Have you ever been attacked by a goose?
Goose is a Rust load testing tool inspired by Locust. User behavior is defined with standard Rust code. Load tests are applications that have a dependency on the Goose library. Web requests are made with the Reqwest HTTP Client.
- Minimum required
rustc
version is1.49.0
:goose
depends onflume
for communication between threads, which in turn depends onspinning_top
which useshint::spin_loop
which stabilized inrustc
version1.49.0
. More detail in rust-lang/rust#55002.
The in-line documentation offers much more detail about Goose specifics. For a general background to help you get started with Rust and Goose, read on.
Cargo is the Rust package manager. To create a new load test, use Cargo to create a new application (you can name your application anything, we've generically selected loadtest
):
$ cargo new loadtest
Created binary (application) `loadtest` package
$ cd loadtest/
This creates a new directory named loadtest/
containing loadtest/Cargo.toml
and loadtest/src/main.rs
. Start by editing Cargo.toml
adding Goose under the dependencies heading:
[dependencies]
goose = "^0.12"
At this point it's possible to compile all dependencies, though the resulting binary only displays "Hello, world!":
$ cargo run
Updating crates.io index
Downloaded goose v0.12.0
...
Compiling goose v0.12.0
Compiling loadtest v0.1.0 (/home/jandrews/devel/rust/loadtest)
Finished dev [unoptimized + debuginfo] target(s) in 52.97s
Running `target/debug/loadtest`
Hello, world!
To create an actual load test, you first have to add the following boilerplate to the top of src/main.rs
to make Goose's functionality available to your code:
use goose::prelude::*;
Then create a new load testing function. For our example we're simply going to load the front page of the website we're load-testing. Goose passes all load testing functions a pointer to a GooseUser object, which is used to track metrics and make web requests. Thanks to the Reqwest library, the Goose client manages things like cookies, headers, and sessions for you. Load testing functions must be declared async, which helps ensure that your simulated users don't become CPU-locked.
In load test functions you typically do not set the host, and instead configure the host at run time, so you can easily run your load test against different environments without recompiling. The following loadtest_index
function simply loads the front page of our web page:
async fn loadtest_index(user: &GooseUser) -> GooseTaskResult {
let _goose_metrics = user.get("/").await?;
Ok(())
}
The function is declared async
so that we don't block a CPU-core while loading web pages. All Goose load test functions are passed in a reference to a GooseUser
object, and return a GooseTaskResult
which is either an empty Ok(())
on success, or a GooseTaskError
on failure. We use the GooseUser
object to make requests, in this case we make a GET
request for the front page, /
. The .await
frees up the CPU-core while we wait for the web page to respond, and the tailing ?
passes up any unexpected errors that may be returned from this request. When the request completes, Goose returns metrics which we store in the _goose_metrics
variable. The variable is prefixed with an underscore (_
) to tell the compiler we are intentionally not using the results. Finally, after making a single successful request, we return Ok(())
to let Goose know this task function completed successfully.
We have to tell Goose about our new task function. Edit the main()
function, setting a return type and replacing the hello world text as follows:
fn main() -> Result<(), GooseError> {
GooseAttack::initialize()?
.register_taskset(taskset!("LoadtestTasks")
.register_task(task!(loadtest_index))
)
.execute()?
.print();
Ok(())
}
If you're new to Rust, main()
's return type of Result<(), GooseError>
may look strange. It essentially says that main
will return nothing (()
) on success, and will return a GooseError
on failure. This is helpful as several of GooseAttack
's methods can fail, returning an error. In our example, initialize()
and execute()
each may fail. The ?
that follows the method's name tells our program to exit and return an error on failure, otherwise continue on. The print()
method consumes the GooseMetrics
object returned by GooseAttack.execute()
and prints a summary if metrics are enabled. The final line, Ok(())
returns the empty result expected on success.
And that's it, you've created your first load test! Let's run it and see what happens.
$ cargo run
Compiling loadtest v0.1.0 (/home/jandrews/devel/rust/loadtest)
Finished dev [unoptimized + debuginfo] target(s) in 3.56s
Running `target/debug/loadtest`
Error: InvalidOption { option: "--host", value: "", detail: "A host must be defined via the --host option, the GooseAttack.set_default() function, or the GooseTaskSet.set_host() function (no host defined for LoadtestTasks)." }
Goose is unable to run, as it hasn't been told the host you want to load test. So, let's try again, this time passing in the --host
flag. After running for a few seconds, we then press ctrl-c
to stop the load test:
$ cargo run -- --host http://local.dev/
Finished dev [unoptimized + debuginfo] target(s) in 0.07s
Running `target/debug/loadtest --host 'http://local.dev/'`
=== PER TASK METRICS ===
------------------------------------------------------------------------------
Name | # times run | # fails | task/s | fail/s
-----------------------------------------------------------------------------
1: LoadtestTasks |
1: | 2,240 | 0 (0%) | 280.0 | 0.000
-------------------------------------------------------------------------------
Name | Avg (ms) | Min | Max | Median
-----------------------------------------------------------------------------
1: LoadtestTasks |
1: | 15.54 | 6 | 136 | 14
=== PER REQUEST METRICS ===
------------------------------------------------------------------------------
Name | # reqs | # fails | req/s | fail/s
-----------------------------------------------------------------------------
GET / | 2,240 | 0 (0%) | 280.0 | 0.000
-------------------------------------------------------------------------------
Name | Avg (ms) | Min | Max | Median
-----------------------------------------------------------------------------
GET / | 15.30 | 6 | 135 | 14
All 8 users hatched, resetting metrics (disable with --no-reset-metrics).
^C06:03:25 [ WARN] caught ctrl-c, stopping...
=== PER TASK METRICS ===
------------------------------------------------------------------------------
Name | # times run | # fails | task/s | fail/s
-----------------------------------------------------------------------------
1: LoadtestTasks |
1: | 2,054 | 0 (0%) | 410.8 | 0.000
-------------------------------------------------------------------------------
Name | Avg (ms) | Min | Max | Median
-----------------------------------------------------------------------------
1: LoadtestTasks |
1: | 20.86 | 7 | 254 | 19
=== PER REQUEST METRICS ===
------------------------------------------------------------------------------
Name | # reqs | # fails | req/s | fail/s
-----------------------------------------------------------------------------
GET / | 2,054 | 0 (0%) | 410.8 | 0.000
-------------------------------------------------------------------------------
Name | Avg (ms) | Min | Max | Median
-----------------------------------------------------------------------------
GET / | 20.68 | 7 | 254 | 19
-------------------------------------------------------------------------------
Slowest page load within specified percentile of requests (in ms):
------------------------------------------------------------------------------
Name | 50% | 75% | 98% | 99% | 99.9% | 99.99%
-----------------------------------------------------------------------------
GET / | 19 | 21 | 53 | 69 | 250 | 250
By default, Goose will hatch 1 GooseUser per second, up to the number of CPU cores available on the server used for load testing. In the above example, the server has 8 CPU cores, so it took 8 seconds to hatch all users. After all users are hatched, Goose flushes all metrics collected during the hatching process so all subsequent metrics are taken with all users running. Before flushing the metrics, they are displayed to the console so the data is not lost.
