After I joined HubSpot, I stepped right into a uncommon place. I had already spent years as a buyer, studying how you can construct techniques creatively with the instruments I had entry to. Then, I joined the corporate with the duty of modernizing a long-standing buyer reference system that had served many groups properly however was now struggling to fulfill new expectations, complexity, and scale.
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Seeing each side modified how I approached this work. Advocacy is commonly misunderstood. It may be seen as easy or administrative as a result of a lot of its complexity lives behind the scenes. However when you look carefully, you notice it requires nuance, discernment, finesse, and emotional intelligence at each step.
My objective was to not exchange any of that. It was to create a system that supported it.
In case you have ever tried to construct belief at scale, you doubtless know firsthand how difficult the work will be. So, think about this a glance inside what we rebuilt at HubSpot, how we approached it, and how one can apply the identical rules without having an engineer or a separate platform. And talking as somebody who could be very a lot not an engineer — solely a marketer armed with a MacBook and grit — if I can construct this, you possibly can too.
If there was one theme all through this journey, it’s that AI shouldn’t be the risk to concern. Inconsistency is. AI didn’t take away the human elements of this work. It clarified the place they matter most.
The Quiet Work Behind Each Win
Each group depends on work that’s usually invisible however deeply impactful:
- The coordinator who sees a possible mismatch earlier than it turns into an issue.
- The specialist who remembers a buyer’s context that no system absolutely captures.
- The rep who provides one additional sentence that adjustments the standard of a match.
Advocacy groups stay right here day-after-day. They construct credibility, connection, and proof in methods which are straightforward to underestimate when the method is scattered or opaque. As each a former buyer and now a HubSpotter, I noticed simply how usually the work was undervalued, not deliberately however as a result of its complexity was hidden.
The objective of this rebuild was to make that work seen, revered, and supported so that folks had the construction they wanted to excel.
AI didn’t exchange folks. It supported them.
As we redesigned the reference course of, one factor turned very clear: the system had grown extra difficult over time. This wasn’t as a result of the work was flawed. The individuals who had been attempting to assist had been filling gaps manually.
The outdated course of required 18 disconnected steps. After the rebuild, it turned a related sequence of 5 clear phases.
Essentially the most shocking final result was how properly AI paired with human judgment. It didn’t eradicate the necessity for nuance or relationship context. It supported it.
- HubSpot Workflows dealt with predictable routing.
- Slack made communication speedy and visual.
- AI copilots helped validate match and lowered guide triage.
This gave folks extra time to deal with the elements solely people can do: storytelling, empathy, nuance, and partnership.
From Tales to Methods and Then to Scale
As the brand new system got here collectively, it turned clear that we weren’t simply constructing workflows — we had been additionally shaping how belief strikes via a corporation.
When groups acquire transparency into advocacy work, three issues reliably occur:
1. Reciprocity will increase.
When folks can see how their involvement issues, participation grows organically. This was one of many strongest drivers of momentum.
2. Fairness expands.
Advocates who had beforehand been missed surfaced naturally via goal standards.
3. Alignment strengthens.
Gross sales, Success, and Advertising and marketing started working from shared info moderately than assumptions.
This shift was much less about instruments and extra about construction. HubSpot merely gave us the surroundings to create shared readability.
Establishing a Single Supply of Reality for Belief
Step 1: Set up a data-driven baseline.
One of the crucial persistent challenges for advocacy groups is demonstrating the influence of their work. ROI, influenced income, readiness forecasting, and protection gaps are troublesome to measure when the underlying knowledge mannequin is fragmented or inconsistently maintained.
Earlier than we may optimize workflows or add automation, we wanted an information basis sturdy sufficient to help operational and reporting wants at scale.
To deal with this, we designed a Belief Readiness Mannequin that evaluates:
- Relationship maturity, together with tenure, previous collaboration, and sentiment patterns.
- Product adoption depth utilizing utilization knowledge, feature-level adoption, and cross-portal behaviors.
- Account well being via renewal indicators, help developments, and lifecycle stage.
- Development indicators reminiscent of growth alternatives, product curiosity, and account trajectory.
- Willingness to interact captured via outreach responses, previous advocacy participation, and buyer suggestions.
