Is Your Sales Team Guilty of AI-Washing? A CRO’s Guide to AI Agents, Assistants, and Actual ROI

October 29, 2025

Is your sales team AI-washing G2 TechSignals

Circa 2019, I remember talking to C-suite leaders in the pre-AI era, and their biggest concern was, "How do we get our sales executives to update the CRM accurately?” Fast-forward to today, and their concern has ballooned, just like their tech stack. Now, they ask, “We invested in AI sales technology platforms, what’s the ROI? Is our team really using the tech to its full potential? And how do we get them to update the CRM accurately?”

The software world has fallen in love with three letters — ROI. AI shows up in roadmaps, revenue meetings, and every third LinkedIn post. If the promise of seamless sales cycles matched the volume, most funnels would be frictionless by now. They aren’t (yet). 

That gap between the claim and the commercial outcome is where AI-washing lives. So, what is AI-washing? It’s when teams say they’re using AI to transform sales performance, but the workflows, habits, and revenue outcomes tell a different story.

This tech signals is for CROs and revenue leaders who want a real roadmap. Not a hype tour of AI’s value in sales. 

We’ll compare AI sales assistants, AI sales agents, and the mythical AI SDR to show where effectiveness beats efficiency, and how to prove ROI without contorting yourself into attribution knots.

Before we get into the data, let’s see the ground reality of revenue teams today and understand what CROs and VPs are adjusting as a result.

Here’s what 3 SaaS revenue leaders said

Teams are wiring AI into everything except the buying journey. Co-pilots proliferate, dashboards glow, and yet pipeline velocity doesn’t budge. Why? Because efficiency without prioritization is theater. Revenue leaders don’t need more “AI-powered” tasks. They need fewer steps to a decision. Here’s what revenue leaders from Seamless.ai, Apollo.io, and G2 discussed about their first-hand observations about AI usage in the sales organization.

1. Start with the verb, not the vendor

B2B SaaS reps and buyers are both swimming in buzzwords. The fastest way out is to translate every AI claim into a job to be done. If the job isn’t obvious, neither is the value.

  • Assistants help: They pull context into the light, summarize accounts, draft call briefs, and rough in first-pass emails. Think of them as the research and prep layer that compresses time to readiness.
  • Agents act: They run multi-step workflows across systems to get somewhere — qualify inbound, enrich records, route intelligently, schedule and confirm, update CRM, nudge next steps. When designed well, they’re orchestration, not toys.
  • “AI SDRs” sell (on paper): In practice, this is a workflow masquerading as a role. It can prospect, pattern-match, and trigger communications. But complex sales still need human judgment for discovery, consensus, and negotiation. Treat “AI SDR” as capacity, not headcount.

“AI SDRs sell. AI agents act. Assistants help. Start by asking: AI in order to what?”

Jonathan Pogact
VP of Marketing at Seamless.ai

Avoid bolting labels onto your org chart; instead, map them to the customer journey. If an assistant doesn’t make a seller sharper for the conversation that matters, it’s a distraction. If an agent can’t be tied to a measurable step in the journey, it’s a science project.

2. Efficiency is the coupon; effectiveness is the catalyst

While the industry’s favorite promise is “ giving time back”, it’s time to differentiate between table stakes and true value. According to G2’s Chief Revenue Officer, Eric Gilpin, what moves revenue is return on time. This is a combination of doing the right things, the right way, in the right order. Efficiency trims minutes; effectiveness removes bottlenecks.

Picture a whiteboard of your end-to-end journey. There’s one chokepoint slowing everything: unqualified inbound clogging calendars, handoffs dropping context, and proposals stalling in legal limbo. Point AI there, not everywhere.

“I don’t want to be ‘efficient.’ I want to be effective; doing the right things, the right way, in the right order.”

Eric Gilpin
CRO of G2
A few ground rules keep teams honest:

  • Automate the last mile first if the workflow sits directly before a customer action. For example, milestones like booking a meeting, scheduling a demo, and signing an order form help clean up attribution, and ROI shows up faster.
  • Consolidate the Frankenstack. Pick one or two integrated platforms. Orchestration beats tab juggling; adoption follows friction.
  • Invisible beats novel. The best AI is embedded in the existing flow. If reps have to remember a new portal to get value, your adoption ceiling is set.

3. Measure the work, not the wow

Hype sounds like “AI-powered.” Revenue sounds like “meetings booked went up 47% when we used it this way.” The difference is a measurement system that separates quality, usage, and business impact.

“If reps aren’t using it, or it isn’t measurably improving results, you’re just playing semantics.”

