I build products with a simple mantra: launch, learn, repeat. Shipping fast is necessary, but shipping smart is what compounds. To do that, I keep analytics close to the work—inside the builder—so every decision is tied to real user behavior, not assumptions.
Connect Amplitude MCP to Lovable to understand user behavior, spot frictions, and ship better updates without leaving your builder.
In practice, this integration lets me bring Amplitude analytics and behavioral analytics directly into the creative flow. I can explore funnels, cohorts, and drop‑offs the moment I’m crafting an experience, then translate those insights into concrete changes without context switching. The result is tighter feedback loops and more confident iteration.
My typical loop looks like this: identify a friction point from funnel analysis, design two or three variants in the builder, and run A/B testing to validate the improvement. I focus on user activation and retention analysis as leading signals, because sustained engagement is the clearest indicator that we’ve solved a real problem. When the data confirms it, we promote the winning experience and move to the next opportunity.
Keeping the work inside the builder also supports continuous discovery. I can pair quantitative insights with qualitative observations, refine journey mapping, and document learnings while the context is fresh. That makes prioritization and product discovery more reliable, and it turns each iteration into a teachable moment for the team.
Strategically, this builder‑first approach enables product-led growth. With fewer handoffs and a unified analytics platform, we compress time from insight to impact. It helps me defend roadmap decisions with evidence, communicate trade‑offs clearly, and keep the team focused on outcomes that matter to customers and the business.
If your goal is to iterate with speed and precision, bring analytics to where you build. Keep the loop tight, measure what moves the needle, and let the data guide your next best update.
Inspired by this post on Amplitude – Best Practices.
I’m often asked how to translate early-stage experience into outsized product impact at scale. In my own practice, I study real career arcs that crystallize the habits of high-leverage product managers—especially those operating at the intersection of analytics and AI strategy.
Consider this path: Lucas is a Product Manager at Amplitude. Previously, he was employee #1 at Command AI, acquired by Amplitude in October 2024. Lucas studied computer science at Princeton.
What stands out to me is the compounding effect of being an early builder. When you are employee #1, you live close to the user problem, own outcomes end-to-end, and develop a bias toward focused, continuous discovery. That foundation creates durable instincts around product strategy, sharp prioritization, and empowered product teams—skills that transfer directly to later-stage environments where clarity and speed become competitive advantages.
Acquisition integration is where those instincts meet enterprise rigor. Folding Command AI into a unified analytics platform like Amplitude requires disciplined product roadmapping and sprint planning, precise stakeholder management, and a strong POV on where AI augments core “Amplitude analytics” versus where it creates net-new value. The north star remains unchanged: deliver measurable customer outcomes that strengthen product-led growth and reduce time-to-value.
On the AI front, I’ve seen the most successful PMs treat gen ai and LLMs for product managers as means, not ends. They anchor use cases to concrete analytics workflows—accelerating insight generation, surfacing anomaly detection, improving retention analysis, and driving user activation—while validating each step through continuous discovery and rigorous experiment design. This balance of ambition and evidence protects teams from shiny-object drift and keeps investment tethered to business impact.
Execution-wise, the playbook is straightforward but unforgiving: clarify the problem through customer interviews; define crisp outcomes vs output OKRs; map the journey end-to-end; ship in thin slices; and iterate with observability baked into every release. Along the way, keep your cross-functional partners close—solutions engineering, customer success, and GTM—so that your learning loops extend beyond the product surface and into real adoption dynamics.
If you’re building analytics or AI-powered experiences today, borrow these lessons: translate early-stage builder energy into enterprise-scale focus; make AI serve the product, not the other way around; and use Amplitude analytics to close the loop from idea to impact. That is how PMs compound credibility, accelerate careers, and, most importantly, create products customers can’t live without.
Inspired by this post on Amplitude – Best Practices.
Mobile engagement is most effective when it’s timely, contextual, and grounded in real user behavior. In my experience leading product teams, the fastest path to activation and retention comes from meeting users in the moment with relevant in-app guides and lightweight surveys that reduce friction and illuminate intent.
Deploy behavioral-driven mobile engagement with Amplitude Guides and Surveys for iOS, Android, and React Native platforms.
What excites me about this approach is how naturally it supports product-led growth. In-app guides and product tours streamline onboarding, while targeted micro-surveys surface the “why” behind user actions. The result: clearer journey mapping, fewer blind spots in the funnel, and a smoother path to user activation—all without adding engineering heavy-lift for each iteration.
To optimize continuously, I pair behavioral analytics with A/B testing and retention analysis. This lets my team validate hypotheses quickly, localize friction by segment or stage, and tune messaging for different cohorts. With Amplitude analytics at the core, we can connect engagement nudges to downstream outcomes, not just clicks—so we’re improving time-to-value, not just surface metrics.
My recommended starting point is simple: define a single activation moment, instrument the critical behaviors around it, and launch a focused guide plus one survey to test the narrative. Use journey mapping to identify the key decision points, then iterate weekly based on observed behavior, not opinions. This cadence keeps learning velocity high and ensures every change moves us closer to clear outcomes.
From a leadership perspective, I coach product trios to own an activation or retention KPI, run small controlled experiments, and document learning with crisp before/after evidence. Cross-platform support across iOS, Android, and React Native means we can scale wins quickly, standardize patterns, and create a repeatable playbook for new features and markets—all while keeping the user experience coherent and respectful.
