Data Wrangling in Python – How to Construct A Dictionary From Multiple Lists

Construct A Dictionary From Multiple Lists

Create Two Lists


/* Create a list of the officer's name */
officer_names = ['Sodoni Dogla', 'Chris Jefferson', 'Jessica Billars', 'Michael Mulligan', 'Steven Johnson']

/* Create a list of the officer's army */
officer_armies = ['Purple Army', 'Orange Army', 'Green Army', 'Red Army', 'Blue Army']

Construct A Dictionary From The Two Lists


/* Create a dictionary that is the zip of the two lists */
dict(zip(officer_names, officer_armies))
{'Chris Jefferson': 'Orange Army',
 'Jessica Billars': 'Green Army',
 'Michael Mulligan': 'Red Army',
 'Sodoni Dogla': 'Purple Army',
 'Steven Johnson': 'Blue Army'}

 

 

Python Example for Beginners

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