LogoLogo
HomeDocsAPIProjectsForum
  • Getting Started
    • For beginners
    • For ML practitioners
    • For embedded engineers
  • Frequently asked questions
  • Tutorials
    • End-to-end tutorials
      • Continuous motion recognition
      • Responding to your voice
      • Recognize sounds from audio
      • Adding sight to your sensors
        • Collecting image data from the Studio
        • Collecting image data with your mobile phone
        • Collecting image data with the OpenMV Cam H7 Plus
      • Object detection
        • Detect objects using MobileNet SSD
        • Detect objects with FOMO
      • Sensor fusion
      • Sensor fusion using Embeddings
      • Processing PPG input with HR/HRV Features Block
      • Industrial Anomaly Detection on Arduino® Opta® PLC
    • Advanced inferencing
      • Continuous audio sampling
      • Multi-impulse
      • Count objects using FOMO
    • API examples
      • Running jobs using the API
      • Python API Bindings Example
      • Customize the EON Tuner
      • Ingest multi-labeled data using the API
      • Trigger connected board data sampling
    • ML & data engineering
      • EI Python SDK
        • Using the Edge Impulse Python SDK with TensorFlow and Keras
        • Using the Edge Impulse Python SDK to run EON Tuner
        • Using the Edge Impulse Python SDK with Hugging Face
        • Using the Edge Impulse Python SDK with Weights & Biases
        • Using the Edge Impulse Python SDK with SageMaker Studio
        • Using the Edge Impulse Python SDK to upload and download data
      • Label image data using GPT-4o
      • Label audio data using your existing models
      • Generate synthetic datasets
        • Generate image datasets using Dall·E
        • Generate keyword spotting datasets
        • Generate physics simulation datasets
        • Generate audio datasets using Eleven Labs
      • FOMO self-attention
    • Lifecycle Management
      • CI/CD with GitHub Actions
      • OTA Model Updates
        • with Nordic Thingy53 and the Edge Impulse APP
      • Data Aquisition from S3 Object Store - Golioth on AI
    • Expert network projects
  • Edge Impulse Studio
    • Organization hub
      • Users
      • Data campaigns
      • Data
      • Data transformation
      • Upload portals
      • Custom blocks
        • Transformation blocks
        • Deployment blocks
          • Deployment metadata spec
      • Health Reference Design
        • Synchronizing clinical data with a bucket
        • Validating clinical data
        • Querying clinical data
        • Transforming clinical data
        • Buildling data pipelines
    • Project dashboard
      • Select AI Hardware
    • Devices
    • Data acquisition
      • Uploader
      • Data explorer
      • Data sources
      • Synthetic data
      • Labeling queue
      • AI labeling
      • CSV Wizard (Time-series)
      • Multi-label (Time-series)
      • Tabular data (Pre-processed & Non-time-series)
      • Metadata
      • Auto-labeler [Deprecated]
    • Impulse design & Experiments
    • Bring your own model (BYOM)
    • Processing blocks
      • Raw data
      • Flatten
      • Image
      • Spectral features
      • Spectrogram
      • Audio MFE
      • Audio MFCC
      • Audio Syntiant
      • IMU Syntiant
      • HR/HRV features
      • Building custom processing blocks
        • Hosting custom DSP blocks
      • Feature explorer
    • Learning blocks
      • Classification (Keras)
      • Anomaly detection (K-means)
      • Anomaly detection (GMM)
      • Visual anomaly detection (FOMO-AD)
      • Regression (Keras)
      • Transfer learning (Images)
      • Transfer learning (Keyword Spotting)
      • Object detection (Images)
        • MobileNetV2 SSD FPN
        • FOMO: Object detection for constrained devices
      • NVIDIA TAO (Object detection & Images)
      • Classical ML
      • Community learn blocks
      • Expert Mode
      • Custom learning blocks
    • EON Tuner
      • Search space
    • Retrain model
    • Live classification
    • Model testing
    • Performance calibration
    • Deployment
      • EON Compiler
      • Custom deployment blocks
    • Versioning
  • Tools
    • API and SDK references
    • Edge Impulse CLI
      • Installation
      • Serial daemon
      • Uploader
      • Data forwarder
      • Impulse runner
      • Blocks
      • Himax flash tool
    • Edge Impulse for Linux
      • Linux Node.js SDK
      • Linux Go SDK
      • Linux C++ SDK
      • Linux Python SDK
      • Flex delegates
    • Edge Impulse Python SDK
  • Run inference
    • C++ library
      • As a generic C++ library
      • On your desktop computer
      • On your Zephyr-based Nordic Semiconductor development board
    • Linux EIM Executable
    • WebAssembly
      • Through WebAssembly (Node.js)
      • Through WebAssembly (browser)
    • Docker container
    • Edge Impulse firmwares
  • Edge AI Hardware
    • Overview
    • MCU
      • Nordic Semi nRF52840 DK
      • Nordic Semi nRF5340 DK
      • Nordic Semi nRF9160 DK
      • Nordic Semi nRF9161 DK
      • Nordic Semi nRF9151 DK
      • Nordic Semi nRF7002 DK
      • Nordic Semi Thingy:53
      • Nordic Semi Thingy:91
    • CPU
      • macOS
      • Linux x86_64
    • Mobile Phone
    • Porting Guide
  • Integrations
    • Arduino Machine Learning Tools
    • NVIDIA Omniverse
    • Embedded IDEs - Open-CMSIS
    • Scailable
    • Weights & Biases
  • Pre-built datasets
    • Continuous gestures
    • Running faucet
    • Keyword spotting
    • LiteRT (Tensorflow Lite) reference models
  • Tips & Tricks
    • Increasing model performance
    • Data augmentation
    • Inference performance metrics
    • Optimize compute time
    • Adding parameters to custom blocks
    • Combine Impulses
  • Concepts
    • Glossary
    • Data Engineering
      • Audio Feature Extraction
      • Motion Feature Extraction
    • ML Concepts
      • Neural Networks
        • Layers
        • Activation Functions
        • Loss Functions
        • Optimizers
          • Learned Optimizer (VeLO)
        • Epochs
      • Evaluation Metrics
    • Edge AI
      • Introduction to edge AI
      • What is edge computing?
      • What is machine learning (ML)?
      • What is edge AI?
      • How to choose an edge AI device
      • Edge AI lifecycle
      • What is edge MLOps?
      • What is Edge Impulse?
      • Case study: Izoelektro smart grid monitoring
      • Test and certification
    • What is embedded ML, anyway?
    • What is edge machine learning (edge ML)?
Powered by GitBook
On this page
  • Getting Started
  • Command Options
  • Troubleshooting
  1. Tools
  2. Edge Impulse CLI

