A Python 3 microservice library / framework using asyncio
(async / await) with
HTTP, websockets, RabbitMQ / AMQP and AWS SNS+SQS built-in support for event based
messaging and intra-service communication.
Tomodachi is a tiny framework designed to build fast microservices listening on HTTP or communicating over event driven message buses like RabbitMQ, AMQP, AWS (Amazon Web Services) SNS+SQS, etc. It's designed to be extendable to make use of any type of transport layer available.
Tomodachi [ει] means friends β a suitable name for microservices working together. π» π¬ π π« π»
- Getting started / installation: https://tomodachi.dev/docs
- Example code: https://tomodachi.dev/docs/examples
- Endpoint built-ins:
- HTTP endpoints: https://tomodachi.dev/docs/http
- AWS SNS+SQS event messaging: https://tomodachi.dev/docs/aws-sns-sqs
- AMQP messaging (RabbitMQ): https://tomodachi.dev/docs/amqp-rabbitmq
- Scheduled functions and cron: https://tomodachi.dev/docs/scheduled-functions-cron
- Options and configuration parameters: https://tomodachi.dev/docs/options
- FAQ: https://tomodachi.dev/docs/faq
tomodachi
is used to execute service code via command line interface or within
container images.
Usage: tomodachi <command> [options] [arguments] Options: -h, --help Show this help message and exit -v, --version Print tomodachi version --dependency-versions Print versions of dependencies Available commands: --- Command: run Starts service(s) defined in the .py files specified as <service> argument(s) $ tomodachi run <service ...> [-c <config-file ...>] [--production] | --loop [auto|asyncio|uvloop] Event loop implementation [asyncio] | --production Disable restart on file changes | -c, --config <files> Use configuration from JSON files | -l, --log <level>, --log-level <level> Specify log level
This documentation README includes a guide of how to get started with services, what built-in functionality exists in this library, lists of available configuration parameters and a few examples of service code.
Use https://tomodachi.dev/docs for extensive project documentation.
Please follow some of the amazing contributors to tomodachi
and add features that you deem are missing and/or fix
bugs you encounter in the repo. Read more in the contribution guide.
Consider tomodachi as beta software. tomodachi is still an experimental project with an unregular release schedule. The package is not yet available as 1.0.0 and there may be breaking changes between 0.x versions.
First off β installation using poetry
is fully supported and battle-tested (pip
works just as fine)
Install tomodachi
in your preferred way, wether it be poetry
, pip
,
pipenv
, etc. Installing the distribution will give your environment access to the
tomodachi
package for imports as well as a shortcut to the CLI alias, which
later is used to run the microservices you build.
local ~$ pip install tomodachi
> ...
> Installing collected packages: ..., ..., ..., tomodachi
> Successfully installed ... ... ... tomodachi-x.x.xx
local ~$ tomodachi --version
> tomodachi x.xx.xx
Probably goes without saying β services you build, their dependencies, together with runtime utilities like this one, should preferably always be installed and run in isolated environments like Docker containers or virtual environments.
import tomodachi
and create a class that inheritstomodachi.Service
, it can be called anything⦠or justService
to keep it simple.- Add a
name
attribute to the class and give it a string value. Having aname
attribute isn't required, but good practice. - Define an awaitable function in the service class β in this example we'll
use it as an entrypoint to trigger code in the service by decorating it
with one of the available invoker decorators. Note that a service class
must have at least one decorated function available to even be recognized
as a service by
tomodachi run
. - Decide on how to trigger the function β for example using HTTP, pub/sub or on a timed interval, then decorate your function with one of these trigger / subscription decorators, which also invokes what capabilities the service initially has.
Further down you'll find a desciption of how each of the built-in invoker decorators work and which keywords and parameters you can use to change their behaviour.
Note: Publishing and subscribing to events and messages may require user credentials or hosting configuration to be able to access queues and topics.
For simplicity, let's do HTTP:
- On each POST request to
/sheep
, the service will wait for up to one whole second (pretend that it's performing I/O β waiting for response on a slow sheep counting database modification, for example) and then issue a 200 OK with some data. - It's also possible to query the amount of times the POST tasks has run by doing a
GET
request to the same url,/sheep
. - By using
@tomodachi.http
an HTTP server backed byaiohttp
will be started on service start.tomodachi
will act as a middleware to route requests to the correct handlers, upgrade websocket connections and then also gracefully await connections with still executing tasks, when the service is asked to stop β up until a configurable amount of time has passed.
import asyncio
import random
import tomodachi
class Service(tomodachi.Service):
name = "sleepy-sheep-counter"
_sheep_count = 0
@tomodachi.http("POST", r"/sheep")
async def add_to_sheep_count(self, request):
await asyncio.sleep(random.random())
self._sheep_count += 1
return 200, str(self._sheep_count)
@tomodachi.http("GET", r"/sheep")
async def return_sheep_count(self, request):
return 200, str(self._sheep_count)
Run services with:
local ~/code/service$ tomodachi run <path to .py file with service class code>
Beside the currently existing built-in ways of interfacing with a service, it's possible to build additional function decorators to suit the use-cases one may have.
