Startups

Building a PLG motion on top of usage-based pricing

Comment

donut with pink toppings on a pink table
Image Credits: miguelangelortega (opens in a new window) / Getty Images

Puneet Gupta

Contributor

Puneet Gupta is the CEO and co-founder of Amberflo.io. He was formerly a general manager at AWS.

More posts from Puneet Gupta

I spent several years as a general manager at Amazon Web Services and my teams launched two Tier 1 services: Amazon CloudSearch and Amazon OpenSearch.

Like every product at AWS, these were scaled with a product-led growth (PLG) market motion. There were no gated features or subscription tiers to choose from. Instead, a usage-based pricing (UBP) model has always been used to charge based on consumption, directly correlated to the value being delivered to the user.

AWS pioneered the product-led movement by offering its entire suite of offerings on a fully pay-as-you-go basis when it came to market in 2011. Developers could immediately begin using the services in the free tier to realize value, and there was no mandatory bundling or gatekeeping account managers. In 2011, AWS was far ahead of its time. It is only now that we are seeing companies of all sizes pivoting to a product-led motion.

Usage-based pricing is an essential component of any PLG strategy. In fact, it’s my belief that you cannot have true PLG without UBP. To be truly product led there should be no friction when adopting the product and realizing value. The doors should be wide open and new users should be able to come in and use the tools.

To succeed with any product-led strategy, it’s essential to have real-time awareness and granular visibility into what your users are actually doing with the product, which features are being used and how value is being realized. The following steps are informed from the process we followed in the early days of launching and scaling services at AWS from day one. This process allows you to remove emotion and gut feel from pricing and product decisions while allowing customer usage and consumption to lead your decision-making and help your business scale.

How your company can adopt a usage-based business model like AWS

Step 1: Invest in usage instrumentation

Usage data is the foundational building block of any product-led motion. Usage provides the intelligence that drives all other functions, from pricing and packaging to sales, support engagements and even product roadmap development. This data shows which features are driving traffic and adoption and where you need to scale your efforts to continue meeting user needs.

Most organizations cannot easily implement usage instrumentation at scale, and the existing tool sets for monitoring and observability do not deliver on requirements for total accuracy and auditability. Metering solutions were born out of this need for a new category of technology that could accurately track usage for any resource, at any scale, in real time and make this data available for analytics and reporting.

Continue to instrument new features and products as they are developed to curate an exhaustive set of usage data that you can analyze and base business decisions on.

Step 2: Make usage data available throughout your business

Consistently assess and ensure that each department has access to the insights they need to do their work. In a product-led motion, the product is the primary vehicle through which you engage with customers; other go-to-market actions are designed to provide support. Roles across the organization can effectively leverage usage data with the correct tools and strategies.

Ensure that your meter data pipeline is the single source of truth for data on usage and consumption. You should take care to identify what product and usage data each role across your organization needs to be successful. The data should be indexed and accessible to permissioned users.

Some common examples include:

  • Integrating the usage pipeline with CRM solutions so customer-facing teams like sales and support have detailed and real-time access to exactly how customers are using the product. This can help inform personalized, proactive outreach for cross/upselling and for setting up positive support experiences that build trust and goodwill.
  • Real-time revenue recognition as usage occurs. Revenue recognition in usage-based pricing is more complicated; the entire contract value cannot be fully booked at the moment of payment (in the common case where customers prepay for bulk usage) but instead needs to be recognized in real time as the corresponding usage takes place.
  • Identify features that have high or low adoption to inform marketing efforts. Develop case studies and collateral to demonstrate value for high-adoption features to maintain momentum while also identifying low-adoption areas and creating content and campaigns to increase awareness.
  • Product management and engineering. Having a granular, real-time view into product usage and consumption is the holy grail for product and engineering teams in a product-led business. Use this data to inform roadmap development and feature prioritization based on what customers are using and where gaps emerge.

Step 3: Analyze usage data to understand value drivers and usage patterns

Having this data aggregated and organized allows you to eliminate any decisions based on “gut feel” or “instinct.” It is critical to know precisely how customers are using your product. While a savvy operator may have an intuitive idea of usage and adoption, digging into the data will always yield fresh and surprising results. It is critical not to become complacent and always use customer usage as the north star metric to guide your business.

