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CLV measures the total revenue a customer generates over their entire relationship with your business.
Tracking CLV helps you measure where your growth is sustainable, not just whether your last campaign worked.
Use the basic CLV formula to get a usable baseline fast: CLV = Average Purchase Value × Purchase Frequency × Customer Lifespan.
CLV delivers greater value when combined with other factors. For example, comparing CLV to customer acquisition cost (CAC) can give you a clearer picture of business health.
One of the fastest ways to grow CLV is retention-focused marketing. That means building more engagement points through tactics like targeted segmentation, subscription incentives, and referral programs.
Customer lifetime value (CLV) is the revenue a customer is likely to generate over their entire relationship with your business. In marketing, it’s one of the few numbers that tells you whether your growth is sustainable.
A campaign can hit its numbers and still lose money, but if you’re only measuring clicks or first purchases, you won’t see it happening.
CLV forces you to ask better questions:
Are you attracting the right customers?
Are you keeping them?
Are you increasing repeat purchases and profit margins over time?
Here’s the simplest way to think about it. If your average customer sticks around for three years and buys four times a year, your marketing should be built around keeping that relationship going, not just getting the first sale.
Smile.io research shows that the longer customers shop with a brand, the more they spend per order. In beauty and cosmetics alone, shoppers buy 45% more per order after three years than they did at the start of the relationship.
In this post, we’ll break down what CLV means, how to calculate it, what impacts it most, and how you can use it to your advantage.
One of the fastest ways to grow CLV is retention-focused marketing. That means building more engagement points through tactics like targeted segmentation, subscription incentives, and referral programs.
What Is CLV?
CLV is the total revenue you can expect from a customer over the course of their relationship with your brand.
That’s why CLV is a core marketing metric. It connects top-of-funnel work (such as ads, content, offers, and landing pages) to what really drives sustainable growth, which is retention and expansion. But only 37 percent of organizations are using CLV strategically, according to Forrester research. This means most marketers are missing out on its value.
CLV Is a Long-Term Growth Metric, Not a Vanity Metric
A campaign can “win” on clicks or first purchases and still be a bad business decision.
For example, that campaign may lead to:
Discount buyers who disappear after the promo
Cheap leads that never become repeat customers
One-time purchases with no follow-up behavior
CLV exposes those patterns. If CLV is low, it means your customers aren’t sticking around. If CLV is rising, you can tell the leads, offers, and growth strategies you’re implementing are starting to work.
CLV Can Be Revenue- or Profit-Based
Most teams start with revenue CLV because it’s simple. It’s the average customer’s lifetime spend.
Profit CLV is stricter (and can be more useful). It’s the average profit the customer generates after costs. If margins vary by product, profit CLV gives you a cleaner view of what’s worth scaling.
CLV Helps You Make Better Marketing Decisions
With CLV, you can answer:
Which channels bring customers who stick
Which offers attract long-term buyers vs. deal hunters
How much you can afford to pay in CAC and stay profitable
Having concrete, data-driven answers to these questions helps you get more of the right customers and keep them.
Why CLV Matters
CLV is one of the cleanest ways to measure customer loyalty because it shows what a customer spends over time, not just what happened after their first click or their biggest purchase.
CLV sweeps away the noise of other metrics because it focuses on long-term value, not the flash-in-the-pan appeal of traffic spikes and seasonal fluctuations. When you track CLV, you stop overreacting to short-term metrics and start investing in what creates durable revenue.
Tracking CLV also forces better decisions across the business. CLV shows which products or aspects of your business drive the most long-term conversions, and how you can improve weaker areas to help extend relationships.
CLV is also how companies justify “loss leader” plays. Amazon famously leaned into Kindle and Alexa hardware as a gateway to more book purchases over time because the lifetime relationship mattered more than the first transaction.
If those points aren’t important enough, CLV also ties directly to profit. If you increase CLV, you increase profits.Why? Because repeat customers spend more with your brand, and every sale they bring you costs less than the first one. You only have to spend to acquire them once, and as long as they keep buying, the overall value of that customer increases.
The kicker is that many teams still don’t measure CLV well. That’s why getting this right becomes a real advantage.
How To Calculate CLV
Here’s the formula to calculate CLV: (Average Purchase Value) x (Purchase Frequency) x (Customer Lifespan) = CLV
So, say your average customer spends $50 per order, buys four times a year, and stays for 3 years. That’s a $600 CLV ($50 × 4 purchases/year × 3 years = $600 CLV).
The math is simple, but it’s enough to start making smarter calls on retention tactics and what “profitable growth” looks like.
Breaking Down the Inputs
Each input in the formula is worth understanding on its own terms:
Average purchase value: What a customer spends per transaction, on average
Purchase frequency: How often they buy per year
Customer lifespan: How long they keep buying from you (in years)
Instead of assuming every customer follows the same path, advanced models use real behavioral patterns to estimate values more accurately. Two of the most common approaches are:
Cohort-based CLV: Groups customers by when or how they were acquired and tracks how each cohort behaves over time. It’s great for identifying which campaigns attract customers who stick around.
