I have two dataframes. Example:
df1: Date Fruit Num Color 2013-11-24 Banana 22.1 Yellow 2013-11-24 Orange 8.6 Orange 2013-11-24 Apple 7.6 Green 2013-11-24 Celery 10.2 Green df2: Date Fruit Num Color 2013-11-24 Banana 22.1 Yellow 2013-11-24 Orange 8.6 Orange 2013-11-24 Apple 7.6 Green 2013-11-24 Celery 10.2 Green 2013-11-25 Apple 22.1 Red 2013-11-25 Orange 8.6 Orange
Each dataframe has the Date as an index. Both dataframes have the same structure.
What i want to do, is compare these two dataframes and find which rows are in df2 that aren't in df1. I want to compare the date (index) and the first column (Banana, APple, etc) to see if they exist in df2 vs df1.
I have tried the following:
- Compare two DataFrames and output their differences side-by-side
- Comparing two pandas dataframes for differences
For the first approach I get this error: "Exception: Can only compare identically-labeled DataFrame objects". I have tried removing the Date as index but get the same error.
On the third approach, I get the assert to return False but cannot figure out how to actually see the different rows.
Any pointers would be welcome