aws-cdk.aws-stepfunctions1.204.0
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The CDK Construct Library for AWS::StepFunctions
pip install aws-cdk-aws-stepfunctions
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Requires Python
~=3.7
AWS Step Functions Construct Library
---AWS CDK v1 has reached End-of-Support on 2023-06-01. This package is no longer being updated, and users should migrate to AWS CDK v2.
For more information on how to migrate, see the Migrating to AWS CDK v2 guide.
The @aws-cdk/aws-stepfunctions
package contains constructs for building
serverless workflows using objects. Use this in conjunction with the
@aws-cdk/aws-stepfunctions-tasks
package, which contains classes used
to call other AWS services.
Defining a workflow looks like this (for the Step Functions Job Poller example):
Example
import aws_cdk.aws_lambda as lambda_
# submit_lambda: lambda.Function
# get_status_lambda: lambda.Function
submit_job = tasks.LambdaInvoke(self, "Submit Job",
lambda_function=submit_lambda,
# Lambda's result is in the attribute `Payload`
output_path="$.Payload"
)
wait_x = sfn.Wait(self, "Wait X Seconds",
time=sfn.WaitTime.seconds_path("$.waitSeconds")
)
get_status = tasks.LambdaInvoke(self, "Get Job Status",
lambda_function=get_status_lambda,
# Pass just the field named "guid" into the Lambda, put the
# Lambda's result in a field called "status" in the response
input_path="$.guid",
output_path="$.Payload"
)
job_failed = sfn.Fail(self, "Job Failed",
cause="AWS Batch Job Failed",
error="DescribeJob returned FAILED"
)
final_status = tasks.LambdaInvoke(self, "Get Final Job Status",
lambda_function=get_status_lambda,
# Use "guid" field as input
input_path="$.guid",
output_path="$.Payload"
)
definition = submit_job.next(wait_x).next(get_status).next(sfn.Choice(self, "Job Complete?").when(sfn.Condition.string_equals("$.status", "FAILED"), job_failed).when(sfn.Condition.string_equals("$.status", "SUCCEEDED"), final_status).otherwise(wait_x))
sfn.StateMachine(self, "StateMachine",
definition=definition,
timeout=Duration.minutes(5)
)
You can find more sample snippets and learn more about the service integrations
in the @aws-cdk/aws-stepfunctions-tasks
package.
State Machine
A stepfunctions.StateMachine
is a resource that takes a state machine
definition. The definition is specified by its start state, and encompasses
all states reachable from the start state:
start_state = sfn.Pass(self, "StartState")
sfn.StateMachine(self, "StateMachine",
definition=start_state
)
State machines execute using an IAM Role, which will automatically have all permissions added that are required to make all state machine tasks execute properly (for example, permissions to invoke any Lambda functions you add to your workflow). A role will be created by default, but you can supply an existing one as well.
Accessing State (the JsonPath class)
Every State Machine execution has State Machine Data: a JSON document containing keys and values that is fed into the state machine, gets modified as the state machine progresses, and finally is produced as output.
You can pass fragments of this State Machine Data into Tasks of the state machine.
To do so, use the static methods on the JsonPath
class. For example, to pass
the value that's in the data key of OrderId
to a Lambda function as you invoke
it, use JsonPath.stringAt('$.OrderId')
, like so:
import aws_cdk.aws_lambda as lambda_
# order_fn: lambda.Function
submit_job = tasks.LambdaInvoke(self, "InvokeOrderProcessor",
lambda_function=order_fn,
payload=sfn.TaskInput.from_object({
"OrderId": sfn.JsonPath.string_at("$.OrderId")
})
)
The following methods are available:
Method | Purpose |
---|---|
JsonPath.stringAt('$.Field') | reference a field, return the type as a string . |
JsonPath.listAt('$.Field') | reference a field, return the type as a list of strings. |
JsonPath.numberAt('$.Field') | reference a field, return the type as a number. Use this for functions that expect a number argument. |
JsonPath.objectAt('$.Field') | reference a field, return the type as an IResolvable . Use this for functions that expect an object argument. |
JsonPath.entirePayload | reference the entire data object (equivalent to a path of $ ). |
JsonPath.taskToken | reference the Task Token, used for integration patterns that need to run for a long time. |
You can also call intrinsic functions using the methods on JsonPath
:
Method | Purpose |
---|---|
JsonPath.array(JsonPath.stringAt('$.Field'), ...) | make an array from other elements. |
JsonPath.format('The value is {}.', JsonPath.stringAt('$.Value')) | insert elements into a format string. |
JsonPath.stringToJson(JsonPath.stringAt('$.ObjStr')) | parse a JSON string to an object |
JsonPath.jsonToString(JsonPath.objectAt('$.Obj')) | stringify an object to a JSON string |
Amazon States Language
This library comes with a set of classes that model the Amazon States Language. The following State classes are supported:
An arbitrary JSON object (specified at execution start) is passed from state to state and transformed during the execution of the workflow. For more information, see the States Language spec.
