I have had an extremely difficult time getting my data from the .csv I obtained it in, into the form I want it.
The starting point and desired ending points are shown in this xlsx: https://dl.dropboxusercontent.com/u/16119577/DataFrameQuestion.xlsx
I want the index of the DF to be the Batch Name column. The component and result value columns are in a column name, data type scheme. The "sampled Date" and "Comments" columns will be the same for each "Batch Name", so they should have been in the same column name, data type scheme, but they're not. The goal is to index by "Batch Name" with a column for "Sampled Date", a column for "Comments", and a column for each of the names in "Component". The extra data will then be deleted.
The excel book shows it much better.
I've tried read_csv(), pivot(), and pivot_table() and either they haven't created the right arrangement, or they can't run because of "duplicate index entries"
Any help will be greatly appreciated!
EDIT: The code below is the solution I came up with. Seems to work. Thank you for the Forum to post my questions in! Stack Overflow is consistently helpful as I learn.
import numpy as np import pandas as pd # Data File file = 'Data.csv' # The first import df1 = pd.read_csv(file, header=5) print df1.head(15) #Pivot table to unstack df2 = df1.pivot_table(rows="Batch Name", cols="Component", values="Result Value") df2.head(5) # copy of main data to strip out all but comments and date df3 = pd.read_csv(file, header=5, index_col="Batch Name") for col in df3.columns: if col != 'Batch Number' and col != 'Sampled Date' and col != 'Comments': del df3[col] #drop duplicates df3 = df3.drop_duplicates() df3.head(10) #combine the two sets MasterData = pd.merge(df2,df3, left_index=True, right_index=True) MasterData.to_csv("TEST.csv") #delete other dfs del df1; del df2; del df3;