I have a pandas df containing 'features' for stocks, which looks like this:
I am now trying to create a dictionary with unique sector as key, and a python list of tickers for that unique sector as values, so I end up having something that looks like this:
{'consumer_discretionary': ['AAP',
'AMZN',
'AN',
'AZO',
'BBBY',
'BBY',
'BWA',
'KMX',
'CCL',
'CBS',
'CHTR',
'CMG',
etc.
I could iterate over the pandas df rows to create the dictionary, but I prefer a more pythonic solution. Thus far, this code is a partial solution:
df.set_index('sector')['ticker'].to_dict()
Any feedback is appreciated.
UPDATE:
The solution by @wrwrwr
df.set_index('ticker').groupby('sector').groups
partially works, but it returns a pandas series as a the value, instead of a python list. Any ideas about how to transform the pandas series into a python list in the same line and w/o having to iterate the dictionary?