• IEEE.org
  • IEEE CS Standards
  • Career Center
  • About Us
  • Subscribe to Newsletter

0

IEEE
CS Logo
  • MEMBERSHIP
  • CONFERENCES
  • PUBLICATIONS
  • EDUCATION & CAREER
  • VOLUNTEER
  • ABOUT
  • Join Us
CS Logo

0

IEEE Computer Society Logo
Sign up for our newsletter
IEEE COMPUTER SOCIETY
About UsBoard of GovernorsNewslettersPress RoomIEEE Support CenterContact Us
COMPUTING RESOURCES
Career CenterCourses & CertificationsWebinarsPodcastsTech NewsMembership
BUSINESS SOLUTIONS
Corporate PartnershipsConference Sponsorships & ExhibitsAdvertisingRecruitingDigital Library Institutional Subscriptions
DIGITAL LIBRARY
MagazinesJournalsConference ProceedingsVideo LibraryLibrarian Resources
COMMUNITY RESOURCES
GovernanceConference OrganizersAuthorsChaptersCommunities
POLICIES
PrivacyAccessibility StatementIEEE Nondiscrimination PolicyIEEE Ethics ReportingXML Sitemap

Copyright 2025 IEEE - All rights reserved. A public charity, IEEE is the world’s largest technical professional organization dedicated to advancing technology for the benefit of humanity.

  • Home
  • /Digital Library
  • /Journals
  • /Tsc
  • Home
  • / ...
  • /Journals
  • /Tsc

Call for Papers: Special Issue on Privacy-Preserving Machine Learning Services

IEEE Transactions on Services Computing seeks submissions for this upcoming special issue.

The rapid growth of machine learning as a service has revolutionized industries such as healthcare, finance, transportation, and e-commerce. While ML significantly enhances service efficiency and personalization, it raises considerable concerns regarding privacy breach and unauthorized data exploitation. Thus, ensuring privacy in ML-driven services has become critical for gaining public trust and the compliance with data regulations.

Privacy-preserving machine learning (PPML) is attracting increasing attention. This paradigm resorts to advanced privacy-enhancing techniques (PET) such as secure multi-party computation (SMPC), homomorphic encryption (HE), differential privacy (DP), and trusted execution environments (TEE), to protect both ML models and sensitive data throughout the ML lifecycle. However, delivering scalable, efficient, and secure ML services while preserving privacy remains challenging due to issues such as computational complexity, data heterogeneity, real-time constraints, and model accuracy trade-offs.

This special issue aims to bridge research gaps at the intersection of machine learning, service computing, and privacy-enhancing techniques. We invite high-quality original submissions addressing theoretical advances, practical algorithms, frameworks, and methodologies that leverage PETs to secure ML service in a privacy-preserving, efficient, and robust manner.

Topics of Interest

Topics of interest include, but are not limited to:

  • Federated learning for privacy-preserving ML services
  • Secure multi-party computation and homomorphic encryption for ML-as-a-service
  • Differential privacy methodologies and their integration into ML services
  • Trusted execution environments for secure and private ML computations
  • Privacy-preserving techniques in distributed ML service architectures (e.g., edge computing)
  • Scalable privacy-preserving ML protocols for real-time analytics and streaming data services
  • Privacy-preserving deep learning for computer vision, natural language processing, and multimodal service applications
  • Privacy threat analysis in AI agent services
  • Privacy-assured solutions for securing AI agent service and service protocols
  • Privacy-preserving recommendation services and personalized service delivery
  • Privacy-preserving ML-based analytics in real-world sectors such as healthcare, financial services, transportation, and smart city infrastructures
  • Fairness, transparency, interpretability, and trust in privacy-preserving ML services
  • Benchmarking, metrics, and evaluation methodologies for privacy-preserving ML service systems
  • Privacy risk mitigation in PPML service deployment
  • Privacy risk assessment, auditing, and compliance in ML services

Important Dates

  • Manuscript Submission Deadline: October 1, 2025
  • First Round Notification: February 1, 2026
  • Revised Manuscript Due: March 10, 2026
  • Final Decision Notification: April 20, 2026
  • Final Manuscript Submission Due: April 30, 2026
  • Expected Publication: Mid 2026

Guest Editors

  • A/Prof. Xingliang Yuan, The University of Melbourne, Australia
  • Prof Ronald Cramer, CWI and Leiden University, Netherlands
  • Prof Kwok Yan Lam, NTU, Singapore
  • Dr Maggie Liu, RMIT University, Australia

Submission Guidelines

For author information and guidelines on submission criteria, please visit Author Resources . Authors should submit original manuscripts not exceeding 14 pages following IEEE Transactions on Services Computing guidelines. All submissions must be made through the IEEE Author Portal. Please select "Special Issue on Privacy-Preserving Machine Learning Services" during submission. Manuscripts must not be published or under review elsewhere, and should provide at least 30% original technical contributions compared to related publications.

In addition to submitting your paper to IEEE Transactions on Services Computing, you are also encouraged to upload the data related to your paper to IEEE DataPort. IEEE DataPort is IEEE's data platform that supports the storage and publishing of datasets while also providing access to thousands of research datasets. Uploading your dataset to IEEE DataPort will strengthen your paper and will support research reproducibility. Your paper and the dataset can be linked, providing a good opportunity for you to increase the number of citations you receive. Data can be uploaded to IEEE DataPort prior to submitting your paper or concurrent with the paper submission.

LATEST NEWS
How to Evaluate LLMs and GenAI Workflows Holistically
How to Evaluate LLMs and GenAI Workflows Holistically
The Kill Switch of Vengeance: The Double-Edged Sword of Software Engineering Talent
The Kill Switch of Vengeance: The Double-Edged Sword of Software Engineering Talent
Exploring the Elegance and Applications of Complexity and Learning in Computer Science
Exploring the Elegance and Applications of Complexity and Learning in Computer Science
IEEE CS and ACM Honor Saman Amarasinghe with 2025 Ken Kennedy Award
IEEE CS and ACM Honor Saman Amarasinghe with 2025 Ken Kennedy Award
IEEE Std 3221.01-2025: IEEE Standard for Blockchain Interoperability—Cross Chain Transaction Consistency Protocol
IEEE Std 3221.01-2025: IEEE Standard for Blockchain Interoperability—Cross Chain Transaction Consistency Protocol
Read Next

How to Evaluate LLMs and GenAI Workflows Holistically

The Kill Switch of Vengeance: The Double-Edged Sword of Software Engineering Talent

Exploring the Elegance and Applications of Complexity and Learning in Computer Science

IEEE CS and ACM Honor Saman Amarasinghe with 2025 Ken Kennedy Award

IEEE Std 3221.01-2025: IEEE Standard for Blockchain Interoperability—Cross Chain Transaction Consistency Protocol

Celebrate IEEE Day 2025 with the IEEE Computer Society

Building Community Through Technology: Sardar Patel Institute of Technology (SPIT) Student Chapter Report

IEEE CS and ACM Announce Recipients of 2025 George Michael Memorial HPC Fellowship

FacebookTwitterLinkedInInstagramYoutube
Get the latest news and technology trends for computing professionals with ComputingEdge
Sign up for our newsletter