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Version: 0.83.11

Plan

The Plan object is an object representing the steps that Kurtosis will take inside the enclave during the Execution phase.

Kurtosis injects a Plan object into the run function in the main.star of your Starlark script. Kurtosis relies on the first argument of your run function being named plan (lowercase); all your Starlark scripts must follow this convention.

To use the Plan object in inner functions, simply pass the variable down.

Note that the function calls listed here merely add a step to the plan. They do not run the actual execution. Per Kurtosis' multi-phase run design, this will only happen during the Execution phase. Therefore, all plan functions will return future references.

add_service

The add_service instruction adds a service to the Kurtosis enclave within which the script executes, and returns a Service object containing information about the newly-added service.

# Returns a Service object (see the Service page in the sidebar)
service = plan.add_service(
# The service name of the service being created.
# The service name is a reference to the service, which can be used in the future to refer to the service.
# Service names of active services are unique per enclave and needs to be formatted according to RFC 1035.
# Specifically, 1-63 lowercase alphanumeric characters with dashes and cannot start or end with dashes.
# Also service names have to start with a lowercase alphabet.
# MANDATORY
name = "example-datastore-server-1",

# The configuration for this service, as specified via a ServiceConfig object (see the ServiceConfig page in the sidebar)
# MANDATORY
config = service_config,
)

For detailed information about the parameters the config argument accepts, see ServiceConfig.

For detailed information about what add_service returns, see Service.

Example:

dependency = plan.add_service(
name = "dependency",
config = ServiceConfig(
image = "dependency",
ports = {
"http": PortSpec(number = 80),
},
),
)

dependency_http_port = dependency.ports["http"]

plan.add_service(
name = "dependant",
config = ServiceConfig(
env_vars = {
"DEPENDENCY_URL": "http://{}:{}".format(dependency.ip_address, dependency_http_port.number),
},
),
)

add_services

The add_services instruction behaves like add_service, but adds the services in parallel.

The default parallelism is 4, but this can be increased using the --parallelism flag of the run CLI command.

add_services takes a dictionary of service names -> ServiceConfig objects as input, and returns a dictionary of service names -> Service objects.

all_services = plan.add_services(
# A map of service_name -> ServiceConfig for all services that needs to be added.
# See the 'ServiceConfig' page in the sidebar for more information on this type.
# MANDATORY
configs = {
"example-datastore-server-1": datastore_server_config_1,
"example-datastore-server-2": datastore_server_config_2,
},
)

For detailed information about the ServiceConfig object, see here.

For detailed information about the Service objects that add_services, see Service.

caution

add_services will succeed if and only if all services are successfully added. If any one fails (perhaps due to timeouts a ready condition failing), the entire batch of services will be rolled back and the instruction will return an execution error.

verify

The verify instruction throws an Execution phase error if the defined assertion fails.

plan.verify(
# The value currently being verified.
# MANDATORY
value = "test1",

# The assertion is the comparison operation between value and target_value.
# Valid values are "==", "!=", ">=", "<=", ">", "<" or "IN" and "NOT_IN" (if target_value is list).
# MANDATORY
assertion = "==",

# The target value that value will be compared against.
# MANDATORY
target_value = "test2",
) # This fails in runtime given that "test1" == "test2" is false

plan.verify(
# Value can also be a runtime value derived from a `get_value` call
value = response["body"],
assertion = "==",
target_value = 200,
)
caution

Verifications are typed, so running

plan.verify(
value = "0",
assertion = "==",
target_value = 0,
)

Will fail. If needed, you can use the extract feature to parse the types of your outputs.

exec

The exec instruction executes a command on a container as if they were running in a shell on the container.

exec_recipe = ExecRecipe(
# The actual command to execute.
# Each item corresponds to one shell argument, so ["echo", "Hello world"] behaves as if you ran "echo" "Hello world" in the shell.
# MANDATORY
command = ["echo", "Hello, world"],
)

result = plan.exec(
# A Service name designating a service that already exists inside the enclave
# If it does not, a validation error will be thrown
# MANDATORY
service_name = "my-service",

