import pandas as pd
df = pd.DataFrame(data=np.array([["fruit", 12341], ["vegetable", 45642]]))
df.columns = ['this','result']
This is what the dataframe may look like
this result
0 fruit 12341
1 vegetable 45642
'this' and 'result' are the column names. Let's say one of the column names are stored as a string variable named 'var'
One of the row values 'fruit' in the column 'this' is stored as a key in the dictionary named 'dict'.
var = 'this'
dict = {'fruit': 'apple', 'vegetable': 'orange'}
I'm trying to perform some subsetting showed in the code below
for k, v in dict.items():
print(k)
print(type(k)) #<class 'str'>
df = df[df.var == k]
df
I know already know
df = df[df.this == 'fruit']
df = df[df.this == 'vegetable']
But the row values and column names will be stored as string variables ONLY! Is there anyway, you can subset dataframes where row value and column names are variables
I'm not sure if this is even possible unless you guys know. I don't mind if a solution is posted using loc or iloc but I absolutely need to have row values and column names stored in variables.
I've tried something like using eval
which prints the value in the variable but to no avail. I apologize in advance if I've asked something that's impossible to achieve.
Expected output will be an empty dataframe because df = df[df.var == k]
is equivalent to df = df[df.this == 'fruit']
and df = df[df.this == 'vegetable']
when the code iterates through the dictionary whose keys are the only existing row values for the column name 'this'
.
use indexing likedf[var_name]
. Take a look at this stackoverflow.com/questions/46861214/…