Inspired by this post on Amplitude – Best Practices.
Net Recurring Revenue (NRR) is the cleanest truth-teller in my operating system. When I review NRR, I’m not just looking at whether we renewed accounts—I’m assessing whether our product and customer success motions are compounding revenue from our existing customers. Put simply: good CS teams protect revenue; great CS teams grow it through adoption, expansion, and durable retention.
Here’s how I frame NRR with my teams: it reflects revenue from our current customers after expansion, downgrades, and churn. If it’s at or above 100%, the installed base is self-sustaining; if it’s materially above 100%, the base is funding growth without net-new sales. That’s the holy grail for product-led growth and the benchmark I use to separate good from great.
At HighLevel, I’ve learned that you can’t “wish” your way to high NRR. You operationalize it. We align incentives, dashboards, and rituals so everyone—from PMs to CSMs to Solutions Engineering—owns the same outcome. Our “QBRs vs OKRs” discussions anchor on NRR drivers: activation rates, time-to-value, feature adoption depth, and expansion readiness. Those leading indicators tell me where we’ll land on lagging revenue results.
The best Customer Success teams operate like product teams. They use behavioral analytics and retention analysis to segment customers by use case and maturity, then design journey mapping to move each segment from first value to habitual value. They proactively reduce risk while creating clear expansion paths—new seats, premium features, or higher-tier plans—based on real product usage, not guesswork.
Onboarding is where great NRR trajectories begin. I focus on compressing time-to-first-value and time-to-second-value because those moments create the habit loops that underpin renewal and expansion. In practice, that means targeted in-app guides, contextual product tours, and nudges that drive user activation across the “sticky” features that correlate most with long-term retention.
To make this scalable, we blend human and product-led touchpoints. CSMs run outcome-based playbooks, while the product experience handles education and reinforcement at scale. When usage signals an expansion opportunity—say, a team consistently bumps into plan limits—we generate a product-qualified expansion lead and equip the CSM with the exact value storyline and proof points to close it.
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.
I’ve seen this playbook move the needle. After instrumenting our key workflows and deploying targeted in-app guidance, we watched adoption of our highest-retaining features climb, risk flags surface earlier, and expansion conversations become far more data-driven. We didn’t chase shiny objects; we built a reliable pipeline of retained and expanded revenue directly from product usage.
If you’re aiming to level up NRR, start with a crisp blueprint: define the critical events that predict renewal and expansion; set activation milestones per segment; deploy in-app guides and product tours to remove friction; give CSMs a single-pane view of risk and readiness; and review NRR weekly with the same seriousness you apply to new ARR. Consistency beats intensity here.
Finally, keep the narrative simple. Your leadership story isn’t “we shipped features,” it’s “we created customer outcomes.” Tie every CS and product initiative back to NRR drivers—and make the wins visible. When teams see the direct line from great onboarding and adoption to measurable expansion, they naturally operate like a unified, product-led growth engine.
NRR rewards rigor. Treat it as the top-line health metric for your installed base, make the software do more of the teaching, and empower CS to coach to outcomes. Do that well, and you won’t just separate the good from the great—you’ll build a compounding machine.
Can an AI agent actually run a credible content audit end to end? I put that to the test. In my role leading product at a high-growth SaaS and as a hands-on content strategist, I’m constantly balancing depth with reach. During a recent office-hours discussion, someone asked me to zoom out and explain when to use Claude Code. That prompt inspired me to launch a running series—Conversations with Claude—showing exactly how I apply it to real product management and SEO problems.
I’m a heavy user and share what works for me. I receive no compensation from Anthropic for this series; if that ever changes, I’ll disclose it. With that out of the way, let’s dive into how I had Claude conduct a full content audit—and why the results exceeded my expectations.
For the first installment, I chose a fairly complex use case: a comprehensive content audit of my site. I expected this to be a slog. Instead, it was refreshingly fast and rigorous once I set Claude up with the right scaffolding.
I kicked off with a simple directive: start by asking clarifying questions, proceed step by step, and capture notes in a shared task file. I also provided deep context—specifically, the CDH Book (15 chapters + intro) and my entire blog archive in markdown—so the model could reason with my actual corpus rather than guessing from sparse prompts.
Claude began with smart clarifying questions that framed the analysis well. Scope of keywords: Should it focus strictly on concepts unique to or heavily associated with my work like "opportunity solution tree" and "continuous discovery," or also include broader product management terms such as "product outcomes," "assumption testing," and "customer interviewing"? Keyword geography: Start with US-only or include UK/global? Blog coverage assessment: What counts as "well covered"—dedicated deep dives or credible coverage within broader posts? Output format: Add findings to the task file or create a separate deliverable?
Peek inside a Notion-style page that turns content strategy into action: a content-audit task with due date and tags, plus clear steps for keyword research, blog gap analysis, and SEO improvements.
I replied: 1. both 2. us only is a good place to start 3. evaluate this based on how well we rank for the keyword, if we rank reasonably well, you might suggest content improvements to rank better, if we don't rank at all, then you might suggest a whole new article 4. add to the task file
From there, Claude read the CDH Book, extracted roughly 100 keywords, ran them through Keywords Everywhere in two batches of 50 to capture search volume, and pulled current domain rankings and traffic metrics. Within minutes, I had a high-signal view of what’s working, where we’re invisible, and how to prioritize fixes.
