic by Previsible.io highlights a 7.8% decrease in standard SEO task performance of the latest flagship AI models compared to previous versions, as per the AI SEO Benchmark report in November 2025. This suggests a potential concern for businesses relying on these technologies for SEO purposes. The report's findings are presented with a clean, modern design featuring a wavy pattern at the bottom, enhancing its visual appeal."
}
```

    I can no longer rely on models out of the box. If I want to get back to, or surpass, the accuracy benchmarks, I need to focus on structuring my workflow differently. Just using raw prompts isn’t going to cut it anymore.

    One of the biggest shifts I need to make is moving away from the chat interface and towards more structured workflows. This means considering tools like OpenAI’s Custom GPTs or Google’s Gemini Gems.

    ```json
{
  "alt": "Table comparing language models with scores, percentage difference, and release dates.",
  "caption": "Explore the latest performance stats of leading language models, along with their scores and release dates. Which model stands out for you?",
  "description": "This image features a comparison table of three language models: Claude Opus 4.5, Gemini 3 Pro, and Chat GPT-5.1 Thinking. Each model is evaluated with a score out of 100, with Claude Opus 4.5 scoring 76%, Gemini 3 Pro at 73%, and Chat GPT-5.1 Thinking leading with 77%. The table highlights the negative percentage differences compared to previous versions, denoted in red: -8%, -9%, and -6%, respectively. Additionally, the release dates are listed as November 24, 2025, November 18, 2025, and November 12, 2025."
}
```

    I’ve realized that hard-coding context is crucial. Without strict guidelines, these models stray, giving generic instead of tailored advice.

    The key takeaways for me are clear: I shouldn’t rush to upgrade to the newest models simply because they’re the latest. I shouldn’t be stuck on single prompts without robust contextual backgrounds either.

    In this new age of AI agents, my role isn’t becoming obsolete. Instead, it’s evolving, requiring me to architect AI systems and apply my judgment to refine and steer outputs effectively.


    Inspired by this post on Search Engine Land.


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  • Master AEO Content Writing: Boost Visibility in LLMs

    Master AEO Content Writing: Boost Visibility in LLMs

    I’ve discovered the art of AEO content writing, and it’s all about structure, thorough research, and establishing authority signals. This approach can significantly boost the chances of your content being cited by LLMs such as ChatGPT, Gemini, and Perplexity.


    Inspired by this post on HiGoodie Blog.


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  • Discover How Google AI Mode Drives 69% of Transactional Clicks

    Discover How Google AI Mode Drives 69% of Transactional Clicks

    AI-generated answer

    I’ve explored recent UX testing that reveals Google AI Mode doesn’t eliminate high-value clicks. Users still visit websites when choosing services like doctors and dentists.

    In the SEO world, there’s a prevailing belief: Google’s AI Mode fails to drive traffic. The worry is that if it becomes the default search tool, websites might miss out on crucial clicks.

    However, there’s a catch—most studies highlighting traffic loss focus on informational queries.

    Imagine someone curious about the appearance of basal cell carcinoma; AI might indeed reduce those clicks.

    But what about when someone needs to book an appointment with a dermatologist?

    No studies had ventured into this territory yet, so I took the initiative.

    I conducted the first UX study focusing on transactional intent within AI mode, observing 52 participants across the U.S. and Canada over nearly 22 hours as they searched for high-commitment services.

    Here’s what I uncovered.

    1. 69% of AI Mode Users Visited a Website

    During transactional searches, such as finding a dentist or dermatologist, 69% of sessions in AI Mode led to a website visit.

    Through our study, only 27% felt “ready to make a decision” solely from the AI summary, with 4% checking traditional Google Search and social media for more info.

