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Dec
15 |
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Can't change mac address of docker containter
moved the -e lxc command to config file and updated to version 1.4. used docker run -i -t --privileged --mac-address=00:0c:29:88:30:cc centos ifconfig And it made no difference. Still doesn't work. |

Dec
15 |
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Can't change mac address of docker containter
Thanks for the reply. Makes no difference if I use privileged or not |

Dec
15 |
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Can't change mac address of docker containter
Okay thanks, I did have lxc-start command and lxc-docker installed. Still no joy |

Jul
9 |
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How to interpolate using nearest neighbours for high dimension numpy python arrays
Yes, that is correct for both your replies. Thanks for your help. |

Jul
8 |
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How to interpolate using nearest neighbours for high dimension numpy python arrays
Awesome this seems to work too, except I get very slight different answers than the method above. Does RegularGridInterpolator expect evenly spaced values? I don't think all of my values are. I have chlorophyll values that go up like so. 0.01, 0.1, 0.5, 1 .. |

Jul
8 |
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How to interpolate using nearest neighbours for high dimension numpy python arrays
Thanks heaps, this was very helpful. I had to add an extra step to squeeze dimensions that only had one value, but this seems to work. Well, it is giving me slightly different values that the method below. I need to investigate why. |

Jul
7 |
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How to interpolate using nearest neighbours for high dimension numpy python arrays
Actually,now that I have thought about it, I don't know why I am referencing the indexing using [x][y][z] rather than [x,y,z]. I inherited some code I am using and perpetuated it. Would that make a difference? the LUT is initialized using numpy.zeros(<dimensions>) and seems to behave the same using either notation. Sorry for the dumb Qs I am not a programmer by trade, more of a hacker. |

Jul
7 |
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How to interpolate using nearest neighbours for high dimension numpy python arrays
I did look at that, thanks. I can't get it to work. yes my data structure is a numpy array. The docs aren't as good as others here. What is Npoints, is that the points or the number of points or the number of dimensions of points? Does it need to know the size of each dimension? Same Q for Ndims? do I pass points as a tuple? is Ndims a nD array data[x,y,z,k,j,l] where k,j,l are higher orders than the common 3D xyz? Same question about values. I think a well worked (higher than 2d, preferably higher than 3D would help me get my head around it). Cheers |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
Yes this works as well. the out method that is. |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
UPdated my question |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
Okay thanks David. They code I have posted does return float32. However my other much more complex code returns as I originally posted. I need to go back and take another look at it as clearly I have made a different error somewhere. Yes I know numpy does 32 natively. Poorly phrased by me I meant I didn't want it to return 64 and then convert to 32 as that would not solve my issue. |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
I haven't tested this yet. I think that this will still make the very large array (11.5GB) and then convert it. so at some point in the execution it will max my memory. That is why I am avoiding converting and would like to force numpy to do it all using 32bit natively. |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
Good point. I have updated. |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
Just to clarify scipy.mean(scipy.zeros(600,600,4044), 2)) returns an array that is 600*600. That is the average through the z direction |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
No, it is not. numpy uses element by element calculation (like Matlab) so it returns 1455840000 data points at 64bit. hence the 11.5 GB. Try it your self. try import scipy. scipy.zeros(1455840000) and watch your computer fill its RAM |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
Thanks for taking the time to reply. But I don't think you understand my problem. I am using 64bit Python. I am not trying to fit my array into 32bit address space. I am merely trying to conserve the memory that I do have. 11.5Gb is too big, not because I don't have the room to process it just now. But because I still have more stuff I want to load. Also there is the memory from the OS taking up room. |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
Yes it is 64bit |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
The problem is that am storing data an a 600*600*4044 numpy array. I have machine with 16Gb of ram. At 64bit precision it takes up about 11.5GB or ram. I don't need that level of precision, so at 32bit it should take up 5.7(ish)GB or RAM. If I can force it to use float32. |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
How would that use less memory? |

Jun
7 |
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Trying to calcuate mean and std using float32 numpy arrays. Getting float64 returned
Why? I don't see how that would help. |