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    This is the community forum for my apps Pythonista and Editorial.

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    Binary files read and write

    Pythonista
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    • ccc
      ccc last edited by

      What is SPL? What kind of computer writes the SPL datafile? What program on that computer writes the SPL datafile? Is there any documentation on the SPL format? Is there a sample SPL file with know values?

      I would start with:

      print(read_floats_via_array('MYSPLDATA.BIN'))
      

      And see if the values look good.

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      • ManuelU
        ManuelU last edited by

        The App is SPLnFFT for iOS. Your script works fine in Array mode with the only exception of this instruction: floats_in_the_file = os.path.getsize(filename) / struct.calcsize('f')

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        • ManuelU
          ManuelU last edited by

          I just noticed that you changed the source code of the script. Now it reads 5MB binary data in about 4 seconds using the Array Mode. I'll check the Structure Mode and report results. Congratulations

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          • ManuelU
            ManuelU last edited by

            How can I access the data in the 2D array to make plots and numeric calculation of aggregated data?. The App saves 5MB data for a 24 hours recording. If the recording time is shorter it pads data with zeroes. Is there a way to filter out this values while reading the file?. The total data saved in float format is computed as follows: count=2436008*2;

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            • ManuelU
              ManuelU last edited by

              There was an error count=24 * 3600 * 8 * 2; Sorry

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              • ManuelU
                ManuelU last edited by ccc

                Here is a short sample of the values read by your script in Array Mode. Observe the zero values at the end.

                (50.56001281738281, 53.25138854980469), (51.46320724487305, 59.16133117675781), (53.85163116455078, 56.33137512207031), (54.70978546142578, 54.6609001159668), (55.20241165161133, 47.02310562133789), (55.262977600097656, 40.11175537109375), (54.45186996459961, 43.808773040771484), (54.05076217651367, 42.50151824951172), (53.665225982666016, 54.5957145690918), (53.8406867980957, 65.96211242675781), (58.009944915771484, 65.0105972290039), (59.889801025390625, 59.607154846191406), (60.222530364990234, 56.390960693359375), (60.41679763793945, 54.57362747192383), (60.55101776123047, 41.55317687988281), (60.54636001586914, 40.97874450683594), (60.54383850097656, 46.896514892578125), (60.42774200439453, 45.11729049682617), (57.88348388671875, 49.7500114440918), (53.61359786987305, 46.01418685913086), (50.81377410888672, 36.51190185546875), (48.24237823486328, 31.083229064941406), (44.919986724853516, 32.971107482910156), (44.69907760620117, 46.87627410888672), (45.31845474243164, 39.48908233642578), (44.62737274169922, 35.4039192199707), (44.04755401611328, 34.72141647338867), (41.45051956176758, 34.2315673828125), (39.6866569519043, 33.11891174316406), (39.542598724365234, 50.92300796508789), (43.85606002807617, 34.235633850097656), (43.871002197265625, 40.384735107421875), (42.935977935791016, 52.999149322509766), (46.3834228515625, 52.6627311706543), (48.203895568847656, 57.949790954589844), (51.57520294189453, 52.208770751953125), (52.15311050415039, 45.712528228759766), (52.26800537109375, 50.851497650146484), (52.261497497558594, 46.12493133544922), (52.383358001708984, 84.88561248779297), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0), (0.0, 0.0)

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                • ccc
                  ccc last edited by

                  How can I access the data in the 2D array to make plots and numeric calculation of aggregated data?

                  I am unclear what you mean. Your last post looks to me like it is a list of (x, y) tuples. What else do you need?

                  To remove all (0.0,0.0) elements from your list...

                  my_list = [(x[0], x[1]) for x in my_list if x[0] and x[1]]  # remove all (0.0,0.0) elements
                  

                  count=24 * 3600 * 8 * 2

                  count = 24 (hours in a day) * 60 (minutes in an hour) * 60 (seconds in a minute) * 8 (what is this? (samples per second?)) * 2 (values (fast and slow?))

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                  • ManuelU
                    ManuelU last edited by

                    Thera are two weighting times for SPL meters : SLOW = 0ne reading per second; FAST = one reading every 1/8 of second. That means that you have a pair of eight data points every second. One minute has 60 seconds so you have 60 * 60 = 3600 seconds per hour. One hour has 3600 * 8 * 2 = 57600 data points in float format that are exported to Dropbox. Another problem are the NAN AND infinite values generated for many reasons, that have to be replaced by the previous SLOW or FAST recorded values. They are mostly negative values. As you can observe, there is a post processing job to be done before plotting or computing aggregated data to render reliable results.

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                    • ManuelU
                      ManuelU last edited by

                      The total size of any file exported to Dropbox by the App SPLnFFT Noise Meter is 5529600 Bytes, therefore each data point in float format uses 4 Bytes. (24 * 3600 * 8 * 2 = 1382400) * 4 = 5529600. I've observed that The instruction: floats_in_the_file = os.path.getsize(filename) / struct.calcsize('f') reads a lot of garbage where is supposed to read zeroes.