Task
A Task
represents some work that needs to be done. The exact work to be
done is determine by a class that implements IStepFunctionsTask
, a collection
of which can be found in the @aws-cdk/aws-stepfunctions-tasks
module.
The tasks in the @aws-cdk/aws-stepfunctions-tasks
module support the
service integration pattern that integrates Step Functions with services
directly in the Amazon States language.
Pass
A Pass
state passes its input to its output, without performing work.
Pass states are useful when constructing and debugging state machines.
The following example injects some fixed data into the state machine through
the result
field. The result
field will be added to the input and the result
will be passed as the state's output.
# Makes the current JSON state { ..., "subObject": { "hello": "world" } }
pass = sfn.Pass(self, "Add Hello World",
result=sfn.Result.from_object({"hello": "world"}),
result_path="$.subObject"
)
# Set the next state
next_state = sfn.Pass(self, "NextState")
pass.next(next_state)
The Pass
state also supports passing key-value pairs as input. Values can
be static, or selected from the input with a path.
The following example filters the greeting
field from the state input
and also injects a field called otherData
.
pass = sfn.Pass(self, "Filter input and inject data",
parameters={ # input to the pass state
"input": sfn.JsonPath.string_at("$.input.greeting"),
"other_data": "some-extra-stuff"}
)
The object specified in parameters
will be the input of the Pass
state.
Since neither Result
nor ResultPath
are supplied, the Pass
state copies
its input through to its output.
Learn more about the Pass state
Wait
A Wait
state waits for a given number of seconds, or until the current time
hits a particular time. The time to wait may be taken from the execution's JSON
state.
# Wait until it's the time mentioned in the the state object's "triggerTime"
# field.
wait = sfn.Wait(self, "Wait For Trigger Time",
time=sfn.WaitTime.timestamp_path("$.triggerTime")
)
# Set the next state
start_the_work = sfn.Pass(self, "StartTheWork")
wait.next(start_the_work)
Choice
A Choice
state can take a different path through the workflow based on the
values in the execution's JSON state:
choice = sfn.Choice(self, "Did it work?")
# Add conditions with .when()
success_state = sfn.Pass(self, "SuccessState")
failure_state = sfn.Pass(self, "FailureState")
choice.when(sfn.Condition.string_equals("$.status", "SUCCESS"), success_state)
choice.when(sfn.Condition.number_greater_than("$.attempts", 5), failure_state)
# Use .otherwise() to indicate what should be done if none of the conditions match
try_again_state = sfn.Pass(self, "TryAgainState")
choice.otherwise(try_again_state)
If you want to temporarily branch your workflow based on a condition, but have
all branches come together and continuing as one (similar to how an if ... then ... else
works in a programming language), use the .afterwards()
method:
choice = sfn.Choice(self, "What color is it?")
handle_blue_item = sfn.Pass(self, "HandleBlueItem")
handle_red_item = sfn.Pass(self, "HandleRedItem")
handle_other_item_color = sfn.Pass(self, "HanldeOtherItemColor")
choice.when(sfn.Condition.string_equals("$.color", "BLUE"), handle_blue_item)
choice.when(sfn.Condition.string_equals("$.color", "RED"), handle_red_item)
choice.otherwise(handle_other_item_color)
# Use .afterwards() to join all possible paths back together and continue
ship_the_item = sfn.Pass(self, "ShipTheItem")
choice.afterwards().next(ship_the_item)
If your Choice
doesn't have an otherwise()
and none of the conditions match
the JSON state, a NoChoiceMatched
error will be thrown. Wrap the state machine
in a Parallel
state if you want to catch and recover from this.
