For companies with a large volume of free users or aggressive land-and-expand strategies, it’s important to identify the subset of users who are indicating a propensity to spend money, so marketing and sales can target them to drive conversion or expansion. These users are Product Qualified Leads (PQLs). Finding them is key to product-led growth.
The high-level inputs that should help teams identify PQLs are:
We commonly see teams rushing to identify PQLs without rigorously identifying real value metrics. This rush is a mistake. It results in identifying incorrect PQLs and leaving great PQLs on the cutting room floor.
The problem is one of noise—there are thousands of product usage metrics. Which ones are the true and real indicators of conversion?
We help our customers identify these metrics by drawing upon our experience at Dropbox.
Here’s a methodology to help you in your PQL journey.
A few examples of what’s probably NOT a value metric:
A few examples of what probably IS a value metric:
A cross-functional team comprising product management, growth, marketing, sales, demand generation, and product analytics should be given the mission to collectively find value metrics.
The process of finding value metrics is simple:
Refresh the entire process once a quarter, especially if you’re a fast growing and dynamic company that’s adding new product features and capabilities.
Step 1: Come up with the big list of value hypotheses
It’s essential at this stage to think of 20+ hypotheses and not over-restrict up front. Often, we find teams trying to discuss their way to the “top” one to three hypotheses. This scarcity mindset is biased and often results in true value indicators being left out. Just remember, step two is to reduce the list, but scientifically. So give yourself permission to think broadly.
Start with one simple example to help the v-team get oriented. Here’s one:
A customer isn’t buying a drill, they’re buying a hole. They’re not buying a hole, they’re buying a picture hanging on the wall. They’re not buying a picture on the wall, they’re buying their favorite memory with their family. That’s the difference between product features and value.
We like these three techniques for value hypothesis generation.
The why question
Ask why your users use your product. For each answer, ask why again. And then again. Usually by the third why, you have true value identified.
An example:
From this exercise, we can create three distinct value metric hypotheses (with varying potential signal strength):
The money questions
In B2B products, often the end users are not the people writing checks. That’s why understanding value from the buyer’s perspective is as important as the end user. The first technique got us the end user perspective. This question helps us get to value for the buyer.
So ask these two questions:
An example (from Mailchimp):
Step 2: Validate hypotheses to come up with the small list
Now that we have a list of 10-30 hypotheses, it’s time to validate them.
Let’s say we have a hypothesis that users who convert share many files compared to users who don’t convert.
Rinse and repeat for each hypothesis. This should rule out many hypotheses. We often hear that teams find this process insightful because their assumptions get challenged and their understanding of what drives revenue evolves.
Once we know the real value metrics, a good lookalike model can identify PQLs.
Intuitively, the model finds unconverted or unexpanded customers that look most like converted or expanded customers based on descriptive attributes (such as title, industry, and segment) and value metrics. If an unconverted customer is identical to converted customers in every way, they get the highest score, and vice versa.
The output of this model is not two buckets (PQLs or not PQLs). It’s a score. Teams can decide cutoff points that make sense for them.
A good model shouldn’t only provide the score, but also detailed information about why a high-scoring lead is getting a high score and which users within that account are the most interesting. This enables marketing and sales teams to target not only the right PQLs but also the right users within these, and to use the right messaging / next best action.
At Falkon, we offer this entire solution and recommend next best actions on how to push these PQLs through the funnel. If you’re interested in learning more, reach out.
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