title | description |
---|---|
Idempotency |
Utility |
The idempotency utility provides a simple solution to convert your Lambda functions into idempotent operations which are safe to retry.
The property of idempotency means that an operation does not cause additional side effects if it is called more than once with the same input parameters.
Idempotent operations will return the same result when they are called multiple times with the same parameters. This makes idempotent operations safe to retry.
Idempotency key is a hash representation of either the entire event or a specific configured subset of the event, and invocation results are JSON serialized and stored in your persistence storage layer.
- Prevent Lambda handler from executing more than once on the same event payload during a time window
- Ensure Lambda handler returns the same result when called with the same payload
- Select a subset of the event as the idempotency key using JMESPath expressions
- Set a time window in which records with the same payload should be considered duplicates
- Expires in-progress executions if the Lambda function times out halfway through
Before getting started, you need to create a persistent storage layer where the idempotency utility can store its state - your lambda functions will need read and write access to it.
As of now, Amazon DynamoDB is the only supported persistent storage layer, so you'll need to create a table first.
Default table configuration
If you're not changing the default configuration for the DynamoDB persistence layer, this is the expected default configuration:
Configuration | Value | Notes |
---|---|---|
Partition key | id |
|
TTL attribute name | expiration |
This can only be configured after your table is created if you're using AWS Console |
???+ tip "Tip: You can share a single state table for all functions"
You can reuse the same DynamoDB table to store idempotency state. We add module_name
and qualified name for classes and functions in addition to the idempotency key as a hash key.
Resources:
IdempotencyTable:
Type: AWS::DynamoDB::Table
Properties:
AttributeDefinitions:
- AttributeName: id
AttributeType: S
KeySchema:
- AttributeName: id
KeyType: HASH
TimeToLiveSpecification:
AttributeName: expiration
Enabled: true
BillingMode: PAY_PER_REQUEST
HelloWorldFunction:
Type: AWS::Serverless::Function
Properties:
Runtime: python3.8
...
Policies:
- DynamoDBCrudPolicy:
TableName: !Ref IdempotencyTable
???+ warning "Warning: Large responses with DynamoDB persistence layer" When using this utility with DynamoDB, your function's responses must be smaller than 400KB.
Larger items cannot be written to DynamoDB and will cause exceptions.
???+ info "Info: DynamoDB" Each function invocation will generally make 2 requests to DynamoDB. If the result returned by your Lambda is less than 1kb, you can expect 2 WCUs per invocation. For retried invocations, you will see 1WCU and 1RCU. Review the DynamoDB pricing documentation to estimate the cost.
You can quickly start by initializing the DynamoDBPersistenceLayer
class and using it with the idempotent
decorator on your lambda handler.
=== "app.py"
```python hl_lines="1-3 5 7 14"
from aws_lambda_powertools.utilities.idempotency import (
DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="IdempotencyTable")
@idempotent(persistence_store=persistence_layer)
def handler(event, context):
payment = create_subscription_payment(
user=event['user'],
product=event['product_id']
)
...
return {
"payment_id": payment.id,
"message": "success",
"statusCode": 200,
}
```
=== "Example event"
```json
{
"username": "xyz",
"product_id": "123456789"
}
```
Similar to idempotent decorator, you can use idempotent_function
decorator for any synchronous Python function.
When using idempotent_function
, you must tell us which keyword parameter in your function signature has the data we should use via data_keyword_argument
.
!!! info "We support JSON serializable data, Python Dataclasses{target="_blank"}, Parser/Pydantic Models{target="_blank"}, and our Event Source Data Classes{target="_blank"}."
???+ warning Make sure to call your decorated function using keyword arguments
=== "batch_sample.py"
This example also demonstrates how you can integrate with [Batch utility](batch.md), so you can process each record in an idempotent manner.
