Part 2: AIInternational audienceThe coflow scheduling in data-parallel clusters can improve application-level communication performance. The existing coflow scheduling method without prior knowledge usually uses Multi-Level Feedback Queue (MLFQ) with fixed threshold parameters, which is insensitive to coflow traffic characteristics. Manual adjustment of the threshold parameters for different application scenarios often has long optimization period and is coarse in optimization granularity. We propose M-DRL, a deep reinforcement learning based coflow traffic scheduler by dynamically setting thresholds of MLFQ to adapt to the coflow traffic characteristics, and reduces the average coflow completion time. Trace-driven simulations on the public...
International audienceI/O optimization techniques such as request scheduling can improve performance...
Communication in data-parallel applications often involves a col-lection of parallel flows. Traditio...
Recently, the use of internet has been increased all around the hose, the companies, government depa...
Machine Learning (ML) techniques and algorithms, which are emerging technologies in Industry 4.0, pr...
State-of-the-art solutions for flow scheduling propose the use of Multi Level Feedback Queue (MLFQ) ...
Previous coflow scheduling proposals improve the coflow completion time (CCT) over per-flow scheduli...
Deep Reinforcement Learning (DRL) has recently been proposed as a methodology to discover complex ac...
Optimization of flow rule timeouts promises to reduce the frequency of message exchange between the ...
In recent years, Coflow scheduling has become a research hotspot in data center network. However, it...
With the goal of meeting the stringent throughput and delay requirements of classified network flows...
Workflow Scheduling is a huge challenge in cloud paradigm as many number of workflows dynamically ge...
Age of Information (AoI) is a recently proposed performance metric measuring the freshness of data a...
Resource usage of production workloads running on shared compute clusters often fluctuate significan...
Abstract---Reinforcement learning (RL) has become more popular due to promising results in applicati...
Reinforcement learning (RL)-based congestion control (CC) promises efficient CC in a fast-changing n...
International audienceI/O optimization techniques such as request scheduling can improve performance...
Communication in data-parallel applications often involves a col-lection of parallel flows. Traditio...
Recently, the use of internet has been increased all around the hose, the companies, government depa...
Machine Learning (ML) techniques and algorithms, which are emerging technologies in Industry 4.0, pr...
State-of-the-art solutions for flow scheduling propose the use of Multi Level Feedback Queue (MLFQ) ...
Previous coflow scheduling proposals improve the coflow completion time (CCT) over per-flow scheduli...
Deep Reinforcement Learning (DRL) has recently been proposed as a methodology to discover complex ac...
Optimization of flow rule timeouts promises to reduce the frequency of message exchange between the ...
In recent years, Coflow scheduling has become a research hotspot in data center network. However, it...
With the goal of meeting the stringent throughput and delay requirements of classified network flows...
Workflow Scheduling is a huge challenge in cloud paradigm as many number of workflows dynamically ge...
Age of Information (AoI) is a recently proposed performance metric measuring the freshness of data a...
Resource usage of production workloads running on shared compute clusters often fluctuate significan...
Abstract---Reinforcement learning (RL) has become more popular due to promising results in applicati...
Reinforcement learning (RL)-based congestion control (CC) promises efficient CC in a fast-changing n...
International audienceI/O optimization techniques such as request scheduling can improve performance...
Communication in data-parallel applications often involves a col-lection of parallel flows. Traditio...
Recently, the use of internet has been increased all around the hose, the companies, government depa...