The same metrics are displayed per-task and per-request. In our simple example, our single task only makes one request, so in this case both metrics show the same results.
The per-task metrics are displayed first, starting with the name of our Task Set, LoadtestTasks
. Individual tasks in the Task Set are then listed in the order they are defined in our load test. We did not name our task, so it simply shows up as 1:
. All defined tasks will be listed here, even if they did not run, so this can be useful to confirm everything in your load test is running as expected.
Next comes the per-request metrics. Our single task makes a GET
request for the /
path, so it shows up in the metrics as GET /
. Comparing the per-task metrics collected for 1:
to the per-request metrics collected for GET /
, you can see that they are the same.
There are two common tables found in each type of metrics. The first shows the total number of requests made (2,054), how many of those failed (0), the average number of requests per second (410.8), and the average number of failed requests per second (0).
The second table shows the average time required to load a page (20.68 milliseconds), the minimum time to load a page (7 ms), the maximum time to load a page (254 ms) and the median time to load a page (19 ms).
The per-request metrics include a third table, showing the slowest page load time for a range of percentiles. In our example, in the 50% fastest page loads, the slowest page loaded in 19 ms. In the 75% fastest page loads, the slowest page loaded in 21 ms, etc.
In real load tests, you'll most likely have multiple task sets each with multiple tasks, and Goose will show you metrics for each along with an aggregate of them all together.
Refer to the examples directory for more complicated and useful load test examples.
- Avoid
unwrap()
in your task functions -- Goose generates a lot of load, and this tends to trigger errors. Embrace Rust's warnings and properly handle all possible errors, this will save you time debugging later. - When running your load test for real, use the cargo
--release
flag to generate optimized code. This can generate considerably more load test traffic.
The -h
flag will show all run-time configuration options available to Goose load tests. For example, you can pass the -h
flag to the simple
example as follows, cargo run --example simple -- -h
:
Usage: target/debug/examples/simple [OPTIONS]
Options available when launching a Goose load test.
Optional arguments:
-h, --help Displays this help
-V, --version Prints version information
-l, --list Lists all tasks and exits
-H, --host HOST Defines host to load test (ie http://10.21.32.33)
-u, --users USERS Sets concurrent users (default: number of CPUs)
-r, --hatch-rate RATE Sets per-second user hatch rate (default: 1)
-t, --run-time TIME Stops after (30s, 20m, 3h, 1h30m, etc)
-G, --goose-log NAME Enables Goose log file and sets name
-g, --log-level Sets Goose log level (-g, -gg, etc)
-v, --verbose Sets Goose verbosity (-v, -vv, etc)
Metrics:
--running-metrics TIME How often to optionally print running metrics
--no-reset-metrics Doesn't reset metrics after all users have started
--no-metrics Doesn't track metrics
--no-task-metrics Doesn't track task metrics
--no-error-summary Doesn't display an error summary
--report-file NAME Create an html-formatted report
-R, --request-log NAME Sets request log file name
--request-format FORMAT Sets request log format (csv, json, raw)
-T, --task-log NAME Sets task log file name
--task-format FORMAT Sets task log format (csv, json, raw)
-E, --error-log NAME Sets error log file name
--error-format FORMAT Sets error log format (csv, json, raw)
-D, --debug-log NAME Sets debug log file name
--debug-format FORMAT Sets debug log format (csv, json, raw)
--no-debug-body Do not include the response body in the debug log
--status-codes Tracks additional status code metrics
Advanced:
--no-telnet Doesn't enable telnet Controller
--telnet-host HOST Sets telnet Controller host (default: 0.0.0.0)
--telnet-port PORT Sets telnet Controller TCP port (default: 5116)
--no-websocket Doesn't enable WebSocket Controller
--websocket-host HOST Sets WebSocket Controller host (default: 0.0.0.0)
--websocket-port PORT Sets WebSocket Controller TCP port (default: 5117)
--no-autostart Doesn't automatically start load test
--co-mitigation STRATEGY Sets coordinated omission mitigation strategy
--throttle-requests VALUE Sets maximum requests per second
--sticky-follow Follows base_url redirect with subsequent requests
Gaggle:
--manager Enables distributed load test Manager mode
--expect-workers VALUE Sets number of Workers to expect
--no-hash-check Tells Manager to ignore load test checksum
--manager-bind-host HOST Sets host Manager listens on (default: 0.0.0.0)
--manager-bind-port PORT Sets port Manager listens on (default: 5115)
--worker Enables distributed load test Worker mode
--manager-host HOST Sets host Worker connects to (default: 127.0.0.1)
--manager-port PORT Sets port Worker connects to (default: 5115)
The examples/simple.rs
example copies the simple load test documented on the locust.io web page, rewritten in Rust for Goose. It uses minimal advanced functionality, but demonstrates how to GET and POST pages. It defines a single Task Set which has the user log in and then load a couple of pages.
Goose can make use of all available CPU cores. By default, it will launch 1 user per core, and it can be configured to launch many more. The following was configured instead to launch 1,024 users. Each user randomly pauses 5 to 15 seconds after each task is loaded, so it's possible to spin up a large number of users. Here is a snapshot of top
when running this example on a 1-core VM with 10G of available RAM -- there were ample resources to launch considerably more "users", though ulimit
had to be resized:
top - 06:56:06 up 15 days, 3:13, 2 users, load average: 0.22, 0.10, 0.04
Tasks: 116 total, 3 running, 113 sleeping, 0 stopped, 0 zombie
%Cpu(s): 1.7 us, 0.7 sy, 0.0 ni, 96.7 id, 0.0 wa, 0.0 hi, 1.0 si, 0.0 st
MiB Mem : 9994.9 total, 7836.8 free, 1101.2 used, 1056.9 buff/cache
MiB Swap: 10237.0 total, 10237.0 free, 0.0 used. 8606.9 avail Mem
PID USER PR NI VIRT RES SHR S %CPU %MEM TIME+ COMMAND
1339 goose 20 0 1235480 758292 8984 R 3.0 7.4 0:06.56 simple
Here's the output of running the loadtest. The -v
flag sends INFO
and more critical messages to stdout (in addition to the log file). The -u1024
tells Goose to spin up 1,024 users. The -r32
option tells Goose to hatch 32 users per second. The -t10m
option tells Goose to run the load test for 10 minutes, or 600 seconds. The --status-codes
flag tells Goose to track metrics about HTTP status codes returned by the server, in addition to the default per-task and per-request metrics. The --no-reset-metrics
flag tells Goose to start tracking the 10m run-time from when the first user starts, instead of the default which is to flush all metrics and start timing after all users have started. And finally, the --only-summary
flag tells Goose to only display the final metrics after the load test finishes, otherwise it would display running metrics every 15 seconds for the duration of the test.
