But there will be duplicate data there as many animals could come from
same country and there could be lots of tigers, for example.
This suggests you want to keep track of individual animals, not just kinds of animals. Let's assume that the zoos use some kind of numeric tattoo or microchip to identify individual animals.
Assume this sample data is representative. (It's not, but it's ok for teaching.)
Predicate: Animal having microchip <chip_num> of species <species>
has name <name> and was born in <birth_country_code>.
chip_num name species birth_country_code
101234 Anita Panthera tigris USA
101235 Bella Panthera tigris USA
101236 Calla Panthera tigris USA
101237 Dingo Canis lupus CAN
101238 Exeter Canis lupus CAN
101239 Bella Canis lupus USA
101240 Bella Canis lupus CAN
There's no redundant data in that table. None of those columns can be dropped without radically changing the meaning of that table. It has a single candidate key: chip_num. It's in 5NF.
Values are repeated in non-key columns. That's kind of the definition of non-key (non-prime) columns. Values in key columns (or sets of key columns) are unique; values in non-key columns aren't.
If you want to restrict the values in "birth_country_code" to the valid three-letter ISO country codes, you can add a table of valid three-letter ISO country codes, and set a foreign key reference to it. This is generally a Good Thing, but it has nothing to do with normalization.
You could do the same thing again for "species". That, too, would generally be a Good Thing, and it, too, would have nothing to do with normalization.