To give a few possible examples / ideas of functionality that could be coded to call functions with data in similar ways:
- Using Redis as a task queue with configurable keys to push or pop onto.
- Subscribing to Kinesis or Kafka event streams and act on the data received.
- An abstraction around otherwise complex functionality or to unify API design.
- As an example to above sentence; GraphQL resolver functionality with built-in tracability and authentication management, with a unified API to application devs.
Of course the different ways can be used within the same class, for example the very common use-case of having a service listening on HTTP while also performing some kind of async pub/sub tasks.
Code for a simple service which would service data over HTTP, pretty similar, but with a few more concepts added.
import tomodachi
class Service(tomodachi.Service):
name = "http-example"
# Request paths are specified as regex for full flexibility
@tomodachi.http("GET", r"/resource/(?P<id>[^/]+?)/?")
async def resource(self, request, id):
# Returning a string value normally means 200 OK
return f"id = {id}"
@tomodachi.http("GET", r"/health")
async def health_check(self, request):
# Return can also be a tuple, dict or even an aiohttp.web.Response
# object for more complex responses - for example if you need to
# send byte data, set your own status code or define own headers
return {
"body": "Healthy",
"status": 200,
}
# Specify custom 404 catch-all response
@tomodachi.http_error(status_code=404)
async def error_404(self, request):
return "error 404"
Example of a service that calls a function when messages are published on an AMQP topic exchange.
import tomodachi
class Service(tomodachi.Service):
name = "amqp-example"
# The "message_envelope" attribute can be set on the service class to build / parse data.
# message_envelope = ...
# A route / topic on which the service will subscribe to via RabbitMQ / AMQP
@tomodachi.amqp("example.topic")
async def example_func(self, message):
# Received message, fordarding the same message as response on another route / topic
await tomodachi.amqp_publish(self, message, routing_key="example.response")
Example of a service using AWS SNS+SQS managed pub/sub messaging. AWS SNS and AWS SQS together
brings managed message queues for microservices, distributed systems, and serverless applications hosted
on AWS. tomodachi
services can customize their enveloping functionality to both unwrap incoming messages
and/or to produce enveloped messages for published events / messages. Pub/sub patterns are great for
scalability in distributed architectures, when for example hosted in Docker on Kubernetes.
import tomodachi
class Service(tomodachi.Service):
name = "aws-example"
# The "message_envelope" attribute can be set on the service class to build / parse data.
# message_envelope = ...
# Using the @tomodachi.aws_sns_sqs decorator to make the service create an AWS SNS topic,
# an AWS SQS queue and to make a subscription from the topic to the queue as well as start
# receive messages from the queue using SQS.ReceiveMessages.
@tomodachi.aws_sns_sqs("example-topic", queue_name="example-queue")
async def example_func(self, message):
# Received message, forwarding the same message as response on another topic
await tomodachi.aws_sns_sqs_publish(self, message, topic="another-example-topic")
There are other examples available with code of how to use services with self-invoking methods called on a specified interval or at specific times / days, as well as additional examples for inter-communication pub/sub between different services on both AMQP or AWS SNS+SQS as shown above. See more at the examples folder.
# cli alias is set up automatically on installation
local ~/code/service$ tomodachi run service.py
# alternatively using the tomodachi.run module
local ~/code/tomodachi$ python -m tomodachi.run service.py
Defaults to output information on stdout.
local ~/code/service$ tomodachi run service.py
>
> ---
> Starting tomodachi services (pid: 1) ...
> * service.py
>
> Current version: tomodachi x.x.xx on Python 3.x.x
> Event loop implementation: asyncio
> Local time: October 16, 2022 - 13:38:01,201509 UTC
> Timestamp in UTC: 2022-10-16T13:38:01.201509Z
>
> File watcher is active - code changes will automatically restart services
> Quit running services with <ctrl+c>
>
> 2022-10-16 13:38:01,234 (services.service): Initializing service "example" [id: <uuid>]
> 2022-10-16 13:38:01,248 (transport.http): Listening [http] on http://127.0.0.1:9700/
> 2022-10-16 13:38:01,248 (services.service): Started service "example" [id: <uuid>]
HTTP service acts like a normal web server.
local ~$ curl -v "http://127.0.0.1:9700/resource/1234"
> HTTP/1.1 200 OK
> Content-Type: text/plain; charset=utf-8
> Server: tomodachi
> Content-Length: 9
> Date: Sun, 16 Oct 2022 13:38:02 GMT
>
> id = 1234
If the a Service instance is needed outside the Service class itself, it can be acquired with tomodachi.get_service
. If multiple Service instances exist within the same event loop, the name of the Service can be used to get the correct one.
import tomodachi
# Get the instance of the active Service.
service = tomodachi.get_service()
# Get the instance of the Service by service name.
service = tomodachi.get_service(service_name)
Stopping a service can be achieved by either sending a SIGINT
<ctrl+c> or SIGTERM
signal to to the tomodachi
Python process, or by invoking the tomodachi.exit()
function, which will initiate the termination processing flow. The tomodachi.exit()
call can additionally take an optional exit code as an argument, which otherwise will default to use exit code 0.
