Project Management

Please login or join to subscribe to this thread

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

linkedin twitter facebook   Artificial Intelligence  
avatar
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.

Sort By:
< 1 ... 4 5 6 7 8 9 10 11 12 13 14 ... 56 >
avatar
olawale alawode ISSO| CMS Bowie, Md, United States
Different kinds of AI work give off different “signals.”
  • Research tends to focus on new ideas, careful experiments, and clear limitations.
  • Engineering is about building reliable systems that actually work at scale.
  • Product work is about making something people can use and understand.
  • Hype usually sounds big, vague, and a little too magical.
When all of these get lumped together, things get messy. People start expecting research prototypes to behave like polished products, or they treat marketing language as scientific truth. That’s when confusion, disappointment, and overblown fears creep in.
avatar
Simon Tsang Program Manager| Vencore Labs, Inc. Jersey City, Nj, United States
AI is just another tool available to PMs to get the job done. AI tools are very useful but they are not autonomous and require a skilled PM to utilize to them properly
avatar
CHANDRAKANT SAKHARE, PMP Assistant General Manager - Project Management| Larsen & Toubro Ltd. Surat, India
It is very Vague statement "we should use AI" without understanding what for it is required?
People jump in to AI project without understanding requirement for Business.
avatar
Harmeet Bhatia Brampton, Ontario, Canada
Everyone in an organization wants to use AI to make their daily tasks easier so they can concentrate on the harder outcomes they are trying to achieve. The common theme of misinterpretation arises when there is a lack of clarity on what the final outcome is. Everyone's definition of success needs to be the same before AI can be employed to solve for.
avatar
Lorena Marcos Project Management| Harmonise CALI, Colombia
As always, PMI provides a very useful structure and clarity in Project Management. In this specific case, I always ask my clients about their "Own Intelligence" before talking about using artificial intelligence. Do you know wo is your most profitable client? your less?...some questions seem easy, but without a clear structure of your processes and data coming from your processes, it will be more challenging to use AI in a smart way to ensure value-driven projects. Now, PMI provides you with the mental model to enhance our PMP skills.
avatar
MARIA GONZALEZ VARGAS Ciudad de México, CMX, Mexico
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.
Users may think that AI solves all possible issues for them, nevertheless it is needed humand mind behind this solution.
avatar
Lorena Marcos Project Management| Harmonise CALI, Colombia
The most difficult thing is to build your ¨Own Intelligence¨before using ¨Artificial Intelligence¨. I work with small companies that actually struggle to understand how far they can go in using AI, but the first advice is to build quality data to actually extract good intelligence from it. PMI always provide with structure and know-how in order to help these small companies and their projects.
avatar
Timothy McIntyre Project Consultant| 90 Degree Benefits Helena, Al, United States
Clarity is required. AI is not a magic box, though certain individuals in your company may think it is.
avatar
Rohit Dean Director of Client Services| cBEYONData Ashburn, VA, United States
I have had several clients reach out because they are considering the use of AI / ML / RPA for a specific use case. Usually that is the first step in determining what kind of project journey they are about to embark on. Depending on the particular problem they are trying to solve, the solution could involve, generative, predictive, or a combination of the two. Sometimes it also involves some type of dumb RPA to be part of the solution. And sometimes it involves some higher level thinking to deliver an Agentic solution that will make the machine work autonomously.
avatar
Priyanka Jain Program Manager| Self employed Toronto, Ontario, Canada
As PMs I can definitely see automating mundane tasks like generating mintues of meeting, reviewing executive decks, help building business case amongst so many other unexplored potential
< 1 ... 4 5 6 7 8 9 10 11 12 13 14 ... 56 >

Please login or join to reply

Content ID:
ADVERTISEMENTS

"If you have an apple and I have an apple and we exchange apples then you and I will still each have one apple. But if you have an idea and I have an idea and we exchange these ideas, then each of us will have two ideas."

- George Bernard Shaw

ADVERTISEMENT

Sponsors