Month: February 2026

  • Inside Amplitude’s AI Playbook: Lessons from Leo Jiang on Ask Amplitude, Agents, and Visibility

    Inside Amplitude’s AI Playbook: Lessons from Leo Jiang on Ask Amplitude, Agents, and Visibility

    I continually study how high-velocity teams turn AI ambition into shipped product, and Amplitude’s approach stands out. "Leo Jiang is the Head of Engineering, AI Products at Amplitude, focused on building new AI and marketing products. He has helped build Ask Amplitude, Agents, and AI Visibility." From a product management leadership lens, that portfolio signals a clear AI strategy: enable insight (Ask Amplitude), drive action (Agents), and ensure trust and observability (AI Visibility).

    What I appreciate most is the sequencing: start with user-facing value, build agentic AI capabilities where tasks repeat and outcomes can be evaluated, and layer AI workflows with robust governance. For PMs and LLMs for product managers, the implication is to define success via eval-driven development—quantitative rubrics, offline test sets, and real-time feedback loops—before scaling automation. This also hints at an emerging discipline of Agent Analytics: instrument prompts, tool calls, and outcome quality so we can tune performance like we tune a funnel.

    Ask Amplitude gives a relatable example: natural-language questions lower the activation barrier for product and growth teams inside an Amplitude analytics environment. When agents turn answers into next-best actions, product-led growth becomes measurable—from hypothesis to change to impact—inside a unified decision loop. That tight loop is where product strategy, design, and reliability meet to create compounding value.

    Operationally, I organize a product trio around each capability and pair it with forward deployed engineers to accelerate discovery with customers. I also invest in privacy-by-design and data governance early, ensuring marketing use cases respect compliance while keeping iteration speed high. The goal is a repeatable path from prototype to scale that preserves momentum without compromising safety.

    My takeaway for peers: pick one high-frequency workflow, define clear agent boundaries, ship a narrow slice, and measure relentlessly. Use retrieval-first pipeline patterns for grounding, add human-in-the-loop checkpoints, and close the loop with qualitative insights from in-app guides. When that works, expand capabilities—not just features—and let outcomes vs output OKRs steer prioritization.


    Inspired by this post on Amplitude – Best Practices.


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  • 12 MCP prompts that rally your whole company around product data and drive adoption

    12 MCP prompts that rally your whole company around product data and drive adoption

    I’ve seen first-hand how quickly a company aligns when product data becomes everyone’s common language. To make that happen at scale, I rely on MCP prompts inside Pendo to turn raw behavioral signals into clear, cross-functional actions. When we give people precise questions to ask of the data, engineering, product, marketing, customer success, and sales move in lockstep—and outcomes follow.

    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.

    What follows are the 12 MCP prompts I use to help teams across the business make better, faster decisions from product analytics, in-app guides, and customer feedback. They’re battle-tested, easy to adapt to your stack, and intentionally written to drive product-led growth and clearer accountability.

    Prompt 1: Show me the activation funnel by segment (SMB, MM, ENT) for the last 90 days, highlight the biggest drop-off steps, and quantify which change would yield the largest absolute lift in activated users.

    Prompt 2: Rank features by adoption velocity over the past 30 days, identify underutilized high-value features by persona, and recommend the top three in-app guide placements to increase engagement.

    Prompt 3: Plot 30/60/90-day retention curves for new users by plan type and persona, flag statistically significant gaps, and suggest two experiments to improve week-two retention.

    Prompt 4: Cluster qualitative feedback (NPS verbatims, support tickets, and in-app survey responses) by theme and feature, summarize the top friction points in one paragraph per theme, and propose fixes ordered by impact and effort.

    Prompt 5: Analyze common user paths after onboarding, surface where users stall or loop, and recommend targeted product tours or tooltips to reduce time-to-first-value.

    Prompt 6: Evaluate the impact of a specific in-app guide on activation rate using an A/B test, report lift with confidence intervals, and include the minimum detectable effect (MDE) assumptions used in the analysis.

    Prompt 7: Identify accounts at churn risk based on declining feature usage, login frequency, and support sentiment; produce a prioritized list with the top three customer success plays for each account.

    Prompt 8: Generate a weekly list of product-qualified leads (PQLs) based on usage thresholds, map them to opportunities in our CRM, and recommend the best follow-up message for sales based on feature interest.

