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The docs say that you can have 16384 children in one group. This would give your more than 44 years when putting one day in one group. You could even increase this number if necessary. There is a warning that a larger number could have unwanted performance and storage impacts. I worked with a file with 15.000+ groups in root and it worked out nicely. I ...


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I had same problem. I am using win7 + anaconda python2.7 + IPython. But I fixed it with following steps: From http://www.lfd.uci.edu/~gohlke/pythonlibs/#pytables download file tables‑3.2.1‑cp27‑none‑win_amd64.whl and install it with cmd "pip isstall tables‑3.2.1‑cp27‑none‑win_amd64.whl" after installed problem solved. ref: ...


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for( int i = 0; i < g.getNumObjs(); i++ ) { memset( pStr, 0, 128 ); g.getObjnameByIdx( i, pStr, 128 ); } This Code Get names in group. It attributes code is the same as above.


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As discussed in this question you can't really deallocate disk space from an existing hdf5 file. It's just not a part of how hdf5 is designed, and therefore it's not really a part of pytables. You can either load the data from the file, then rewrite it all as a new file (potentially with the same name), or you can use the command line utility h5repack to do ...


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Apparently when appending the index is not updated. I wasn't able to find this documented anywhere in Pandas or Py-tables. So, the problem was when I created the file, it didn't have a correct index. While if I don't create the index until after creating the whole hdf5 file it seems allow select to work. Creating the file this way seems to allow a correct ...


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After some further experimentation with the h5 functions I have found a solution, and I thought I would answer my question as the answer is not stated clearly in the Scilab documentation. In order to use h5write to create a dataset at e.g. /group/subgroup/dataset, the groups themselves have to be created first, as follows: h5group(file, '/group'); ...


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See my post here: http://www.guru-gis.net/how-to-convert-hdf-files-in-tif/ Using R and gdal_translate: library(gdalUtils) band=1 file_path<-"/myfolder/myfile.hdf" system(paste0('gdal_translate ', get_subdatasets(file_path)[band],' myfile_', band','.tif'))


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I figured it out. Apparently when you write hyperslabs of an array you need a second dataspace corresponding to the array in memory that you are writing. Here is the corrected function: static void WriteArrayByRows() { H5FileId h5 = H5F.create(Path.Combine(Environment.GetFolderPath(Environment.SpecialFolder.Desktop), "test.h5"), ...


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If you're goal is to share a common file format between C/C++ and MATLAB you can use the matio library which can read/write the same .mat format that you read/write directly from MATLAB, including cells, structures, etc.


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Before answering your specific code, I'd like to know more about why "one dataset per process" is how you chose to decompose your problem. That seems like a mess if you're ever going to scale beyond a handful of processes. You are doing parallel I/O to a dataset, and you have enabled MPI-IO but not collective access. that's unlikely to yield terribly ...


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It can be done by changing the meta-data. BIG WARNING. This may corrupt your file, so you are at your own risk. Create a store. Must be a table format. I didn't use data_columns here, but the change is only slight to rename those. In [1]: df = DataFrame(np.random.randn(10,3),columns=list('abc')) In [2]: df.to_hdf('test.h5','df',format='table') In [24]: ...


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You can use H5Lvisit to recursively visit all objects in the root group. This will visit groups and datasets. Attributes are attached to groups and datasets so within your visitor, you can use H5Aiterate to iterate through attributes.


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I upgraded to 3.2.1 and that seems to have fixed it. So, it was not a problem with my code (which was driving me crazy), but was a pytables problem.


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XlsxWriter work for me. I try openpyxl but it error. 22k*400 r*c


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Converting comments, minus knee-jerk reactions to triple-star data, into an answer. The declaration of data: short ***data[line_count]; and the line assigning to it: data[file_index] = &pset_data; are the source of the trouble. You're storing the address of a local variable — the same local variable — on each iteration. This is not what you ...


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Okay, so I experimented around with this and found that this is not possible, which I consider a limitation of HDF5. Essentially, HDF5 treats data types as elementary and does not break them up. Thus, for HDF5 std::array<double,3> written with H5::ArrayType and double[3] written with H5::PredType::NATIVE_DOUBLE are fundamentally different: the former ...


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HDF5 is self-describing data format, which means that the best way how to add information to each group is add attribute. HDF5 "result.h5" { GROUP "/" { GROUP "Timestep_0" { ATTRIBUTE "Time" { DATATYPE H5T_IEEE_F64LE DATASPACE SCALAR DATA { (0): 0 } } DATASET "Temperature" { ...


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I do not understand what has your question to do with the file open modes. For read/write r+ is the way to go. To my knowledge, removing is not easy/possible, in particular no matter what you do the file size will not shrink. But overwriting content is no problem f['mydataset'][:] = 0


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Problem solved: Reinstalled h5py manually by python3 setup.py configure --hdf5-version=1.8.15 python3 install Somehow the version did not get set and it used 1.8.4, dont know why...


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According to the documentation, in HE5_GDreadfield( gridid, "TerrainReflectivity", NULL, NULL, NULL, terrain ); The terrain parameter should be thus: short terrain[720][1440]; This is a single continuous block of 1,036,800 bytes of memory. However, you use: short *terrain[720]; Then allocate 1440 bytes at a time. This gives instead 720 blocks of ...


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The solution had noting to do with the code but how to source a virtual environment in python. The correct way is to use . venv/bin/activate instead of source ~/venv/bin/activate. Now which python shows the python installed under ~/venv/bin/python and the code runs correctly.


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Thank you for your help, the following code works, the Problem apparently was that the dataset is an Array, and the correct element was not chosen: # -*- coding: utf-8 -*- import h5py dtype = h5py.special_dtype(vlen=unicode) wdata = u"umlauts, in HDF5, for example öüßÄ might cause trouble" print wdata with h5py.File("test.h5", 'w') as f: dset = ...



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