Relying on AI saves time in information search and compilation, but the final word and decision-making remain with you. Saving Changes...
Patrick OwensSenior Project Manager| Edward JonesMaryland Heights, Mo, United States
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.
Luis, your summary and analysis of the problem is 'spot on.' There is great value in developing a common understanding of the problem you are trying to solve before throwing AI Solutions at all parts of it. Saving Changes...
Ricardo CamarenaPM III Delivery Manager| OnMobileMexico, Df, Mexico
I think the first answer that comes into place is related to trend or fear. Trend because everybody is talking about it so "we should start immediately" and fear because the lack of understanding about the capabilities and models slowness the use of it. Put a team with both opinions and you have the receipe for failure. Saving Changes...
“We should use AI” is a common starting point—but not a strategy. The first question should always be: what business outcome are we driving? Once the impact and problem statement are clear, everything else—data, model, and roadmap—starts to align naturally. AI adoption is widespread. Impactful AI is rare. The difference lies in how intentionally the use case is defined. Saving Changes...
Roger LawrenceDigital and Knowledge Management Manager| African Forum For Research and Education in HealthAccra, AA, Ghana
All the time! The clearest tell is when someone says "just use AI to do it" about a task that would actually require months of data collection, integration work, and change management. The word "AI" in those moments means magic a button you press to skip the hard parts. In my experience, the real ask usually falls into one of three things: they want automation , analytics , or actual AI/ML . The gap between what people say and what they mean is where projects go sideways. The question I've learned to ask early: "What decision or outcome would be different if this worked? That usually surfaces what's really being asked. Saving Changes...
Linda BullardBusiness Data Analyst| LSMB Business SolutionsChattanooga, Tn, United States
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.
This is great stuff. Yes, your three subtopics are great for making this a better place in our workplaces. Saving Changes...
h1When someone says, “we should use AI,” how do you unpack what’s really being asked?/h1 We need to really know what the main goal of the tool is, so we as a team can approach it and work as a one big brain in order to get what the organization needs and lern, lernd and lern every day the new tools that AI brings to our world.
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1 reply by Vemula Hariprasad
Apr 24, 2026 2:01 AM
Vemula Hariprasad
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We need to understand the real problem behind and select which AI is more appropriate to consider for that application
h1When someone says, “we should use AI,” how do you unpack what’s really being asked?/h1 We need to really know what the main goal of the tool is, so we as a team can approach it and work as a one big brain in order to get what the organization needs and lern, lernd and lern every day the new tools that AI brings to our world.
We need to understand the real problem behind and select which AI is more appropriate to consider for that application Saving Changes...
When someone says, “We should use AI,” The first thing comes to my mind is to ask why we should use AI and start analyzing the root cause, then if it’s really convenient we can start identifying the type and model of AI needed and whether the deliverables required can be obtained via using this model or other model might be required Saving Changes...