    Prompt 9: Analyze usage distribution across pricing tiers, highlight features driving upgrades, and suggest one packaging change and one in-app nudge to improve conversion to the next plan.

    Prompt 10: Measure time-to-value by persona for a key action, compare pre/post tutorial launch, and quantify the impact of our in-app guides on reducing time-to-first-value.

    Prompt 11: For our last three releases, summarize adoption, top feedback themes, and any regressions; recommend one quick win and one strategic bet for the next sprint.

    Prompt 12: Produce a weekly executive summary with the top three product insights, the KPIs they influence, and clear owner-action pairs across Product, CS, and Marketing.

    When teams start their day with these MCP prompts, product data stops being a report and becomes a decision engine. That’s how we drive adoption, run better experiments, reduce churn, and keep everyone focused on outcomes instead of opinions. If you adapt even a few of these prompts to your context, you’ll feel the shift—more clarity, tighter cycles, and a company moving as one.


    Inspired by this post on Pendo – Best Practices.


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  • Build Your Personal Operating System with Claude Code: A Playbook for Focus, Speed, Clarity

    Build Your Personal Operating System with Claude Code: A Playbook for Focus, Speed, Clarity

    This is the year to build your personal operating system. For me, that line isn’t a slogan; it’s a commitment to eliminate context switching, compress decision cycles, and turn fragmented information into a reliable source of truth. As a product leader, I needed a system that blends judgment, data, and automation—so I built mine around Claude Code.

    When I say “personal operating system,” I mean an integrated set of AI workflows, rituals, and tools that capture knowledge, structure decisions, and automate execution. It’s where product discovery meets delivery: a place to synthesize signals, prioritize with clarity, and move from insight to action without friction. The outcome is fewer ad hoc decisions, more deliberate strategy, and a calmer, more focused day.

    Claude Code sits at the center because it helps me translate intent into working software and repeatable processes. I use it to scaffold small utilities, write adapters for APIs, and evolve prompts into robust patterns. It accelerates everything from research synthesis and PRD drafting to backlog grooming and stakeholder updates—while keeping me in the loop for final judgment.

    Under the hood, I run a retrieval-first pipeline that connects notes, docs, tickets, research transcripts, and roadmaps into a searchable, living memory. With careful context window management, I feed only the most relevant snippets into Claude Code, preserving accuracy and speed. The result: richer answers, fewer hallucinations, and an assistant that “remembers” what matters without drowning in noise.

    My daily loop is simple: capture, synthesize, decide, and act. I capture customer signals and meeting notes into a personal knowledge management vault; synthesize patterns with prompt engineering that emphasizes evidence; decide using outcomes vs output OKRs; and act by generating drafts, creating tasks, and updating artifacts. Claude Code helps me wire this end-to-end, so the system works even on my busiest days.

    If you’re implementing this from scratch, start small. Pick one high-friction workflow—say, product feedback triage—and build a narrow agentic AI flow to classify, summarize, and route items. Use eval-driven development to test prompts against known edge cases. Add guardrails and privacy-by-design practices from day one, then expand to neighboring workflows once the first loop is reliable.

    Governance matters. I treat AI risk management, data governance, and security as first-class citizens: limited data scopes, clear audit trails, human-in-the-loop approvals, and rollback plans. Feature flags control changes; observability tracks drift and quality; and a simple playbook documents how we deploy, monitor, and improve the system.

    Measure what this personal operating system earns you. Track decision latency, cycle time from signal to action, meeting-to-output ratios, and the signal-to-noise ratio of inputs. When the system is working, you’ll feel it: fewer meetings, more momentum, and sharper product strategy supported by trustworthy AI workflows.

    The goal isn’t to automate judgment—it’s to protect it. By letting Claude Code handle the glue work and information wrangling, I preserve energy for high-leverage thinking: positioning, sequencing, and trade-offs. Build your personal operating system now, and make this the year your product practice runs with clarity and composure.


    Inspired by this post on Pendo – Best Practices.


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  • Stop Groupthink in Hiring: Proven Product-Led Tactics to Make Faster, Fairer Decisions

    Stop Groupthink in Hiring: Proven Product-Led Tactics to Make Faster, Fairer Decisions

    Is hiring broken—or just badly designed? I’ve been sitting with that question after a recent conversation that crystallized what I see across product organizations: AI-fueled application overload, sprawling interview loops, and fuzzy criteria that invite groupthink at exactly the wrong moments. If you’ve ever watched a promising candidate stall out late in the process, you’re not alone. Listen to this episode on: Spotify | Apple Podcasts.

