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I have a Postgresql database table that has measurements for z at 16 xy points in space. The measurement z was taken weekly for 1.5 years. Each measurement is an individual record with an attribute for xy location, a date, and the measurement z.

I am plotting these data as a time series plot with multiple lines, one for each xy point. I can successfully do this in what seems to be an inefficient way. I would like to learn a better way to do it. I am looking for a more efficient way to build the query so that I can try using ggplot similarly to this example: Plotting multiple time-series in ggplot

I am having trouble searching for an example query because I do not know what phrases to search. What function, join type, or etc should I search for?


The table is basically set up in this fashion:

location    date    elevation
w1  01/01/13    0.34
w2  01/01/13    0.45
w3  01/01/13    0.56
w1  01/08/13    0.59
w2  01/08/13    0.70
w3  01/08/13    0.81
w1  01/15/13    0.02
w2  01/15/13    0.13
w3  01/15/13    0.24
w1  01/22/13    0.81
w2  01/22/13    0.92
w3  01/22/13    1.03


#get well list
query = r.dbSendQuery(RdatabaseConnection,statement="""
    mytable as wells

wellIDs = r.fetch(query)
for ID in wellIDs[0]:
    print '\t',ID
    query = r.dbSendQuery(RdatabaseConnection,statement="""
            location = '"""+str(ID)+"""'

    wellData = r.fetch(query)

    if i==1:

share|improve this question
Why oh why are you using python to call out to R to call out to postgres? Instead, query directly from python and then pass that (using pandas may be a pleasant option) to R for your plotting. Since the plot is fairly simple, I would strongly suggest staying in pure python for that too. – Justin Mar 28 '13 at 14:55
I'm doing a lot of interpolation and analysis in R so I just went with R for the database calls. I'm still a bit of a hack. Learning languages as I go. Thank you for the suggestion. – damian Mar 28 '13 at 15:43
Fair enough. Scipy, scikits and pandas have lots of interpolation, linear modelling and analysis capabilities too. I would write in pure R or pure python with calls to the other only where absolutely necessary. – Justin Mar 28 '13 at 16:05
It would help if you gave us a minimal, reproducible data sample. A good way to do this is by using sqlfiddle.com. I use a lot of R calling Postgres data, using the excellent RPostgreSQL R package. Personally, my rule of thumb is to try to do everything possible server-side (i.e. in postgres) because I use a distributed version, Greenplum, and then slurp in just the amount of data in one data.frame, then do all the plotting using ggplot, melt, etc. – Pierre D Mar 28 '13 at 18:02
I have added a very simple example of what the data table looks like. I have also simplified the code snippet a bit. Thank you for your input. – damian Mar 28 '13 at 21:05

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