# The recipe that will determine the exec to be performed.
# Valid values are of the following types: (ExecRecipe)
# MANDATORY
recipe = exec_recipe,

# If the recipe returns a code that does not belong on this list, this instruction will fail.
# OPTIONAL (Defaults to [0])
acceptable_codes = [0, 0], # Here both 0 and 1 are valid codes that we want to accept and not fail the instruction

# If False, instruction will never fail based on code (acceptable_codes will be ignored).
# You can chain this call with assert to check codes after request is done.
# OPTIONAL (Defaults to False)
skip_code_check = False,
)

plan.print(result["output"])
plan.print(result["code"])

The instruction returns a dict whose values are future reference to the output and exit code of the command. result["output"] is a future reference to the output of the command, and result["code"] is a future reference to the exit code.

They can be chained to verify and wait:

exec_recipe = ExecRecipe(
command = ["echo", "Hello, world"],
)

result = plan.exec(service_name="my_service", recipe=exec_recipe)
plan.verify(result["code"], "==", 0)

plan.wait(service_name="my_service", recipe=exec_recipe, field="output", assertion="!=", target_value="Greetings, world")

print

The print instruction will print a value during the Execution phase. When the print instruction is executed during the Execution Phase, future references will be replaced with their execution-time values.

plan.print("Any string here")

remove_service

The remove_service instruction removes a service from the enclave in which the instruction executes in.

plan.remove_service(
# The service name of the service to be removed.
# MANDATORY
name = "my_service",
)

render_templates

The render_templates instruction combines a template and data to produce a files artifact. Files artifacts can be used with the files property of the ServiceConfig object, allowing for reuse of config files across services.

Returns: a future reference resolving to a string representing the name of a files artifact.

Args:

  • config: a dictionary with the following keys and values:
    • keys: strings representing the filepaths to be produced within the returned files artifact
    • values: structs with the following root level keys:
      • template: a string with representing the template in Go template format
      • data: a struct or dict type, with keys matching the variables used in the template, and values matching the intended replacement values.

Examples:

# Example data to slot into the template
template_data = {
"Name" : "Stranger",
"Answer": 6,
"Numbers": [1, 2, 3],
"UnixTimeStamp": 1257894000,
"LargeFloat": 1231231243.43,
"Alive": True,
}

artifact_name = plan.render_templates(
# A dictionary where:
# - Each key is a filepath that will be produced inside the output files artifact
# - Each value is the template + data required to produce the filepath
# Multiple filepaths can be specified to produce a files artifact with multiple files inside.
# MANDATORY
config = {
"/foo/bar/output.txt": struct(
# The template to render, which should be formatted in Go template format:
# https://pkg.go.dev/text/template#pkg-overview
# MANDATORY
template="Hello {{.Name}}. The sum of {{.Numbers}} is {{.Answer}}. My favorite moment in history {{.UnixTimeStamp}}. My favorite number {{.LargeFloat}}. Am I Alive? {{.Alive}}",

# The data to slot into the template, can be a struct or a dict
# The keys should exactly match the keys in the template.
# MANDATORY
data=template_data,
),
},

# The name to give the files artifact that will be produced.
# If not specified, it will be auto-generated.
# OPTIONAL
name = "my-artifact",
)

See also:

request

The request instruction executes either a POST or GET HTTP request, saving its result in a future references.

To make a GET or POST request, simply set the recipe field to use the specified GetHttpRequestRecipe or the PostHttpRequestRecipe.

http_response = plan.request(
# A service name designating a service that already exists inside the enclave
# If it does not, a validation error will be thrown
# MANDATORY
service_name = "my_service",

# The recipe that will determine the request to be performed.
# Valid values are of the following types: (GetHttpRequestRecipe, PostHttpRequestRecipe)
# MANDATORY
recipe = request_recipe,

# If the recipe returns a code that does not belong on this list, this instruction will fail.
# OPTIONAL (Defaults to [200, 201, ...])
acceptable_codes = [200, 500], # Here both 200 and 500 are valid codes that we want to accept and not fail the instruction

