Convincing more trial users to become paying customers.
How usage analytics identifies if the features that contribute to ROI are utilized in trials.
For: Product Management and Marketing
Software product management’s assumptions about a feature’s benefits don’t always align with customer experience. An accounting software company faced this challenge. After investing heavily in an innovative feature for managing rolling budgets, the product and marketing teams did not see the expected uptick in trial conversions.
To increase adoption, the company needed to know how different subgroups of users were reacting to this new “killer” feature — and whether they were using it at all. They also needed to test go-to-market messaging to see if their current positioning was resonating with new and existing customers.
The company implemented Revulytics Usage Intelligence to discover how long it took users to find and adopt the new feature, and what software usage patterns led to (or away from) adoption. Using event tracking with filtering and segmentation, the company generated highly granular metrics on how different types of users engaged with the product, gaining insights into which customers should have been expected to use its killer feature, and why more of those customers weren’t using it. Churn reports helped identify differences in the behavior patterns between purchasers and those who abandoned without ever using the feature, offering information that could be used to move prospects from one group to the other.
Significantly increased feature adoption and trial conversions.
Using Revulytics’ usage analytics, the company quickly learned that paying users weren’t adopting its highvalue feature until months after they began using the software. Most trial users never saw or used it before their trials expired. With detailed software usage information, the company could plan and execute effective interventions.
First, it leveraged ReachOut™ to send contextually relevant messages to trial users while they were using a related feature, or if they hadn’t used the feature within the first week of the trial. ReachOut messaging capability includes a YouTube video pop-up and a video embedded directly in the software’s own help facility.
Second, product development ran A/B tests with separate builds presenting different methods for accessing and using the new feature. Revulytics usage analytics enabled product management to discover which method generated more usage. It adopted that method in its next product release.
Following these changes, feature adoption increased dramatically among trial users, leading to a significantly higher conversion rate — and substantial revenue growth. Similar strategies were launched for existing customers.
The company now incorporates usage analytics into all major new feature introductions, gaining detailed insight into software usage in real (not just beta test) environments. This information quickly feeds back to product and marketing teams, helping them refine user interfaces and focus their work more effectively to drive success. By identifying patterns in the sets of features used by different types of prospects, the software provider has also refined the way it plans its offerings, shaping higher-cost professional” or “ultimate” versions more effectively.
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