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What Is Product Usage Analytics? A Comprehensive Guide for Product & User Teams

Jul 24, 2024

What users say isn’t always the same as what users do.

Let’s say your customers tell you what they most want is full customization options on your platform. But then you do product usage analytics and find they’re barely using the personalization features you already have. That could be a sign you’d be better off optimizing onboarding, feature discovery, and the overall experience rather than piling on complexity with custom capabilities.

Without usage analytics showing you exactly how users experience your product day-to-day, you risk missing critical signals about what’s really driving activation, value, and long-term stickiness. You could easily invest time and energy in the wrong places based on misaligned feedback — or your own hunches.

This guide will show you how to avoid those pitfalls with effective product usage analytics that eliminate guesswork and empower you to make data-backed decisions. You’ll also learn everything you need to connect granular user behavior insights to customer and business context like engagement, retention, and revenue.

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What Is Product Usage Analytics?

Product usage analytics is a data-driven approach to understanding how users interact with your digital product or service. It involves collecting and analyzing granular data on user behavior within the product, such as top-line metrics around how many people are using your product and converting within the product, as well as feature usage, navigation patterns, drop-off points, conversion moments, and individual clicks, hovers, and scrolls.

This data gives teams an objective lens into the user experience, which rounds out the picture you get from survey or interview feedback and customer research.

Here’s how product expert C. Todd Lombardo, author of Product Research Rules, put it during the Product Excellence Ask Me Anything webinar:

Qualitative research helps tell us why customers are using a product, and quantitative research helps tell us what they’re doing. The combination of those two things gives you a lot of power as a product manager.

Usage analytics help teams identify impactful features and double down on what users love while removing blockers that drive churn. For example, let’s say users are giving high ratings to your streaming app recommendation engine in surveys, but usage data reveals most people mostly just browse the topmost “popular” carousels to find content. This is valuable information that could help you direct your product roadmap toward optimizing content discoverability through the feeds your users use most — or it could point you toward discovering why the recommendation engine is underutilized and how to improve its UX.

Product Usage Analytics vs Marketing Analytics vs Business Intelligence

Traditionally, there have been clear separations between different domains of analytics aimed at addressing distinct business needs, with separate tools for each.

Marketing analytics has focused on measuring the effectiveness of advertising campaigns, traffic sources, conversion rates, and customer acquisition funnels. It traditionally involves using tools like Google Analytics as well as product analytics and business intelligence solutions to understand how users discover and enter your product ecosystem.

Product usage analytics has historically lived in its own silo. Traditional product analytics tools operated as a “black box,” instrumenting and collecting data from apps or digital products in isolation. This fragmented approach has prevented teams from getting a full view of the customer journey and understanding how product experiences influence broader business outcomes.

Meanwhile, business intelligence centers on high-level operational reporting and getting answers to strategic questions using organization-wide data sources including ERP, CRMs, finance systems, and more. BI tools like Tableau and Looker can pull directly from a centralized data warehouse, letting teams model and visualize data from a single source of truth.

But attempting to integrate product usage data into traditional BI tools to answer business questions is a challenge. It generally involves complex, expensive, and time-consuming reverse ETL pipelines to move product data into the warehouse, leading to data inconsistencies and governance issues — and BI tools don’t have the specialized capabilities to effectively analyze and visualize event-level usage data.

Luckily, we’re now seeing the strict boundaries between different analytics types blurring as businesses demand a unified, holistic view of the complete customer experience across all touchpoints.

More and more businesses are taking a warehouse-first approach, building a composable data stack that lets them bridge previously siloed customer, product, and business data.

With a centralized, modernized data stack, companies can take full advantage of next-gen solutions like NetSpring, which provides self-service access to product usage data streams enriched with full marketing, sales, support, and financial context.

This gives you full 360 insights into the customer’s journey and helps you connect the dots between user experience and quantifiable business impact — which is the first step to optimizing the entire customer journey and making data-backed decisions that drive product-led growth.

Want to learn more about the latest trends in product and customer journey analytics?

Read about:

The Convergence of Business Intelligence and Product Analytics

and

Bridging the Gap between Marketing and Product Analytics

Moving Away from Siloed Usage Analytics

C. Todd Lombardo says great product usage analytics comes from getting curious and trying to understand what users are experiencing in your product — and why.

He recommends that teams start with questions like: “What are people doing when they first log into your product? Is there a particular landing page they often go to? Is your default landing page skewing the results in some way?”

But he also highlights how important it is for product teams to combine product usage data with qualitative customer insights and other customer context.

For instance, he’s had success analyzing customer support tickets to “know what customers were complaining about, what problems we were solving well, and what problems we had failed to solve”. He recommends incorporating a range of data “to see how your current customers are using your product and whether anything is changing. If you look at last year, what were the common themes and trends you saw? How do they compare with this year?”

