Apart from storing the data, you may also want to look into how you would want to retrieve the data as that may change your design considerably. Some of the questions you might want to ask yourself:
- When I retrieve the data, will I always be retrieving the data for a particular metric and for a date/time range?
- Or I need to retrieve the data for all metrics for a particular date/time range? If this is the case then you're looking at full table scan. Obviously you could avoid this by doing multiple queries (one query / PartitionKey)
- Do I need to see the most latest results first or I don't really care. If it's former, then your RowKey strategy should be something like
(DateTime.MaxValue.Ticks - DateTime.UtcNow.Ticks).ToString("d19").
Also since PartitionKey is a string value, you may want to convert
int value to a
string value with some "0" prepadding so that all your ids appear in order otherwise you'll get 1, 10, 11, .., 19, 2, ...etc.
To the best of my knowledge, Windows Azure partitions the data based on
PartitionKey only and not the
RowKey. Within a Partition,
RowKey serves as unique key. Windows Azure will try and keep data with the same
PartitionKey in the same node but since each node is a physical device (and thus has size limitation), the data may flow to another node as well.
You may want to read this blog post from Windows Azure Storage Team: http://blogs.msdn.com/b/windowsazurestorage/archive/2010/11/06/how-to-get-most-out-of-windows-azure-tables.aspx.
Based on your comments below and some information from above, let's try and do some math. This is based on the latest scalability targets published here: http://blogs.msdn.com/b/windowsazurestorage/archive/2012/11/04/windows-azure-s-flat-network-storage-and-2012-scalability-targets.aspx. The documentation states that:
Single Table Partition– a table partition are all of the entities in a
table with the same partition key value, and usually tables have many
partitions. The throughput target for a single table partition is:
- Up to 2,000 entities per second
- Note, this is for a single partition, and not a single table. Therefore, a table with good partitioning, can process up to the
20,000 entities/second, which is the overall account target described
Now you mentioned that you've 10 - 20 different metric points and for for each metric point you'll write a maximum of 1 record per minute that means you would be writing a maximum of 20 entities / minute / table which is well under the scalability target of 2000 entities / second.
Now the question remains of reading. Assuming a user would read a maximum of 24 hours worth of data (i.e. 24 * 60 = 1440 points) per partition. Now assuming that the user gets the data for all 20 metrics for 1 day, then each user (thus each table) will fetch a maximum 28,800 data points. The question that is left for you I guess is how many requests like this you can get per second to meet that threshold. If you could somehow extrapolate this information, I think you can reach some conclusion about the scalability of your architecture.
I would also recommend watching this video as well: http://channel9.msdn.com/Events/Build/2012/4-004.
Hope this helps.