That said, take care not to let analytics become a substitute for interacting with customers. When you have robust instrumentation in place, you should be able to clearly see which features or areas of the product are driving adoption and delivering value. But, real-world interactions deliver so much more nuance and color to the overall user story that is invaluable for completely understanding customer needs and pain points.

Over time, you should begin to uncover more sophisticated insights from the usage pipeline, such as checkpoints on the typical customer onboarding journey from signup, or identifying the important levers for activating, increasing and retaining users on the platform.

Complement these usage analytics with proactive customer outreach and interactions to build deeper relationships and complete the full picture of users goals, pain points and typical use cases. The insights gathered from the usage pipeline and customer feedback should be leveraged in a continuous feedback loop by all functional areas of the business to operate and scale successfully.

Step 4: Leverage usage and adoption data to inform product pricing

When the time comes to make decisions about product packaging and pricing, the first place you turn to should be the metering pipeline for historical usage data. Meet the associated product management team and lean on the usage data to answer the following questions:

  1. Which elements of product usage are most tightly aligned with customer use and value realization?
  2. What is an appropriate scaling function for this metric?
  3. How do the usage patterns vary over time, industry, company size, etc.? Look to understand the factors that are correlated with usage.
  4. Define the goal for this product launch. Is it a land grab where max adoption is prioritized or is the goal to increase profitability?
  5. Identify the set of metrics that scale correctly and align with your business goals. For example, if the goal is max adoption, then charging based on the number of users may not be the best choice as it disincentivizes new users to sign up.

Following this process, you should be able to remove the guesswork and identify the appropriate vectors for fees. Once you’ve done that, you can set the pricing. This is where it becomes critical to have a wealth of granular historical data representative of your user base so you can back-test pricing models. Without ample instrumentation, you will be guessing and estimating to arrive at product pricing.

With historical usage data, you can apply the pricing logic from your test pricing plans to see the revenue generated from that usage. It is important to iterate this process over time and as usage profiles change to ensure your pricing model remains optimal and aligned with your business goals.

An example from AWS

I can tie this together with a real-world example from my time with Amazon OpenSearch. The service was being released to the market and we had to identify an optimal pricing model.

We dove into the usage data from the metering pipeline to understand the patterns and usage profiles. We found that there are two main categories of users for most search use cases:

  1. High storage with low query, where there is a lot of data stored and indexed but that data is queried less frequently.
  2. Low storage with high query, where there is less data to manage but queries are run more frequently on the data.

From this exercise, we identified that the amount of data stored and the query volume make suitable vectors for billing. After we built pricing around this and presented it to leadership, it emerged that the model was over-engineered and didn’t adequately address the full spectrum of variance in use cases.

So we reconvened and considered the data again. The solution was to simplify the pricing model so it was only based on data egress (like for all AWS services), data storage, query volume and a reindexing charge that is applied to protect against usage variance. In the event that data needs to be reindexed for a new use case (changing requirements), then an additional charge would apply to the customer account.

More TechCrunch

Welcome to Week in Review: TechCrunch’s newsletter recapping the week’s biggest news. This week Apple unveiled new iPad models at its Let Loose event, including a new 13-inch display for…

Why Apple’s ‘Crush’ ad is so misguided

The U.K. Safety Institute, the U.K.’s recently established AI safety body, has released a toolset designed to “strengthen AI safety” by making it easier for industry, research organizations and academia…

U.K. agency releases tools to test AI model safety

AI startup Runway’s second annual AI Film Festival showcased movies that incorporated AI tech in some fashion, from backgrounds to animations.

At the AI Film Festival, humanity triumphed over tech

Rachel Coldicutt is the founder of Careful Industries, which researches the social impact technology has on society.

Women in AI: Rachel Coldicutt researches how technology impacts society

SAP Chief Sustainability Officer Sophia Mendelsohn wants to incentivize companies to be green because it’s profitable, not just because it’s right.

SAP’s chief sustainability officer isn’t interested in getting your company to do the right thing

Here’s what one insider said happened in the days leading up to the layoffs.

Tesla’s profitable Supercharger network is in limbo after Musk axed the entire team

StrictlyVC events deliver exclusive insider content from the Silicon Valley & Global VC scene while creating meaningful connections over cocktails and canapés with leading investors, entrepreneurs and executives. And TechCrunch…

Meesho, a leading e-commerce startup in India, has secured $275 million in a new funding round.

