Blog

Achim’s Razor

Positioning, Messaging, and Branding for B2B tech companies. Keep it simple. Keep it real.

0 Articles
Insight

AI Accountability Part 3: What Executives Must Know Now

The Delaware 2023 ruling changed the game. Learn how AI oversight is now a legal risk and what C-suite leaders must do to protect their roles and reputations.
March 31, 2025
|
5 min read

Ignoring AI is risky, especially now! Shareholders are already filing lawsuits over missed opportunities and messy data. The Delaware 2023 ruling now holds executives and officers personally responsible. AI is changing leadership accountability and fiduciary duty faster than we can keep up. Here’s how to prepare.

Takeaways

  • A 2023 Delaware Chancery Court ruling holds directors and officers personally liable for oversight and poor decisions.
  • Shareholder lawsuits are increasing, especially over fudged data.
  • AI is making old leadership habits and tools less useful. We can't hide in vagueness anymore.
  • Reputation damage is a bigger threat than fines or payouts.
  • Waiting too long to act could cost you your reputation and your career.

Shareholder Activists and the Coming Lawsuit Surge

In Part 1 and Part 2 of this series, Mark Stouse, CEO of Proof Analytics, and I explored why AI accountability and fiduciary duty now sits with the entire leadership team—and how the Delaware 2023 ruling changed the rules for C-suite liability.

This third part recaps what’s happening right now.

For example, shareholders are paying attention and lawsuits have already begun by using AI to investigate leadership oversight in real time. Executives who don’t act could face serious personal consequences.

REWATCH the entire series on LinkedIn:

  1. Part 1: AI Is Forcing Leadership Accountability
  2. Part 2: The Delaware 2023 Ruling
  3. Part 3: Shareholders and the Coming Lawsuit Surge

What the Delaware Ruling Changed

Before 2023, corporate officers were rarely sued unless they acted with clear intent to do harm. That’s no longer the case.

A Delaware court ruled that officers can now be held liable for poor decisions, even without bad intent. In other words, saying, “I had no idea,” won’t hold up in court.

This came from a case involving McDonald’s and their CHRO. Being careless or uninformed is enough to bring legal trouble.

“The vulnerabilities to the company just went up exponentially... the bar for proving breach of fiduciary duty was dropped to the floor from a very high place.”
 
Mark Stouse

Mark spoke to about 350 CFOs and many agreed this ruling is a bigger deal than Sarbanes-Oxley. AI now makes it easier to spot crappy data and call out risky decisions.

Shareholders Are Suing

Unlike McDonald’s, a lot of lawsuits are currently being settled quietly, not just to avoid financial loss, but to prevent reputational damage.

That risk is now front and center. Executives aren’t just trying to protect the company. They’re trying to protect their names.

As mentioned, one of the first things shareholders are targeting is data quality. If your CRM or marketing automation data is flawed, your entire revenue engine is vulnerable. That’s low-hanging fruit for litigation, and it’s already happening.

And if you’ve had conversations with vendors and walked away without action? That trail exists. AI note-takers, emails, even meeting transcripts, can be used to show that you were aware—and failed to act.

This is where legal exposure gets personal.

Marketing Is Starting to Feel It

Marketing teams are seeing this shift with buyer bots. These bots now control much of the personalization. That flips the value of seller-side personalization on its head.

“Personalization from the seller side no longer is needed... It’s really kind of going to be negated one way or the other.”
 
Mark Stouse

Teams need tools that reveal what’s actually working. Causal AI tools like Proof Analytics helps big time. Sticking with old habits will get you into trouble.

Proof Analytics can help GTM teams mitigate legal risk by showing what’s working, what’s not, and why.

It’s Bigger Than Lawsuits

While the legal risk is fairly obvious, the bigger and less evident threat might be your career. 

“You can insure against financial liability, but you can’t insure your reputation.”

Mark Stouse

Boards are less forgiving. Shareholders are quicker to act. Leaders who don’t move forward risk tarnishing their reputation indefinitely.

Just look at the CHRO in the McDonald’s case. That individual may never work in HR ever again.

Will AI Replace the C-Suite?

There is a school of thought that says AI could potentially replace the C-suite as we know it today. And it isn’t just theory anymore.

“Over time, the biggest career losers from all this will be the C-suite... At some point, you don’t need a 14-million-dollar annual salary for a CEO.” 
 
Mark Stouse

AI decision-making capabilities keep getting better and better. If AI starts making smarter calls than the leadership team, why keep the old structure?

