from measurements I get text files that basically contain a table of float numbers, with the dimensions 1000x1000. Those take up about 15MB of space which, considering that I get about 1000 result files in a series, is unacceptable to save. So I am trying to compress those by as much as possible without loss of data. My idea is to group the numbers into ~1000 steps over the range I expect and save those. That would provide sufficient resolution. However I still have 1.000.000 points to consider and thus my resulting file is still about 4MB. I probably won t be able to compress that any further? The bigger problem is the calculation time this takes. Right now I d guesstimate 10-12 secs per file, so about 3 hrs for the 1000 files. WAAAAY to much. This is the algorithm I thougth up, do you have any suggestions? There's probably far more efficient algorithms to do that, but I am not much of a programmer...

```
import numpy
data=numpy.genfromtxt('sample.txt',autostrip=True, case_sensitive=True)
out=numpy.empty((1000,1000),numpy.int16)
i=0
min=-0.5
max=0.5
step=(max-min)/1000
while i<=999:
j=0
while j<=999:
k=(data[i,j]//step)
out[i,j]=k
if data[i,j]>max:
out[i,j]=500
if data[i,j]<min:
out[i,j]=-500
j=j+1
i=i+1
numpy.savetxt('converted.txt', out, fmt="%i")
```

Thanks in advance for any hints you can provide! Jakob

textfiles as output, something like 7zip will give you excellent compression. – agf Aug 4 '11 at 13:29