Abstract
This comprehensive technical paper presents a novel multi-modal trust architecture for AI-driven HR systems, focusing on the critical aspects of user acceptance in enterprise-scale people analytics platforms. Through the implementation of advanced zero-knowledge proof protocols, explainable AI frameworks, blockchain-based audit trails, and federated learning approaches, the architecture achieved an 85% improvement in user confidence metrics. The system demonstrates remarkable performance across resistance prediction, technical integration, and trust analytics, processing over 9.5 million daily interactions with 99.999% reliability. Our implementation across 1,850 organizations showed an 82% enhancement in system trustworthiness and a 2.8x improvement in operational efficiency, while reducing algorithmic bias by 89%. The architecture's event-driven design and microservices implementation resulted in a 76% improvement in system responsiveness and a 92% reduction in data processing latency, establishing a new benchmark for trust-centric AI-HR systems.
Published Version
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More From: International Journal For Multidisciplinary Research
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