I have been given some 'reports' from another piece of software that contains data that I need to use. The file is quite simple. It has a description line that starts with a # that is the variable name/description. Followed by comma seperated data on the next line.
#wavelength,'<a comment describing the data>' 400.0,410.0,420.0, <and so on> #reflectance,'<a comment describing the data>' 0.001,0.002,0.002, <and so on> #date,'time file was written' 2012-03-06 13:12:36.694597 < this is the bit that stuffs me up!! >
When I first typed up some code I expected all the data to be read as floats. But I have discovered some dates and strings. For my purposes All I care about is the data that should be arrays of floats. Everything else I read in (such as dates) can be treated as a strings (even if they are technically a date for example).
My first attempt - which worked until I found non-floats - basically ignores the # then grabs the chars proceeding it making a dictionary with the Key that is the chars it just read. Then I made the entry for the key an array by splitting on the commas and stacking on rows for 2-d data. Similar to the next section of code.
data = f.readlines() dataLines = data.split('\n') for i in range(0,len(dataLines)-1): if dataLines[i] == '#': key,comment = dataLines[i].split(',') keyList.append(key[1:]) k+=1 else: # it must be data d+=1 dataList.append(dataLines[i]) for j in range(0,len(dataList)): tmp = dataList[j] x = map(float,tmp.split(',')) tempData = vstack((tempData,asarray(x))) self.__report[keyList[k]] = tempData
When I find a non-float in my file the line "x = map(float,tmp.split(','))" fails (there are no commas in the line of data). I thought I would try and test if it is a string or not using isinstance but the file reader treats all of the data coming in from the file as a string (of course). I tried trying to convert the line from the file to a float array, thinking if it fails then just treat it as an array of strings - like this.
try: scipy.array(tmp,dtype=float64) #try to convert x = map(float,tmp.split(',')) except:# ValueError: # must be a string x = zeros((1,1)) x = asarray([tmp]) #tempData = vstack((tempData,asarray(x)),dtype=str) if 'tempData' in locals(): pass else: tempData = zeros((len(x))) tempData = vstack((tempData,asarray(x)))
This however results as EVERYTHING being read in as a character array and as such, I cannot index the data as a numpy array. All of the data is there in the dictionary but the dtype is s|8, for example. It seems the try block is going straight to the exception.
I would appreciate any advice on getting this to work so I can discriminate between floats and strings. I don't know the order of the data before I get the report.
Also, the big files can take quite a long time to load in to memory, any advice on how to make this more efficient would also be appreciated.