Designing this mannequin was the conceptual half. The actual work was operationalizing it inside HubSpot in a means that was each dependable and scalable. This required a full knowledge structure construct that included:
- Customized properties on the contact, firm, and deal stage, designed with strict naming conventions and knowledge sorts to keep away from future ambiguity.
- Validation guidelines that prevented incorrect or incomplete knowledge entry.
- Conditional scoring logic that robotically updates readiness based mostly on property adjustments, utilization knowledge, and lifecycle occasions.
- Workflow logic tied to every success stage, making certain that requests are superior in a constant and managed method.
- Segmentation guidelines that recalculate advocate readiness and match viability in real-time.
- Precedence guidelines for conflicting values, stale knowledge, and high-risk accounts.
- Dashboards constructed for various audiences, together with ROI reporting for management, velocity monitoring for operations, and readiness insights for frontline groups.
The influence of this work was speedy. For the primary time, we may quantify the affect of advocacy exercise throughout offers, measure actual protection gaps, monitor readiness developments, and supply clear attribution on income. These insights had been beforehand inconceivable as a result of the system was not architected to help this stage of precision.
As soon as the construction was in place, the CRM took over a lot of the continuing calculation. We merely needed to be deliberate in how we constructed the inspiration.
Step 2: Construct the operational bones.
As soon as the info layer was secure, we shifted our focus to operational design. This was the stage at which the backend structure advanced right into a purposeful and intuitive course of for the groups utilizing it.
Our objective was to create a system the place each motion had a transparent path, each final result was measurable, and each stakeholder may see the place a request stood without having to ask.
We started by designing a layered dashboard system with distinct views for executives, managers, and operators:
- Management noticed income influence, program protection, and strategic developments.
- Managers noticed crew participation, request quantity, and bottlenecks.
- Operators noticed day-to-day success levels, match charges, and buyer readiness.
Then, we created workflow chains that ruled consumption, routing, notifications, and completion:
- Consumption workflows standardized the questions reps answered at submission.
- Routing workflows matched requests to the proper success path.
- Notification workflows delivered well timed reminders and prevented stalls.
- Completion workflows up to date reporting properties and triggered follow-up steps.
We additionally established segmentation guidelines that filtered advocates based mostly on readiness, permissions, area, product expertise, and capability to make sure correct and scalable matching.
And we developed branded templates to create consistency in outreach, buyer communication, and stakeholder updates, reinforcing professionalism and decreasing cognitive load.
Because the system grew, governance turned important. We applied:
- Naming conventions for workflows, lists, views, and properties.
- Change administration guidelines to keep away from breaking dependencies.
- Auditing cycles to determine unused belongings or conflicting automation.
- Documentation for each operational asset and its goal.
This governance, although not glamorous, prevented drift and helped the system keep dependable at the same time as request quantity elevated and new crew members had been onboarded.
Over time, one thing significant occurred. With clearer construction, shared visibility, and a dependable course of, advocacy started to be seen not as coordination work however as strategic work that contributed to income affect, buyer belief, and partnership high quality. The system elevated the work just by revealing its intricacy and worth.
Step 3: Scale for velocity, consistency, and transparency.
Belief erodes shortly when processes are sluggish, inconsistent, or unclear — particularly in cross-functional work the place many individuals rely on the identical info to maneuver a deal ahead.
We knew that if we needed advocacy to scale sustainably, the expertise wanted to really feel predictable, honest, and clear for everybody concerned. That meant constructing a repeatable working rhythm that mapped cleanly to how actual work flows inside HubSpot.
To unravel this, we created a structured success sequence that each request strikes via:
Request → Route → Align → Activate → Body → Fulfill
Every stage has an outlined goal, proprietor, and final result.
Nothing floats. Nothing will get misplaced. Nothing depends on reminiscence or particular person desire.
AI performed the function of sample recognition and validation, decreasing the guide raise of scanning for product match, regional alignment, deal measurement concerns, and previous advocacy historical past. HubSpot helped orchestrate the motion between levels via workflows and tasking, which meant every step was seen, timestamped, and accountable. People stepped in the place nuance was wanted, particularly round relationship context, buyer readiness, and deciphering the subtleties that no automation can absolutely perceive.