Available Conditions
see step function comparison operators
Condition.isPresent
- matches if a json path is presentCondition.isNotPresent
- matches if a json path is not presentCondition.isString
- matches if a json path contains a stringCondition.isNotString
- matches if a json path is not a stringCondition.isNumeric
- matches if a json path is numericCondition.isNotNumeric
- matches if a json path is not numericCondition.isBoolean
- matches if a json path is booleanCondition.isNotBoolean
- matches if a json path is not booleanCondition.isTimestamp
- matches if a json path is a timestampCondition.isNotTimestamp
- matches if a json path is not a timestampCondition.isNotNull
- matches if a json path is not nullCondition.isNull
- matches if a json path is nullCondition.booleanEquals
- matches if a boolean field has a given valueCondition.booleanEqualsJsonPath
- matches if a boolean field equals a value in a given mapping pathCondition.stringEqualsJsonPath
- matches if a string field equals a given mapping pathCondition.stringEquals
- matches if a field equals a string valueCondition.stringLessThan
- matches if a string field sorts before a given valueCondition.stringLessThanJsonPath
- matches if a string field sorts before a value at given mapping pathCondition.stringLessThanEquals
- matches if a string field sorts equal to or before a given valueCondition.stringLessThanEqualsJsonPath
- matches if a string field sorts equal to or before a given mappingCondition.stringGreaterThan
- matches if a string field sorts after a given valueCondition.stringGreaterThanJsonPath
- matches if a string field sorts after a value at a given mapping pathCondition.stringGreaterThanEqualsJsonPath
- matches if a string field sorts after or equal to value at a given mapping pathCondition.stringGreaterThanEquals
- matches if a string field sorts after or equal to a given valueCondition.numberEquals
- matches if a numeric field has the given valueCondition.numberEqualsJsonPath
- matches if a numeric field has the value in a given mapping pathCondition.numberLessThan
- matches if a numeric field is less than the given valueCondition.numberLessThanJsonPath
- matches if a numeric field is less than the value at the given mapping pathCondition.numberLessThanEquals
- matches if a numeric field is less than or equal to the given valueCondition.numberLessThanEqualsJsonPath
- matches if a numeric field is less than or equal to the numeric value at given mapping pathCondition.numberGreaterThan
- matches if a numeric field is greater than the given valueCondition.numberGreaterThanJsonPath
- matches if a numeric field is greater than the value at a given mapping pathCondition.numberGreaterThanEquals
- matches if a numeric field is greater than or equal to the given valueCondition.numberGreaterThanEqualsJsonPath
- matches if a numeric field is greater than or equal to the value at a given mapping pathCondition.timestampEquals
- matches if a timestamp field is the same time as the given timestampCondition.timestampEqualsJsonPath
- matches if a timestamp field is the same time as the timestamp at a given mapping pathCondition.timestampLessThan
- matches if a timestamp field is before the given timestampCondition.timestampLessThanJsonPath
- matches if a timestamp field is before the timestamp at a given mapping pathCondition.timestampLessThanEquals
- matches if a timestamp field is before or equal to the given timestampCondition.timestampLessThanEqualsJsonPath
- matches if a timestamp field is before or equal to the timestamp at a given mapping pathCondition.timestampGreaterThan
- matches if a timestamp field is after the timestamp at a given mapping pathCondition.timestampGreaterThanJsonPath
- matches if a timestamp field is after the timestamp at a given mapping pathCondition.timestampGreaterThanEquals
- matches if a timestamp field is after or equal to the given timestampCondition.timestampGreaterThanEqualsJsonPath
- matches if a timestamp field is after or equal to the timestamp at a given mapping pathCondition.stringMatches
- matches if a field matches a string pattern that can contain a wild card () e.g: log-.txt or LATEST. No other characters other than "" have any special meaning - * can be escaped: \
Parallel
A Parallel
state executes one or more subworkflows in parallel. It can also
be used to catch and recover from errors in subworkflows.
parallel = sfn.Parallel(self, "Do the work in parallel")
# Add branches to be executed in parallel
ship_item = sfn.Pass(self, "ShipItem")
send_invoice = sfn.Pass(self, "SendInvoice")
restock = sfn.Pass(self, "Restock")
parallel.branch(ship_item)
parallel.branch(send_invoice)
parallel.branch(restock)
# Retry the whole workflow if something goes wrong
parallel.add_retry(max_attempts=1)
# How to recover from errors
send_failure_notification = sfn.Pass(self, "SendFailureNotification")
parallel.add_catch(send_failure_notification)
# What to do in case everything succeeded
close_order = sfn.Pass(self, "CloseOrder")
parallel.next(close_order)
Succeed
Reaching a Succeed
state terminates the state machine execution with a
successful status.
success = sfn.Succeed(self, "We did it!")
Fail
Reaching a Fail
state terminates the state machine execution with a
failure status. The fail state should report the reason for the failure.
