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Differential Dataflow

Warning

Do not merge material changes to this fork. The occasional dependency bump is acceptable, but all material changes must be submitted, reviewed and merged upstream: https://github.com/TimelyDataflow/differential-dataflow

This fork exists solely because:

  • we have an organizational ban on Git dependencies outside of the MaterializeInc GitHub organization; and
  • the upstream project does not regularly release to crates.io.

An implementation of differential dataflow over timely dataflow on Rust.

Background

Differential dataflow is a data-parallel programming framework designed to efficiently process large volumes of data and to quickly respond to arbitrary changes in input collections. You can read more in the differential dataflow mdbook and in the differential dataflow documentation.

Differential dataflow programs are written as functional transformations of collections of data, using familiar operators like map, filter, join, and reduce. Differential dataflow also includes more exotic operators such as iterate, which repeatedly applies a differential dataflow fragment to a collection. The programs are compiled down to timely dataflow computations.

For example, here is a differential dataflow fragment to compute the out-degree distribution of a directed graph (for each degree, the number of nodes with that many outgoing edges):

let out_degr_dist =
edges.map(|(src, _dst)| src)    // extract source
     .count()                   // count occurrences of source
     .map(|(_src, deg)| deg)    // extract degree
     .count();                  // count occurrences of degree

Alternately, here is a fragment that computes the set of nodes reachable from a set roots of starting nodes:

let reachable =
roots.iterate(|reach|
    edges.enter(&reach.scope())
         .semijoin(reach)
         .map(|(src, dst)| dst)
         .concat(reach)
         .distinct()
)

Once written, a differential dataflow responds to arbitrary changes to its initially empty input collections, reporting the corresponding changes to each of its output collections. Differential dataflow can react quickly because it only acts where changes in collections occur, and does no work elsewhere.

In the examples above, we can add to and remove from edges, dynamically altering the graph, and get immediate feedback on how the results change: if the degree distribution shifts we'll see the changes, and if nodes are now (or no longer) reachable we'll hear about that too. We could also add to and remove from roots, more fundamentally altering the reachability query itself.

Be sure to check out the differential dataflow documentation, which is continually improving.

An example: counting degrees in a graph.

Let's check out that out-degree distribution computation, to get a sense for how differential dataflow actually works. This example is examples/hello.rs in this repository, if you'd like to follow along.

A graph is a collection of pairs (Node, Node), and one standard analysis is to determine the number of times each Node occurs in the first position, its "degree". The number of nodes with each degree is a helpful graph statistic.

To determine the out-degree distribution, we create a new timely dataflow scope in which we describe our computation and how we plan to interact with it.

// create a degree counting differential dataflow
let (mut input, probe) = worker.dataflow(|scope| {

    // create edge input, count a few ways.
    let (input, edges) = scope.new_collection();

    let out_degr_distr =
    edges.map(|(src, _dst)| src)    // extract source
         .count()                   // count occurrences of source
         .map(|(_src, deg)| deg)    // extract degree
         .count();                  // count occurrences of degree

    // show us something about the collection, notice when done.
    let probe =
    out_degr_distr
        .inspect(|x| println!("observed: {:?}", x))
        .probe();

    (input, probe)
});

The input and probe we return are how we get data into the dataflow, and how we notice when some amount of computation is complete. These are timely dataflow idioms, and we won't get in to them in more detail here (check out the timely dataflow repository).

If we feed this computation with some random graph data, say fifty random edges among ten nodes, we get output like

Echidnatron% cargo run --release --example hello -- 10 50 1 inspect
    Finished release [optimized + debuginfo] target(s) in 0.05s
    Running `target/release/examples/hello 10 50 1 inspect`
observed: ((3, 1), 0, 1)
observed: ((4, 2), 0, 1)
observed: ((5, 4), 0, 1)
observed: ((6, 2), 0, 1)
observed: ((7, 1), 0, 1)
round 0 finished after 772.464µs (loading)

This shows us the records that passed the inspect operator, revealing the contents of the collection: there are five distinct degrees, three through seven. The records have the form ((degree, count), time, delta) where the time field says this is the first round of data, and the delta field tells us that each record is coming into existence. If the corresponding record were departing the collection, it would be a negative number.

Let's update the input by removing one edge and adding a new random edge:

observed: ((2, 1), 1, 1)
observed: ((3, 1), 1, -1)
observed: ((7, 1), 1, -1)
observed: ((8, 1), 1, 1)
round 1 finished after 149.701µs

We see here some changes! Those degree three and seven nodes have been replaced by degree two and eight nodes; looks like one node lost an edge and gave it to the other!

