Nearbound Marketing #34: Building Trust in the Age of Data Overload - Dan Sanchez
Nearbound Daily #425: Mathematician or not, nearbound math is easy 🔢
Howdy Partners #52: Building a Program with No Budget or Tools
Nearbound Daily #424: Beyoncé, the platform genius? 🤔
Nearbound Podcast #131: Navigating the Changing SaaS Landscape - Alexandra Zagury
This CRO Uses ELG to Increase ARPU by 23% and Reduce Churn to Nearly Zero
Nearbound Daily #421: Grow better, together 💪
Nearbound Weekend 09/30: How to use nearbound to position your company in market
Nearbound Daily #420: Sangram Vajre on the undeniable shift in GTM
Friends with Benefits #17: Relationships Over Revenue
Nearbound Daily #419: What got you here won't get you there
Need a Steady Momentum of High-Quality Leads? Look No Further Than Your Partner Ecosystem
Nearbound Daily #418: Study shows trust in influencers has grown
How to Be the Perfect Partner: An Agency Perspective
Nearbound Podcast #130 - Strategy and Evangelism - Jill Rowley
Nearbound Daily #417: This company killed its website
The Nearbound Summit is Near - Four Days You Don't Want to Miss
Nailing your Nearbound Sales Math
The Nearbound Mindset: Part Two
Nearbound Marketing #32: Two Ways to Drive Intros with New Partners - Sam Dunning
Nearbound Daily #415: Microsoft and Facebook +$100M alliance
Nearbound Daily #414: Build a more competitive GTM
Why Every Partnership Leader Should Care About Net Revenue Retention
Nearbound Daily #413: Rand Fishkin and nearbound
Partner Attach: The great debate
Nearbound Podcast #129: Unlocking Sales Success with a Nearbound Mindset - Matt Cameron
Nearbound Daily #411: WARNING this email contains trigger words for partner pros
Nearbound Marketing #31: Three Nearbound Marketing Tactics to Start Using Now
Nearbound Daily #149: AI just killed SEO
Friends with Benefits #16: How to do Dreamforce Right
Welcome to Supernode
Tobin Bennion: How Snowflake Does Customer Centered Partnerships | Supernode 2023
The State of the Partner Ecosystem 2023
Tech Ecosystem Maturity: How to Co-Sell Like a Supernode
The 15+ Questions That Accelerate Co-Selling
Sara Du: How I Built a Partner Program With No Experience | Supernode 2022
Sara Du: How Top Partnership Leaders Get Integrations Built 2x Faster | Supernode 2023
Quick Tips for Crossbeam Account Management and Data Hygiene | Connector Summit 2022
Polina Marinova Pompliano: Taking Risks in Times of Uncertainty | Supernode 2023
Pamela Slim: Build Ecosystems, Not Empires | Supernode 2022
Michelle Geltman: Ways to Shift Your Sales Team’s Mindset | Supernode 2023
How to Forecast and Manage Sourced and Influenced Pipeline in Crossbeam | Connector Summit 2022
Crossbeam explains: How Oyster grew its partner ecosystem and team in one year
Crossbeam Explains: Goodbye Cold Outreach, Hello Ecosystem-Led Sales
Crossbeam and Reveal are Joining Forces to Disrupt Go-To-Market Strategy As We Know It
Braydan Young: How to Get Your C-Suite to Care | Supernode 2023
Bob Moore, Lindsey DeFalco, Adam Michalski, Amanda Groves: Unleashing ELG with Crossbeam: Attribution, Revenue, Education | Supernode 2023
Ben Warshaw: RevOps to the Rescue: The Secret Ingredient to Scaling Your ELG Motion | Supernode 2023
Ask Me Anything with Crossbeam Experts
Andrew Lindsay and Bob Moore: AI, The Market, & How to Thrive | Supernode 2023
Alyshah Walji: It’s Time To Develop An Ecosystem Ideal Customer Profile | Supernode 2022
Allan Adler: Aligning your organization for ecosystem success | Supernode Conference 2022
Allan Adler: Aligning Your Organization for Ecosystem Success | Supernode 2022
Allan Adler, Jill Rowley, Kevin Kriebel: ELG and the C-Suite | Supernode 2023
The 2023 State of the Partner Ecosystem Report
No Opportunities Lost: The Crossbeam Guide to Co-Selling With Tech Partners
How to Buy a Partner Ecosystem Platform
4 Easy Wins: The Crossbeam Guide to Account Mapping
Whale Watching: The Inside Story of the +$100M Microsoft and Facebook Alliance
Map Your Partner’s Org Chart & Boost Partner-Sourced Revenue by 40%
How to Find the Right Integration Partnerships
How This PM Used Nearbound GTM and Reveal to Revamp Reachdesk's Partner Program
Getting Partnership Reporting Right
Crossbeam Has Acquired Partnered: Co-selling Will Never Be the Same
Celebrating Excellence: Announcing the 'Boundies Awards Winners 2023
Co-Sell Orchestration: The New Imperative for Every Partner Team
Breaking Down Silos and Getting a Seat at the Table
Bridging the Gap Between Insights to Outcomes Requires Playbooks + Training
Box’s Partnership Journey: Nearbound, Allbound, Glory-bound
Best Practices in B2B SaaS Tech Partnership Monetization Models - Part 3
Best practices for co-selling with partners using nearbound
Be a Modern Partner Manager and Empower Your Sales Teams to Co-Sell
Nearbound Podcast #128 - Be a Beacon of Customer-Centricity
Nearbound Daily #144: Jill Rowley becomes nearbound.com Chief Evangelist
Diving Into the Co-Sell Orchestration Playbook
Howdy Partners #50: Nearbound Motions for Strategic Tech Partners
Friends With Benefits #13: Being Intentional in Work and Life
The 3 I’s of ELG in action
Partner Ecosystem Can Help You Close Millions in End-of-Quarter Opportunities
The Ultimate Partner Program Guide
The Nearbound Guide
The Nearbound Sales Blueprint
Drive Tech Partner Attribution through Productization
Nearbound Podcast #126: Having the Right Conversations with the Right People
Nearbound Marketing #29: 3 Ways to Market with Your Community Members
Howdy Partners #48: First 8 Months as a Channel Account Manager
Nearbound Daily #136: How to get intel from partners
Nearbound Podcast #125: How Partnerships Build Unshakable Brands
How to Talk to Your CEO About the Ecosystem
Nearbound Daily #133: The long way home
Nearbound Marketing #28: 4 Steps to Execute Survey Co-Marketing
Friends With Benefits #12: Leading with Empathy
EcoOps Framework–Understanding the Partner Operations Big Picture
Do You Know Your Public and Private Ecosystems?
Maureen Little: Building Influence to Drive Impact | Supernode 2023
Nearbound Marketing #27: Activating the Hidden Evangelists Within Your Company
Howdy Partners #47: How to Use Intel, Intro, and Influence to Grow Your Pipeline
Friends With Benefits #11: The Benefits of Community
Nearbound marketing: A trust-driven path in the Who Economy
Nearbound Daily #126: B2B SOS
Ecosystem-Led Sales: Deals and Revenue