Failures can be caught by encompassing Parallel
states.
success = sfn.Fail(self, "Fail",
error="WorkflowFailure",
cause="Something went wrong"
)
Map
A Map
state can be used to run a set of steps for each element of an input array.
A Map
state will execute the same steps for multiple entries of an array in the state input.
While the Parallel
state executes multiple branches of steps using the same input, a Map
state will
execute the same steps for multiple entries of an array in the state input.
map = sfn.Map(self, "Map State",
max_concurrency=1,
items_path=sfn.JsonPath.string_at("$.inputForMap")
)
map.iterator(sfn.Pass(self, "Pass State"))
Custom State
It's possible that the high-level constructs for the states or stepfunctions-tasks
do not have
the states or service integrations you are looking for. The primary reasons for this lack of
functionality are:
- A service integration is available through Amazon States Langauge, but not available as construct classes in the CDK.
- The state or state properties are available through Step Functions, but are not configurable through constructs
If a feature is not available, a CustomState
can be used to supply any Amazon States Language
JSON-based object as the state definition.
Code Snippets are available and can be plugged in as the state definition.
Custom states can be chained together with any of the other states to create your state machine
definition. You will also need to provide any permissions that are required to the role
that
the State Machine uses.
The following example uses the DynamoDB
service integration to insert data into a DynamoDB table.
import aws_cdk.aws_dynamodb as dynamodb
# create a table
table = dynamodb.Table(self, "montable",
partition_key=dynamodb.Attribute(
name="id",
type=dynamodb.AttributeType.STRING
)
)
final_status = sfn.Pass(self, "final step")
# States language JSON to put an item into DynamoDB
# snippet generated from https://docs.aws.amazon.com/step-functions/latest/dg/tutorial-code-snippet.html#tutorial-code-snippet-1
state_json = {
"Type": "Task",
"Resource": "arn:aws:states:::dynamodb:putItem",
"Parameters": {
"TableName": table.table_name,
"Item": {
"id": {
"S": "MyEntry"
}
}
},
"ResultPath": null
}
# custom state which represents a task to insert data into DynamoDB
custom = sfn.CustomState(self, "my custom task",
state_json=state_json
)
chain = sfn.Chain.start(custom).next(final_status)
sm = sfn.StateMachine(self, "StateMachine",
definition=chain,
timeout=Duration.seconds(30)
)
# don't forget permissions. You need to assign them
table.grant_write_data(sm)
Task Chaining
To make defining work flows as convenient (and readable in a top-to-bottom way)
as writing regular programs, it is possible to chain most methods invocations.
In particular, the .next()
method can be repeated. The result of a series of
.next()
calls is called a Chain, and can be used when defining the jump
targets of Choice.on
or Parallel.branch
:
step1 = sfn.Pass(self, "Step1")
step2 = sfn.Pass(self, "Step2")
step3 = sfn.Pass(self, "Step3")
step4 = sfn.Pass(self, "Step4")
step5 = sfn.Pass(self, "Step5")
step6 = sfn.Pass(self, "Step6")
step7 = sfn.Pass(self, "Step7")
step8 = sfn.Pass(self, "Step8")
step9 = sfn.Pass(self, "Step9")
step10 = sfn.Pass(self, "Step10")
choice = sfn.Choice(self, "Choice")
condition1 = sfn.Condition.string_equals("$.status", "SUCCESS")
parallel = sfn.Parallel(self, "Parallel")
finish = sfn.Pass(self, "Finish")
definition = step1.next(step2).next(choice.when(condition1, step3.next(step4).next(step5)).otherwise(step6).afterwards()).next(parallel.branch(step7.next(step8)).branch(step9.next(step10))).next(finish)
sfn.StateMachine(self, "StateMachine",
definition=definition
)
If you don't like the visual look of starting a chain directly off the first
step, you can use Chain.start
:
step1 = sfn.Pass(self, "Step1")
step2 = sfn.Pass(self, "Step2")
step3 = sfn.Pass(self, "Step3")
definition = sfn.Chain.start(step1).next(step2).next(step3)
State Machine Fragments
It is possible to define reusable (or abstracted) mini-state machines by
defining a construct that implements IChainable
, which requires you to define
two fields:
startState: State
, representing the entry point into this state machine.endStates: INextable[]
, representing the (one or more) states that outgoing transitions will be added to if you chain onto the fragment.
Since states will be named after their construct IDs, you may need to prefix the IDs of states if you plan to instantiate the same state machine fragment multiples times (otherwise all states in every instantiation would have the same name).