    ```json
{
  "alt": "Bar chart comparing website visits versus staying in AI Mode.",
  "caption": "AI Engagement: A bar chart reveals the comparative data between users visiting a website and those remaining in AI Mode, highlighting engagement patterns.",
  "description": "This bar chart illustrates a comparison between users who stayed in AI Mode versus those who visited a website, showcasing engagement levels. The 'Stayed in AI Mode' bar is shorter. Conducted by Sagapixel Healthcare Marketing, the study provides insights into user behavior and digital engagement metrics. Relevant for understanding AI interaction trends."
}
```

    Users rely on AI Mode to form a consideration set rather than to follow its directive blindly.

    2. Being Ranked #1 Isn’t the Ultimate Win

    For decades, holding the top SEO spot was like hitting the jackpot.

    AI Mode has redefined this dynamic: in our study, 89% of users clicked on multiple businesses.

    Users aren’t looking for just one suggestion; they want a selection to consider. On average, participants checked 3.7 results per session, and only 10% looked at just one business.

    This shift is enormous.

    You no longer need to expend all efforts to be at the top but rather aim to secure a spot within the top three to five results. Clicking the competitors is common, too.

    3. 16% of Users Trust Above-the-Fold Content

    It’s often assumed users don’t scroll.

    This isn’t true for AI Mode users. 84% of participants scrolled down to explore options.

    Because AI results are seen more as curated lists, users are keen to browse and find the best fit.

    ```json
{
  "alt": "Bar chart showing the number of businesses checked in AI mode against the number of searches, with data from 1 to 10 businesses.",
  "caption": "Explore how AI mode influences the number of businesses checked per search in this insightful bar chart. Discover patterns and trends in business searches.",
  "description": "This image displays a bar chart titled 'Number of Businesses Checked in AI Mode.' The chart shows varying levels from 1 to 10 businesses checked, with the highest number seen in the lower business range, tapering off towards higher numbers. The y-axis represents the number of searches up to 40. Conducted by Sagapixel Healthcare Marketing, this visual provides insights into consumer behavior in AI search contexts."
}
```

    4. Reviews Outweigh Photos in Influence

    Only 21% of users looked at photos in Google Business Profiles, even for services like Botox, which saw a slight increase to 24%.

    What’s the main draw for clicks? Social proof.

    74% of users read reviews before deciding, emphasizing the weight of textual information over visuals.

    The Verdict: AI Mode Won’t Take All Your Traffic

    Crucially, AI Mode won’t strip you of your most valuable traffic: those ready to invest in your services.

    With AI Mode, it’s essential to reframe how we view SEO goals:

    • Old goal: Rank #1 or risk being overlooked.
    • New goal: Aim for the top 5 and secure the click with strong social proof (via reviews).

    If your business depends on ‘how-to’ traffic, there might be cause for concern.

    However, if you’re a local business leveraging local SEO, remain calm.

    The study: 69% of Transactional Searches in AI Mode Drive Traffic


    Inspired by this post on Search Engine Land.


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  • How AI Revolutionizes Ad Rankings: Winning the Top Spot

    How AI Revolutionizes Ad Rankings: Winning the Top Spot

    The position of ads is more crucial than ever. I’ve recently come across new data that underscores how Google AI Overviews are reshaping paid search visibility and click-through rates (CTR).

    In my experience, Google’s AI Overviews have dramatically altered the search landscape almost overnight. As someone deeply invested in paid search, I’ve noticed the battle for visibility isn’t just about ad rank anymore—it’s about appearing above the AI results.

    This change is part of a rapid surge in AI Overviews, which I discovered in Adthena’s earlier study. My analysis found that AI Overviews are now trespassing into short, high-volume commercial searches.

    The underlying mechanism causing this is pretty clear to me: AI Overviews intercept user attention, slash CTRs, and push both organic and paid listings lower down the page. As a result, clicks and revenue take a hit.

    From what I’ve seen in Adthena’s latest research, it accurately identifies how often advertisers secure top ad positions above AI Overviews across seven major industries, device types, and query categories. The research highlights clear leaders and provides actionable strategies for the rest of us in paid search.

    The topline reality: Ad position visibility is lost 25% of the time

    The industry benchmark table below reveals how fierce the fight is for the top spot. It shows us the percentage of ads that appear either above or below AI Overviews across seven industries.