The good news came first: we own our branded terms—#1 for "product discovery," "opportunity solution tree," "continuous discovery," and "product trio." That brand equity is doing real work for us.
The biggest gaps were in broad topics the CDH Book covers but where there’s no targeted content. "Outcomes vs outputs" (1,300/mo) — Arguably THE central thesis of CDH, and no ranking. This is the single biggest gap. "Product roadmap" (4,400/mo) — I have a strong anti-roadmap POV but no content targeting this. "Product strategy" (1,900/mo) — Ch 7 argues strategy = opportunity selection. Strong differentiator, no ranking. "Story mapping" (5,400/mo) — I use story maps uniquely (for surfacing assumptions). Huge volume. "Stakeholder management" (2,900/mo) — Ch 13 is entirely about this. No ranking. "Pre-mortem" (4,400/mo) — I cover this as a product discovery technique. No ranking.
Inside a dark-themed writing workspace, a long-form chapter is open while a tidy folder tree catalogs pages and chapters. The scene invites readers to think like auditors—inventory content, track structure, and surface gaps with AI assistance.
The trojan horse opportunity: High-volume generic terms like story mapping, pre-mortem, and usability testing could bring in readers who don't know about CDH yet. Write about these broadly-searched topics with my specific product-discovery angle.
In just a few minutes, Claude generated an analysis of what keywords we ranked for and at what position, a ranked set of high-, medium-, and lower-volume (but strategic) keywords where we didn’t rank yet had relevant content, concrete net-new topics to close the gaps, and a list of existing articles to update to lift their SERP positions. It worked far better than I expected.
Here’s how I set it up so the model could deliver: I didn’t simply ask Claude.ai to "audit my site" and hope for the best. I supplied rich, relevant context (my book and all blog posts as markdown) so it could anchor on my language, frameworks, and mental models. I paired that with live data via APIs like Keywords Everywhere to ground recommendations in actual search volume and competitive rankings. With the right inputs, Claude Code behaved like a capable research analyst and an SEO strategist—able to reason, prioritize, and suggest high-leverage actions.
Next, I went deeper and used the findings to draft a long-form article that addresses the biggest gap—"Outcomes vs outputs"—and ties it directly to product roadmapping and sprint planning. I wove in continuous discovery practices, opportunity solution tree techniques, and product trios collaboration to make it actionable for empowered product teams. I’ll share the end-to-end workflow—including files, prompts, and the editorial QA checklist—in a follow-up.
If you’re new to Claude Code and want a practical starting point, replicate the setup above: assemble your canonical sources in markdown, define a clear evaluation rubric, and ground keyword research with reliable volume data. If you want my exact task file, clarifying-question template, and step-by-step audit rubric, tell me which content gap you’d prioritize first and why—I’ll tailor the walkthrough to the highest-interest topic.
Every update we shipped this month removed a specific constraint on what teams can do with Fin. In my world, the demo-to-production gap shows up as complexity, control, and confidence. Can the agent handle the query that actually matters? Will it sound right on a call? Can the team deploy it without filing an engineering ticket? Can managers understand what it’s doing? That’s the bar I hold us to.
This month, we delivered answers to all four. Here’s how.
Procedures and Simulations (0:51). The hardest problem in AI-powered customer service isn’t answering FAQs—it’s executing complex queries with real business logic and real consequences if anything goes wrong. Think billing refunds, multi-step flows, and actions that must be right the first time.
We made it dramatically easier to build and manage Fin for those complex queries—without pulling in an engineer. You can author in natural language, test every step in simulation, and deploy with confidence.
The workflow starts with AI drafting the procedure from your existing source material. You edit in natural language, with structured hooks to pull in live data, apply business logic, and add code for deterministic control where you need it. That’s how you handle multi-step flows with the precision that matters when things go wrong.
Simulations are the test environment. Define a test case, pass in the data Fin would receive in a real conversation, and watch it work through each step. You see what Fin is doing, why, and whether it’s meeting the criteria you set. Full transparency at every point. I’ve run these end-to-end myself, and there’s a particular confidence that comes from watching it work before it goes anywhere near a customer.
A conversational moment from the February Fin Product Updates recap: two teammates trade insights with laptops open, while a bold pull-quote drives home the promise—Fin removes complexity to start selling and supporting in under two minutes.
For a deeper look at Procedures and Simulations, head to fin.ai/procedures.
Fin Voice: three major updates. When something’s off in chat, it can take a few exchanges to notice; on a call, it’s immediate. Pronunciation, noise handling, and tone all matter because they’re the customer’s first impression.
Pronunciation rules (4:18). Fin has high out-of-the-box pronunciation accuracy, but it doesn’t know your brand—your product names, your industry terminology, the way your company uses certain words. Alihan Zinna, Staff ML Scientist, showed this with an IKEA example: without pronunciation rules, Fin mispronounced both “IKEA” and a product name; after adding rules, both were corrected and sounded natural.
New natural voices (5:48). We’ve added 11 new voices tuned to a range of brand tones so you can choose one that sounds like it truly belongs to your company—not a generic AI assistant.
