Take the 2-minute tour ×
Stack Overflow is a question and answer site for professional and enthusiast programmers. It's 100% free, no registration required.

(this question has been modified by the original author and the sample code modified so that you can run it on your machine)

I am loading time series data into pytables (~2 million rows, 23 columns of mostly float values in this test case). I would also like to create a corresponding table in the same pytable file with the same number of rows and columns and column names but with int8 data types to be used as a quality control 'mask'. To do this I am retrieving column names and row count information from the data table and using this to create numpy zero record arrays which are used to create/append to the quality control pytable table.

The problem occurs when I append the numpy zero record arrays to the new 'mask' pytable. Even though the numpy zero record arrays that are used to create/append to the pytable are the correct size - the resulting pytable is considerably larger than expected - with more rows in the pytable then had been appended from the numpy recarray.

The following runnable example code demonstrates the problem. It creates a pytable and appends numpy zero recarrays to the table with the expectation of creating a table with 'nrows' of records with zero values. The resulting pytable has more rows than expected when viewed with Vitables

I am not sure where these extra data rows are coming from? Any suggestions would be appreciated.

Using python 2.7.2, pytables 2.3.1, numpy 1.6.1.1

import tables 
import numpy as np
import string as str

Storename   = 'Test.h5'
Storetitle  = 'Test'
PathList    = ['Lvl0','Lvl1']
Tablename   = 'Data'

storeq = tables.openFile(Storename, mode='a', title= Storetitle)

for ix, agroup in enumerate(PathList):
   mypath0 =  '/'+str.strip('/'.join(PathList[0:ix]))
   mypath1 =  '/'+str.strip('/'.join(PathList[0:ix+1]))      
   try:  
      storeq.getNode(mypath1)
   except(tables.exceptions.NoSuchNodeError):        
      storeq.createGroup(mypath0,PathList[ix]) 

pathq = mypath1
qtable = None  

tfields = ['DateTime','f0','f1','f2','f3','f4','f5','f6','f7','f8','f9']
nfields = 11

tformats = ['int64', 'int8', 'int8', 'int8', 'int8', 'int8', 
            'int8', 'int8', 'int8', 'int8', 'int8']

nrows = 2122387
rowchunk = 100000
rowsteps, rowrem = divmod(nrows, rowchunk)

for ix in range(rowsteps):        
  fillarray = np.zeros((rowchunk,nfields), {'names': tfields, 'formats': tformats})
  if qtable==None:
      print('create')      
      qtable    = storeq.createTable(pathq, Tablename, fillarray)       
      qtable.flush()
  else:
      print('append :', ix, fillarray.shape)  
      qtable.append(fillarray)
      qtable.flush()

if rowrem > 0:
  fillarray = np.zeros((rowrem,nfields), {'names': tfields, 'formats': tformats})
  if ix == 0:
     print('create')      
     qtable  = storeq.createTable(pathq,Tablename, fillarray)       
     qtable.flush()
  else:
     print('append :', rowrem, fillarray.shape)  
     qtable.append(fillarray)
     qtable.flush()


qtable.close()
storeq.close()

The following is the print statement output created when the numpy zero recarrays are written to the quality control pytable.

create
('append :', 1, (100000, 26))
('append :', 2, (100000, 26))
('append :', 3, (100000, 26))
('append :', 4, (100000, 26))
('append :', 5, (100000, 26))
('append :', 6, (100000, 26))
('append :', 7, (100000, 26))
('append :', 8, (100000, 26))
('append :', 9, (100000, 26))
('append :', 10, (100000, 26))
('append :', 11, (100000, 26))
('append :', 12, (100000, 26))
('append :', 13, (100000, 26))
('append :', 14, (100000, 26))
('append :', 15, (100000, 26))
('append :', 16, (100000, 26))
('append :', 17, (100000, 26))
('append :', 18, (100000, 26))
('append :', 19, (100000, 26))
('append :', 20, (100000, 26))
('append :', 22387, (22387, 26))
share|improve this question

1 Answer 1

Given the age of the question, I guess the author already has the answer... But just in case, here is mine (not tested):

On line 45 of your example code, you create a structured array of shape (rowchunk, nfields): this is wrong because structured array must be 1D (number of rows), the number, names and formats of fields being set by the dtype argument.

Hence you should use something like

fillarray = np.zeros(rowchunk, dtype={'names': tfields, 'formats': tformats})
share|improve this answer

Your Answer

 
discard

By posting your answer, you agree to the privacy policy and terms of service.

Not the answer you're looking for? Browse other questions tagged or ask your own question.