GPU 클러스터에서 ML 워크로드의 성능 변동성을 고려하여 작업 할당을 최적화하는 PAL 정책을 제안한다.
Leveraging application-specific performance variability profiles and a novel placement policy called PAL, which co-optimizes for both performance variability and network locality, to significantly improve job completion times, cluster utilization, and makespan for machine learning workloads in GPU clusters.
This survey provides a novel taxonomy for online anomaly detection in multivariate time series, distinguishing between online training and online inference. It presents an extensive overview and analysis of state-of-the-art model-based online semi- and unsupervised anomaly detection approaches, as well as the most popular benchmark data sets and evaluation metrics used in the literature.
An attacker can exploit modified Ethereum nodes that skip transaction validation to amplify invalid transactions, causing severe network disruption and economic damages.
The core message of this paper is to introduce a novel graph reinforcement learning (GRL) framework named TANGO that leverages a symbolic subsystem to provide explainable and trustworthy radio resource allocation in 6G networks.
Large Language Models (LLMs) tend to be more cooperative than typical human players in the Iterated Prisoner's Dilemma, with Llama2 and GPT3.5 exhibiting a stronger propensity for cooperation compared to Llama3.
The deterministic identification capacity of memoryless channels with finite output exhibits a superlinear scaling in the block length, bounded by the Minkowski dimension of the output probability set.
A telemetry-enhanced cloud gaming platform that leverages fine-grained 5G Standalone Radio Access Network capacity estimates to dynamically adapt video bitrate and frame rate, maximizing quality of experience.
This survey provides a comprehensive overview of the unique challenges in protocol fuzzing and the techniques developed by existing works to address them, covering input generation, execution, and bug detection.
Graph Neural Networks (GNNs) have emerged as a highly promising deep learning approach within the Intelligent Transportation Systems (ITS) domain, demonstrating excellent performance across various applications such as traffic forecasting, vehicle control, traffic signal control, transportation safety, demand prediction, and parking management.