Deploying Your First App
In this guide we will describe how to deploy apps to
an edge device.
Note: Follow these steps if
a DevStudio has not been created or if you want to create a new one
- Navigate
to DevStudios in the side
panel
- Select
New Server
- Enter
a name for the DevStudio server and select Launch
Deploy an App to the Edge Device
On
the row for the appropriate DevStudio server, click Connect. This will
launch the platform DevStudio.
On
the left side panel, under “Devices” drag the Teknoir nodes on to the Flow 1
space
Configure
the configure-device node by double clicking on the node
Type
in a name if desired. From the device list provided, select the appropriate
device. Multiple devices can be selected by holding the SHIFT or CTRL key. When
complete, select Done.
Click
on each node connector and drag the line to the configure-device node.
Click
on the Deploy button on the top right of the window
A
message will appear in the Debug window to acknowledge that the app was sent to
the device.
Related Articles
Tutorial: Getting Started with Teknoir
Welcome to Teknoir! This guide will help you get started with our comprehensive MLOps platform. Follow the steps below to set up and begin using Teknoir's powerful features! Introduction to Teknoir Teknoir is an advanced platform designed for ...
Tutorial: Configure and Create an OS Image
Configure and create an OS image When creating a new device, if the system is supported by Teknoir (not generic), then a Teknoir Operating System (OS) image will be created. This guide will walk you through how to deploy the image. Download the OS ...
Developing and Deploying AI Models on Edge Devices
Deploying AI models on edge devices offers numerous benefits, including reduced latency, improved privacy, and decreased bandwidth usage. However, this process presents unique challenges, especially regarding the limited computational and storage ...
Edge AI Hardware: Devices and Platforms
Edge AI represents the integration of artificial intelligence at the edge of a network, where data is generated, processed, and analyzed close to the source. This approach reduces latency, enhances privacy, and enables real-time decision-making. The ...
Edge vs. Cloud: The AI Showdown - Key Differences, Benefits, and Hybrid Use Cases
As artificial intelligence (AI) technology advances, organizations must choose between deploying AI capabilities at the edge or in the cloud. While both edge AI and cloud AI offer powerful data processing capabilities, they do so in distinct ways, ...