GTM Stack: IoT Data Analytics at the Edge

GTM Stack: IoT Data Analytics at the Edge

In the following post, we will explore the integration of several open-source software applications to build an IoT edge analytics stack, designed to operate on ARM-based edge nodes. We will use the stack to collect, analyze, and visualize IoT data without first shipping the data to the Cloud or other external systems.

In the following post, we will explore the integration of several open-source software applications to build an IoT edge analytics stack, designed to operate on ARM-based edge nodes. We will use the stack to collect, analyze, and visualize IoT data without first shipping the data to the Cloud or other external systems.

GMT IoT Edge Analytics Stack architecture (Image by author)

The Edge

Edge computing is a fast-growing technology trend, which involves pushing compute capabilities to the edgeWikipedia describes edge computing as a distributed computing paradigm that brings computation and data storage closer to the location needed to improve response times and save bandwidth. The term edge commonly refers to a compute node at the edge of a network (edge device), sitting in close proximity to the source a data and between that data source and external system such as the Cloud.

In his recent post, 3 Advantages (And 1 Disadvantage) Of Edge Computing, well-know futurist Bernard Marr argues reduced bandwidth requirements, reduced latency, and enhanced security and privacy as three primary advantages of edge computing. Due to techniques like data downsampling, Marr advises one potential disadvantage of edge computing is that important data could end up being overlooked and discarded in the quest to save bandwidth and reduce latency.

David Ricketts, Head of Marketing at Quiss Technology PLC, estimates in his post, Cloud and Edge Computing — The Stats You Need to Know for 2018, the global edge computing market is expected to reach USD 6.72 billion by 2022 at a compound annual growth rate of a whopping 35.4 percent. Realizing the market potential, many major Cloud providers, edge device manufacturers, and integrators are rapidly expanding their edge compute capabilities. AWS, for example, currently offers more than a dozen services in the edge computing category.

edge-computing time-series-database iot grafana analytics

Bootstrap 5 Complete Course with Examples

Bootstrap 5 Tutorial - Bootstrap 5 Crash Course for Beginners

Nest.JS Tutorial for Beginners

Hello Vue 3: A First Look at Vue 3 and the Composition API

Building a simple Applications with Vue 3

Deno Crash Course: Explore Deno and Create a full REST API with Deno

How to Build a Real-time Chat App with Deno and WebSockets

Convert HTML to Markdown Online

HTML entity encoder decoder Online

Best Custom Web & Mobile App Development Company

Top Web & Mobile Application Development Company in India & USA. We specialize in Golang, Ruby on Rails, Symfony, Laravel PHP, Python, Angular, Mobile Apps, Blockchain, & Chatbots

Why Businesses Are Implementing Edge Analytics in Their Line of Work

Many businesses are exploring how edge analysis is different from conventional data processing solutions and how it could be beneficial to their operations.

Real-time Analytics News Roundup for Week Ending October 3

Amazon announces general availability of its new time series database for IoT and VMware rolls out new features for its Virtual Cloud Network offering.

IoT Analytics Platform for Real-Time and Stream Processing

Designing IoT Analytics Platform for Stream processing and Real time with Apache Flink with Azure Analytics Services, AWS IoT Analytics.

Live Video Analytics on Azure IoT Edge

Live Video Analytics on Azure IoT Edge (https://aka.ms/iotshow/LVAonIoTEdge) enables you to build video analytics enabled IoT solutions without worrying abou