The writing may already be on the wall.

What You Can Do

If you lead a company (or plan to) here’s what matters right now:

  1. Use AI to make informed decisions to build systems that show what’s working and why.
  2. Document everything to ensure you can explain and support your decisions.
  3. Fix your go-to-market (GTM) approach by dropping what’s not working (use AI to help you reveal what is).
  4. Understand the risks and learn where accountability and liability start and how that affects you.
  5. Act now – Don’t wait for a crisis. The best protection is action.

AI can help you protect and defend, but it can also quickly help you find a way to lead better, faster, and with more clarity.

You can use it to plan smarter GTM strategies, adapt in real time, and stay ahead of shareholder expectations.

Final Thoughts

One last thing: Mark shared an analogy that’s quite apropo.

Imagine standing on one side of a fast-moving river, and you need to get to the other side. You can swim or stay where you are.

“The difference between humans and every other species is that when the river changes course, we can swim. But many executives are standing still, waiting to be swept away.”
 
Mark Stouse

The river’s already moving. The ones who swim now might just make it to the other side.

REWATCH all 3 parts of this series on LinkedIn:

  1. Part 1: AI Is Forcing Leadership Accountability
  2. Part 2: The Delaware 2023 Ruling
  3. Part 3: Shareholders and the Coming Lawsuit Surge

If you haven’t seen them, now’s a good time. What you don’t know can still cost you.

If you like this content, here are some more ways I can help:

  • Follow me on LinkedIn for bite-sized tips and freebies throughout the week.
  • Work with me. Schedule a call to see if we’re a fit. No obligation. No pressure.
  • Subscribe for ongoing insights and strategies (enter your email below).

Cheers!

This article is AC-A and published on LinkedIn. Join the conversation!

Execution

Why GTM Metrics Fail & How to Fix Them for Growth

Most GTM metrics fail to explain why revenue grows or stalls. Learn which metrics actually matter and how causal AI improves forecasts.
March 24, 2025
|
5 min read

Most GTM teams rely on pipeline, conversion rates, and revenue tracking, but these GTM metrics fail to explain why revenue grows or stalls. Traditional reporting shows correlation, not causation, leading to unreliable forecasts and wasted marketing spend. Causal AI for marketing analytics shows what is happening and why, and how to improve GTM forecasts.

Takeaways

  • Most GTM metrics fail to explain revenue changes because they show correlation, not causation.
  • Forecasting based on historical trends leads to misallocated budgets and inaccurate forecasts.
  • 60-70% of B2B content goes unused by Sales.
  • Causal AI for marketing analytics can improve forecast accuracy by 30-50%.
  • Tracking friction metrics helps fix GTM reporting mistakes.

Measure What Hurts

A lot of GTM teams struggle with reporting mistakes because their dashboards don’t explain why revenue grows or stalls. Most traditional GTM metrics fail to show what’s actually driving revenue or how to predict future growth accurately.

Todd Mumford recently pointed this out on LinkedIn, listing friction metrics that usually get ignored.

  • The percentage of qualified leads that Sales never contacts
  • How often customers are confused by messaging we thought was clear
  • The number of support tickets for issues already covered in documentation
  • How many “emergency” projects actually moved the needle
  • The widening gap between Sales promises and what the product delivers

Friction metrics reveal where GTM efforts break down and explain why we keep missing our targets. They rarely show up at quarterly reviews because they are rarely tracked consistently. 

“The marketers who will outperform are brave enough to measure what hurts.”
 
Todd Mumford

For Todd’s complete list of metrics, see his post on LinkedIn.

The Blind Spots in GTM Metrics

Most GTM reporting focuses on what happened, not why. 

You get revenue numbers, conversion rates, and pipeline figures, but these only tell part of the story. Here’s what’s missing:

1. Traditional Metrics Often Show Correlation, Not Causation

You might see an increase in web traffic alongside revenue growth and assume one drove the other. But without causal analysis, you don’t know why revenue increased. Maybe it was a pricing change, a competitor going under, or an unrelated market trend.

According to a Wharton study, 57% of marketers misinterpret correlation as causation, leading to bad investments and wasted budget. 

Think of it this way:

  • Correlation: Every time you don’t wear your lucky socks, your favorite team loses.
  • Causation: No, your lucky socks don’t affect the outcome of the game. The real causes are things like player performance, coaching decisions, injuries, and travel schedules.

