I have a dict of countries and population:

population_dict = {"Germany": 1111, .... }

In my df (sort_countries) I have a column called country and I want to add another column called population from the dictionary above (matching country with population)

population_df = sort_countries.assign(
    population=lambda x: population_dict[x["country"]], axis = 1)

which gives the error: TypeError: 'Series' objects are mutable, thus they cannot be hashed.

Why is x["country"] a Series when I would imagine it should return just the name of the country.

This bit of pandas always confuses me. In my lambdas I would expect x to be a row and I just select the country from that row. Instead len(x["country"]) gives me 192 (the number of my countries, the whole Series).

How else can I match them using lambdas and not a separate function? Thanks!


Note that x["country"] is a Series, albeit a single element one, this cannot be used to index the dictionary. If you want just the value associated with it, use x["country"].item().

However, a better approach tailor made for this kind of thing is using df.map:

population_df["population"] = population_df["country"].map(population_dict)

map will automatically map keys taken from population_df["country"] and map them to their appropriate values in population_dict.

  • the map one works perfectly. But the .item() doesn't. I believe x["country"] is a series with the whole column. Don't understand why. I just need that specific row... Oct 18 '17 at 17:39


population_df["population"] = population_df.apply(lambda x: population_dict[x["country"]], axis=1)

works. Or:

population_df["population"] = population_df[["country"]].applymap(lambda x: population_dict[x])

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