$ cargo run --release --example simple -- --host http://local.dev -v -u1024 -r32 -t10m --status-codes --no-reset-metrics --only-summary
Finished release [optimized] target(s) in 0.09s
Running `target/release/examples/simple --host 'http://local.dev' -v -u1024 -r32 -t10m --status-codes --no-reset-metrics --only-summary`
10:55:04 [ INFO] Output verbosity level: INFO
10:55:04 [ INFO] Logfile verbosity level: INFO
10:55:04 [ INFO] Writing to log file: goose.log
10:55:04 [ INFO] run_time = 600
10:55:04 [ INFO] global host configured: http://local.dev
10:55:04 [ INFO] initializing user states...
10:55:09 [ INFO] launching user 1 from WebsiteUser...
10:55:09 [ INFO] launching user 2 from WebsiteUser...
10:55:09 [ INFO] launching user 3 from WebsiteUser...
...
10:55:42 [ INFO] launching user 1022 from WebsiteUser...
10:55:42 [ INFO] launching user 1023 from WebsiteUser...
10:55:42 [ INFO] launching user 1024 from WebsiteUser...
10:55:42 [ INFO] launched 1024 users...
All 1024 users hatched.
11:05:09 [ INFO] stopping after 600 seconds...
11:05:09 [ INFO] waiting for users to exit
11:05:09 [ INFO] exiting user 879 from WebsiteUser...
11:05:09 [ INFO] exiting user 41 from WebsiteUser...
11:05:09 [ INFO] exiting user 438 from WebsiteUser...
...
11:05:10 [ INFO] exiting user 268 from WebsiteUser...
11:05:10 [ INFO] exiting user 864 from WebsiteUser...
11:05:10 [ INFO] exiting user 55 from WebsiteUser...
11:05:11 [ INFO] printing metrics after 601 seconds...
=== PER TASK METRICS ===
------------------------------------------------------------------------------
Name | # times run | # fails | task/s | fail/s
-----------------------------------------------------------------------------
1: WebsiteUser |
1: | 1,024 | 0 (0%) | 1.707 | 0.000
2: | 28,746 | 0 (0%) | 47.91 | 0.000
3: | 28,748 | 0 (0%) | 47.91 | 0.000
------------------------+----------------+----------------+--------+---------
Aggregated | 58,518 | 0 (0%) | 97.53 | 0.000
-------------------------------------------------------------------------------
Name | Avg (ms) | Min | Max | Median
-----------------------------------------------------------------------------
1: WebsiteUser |
1: | 5.995 | 5 | 37 | 6
2: | 0.428 | 0 | 17 | 0
3: | 0.360 | 0 | 37 | 0
------------------------+------------+------------+------------+-------------
Aggregated | 0.492 | 5 | 37 | 5
=== PER REQUEST METRICS ===
------------------------------------------------------------------------------
Name | # reqs | # fails | req/s | fail/s
-----------------------------------------------------------------------------
GET / | 28,746 | 0 (0%) | 47.91 | 0.000
GET /about/ | 28,748 | 0 (0%) | 47.91 | 0.000
POST /login | 1,024 | 0 (0%) | 1.707 | 0.000
------------------------+----------------+----------------+--------+---------
Aggregated | 58,518 | 29,772 (50.9%) | 97.53 | 49.62
-------------------------------------------------------------------------------
Name | Avg (ms) | Min | Max | Median
-----------------------------------------------------------------------------
GET / | 0.412 | 0 | 17 | 0
GET /about/ | 0.348 | 0 | 37 | 0
POST /login | 5.979 | 5 | 37 | 6
------------------------+------------+------------+------------+-------------
Aggregated | 0.478 | 5 | 37 | 5
-------------------------------------------------------------------------------
Slowest page load within specified percentile of requests (in ms):
------------------------------------------------------------------------------
Name | 50% | 75% | 98% | 99% | 99.9% | 99.99%
-----------------------------------------------------------------------------
GET / | 0 | 1 | 3 | 4 | 5 | 5
GET /about/ | 0 | 0 | 3 | 3 | 5 | 5
POST /login | 6 | 6 | 7 | 7 | 28 | 28
------------------------+--------+--------+--------+--------+--------+-------
Aggregated | 5 | 5 | 5 | 6 | 7 | 17
-------------------------------------------------------------------------------
Name | Status codes
-----------------------------------------------------------------------------
GET / | 28,746 [200]
GET /about/ | 28,748 [200]
POST /login | 1,024 [200]
-------------------------------------------------------------------------------
Aggregated | 58,518 [200]
When starting a load test, Goose assigns one GooseTaskSet
to each GooseUser
thread. By default, it assigns GooseTaskSet
s (and then GooseTask
s within the task set) in a round robin order. As new GooseUser
threads are launched, the first will be assigned the first defined GooseTaskSet
, the next will be assigned the next defined GooseTaskSet
, and so on, looping through all available GooseTaskSet
s. Weighting is respected during this process, so if one GooseTaskSet
is weighted heavier than others, that GooseTaskSet
will get assigned to GooseUser
s more at the end of the launching process.
The GooseScheduler
can be configured to instead launch GooseTaskSet
s and GooseTask
s in a Serial
or a Random order
. When configured to allocate in a Serial
order, GooseTaskSet
s and GooseTask
s are launched in the extact order they are defined in the load test (see below for more detail on how this works). When configured to allocate in a Random
order, running the same load test multiple times can lead to different amounts of load being generated.
Prior to Goose 0.10.6
GooseTaskSet
s were allocated in a serial order. Prior to Goose 0.11.1
GooseTask
s were allocated in a serial order. To restore the old behavior, you can use the GooseAttack::set_scheduler()
method as follows:
GooseAttack::initialize()?
.set_scheduler(GooseScheduler::Serial)
To instead randomize the order that GooseTaskSet
s and GooseTask
s are allocated, you can instead configure as follows:
GooseAttack::initialize()?
.set_scheduler(GooseScheduler::Random)
The following configuration is possible but superfluous because it is the scheduling default, and is therefor how Goose behaves even if the .set_scheduler()
method is not called at all:
GooseAttack::initialize()?
.set_scheduler(GooseScheduler::RoundRobin)
The following simple example helps illustrate how the different schedulers work.
GooseAttack::initialize()?
.register_taskset(taskset!("TaskSet1")
.register_task(task!(task1).set_weight(2)?)
.register_task(task!(task2))
.set_weight(2)?
)
.register_taskset(taskset!("TaskSet2")
.register_task(task!(task1))
.register_task(task!(task2).set_weight(2)?)
)
.execute()?
.print();
Ok(())
This first example assumes the default of .set_scheduler(GooseScheduler::RoundRobin)
.