GTM metrics chart: 57% marketers misinterpret correlation as causation

2. Forecasting Is Often Based on Historical Trends, Not True Drivers

Many RevOps teams rely on pipeline coverage. For example, “We have 3x our quota in pipeline, so we’ll be fine.”

But without understanding which opportunities are likely to close and why, these forecasts are unreliable.

Google’s research confirms that traditional Media Mix Models (MMM) often inflate ROI estimates because “MMM typically produces correlational, not causal results.” That results in improper budgeting and misleading insights.

3. GTM Teams Struggle to Measure the “Messy Middle”

Marketing isn’t linear. Deals don’t move through funnels nor in a straight line. 

Buyers come and go as they please revisiting touchpoints, getting stalled by procurement, and engaging multiple channels. But most GTM teams don’t capture these behaviors.

For example, 60-70% of B2B marketing content goes unused by Sales, according to Forrester. If you’re not tracking which content is influencing deals, you’re burning money.

GTM metrics chart: 65% of B2B content marketing assets produced go unused

A Better GTM Metrics Framework

To answer what’s happening, why it’s happening, and how to predict growth, GTM teams need to track metrics that explain real-world outcomes.

Weekly KPIs:

  • % of qualified leads contacted (lead follow-up rate)
  • Win rate by lead source
  • Number of meetings to close a deal (friction indicator)
  • % of content used in sales cycles
  • Sales response time to inbound leads

Monthly KPIs:

  • Conversion rates through each funnel stage
  • Product promise vs. customer complaint themes (gap tracker)
  • Support ticket themes vs. help docs (misalignment check)
  • Pipeline coverage for the next 90 days

Quarterly KPIs:

  • Sales cycle velocity trends
  • Revenue impact of marketing campaigns (beyond last-touch attribution)
  • % of martech stack actually being used
  • Alignment test: Can teams explain positioning without looking it up?

Where Causal AI Makes a Difference

Traditional analytics can tell us what happened—revenue increased 20% last quarter. But It’s a mistake to assume that just because two things happen at the same time, one must have caused the other. 

Causal analytics help us understand why—a specific campaign, a competitor going out of business, or an economic or geopolitical shift. Causal AI separates real cause-and-effect relationships from coincidences. It filters out random noise and external factors to show what’s really driving growth.

Practical Use Cases for Causal AI in GTM Reporting

  • Predictive Revenue Forecasting: Tools like Proof Analytics analyze time-lag effects between marketing activities and revenue outcomes, making forecasts 83% more accurate, according to their users.
  • Marketing ROI Optimization: Google’s MMM framework now integrates causal AI to separate real campaign impact from coincidental traffic spikes, reducing over-attribution errors by 30-50%.
  • Sales Cycle Acceleration: Causal AI can show which actions actually shorten deal cycles vs. which ones just seem correlated.

When done right, Marketing is an exponential multiplier of Sales effectiveness and efficiency.

Marketing's multiplier effect on Sales.

Final Thoughts

The problem with traditional GTM metrics isn’t that they’re wrong—it’s that they’re incomplete. 

If you’re only tracking pipeline and conversion rates, you’re missing the friction points, the real decision drivers, and the hidden inefficiencies that stall growth.

Causal AI can improve effectiveness, helping you fix GTM reporting mistakes, forecast revenue accurately, shorten sales cycles, and optimize your marketing spend.

If you like this content, here are some more ways I can help:

  • Follow me on LinkedIn for bite-sized tips and freebies throughout the week.
  • Work with me. Schedule a call to see if we’re a fit. No obligation. No pressure.
  • Subscribe for ongoing insights and strategies (enter your email below).

Cheers!

This article is AC-A and published on LinkedIn. Join the conversation!

Insight

AI Accountability Part 2: Delaware Ruling & C-Suite Liability

The Delaware Chancery Court Ruling of 2023 expands fiduciary duty. CMOs, CROs & CDAOs are now liable. AI exposes risks—leaders must act now.
March 17, 2025
|
5 min read

The Delaware Chancery Court Ruling of 2023 is a wake-up call. CMOs, CROs, and CDAOs are now personally responsible for oversight failures, bad data, and poor decisions. AI, especially Causal AI, is exposing the truth. Lawsuits are already happening. If you lead a team, you need to assess your risks, clean up your data, and use AI to protect yourself. 

