I've looked all over for an answer to this one, but nothing really seems to fit the bill. I've got very large files that I'm trying to read with ATpy, and the data comes in the form of numpy arrays. For smaller files the following code has been sufficient:
sat = atpy.Table('satellite_data.tbl')
From there I build up a number of variables that I have to manipulate later for plotting purposes. It's lots of these kinds of operations:
w1 = np.array([sat['w1_column']]) w2 = np.array([sat['w2_column']]) w3 = np.array([sat['w3_column']]) colorw1w2 = w1 - w2 #just subtracting w2 values from w1 values for each element colorw1w3 = w1 - w3
But for very large files the computer can't handle it. I think all the data is getting stored in memory before parsing begins, and that's not feasible for 2GB files. So, what can I use instead to handle these large files?
I've seen lots of posts where people are breaking up the data into chunks and using
for loops to iterate over each line, but I don't think that's going to work for me here given the nature of these files, and the kinds of operations I need to do on these arrays. I can't just do a single operation on every line of the file, because each line contains a number of parameters that are assigned to columns, and in some cases I need to do multiple operations with figures from a single column.
Honestly I don't really understand everything going on behind the scenes with ATpy and numpy. I'm new to Python, so I appreciate answers that spell it out clearly (i.e. not relying on lots of implicit coding knowledge). There has to be a clean way of parsing this, but I'm not finding it. Thanks.