SEOFOMO Survey Shows How Ecommerce SEOs Use AI In 2025 via @sejournal, @martinibuster

Aleyda Solis’ SEOFOMO published a survey of ecommerce owners and SEOs that indicates a wide range of uses of AI, reflecting popular SEO tactics and novel ways to increase productivity, but also reveals that a significant number of the respondents have yet to fully adopt the technology because they are still figuring out how it best fits into their workflow. Very few of the survey respondents said they were not considering AI.

The survey responses showed that there are five popular category uses for AI:

  1. Content
  2. Analysis & Research
  3. Technical SEO
  4. User Experience & Conversion Rate Optimization
  5. Generate Client Documentation, Education & Learning

Content Creation

The survey respondents used AI for important reasons like product listing and descriptions, as well as for scaling meta descriptions, titles, and alt text. Other uses include creating content outlines, grammar checks and other assistive uses of AI.

But some also used it for blog content, landing pages, and for generating FAQ content. There’s no details of how extensively AI was used for blog content but a case could be made against using it for fully generating main content with AI (if that’s how some people are using it) because of Google’s recent cautionary guidance about extensive use of AI for main content.
Google’s Danny Sullivan at the recent Search Central NYC event cautioned about low effort content lacking in originality.

The other reported uses of AI was for grammar checking and clarity which are excellent ways to use AI. Care should be used even for these purposes because AI has a style that can get injected into the content even for something as simple as checking for grammar.

Another interesting use of AI is for revising content so that it matches a company’s “brand voice” which is checking for word choices, tone, and even sentence structure.

Lastly, the ecommerce survey respondents reported using AI for brainstorming content ideas which is another excellent way to use AI.

Analysis & Research

The part about keyword analysis is interesting because the report lists keyword research and clustering as one of the uses. Clustering keywords according to similarity is a good practice because it’s somewhat repetitive and spammy to write pages of content about related things, one page for each keyword phrase when one strong page that represents the entire topic is enough.

Focusing on keywords for SEO has been around longer than Google, and even Google itself has evolved from using keywords as a way to understand content to also incorporating an understanding of queries and content as topics.This is seen in the fact that Google uses core topicality systems as part of its ranking algorithm. So it’s somewhat curious that topicality research wasn’t mentioned as one of the uses, unless keyword clustering is considered part of that. Nevertheless, data analysis is a great use of AI.

Technical SEO

Technical SEO is a fantastic application of AI because that’s all about automating repetitive SEO tasks but also for assisting on making decisions about what to do. There’s lots of ways to do this, including by uploading a set of guidelines and/or charts and asking AI to analyze for specific things. Apps like Screaming Frog allow integration with OpenAI, so it’s leaving money and time on the table to not be investigating all the ways AI can integrate with tools as well as just asking it to analyze data.https://www.screamingfrog.co.uk/seo-spider/tutorials/how-to-crawl-with-chatgpt/

For example, one of the uses reported in the survey was for generating an internal linking strategy.

User Experience (UX) & Conversion Rate Optimization (CRO)

Another way ecommerce store owners are using AI is for improving the user experience and CRO.

The survey reports:

  • “AI-powered product recommendations
  • Chatbots for product discovery or customer support
  • CRO/UX audits based on user behavior”

Training & Education

Lastly, an increasing number of the ecommerce respondents reported using AI for generating training documentation for internal use and for creating customer documentation.

The survey reports:

“Less common but growing:

  • Learning how AI tools function
  • Using AI to create training material or SEO learning resources”

Not Using AI Or Limited Use

What was surprising is the amount of SEOs that are not using AI in a meaningful way. 31% of respondents said they are not using AI but are planning to, 3% of the survey respondents were digging their heels into the ground and flatly refusing to use AI in any way, while an additional 4% answered that they weren’t sure.

That makes a full 37% that aren’t using AI in any meaningful way. Looked at another way, 31% of respondents were getting ready to adopt AI into their workflow. Many managed WordPress hosting companies are integrating AI into their WordPress builder workflow as are some WordPress builders. AI can be integrated via WordPress SEO plugins as well. Wix has already integrated AI into their customer workflow through their proprietary Astro chatbot and companies like Shopify are also planning meaningful and useful ways to integrate AI.

The SEOFOMO survey makes it clear that AI is a significant part of the SEO and ecommerce workflow. Those who don’t use AI shouldn’t feel like they have to. But if you’re unsure how to integrate it, one way to think about it is to ask: what kinds of tasks would you hand off to an intern? Those are the kinds of tasks that AI excels at, enabling one worker to produce at a level five times greater than they could without using AI.

Read the SEOFOMO in ecommerce survey results:

The SEOFOMO Ecommerce SEO in 2025 Survey Results

Featured Image by Shutterstock/tete_escape

Google Says LLMs.Txt Comparable To Keywords Meta Tag via @sejournal, @martinibuster

Google’s John Mueller answered a question about LLMs.txt, a proposed standard for showing website content to AI agents and crawlers, downplaying its usefulness and comparing it to the useless keywords meta tag, confirming the experience of others who have used it.

LLMS.txt

LLMS.txt has been compared to as a Robots.txt for large language models but that’s 100% incorrect. The main purpose of a robots.txt is to control how bots crawl a website. The proposal for LLMs.txt is not about controlling bots. That would be superfluous because a standard for that already exists with robots.txt.

The proposal for LLMs.txt is generally about showing content to LLMs with a text file that uses the markdown format so that they can consume just the main content of a web page, completely devoid of advertising and site navigation. Markdown language is a human and machine readable format that indicates headings with the pound sign (#) and lists with the minus sign (-). LLMs.txt does a few other things similar to that functionality and that’s all it’s about.

