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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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Vitor Tolomelli Massachussets, United States
Before discussing AI tools, I like to clarify the underlying business need. Understanding the problem, desired outcome, and success criteria helps determine whether AI is the right solution and how it can create measurable value.
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Robbie Katanga Project Engineer | KDMP || Konkola Copper Mines Plc Chingola, Copperbelt, Zambia
I am keep to gain insight in how project mechanical engineers are using AI in project delivery of mechanical (SMP) infrastructure in a mining set. Please, dm if possible. Best!
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Lex Lennon Project Consultant| Anywave Creations
An immediate project charter for scope creep prevention to tame the AI tune/tone. I would compare the current AI-capability resource expectation to the equivalent of outsourcing labor. Inference cannot imply reality without a soul.
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Geetha Ramalingam PM Specialist| MAXIS BERHAD Petaling Jaya, Selangorm, Malaysia
We need to first ask what problem statement do we have on table., what do we intend to solve or achieve? We need to focus on the outcome and measurements which are agreed by management to state we have solved the problem.
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Geetha Ramalingam PM Specialist| MAXIS BERHAD Petaling Jaya, Selangorm, Malaysia
What signals help you tell different kinds of AI work apart—and what tends to go wrong when everything gets lumped together? - different AI patterns can be used for different purposes. It is important to understand what kind of data we have in our organisation so we can make sense how it can be used to serve different purposes.
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Anonymous
With AI we have more data, and with more data we can measure. Everything chich can be measured can be managed. With AI each project manager can in a more easier way keep track of multiple factors before were very difficut to consider.
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Gina Nardi Business Analyst II| Behavioral Health Network Western Massachusetts, United States
Expected outcome is only as good as the input to AI systems. All AI outputs should still be vetted carefully to determine accuracy. I've asked AI to develop scope documents, but if the input is not clear with well defined parameters, sometimes if they are clear/well defined, AI can still get it wrong.
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robert lumpkins Project Management| US Army Colorado Springs, CO, United States
Mar 25, 2026 4:50 AM
Replying to Douglas Boyd
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It is recognised that AI can assist, but we need to obtain clarity as to what AI system is to be used as there are many.
I completely agree. If you don't define what you're trying to achieve first, you'll get stuck trying to figure out which AI tool actually fits the stakeholders' goals.
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Amanda Atsumi Sales Support Specialist and Data Analyst| TeraGo Networks 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.
Great points! I couldn’t agree more. I have situations where we are constantly asked to use more AI, without a goal or clear problem to solve. Sometimes there is no value intended, just FOMO.
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MONICA DAVILA GUACHAMIN Quito, P, Ecuador
Cuando se habla de implementar inteligencia artificial en las empresas, muchas veces se la presenta como una respuesta rápida al desorden interno.
Se espera que la IA genere inmediatez, acelere resultados y resuelva procesos acumulados. Sin embargo, cuando no se analiza la raíz del problema, la tecnología puede terminar aumentando la presión, automatizando ineficiencias y sosteniendo procesos que ni siquiera tienen un objetivo claro.
La inteligencia artificial sí puede transformar una organización, pero no reemplaza el orden, la estrategia ni las buenas prácticas.
Antes de automatizar, debemos entender el proceso, cuestionar su propósito, simplificarlo y corregirlo. De lo contrario, no estaremos innovando: simplemente estaremos haciendo más rápido aquello que ya hacíamos mal.
La IA es una herramienta poderosa, pero una verdadera transformación siempre comienza desde la raíz.
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