Takeaways

  • All officers, not just CEOs and boards, are now accountable, so if you’re in marketing, sales, or data, this applies to you too.
  • Negligence and complacency can get you sued. You don’t have to act maliciously to be held responsible.
  • AI is making everything more transparent, exposing flawed data and misleading numbers.
  • Shareholders are already suing executives due to CRM issues, data fraud, and bad reporting.
  • Don’t wait! Audit your risks, fix your data, use AI to help you, and get personal liability insurance.

What’s Going On?

In AI Accountability Part 1, Mark Stouse and I talked about how AI is making executives more accountable. Now, we’re looking at the Delaware Chancery Court Ruling of 2023, a decision that puts more responsibility on business leaders. If you’re a CMO, CRO, or CDAO, this ruling could affect you in a big way. Here’s what you need to know about AI accountability in corporate leadership and how AI-driven risk management for executives can help.

REWATCH: Part 1 and Part 2 on LinkedIn.

Why Isn’t This a Bigger Deal? (Sources & Context)

Mark Stouse, CEO of Proof Analytics, put it simply: “If this ruling is so important, why isn’t everyone talking about it?”

The ruling made headlines in The Wall Street Journal and Financial Times with a sexual harassment lawsuit against McDonald’s, but outside legal circles, it didn’t get much attention.

“Historically, fiduciary duty had a very high bar—you had to almost prove nefarious intent. That’s no longer the case. If you’re an officer of a Delaware-domiciled company, you can now be held personally liable for negligence, incompetence, or just not knowing what’s in your own systems.”
 
Mark Stouse

This ruling affects roughly 90% of venture-backed companies in the U.S. and two-thirds of the Fortune 1000. Even privately held companies are under scrutiny. 

If you’re in leadership, this matters to you.

What’s Changed?

  • It’s easier to get sued. Before, you had to prove someone acted in bad faith to hold them accountable. Now, feigning carelessness won’t hold up in court.
  • More executives are on the hook. Fiduciary duty used to apply mainly to CEOs and boards. Now, all corporate officers are responsible, including marketing, sales, and data leaders.

Real-World Impact

Mark shared a case where a company settled for a huge amount because of bad CRM data. In fact, CRM data integrity (or lack thereof) has become a meme. 

“I was supposed to be an expert witness in a case involving CRM data. The company settled for a lot of money out of court. The issue? The data was so flawed that it triggered fraud detection software. Sales reps had manipulated CRM records to hit incentives, creating a legal liability for the CRO, CIO, and CDAO.”
 
Mark Stouse

If your data is unreliable and you’re in charge of it, you’re responsible. Period. 

Saying “I didn’t know” won’t protect you. Delaware fiduciary duty ruling impact is already being felt across multiple industries.

AI Is Changing the Game

Each day AI is getting better and it’s making leaders more accountable.

“AI is going to be the great truth-teller inside corporations. Everything that can be known will be known or knowable.”
 
Mark Stouse

If your reports claim your marketing is driving revenue, but causal AI proves otherwise, that’s a problem.

What’s at stake for CMOs, CROs, and CDAOs?

  • Marketing budgets: If you can’t prove ROI beyond vanity metrics, shareholders can cut your budget—or sue.
  • Sales forecasting: Bad pipeline data can lead to legal trouble.
  • Data governance: If poor data quality slows down AI adoption, investors might argue you’ve cost them future growth.

What You Need to Do Now

If you’re in leadership, here’s a step-by-step guide to protect yourself:

1. Get Your Legal Team Involved

  • Check if your legal team knows about this ruling. Many still don’t.
  • If they aren’t aware, send them this article and ask how it applies to your company.

2: Audit Your Risks and Data

  • Identify weak spots in your department—especially data issues.
  • Determine what’s broken, how to fix it, and what it will cost.
  • Document everything—it could protect you in court.

3: Use AI for Risk Management

  • If you’re not using Sausal AI, you’re already behind.
  • AI can reduce your personal liability by improving decision-making and risk assessment.
  • If someone asks, ‘Are you using causal AI?’ and you say ‘no’—you’re in trouble.
  • If you need a Causal AI tool, check out Proof Analytics

4: Get Personal Insurance

  • Your company might cover you, but it’s safer to have your own E&O (Errors & Omissions) insurance.
  • If something goes wrong, you don’t want to rely on corporate coverage.

5: Focus on Effectiveness, Not Just Efficiency

  • Cutting costs might boost short-term numbers, but AI is exposing how bad those decisions really are.
  • If you can’t prove cost-cutting won’t hurt long-term growth, you’re at risk.

