Inspired by this post on Pendo – Best Practices.


Inspired by this post on Pendo – Best Practices.


Inspired by this post on Pendo – Perspectives.


I’ve learned the hard way that the toughest part of launching in-app agents and guided experiences isn’t the build—it’s proving, quickly and credibly, that they move the business. If I can’t quantify adoption, engagement, deflection, and time-to-value, stakeholder confidence erodes and iteration slows. That’s exactly why an Agent Analytics capability matters: it turns opaque interactions into measurable outcomes that product, customer success, and engineering can all act on.
When I evaluate a capability like Agent Analytics, I anchor on a few questions. Which segments adopt the agent, and where does engagement drop? What fraction of issues are successfully deflected versus escalated? Which prompts, product tours, and in-app guides drive conversion and retention—and which add friction? How does agent usage correlate with onboarding completion, core feature activation, and long-term retention analysis? If I can answer those with a unified analytics platform, I can prioritize confidently.
Increase revenue, cut costs, and reduce risk with Pendo’s Software Experience Management platform. Optimize the entire software experience to drive adoption and improve engagement.
In practice, I map an outcomes-first measurement plan: define a north-star (e.g., activated accounts), articulate contributing metrics (guide completion rate, agent task success, session depth), then run targeted A/B testing on copy, timing, and placements. With the right analytics, I can compare cohorts exposed to in-app guides and product tours against a control, validate impact, and double down on the patterns that consistently improve adoption and stickiness.
Cost and risk are just as important as growth. An effective Agent Analytics view helps me model support deflection, time-to-resolution, and escalation rates so I can quantify cost savings without sacrificing quality. On the risk side, I look for early-warning signals—low-confidence responses, repeated handoffs, or anomalous usage—so I can intervene before they turn into churn or brand concerns. The point isn’t vanity metrics; it’s operational clarity that enables responsible, scalable product-led growth.
This also changes team dynamics. Product trios get a shared source of truth for decisions, engineering gains sharper specs informed by real behavior, and customer-facing teams can see which experiences reliably unlock value for each segment. Instead of debating opinions, we iterate on evidence—tightening the loop between product roadmapping and sprint planning, UX writing, and go-to-market strategy.
My 90-day playbook looks like this: establish a baseline for adoption and engagement; instrument agent interactions end to end; ship two or three small, high-leverage experiments in onboarding and help experiences; and review results in weekly rituals. By day 90, I expect to see a clear line from agent engagement to activation and retention, along with a repeatable testing cadence that compounds learning.
I’ve seen the same pattern across products and markets: once teams illuminate the black box of in-app assistance with rigorous, actionable analytics, customer confidence rises, onboarding accelerates, and roadmaps get sharper. If you’re evaluating Pendo or already running it, put Agent Analytics at the center of your measurement strategy—and let your data, not assumptions, guide the next iteration.
Inspired by this post on Pendo – Perspectives.


I’m gearing up for INDUSTRY 2025: The Product Conference in Cleveland, Ohio, and I can already feel the energy that comes when the brightest product minds gather. As someone who lives at the intersection of product management leadership, execution discipline, and customer-centric innovation, this event is where I refine my craft and pressure-test my roadmap against the best.
Join Pendo at INDUSTRY in Cleveland, Ohio.
Reason 1: Elevate strategy from outputs to outcomes. I’m looking forward to sharpening how we align outcomes vs output OKRs with product roadmapping and sprint planning. INDUSTRY consistently surfaces practical frameworks to translate vision into measurable value—exactly what empowered product teams need to prioritize with confidence and communicate trade-offs to stakeholders.
Reason 2: Deepen discovery with data that actually drives decisions. I plan to compare notes on product discovery techniques that blend qual and quant—pairing interviews with a unified analytics platform, retention analysis, and a clear minimum detectable effect (MDE) to validate signal. The bar keeps rising on evidence-based decisions, and I’m eager to bring back new ways to reduce bias while accelerating learning.
Reason 3: Double down on product-led growth. From onboarding to activation, I’m focused on refining in-app guides and product tours that meet users at the moment of need. INDUSTRY is a great place to trade patterns for scalable, context-aware experiences that convert, retain, and expand without adding friction—fueling a durable product-led growth motion.
Reason 4: Build a responsible, practical AI Strategy. The conversations around gen ai for product prototyping, agentic AI, data governance, and privacy-by-design are evolving fast. I’m excited to learn how teams are balancing speed with AI risk management—turning experimentation into real features while protecting customers and preserving trust.
Reason 5: Level up leadership and influence. Product management leadership is as much about people as it is about prioritization. I’m excited to trade tactics on stakeholder management, strengthening product trios, and growing ICs through the IC to manager transition. These are the muscles that turn strategy into momentum.
Between keynotes, hallway conversations, and hands-on sessions, I plan to leave Cleveland with fresh approaches to discovery, clearer OKR alignment, and new ideas to operationalize PLG at scale. If you’re passionate about building products that customers love—and businesses rely on—let’s connect and compare notes on what’s working now.
I’ll share my takeaways after the conference, including actionable frameworks, templates, and experiments to run with your teams the very next sprint. If you see me in a session on analytics, onboarding, or AI, say hello—I’m always up for a quick debrief and a few what-would-it-take questions.
Inspired by this post on Pendo – Perspectives.