How about a few more changes?

round 2 finished after 127.444µs
round 3 finished after 100.628µs
round 4 finished after 130.609µs
observed: ((5, 3), 5, 1)
observed: ((5, 4), 5, -1)
observed: ((6, 2), 5, -1)
observed: ((6, 3), 5, 1)
observed: ((7, 1), 5, 1)
observed: ((8, 1), 5, -1)
round 5 finished after 161.82µs

Well a few weird things happen here. First, rounds 2, 3, and 4 don't print anything. Seriously? It turns out that the random changes we made didn't affect any of the degree counts, we moved edges between nodes, preserving degrees. It can happen.

The second weird thing is that in round 5, with only two edge changes we have six changes in the output! It turns out we can have up to eight. The degree eight gets turned back into a seven, and a five gets turned into a six. But: going from five to six changes the count for each, and each change requires two record differences. Eight and seven were more concise because their counts were only one, meaning just arrival and departure of records rather than changes.

Scaling up

The appealing thing about differential dataflow is that it only does work where changes occur, so even if there is a lot of data, if not much changes it can still go quite fast. Let's scale our 10 nodes and 50 edges up by a factor of one million:

Echidnatron% cargo run --release --example hello -- 10000000 50000000 1 inspect
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 1 inspect`
observed: ((1, 336908), 0, 1)
observed: ((2, 843854), 0, 1)
observed: ((3, 1404462), 0, 1)
observed: ((4, 1751921), 0, 1)
observed: ((5, 1757099), 0, 1)
observed: ((6, 1459805), 0, 1)
observed: ((7, 1042894), 0, 1)
observed: ((8, 653178), 0, 1)
observed: ((9, 363983), 0, 1)
observed: ((10, 181423), 0, 1)
observed: ((11, 82478), 0, 1)
observed: ((12, 34407), 0, 1)
observed: ((13, 13216), 0, 1)
observed: ((14, 4842), 0, 1)
observed: ((15, 1561), 0, 1)
observed: ((16, 483), 0, 1)
observed: ((17, 143), 0, 1)
observed: ((18, 38), 0, 1)
observed: ((19, 8), 0, 1)
observed: ((20, 3), 0, 1)
observed: ((22, 1), 0, 1)
round 0 finished after 15.470465014s (loading)

There are a lot more distinct degrees here. I sorted them because it was too painful to look at the unsorted data. You would normally get to see the output unsorted, because they are just changes to values in a collection.

Let's perform a single change again.

observed: ((5, 1757098), 1, 1)
observed: ((5, 1757099), 1, -1)
observed: ((6, 1459805), 1, -1)
observed: ((6, 1459807), 1, 1)
observed: ((7, 1042893), 1, 1)
observed: ((7, 1042894), 1, -1)
round 1 finished after 228.451µs

Although the initial computation took about fifteen seconds, we get our changes in about 230 microseconds; that's about one hundred thousand times faster than re-running the computation. That's pretty nice. Actually, it is small enough that the time to print things to the screen is a bit expensive, so let's stop doing that.

Now we can just watch as changes roll past and look at the times.

Echidnatron% cargo run --release --example hello -- 10000000 50000000 1 no_inspect
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 1 no_inspect`
round 0 finished after 15.586969662s (loading)
round 1 finished after 1.070239ms
round 2 finished after 2.303187ms
round 3 finished after 208.45µs
round 4 finished after 163.224µs
round 5 finished after 118.792µs
...

Nice. This is some hundreds of microseconds per update, which means maybe ten thousand updates per second. It's not a horrible number for my laptop, but it isn't the right answer yet.

Scaling .. "along"?

Differential dataflow is designed for throughput in addition to latency. We can increase the number of rounds of updates it works on concurrently, which can increase its effective throughput. This does not change the output of the computation, except that we see larger batches of output changes at once.

Notice that those times above are a few hundred microseconds for each single update. If we work on ten rounds of updates at once, we get times that look like this:

Echidnatron% cargo run --release --example hello -- 10000000 50000000 10 no_inspect
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 10 no_inspect`
round 0 finished after 15.556475008s (loading)
round 10 finished after 421.219µs
round 20 finished after 1.56369ms
round 30 finished after 338.54µs
round 40 finished after 351.843µs
round 50 finished after 339.608µs
...

