DBLGSep 3, 2025

NeurStore: Efficient In-database Deep Learning Model Management System

arXiv:2509.03228v22 citationsh-index: 8Proc. ACM Manag. Data
Originality Incremental advance
AI Analysis

This addresses the storage overhead issue for database systems handling large numbers of deep learning models, though it is an incremental improvement over existing compression techniques.

The paper tackles the problem of inefficient storage and management of deep learning models in databases by introducing NeurStore, which uses tensor-based storage, deduplication, and compression to achieve superior compression ratios and competitive loading throughput.

With the prevalence of in-database AI-powered analytics, there is an increasing demand for database systems to efficiently manage the ever-expanding number and size of deep learning models. However, existing database systems typically store entire models as monolithic files or apply compression techniques that overlook the structural characteristics of deep learning models, resulting in suboptimal model storage overhead. This paper presents NeurStore, a novel in-database model management system that enables efficient storage and utilization of deep learning models. First, NeurStore employs a tensor-based model storage engine to enable fine-grained model storage within databases. In particular, we enhance the hierarchical navigable small world (HNSW) graph to index tensors, and only store additional deltas for tensors within a predefined similarity threshold to ensure tensor-level deduplication. Second, we propose a delta quantization algorithm that effectively compresses delta tensors, thus achieving a superior compression ratio with controllable model accuracy loss. Finally, we devise a compression-aware model loading mechanism, which improves model utilization performance by enabling direct computation on compressed tensors. Experimental evaluations demonstrate that NeurStore achieves superior compression ratios and competitive model loading throughput compared to state-of-the-art approaches.

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