.gitignore | ||
.travis.yml | ||
AdaptiveSampler.h | ||
AgentStats.h | ||
barrier.cc | ||
barrier.h | ||
binary_protocol.h | ||
bipbuffer.cc | ||
bipbuffer.h | ||
blockingconcurrentqueue.h | ||
cmdline.ggo | ||
common.h | ||
concurrentqueue.h | ||
Connection.cc | ||
Connection.h | ||
ConnectionMulti.backup | ||
ConnectionMulti.cc | ||
ConnectionMultiApprox.cc | ||
ConnectionMultiApproxBatch.cc | ||
ConnectionMultiApproxBatchShm.cc | ||
ConnectionMultiApproxShm.cc | ||
ConnectionOptions.h | ||
ConnectionStats.h | ||
COPYING | ||
distributions.cc | ||
distributions.h | ||
Generator.cc | ||
Generator.h | ||
HistogramSampler.h | ||
libzstd.a | ||
lightweightsemaphore.h | ||
log.cc | ||
log.h | ||
LogHistogramSampler.h | ||
mutilate.cc | ||
mutilate.h | ||
Operation.h | ||
Protocol.cc | ||
Protocol.h | ||
README.md | ||
SConstruct | ||
TestGenerator.cc | ||
update_readme.sh | ||
util.cc | ||
util.h | ||
zstd.h |
Mutilate
Mutilate is a memcached load generator designed for high request rates, good tail-latency measurements, and realistic request stream generation.
Requirements
- A C++0x compiler
- scons
- libevent
- gengetopt
- zeromq (optional)
Mutilate has only been thoroughly tested on Ubuntu 11.10. We'll flesh out compatibility over time.
Building
apt-get install scons libevent-dev gengetopt libzmq-dev
scons
Basic Usage
Type './mutilate -h' for a full list of command-line options. At minimum, a server must be specified.
$ ./mutilate -s localhost
#type avg min 1st 5th 10th 90th 95th 99th
read 52.4 41.0 43.1 45.2 48.1 55.8 56.6 71.5
update 0.0 0.0 0.0 0.0 0.0 0.0 0.0 0.0
op_q 1.5 1.0 1.0 1.1 1.1 1.9 2.0 2.0
Total QPS = 18416.6 (92083 / 5.0s)
Misses = 0 (0.0%)
RX 22744501 bytes : 4.3 MB/s
TX 3315024 bytes : 0.6 MB/s
Mutilate reports the latency (average, minimum, and various percentiles) for get and set commands, as well as achieved QPS and network goodput.
To achieve high request rate, you must configure mutilate to use multiple threads, multiple connections, connection pipelining, or remote agents.
$ ./mutilate -s zephyr2-10g -T 24 -c 8
#type avg min 1st 5th 10th 90th 95th 99th
read 598.8 86.0 437.2 466.6 482.6 977.0 1075.8 1170.6
update 0.0 0.0 0.0 0.0 0.0 0.0 0.0 0.0
op_q 1.5 1.0 1.0 1.1 1.1 1.9 1.9 2.0
Total QPS = 318710.8 (1593559 / 5.0s)
Misses = 0 (0.0%)
RX 393609073 bytes : 75.1 MB/s
TX 57374136 bytes : 10.9 MB/s
Suggested Usage
Real deployments of memcached often handle the requests of dozens, hundreds, or thousands of front-end clients simultaneously. However, by default, mutilate establishes one connection per server and meters requests one at a time (it waits for a reply before sending the next request). This artificially limits throughput (i.e. queries per second), as the round-trip network latency is almost certainly far longer than the time it takes for the memcached server to process one request.
In order to get reasonable benchmark results with mutilate, it needs to be configured to more accurately portray a realistic client workload. In general, this means ensuring that (1) there are a large number of client connections, (2) there is the potential for a large number of outstanding requests, and (3) the memcached server saturates and experiences queuing delay far before mutilate does. I suggest the following guidelines:
- Establish on the order of 100 connections per memcached server thread.
- Don't exceed more than about 16 connections per mutilate thread.
- Use multiple mutilate agents in order to achieve (1) and (2).
- Do not use more mutilate threads than hardware cores/threads.
- Use -Q to configure the "master" agent to take latency samples at slow, a constant rate.
Here's an example:
memcached_server$ memcached -t 4 -c 32768
agent1$ mutilate -T 16 -A
agent2$ mutilate -T 16 -A
agent3$ mutilate -T 16 -A
agent4$ mutilate -T 16 -A
agent5$ mutilate -T 16 -A
agent6$ mutilate -T 16 -A
agent7$ mutilate -T 16 -A
agent8$ mutilate -T 16 -A
master$ mutilate -s memcached_server --loadonly
master$ mutilate -s memcached_server --noload \
-B -T 16 -Q 1000 -D 4 -C 4 \
-a agent1 -a agent2 -a agent3 -a agent4 \
-a agent5 -a agent6 -a agent7 -a agent8 \
-c 4 -q 200000
This will create 8164 = 512 connections total, which is about 128 per memcached server thread. This ought to be enough outstanding requests to cause server-side queuing delay, and no possibility of client-side queuing delay adulterating the latency measurements.
Command-line Options
mutilate 0.1
Usage: mutilate -s server[:port] [options]
"High-performance" memcached benchmarking tool
-h, --help Print help and exit
--version Print version and exit
-v, --verbose Verbosity. Repeat for more verbose.