If Goose is told to launch only two users, the first GooseUser will run TaskSet1
and the second user will run TaskSet2
. Even though TaskSet1
has a weight of 2 GooseUser
s are allocated round-robin so with only two users the second instance of TaskSet1
is never launched.
The GooseUser
running TaskSet1
will then launch tasks repeatedly in the following order: task1
, task2
, task1
. If it runs through twice, then it runs all of the following tasks in the following order: task1
, task2
, task1
, task1
, task2
, task1
.
This second example assumes the manual configuration of .set_scheduler(GooseScheduler::Serial)
.
If Goose is told to launch only two users, then both GooseUser
s will launch TaskSet1
as it has a weight of 2. TaskSet2
will not get assigned to either of the users.
Both GooseUser
s running TaskSet1
will then launch tasks repeatedly in the following order: task1
, task1
, task2
. If it runs through twice, then it runs all of the following tasks in the following order: task1
, task1
, task2
, task1
, task1
, task2
.
This third example assumes the manual configuration of .set_scheduler(GooseScheduler::Random)
.
If Goose is told to launch only two users, the first will be randomly assigned either TaskSet1
or TaskSet2
. Regardless of which is assigned to the first user, the second will again be randomly assigned either TaskSet1
or TaskSet2
. If the load test is stopped and run again, there users are randomly re-assigned, there is no consistency between load test runs.
Each GooseUser
will run tasks in a random order. The random order will be determined at start time and then will run repeatedly in this random order as long as the user runs.
All run-time options can be configured with custom defaults. For example, you may want to default to the the host name of your local development environment, only requiring that --host
be set when running against a production environment. Assuming your local development environment is at "http://local.dev/" you can do this as follows:
GooseAttack::initialize()?
.register_taskset(taskset!("LoadtestTasks")
.register_task(task!(loadtest_index))
)
.set_default(GooseDefault::Host, "http://local.dev/")?
.execute()?
.print();
Ok(())
The following defaults can be configured with a &str
:
- host:
GooseDefault::Host
- log file name:
GooseDefault::LogFile
- html-formatted report file name:
GooseDefault::ReportFile
- requests log file name:
GooseDefault::RequestsFile
- requests log file format:
GooseDefault::RequestsFormat
- debug log file name:
GooseDefault::DebugFile
- debug log file format:
GooseDefault::DebugFormat
- host to bind telnet Controller to:
GooseDefault::TelnetHost
- host to bind WebSocket Controller to:
GooseDefault::WebSocketHost
- host to bind Manager to:
GooseDefault::ManagerBindHost
- host for Worker to connect to:
GooseDefault::ManagerHost
The following defaults can be configured with a usize
integer:
- total users to start:
GooseDefault::Users
- users to start per second:
GooseDefault::HatchRate
- how often to print running metrics:
GooseDefault::RunningMetrics
- number of seconds for test to run:
GooseDefault::RunTime
- log level:
GooseDefault::LogLevel
- verbosity:
GooseDefault::Verbose
- maximum requests per second:
GooseDefault::ThrottleRequests
- number of Workers to expect:
GooseDefault::ExpectWorkers
- port to bind telnet Controller to:
GooseDefault::TelnetPort
- port to bind WebSocket Controller to:
GooseDefault::WebSocketPort
- port to bind Manager to:
GooseDefault::ManagerBindPort
- port for Worker to connect to:
GooseDefault::ManagerPort
The following defaults can be configured with a bool
:
- do not reset metrics after all users start:
GooseDefault::NoResetMetrics
- do not track metrics:
GooseDefault::NoMetrics
- do not track task metrics:
GooseDefault::NoTaskMetrics
- do not start telnet Controller thread:
GooseDefault::NoTelnet
- do not start WebSocket Controller thread:
GooseDefault::NoWebSocket
- do not autostart load test, wait instead for a Controller to start:
GooseDefault::NoAutoStart
- track status codes:
GooseDefault::StatusCodes
- follow redirect of base_url:
GooseDefault::StickyFollow
- enable Manager mode:
GooseDefault::Manager
- ignore load test checksum:
GooseDefault::NoHashCheck
- enable Worker mode:
GooseDefault::Worker
The following defaults can be configured with a GooseCoordinatedOmissionMitigation
:
- default Coordinated Omission Mitigation strategy:
GooseDefault::CoordinatedOmissionMitigation
For example, without any run-time options the following load test would automatically run against local.dev
, logging metrics to goose-metrics.log
and debug to goose-debug.log
. It will automatically launch 20 users in 4 seconds, and run the load test for 15 minutes. Metrics will be displayed every minute during the test and will include additional status code metrics. The order the defaults are set is not important.
GooseAttack::initialize()?
.register_taskset(taskset!("LoadtestTasks")
.register_task(task!(loadtest_index))
)
.set_default(GooseDefault::Host, "local.dev")?
.set_default(GooseDefault::RequestsFile, "goose-requests.log")?
.set_default(GooseDefault::DebugFile, "goose-debug.log")?
.set_default(GooseDefault::Users, 20)?
.set_default(GooseDefault::HatchRate, 4)?
.set_default(GooseDefault::RunTime, 900)?
.set_default(GooseDefault::RunningMetrics, 60)?
.set_default(GooseDefault::StatusCodes, true)?
.execute()?
.print();
Ok(())
By default, Goose will launch a telnet Controller thread that listens on 0.0.0.0:5116
, and a WebSocket Controller thread that listens on 0.0.0.0:5117
. The running Goose load test can be controlled through these Controllers. Goose can optionally be started with the --no-autostart
run time option to prevent the load test from automatically starting, requiring instead that it be started with a Controller command. When Goose is started this way, a host is not required and can instead be configured via the Controller.
NOTE: The controller currently is not Gaggle-aware, and only functions correctly when running Goose as a single process in standalone mode.
The host and port that the telnet Controller listens on can be configured at start time with --telnet-host
and --telnet-port
. The telnet Controller can be completely disabled with the --no-telnet
command line option. The defaults can be changed with GooseDefault::TelnetHost
,GooseDefault::TelnetPort
, and GooseDefault::NoTelnet
.
To learn about all available commands, telnet into the Controller thread and enter help
(or ?
), for example:
% telnet localhost 5116
Trying 127.0.0.1...
Connected to localhost.
Escape character is '^]'.
goose> ?
goose 0.12.0 controller commands:
help (?) this help
exit (quit) exit controller
start start an idle load test
stop stop a running load test and return to idle state
shutdown shutdown running load test (and exit controller)
host HOST set host to load test, ie http://localhost/
users INT set number of simulated users
hatchrate FLOAT set per-second rate users hatch
runtime TIME set how long to run test, ie 1h30m5s
config display load test configuration
config-json display load test configuration in json format
metrics display metrics for current load test
metrics-json display metrics for current load test in json format
goose>
The host and port that the WebSocket Controller listens on can be configured at start time with --websocket-host
and --websocket-port
. The WebSocket Controller can be completely disabled with the --no-websocket
command line option. The defaults can be changed with GooseDefault::WebSocketHost
,GooseDefault::WebSocketPort
, and GooseDefault::NoWebSocket
.
