Value-based pricing formula explained (with free worksheet)
Alvaro MoralesPricing your AI solution is a high-stakes tightrope walk: Keeping track of API calls, figuring out how much tokens cost, and monitoring usage — one wrong step can lead to lost revenue and unhappy customers.
Worrying about which pricing model would work for your AI solution is natural.
In this article, we'll explore 7 pricing models for AI products. Our goal is to help you find the ideal strategy to boost profits while delivering value to your customers.
We’ll cover:
Let’s start with the first pricing model.
Value-based pricing is a strategy in which you set the price of your AI product based on the value it delivers to your customers. This stands in contrast to traditional cost-plus pricing models, which focus primarily on production costs and a standard profit margin.
To use value-based pricing for AI, you need to understand your customers' challenges and how your AI solution helps solve them. Are you saving them time? Improving accuracy or efficiency in their processes? These are the kinds of questions that get to the heart of the value you provide.
Putting a number on that value requires careful research. Look at your industry: Are there benchmarks for how much similar problems cost businesses? You can also survey your customers, seeking to quantify their frustrations with their current process and excitement about what your AI could provide.
The advantages of value-based pricing are noteworthy. When your price accurately reflects the value you're creating, it becomes much easier for customers to justify the expense. This can mean faster sales cycles, higher win rates, and increased customer satisfaction.
For instance, imagine a predictive analysis AI tool for sales teams. If your AI model helps close 10% more deals per quarter, you could price based on the average revenue per deal, factoring in the boost provided by your solution.
Since the price is tied to specific outcomes, it highlights the ROI of your AI product, motivating customers to adopt and fully engage with the solution.
Unlike a flat subscription fee, usage-based pricing directly aligns cost with the amount the customer uses your AI solution.
Customers' use of your AI product is identified as events (think individual API calls), and you add them all up as individual costs, which will show up in your clients' bills.
How does it work? There are a few common ways to implement usage-based pricing for AI:
So, why is usage-based pricing so effective for AI? Here are some key benefits:
Subscription models are a tried-and-true way to price products, and they're just as powerful for AI solutions. Subscriptions are convenient because they allow you to create different tiers that align with how customers get value from your solution, make pricing accessible, and foster long-term customer relationships.
Let’s look into how you can adapt subscription models for your AI product:
Let’s take a look at some benefits of subscription models for AI products:
Subscription models are one of the best AI pricing models because they offer two core benefits for AI products. Firstly, they ensure predictable, recurring revenue streams. This predictability allows for accurate forecasting and budgeting, enabling you to confidently reinvest in developing and improving your AI solution over time.
Secondly, subscription models foster strong customer loyalty. Because customers have committed to a recurring payment, they're incentivized to fully adopt and learn how to best use your AI tools. Since they see continued value, they become less likely to switch to a competitor's solution.
This is a popular approach, especially for getting new AI products off the ground. The idea is simple: you offer a free basic version of your AI solution while locking advanced or expanded capabilities behind a paid subscription.
This free tier is incredibly powerful for attracting users. People are naturally drawn to trying things at no cost, removing that initial hurdle to adoption. It's a low-risk way for businesses to dip their toes in the water, experience your AI in action, and see if it solves some of their problems.
This "try before you buy" approach can be especially convincing for those who are new to AI or skeptical about its potential benefits.
The real challenge with freemium lies in converting those free users into paying customers. This is where carefully planned up-selling comes in. You need to design the free tier to be helpful but also leave users wanting more.
This might mean limiting data processing in the free version, offering only the most basic output, or withholding integrations with other tools they might already use.
The main goal is to create that "aha!" moment when someone hits a limit within the free tier and realizes the value of upgrading to unlock the full potential of your AI solution.
This is one of the AI pricing models that involves customers paying either a one-time upfront fee or recurring licensing fees to access your software. It's a good fit for specific markets and customer needs.
Popular licensing models shine in enterprise or highly specialized markets. Think of scenarios where customers expect long-term, heavy usage of your AI solution. It could be deeply integrated into their workflows and core systems.
They might have strict data security or compliance needs that are best met with a model that gives them more control over the software. In these cases, paying a recurring fee for guaranteed access makes sense.
However, traditional licensing does come with some logistical considerations. You'll likely need a system to issue and manage individual software licenses.
This means ensuring customers are adhering to the terms (how many users, how it's being deployed) and providing updates and patches as needed. There's often a compliance aspect, making sure only those who have paid have ongoing access.
Performance-based pricing is a model that tightly links revenue with the success of your customer's AI implementation. Rather than paying for the AI solution upfront, the customer's cost is determined by the value it generates, such as increased efficiency and reduced errors.
Establishing the right metrics is crucial for this to work. Before deploying your AI, you'll collaborate with the customer to define their baseline performance. You should ask yourself questions about that baseline performance, like:
Is it the number of tasks their team can process per hour?
The accuracy of a prediction model?
The time it takes to identify an issue?
Then, you'll set clear targets for improvement that justify the cost of the AI solution.
Now, let’s take a quick look at how using this pricing model for AI products can be both challenging and rewarding:
Hybrid pricing models recognize that there's rarely a one-size-fits-all solution, especially in AI. Combining aspects of the pricing models we've discussed allows you to create a truly tailored offering for your AI product.
Hybrid models make a lot of sense for two main reasons:
Let's take a look at a few hybrid pricing combination examples well-suited for different types of AI products:
Picking the suitable pricing model for your AI business is critical, so let's break down how to make the best decision. There's no single correct answer, but a thoughtful evaluation process makes all the difference.
Here's a framework to guide your choice:
After reading our guide, you should understand the potential benefits and complications of choosing and implementing AI pricing models for your software.
However, manually tracking usage, building flexible pricing models, and ensuring accurate billing can quickly overwhelm in-house billing systems. That's where Orb becomes a vital tool in your arsenal.
Orb is a powerful billing platform that helps you overcome the challenges of AI pricing, giving you the tools to launch, iterate, and scale your AI pricing models with confidence.
Here's how Orb helps:
Learn how Orb can help you solve your AI solution’s billing in record time.
See how AI companies are removing the friction from invoicing, billing and revenue.