Final Thoughts

Yes, the Delaware Chancery Court Ruling is a wake-up call. But it’s more of an opportunity to get ahead of potential litigation by cleaning up our data rather than fear-mongering. 

Use AI to protect yourself. If you act now, you can stay ahead of the risks, prove your value, and future-proof your business.

“This is only the beginning. Shareholders, especially activists, are using this ruling to sue executives. If you’re not prepared, it’s just a matter of time.”
 
Mark Stouse

In AI Accountability Part 3, Mark and I will dive into the wave of lawsuits already happening and what you can do to stay ahead.

Stay tuned.

REWATCH: Part 1 and Part 2 on LinkedIn.

If you like this content, here are some more ways I can help:

  • Follow me on LinkedIn for bite-sized tips and freebies throughout the week.
  • Work with me. Schedule a call to see if we’re a fit. No obligation. No pressure.
  • Subscribe for ongoing insights and strategies (enter your email below).

Cheers!

This article is AC-A and published on LinkedIn. Join the conversation!

Insight

AI Accountability Part 1: Why Every Executive Is On The Hook

AI is making executives personally liable for data governance. Learn how AI-driven audits and legal rulings are reshaping leadership risk.
March 10, 2025
|
5 min read

AI-driven executive accountability is forcing leaders to take responsibility for their decisions instead of relying on vague statements or outdated assumptions. A new Delaware ruling makes CROs, CMOs, and CDAOs personally responsible for data quality and governance failures. Executives need to tighten data oversight, audit regularly, and work closely with compliance because AI fact-checking is exposing governance failures in real time. 

Takeaways

  • AI is exposing weak data governance and poor decision-making.
  • The Delaware ruling expands liability beyond CEOs and CFOs—CROs, CMOs, and CDAOs are now accountable for data failures.
  • Poor CRM and business data can lead to fraud claims, shareholder lawsuits, and regulatory scrutiny.
  • Employees, investors, and stakeholders can verify statements with AI instantly—and they will.
  • Frequent audits and legal alignment are no longer optional—they’re survival strategies.

Why the C-Suite is on the Hook

In our latest LinkedIn Live session on AI Accountability, Mark Stouse and I dug into how AI is forcing radical transparency across the C-Suite.

For years, AI has been marketed as an efficiency tool, but it’s now putting executives under a microscope—especially the Chief Data & Analytics Officer (CDAO). AI’s impact on CDAO responsibilities is undeniable. The CDAO is at the center of it all, overseeing data quality, compliance, and legal risks that didn’t exist a decade ago.

Data quality is no longer an internal issue. AI-driven transparency is turning poor oversight into a legal and reputational risk. Get it wrong, and you could face lawsuits, SEC investigations, or worse.

Watch the full episode on LinkedIn.

The Illusion of Predictable GTM Models

Many executives have built go-to-market (GTM) strategies based on the idea that growth can be mapped out in a straight line. AI is proving them wrong.

“Roughly 20 to 25 years ago, founders and VCs decided they could remake B2B GTM into a deterministic, linear machine. They thought they could put a quarter in and get a gumball every time. That model failed—92% of those startups tanked.”
 
Mark Stouse

AI won’t fix broken GTM strategies. It will expose bad assumptions faster and force leaders to adapt—or fail even sooner.

AI is also putting more and more buyers in control. Companies that cling to outdated demand-generation tactics will lose to competitors who use AI to adapt in real time, recognize genuine buying signals, and pivot quickly.

AI Fact-Checking: Leaders Under the Microscope

The CEO Who Got Fact-Checked in Real Time

Mark shared an interesting story about a CEO who walked into a town hall thinking he was in control—but AI had other plans.

Employees ran AI tools on his statements in real time. They compared his answers against past company reports and financial disclosures. Contradictions surfaced immediately. The Q&A turned into an awkward grilling session.

“Executives can no longer rely on ambiguity. The days of being able to say one thing today and another tomorrow without scrutiny are gone.”
 
Mark Stouse

Every word leaders say is recorded, analyzed, and cross-checked against financial disclosures, internal reports, and regulatory filings. AI is removing the gray areas that once gave executives room to maneuver. 

The only way to stay ahead? Make sure what you say is accurate before you say it.

Executives Are Now Personally Liable for Data

The 2023 Delaware fiduciary ruling for executives has changed everything. For the first time, leaders beyond the CEO and CFO—including CDAOs, CROs, and CMOs—are legally accountable for data quality and governance failures.

