Cloudera has a table that gives equivalents of core Hadoop projects in terms of the Google stack:
MapReduce | MapReduce
GFS | HDFS
BigTable | HBase
Chubby | ZooKeeper
Sawzall | Hive, Pig
These, and particularly the first four, are the core components others build on. MapReduce spawns workers as close as possible to the data they will work on. HDFS replicates unstructured data. HBase is a column store. ZooKeeper does service discovery, locking, and leader election. Hive and Pig are high-level query languages, which are implemented as MapReduce computations over HBase data.
There is a lot more to the project ecosystem, from self-contained tools like Avro (serialisation, think protocol buffers), toolkits like Mahout (machine learning), to full-featured products like Nutch (crawler and search engine from which Hadoop was spun off).
Integrators are making distributions of Hadoop and Hadoop-like stacks (Hadoop is loosely coupled and some provide alternatives to important components); the core projects are maintained by the Apache foundation.