I am stuck between a concrete decision on whether to go with MongoDB or Cassandra for my database needs and would like input on my use case as to guide my decision.
- X datacenters containing Y servers.
- Each server has N networks and M statistics.
e.g. Currently ( 3 datacenters, 50 total servers, 19 networks and 10 stats ). These numbers will increase over time.
- Parse an xml page for each server (~20kb / page ) every hour. (~25mb / day )
- Organized (hourly,daily, monthly) structure using aggregation to find higher values (hours -> day )
Note: We need the ability to:
- Dynamically add / remove values ( datacenters / servers / networks / statistics ) and scale-ability is a key issue, hence we are moving from SQL over to NoSQL.
- Reliability is also a high priority ( master / slave, no corruption ) and will require an "easy" maintainability.
- Writing is hourly, no need for "massive" writing performance.
Example use case: On the front-end you will query like so, select; date window, period report, specific datacenter, specific/all networks, specific/all statistics and whether results are totalled or individual across the servers.
Example #1 - From: August 16th 2012 -> April 16th 2013 - Period: Daily - Data-center: EU A - Stat-type: Error - Servers: All
From reading similar articles across stack-overflow and the web, I've come to the conclusion that my best bet may be MongoDB for its flexible queries and closeness to a relational database. Cassandra seems like an option if my writes were of higher volumes - although I do like the column based model. I am a novice to database design and management so ease of use is also a factor (still a CS student).
From my use cases which NoSql database is the best option?