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                      • ccc
                        ccc last edited by

                        Do the array approach and struct approach generate the same list?

                        What is printed if you add print(floats_in_the_file) when you run the script against a 5529600 byte file? I would expect 1382400.

                        You could try removing bogus values by post-processing the list with:

                        my_list = [(x[0], x[1]) for x in my_list if x[0] > 0 and x[1] > 0]  # remove invalid elements
                        
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                        • ManuelU
                          ManuelU last edited by

                          You are right, the maximum number of data points in the binary file is 1382400. I'm new in Phytonista and I'll have to read how to detect and remove NaN an Infinite values in Phyton and what are the available Array functions. I've an Academic Apple Developer License and I'm exploring all the available options to process the noise data within the IOS environment with an Universal standalone App. As far as I know, Phytonista seems to be the only one to import SPL data with a script from the Dropbox to its sandbox, overriding the cumbersome iTunes File Sharing. The project is part of an epidemiological investigation on Environmental Noise and Health which includes, among other challenges, the simultaneous recording of an ECG.
                          Thanks for your valuable help.

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                          • ccc
                            ccc last edited by ccc

                            OK... In just over 1 second SPLnFFT_Reader.py reads 1,382,400 floats out of the binary file, converts that into a 2d list of 691,200 fast_slow pairs and cleans that down to a 2d list of 2,786 valid fast_slow pairs and prints out the first 50 pairs.

                            My cleansing step might not be right for your purposes. You can use math.isnan() and math.isinf() to find those values but I do not believe that it is required anymore because the author of the SPLnFFT app told me in an email that "In the matlab [example] script there is some processing to get rid of NaN data. But I thought I had solved this in latest release of SPLnFFT".

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                            • ccc
                              ccc last edited by

                              Calling all numpy gurus... Why does this not work as expected?

                              import numpy
                              data = numpy.fromfile('SPLnFFT_2015_07_21.bin', dtype=float)
                              print(len(data))  # 691200  :-( this is half of the expected number
                              
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                              • omz
                                omz last edited by

                                You can try this:

                                data = numpy.fromfile('SPLnFFT_2015_07_21.bin', dtype=numpy.dtype('f4'))
                                

                                The Python float data type is usually implemented as a double (8 bytes), so this specifies the number of bytes explicitly.

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                                • Phuket2
                                  Phuket2 last edited by

                                  Do issues still exist with byte order on different platforms? I really don't know. A long time ago, we used to have to consider this. Big and little Indien when reading binary/memory files without an API that took care of the translation

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                                  • ccc
                                    ccc last edited by

                                    Yes. Complexity is preserved but it is better hidden. The fortunate thing here is that the file in question was written out by one iOS app (SPLnFFT) and read in by another iOS app (Pythonista) so byte order is not an issue.

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                                    • Phuket2
                                      Phuket2 last edited by

                                      @ccc. Ok, understand. Honestly, was not even sure these issues still existed. Regardless, normally they have no impact as long as you are calling API calls, it's when we decide to get tricky and implement our functions/ methods for reading so called cross platform files. But in this environment, I think it's food for thought. But as you say in the case, both files written from iOS so not a problem

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                                      • ccc
                                        ccc last edited by

                                        Now I understand why numpy is all the rage with data scientists!!!

                                        3 lines of numpy do the whole thing!! Import, read, transform, and cleanse. Much faster execution time too.

                                        import numpy
                                        data = numpy.fromfile('SPLnFFT_2015_07_21.bin', dtype=numpy.float32).reshape(-1, 2)
                                        data = data[numpy.all(data > 0, axis=1)]  # cleanse
                                        print(type(data), len(data))  # numpy.ndarray, 2786
                                        print(data[:20])  # print first 20 fast, slow pairs
                                        
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                                        • ManuelU
                                          ManuelU last edited by

                                          Hi CCC. I tried your script with an edited version of a SPLnFFT binary files before the iOS two last updates. Last night I made some random noise mesurements. For my surprise the exported files had many chunks of zeroes alternating with random chunks of normal SPL values. That is not a mormal behavior. No NaN or Infinite values were detected this time. If you give me a mail address I can send you the link to some test files in my Dropbox account. The struct approach and the array approach render the same results. You JUST gave another present to SPLnFFT users with your SPLnFFT_Reader.py. I'll download and try it right away. Best Regards

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                                          • ccc
                                            ccc last edited by ccc

                                            Use the numpy version instead. It is simpler, faster, and easier to mess around with. If you have a computer with an iPython notebook, that would be a great environment for exploring the dataset.

                                            To send a Dropbox file, you can check it directly into the Github repo above via a pull request or you can go into your Dropbox client and tap once on the file to select it and then tap the share icon (a box with an arrow pointing up out of it) and share as email. Cut the URL out of that draft email, and paste it into a comment on the repo or here.

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