Precision Control in AI for Aerospace

Precision Control in AI for Aerospace

Intervening at inference-time for reliable requirement verification

This research introduces a novel approach for precisely controlling Large Language Models during the inference phase to ensure reliable requirement verification in critical engineering applications.

  • Enables fine-grained control of LLM outputs without retraining
  • Demonstrates application with Capella SysML models for space mission validation
  • Achieves higher reliability than conventional prompting or fine-tuning
  • Provides a framework for dynamic adjustments to meet engineering precision requirements

For aerospace organizations, this technique represents a significant advancement in integrating AI into safety-critical systems engineering workflows, where accuracy and verification are paramount.

Inference-Time Intervention in Large Language Models for Reliable Requirement Verification

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