Background noise reduction (6:28). People call from airports, shops, and busy offices. Fin now monitors background noise continuously and increases noise reduction when the environment demands it. No configuration needed. As Alihan put it, “This is one of those things customers really notice when it’s not working. The goal was to make it invisible. That’s what we built.”
Catch up on February’s Fin Product Updates with a walkthrough of the Call Metrics dashboard—saved filters, hold‑time tiles, missed and declined call counts, and a monthly breakdown that helps support teams act faster.
Shopify setup experience (8:21). Fin began as a Service Agent and is quickly becoming a Customer Agent—working across the whole lifecycle to support, sell, and guide, even before a customer has an issue. The revamped Shopify setup is a clear step forward.
Shopify catalogs are complex—thousands of products, variants, and dynamic inventory—and connecting all of that to an agent has historically been painful. We removed the friction.
Setup now takes three steps: first, connect your store. Second, install the Messenger directly in Shopify—no code, just a few clicks. Third, deploy Fin. Total time: under two minutes. We timed it live.
What that unlocks is real. In the demo, a first-time snowboarder asked for recommendations. Fin searched the catalog, reasoned about attributes that matter to a beginner (there’s no “beginner” tag in the catalog), personalized suggestions by height and weight, and added a board to the cart.
Even better, one customer updated their website copy to promote a sale. Fin immediately picked up the new context and began recommending sale items, nudging shoppers to add more to the cart to access a discount—no extra configuration required. It read the situation and acted.
See how the latest Fin update streamlines support scheduling. A product expert walks through Holiday Office Hours, showing how to set default hours, track response metrics, and add closures so teams stay consistent.
Three steps, and you have a real-time shopping assistant that knows your store and sells on your behalf.
Helpdesk improvements (12:31). Fin works with any helpdesk, but many teams consolidate to take advantage of our native Intercom helpdesk integration. We’ve shipped 19 helpdesk improvements in 2026 so far; two from this month stand out.
11 new call metrics. Hold time, outbound dial time, missed and declined calls, call terminating party, and more. These give leaders the visibility to analyze workload distribution and call handling quality in detail.
Holiday office hours. Teams no longer need to manually update office hours for every public holiday. This was the most upvoted request in our community, and we shipped it.
Across the board, we removed the constraints that hold teams back: the complexity ceiling in automation, the quality ceiling in voice, the setup barrier in Shopify, and the operational overhead in the helpdesk.
We closed out the month with a Star Wars–style crawl of 22 additional updates. All features mentioned here are live and available now. Explore more at fin.ai/updates. More to come—see you next month.
There’s a moment in every product leader’s career when the bravest decision isn’t to build—it’s to stop. That’s why the “Kill Your Darlings” theme resonated so strongly with me. In this episode of All Things Product, Teresa Torres and Petra Wille dig into the courage and craft it takes to sunset products that look successful on the surface yet quietly block your path to meaningful growth. As someone accountable for portfolio outcomes, I’ve learned that disciplined endings are often the catalyst for exceptional beginnings.
Listen to this episode on: Spotify | Apple Podcasts
The heart of the conversation is that uncomfortable middle ground between obvious failure and runaway success: products that are profitable, loved by customers, but fundamentally flatlining. Teresa shares candid stories from her own business, including a decision to cut 40% of revenue on purpose. I’ve been there—choosing to retire a “working… kind of” product to free up discovery capacity felt risky in the moment, but it created the focus we needed for durable growth.
Here’s the trap: some traction can be more dangerous than no traction at all. Early fans are not the same as durable product–market fit, and “stable but not growing” can lull leaders into maintaining instead of learning. Every hour of design, engineering, and go-to-market attention that props up a flatlining product is an hour not invested in the next breakthrough—an opportunity cost that rarely shows up on a dashboard, yet compounds month after month.
From a portfolio perspective, this is continuous discovery in action. If we want empowered product teams to tackle meaningful outcomes, we have to protect their capacity from zombie work. That means setting clear thresholds for when we double down, shift strategies, or sunset—before attachment and inertia take over. When I’ve institutionalized this discipline, our throughput of high-quality bets increased, and our confidence in what not to do became a strategic advantage.
Organization design can make sunsetting harder than it needs to be. Dedicated, long-lived teams are fantastic for compounding capability, but they also create emotional and structural ties to specific products. Petra’s point lands: leaders need explicit sunsetting conversations and a portfolio decision-making cadence that sits one level above teams. In my org, we treat sunsetting as a strategic reallocation—not a verdict on a team’s talent—so people are celebrated for learning, not punished for outcomes outside their control.
Killing profitable products can be the right strategic move when the growth ceiling is clear and the opportunity cost is high. I’ve chosen to “burn the ships (on purpose)” more than once—retiring add-ons that generated reliable revenue but diluted our value proposition and spread discovery thin. Yes, it stings in the quarter you do it. But it’s astonishing how quickly focus restores momentum when you create intentional space for what’s next.
Practically speaking, I make sunsetting easier and less traumatic by operationalizing it: Regular portfolio reviews focused on outcomes and opportunity cost; a visible “sunsetting” column so everyone sees what’s on the table; the Horizon (H1 / H2 / H3) model to balance core, adjacent, and transformational bets; and making portfolio decisions one level above teams to avoid local optimizations. Add explicit exit criteria and success metrics for endings, the same way we set entry criteria for new bets.
