Bias Detection — ELOQUENCE
← All Capabilities Capability — Bias Detection

AI advice that's fair
to everyone.

ELOQUENCE doesn't just flag bias — it measures it, mitigates it, and documents the result. Across 24+ EU languages, four bias dimensions, and every deployment context.

50%
Bias reduction target across all pilots
24+
EU languages evaluated
4
Bias dimensions tested

Four dimensions. Zero tolerance.

Fairness isn't a single metric. ELOQUENCE evaluates bias across four distinct dimensions — simultaneously, in every target language.

♀♂
Gender
Same query, different perceived gender. Does the response change? It shouldn't.
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Cultural
Assumptions baked into training data vary by country. We test across EU cultural norms.
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Ethnic
Name-based and context-based persona variations surface ethnic bias in recommendations.
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Religious
Faith context shouldn't change a career recommendation. We verify that it doesn't.
The method

Systematic.
Measurable. Auditable.

Not a one-time pre-launch check. A repeatable evaluation framework with documented results — ready for EU AI Act compliance review.

01
Synthetic persona generationMatched user profiles varying across each bias dimension — everything else held constant.
02
Identical query testingSame question, different persona. Response differences are scored and ranked.
03
Multilingual evaluationBias tested in all target languages — because translation can introduce new bias.
04
Mitigation & re-testPrompt engineering adjustments applied until targets are met. Process documented throughout.
Output
Bias score per dimension, per language
Quantified results — not subjective assessments. Comparable across model versions.
Compliance
EU AI Act Article 9 aligned
Documentation format ready for high-risk AI system conformity assessment.
Ongoing
Re-evaluated after every model update
Bias doesn't stay fixed. Neither does our testing — continuous evaluation built into the pipeline.

Know your AI is actually fair.

We'll run our bias evaluation framework on your existing system — or build a bias-controlled deployment from scratch.