As we constructed this technique, one thing sudden occurred. There was a noticeable improve in empathy towards the work itself. As soon as groups noticed the complexity concerned — the judgment calls, the cautious framing, the steadiness between buyer care and income influence — they developed a deeper appreciation for the folks behind the scenes who made the method work. The system made the intricacies seen, and with visibility got here extra kindness, endurance, and collaboration.
To strengthen this construction, we launched a two-person Reference Achievement Ops Pod:
- The Coordinator manages consumption, triage, training, and alignment throughout the Slack assist desk.
- The Specialist handles deeper analysis, buyer outreach, and the connective tissue of match-making.
- Their work is supported by SOPs, structured views, and several other GPT copilots that cut back guide pressure on duties like temporary creation and reporting.
Collectively, this created a system the place many of the operational load is automated or assisted, however the remaining human choices are those that construct belief. That final step is the place empathy, discernment, and relationship care come via. And now, with the intricacies made seen, that work is revered and valued in a means it usually was not earlier than.
Step 4: Redefine reciprocity and inside tradition.
Methods can allow advocacy, however tradition is what sustains it long run. A course of is not going to thrive if folks don’t see themselves in it or if the work feels transactional. We would have liked a cultural basis rooted in mutual recognition, shared possession, and real appreciation for the emotional intelligence required to do that work properly.
Advocacy isn’t just operational. It’s relational. It requires empathy for each clients and inside groups, and a sensitivity to timing, context, and capability. The extra we floor these intricacies, the extra groups perceive why considerate participation issues.
To strengthen this shift, we leaned on studying techniques rules and group psychology. As an alternative of implementing participation, we modeled the conduct we hoped to encourage. We made the work extra clear, shared context extra proactively, and highlighted small wins alongside massive ones. We confirmed how advocacy is related to buyer belief, deal velocity, and long-term relationships.
One of the crucial impactful rituals turned out to be extremely easy. Every quarter, we acknowledge the reps who’ve partnered most actively with this system. We rejoice their collaboration publicly, tag their managers, and acknowledge the ripple impact of their efforts. The popularity was not about scoreboard tradition. It was about appreciating the emotional labor, judgment, and relationship-building that usually goes unseen.
The end result was a cultural shift. Advocacy stopped feeling like a request-based movement and started feeling like a shared partnership. With larger visibility got here larger empathy. Groups began to grasp the intricacies concerned and responded with extra care, context, and collaboration. Reps participated earlier and extra thoughtfully. Managers took delight of their groups’ involvement. Leaders integrated advocacy insights into planning conversations.
Reciprocity turned the cultural norm as a result of the work lastly felt understood.
The Deeper Reality: Methods Constructed for Folks
Many techniques monitor exercise, however only a few are designed to raise the people doing the work. Rebuilding the reference course of gave us the prospect to construct one thing extra considerate. A construction that:
- Respects time.
- Honors experience.
- Reduces friction.
- Surfaces contributions.
Makes belief measurable. - Helps work that has lengthy been underestimated.
HubSpot offered the instruments, the structure offered readability, and the folks offered coronary heart and which means.
A Word to the Builders
If there’s one factor this rebuild taught me, it’s that belief shouldn’t be created by probability. It’s created by techniques that respect the folks doing the work and make it attainable for them to function with readability, consistency, and care.
What we constructed at HubSpot is just one instance of what this will appear like. The main points will differ for each crew, however the underlying rules stay the identical:
- Set up an information basis you possibly can rely on.
- Create workflows that help human judgment, moderately than overriding it.
- Construct reporting fashions that make affect seen.
- Defend the folks doing the work with construction, not with extra effort.
- Strengthen tradition by exhibiting what beauty like, not by implementing it.
This case research is very designed for groups who’re constructing inside constraints. For the operators who stay inside CRMs and spreadsheets, attempting to create order from inherited chaos. For this system managers who might not have a devoted engineering associate or a price range for a dozen specialised instruments, however who do have entry to HubSpot and a transparent imaginative and prescient of what they need the shopper expertise to really feel like.
You don’t want a fancy tech stack to construct one thing significant. You want readability, considerate structure, and the willingness to resolve for the people on each side of the method. The remaining will be constructed, improved, and iterated one layer at a time.
Should you acknowledge your self on this work, know that you’re not alone. The influence you create might not all the time be seen, however it’s measurable, repeatable, and important. And with the proper system behind you, it turns into scalable too.
That’s the actual takeaway behind this rebuild.
