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On this page
  • Upload tabular data samples
  • 1. Using the CSV Wizard
  • 2. Using Edge Impulse info.labels description file
  • Visualizing tabular data samples
  • Classify tabular data
  • Resources
  1. Edge Impulse Studio
  2. Data acquisition

Tabular data (Pre-processed & Non-time-series)

PreviousMulti-label (Time-series)NextMetadata

Last updated 6 months ago

Edge Impulse has been a powerful platform for processing raw data like time-series and images, and now we’re taking it even further. With tabular data import, we’re empowering users by enabling seamless integration of pre-processed data, giving you more flexibility in how you work. Whether you process data externally or face restrictions with raw data, this update makes it even easier to leverage Edge Impulse for all your data handling and model training needs.

Check out the !

Upload tabular data samples

1. Using the CSV Wizard

2. Using Edge Impulse info.labels description file

The other way is to create a info.labels file, present in your dataset. Edge Impulse will automatically detect it when you upload your dataset and will use this file to set the labels.

Visualizing tabular data samples

Classify tabular data

In the Live classification tab, you can classify your tabular/pre-processed test samples:

Resources

Public projects

If your dataset is in the CSV format and contains a label column, the is probably the easiest method to import your tabular data.

Once your CSV Wizard is configured, you can use the , the or the .

Once you have your info.labels file available, to upload it, you can use the , the or the .

CSV Wizard
Studio Uploader
CLI Uploader
Ingestion API
Studio Uploader
CLI Uploader
Ingestion API
HRV AFIB - Tabular data
announcement blog
Tabular data
Tabular data sample preview
Test tabular data samples