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  1. Tips & Tricks

Combine Impulses

PreviousAdding parameters to custom blocksNextGlossary

Last updated 6 months ago

Are you not sure how to design complex impulses? Here are some ways you can combine your impulses or data to suit your needs.

Multi-impulse vs multi-model vs sensor fusion

Multi-impulse refers to running two separate impulses (different data, different processing blocks, and different learning blocks) on the same device. It requires creating two projects and modifying some files in the EI-generated SDK. To make this easier, we have created a to generate the export package. This deployment block is available for Enterprise Plans. Please see the tutorial for further details.

These concepts are also discussed in the video below (starting at min 13):

Multi-model refers to running two different learning blocks (same data, same processing block, and different learning blocks) on the same device. See how to run a motion classifier model and an anomaly detection model on the same device in the tutorial. Currently, we only support stacking a Keras learning block with an anomaly detection learning block.

Sensor fusion refers to the process of combining data from different types of sensors to give more information to the learning block. To extract meaningful information from this data, you can use the same processing block (like in the tutorial), multiple processing blocks, or use neural network embeddings (like in the tutorial).

Continuous motion recognition
Sensor fusion
Sensor fusion using embeddings
multi-impulse deployment block
Multi-impulse
Multi-impulse vs sensor fusion vs multi-model