--quiet Disable log messages.
Basic options:
-s, --server=STRING Memcached server hostname[:port]. Repeat to
specify multiple servers.
--unix_socket Use UNIX socket instead of TCP.
--binary Use binary memcached protocol instead of ASCII.
--redis Use Redis RESP protocol instead of memchached.
--getset Use getset mode, in getset mode we first issue
a GET and if the response is MISS, then issue
a SET for on that
key following distribution value.
--getsetorset Use getset mode and allow for direct writes
(with optype == 2).
--successful Only record latency and throughput stats for
successful queries
--prefix=STRING Prefix all keys with a string (helps with
multi-tennant eval)
--delete90 Delete 90 percent of keys after halfway through
the workload, used to model Rumbel et. al.
USENIX FAST '14
workloads. MUST BE IN GETSET MODE and
have a set number of
queries
--assoc=INT We create hash tables by taking the truncating
the key by b bytes. The
n-b bytes are the key for redis, in the
original (key,value). The
value is a hash table and we acess field
b to get the value. Essentially this makes
redis n-way associative
cache. Only works in redis mode. For small
key sizes we just use
normal method of (key,value) store. No hash
table. (default=`4')
-q, --qps=INT Target aggregate QPS. 0 = peak QPS.
(default=`0')
-t, --time=INT Maximum time to run (seconds). (default=`5')
--read_file=STRING Read keys from file. (default=`')
--twitter_trace=INT use twitter memcached trace format from file.
(default=`0')
-K, --keysize=STRING Length of memcached keys (distribution).
(default=`30')
-V, --valuesize=STRING Length of memcached values (distribution).
(default=`200')
-r, --records=INT Number of memcached records to use. If
multiple memcached servers are given, this
number is divided by the number of servers.
(default=`10000')
-m, --misswindow=INT Window for recording misses, used to find
steady state, no window by default, which
gives us summary stats in total
(default=`0')
-N, --queries=INT Number of queries to make. 0 is unlimited
(default) If multiple memcached servers are
given, this number is divided by the number
of servers. (default=`0')
-u, --update=FLOAT Ratio of set:get commands. (default=`0.0')
Advanced options:
-U, --username=STRING Username to use for SASL authentication.
-P, --password=STRING Password to use for SASL authentication.
-T, --threads=INT Number of threads to spawn. (default=`1')
--affinity Set CPU affinity for threads, round-robin
-c, --connections=INT Connections to establish per server.
(default=`1')
-d, --depth=INT Maximum depth to pipeline requests.
(default=`1')
-R, --roundrobin Assign threads to servers in round-robin
fashion. By default, each thread connects to
every server.
-i, --iadist=STRING Inter-arrival distribution (distribution).
Note: The distribution will automatically be
adjusted to match the QPS given by --qps.
(default=`exponential')
-S, --skip Skip transmissions if previous requests are
late. This harms the long-term QPS average,
but reduces spikes in QPS after long latency
requests.
--moderate Enforce a minimum delay of ~1/lambda between
requests.
--noload Skip database loading.
--loadonly Load database and then exit.
-B, --blocking Use blocking epoll(). May increase latency.
--no_nodelay Don't use TCP_NODELAY.
-w, --warmup=INT Warmup time before starting measurement.
-W, --wait=INT Time to wait after startup to start
measurement.
--save=STRING Record latency samples to given file.
--search=N:X Search for the QPS where N-order statistic <
Xus. (i.e. --search 95:1000 means find the
QPS where 95% of requests are faster than
1000us).
--scan=min:max:step Scan latency across QPS rates from min to max.
Agent-mode options:
-A, --agentmode Run client in agent mode.
-a, --agent=host Enlist remote agent.
-p, --agent_port=STRING Agent port. (default=`5556')
-l, --lambda_mul=INT Lambda multiplier. Increases share of QPS for
this client. (default=`1')
-C, --measure_connections=INT Master client connections per server, overrides
--connections.
-Q, --measure_qps=INT Explicitly set master client QPS, spread across
threads and connections.
-D, --measure_depth=INT Set master client connection depth.
The --measure_* options aid in taking latency measurements of the
memcached server without incurring significant client-side queuing
delay. --measure_connections allows the master to override the
--connections option. --measure_depth allows the master to operate as
an "open-loop" client while other agents continue as a regular
closed-loop clients. --measure_qps lets you modulate the QPS the
master queries at independent of other clients. This theoretically
normalizes the baseline queuing delay you expect to see across a wide
range of --qps values.
Some options take a 'distribution' as an argument.
Distributions are specified by <distribution>[:<param1>[,...]].
Parameters are not required. The following distributions are supported:
[fixed:]<value> Always generates <value>.
uniform:<max> Uniform distribution between 0 and <max>.
normal:<mean>,<sd> Normal distribution.
exponential:<lambda> Exponential distribution.
pareto:<loc>,<scale>,<shape> Generalized Pareto distribution.
gev:<loc>,<scale>,<shape> Generalized Extreme Value distribution.
To recreate the Facebook "ETC" request stream from [1], the
following hard-coded distributions are also provided:
fb_value = a hard-coded discrete and GPareto PDF of value sizes
fb_key = "gev:30.7984,8.20449,0.078688", key-size distribution
fb_ia = "pareto:0.0,16.0292,0.154971", inter-arrival time dist.
[1] Berk Atikoglu et al., Workload Analysis of a Large-Scale Key-Value Store,
SIGMETRICS 2012