Artificial intelligence (AI) is no longer just a futuristic promise—it's a strategic tool that's very much present today. And when we combine the power of ChatGPT with HubSpot's wealth of data, we unlock a new level of operational intelligence. The secret? Knowing how to talk to AI. In this article, we explore best practices in prompt engineering applied to the HubSpot universe, with practical examples and guidance for turning data into decisions.
Because CRM data is gold... but only if you know how to use it!
HubSpot's CRM stores huge amounts of information about leads, customers, opportunities, and interactions. However, many professionals still fall into the same trap: having the data but not knowing what to do with it. Without context and interpretation, data is just noise.
With the right integration, ChatGPT can act as a true Business Analyst, interpreting complex data, finding patterns, and translating all of this into clear and actionable business language. With a HubSpot partner, you can set up this bridge between CRM and AI in a secure, scalable, and intelligent way.
By structuring prompts that analyze, for example, origin, average decision time, and email open rates, we can identify typical conversion cycles or ideal moments for commercial contact.
Through a simple question such as “Which stages of the funnel have the lowest conversion rate?”, ChatGPT can map critical leakage points, providing valuable insights for nurturing actions or improvements in qualification processes.
With the right prompts, it is possible to compare performance by channel (organic, paid social, paid media, etc.), by Buyer Persona, or by ICP (Ideal Customer Profile) type. This cross-referencing of information will allow you to prioritize the campaigns that demonstrate the highest ROI.
Example > Analysis of average sales response time versus deal closure rate > Insights like these may be hidden in raw data, but they become visible through AI...just let your imagination run wild!
Prompts like these can be used directly in ChatGPT and integrated through tools such as Zapier, custom APIs, or natively through Deep Research—the connector recently launched by HubSpot, a pioneer in integrating CRM with OpenAI.
Read also: When HubSpot Talks to ChatGPT: Efficiency, Insights, and Smart Decisions
A good prompt depends on good data. Make sure fields are complete, up to date, and standardized. Free fields with ambiguous or duplicate data reduce the effectiveness of AI.
Start with segmented lists (by funnel stage, by ICP, by creation date, etc.) and predefine the fields to be analyzed (origin, time to close, lead source, etc.).
Tools such as Zapier or Pipedream can automate the extraction of data from HubSpot and its submission to ChatGPT, with the outputs formatted and stored directly in the CRM.
AI responds based on the data provided. If the data is incomplete or biased, so will the insights be. Human validation remains an essential step.
A good prompt depends on context. Without understanding ICPs, customer journey, goals, and KPIs, the risk of misinterpretation increases.
Collaboration between AI and humans is the future —but only if we keep the human factor as the final validation.
Yes—as long as it is well guided. ChatGPT can be the assistant that analyzes, summarizes, prioritizes, and recommends. But the power lies with those who ask the right questions.
So how can you turn ChatGPT into your strategic assistant? Train the AI with effective prompts, combining the HubSpot context with well-defined business objectives. What's more, speed up tasks and ensure consistency in prompt creation through reusable templates that align Marketing and Sales.