I'm working on some scientific python code which I would like to speed up. One specific problem is reading in lots data which is stored in text files using formated strings. I figured out that the approach using split() and np.array() works nicely, but is really slow if compared to what I'm used from FORTRAN.
I'm wondering weather scipy.weave could be used here, unfortunately I'm no expert in C. Here is an example:
line =" 0.7711408E-01 0.7616138E-01 0.7521919E-01" arr = np.array(line.split(),dtype=np.float) print arr
This works, but is far to slow for large data sets. What about something like this, bu working?
line =" 0.7711408E-01 0.7616138E-01 0.7521919E-01" arr = np.zeros(3) weave.inline("""sscanf(std::string(line).c_str(),"%f %f %f",arr);""",['line','arr']) print arr