Since your downloads are IO limited, I would actually recommend a simple ThreadPool over IPython.parallel (note: I am the author of IPython.parallel). It's a lot easier to get going, and none of what IPython.parallel does really benefits your presented case.
I setup a simple server that slowly responds to requests to test.
Test a simple request to my slow server
It just replies to any request for
/NUMBER with the number requested,
but the server is artificially slow in its handling of requests:
r = requests.get("http://localhost:8888/10")
get_data function downloads the URL for a given ID,
and parses the result (casts str of int to int):
"""function for getting data from our slow server"""
r = requests.get("http://localhost:8888/%i" % ID)
Now test using a threadpool to get a bunch of data, using a varying number of concurrent threads:
from multiprocessing.pool import ThreadPool
IDs = range(128)
for nthreads in [1, 2, 4, 8, 16, 32]:
pool = ThreadPool(nthreads)
tic = time.time()
results = pool.map(get_data, IDs)
toc = time.time()
print "%3i threads: %5.1f seconds" % (nthreads, toc-tic)
1 threads: 26.2 seconds
2 threads: 13.3 seconds
4 threads: 6.7 seconds
8 threads: 3.4 seconds
16 threads: 1.8 seconds
32 threads: 1.1 seconds
You can use this to figure out how many threads make sense for your case. You can also easily replace ThreadPool with ProcessPool, and see if you get better results.
This example as an IPython Notebook.