Meesho, an Indian social commerce platform with 150M transacting users, raises $275M

Some Indian government websites have allowed scammers to plant advertisements capable of redirecting visitors to online betting platforms. TechCrunch discovered around four dozen “gov.in” website links associated with Indian states,…

Scammers found planting online betting ads on Indian government websites

Around 550 employees across autonomous vehicle company Motional have been laid off, according to information taken from WARN notice filings and sources at the company.  Earlier this week, TechCrunch reported…

Motional cut about 550 employees, around 40%, in recent restructuring, sources say

The deck included some redacted numbers, but there was still enough data to get a good picture.

Pitch Deck Teardown: Cloudsmith’s $15M Series A deck

The company is describing the event as “a chance to demo some ChatGPT and GPT-4 updates.”

OpenAI’s ChatGPT announcement: What we know so far

Unlike ChatGPT, Claude did not become a new App Store hit.

Anthropic’s Claude sees tepid reception on iOS compared with ChatGPT’s debut

Welcome to Startups Weekly — Haje‘s weekly recap of everything you can’t miss from the world of startups. Sign up here to get it in your inbox every Friday. Look,…

Startups Weekly: Trouble in EV land and Peloton is circling the drain

Scarcely five months after its founding, hard tech startup Layup Parts has landed a $9 million round of financing led by Founders Fund to transform composites manufacturing. Lux Capital and Haystack…

Founders Fund leads financing of composites startup Layup Parts

AI startup Anthropic is changing its policies to allow minors to use its generative AI systems — in certain circumstances, at least.  Announced in a post on the company’s official…

Anthropic now lets kids use its AI tech — within limits

Zeekr’s market hype is noteworthy and may indicate that investors see value in the high-quality, low-price offerings of Chinese automakers.

The buzziest EV IPO of the year is a Chinese automaker

Venture capital has been hit hard by souring macroeconomic conditions over the past few years and it’s not yet clear how the market downturn affected VC fund performance. But recent…

VC fund performance is down sharply — but it may have already hit its lowest point

The person who claims to have 49 million Dell customer records told TechCrunch that he brute-forced an online company portal and scraped customer data, including physical addresses, directly from Dell’s…

Threat actor says he scraped 49M Dell customer addresses before the company found out

The social network has announced an updated version of its app that lets you offer feedback about its algorithmic feed so you can better customize it.

Bluesky now lets you personalize main Discover feed using new controls

Microsoft will launch its own mobile game store in July, the company announced at the Bloomberg Technology Summit on Thursday. Xbox president Sarah Bond shared that the company plans to…

Microsoft is launching its mobile game store in July

Smart ring maker Oura is launching two new features focused on heart health, the company announced on Friday. The first claims to help users get an idea of their cardiovascular…

Oura launches two new heart health features

Keeping up with an industry as fast-moving as AI is a tall order. So until an AI can do it for you, here’s a handy roundup of recent stories in the world…

This Week in AI: OpenAI considers allowing AI porn

Garena is quietly developing new India-themed games even though Free Fire, its biggest title, has still not made a comeback to the country.

Garena is quietly making India-themed games even as Free Fire’s relaunch remains doubtful

The U.S.’ NHTSA has opened a fourth investigation into the Fisker Ocean SUV, spurred by multiple claims of “inadvertent Automatic Emergency Braking.”

Fisker Ocean faces fourth federal safety probe

CoreWeave has formally opened an office in London that will serve as its European headquarters and home to two new data centers.

CoreWeave, a $19B AI compute provider, opens European HQ in London with plans for 2 UK data centers

The Series C funding, which brings its total raise to around $95 million, will go toward mass production of the startup’s inaugural products

AI chip startup DEEPX secures $80M Series C at a $529M valuation 

A dust-up between Evolve Bank & Trust, Mercury and Synapse has led TabaPay to abandon its acquisition plans of troubled banking-as-a-service startup Synapse.

Infighting among fintech players has caused TabaPay to ‘pull out’ from buying bankrupt Synapse

The problem is not the media, but the message.

Apple’s ‘Crush’ ad is disgusting

The Twitter for Android client was “a demo app that Google had created and gave to us,” says Particle co-founder and ex-Twitter employee Sara Beykpour.

Google built some of the first social apps for Android, including Twitter and others