Are there any similarities between these two ?
On the surface, they share many similarities:
- Schema-free data-model
- Distributed design
- Map-Reduce as processing model (as opposed to SQL)
However, the details of how each of those points are implemented are quite different, and share very little similarities. I will lightly go over the points.
- CouchDB is a document store, allowing you to store any document in JSON format.
- HBase is a column-oriented store, where you store column values and are able to group those values into a row (very simplistic explanation).
- CouchDB uses a peer-to-peer design for distributing data.
- HBase uses master nodes that dictate where columns and rows are written. (again simplistic explanation).
- CouchDB has a built-in mechanism called "views" that allows you to define embedded map-reduce jobs. These "views" generate a "table" containing the output of the map-reduce job, which you can then use just as you would a normal table. Similar to materialized views in relational databases.
- HBase does not have a built-in map-reduce mechanism. Rather, you are able to hook up HBase with Hadoop to perform the Map-Reduce jobs. What you do with the result is independent of HBase, you can import the data or move to another database.
I attempted to not go into detail, and hope what I explained is sufficient to give you an understanding.
Kristóf Kovács has created a decent overview of the features of these databases plus others in the NoSQL field.
They have nothing in common. CouchDB is a database and Hadoop is a distributed processing framework.
You should be comparing CounchDB and Hbase/Hive (which are based on Hadoop) instead.
So I think this older question should get you on the way: bigtable vs cassandra vs simpledb vs dynamo vs couchdb vs hypertable vs riak vs hbase, what do they have in common?
This is a good comparison for a lot of NoSQL flavors: http://kkovacs.eu/cassandra-vs-mongodb-vs-couchdb-vs-redis