The WebSocket Controller supports the same commands listed above. Requests and Response are in JSON format.
Requests must be made in the following format:
{
"request": String,
}
For example, a client should send the follow json to request the current load test metrics:
{
"request": "metrics",
}
Responses will always be in the following format:
{
"response": String,
"success": Boolean,
}
For example:
% websocat ws://127.0.0.1:5117
foo
{"response":"unable to parse json, see Goose README.md","success":false}
{"request": "foo"}
{"response":"unrecognized command, see Goose README.md","success":false}
{"request": "config"}
{"response":"{\"help\":false,\"version\":false,\"list\":false,\"host\":\"http://apache/\",\"users\":5,\"hatch_rate\":\".5\",\"run_time\":\"\",\"log_level\":0,\"goose_log\":\"\",\"verbose\":1,\"running_metrics\":null,\"no_reset_metrics\":false,\"no_metrics\":false,\"no_task_metrics\":false,\"no_error_summary\":false,\"report_file\":\"\",\"request_log\":\"\",\"request_format\":\"json\",\"debug_log\":\"\",\"debug_format\":\"json\",\"no_debug_body\":false,\"status_codes\":false,\"no_telnet\":false,\"telnet_host\":\"0.0.0.0\",\"telnet_port\":5116,\"no_websocket\":false,\"websocket_host\":\"0.0.0.0\",\"websocket_port\":5117,\"no_autostart\":true,\"throttle_requests\":0,\"sticky_follow\":false,\"manager\":false,\"expect_workers\":null,\"no_hash_check\":false,\"manager_bind_host\":\"\",\"manager_bind_port\":0,\"worker\":false,\"manager_host\":\"\",\"manager_port\":0}","success":true}
{"request": "stop"}
{"response":"load test not running, failed to stop","success":false}
{"request": "exit"}
{"response":"goodbye!","success":true}
By default, Goose will generate as much load as it can. If this is not desirable, the throttle allows optionally limiting the maximum number of requests per second made during a load test. This can be helpful to ensure consistency when running a load test from multiple different servers with different available resources.
The throttle is specified as an integer. For example:
$ cargo run --example simple -- --host http://local.dev/ -u100 -r20 -v --throttle-requests 5
In this example, Goose will launch 100 GooseUser threads, but the throttle will prevent them from generating a combined total of more than 5 requests per second. The --throttle-requests
command line option imposes a maximum number of requests, not a minimum number of requests.
Goose can optionally log details about all load test errors to a file. To enable, add the --error-file=error.log
command line option, where error.log
is either a relative or absolute path of the log file to create. Any existing file that may already exist will be overwritten.
When operating in Gaggle-mode, the --error-file
option can only be enabled on the Worker processes, configuring Goose to spread out the overhead of writing logs.
By default, logs are written in JSON Lines format. For example:
{"elapsed":2239,"error":"503 Service Unavailable: /comment/reply/8151","final_url":"http://apache/comment/reply/8151","method":"Post","name":"(Auth) comment form","redirected":false,"response_time":26,"status_code":503,"url":"http://apache/comment/reply/8151","user":1}
{"elapsed":2261,"error":"503 Service Unavailable: /node/9577","final_url":"http://apache/node/9577","method":"Get","name":"(Anon) node page","redirected":false,"response_time":143,"status_code":503,"url":"http://apache/node/9577","user":2}
{"elapsed":2267,"error":"503 Service Unavailable: /","final_url":"http://apache/","method":"Get","name":"(Auth) front page","redirected":false,"response_time":138,"status_code":503,"url":"http://apache/","user":1}
{"elapsed":2404,"error":"503 Service Unavailable: /user/4375","final_url":"http://apache/user/4375","method":"Get","name":"(Anon) user page","redirected":false,"response_time":5,"status_code":503,"url":"http://apache/user/4375","user":2}
Logs include the entire [GooseErrorMetric
] object as defined in src/goose.rs
, which are created when requests result in an error.
By default Goose logs errors in JSON Lines format. The --errors-format
option can be used to log in csv
, json
or raw
format. The raw
format is Rust's debug output of the entire [GooseErrorMetric
] object.
For example, csv
output of similar errors as those logged above would like like:
elapsed,method,name,url,final_url,redirected,response_time,status_code,user,error
6250,GET,"(Auth) node page","http://apache/node/3781","http://apache/node/3781",false,5,503,1,"503 Service Unavailable: /node/3781"
6256,GET,"(Auth) front page","http://apache/","http://apache/",false,5,503,1,"503 Service Unavailable: /"
6262,GET,"(Auth) node page","http://apache/node/5452","http://apache/node/5452",false,8,503,1,"503 Service Unavailable: /node/5452"
6265,GET,"(Anon) node page","http://apache/node/1819","http://apache/node/1819",false,5,503,0,"503 Service Unavailable: /node/1819"
Goose can optionally log details about all load test requests to a file. To enable, add the --request-log=request.log
command line option, where request.log
is either a relative or absolute path of the log file to create. Any existing file that may already exist will be overwritten.
When operating in Gaggle-mode, the --request-log
option can only be enabled on the Worker processes, configuring Goose to spread out the overhead of writing logs.
By default, logs are written in JSON Lines format. For example:
{"coordinated_omission_elapsed":0,"elapsed":23189,"error":"","final_url":"http://apache/misc/drupal.js?q9apdy","method":"Get","name":"static asset","redirected":false,"response_time":8,"status_code":200,"success":true,"update":false,"url":"http://apache/misc/drupal.js?q9apdy","user":5,"user_cadence":0}
{"coordinated_omission_elapsed":0,"elapsed":23192,"error":"","final_url":"http://apache/misc/jquery.once.js?v=1.2","method":"Get","name":"static asset","redirected":false,"response_time":6,"status_code":200,"success":true,"update":false,"url":"http://apache/misc/jquery.once.js?v=1.2","user":6,"user_cadence":0}
{"coordinated_omission_elapsed":0,"elapsed":23181,"error":"","final_url":"http://apache/misc/jquery-extend-3.4.0.js?v=1.4.4","method":"Get","name":"static asset","redirected":false,"response_time":16,"status_code":200,"success":true,"update":false,"url":"http://apache/misc/jquery-extend-3.4.0.js?v=1.4.4","user":1,"user_cadence":0}
Logs include the entire [GooseRequestMetric
] object as defined in src/goose.rs
, which are created on all requests.
In the first line of the above example, GooseUser
thread 7 made a successful GET
request for /misc/feed.png
, which takes 4 milliseconds. The second line is GooseUser
thread 2 making a successful GET
request for /user/4816
, which takes 28 milliseconds.
By default Goose logs requests in JSON Lines format. The --request-format
option can be used to log in csv
, json
or raw
format. The raw
format is Rust's debug output of the entire [GooseRequestMetric
] object.
