Video
|
35
 minutes
Nearbound Sales #12: Why Sellers Don't Use Partner Leads
Video
|
 minutes
Nearbound Podcast #164: Why Your SaaS Partnerships Aren't Delivering Scott Wueschinski's Solution
Video
|
 minutes
Nearbound Podcast #98: Thinking Like a CEO as a Partnerships Professional with Kim Walsh
Video
|
 minutes
Nearbound Podcast #163: How to Go All In on an Ecosystem, with Daniel Zarick
Video
|
 minutes
Nearbound Podcast #157: The GTM Revolution and How AI Will Influence Sales
Video
|
 minutes
Nearbound Podcast #156: The End of Silos and the Need for Collaboration with Lizzie Chapman
Video
|
 minutes
Nearbound Podcast #152: Shifting From the How Economy to the Who Economy with Chris Walker
Video
|
 minutes
Nearbound Podcast #149: Evolving Partnerships in Business with Pete Rawlinson
Video
|
 minutes
Nearbound Podcast #147: Unlock the Power of Strategic Partnerships by TK Kader
Video
|
 minutes
Nearbound Podcast #139: Unleashing the Power of Nearbound Strategies to Close More Deals
Video
|
 minutes
Nearbound Podcast #138: Insights in Building Customer Success and Partnerships for 2024
Video
|
 minutes
NearBound Podcast #137: Marketing Against the Grain LIVE at the Nearbound Summit
Video
|
 minutes
Nearbound Podcast #136: SPECIAL RELEASE LIVE from the Nearbound Summit House
Video
|
 minutes
Nearbound Podcast #135: The Power of Owned Media with Anthony Kennada
Video
|
129
 minutes
Nearbound Podcast #127: The Nearbound Moment is Here
Video
|
46
 minutes
Nearbound Podcast #118: Insights From Over 100+ Conversations With Partner Pros
Video
|
44
 minutes
Nearbound Podcast #116: The Future of AI, Agents, and Agencies
Video
|
53
 minutes
Nearbound Podcast #110: HubSpot is Coming for Salesforce —The 4 Epochs of the Ecosystem
Video
|
33
 minutes
Nearbound Podcast #109: 6 Do's & Don'ts of Partner Marketing You Can't Ignore
Video
|
45
 minutes
Nearbound Podcast #107: How Nearbound is Different From Channel
Video
|
51
 minutes
Nearbound Podcast #081: Exploring the 16 Types of Network Effects with James Currier of NFX.com
Video
|
52
 minutes
Nearbound Podcast #065: WTF Is An Ecosystem?! - Elevating Partnerships Out of the Shadows
Video
|
50
 minutes
Nearbound Podcast #064: "The Challenger Sale" Author Takes the Partner Pill
Video
|
33
 minutes
Nearbound Marketing #6: Not Your Grandma’s Co-Marketing Campaign
Video
|
 minutes
Nearbound Marketing #7: Understanding the Will of Your User s Existing Communities
Video
|
33
 minutes
Nearbound Marketing #22: Trust + Scale — Where Partnerships & Marketing Come Together
Video
|
30
 minutes
Nearbound Marketing #26: How to Identify the Nearbound Evangelists in Your Ecosystem
Video
|
 minutes
Nearbound Marketing #13: The 3 Marketer Personas Of the Future
Video
|
29
 minutes
Maureen Little: Scaling ain’t easy | Supernode 2022
Video
|
26
 minutes
Mike Stocker: 10 Partner Metrics Every Executive Ought To Know | Supernode 2023
Video
|
29
 minutes
Maureen Little: Scaling ain’t easy | Supernode Conference 2022
Video
|
29
 minutes
MythBusters: The GTM Edition
Video
|
23
 minutes
Lizzie Chapman: How to Make Your Leadership Care About Ecosystem-Led Growth | Supernode 2023
Video
|
18
 minutes
Lisa Hopkins: Navigating The Messy Teenage Years Of Your Partner Program | Supernode 2022
Video
|
20
 minutes
Jared Fuller: Trust is the New Data | Supernode 2022
Video
|
 minutes
Marco De Paulis: Why You Should Always Give Value Before You Get It — Supernode 2023
Video
|
 minutes
Increase Partner Engagement & Grow Partner Pipeline by 26%
Video
|
 minutes