```python hl_lines="4-5 16 21 29"
from aws_lambda_powertools.utilities.batch import (BatchProcessor, EventType,
batch_processor)
from aws_lambda_powertools.utilities.data_classes.sqs_event import SQSRecord
from aws_lambda_powertools.utilities.idempotency import (
DynamoDBPersistenceLayer, IdempotencyConfig, idempotent_function)
processor = BatchProcessor(event_type=EventType.SQS)
dynamodb = DynamoDBPersistenceLayer(table_name="idem")
config = IdempotencyConfig(
event_key_jmespath="messageId", # see Choosing a payload subset section
use_local_cache=True,
)
@idempotent_function(data_keyword_argument="record", config=config, persistence_store=dynamodb)
def record_handler(record: SQSRecord):
return {"message": record["body"]}
@idempotent_function(data_keyword_argument="data", config=config, persistence_store=dynamodb)
def dummy(arg_one, arg_two, data: dict, **kwargs):
return {"data": data}
@batch_processor(record_handler=record_handler, processor=processor)
def lambda_handler(event, context):
# `data` parameter must be called as a keyword argument to work
dummy("hello", "universe", data="test")
config.register_lambda_context(context) # see Lambda timeouts section
return processor.response()
```
=== "Batch event"
```json hl_lines="4"
{
"Records": [
{
"messageId": "059f36b4-87a3-44ab-83d2-661975830a7d",
"receiptHandle": "AQEBwJnKyrHigUMZj6rYigCgxlaS3SLy0a...",
"body": "Test message.",
"attributes": {
"ApproximateReceiveCount": "1",
"SentTimestamp": "1545082649183",
"SenderId": "AIDAIENQZJOLO23YVJ4VO",
"ApproximateFirstReceiveTimestamp": "1545082649185"
},
"messageAttributes": {
"testAttr": {
"stringValue": "100",
"binaryValue": "base64Str",
"dataType": "Number"
}
},
"md5OfBody": "e4e68fb7bd0e697a0ae8f1bb342846b3",
"eventSource": "aws:sqs",
"eventSourceARN": "arn:aws:sqs:us-east-2:123456789012:my-queue",
"awsRegion": "us-east-2"
}
]
}
```
=== "dataclass_sample.py"
```python hl_lines="3-4 23 33"
from dataclasses import dataclass
from aws_lambda_powertools.utilities.idempotency import (
DynamoDBPersistenceLayer, IdempotencyConfig, idempotent_function)
dynamodb = DynamoDBPersistenceLayer(table_name="idem")
config = IdempotencyConfig(
event_key_jmespath="order_id", # see Choosing a payload subset section
use_local_cache=True,
)
@dataclass
class OrderItem:
sku: str
description: str
@dataclass
class Order:
item: OrderItem
order_id: int
@idempotent_function(data_keyword_argument="order", config=config, persistence_store=dynamodb)
def process_order(order: Order):
return f"processed order {order.order_id}"
def lambda_handler(event, context):
config.register_lambda_context(context) # see Lambda timeouts section
order_item = OrderItem(sku="fake", description="sample")
order = Order(item=order_item, order_id="fake-id")
# `order` parameter must be called as a keyword argument to work
process_order(order=order)
```
=== "parser_pydantic_sample.py"
```python hl_lines="1-2 22 32"
from aws_lambda_powertools.utilities.idempotency import (
DynamoDBPersistenceLayer, IdempotencyConfig, idempotent_function)
from aws_lambda_powertools.utilities.parser import BaseModel
dynamodb = DynamoDBPersistenceLayer(table_name="idem")
config = IdempotencyConfig(
event_key_jmespath="order_id", # see Choosing a payload subset section
use_local_cache=True,
)
class OrderItem(BaseModel):
sku: str
description: str
class Order(BaseModel):
item: OrderItem
order_id: int
@idempotent_function(data_keyword_argument="order", config=config, persistence_store=dynamodb)
def process_order(order: Order):
return f"processed order {order.order_id}"
def lambda_handler(event, context):
config.register_lambda_context(context) # see Lambda timeouts section
order_item = OrderItem(sku="fake", description="sample")
order = Order(item=order_item, order_id="fake-id")
# `order` parameter must be called as a keyword argument to work
process_order(order=order)
```
???+ tip "Tip: Dealing with always changing payloads"
When dealing with a more elaborate payload, where parts of the payload always change, you should use event_key_jmespath
parameter.
Use IdempotencyConfig
to instruct the idempotent decorator to only use a portion of your payload to verify whether a request is idempotent, and therefore it should not be retried.
Payment scenario
In this example, we have a Lambda handler that creates a payment for a user subscribing to a product. We want to ensure that we don't accidentally charge our customer by subscribing them more than once.
