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revised Python pandas interpolation issues
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comment Python pandas interpolation issues
@riccamini: I've added some code which reproduces the ZeroDivisionError. Please check that this code accurately models your situation.
1h
revised Python pandas interpolation issues
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9h
comment Send an image using PIL and StringIO
Note also that send and recv are not guaranteed to send or receive every byte. So you need to loop-and-check to make sure you've received the proper number of bytes. See for example tdelaney's _get_block and _send_block.
9h
comment Send an image using PIL and StringIO
In that case you could send the size of the string first, followed by the string itself. That way, the client will know how many bytes to expect. See stackoverflow.com/a/27429611/190597 for example.
22h
comment Send an image using PIL and StringIO
You may find stackoverflow.com/q/2915030/190597 helpful. Note that you must call shutdown or close from the server to cause recv to return '' in the client. Do not send 'done' from the server unless the client is also prepared to remove 'done' from the bytes received. Since there is no advantage to sending 'done', you might as well not send it at all.
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comment Need to add an element in a numpy array
Instead of that for-loop (and np.zeros), you could use f = np.linspace(f_min, f_max, N).
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revised Looking for an efficient way to manipulate JSON data
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answered multiprocessing.Pool.imap_unordered with fixed queue size or buffer?
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answered Looking for an efficient way to manipulate JSON data
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comment for looping through arrays in python- from matlab
It's best to just try out np.arange(1, parts, L) versus np.arange(1, parts*L, L) in a Python interactive session, for concrete values of parts and L. I'm sure it will quickly become clear to you then. The second parameter, the stop value, is always slightly bigger than the last value in the array returned by np.arange. Like range, np.arange does not include the stop value. Since we want the last value to be (parts-1)*L + 1, a stop value of parts*L will do since we're incrementing with stepsize L. parts*L - L + 2 would also work, but that's unnecessarily complicated.
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revised for looping through arrays in python- from matlab
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revised for looping through arrays in python- from matlab
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revised for looping through arrays in python- from matlab
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answered for looping through arrays in python- from matlab
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reviewed Approve Python - an identical line of code using datetime fails in one file but not another
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comment How to output last column element of NumPy 2D array ignoring nan in Python?
@PadraicCunningham: Yes, for large CSV, pd.read_csv is faster than np.genfromtxt. See wesmckinney.com/blog/… for some discussion and benchmarks. The benchmarks there do not use np.genfromtxt, but I did make a big CSV for this problem using df = pd.concat([pd.read_table('data', sep='\s+')]*10000, ignore_index=True) and found pd.read_csv to be faster about 5x faster than np.genfromtxt.
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answered Can I use XPath or something else like a regex to extract data from XML?
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revised How to output last column element of NumPy 2D array ignoring nan in Python?
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