What LLMs.txt is:

  • LLMs.txt is not a way to control AI bots.
  • LLMs.txt is a way to show the main content to AI bots.
  • LLMs.txt is just a proposal and not a widely used and accepted standard.

That last part is important because it relates to what Google’s John Mueller said:

LLMs.txt Is Comparable To Keywords Meta Tag

Someone started a discussion on Reddit about LLMs.txt to ask if anyone else shared their experience that the AI bots were not checking their LLMs.txt files.

They wrote:

“I’ve submitted to my blog’s root an LLM.txt file earlier this month, but I can’t see any impact yet on my crawl logs. Just curious to know if anyone had a tracking system in place,e or just if you picked up on anything going on following the implementation.

If you haven’t implemented it yet, I am curious to hear your thoughts on that.”

One person in that discussion shared that they host over 20,000 domains and that no AI agents or bots are downloading the LLMs.txt files, only niche bots like one from BuiltWith is grabbing those files.

The commenter wrote:

“Currently host about 20k domains. Can confirm that no bots are really grabbing these apart from some niche user agents…”

John Mueller answered:

“AFAIK none of the AI services have said they’re using LLMs.TXT (and you can tell when you look at your server logs that they don’t even check for it). To me, it’s comparable to the keywords meta tag – this is what a site-owner claims their site is about … (Is the site really like that? well, you can check it. At that point, why not just check the site directly?)”

He’s right, none of the major AI services, Anthropic, OpenAI, and Google, have announced support for the proposed LLMs.txt standard. So if none of them are actually using it then what’s the point?

Mueller also raises the point that an LLMs.txt file is redundant because why use that markdown file if the original content (and structured data) have already been downloaded? A bot that uses the LLMs.txt will have to check the other content to make sure it’s not spam so why bother?

Lastly, what’s to stop a publisher or SEO from showing one set of content in LLMs.txt to spam AI agents and another set of content for users and search engines? It’s too easy to generate spam this way, essentially cloaking for LLMs.

In that regard it is very similar to the keywords meta tag that no search engine uses because it would be too sketchy to trust a site that it’s really about those keywords and search engines are better and more sophisticated nowadays about parsing the content to understand what it’s about.

Read the LinkedIn discussion here:

LLM.txt – where are we at?

Featured Image by Shutterstock/Jemastock

AI Overviews: We Reverse-Engineered Them So You Don’t Have To [+ What You Need To Do Next]

This post was sponsored by DAC. The opinions expressed in this article are the sponsor’s own. Authors: Dan Lauer & Michael Goodman

Is the classic funnel model (TOFU-MOFU-BOFU) still relevant in an AI-driven SERP?

What kinds of queries trigger Google’s AI Overviews?

How can you structure content so that AI pulls your site into the response?

Do you really need to change your SEO strategy?

For years, SEO teams followed a familiar SEO playbook:

  1. Optimize upper-funnel content to capture awareness,
  2. mid-funnel content to drive consideration,
  3. lower-funnel content to convert.

One page, one keyword, one intent.

But with the rise of ChatGPT, Perplexity, Copilot, Gemini, and now Google’s AI Mode, that linear model is increasingly outdated.

So, how do you move forward and keep your visibility high in modern search engine results pages (SERPs)?

We’ve reverse-engineered AI Overviews, so you don’t have to. Let’s dive in.

What We’ve Discovered Through Reverse Engineering Google’s AI Overviews (AIO)

From what we’re seeing across client industries and in how AI-driven results behave, the traditional funnel model – the idea of users moving cleanly from awareness to consideration to conversion – feels increasingly out of step with how people actually search.

How Today’s Search Users Actually Search

Today’s users jump between channels, devices, and questions.

They skim, abandon, revisit, and decide faster than ever.

AI Overviews don’t follow a tidy funnel because most people don’t either.

They surface multiple types of information at once, not because it’s smarter SEO, but because it’s closer to how real decisions get made.

AIOs & AI Mode Aren’t Just Answering Queries – They’re Expanding Them

Traditionally, SEO strategy followed a structured framework. Take a travel-related topic, for example:

  • Informational (Upper-Funnel) – “How to plan a cruise?”
  • Commercial (Mid-Funnel) – “Best cruise lines for families”
  • Transactional (lower-Funnel) – “Find Best Alaska Cruise Deals”

However, AI Overviews don’t stick to that structure.

Instead, they blend multiple layers of intent into a single, comprehensive response.

How AI Overviews Answer & Expand Search Queries

Let’s stay with the travel theme. A search for “Mediterranean cruise” might return an AI Overview that includes:

  • Best Time to go (Informational).
  • Booking Your Cruise (Commercial).
  • Cruise Lines (Navigational).

AI Mode Example for ‘Mediterranean Cruise’

What’s Happening Here?

In this case, Google isn’t just answering the query.

It anticipates what the user will want to know next, acting more like a digital concierge than a traditional search engine.

The AI Overview Test & Parameters

  • Source: Semrush & Google
  • Tested Data: 200 cruise-related informational queries

We started noticing this behavior showing up more often, so we wanted to see how common it actually is.

To get a clearer picture, we pulled 200 cruise-related informational queries from SEMrush and ran them through our custom-built AI SERP scraper. The goal was to see how often these queries triggered AI Overviews, and what kind of intent those Overviews covered.

The patterns were hard to miss:

  • 88% of those queries triggered an AI Overview
  • More than half didn’t just answer the initial question.
  • 52% mixed in other layers of intent, like brand suggestions, booking options, or comparisons, right alongside the basic information someone might’ve been looking for.

Using a different query related to Mediterranean Cruises, the AIO response acts as a travel agent, guiding the user on topics like:

  • How to fly,
  • Destinations with region,
  • Cruise prices,
  • Cruise lines that sail to that destination.