    Here’s the reality I’m observing in the market: Layoffs and hiring freezes have flooded the funnel, while AI tools make it trivial to submit hundreds of applications. Companies are overwhelmed, so they respond by adding more interviews and more stakeholders, hoping more touchpoints equal better signal. In practice, that complexity often dilutes accountability and increases noise—especially for product management leadership roles where clarity, not consensus theater, determines success.

    I’ve seen too many offers derailed by “one last step.” A candidate clears every structured interview, then a casual lunch or unframed panel suddenly becomes the deciding factor. The team isn’t briefed on what to evaluate, one lukewarm comment lands, and group dynamics cascade into a no-hire. That’s not rigor—it’s randomness masked as prudence.

    Groupthink ≠ good hiring decisions. When everyone has veto power, risk-averse no-decisions become the default. Focus-group-style interviews create bias, not signal, and “culture fit” often becomes a proxy for stereotyping or personal preference. As product leaders, we’d never ship a feature based on vibes; we shouldn’t make high-stakes hiring calls that way either.

    There’s a better way—and it mirrors how we run great product discovery. Define who you’re hiring before writing the job description. Set clear success metrics for the role. Assign each interviewer specific criteria to evaluate. Treat hiring like product discovery: intentional, structured, and evidence-based. In my teams, that looks like tight scorecards, interviewer calibration, and a decision owner who synthesizes evidence—not a popularity contest where the loudest voice wins.

    Chemistry checks still matter, but only when we define what collaboration actually means for the role. Introversion, debate style, or lunch-table small talk are not performance indicators. I look for behaviors we value in empowered product teams—clarity of thinking, healthy dissent, co-creation under constraints—often via a real working session with the future product trio. Diverse teams outperform homogenous ones, even if not everyone “vibes,” so I optimize for complementary strengths over sameness.

    If you’re a candidate, remember: When a process feels broken, it’s often not about you. Ask how you’re being evaluated to gauge process maturity; a thoughtful team will happily walk you through their rubric and what great looks like. For structure and support, I’ve seen “Who: The A Method for Hiring” help leaders clarify requirements; “Never Search Alone” and joining a Job Search Council (JSC) can give you peer accountability and sharper narratives. For current openings, I regularly point PMs to Scott Baldwin’s PM job postings on LinkedIn.

    My challenge to fellow product leaders: Audit your hiring process the way you’d audit your roadmap. Where are decisions getting stuck? Where are you over-indexing on consensus and under-indexing on evidence? Tighten the criteria, streamline stakeholders, and instrument the funnel so you can learn and improve. The payoff is faster, fairer, more confident decisions—and teams that reflect the rigor we expect in product strategy and stakeholder management.

    What’s one change you can make this week—reworking the scorecard, calibrating interviewers, or replacing an unstructured lunch with a real collaboration exercise? Small improvements compound. Let’s build hiring systems that are worthy of the talent we’re trying to attract.


    Inspired by this post on Product Talk.


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  • Stop Measuring Output, Start Driving Outcomes: My February CDH Book Club Guide

    Stop Measuring Output, Start Driving Outcomes: My February CDH Book Club Guide

    “Continuous Discovery Habits” turns five this year, and I’m celebrating by reading the book together with you. Each month, I’m releasing an in-depth reading guide designed for empowered product teams and product trios—complete with the chapters we’ll read, a preview of the key concepts, short shareable videos, individual and team discussion prompts, team exercises you can run immediately, and additional reading to go deeper.

    We’ll discuss each month’s reading in the comments, and we’ll gather quarterly for live calls. If you’re joining late, no problem—I’ll be monitoring comments throughout the year. Start with the current month or go back to January (https://www.producttalk.org/lets-read-continuous-discovery-habits-together-january-2026/). Jump in where it serves you best, ask for help, share what’s working, and connect with other readers any time.

    If you want to participate, grab a copy of the book (https://amzn.to/3hGkNYT?ref=producttalk.org)—or dust off your old one—share the “Spread the Love” videos with your colleagues, set aside time to run the team exercises, and register for the community sessions. Let’s do this.

