Start from what the end-users want for reporting or how they want to/should visualize data. Once you have some concepts in mind, then start working backwards to how to achieve those goals. Starting with the assumption that it should be a replicated copy in an RBDMS excludes several reasonable possibilities.
Making a Real-time Interface
If users are looking to aggregate values (counts, averages, etc.) on the fly (per web request), it would be worthwhile looking into replicating the master down to a reporting database if the SQL performance is acceptable (and stays acceptable if you were to double the input data). SQL engines usually do a great job aggregation and scale pretty far. This would also give you the capability to join data results together and return complex results as the users request it.
Just remember, replication isn't easy or without it's own set of problems.
This'll start to show signs of weakness in the hundreds of millions of rows range with normalized data, in my experience. At some point, inserts fight with selects on the same table enough that both become exceptionally slow (remember, replication is still a stream of inserts). Alternatively, indexes become so large that storage I/O is required for rekeying, so overall table performance diminishes.
On the other hand, if reporting falls under the scheme of sending standardized reports out with little interaction, I wouldn't necessarily recommend backing to an RBDMS. In this case, results are combined, aggregated, joined, etc. once. Paying the overhead of RBDMS indexing and storage bloat isn't worth it.
Batch engines like Hadoop will scale horizontally (many smaller machines instead of a few huge machines) so processing larger volumes of data is economical.
Batch to RBDMS or K/V Store
This is also a useful path if a lot of computation is needed to make the records more meaningful to a reporting engine. Alternatively, records could be denormalized before storing them in the reporting storage engine. The denormalized or simple results would then be shipped to a key/value store or RBDMS to make reporting easier and achieve higher performance at the cost of latency, compute, and possibly storage.
Don't over-design it to start with. The decisions you make on the initial implementation will probably all change at some point. However, design it with the current and near-term problems in mind. Also, benchmarks done by others are not terribly useful if your usage model isn't exactly the same as theirs; benchmark your usage model.