Predictive CLV: Uses historical behavior (like orders, time between purchases, or churn signals) to forecast what a customer is likely to spend next. This is helpful when you want to personalize retention or prioritize high-value accounts.
Using CLV and CAC
CLV isn’t as impactful in isolation. Pair it with CAC, and the picture gets a lot clearer. CAC measures what you spend to acquire a customer (factoring in ads, tools, agencies, sales time, and discounts).
The relationship is straightforward:
CLV tells you what a customer is worth
CAC tells you what that customer costs you
The gap between them is your profit window
If your average CLV is $600 and your CAC is $200, you’re earning about $3 for every dollar you spend to acquire a customer. But if your CAC creeps up to $500, your margin nearly disappears. You might feel it in cash flow before you see it in the numbers.
Use CLV and CAC together to set guardrails on acquisition spend and decide which channels and campaigns are worth keeping.
What Impacts CLV the Most
CLV isn’t a mysterious number that only “big brands” can calculate and increase. Measurable metrics and broader experience factors drive it, and all of these are within your control:
Retention rate: How long customers stick around. People churning after one or two purchases caps your CLV, no matter how strong your acquisition is.
Purchase frequency: How often customers buy. This is where replenishment reminders, subscription nudges, and smart follow-ups can add a lot of revenue.
Average order value:What customers spend per purchase. Bundles, add-ons, and better merchandising can boost CLV without requiring more traffic.
Customer experience:The less friction, the better. Shipping issues, confusing onboarding, weak support, and a clunky checkout can all chase customers away and drag down your CLV.
Personalization and relevance: More relevant messaging can equal more repeat purchases. Gartner research shows that customers who engaged through active, tailored personalization are 2.3 times more likely to confidently complete a purchase decision. Generic email blasts or one-size-fits-all offers usually just train people to ignore you.
Every one of these drivers is controllable. Once you identify which lever is limiting your CLV, you know exactly where to focus next.
How to Grow CLV
Customer lifetime value is not distributed evenly. As the graph below shows, customer value follows a bell curve. Research from Retently finds that about 20% of customers aren’t profitable, 60% are profitable, and 20% are very profitable over time.
Growing CLV means shifting that curve to the right. This requires increasing how often customers buy and how much they spend while creating conditions that move more of them into your highest-value segment.
Here are some tips on how to maximize this metric.
1. Understand What Makes Your Audience Tick
CLV grows when customers keep finding reasons to come back, and that requires more touchpoints than the initial purchase.
But keeping your customers engaged is getting tougher. BCG reports that the average U.S. customer belongs to 15 consumer loyalty programs (up 10 percent from 2022). As they join more of these programs, loyalty and engagement often decline. More options mean more competition for attention, and generic retention tactics won’t cut through. The brands winning on CLV are the ones giving customers specific reasons to come back.
Start by identifying who you’re talking to and why they bought from you in the first place. Customer personas make that easier. They force you to map your buyers’ motivations and the problems your business solves.
From there, tailor your content to where customers are in their journey:
Onboarding: Help them hit early wins with setup guides and quick-start tutorials.
Education: Deepen their knowledge with how-to content, real-world use cases, and product tutorials.
Replenishment: Keep them stocked with timely reorder prompts and low-stock reminders.
Social proof: Build their confidence with customer reviews and success stories.
Proactive support: Reduce friction with knowledge bases, FAQs, and troubleshooting guides.
The goal is to show up when it’s most helpful. Do that consistently and repeat purchases will follow, which ultimately contributes to a healthier CLV curve.
2. Personalize Touchpoints with Segmentation
If you want to grow CLV, you need to meet customers where they are. Data shows that your customers are asking for a personalized journey. A BCG survey finds that 75 percent of U.S. customers are comfortable with companies using publicly available information about them to create customized experiences.
Instead of segmenting by basic demographics, group your audience by what theydo:
Behavior: Whether they’re first-time or repeat buyers, which categories they shop, and how often they reorder
Engagement: How they interact through email clicks, site visits, feature usage, or support tickets
Customer value: Whether they’re high spenders, discount-only buyers, or long-time loyalists
With segments in place, the next steps are more straightforward. You can:
Upsell and cross-sell based on what customers already bought.
Trigger replenishment or renewal messages at the right time.
Reactivate lapsed customers with a relevant offer (not a generic blast).
Reward your best customers, so they stick around longer.
If you need a simple framework to get started, use this customer segmentation approach and build from there. The goal is to send fewer messages, make each one more relevant, and earn more revenue from customers you already have.
3. Publish an Engaging, Informative E-blast or Newsletter
Email marketing assets, such as e-blasts or newsletters, keep you in front of customers after the first purchase. That’s where CLV is won or lost.
