So, if you can't/don't want to run code to start the parsing operation on the individual servers containing these files, and transferring the gigs and gigs of them is slow, then whether this is multithreaded is probably irrelevant - the performance bottleneck in your process is the file transfer.
So to make some assumptions:
There's the one master server and only it does any work.
It has immediate (if slow) access to all the file shares necessary, accessible by a simple path, and you know those paths.
The master tally server has a local database sitting on it to store player scores.
If you can transfer multiple files just as fast as you can transfer one, I'd write code that did the following:
Gather the list of files that needs to be aggregated - this at least should be a small and cheap list. Gather them into a ConcurrentBag.
Spin up as many Tasks as the bandwidth on the machine will allow you to run copy operations. You'll need to test to determine what this is.
Each Task takes the ConcurrentBag as an argument. It begins with a loop running TryTake() until it succeeds - once it's successfully removed a filepath from the bag it begins reading directly from the file location and parsing, adding each user's score to whatever is currently in the local database for that user.
Once a Task finishes working on a file it resumes trying to get the next filepath from the ConcurrentBag and so forth.
Eventually all filepaths have been worked on and the Tasks end.
So the code would be roughly:
public void Start()
var bag = new ConcurrentBag<string>();
for(var i = 0; i < COPY_OPERATIONS; i++)
public void StartCopy(ConcurrentBag<string> bag)
// Loop until the bag is available to hand us a path to work on
string path = null;
while (!bag.IsEmpty && !bag.TryTake(out path))
// Access the file via a stream and begin parsing it, dumping scores to the db
By streaming you keep the copy operations running full tilt (in fact most likely the OS will readahead a bit for you to really ensure you max out the copy speed) and still avoid knocking over memory with the size of these files.
By not using multiple intermediary steps you skip the repeated cost of transferring and considering all that data - this way you do it just the once.
And by using the above approach you can easily account for the optimal number of copy operations.
There are optimizations you can make here to make it easily restartable like having all threads receive a signal to stop what they're doing and record in the database the files they've worked on, the one they were working on now, and the line they left off on. You could have them constantly write these values to the database at a small cost to performance to make it crash proof (by making the line number and score writes part of a single transaction).
You forgot to specify this in your question but it appears these scattered files log the points scored by players playing a game on a cluster of webservers?
This sounds like an embarrassingly parallel problem. Instead of copying massive files off of each machine, why not write a simple app that can run on all of them and distribute it to them? It just sums the points there on the machine and sends back a single number and player id per player over the network, solving the slow network issue.
If this is an on-going task you can timestamp the sums so you never count the same point twice and just run it in batch periodically.
I'd write the webserver apps as a simple webapp that only responds to one IP (the master tally server you were originally going to do everything on), and in response to a request, runs the tally locally and responds with the sum. That way the master server just sends requests out to all the score servers, and waits for them to send back their sums. Done.
You can keep the client apps very simple by just storing the sum data in memory as a Dictionary mapping player id to sum - no SQL necessary.
The tally software can also likely do everything in RAM then dump it all to SQL Server as totals complete to save time.