While it’s an Information non-brand search query,  the AIO response is lower-funnel as well.

Again, less than half of the queries were matched intent.

Here are some examples of queries that were identified as Informational and provided only the top-of-funnel response without driving the user further down the funnel.

The Verdict

Even when someone asks a simple, top-of-funnel question, AI is already steering them toward what to do next, whether that’s comparing prices, picking a provider, or booking a trip.

What Does This Mean for SEO Strategies Moving Forward?

If AI Overviews and AI Mode are blending intent types, content, and SEO strategies need to catch up:

  1. It’s no longer enough to rank for high-volume informational keywords. If your content doesn’t address multiple layers of intent, AI will fill the gaps with someone else’s content.
  2. SEO teams need to analyze how AI handles their most important queries. What related questions is it pulling in? Are those answers coming from your site or your competitors?
  3. Think beyond keyword volume. Long-tail queries may have lower search traffic, but they often align better with AI-cited content. Structure your pages with clear headings, bullets, and concise, helpful language—that’s what AI models prefer to surface.

The Future of SEO in an AI World: Hybrid Intent Optimization

The fundamentals of technical and on-page SEO still matter. But if your content is still built around single keywords and single intent types, you’re likely to lose visibility as AI continues to reshape the SERP.

The brands that adapt to this shift by creating content that mirrors the blended, fast-moving behavior of actual users are the ones that will continue to own key moments across the funnel, even as the funnel itself evolves.

As AI transforms search behavior, its crucial to adapt your SEO strategies accordingly. At DAC, we specialize in aligning your content with the latest search trends to enhance visibility and engagement. Reach out to us today to future-proof your strategy with our award-winning TotalSERP approach and stay ahead in the evolving digital landscape.

https://www.dacgroup.com/” class=”btn-learn-more button-green medium-size”>Optimize Your SEO For AI Search, Now

Image Credits

Featured Image: Image by DAC. Used with permission.

In-Post Image: Images by DAC. Used with permission.

Google Confirms That Structured Data Won’t Make A Site Rank Better via @sejournal, @martinibuster

Google’s John Mueller answered a question on Bluesky about whether structured data helps with SEO, which may change how some people think about it.

Schema.org Structured Data

When SEOs talk about structured data they’re talking about Schema.org structured data. There are many kinds of structured data but for SEO purposes only Schema.org structured data matters.

Does Google Use Structured Data For Ranking Purposes?

The person starting the discussion first posted that they were adding structured data to see if it helps with SEO.

Mueller’s first post was a comment about the value of preparation:

“Yes, and also no. I love seeing folks stumble into the world of online marketing, search engines, and all that, but reading up on how things technically work will save you time & help you focus.”

The original poster responded with a question:

“In your experience, how has it helped?”

That’s when Mueller gave his answer:

“(All of the following isn’t new, hence the meme.) Structured data won’t make your site rank better. It’s used for displaying the search features listed in developers.google.com/search/docs/… . Use it if your pages map to & are appropriate for any of those features.”

Google Only Uses Structured Data For Rich Results

It might seem confusing that structured data doesn’t help a site rank better but it makes more sense to think about it as something that makes a site eligible for rich results. In the context of AI Search results, Google uses regularly indexed data from websites and because AI search results are a search feature, it may rely on the documented structured data for search related features (read more about that here: Google Confirms: Structured Data Still Essential In AI Search Era.)

The main points about structured data in the context of AI search is that according to what was shared at a recent Search Central Live (hat tip to Aleyda Solis):

“Structured data is critical for modern search features

Check the documentation for supported types

Structured data is efficient,
…for computers easy to read,
… and very precise”

In a nutshell, for the context of AI Search:
Structured data supports search features and AI Search is an AI feature. AI search also relies on the regular search index apart from the Schema.org structured data.

How Google Uses Structured Data In Search Features

Google uses only a fraction of the available Schema.org structured data. There are currently over 800 Schema.org structured data types and Google only uses around 30 types for which it publishes structured data documentation for required properties for each structured data type and other guidelines and requirements.

The only use Google has for structured data is to collect information in a machine readable format so that it can then use the information for displaying rich results, which can be seen for recipes, reviews, displaying website information in carousel format, and even to enable users to buy books directly from the search results.

Adding Schema.org structured data doesn’t guarantee that Google will display the site with a rich results feature in search. It only makes a site eligible to be displayed in rich results. Adding non-documented forms of Schema.org structured data won’t affect search optimization for a site because Google ignores all but the roughly thirty structured data types.

Read the original discussion on Bluesky:

Adding structured data to see if it helps with SEO

Featured Image by Shutterstock/ViDI Studio

AI & SEO-Driven Content Marketing: How To Calculate True ROI for B2B Companies in 2025

This post was sponsored by Heeet. The opinions expressed in this article are the sponsor’s own.

How do you calculate the true cost of SEO content production?

Are you overspending or underspending on SEO compared to performance?

Can you connect SEO-driven awareness to pipeline and revenue?

How do you make SEO efforts more visible to your C-suite?

If you aren’t sure, that’s okay.

You may simply lack the tools to measure the actual impact of SEO on revenue.

So, let’s dive in and:

  • Break down the true steps to B2B conversion.
  • Highlight the tools to calculate the true ROI of your SEO-driven content in 2025.
  • Look past the simplified first and last-touch approach to attribution.
  • Leverage the need for multitouch solutions that track engagement with SEO content throughout the buyer’s journey.

Can I Connect SEO To Revenue?

Yes, you can connect SEO to revenue.

Why Should I Connect SEO To Revenue?

SEO plays a large role in future conversions.

In fact, SEO helps prospects discover your brand, tool, or company.

SEO also helps provide easy-to-discover content with informational intent, which helps to nurture a prospective lead into a sale.

