Prediction Mechanisms for Monitoring State of Cloud Resources Using Markov Chain Model

Main Author: AL-Sayed, Mostafa
Format: Dataset
Terbitan: Mendeley , 2016
Subjects:
Online Access: https:/data.mendeley.com/datasets/rc6rwf7c8n
ctrlnum 0.17632-rc6rwf7c8n.1
fullrecord <?xml version="1.0"?> <dc><creator>AL-Sayed, Mostafa</creator><title>Prediction Mechanisms for Monitoring State of Cloud Resources Using Markov Chain Model</title><publisher>Mendeley</publisher><description>To evaluate our mechanisms, we have considered a dataset that has been released by Google in May 2011. This dataset represents 29 days of status information about a cluster of 11k physical machines that are operated as a single unit. It contains a realistic mixture of workloads, as it was collected from a Cluster of nonhomogeneous machines. This Cluster was composed of three different platforms and a variety of memory/compute ratios. The platforms are; Type A includes 126 machines, Type B includes about 10K machines, and Type C includes 7950 machines with top configuration. We focused on the Type C platform as CPU and memory size measurements are normalized to the configuration of the largest machines. The exact machine configurations, exact numbers of CPU cores and bytes of memory, were normalized to the configuration of the largest machine. The dataset contains percentages of used resources by each task and requests to allocate these resources. We focused only on data that belongs to the usage of resources, which include measurements of CPU usage, memory space usage, and some other measurements. For simplicity, CPU, and memory measurements were focused on, where each file is organized as the following: the first column is the occurrence time, the second column is CPU measurements, and the third column is memory measurements. </description><subject>Data Array</subject><type>Other:Dataset</type><identifier>10.17632/rc6rwf7c8n.1</identifier><rights>Apache License 2.0</rights><rights>http://www.apache.org/licenses/LICENSE-2.0</rights><relation>https:/data.mendeley.com/datasets/rc6rwf7c8n</relation><date>2016-11-04T17:33:54Z</date><recordID>0.17632-rc6rwf7c8n.1</recordID></dc>
format Other:Dataset
Other
author AL-Sayed, Mostafa
title Prediction Mechanisms for Monitoring State of Cloud Resources Using Markov Chain Model
publisher Mendeley
publishDate 2016
topic Data Array
url https:/data.mendeley.com/datasets/rc6rwf7c8n
contents To evaluate our mechanisms, we have considered a dataset that has been released by Google in May 2011. This dataset represents 29 days of status information about a cluster of 11k physical machines that are operated as a single unit. It contains a realistic mixture of workloads, as it was collected from a Cluster of nonhomogeneous machines. This Cluster was composed of three different platforms and a variety of memory/compute ratios. The platforms are; Type A includes 126 machines, Type B includes about 10K machines, and Type C includes 7950 machines with top configuration. We focused on the Type C platform as CPU and memory size measurements are normalized to the configuration of the largest machines. The exact machine configurations, exact numbers of CPU cores and bytes of memory, were normalized to the configuration of the largest machine. The dataset contains percentages of used resources by each task and requests to allocate these resources. We focused only on data that belongs to the usage of resources, which include measurements of CPU usage, memory space usage, and some other measurements. For simplicity, CPU, and memory measurements were focused on, where each file is organized as the following: the first column is the occurrence time, the second column is CPU measurements, and the third column is memory measurements.
id IOS7969.0.17632-rc6rwf7c8n.1
institution Universitas Islam Indragiri
affiliation onesearch.perpusnas.go.id
institution_id 804
institution_type library:university
library
library Teknologi Pangan UNISI
library_id 2816
collection Artikel mulono
repository_id 7969
city INDRAGIRI HILIR
province RIAU
shared_to_ipusnas_str 1
repoId IOS7969
first_indexed 2020-04-08T08:32:42Z
last_indexed 2020-04-08T08:32:42Z
recordtype dc
_version_ 1686587769102532608
score 17.538404