One way to reduce the number of points, that you need to visualize on a map, is to use geohashing which basically clusters the near-by points on a grid (not based on a radius!).

The geohash calculates an at most 8 digit long hash from the latitude and longitude coordinates. If you drop the last digit then you got the enclosing box of the cell.

The most precise hash has 19 meters error, the least precise hash has 2 500 kilometers error.

I highly recommend this website to get familiar with geohashing.

We were using an npm package (ngeohash) while we were enriching the events via KStream.

We have visualized the clusters' health and size in Grafana. Here are some sample pictures:

### The greener circle, the healthier cluster

### The bigger circle, the denser cluster