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using read_hdf for first time love it want to use it to combine a bunch of smaller *.h5 into one big file. plan on calling append() of a HDFStore. later will add chunking to conserve memory.

Example table looks like this

Int64Index: 220189 entries, 0 to 220188 Data columns (total 16 columns): ID 220189 non-null values duration 220189 non-null values epochNanos 220189 non-null values Tag 220189 non-null values dtypes: object(1), uint64(3)

code:

import pandas as pd
print pd.__version__  # I am running 0.11.0
dest_h5f = pd.HDFStore('c:\\t3_combo.h5',complevel=9)
df = pd.read_hdf('\\t3\\t3_20130319.h5', 't3', mode = 'r')
print df
dest_h5f.append(tbl, df, data_columns=True)
dest_h5f.close()

Problem: the append traps this exception Exception: cannot find the correct atom type -> [dtype->uint64,items->Index([InstrumentID], dtype=object)] 'module' object has no attribute 'Uint64Col'

this feels like a problem with some version of pytables or numpy pytables = v 2.4.0 numpy = v 1.6.2

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this was just fixed in master: github.com/pydata/pandas/pull/3494, can you give a try with that? (will also be in the 0.11.1 release), should be soon –  Jeff May 7 '13 at 18:30
    
also note that uint64 cannot be used in indicies (though as a column shouldn't be a problem) –  Jeff May 7 '13 at 18:31
    
Ok running on the patched version. How would I force it to use a supported dtype index. All my fields are uint64 and strings. I tried a df = df.reset_index(drop = True) but I still seem to have NotImplementedError: indexing 64-bit unsigned integer columns is not supported yet, sorry –  Jim Knoll May 7 '13 at 20:50
    
is ther a reason u really need uint64? and not int64? uint64 don't place nice with the indices ( unrelated to HDFStore) –  Jeff May 7 '13 at 21:06
    
I am already going back to the source file origins... (I did not write that.) to see if it is a simple thing to swap it out. looks like this final_df.to_records().astype([('epochNanos_cmi', 'i8'),... I would expect the i8 to be a singed 64bit int but for some reason it is a uint64 when I pull it into pandas... –  Jim Knoll May 7 '13 at 21:13

1 Answer 1

We normally represent epcoch seconds as int64 and use datetime64[ns]. Try using datetime64[ns], will make your life easier. In any event nanoseconds since 1970 is well within the range of in64 anyhow. (and uint64 only buy you 2x this range). So no real advantage to using unsigned ints.

We use int64 because the min value (-9223372036854775807) is used to represent NaT or an integer marker for Not a Time

In [11]: (Series([Timestamp('20130501')])-
                Series([Timestamp('19700101')]))[0].astype('int64')
Out[11]: 1367366400000000000

In [12]: np.iinfo('int64').max
Out[12]: 9223372036854775807

You can then represent time form about the year 1677 till 2264 at the nanosecond level

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