Imagine the function executes successfully, but the client never receives the response due to a connection issue. It is safe to retry in this instance, as the idempotent decorator will return a previously saved response.
???+ warning "Warning: Idempotency for JSON payloads"
The payload extracted by the event_key_jmespath
is treated as a string by default, so will be sensitive to differences in whitespace even when the JSON payload itself is identical.
To alter this behaviour, we can use the [JMESPath built-in function](jmespath_functions.md#powertools_json-function) `powertools_json()` to treat the payload as a JSON object (dict) rather than a string.
=== "payment.py"
```python hl_lines="2-4 10 12 15 20"
import json
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="IdempotencyTable")
# Treat everything under the "body" key
# in the event json object as our payload
config = IdempotencyConfig(event_key_jmespath="powertools_json(body)")
@idempotent(config=config, persistence_store=persistence_layer)
def handler(event, context):
body = json.loads(event['body'])
payment = create_subscription_payment(
user=body['user'],
product=body['product_id']
)
...
return {
"payment_id": payment.id,
"message": "success",
"statusCode": 200
}
```
=== "Example event"
```json hl_lines="28"
{
"version":"2.0",
"routeKey":"ANY /createpayment",
"rawPath":"/createpayment",
"rawQueryString":"",
"headers": {
"Header1": "value1",
"Header2": "value2"
},
"requestContext":{
"accountId":"123456789012",
"apiId":"api-id",
"domainName":"id.execute-api.us-east-1.amazonaws.com",
"domainPrefix":"id",
"http":{
"method":"POST",
"path":"/createpayment",
"protocol":"HTTP/1.1",
"sourceIp":"ip",
"userAgent":"agent"
},
"requestId":"id",
"routeKey":"ANY /createpayment",
"stage":"$default",
"time":"10/Feb/2021:13:40:43 +0000",
"timeEpoch":1612964443723
},
"body":"{\"user\":\"xyz\",\"product_id\":\"123456789\"}",
"isBase64Encoded":false
}
```
This sequence diagram shows an example flow of what happens in the payment scenario:
```mermaid sequenceDiagram participant Client participant Lambda participant Persistence Layer alt initial request Client->>Lambda: Invoke (event) Lambda->>Persistence Layer: Get or set (id=event.search(payload)) activate Persistence Layer Note right of Persistence Layer: Locked to prevent concurrentinvocations with
the same payload. Lambda-->>Lambda: Call handler (event) Lambda->>Persistence Layer: Update record with result deactivate Persistence Layer Persistence Layer-->>Persistence Layer: Update record with result Lambda-->>Client: Response sent to client else retried request Client->>Lambda: Invoke (event) Lambda->>Persistence Layer: Get or set (id=event.search(payload)) Persistence Layer-->>Lambda: Already exists in persistence layer. Return result Lambda-->>Client: Response sent to client end ``` Idempotent sequence
The client was successful in receiving the result after the retry. Since the Lambda handler was only executed once, our customer hasn't been charged twice.
???+ note Bear in mind that the entire Lambda handler is treated as a single idempotent operation. If your Lambda handler can cause multiple side effects, consider splitting it into separate functions.
???+ note This is automatically done when you decorate your Lambda handler with @idempotent decorator.
To prevent against extended failed retries when a Lambda function times out, Powertools calculates and includes the remaining invocation available time as part of the idempotency record.
???+ example
If a second invocation happens after this timestamp, and the record is marked as INPROGRESS
, we will execute the invocation again as if it was in the EXPIRED
state (e.g, expire_seconds
field elapsed).
This means that if an invocation expired during execution, it will be quickly executed again on the next retry.
???+ important
If you are only using the @idempotent_function decorator to guard isolated parts of your code, you must use register_lambda_context
available in the idempotency config object to benefit from this protection.