SIGINT
signal (equivalent to using <ctrl+c>)SIGTERM
signaltomodachi.exit()
ortomodachi.exit(exit_code)
The process' exit code can also be altered by changing the value of tomodachi.SERVICE_EXIT_CODE
, however using tomodachi.exit
with an integer argument will override any previous value set to tomodachi.SERVICE_EXIT_CODE
.
All above mentioned ways of initiating the termination flow of the service will perform a graceful shutdown of the service which will try to await open HTTP handlers and await currently running tasks using tomodachi's scheduling functionality as well as await tasks processing messages from queues such as AWS SQS or RabbitMQ.
Some tasks may timeout during termination according to used configuration (see options such as http.termination_grace_period_seconds
) if they are long running tasks. Additionally container handlers may impose additional timeouts for how long termination are allowed to take. If no ongoing tasks are to be awaited and the service lifecycle can be cleanly terminated the shutdown usually happens within milliseconds.
To be able to initialize connections to external resources or to perform graceful shutdown of connections made by a service, there's a few functions a service can specify to hook into lifecycle changes of a service.
Magic function name | When is the function called? | What is suitable to put here |
---|---|---|
_start_service |
Called before invokers / servers have started. | Initialize connections to databases, etc. |
_started_service |
Called after invokers / server have started. | Start reporting or start tasks to run once. |
_stopping_service |
Called on termination signal. | Cancel eventual internal long-running tasks. |
_stop_service |
Called after tasks have gracefully finished. | Close connections to databases, etc. |
Changes to a service settings / configuration (by for example modifying the options
values) should be done in the __init__
function instead of in any of the lifecycle function hooks.
Good practice β in general, make use of the _start_service
(for setting up connections) in addition to the _stop_service
(to close connections) lifecycle hooks. The other hooks may be used for more uncommon use-cases.
Lifecycle functions are defined as class functions and will be called by the tomodachi process on lifecycle changes:
import tomodachi
class Service(tomodachi.Service):
name = "example"
async def _start_service(self):
# The _start_service function is called during initialization,
# before consumers or an eventual HTTP server has started.
# It's suitable to setup or connect to external resources here.
return
async def _started_service(self):
# The _started_service function is called after invoker
# functions have been set up and the service is up and running.
# The service is ready to process messages and requests.
return
async def _stopping_service(self):
# The _stopping_service function is called the moment the
# service is instructed to terminate - usually this happens
# when a termination signal is received by the service.
# This hook can be used to cancel ongoing tasks or similar.
# Note that some tasks may be processing during this time.
return
async def _stop_service(self):
# Finally the _stop_service function is called after HTTP server,
# scheduled functions and consumers have gracefully stopped.
# Previously ongoing tasks have been awaited for completion.
# This is the place to close connections to external services and
# clean up eventual tasks you may have started previously.
return
Exceptions raised in _start_service
or _started_service
will gracefully terminate the service.
A great way to distribute and operate microservices are usually to run them in containers or
even more interestingly, in clusters of compute nodes. Here follows an example of getting a
tomodachi
based service up and running in Docker.
We're building the service' container image using just two small files, the Dockerfile
and
the actual code for the microservice, service.py
. In reality a service would probably not be
quite this small, but as a template to get started.
Dockerfile
FROM python:3.10-bullseye
RUN pip install tomodachi
RUN mkdir /app
WORKDIR /app
COPY service.py .
ENV PYTHONUNBUFFERED=1
CMD ["tomodachi", "run", "service.py", "--production"]
service.py
import json
import tomodachi
class Service(tomodachi.Service):
name = "example"
options = tomodachi.Options(
http=tomodachi.Options.HTTP(
port=80,
content_type="application/json; charset=utf-8",
),
)
_healthy = True
@tomodachi.http("GET", r"/")
async def index_endpoint(self, request):
# tomodachi.get_execution_context() can be used for
# debugging purposes or to add additional service context
# in logs or alerts.
execution_context = tomodachi.get_execution_context()
return json.dumps({
"data": "hello world!",
"execution_context": execution_context,
})
@tomodachi.http("GET", r"/health/?", ignore_logging=True)
async def health_check(self, request):
if self._healthy:
return 200, json.dumps({"status": "healthy"})
else:
return 503, json.dumps({"status": "not healthy"})
@tomodachi.http_error(status_code=400)
async def error_400(self, request):
return json.dumps({"error": "bad-request"})
@tomodachi.http_error(status_code=404)
async def error_404(self, request):
return json.dumps({"error": "not-found"})
@tomodachi.http_error(status_code=405)
async def error_405(self, request):
return json.dumps({"error": "method-not-allowed"})
local ~/code/service$ docker build . -t tomodachi-microservice
> Sending build context to Docker daemon 9.216kB
> Step 1/7 : FROM python:3.10-bullseye
> 3.10-bullseye: Pulling from library/python
> ...