Howdy Partners #74: Reactive Partner Marketers Are Salary Wasted with Jessica Fewless
Video
|
 minutes
Howdy Partners #73: The Modern Interconnectedness of Brand, Employee Advocacy, and Ecosystems
Video
|
 minutes
Howdy Partners #72: Psychology of team wide buy in: The Answer to Partner Program Success
Video
|
 minutes
Howdy Partners #71: Natasha Walstra on Increasing Luck Surface Area in Business
Video
|
 minutes
Howdy Partners #69: Why Fractional Partner Management with Pat Ferdig
Video
|
22
 minutes
Howdy Partners #60: Navigating Partnerships in 2023 and Planning for 2024 - Will Taylor, Ben Wright
Video
|
22
 minutes
Howdy Partners #57: Managing Chaos in Partnership Programs - Negar Nikaeein
Video
|
 minutes
Howdy Partners #54: Using AI to Drive Partnerships with Jessica Baker
Video
|
 minutes
Howdy Partners #53: Getting Executive Buy in On Partnerships with Josh Baumrind
Video
|
 minutes
Howdy Partners #49: Placing Customers Front and Center Through a Partnerships Lens
Video
|
32
 minutes
Howdy Partners #46: Driving Revenue Together
Video
|
 minutes
Howdy Partners #38: The 80 20 Rule Balancing Revenue & Influence
Video
|
 minutes
Howdy Partners #36: Nearbound
Video
|
21
 minutes
Howdy Partners #33: How to Get the Most Out of Partnership Communities
Video
|
 minutes
Howdy Partners #35: Productive Partner Recruitment
Video
|
 minutes
Howdy Partners #31: The Salesforce Ecosystem: Tech vs. Service Partner Perspectives
Video
|
 minutes
Howdy Partners #29: Developing Examples to Foster Internal Buy In
Video
|
 minutes
Howdy Partners #26: What to Look for in Partnership Talent
Video
|
28
 minutes
How to Organize, Prioritize, and Expand Partnerships
Video
|
49
 minutes
How to Leverage Account Mapping for Revenue Growth
Video
|
18
 minutes
How to Ignite Co-Selling and Collaboration with Reps in Salesforce | Connector Summit 2022
Video
|
 minutes
From Recruitment to Revenue: How to Turn Your Ideal Partner Into ARR
Video
|
 minutes
Friends with Benefits #36: Operationalizing Partner Programs with Aaron Howerton
Video
|
61
 minutes
Friends with Benefits #26 - The Power of Small, Consistent Steps - Justin Zimmerman
Video
|
 minutes
Friends with Benefits #33: Valentine’s Day Special
Video
|
 minutes
Friends with Benefits #24: Building Tasty Partnerships with Grayson Hogard
Video
|
 minutes
Friends with Benefits #22: Building Revenue Generating Partnerships with Cody Sunkel
Video
|
29
 minutes
Foundations of Partner Ecosystems for Efficient Growth
Video
|
 minutes
Friends With Benefits #05: Be Like Messi
Video
|
45
 minutes
ELG Blend Webinar Series Vol. 2: Typeform CRO Kristen Habacht
Video
|
45
 minutes
ELG Blend Webinar Series Vol. 1: Gainsight CEO Nick Mehta
Video
|
27
 minutes
Delete: Nearbound Marketing #33: The Nearbound ABM Play You Can Run Today - Blake Wiliams
Video
|
64
 minutes
Delete: Friends with Benefits #19: ABM for Partner Pros - Blake Williams
Video
|
 minutes
Ecosystem Activation Made Easy
Video
|
19
 minutes
Cristina Flaschen: Proving the ROI of partnerships | Supernode 2022
Video
|
22
 minutes
Bob Moore: Partnerships Are the Most Effective Business Growth Lever | Supernode 2022
Video
|
20
 minutes
Bob Moore: Using Communities to Supercharge Ecosystem-Led Growth | Pavilion ELEVATE 2023
Video
|
24
 minutes
Andy Cochran: How to Clone Yourself | Supernode 2023
Video
|
19
 minutes
Alexis Petrichos & Nicolas Vandenberghe: How Chili Piper Became an Ecosystem-Led Company | Supernode 2023
Video
|
 minutes
Agencies and Tech Partnerships with Alex Glenn

