We currently have a very write-heavy web analytics application which collects a large number of real time events from a large number of websites and stores for subsequent analytics and reporting.
Our initial planned architecture involved a cluster of web servers handling requests, and writing all of the data into a Cassandra cluster, while simultaneously updating a large number of counters for real-time aggregated reports. We also plan to utilize hadoop directly on CassandraFS (as a replacement of HDFS - offered by datastax) to natively run Map Reduce jobs on the data residing in Cassandra for more involved analytics. The output of the MapR jobs would be written back onto ColumnFamilies in Cassandra natively. Hadoop map reduce runs on a read-only replica of the main cassandra cluster which is write-heavy. The idea was to avoid multiple data hops and have all data for the analytics in one repository.
More recently we hear about, and have faced first hand issues managing and growing a cassandra cluster with frequent node outages and bad response times. Couchbase seems to be much better with response times and dynamically growing and managing the cluster. So we are considering replacing Cassandra with Couchbase.
However this brings up a few questions.
Does Couchbase scale well in a mostly sequential write-heavy scenario? I don't see our scenario making much use of the in-memory caching, as the raw data being written is rarely read back, only aggregated metrics are. Plus I haven't been able to read much about what happens when Couchbase needs to hit the disk to write back data very frequently (or all the time?). Will it end up performing poorly than Cassandra?
What happens to the Hadoop interface? Couchbase has its own map reduce capabilities, but I understand that they are limited in scope. Would I need to transfer data back and forth between CouchbaseDB and HDFS to be able to support all my analytics and reporting out of a single database?