I have a dataframe of historical stock trades. The frame has columns like ['ticker', 'date', 'cusip', 'profit', 'security_type']. Initially:
trades['cusip'] = np.nan
trades['security_type'] = np.nan
I have historical config files that I can load into frames that have columns like ['ticker', 'cusip', 'date', 'name', 'security_type', 'primary_exchange'].
I would like to UPDATE the trades frame with the cusip and security_type from config, but only where the ticker and date match.
I thought I could do something like:
pd.merge(trades, config, on=['ticker', 'date'], how='left')
But that doesn't update the columns, it just adds the config columns to trades.
The following works, but I think there has to be a better way. If not, I will probably do it outside of pandas.
for date in trades['date'].unique():
config = get_config_file_as_df(date)
## config['date'] == date
for ticker in trades['ticker'][trades['date'] == date]:
trades['cusip'][
(trades['ticker'] == ticker)
& (trades['date'] == date)
] \
= config['cusip'][config['ticker'] == ticker].values[0]
trades['security_type'][
(trades['ticker'] == ticker)
& (trades['date'] == date)
] \
= config['security_type'][config['ticker'] == ticker].values[0]