Your prospect’s journey:

  1. Starts at the first time they find your optimized webpage on the search engine results page (SERP).
  2. Moves into nurture, where your B2B prospects typically perform months of extensive product research via traditional searches and AI results before a sale is closed.

The fact that informative content is found on SERPs is due to SEO.

But how is this tracked? How do you know which non-conversion pages are:

  • Part of the user journey?
  • Part of the overall ROI?

How Do I Tie SEO To Company Revenue?

Luckily, your C-suite likely recognizes the need for SEO content.

They are prepared to invest in a strategy incorporating AI search.

However, you need tools that validate the investment and clearly showcase it for your higher-ups.

How To Keep Revenue High When SERPs Are Changing

Gartner predicts that traditional search engine volume will drop 25% by 2026 and flow directly to AI chatbots and agents.

As AI continues to accelerate the evolution of SEO, it’s critical to ensure that high-performing pages:

  • Continue to rank in traditional SERPs.
  • Appear in Google’s AI overviews.
  • Get referenced by the Gen AI tools your audience relies on.
  • They are tracked, so these visits are attributed to a sale.

That’s why you need to understand why certain content is picked up by AI tools and the cost of generating the content to calculate the true ROI of your SEO.

Step 1. How To Create Content That Gets Seen In Traditional Search & AI Overviews

With the shift in consumer search behavior, your first step is to create, optimize, and measure the ROI of content sourced by leading AI tools.

That means appearing in AI Overviews and AI Answers that contain list-based content and product comparisons.

Search Your Brand & See What Each AI Tool Recommends

That’s the first step to determining whether your content or your competitor’s stands out.

Give these prompts a try:

  • What is the best solution for…
  • Give me the top tools for…
  • Best alternative to…
  • Is [competitor] solution better than…

Optimize Your Existing Content & Strategy To Feed AI’s Answer Base

The next step is optimizing existing content and adjusting your strategy so that you write copy that gives AI the answers it’s looking for.

With that said, following traditional SEO strategies and best practices championed by Google should help.

Just like traditional search, AI tools also favor:

  • Proper site and article structure with explicit metadata and semantic markup.
  • Content with lists and bullet points that are easier to scan.
  • Websites optimized for speed.
  • Updated content, keeping things fresh with context.
  • Content with backlinks from high-quality publications.
  • FAQ sections.
  • Mobile-responsive websites with indexable content when pulling sources to provide an answer.

These factors give your content more authority in your industry, just like the content outside your website that Google and LLMs look for to find answers from, such as videos on YouTube, reviews on G2, and conversations on Reddit forums.

Publishing enough quality content for all those channels to optimize for AI and be visible in traditional search is no small task. It requires substantial human resources, SEO tools, and time.

Step 2. Understand All Aspects Of The Real Cost Of SEO Content In 2025

SEO is a long game, especially in B2B, where the path from first click to purchase can span weeks or months and involve multiple touchpoints.

And now, with AI influencing how content is discovered, the cost of doing SEO well has increased.

To accurately assess the cost of SEO-driven content in 2025, you need to go beyond production budgets and organic traffic. Here’s how:

Break Down Your True SEO Investment

Start by identifying all the resources that go into content creation and maintenance:

  • People: Writers, designers, SEOs, developers, and editors.
  • Tools: SEO platforms, content optimization tools, keyword research databases, analytics software.
  • Distribution: Paid support for SEO content, social promotion, and email newsletters.
  • Maintenance: Refreshing old content, updating links, and improving page experience.

Monitor Content Performance Over Time

Track the performance of each piece of content using more than just rankings:

  • Organic traffic (from both traditional search and AI surfaces).
  • Time on page and engagement metrics.
  • Cost per lead and pipeline contribution (if possible).
  • Assisted conversions across all touchpoints.

Map Content to Buyer Journey Stages

Content doesn’t just convert, it nurtures. Tie content assets to specific stages:

  • Top-of-funnel (education, discovery).
  • Mid-funnel (comparison, product evaluation).
  • Bottom-of-funnel (case studies, demos).

Even if content isn’t the final touchpoint, it plays a role. Traditional tools miss this.

Adjust, Monitor & Pivot

No single metric will tell the full story. Instead:

  • Adjust: Re-optimize content based on AI overview visibility, CTR, and engagement.
  • Monitor: Watch how users arrive from search vs. AI sources.
  • Pivot: Invest more in formats and topics that show traction across both human and AI audiences.

Without full-funnel attribution, even the most engaged content may look like a cost center instead of a revenue driver.

That’s why accurate measurement, aligned with total investment and the full buyer journey, is critical to understanding the real ROI of your SEO content in 2025.

However, we know that:

  • AI Overviews and similar answer engines also play a big role in education and nurturing.
  • Attributing a sale to content read on an untrackable AI Overview is impossible, but it’s happening.

This is where the calculation gets difficult.

Step 3. Incorporate Multi-Touch Attribution To Your Revenue Calculations

Now that we’re here, you’re beginning to understand how tricky it is to tie ROI to AI Overview responses that nurture your prospects.

How do you accurately determine the cost?

Some people are creating their own attribution models to calculate ROI.

Most people are using tools that are built specifically for this new calculation.

The only way to accurately calculate cost in B2B SEO is to capture the engagement with content throughout the buyer journey, which conventional attribution models don’t credit.

Incorporate These Blindspots: Pre-Acquisition & The Post-Lead Journey

Another substantial blind spot in SEO measurement occurs when companies focus exclusively on pre-acquisition activities, meaning everything that happens before a lead is added to your CRM.