Another theme I appreciated is designing for the right customers. Teresa highlights intentionally limiting access and pricing to work with customers who show agency and commitment. I’ve applied the same principle: when we’re clear about who we serve and who we don’t, our product–market signal sharpens, churn narratives simplify, and roadmaps get crisper. Focus is a growth strategy.
If you’re leading a product portfolio, running discovery, or wrestling with a product that “works… kind of,” this conversation is permission to act. Product–market fit isn’t binary, and mediocre success can be the most dangerous place to stay. Sunsetting is a portfolio decision, not a team failure; teams shouldn’t be punished for reaching the end of a product’s natural lifecycle. If experimentation isn’t in your DNA, killing products will always feel traumatic—so make space for it intentionally, not passively.
Key moments and themes worth bookmarking: 00:00 – Why “kill your darlings” matters; 04:30 – The dangerous middle ground; 09:30 – The opportunity cost of “okay” products; 14:30 – Sunsetting in product organizations; 19:00 – Real examples of killing revenue streams; 28:00 – Designing for the right customers; 33:30 – Burn the ships (on purpose); 38:00 – Making sunsetting easier with Regular portfolio reviews, a visible “sunsetting” column, the Horizon (H1 / H2 / H3) model, and making portfolio decisions one level above teams; 46:00 – Normalizing product lifecycles.
Resources & Links:
Follow Teresa Torres: https://ProductTalk.org
Follow Petra Wille: https://Petra-Wille.com
Mentioned in this episode:
Ways to Work with Petra Wille
Product at Heart
CDH Membership by Teresa Torres
Product Talk by Teresa
Product Talk Academy by Teresa
Enduring Ideas: The three horizons of growth
Join the Conversation:
Have thoughts on this episode? Leave a comment below.
Full Transcript
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Most MVPs take too long, cost too much, and still miss the mark. Over the past year, I’ve shifted my team to a prototyping prompts approach that lets us validate problem-solution fit in days, not months. The result is faster learning loops, clearer tradeoffs, and a dramatically higher hit rate on features that actually move the needle.
When I say prototyping prompts, I mean structured, layered instructions that guide gen ai systems to produce the right artifacts at the right fidelity. Instead of jumping straight to code, we generate concise problem briefs, user stories, interaction flows, low-fidelity UI descriptions, and test plans. Each pass is constrained by acceptance criteria and business outcomes, which keeps the work grounded in value rather than output.
Here’s the playbook my product trios use to go from idea to a testable MVP in 48–72 hours. First, we anchor on outcomes vs output OKRs and clarify the customer job-to-be-done using evidence from customer interviews and support data. This is classic continuous discovery, but we compress it by focusing on the single riskiest assumption to de-risk this week.
Second, we build a prompt scaffold. We specify the role, constraints, target users, success metrics, and the exact output format we expect. We also define evaluation upfront, borrowing from eval-driven development. For example, before any generation, we list the acceptance tests that a good solution must pass, including edge cases and compliance considerations. This discipline keeps hallucinations in check and improves repeatability.
Third, we spin up multiple prototypes in parallel. One prompt generates a lean product brief; another outlines user flows; a third proposes UI states and error handling. If we’re exploring voice, we add prompt engineering for voice to script dialogs and repair strategies. For data-heavy features, we call out retrieval-first pipeline patterns so the model references source-of-truth data rather than guessing.
Fourth, we validate with real users using the lightest-weight experiment possible. Fake-door tests, concierge workflows, and guided click-throughs let us measure intent before we invest. Where we can, we run quick A/B testing and size the effort using minimum detectable effect (MDE) so we don’t over- or under-sample. The point isn’t perfection; it’s fast, directional signal to inform the next iteration.
Fifth, we instrument and ship behind feature flags. We track activation, task completion, and time-to-value from day one. On the delivery side, we watch DORA metrics and deployment frequency to ensure we’re learning continuously rather than batching big bets. This bridges discovery and delivery so roadmaps reflect real-world feedback, not assumptions.
One recent example: we needed to evaluate a voice AI agent for appointment scheduling. In 72 hours, prompts produced the problem brief, dialog flows, error recovery strategies, and a sandbox to simulate inbound requests across three user personas. We exposed a thin slice to a pilot cohort, captured call outcomes, and iterated the repair prompts twice before writing any production code. The pilot converted at a higher rate than our control flow and gave us the confidence to invest in full integration.
This approach only works if we treat governance as a first-class concern. We bake in privacy-by-design, clear data governance boundaries, and AI risk management from the start. Prompts include guardrails on personally identifiable information, explicit constraints on data use, and links to approved sources. We also maintain a prompt repository with versioning and automated evaluations so changes are observable and reversible.
Practically, strong prompt scaffolds share three traits. They’re specific about context and constraints, they define success in measurable terms, and they separate concerns by artifact type. I’ll often ask for three variants with different tradeoffs, then run a quick synthesis prompt that highlights points of parity and differentiation. This gives the team structured options rather than a single, brittle path.