How One Lawsuit Changed the Game

The Delaware ruling isn’t just a legal theory. It’s already leading to lawsuits. Mark shared an example that illustrates just how serious this is getting.

"A recent shareholder lawsuit named the CIO, CDAO, and CRO over CRM data quality issues. During discovery, a fraud detection tool was used to analyze the CRM, revealing that two-thirds of the data was manipulated, often to take advantage of sales incentive programs. That level of individual accountability simply wasn’t a risk five years ago."
 
Mark Stouse

This case revealed a stark reality: CRM data is a mess, and the legal risks of poor data quality are growing. 

AI-driven audits are exposing fraud, inaccurate records, and manipulated pipeline data, which is leading to shareholder lawsuits and regulatory action.

CDAOs oversee data quality and governance, but CEOs, CROs, and CMOs are just as exposed. Bad data now impacts revenue, compliance, and investor confidence. 

What Executives Need to Do Now

Executives who ignore AI-driven accountability won’t just lose credibility, they can also face legal consequences.

  • Take Data Governance Seriously – Data integrity is a C-suite issue, not an IT function.
  • Audit Data Regularly – AI-driven audits should catch and correct data issues before they trigger lawsuits.
  • Work With Compliance Teams – Legal and risk teams must be involved in AI and data governance strategy.
  • Educate Leadership Teams – CDAOs need to help CEOs, CROs, and CMOs understand AI risk.

The companies that take AI-driven accountability seriously now will be the ones that stay ahead of lawsuits, regulators, and market shifts.

Final Thoughts

The AI accountability era has arrived. Executives who take data governance seriously will mitigate the inherent risks and avoid serious consequences.

In Part 2 of our next AI Accountability session, Mark and I discuss the legal risks executives face after the Delaware ruling.

Stay tuned.

Watch Part 1 on LinkedIn.

If you like this content, here are some more ways I can help:

  • Follow me on LinkedIn for bite-sized tips and freebies throughout the week.
  • Work with me. Schedule a call to see if we’re a fit. No obligation. No pressure.
  • Subscribe for ongoing insights and strategies (enter your email below).

Cheers!

This article is AC-A and published on LinkedIn. Join the conversation!

Execution

How to Build Sustainable Growth Without Gambling on It

Discover how B2B tech companies can balance brand and leadgen for sustainable growth, reduce acquisition costs, and avoid the short-term revenue trap.
March 3, 2025
|
5 min read

Many B2B tech companies focus too much on short-term revenue and neglect what builds lasting success. Growth happens when we balance short-term sales activation with long-term brand-building. Deeply understanding the market and shifting from reactive sales to proactive strategies helps us know when to invest in brand, how much to spend, and how to transition away from a lead-obsessed mindset. 

Takeaways

  • Without brand investment, customer acquisition costs rise, and growth slows.
  • Companies like Gong built brand equity early and now lead without competing on price.
  • When win rates drop, sales cycles lengthen, or competitors undercut you, it’s time to rethink your approach.
  • Based on the Binet and Field study, B2B companies should allocate 46% to brand and 54% to activation on average since B2B sales cycles require more direct activation, especially during early days.
  • Adjust budget and messaging over 6-12 months to prevent revenue disruptions.

A Smarter Approach to Growth

Running a B2B company comes with constant pressure to hit revenue targets. We often end up chasing leads, cutting costs, and pushing sales and marketing harder with sales-led and product-led tactics. 

This desperate pursuit of “more for less” is really just a cycle that burns cash and limits potential. The brands that grow do things differently. They focus on three key things:

  1. Insight: Unearthing customer and market demand shifts before competitors do.
  2. Brand: Creating credibility and earning trust so out-of-market buyers remember you.
  3. Activation: Driving immediate action with direct marketing and sales support to convert in-market buyers. 

“B2B marketing has become one-dimensional, fixated on revenue. We’ve lost sight of what truly drives growth—market insight, brand building, and genuine demand.”
 
Emma Clayton, FCIM

And because time lag impacts sales, today’s revenue comes from marketing done months ago. Cut brand investment now, and you’ll struggle later. Building up and maintaining a strong brand also builds up a strong pipeline. 

Balancing Brand and Activation Drives Growth

What happens when you focus only on short-term wins?

1. Growth Takes Time—You’re Running a Marathon

Many B2B companies track leads, pipeline, and SQLs but ignore brand reputation, trust, and loyalty.

