I'd like to record and store trajectories of a collaborative robot. It works so far, and as a test I could create csv files with the coordinates and play them back. I'll have other kind of related information in a database, and it would be nice to store trajectories next to those (they aren't too big anyway, 500Hz sampling frequency, few seconds long mostly). My DBMS is Postgresql (I like and use this most of the time). The DBMS doesn't need to do anything with the trajectory data, just the metadata (e.g. to filter relevant trajectories), just stores it. Trajectories are in numpy arrays. Before playing anything back, I'll load it into memory.
My question is what is the ideal way to store this. I came up with a few myself:
- Use Postgresql's ARRAYs (double in my case) - It'll offer me a way to see into the data in the DBMS I don't need. But loading/storing might be a bit trickier.
- Use Postgresql text type to store and load my matrix as a "string"/bytes.
base64.encodebytes(pickle.dumps(m))gives back a base64-encoded string of m that can be stored in the record,
pickle.loads(base64.decodebytes(str))creates my numpy array. This uses 6 bits per byte, which isn't that great, but the code is simple.
- Use bytea as the data type with hex encoding. This is more verbose with 4 bits/char. (the classic "escape"-style is even worse)
- Something better.
I'm considering choosing the 2nd method (maybe 1st), but interested if there's something better.