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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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Doris Rocio Bueno Casasbuenas Director of PM/PMO| DB-SYSTEM Bogota - Colombia, Bogotá D.C., Colombia
I agree to the submission
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Doris Rocio Bueno Casasbuenas Director of PM/PMO| DB-SYSTEM Bogota - Colombia, Bogotá D.C., Colombia
I agree to the submission
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Nageshwar Rao Kompalli Venkata HYDERABAD, TG, India
AI is used in a very generic sense for every automation. Some people mistake simple automation for AI. This certainly creates misalignment in terms of understanding and having perspectives.
The true value of AI can be felt, for example If one is able to build a system where it can give you predictive analytics of a risk unnoticed or a delay unaccounted for.

Great analysis. Agree to the submission.
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Anonymous
Agree
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MAKAFUI TAMAKLOE Zenith Bank Ghana Limited Accra, AA, Ghana
When someone says they use A.I it means they are able to define the problem, use and employ the effective tools needed to solve the problem and finally they have reflected on the solution to include human judgement to better the work at hand
It may be stemming from the need to quickly fix an existing problem. I would start with identifying and confirming the "need" origination and working together to determine if one of the seven AI patterns from PMI can help. Could it be Process Gaps and Ownership ?
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Samuel Abbey Functional Manager| NATIONAL HEALTH INSURANCE AUTHORITY ACCRA, AA, Ghana
Feb 19, 2026 1:05 PM
Replying to Luis Branco
...
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.
I haven't had anyone break it down in the manner that you did, Sir. It covers all the necessary questions before any AI project initiation.
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Kennedy Mwanza Lusaka, 09, Zambia
Feb 19, 2026 1:05 PM
Replying to Luis Branco
...
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.
Great stuff!
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Monica Bitla Complaints Specialist| RAKBANK Dubai, Dubai, United Arab Emirates
When someone says " we should use AI" , they want some aspect of AI to be incorporated or made use of to speed up the work. They often jump to suggesting AI usage without having a clarity if AI is suitable and if it's the right approach to solve the problem at hand.
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MADHAN JEGANATHAN Thanjavur, TN, India
we should use AI" is almost never the real request. It’s a placeholder for a problem they don’t know how to name yet.
Usually, People say "AI" when they mean one of these:
"What they say"
"We need AI for analysis"
"Can AI automate this?"

Actually What AI mean as below
"What they usually mean"
"This task is slow/boring and I hate doing it"
"I’m drowning in data and don’t know what matters"
"I don’t want to hire another person for this"

AI is good at 3 things:
Pattern recognition in messy data: text, images, logs, emails
Prediction from history: failure rates, demand, churn
Generation/Summarization of content: drafts, summaries, code

AI’s bad at:
#Doing work that requires physical action
#Making decisions with legal/financial liability without a human in loop
#Working with zero data
we should use AI" usually breaks into:Efficiency request: "Reduce time/cost for task X."→ Unpack: How long does X take now? What’s the cost? What’s the acceptable error rate?
Insight request: "Help me understand Y."→ Unpack: What decision are you trying to make? What data do you have?
Perception request: "Make us look modern/competitive."→ Unpack: Who needs to see this? What does ‘success’ look like to them?
Commonly AI is package of traditional inputs which can be interpret by the previous data which shall be streamlined with more answers.
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