Leveraging AI, automation, and ELG for better sales performance
by
Will Taylor
SHARE THIS

Learn how AI, automation, and Ecosystem-Led Growth (ELG) boost sales performance with partner data, smarter signals, and actionable RevOps workflows.

by
Will Taylor
SHARE THIS

In this article

Join the movement

Subscribe to ELG Insider to get the latest content delivered to your inbox weekly.

Sellers who embed AI and automation into their workflows — not just as shiny tools but as part of their daily rhythm — are pulling ahead.

The 2024 Salesforce State of Sales report highlights this shift: four in five sales teams are experimenting with or have fully implemented AI. The payoff is real. The top improvements include:

  • Sales data quality and accuracy: Syncing customer interaction data across systems to keep records correct and up to date.
  • Understanding of customer needs: Surfacing signals that reveal intent and fit.
  • Personalization at scale: Generating emails grounded in contextual customer data.
  • More accurate forecasting: Sharpening pipeline predictions with AI-enhanced insights.
  • Stronger customer communications: Helping sellers tailor their outreach and messaging.

It’s no surprise then that 83% of sales teams using AI saw revenue growth in the past year — compared to just 66% of teams without AI.

But here’s the catch: AI is only as good as the data you feed it. Adoption is surging, yet too many organizations struggle because their AI is starved of trustworthy, actionable context.

To learn more about how to leverage AI, automation, and Ecosystem-Led Growth (ELG) for better sales performance, Will Taylor, CPO of AudienceLed, shared with us common pitfalls when introducing partner-data workflows, actionable recommendations for sellers and their teams, and how to solve performance issues. 

Let’s begin.

First things first… 

As Bob Moore, CEO and Co-Founder of Crossbeam, puts it in his latest article:

“AI is still reshaping the way countless types of information work are done around the globe. How can it be so good at everything else and so bad at helping B2B companies sell? The limiter isn’t model quality, it’s context.”

In other words: your AI workflows won’t work without the right data. 

From the 2024 Salesforce State of Sales report

First-party sources like CRM records and product usage are a starting point, but they only tell your side of the story. Third-party data is publicly available information like job titles and firmographics, but it’s not unique.