    ```json
{
  "alt": "Industry performance chart showing percentage above and below average for Automotive, Energy, Financial Services, Gaming, Healthcare, Retail, and Travel sectors.",
  "caption": "Discover how different industries stack up in performance, with percentages showing which sectors lead and lag relative to the average.",
  "description": "This image is a chart detailing the performance of various industries, measuring percentages above and below average. It covers sectors such as Automotive, Energy, Financial Services, Gaming, Healthcare, Retail, and Travel. Automotive (62.3% above), Energy (76.9% above), and others are analyzed, with variables like Healthcare showing 35.4% above and 64.6% below. The chart is branded by Adthena for marketing and analysis insights."
}
```

    Strategic implications from the topline data

    • The leaders: Industries like Travel, Energy, Financial Services, and Retail consistently land above the AI Overviews in more than 75% of cases. However, I’ve noticed that even in these sectors, 1 in 4 paid ads are still affected. When keywords drive major revenue, that 20% to 30% exposure is a direct threat to ROI.
    • The runners-up (the risk of being hidden): Healthcare is a major outlier. Ads in this field often appear below AI Overviews 64.6% of the time, given the high-stakes nature and research-heavy aspect of healthcare searches. Google’s AI prioritizes “expert” information first, meaning healthcare ads see significantly less visibility.
    • The volatility: The gaming sector shows a clear 50/50 split. Visibility feels like flipping a coin, demonstrating to me the need for agile bidding strategies.

    The device divide: Why mobile is your biggest threat

    From what I’ve gathered, device-specific data indicates that ads are more likely to be displaced by AI Overviews in a mobile setting due to limited screen space.

    Strategic implications on device differences

    • Automotive’s Mobile Problem: Although Automotive shows strong “Above %” placement overall, daily trends are worrying. On mobile, ads are frequently buried by AI Overviews, making them invisible without extensive scrolling. This leads to diminishing visibility and CTR for us marketers.
    • The “double whammy”: In healthcare, desktop ads generally appear below AI Overviews, although mobile sometimes performs slightly better. It seems the AI Overviews box might be designed for mobile screens, occasionally allowing one or two ad slots to remain visible. However, desktop visibility still suffers greatly.
    • Actionable insight: Mobile is where AI Overviews present the greatest challenge. For industries like healthcare and gaming, where this is a significant problem, securing top ad positions is vital for survival.

    The query intent test: Where does AI Overviews win and lose?

    Generally, I’ve observed that long queries tend to be more informational and thus more likely to activate AI Overviews, while shorter ones are typically transactional. The table below unfolds a surprising industry pattern related to this.

    This table reveals the connection between query complexity (or user intent) and AI Overviews’ dominance, spread over query lengths from one to ten words.

    ```json
{
  "alt": "Heatmap showing percent above and below benchmarks for various industries and devices from 11/11/2025 to 11/17/2025.",
  "caption": "Explore industry trends with this heatmap displaying percentage data across devices from November 11 to 17, 2025, illustrating performance benchmarks.",
  "description": "This heatmap visualizes percentage data for industries like Automotive, Energy, and Gaming across desktop and mobile devices. It spans from November 11 to 17, 2025, showing percentages above and below benchmarks. Each cell is color-coded to reflect performance, providing a clear view of industry trends. Created by Adthena, this chart is useful for analyzing market variations and device-specific engagement with specific focus on sectors such as Financial Services, Healthcare, Retail, and Travel."
}
```

    Strategic implications on query intent

    1. AI Overviews dominance on the fringes:
      • Healthcare shows that as queries get longer (up to 10 words), ad positions above AI Overviews drop to 0%. Google clearly prioritizes complex health questions, relegating commercial interests lower.
      • Gaming reveals the opposite: short terms (1-2 words) have 0% visibility above AI, suggesting organic results or features claim the top spot. However, for longer terms (7-9 words), ads dominate above AI Overviews, a golden opportunity to engage users deeply researching.
    2. The unexpected paid search opportunity (Automotive & Travel):
      • Automotive and Travel ads excel with longer informational queries rather than short, high-volume ones. For example, Automotive’s “Ad Above AI Overviews” rate leaps from 21.9% (one word) to over 74% (four words).
      • Strategic implication: This upends conventional PPC strategy, suggesting we should be bidding eagerly on mid-to-upper-funnel terms where AI Overviews are present, intercepting the user’s journey before their final decisions.

    Next steps for paid search marketers

    Adthena’s research highlights that the threat of Google AI Overviews is fragmentary. Precision is key: know when and where your ads can outrank AI Overviews, adjust your bids and content accordingly.

    From my ongoing observations, as the frequency of AI Overviews rises, these ad position percentages might swing. I advise regularly auditing profitable keywords to effectively handle changes in the AI-driven search landscape.

    Here are three game-changing steps we can take:

    1. Have you explored testing a device-specific strategy?

    I’ve realized that mobile often amplifies visibility loss from AI Overviews, notably in sectors like automotive.

    I recommend considering a device-specific strategy, especially for campaigns severely impacted by AI Overviews.

    2. Have you identified quick wins in keyword coverage?

    Data on word counts reveals unexpected possibilities. Industries like Gaming and Automotive often see robust ad placements with long-tail queries (four words or more) above AI Overviews.