Consider the typical journey enterprise clients take in an account-based marketing approach:

  1. After multiple organic searches, a prospect converts into a lead from direct traffic.
  2. After being qualified as an SQL, they’re included in an email sequence that they never respond to, but return through a Google Ads campaign promoting a white paper.
  3. They download it from an organic search visit and continue reading more blog articles to understand your product and the outcomes they hope to achieve.

Can your marketing team track how each channel (direct, paid search, and organic) influenced the deal throughout the sales process?

Multitouch attribution tools allow marketers to finally link SEO content to tangible business outcomes by tracking what SEO-driven content leads interacted with before a sale.

Heeet Makes SEO ROI Calculations Easy

After years of wrestling with these challenges, we built Heeet to fill the void: an end-to-end attribution solution that connects SEO efforts and interactions generated from content marketing to revenue by highlighting their impact throughout the sales cycle within Salesforce.

Our proprietary cookieless tracking solution collects more data, ensuring your decisions are based on complete, unbiased insights rather than partial or skewed information.

Traditional SEO measurement often relies on first-click or last-click attribution, which fails to capture SEO’s entire influence on revenue. Heeet places SEO on a level playing field by providing full-funnel attribution that tracks SEO’s impact at every customer journey stage.

We help marketers determine whether SEO-driven content is the first touchpoint, one of the many intermediary interactions along the lengthy B2B sales cycle, or the final conversion leading to a sale to pinpoint SEO’s cumulative influence on your pipeline.

Screenshot from Google, April 2025

Heeet actively tracks every touchpoint, ensuring that the actual impact of SEO is neither underestimated nor misrepresented.

Rather than neglecting SEO’s role when a prospect converts through another channel, Heeet delivers a complete view of how different personas in the buying committee interact with each piece of content and where they’re converting. This empowers businesses to make informed, data-driven SEO strategies and investment decisions.

Screenshot from Heeet, April 2025
Screenshot from Heeet, April 2025

Measuring ROI is non-negotiable and hinges on precise revenue tracking and a thorough understanding of costs. Heeet streamlines this process by directly integrating SEO costs into Salesforce, covering all production expenses such as software, human resources, design, and other strategic investments.

Screenshot from Heeet, April 2025

Businesses can accurately evaluate SEO profitability by linking these costs to SEO-driven revenue. Heeet delivers a straightforward, unified view of previously fragmented data within Salesforce, empowering marketing and finance teams to confidently assess SEO ROI with a single tool.

Screenshot from Heeet, April 2025

SEO is more than ranking on Google; it’s about driving impactful engagement with quality content referenced in the multiple search tools buyers use. Heeet tracks which content prospects engage with and ties it directly to revenue outcomes, providing marketing and sales teams with critical insights that propel them forward. With our Google Search Console integration, we’re helping marketers draw more data into Salesforce to get the unified view of their content’s performance in a single place and connect search intents with business outcomes (leads, converted leads, revenue,…). This enables marketers to align ranking position with search intent and revenue, enhancing content strategy and tracking performance over time.

Screenshot from Heeet, April 2025

For B2B marketers pairing their SEO content with a paid strategy, our latest Google Ads update allows users to see the exact search query that prospects typed before clicking on a search result. This allows SEO experts and copywriters to gain the intel they need to reduce their cost per lead by creating content they know their audience is searching for.

Screenshot from Heeet, April 2025

Ready to enhance your marketing ROI tracking and connect every marketing activity to revenue?

From SEO to events, paid ads, social organic, AI referrals, webinars, and social ads, Heeet helps you uncover the real performance of your marketing efforts and turn revenue data into actionable insights.


Image Credits

Featured Image: Image by Shutterstock. Used with permission.

In-Post Image: Images by Heeet. Used with permission.

Google Updated Documentation For EEA Structured Data Carousels (Beta) via @sejournal, @martinibuster

Google updated the structured data documentation for their European Economic Area (EEA) carousels that are currently in beta. A notable change is that the shopping queries carousels beta testing has expanded beyond Germany, France, Czechia, and the UK, so that availability is now open to all EEA countries. A byproduct of the changes is that the documentation is more easily understood.

Example Of Tidying Up Content Structure

Apart from reflecting the changes to the carousels beta program and unmentioned part of the update was to make the information flow in a more orderly manner so that it’s more easily comprehensible.

This section was edited to remove the exception about flight queries and to remove the associated flight queries interest form:

“…you can start by filling out the applicable form (for flights queries, use the interest form for flights queries).”

That section now reads like this:

“you can start by filling out the applicable form:”

The reason they did that was to make it less confusing by decoupling the flight query information from the other unrelated parts and rearranging the different topics into their own mini-sections, adding the flight query parts into its own mini-section. It creates a more orderly procession of information that makes the entire page easily understandable.

Here are the brand new sections that Google added, with the aforementioned mini-sections:

“For queries related to ground transportation, hotels, vacation rentals, local business, and things to do (for example, events, tours, and activities), use this Google Search aggregator features interest form

For flights queries, use this flight queries interest form

For shopping queries, get started with the Comparison Shopping Services (CSS) program”

Feature Change

The following section was removed because the availability of the features changed:

“For shopping queries, it’s being tested first in Germany, France, Czechia, and the UK.”

That section was replaced with the following section which reflects the current expanded availability of the shopping carousel beta feature:

“This feature is currently only available in European Economic Area (EEA) countries, on both desktop and mobile devices. It’s available for travel, local, and shopping queries.”

Google’s changelog for the change explains it like this:

“Updating the interest forms for structured data carousels (beta)
What: Updated the structured data carousels (beta) documentation to include the current interest forms and supported query types.

Why: To reflect the current state of the feature and process for expressing interest.”

