Old-school, in-person selling is having a renaissance in the AI era, and I’ve seen why up close. From leading product and go-to-market teams through hypergrowth, I keep returning to one lesson: enterprise buyers still reward the teams who show up, orchestrate change management, and own outcomes end-to-end. The tech has changed; the human dynamics haven’t.
Has the sales playbook changed in the AI era? The tools are faster and the surface area is bigger, but the core motion remains the same: “showing up” beats letting the marketplace decide. That’s why in-person enterprise rollouts still beat product-led motions, especially when the stakes include security, governance, and cross-functional adoption. You win by reducing organizational risk, not by assuming free trials will do the heavy lifting.
Great enterprise sellers collapse silos. They sell to engineers and executives in one motion, pairing deeply technical validation with crisp business narratives. In my org, that means every high-velocity pilot has a dual thread: hands-on, eval-driven proof for the builders and a value architecture for the budget owners. When those motions run in parallel, time-to-value plummets and procurement friction fades.
Selling to AI-native buyers who grew up on ChatGPT changes tempo, not fundamentals. The same seller, different tempo: 8 weeks vs. 8 business days. These buyers evaluate fast, expect clear ROI, and push for automation-first workflows. How AI-native buyers handle build vs. buy decisions comes down to build for differentiation and buy for acceleration. If you make procurement feel like product—frictionless, instrumented, and transparent—you’ll meet their bar.
Process matters, but humanity wins. Building a robust sales process that still leaves room for unscripted moments is where trust is formed. I’ll never forget the story of the rep who taught a champion’s son guitar over Zoom—an unscripted moment that cemented a partnership. The lesson: raise the floor without capping the ceiling. Equip every rep with repeatable plays, then celebrate the creative instincts that make champions out of customers.
In early GTM, why the three highest-leverage early sales hires aren’t sellers at all resonates with my experience. I prioritize a solutions engineer who can de-risk integration, a forward-deployed operator who can run the first rollout like a product manager, and a customer success lead who designs adoption paths from day zero. Together, they compress the value journey from proof to production.
Compensation design shapes your talent market. The case for outsized commission accelerators for star sellers — and the kind of person they attract is real: magnets for competitors who close complex, multi-threaded deals and thrive with ownership. But beware: why too much process narrows the kind of seller you attract. Over-script it and you filter out the very people who can navigate ambiguity with customers.
Under the hood, instrumenting the funnel from stage zero to close keeps the system honest. I track intent signals before pipeline, conversion by persona and use case, proof milestones, and time-to-value in production. The three pillars of GTM excellence for me are repeatable discovery, referenceable outcomes, and relentless enablement. And inside the leadership team, building peers who are 80% aligned, not 100% preserves healthy tension while keeping execution fast.
AI is expanding the definition of enablement—whether AI is changing what good enablement looks like isn’t a theoretical question anymore. I see world-class teams arming reps with retrieval-first knowledge bases, sandbox environments, and objection libraries that evolve weekly. Meanwhile, selling against direct and implied competitors at once is the norm: your battlecard must cover “do nothing,” internal tools, adjacent categories, and new AI entrants—while you still remember why in-person enterprise rollouts still beat product-led motions for durable adoption.
Planning horizons tighten in AI markets. How far out should a GTM leader be planning? I work a dual cadence: a rolling 6-week operating plan that’s ruthlessly tactical and a 2–3 quarter roadmap for coverage, enablement, and category storytelling. What a normal week looks like in hypergrowth blends customer time, pipeline triage, onboarding and enablement, deal engineering, and process tuning—always with one or two high-conviction bets that could bend the curve.
References: Ahead: https://www.ahead.com; Amazon: https://www.amazon.com; Anthropic: https://www.anthropic.com; Attio: https://www.attio.com; Augment Code: https://www.augmentcode.com/; Cognition: https://cognition.ai; Cursor: https://cursor.com; Dani McCabe: https://www.linkedin.com/in/danielle-mccabe/; Datadog: https://www.datadoghq.com; GitHub Copilot: https://github.com/features/copilot; HubSpot: https://www.hubspot.com; Jeremy Powers: https://www.linkedin.com/in/jeremypowers/; JPMorgan: https://www.jpmorgan.com; Matt McClernan: https://www.linkedin.com/in/mattmcclernan/; MongoDB: https://www.mongodb.com; Nicole Rettinger: https://www.linkedin.com/in/nicole-rettinger-23b20465/; Notion: https://www.notion.com; OpenAI: https://openai.com; Parag Agrawal: https://www.linkedin.com/in/paragagr/; Parallel: https://parallel.ai; Snowflake: https://www.snowflake.com; University of Chicago: https://www.uchicago.edu; Windsurf: https://windsurf.com
If you’re scaling an AI product today, pair a disciplined sales-led growth engine with the best of product-led growth: fast paths to proof, hands-on validation for builders, executive-level value mapping, and human moments that turn customers into advocates. That’s how you compress an eight-week cycle into five business days—and keep the expansion flywheel spinning.











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