Here are a few tips to make your emails work for lifecycle retention:
Segment before you send. The behavioral segments you’ve already built translate directly to email. Each group needs a different message and cadence.
Make your emails worth reading. Send tutorials and tips to help buyers get the most out of your products. Add user-generated content, exclusive early access, or “best of” customer stories to keep engagement high.
Test your subject lines. A/B test subject lines, track open rates, and refine based on what works. Small lifts in open rates compound over time.
Send your emails regularly. Find a frequency that’s right for your customers and your business (and let subscribers choose options such as “weekly only”).
Do it right, and email can become your easiest lever for repeat purchases and a higher CLV.
4. Create as Many Engagement Points as Possible
The more places customers encounter your brand (and get value from it), the longer they stick around. That’s the idea behind engagement points. These are moments where customers see something useful from your brand and find a reason to come back.
Here’s where to focus your efforts:
Make a list of the places where your customers spend time, both online and offline.
Develop an advertising or content marketing presence in those places.
Encourage your customers to engage with your brand on those platforms.
Then build touchpoints that keep your brand visible. Examples include:
Social follow buttons on high-intent pages
SMS opt-ins for back-in-stock or reorder reminders
Invites to join communities like Reddit or Discord
Webinars and live demos
Retargeting that promotes education, not just discounts
The brands with a strong CLV are the ones showing up in the right places.
5. Develop a Recurring Payment (Subscription) Model
One of the most powerful ways to improve CLV is a subscription model. It gives you a recurring revenue stream, and customers pay more and cost less to retain over the long haul.
Take Spotify Premium, for example. At $12.99 per month, a two-year subscriber generates:
$12.99 × 12 = $155.88 per year $155.88 × 2 = $311.76 in lifetime revenue
Compare that to a one-time purchase business. If your average order is $50, you’d need that same customer to buy six times just to match the value of a two-year subscriber.
6. Offer a Referral Program
A well-designed referral program pulls double duty. It brings in new customers and gives existing ones a reason to stay engaged.
Dropbox’s referral program is a classic example. Invite a friend to sign up on Dropbox Basic, and you both get up to 16 GB of extra storage.
That structure works for CLV because the reward itself drives product usage. More storage means more files, which means more reasons to stay. The referral program effectively becomes a loyalty loop.
7. Implement Personalization in Your Marketing
We covered behavioral segmentation earlier. This is about what you do with those groups once you have them. You should deliver personalized marketing experiences that are specific enough for customers to notice.
Customer expectations have shifted. BCG finds that 80 percent of customers are comfortable with personalized experiences, with most saying they expect them. But not all personalization is created equal. Simply inserting a first name into an email subject line no longer qualifies.
Personalization that moves CLV looks like:
Product recommendations based on what customers have viewed or bought. That might be a skincare brand suggesting a moisturizer to someone who just purchased a cleanser.
Content that matches a customer’s stage in the buyer journey. That might be beginner guides for new buyers, advanced tutorials for power users, or optimization tips for long-term customers.
Timing that respects their cycle. That might be reminders to reorder before a customer runs out of your product or win-back flows for customers who’ve gone quiet.
The brands that bridge the gap deliver personalization that customers notice and refine from there.
8. Collect and Act on Feedback
Feedback is another direct lever you have on CLV. It tells you where your product or experience is falling short before customers walk away. If enough customers are saying the same thing, that’s a sure sign you’re getting something wrong.
Fixing friction points supports customer retention. PwC’s 2025 Customer Experience Survey finds that 52 percent of consumers have stopped using or buying from a brand because of a bad experience with its products or services. Nearly 1 in 3 (29 percent) stopped using or buying due to poor customer experience, either online or in person.
It helps to turn feedback into action with a repeatable loop:
Ask questions after key moments like deliveries or support interactions.
Tag recurring issues like shipping costs or setup friction.
Close the loop by telling customers when you fix something they flagged.
The upside is real. Qualtrics reports the majority of U.S. customers (72 percent) would pay more for a premium experience. Fix those friction points your feedback identifies, and the same customer base starts generating more revenue.
9. Focus on Retention over Acquisition
Selling to existing customers can be cheaper than acquiring new ones. That’s why retention is one of the fastest ways to grow CLV. Acquisition gets you the first sale, but retention gets you the second, third, and 10th.
Retention can also unlock expansion revenue. Customers who already trust you are more likely to buy more often if the offer feels like a natural next step rather than a pitch.
The key is to make your upselling and cross-selling efforts feel like help, not pressure:
Upsellwhen it clearly improves the outcome, whether that’s faster shipping or premium support.
Cross-sell based on the customer’s last purchase, like refills or complementary products.
Trigger offers after successful moments, such as a repeat purchase or great support interaction.
Ultimately, timing is everything. An upsell that arrives at the right moment feels like good service. The same offer at the wrong moment feels like pressure.
FAQs
What is customer lifetime value (CLV)?
