➀ Associate Professor Julian Shun develops high-performance algorithms and frameworks for large-scale graph processing; ➁ His work focuses on finding the shortest path between objects in a network and detecting fraudulent transactions; ➂ Shun's algorithms leverage parallel computing to analyze massive graphs efficiently; ➃ He has developed user-friendly programming frameworks to facilitate efficient graph algorithm development; ➄ Shun's research includes clustering algorithms and dynamic graph algorithms for real-world applications.
Related Articles
- Beyond Traditional OOO: A Time-Based, Slice-Based Approach to High-Performance RISC-V CPUsabout 1 month ago
- Phison partners with Supermicro for Petascale Storage2 months ago
- The $18 Trillion Bottleneck That Could Supercharge Your Portfolio3 months ago
- AMD sets new supercomputer record, runs CFD simulation over 25x faster on Instinct MI250X GPUs6 months ago
- Major Advancement in Applied Research: FMD Launches the Chiplet Application Hub7 months ago
- AI servers to be 70% of server market in 20259 months ago
- One Thousand Production Licenses Means Silicon Creations PLL IP is Everywhere11 months ago
- Sarcina Democratizes 2.5D Package Design with Bump Pitch Transformers12 months ago
- TSMC Reports Strong Demand for 2nm Nodes, A16 Attractive for AI Server Clients12 months ago
- AI Network Background: Why, What & How of RDMA12 months ago