AI can provide outdated information. Instead of stating its output as fact ("You are an ESOP"), frame it as a question ("My research suggested you were an ESOP, is that still the case?"). This validates information and turns a potential error into a natural, informed conversation starter.
Instead of antisocially typing on a device during meetings, activate ChatGPT's voice mode out loud. This social hack frames the AI as a transparent participant, retrieving information for the entire group and reducing friction for quick lookups without disrupting the conversation.
In a world of AI-generated content, true expertise is proven by the ability to answer spontaneous, unscripted questions on a topic for an extended period. This demonstrates a level of domain mastery and authenticity that AI cannot replicate, building genuine trust with an audience.
A powerful workflow is to explicitly instruct your AI to act as a collaborative thinking partner—asking questions and organizing thoughts—while strictly forbidding it from creating final artifacts. This separates the crucial thinking phase from the generative phase, leading to better outcomes.
Before giving feedback or answering a complex question, ask a clarifying question. This isn't just for the other person's benefit; it's a strategic tool to help you target your own response, ensuring it's relevant and concise.
Many AI tools expose the model's reasoning before generating an answer. Reading this internal monologue is a powerful debugging technique. It reveals how the AI is interpreting your instructions, allowing you to quickly identify misunderstandings and improve the clarity of your prompts for better results.
Treat AI as a critique partner. After synthesizing research, explain your takeaways and then ask the AI to analyze the same raw data to report on patterns, themes, or conclusions you didn't mention. This is a powerful method for revealing analytical blind spots.
To effectively leverage AI, treat it as a new team member. Take its suggestions seriously and give it the best opportunity to contribute. However, just like with a human colleague, you must apply a critical filter, question its output, and ultimately remain accountable for the final result.
AI models tend to be overly optimistic. To get a balanced market analysis, explicitly instruct AI research tools like Perplexity to act as a "devil's advocate." This helps uncover risks, challenge assumptions, and makes it easier for product managers to say "no" to weak ideas quickly.
Before engaging expensive experts like lawyers or accountants, use AI to do preliminary work. You can draft initial documents, analyze data, or formulate questions. This prepares you for a more productive conversation, saving time and money while ensuring you still rely on the human expert for final verification and strategy.
To get higher-quality input from busy medical experts, use specialized AI tools like Consensus.app to review scientific literature first. Then, present your tentative conclusions to the professional, demonstrating you've done the preliminary work, which encourages a more thoughtful and detailed response.