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Unfortunately, no. As its documentation states, an IHDF5SimpleWriter “…contains only the basic methods.” If you need to do this you'll need to use the non-simple writer for your data type, such as the IHDF5ByteWriter, and use one of the createMDArray methods. Good luck!


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Jeff has completely the right answer. I found a couple gotchas that I wanted to share and it won't fit in a comment - please consider this just a long form additional comment :) (Pytables Versions) If you get missing attribute or method errors when trying to write the hdf file you may want to try updating your PyTables version. Pandas (as of this writing) ...


-2

This sounds like a prime application of MongoDB. I worked on an online gambling project where table growth was extensive but mainly relevant to a single user. Sharding kept query times down. Conversely, if most of your dataset centers around player interactions with eachother, PyTables is your winner.


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I don't think that will work. It is not quite clear to me, but I believe the getInferredType() you are using is creating a data set with 2 name -> value entries. So it is effectively creating an object inside the hdf5. The best solution I could come up with was to read the previous values add them to the valueList before outputting: ...


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While I haven't tried it, there is some sample code available at https://rodhern.wordpress.com/2013/02/17/hdf5-f-to-octave-example/ It's the only example I know of offhand.


1

Because your database is huge, you have to query it from the hard disk and you face an IO bottleneck. That's actually the main problem here. Smart code can't really compensate for having to query a 40gb file - especially considering that your query is pretty simple. And multiprocessing will not help either (it's not a CPU bottleneck). So I think that the ...


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Solved :) i created a text file, placed the path of real .hd5 file inside it. The caffe prototxt file points to text file and it worked :) hdf5_data_param { source: "train.txt" batch_size: 10 } train.txt contains line.. facialkp.hd5


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I have been able to almost do that thanks the h5py community. See the thread here.


1

Sure, this is possible. For example we have a web-application for visualization scientific data that relies on a single 250GB HDF5 File with 30.000 groups and each of those groups contains multiple datasets. The groups and datasets have attributes. The web-app only accesses this single HDF5 file to retrieve all information. The advantage of using a HDF5 ...


1

just select out the columns as you write to the file. cols_to_keep = ['User_ID', 'Year'] df[cols_to_keep].to_hdf(...)


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HDF5 Advantages: Organization, flexibility, interoperability Some of the main advantages of HDF5 are its hierarchical structure (similar to folders/files), optional arbitrary metadata stored with each item, and its flexibility (e.g. compression). This organizational structure and metadata storage may sound trivial, but it's very useful in practice. ...


1

visit or visititems is quick way of seeing the overall structure of a h5py file: fs['struArray'].visititems(lambda n,o:print(n, o)) When I run this on a file produced by Octave save -hdf5 I get: type <HDF5 dataset "type": shape (), type "|S7"> value <HDF5 group "/struArray/value" (3 members)> value/data <HDF5 group "/struArray/value/data" ...


1

As of 2014, the hdf is updated If you are using HDF5 1.8.0 or previous releases, there is a limit on the number of fields you can have in a compound datatype. This is due to the 64K limit on object header messages, into which datatypes are encoded. (However, you can create a lot of fields before it will fail. One user was able to create up to 1260 ...



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