I'm working on a unique project right now that is going to provide the ability to back-test automated financial strategies against historical market data. We currently have access to market data being stored in the FAST protocol and stored in a file system with a standardized naming convention. Provided for FAST are several APIs for extracting the compressed data into readable CSV values with some limited searching parameters (ie. the ability to extract all financial data from a given hour based on the product or exchange).
In this system, we will need to be able to pass financial quotes to the automated strategy to run our simulation so we will either need to incorporate the functionality of the FAST API into the system to retrieve the relevant data for simulation or we need to extract the data ahead of time and store it elsewhere. This is where I am hoping that MongoDB will be useful.
I realize that there are quite a few discussions about the advantages/disadvantages/differences between NoSQL and RDMS solutions and I've a decent amount of homework on my end comparing the two. Some of the definite reasons I am leaning towards MongoDB would be the fact that using a Document based DB would allow for any future changes to the FAST protocol as well as the potential desire to incorporate market data from other similar formats into a queryable repository for what could be billions and billions of records.
Basically, I would like to present my boss with the reasons why I think we should consider MongoDB as our data storage for this system and I was hoping to get a little more feedback from anyone who has experience (preferably with scalable systems for querying the enormous amount of data that this will cover). How much quicker, more reliable, any other obvious reasons why this is a good solution, etc etc. Or if there are any other solutions besides the file system approach or MongoDB that would be appropriate for this scenario.