CQL is declarative like SQL and the very basic structure of the query component of the language (select things where condition) is the same. But there are enough differences that one should not approach using it in the same way as conventional SQL.
The obvious items: 1. There are no joins or subqueries. 2. No transactions
Less obvious but equally important to note:
- Except for the primary key, you can only apply a WHERE condition on a column if you have created an index on that column. In SQL, you don't have to index a column to filter on it but in CQL the select statement will fail outright.
- There are no OR or NOT logical operators, only AND. It is very important to model your data so you won't need these two; it is very easy to accidentally forget.
- Date handling is profoundly different. CQL permits ONLY the equal operator for timestamps so extremely common and useful expressions like this do not work:
where dateField > TO_TIMESTAMP('2013-01-01','YYYY-MM-DD') Also, CQL does not permit string insert of dates accurate to millis (seconds only) -- but it does permit entry of millis since epoch as a long int -- which most other DB engines do NOT permit. Lastly, timezone (as GMT offset) is invisibly captured for both long millis and string formats without a timezone. This can lead to confusion for those systems that deliberately do not conflate local time + GMT offset.
- You can ONLY update a table based on primary key (or an IN list of primary keys). You cannot update based on other column data, nor can you do a mass update like this:
update table set field = value; CQL demands a where clause with the primary key.
- Grammar for AND does not permit parens. TO be fair, it's not necessary because of the lack of the OR operator but this means traditional SQL rewriters that add "protective" parens around expressions will not work with CQL, e.g.:
select * from www where (str1 = 'foo2') and (dat1 = 12312442);
In general, it is best to use Cassandra as a big, resilient permastore of data for which a small number of very high level, very high performance queries can be applied to drag out a subset of data to work with at the application layer. That subset might be 1 million rows, yes. CQL and the Cassandra model is not designed for 2 page long SELECT statements with embedded cases, aggregations, etc. etc.