Published May 4, 2018 | Version v1
Dataset Open

KPI Mappings

  • 1. Intel Labs Europe

Description

The data is generated from deployments of a virtualised media processing function using different allocations of the vCPU and memory. The specific combinations are as follows:

 

| Name       |   RAM | Disk | Ephemeral | VCPUs |
+------------+-------+------+-----------+-------+
| i1.small   |  1024 |   80 |         0 |     1 |
| i1.medium  |  2048 |   80 |         0 |     1 | 
| i1.large   |  4096 |   80 |         0 |     1 | 
| i1.xlarge  |  8192 |   80 |         0 |     1 | 
| i2.small   |  1024 |   80 |         0 |     2 | 
| i2.medium  |  2048 |   80 |         0 |     2 | 
| i2.large   |  4096 |   80 |         0 |     2 | 
| i2.xlarge  |  8192 |   80 |         0 |     2 | 
| i3.small   |  1024 |   80 |         0 |     4 | 
| i3.medium  |  2048 |   80 |         0 |     4 | 
| i3.large   |  4096 |   80 |         0 |     4 | 
| i3.xlarge  |  8192 |   80 |         0 |     4 | 


The instances of virtualized media processing function are stressed using a workload generator (HAMMER) with the following profile.

  • 5 second steps of 5 incremental users for 50 steps resulting in a final simulated user loads of 250 users.

The telemetry data in the dataset is collected using the open source snap telemetry framework for each unique deployment. The dataset also integrates selected metrics as measured by Hammer such as through and latency for each unique deployment.

The dataset contains two iterations for each unique deployment of the of the virtualized media processing function

This data can used as input into analytics process such as KPI mapping.

 

Files

superfluidity_kpimappings_data.zip

Files (16.7 MB)

Name Size Download all
md5:bf4b8a17d41ae369f65916606da9281d
16.7 MB Preview Download

Additional details

Funding

SUPERFLUIDITY – Superfluidity: a super-fluid, cloud-native, converged edge system 671566
European Commission