If you’re starting from zero, begin with one high-leverage workflow. Write a crisp outcome statement, draft your acceptance tests, and create a prompt that outputs a one-page brief, three user flows, and the top five risks with mitigations. Validate with five users in 48 hours, then decide: double down, pivot, or park. Rinse and repeat, and your product roadmapping and sprint planning will shift from speculation to evidence.
The bottom line is simple. Prototyping prompts won’t replace product judgment, but they will accelerate it. By turning ideas into testable artifacts in hours, you minimize waste, maximize learning, and ship better MVPs—fast.
Fraud teams are drowning in signals—events, alerts, and edge cases that look suspicious but rarely point to what truly matters now. In my role leading product, I focus on turning that noise into clear, ranked actions the team can trust. Behavioral analytics is how we bridge the gap from “something looks off” to “here’s why it matters and what to do next.”
See how behavioral analytics helps fraud management teams surface anomalies, prioritize risk factors, and act faster with greater confidence.
When I build fraud capabilities, I start by defining the outcomes that matter: find anomalies early, prioritize by impact, and respond in minutes—not days. That requires a rigorous approach to data governance, strong observability across the stack, and a mindset tuned to threat detection and response rather than passive reporting.
For me, behavioral analytics means unifying event streams across web, mobile, payments, and support into a single, trustworthy, unified analytics platform. We then apply anomaly detection on top of baselines for user, device, and entity behavior—capturing velocity spikes, geolocation drift, account takeover signals, and unusual journey paths. The win is not more alerts; it’s clearer context per alert.
Prioritization is where the value compounds. I combine deterministic signals (e.g., device fingerprint mismatches, impossible travel, repeated declines) with weighted risk scoring that adapts to emerging patterns. This helps fraud analysts triage by potential loss and customer impact, not just alert volume—so the highest-risk cases land at the top of the queue with the right context attached.
Actionability is the final mile. I map each risk tier to a playbook—step-up authentication, temporary holds, secondary review, or immediate block—so teams can act with confidence. Real-time alerts route to the right channel; feature flags allow fast containment; and AI risk management practices ensure continuous learning while preserving precision and recall. We close the loop by measuring investigation time, false positive rates, and recovery to keep improving.
A few lessons keep paying off: instrument early and consistently; keep your schema stable; document risk definitions; and test changes with A/B testing to quantify impact before scaling. Treat your fraud stack like a mission-critical cybersecurity system with tight SLAs, clear ownership, and auditable decisions—because it is.
If you’re evaluating your next move, start with a narrow but high-ROI use case (account takeover or payment fraud), stand up clear dashboards for analysts, and iterate on the risk scoring model weekly. With disciplined data practices and aligned playbooks, behavioral analytics turns scattered signals into decisive, defensible action.
Inspired by this post on Amplitude – Perspectives.
Building a great end-to-end customer experience with AI means going beyond support, and I’ve seen firsthand how transformative that shift can be when we treat every interaction as part of one cohesive journey.
Every customer touchpoint, from the first sales conversation through to post-sales support and success, is an opportunity to get it right. Other teams are now turning to AI to transform how they show up for customers, and support, which led the way, has already written the blueprint. In my role, I focus on making that blueprint actionable across the entire lifecycle.
In The 2026 Customer Service Transformation Report, it’s clear most businesses are thinking about what’s next, with more than half planning to scale AI to other departments. Interestingly, they often cite their early success with AI in support as motivation for the move. This makes support teams uniquely positioned to help lead the transition, a strategic role unimaginable just two years ago.
In this piece, I share how teams are introducing AI to other parts of the business, how to think about this expansion effort, and the new opportunities it creates for support leaders who want to drive a unified customer experience.
Support was the first proving ground for AI, and our research suggests that businesses are now planning to expand its use to other areas based on the results it’s yielded so far. Fifty-two percent of respondents said that their organizations are actively planning to scale AI to other departments in 2026.
What will this look like? Leading companies are already finding out.
Wins in support are setting the pace for company-wide AI. Survey results rank the drivers: proven success in support (57%), the push for a unified customer experience (49%), scaling other functions without more headcount (33%), and cross-department demand (31%).
My favorite example is WHOOP, the fitness wearables company. They offer a premium product which makes their sales conversations more consultative than transactional. Customers want to know “Which membership is right for me?” or “How often do I need to charge my WHOOP?” According to Emily Shirley, Business Manager for Growth Product at WHOOP, if someone chatted with the inside sales team, they were twice as likely to convert, but they didn’t have enough reps to respond to incoming queries fast enough. Customers could wait more than 10 hours for a reply.
With a big product launch on the line and an anticipated spike in prospective customer conversations, their three-person team needed help. So they deployed Fin to the "Join" page, the final step before purchase.
With Fin resolving 84% of inbound questions, the sales team was able to focus on high-value leads. Together, they drove a 130% increase in attributable sales. The team is now exploring ways to expand Fin beyond FAQs, focusing on personalised conversation flows, multi-product recommendations, and richer data capture. As Emily says: “There are so many parts of the buyer journey where this applies. We’ve only scratched the surface.”
It’s clear there’s a desire to push AI to other parts of the customer lifecycle, but there is a risk hidden in this expansion. If sales, customer success, and other departments all launch their own Agent, each operating in isolation, you can end up fragmenting the very thing our research says teams want to create. The second-most cited reason for pushing AI beyond support: desire for a unified customer experience.