    This Month’s Reading

    Chapters: Chapter 3: Focusing on Outcomes Over Outputs

    Estimated reading time: ~22 minutes

    This chapter zeroes in on the critical difference between business outcomes and product outcomes—and why it matters which one your team is assigned; how to translate lagging business metrics into actionable product outcomes you can actually influence; why setting outcomes should be a two-way negotiation between leaders and product trios; when to start with a learning goal versus a performance goal; and five common anti-patterns that derail outcome-focused teams. Need a copy? Grab the book (https://amzn.to/3hGkNYT?ref=producttalk.org).

    Share the Love with Friends and Colleagues

    We learn best in community. I like to seed conversations across my org with short, high-signal content—especially when I’m shifting a culture from outputs to outcomes and sharpening OKRs. Use these short videos to bring peers into the conversation and invite them to read along:

    “What’s an outcome?” (https://videos.producttalk.org/videos/ea9fdab71d1ee3c263/whats-an-outcome?ref=producttalk.org) — The real value of starting with an outcome. “Business outcomes vs. product outcomes” (https://videos.producttalk.org/videos/069fd5b5101ee2c78f/business-outcomes-vs-product-outcomes?ref=producttalk.org) — Why product teams need product outcomes, not business outcomes. “What’s the difference between OKRs and outcomes?” (https://videos.producttalk.org/videos/069fdab61919e4c38f/whats-the-difference-between-okrs-and-outcomes?ref=producttalk.org) — Any outcome can be represented as an OKR. “Understanding revenue model formulas” (https://videos.producttalk.org/videos/799fd5b5101ee2c4f0/understanding-revenue-model-formulas?ref=producttalk.org) — How to identify the business outcomes your company cares about. “Revisit your outcome every quarter” (https://videos.producttalk.org/videos/449fd5b4111ee0cfcd/revisit-your-outcome-every-quarter?ref=producttalk.org) — Don’t abandon your outcome, but do revisit how you measure it.

    Reflect and Discuss What You Read

    Reflection is the conversion rate optimizer for learning. When we pause to discuss what we’re reading, we retain more and apply it faster—especially in product discovery and product strategy work. This chapter challenges us to update our definition of success: away from features shipped and toward outcomes achieved. This month, I’m examining my own relationship with outcomes—where I’ve been rigorous, where I’ve drifted, and how I can help my teams strengthen day-to-day behaviors.

    Individual Reflection

    If your team isn’t working toward an outcome, look at the features or projects on your roadmap and ask: What impact are they supposed to have? If they succeed, what customer behavior or business result would change? If your team does have an outcome, consider whether it’s a business outcome, a product outcome, or a traction metric—and how that choice shapes your daily decisions and discovery cadence. Finally, think about the last time your team’s outcome changed: Was it a deliberate strategic shift, or did it feel like ping-ponging from one priority to the next?

    Team Discussion

    As a team, classify your current outcome: Is it a business outcome, a product outcome, or a traction metric? If it’s a business outcome, identify the leading customer behaviors that would signal momentum; if it’s a traction metric, broaden it to a product outcome that gives you more room to explore. Then, name which of the five anti-patterns (pursuing too many outcomes, ping-ponging, individual outcomes, outputs as outcomes, or tunnel vision) shows up for you and pick one concrete change. Finally, assess how outcomes are set: Are they handed down, or does your product trio co-create them? What would it take to make this a true two-way negotiation?

    Put It Into Practice

    Understanding the difference between business outcomes and product outcomes is table stakes. Translating one into the other is where product management leadership shows up. These exercises will help you connect company goals to customer behavior, avoid outcomes vs output OKRs traps, and increase your span of control over meaningful change.

    Exercise: Map Your Revenue Model

    Time: 30 minutes. Do this: Solo first, then share with your team. Start with this question: How does your company make money? Write out the formula for your revenue model. For example, a subscription business might be: Revenue = Number of Customers × Average Monthly Spend × Retention. Once you have the formula, identify each variable as a potential business outcome. Then, for each business outcome, brainstorm two to three product outcomes (customer behaviors or sentiments) that might be leading indicators. Which of these product outcomes is your team best positioned to influence?