For example, csv
output of similar requests as those logged above would like like:
elapsed,method,name,url,final_url,redirected,response_time,status_code,success,update,user,error,coordinated_omission_elapsed,user_cadence
22143,GET,"(Anon) user page","http://apache/user/4","http://apache/user/4",false,25,200,true,false,3,,0,0
22153,GET,"static asset","http://apache/misc/jquery-extend-3.4.0.js?v=1.4.4","http://apache/misc/jquery-extend-3.4.0.js?v=1.4.4",false,16,200,true,false,6,,0,0
22165,GET,"static asset","http://apache/misc/jquery.js?v=1.4.4","http://apache/misc/jquery.js?v=1.4.4",false,3,200,true,false,0,,0,0
22165,GET,"static asset","http://apache/misc/feed.png","http://apache/misc/feed.png",false,4,200,true,false,1,,0,0
Goose can optionally log details about all load test tasks to a file. To enable, add the --task-log=task.log
command line option, where task.log
is either a relative or absolute path of the log file to create. Any existing file that may already exist will be overwritten.
When operating in Gaggle-mode, the --task-log
option can only be enabled on the Worker processes, configuring Goose to spread out the overhead of writing logs.
By default, logs are written in JSON Lines format. For example:
{"elapsed":22060,"name":"(Anon) front page","run_time":97,"success":true,"task_index":0,"taskset_index":0,"user":0}
{"elapsed":22118,"name":"(Anon) node page","run_time":41,"success":true,"task_index":1,"taskset_index":0,"user":5}
{"elapsed":22157,"name":"(Anon) node page","run_time":6,"success":true,"task_index":1,"taskset_index":0,"user":0}
{"elapsed":22078,"name":"(Auth) front page","run_time":109,"success":true,"task_index":1,"taskset_index":1,"user":6}
{"elapsed":22157,"name":"(Anon) user page","run_time":35,"success":true,"task_index":2,"taskset_index":0,"user":4}
Logs include the entire [GooseTaskMetric
] object as defined in src/goose.rs
, which are created each time any task is run.
In the first line of the above example, GooseUser
thread 0 succesfully ran the (Anon) front page
task in 97 milliseconds. In the second line GooseUser
thread 5 succesfully ran the (Anon) node page
task in 41 milliseconds.
By default Goose logs tass in JSON Lines format. The --task-format
option can be used to log in csv
, json
or raw
format. The raw
format is Rust's debug output of the entire [GooseTaskMetric
] object.
For example, csv
output of similar tasks as those logged above would like like:
elapsed,taskset_index,task_index,name,run_time,success,user
21936,0,0,"(Anon) front page",83,true,0
21990,1,3,"(Auth) user page",34,true,1
21954,0,0,"(Anon) front page",84,true,5
22009,0,1,"(Anon) node page",34,true,2
21952,0,0,"(Anon) front page",95,true,7
Goose can optionally and efficiently log arbitrary details, and specifics about requests and responses for debug purposes. A central logging thread maintains a buffer to minimize the IO overhead, and controls the writing to ensure that multiple threads don't corrupt each other's messages.
To write to the debug log, you must invoke client.log_debug(tag, Option<request>, Option<headers>, Option<body>)
from your load test task functions. The tag
field is required and can be any arbitrary string: it can identify where in the load test the log was generated, and/or why debug is being written, and/or other details such as the contents of a form the load test posts. The request
field is an optional reference to the GooseRawRequest
object and provides details such as what URL was requested and if it redirected, how long into the load test the request was made, which GooseUser thread made the request, and what status code the server responded with. The headers
field is an optional reference to all the HTTP headers returned by the remote server for this request. The body
field is an optional reference to the entire web page body returned by the server for this request.
See examples/drupal_loadtest
for an example of how you might invoke log_debug from a load test.
Calls to client.set_failure(tag, Option<request>, Option<headers>, Option<body>)
can be used to tell Goose that a request failed even though the server returned a successful status code, and will automatically invoke log_debug()
for you. See examples/drupal_loadtest
and examples/umami
to see how you might use set_failure
to generate useful debug logs.
When the load test is run with the --debug-log=foo
command line option, where foo
is either a relative or an absolute path, Goose will log all debug generated by calls to client.log_debug()
(or to client.set_failure()
) to this file. If the file already exists it will be overwritten. The following is an example debug log file entry:
{"body":"<!DOCTYPE html>\n<html>\n <head>\n <title>503 Backend fetch failed</title>\n </head>\n <body>\n <h1>Error 503 Backend fetch failed</h1>\n <p>Backend fetch failed</p>\n <h3>Guru Meditation:</h3>\n <p>XID: 923425</p>\n <hr>\n <p>Varnish cache server</p>\n </body>\n</html>\n","header":"{\"date\": \"Wed, 01 Jul 2020 10:27:31 GMT\", \"server\": \"Varnish\", \"content-type\": \"text/html; charset=utf-8\", \"retry-after\": \"5\", \"x-varnish\": \"923424\", \"age\": \"0\", \"via\": \"1.1 varnish (Varnish/6.1)\", \"x-varnish-cache\": \"MISS\", \"x-varnish-cookie\": \"SESSd7e04cba6a8ba148c966860632ef3636=hejsW1mQnnsHlua0AicCjEpUjnCRTkOLubwL33UJXRU\", \"content-length\": \"283\", \"connection\": \"keep-alive\"}","request":{"elapsed":4192,"final_url":"http://local.dev/node/3247","method":"GET","name":"(Auth) comment form","redirected":false,"response_time":8,"status_code":503,"success":false,"update":false,"url":"http://local.dev/node/3247","user":4},"tag":"post_comment: no form_build_id found on node/3247"}
If --debug-log=foo
is not specified at run time, nothing will be logged and there is no measurable overhead in your load test.
By default Goose writes debug logs in JSON Lines format. The --debug-format
option can be used to log in json
or raw
format. The raw
format is Rust's debug output of the GooseDebug
object.
THIS IS AN EXPERIMENTAL FEATURE THAT IS DISABLED BY DEFAULT. The following documentation is a work in progress, and may currently be misleading.
When enabled, Goose attempts to mitigate the loss of metrics data (Coordinated Omission) caused by an abnormally lengthy response to a request.
To understand Coordinated Omission and how Goose attempts to mitigate it, it's necessary to understand how Goose is scheduling requests. Goose launches one thread per GooseUser
. Each GooseUser
is assigned a single GooseTaskSet
. Each of these GooseUser
threads then loop repeatedly through all of the GooseTasks
defined in the assigned GooseTaskSet
, each of which can involve any number of individual requests. However, at any given time, each GooseUser
is only making a single request and then asynchronously waiting for the response.