CLV is the total revenue a customer generates across their entire relationship with your business. It matters because it shifts your marketing focus from “get the sale” to “keep the customer.” Track CLV by channel and segment so you can double down on the sources that bring repeat buyers, not just one-time bargain hunters.
How do you calculate customer lifetime value (CLV)?
Start with the basic CLV formula: CLV = Average Purchase Value × Purchase Frequency × Customer Lifespan. Pull average order value from your analytics, estimate how many times the average customer buys per year, and multiply by how many years they typically stay. Use round numbers first. Once you have a baseline, compare CLV across campaigns to see what drives profitable growth.
Why is customer lifetime value (CLV) important?
CLV tells you how much you can afford to spend to acquire a customer and still make money. Without it, you can scale campaigns that look “successful” but lose profit after discounts, churn, and support costs. When you understand CLV, you can prioritize retention and focus time and resources on the channels that bring customers who stick.
How can you increase customer lifetime value (CLV)?
The fastest lever is retention. Focus on understanding what keeps your best customers coming back, then build systems around it. That means personalizing your outreach so it feels relevant, creating engagement points that give customers reasons to return, and making the experience smooth enough that they never have a reason to leave.
Conclusion
CLV is one of the clearest signals your marketing is working. When it’s rising, your acquisition, retention, and expansion efforts are moving in the same direction. When it’s flat or falling, something in that chain is broken.
Every lever that moves CLV is within your control. Start by calculating your baseline and comparing it to your CAC. That ratio tells you what profitable growth looks like for your business.
From there, focus on giving your customers reasons to come back through personalized messaging and engaging content. And keep that feedback loop open so every cycle makes your retention sharper.
In the end, customer retention is where CLV is won or lost. The brands that figure that out stop optimizing for the first sale and start building something worth staying for.
Most advice on generative engine optimization best practices starts in the same place: find the prompts people are using with AI tools, track which ones give your brand visibility, and build content around the highest-volume queries.
The problem? That data is largely estimated.
Generative engine optimization (GEO) is still new enough that the infrastructure to measure it accurately doesn’t exist yet. Think of how GEO differs from SEO: the mature, reliable signals you’ve come to expect from tools like Semrush or Ahrefs took years to develop. GEO measurement isn’t there yet. What platforms call “prompt volume” is modeled, estimated, and often directionally wrong.
This post breaks down why prompt volume is an unreliable foundation for your GEO strategy and what the best-performing teams do instead.
Key Takeaways
“Prompt volume” is a modeled estimate, not actual user data, making it an unreliable starting point for GEO decisions.
AI behavior is inconsistent; people phrase prompts differently and models return varied answers, making patterns hard to trust at small scale.
AI “rankings” are unstable; studies show results change constantly, so tracking position the way you track SEO doesn’t translate.
Most data sources, whether panels or APIs, are biased or don’t reflect real user behavior in AI tools.
Citation drift is high, meaning sources and visibility shift month to month even for identical prompts.
GEO tools are still early and directional, not definitive; treat them accordingly.
Clustering prompts around your ICP’s actual language outperforms chasing vendor-curated query lists.
A consistent monitoring schedule matters more than obsessing over any single data point.
Why Prompt Volume Misleads Your GEO Strategy
1. LLMs Don’t Have Search Volume: It’s Estimated, Not Measured
The most fundamental problem is that there is no true “AI search volume” the way Google exposes search query data. LLMs don’t publish query frequency or search volume equivalents. Their responses vary, sometimes subtly and sometimes dramatically, even for identical queries, due to probabilistic decoding and prompt context. They also depend on hidden contextual features like user history, session state, and embeddings that are opaque to external observers. What platforms sell as “prompt volume” is a modeled estimate, not a direct measurement.
2. LLM Responses Are Non-Deterministic by Nature
Traditional keyword volume works because millions of people type the same phrase into Google and those queries are logged. AI interactions are fundamentally different. Search behavior in traditional SEO is repetitive, with millions of identical phrases driving stable volume metrics. LLM interactions are conversational and variable. People rephrase questions differently, often within a single session, making pattern recognition harder with small datasets.
This non-determinism is baked into how LLMs work. They produce text using probabilistic methods, selecting words based on their likelihood rather than following a set pattern. The same prompt can produce different responses, which makes consistent and accurate conclusions difficult to draw.
3. SparkToro’s Research Shows Rankings Are Essentially Random
The most compelling evidence comes from a landmark January 2026 study by Rand Fishkin and Gumshoe.ai. They tested 2,961 prompts across 600 volunteers on ChatGPT, Claude, and Google AI. The finding: there is less than a one in 100 chance of getting the same brand list in any two responses, and less than one in 1,000 chance of the same list in the same order. As Fishkin bluntly concluded, any tool that gives a “ranking position in AI” is essentially making it up.
