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AI Learning

Adaptive AI

Axon learns from how you interact with AI-generated content. As you edit, delete, and accept findings, the system quietly builds a picture of what good analysis looks like for your project — and applies that understanding to every future AI action. No configuration required.

Available on Pro and Enterprise plans.

How it works

Every time you edit, delete, or accept a finding, Axon records a feedback signal. These signals accumulate silently in the background and are used in three ways:

  • Guiding new extractions. When processing a new artifact, the AI is shown examples of findings you have previously kept unedited or written yourself. These act as quality benchmarks, steering the AI toward the tone, depth, and focus that works for your project.
  • Filtering out rejected content. Findings that are semantically similar to ones you have previously deleted are automatically suppressed before they reach your board. The system remembers what you did not want.
  • Building a preference profile. After enough signals accumulate, Axon generates a short natural-language summary of your preferences for this project — for example, that you favour concise operational risks, or that you rarely keep broad strategic observations. This profile is injected into AI prompts to give every AI action a baseline understanding of what you value.

What triggers a signal

ActionSignal type
Accept an AI finding without editingPositive — used as a quality example
Accept an AI suggestion from the suggestion toolPositive — used as a quality example
Edit an AI-generated findingMild negative — content was not quite right
Delete an AI-generated findingStrong negative — suppresses similar content in future
Create a finding manuallyPositive — used as a quality example

Signals are scoped to each project

Learning is kept separate per project. A competitive analysis project and a product requirements project may call for very different styles of findings, and the system treats them independently. Feedback in one project never influences another.

When does it kick in

Few-shot examples are injected as soon as there are accepted or manually created findings in your project. The negative similarity filter activates once deleted findings have been recorded. The preference profile is not generated until at least 10 feedback events have accumulated, ensuring it is based on a meaningful pattern rather than a handful of actions.

The more you interact with your findings, the more accurate the system's understanding of your preferences becomes. Projects with a rich history of reviewed and curated findings will see the most noticeable improvement in AI output quality.

Tips for best results

  • Delete liberally. Every finding you remove is a signal. Deleting weak or irrelevant findings is one of the fastest ways to improve future extractions.
  • Write findings manually when the AI misses the mark. Manually created findings carry strong positive weight — the system treats them as the clearest possible example of what you want.
  • Be consistent within a project. Mixed signals — keeping some findings but deleting similar ones — can reduce the clarity of the learned preference. The more consistent your curation behaviour, the sharper the profile.
  • Give it time. The preference profile requires at least 10 events before it is generated. On a fresh project, the first few ingestions benefit only from few-shot examples. After more active use, all three learning layers work together.
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