AI now appears more frequently than ever in client conversations, technology roadmaps, and product demos. Yet for many advisory firms, the language surrounding AI remains unnecessarily difficult to follow.
Tokens. Hallucinations. Guardrails. Grounding. Agents. Skills.
These "buzzwords" are everywhere, and they are important to understand to make the most informed decisions about the technology you use.
Below is a practical guide to the seven most common AI terms firms encounter, why each one matters, and an example of how the term might be referenced in Orion tools or elsewhere.
1. Tokens
AI does not read text the way humans do. It processes information in tokens.
Tokens are small units of text that an AI model reads and processes behind the scenes. Words, sentences, and even punctuation break into tokens, which affect how much information the model can handle at once.
Why It Matters:
Tokens shape how much context an AI tool can manage, how detailed a prompt or response can be, and how efficiently the system performs. This explains why some tools handle simple tasks well but lose depth with longer, more complex requests.
What This Looks Like:
A team uses AI to summarize a meeting recap and gets a quick response. But when the request expands to multiple households, historical notes, and tax considerations, token usage rises quickly, driving higher costs and sometimes resulting in a shorter, less complete answer.
2. Guardrails