Here is an example on how you register the Lambda context in your handler:
from aws_lambda_powertools.utilities.data_classes.sqs_event import SQSRecord
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, idempotent_function
)
persistence_layer = DynamoDBPersistenceLayer(table_name="...")
config = IdempotencyConfig()
@idempotent_function(data_keyword_argument="record", persistence_store=persistence_layer, config=config)
def record_handler(record: SQSRecord):
return {"message": record["body"]}
def lambda_handler(event, context):
config.register_lambda_context(context)
return record_handler(event)
This sequence diagram shows an example flow of what happens if a Lambda function times out:
```mermaid sequenceDiagram participant Client participant Lambda participant Persistence Layer alt initial request Client->>Lambda: Invoke (event) Lambda->>Persistence Layer: Get or set (id=event.search(payload)) activate Persistence Layer Note right of Persistence Layer: Locked to prevent concurrentinvocations with
the same payload. Note over Lambda: Time out Lambda--xLambda: Call handler (event) Lambda-->>Client: Return error response deactivate Persistence Layer else concurrent request before timeout Client->>Lambda: Invoke (event) Lambda->>Persistence Layer: Get or set (id=event.search(payload)) Persistence Layer-->>Lambda: Request already INPROGRESS Lambda--xClient: Return IdempotencyAlreadyInProgressError else retry after Lambda timeout Client->>Lambda: Invoke (event) Lambda->>Persistence Layer: Get or set (id=event.search(payload)) activate Persistence Layer Note right of Persistence Layer: Locked to prevent concurrent
invocations with
the same payload. Lambda-->>Lambda: Call handler (event) Lambda->>Persistence Layer: Update record with result deactivate Persistence Layer Persistence Layer-->>Persistence Layer: Update record with result Lambda-->>Client: Response sent to client end ``` Idempotent sequence for Lambda timeouts
If you are using the idempotent
decorator on your Lambda handler, any unhandled exceptions that are raised during the code execution will cause the record in the persistence layer to be deleted.
This means that new invocations will execute your code again despite having the same payload. If you don't want the record to be deleted, you need to catch exceptions within the idempotent function and return a successful response.
Lambda invocations with the same
payload running concurrently. Lambda--xLambda: Call handler (event).
Raises exception Lambda->>Persistence Layer: Delete record (id=event.search(payload)) deactivate Persistence Layer Lambda-->>Client: Return error response ``` Idempotent sequence exception
If you are using idempotent_function
, any unhandled exceptions that are raised inside the decorated function will cause the record in the persistence layer to be deleted, and allow the function to be executed again if retried.
If an Exception is raised outside the scope of the decorated function and after your function has been called, the persistent record will not be affected. In this case, idempotency will be maintained for your decorated function. Example:
def lambda_handler(event, context):
# If an exception is raised here, no idempotent record will ever get created as the
# idempotent function does not get called
do_some_stuff()
result = call_external_service(data={"user": "user1", "id": 5})
# This exception will not cause the idempotent record to be deleted, since it
# happens after the decorated function has been successfully called
raise Exception
@idempotent_function(data_keyword_argument="data", config=config, persistence_store=dynamodb)
def call_external_service(data: dict, **kwargs):
result = requests.post('http://example.com', json={"user": data['user'], "transaction_id": data['id']}
return result.json()
???+ warning
We will raise IdempotencyPersistenceLayerError
if any of the calls to the persistence layer fail unexpectedly.
As this happens outside the scope of your decorated function, you are not able to catch it if you're using the `idempotent` decorator on your Lambda handler.
This persistence layer is built-in, and you can either use an existing DynamoDB table or create a new one dedicated for idempotency state (recommended).