This is appealing in that rounds of ten aren't much more expensive than single updates, and we finish the first ten rounds in much less time than it takes to perform the first ten updates one at a time. Every round after that is just bonus time.

As we turn up the batching, performance improves. Here we work on one hundred rounds of updates at once:

Echidnatron% cargo run --release --example hello -- 10000000 50000000 100 no_inspect
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 100 no_inspect`
round 0 finished after 15.528724145s (loading)
round 100 finished after 2.567577ms
round 200 finished after 1.861168ms
round 300 finished after 1.753794ms
round 400 finished after 1.528285ms
round 500 finished after 1.416605ms
...

We are still improving, and continue to do so as we increase the batch sizes. When processing 100,000 updates at a time we take about half a second for each batch. This is less "interactive" but a higher throughput.

Echidnatron% cargo run --release --example hello -- 10000000 50000000 100000 no_inspect
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 100000 no_inspect`
round 0 finished after 15.65053789s (loading)
round 100000 finished after 505.210924ms
round 200000 finished after 524.069497ms
round 300000 finished after 470.77752ms
round 400000 finished after 621.325393ms
round 500000 finished after 472.791742ms
...

This averages to about five microseconds on average; a fair bit faster than the hundred microseconds for individual updates! And now that I think about it each update was actually two changes, wasn't it. Good for you, differential dataflow!

Scaling out

Differential dataflow is built on top of timely dataflow, a distributed data-parallel runtime. Timely dataflow scales out to multiple independent workers, increasing the capacity of the system (at the cost of some coordination that cuts into latency).

If we bring two workers to bear, our 10 million node, 50 million edge computation drops down from fifteen seconds to just over eight seconds.

Echidnatron% cargo run --release --example hello -- 10000000 50000000 1 no_inspect -w2
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 1 no_inspect -w2`
round 0 finished after 8.065386177s (loading)
round 1 finished after 275.373µs
round 2 finished after 759.632µs
round 3 finished after 171.671µs
round 4 finished after 745.078µs
round 5 finished after 213.146µs
...

That is a so-so reduction. You might notice that the times increased for the subsequent rounds. It turns out that multiple workers just get in each other's way when there isn't much work to do.

Fortunately, as we work on more and more rounds of updates at the same time, the benefit of multiple workers increases. Here are the numbers for ten rounds at a time:

Echidnatron% cargo run --release --example hello -- 10000000 50000000 10 no_inspect -w2
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 10 no_inspect -w2`
round 0 finished after 8.083000954s (loading)
round 10 finished after 1.901946ms
round 20 finished after 3.092976ms
round 30 finished after 889.63µs
round 40 finished after 409.001µs
round 50 finished after 320.248µs
...

One hundred rounds at a time:

Echidnatron% cargo run --release --example hello -- 10000000 50000000 100 no_inspect -w2
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 100 no_inspect -w2`
round 0 finished after 8.121800831s (loading)
round 100 finished after 2.52821ms
round 200 finished after 3.119036ms
round 300 finished after 1.63147ms
round 400 finished after 1.008668ms
round 500 finished after 941.426µs
...

One hundred thousand rounds at a time:

Echidnatron% cargo run --release --example hello -- 10000000 50000000 100000 no_inspect -w2
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 100000 no_inspect -w2`
round 0 finished after 8.200755198s (loading)
round 100000 finished after 275.262419ms
round 200000 finished after 279.291957ms
round 300000 finished after 259.137138ms
round 400000 finished after 340.624124ms
round 500000 finished after 259.870938ms
...

These last numbers were about half a second with one worker, and are decently improved with the second worker.

Going even faster

There are several performance optimizations in differential dataflow designed to make the underlying operators as close to what you would expect to write, when possible. Additionally, by building on timely dataflow, you can drop in your own implementations a la carte where you know best.

For example, we also know in this case that the underlying collections go through a sequence of changes, meaning their timestamps are totally ordered. In this case we can use a much simpler implementation, count_total. The reduces the update times substantially, for each batch size:

Echidnatron% cargo run --release --example hello -- 10000000 50000000 10 no_inspect -w2
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 10 no_inspect -w2`
round 0 finished after 5.985084002s (loading)
round 10 finished after 1.802729ms
round 20 finished after 2.202838ms
round 30 finished after 192.902µs
round 40 finished after 198.342µs
round 50 finished after 187.725µs
...