Research from SparkToro highlights significant variability in AI-generated brand recommendations even when identical prompts are used, suggesting that point-in-time AI visibility measurements may reflect volatility rather than durable performance signals.
4. Panel-Based Methodology Has Inherent Bias Problems
Platforms like Profound rely on opt-in consumer panels to source their prompt data. Profound licenses conversations from multiple, double opt-in consumer panels of real answer engine users, with scale in the hundreds of millions of prompts per month, and applies advanced probabilistic modeling to extrapolate frequency, intent, and sentiment across broader populations.
While this sounds robust, the opt-in nature of these panels means the sample may skew toward more tech-savvy, engaged users, not a representative cross-section of how the general population actually prompts AI tools.
5. API Queries Don’t Reflect Real Human Behavior
Many tools query AI models via API to simulate user prompts, but this introduces another gap. Most AI tracking tools rely on API calls rather than mimicking human interface usage, and early research suggests API results may differ from interface results, though the magnitude and implications of these differences require further investigation. The API-focused nature of querying data also means that results are not aligned with what humans actually search for.
6. Citation Drift Is Massive and Unpredictable
Even if you ignore everything above, the month-to-month stability of AI citations is shockingly low. A study by Profound measured citation drift month over month and observed very large changes in cited domains even for identical prompts. Google AI Overviews and ChatGPT showed monthly variations of dozens of percentage points.
This means the “volume” attached to any given prompt today may look completely different next month, making it an unreliable foundation for content investment decisions.
7. We’re in a Pre-Semrush Era: The Tools Don’t Yet Have the Infrastructure
We’re still in a pre-Semrush/Moz/Ahrefs era for LLMs. Nobody has complete visibility into LLM impact on their business today. Be wary of any vendor or consultant promising complete visibility, because that simply isn’t possible yet. Current tracking data should be treated as directional and useful for decisions, but not definitive.
Generative Engine Optimization Best Practices: What to Do Instead
Prompt volume is one signal among many, and right now it’s one of the weaker ones. Here are the generative engine optimization best practices that actually hold up.
Start With Your ICP, Not a Dashboard
Rather than letting estimated prompt volume dictate your GEO content priorities, start with what you actually know about your audience. The strongest signal you have is your Ideal Customer Profile. What problems are your best customers hiring you to solve? What language do they use to describe those problems? Those pain points, not a vendor’s modeled prompt estimates, should be the foundation of what you optimize for in AI answers.
If you’ve done solid ICP work, you’re already sitting on better data than any prompt volume tool can give you.
Go Where Your Audience Already Talks
Layer in real audience research by going where your audience speaks openly and honestly. Reddit threads, niche forums, LinkedIn comments, Slack communities, and review sites like G2 and Trustpilot are places where people ask unfiltered questions in their own words. That’s exactly the kind of natural language that maps closely to how someone would prompt an AI tool. If your ICP is repeatedly asking “how do I justify the ROI of X to my CFO” in a subreddit, that’s a far more reliable content brief than a prompt volume number attached to a vendor-curated query.
Mine Your Own Customer Conversations
Customer-facing teams are one of the most underused sources of GEO intelligence. Sales call recordings, support tickets, customer interviews, and onboarding conversations are rich with the exact phrasing real buyers use when they’re stuck, skeptical, or evaluating options. That language belongs in your content and ultimately in AI answers. If your sales team hears the same objection every week, there’s a good chance someone is asking an AI the same question.
Cluster and Organize Prompts Around Your Audience’s Language
Once you have raw input from your ICP work, forums, and customer conversations, the next step is structuring it. Rather than treating each potential prompt as an isolated target, group them by intent and theme.
Prompt clustering around similar topics or pain points helps you see patterns in how your audience thinks about a problem, not just how they phrase a single question. A cluster around “how to measure GEO success” might include prompts about metrics, reporting, stakeholder communication, and benchmarking. Each of those deserves content, and the overlap between them tells you what your core narrative should be.
This is a meaningful shift from keyword research logic. When you’re thinking about GEO versus AEO, the organizing principle stays the same: topical authority around the problems your audience is trying to solve. Prompt organization by intent and theme is what lets you build that authority systematically.
Use Prompt Volume Tools for What They’re Actually Good At
None of this means abandoning platforms like Profound or Writesonic entirely. Used correctly, they’re genuinely useful for directional awareness: spotting topic gaps, monitoring whether your brand is appearing in the right conversations, and tracking share of voice against competitors over time.
The mistake is using them as a keyword volume substitute and letting their estimates drive what you create. Let your ICP, audience research, and real customer conversations tell you what to optimize for. Then use prompt volume data to pressure-test and monitor, not to decide.
Build a Monitoring Schedule That Actually Works
Given how much citation drift exists in AI outputs, monitoring needs to be structured and consistent rather than reactive. Checking your brand’s AI visibility once a quarter isn’t enough. A monthly monitoring schedule for your core prompt clusters gives you a reasonable baseline for spotting meaningful shifts without over-indexing on noise.
