An implementation of the Raft distributed consensus protocol, verified in Coq using the Verdi framework.
Definitions and proofs:
Executable vard
key-value store:
OCaml 4.02.3
(or later)OCamlbuild
verdi-runtime
cheerios-runtime
Client for vard
:
Integration testing of vard
:
Unit testing of unverified vard
code:
OUnit 2.0.0
(or later)
We recommend installing the dependencies of Verdi Raft via OPAM:
opam repo add coq-released https://coq.inria.fr/opam/released
opam repo add distributedcomponents-dev http://opam-dev.distributedcomponents.net
opam install verdi StructTact verdi-runtime ocamlbuild cheerios cheerios-runtime
Then, run ./configure
in the Verdi Raft root directory. This will check
for the appropriate version of Coq and ensure all necessary
Coq dependencies can be located. By default, Verdi
, StructTact
,
and Cheerios
are assumed to be installed in Coq's
user-contrib
directory, but this can be overridden by setting the
Verdi_PATH
, StructTact_PATH
, and Cheerios_PATH
environment variables.
Finally, run make
in the root directory. This will compile the Raft
implementation and proof interfaces, and check all the proofs.
To speed up proof checking on multi-core machines, use make -jX
,
where X
is at least the number of cores.
To build the vard
key-value store program in extraction/vard
,
run make vard
in the root directory. If the implementation has
been compiled as above, this simply compiles the extracted OCaml
code to a native program; otherwise, the implementation
is extracted to OCaml and compiled without checking any proofs.
The raft
and raft-proofs
subdirectories contain the implementation and
verification of Raft. For each proof interface file in raft
, there is a
corresponding proof file in raft-proofs
. The files in the raft
subdirectory include:
Raft.v
: an implementation of Raft in VerdiRaftRefinementInterface.v
: an application of the ghost-variable transformer to Raft which tracks several ghost variables used in the verification of RaftCommonTheorems.v
: several useful theorems about functions used by the Raft implementationOneLeaderPerTermInterface
: a statement of Raft's election safety property. See also the corresponding proof file inraft-proofs
.CandidatesVoteForSelvesInterface.v
,VotesCorrectInterface.v
, andCroniesCorrectInterface.v
: statements of properties used by the proofOneLeaderPerTermProof.v
LogMatchingInterface.v
: a statement of Raft's log matching property. See alsoLogMatchingProof.v
inraft-proofs
LeaderSublogInterface.v
,SortedInterface.v
, andUniqueIndicesInterface.v
: statements of properties used byLogMatchingProof.v
The file EndToEndLinearizability.v
in raft-proofs
uses the proofs of
all proof interfaces to show Raft's linearizability property.
vard
is a simple key-value store implemented using
Verdi. vard
is specified and verified against Verdi's state-machine
semantics in the VarD.v
example system distributed with Verdi. When the Raft transformer
is applied, vard
can be run as a strongly-consistent, fault-tolerant key-value store
along the lines of etcd
.
After running make vard
in the root directory, OCaml code for vard
is extracted, compiled, and linked against a Verdi shim and some vard
-specific
serialization/debugging code, to produce a vard.native
binary in extraction/vard
.
Running make bench-vard
in extraction/vard
will produce some
benchmark numbers, which are largely meaningless on
localhost
(multiple processes writing and fsync-ing to the same disk
and communicating over loopback doesn't accurately model real-world
use cases). Running make debug
will get you a tmux
session where
you can play around with a vard cluster in debug mode; look in
bench/vard.py
for a simple Python vard
client.
As the name suggests, vard
is designed to be comparable to the etcd
key-value store (although it currently supports many fewer
features). To that end, we include a very simple etcd
"client" which
can be used for benchmarking. Running make bench-etcd
will run the
vard benchmarks against etcd
(although see above for why these results
are not particularly meaningful). See below for instructions to run
both stores on a cluster in order to get a more useful performance
comparison.
vard
accepts the following command-line options:
-me NAME name for this node
-port PORT port for client commands
-dbpath DIRECTORY directory for storing database files
-node NAME,IP:PORT node in the cluster
-debug run in debug mode
Note that vard
node names are integers starting from 0.
For example, to run vard
on a cluster with IP addresses
192.168.0.1
, 192.168.0.2
, 192.168.0.3
, client (input) port 8000,
and port 9000 for inter-node communication, use the following:
# on 192.168.0.1
$ ./vard.native -dbpath /tmp/vard-8000 -port 8000 -me 0 -node 0,192.168.0.1:9000 \
-node 1,192.168.0.2:9000 -node 2,192.168.0.3:9000
# on 192.168.0.2
$ ./vard.native -dbpath /tmp/vard-8000 -port 8000 -me 1 -node 0,192.168.0.1:9000 \
-node 1,192.168.0.2:9000 -node 2,192.168.0.3:9000
# on 192.168.0.3
$ ./vard.native -dbpath /tmp/vard-8000 -port 8000 -me 2 -node 0,192.168.0.1:9000 \
-node 1,192.168.0.2:9000 -node 2,192.168.0.3:9000
When the cluster is set up, a benchmark can be run as follows:
# on the client machine
$ python2 bench/setup.py --service vard --keys 50 \
--cluster "192.168.0.1:8000,192.168.0.2:8000,192.168.0.3:8000"
$ python2 bench/bench.py --service vard --keys 50 \
--cluster "192.168.0.1:8000,192.168.0.2:8000,192.168.0.3:8000" \
--threads 8 --requests 100
We can compare numbers for vard
and etcd
running on the same cluster as
follows:
# on 192.168.0.1
$ etcd --name=one \
--listen-client-urls http://192.168.0.1:8000 \
--advertise-client-urls http://192.168.0.1:8000 \
--initial-advertise-peer-urls http://192.168.0.1:9000 \
--listen-peer-urls http://192.168.0.1:9000 \
--data-dir=/tmp/etcd \
--initial-cluster "one=http://192.168.0.1:9000,two=http://192.168.0.2:9000,three=http://192.168.0.3:9000"
# on 192.168.0.2
$ etcd --name=two \
--listen-client-urls http://192.168.0.2:8000 \
--advertise-client-urls http://192.168.0.2:8000 \
--initial-advertise-peer-urls http://192.168.0.2:9000 \
--listen-peer-urls http://192.168.0.2:9000 \
--data-dir=/tmp/etcd \
--initial-cluster "one=http://192.168.0.1:9000,two=http://192.168.0.2:9000,three=http://192.168.0.3:9000"
# on 192.168.0.3
$ etcd --name=three \
--listen-client-urls http://192.168.0.3:8000 \
--advertise-client-urls http://192.168.0.3:8000 \
--initial-advertise-peer-urls http://192.168.0.3:9000 \
--listen-peer-urls http://192.168.0.3:9000 \
--data-dir=/tmp/etcd \
--initial-cluster "one=http://192.168.0.1:9000,two=http://192.168.0.2:9000,three=http://192.168.0.3:9000"
# on the client machine
$ python2 bench/setup.py --service etcd --keys 50 \
--cluster "192.168.0.1:8000,192.168.0.2:8000,192.168.0.3:8000"
$ python2 bench/bench.py --service etcd --keys 50 \
--cluster "192.168.0.1:8000,192.168.0.2:8000,192.168.0.3:8000" \
--threads 8 --requests 100