Implementing Agentforce isn’t a feature rollout—it’s a strategic shift. In my role building AI-driven products, I treat Agentforce as its own product with clear outcomes, rigorous governance, and disciplined iteration. The objective is to create durable operational leverage inside Salesforce without compromising trust, data integrity, or customer experience.
Learn the ways in which Pendo helps companies design and iterate on their agentic strategy for Salesforce.
I start with product discovery. That means selecting the right use cases, defining the target user, and aligning on measurable outcomes rather than outputs. In practice, I prioritize use cases across sales, service, and marketing using an impact–effort–risk lens, then set crisp success metrics—response time, deflection rate, case resolution, win rate lift, and user adoption. This keeps everyone focused on value creation, not just model novelty.
Next, I design the agentic system with guardrails. I specify agent roles, tools, and policies; define when to escalate to humans; and embed privacy-by-design and data governance from day one. I also build an evaluation harness with offline tests and live A/B testing, ensuring we have a minimum detectable effect that’s meaningful for the business. The goal is to measure outcomes reliably and course-correct quickly.
When building the first slice, I scope narrow and ship fast. For example, start with a constrained service workflow—classify the case, propose a response, and take a safe action—with clear affordances in Salesforce so users understand what the agent did and why. I instrument the experience end-to-end and use Pendo for in-app guides, surveys, and behavioral analytics to reduce onboarding friction and capture real-time feedback at scale.
Iteration is where value compounds. I run weekly reviews of conversations, error taxonomies, and edge cases; adjust prompts and tool access; and maintain a steady experiment cadence. We track outcomes vs output to avoid vanity metrics, and we document learnings to de-risk the next use case. This steady drumbeat builds credibility with stakeholders and confidence with frontline users.
Change management is non-negotiable. I align leaders early, set expectations on what the agent can and cannot do, and define SLAs for humans-in-the-loop. I use product tours to teach new behavior, highlight quick wins, and establish transparent feedback channels. This combination of enablement and accountability accelerates adoption and creates a culture that embraces agentic AI responsibly.
Finally, I scale thoughtfully. Once the first use case demonstrates value, I standardize patterns, unify analytics, and evolve governance as usage grows. I review risk regularly, align OKRs with the roadmap, and keep a tight feedback loop between product, ops, and go-to-market teams. Treating Agentforce as an evolving product—not a one-off project—maximizes impact while protecting the customer experience.
Inspired by this post on Pendo – Perspectives.


We set out to promote the Pendo Summer Release using the most authentic approach possible: we used Pendo to market Pendo. That decision anchored our strategy in product-led growth, letting us reach users in context, guide them through new capabilities, and measure impact in real time without adding friction or cost.
Increase revenue, cut costs, and reduce risk with Pendo’s Software Experience Management platform. Optimize the entire software experience to drive adoption and improve engagement.
Our objectives were clear: drive adoption of new features, accelerate onboarding for existing customers, and improve engagement across key workflows. We framed the work with outcomes vs output OKRs, clarified the value proposition for each persona, and aligned our product positioning to highlight points of parity and genuine differentiation.
Execution centered on in-app guides, product tours, and purposeful tooltip design. We segmented by role, lifecycle stage, and behavior to keep messages timely and relevant, then layered in A/B testing with a defined minimum detectable effect (MDE) so we could learn fast without overexposing users. Product trios partnered closely with design and forward-deployed engineers to iterate quickly on copy, UX writing, and guide placement.
On the measurement side, we instrumented clear goals and tracked conversions through the funnel, pairing event analytics with retention analysis to understand depth of usage, not just clicks. We captured qualitative signal through micro-surveys and in-context feedback, feeding insights back into product roadmapping and sprint planning to sharpen our next set of in-app experiments.
Governance mattered as much as growth. We applied privacy-by-design principles, ensured strong data governance, and kept stakeholder management tight so each guide had a clear owner, sunset plan, and success criteria. That discipline helped us sustain momentum without cluttering the experience.
The biggest lesson: when done thoughtfully, in-app education scales like a dedicated success team—at a fraction of the cost—while teaching you exactly where users find value. This Pendo-powered launch playbook now underpins our onboarding, cross-sell motions, and QBRs alike, giving us a repeatable way to promote releases, validate hypotheses, and deepen engagement with every iteration.
Inspired by this post on Pendo – Perspectives.