Here’s how to approach it practically. Set up a defined list of 20 to 30 prompts that reflect your ICP’s most common questions. Run them on a set cadence, at least monthly, across the platforms your audience uses most, such as ChatGPT, Perplexity, and Google AI Overviews. Track whether your brand, your content, or your competitors are appearing. Note changes, but don’t overreact to single-month swings given how much variation exists. What you’re watching for is directional trends over three to six months, not week-to-week positions.
This is what separates teams with a real AI search optimization strategy from those reacting to dashboard alerts. Monitoring informs; it doesn’t decide.
The Bottom Line
Prompt volume tries to approximate demand that you may already have direct access to. The brands that win in AI search aren’t the ones chasing the most-tracked prompts. They’re the ones who understand their audience deeply enough to show up in the answers their customers are actually looking for.
YouTube is experimenting with a format that keeps ads visible even after users skip — potentially reshaping how advertisers think about skippable inventory.
What’s happening. YouTube is testing a sticky banner overlay that appears once a user skips an ad. Instead of the ad disappearing entirely, a branded card remains on-screen until the viewer actively dismisses it.
How it works. After hitting “skip,” users return to their video as normal, but a persistent banner tied to the original ad stays visible within the player, extending the advertiser’s presence beyond the initial skip.
Why we care. This test from YouTube creates a way to maintain visibility even when users skip ads, potentially increasing brand recall without requiring full ad views.
It also changes how skippable performance may be evaluated, as impressions and engagement could extend beyond the initial ad, giving brands more value from the same inventory within Google’s ecosystem.
Why it’s notable. Skippable ads have traditionally meant lost visibility once skipped. This format changes that dynamic by offering a second chance for exposure, even when users opt out of the full ad experience.
Impact for advertisers. The update creates an opportunity for extended brand visibility and recall, but could also influence engagement metrics and how users perceive ad interruptions.
The bottom line. If rolled out widely, the sticky banner test could redefine what a “skipped” ad means — turning it into continued, lower-friction exposure rather than a full exit for advertisers on YouTube.
First seen. This update was first spotted by Founder & CEO of Adsquire Anthony Higman who shared spotting it on LinkedIn.
https://i0.wp.com/dubadosolutions.com/wp-content/uploads/2026/03/nonskippable-vidoe-ad-iDPCvY.jpg?fit=800%2C369&ssl=1369800http://dubadosolutions.com/wp-content/uploads/2017/05/dubado-logo-1.png2026-03-17 17:18:062026-03-17 17:18:06YouTube tests sticky banner after ad skip
Google is incrementally improving metric visibility in Performance Max, giving advertisers more insight into how creative choices — particularly video — impact performance.
What’s happening. Google Ads has introduced a new “Ads using video” segment within Performance Max channel performance reporting, allowing advertisers to break down results based on whether video assets were included.
Why we care. Marketers can now compare performance across placements that used video versus those that didn’t, offering a clearer view into the role video plays across Google’s automated inventory.
It helps answer a key question in an automated environment: whether investing in video assets is driving better results, allowing you to make more informed creative and budget decisions inside Google Ads.
Between the lines. As video becomes more central across surfaces like YouTube and beyond, this update gives advertisers a way to validate the impact of investing in video assets within automated campaigns.
The bottom line. The new segment adds a layer of clarity to Performance Max, helping advertisers better evaluate video’s contribution without changing how campaigns are run inside Google Ads.
First spotted. This update was first spotted by PPC News Feed founder Hana Kobzova.
https://i0.wp.com/dubadosolutions.com/wp-content/uploads/2026/03/pmax-ads-using-video-segment-vtX2xL.jpg?fit=1280%2C720&ssl=17201280http://dubadosolutions.com/wp-content/uploads/2017/05/dubado-logo-1.png2026-03-17 17:08:382026-03-17 17:08:38Google adds video visibility to Performance Max reporting
Although Google continues to test ads in AI Mode, users who connect apps to enable Personal Intelligence won’t see ads — and that isn’t changing right now, a Google spokesperson confirmed.
Early results: users find these business connections “helpful,” per Google.
But there’s a clear carveout: no ads for users who opt into app-connected, highly personalized experiences.
The details.Google today expanded Personal Intelligence in AI Mode as a beta to anyone in the U.S., allowing Gemini to generate more tailored responses by connecting data across its ecosystem, including Google Search, Gmail, Google Photos, and YouTube.
Opting into Personal Intelligence creates an ad-free experience inside AI Mode.
Why we care. Ads are coming to AI Mode, but Google is moving cautiously where personal data is deepest. Personal Intelligence experiences stay ad-free for now while Google works out the right balance.
What Google is saying. A Google spokesperson told Search Engine Land:
“There are currently no ads for people who choose to connect their apps with AI Mode. That isn’t changing right now.