> ---> 3f7f3ab065d4
> Step 7/7 : CMD ["tomodachi", "run", "service.py", "--production"]
> ---> Running in b8dfa9deb243
> Removing intermediate container b8dfa9deb243
> ---> 8f09a3614da3
> Successfully built 8f09a3614da3
> Successfully tagged tomodachi-microservice:latest
local ~/code/service$ docker run -ti -p 31337:80 tomodachi-microservice
> 2022-10-16 13:38:01,234 (services.service): Initializing service "example" [id: <uuid>]
> 2022-10-16 13:38:01,248 (transport.http): Listening [http] on http://127.0.0.1:80/
> 2022-10-16 13:38:01,248 (services.service): Started service "example" [id: <uuid>]
local ~$ curl http://127.0.0.1:31337/ | jq
> {
> "data": "hello world!",
> "execution_context": {
> "tomodachi_version": "x.x.xx",
> "python_version": "3.x.x",
> "system_platform": "Linux",
> "process_id": 1,
> "init_timestamp": "2022-10-16T13:38:01.201509Z",
> "event_loop": "asyncio",
> "http_enabled": true,
> "http_current_tasks": 1,
> "http_total_tasks": 1,
> "aiohttp_version": "x.x.xx"
> }
> }
local ~$ curl http://127.0.0.1:31337/health -i
> HTTP/1.1 200 OK
> Content-Type: application/json; charset=utf-8
> Server: tomodachi
> Content-Length: 21
> Date: Sun, 16 Oct 2022 13:40:44 GMT
>
> {"status": "healthy"}
local ~$ curl http://127.0.0.1:31337/no-route -i
> HTTP/1.1 404 Not Found
> Content-Type: application/json; charset=utf-8
> Server: tomodachi
> Content-Length: 22
> Date: Sun, 16 Oct 2022 13:41:18 GMT
>
> {"error": "not-found"}
It's actually as easy as that to get something spinning. The hard part is usually to figure out (or decide) what to build next.
Other popular ways of running microservices are of course to use them as serverless
functions, with an ability of scaling to zero (Lambda, Cloud Functions, Knative, etc.
may come to mind). Currently tomodachi
works best in a container setup and until
proper serverless supporting execution context is available in the library, it
should be adviced to hold off and use other tech for those kinds of deployments.
As shown, there's different ways to trigger your microservice function in which the most common ones are either directly via HTTP or via event based messaging (for example AMQP or AWS SNS+SQS). Here's a list of the currently available built-ins you may use to decorate your service functions.
@tomodachi.http(method, url, ignore_logging=[200])
- Usage:
- Sets up an HTTP endpoint for the specified
method
(GET
,PUT
,POST
,DELETE
) on the regexpurl
. Optionally specifyignore_logging
as a dict or tuple containing the status codes you do not wish to log the access of. Can also be set toTrue
to ignore everything except status code 500.
@tomodachi.http_static(path, url)
- Usage:
- Sets up an HTTP endpoint for static content available as
GET
/HEAD
from thepath
on disk on the base regexpurl
.
@tomodachi.websocket(url)
- Usage:
- Sets up a websocket endpoint on the regexp
url
. The invoked function is called upon websocket connection and should return a two value tuple containing callables for a function receiving frames (first callable) and a function called on websocket close (second callable). The passed arguments to the function beside the class object is first thewebsocket
response connection which can be used to send frames to the client, and optionally also therequest
object.
@tomodachi.http_error(status_code)
- Usage:
- A function which will be called if the HTTP request would result in a 4XX
status_code
. You may use this for example to set up a custom handler on "404 Not Found" or "403 Forbidden" responses.
