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I have many (=1000+), large (=1000000+ records) data files with time, x, y, z data.

I used numpy.loadtxt against a sample file, to populate four parallel arrays; e.g.,

ts, xs, ys, zs = numpy.loadtxt( 'sampledatafile.csv', delimiter=',', unpack=True)

I want to select a subset of these parallel arrays, where the time is in a specified range; e.g.,

min_time = t0  # some time, in the same format as values in the data file
max_time = t1  # a later time

I have been able to do this, by iterating through the ts array; like this,

my_ts = []
my_xs = []
my_ys = []
my_zs = []

for row in range( len( ts ) ):
    if ( min_time <= ts[row] ) and ( ts[row] <= max_time ):
        my_ts.append( ts[row] )
        my_xs.append( ss[row] )
        my_ys.append( ys[row] )
        my_zs.append( zs[row] )

Is there a more efficient way here? I figure another approach is to load each record, using a csv file reader, and checking each record as it goes by, instead of numpy.loadtxt.

By surely there is a more clever way, in Python? Something like, "select all records in the ts array meeting the criteria, and the associated elements in the parallel arrays"? Is there is clever, and cool syntax, for this; especially if it is more efficient than the approach(es) above?

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If you're using Python <3, you want to use xrange instead of range. –  nmichaels Sep 23 '13 at 17:29
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2 Answers 2

arr = numpy.loadtxt( 'sampledatafile.csv', delimiter=',')
ts = arr[:, 0]
idx = (ts >= min_time) & (ts <= max_time)
my_ts, my_xs, my_ys, my_zs = arr[idx].T

If you would like to sort your array according to ts first, you could also use np.argsort:

idx = np.argsort(ts)
arr = arr[idx]
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This only works if ts is the same as the output of the range function. –  nmichaels Sep 23 '13 at 17:38
    
@nmichaels: He is already using for row in range(...) and ts[row]. So ts can be indexed this way -- assuming min_time and max_time are ints. –  unutbu Sep 23 '13 at 17:41
    
Right, I missed that. –  nmichaels Sep 23 '13 at 17:42
    
Timestamps aren't integers, sadly. But a clever notion, using slicing. Thanks for the suggestion. –  user2808134 Sep 23 '13 at 17:44
    
@user2808134: Since the timestamps are not ints, you could use np.ceil and int to round them to the correct integer index. I've edited my post to show what I mean. –  unutbu Sep 23 '13 at 17:53
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I don't know about quicker or better, but shorter:

from itertools import izip

arrays = [arr[min_time:max_time+1] for arr in (ts, xs, ys, zs)]

zip(*arrays)

That will give you a list of tuples (t, x, y, z). Alternatively, you could get a list of dictionaries dict(t=t, x=x, y=y, z=z). If you really want them to be in 4 separate lists, what you did but with xrange instead of range ought to be reasonable.

Edit: Updated to take into account unutbu's slicing and fix my misconceptions.

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