The real force multiplier is second-party partner data (a.k.a. Ecosystem Intelligence), insights shared from trusted partners about the very same accounts you’re targeting. 

For a more detailed description of what each quadrant means, click here

Based on Moore’s 2×2 Matrix of AI Data, here’s what that means for your sales process:

  • Smarter prioritization. Second-party data shows you which accounts already buy from your key integration partners, where adjacent deals are moving, or where a partner footprint aligns with your ICP. AI can re-rank sequences, territories, and call plans around real opportunity, not just guesswork.
  • Contextual outreach. When AI sees a funding event + partner overlap + product usage fit, it can generate talk tracks that reference the ecosystem context directly. Sellers stop spelunking in CRMs and start running activities with confidence.
  • Explainable signals. Alerts should always come with evidence (“which partner event fired”), reasoning (“deals with this partner close faster”), and a clear next action. That’s how you turn Slack noise into revenue moves.

“Sellers don’t think in the way of partners; they think in activities,” said Will. “The data has to meet them where they already work.”

Only with this context does AI stop being an email-drafting assistant and start acting like a real GTM engine.

Common pitfalls when introducing partner-data workflows

Even with the right data foundation, many teams stumble when trying to operationalize partner context with AI and automation. As Will noted, the problem isn’t whether you have the data — it’s how you introduce it into your sellers’ day-to-day.

“If there’s any new motion that sales teams need to adopt that’s not close to the norm, they won’t adopt it easily,” Will said. “The key is to integrate partner data into the existing workflows that sales already uses.”

Without careful alignment, what should feel like an accelerator often turns into friction.

Here are 6 common pitfalls Will warns against:

  • Breaking the sales rhythm: The #1 stumble is asking sellers to adopt a new motion or data process that lives outside their normal cadence. If Ecosystem Intelligence sits in a parallel workflow (or separate tool), adoption plummets.
  • Treating Ecosystem Intelligence as “static CRM facts”: Dropping a field like “Overlapping Partner: HubSpot” into the CRM doesn’t change behavior. Sellers don’t want to hunt for context; they want actions ready to run.
  • Surfacing signals too late: If partner context arrives after an opportunity is already in motion, it feels like a speed bump. To help, not hinder, signals must appear before outreach and at key deal moments.
  • Misaligned incentives: KPIs and comp plans often ignore partner motions. If using Ecosystem Intelligence isn’t tied to how sellers win, they’ll default to the old way.
  • Notification theater: Slack pings and generic alerts create awareness, but rarely action. Without clear owners, SLAs, and next steps, alerts die in the channel.
  • Skipping RevOps: RevOps is the glue between marketing, data, and sales execution. Without them, partner context never makes it into targeting lists, sequences, or dashboards that your sellers actually use.

How AI and automation solve performance issues

Here’s the irony: to make AI and automation effective, you need the right data. But to surface and contextualize the right data, you also need AI and automation.

“Automation is great for awareness, it moves data from point A to point B,” Will said. “But AI gives you the context. It connects the dots and helps the seller know why it matters.”

Here’s how it works: your ecosystem (second-party data), your CRM (first-party data), and public databases (third-party data) give you the insights you need to know a bit more about your prospect. Automation ensures signals are visible across the stack, while AI transforms those signals into context, reasoning, and ready-to-send actions.

Together, they shift Ecosystem Intelligence from “extra work” to “invisible advantage.” Will gave us two fundamental truths:

1) Automation builds awareness: Tools like Zapier or n8n move data from A to B and push reminders into where sellers already work (Slack, CRM, sequencers). Great for visibility and coverage.

2) AI adds context. AI reasons over multiple signals (for example: funding + partner overlap + ICP fit), summarizes why it matters, and drafts the next move, so sellers spend time acting, not deciphering.

From static to active data.

  • Static: a lone CRM field that requires manual interpretation.
  • Active: partner context embedded into list building, lead assignment, sequence selection, and message generation, all prepped by RevOps and AI.

Will explained it best:

“If the data just sits in a CRM field, that’s static. Active use is when it’s already being used in workflows: in the lists, in the sequencer, or in the message generation. That’s what sellers care about because that’s what helps them hit their metrics.”

Right info, right time. AI/automation should meet sellers where they work (sequencer, CRM task queue, Slack) and when they need it (pre-prospecting, stage changes, stall points), with explainable reasoning so managers and reps trust the move.

Imagine this: your target account just announced a fresh round of Series B funding. That’s the general signal: there’s budget and appetite for new tools. At the same time, your Crossbeam data shows they’re already a customer of your most trusted integration partner: a second-party signal that proves fit and lowers risk.