Traditional lead generation is getting less effective. Buyers act as groups and research for months before talking to sales. Scaling sales activation alongside brand awareness ensures your pipeline doesn’t dry up. (2024 Buyer Experience Report, 6sense)

2. Stop Reacting, Start Leading

Most business outcomes depend on external factors. If you only react to quarterly revenue dips, you’ll always be playing catch-up. 

“Two-thirds to three-fourths of business outcomes are driven by external market forces.”
 
Mark Stouse

Investing in brand lets you control the conversation instead of constantly chasing it.

3. Brand Investment Makes Growth Cheaper

When revenue slows, companies often make cuts in the name of “efficiency” and then double down on lead gen. That’s a mistake. 

Without brand marketing, sales activation gets harder and more expensive over time because memory and credibility fade. The cost to regain momentum is exponentially greater.

Gong logo

Gong is a good example of what it takes:

  • Ten years ago, they were unknown. 
  • Today, they dominate their category.
  • How and Why? Much like how movies are promoted before they’re released, Gong built their brand before they needed it. Now, they lead without having to compete on price.

When Should You Invest in Brand?

Not sure when to shift focus? Look for these red flags:

  • Win rates are dropping despite a strong pipeline.
  • Competitors keep winning on price.
  • Your brand isn’t recognized even after running campaigns.
  • Sales cycles are getting longer despite more outreach.

If any of these apply, it’s time to audit and update your GTM strategy.

How Much Should You Invest in Brand?

Based on the Binet and Field study, 46% Brand and 54% Activation is the optimal mix for B2B companies, as sales activation plays a larger role than in B2C due to longer, complex sales cycles.

Investing early keeps you from fighting for scraps later.

Binet & Field: B2B investment skews towards activation, since sales is harder.

How to Shift Away from Lead-Only Growth

Switching overnight isn’t realistic. Here’s how to rebalance without hurting revenue:

  • First 3 months: Track brand impact (search volume, direct traffic, brand recall) alongside demand metrics.
  • Next 3-6 months: Shift messaging to educate the market instead of just capturing leads.
  • Months 6-12: Gradually increase brand investment while keeping sales activation strong.

This approach keeps revenue steady while making sure future growth doesn’t stall. Sustainable revenue strategies for B2B companies take patience, but they pay off.

Final Thoughts

Short-term marketing isn’t bad—it’s just not enough. If you focus only on next quarter’s number, you’re setting yourself up for trouble down the road.

The best companies think long-term. They invest in:

  • Market insight to predict where demand is going.
  • Brand awareness to lower acquisition costs over time.
  • Sales activation to convert high-intent buyers when they’re ready.

If you want lasting growth, stop betting on quick wins. Invest in brand and activation together—because if you wait until you need brand, it’s already too late.

Build for the future, not just this quarter.

If you like this content, here are some more ways I can help:

  • Follow me on LinkedIn for bite-sized tips and freebies throughout the week.
  • Work with me. Schedule a call to see if we’re a fit. No obligation. No pressure.
  • Subscribe for ongoing insights and strategies (enter your email below).

Cheers!

This article is AC-A and published on LinkedIn. Join the conversation!

Insight

AI and SEO: How Search Will Change in 2025 and Beyond

AI is reshaping how people search, reducing reliance on traditional SEO. Learn how businesses must adapt to AI-driven search and website optimization.
February 24, 2025
|
5 min read

AI-powered chatbots and search assistants are reshaping how people find information online, reducing reliance on traditional SEO. Instead of ranking pages based on keywords, AI now delivers direct answers, making structured data and credibility more important than ever. Businesses must adapt by optimizing for AI discovery, using chatbots, and prioritizing clear, trustworthy content.

Takeaways

  • AI provides direct answers and reduces reliance on traditional SEO.
  • Websites should focus on structured data and credibility to stay relevant.
  • AI chatbots and assistants will eventually replace traditional site navigation and search bars.
  • The shift from SEO to AI optimization means brands must rethink their digital strategies.
  • Sales and marketing teams must work together to ensure AI search visibility leads to measurable conversions.

That Was Then. This Is Now.

SEO has been around since the ‘90s. The idea was simple: use the right keywords, rank high on Google, and get free traffic. 

But times have changed… fast.

AI-powered chatbots and language models (LLMs) are changing how we search. Instead of clicking through search results, we now get answers instantly. 

