Machine-Verifiable Responsiveness (original) (raw)
2006, Electronic Notes in Theoretical Computer Science
AI-generated Abstract
Machine-verifiable responsiveness is critically important in the context of autonomous systems and real-time applications. Ensuring that systems can reliably verify their own responsiveness not only improves their efficiency but also enhances their safety. The developments outlined in this paper focus on novel approaches that empower machine systems to assess their performance in terms of responsiveness, allowing for adjustments and corrections in real-time.
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