Read Google’s feature availability documentation here:

Structured data carousels (beta)

Featured Image by Shutterstock/Hieronymus Ukkel

Wix’s New AI Assistant Enables Meaningful Improvements To SEO, Sales And Productivity via @sejournal, @martinibuster

Wix announced a new chat-based AI assistant named Astro that simplifies site operations and business tasks, giving users faster access to tools and insights that support business growth, better SEO, and improved site performance.

Wix Astro offers the following benefits and advantages:

  • Carry out operational and administrative actions using conversational prompts.
  • Navigate and use site management tools in the Wix dashboard.
  • Offers personalized suggestions and up-to-date performance feedback to fine-tune the website.
  • Reviews site analytics, including traffic patterns, purchase behavior, and search visibility, to guide strategy.
  • Can generate articles, newsletters, and promotional content.
  • Enables users to expand business opportunities by adding new products for sale and trying out alternative fulfillment models like dropshipping and other customizations.

Users can also use Astro to manage their Wix plans, receive personalized plan recommendations and also access administrative details related to billing, invoices and transactions.

According Guy Sopher, Head of the AI Platform Group at Wix:

“Astro seamlessly integrates powerful capabilities into a single interface, making it easier than ever for users to manage their businesses efficiently, with this being the largest collection of skills we’ve ever incorporated into a single assistant at Wix. Boasting hundreds of different skills and capabilities, with more added every day, Astro acts as a trusted guide, Astro provides real-time insights and personalized recommendations to help users optimize their sites.”

By streamlining workflows and simplifying access to essential tools, it empowers users to accomplish more in less time. As they engage more deeply with the platform’s features, they can ultimately unlock greater opportunities for growth, visibility, and business success.”

Other platforms are currently planning to roll out AI for their customers but Wix is out there doing it right now. Wix Astro solidifies Wix’s position as an industry leader in deploying technology in meaningful ways that offers their users competitive advantages over other platforms.

Read more about Wix’s thoughtful deployment of AI:

Powerful AI. Wherever you need it.

Featured Image by Shutterstock/SAG stock

HubSpot Announces 200+ Features At Spring Spotlight 2025 via @sejournal, @brookeosmundson

HubSpot has introduced over 200 product updates and features as part of its Spring 2025 Spotlight release.

The updates include expanded AI functionality across the platform, enhancements to Marketing Hub Enterprise, and the launch of new AI-powered Workspaces designed to streamline collaboration across marketing, sales, and support teams.

Let’s be honest: marketing and sales teams have spent the past year duct-taping together disconnected tools, trying to keep up with buyer behavior that’s changing at an alarming speed.

These challenges are even more challenging for SMBs, where they’re inundated with talks of AI, but not enough tools dedicated to help streamline their workflows.

HubSpot aims to ease the burden that businesses are facing, whether that’s with tighter budgets or smaller teams.

Here’s a closer look at the updates and what they could mean for teams using HubSpot today.

New Breeze Agents To Help Go-To-Market Teams

A key highlight of the release is the introduction of four Breeze Agents, HubSpot’s AI-powered assistants designed to support different go-to-market functions.

These agents are embedded across the HubSpot platform and aim to automate repetitive tasks and provide timely, contextual assistance based on data already inside the CRM.

The four Breeze agents include:

  • Customer Agent: Designed to assist customer support teams, this agent can handle common support inquiries automatically. HubSpot reports that early adopters have resolved over 50% of support tickets through automation, with a reduction in average handling time.
  • Knowledge Base Agent: This tool monitors incoming support tickets and uses AI to recommend or create content that fills knowledge gaps, helping customers self-serve and reducing support ticket volume.
  • Prospecting Agent: Focused on sales, this agent assists with researching target accounts, drafting outreach, and even engaging prospects, helping to accelerate early-stage sales activities.
  • Content Agent: Aimed at marketers, the Content Agent can generate content across multiple formats (blog posts, emails, and even podcast outlines) based on campaign needs and CRM insights.

Here’s an example of the new Breeze Customer Agent in the HubSpot platform.

HubSpot Breeze Customer Agent example in the platform.Image credit: HubSpot, April 2025

These AI agents are designed as embedded features meant to reduce manual effort within common workflows.

Their success will likely depend on how well they integrate into day-to-day processes and how customizable they are across industries and team sizes.

New Features in Marketing Hub Enterprise

While the Marketing Hub Enterprise is not a new product, it receives several notable feature upgrades in this release.

If you especially for teams managing multiple brands, business units, or international markets.

The updates are designed to help teams execute faster, personalize more effectively, and maintain oversight across distributed teams and campaigns.

Lookalike Lists

Powered by HubSpot’s AI engine Breeze, this feature analyzes customer data within the Smart CRM to build new lists of prospects who resemble a brand’s best existing customers.

The goal is to simplify audience targeting and help teams focus on higher-probability leads without extensive manual segmentation.

HubSpot marketing platform Lookalike lists.Image credit: HubSpot, April 2025

Journey Automation

A drag-and-drop interface allows marketers to build multi-stage customer journeys that adapt in real time based on user behavior and data inputs.

HubSpot Journey Automation builder.Image credit: HubSpot, April 2025

Additionally, it provides real-time insights to show what’s working at a glance:

HubSpot Journey reporting insights.Image credit: HubSpot, April 2025

Multi-Account Management

For businesses managing several accounts, regions, or brands, this upgrade enables:

  • Asset Copying to share campaigns and templates across business units.
  • Data Mirroring to sync customer records across teams while maintaining centralized data control.
  • Centralized Management to monitor activity across all accounts from a single HubSpot organization
HubSpot multi-account management configuration.Image credit: HubSpot, April 2025.

These updates reflect growing demand from scaling businesses for better structure, visibility, and reuse of high-performing assets, without introducing additional complexity.

For multi-location or multi-brand companies, these features could reduce duplication and improve speed to launch.

