Recent hype around Large Language Models and artificial intelligence has focused on visible, user-facing tools like virtual assistants, chatbots, and conversational agents that interact directly with customers or employees.
These high-profile applications deserve attention, but they represent only the tip of the iceberg. While most people immediately think of chatbots when the topic of artificial intelligence comes up, many of the most game-changing applications of LLMs are invisible to users.
These applications, which we call “LLM primitives,” quietly improve business operations from behind the scenes.
What Is An LLM Primitive?
To start, let’s clarify what we mean by an LLM primitive. In software, a primitive is a fundamental building block that’s used to create more complex systems. When it comes to language models, a primitive is a capability that quietly, but significantly, supports a larger workflow.
Rather than engaging directly with users, LLM primitives operate in the background, optimizing routine processes that we previously relied on people to complete.
LLM Primitive Use Cases
One area where this hidden power can deliver real impact is the customer onboarding process.
Take the standard scenario at many organizations: a new client is faced with a lengthy, one-size-fits-all form asking for company names, addresses, business categories, executive contacts, and more. Faced with this wall of fields, most people naturally hesitate. The task seems tedious and time-consuming, often leading users to delay or abandon onboarding. For businesses, this reluctance translates into lower completion rates, more abandoned sign-ups, and inconsistent data.
But what if much of the form could fill itself out, using information already available online? This is where an LLM primitive can transform both user experience and business outcomes. Here’s how such a solution would work. When a user inputs basic details, such as their company name or website, the LLM springs into action – not as a conversational assistant, but as a silent researcher. Drawing on web search and scraping tools, the model collects trustworthy information about the company, including its official address, the industry it operates in, and the names of key executives. The LLM standardizes this data and populates the relevant fields automatically.
What makes this approach powerful is that it lets the user skip the repetitive questions and instead focus on sections where their input is uniquely valuable, such as their goals, preferences, or any requirements that can’t be found online. The integration itself is straightforward: the onboarding platform connects with web search and data extraction services, and the language model is trained to interpret online information and match it to the appropriate sections of the form. Only unclear or missing information is surfaced for the user to review.
The Benefits of LLM Primitives
Introducing an LLM primitive in this way brings several practical benefits.
First, it reduces the time and effort users spend on onboarding, making them more likely to finish the process and start engaging with your business.
Second, it consistently captures accurate information, since it’s being sourced directly from official company websites and other reliable repositories.
Third, it improves the customer’s sense of satisfaction: instead of feeling bogged down by unnecessary tasks, they see the onboarding process as fast and efficient, which helps start the relationship on a positive note.
From a business perspective, implementing this LLM-powered background assistant involves more than just technical integration. It’s important to treat sensitive data carefully, adding human verification steps where accuracy is vital. Businesses should also stay transparent with their users, clearly explaining which parts of the process are automated and why. Finally, companies must plan to periodically update their data sources and AI configurations to keep up with changing information online.
Consider how much smoother onboarding becomes: a prospective client provides just a company name, and almost instantly, relevant fields are filled in for them. The only remaining questions are those that truly require their expertise or opinions. As a result, the task feels far less daunting, and the data collected is more reliable for future business use.
LLM primitives like this background form-filling feature demonstrate how AI can be seamlessly integrated into user experiences, alleviating friction and improving outcomes without calling attention to itself.
LLMs As A Business Catalyst
As this series continues, we’ll highlight more real-world examples in which LLMs act as the silent catalysts for better business processes.
The key takeaway is that by adopting these hidden AI building blocks, organizations can unlock substantial value, often in places where users never realize an AI was working behind the scenes at all.