# If False, instruction will never fail based on code (acceptable_codes will be ignored).
# You can chain this call with assert to check codes after request is done.
# OPTIONAL (defaults to False)
skip_code_check = false,
)
plan.print(get_response["body"]) # Prints the body of the request
plan.print(get_response["code"]) # Prints the result code of the request (e.g. 200, 500)
plan.print(get_response["extract.extracted-field"]) # Prints the result of running ".name.id" query, that is saved with key "extracted-field"

The instruction returns a response, which is a dict with following key-value pair; the values are a future reference

  • response["code"] - returns the future reference to the status code of the response
  • response["body"] - returns the future reference to the body of the the response
  • response["extract.some-custom-field"] - it is an optional field and returns the future reference to the value extracted from body, which is explained below.

extract

jq's regular expressions is used to extract the information from the response body and is assigned to a custom field. The response["body"] must be a valid json object for manipulating data using extractions. A valid response["body"] can be used for extractions. See below for an example of how this can be done for the PostHttpRequestRecipe:

# Assuming response["body"] looks like {"result": {"foo": ["hello/world/welcome"]}}
post_request_recipe = PostHttpRequestRecipe(
...
extract = {
"second-element-from-list-head": '.result.foo | .[0] | split ("/") | .[1]',
},
)
post_response = plan.request(
service_name = "my_service",
recipe = post_request_recipe,
)
# response["extract.second-element-from-list-head"] is "world"
# response["body"] is {"result": {"foo": ["hello/world/welcome"]}}
# response["code"] is 200

NOTE: In the above example, response also has a custom field extract.second-element-from-list-head and the value is world which is extracted from the response[body].

These fields can be used in conjunction with verify and wait instructions, like so:

# Following the example above, response["extract.second-element-from-list-head"] is world
post_response = plan.request(
service_name = "my_service",
recipe = post_request_recipe,
)

# Assert if the extracted field in the response is world
plan.verify(response["extract.second-element-from-list-head"], "==", "world")

# Make a post request and check if the extracted field in the response is world
plan.wait(service_name="my_service", recipe=post_request_recipe, field="extract.second-element-from-list-head", assertion="==", target_value="world")

NOTE: jq returns a typed output that translates into the correspondent Starlark type. You can cast it using jq to match your desired output type:

# Assuming response["body"] looks like {"url": "posts/1"}}
post_request_recipe = PostHttpRequestRecipe(
...
extract = {
"post-number": '.url | split ("/") | .[1]',
"post-number-as-int": '.url | split ("/") | .[1] | tonumber',
},
)
response = plan.request(
service_name = "my_service",
recipe = post_request_recipe,
)
# response["extract.post-number"] is "1" (starlark.String)
# response["extract.post-number-as-int"] is 1 (starlark.Int)

For more details see jq's builtin operators and functions

run_python

The run_python instruction executes a one-time execution task. It runs the Python script specified by the mandatory field run on an image specified by the optional image field.

    result = plan.run_python(
# The Python script to execute as a string
# This will get executed via '/bin/sh -c "python /tmp/python/main.py"'.
# Where `/tmp/python/main.py` is path on the temporary container;
# on which the script is written before it gets run
# MANDATORY
run = """
import requests
response = requests.get("docs.kurtosis.com")
print(response.status_code)
""",

# Arguments to be passed t o the Python script defined in `run`
# OPTIONAL (Default: [])
args = [
some_other_service.ports["http"].url,
],

# Packages that the Python script requires which will be installed via `pip`
# OPTIONAL (default: [])
packages = [
"selenium",
"requests",
],

# Image the Python script will be run on
# OPTIONAL (Default: python:3.11-alpine)
image = "python:3.11-alpine",

# A mapping of path_on_task_where_contents_will_be_mounted -> files_artifact_id_to_mount
# For more information about file artifacts, see below.
# CAUTION: duplicate paths to files or directories to be mounted is not supported, and it will fail
# OPTIONAL (Default: {})
files = {
"/path/to/file/1": files_artifact_1,
"/path/to/file/2": files_artifact_2,
},

# list of paths to directories or files that will be copied to a file artifact
# CAUTION: all the paths in this list must be unique
# OPTIONAL (Default:[])
store = [
# copies a file into a file artifact
"/src/kurtosis.txt",