from aws_lambda_powertools.utilities.idempotency import DynamoDBPersistenceLayer
persistence_layer = DynamoDBPersistenceLayer(
table_name="IdempotencyTable",
key_attr="idempotency_key",
expiry_attr="expires_at",
in_progress_expiry_attr="in_progress_expires_at",
status_attr="current_status",
data_attr="result_data",
validation_key_attr="validation_key",
)
When using DynamoDB as a persistence layer, you can alter the attribute names by passing these parameters when initializing the persistence layer:
Parameter | Required | Default | Description |
---|---|---|---|
table_name | ✔️ | Table name to store state | |
key_attr | id |
Partition key of the table. Hashed representation of the payload (unless sort_key_attr is specified) | |
expiry_attr | expiration |
Unix timestamp of when record expires | |
in_progress_expiry_attr | in_progress_expiration |
Unix timestamp of when record expires while in progress (in case of the invocation times out) | |
status_attr | status |
Stores status of the lambda execution during and after invocation | |
data_attr | data |
Stores results of successfully executed Lambda handlers | |
validation_key_attr | validation |
Hashed representation of the parts of the event used for validation | |
sort_key_attr | Sort key of the table (if table is configured with a sort key). | ||
static_pk_value | idempotency#{LAMBDA_FUNCTION_NAME} |
Static value to use as the partition key. Only used when sort_key_attr is set. |
Idempotent decorator can be further configured with IdempotencyConfig
as seen in the previous example. These are the available options for further configuration
Parameter | Default | Description |
---|---|---|
event_key_jmespath | "" |
JMESPath expression to extract the idempotency key from the event record using built-in functions |
payload_validation_jmespath | "" |
JMESPath expression to validate whether certain parameters have changed in the event while the event payload |
raise_on_no_idempotency_key | False |
Raise exception if no idempotency key was found in the request |
expires_after_seconds | 3600 | The number of seconds to wait before a record is expired |
use_local_cache | False |
Whether to locally cache idempotency results |
local_cache_max_items | 256 | Max number of items to store in local cache |
hash_function | md5 |
Function to use for calculating hashes, as provided by hashlib in the standard library. |
This utility will raise an IdempotencyAlreadyInProgressError
exception if you receive multiple invocations with the same payload while the first invocation hasn't completed yet.
???+ info
If you receive IdempotencyAlreadyInProgressError
, you can safely retry the operation.
This is a locking mechanism for correctness. Since we don't know the result from the first invocation yet, we can't safely allow another concurrent execution.
By default, in-memory local caching is disabled, since we don't know how much memory you consume per invocation compared to the maximum configured in your Lambda function.
???+ note "Note: This in-memory cache is local to each Lambda execution environment" This means it will be effective in cases where your function's concurrency is low in comparison to the number of "retry" invocations with the same payload, because cache might be empty.
You can enable in-memory caching with the use_local_cache
parameter:
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="IdempotencyTable")
config = IdempotencyConfig(
event_key_jmespath="body",
use_local_cache=True,
)
@idempotent(config=config, persistence_store=persistence_layer)
def handler(event, context):
...
When enabled, the default is to cache a maximum of 256 records in each Lambda execution environment - You can change it with the local_cache_max_items
parameter.
???+ note By default, we expire idempotency records after an hour (3600 seconds).
In most cases, it is not desirable to store the idempotency records forever. Rather, you want to guarantee that the same payload won't be executed within a period of time.
You can change this window with the expires_after_seconds
parameter:
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="IdempotencyTable")
config = IdempotencyConfig(
event_key_jmespath="body",
expires_after_seconds=5*60, # 5 minutes
)
@idempotent(config=config, persistence_store=persistence_layer)
def handler(event, context):
...
This will mark any records older than 5 minutes as expired, and the lambda handler will be executed as normal if it is invoked with a matching payload.
???+ note "Note: DynamoDB time-to-live field"
This utility uses expiration
as the TTL field in DynamoDB, as demonstrated in the SAM example earlier.
???+ question "Question: What if your function is invoked with the same payload except some outer parameters have changed?" Example: A payment transaction for a given productID was requested twice for the same customer, however the amount to be paid has changed in the second transaction.
By default, we will return the same result as it returned before, however in this instance it may be misleading; we provide a fail fast payload validation to address this edge case.
With payload_validation_jmespath
, you can provide an additional JMESPath expression to specify which part of the event body should be validated against previous idempotent invocations
=== "app.py"
```python hl_lines="7 11 18 25"
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
config = IdempotencyConfig(
event_key_jmespath="[userDetail, productId]",
payload_validation_jmespath="amount"
)
persistence_layer = DynamoDBPersistenceLayer(table_name="IdempotencyTable")
@idempotent(config=config, persistence_store=persistence_layer)
def handler(event, context):
# Creating a subscription payment is a side
# effect of calling this function!
payment = create_subscription_payment(
user=event['userDetail']['username'],
product=event['product_id'],
amount=event['amount']
)
...
return {
"message": "success",
"statusCode": 200,
"payment_id": payment.id,
"amount": payment.amount
}
```
=== "Example Event 1"
```json hl_lines="8"
{
"userDetail": {
"username": "User1",
"user_email": "[email protected]"
},
"productId": 1500,
"charge_type": "subscription",
"amount": 500
}
```
=== "Example Event 2"
```json hl_lines="8"
{
"userDetail": {
"username": "User1",
"user_email": "[email protected]"
},
"productId": 1500,
"charge_type": "subscription",
"amount": 1
}
```
In this example, the userDetail
and productId
keys are used as the payload to generate the idempotency key, as per event_key_jmespath
parameter.