The class StateMachineFragment
contains some helper functions (like
prefixStates()
) to make it easier for you to do this. If you define your state
machine as a subclass of this, it will be convenient to use:
from aws_cdk.core import Stack
from constructs import Construct
import aws_cdk.aws_stepfunctions as sfn
class MyJob(sfn.StateMachineFragment):
def __init__(self, parent, id, *, jobFlavor):
super().__init__(parent, id)
choice = sfn.Choice(self, "Choice").when(sfn.Condition.string_equals("$.branch", "left"), sfn.Pass(self, "Left Branch")).when(sfn.Condition.string_equals("$.branch", "right"), sfn.Pass(self, "Right Branch"))
# ...
self.start_state = choice
self.end_states = choice.afterwards().end_states
class MyStack(Stack):
def __init__(self, scope, id):
super().__init__(scope, id)
# Do 3 different variants of MyJob in parallel
parallel = sfn.Parallel(self, "All jobs").branch(MyJob(self, "Quick", job_flavor="quick").prefix_states()).branch(MyJob(self, "Medium", job_flavor="medium").prefix_states()).branch(MyJob(self, "Slow", job_flavor="slow").prefix_states())
sfn.StateMachine(self, "MyStateMachine",
definition=parallel
)
A few utility functions are available to parse state machine fragments.
State.findReachableStates
: Retrieve the list of states reachable from a given state.State.findReachableEndStates
: Retrieve the list of end or terminal states reachable from a given state.
Activity
Activities represent work that is done on some non-Lambda worker pool. The Step Functions workflow will submit work to this Activity, and a worker pool that you run yourself, probably on EC2, will pull jobs from the Activity and submit the results of individual jobs back.
You need the ARN to do so, so if you use Activities be sure to pass the Activity ARN into your worker pool:
activity = sfn.Activity(self, "Activity")
# Read this CloudFormation Output from your application and use it to poll for work on
# the activity.
CfnOutput(self, "ActivityArn", value=activity.activity_arn)
Activity-Level Permissions
Granting IAM permissions to an activity can be achieved by calling the grant(principal, actions)
API:
activity = sfn.Activity(self, "Activity")
role = iam.Role(self, "Role",
assumed_by=iam.ServicePrincipal("lambda.amazonaws.com")
)
activity.grant(role, "states:SendTaskSuccess")
This will grant the IAM principal the specified actions onto the activity.
Metrics
Task
object expose various metrics on the execution of that particular task. For example,
to create an alarm on a particular task failing:
# task: sfn.Task
cloudwatch.Alarm(self, "TaskAlarm",
metric=task.metric_failed(),
threshold=1,
evaluation_periods=1
)
There are also metrics on the complete state machine:
# state_machine: sfn.StateMachine
cloudwatch.Alarm(self, "StateMachineAlarm",
metric=state_machine.metric_failed(),
threshold=1,
evaluation_periods=1
)
And there are metrics on the capacity of all state machines in your account:
cloudwatch.Alarm(self, "ThrottledAlarm",
metric=sfn.StateTransitionMetric.metric_throttled_events(),
threshold=10,
evaluation_periods=2
)
Error names
Step Functions identifies errors in the Amazon States Language using case-sensitive strings, known as error names.
The Amazon States Language defines a set of built-in strings that name well-known errors, all beginning with the States.
prefix.
-
States.ALL
- A wildcard that matches any known error name. -
States.Runtime
- An execution failed due to some exception that could not be processed. Often these are caused by errors at runtime, such as attempting to apply InputPath or OutputPath on a null JSON payload. AStates.Runtime
error is not retriable, and will always cause the execution to fail. A retry or catch onStates.ALL
will NOT catch States.Runtime errors. -
States.DataLimitExceeded
- A States.DataLimitExceeded exception will be thrown for the following:- When the output of a connector is larger than payload size quota.
- When the output of a state is larger than payload size quota.
- When, after Parameters processing, the input of a state is larger than the payload size quota.
- See the AWS documentation to learn more about AWS Step Functions Quotas.
-
States.HeartbeatTimeout
- A Task state failed to send a heartbeat for a period longer than the HeartbeatSeconds value. -
States.Timeout
- A Task state either ran longer than the TimeoutSeconds value, or failed to send a heartbeat for a period longer than the HeartbeatSeconds value. -
States.TaskFailed
- A Task state failed during the execution. When used in a retry or catch,States.TaskFailed
acts as a wildcard that matches any known error name except forStates.Timeout
.
