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Feb
4 
comment 
Finding the best combination of lists with maximum function value
If nothing is known about func() , it is a combinatorial problem, as you already noted. An example for func() would helpful to see if more can be done ...

Feb
4 
answered  How to solve an equation with variables in a matrix in Python? 
Feb
3 
comment 
What is a fast way in Python to read HDF5 compound dtype arrays?
You could try using Pytables (pytables.org). It has a builtin Numpy interface and its optimized for speed. 
Jan
27 
answered  How do I fit a quadratic surface to some points in Python? 
Jan
17 
comment 
Different scipy versions give different results for curve_fit
Is your problem well posed? In general, multivariate nonlinear optimization problems often have a high number of local minimas and are therefore susceptible for numeric instabilities. Hence a different computer (architecture) or software library version could lead to different results. A simple indicator is varying the initial and bounding conditions and check if that leads to different results. 
Jan
17 
answered  How to do elementwise processing (first int, then pairwise absolute length) to avoid memory problems? (python) 
Jan
13 
comment 
Sympy second order ode
It depends on the signs of m and k . If you write m, k = sy.symbols('m k', positive=True) , you'll get the real (physical) solution. There are quite a few applications, where complex solutions are used. BTW, you'll have to cope with the same problem, if you use Mathematica or Maple.

Jan
13 
revised 
Sympy second order ode
Typos 
Jan
12 
revised 
Sympy second order ode
Added Python Tag to make the code blocks typeset correctly 
Jan
12 
revised 
Sympy second order ode
Typeset code correctly 
Jan
12 
answered  Sympy second order ode 
Jan
11 
comment 
Speed up the writing of hundreds of 3D numpy arrays to an hdf5 file
You could take a look into PyTables (pytables.org/index.html)  its designed to cope with datasets larger than the RAM size. 
Dec
22 
comment 
Fastest way to get average value of frequencies within range
Concerning Edit 3: Since your signals have the same length, calculate the mask outside the loop. Furthermore, use rfft(data, n=n_pow2) instead of fft(data) and multiply your resulting mean by 2, where n_pow2=2**(ceil(log2(len(data))) pads data with zeros to the next power of 2. This ensures that the faster FFT algorithm is used and not the slower DFT algorithm. rfft() only calculates the positive frequencies (halft the spectrum), which is ok if the signal is realvalued.

Dec
19 
revised 
Fastest way to get average value of frequencies within range
Typos 
Dec
19 
answered  Fastest way to get average value of frequencies within range 
Dec
11 
comment 
scipy.optimize.leastsq calls objective function with NaN
It seems like that the combination of noise and the numeric Jacobian shoots the x into regions way off, resulting in NaNs. That is a strong indication that the optimizer is not able to deliver reliable results. This usually calls for a reformulation of the optimization problem by imposing additional constraints, to make it less illposed. Perhaps using a constrained optimizer (docs.scipy.org/doc/scipy/reference/tutorial/…) could be a possible workaround. Also relaxing the termination conditions might help. 
Dec
11 
comment 
Bizarre behavior of scipy.linalg.eigvalsh in Python
How reproducible is it (I cannot reproduce it with as well)? If your matrix is conditioned poorly, then it is probable that you'll get significantly deviating results when using different algorithms. np.linalg.cond() can give you a pointer in that direction. Also adding np.eye(2000) to your matrix ensures better numeric properties.

Dec
5 
awarded  Yearling 
Nov
29 
reviewed  Approve Pure Data for music composition? 
Nov
29 
reviewed  Approve How to adapt c# to c++ 