Subscribe for Access

ELG AI

How to Co-Sell with AI and Automation
by
Aaron Howerton
SHARE THIS

Discover how to co-sell with AI and automation. From CRM foundations to AI-driven triage, learn how aligned teams, clean data, and Partner Ops leadership unlock faster, higher-value partner revenue.

by
Aaron Howerton
SHARE THIS

In this article

Join the movement

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

How to Co-Sell with AI and Automation

Most teams talk about co-selling as a growth lever while treating it like a side project. 

The reality is that ecosystem GTM stalls when programs lack clear ownership and integration into the central GTM rhythms of the company. Partners start to lose faith, visibility weakens, and attribution breaks down. 

Everyone working in partnerships already knows the inherent value of a well-defined and supported ecosystem framework: partner-attached business closes more often, at a faster rate, and with higher overall value. Research is now starting to support this as well. Partner-sourced leads are 53% more likely to close at a 46% faster rate. Companies with mature ecosystem motions see win rates up to 50% higher than those selling solo. Yet, most teams can’t capture that value because of dirty CRM data, inconsistent attribution, and fragmented partner tech.

According to a Sherpa’s Partner Marketing Ecosystem Benchmark Report, 75% of partner teams lacked marketing automation, and nearly half couldn’t manage digitally qualified leads. 

The result is predictable - strong partnerships held back by weak operations.

That’s where AI and automation come in: not to replace the human relationships at the heart of co-selling, but to reduce friction, surface insights faster, and automate what slows teams down.

To help you with that, Aaron Howerton, RevOps Architect at Go Nimbly, unpacks what it really takes to operationalize co-selling and where AI and automation can actually help (today, not in sci-fi land).

Let’s begin.

The first obstacle isn’t tech, it’s buy-in

Partnerships cut across every department in the organization. This includes Sales, CS, PS, Finance, Product, Marketing, and Legal. That means budgets, KPIs, and attribution models get involved, and people can feel threatened. And according to Aaron, the biggest challenge you typically face when implementing a co-selling motion with AI is buy-in.

“The hard thing with partner operations is getting upstream into RevOps is difficult,” said Aaron. “Because RevOps is where all the big decisions live, and that's really where you have to do a lot of coordination to be able to be successful.”

Without clear executive sponsorship and a plan to show value for each stakeholder, you end up in a loop:

Here are three tips from Aaron to break the loop:

  • Start with stakeholders, not systems: Map who is affected (AEs, BDRs, CS, PS, Marketing, Legal, Product). Based on your co-selling strategy, document what they gain and what they fear losing (for example: commission dilution, attribution credit, capacity).
  • Make “partner” a GTM question, not a partner-team question: At the end of every project or deal review, ask: “What about partners?”
  • Instrument for proof. Even lightweight tracking beats none. You’ll refine the model, but you need a starting measurement to fund the next step.

“Anybody in partnerships will tell you, partners help you sell faster, they help you sell upstream, and they close larger deals,” said Aaron. “All those things can be true when you have an established process. Are you going to build resale? Get yourself some buy-in.”

Now that you have the buy-in, it’s time to…

Build the foundation in your CRM (it’s not “just a field”)

“There isn’t a CRM that holds core partner tech out of the box. You have to build it,” said Aaron. The good news is that there are a lot of integrated solutions that can help with that. 

Aaron’s approach is system-agnostic and focused on getting more from what you already have: your CRM, chat, call intelligence, and enrichment tools. Start by cleaning your CRM data; it’s tedious but essential. Once that foundation is solid, other tools can supplement more efficiently because they are driven by program-specific needs or be specifically targeted to drive the Direct and Ecosystem GTM rhythms. A new standard in that field is ensuring you connect an Ecosystem-Led Growth (ELG) platform to your CRM. 

Add account mapping and a secure data-sharing layer, but only buy net-new tools when your current stack can’t deliver the outcomes you need.

Crossbeam’s account mapping matrix and open opportunities report

A PRM can help later, but only after your data is reliable. Most GTM teams need partner workflows long before they have a PRM budget.

One top tip from Aaron is to treat partnership programs like a product with clear offerings: referral, resale, tech, and services, and model them accordingly. That’s the essence of a minimum viable partner architecture: connected systems and a product mindset.

To create a minimum viable partner architecture in your CRM, you need:

  • Program object(s): Program type, terms, incentives, eligibility, commissioning rules.
  • Partner company and contacts: Roles, capabilities, certifications, territories.
  • Associations to core GTM data: Link partners to accounts, opportunities, and activities (with many-to-many where needed).
  • Deal registration entity: Source partner, customer identifiers, status, decisioning notes, conflicts, SLAs.
  • Attribution and payouts: How partners influence/assist maps to revenue credit and comp.

