The rapid proliferation of specialized Artificial Intelligence (AI) agents has exposed a critical flaw in human-computer interaction: contextual amnesia. Current AI systems operate as isolated Markov decision processes, lacking access to a user's historical state across different platforms, devices, and sessions. This paper introduces SyncMem, a highly performant, universal memory infrastructure layer that utilizes a novel probabilistic identity resolution engine. Rather than relying on deterministic, walled-garden authentication schemas, SyncMem links disparate user interactions through information entropy, Gaussian-boosted semantic similarity, and a cascading 3-Layer context retrieval model driven by client-agnostic hardware anchoring. We detail the system's decoupled architecture and the implementation of a proprietary scalar quantization mechanism for low-latency vector operations. Furthermore, we analyze the microeconomic viability of the system, demonstrating an infrastructure cost of approximately 3. 00 USD per million requests, and outline a planetary-scale distributed roadmap. Our results indicate that deterministic accounts are no longer a prerequisite for persistent, personalized AI consciousness
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Devansh Verma (Mon,) studied this question.
www.synapsesocial.com/papers/69ccb76c16edfba7beb895a1 — DOI: https://doi.org/10.5281/zenodo.19339047
Devansh Verma
Indian Institute of Technology Kanpur
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