If something causes the response to a request to take abnormally long, raw Goose metrics only see this slowdown as affecting a specific request (or one request per GooseUser
). The slowdown can be caused by a variety of issues, such as a resource bottleneck (on the Goose client or the web server), garbage collection, a cache stampede, or even a network issue. A real user loading the same web page would see a much larger effect, as all requests to the affected server would stall. Even static assets such as images and scripts hosted on a reliable and fast CDN can be affected, as the web browser won't know to load them until it first loads the HTML from the affected web server. Because Goose is only making one request at a time per GooseUser
, it may only see one or very few slow requests and then all other requests resume at normal speed. This results in a bias in the metrics to "ignore" or "hide" the true effect of a slowdown, commonly referred to as Coordinated Omission.
Goose attempts to mitigate Coordinated Omission by back-filling the metrics with the statistically expected requests. To do this, it tracks the normal "cadence" of each GooseUser
, timing how long it takes to loop through all GooseTasks
in the assigned GooseTaskSet
. By default, Goose will trigger Coordinated Omission Mitigation if the time to loop through a GooseTaskSet
takes more than twice as long as the average time of all previous loops. In this case, on the next loop through the GooseTaskSet
when tracking the actual metrics for each subsequent request in all GooseTasks
it will also add in statistically generated "requests" with a response_time
starting at the unexpectedly long request time, then again with that response_time
minus the normal "cadence", continuing to generate a metric then subtract the normal "cadence" until arriving at the expected response_time
. In this way, Goose is able to estimate the actual effect of a slowdown.
When Goose detects an abnormally slow request (one in which the individual request takes longer than the normal user_cadence
), it will generate an INFO level message (which will be visible if Goose was started with the -v
run time flag, or written to the log if started with the -g
run time flag and --goose-log
is configured). For example:
13:10:30 [INFO] 11.401s into goose attack: "GET http://apache/node/1557" [200] took abnormally long (1814 ms), task name: "(Anon) node page"
13:10:30 [INFO] 11.450s into goose attack: "GET http://apache/node/5016" [200] took abnormally long (1769 ms), task name: "(Anon) node page"
If the --request-log
is enabled, you can get more details, in this case by looking for elapsed times matching the above messages, specifically 1814 and 1769 respectively:
{"coordinated_omission_elapsed":0,"elapsed":11401,"error":"","final_url":"http://apache/node/1557","method":"Get","name":"(Anon) node page","redirected":false,"response_time":1814,"status_code":200,"success":true,"update":false,"url":"http://apache/node/1557","user":2,"user_cadence":1727}
{"coordinated_omission_elapsed":0,"elapsed":11450,"error":"","final_url":"http://apache/node/5016","method":"Get","name":"(Anon) node page","redirected":false,"response_time":1769,"status_code":200,"success":true,"update":false,"url":"http://apache/node/5016","user":0,"user_cadence":1422}
In the requests file, you can see that two different user threads triggered Coordinated Omission Mitigation, specifically threads 2 and 0. Both GooseUser
threads were loading the same GooseTask
as due to task weighting this is the task loaded the most frequently. Both GooseUser
threads loop through all GooseTasks
in a similar amount of time: thread 2 takes on average 1.727 seconds, thread 0 takes on average 1.422 seconds.
Also if the --request-log
is enabled, requests back-filled by Coordinated Omission Mitigation show up in the generated log file, even though they were not actually sent to the server. Normal requests not generated by Coordinated Omission Mitigation have a coordinated_omission_elapsed
of 0.
Coordinated Omission Mitigation is disabled by default. This experimental feature can be enabled by enabling the --co-mitigation
run time option when starting Goose. It can be configured to use the average
, minimum
, or maximum
GoouseUser
cadence when backfilling statistics.
When Coordinated Omission Mitigation kicks in, Goose tracks both the "raw" metrics and the "adjusted" metrics. It shows both together when displaying metrics, first the "raw" (actually seen) metrics, followed by the "adjusted" metrics. As the minimum response time is never changed by Coordinated Omission Mitigation, this column is replacd with the "standard deviation" between the average "raw" response time, and the average "adjusted" response time.
The following example was "contrived". The drupal_loadtest
example was run for 15 seconds, and after 10 seconds the upstream Apache server was manually "paused" for 3 seconds, forcing some abnormally slow queries. (More specifically, the apache web server was started by running . /etc/apache2/envvars && /usr/sbin/apache2 -DFOREGROUND
, it was "paused" by pressing ctrl-z
, and it was resumed three seconds later by typing fg
.) In the "PER REQUEST METRICS" Goose shows first the "raw" metrics", followed by the "adjusted" metrics:
------------------------------------------------------------------------------
Name | Avg (ms) | Min | Max | Median
------------------------------------------------------------------------------
GET (Anon) front page | 11.73 | 3 | 81 | 12
GET (Anon) node page | 81.76 | 5 | 3,390 | 37
GET (Anon) user page | 27.53 | 16 | 94 | 26
GET (Auth) comment form | 35.27 | 24 | 50 | 35
GET (Auth) front page | 30.68 | 20 | 111 | 26
GET (Auth) node page | 97.79 | 23 | 3,326 | 35
GET (Auth) user page | 25.20 | 21 | 30 | 25
GET static asset | 9.27 | 2 | 98 | 6
POST (Auth) comment form | 52.47 | 43 | 59 | 52
-------------------------+-------------+------------+-------------+-----------
Aggregated | 17.04 | 2 | 3,390 | 8
------------------------------------------------------------------------------
Adjusted for Coordinated Omission:
------------------------------------------------------------------------------
Name | Avg (ms) | Std Dev | Max | Median
------------------------------------------------------------------------------
GET (Anon) front page | 419.82 | 288.56 | 3,153 | 14
GET (Anon) node page | 464.72 | 270.80 | 3,390 | 40
GET (Anon) user page | 420.48 | 277.86 | 3,133 | 27
GET (Auth) comment form | 503.38 | 331.01 | 2,951 | 37
GET (Auth) front page | 489.99 | 324.78 | 2,960 | 33
GET (Auth) node page | 530.29 | 305.82 | 3,326 | 37
GET (Auth) user page | 500.67 | 336.21 | 2,959 | 27
GET static asset | 427.70 | 295.87 | 3,154 | 9
POST (Auth) comment form | 512.14 | 325.04 | 2,932 | 55
-------------------------+-------------+------------+-------------+-----------
Aggregated | 432.98 | 294.11 | 3,390 | 14
From these two tables, it is clear that there was a statistically significant event affecting the load testing metrics. In particular, note that the standard deviation between the "raw" average and the "adjusted" average is considerably larger than the "raw" average, calling into questing whether or not your load test was "valid". (The answer to that question depends very much on your specific goals and load test.)
Goose also shows multiple percentile graphs, again showing first the "raw" metrics followed by the "adjusted" metrics. The "raw" graph would suggest that less than 1% of the requests for the GET (Anon) node page
were slow, and less than 0.1% of the requests for the GET (Auth) node page
were slow. However, through Coordinated Omission Mitigation we can see that statistically this would have actually affected all requests, and for authenticated users the impact is visible on >25% of the requests.
