Active PAR

P2941.4

Standard for Representation and Application Programming Interface for Graph Neural Network Models

This standard specifies a representation and an application programming interface (API) for graph neural network models used for various computing needs. It provides the representation and basic operations of graph data, the representation, interface definitions, and compression methods for graph neural network models, and the computing framework for graph neural networks.

Standard Committee
C/DC - Data Compression Standards Committee
Status
Active PAR
PAR Approval
2024-09-26

Working Group Details

Society
IEEE Computer Society
Standard Committee
C/DC - Data Compression Standards Committee
Working Group
AIM - AI Model Representation, Compression, Distribution and Management
IEEE Program Manager
Meng Zhao
Contact Meng Zhao
Working Group Chair
Yonghong Tian

Other Activities From This Working Group

Current projects that have been authorized by the IEEE SA Standards Board to develop a standard.


P2941.3
Standard for Representation and Application Programming Interface (API) of Large-scale Pre-trained Artificial Intelligence (AI) Models

The standard provides a representation and API framework for large-scale pre-trained AI models, including its training, inference, transfer, mixture, instruct-tuning, representation, compression, distribution, and services. This standard aims to facilitate the development and deployment of large-scale pre-trained AI models across different platforms and domains.

Learn More About P2941.3

Standards approved by the IEEE SA Standards Board that are within the 10-year lifecycle.


2941-2021
IEEE Standard for Artificial Intelligence (AI) Model Representation, Compression, Distribution, and Management

The AI development interface, AI model interoperable representation, coding format, and model encapsulated format for efficient AI model inference, storage, distribution, and management are discussed in this standard.

Learn More About 2941-2021

2941.1-2022
IEEE Standard for Operator Interfaces of Artificial Intelligence

A set of operator interfaces frequently used in artificial intelligence (AI) applications is defined in this standard, where the AI operators refer to the standard building blocks and primitives for performing basic AI operations. The functionality and the specific input and output operands of an AI operator are discussed, as well as both generality and efficiency. Various types of operators, such as those related to basic mathematics, neural network, and machine learning, are highlighted.

Learn More About 2941.1-2022

2941.2-2023
IEEE Standard for Application Programming Interfaces (APIs) for Deep Learning (DL) Inference Engines

A set of application programming interfaces (APIs) that is aimed at breaking down the barriers between different deep learning (DL) inference engines and applications is defined in this standard. The APIs are comprised of functional interfaces including parameter reading, model compilation optimization, operator registration, thread management, input/output data acquisition, inference instance creation, and inference execution.

Learn More About 2941.2-2023

These standards have been replaced with a revised version of the standard, or by a compilation of the original active standard and all its existing amendments, corrigenda, and errata.


No Superseded Standards

These standards have been removed from active status through a ballot where the standard is made inactive as a consensus decision of a balloting group.


No Inactive-Withdrawn Standards

These standards are removed from active status through an administrative process for standards that have not undergone a revision process within 10 years.


No Inactive-Reserved Standards
Subscribe to our Newsletter

Sign up for our monthly newsletter to learn about new developments, including resources, insights and more.