@tomodachi.aws_sns_sqs(
topic=None,
competing=True,
queue_name=None,
filter_policy=FILTER_POLICY_DEFAULT,
visibility_timeout=VISIBILITY_TIMEOUT_DEFAULT,
dead_letter_queue_name=DEAD_LETTER_QUEUE_DEFAULT,
max_receive_count=MAX_RECEIVE_COUNT_DEFAULT,
fifo=False,
**kwargs,
)
- Usage:
This would set up an AWS SQS queue, subscribing to messages on the AWS SNS topic
topic
(if atopic
is specified), whereafter it will start consuming messages from the queue.The
competing
value is used when the same queue name should be used for several services of the same type and thus "compete" for who should consume the message. Sincetomodachi
version 0.19.x this value has a changed default value and will now default toTrue
as this is the most likely use-case for pub/sub in distributed architectures.Unless
queue_name
is specified an auto generated queue name will be used. Additional prefixes to bothtopic
andqueue_name
can be assigned by setting theoptions.aws_sns_sqs.topic_prefix
andoptions.aws_sns_sqs.queue_name_prefix
dict values.AWS supports two types of queues and topics, namely
standard
andFIFO
. The major difference between these is that the latter guarantees correct ordering and at-most-once delivery. By default, tomodachi createsstandard
queues and topics. To create them asFIFO
instead, setfifo
toTrue
.The
filter_policy
value of specified as a keyword argument will be applied on the SNS subscription (for the specified topic and queue) as the"FilterPolicy
attribute. This will apply a filter on SNS messages using the chosen "message attributes" and/or their values specified in the filter. Make note that the filter policy dict structure differs somewhat from the actual message attributes, as values to the keys in the filter policy must be a dict (object) or list (array). Example: A filter policy value of{"event": ["order_paid"], "currency": ["EUR", "USD"]}
would set up the SNS subscription to receive messages on the topic only where the message attribute"event"
is"order_paid"
and the"currency"
value is either"EUR"
or"USD"
.If
filter_policy
is not specified as an argument (default), the queue will receive messages on the topic as per already specified if using an existing subscription, or receive all messages on the topic if a new subscription is set up (default). Changing thefilter_policy
on an existing subscription may take several minutes to propagate. Read more about the filter policy format on AWS. https://docs.aws.amazon.com/sns/latest/dg/sns-subscription-filter-policies.htmlRelated to the above mentioned filter policy, the
aws_sns_sqs_publish
function (which is used for publishing messages) can specify "message attributes" using themessage_attributes
keyword argument. Values should be specified as a simpledict
with keys and values. Example:{"event": "order_paid", "paid_amount": 100, "currency": "EUR"}
.The
visibility_timeout
value will set the queue attributeVisibilityTimeout
if specified. To use already defined values for a queue (default), do not supply any value to thevisibility_timeout
keyword βtomodachi
will then not modify the visibility timeout.Similarly the values for
dead_letter_queue_name
in tandem with themax_receive_count
value will modify the queue attributeRedrivePolicy
in regards to the potential use of a dead-letter queue to which messages will be delivered if they have been picked up by consumersmax_receive_count
number of times but haven't been deleted from the queue. The value fordead_letter_queue_name
should either be a ARN for an SQS queue, which in that case requires the queue to have been created in advance, or a alphanumeric queue name, which in that case will be set up similar to the queue name you specify in regards to prefixes, etc. Bothdead_letter_queue_name
andmax_receive_count
needs to be specified together, as they both affect the redrive policy. To disable the use of DLQ, use aNone
value for thedead_letter_queue_name
keyword and theRedrivePolicy
will be removed from the queue attribute. To use the already defined values for a queue, do not supply any values to the keyword arguments in the decorator.tomodachi
will then not modify the queue attribute and leave it as is.Depending on the service
message_envelope
(previously namedmessage_protocol
) attribute if used, parts of the enveloped data would be distributed to different keyword arguments of the decorated function. It's usually safe to just usedata
as an argument. You can also specify a specificmessage_envelope
value as a keyword argument to the decorator for specifying a specific enveloping method to use instead of the global one set for the service.If you're utilizing
from tomodachi.envelope import ProtobufBase
and usingProtobufBase
as the specified servicemessage_envelope
you may also pass a keyword argumentproto_class
into the decorator, describing the protobuf (Protocol Buffers) generated Python class to use for decoding incoming messages. Custom enveloping classes can be built to fit your existing architecture or for even more control of tracing and shared metadata between services.Encryption at rest for AWS SNS and/or AWS SQS can optionally be configured by specifying the KMS key alias or KMS key id as tomodachi service options
options.aws_sns_sqs.sns_kms_master_key_id
(to configure encryption at rest on the SNS topics for which the tomodachi service handles the SNS -> SQS subscriptions) andoptions.aws_sns_sqs.sqs_kms_master_key_id
(to configure encryption at rest for the SQS queues which the service is consuming). Note that an option value set to an empty string (""
) orFalse
will unset the KMS master key id and thus disable encryption at rest. If instead an option is completely unset or set toNone
value no changes will be done to the KMS related attributes on an existing topic or queue. It's generally not advised to change the KMS master key id/alias values for resources currently in use. If it's expected that the services themselves, via their IAM credentials or assumed role, are responsible for creating queues and topics, these options could be desirable to use. Do not use these options if you instead are using IaC tooling to handle the topics, queues and subscriptions or that they for example are created / updated as a part of deployments. Read more at https://docs.aws.amazon.com/AWSSimpleQueueService/latest/SQSDeveloperGuide/sqs-server-side-encryption.html and https://docs.aws.amazon.com/sns/latest/dg/sns-server-side-encryption.html#sse-key-terms.