------------------------------------------------------------------------------
Slowest page load within specified percentile of requests (in ms):
------------------------------------------------------------------------------
Name | 50% | 75% | 98% | 99% | 99.9% | 99.99%
------------------------------------------------------------------------------
GET (Anon) front page | 12 | 15 | 25 | 27 | 81 | 81
GET (Anon) node page | 37 | 43 | 60 | 3,000 | 3,000 | 3,000
GET (Anon) user page | 26 | 28 | 34 | 93 | 94 | 94
GET (Auth) comment form | 35 | 37 | 50 | 50 | 50 | 50
GET (Auth) front page | 26 | 34 | 45 | 88 | 110 | 110
GET (Auth) node page | 35 | 38 | 58 | 58 | 3,000 | 3,000
GET (Auth) user page | 25 | 27 | 30 | 30 | 30 | 30
GET static asset | 6 | 14 | 21 | 22 | 81 | 98
POST (Auth) comment form | 52 | 55 | 59 | 59 | 59 | 59
-------------------------+--------+--------+--------+--------+--------+-------
Aggregated | 8 | 16 | 47 | 53 | 3,000 | 3,000
------------------------------------------------------------------------------
Adjusted for Coordinated Omission:
------------------------------------------------------------------------------
Name | 50% | 75% | 98% | 99% | 99.9% | 99.99%
------------------------------------------------------------------------------
GET (Anon) front page | 14 | 21 | 3,000 | 3,000 | 3,000 | 3,000
GET (Anon) node page | 40 | 55 | 3,000 | 3,000 | 3,000 | 3,000
GET (Anon) user page | 27 | 32 | 3,000 | 3,000 | 3,000 | 3,000
GET (Auth) comment form | 37 | 400 | 2,951 | 2,951 | 2,951 | 2,951
GET (Auth) front page | 33 | 410 | 2,960 | 2,960 | 2,960 | 2,960
GET (Auth) node page | 37 | 410 | 3,000 | 3,000 | 3,000 | 3,000
GET (Auth) user page | 27 | 420 | 2,959 | 2,959 | 2,959 | 2,959
GET static asset | 9 | 20 | 3,000 | 3,000 | 3,000 | 3,000
POST (Auth) comment form | 55 | 390 | 2,932 | 2,932 | 2,932 | 2,932
-------------------------+--------+--------+--------+--------+--------+-------
Aggregated | 14 | 42 | 3,000 | 3,000 | 3,000 | 3,000
The Coordinated Omission metrics will also show up in the HTML report generated when Goose is started with the --report-file
run-time option. If Coordinated Omission mitigation kicked in, the HTML report will include both the "raw" metrics and the "adjusted" metrics.
Goose also supports distributed load testing. A Gaggle is one Goose process running in Manager mode, and 1 or more Goose processes running in Worker mode. The Manager coordinates starting and stopping the Workers, and collects aggregated metrics. Gaggle support is a cargo feature that must be enabled at compile-time as documented below. To launch a Gaggle, you must copy your load test application to all servers from which you wish to generate load.
It is strongly recommended that the same load test application be copied to all servers involved in a Gaggle. By default, Goose will verify that the load test is identical by comparing a hash of all load test rules. Telling it to skip this check can cause the load test to panic (for example, if a Worker defines a different number of tasks or task sets than the Manager).
Gaggle support is a compile-time Cargo feature that must be enabled. Goose uses the nng
library to manage network connections, and compiling nng
requires that cmake
be available.
The gaggle
feature can be enabled from the command line by adding --features gaggle
to your cargo command.
When writing load test applications, you can default to compiling in the Gaggle feature in the dependencies
section of your Cargo.toml
, for example:
[dependencies]
goose = { version = "^0.12", features = ["gaggle"] }
To launch a Gaggle, you first must start a Goose application in Manager mode. All configuration happens in the Manager. To start, add the --manager
flag and the --expect-workers
flag, the latter necessary to tell the Manager process how many Worker processes it will be coordinating. For example:
cargo run --features gaggle --example simple -- --manager --expect-workers 2 --host http://local.dev/ -v
This configures a Goose Manager to listen on all interfaces on the default port (0.0.0.0:5115) for 2 Goose Worker processes.
At this time, a Goose process can be either a Manager or a Worker, not both. Therefor, it usually makes sense to launch your first Worker on the same server that the Manager is running on. If not otherwise configured, a Goose Worker will try to connect to the Manager on the localhost. This can be done as follows:
cargo run --features gaggle --example simple -- --worker -v
In our above example, we expected 2 Workers. The second Goose process should be started on a different server. This will require telling it the host where the Goose Manager process is running. For example:
cargo run --example simple -- --worker --manager-host 192.168.1.55 -v
Once all expected Workers are running, the distributed load test will automatically start. We set the -v
flag so Goose provides verbose output indicating what is happening. In our example, the load test will run until it is canceled. You can cancel the Manager or either of the Worker processes, and the test will stop on all servers.
--manager
: starts a Goose process in Manager mode. There currently can only be one Manager per Gaggle.--worker
: starts a Goose process in Worker mode. How many Workers are in a given Gaggle is defined by the--expect-workers
option, documented below.--no-hash-check
: tells Goose to ignore if the load test application doesn't match between Worker(s) and the Manager. This is not recommended, and can cause the application to panic.
The --no-metrics
, --only-summary
, --no-reset-metrics
, --status-codes
, and --no-hash-check
flags must be set on the Manager. Workers inherit these flags from the Manager
--manager-bind-host <manager-bind-host>
: configures the host that the Manager listens on. By default Goose will listen on all interfaces, or0.0.0.0
.--manager-bind-port <manager-bind-port>
: configures the port that the Manager listens on. By default Goose will listen on port5115
.--manager-host <manager-host>
: configures the host that the Worker will talk to the Manager on. By default, a Goose Worker will connect to the localhost, or127.0.0.1
. In a distributed load test, this must be set to the IP of the Goose Manager.--manager-port <manager-port>
: configures the port that a Worker will talk to the Manager on. By default, a Goose Worker will connect to port5115
.
The --users
, --hatch-rate
, --host
, and --run-time
options must be set on the Manager. Workers inherit these options from the Manager.
The --throttle-requests
option must be configured on each Worker, and can be set to a different value on each Worker if desired.
Goose uses nng
to send network messages between the Manager and all Workers. Serde and Serde CBOR are used to serialize messages into Concise Binary Object Representation.
Workers initiate all network connections, and push metrics to the Manager process.
By default Reqwest (and therefore Goose) uses the system-native transport layer security to make HTTPS requests. This means schannel
on Windows, Security-Framework
on macOS, and OpenSSL
on Linux. If you'd prefer to use a pure Rust TLS implementation, disable default features and enable rustls
in Cargo.toml
as follows:
[dependencies]
goose = { version = "^0.12", default-features = false, features = ["rustls"] }