Decoupling representation learning and classification for gnn-based anomaly detection
GNN-based anomaly detection has recently attracted considerable attention. Existing
attempts have thus far focused on jointly learning the node representations and the classifier …
attempts have thus far focused on jointly learning the node representations and the classifier …
POCLib: A high-performance framework for enabling near orthogonal processing on compression
Parallel technology boosts data processing in recent years, and parallel direct data
processing on hierarchically compressed documents exhibits great promise. The high …
processing on hierarchically compressed documents exhibits great promise. The high …
A survey on agent-based simulation using hardware accelerators
Due to decelerating gains in single-core CPU performance, computationally expensive
simulations are increasingly executed on highly parallel hardware platforms. Agent-based …
simulations are increasingly executed on highly parallel hardware platforms. Agent-based …
AStitch: enabling a new multi-dimensional optimization space for memory-intensive ML training and inference on modern SIMT architectures
This work reveals that memory-intensive computation is a rising performance-critical factor in
recent machine learning models. Due to a unique set of new challenges, existing ML …
recent machine learning models. Due to a unique set of new challenges, existing ML …
A survey on techniques for cooperative CPU-GPU computing
Abstract Graphical Processing Unit provides massive parallelism due to the presence of
hundreds of cores. Usage of GPUs for general purpose computation (GPGPU) has resulted …
hundreds of cores. Usage of GPUs for general purpose computation (GPGPU) has resulted …
CompressDB: Enabling efficient compressed data direct processing for various databases
In modern data management systems, directly performing operations on compressed data
has been proven to be a big success facing big data problems. These systems have …
has been proven to be a big success facing big data problems. These systems have …
Clusterscl: Cluster-aware supervised contrastive learning on graphs
We study the problem of supervised contrastive (SupCon) learning on graphs. The SupCon
loss has been recently proposed for classification tasks by pulling data points in the same …
loss has been recently proposed for classification tasks by pulling data points in the same …
Exploring data analytics without decompression on embedded GPU systems
With the development of computer architecture, even for embedded systems, GPU devices
can be integrated, providing outstanding performance and energy efficiency to meet the …
can be integrated, providing outstanding performance and energy efficiency to meet the …
{FineStream}:{Fine-Grained}{Window-Based} stream processing on {CPU-GPU} integrated architectures
Accelerating SQL queries on stream processing by utilizing heterogeneous coprocessors,
such as GPUs, has shown to be an effective approach. Most works show that heterogeneous …
such as GPUs, has shown to be an effective approach. Most works show that heterogeneous …
CompressStreamDB: Fine-grained adaptive stream processing without decompression
Stream processing prevails and SQL query on streams has become one of the most popular
application scenarios. For example, in 2021, the global number of active IoT endpoints …
application scenarios. For example, in 2021, the global number of active IoT endpoints …