@tomodachi.amqp(
routing_key,
exchange_name="amq.topic",
competing=True,
queue_name=None,
**kwargs,
)
- Usage:
Sets up the method to be called whenever a AMQP / RabbitMQ message is received for the specified
routing_key
. By default the'amq.topic'
topic exchange would be used, it may also be overridden by setting theoptions.amqp.exchange_name
dict value on the service class.The
competing
value is used when the same queue name should be used for several services of the same type and thus "compete" for who should consume the message. Sincetomodachi
version 0.19.x this value has a changed default value and will now default toTrue
as this is the most likely use-case for pub/sub in distributed architectures.Unless
queue_name
is specified an auto generated queue name will be used. Additional prefixes to bothrouting_key
andqueue_name
can be assigned by setting theoptions.amqp.routing_key_prefix
andoptions.amqp.queue_name_prefix
dict values.Depending on the service
message_envelope
(previously namedmessage_protocol
) attribute if used, parts of the enveloped data would be distributed to different keyword arguments of the decorated function. It's usually safe to just usedata
as an argument. You can also specify a specificmessage_envelope
value as a keyword argument to the decorator for specifying a specific enveloping method to use instead of the global one set for the service.If you're utilizing
from tomodachi.envelope import ProtobufBase
and usingProtobufBase
as the specified servicemessage_envelope
you may also pass a keyword argumentproto_class
into the decorator, describing the protobuf (Protocol Buffers) generated Python class to use for decoding incoming messages. Custom enveloping classes can be built to fit your existing architecture or for even more control of tracing and shared metadata between services.
@tomodachi.schedule(
interval=None,
timestamp=None,
timezone=None,
immediately=False,
)
- Usage:
A scheduled function invoked on either a specified
interval
(you may use the popular cron notation as a str for fine-grained interval or specify an integer value of seconds) or a specifictimestamp
. Thetimezone
will default to your local time unless explicitly stated.When using an integer
interval
you may also specify wether the function should be calledimmediately
on service start or wait the fullinterval
seconds before its first invokation.
@tomodachi.heartbeat
- Usage:
- A function which will be invoked every second.
@tomodachi.minutely
@tomodachi.hourly
@tomodachi.daily
@tomodachi.monthly
- Usage:
- A scheduled function which will be invoked once every minute / hour / day / month.
A word on scheduled tasks in distributed contexts: What is your use-case for scheduling function triggers or functions that trigger on an interval. These types of scheduling may not be optimal in clusters with many pods in the same replication set, as all the services running the same code will very likely execute at the same timestamp / interval (which in same cases may correlated with exactly when they were last deployed). As such these functions are quite naive and should only be used with some care, so that it triggering the functions several times doesn't incur unnecessary costs or come as a bad surprise if the functions aren't completely idempotent. To perform a task on a specific timestamp or on an interval where only one of the available services of the same type in a cluster should trigger is a common thing to solve and there are several solutions to pick from., some kind of distributed consensus needs to be reached. Tooling exists, but what you need may differ depending on your use-case. There's algorithms for distributed consensus and leader election, Paxos or Raft, that luckily have already been implemented to solutions like the strongly consistent and distributed key-value stores etcd and TiKV. Even primitive solutions such as Redis SETNX
commands would work, but could be costly or hard to manage access levels around. If you're on k8s there's even a simple "leader election" API available that just creates a 15 seconds lease. Solutions are many and if you are in need, go hunting and find one that suits your use-case, there's probably tooling and libraries available to call it from your service functions.
Implementing proper consensus mechanisms and in turn leader election can be complicated. In distributed environments the architecture around these solutions needs to account for leases, decision making when consensus was not reached, how to handle crashed executors, quick recovery on master node(s) disruptions, etc.
To extend the functionality by building your own trigger decorators for your endpoints, studying the built-in invoker classes should the first step of action. All invoker classes should extend the class for a common developer experience: tomodachi.invoker.Invoker
.
A tomodachi.Service
extended service class may specify a class attribute named options
(as a tomodachi.Options
object) for additional configuration.
import json
import tomodachi
class Service(tomodachi.Service):
name = "http-example"
options = tomodachi.Options(
http=tomodachi.Options.HTTP(
port=80,
content_type="application/json; charset=utf-8",
real_ip_from=[
"127.0.0.1/32",
"10.0.0.0/8",
"172.16.0.0/12",
"192.168.0.0/16",
],
keepalive_timeout=5,
max_keepalive_requests=20,
),
watcher=tomodachi.Options.Watcher(
ignored_dirs=["node_modules"],
),
)
@tomodachi.http("GET", r"/health")
async def health_check(self, request):
return 200, json.dumps({"status": "healthy"})
# Specify custom 404 catch-all response
@tomodachi.http_error(status_code=404)
async def error_404(self, request):
return json.dumps({"error": "not-found"})
ββ HTTP server parameters ββ options["http"][key] |
_____________________________ |
|
Configuration key | Description | Default value |
http.port |
TCP port (integer value) to listen for incoming connections. | 9700 |
http.host |
Network interface to bind TCP server to. "0.0.0.0" will bind to all IPv4 interfaces. None or "" will assume all network interfaces. |
"0.0.0.0" |
http.reuse_port |
If set to True (which is also the default value on Linux) the HTTP server will bind to the port using the socket option SO_REUSEPORT . This will allow several processes to bind to the same port, which could be useful when running services via a process manager such as supervisord or when it's desired to run several processes of a service to utilize additional CPU cores, etc. Note that the reuse_port option cannot be used on non-Linux platforms. |
True on Linux, otherwise False |
http.keepalive_timeout |
Enables connections to use keep-alive if set to an integer value over 0 . Number of seconds to keep idle incoming connections open. |
0 |
http.max_keepalive_requests |