    Exercise: Audit Your Current Outcome

    Time: 45 minutes. Do this: With your product trio. Take your team’s current outcome and run it through a quick diagnostic: Is it a business outcome, product outcome, or traction metric? If it’s a business outcome, what product outcomes might drive it? If it’s a traction metric, how might you broaden it to a product outcome? Is it a leading indicator or a lagging indicator? Can you measure progress weekly, or do you have to wait months? Is it within your team’s span of control? Based on your answers, draft a revised outcome that offers more actionable feedback while still connecting to business value, and prepare to discuss this with your product leader.

    Go Deeper: Additional Reading

    If you prefer an audio summary of this month’s reading, including the book chapter and the resources below, I’ve included an audio version at the end of this post for paid subscribers.

    Related In-Depth Guide: Shifting from Outputs to Outcomes: Why It Matters and How to Get Started (https://www.producttalk.org/shifting-from-outputs-to-outcomes/).

    Supplementary Reading: Empower Product Teams with Product Outcomes, Not Business Outcomes (https://www.producttalk.org/2020/05/product-outcomes/). Defining Product Outcomes: The 8 Most Common Mistakes You Should Avoid (https://www.producttalk.org/2022/12/defining-product-outcomes/). Understanding How Product Outcomes Connect to Revenue and Costs (https://www.producttalk.org/2023/04/connecting-product-outcomes-to-revenue-and-costs/). Product in Practice: Iterating to an Actionable Outcome at tails.com (https://www.producttalk.org/2020/08/actionable-outcomes/). Product in Practice: Iterating on Outcomes with Limited Data (https://www.producttalk.org/2023/12/iterating-on-outcomes-with-limited-data/). Measurable Outcomes – All Things Product with Teresa Torres and Petra Wille (https://www.producttalk.org/measurable-outcomes-all-things-product-podcast-with-teresa-torres-petra-wille/).

    Other Voices: The Business Equation by Brett Bivens (https://venturedesktop.substack.com/p/the-business-equation?ref=producttalk.org). KPI Trees: How to Bridge the Gap Between Customer Behavior, Product Metrics, and Company Goals by Petra Wille and Shaun Russell (https://www.petra-wille.com/blog/kpi-trees-how-to-bridge-the-gap-between-customer-behavior-product-metrics-and-company-goals?ref=producttalk.org). Persistent Models vs. Point-In-Time Goals by John Cutler (https://cutlefish.substack.com/p/tbm-2553-persistent-models-vs-point?ref=producttalk.org). Is It Time to Ditch the Old SaaS Metrics? by Kyle Poyar (https://openviewpartners.com/blog/saas-metrics-plg/?ref=producttalk.org). How Engagement Metrics Can Be Misleading by Oleg Yakubenkov (https://gopractice.io/blog/how-engagement-metrics-can-be-misleading/?ref=producttalk.org). Subscription Churn Metrics and Benchmarks for Operators by Elena Verna (https://www.elenaverna.com/p/subscription-churn-benchmarks-and?ref=producttalk.org).

    Related Courses: Business Fundamentals: Navigate Your Business Context with Confidence (https://learn.producttalk.org/course/business-fundamentals?utm_source=Product+Talk&utm_medium=cdh-book-club-february-2026).

    Our Live Discussion Schedule

    Our live discussion sessions are for paid subscribers and will not be recorded. Invitations will go out to Supporting Members and CDH Members (http://members.producttalk.org/?ref=producttalk.org) two weeks before each event—reserve time on your calendar now so you can participate fully and bring real examples from your team.

    Wednesday, March 18, 2026: 9am–10am PDT and 4pm–5pm PDT. Tuesday, June 16, 2026: 9am–10am PDT and 4pm–5pm PDT. Thursday, September 17, 2026: 9am–10am PDT and 4pm–5pm PDT. Wednesday, December 16, 2026: 9am–10am PST and 4pm–5pm PST.

    Audio Summary

    Prefer to listen? I’ve included an audio summary—Stop Measuring Code Start Measuring Behavior—at the end of this post so you can review the main ideas on your commute or between meetings.

    I’m excited to dive into outcomes with you this month. As a product leader, I’ve seen teams transform their product discovery, product roadmapping and sprint planning, and OKR quality when they anchor on clear product outcomes tied to business value. Let’s build that muscle together and make this a quarter where we stop measuring output and start driving outcomes.


    Inspired by this post on Product Talk.


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