-1

I am trying to identify the average prices using the function np.where(). I am currently stuck. I merged these two tables and am now currently trying to compare the two data sets when the 30 day data is greater than the 90 day data.

#Task 2.2 Merge Data
merged_table = pd.merge(Adj90_mean, Adj30_mean, left_on='Date', right_on='Date', 
                        how='left', indicator=True)
print(merged_table.head(5))
        Date  Adj Close_x  Adj Close_y _merge
0 2000-05-10  1429.078220  1455.065666   both
1 2000-05-11  1428.551443  1451.708667   both
2 2000-05-12  1428.790776  1449.476664   both
3 2000-05-15  1429.349109  1447.935999   both
4 2000-05-16  1430.044554  1446.605001   both
#Task 2.2 Identify
import numpy as np
import pandas as pd

merged_table['col3'] = np.where(merged_table['Adj Close_y'] <= 'Adj Close_x', 'yes', merged_table'no'

  File "<ipython-input-71-f6466bd741e3>", line 5
    merged_table['col3'] = np.where(merged_table['Adj Close_y'] <= 'Adj Close_x', 'yes', merged_table'no'
                                                                                                        ^
SyntaxError: invalid syntax
New contributor
marktheshark is a new contributor to this site. Take care in asking for clarification, commenting, and answering. Check out our Code of Conduct.
  • 1
    You have a syntax error. Fix the syntax error and you will be unstuck. – mkrieger1 Aug 1 at 21:30
  • At least part of the syntax error is probably the missing = in the merged_table'no' part of the indicated line. – martineau Aug 1 at 22:47

Browse other questions tagged or ask your own question.