An optional number (int) of requests which is allowed for a keep-alive connection. After the specified number of requests has been done, the connection will be closed. An option value of 0 or None (default) will allow any number of requests over an open keep-alive connection. |
None |
http.max_keepalive_time |
An optional maximum time in seconds (int) for which keep-alive connections are kept open. If a keep-alive connection has been kept open for more than http.max_keepalive_time seconds, the following request will be closed upon returning a response. The feature is not used by default and won't be used if the value is 0 or None . A keep-alive connection may otherwise be open unless inactive for more than the keep-alive timeout. |
None |
http.client_max_size |
The clientβs maximum size in a request, as an integer, in bytes. | (1024 ** 2) * 100 |
http.termination_grace_period_seconds |
The number of seconds to wait for functions called via HTTP to gracefully finish execution before terminating the service, for example if service received a SIGINT or SIGTERM signal while requests were still awaiting response results. | 30 |
http.real_ip_header |
Header to read the value of the client's real IP address from if service operates behind a reverse proxy. Only used if http.real_ip_from is set and the proxy's IP correlates with the value from http.real_ip_from . |
"X-Forwarded-For" |
http.real_ip_from |
IP address(es) or IP subnet(s) / CIDR. Allows the http.real_ip_header header value to be used as client's IP address if connecting reverse proxy's IP equals a value in the list or is within a specified subnet. For example ["127.0.0.1/32", "10.0.0.0/8", "172.16.0.0/12", "192.168.0.0/16"] would permit header to be used if closest reverse proxy is "127.0.0.1" or within the three common private network IP address ranges. |
[] |
http.content_type |
Default content-type header to use if not specified in the response. | "text/plain; charset=utf-8" |
http.access_log |
If set to the default value (boolean) True the HTTP access log will be output to stdout (logger transport.http ). If set to a str value, the access log will additionally also be stored to file using value as filename. |
True |
http.server_header |
"Server" header value in responses. |
"tomodachi" |
Β | ||
ββ Credentials and prefixes for AWS SNS+SQS pub/sub ββ options["aws_sns_sqs"][key] |
||
Configuration key | Description | Default value |
aws_sns_sqs.region_name |
The AWS region to use for SNS+SQS pub/sub API requests. | None |
aws_sns_sqs.aws_access_key_id |
The AWS access key to use for SNS+SQS pub/sub API requests. | None |
aws_sns_sqs.aws_secret_access_key |
The AWS secret to use for SNS+SQS pub/sub API requests. | None |
aws_sns_sqs.topic_prefix |
A prefix to any SNS topics used. Could be good to differentiate between different dev environments. | "" |
aws_sns_sqs.queue_name_prefix |
A prefix to any SQS queue names used. Could be good to differentiate between different dev environments. | "" |
aws_sns_sqs.sns_kms_master_key_id |
If set, will set the KMS key (alias or id) to use for encryption at rest on the SNS topics created by the service or subscribed to by the service. Note that an option value set to an empty string ("" ) or False will unset the KMS master key id and thus disable encryption at rest. If instead an option is completely unset or set to None value no changes will be done to the KMS related attributes on an existing topic. |
None (no changes to KMS settings) |
aws_sns_sqs.sqs_kms_master_key_id |
If set, will set the KMS key (alias or id) to use for encryption at rest on the SQS queues created by the service or for which the service consumes messages on. Note that an option value set to an empty string ("" ) or False will unset the KMS master key id and thus disable encryption at rest. If instead an option is completely unset or set to None value no changes will be done to the KMS related attributes on an existing queue. |
None (no changes to KMS settings) |
aws_sns_sqs.sqs_kms_data_key_reuse_period |
If set, will set the KMS data key reuse period value on the SQS queues created by the service or for which the service consumes messages on. If the option is completely unset or set to None value no change will be done to the KMSDataKeyReusePeriod attribute of an existing queue, which can be desired if it's specified during deployment, manually or as part of infra provisioning. Unless changed, SQS queues using KMS use the default value 300 (seconds). |
None |
Β | ||
ββ Configure custom AWS endpoints for development ββ options["aws_endpoint_urls"][key] |
||
Configuration key | Description | Default value |
aws_endpoint_urls.sns |
Configurable endpoint URL for AWS SNS β primarily used for integration testing during development using fake services / fake endpoints. | None |
aws_endpoint_urls.sqs |
Configurable endpoint URL for AWS SQS β primarily used for integration testing during development using fake services / fake endpoints. | None |
Β | ||
ββ AMQP / RabbitMQ pub/sub settings ββ options["amqp"][key] |
||
Configuration key | Description | Default value |
amqp.host |
Host address / hostname for RabbitMQ server. | "127.0.0.1" |
amqp.port |
Host post for RabbitMQ server. | 5672 |
amqp.login |
Login credentials. | "guest" |
amqp.password |
Login credentials. | "guest" |
amqp.exchange_name |
The AMQP exchange name to use in the service. | "amq_topic" |
amqp.routing_key_prefix |
A prefix to add to any AMQP routing keys provided in the service. | "" |
amqp.queue_name_prefix |
A prefix to add to any AMQP queue names provided in the service. | "" |
amqp.virtualhost |
AMQP virtualhost settings. | "/" |
amqp.ssl |
TLS can be enabled for supported host connections. | False |
amqp.heartbeat |
The heartbeat timeout value defines after what period of time the peer TCP connection should be considered unreachable (down) by RabbitMQ and client libraries. | 60 |
amqp.queue_ttl |
TTL set on newly created queues. | 86400 |
Β | ||
ββ Options for code auto reload on file changes in development ββ options["watcher"][key] |
||
Configuration key | Description | Default value |
watcher.ignored_dirs |
Directories / folders that the automatic code change watcher should ignore. Could be used during development to save on CPU resources if any project folders contains a large number of file objects that doesn't need to be watched for code changes. Already ignored directories are "__pycache__" , ".git" , ".svn" , "__ignored__" , "__temporary__" and "__tmp__" . |
[] |
watcher.watched_file_endings |
Additions to the list of file endings that the watcher should monitor for file changes. Already followed file endings are ".py" , ".pyi" , ".json" , ".yml" , ".html" and ".phtml" . |
[] |
Invoker functions can of course be decorated using custom functionality. For ease of use you can then in turn decorate your decorator with the the built-in @tomodachi.decorator
to ease development.
