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When someone says, “we should use AI,” how do you unpack what’s really being asked?

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Michael Brinn
PMI Team Member
Product Manager, Learning| PMI Denver, Colorado, United States

What signals help you tell different kinds of AI work apart—and what tends to go wrong when everything gets lumped together?

Have you ever been in a conversation where “AI” meant different things to different people? What tipped you off?

Share your experiences navigating what’s really being asked when someone says “we should use AI” in the comments below.

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Julija Atanasova PhD(c)| University of Toronto Toronto, Ontario, Canada
It's the one-size-fits-all mentality. Failing to distinguish model types can push teams to use, say, an LLM for a simple analytic problem, or vice versa. That leads to results such as asking an LLM to pull structured reports or to ignoring better solutions such as a small decision tree.
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Anonymous
It is never a waste of time to ask the individuals in the group exactly how they expect to use AI to produce the results the users require. Having a common understanding will focus the planning required to get a good start on the project.
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Shawaal Bakardien South Africa
Often decision-makers don’t have a solid grasp of what AI actually is or how it works. Because of that, teams are told to "use AI" without any real clarity on which tools make sense or even what problem they’re supposed to be solving. The term has become too broad and it risks losing meaning, and without that understanding, organizations end up chasing AI for its buzz rather than aligning it with specific goals
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Damilola Awofolaju Star Compressors Spares Limited Ifo, Og, Nigeria
When people say "Let's use AI", I believe it is more of seeking a form of leverage that will guarantee better outcome in terms of results and efficiency.
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Hellen charless seo expert| Digital Marketing Houston, United States
Amazing
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Sohrab Rahimi Foroushani East GWILLIMBURY, ONTARIO, Canada
Feb 19, 2026 1:05 PM
Replying to Luis Branco
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Great question.

When someone says “we should use AI,” the conversation is rarely about technology itself.
It is usually about pressure for speed, efficiency, innovation, or competitive leverage. The first step is to clarify intent.

Three signals help distinguish what is really being asked.

First, decision proximity.
Is AI automating a task, augmenting human judgment, or moving toward managing objectives autonomously?
These are fundamentally different categories of work.
The closer AI gets to consequential decisions, the stronger the need for governance, traceability, and explicit oversight.

Second, problem clarity.
Is there a clearly defined business problem with measurable impact, or is AI being treated as the starting point?
When the solution precedes the problem, misalignment and inflated expectations follow.

Third, accountability design.
Who owns the outcome if an AI-driven recommendation fails?
When responsibility becomes diffuse, risk scales faster than performance.

In many organizations, “AI” simultaneously means efficiency, experimentation, and cost reduction to different stakeholders.
Misalignment becomes visible when decision flows and ownership are unclear.
A common tipping point is when stakeholders use the same word “AI” but describe different success metrics.

The real shift is not from manual to automated.
It is from “man in the loop” to “man in control.” Without deliberate design of responsibility, capability increases while accountability erodes.

Clarity of purpose, category of AI work, and ownership separates disciplined transformation from technological noise.
This is an impressive trend which seems real .
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Anonymous
When someone mentions let's use AI i feel like a lot of people are put off or on edge because they haven't learned simple prompts or started using it in everyday life. I find there is a lot of push back or loud "sighs" when someone mentions we should use it.
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Abdulla Alkubaisi Doha, RA, Qatar
When someone says “we should use AI,” I treat it as a starting point, not a solution. I first clarify what problem we’re trying to solve—cost, efficiency, customer experience, or something else. Then I ask what success looks like so we have clear outcomes.
Next, I check process and data readiness, since AI only works well with clean data and defined workflows. I also challenge whether AI is actually needed, or if simpler automation can deliver faster results.
In short, I reframe it from “use AI” to:
What problem are we solving, and what’s the simplest way to solve it effectively?
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Chenda Phal Cambodia
Good questions!

People have different opinions about AI; some are skeptical about the AI technological revolution, which is rapidly being adopted globally. Most talked about only the surface or basic knowledge about AI without deep learning and understanding of practical use cases applied. AI is a broad topic!

In some conversations, people are mixed up about the impacts of AI integration into their daily lives and work, and increase productivity and performance, automate the workplace, create and write content, marketing, and generate images and/or videos. These are the application layer. The fundamental infrastructure of AI is a five-layer cake.

In my opinion, AI could be a double-edged sword. AI integration and implementation require a clear framework, data protection, and integrity policy with ethical and responsible uses. Once there is a clear framework structure and an AI policy in place, human-in-loop and an oversight committee are one of the key and critical components for making high-stakes decisions for an organization or business enterprise.
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Gobikumar B chennai, TN, India
Feb 25, 2026 5:29 AM
Replying to Eduard Hernandez
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Most individuals relate AI to LLM lihe ChatGPT. There are very few individuals who realize that AI is on an "agentization" process, evolving from the current assistant status.

Agentization refers to the process of turning an AI system (such as a LLM) into an autonomous agent that can:

  • Perceive its environment (through inputs, data, APIs, sensors, etc.)
  • Make decisions based on goals
  • Take actions using tools or external systems
  • Adapt based on feedback or changing conditions

absouletly correct on agentization is happening in some of crtical industries (service operations)-supply chain area where refer to service request to delivery process are automated through agentization as mention

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