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Main Authors: Punniyamoorthy, Vinoth, Parthi, Ashok Gadi, Palanigounder, Mayilsamy, Kodali, Ravi Kiran, Kumar, Bikesh, Kannan, Kabilan
Format: Preprint
Published: 2025
Subjects:
Online Access:https://arxiv.org/abs/2512.10341
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author Punniyamoorthy, Vinoth
Parthi, Ashok Gadi
Palanigounder, Mayilsamy
Kodali, Ravi Kiran
Kumar, Bikesh
Kannan, Kabilan
author_facet Punniyamoorthy, Vinoth
Parthi, Ashok Gadi
Palanigounder, Mayilsamy
Kodali, Ravi Kiran
Kumar, Bikesh
Kannan, Kabilan
contents Distributed machine learning systems require strong privacy guarantees, verifiable compliance, and scalable deployment across heterogeneous and multi-cloud environments. This work introduces a cloud-native privacy-preserving architecture that integrates federated learning, differential privacy, zero-knowledge compliance proofs, and adaptive governance powered by reinforcement learning. The framework supports secure model training and inference without centralizing sensitive data, while enabling cryptographically verifiable policy enforcement across institutions and cloud platforms. A full prototype deployed across hybrid Kubernetes clusters demonstrates reduced membership-inference risk, consistent enforcement of formal privacy budgets, and stable model performance under differential privacy. Experimental evaluation across multi-institution workloads shows that the architecture maintains utility with minimal overhead while providing continuous, risk-aware governance. The proposed framework establishes a practical foundation for deploying trustworthy and compliant distributed machine learning systems at scale.
format Preprint
id arxiv_https___arxiv_org_abs_2512_10341
institution arXiv
publishDate 2025
record_format arxiv
spellingShingle A Privacy-Preserving Cloud Architecture for Distributed Machine Learning at Scale
Punniyamoorthy, Vinoth
Parthi, Ashok Gadi
Palanigounder, Mayilsamy
Kodali, Ravi Kiran
Kumar, Bikesh
Kannan, Kabilan
Machine Learning
Artificial Intelligence
Distributed machine learning systems require strong privacy guarantees, verifiable compliance, and scalable deployment across heterogeneous and multi-cloud environments. This work introduces a cloud-native privacy-preserving architecture that integrates federated learning, differential privacy, zero-knowledge compliance proofs, and adaptive governance powered by reinforcement learning. The framework supports secure model training and inference without centralizing sensitive data, while enabling cryptographically verifiable policy enforcement across institutions and cloud platforms. A full prototype deployed across hybrid Kubernetes clusters demonstrates reduced membership-inference risk, consistent enforcement of formal privacy budgets, and stable model performance under differential privacy. Experimental evaluation across multi-institution workloads shows that the architecture maintains utility with minimal overhead while providing continuous, risk-aware governance. The proposed framework establishes a practical foundation for deploying trustworthy and compliant distributed machine learning systems at scale.
title A Privacy-Preserving Cloud Architecture for Distributed Machine Learning at Scale
topic Machine Learning
Artificial Intelligence
url https://arxiv.org/abs/2512.10341