???+ note
If we try to send the same request but with a different amount, we will raise IdempotencyValidationError
.
Without payload validation, we would have returned the same result as we did for the initial request. Since we're also returning an amount in the response, this could be quite confusing for the client.
By using payload_validation_jmespath="amount"
, we prevent this potentially confusing behavior and instead raise an Exception.
If you want to enforce that an idempotency key is required, you can set raise_on_no_idempotency_key
to True
.
This means that we will raise IdempotencyKeyError
if the evaluation of event_key_jmespath
is None
.
=== "app.py"
```python hl_lines="9-10 13"
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="IdempotencyTable")
# Requires "user"."uid" and "order_id" to be present
config = IdempotencyConfig(
event_key_jmespath="[user.uid, order_id]",
raise_on_no_idempotency_key=True,
)
@idempotent(config=config, persistence_store=persistence_layer)
def handler(event, context):
pass
```
=== "Success Event"
```json hl_lines="3 6"
{
"user": {
"uid": "BB0D045C-8878-40C8-889E-38B3CB0A61B1",
"name": "Foo"
},
"order_id": 10000
}
```
=== "Failure Event"
Notice that `order_id` is now accidentally within `user` key
```json hl_lines="3 5"
{
"user": {
"uid": "DE0D000E-1234-10D1-991E-EAC1DD1D52C8",
"name": "Joe Bloggs",
"order_id": 10000
},
}
```
The boto_config
and boto3_session
parameters enable you to pass in a custom botocore config object or a custom boto3 session when constructing the persistence store.
=== "Custom session"
```python hl_lines="1 6 9 14"
import boto3
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
boto3_session = boto3.session.Session()
persistence_layer = DynamoDBPersistenceLayer(
table_name="IdempotencyTable",
boto3_session=boto3_session
)
config = IdempotencyConfig(event_key_jmespath="body")
@idempotent(config=config, persistence_store=persistence_layer)
def handler(event, context):
...
```
=== "Custom config"
```python hl_lines="1 7 10"
from botocore.config import Config
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
config = IdempotencyConfig(event_key_jmespath="body")
boto_config = Config()
persistence_layer = DynamoDBPersistenceLayer(
table_name="IdempotencyTable",
boto_config=boto_config
)
@idempotent(config=config, persistence_store=persistence_layer)
def handler(event, context):
...
```
When using a composite primary key table (hash+range key), use sort_key_attr
parameter when initializing your persistence layer.
With this setting, we will save the idempotency key in the sort key instead of the primary key. By default, the primary key will now be set to idempotency#{LAMBDA_FUNCTION_NAME}
.
You can optionally set a static value for the partition key using the static_pk_value
parameter.
from aws_lambda_powertools.utilities.idempotency import DynamoDBPersistenceLayer, idempotent
persistence_layer = DynamoDBPersistenceLayer(
table_name="IdempotencyTable",
sort_key_attr='sort_key')
@idempotent(persistence_store=persistence_layer)
def handler(event, context):
return {"message": "success": "id": event['body']['id]}
The example function above would cause data to be stored in DynamoDB like this:
id | sort_key | expiration | status | data |
---|---|---|---|---|
idempotency#MyLambdaFunction | 1e956ef7da78d0cb890be999aecc0c9e | 1636549553 | COMPLETED | {"id": 12391, "message": "success"} |
idempotency#MyLambdaFunction | 2b2cdb5f86361e97b4383087c1ffdf27 | 1636549571 | COMPLETED | {"id": 527212, "message": "success"} |
idempotency#MyLambdaFunction | f091d2527ad1c78f05d54cc3f363be80 | 1636549585 | IN_PROGRESS |
This utility provides an abstract base class (ABC), so that you can implement your choice of persistent storage layer.