“Over the past few months, we’ve been testing ads in AI Mode in the US. Our tests have shown that people find these connections to businesses helpful and open up new opportunities to discover products and services.
“In the future, we anticipate that ads will operate similarly for people who choose to connect their apps with AI Mode. Ads will continue to be relevant to things like your query, the context of the response and your interests.”
Bottom line. Personal Intelligence positions Google’s Gemini app as a more personalized assistant, setting the stage for future ad experiences built on richer, cross-platform user context.
https://i0.wp.com/dubadosolutions.com/wp-content/uploads/2026/03/ChatGPT-Image-Google-Ads-B2B-campaigns-b4wMVi.png?fit=1920%2C1080&ssl=110801920http://dubadosolutions.com/wp-content/uploads/2017/05/dubado-logo-1.png2026-03-17 16:00:002026-03-17 16:00:00Google says AI Mode stays ad-free for Personal Intelligence users
Google is expanding Personal Intelligence across AI Mode, Gemini, and Chrome in the U.S., moving it beyond beta into broader consumer use.
Why we care. Personal Intelligence pushes Google further into fully personalized search, using first-party data like Gmail and Photos. That makes results harder to replicate, rank against, or track — especially in AI Mode, where outputs may vary based on user history, purchases, and behavior.
The details. Personal Intelligence now works across:
AI Mode in Google Search (available now in the U.S.)
Gemini app (rolling out to free users)
Gemini in Chrome (rolling out)
How it works. Users can connect apps like Gmail and Google Photos so Google can tailor responses using personal context. Examples Google shared include:
Shopping recommendations based on past purchases and brand preferences.
Tech troubleshooting using receipt data to identify exact devices.
Travel suggestions using flight details, timing, and past trips.
Personalized itineraries and local recommendations.
Hobby suggestions inferred from user interests.
Availability. These features are available only for personal accounts, not Workspace users, Google said.
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Yahoo CEO Jim Lanzone said AI-powered search — especially Google’s AI Mode — is putting the open web’s core traffic model at risk and argues AI search engines must send users back to publishers.
“I think that the LLMs are one big reason that they’re under threat, with AI Mode in Google being the biggest challenge.”
“Those publishers deserve [traffic], and we’re not going to have the content to consume to give great answers if publishers aren’t healthy.”
Why we care. Many websites are seeing less traffic from answer engines like Google and OpenAI — and I think it’ll only get worse. So it’s encouraging to see Yahoo trying to preserve the “search sends traffic” model. As he said: “We have very purposefully highlighted and linked very explicitly and bent over backwards to try to send more traffic downstream to the people who created the content.”
Yahoo’s AI stance. Yahoo is taking a different approach from chatbot-style interfaces, Lanzone said on the Decoder podcast. He added that Yahoo isn’t trying to compete as a full AI assistant:
“Ours looks a lot more like traditional search and it is more paragraph-driven. It’s not a chatbot that’s trying to act like it’s a person and be your friend.”
“We’re not a large language model. We’re not going to be the place you come to code. We’ve really launched Scout as an answer engine.”
What’s next: Personalization + agentic actions. Yahoo plans to expand Scout beyond basic answers and is embedding AI across its ecosystem:
“You are very shortly going to see us get into very personalized results. You’re going to see us get into very agentic actions that you can take.”
“There’s a button in Yahoo Finance that does analysis of a given stock on the fly… It is in Yahoo Mail to help summarize and process emails.”
Yahoo vs. Google isn’t a thing. Yahoo isn’t trying to win by converting Google users directly. Instead, Yahoo is prioritizing its existing audience and increasing usage frequency over immediate market share gains:
“Nobody chooses, you will not be surprised, Yahoo over Google or somewhere else to search. The way that we get our search volume is because we have 250 million US users and 700 million global users in the Yahoo network at any given time. There’s a search box there. And infrequently, they use it.”
A warning. Companies — including publishers — should be cautious about relying too heavily on AI platforms as intermediaries. Lanzone compared today’s AI partnerships to Yahoo’s past reliance on Google:
“You are tempting fate by opening up a way for consumers to access your product within a large language model.”
“The big bad wolf will come to your door and say everything’s cool.”
https://i0.wp.com/dubadosolutions.com/wp-content/uploads/2026/03/yahoo-traffic-pipeline-afHa4M.webp?fit=1920%2C1080&ssl=110801920http://dubadosolutions.com/wp-content/uploads/2017/05/dubado-logo-1.png2026-03-17 15:38:392026-03-17 15:38:39Yahoo CEO: Google AI Mode is the biggest threat to web traffic
For a long time, a nonprofit’s digital presence hasn’t been a “nice-to-have.” It’s the central hub for mission delivery, donor engagement, and advocacy.
Many organizations struggle with the technical and strategic foundations needed to turn a website and a few social accounts into a high-performing digital ecosystem.