Logging
Enable logging to CloudWatch by passing a logging configuration with a destination LogGroup:
import aws_cdk.aws_logs as logs
log_group = logs.LogGroup(self, "MyLogGroup")
sfn.StateMachine(self, "MyStateMachine",
definition=sfn.Chain.start(sfn.Pass(self, "Pass")),
logs=sfn.LogOptions(
destination=log_group,
level=sfn.LogLevel.ALL
)
)
X-Ray tracing
Enable X-Ray tracing for StateMachine:
sfn.StateMachine(self, "MyStateMachine",
definition=sfn.Chain.start(sfn.Pass(self, "Pass")),
tracing_enabled=True
)
See the AWS documentation to learn more about AWS Step Functions's X-Ray support.
State Machine Permission Grants
IAM roles, users, or groups which need to be able to work with a State Machine should be granted IAM permissions.
Any object that implements the IGrantable
interface (has an associated principal) can be granted permissions by calling:
stateMachine.grantStartExecution(principal)
- grants the principal the ability to execute the state machinestateMachine.grantRead(principal)
- grants the principal read accessstateMachine.grantTaskResponse(principal)
- grants the principal the ability to send task tokens to the state machinestateMachine.grantExecution(principal, actions)
- grants the principal execution-level permissions for the IAM actions specifiedstateMachine.grant(principal, actions)
- grants the principal state-machine-level permissions for the IAM actions specified
Start Execution Permission
Grant permission to start an execution of a state machine by calling the grantStartExecution()
API.
# definition: sfn.IChainable
role = iam.Role(self, "Role",
assumed_by=iam.ServicePrincipal("lambda.amazonaws.com")
)
state_machine = sfn.StateMachine(self, "StateMachine",
definition=definition
)
# Give role permission to start execution of state machine
state_machine.grant_start_execution(role)
The following permission is provided to a service principal by the grantStartExecution()
API:
states:StartExecution
- to state machine
Read Permissions
Grant read
access to a state machine by calling the grantRead()
API.
# definition: sfn.IChainable
role = iam.Role(self, "Role",
assumed_by=iam.ServicePrincipal("lambda.amazonaws.com")
)
state_machine = sfn.StateMachine(self, "StateMachine",
definition=definition
)
# Give role read access to state machine
state_machine.grant_read(role)
The following read permissions are provided to a service principal by the grantRead()
API:
states:ListExecutions
- to state machinestates:ListStateMachines
- to state machinestates:DescribeExecution
- to executionsstates:DescribeStateMachineForExecution
- to executionsstates:GetExecutionHistory
- to executionsstates:ListActivities
- to*
states:DescribeStateMachine
- to*
states:DescribeActivity
- to*
Task Response Permissions
Grant permission to allow task responses to a state machine by calling the grantTaskResponse()
API:
# definition: sfn.IChainable
role = iam.Role(self, "Role",
assumed_by=iam.ServicePrincipal("lambda.amazonaws.com")
)
state_machine = sfn.StateMachine(self, "StateMachine",
definition=definition
)
# Give role task response permissions to the state machine
state_machine.grant_task_response(role)
The following read permissions are provided to a service principal by the grantRead()
API:
states:SendTaskSuccess
- to state machinestates:SendTaskFailure
- to state machinestates:SendTaskHeartbeat
- to state machine
Execution-level Permissions
Grant execution-level permissions to a state machine by calling the grantExecution()
API:
# definition: sfn.IChainable
role = iam.Role(self, "Role",
assumed_by=iam.ServicePrincipal("lambda.amazonaws.com")
)
state_machine = sfn.StateMachine(self, "StateMachine",
definition=definition
)
# Give role permission to get execution history of ALL executions for the state machine
state_machine.grant_execution(role, "states:GetExecutionHistory")
Custom Permissions
You can add any set of permissions to a state machine by calling the grant()
API.
# definition: sfn.IChainable
user = iam.User(self, "MyUser")
state_machine = sfn.StateMachine(self, "StateMachine",
definition=definition
)
# give user permission to send task success to the state machine
state_machine.grant(user, "states:SendTaskSuccess")
Import
Any Step Functions state machine that has been created outside the stack can be imported into your CDK stack.
State machines can be imported by their ARN via the StateMachine.fromStateMachineArn()
API
app = App()
stack = Stack(app, "MyStack")
sfn.StateMachine.from_state_machine_arn(stack, "ImportedStateMachine", "arn:aws:states:us-east-1:123456789012:stateMachine:StateMachine2E01A3A5-N5TJppzoevKQ")