Skip to content

anshuiisc/riot-bench

 
 

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

29 Commits
 
 
 
 
 
 

Repository files navigation

RIoTBench: A Real-time IoT Benchmark for Distributed Stream Processing Platforms

Anshu Shukla, Shilpa Chaturvedi and Yogesh Simmhan, Concurrency and Computation: Practice and Experience, 2017 (To appear), Online: https://arxiv.org/abs/1701.08530

IoT Micro-benchmarks

Annotate ANN Parse Transform 1:1 No
CsvToSenML C2S Parse Transform 1:1 No
SenML Parsing SML Parse Transform 1:1 No
XML Parsing XML Parse Transform 1:1 No
Bloom Filter BLF Filter Filter 1:0/1 No
Range Filter RGF Filter Filter 1:0/1 No
Accumlator ACC Statistical Aggregate N:1 Yes
Average AVG Statistical Aggregate N:1 Yes
Distinct Appox. Count DAC Statistical Transform 1:1 Yes
Kalman Filter KAL Statistical Transform 1:1 Yes
Second Order Moment SOM Statistical Transform 1:1 Yes
Decision Tree Classify DTC Predictive Transform 1:1 No
Decision Tree Train DTT Predictive Aggregate N:1 No
Interpolation INP Predictive Transform 1:1 Yes
Multi-var. Linear Reg. MLR Predictive Transform 1:1 No
Multi-var. Linear Reg. Train MLT Predictive Aggregate N:1 No
Sliding Linear Regression SLR Predictive Flat Map N:M Yes
Azure Blob D/L ABD IO Source/Transform 1:1 No
Azure Blob U/L ABU IO Sink 1:1 No
Azure Table Lookup ATL IO Source/Transform 1:1 No
Azure Table Range ATR IO Source/Transform 1:1 No
Azure Table Insert ATI IO Transform 1:1 No
MQTT Publish MQP IO Sink 1:1 No
MQTT Subscribe MQS IO Sink 1:1 No
Local Files Zip LZP IO Sink 1:1 No
Remote Files Zip RZP IO Sink 1:1 No
MultiLine Plot PLT Visualization Transform 1:1 No

Application benchmarks

App. Name Code
Extraction, Transform and Load dataflow ETL
Statistical Summarization dataflow STATS
Model Training dataflow TRAIN
Predictive Analytics dataflow PRED

Extraction, Transform and Load dataflow (ETL)

FCAST

Statistical Summarization dataflow (STATS)

FCAST

Model Training dataflow (TRAIN)

FCAST

Predictive Analytics dataflow (PRED)

FCAST

  • Steps to run benchmark's
  • Once cloned run
    mvn clean compile package -DskipTests
    
  • To submit jar microbenchmarks-
storm jar <stormJarPath>   in.dream_lab.bm.stream_iot.storm.topo.micro.MicroTopologyDriver  C  <microTaskName>  <inputDataFilePath used by CustomEventGen and spout>   PLUG-<expNum>  <rate as 1x,2x>  <outputLogPath>   <tasks.properties File Path>   <TopoName>


  • For microTaskName please refer switch logic in MicroTopologyFactory class in package "in.dream_lab.bm.stream_iot.storm.topo.micro"

Please refer the paper for detailed info - https://arxiv.org/abs/1701.08530

Please cite as:

  • RIoTBench: A Real-time IoT Benchmark for Distributed Stream Processing Platforms, Anshu Shukla, Shilpa Chaturvedi and Yogesh Simmhan, Concurrency and Computation: Practice and Experience, 2017 (To appear)

This article is an extended version of:

  • Benchmarking Distributed Stream Processing Platforms for IoT Applications, Anshu Shukla and Yogesh Simmhan, TPC Technology Conference on Performance Evaluation & Benchmarking (TPCTC), 2016.

About

Real-time IoT Benchmark Suite

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages

  • Java 100.0%