I'm planning a product that will process updates from multiple data feeds. Input-data is guesstimated to be a total of 100Mbps stream containing 100 byte sized messages. These messages contain several data fields that needs to be checked for correlation with the existing data set within the application. If a input-message correlates with an existing data record, then the input-message will update the existing data-record, if not: it will create a new record. It is assumed that data are updated every 3 seconds in average.
The correlation process is assumed to be a bottleneck, and thus I intend to make our product able to run balanced in multiple processes if needed (most likely on a separate hardware or VM). Somewhat in the vicinity of Space-based architecture. I'd then like a shared storage between my processes so that all existing data records are visible to all the running processes. The shared storage will have to fetch possible candidates for correlation through a query/search based on some attributes (e.g. elevation). It will have to offer configuring warm redundancy, and a possibility to store snapshots every 5 minutes for logging.
Everything seems to be pointing towards MongoDB, but I'd like a confirmation from you that MongoDB will meet my needs. So do you think it is a go? -Thank you
NB: I am not considering a relational database because we want to focus all coding in our application, instead of having to make 'stored procedures'/'functions' in a separate environment to optimize the performance of our system. Further, the data is diverse and I don't want to try normalize it into a schema.