AI Workspaces for Sales, Support, and Success Teams

The last of the major updates is the launch of three new Workspaces. Each is tailored to the workflows of sales, customer support, and success teams.

These Workspaces serve as focused environments within the HubSpot platform, designed to improve task management and reduce context switching.

The new Workspaces include:

  • Sales Workspace. Consolidates CRM data, lead prioritization, and engagement tools in one place. Reps can track deal stages, review activity timelines, and draft outreach without switching between multiple tools.
  • Customer Success Workspace. Helps success teams view customer health, manage renewals, and proactively flag accounts that may be at risk. The Workspace integrates tasks, alerts, and reporting to support account management efforts.
  • Help Desk Workspace. Designed for support reps, this Workspace centralizes open tickets, customer interaction histories, and AI-powered triage tools. The goal is to streamline response time and improve service quality through better visibility and workflow efficiency.
HubSpot Help Desk Workspace example.Image credit: HubSpot, April 2025.

These Workspaces aim to centralize high-impact actions and data within each function, helping teams prioritize and collaborate more effectively.

As more companies unify their go-to-market strategy across departments, tools that reduce operational friction can play a key role in productivity gains.

What This Means For Marketers & Teams

For mid-sized businesses and teams needing to scale operations, the broader message of HubSpot’s Spring release is clear: the platform is evolving beyond its roots in marketing automation and CRM to serve as a full go-to-market system.

Andy Pitre, Executive Vice President of Product at HubSpot, stated:

SMBs don’t need more AI hype—they need technology that helps. The products we’re launching at the Spring 2025 Spotlight are helping teams move fast on AI and solve their go-to-market challenges. We’ve embedded AI throughout our entire platform so businesses of any size can start seeing value immediately, without massive teams or budgets.

The addition of AI agents and focused Workspaces, combined with deeper control and scale features in Marketing Hub Enterprise, could be especially impactful for:

  • Companies managing campaigns across multiple locations or brands
  • Teams looking to improve collaboration between sales, marketing, and support
  • Organizations that want automation and AI tools without heavy implementation lift

At the same time, as AI becomes increasingly baked into platforms, the challenge for teams will be ensuring these tools are deployed intentionally, rather than adding to the noise.

A Platform Moving Toward Unified Execution

This launch reflects HubSpot’s broader strategy: building a unified, AI-powered platform that supports sales, marketing, and customer operations from one central system.

Rather than offering standalone AI features, the company is embedding automation and intelligence into workflows that teams are already using. This approach could help reduce the friction of AI adoption for smaller businesses that lack dedicated ops or data teams.

Still, the real test will be whether these features translate into measurable efficiency gains and better customer experiences—without creating new complexity.

For now, HubSpot users who’ve felt constrained by fragmented tools or limited automation options may find that this release offers more opportunities to scale intelligently—and collaborate more effectively—across their entire go-to-market engine.

Google Files Patent On Personal History-Based Search via @sejournal, @martinibuster

Google recently filed a patent for a way to provide search results based on a user’s browsing and email history. The patent outlines a new way to search within the context of a search engine, within an email interface, and through a voice-based assistant (referred to in the patent as a voice-based dialog system).

A problem that many people have is that they can remember what they saw but they can’t remember where they saw it or how they found it. The new patent, titled Generating Query Answers From A User’s History, solves that problem by helping people find information they’ve previously seen within a webpage or an email by enabling them to ask for what they’re looking for using everyday language such as “What was that article I read last week about chess?”

The problem the invention solves is that traditional search engines don’t enable users to easily search their own browsing or email history using natural language. The invention works by taking a user’s spoken or typed question, recognizing that the question is asking for previously viewed content, and then retrieving search results from the user’s personal history (such as their browser history or emails). In order to accomplish this it uses filters like date, topic, or device used.

What’s novel about the invention is the system’s ability to understand vague or fuzzy natural language queries and match them to a user’s specific past interactions, including showing the version of a page as it looked when the user originally saw it (a cached version of the web page).

Query Classification (Intent) And Filtering

Query Classification

The system first determines whether the intent of the user’s spoken or typed query is to retrieve previously accessed information. This process is called query classification and involves analyzing the phrasing of the query to detect the intent. The system compares parts of the query to known patterns associated with history-seeking questions and uses techniques like semantic analysis and similarity thresholds to identify if the user’s intent is to seek something they’d seen before, even when the wording is vague or conversational.

The similarity threshold is an interesting part of the invention because it compares what the user is saying or typing to known history-seeking phrases to see if they are similar. It’s not looking for an exact match but rather a close match.

Filtering

The next part is filtering, and it happens after the system has identified the history-seeking intent. It then applies filters such as the topic, time, or device to limit the search to content from the user’s personal history that matches those criteria.

The time filter is a way to constrain the search to within a specific time frame that’s mentioned or implied in the search query. This helps the system narrow down the search results to what the user is trying to find. So if a user speaks phrases like “last week” or “a few days ago” then it knows to restrict the query to those respective time frames.

An interesting quality of the time filter is that it’s applied with a level of fuzziness, which means it’s not exact. So when a person asks the voice assistant to find something from the past week it won’t do a literal search of the past seven days but will expand it to a longer period of time.

The patent describes the fuzzy quality of the time filter:

“For example, the browser history collection… may include a list of web pages that were accessed by the user. The search engine… may obtain documents from the index… based on the filters from the formatted query.

For example, if the formatted query… includes a date filter (e.g., “last week”) and a topic filter (e.g., “chess story”), the search engine… may retrieve only documents from the collection… that satisfy these filters, i.e., documents that the user accessed in the previous week that relate to a “chess story.”

In this example, the search engine… may apply fuzzy time ranges to the “last week” filter to account for inaccuracies in human memory. In particular, while “last week” literally refers to the seven calendar days of the previous week, the search engine… may search for documents over a wider range, e.g., anytime in the past two weeks.”