If the decorator would return anything else than True
or None
(or not specifying any return statement) the invoked function will not be called and instead the returned value will be used, for example as an HTTP response.
import tomodachi
@tomodachi.decorator
async def require_csrf(instance, request):
token = request.headers.get("X-CSRF-Token")
if not token or token != request.cookies.get("csrftoken"):
return {
"body": "Invalid CSRF token",
"status": 403
}
class Service(tomodachi.Service):
name = "example"
@tomodachi.http("POST", r"/create")
@require_csrf
async def create_data(self, request):
# Do magic here!
return "OK"
- Python (
3.8+
,3.9+
,3.10+
,3.11+
) - aiohttp (
aiohttp
is the currently supported HTTP server implementation fortomodachi
) - aiobotocore and botocore (used for AWS SNS+SQS pub/sub messaging)
- aioamqp (used for RabbitMQ / AMQP pub/sub messaging)
- uvloop (optional: alternative event loop implementation)
tomodachi
is offered under the MIT License.
Changes are recorded in the repo as well as together with the GitHub releases.
- In repository: https://github.com/kalaspuff/tomodachi/blob/master/CHANGES.rst
- Release tags: https://github.com/kalaspuff/tomodachi/releases
The latest developer version of tomodachi
is always available at GitHub.
- Clone repo:
git@github.com:kalaspuff/tomodachi.git
- GitHub: https://github.com/kalaspuff/tomodachi
- Latest release: https://github.com/kalaspuff/tomodachi/releases/latest
- What is the best way to run a
tomodachi
service? Docker containers are great and can be scaled out in Kubernetes, Nomad or other orchestration engines. Some may instead run several services on the same environment, on the same machine if their workloads are smaller or more consistent. Remember to gather your output and monitor your instances or clusters.
For real workloads: Go for a Dockerized environment if possible β async task queues are usually nice and services could scale up and down for keeping up with incoming demand; if you require network access like HTTP from users or API clients directly to the service, then it's usually preferred to put some kind of ingress (nginx, haproxy or other type of load balancer) to proxy requests to the service pods. Let the ingress then handle public TLS, http2 / http3, client facing keep-alives and WebSocket protocol upgrades and let the service instead take care of the business logic.
- Are there any more example services?
- There are a few examples in the examples folder, including using
tomodachi
in an example Docker environment with or without docker-compose. There are examples to publish events / messages to an AWS SNS topic and subscribe to an AWS SQS queue. There's also a similar code available of how to work with pub/sub for RabbitMQ via the AMQP transport protocol. - Why should I use this?
tomodachi
is a perfect place to start when experimenting with your architecture or trying out a concept for a new service. It may not have all the features you desire and it may never do, but I believe it's great for bootstrapping microservices in async Python.- I have some great additions!
- Sweet! Please send me a PR with your ideas. There's now automatic tests that are running as GitHub actions to verify linting and regressions. Get started at the short contribution guide.
- Beta software in production?
There are some projects and organizations that already are running services based on
tomodachi
in production. The library is provided as is with an unregular release schedule, and as with most software, there will be unfortunate bugs or crashes. Consider this currently as beta software (with an ambition to be stable enough for production). Would be great to hear about other use-cases in the wild!Another good idea is to drop in Sentry or other exception debugging solutions. These are great to catch errors if something wouldn't work as expected in the internal routing or if your service code raises unhandled exceptions.
- Who built this and why?
- My name is Carl Oscar Aaro [@kalaspuff] and I'm a coder from Sweden. When I started writing the first few lines of this library back in 2016, my intention was just to learn more about Python's
asyncio
, the event loop, event sourcing and message queues. A lot has happened since β now running services in both production and development clusters, while also using microservices for quick proof of concepts and experimentation. π