142 lines
6.9 KiB
Markdown
142 lines
6.9 KiB
Markdown
# Auth Chain Difference Algorithm
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The auth chain difference algorithm is used by V2 state resolution, where a
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naive implementation can be a significant source of CPU and DB usage.
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### Definitions
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A *state set* is a set of state events; e.g. the input of a state resolution
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algorithm is a collection of state sets.
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The *auth chain* of a set of events are all the events' auth events and *their*
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auth events, recursively (i.e. the events reachable by walking the graph induced
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by an event's auth events links).
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The *auth chain difference* of a collection of state sets is the union minus the
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intersection of the sets of auth chains corresponding to the state sets, i.e an
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event is in the auth chain difference if it is reachable by walking the auth
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event graph from at least one of the state sets but not from *all* of the state
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sets.
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## Breadth First Walk Algorithm
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A way of calculating the auth chain difference without calculating the full auth
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chains for each state set is to do a parallel breadth first walk (ordered by
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depth) of each state set's auth chain. By tracking which events are reachable
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from each state set we can finish early if every pending event is reachable from
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every state set.
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This can work well for state sets that have a small auth chain difference, but
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can be very inefficient for larger differences. However, this algorithm is still
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used if we don't have a chain cover index for the room (e.g. because we're in
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the process of indexing it).
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## Chain Cover Index
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Synapse computes auth chain differences by pre-computing a "chain cover" index
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for the auth chain in a room, allowing us to efficiently make reachability queries
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like "is event `A` in the auth chain of event `B`?". We could do this with an index
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that tracks all pairs `(A, B)` such that `A` is in the auth chain of `B`. However, this
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would be prohibitively large, scaling poorly as the room accumulates more state
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events.
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Instead, we break down the graph into *chains*. A chain is a subset of a DAG
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with the following property: for any pair of events `E` and `F` in the chain,
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the chain contains a path `E -> F` or a path `F -> E`. This forces a chain to be
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linear (without forks), e.g. `E -> F -> G -> ... -> H`. Each event in the chain
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is given a *sequence number* local to that chain. The oldest event `E` in the
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chain has sequence number 1. If `E` has a child `F` in the chain, then `F` has
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sequence number 2. If `E` has a grandchild `G` in the chain, then `G` has
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sequence number 3; and so on.
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Synapse ensures that each persisted event belongs to exactly one chain, and
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tracks how the chains are connected to one another. This allows us to
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efficiently answer reachability queries. Doing so uses less storage than
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tracking reachability on an event-by-event basis, particularly when we have
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fewer and longer chains. See
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> Jagadish, H. (1990). [A compression technique to materialize transitive closure](https://doi.org/10.1145/99935.99944).
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> *ACM Transactions on Database Systems (TODS)*, 15*(4)*, 558-598.
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for the original idea or
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> Y. Chen, Y. Chen, [An efficient algorithm for answering graph
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> reachability queries](https://doi.org/10.1109/ICDE.2008.4497498),
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> in: 2008 IEEE 24th International Conference on Data Engineering, April 2008,
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> pp. 893–902. (PDF available via [Google Scholar](https://scholar.google.com/scholar?q=Y.%20Chen,%20Y.%20Chen,%20An%20efficient%20algorithm%20for%20answering%20graph%20reachability%20queries,%20in:%202008%20IEEE%2024th%20International%20Conference%20on%20Data%20Engineering,%20April%202008,%20pp.%20893902.).)
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for a more modern take.
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In practical terms, the chain cover assigns every event a
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*chain ID* and *sequence number* (e.g. `(5,3)`), and maintains a map of *links*
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between events in chains (e.g. `(5,3) -> (2,4)`) such that `A` is reachable by `B`
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(i.e. `A` is in the auth chain of `B`) if and only if either:
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1. `A` and `B` have the same chain ID and `A`'s sequence number is less than `B`'s
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sequence number; or
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2. there is a link `L` between `B`'s chain ID and `A`'s chain ID such that
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`L.start_seq_no` <= `B.seq_no` and `A.seq_no` <= `L.end_seq_no`.
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There are actually two potential implementations, one where we store links from
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each chain to every other reachable chain (the transitive closure of the links
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graph), and one where we remove redundant links (the transitive reduction of the
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links graph) e.g. if we have chains `C3 -> C2 -> C1` then the link `C3 -> C1`
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would not be stored. Synapse uses the former implementation so that it doesn't
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need to recurse to test reachability between chains. This trades-off extra storage
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in order to save CPU cycles and DB queries.
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### Example
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An example auth graph would look like the following, where chains have been
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formed based on type/state_key and are denoted by colour and are labelled with
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`(chain ID, sequence number)`. Links are denoted by the arrows (links in grey
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are those that would be remove in the second implementation described above).
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![Example](auth_chain_diff.dot.png)
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Note that we don't include all links between events and their auth events, as
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most of those links would be redundant. For example, all events point to the
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create event, but each chain only needs the one link from it's base to the
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create event.
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## Using the Index
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This index can be used to calculate the auth chain difference of the state sets
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by looking at the chain ID and sequence numbers reachable from each state set:
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1. For every state set lookup the chain ID/sequence numbers of each state event
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2. Use the index to find all chains and the maximum sequence number reachable
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from each state set.
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3. The auth chain difference is then all events in each chain that have sequence
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numbers between the maximum sequence number reachable from *any* state set and
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the minimum reachable by *all* state sets (if any).
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Note that steps 2 is effectively calculating the auth chain for each state set
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(in terms of chain IDs and sequence numbers), and step 3 is calculating the
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difference between the union and intersection of the auth chains.
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### Worked Example
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For example, given the above graph, we can calculate the difference between
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state sets consisting of:
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1. `S1`: Alice's invite `(4,1)` and Bob's second join `(2,2)`; and
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2. `S2`: Alice's second join `(4,3)` and Bob's first join `(2,1)`.
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Using the index we see that the following auth chains are reachable from each
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state set:
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1. `S1`: `(1,1)`, `(2,2)`, `(3,1)` & `(4,1)`
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2. `S2`: `(1,1)`, `(2,1)`, `(3,2)` & `(4,3)`
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And so, for each the ranges that are in the auth chain difference:
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1. Chain 1: None, (since everything can reach the create event).
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2. Chain 2: The range `(1, 2]` (i.e. just `2`), as `1` is reachable by all state
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sets and the maximum reachable is `2` (corresponding to Bob's second join).
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3. Chain 3: Similarly the range `(1, 2]` (corresponding to the second power
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level).
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4. Chain 4: The range `(1, 3]` (corresponding to both of Alice's joins).
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So the final result is: Bob's second join `(2,2)`, the second power level
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`(3,2)` and both of Alice's joins `(4,2)` & `(4,3)`.
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