Instead of a rep digging through the CRM to stitch those dots together, AI does it instantly. It pulls the funding event and the partner overlap, weaves that intel into a crisp first-touch message, and drops it directly into the sales sequencer as a merge field.

“That’s what sellers need,” Will explained. “They shouldn’t be spending time thinking about how to make sense of the data. AI can put that context together for them so they just focus on the activity, the send, the connect, the conversation.”

Will urges everyone to keep this North Star:

“The seller stays in rhythm. The prospect gets a relevant, partner-backed opener. And what could have been hours of manual research turns into a single high-impact email delivered at the perfect moment.”

Here are the tools Will recommends:

  • Common Room for right-time & real-time contextualization and message generation.
  • Clay for filling in data gaps, as well as complex use-cases.
  • n8n for savvy workflow building and orchestration.
  • Lavender Aura (where applicable) to turn context into higher-quality emails.
  • Use CRM as middleware alongside Crossbeam so downstream tools inherit partner context without point-to-point integrations.

Actionable recommendations for sellers and their teams

So, how do you put this into practice without overwhelming sellers or RevOps? 

Will’s advice: “Start small, stay aligned with the buyer journey, and let RevOps handle the heavy lifting.”

He provided the below practical checklist to get early wins, but also scale:

1) Map the buyer journey and your internal workflows. Start by documenting awareness, followed by educating your prospects about your product, closing the deal (sales), and then customer success (post-sale). Note the tools, data, and KPIs used at each stage. 

“Understand what steps buyers take, from marketing through the point of sale, and what workflows your team uses at each stage,” Will said. This reveals where partner signals and AI can have the biggest lift.

2) Promote partner context from “field” to “flow.” Work with RevOps to:

  • Add partner overlap and change signals into targeting lists and lead routing.
  • Feed those lists directly into sequencers so sellers start with partner-aware queues.

“Sales doesn’t care where the lead comes from; they just want confidence it’s worth calling,” Will explained.

3) Make signals explainable and actionable. Every alert should include:

  • Evidence: What partner event fired and when
  • Reasoning: Expected lift (for example “deals w/ this partner close faster”)
  • Next best action: Intro, add partner to opp team, launch co-sell step (including pre-written messaging!)
  • Owner + SLA: So nothing dies in Slack

4) Align incentives to behavior. Tie partner-assisted steps to KPIs/compensation (for example, credit for ecosystem-qualified leads, partner-assisted stage progression, or win-rate lift). Reflect these in dashboards your reps and managers actually check.

Crossbeam’s Performance dashboard 

5) Operationalize with RevOps first. Let RevOps own list-building, routing, and sequence selection rules that embed partner data. Sellers shouldn’t be asked to “figure out” context in the CRM.

6) Start with one or two high-impact patterns. Pilot concrete plays like:

  • Pipeline gen: partner-customer overlap + funding = prioritized outreach with partner mention.
  • Deal acceleration: stalled opp + partner just closed adjacent deal = re-score opportunity, propose multi-threading path, and generate talk track.

Top tip: Measure conversion, speed to first meeting, and win-rate deltas, then scale.

7) Choose a minimal, interoperable stack. Start with Crossbeam (second-party signals), CRM fields/objects (middleware), and sequencer/copilot (delivery). Add Common Room/Clay for enrichment/drafting. Keep it simple and auditable, maintaining execution in tools already used by sales.

8) Close the loop. Attribute ecosystem-qualified leads (EQLs) and partner-assisted stages through to Closed Won. Report lift on cycle time and win rate versus baseline, and prune noisy signals.

A last word

AI and automation aren’t just “nice to have” add-ons. 

When Ecosystem Intelligence workflows are built into sellers’ existing rhythm, and when the tools surface the right signals at the right time, the impact can be transformational: faster cycles, higher win rates, better pipeline, lower churn. 

Sellers who still treat Ecosystem Intelligence as an optional field in CRM, or who force their teams to do manual stitching of signals, are leaving performance on the table.

As Will summed up, “Sellers don’t need more tools, they need smarter context. When AI gives them that at the right time, everything moves faster.”

If you're a sales or RevOps leader, make the case for expanding the automation + AI parts of your stack. 

Ready to learn how to better leverage AI, automation, and Ecosystem Intelligence? 

Book an ELG Strategy call and experience how Crossbeam’s ecosystem-powered AI delivers smarter signals, faster cycles, and bigger wins.

Don’t just take our word for it, Will has helped over 10 companies (and counting) make sense of partner data within their sales and marketing. Connect with him here.

You’ll also be interested in these

How to Win in 2026 with Multi-Partner Sales
Ecosystem Intelligence: The Shortcut to Sales That Actually Close
From Overlap to Revenue: Turning Solution + Tech Partnerships into Sales Wins