The goal isn’t simply to “be online.” It’s to build reliable infrastructure, so your organization owns its narrative, protects its assets, and measures the impact of “free” digital efforts.
Here’s a practical look at the critical elements of managing a nonprofit’s digital presence — and the common pitfalls to avoid — based on my experience helping several organizations throughout my career.
If you help an organization with digital marketing and they aren’t following these practices, your first step should be getting their digital house in order.
1. Own your foundations: Domains and account control
In my experience, the most overlooked risk in nonprofit digital management is the lack of direct ownership of technical assets.
A well-meaning volunteer or third-party agency often registers a domain or creates a social account using personal credentials. If that individual leaves the organization, you risk losing access to your primary digital channel — the domain you should own and control.
I’ve worked with several organizations that had to start over completely because they lacked control.
Domain ownership: Ensure the domain is registered in the organization’s name using a generic “admin@” or “info@” email address that multiple stakeholders can access. Set the domain to auto-renew and use a registrar that offers robust security features.
Website hosting and management: The organization also needs to control its website hosting and administration. Use a similar approach to the one recommended for domain ownership.
Social media governance: Again, use a similar process to the one described above to establish ownership of key social media channels. Grant volunteers access via delegation on individual channels rather than sharing passwords. This allows you to revoke access immediately if a staff member or volunteer moves on, protecting your brand’s voice and security.
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2. Move beyond ‘winging it’: The editorial calendar
A common mistake for nonprofits is posting only when there’s an immediate need, which is often only when making a fundraising appeal. This “broadcast-only” approach often leads to donor fatigue and low engagement.
To build a community, you need a content plan that balances stories of impact with actionable requests.
The 70/20/10 rule: Aim for 70% value-based content (success stories, educational info), 20% shared content from partners or community members, and only 10% direct “asks.”
The editorial calendar: Use a simple tool, even a shared spreadsheet, to map out your themes and individual pieces of content for the month. This ensures you aren’t scrambling for a post on Giving Tuesday, that everyone knows what’s expected of them, and that your messaging and pace of content creation remain consistent across email, social, and your blog.
3. Tracking what matters (and ignoring what doesn’t)
Data is only useful if it informs future decisions. Many organizations get bogged down in “vanity metrics” like total likes or page views without understanding whether those numbers lead to real-world outcomes.
Set up conversion tracking: It isn’t enough to know that 1,000 people visited your site. You need to know how many of them clicked the “Donate” button or signed up for your newsletter.
Behavioral analytics: Use cost-free tools like Google Analytics 4 and Microsoft Clarity to see where people are dropping off in your donation funnel. If 50% of people leave the site on your “Ways to Help” page, you may have a UX issue or a confusing call to action.
4. Optimize for the ‘mobile-first’ donor
Most global web traffic is now mobile, and for nonprofits, this is critical. Donors often engage with your content on social media on their phones and expect a seamless transition to your donation page.
Speed and simplicity: Fancy header videos, sliders, and bloated images slow down your site, like the nonprofit example in this article about bad website design. Less is more when speed is of the essence. Reduce friction to make your website more usable. For example, if your donation page takes more than three seconds to load or requires more form fields than necessary, you’re leaving donations on the table.
Payment flexibility: Incorporate digital wallets like Apple Pay, Google Pay, or PayPal. Reducing friction at the point of donation is one of the most effective ways to increase your conversion rate. Many nonprofits use third-party tools to manage donations, so keep payment flexibility in mind when choosing a payment partner.
Even well-intentioned nonprofits can undermine their digital presence with a few common mistakes.
Targeting ‘everyone’
One of the biggest mistakes is trying to reach everyone. A digital presence that tries to appeal to every demographic usually ends up appealing to no one. Define your “ideal supporter,” and tailor your language, imagery, and platform choice to them.
Neglecting accessibility
Accessibility is about inclusion. Ensure your images have alt text, your videos have captions, and your website colors have enough contrast for users with visual impairments. If a portion of your audience can’t interact with your site, you aren’t fulfilling your mission.
The ‘set it and forget it’ mentality
I often tell businesses to treat websites like any other business asset, and the same applies to nonprofits. Digital ecosystems require maintenance.
Links break, plugins need updates, and search algorithms change. A quarterly “digital audit” to check your site speed, broken elements, and SEO health is essential for long-term visibility.
Turning your digital ecosystem into a mission multiplier
A successful digital presence is built on the same principles as a successful mission: consistency, transparency, and clear communication. By owning your assets, planning your content, and grounding your decisions in data, you ensure that your digital ecosystem serves as a force multiplier for the people you’re trying to help.
https://i0.wp.com/dubadosolutions.com/wp-content/uploads/2021/12/web-design-creative-services.jpg?fit=1500%2C600&ssl=16001500http://dubadosolutions.com/wp-content/uploads/2017/05/dubado-logo-1.png2026-03-17 15:00:002026-03-17 15:00:00How nonprofits can build a digital presence that actually drives impact