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The missing layer in prompt engineering: thinking quality
Julien Avezo · 2026-05-11 · via DEV Community

I've seen countless prompting trends and prompt packs to use but most discussions around prompt engineering focus on one thing:
getting better outputs

Optimizing for better outputs often translates to:

  • Better prompts
  • More context
  • More structure

But lately, I’ve been wondering:

What if we’re optimizing the wrong layer?

Because the real question isn’t:

“How do I get better answers from AI?”

It’s:

“Is AI actually improving how I think?”

Because I’ve noticed something subtle:

My output was improving.

But my understanding was not always.

After working in several teams and environments, I have observed that:

Good engineers ask better questions.

The best engineers question their own thinking.

Most of what I see optimizes for:

  • better outputs
  • faster generation
  • more automation

But much less for:

  • clearer thinking
  • stronger judgment
  • deeper understanding

AI isn’t just changing how we build.

It’s quietly reshaping how we think while building.


🧠 What kind of thinking do you actually need?

That’s when I realized I didn’t need more prompts.

I needed a way to choose the right kind of thinking first.

Instead of asking:

“What’s the best prompt for this?”

I started asking:

“What kind of thinking do I need right now?”

That led me to structure my prompting around 5 simple thinking modes:

1) Explore

When I don’t fully understand the problem yet

2) Challenge

When I have a plan… but it might be wrong

3) Decide

When I need to choose between options

4) Audit

When I need to verify quality or correctness

5) Reflect

When I want to actually learn from what I did

This simple shift changed everything.

Instead of using AI reactively,
I started using it intentionally based on the thinking task.

🔁 The simple loop that protects your thinking

This is a simple workflow framework that makes a big difference.

Before AI

Write what you think first.

During AI

Use it to expand or challenge your thinking.

After AI

Ask yourself:

  • Did I verify this?
  • Did I just accept it?
  • Can I explain it without AI?

It sounds simple, but it’s surprisingly easy to skip.

And when you skip it, you start noticing something subtle:

Your output improves.
But your understanding doesn’t always follow.

⚖️ Why one prompt is almost never enough

One thing I’ve been changing in my workflow:

I rarely rely on a single prompt anymore.

Instead, I use prompt pairing:

1) one prompt to generate
2) one prompt to challenge

For example:

First prompt:

“Suggest 3 possible architectures for this system.”

Follow-up:

“Now challenge each option: what are the hidden risks, failure modes, and long-term maintenance issues?”

Why this matters:

AI is very good at giving plausible first answers.
But those answers are often:

  • incomplete
  • overly confident
  • biased toward common patterns

Prompt pairing helps you avoid:

  • first-answer bias
  • shallow reasoning
  • premature decisions

It forces a simple but powerful loop:

Generate → Critique → Decide

And that loop alone has probably improved my decision quality more than any single “better prompt”.

📊 A simple way to check if AI is helping or hurting your thinking

Another thing I started doing:

After important prompts, I ask myself:

“Did AI actually improve my thinking here?”

I use a simple thinking score (0–5):

  • Did I write my own initial view before prompting?
  • Did I challenge or refine the output?
  • Did I verify at least one important claim?
  • Did I make the final judgment myself?
  • Can I explain the result without AI?

Not as a strict system.
More as a signal.

Because sometimes the pattern is obvious:

You get great output.
You move faster.
But you didn’t actually understand what happened.

And over time, that compounds.


🛠️ A few prompts that changed how I work

Here’s one I use a lot (Explore Mode):

“I am working on a vague engineering problem.
Before suggesting solutions, help me frame the problem.
List the goal, constraints, stakeholders, unknowns, assumptions, edge cases, and the questions I should answer myself first.”

Then I follow it with:

“Now turn this into the 5 questions I should answer manually before asking for implementation help.”

What this does:

  • forces clarity before coding
  • surfaces unknowns early
  • prevents jumping too quickly into solutions

Another one I’ve been using more (Challenge Mode):

“Pressure-test this architecture proposal.
Identify assumptions, weak points, hidden dependencies, and failure modes.
For each, explain what evidence would confirm or disprove it.”

Followed by:

“Which of these should I verify first, and how?”

This one has saved me from a few very confident but flawed directions.


👥 What’s changing in teams right now

Prompting is evolving quickly.

It’s becoming:

  • more collaborative
  • more embedded in workflows
  • less about “one perfect prompt”

And more about:

  • prompt sequences
  • prompt-driven workflows

I’m also seeing patterns like:

  • Prompt Driven Development (explore before coding)
  • Prompt versioning (iterating prompts like code)
  • Shared team prompts (internal playbooks)

But most of these still optimize for output quality.
Not thinking quality.


🧩 The piece I felt was missing

I didn’t need more prompts.

I needed a way to answer:

“Is AI making my thinking better or just faster?”

So I started using a simple self-check after important prompts:

  • Did I think before prompting?
  • Did I challenge the output?
  • Did I verify anything?
  • Did I make the final judgment?
  • Can I explain it without AI?

Not to optimize productivity.
But to protect judgment.


⚙️ The system I ended up building for myself

I ended up structuring this into a prompt system I now use daily:

  • 5 thinking modes
  • Before / During / After workflow
  • Paired prompts (generate → challenge)
  • Simple thinking quality score

Recommended loop: Before AI - Core Prompt - Paired Follow-up - Manual Reflection - Thinking Score.

All organized around real engineering use cases.

If you’re interested, I shared the full prompt system as a free PDF (100 prompts structured by thinking mode). (100 prompts structured by thinking mode).

Would love your feedback on my system.


💬 Curious how others are approaching this

  • How do you approach prompting today?
  • Do you reflect on your AI usage at all?
  • Are teams starting to standardize prompting internally?

I’m especially curious about how this is evolving at the team/org level.


AI gives answers.

But engineers who compound over time are the ones who protect how they think.