SEO is evolving and businesses need to rethink how they show up online.

How AI is Changing Websites

People no longer browse through multiple pages to find what they need. They ask AI and get an answer right away. 

More than ever, websites will need to prioritize interaction over static content. 

  • Conversations, Not Pages: AI chatbots replace traditional menus and search bars. Customers ask a question, AI responds instantly.
  • Clarity Over Keywords: Instead of chasing Google’s algorithm, businesses need to provide clear, accurate information.
  • Anticipating Needs: AI doesn’t just wait for questions—it predicts what users are looking for and offers answers first.

Why Traditional SEO Is Fading

Google has long controlled how businesses get found online. AI search assistants are changing that.

  • AI Trusts Structured Data: Rather than ranking pages, AI pulls from sources it recognizes as reliable.
  • Less Website Traffic: Since AI provides answers directly, fewer people are clicking on search results.
  • Information, Not Clicks: AI processes large amounts of data and delivers concise responses, reducing the need for users to visit multiple sites.

How AI Search Impacts Lead Generation

The rise of AI-driven search means fewer organic visitors, but does it affect lead quality?

Businesses must shift from relying solely on high-ranking pages to owning structured, AI-friendly content.

  • AI search might reduce overall site traffic, but the leads it delivers could be more qualified if the content is optimized correctly.
  • Companies should track conversion rates from AI-driven search vs. traditional organic search.
  • To compensate for traffic loss, consider AI-specific ad placements, direct brand queries, and partnerships with AI-friendly data sources.

How to Rank in AI-Driven Search

If AI is answering users’ questions directly, how can businesses ensure their content is cited?

  • Ensure AI models recognize your brand by creating structured, machine-readable content.
  • Use AI-specific SEO tools to monitor how AI-driven search assistants reference your company.
  • Increase domain trust signals through backlinks, industry mentions, and verified content.

What Happens If You Ignore AI Search?

Failing to adapt to AI-driven search could mean disappearing from key buyer journeys.

Some risks include:

  • Losing organic visibility as AI search favors structured, authoritative data.
  • Declining inbound leads as users get answers without clicking on websites.
  • Increased reliance on paid ads due to decreased search traffic.

How Sales and Marketing Teams Should Adapt

AI-driven search isn’t just a marketing concern—sales teams must adjust too.

  • Sales teams should use AI insights to understand buyer intent from search queries.
  • Marketers must shift focus from rankings to optimizing AI-friendly knowledge bases.
  • Track new KPIs, such as AI citations, chatbot-driven conversions, and structured content performance.
  • Enable sales teams with AI-powered tools that provide real-time insights into customer needs.
  • Personalize outreach based on AI trends—for example, by integrating AI-driven chat insights into sales pitches.

Example of AI-Friendly Content vs. Traditional SEO

Traditional SEO Content

  • Keyword-stuffed blog posts
  • Clickbait-style headlines
  • Long-form content with filler
  • Ranking based on backlinks

AI-Optimized Content

  • Structured, AI-readable FAQs
  • Direct, informative responses
  • Concise, data-driven insights
  • Ranking based on AI trust and authority

Action Plan for B2B Companies

To future-proof your digital strategy, consider this roadmap:

Immediate Actions (0-6 months):

  • Optimize existing content with structured data and AI-friendly formats.
  • Add AI chatbots to improve website engagement and direct answers.
  • Test AI-driven paid advertising to compensate for organic loss.

Long-Term Strategy (1-3 years):

  • Train AI models to recognize your brand’s authority by publishing consistent, high-value data.
  • Build relationships with AI search engines to increase credibility.
  • Monitor AI search results for shifts in ranking factors and adapt accordingly.

Final Thoughts

Websites aren’t disappearing per se, but they are quickly evolving. AI-driven experiences are becoming the norm. Businesses that adapt will thrive, while those that don’t will struggle to stay visible.

In the next 2-3 years, expect to see:

  • AI-powered websites with minimal navigation.
  • Automated sales funnels guiding customers from curiosity to purchase.
  • SEO shifting from keyword strategies to training AI models on brand data.

Sources for this article:

If you like this content, here are some more ways I can help:

  • Follow me on LinkedIn for bite-sized tips and freebies throughout the week.
  • Work with me. Schedule a call to see if we’re a fit. No obligation. No pressure.
  • Subscribe for ongoing insights and strategies (enter your email below).

Cheers!

This article is AC-A and published on LinkedIn. Join the conversation!