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
  • Buckets
  • Datasets
  • Create a new dataset
  • Data
  • Adding data to your project
  • Previewing Data
  • Recap
  • Troubleshooting
  1. Edge Impulse Studio
  2. Organization hub

Data

PreviousData campaignsNextData transformation

Last updated 6 months ago

Since the creation of Edge Impulse, we have been helping customers to deal with complex data pipelines, complex data transformation methods and complex clinical validation studies.

In most cases, before even thinking about machine learning algorithms, researchers need to build quality datasets from real-world data. These data come from various devices (prototype devices being developed vs clinical/industrial-grade reference devices), have different formats (excel sheets, images, csv, json, etc...), and be stored in various places (researchers' computers, Dropbox folders, Google Drive, S3 buckets, etc...).

Dealing with such complex data infrastructure is time-consuming and expensive to develop and maintain. With the organizational data, we want to give you tools to centralize, validate and transform datasets so they can be easily imported into your projects to train your machine learning models.

Only available with Edge Impulse Enterprise Plan

Try our FREE today.

Health reference design

We have built a that describes an end-to-end ML workflow for building a wearable health product using Edge Impulse.

In this reference resign, we want to help you understand how to create a full clinical data pipeline by:

Buckets

Before we get started, you must link your organization with one or several storage buckets. First, select where your data lives:

  • AWS S3 buckets

  • Google Cloud Storage

  • Any S3-compatible bucket

And fill the form with your bucket name, region, endpoint access and secret keys:

A green dot indicates that your bucket is connected:

Datasets

Two types of dataset structures can be used - Generic datasets (default) and Clinical datasets.

There is no required format for data files. You can upload data in any format, whether it's CSV, Parquet, or a proprietary data format.

However, to import data items to an Edge Impulse project, you will need to use the right format as our studio ingestion API only supports these formats:

  • JPG, PNG images

  • MP4, AVI video files

  • WAV audio files

  • CSV files

The default dataset structure is a file-based one, no matter the directory structure:

For example:

images/
├── testing/
│   ├── 1.jpg
│   ├── 2.jpg
│   ├── 3.jpg
│   ...
│   └── 200.jpg
└── training/
    ├── 1.jpg
    ├── 2.jpg
    ├── 3.jpg
    ...
    └── 800.jpg

or:

keywords/
├── french-accent/
│   ├── hello.wav
│   ├── yes.wav
│   ├── no.wav
├── greek-accent/
│   ├── hello.wav
│   ├── yes.wav
│   ├── no.wav
└── unlabeled/
    ├── 1.wav
    ├── 2.wav
    ├── 3.wav
    ...
    └── 20.wav

Note that you will be able to associate the labels of your data items from the file name or the directory name when importing your data in a project.

The clinical datasets structure in Edge Impulse has three layers:

  1. The dataset, a larger set of data items, grouped together.

  2. Data item, an item with metadata and files attached.

  3. Data file, the actual files.

Create a new dataset

Once you successfully linked your storage bucket to your organization, head to the Datasets tab and click on + Add new dataset:

Fill out the following form:

Click on Create dataset

Data

Default view

The default view lets you navigate in your bucket following the directory structure. You can easily add data using the "+ New folder" button. To add new data, use the right panel - drag and drop your files and folders and it will automatically upload them to your bucket.

Clinical view

Tip: You can add two distinct datasets in Edge Impulse that point to the same bucket path, one generic and one clinical. This way you can leverage both the easy upload and the ability to query your datasets.

Adding data to your project

Go to the Actions...->Import data into a project, select the project you wish to import to and click Next, Configure how to label this data:

This will import the data into the project and optionally create a new label for each file in the dataset. This labeling step helps you keep track of different classes or categories within your data.

Previewing Data

We also have added a data preview feature, allowing you to visualize certain types of data directly within the organization data tab.

Supported data types include tables (CSV/Parquet), images, PDFs, audio files (WAV/MP3), and text files (TXT/JSON). This feature gives you a quick overview of your data and helps ensure its integrity and correctness.

Recap

Troubleshooting

CORS Headers

If you see the following message, make sure to add the CORS header to your bucket settings:

You can also add the CORS using the AWS S3 CLI:

aws s3api put-bucket-cors --bucket your-bucket --cors-configuration file://cors.json

with this file cors.json:

{
      "CORSRules": [
        {
            "AllowedHeaders": ["*"],
            "AllowedMethods": ["PUT", "POST"],
            "AllowedOrigins": ["https://studio.edgeimpulse.com"],
            "ExposeHeaders": []
        }
    ]
}

CBOR/JSON files in the

Tip: You can use to convert your data

See the tutorial for a deeper explanation.

With your datasets imported, you can now navigate into your dataset, create folders, , add data items and import your data to an Edge Impulse project.

The clinical view is slightly different, see for more information. This view lets you easily but to import data, you will need to set up an or upload them directly to your bucket.

After importing the data into the project, in the Next, post-sync actions step, you can configure a to automatically retrieve and trigger actions in your project:

If you need to get data into your organization, you can now do this in a few simple steps. To go further and use advanced features, query your datasets or transform your dataset, please have a look at the

Any questions, or interested in the enterprise version of Edge Impulse? for more information.

Enterprise Trial
health reference design
Synchronizing clinical data with a bucket
Validating clinical data
Querying clinical data
Transforming clinical data
Buildling data pipelines
Edge Impulse data acquisition format
transformation blocks
health reference design
query your dataset
synchronizing clinical data with a bucket
query your clinical dataset
upload portal
data pipeline
🚀
health reference design tutorial
Contact us
Add a storage bucket
Bucket connected to your organization
Datasets overview
Add new dataset
Add dataset
Data items overview
Clinical dataset overview
Uploading Files
Label your files
Data items overview - CSV/Parquet type
Data items overview - image type
CORS