MLlib is a loose collection of high-level algorithms that runs on Spark. This is what Mahout used to be only Mahout of old was on Hadoop Mapreduce. In 2014 Mahout announced it would no longer accept Hadoop Mapreduce code and completely switched new development to Spark (with other engines possibly in the offing, like H2O).
The most significant thing to come out of this is a Scala-based generalized distributed optimized linear algebra engine and environment including an interactive Scala shell. Perhaps the most important word is "generalized". Since it runs on Spark anything available in MLlib can be used with the linear algebra engine of Mahout-Spark.
If you need a general engine that will do a lot of what tools like R do but on really big data, look at Mahout. If you need a specific algorithm, look at each to see what they have. For instance Kmeans runs in MLlib but if you need to cluster A'A (a cooccurrence matrix used in recommenders) you'll need them both because MLlib doesn't have a matrix transpose or A'A (actually Mahout does a thin-optimized A'A so the transpose is optimized out).
Mahout also includes some innovative recommender building blocks that offer things found in no other OSS.
Mahout still has its older Hadoop algorithms but as fast compute engines like Spark become the norm most people will invest there.