Paper 2025/1657

ORQ: Complex Analytics on Private Data with Strong Security Guarantees

Eli Baum, Boston University
Sam Buxbaum, Boston University
Nitin Mathai, The University of Texas at Austin, Boston University
Muhammad Faisal, Boston University
Vasiliki Kalavri, Boston University
Mayank Varia, Boston University
John Liagouris, Boston University
Abstract

We present ORQ, a system that enables collaborative analysis of large private datasets using cryptographically secure multiparty computation (MPC). ORQ protects data against semi-honest or malicious parties and can efficiently evaluate relational queries with multi-way joins and aggregations that have been considered notoriously expensive under MPC. To do so, ORQ eliminates the quadratic cost of secure joins by leveraging the fact that, in practice, the structure of many real queries allows us to join records and apply the aggregations "on the fly" while keeping the result size bounded. On the system side, ORQ contributes generic oblivious operators, a data-parallel vectorized query engine, a communication layer that amortizes MPC network costs, and a dataflow API for expressing relational analytics — all built from the ground up. We evaluate ORQ in LAN and WAN deployments on a diverse set of workloads, including complex queries with multiple joins and custom aggregations. When compared to state-of-the-art solutions, ORQ significantly reduces MPC execution times and can process one order of magnitude larger datasets. For our most challenging workload, the full TPC-H benchmark, we report results entirely under MPC with Scale Factor 10 — a scale that had previously been achieved only with information leakage or the use of trusted compute.

Note: Extended version of SOSP conference publication. Submitted to ACM TOCS.

Metadata
Available format(s)
PDF
Category
Applications
Publication info
Published elsewhere. Major revision. SOSP 2025
DOI
10.1145/3731569.3764833
Keywords
multiparty computationoblivious joinoblivious sorting
Contact author(s)
elibaum @ bu edu
sambux @ bu edu
nitinm @ cs utexas edu
mfaisal @ bu edu
vkalavri @ bu edu
varia @ bu edu
liagos @ bu edu
History
2026-06-23: last of 2 revisions
2025-09-12: received
See all versions
Short URL
https://ia.cr/2025/1657
License
Creative Commons Attribution
CC BY

BibTeX

@misc{cryptoeprint:2025/1657,
      author = {Eli Baum and Sam Buxbaum and Nitin Mathai and Muhammad Faisal and Vasiliki Kalavri and Mayank Varia and John Liagouris},
      title = {{ORQ}: Complex Analytics on Private Data with Strong Security Guarantees},
      howpublished = {Cryptology {ePrint} Archive, Paper 2025/1657},
      year = {2025},
      doi = {10.1145/3731569.3764833},
      url = {https://eprint.iacr.org/2025/1657}
}
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