Samuel Thomas Elliott
Prompt Writer and Engineer at Apollo.io

A four-metric scorecard that travels well:

  • Quality (offline): Human annotation on accuracy, relevance, tone, and clarity before wide release. Set a threshold and hold it.
  • Adoption (behavioral): Weekly active users, workflow retention, usage frequency. If fewer than 10–20% of target users adopt, it’s not real.
  • Efficiency (operational): Time per task and cycle-time variance. Useful, but never the headline.
  • Business impact (commercial): Response-rate lift, meetings booked, stage conversion, opportunities created and closed.

Tyler Phillips, Director of Product Management at Apollo.io, makes a critical point: Impact is easier to prove closest to the outcome. 

When AI powers outreach with research that earns an immediate reply, the causal line is short. 

Tip: If you're using AI to trim research time, don’t stop at measuring hours saved. Pair “hours saved” data with downstream metrics to see how it translates to impact on ticket size or deal velocity.

And this is where most sales teams fall into predictable traps.

The blind spots no one wants to admit

Automating the wrong thing: New knobs make it too easy to turn everything on. The filter is simple: if a task isn’t the highest and best use of a seller’s time and you can tie it to a revenue objective, automate. If not, don’t.

Showing up less prepared than the buyer: Most buyers shortlist before a first call. Yet inboxes fill with generic sequences that ignore obvious signals in reviews, usage, and public content. Use assistants to synthesize context into a point of view:

  • What are they optimizing in their sales operations and cycle? 
  • Where are they stuck?
  • What are the two hypotheses you’ll test in discovery?

Feature–fit confusion: Apollo.io’s “prompt factory” analysis of research requests showed only ~20% were actually feasible. Often, the issue isn’t the model; it’s that users don’t understand what the feature does. Good product teams close this with guardrails, annotations, and suggested paths that nudge people toward winnable asks.

“Busy work gets faster, but revenue doesn’t grow unless you point AI at the right things in the right order.”

Jonathan Pogact
VP of Marketing at Seamless.ai

The G2 take: AI SDRs vs. Assistants vs. Agents

We analyzed ~2000 reviews (500 reviews per category) across AI SDRs, AI Sales Assistants, AI Agent Builders, and AI Agents for Business Operations categories. User reviews reveal that while AI SDRs and assistants are firmly embedded in sales workflows, the rise of agentic AI is playing out across two distinct categories: builders and business ops platforms. Together, these new AI categories are reshaping how revenue teams think about orchestration, adoption, and ROI.

For CROs and revenue leaders, the message is clear: efficiency isn’t the endgame. Effectiveness is. 

The way you adopt assistants, agents, and SDRs will decide whether you’re gaining a performance edge or just adding another AI label to your stack.

AI SDR, sales assistant, and agent software ratings compared

Before we talk about ROI, it’s worth asking: is every AI sales category delivering the same ROI story? To find out, we analyzed category-level data from G2 to understand how different types of AI sales tools perform across usability, requirements fit, and adoption.

The goal: separate the hype from what’s truly helping revenue teams move faster, sell smarter, and close more predictably.

Is your sales team AI-washing Tech Signals

Source: Exclusive G2 review data

While ROI timelines were not consistently reported in reviews, adoption signals are still strong. SDRs and assistants win in SMB and mid-market settings with speed and simplicity.

Agent categories lean into orchestration and enterprise workflow ambitions, a sign of the agentic AI era arriving.

Who’s really using these tools, and for what?

To cut through the AI-washing noise, we looked at the buyer personas driving each category — the roles adopting these tools, the business sizes leaning in, and the industries seeing early traction.

Buyer persona snapshot of AI SDRs, AI sales assistants, AI agents

Source: Exclusive G2 review data

SMB sellers want speed to lead, while enterprise teams want orchestration and compliance baked in. The SaaS industry seems to be drinking its own AI-labeled champagne.

Now that we know who’s using these tools, it’s worth understanding why they’re using them.

Numbers give us the map. But it’s the ground reality of how teams use AI assistants, agents, and SDRs in real buying journeys. Now that we've analyzed if AI is fuel or just fog, let's create a clear path to help revenue teams complete this journey.

Think your brand is AI-ready? Register for Reach 25, join Bozoma Saint John, Profound, Zendesk, Reddit, Canva, and more on Nov 5 to learn strategies and actionable insights.

How CROs can turn AI ambition into revenue reality

AI isn’t a side project anymore, it’s the new operating system for revenue teams. This playbook breaks down what an AI-powered sales organization looks like, how to tie tools to real ROI, and how to ship results in 30 days or less.

