Calculating difference between two rows in Python / Pandas
In python, how can I reference previous row and calculate something against it? Specifically, I am working with dataframes
in pandas
- I have a data frame full of stock price information that looks like this:
Date Close Adj Close
251 2011-01-03 147.48 143.25
250 2011-01-04 147.64 143.41
249 2011-01-05 147.05 142.83
248 2011-01-06 148.66 144.40
247 2011-01-07 147.93 143.69
Here is how I created this dataframe:
import pandas
url = 'http://ichart.finance.yahoo.com/table.csv?s=IBM&a=00&b=1&c=2011&d=11&e=31&f=2011&g=d&ignore=.csv'
data = data = pandas.read_csv(url)
## now I sorted the data frame ascending by date
data = data.sort(columns='Date')
Starting with row number 2, or in this case, I guess it's 250 (PS - is that the index?), I want to calculate the difference between 2011-01-03 and 2011-01-04, for every entry in this dataframe. I believe the appropriate way is to write a function that takes the current row, then figures out the previous row, and calculates the difference between them, the use the pandas
apply
function to update the dataframe with the value.
Is that the right approach? If so, should I be using the index to determine the difference? (note - I'm still in python beginner mode, so index may not be the right term, nor even the correct way to implement this)
Solution 1:
I think you want to do something like this:
In [26]: data
Out[26]:
Date Close Adj Close
251 2011-01-03 147.48 143.25
250 2011-01-04 147.64 143.41
249 2011-01-05 147.05 142.83
248 2011-01-06 148.66 144.40
247 2011-01-07 147.93 143.69
In [27]: data.set_index('Date').diff()
Out[27]:
Close Adj Close
Date
2011-01-03 NaN NaN
2011-01-04 0.16 0.16
2011-01-05 -0.59 -0.58
2011-01-06 1.61 1.57
2011-01-07 -0.73 -0.71
Solution 2:
To calculate difference of one column. Here is what you can do.
df=
A B
0 10 56
1 45 48
2 26 48
3 32 65
We want to compute row difference in A only and want to consider the rows which are less than 15.
df['A_dif'] = df['A'].diff()
df=
A B A_dif
0 10 56 Nan
1 45 48 35
2 26 48 19
3 32 65 6
df = df[df['A_dif']<15]
df=
A B A_dif
0 10 56 Nan
3 32 65 6
Solution 3:
I don't know pandas, and I'm pretty sure it has something specific for this; however, I'll give you the pure-Python solution, that might be of some help even if you need to use pandas:
import csv
import urllib
# This basically retrieves the CSV files and loads it in a list, converting
# All numeric values to floats
url='http://ichart.finance.yahoo.com/table.csv?s=IBM&a=00&b=1&c=2011&d=11&e=31&f=2011&g=d&ignore=.csv'
reader = csv.reader(urllib.urlopen(url), delimiter=',')
# We sort the output list so the records are ordered by date
cleaned = sorted([[r[0]] + map(float, r[1:]) for r in list(reader)[1:]])
for i, row in enumerate(cleaned): # enumerate() yields two-tuples: (<id>, <item>)
# The try..except here is to skip the IndexError for line 0
try:
# This will calculate difference of each numeric field with the same field
# in the row before this one
print row[0], [(row[j] - cleaned[i-1][j]) for j in range(1, 7)]
except IndexError:
pass