If someone had told me a few years ago that I would use Artificial Intelligence in my daily work to develop software, I would probably have thought of something distant — almost futuristic.

But today, to be very direct:
AI is already part of my development workflow — and it is no longer optional.

And I’m not talking about theory or hype.
I’m talking about real-world problems: OSB errors, complex Oracle queries, ADF validations… the kind of issues we deal with every day.

The turning point: when it stopped being just “autocomplete”

At first, I saw AI as something similar to a more advanced autocomplete.

But that changed quickly.

What really makes a difference today is not just code completion — it’s context understanding.
Modern tools are able to analyze broader scenarios and suggest structural improvements, not just isolated lines of code.

That’s when it clicked for me:

I was no longer just writing code.
I was working with a copilot.

A real example: an OSB error that used to take hours

Anyone who has worked with OSB knows how it goes…

You get a generic error like:

BEA-382500

Then the usual process begins:

  • Checking logs
  • Reviewing pipelines
  • Validating XQuery
  • Fixing namespaces
  • Testing endpoints

This can easily take hours.

Today, my workflow often looks like this:

  1. Copy the error
  2. Include the relevant pipeline snippet
  3. Ask the AI:“What could be causing this?”

And the answer usually comes with:

  • Possible XQuery issues
  • Namespace problems
  • Integration or endpoint failures

It doesn’t solve everything automatically — but it dramatically shortens the investigation time.

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