I have data sets representing travel times past given nodes. The data is in one CSV file per node in this format:
node name, datetime, irrelevant field, mac address
I'm reading them into one DataFrame in Pandas:
dfs = [pd.read_csv(f, names=CSV_COLUMNS, parse_dates=) for f in files] return pd.concat(dfs)
What I want to do is find the time difference between a MAC address' appearance at one node and the next. Right now I'm looping over the resulting DataFrame, which isn't efficient and isn't working: every way I've tried to sort the data causes a problem.
- I can't sort it by MAC and date and time because I need to preserve the direction of travel (sorting by date and time results in all direction looking like it's in the positive direction).
- Sorting by MAC alone keeps the nodes in order (because they are pushed into the file in node order)
While I may be able to figure out the sorting problem, the larger issue is I'm new to Pandas and I bet there's a right way to do this in Pandas. What I want at the end of processing is a data set that shows travel time (
timediff.total_seconds() or similar) for every pair of nodes that a MAC traveled directly between. That last bit is important: for a layout where the nodes are A, B and C, most travel will be A-B or B-C (or the reverse), but it is possible some MACs won't register at B and will go A to C. It's also possible some of the appearances will be orphans where a MAC appears at a node but never shows up at another node.