# copies the entire directory into a file artifact
"/src",
],

# The time to allow for the command to complete. If the Python script takes longer than this,
# Kurtosis will kill the script and mark it as failed.
# You may specify a custom wait timeout duration or disable the feature entirely.
# You may specify a custom wait timeout duration with a string:
# wait = "2m"
# Or, you can disable this feature by setting the value to None:
# wait = None
# The feature is enabled by default with a default timeout of 180s
# OPTIONAL (Default: "180s")
wait="180s"
)

plan.print(result.code) # returns the future reference to the exit code
plan.print(result.output) # returns the future reference to the output
plan.print(result.file_artifacts) # returns the file artifact names that can be referenced later

The files dictionary argument accepts a key value pair, where key is the path where the contents of the artifact will be mounted to and value is a file artifact name.

The instruction returns a struct with future references to the ouput and exit code of the Python script, alongside with future-reference to the file artifact names that were generated.

  • result.output is a future reference to the output of the command
  • result.code is a future reference to the exit code
  • result.files_artifacts is a future reference to the names of the file artifacts that were generated and can be used by the files property of ServiceConfig or run_sh instruction. An example is shown below:-

run_sh

The run_sh instruction executes a one-time execution task. It runs the bash command specified by the mandatory field run on an image specified by the optional image field.

    result = plan.run_sh(
# The command to run, as a string
# This will get executed via 'sh -c "$COMMAND"'.
# For example: 'sh -c "mkdir -p kurtosis && echo $(ls)"'
# MANDATORY
run = "mkdir -p kurtosis && echo $(ls)",

# Image the command will be run on
# OPTIONAL (Default: badouralix/curl-jq)
image = "badouralix/curl-jq",

# A mapping of path_on_task_where_contents_will_be_mounted -> files_artifact_id_to_mount
# For more information about file artifacts, see below.
# CAUTION: duplicate paths to files or directories to be mounted is not supported, and it will fail
# OPTIONAL (Default: {})
files = {
"/path/to/file/1": files_artifact_1,
"/path/to/file/2": files_artifact_2,
},

# list of paths to directories or files that will be copied to a file artifact
# CAUTION: all the paths in this list must be unique
# OPTIONAL (Default:[])
store = [
# copies a file into a file artifact
"/src/kurtosis.txt",

# copies the entire directory into a file artifact
"/src",
],

# The time to allow for the command to complete. If the command takes longer than this,
# Kurtosis will kill the command and mark it as failed.
# You may specify a custom wait timeout duration or disable the feature entirely.
# You may specify a custom wait timeout duration with a string:
# wait = "2m"
# Or, you can disable this feature by setting the value to None:
# wait = None
# The feature is enabled by default with a default timeout of 180s
# OPTIONAL (Default: "180s")
wait="180s"
)

plan.print(result.code) # returns the future reference to the code
plan.print(result.output) # returns the future reference to the output
plan.print(result.file_artifacts) # returns the file artifact names that can be referenced later

The files dictionary argument accepts a key value pair, where key is the path where the contents of the artifact will be mounted to and value is a file artifact name.

The instruction returns a struct with future references to the ouput and exit code of the command, alongside with future-reference to the file artifact names that were generated.

  • result.output is a future reference to the output of the command
  • result.code is a future reference to the exit code
  • result.files_artifacts is a future reference to the names of the file artifacts that were generated and can be used by the files property of ServiceConfig or run_sh instruction. An example is shown below:-

result = plan.run_sh(
run = "mkdir -p task && cd task && echo kurtosis > test.txt",
store = [
"/task",
# using '*' will only copy the contents of the parent directory and not the directory itself to file artifact
# in this case, only test.txt will be stored and task directory will be ignored
"/task/*",
],
...
)

plan.print(result.files_artifacts) # prints ["blue_moon", "green_planet"]