Now, you may be asking yourself, Why can’t I start with just a checkbox on Opportunity inside my CRM? Because you’ll quickly need to answer: Which program? Which terms? Which conflicts? Which stage gates? 

And sooner rather than later, you’ll realize that a single field won’t scale.

Work like product: backlog first, tooling second

Aaron operates with Scrum/Agile habits: define outcomes, write requirements, maintain a backlog, and prioritize. That mindset keeps you from buying tools to solve undefined problems.

Here are some backlog categories to start with:

  1. Visibility: Can AEs and partner managers see partner-relevant signals where they work (CRM/Slack)?
  2. Process: Have we defined how deal reg, conflict checks, and approvals flow?
  3. Data: What do we need to capture for measurement and payouts?
  4. Enablement: Do field teams know when and how to bring a partner in?

Where AI helps today (and where it doesn’t, yet)

Think of AI as a well-coached assistant. It can be useful and fast, but without trusted data you run a high risk with regard to outputs, forcing ongoing review before any final decisions are made and information is shared. 

Table-stakes AI: your internal Partner Agent

“Companies need to figure out where AI can make the biggest difference,” said Aaron. “AI right now is just not as advanced as it really needs to be to solve complex co-sell problems. I think the best advice I've heard is to think about AI like an assistant.”

There are so many things AI can help you with; however, to optimize your co-selling motion, you might need to take some time to train your private agent on:

  • Program guides and terms
  • Active partner lists and capabilities
  • Compensation rules and approval SLAs
  • CRM schema and definitions
  • “Who owns what” across your tech stack

All those training sessions can be helpful with the following co-selling questions

  • Who should I pull in on this deal?
  • What are the program rules for service partners in EMEA?
  • Do we already have a tool that does X?

Aaron’s take: more AI interaction will live in Slack Connect (or your chat layer). Imagine a shared partner channel where:

  • The partner asks, “What’s my program discount tier?” Agent answers from your program docs.
  • A new deal reg triggers an agent post with the AI Summary.
  • Mutual account questions are validated against CRM and program rules.
Slack and Crossbeam’s integration

High-impact use case: AI-assisted deal-registration triage

AI doesn’t approve deals; it prepares humans to approve faster. When a partner submits a registration, trigger an AI summary that:

  • Validates required fields and basic compliance (restricted countries)
  • Surfaces potential customer matches in your CRM (dedupe hints)
  • Flags conflicts (existing opps, other partner regs, open contracts)
  • Recommends next steps (request more info, route to AE, schedule partner sync)

This alone can save 40–60 minutes of manual research per registration and it’s a safer, contained task for AI.

“I don't have a high trust factor in AI's results at this point. I use it every day, to get information and ask questions and help summarize things, but that's a starting point for deeper research and deeper information,” said Aaron. “So if you think about that in terms of workflows, I don't know that I would want to put AI in charge of deeply critical resale workflows for notifications and similar stuff, but summarizing deal registration can be a great start for AI.”

This means that even though you’re leveraging AI and automation to reduce your task amount, it’s important to always keep a human in the loop, just to make sure the AI is working properly.

Treat AI output as suggestions, not verdicts. Here’s a sample automated flow (Salesforce-style, but system-agnostic) shared by Aaron:

Here’s a bit more on each phase: 

  1. Partner deal intake: The process begins when a partner submits a deal registration through a designated form, partner portal, or Slack Connect channel. Upon submission, a new Deal Registration record is automatically created, capturing all necessary standard identifiers and consent fields to ensure data integrity and compliance from the start.
  2. Auto-enrich and summarize (AI): Once the record is created, an asynchronous AI-driven job is triggered to enrich and validate the submission. The system checks for compliance completeness, searches the CRM for matching accounts and opportunities, and detects any conflicts or partner overlaps. It then generates an AI Summary, providing a concise overview of the findings along with confidence notes for the reviewer.
  3. Routing and SLA: After enrichment, the record is routed to the appropriate owner based on predefined rules such as territory, segment, or product line. At the same time, an SLA timer begins to track response time, and both the owner and the partner are notified through their connected Slack or Teams channels to ensure prompt follow-up.
  4. Review and decision (Human + Guardrails): The assigned owner reviews the AI Summary to confirm the system’s matches and identify any additional context or missing details. If more information is required, the owner can request it directly from the partner. Once complete, the owner either approves, denies, or escalates the deal registration, selecting from standardized decision reasons to maintain consistency and transparency.
  5. Conversion and association: When a deal registration is approved, the system automatically creates or associates the relevant Account and Opportunity records in the CRM. The partner and program are linked, and the attribution source is stamped, ensuring that all downstream reporting and credit are properly connected to the originating partner and deal.
  6. Notifications and collaboration: Upon decision, an automated message is posted in Slack Connect to update the partner on the outcome. This notification includes the decision details, next steps, and information on the internal owner or team member responsible for the deal, enabling seamless collaboration and clarity between both parties.
  7. Attribution and reporting: Finally, the system automatically tags the influenced pipeline and revenue data, feeding it into dashboards that measure key performance metrics. These include deal cycle times, approval rates, conflicts avoided, and overall partner contribution, providing clear visibility into program efficiency and impact.

