Product performance isn't one metric; it's the sum of all touchpoints, from support tickets to app reviews. These disparate inputs all roll up into the ultimate North Star metric: user engagement.
Instead of focusing solely on conversion rates, measure 'engagement quality'—metrics that signal user confidence, like dwell time, scroll depth, and journey progression. The philosophy is that if you successfully help users understand the content and feel confident, conversions will naturally follow as a positive side effect.
Metrics like "Marketing Qualified Lead" are meaningless to the customer. Instead, define key performance indicators around the value a customer receives. A good KPI answers the question: "Have we delivered enough value to convince them to keep going to the next stage?"
Vanity metrics like views don't drive business results. A better approach is to focus on "conversation metrics"—the quality and quantity of interactions in comments and DMs. Speed and personalization in responses build relationships and are a stronger indicator of impact.
The current AI hype cycle can create misleading top-of-funnel metrics. The only companies that will survive are those demonstrating strong, above-benchmark user and revenue retention. It has become the ultimate litmus test for whether a product provides real, lasting value beyond the initial curiosity.
Instead of vanity usage metrics, Wiz focuses on a core customer outcome: helping customers resolve all critical risks. They gamified this by creating the 'Zero Criticals Club.' This metric proves the product is driving real organizational change, a key indicator of value and stickiness that is hard to replace.
Traditional product metrics like DAU are meaningless for autonomous AI agents that operate without user interaction. Product teams must redefine success by focusing on tangible business outcomes. Instead of tracking agent usage, measure "support tickets automatically closed" or "workflows completed."
Go beyond simple ROI to measure pilot success. Focus on: 1) Time to Value: delivering measurable outcomes within weeks. 2) Expansion Velocity: enabling the customer to achieve new business growth. 3) Engagement Depth: the customer actively pulling your product into new functions and creating a wishlist of use cases.
While pipeline is important, the real signal of a successful AI-driven business is the depth of customer engagement. Are customers expanding beyond their initial use case? Are developers integrating your tool into core workflows? Are communities actively discussing you? These leading indicators show a stronger foundation than top-of-funnel metrics alone.
Open and click rates are ineffective for measuring AI-driven, two-way conversations. Instead, leaders should adopt new KPIs: outcome metrics (e.g., meetings booked), conversational quality (tracking an agent's 'I don't know' rate to measure trust), and, ultimately, customer lifetime value.
Product teams focus on technical metrics like scalability, but customer-facing teams see success differently: it's when a client says they "couldn't run their business" without the product. The goal is to merge these two definitions by translating technical achievements into tangible customer outcomes.