# blue_moon is name of the file artifact that contains task directory
# green_planet is the name of the file artifact that conatins test.txt file

service_one = plan.add_service(
...,
config=ServiceConfig(
name="service_one",
files={"/src": results.file_artifacts[0]}, # copies the directory task into service_one
)
) # the path to the file will look like: /src/task/test.txt

service_two = plan.add_service(
...,
config=ServiceConfig(
name="service_two",
files={"/src": results.file_artifacts[1]}, # copies the file test.txt into service_two
),
) # the path to the file will look like: /src/test.txt

start_service

The start_service instruction restarts a service that was stopped temporarily by stop_service.

plan.start_service(
# The service name of the service to be restarted.
# MANDATORY
name = "my_service",
)

stop_service

The stop_service instruction stops a service temporarily. The container ends but its configuration stays around so it can be restarted quickly using start_service.

plan.stop_service(
# The service name of the service to be stopped.
# MANDATORY
name = "my_service",
)

store_service_files

The store_service_files instruction copies files or directories from an existing service in the enclave into a files artifact. This is useful when work produced on one container is needed elsewhere.

artifact_name = plan.store_service_files(
# The service name of a preexisting service from which the file will be copied.
# MANDATORY
service_name = "example-service-name",

# The path on the service's container that will be copied into a files artifact.
# MANDATORY
src = "/tmp/foo",

# The name to give the files artifact that will be produced.
# If not specified, it will be auto-generated.
# OPTIONAL
name = "my-favorite-artifact-name",
)

The return value is a future reference to the name of the files artifact that was generated, which can be used with the files property of the service config of the add_service command.

upload_files

upload_files instruction packages the files specified by the locator into a files artifact that gets stored inside the enclave. This is particularly useful when a static file needs to be loaded to a service container.

artifact_name = plan.upload_files(
# The file to upload into a files artifact
# Must be a Kurtosis locator.
# MANDATORY
src = "github.com/foo/bar/static/example.txt",

# The name to give the files artifact that will be produced.
# If not specified, it will be auto-generated.
# OPTIONAL
name = "my-artifact",
)

The return value is a future reference to the name of the files artifact that was generated, which can be used with the files property of the service config of the add_service command.

wait

The wait instruction fails the Starlark script or package with an execution error if the provided verification does not succeed within a given period of time.

If the assertion succeeds, wait returns the result of the given Recipe - i.e. the same output as plan.request or plan.exec.

This instruction is best used for asserting the system has reached a desired state, e.g. in testing. To wait until a service is ready, you are better off using automatic port availability waiting via PortSpec.wait or ServiceConfig.ready_conditions, as these will short-circuit a parallel add_services call if they fail.

To learn more about the accepted recipe types, please see ExecRecipe, GetHttpRequestRecipe or PostHttpRequestRecipe.

# This fails in runtime if response["code"] != 200 for each request in a 5 minute time span
recipe_result = plan.wait(
# A Service name designating a service that already exists inside the enclave
# If it does not, a validation error will be thrown
# MANDATORY
service_name = "example-datastore-server-1",

# The recipe that will be run until assert passes.
# Valid values are of the following types: (ExecRecipe, GetHttpRequestRecipe, PostHttpRequestRecipe)
# MANDATORY
recipe = recipe,

# Wait will use the response's field to do the asssertions. To learn more about available fields,
# that can be used for assertions, please refer to exec and request instructions.
# MANDATORY
field = "code",

# The assertion is the comparison operation between value and target_value.
# Valid values are "==", "!=", ">=", "<=", ">", "<" or "IN" and "NOT_IN" (if target_value is list).
# MANDATORY
assertion = "==",

# The target value that value will be compared against.
# MANDATORY
target_value = 200,

# The interval value is the initial interval suggestion for the command to wait between calls
# It follows a exponential backoff process, where the i-th backoff interval is rand(0.5, 1.5)*interval*2^i
# Follows Go "time.Duration" format https://pkg.go.dev/time#ParseDuration
# OPTIONAL (Default: "1s")
interval = "1s",

# The timeout value is the maximum time that the command waits for the assertion to be true
# Follows Go "time.Duration" format https://pkg.go.dev/time#ParseDuration
# OPTIONAL (Default: "10s")
timeout = "5m",
)

# The assertion has passed, so we can use `recipe_result` just like the result of `plan.request` or `plan.exec`
plan.print(recipe_result["code"])