If you look at in-product usage in isolation, you’ll miss critical context around the full user journey across marketing, sales, customer service, and revenue touchpoints before and after someone becomes an active user. You might even be blind to important information — like how many users are dropping by phone — that skews your churn metrics.

That’s why next-generation product analytics platforms like NetSpring make it easy to get a 360-degree, omnichannel view of your product and customer journey by working off your data warehouse, combining in-product data streams with other sources like:

  • Marketing engagement data (campaign interactions, ad engagement, etc)
  • Sales activity data (prospect touches, demos, negotiations, etc)
  • Service and support data (tickets, chat conversations, knowledge base arming, etc)
  • Billing and payment data
  • User research and feedback data

A holistic, multi-channel analytics approach gives product teams the insights they need to optimize everything from customer acquisition through retention and expansion.

Benefits of Product Usage Analytics

Product usage analytics deliver insights that empower product and user teams to strategically allocate resources, improve user experiences, and drive product growth.

Let’s look at the top three benefits in more depth.

Benefit 1: Make Data-Driven Decisions

Product usage analytics provide objective, quantifiable insights into how users interact with your product, which means you can integrate data into your biggest decisions instead of relying on assumptions or anecdotal feedback.

With hard data at your fingertips, you’ll be able to prioritize initiatives on the product roadmap, be strategic about where you put your resources, and feel confident you’re building products that align with user needs and behaviors.

Basing your product strategy and development on empirical user behavior data combined with customer journey insights keeps you laser-focused on initiatives that will measurably impact key business metrics like activation, engagement, conversion, and retention.

Next-generation product analytics platforms empower you to connect granular usage insights to downstream impacts on revenue, giving you the full picture of how optimizing user experiences can directly improve growth and financial performance goals for all teams.

For example, usage data may reveal a segment of power users who are heavily engaging with a specific set of premium features. Connecting these usage insights with information on customer acquisition paths, preferences, and expansion revenue lets you focus product investments and go-to-market campaigns on capturing and retaining your highest-value cohorts.

Benefit 2: Uncover User Frustrations and Optimize UX

Usage analytics give you a granular view, meaning you can spot areas of frustration or confusion that may not be apparent from other feedback channels.

By identifying these pain points, teams can take proactive steps to optimize the user experience, looking to reduce friction and improve product engagement and customer satisfaction, and retention.

As well as pinpointing in-product blockers, next-gen analytics tools can help you explore other frustration signals across the customer journey. For instance, by combining product usage analytics with support data, you might realize that a large number of users are contacting the help desk after interacting with a particular feature and following up on their outcomes. This could give you valuable insights on where you need UX redesigns, better in-app guidance, or contextual feature help.

Benefit 3: Improve Product Stickiness and Retention

Analyzing usage patterns shows you which user behaviors, actions, and experiences drive long-term engagement and retention. By understanding what keeps users coming back vs causing them to churn, teams can focus their product efforts on the highest-impact areas.

That might mean understanding whether users who complete a specific onboarding workflow or achieve a particular “aha!” moment show higher retention downstream — meaning you should guide users toward these critical milestones. Or, by identifying features with low adoption and optimizing their UX and discoverability, you could feed users more value, increasing their satisfaction and retention rates.

Usage analytics can also surface patterns showing which behaviors correlate with the risk of unsubscribing or churning — for example, users who go an extended period without engaging with the product may be much more likely to cancel. You can set up automated analytics alerts for certain metrics and behavior patterns so you can act fast to prevent churn or dissatisfaction.

Key Product Usage KPIs to Track

Monitoring important product usage KPIs gives you a high-level sense of how well your product delivers value to users and helps you spot any issues. But you need to track the right ones and be able to connect quantitative data to the “why” behind the numbers.

While the specific metrics will vary based on your product and goals, here are some of the most important ones to track:

Active Users (DAU, WAU, MAU)

These measure the number of unique users engaging with your product over daily, weekly, or monthly periods. They help you take the pulse of trends in product engagement and user retention over time. They can also alert you to potential issues — if you see your app’s DAU drops after a feature release, for instance, it could signal a blocker or performance that needs investigation.

Feature Adoption & Usage

This is about tracking unique users leveraging each feature, visit/session metrics, average time in the feature, and any other key events. Understanding these metrics helps you identify and promote features users actually adopt and find valuable.

Conversion Rates

Keeping an eye on conversions (such as the percentage of users converting to paid tiers from free trials or freemium) can point you to the most/least effective conversion paths and the main “aha!” moments you should optimize.

Activation Metrics

Activation metrics like time to value, time to activate, and activated user feature adoption show you how many new signups or trial users are taking critical actions that move them toward becoming engaged users with high product adoption rates.