You can inherit from the BasePersistenceLayer
class and implement the abstract methods _get_record
, _put_record
,
_update_record
and _delete_record
.
import datetime
import logging
from typing import Any, Dict, Optional
import boto3
from botocore.config import Config
from aws_lambda_powertools.utilities.idempotency import BasePersistenceLayer
from aws_lambda_powertools.utilities.idempotency.exceptions import (
IdempotencyItemAlreadyExistsError,
IdempotencyItemNotFoundError,
)
from aws_lambda_powertools.utilities.idempotency.persistence.base import DataRecord
logger = logging.getLogger(__name__)
class DynamoDBPersistenceLayer(BasePersistenceLayer):
def __init__(
self,
table_name: str,
key_attr: str = "id",
expiry_attr: str = "expiration",
status_attr: str = "status",
data_attr: str = "data",
validation_key_attr: str = "validation",
boto_config: Optional[Config] = None,
boto3_session: Optional[boto3.session.Session] = None,
):
boto_config = boto_config or Config()
session = boto3_session or boto3.session.Session()
self._ddb_resource = session.resource("dynamodb", config=boto_config)
self.table_name = table_name
self.table = self._ddb_resource.Table(self.table_name)
self.key_attr = key_attr
self.expiry_attr = expiry_attr
self.status_attr = status_attr
self.data_attr = data_attr
self.validation_key_attr = validation_key_attr
super(DynamoDBPersistenceLayer, self).__init__()
def _item_to_data_record(self, item: Dict[str, Any]) -> DataRecord:
"""
Translate raw item records from DynamoDB to DataRecord
Parameters
----------
item: Dict[str, Union[str, int]]
Item format from dynamodb response
Returns
-------
DataRecord
representation of item
"""
return DataRecord(
idempotency_key=item[self.key_attr],
status=item[self.status_attr],
expiry_timestamp=item[self.expiry_attr],
response_data=item.get(self.data_attr),
payload_hash=item.get(self.validation_key_attr),
)
def _get_record(self, idempotency_key) -> DataRecord:
response = self.table.get_item(Key={self.key_attr: idempotency_key}, ConsistentRead=True)
try:
item = response["Item"]
except KeyError:
raise IdempotencyItemNotFoundError
return self._item_to_data_record(item)
def _put_record(self, data_record: DataRecord) -> None:
item = {
self.key_attr: data_record.idempotency_key,
self.expiry_attr: data_record.expiry_timestamp,
self.status_attr: data_record.status,
}
if self.payload_validation_enabled:
item[self.validation_key_attr] = data_record.payload_hash
now = datetime.datetime.now()
try:
logger.debug(f"Putting record for idempotency key: {data_record.idempotency_key}")
self.table.put_item(
Item=item,
ConditionExpression=f"attribute_not_exists({self.key_attr}) OR {self.expiry_attr} < :now",
ExpressionAttributeValues={":now": int(now.timestamp())},
)
except self._ddb_resource.meta.client.exceptions.ConditionalCheckFailedException:
logger.debug(f"Failed to put record for already existing idempotency key: {data_record.idempotency_key}")
raise IdempotencyItemAlreadyExistsError
def _update_record(self, data_record: DataRecord):
logger.debug(f"Updating record for idempotency key: {data_record.idempotency_key}")
update_expression = "SET #response_data = :response_data, #expiry = :expiry, #status = :status"
expression_attr_values = {
":expiry": data_record.expiry_timestamp,
":response_data": data_record.response_data,
":status": data_record.status,
}
expression_attr_names = {
"#response_data": self.data_attr,
"#expiry": self.expiry_attr,
"#status": self.status_attr,
}
if self.payload_validation_enabled:
update_expression += ", #validation_key = :validation_key"
expression_attr_values[":validation_key"] = data_record.payload_hash
expression_attr_names["#validation_key"] = self.validation_key_attr
kwargs = {
"Key": {self.key_attr: data_record.idempotency_key},
"UpdateExpression": update_expression,
"ExpressionAttributeValues": expression_attr_values,
"ExpressionAttributeNames": expression_attr_names,
}
self.table.update_item(**kwargs)
def _delete_record(self, data_record: DataRecord) -> None:
logger.debug(f"Deleting record for idempotency key: {data_record.idempotency_key}")
self.table.delete_item(Key={self.key_attr: data_record.idempotency_key},)
???+ danger Pay attention to the documentation for each - you may need to perform additional checks inside these methods to ensure the idempotency guarantees remain intact.