Once a query is classified as asking for something that was previously seen, the system identifies details in the user’s phrasing that are indicative of topic, date or time, source, device, sender, or location and uses them as filters to search the user’s personal history.

Each filter helps narrow the scope of the search to match what the user is trying to recall: for example, a topic filter (“turkey recipe”) targets the subject of the content; a time filter (“last week”) restricts results to when it was accessed; a source filter (“WhiteHouse.gov”) limits the search to specific websites; a device filter (e.g., “on my phone”) further restricts the search results from a certain device; a sender filter (“from grandma”) helps locate emails or shared content; and a location filter (e.g., “at work”) restricts results to those accessed in a particular physical place.

By combining these context-sensitive filters, the system mimics the way people naturally remember content in order to help users retrieve exactly what they’re looking for, even when their query is vague or incomplete.

Scope of Search: What Is Searched

The next part of the patent is about figuring out the scope of what is going to be searched, which is limited to predefined sources such as browser history, cached versions of web pages, or emails. So, rather than searching the entire web, the system focuses only on the user’s personal history, making the results more relevant to what the user is trying to recall.

Cached Versions of Previously Viewed Content

Another interesting feature described in the patent is web page caching. Caching refers to saving a copy of a web page as it appeared when the user originally viewed it. This enables the system to show the user that specific version of the page in search results, rather than the current version, which may have changed or been removed.

The cached version acts like a snapshot in time, making it easier for the user to recognize or remember the content they are looking for. This is especially useful when the user doesn’t remember precise details like the name of the page or where they found it, but would recognize it if they saw it again. By showing the version that the user actually saw, the system makes the search experience more aligned with how people remember things.

Potential Applications Of The Patent Invention

The system described in the patent can be applied in several real-world contexts where users may want to retrieve content they’ve previously seen:

Search Engines

The patent refers multiple times to the use of this technique in the context of a search engine that retrieves results not from the public web, but from the user’s personal history, such as previously visited web pages and emails. While the system is designed to search only content the user has previously accessed, the patent notes that some implementations may also include additional documents relevant to the query, even if the user hasn’t viewed them before.

Email Clients

The system treats previously accessed emails as part of the searchable history. For example, it can return an old email like “Grandma’s turkey meatballs” based on vague, natural language queries.

Voice Assistants

The patent includes examples of “a voice-based search” where users speak conversational queries like “I’m looking for a turkey recipe I read on my phone.” The system handles speech recognition and interprets intent to retrieve relevant results from personal history.

Read the entire patent here:

Generating query answers from a user’s history

Google Confirms Discover Coming To Desktop Search via @sejournal, @MattGSouthern

Google has announced plans to bring Discover to desktop search. This move could change how publishers get traffic from Google.

The news came from the Search Central Live event in Madrid and was first shared by SEO expert Gianluca Fiorelli on X.

Google has tested Discover on desktop before, but this is the first time it has confirmed it’s happening. The company hasn’t said when it will launch.

What Is Google Discover?

Google Discover is a feed that shows content based on what you might like. It appears in the Google app, Chrome’s new tab page, and google.com on phones.

Unlike regular searches, you don’t need to type anything. Discover suggests content based on your interests and search history.

As Google defines it:

“Discover is a part of Google Search that shows people content related to their interests, based on their Web and App Activity.”

Why This Matters: Discover’s Growing Impact on Publisher Traffic

This desktop launch is important as Discover has become a bigger traffic source for many sites.

A January survey from NewzDash found that 52% of news publishers consider Discover a top priority. The survey also showed that 56% of publishers saw recent traffic increases from Discover.

Martin Little from Reach plc (publisher of UK news sites like Daily Mirror) recently said that Google Discover has become their “single largest traffic referral source.”

Little told Press Gazette:

“Discover is making up for [search traffic losses] and then some. Almost 50% of our titles are growing year-on-year now, partly because of the shifts in Google.”

Optimizing Content for Google Discover

You don’t need special markup or tags to appear in Discover. However, Google suggests these best practices:

  • Create quality content that matches user interests
  • Use good, large images (at least 1200px wide)
  • Write honest titles that accurately describe your content
  • Don’t use misleading previews to trick people into clicking
  • Focus on timely, unique content that tells stories well

Little noted that Discover prefers “soft-lens” content – personal stories, lifestyle articles, and niche topics. Breaking news and hard news often don’t do as well.

“You don’t get court content in there, no crime, our council content doesn’t get in there,” Little explained what Discover tends to avoid.

Desktop Expansion: Potential Traffic Implications

The desktop rollout could significantly change traffic patterns for publishers already using mobile Discover.

Google’s presentation slide at the Madrid event highlighted “expanding surfaces,” which suggests Google wants a more consistent experience across all devices.

For SEO pros, this is both an opportunity and a challenge. Desktop users browse differently from mobile users, which might affect how content performs in Discover.

Building a Discover Strategy

Publishers wanting to get more Discover traffic should consider these approaches:

  1. Monitor performance: Use Search Console’s Discover report to track how your content is doing.
  2. Diversify content: Don’t ignore traditional search traffic while optimizing for Discover.
  3. Focus on keeping readers: Consider using newsletters to turn Discover visitors into regular readers.
  4. Use effective headlines: Publishers note that Discover often picks headlines with a “curiosity gap” – titles that tell enough of the story but hold back key details to encourage clicks.

What’s Next?

As Google expands Discover to desktop, publishers should prepare for traffic changes. This move shows Google’s shift from just answering searches to actively suggesting content.

While we don’t know the exact launch date, publishers who understand and optimize for Discover will have an advantage.


Featured Image: DJSully/Shutterstock