This particular problem is a great example of how choosing the right algorithm, but even more importantly the right *data structure* can massively simplify the solution. In fact, in this particular case, choosing the right data structure will make the algorithm so trivial that it basically completely vanishes: the data structure already *is* the answer.

The data structure I am talking about is a `Multiset`

: a `Multiset`

is like a `Set`

, except it doesn't store only unique items, instead it stores a count of how often each item is in the `Multiset`

. Basically, a `Set`

tells you whether a particular item is in the `Set`

*at all*, a `Multiset`

in addition also tells you *how often* that particular item is in the `Multiset`

.

Unfortunately, there is no `Multiset`

implementation in the Ruby core library or standard library, but there are a couple of implementations floating around the web.

You literally just have to construct a `Multiset`

from your `Array`

. Here's an example:

```
require 'multiset'
ary = ["student", "student", "teacher", "teacher", "teacher"]
print Multiset[*ary]
```

Yes, that's all there is to it. This prints:

```
#2 "student"
#3 "teacher"
```

And that's it. Example, using https://GitHub.Com/Josh/Multimap/:

```
require 'multiset'
histogram = Multiset.new(*ary)
# => #<Multiset: {"student", "student", "teacher", "teacher", "teacher"}>
histogram.multiplicity('teacher')
# => 3
```

Example, using http://maraigue.hhiro.net/multiset/index-en.php:

```
require 'multiset'
histogram = Multiset[*ary]
# => #<Multiset:#2 'student', #3 'teacher'>
```

Another possibility is to use a `Hash`

, which basically just means that instead of the `Multiset`

taking care of the element counting for you, you have to do it yourself:

```
histogram = ary.inject(Hash.new(0)) {|hsh, item| hsh.tap { hsh[item] += 1 }}
print histogram
# { "student" => 2, "teacher" => 3 }
```

But you can have that easier if instead of counting yourself, you use `Enumerable#group_by`

to group the elements by themselves and then map the groupings to their sizes. Lastly, convert back to a `Hash`

:

```
Identity = ->x { x }
print Hash[[ary.group_by(&Identity).map {|n, ns| [n, ns.size] }]
# { "student" => 2, "teacher" => 3 }
```