    ```json
{
  "alt": "Heatmap table showing word count in search queries across industries like Automotive, Energy, and Retail.",
  "caption": "Explore the trends in search query word counts across industries such as Automotive and Healthcare. This heatmap reveals insights into percentage distributions above and below average.",
  "description": "This image is a heatmap table illustrating the word count distribution in search queries for various industries, including Automotive, Energy, Financial Services, Gaming, Healthcare, Retail, and Travel. Each industry's search query percentages are categorized as above or below the average, with varying word counts from 1 to 10. Darker shades indicate higher percentages. This data is presented by Adthena and provides insights into how different industries perform in search result metrics."
}
```

    This signals high-visibility traffic in mid- to upper-funnel searches that our competitors may be ignoring.

    3. Have you reviewed your ad copy against the AI answer?

    AI Overviews can miss out on brand nuances and emotional resonance.

    To captivate users, ads must deliver what AI can’t: a strong, compelling reason to choose you over Google’s summary. Using messaging that includes trust, guarantees, or urgency can clearly differentiate from AI’s generic style.

    Convey transactional incentives like deals, free shipping, or scarcity (“Limited stock, grab yours!”), and use emotional elements like customer testimonials to build trust and convey your unique brand narrative.

    The search landscape has evolved. Adthena’s data suggests that marketers who rapidly analyze and adjust their ad strategies in response to AI Overviews will thrive.

    Ready to see where your ads sit today?

    Adthena gives you the precise data on ad appearances in relation to AI Overviews, helping you adapt to changes in AI search performance. Book a demo to see where your ads rank today.


    Inspired by this post on Search Engine Land.


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  • Elevate Your Site with Our AI Integration for WordPress

    Elevate Your Site with Our AI Integration for WordPress

    I’m excited to share some thrilling news with you. Profound’s Agent Analytics now fully supports WordPress with a custom-made plugin. This integration offers seamless AI observability for WordPress sites, which means your team can easily track AI crawlers and agents as they interact with your content, even if traditional CDN log drains are unavailable.

    This development is a significant step forward for anyone using WordPress, making it easier to understand and optimize AI-driven interactions. Whether you’re on a managed hosting platform or running your own setup, this plugin is designed to enhance your capabilities in managing AI observability effortlessly.


    Inspired by this post on Try Profound Blog.


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  • OpenAI CEO Urgently Enhances ChatGPT, Halts Ad Plans

    OpenAI CEO Urgently Enhances ChatGPT, Halts Ad Plans

    When I got the news about OpenAI CEO Sam Altman’s recent decision, it was clear this was no ordinary update. Sam called a ‘code red’ to overhaul ChatGPT’s performance—an action so crucial that it has temporarily put a stop to any advertising plans.

    In an internal memo shared by The Wall Street Journal, it was revealed that our main focus now is on improving the assistant’s personalization, speed, reliability, and its capability to tackle a wider variety of questions. With this focus, daily calls and team reassignments across the company are underway to ensure we enhance ChatGPT swiftly.

    Driving the news: During a recent meeting, Sam emphasized the urgency of making ChatGPT better and more intuitive. Nick Turley, who leads the ChatGPT team, also reassured us that user intuition and personalization are top priorities.

    • The entire company is now singularly focused on accelerating these improvements.
    • We even have temporary team reassignments to keep everyone aligned and focused on this mission.

    Why now? The competition is catching up fast. Google’s upgraded Gemini model has recently outperformed us on key benchmarks, contributing to Google’s rising stock value.

    • Google: Their upgraded Gemini model has recently outshone OpenAI’s metrics.
    • User growth: Gemini’s user base has surged, going from 450 million in July to 650 million by October, thanks in part to new features like the Nano Banana image generator.
    • Anthropic: They’re making headway in the corporate sector, gaining a reputation as the ‘safer, more predictable’ provider of language models.

    On top of fierce competition, OpenAI faces financial hurdles as well, particularly with plans for massive data-center investments. Remaining unprofitable and reliant on continuous fundraising, the need to hit $200 billion in revenue by 2030 looms large for us.

    What’s getting delayed: In our effort to prioritize ChatGPT’s quality enhancements, we’ve decided to postpone:

    • Advertising initiatives
    • AI agents for health and shopping
    • A personal assistant called Pulse

    What’s next: I’m excited to share that a new reasoning model, outperforming Google’s latest Gemini release, is just around the corner.

    • Not long ago, we also experienced a ‘code orange,’ indicating a pressing need to improve ChatGPT’s warmth and instruction-following capabilities, which has since been addressed in a recent update.

    Why we care. Our shift in focus from advertising avenues to product enhancement highlights our commitment to quality. Those waiting to use ChatGPT for advertising will, unfortunately, have to hold out a bit longer.

    Flashback. This situation reminds me of past intense moments in the tech industry. Remember when Google considered ChatGPT an existential threat? That led to its own ‘code red,’ with significant internal shifts and rapid advancements.

    • Founders returned: Google’s own co-founders re-engaged in product meetings to tackle these challenges.
    • Search overhaul: Google accelerated its efforts to enhance conversation capabilities within Search.
    • Product surge: A slew of new AI products emerged from Google as part of this initiative.

    The report. I found the detailed analysis in the original OpenAI Declares ‘Code Red’ as Google Threatens AI Lead report quite insightful.


    Inspired by this post on Search Engine Land.


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