Echidnatron% cargo run --release --example hello -- 10000000 50000000 100 no_inspect -w2
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 100 no_inspect -w2`
round 0 finished after 5.588270073s (loading)
round 100 finished after 3.114716ms
round 200 finished after 2.657691ms
round 300 finished after 890.972µs
round 400 finished after 448.537µs
round 500 finished after 384.565µs
...

Echidnatron% cargo run --release --example hello -- 10000000 50000000 100000 no_inspect -w2
    Finished release [optimized + debuginfo] target(s) in 0.04s
    Running `target/release/examples/hello 10000000 50000000 100000 no_inspect -w2`
round 0 finished after 6.486550581s (loading)
round 100000 finished after 89.096615ms
round 200000 finished after 79.469464ms
round 300000 finished after 72.568018ms
round 400000 finished after 93.456272ms
round 500000 finished after 73.954886ms
...

These times have now dropped quite a bit from where we started; we now absorb over one million rounds of updates per second, and produce correct (not just consistent) answers even while distributed across multiple workers.

A second example: k-core computation

The k-core of a graph is the largest subset of its edges so that all vertices with any incident edges have degree at least k. One way to find the k-core is to repeatedly delete all edges incident on vertices with degree less than k. Those edges going away might lower the degrees of other vertices, so we need to iteratively throwing away edges on vertices with degree less than k until we stop. Maybe we throw away all the edges, maybe we stop with some left over.

Here is a direct implementation, in which we repeatedly take determine the set of active nodes (those with at least k edges point to or from them), and restrict the set edges to those with both src and dst present in active.

let k = 5;

// iteratively thin edges.
edges.iterate(|inner| {

    // determine the active vertices        /-- this is a lie --\
    let active = inner.flat_map(|(src,dst)| [src,dst].into_iter())
                      .map(|node| (node, ()))
                      .group(|_node, s, t| if s[0].1 > k { t.push(((), 1)); })
                      .map(|(node,_)| node);

    // keep edges between active vertices
    edges.enter(&inner.scope())
         .semijoin(active)
         .map(|(src,dst)| (dst,src))
         .semijoin(active)
         .map(|(dst,src)| (src,dst))
});

To be totally clear, the syntax with into_iter() doesn't work, because Rust, and instead there is a more horrible syntax needed to get a non-heap allocated iterator over two elements. But, it works, and

Running `target/release/examples/degrees 10000000 50000000 1 5 kcore1`
Loading finished after 72204416910

Well that is a thing. Who knows if 72 seconds is any good? (ed: it is worse than the numbers in the previous version of this readme).

The amazing thing, though is what happens next:

worker 0, round 1 finished after Duration { secs: 0, nanos: 567171 }
worker 0, round 2 finished after Duration { secs: 0, nanos: 449687 }
worker 0, round 3 finished after Duration { secs: 0, nanos: 467143 }
worker 0, round 4 finished after Duration { secs: 0, nanos: 480019 }
worker 0, round 5 finished after Duration { secs: 0, nanos: 404831 }

We are taking about half a millisecond to update the k-core computation. Each edge addition and deletion could cause other edges to drop out of or more confusingly return to the k-core, and differential dataflow is correctly updating all of that for you. And it is doing it in sub-millisecond timescales.

If we crank the batching up by one thousand, we improve the throughput a fair bit:

Running `target/release/examples/degrees 10000000 50000000 1000 5 kcore1`
Loading finished after Duration { secs: 73, nanos: 507094824 }
worker 0, round 1000 finished after Duration { secs: 0, nanos: 55649900 }
worker 0, round 2000 finished after Duration { secs: 0, nanos: 51793416 }
worker 0, round 3000 finished after Duration { secs: 0, nanos: 57733231 }
worker 0, round 4000 finished after Duration { secs: 0, nanos: 50438934 }
worker 0, round 5000 finished after Duration { secs: 0, nanos: 55020469 }

Each batch is doing one thousand rounds of updates in just over 50 milliseconds, averaging out to about 50 microseconds for each update, and corresponding to roughly 20,000 distinct updates per second.

I think this is all great, both that it works at all and that it even seems to work pretty well.

Roadmap

The issue tracker has several open issues relating to current performance defects or missing features. If you are interested in contributing, that would be great! If you have other questions, don't hesitate to get in touch.

Acknowledgements

In addition to contributions to this repository, differential dataflow is based on work at the now defunct Microsoft Research lab in Silicon Valley, and continued at the Systems Group of ETH Zürich. Numerous collaborators at each institution (among others) have contributed both ideas and implementations.