What an AI-powered revenue team looks like (in practice)

It’s not science fiction. It’s a posture.

Here’s what that looks like in practice.

  • Real-time data, no heroics: CRM, product telemetry, calls, emails, and web signals update continuously in the background. Reps don’t tidy data; the system does.
  • Autonomous last mile: Agents qualify, enrich, route, schedule, confirm, and log, so humans can think, challenge, and close.
  • Symmetry between customer and seller experiences: If customers enjoy instant answers, internal teams should, too: decks, references, and policies surfaced in seconds.
  • From linear to exponential capacity. Headcount no longer caps throughput. Buyers engage on their terms; teams respond without calendar bottlenecks.

But a clear picture alone doesn’t deliver ROI. The real differentiator is how CROs operationalize it.

How CROs and revenue teams can turn AI sales tools into real ROI

  • Audit the “AI in order to ___” gap: Tie every tool to a measurable sales outcome.
  • Automate the last mile first: Start where revenue impact is clearest (speed-to-lead, SDR to account executive handoff, proposal routing).
  • Push for adoption symmetry: If sellers don’t use it weekly, it’s shelfware.
  • Align role + ROI: Assistants deliver for SMB reps; agents deliver for enterprise ops.
  • Plan for convergence: As assistants and agents overlap, CROs should expect vendor consolidation and clearer ROI benchmarks.

Principles only matter if they show up in the next quarter’s plan. Here’s how to turn them into a 30-day sprint.

The 30-day blueprint for CROs and revenue teams

The goal isn’t to win the AI conversation. It’s to shorten the distance between intent, action, and decision while strategically positioning your business around this buyer journey.

Week 1: Run the “in order to ___” audit: List every AI feature. Complete the sentence and name a proof metric tied to revenue. Sunset anything without an outcome.

Week 2: Automate one last-mile workflow: Start with speed-to-lead or SDR→AE handoff. Define agent scope and human checkpoints. Ship it to a subset of users.

Week 3: Install the four-metric scorecard: Gate on quality and track adoption weekly. Pair time savings with conversion. Report in business terms.

Week 4: Consolidate and codify: Reduce to two core systems where the work already lives. Publish governance: what’s agent-owned vs. human-owned, escalation paths, brand, and privacy rules.

So, is the sales team guilty of AI-washing?

The short answer: sometimes. 

The data and expert perspectives point to a pattern: sales teams often adopt AI tools for efficiency gains, but if those tools aren’t tied to a measurable customer journey step, the result is theater, not revenue. That’s where AI-washing creeps in.

But when CROs ground adoption in effectiveness by automating the last mile, mapping assistants and agents to real outcomes, and holding vendors accountable for ROI, AI becomes a performance lever, not a label.

The verdict isn’t that sales teams are guilty. It’s that the trial is still in session. Those who move from AI-washing to ROI-proof workflows will shorten the distance between intent, action, and decision. And that’s the edge revenue leaders are chasing.

It is the cleaner journeys that will stand out from louder claims. 

Are you ready for fewer steps to winning that “yes” from your ICP?

FAQS about AI's role in sales

1. What does “AI-washing” mean in sales?

AI-washing happens when sales teams adopt AI tools for the sake of efficiency or branding, but fail to tie them to measurable outcomes in the buyer journey. It’s efficiency theater rather than revenue impact.

2. What’s the difference between AI SDRs, AI assistants, and AI agents?

  • Assistants help: Drafting emails, summarizing accounts, and prepping call briefs
  • Agents act: Running multi-step workflows like qualification, routing, scheduling, and CRM updates
  • AI SDRs: Sell on paper but mostly automate prospecting and outreach capacity

3. How can CROs measure ROI on AI sales tools?

The most effective scorecards track:
  • Quality (accuracy, clarity, tone before scale)
  • Adoption (weekly active users, workflow retention)
  • Efficiency (time per task, cycle-time variance)
  • Business impact (response-rate lift, meetings booked, stage conversion).

4. Where are AI sales tools gaining traction fastest?

According to G2 review data, adoption is strongest in North America with rising signals in APAC and Europe. India, Australia, and France are emerging as high-satisfaction but underpenetrated markets.

5. What should CROs do to avoid AI-washing?

Audit tools with the “AI in order to ___” test. Automate the last mile first, align assistants to SMB use cases and agents to enterprise workflows, and focus on adoption symmetry so AI doesn’t become shelfware.

Edited by Supanna Das

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