Traditional website chatbots promised instant answers but rarely delivered the depth, context, and actionability modern buyers expect. After seeing patterns of high drop-off and shallow engagement, I stepped back and reframed the problem: We did not need another scripted bot—we needed an AI Agent capable of understanding intent, personalizing responses, and taking meaningful actions in the flow of discovery.
That is why Pendo replaced the website chatbot with an AI Agent. From a product management lens, the decision hinged on three criteria: accelerate time-to-value for visitors, reduce operational overhead through automation, and improve the quality of demand captured at the top of the funnel. An agentic AI approach met all three.
Increase revenue, cut costs, and reduce risk with Pendo’s Software Experience Management platform. Optimize the entire software experience to drive adoption and improve engagement.
This statement crystallizes the business case. An AI Agent can translate product intent into measurable outcomes by connecting to knowledge sources, analytics, and workflows. Instead of handing off a prospect to a form or a static knowledge article, the agent can surface relevant guidance, qualify interest, book meetings, and even trigger product tours—closing the loop between marketing, product, and customer success.
We anchored the implementation in data governance and privacy-by-design. That meant carefully curating training corpora, instituting role-based access controls, applying guardrails for sensitive topics, and designing graceful human-in-the-loop fallbacks. The result was not just a smarter front door, but a safer one—critical for regulated buyers and enterprise stakeholders.
To validate impact, we ran disciplined A/B testing with a clearly defined minimum detectable effect across conversion, engagement depth, and time-to-response. We also monitored secondary signals such as escalation rate to human support, session quality, and downstream product adoption. Early signals showed more qualified conversations, fewer dead ends, and faster paths to value—exactly the outcomes a product-led growth motion requires.
The experience uplift did not stop at the website. By aligning the agent with in-app guides and product tours, we created continuity from pre-signup exploration to onboarding and activation. Visitors received consistent, contextual help before and after they became users, which strengthened our product positioning and reduced friction across the journey.
Operationally, the shift lowered the marginal cost of each high-quality interaction while improving reliability. Agent handoffs to sales or support became intentional rather than reactive, and insights from conversations fed directly into product discovery. That closed feedback loop informed roadmap decisions and sharpened our go-to-market strategy.
If you are considering a similar move, start with a clear AI Strategy tied to measurable outcomes, a robust governance model, and a pragmatic rollout plan. Focus the agent on high-intent moments first, surround it with analytics and experimentation, and let the data guide expansion. The goal is not to replace humans—it is to elevate them by letting the AI Agent handle the repetitive, high-volume work so your teams can focus on complex, high-value interactions.
Inspired by this post on Pendo – Perspectives.

Protecting customer data while driving product-led growth is the needle I move every day. When I evaluate analytics agents for enterprise software, I look for platforms that make it easy to learn from behavior without exposing sensitive information. That is the promise behind Pendo Agent Analytics: actionable insight with strong guardrails, so teams can move fast without breaking trust.
Increase revenue, cut costs, and reduce risk with Pendo’s Software Experience Management platform. Optimize the entire software experience to drive adoption and improve engagement.
In practical terms, “protecting your data” starts with privacy-by-design: data minimization, clear event taxonomies, and opinionated defaults that discourage collecting anything you don’t need. I require role-based access controls, transparent governance workflows, and a unified analytics platform that helps product, engineering, security, and legal speak the same language. Those foundations enable confident experimentation—A/B testing, onboarding optimizations, and in-app guides—without creating new risk.
My implementation playbook is straightforward. First, define a lightweight tracking schema aligned to outcomes (adoption, time-to-value, retention analysis), not vanity metrics. Second, keep payloads intentionally sparse and free of secrets—no tokens, no free-form text, no PII. Third, ship value quickly with curated product tours and tooltip design that guide users through high-intent moments. Finally, review events regularly with a cross-functional product trio to prune, consolidate, and govern.
Security and data governance are not just checkboxes; they are operating disciplines. I partner with IT leadership to verify access policies, audit usage patterns, and ensure consent and data retention practices meet internal standards. This creates the right tension between speed and safety, so teams can optimize onboarding and in-app experiences while reducing operational risk.
I also benchmark instrumentation approaches across tools—looking at Amplitude analytics, for example—to ensure our event taxonomy and governance model stays consistent across the stack. Consistency matters: it improves stakeholder management, accelerates product discovery, and keeps our outcomes vs output OKRs anchored to the same source of truth.
The result is a healthier product loop: cleaner data, clearer insights, and faster iterations that meaningfully improve engagement. With disciplined governance and thoughtful design, Pendo Agent Analytics can inform what to build next while respecting user privacy—giving teams the confidence to learn at speed, and customers the confidence to keep trusting us.
Inspired by this post on Pendo – Perspectives.