Pro tip:

Andrew Caplan, Head of Growth at Postscript, shared his experiences on the importance of tracking activation:

Agreeing on what a successfully ‘activated’ account looked like and understanding all the individual actions to get there allowed us to take our new user onboarding to the next level. The team is able to clearly prioritize ideas and projects since we all agree what success looks like. That activation metric is paying huge dividends to our users and our company.

User Paths & Drop-Offs

Detecting common paths, funnels, and drop-off hotspots shows you where your users struggle, get stuck, or abandon the product. That helps you identify the most urgent, highest-impact UX issues and priorities for reducing points of friction.

4 Tips for Effective Product Usage Analytics

Even with the right metrics in place, maximizing the value of usage analytics requires an intentional approach.

Use the following four tips to make sure you can translate analytics into strategic, actionable insights.

1. Build a Modern Data Stack

To maximize your product usage analytics, you need a data infrastructure that eliminates silos and allows you to combine product event streams and behavioral data with other customer and business sources. Trying to analyze product analytics in isolation severely limits your ability to connect real user experiences with overall business goals and outcomes.

We recommend investing in a modern, composable data stack that lets you instrument event streams from tools like Segment, Snowplow, or Rudderstack alongside other data sources like application databases, CRMs, marketing automation tools, and more. All this first-party data then flows into your cloud data warehouse (Snowflake, BigQuery, Redshift, etc.), creating a centralized, secure repository.

You can then use a solution like NetSpring on this unified data, letting you surface granular product analytics connected with customer journey insights and downstream business impacts.

2. Align your Goals and KPIs with Business Objectives

Don’t just instrument event tracking and spin up product usage dashboards for the sake of it.

The most effective product teams use analytics purposefully to make data-driven decisions that bring them closer to their North Star objective.

Start by mapping out the processes and customer journeys involved in achieving key goals like:

  • Reducing user/customer churn and boosting retention
  • Accelerating time-to-value for new users
  • Improving activation and conversion rates from trials/freemium
  • Identifying and nurturing high-value customer segments
  • Driving expansion revenue from upsells, cross-sells, and add-ons

Then work backward to determine the milestones, user behaviors, and analytics you need to track at each stage of the journey to optimize for your objectives.

For example, if you’re focused on reducing customer churn, you may want to focus most on metrics like stickiness signals (DAU/MAU), power user behaviors, support ticket volumes, payment failures, and more. Tying these product usage analytics together with financial data will let you quantify the revenue impact of churn so you can prioritize the highest-leverage initiatives.

3. Use Ad-Hoc Analytics to Drill Down Deeper

Out-of-the-box dashboards are vital for quick, easy monitoring of your product usage and customer analytics. But they shouldn’t be the endgame. You also need to be able to go beyond the surface and flexibly explore the data, asking new questions as you learn more.

Tools like NetSpring empower your team to do ad hoc analytics based on flexibly combining unified data, slicing, and dicing across all dimensions to identify key patterns and root causes.

For example, let’s say you notice an issue with a key user activation metric from one of your dashboards. With ad-hoc exploration, you could easily expand your analysis by stitching together user event streams with related support tickets or knowledge base views, pulling in marketing and sales data, building cohorts comparing activated vs non-activated users — and continually adjusting your definitions and filters.

As Brian Balfour, former VP of Growth at Hubspot, puts it:

As you gain fresh insight from your data, it opens the door to new questions.

Ad-hoc analytics lets you drill down and pursue the insights you need, making sure you’re not constrained by static dashboards and reports.

4. Democratize Data Across Your Organization

Even the most powerful and insightful product usage analytics won’t translate to organizational impact if you don’t have a data-driven culture.

That means supporting teams to base decisions on analytics and data-backed insights, rather than operating off gut instinct.

To do this, make sure product leaders model this from the top down, embedding data into decision-making processes like roadmap planning, resource allocation, debriefs, and more.

You’ll also need to enable cross-functional stakeholders with training and educational resources, so they understand not just how to read reports, but how to ask good analytical questions, develop data-driven hypotheses, and use tools to find insights.

Most importantly, you’ll need to provide intuitive, self-service analytics tools that let teams flexibly explore analytics to get answers to their questions without the expense and bottlenecks of relying on data engineers.

Driving Continuous Improvement with Product Usage Analytics

Product usage analytics are a goldmine of insights that can help drive continuous product improvement. But the real magic happens when you put this data into context and connect it with other data sources across the user journey.

Combining product usage analytics with CRM data, customer feedback, and business insights is the key to making informed product decisions and building experiences people genuinely love.

That’s where NetSpring’s warehouse-native platform comes in. By tapping directly into your data warehouse as a unified source of truth, NetSpring gives you unprecedented 360-degree visibility into the entire customer journey and product experience.

NetSpring empowers teams to continuously innovate and optimize, making strategic, data-backed decisions that drive sustainable product-led growth.

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