The manuscripts listed below have passed the peer-review process and have been accepted for publication (not published yet). A “Just Accepted” manuscript is available online shortly after its acceptance, which is prior to technical editing, formatting, and author proofing. It's crucial to note that being “Just Accepted” does not equate to being officially published. This is merely an intermediate stage to quickly share the research with the community. When a manuscript is published, it will be removed from “Just Accepted”.
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Online First:The manuscripts listed below will continue to be available from this page until they are assigned to an issue.
Cover ArticlesMore +
- AI Computing Systems for Large Language Models Training
- Caging AI
- openGauss: An Enterprise-Grade Open-Source Database System
- openGauss: An Open-Source Database for the Era of Artificial Intelligence
- A Survey of Multimodal Controllable Diffusion Models
- Video Colorization: A Survey
- Towards High-Performance Graph Processing: From a Hardware/Software Co-Design Perspective
- Graph Accelerators—A Case for Sparse Data Processing
- Technical Perspective: Research on General-Purpose Brain-Inspired Computing Systems
- 1 Toolkit | CoEdPilot: Interactively Recommending Project-Wise Code Edits
- 2 Toolkit | HmTest: Automated Testing of HarmonyOS Apps via Model-Driven Navigation and Reinforcement Learning
- 3 Toolkit | SEPAL: A Consistency-driven Programming Framework and Runtime Support for Human-Cyber-Physical Systems with Reliable Sensing and Dynamic Adaptation
- 4 Dataset | Combining KNN with AutoEncoder for Outlier Detection
- 5 Dataset | Mix-Lingual Relation Extraction: Dataset and A Training Approach