Edge Based Data-Driven Pipelines (Technical Report)

08/03/2018
by   Eduard Gibert Renart, et al.
0

This research reports investigates an edge on-device stream processing platform, which extends the serverless com- puting model to the edge to help facilitate real-time data analytics across the cloud and edge in a uniform manner. We investigate associated use cases and architectural design. We deployed and tested our system on edge devices (Raspberry Pi and Android Phone), which proves that stream processing analytics can be performed at the edge of the network with single board computers in a real-time fashion.

READ FULL TEXT
research
04/28/2016

Architectural Impact on Performance of In-memory Data Analytics: Apache Spark Case Study

While cluster computing frameworks are continuously evolving to provide ...
research
01/12/2019

NNStreamer: Stream Processing Paradigm for Neural Networks, Toward Efficient Development and Execution of On-Device AI Applications

We propose nnstreamer, a software system that handles neural networks as...
research
02/01/2019

OODIDA: On-board/Off-board Distributed Data Analytics for Connected Vehicles

Connected vehicles may produce gigabytes of data per hour, which makes c...
research
08/02/2018

StreamBox-TZ: Secure Stream Analytics at the Edge with TrustZone

While it is compelling to process large streams of IoT data on the cloud...
research
03/14/2023

Lotus: Serverless In-Transit Data Processing for Edge-based Pub/Sub

Publish-subscribe systems are a popular approach for edge-based IoT use ...
research
10/09/2020

Real-time Mask Detection on Google Edge TPU

After the COVID-19 outbreak, it has become important to automatically de...
research
01/19/2022

GEMEL: Model Merging for Memory-Efficient, Real-Time Video Analytics at the Edge

Video analytics pipelines have steadily shifted to edge deployments to r...

Please sign up or login with your details

Forgot password? Click here to reset