Serial daemon

PreviousInstallationNextUploader

Last updated 1 year ago

The serial daemon is used to connect fully-supported devices to Edge Impulse so that data from their on-board sensors can be uploaded directly into Edge Impulse Studio. This is particularly helpful for devices without an IP connection, for which the serial daemon acts as a data upload proxy. You can also use the serial daemon to configure the upload parameters.

Recent versions of Google Chrome and Microsoft Edge can connect directly to fully-supported development boards, without the serial daemon. See for more information.

Getting Started

The serial daemon is part of the . In order to use the daemon, you first have to .

To use the daemon, connect a fully-supported development board to your computer and run:

$ edge-impulse-daemon

The daemon will prompt you to log in, and then configure the device. If your device does not have the right firmware yet, it will also prompt you to upgrade it.

This is an example of the output of the daemon:

Edge Impulse serial daemon v1.1.0
? What is your user name or e-mail address? jan@edgeimpulse.com
? What is your password? [hidden]
Endpoints:
    Websocket: wss://remote-mgmt.edgeimpulse.com
    API:       https://studio.edgeimpulse.com
    Ingestion: https://ingestion.edgeimpulse.com

[SER] Connecting to /dev/tty.usbmodem401203
[SER] Serial is connected, trying to read config...
[SER] Retrieved configuration
? To which project do you want to add this device? accelerometer-demo-1
Configuring API key in device... OK
Configuring HMAC key in device... OK
? What name do you want to give this device? Jan's DISCO-L475VG
Setting upload host in device... OK
Configuring remote management settings... OK
? WiFi is not connected, do you want to set up a WiFi network now? Yes
Scanning WiFi networks... OK
? Select WiFi network SSID: edgeimpulse-office, Security: WPA2 (3), RSSI: -60 dBm
? Enter password for network "edgeimpulse-office" 0624710192
Connecting to "edgeimpulse-office"... OK
[SER] Device is connected over WiFi to remote management API, no need to run the daemon. Exiting...

Note: Your credentials are never stored. When you log in, the serial daemon exchanges your credentials for a session token, which is used to further authenticate requests.

Switching projects

You can use one device for many projects. To switch projects run:

$ edge-impulse-daemon --clean

And select the new project. The device will remain listed in the old project, and if you switch back will retain the same name and last seen date.

Running --clean resets both the daemon configuration and the on-device configuration. If you run into issues, you can connect to the device using a serial console (with a baud rate of 115,200) and send the AT+CLEARCONFIG command to the device, to remove its configuration.

Command Options

Serial daemon options can be invoked as follows:

$ edge-impulse-daemon [options]

API authentication --api-key

Enables authentication using a project API key. API keys are long strings of random characters that start with ei_ and can be obtained from the project's dashboard on Edge Impulse Studio. Example:

$ edge-impulse-daemon --api-key ei_XXXXXXXXXXXXX

Baud Rate --baud-rate

Change the rate of the communication between the device and Edge Impulse Studio. Default is 115,200 baud. Example:

$ edge-impulse-daemon --baud-rate 9600

Clear Configuration --clean

Clears (resets) the daemon and device configurations.

Silent mode --silent

Skip all wizards (except for the login prompt). This is useful in headless environments where the session token has already been obtained, or authentication is requested via the --api-key option.

Verbose mode --verbose

Print additional information during execution. Useful for debugging.

Version --version

Prints the version of the Edge Impulse CLI (and therefore, the serial daemon) installed.

Troubleshooting

Unable to set up WiFi with ST B-L475E-IOT01A development board

? WiFi is not connected, do you want to set up a WiFi network now? Yes
Scanning WiFi networks...Error while setting up device Timeout

If you are using the development board, you may experience the following error when attempting to connect to a WiFi network:

There is a with the firmware for this development board's WiFi module that results in a timeout during network scanning if there are more than 20 WiFi access points detected. If you are experiencing this issue, you can work around it by attempting to reduce the number of access points within range of the device, or by skipping WiFi configuration.

this blog post
Edge Impulse CLI
install the CLI
ST B-L475E-IOT01A
known issue