Without shared context, each handoff becomes a source of friction where customers could receive inconsistent answers or be asked to repeat information. I’ve watched even well-intentioned AI rollouts struggle here—great local wins, but an overall journey that feels disjointed.
A translucent UI visual maps a support-led AI blueprint that scales across the business—from SDR and sales to custom assistants—anchored by layers for goals, memory and user context, business knowledge, and interoperability.
The opportunity (and the challenge) is to keep the customer at the center. Instead of department-specific Agents that operate independently, we must strive for cohesion. That means shared memory, consistent governance, and connected AI workflows that respect the customer’s history and intent across channels.
This is the future I’m building toward: solutions like Fin becoming a “Customer Agent,” capable of handling the entire customer experience. This will mean Fin can function in many roles, supported by a memory that grows with the customer over time and deep knowledge of the business, creating a seamless experience for every interaction. In practice, that’s agentic AI designed to collaborate across teams, systems, and journeys—without losing context.
Pushing AI into new parts of the business requires someone to own the process. And for many organizations, that’s the support team. Nearly a third of respondents (32%) confirmed their customer service teams are leading their business' AI transformation strategy.
This presents a real opportunity for support teams to shape the future of customer experience. Instead of each function reinventing the wheel, support can act as a center of excellence, defining shared standards, guardrails, and operating practices that drive performance.
“You already manage the most complex, high-volume customer interactions; you have rich data on customer needs and behavior; and you know how Agents perform in the real world. Those insights will be invaluable as AI scales across your business.”
Leaders are racing ahead with real AI in support. Explore the 2026 Customer Service Transformation Report to see where deployment is stalling, benchmark your team, and get practical steps to scale automation that delights.
In my organization, when we extended AI from support into sales, we deliberately brought our conversation design expertise, Agent Analytics, and governance models along with it. One team owns the orchestration, memory strategy, and CRM integration so a customer can start with a sales question and end up with a support one—without ever feeling a seam. That continuity is where journey mapping meets product strategy and turns into measurable outcomes.
As Agents like Fin expand their capabilities and move into new areas, I expect many customer service leaders will see their roles expand to include AI implementation across the customer journey. It’s a natural progression for product management leadership in support: owning the experience, the data, and the operating model.
Achieving perfect customer experience is AI’s biggest promise. But in order to get there, teams need to be smart about the solutions they deploy. A unified Customer Agent capable of handling the entire journey end-to-end will have a significant advantage, delivering consistent, context-aware experiences across every interaction.
The Customer Agent future is being built right now, and it’s starting with the team pioneering AI transformation from the very beginning: support. For leaders in these organizations, this is a rare opportunity to shape how customer relationships will be built and maintained in the AI era.
If you’d like to dig deeper into the data and benchmarks guiding these decisions, download The 2026 Customer Service Transformation Report.
"What if an AI could spot the moment two product teams start pulling in opposite directions — before it derails a quarter?" That question hooked me, because I’ve lived through the costly fallout of subtle misalignments that only surface at the end of a sprint—or worse, during quarterly business reviews.
I recently dug into an episode of Just Now Possible featuring Matthias and Charlotte Kleverud, co-founders of Momental. Their vision for "GitHub for product management" hits a nerve in the best possible way: find "merge conflicts" in strategy, not code, and do it early enough to save execution time, trust, and outcomes.
Here’s the core: Momental ingests documents, meeting transcripts, and voice recordings across an organization, then uses AI agents to map them into a structured context layer—a set of interconnected trees covering goals, decisions, learnings, and who's doing what. When it finds a conflict—say, one team betting on retention while another is prioritizing conversion—it surfaces the misalignment for humans to resolve, just like a merge conflict in code. That framing is both familiar (for anyone who’s shipped software) and powerful (for anyone who’s scaled product strategy across multiple teams).
Their journey tracks with what many of us have learned the hard way. "Starting in 2022 with DaVinci 002 and learning that the market wasn't ready for AI-assisted product thinking" pushed them toward experiments with agent teams. "The origin story: building a team of AI agents in 2024, only to discover agents hit the same alignment problems as humans" is exactly the kind of meta-lesson I’d expect when you scale autonomy without shared context. The breakthrough was an "OODA-loop-driven document processing agent" that continuously curates a living knowledge graph rather than relying on static prompts or brittle pipelines.
One model that stood out was "The product chain: signals → learnings → decisions → principles, and how AI maps it." That is the backbone of healthy product thinking. When this chain is explicit and inspectable, you can trace why a team chose Path A over Path B—and detect when new signals should invalidate old decisions. I’ve seen this accelerate continuous discovery and improve executive decision hygiene.
I also appreciated the organizational modeling: "Three trees that model an organization: the product tree (OKRs to epics), the wisdom tree (decisions and their reasoning), and the people/time tree." This maps cleanly to how we run quarterly planning at scale—tying outcomes to work, preserving rationale, and grounding ownership and timelines. With that structure, "How conflicts are detected, auto-resolved, or escalated to humans with merge options" becomes a pragmatic workflow, not a theoretical AI demo.
