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We have a simple table such as follows:

------------------------------------------------------------------------
|   Name   | Attribute1 | Attribute2 | Attribute3 | ... | Attribute200 |
------------------------------------------------------------------------
| Name1    | Value1     | Value2     | null       | ... | Value3       |
| Name2    | null       | Value4     | null       | ... | Value5       |
| Name3    | Value6     | null       | Value7     | ... | null         |
| ...                                                                  |
------------------------------------------------------------------------

But there could be up to hundreds of millions of rows/names. The data will be populated every hour or so.

The goal is to get results for interactive queries on the data within a couple of seconds.

Most queries look like:

select count(*) from table
where Attribute1 = Value1 and Attribute3 = Value3 and Attribute113 = Value113;

The where clause contains arbitrary number of attribute name-value pairs.

I'm new in big data and wondering what the best option is in terms of data store (MySQL, HBase, Cassandra, etc) and processing engine (Hadoop, Drill, Storm, etc) for interactive queries like above.

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Your description of what type of queries you want to perform is that you want to be able to perform exponentially many different queries (2 ^ 200 in your example). If that's the case, I believe I don't think you're going to find any solution cheaper than scanning your table and counting the number of rows that match your predicate. If you can restrict the possible queries somehow or provide more context, maybe I have a better solution for you. – Timothy Shields Apr 15 '13 at 23:47
    
I believe the number of possible queries will be much less than the worst case scenario. But it's up to the users to compose them, so I don't have a control over how many predicates they're going to include. In case of scanning the whole table, what's the best solution? – user2284274 Apr 16 '13 at 0:11
    
I'm less familiar with Cassandra, so I'll talk in terms of HBase. If you're going to try simply scanning all the rows, you can do a simple HBase scan with filter (hbase.apache.org/book/thrift.html) to stream back to your HBase client (say a thrift client) the set of rows that match your predicate, then count those. What language will you be interfacing with the database (HBase?) from? Again, I can give a "real" answer with more details about the environment. – Timothy Shields Apr 16 '13 at 1:17
    
Also, Hadoop is a natural fit for this sort of query and integrates very nicely with HBase. So my comment about using a Thrift client isn't quite right. You would want to do this by writing a Hadoop job that processes row-ranges of the HBase table directly. – Timothy Shields Apr 16 '13 at 1:20
    
I'm using Java. Hadoop seems suitable for this, but from what I read, it's intended for batch processing (which might take few minutes to few hours). – user2284274 Apr 16 '13 at 1:36

A columnar DB like Vertica (closed source) or MonetDB (open source - but I haven't used it) will handle queries like the ones you mentioned efficiently. In 50000 feet view the reasons for this is that they stores each column separately and thus doesn't read any unneeded columns when they need to query data - for your example 3 attributes will be read and the other 197 won't be

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Playorm for Cassandra provide a decent support for SQL including Joins. Read more at http://buffalosw.com/wiki/SJQL-Support/ and for examples see http://buffalosw.com/wiki/Command-Line-Tool/

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