“When you get into actual co-selling and working with partners, I think there are so many nuances there that really become challenging. And where I think AI will be in the future is, and Salesforce is moving in this direction,” said Aaron. “I’m tool agnostic, but right now, at Go Nimbly, we’re using Gong, Salesforce, Clay, HubSpot, and Crossbeam. However, I think the tools you use are typically less important than the outcomes you're trying to achieve.”

TL;DR

Aaron’s core advice for building a scalable co-selling motion is clear: start with alignment, not automation. 

Before investing in tools or integrations, make sure Sales, CS, PS, Marketing, and Finance all understand why it helps them win faster, how attribution and commissions work, and what’s changing (and what’s not) in their workflows when partners are invited.

If that buy-in isn’t real, pause and fix it. The best tech stack won’t save a motion the field doesn’t believe in.

Next, establish Partner Ops ownership: someone accountable for cross-functional alignment, data hygiene, and process governance. Standardize wherever possible: use the simplest repeatable patterns that cover most cases, and resist one-off exceptions. 

Measure what matters — cycle time, approval rate, partner-sourced pipeline, and conflict reduction — and use those insights to drive iteration, not just reporting.

Ultimately, co-selling scales through buy-in, data discipline, and Partner Ops leadership. Get those right first, and automation, efficiency, and results will follow naturally.

Curious how AI can make co-selling easier (and actually work)?

Book an ELG strategy call with our team to see how AI can streamline partner workflows, accelerate deals, and help your reps win bigger — together.

Want to hear more from Aaron? He creates content like this on LinkedIn, connect with him here.

FAQs

1. What is co-selling, and why does it matter for revenue growth?
Co-selling is when your sales team works together with partners — such as resellers, tech alliances, or service organizations — to pursue and close deals jointly. It matters because partner-sourced deals are statistically 53% more likely to close and close 46% faster than cold deals. When done well, co-selling also increases order value and reduces sales friction.

2. How can AI improve co-selling workflows?
AI helps by automating repetitive tasks—like deal registration validation, duplicate detection, or conflict checks—and surfacing insights that were previously buried. It acts as a sales assistant, preparing summaries, suggestions, and next steps so your team can move faster without losing rigor.

3. What are the biggest challenges when implementing AI in co-selling?
The toughest obstacle is buy-in. Co-selling involves multiple teams — Sales, CS, Marketing, Legal, Finance — each with different incentives. Without executive sponsorship, clear role definitions, and alignment on attribution, AI and automation can amplify the chaos rather than solve it.

4. What systems do you need to operationalize co-selling with AI?
You need a clean, well-structured CRM foundation. Then integrate an ELG (Ecosystem-Led Growth) platform like Crossbeam to power account mapping and partner data. On top of that, you build partner objects (programs, contacts, deal regs, attribution) before layering AI features that help with routing, enrichment, and decision support.

5. Does Crossbeam have any co-selling AI capabilities?

Yes — Crossbeam Copilot brings AI-powered “Ecosystem Intelligence” directly into the tools your reps already use, like Salesforce, HubSpot, and Gong. It surfaces recommended plays, partner insights, and enriched contacts right inside your workflow so sellers can act faster on partner data.

You’ll also be interested in these

Article
|
7
 minutes
Build a Modern AI Sales Tech Stack
Article
|
7
 minutes
AI Go-To-Market: An Ecosystem-Fueled Playbook
Article
|
7
 minutes
AI at Crossbeam