On the technical front, they’re blunt about limits: "Why traditional chunking and RAG breaks down at scale and what Momental does instead." Anyone who’s tried to stitch strategy from ad hoc notes knows that naive retrieval won’t cut it. You need durable context boundaries, rich metadata, and graph-aware reasoning. Which brings me to one of my non-negotiables: "Why metadata—who said it, when, and in what context—is critical to preventing hallucinations." In my world, we treat provenance like test coverage—you can’t ship without it.
Process-wise, the product philosophy resonated: "How a document processing agent uses OODA-loop thinking to extract and connect context across documents" reinforces the need for short feedback cycles, explicit hypotheses, and continuous refactoring of knowledge. Pair that with "The self-improving agent: collecting user feedback weekly and rewriting its own prompts" and you’ve got a blueprint for eval-driven development that keeps the system honest over time.
Their UI choices also mirror a pattern I’ve adopted: "Moving from chat-first to UI-first to proactive agents as an AI product design pattern." Chat can feel magical, but alignment work benefits from concrete artifacts—trees, timelines, driver trees, and opportunity solution trees—so people can reason together. Then, let proactive agents watch for drift and nudge teams before the cost of change spikes.
Two broader themes are worth calling out. First, "Specialized tools win" when the problem is deep, cross-functional context like product strategy. General-purpose chatbots struggle here; domain-specific models with strong information architecture have the edge. Second, product culture matters: "Discovery Versus Vibe Coding" is not just a catchy contrast—it’s a reminder that disciplined discovery beats intuition theater when stakes are high.
As for the roadmap, I’m encouraged by their "Design partner strategy and what's next for Momental's public launch." Early design partners are where you validate signal quality, precision of conflict detection, and the ergonomics of human-in-the-loop resolution. I’m especially curious how this intersects with LLMs for product managers, outcomes vs output OKRs, and product roadmapping and sprint planning in large portfolios.
Finally, a nod to the broader ecosystem. The conversation touched on "Claude Code" and a shift "Beyond documents and vectors" that many of us are living through—toward retrieval-first pipelines that respect context windows, stronger governance, and measurable improvements in decision quality. If you care about AI Strategy for empowered product teams, this is a space to watch—and to pilot.
Bottom line: If you’ve ever wished you could prevent strategy drift before it shows up in your dashboards, this "GitHub for product management" approach is worth your attention. Make the chain of signals, learnings, decisions, and principles explicit. Keep humans in the loop for the hard calls. And let proactive, agentic AI do what it does best: flag misalignments early, so your teams can move fast together.
I’ve been looking for a pragmatic way to put product analytics where my teams already work—inside Slack and Microsoft Teams. The moment insights are one message away, cycle time shrinks, debates get crisper, and experiments move faster. That’s why I’m bringing Amplitude Global Agent into our daily decision flow to deliver instant, source-backed answers with visual clarity and actionable next steps.
Connect Amplitude Global Agent to Slack or Microsoft Teams to answer questions with source-backed analytics, charts, and recommended actions like A/B tests.
What excites me most is the shift from dashboards to dialogue. Instead of digging through reports, I can ask a focused question in Slack—“How did activation change week-over-week for our self-serve cohort?”—and get a chart in-channel, complete with recommendations that point me toward the next best move. This is Agent Analytics done right: faster insight loops, reduced context switching, and more confidence in the decisions we make every day.
From a product management perspective, this integration strengthens continuous discovery and aligns product trios around the same truth. Engineers, designers, and PMs see the same chart, discuss trade-offs in the same thread, and can agree on an action—often an A/B test—within minutes. It’s a lightweight but powerful way to support product-led growth and keep our roadmap tied to measurable outcomes.
In practice, the questions I ask the most look like this: “Which onboarding step causes the biggest drop-off this month?”, “Which channels drive the highest L28 activation rate?”, and “Where did retention improve after our pricing change?” In each case, the Agent returns charts we can share instantly with stakeholders, plus recommended actions like A/B test ideas to validate hypotheses quickly. The result is a reliable rhythm: ask, see, align, act.
Governance matters just as much as speed. We’re configuring strict permissions, role-based access, and purposeful channel placement so analytics land where they should—no broader, no narrower. We’re also leaning into clear query prompts and naming conventions for events and properties to help the Agent retrieve precisely what’s needed, every time. The aim is a high-signal, low-noise system that maintains trust while accelerating decisions.
To embed this into our operating cadence, I plug the Agent into three moments: daily standups (to scan activation, conversion, and incidents), weekly product reviews (to align on experiment status and next bets), and executive QBR prep (to pull clean, shareable charts fast). Because the insights arrive in Slack or Microsoft Teams, our conversations stay focused and traceable, and decisions get documented in the same place they were discussed.
We’ll measure impact with simple, telltale indicators: fewer ad-hoc analytics requests, faster time from question to decision, increased A/B test velocity, and clearer links between recommended actions and outcome metrics like activation and retention. My bar is straightforward—if this Agent can help one team make a better decision per day, it will more than pay for itself across the org.
If you’re considering a similar move, start small: connect one high-signal channel, curate a handful of common queries, and coach your team on good prompts. Within a week, you’ll feel the difference. When analytics become conversational, momentum follows—and your product strategy benefits from sharper, faster, and more transparent decision-making.
Inspired by this post on Amplitude – Best Practices.