For example, the `_put_record` method needs to raise an exception if a non-expired record already exists in the data store with a matching key.
The idempotency utility can be used with the validator
decorator. Ensure that idempotency is the innermost decorator.
???+ warning If you use an envelope with the validator, the event received by the idempotency utility will be the unwrapped event - not the "raw" event Lambda was invoked with.
Make sure to account for this behaviour, if you set the `event_key_jmespath`.
from aws_lambda_powertools.utilities.validation import validator, envelopes
from aws_lambda_powertools.utilities.idempotency import (
IdempotencyConfig, DynamoDBPersistenceLayer, idempotent
)
config = IdempotencyConfig(event_key_jmespath="[message, username]")
persistence_layer = DynamoDBPersistenceLayer(table_name="IdempotencyTable")
@validator(envelope=envelopes.API_GATEWAY_HTTP)
@idempotent(config=config, persistence_store=persistence_layer)
def lambda_handler(event, context):
cause_some_side_effects(event['username')
return {"message": event['message'], "statusCode": 200}
???+ tip "Tip: JMESPath Powertools functions are also available"
Built-in functions known in the validation utility like powertools_json
, powertools_base64
, powertools_base64_gzip
are also available to use in this utility.
The idempotency utility provides several routes to test your code.
When testing your code, you may wish to disable the idempotency logic altogether and focus on testing your business logic. To do this, you can set the environment variable POWERTOOLS_IDEMPOTENCY_DISABLED
with a truthy value. If you prefer setting this for specific tests, and are using Pytest, you can use monkeypatch fixture:
=== "tests.py"
```python hl_lines="2 3"
def test_idempotent_lambda_handler(monkeypatch):
# Set POWERTOOLS_IDEMPOTENCY_DISABLED before calling decorated functions
monkeypatch.setenv("POWERTOOLS_IDEMPOTENCY_DISABLED", 1)
result = handler()
...
```
=== "app.py"
```python
from aws_lambda_powertools.utilities.idempotency import (
DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="idempotency")
@idempotent(persistence_store=persistence_layer)
def handler(event, context):
print('expensive operation')
return {
"payment_id": 12345,
"message": "success",
"statusCode": 200,
}
```
To test with DynamoDB Local, you can replace the Table
resource used by the persistence layer with one you create inside your tests. This allows you to set the endpoint_url.
=== "tests.py"
```python hl_lines="6 7 8"
import boto3
import app
def test_idempotent_lambda():
# Create our own Table resource using the endpoint for our DynamoDB Local instance
resource = boto3.resource("dynamodb", endpoint_url='http://localhost:8000')
table = resource.Table(app.persistence_layer.table_name)
app.persistence_layer.table = table
result = app.handler({'testkey': 'testvalue'}, {})
assert result['payment_id'] == 12345
```
=== "app.py"
```python
from aws_lambda_powertools.utilities.idempotency import (
DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="idempotency")
@idempotent(persistence_store=persistence_layer)
def handler(event, context):
print('expensive operation')
return {
"payment_id": 12345,
"message": "success",
"statusCode": 200,
}
```
The idempotency utility lazily creates the dynamodb Table which it uses to access DynamoDB. This means it is possible to pass a mocked Table resource, or stub various methods.
=== "tests.py"
```python hl_lines="6 7 8 9"
from unittest.mock import MagicMock
import app
def test_idempotent_lambda():
table = MagicMock()
app.persistence_layer.table = table
result = app.handler({'testkey': 'testvalue'}, {})
table.put_item.assert_called()
...
```
=== "app.py"
```python
from aws_lambda_powertools.utilities.idempotency import (
DynamoDBPersistenceLayer, idempotent
)
persistence_layer = DynamoDBPersistenceLayer(table_name="idempotency")
@idempotent(persistence_store=persistence_layer)
def handler(event, context):
print('expensive operation')
return {
"payment_id": 12345,
"message": "success",
"statusCode": 200,
}
```
If you're interested in a deep dive on how Amazon uses idempotency when building our APIs, check out this article.