I am creating panel data by importing from a database's API using a function called
instance which generates a pd.DataFrame column of 200 dict objects, each containing the values for the same variables (e.g. "Number of comments" and "Number of views") corresponding to one of the 200 members of the panel.
This data is constantly being updated in real time and the database does not store its data. In other words, if one wants to keep track of how the data progresses over time, one must manually call the function
instance every desired period (e.g. every hour).
I am wondering how I would go about writing a program to passively run my
instance function every hour appending it to every other hour's execution. For this purpose, I have found the
threading module of potential interest, particularly its
Timer program, but have had difficulty applying it effectively. This is what I have come up with:
def instance_log(year, month, day, loglength): start = datetime.datetime.now() log = instance(year,month,day) t = threading.Timer(60, log.join(instance(year, month, day))) t.start() if datetime.datetime.now() > start+datetime.timedelta(hours=loglength): t.cancel() return(log)
I tried running this program for loglength=1 (i.e. update the
log DataFrame every minute for an hour), but it failed. Any help diagnosing what I did wrong or suggesting an alternate means of achieving what I'd want would be greatly appreciated.
By the way, to avoid confusion, I should clarify the inputs
day are used to identify the 200 panel members so that I use the same panelists for each iteration of instance.