Relevant doc page is here: http://distributed.readthedocs.io/en/latest/manage-computation.html#dask-collections-to-futures
As you say, both
Client.persist take lazy Dask collections and start them running on the cluster. They differ in what they return.
Client.persist returns a copy for each of the dask collections with their previously-lazy computations now submitted to run on the cluster. The task graphs of these collections now just point to the currently running Future objects.
So if you persist a dask dataframe with 100 partitions you get back
a dask dataframe with 100 partitions, with each partition pointing to
a future currently running on the cluster.
Client.compute returns a single Future for each collection. This future refers to a single Python object result collected on one worker. This typically used for small results.
So if you compute a dask.dataframe with 100 partitions you get back a Future pointing to a single Pandas dataframe that holds all of the data
More pragmatically, I recommend using persist when your result is large and needs to be spread among many computers and using compute when your result is small and you want it on just one computer.
In practice I rarely use
Client.compute, preferring instead to use persist for intermediate staging and
dask.compute to pull down final results.
df = dd.read_csv('...')
df = df[df.name == 'alice']
df = client.persist(df) # compute up to here, keep results in memory
When using delayed
Delayed objects only have one "partition" regardless, so compute and persist are more interchangble. Persist will give you back a lazy dask.delayed object while compute will give you back an immediate Future object.