Yajie Zhou, University of Maryland; Fuheng Zhao, University of Utah; Eric Wang, University of Maryland; Ayse K. Coskun, Boston University; Divyakant Agrawal and Amr El Abbadi, University of California, Santa Barbara; Zaoxing Liu, University of Maryland
Network operators rely on telemetry for performance and security analysis, but long-term retention at scale remains difficult due to privacy requirements, resource constraints, and the need for high-fidelity query answers. We present PrvTel, a framework for privacy-preserving telemetry retention. Instead of storing raw records, PrvTel learns a compact generative model using a domain-specialized variational autoencoder. It combines field-aware encodings for NetFlow and cloud telemetry with a correlation-aware objective to preserve cross-field dependencies. To enforce differential privacy (DP) without sacrificing utility, PrvTel injects structure-aware noise before training, rather than during gradient updates. We prove that PrvTel satisfies DP based on post-processing theorem. Across six real-world datasets and one synthetic workload, PrvTel improves query accuracy by up to 60% over prior DP-compliant generative baselines and reduces ownership cost by up to 50× compared to lossless retention.
NSDI '26 Open Access Sponsored by
King Abdullah University of Science and Technology (KAUST)
Open Access Media
USENIX is committed to Open Access to the research presented at our events. Papers and proceedings are freely available to everyone once the event begins. Any video, audio, and/or slides that are posted after the event are also free and open to everyone. Support USENIX and our commitment to Open Access.

author = {Yajie Zhou and Fuheng Zhao and Eric Wang and Ayse K. Coskun and Divyakant Agrawal and Amr El Abbadi and Zaoxing Liu},
title = {{PrvTel}: Lightweight Models for Private and Accurate Telemetry Data Retention},
booktitle = {23rd USENIX Symposium on Networked Systems Design and Implementation (NSDI 26)},
year = {2026},
isbn = {978-1-939133-54-0},
address = {Renton, WA},
pages = {1827--1843},
url = {https://www.usenix.org/conference/nsdi26/presentation/zhou-yajie},
publisher = {USENIX Association},
month = may
}
