Skip to main content

Two way streams for your microservices

Project description

2-way streams for your microservices

What is a stream with feedbacks?


With Streamback you can implement the producer-consumer model but with a twist. The consumer can send feedback messages back to the producer via a feedback stream, making it work more like an RPC than the one way stream Kafka is intended to be used as.

How it works?


Streamback implements two different streams, the main stream and the feedback stream.

  • Main stream: This is the kafka stream that the producer sends messages to the consumer.
  • Feedback stream: This is the stream that the consumer sends messages to the producer. Redis is used for this stream for its
  • simplicity and speed.

Why not just use the conventional one way streams?


Streamback does not stop you from just using the main stream and not sending feedback messages, this way it is behaving just like a Kafka producer-consumer. Streamback just gives you the option to do so if you need it in order to make more simple the communication between your microservices.

Installation


pip install streamback

Examples

One way stream consumer-producer

Consumer

from streamback import Streamback

streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)


@streamback.listen("test_hello")
def test_hello(context, message):
    print("received: {value}".format(value=message.value))


streamback.start()

Producer

from streamback import Streamback

streamback = Streamback(
    "example_producer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)

streamback.send("test_hello", {"something": "Hello world!"})

2-way RPC like communication

Consumer

from streamback import Streamback

streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)


@streamback.listen("test_hello_stream")
def test_hello_stream(context, message):
    print("received: {value}".format(value=message.value))
    message.respond("Hello from the consumer!")


streamback.start()

Producer

from streamback import Streamback

streamback = Streamback(
    "example_producer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)

message = streamback.send("test_hello_stream", {"something": "Hello world!"}).read(timeout=10)
print(message)

2-way RPC like communication with steaming feedback messages

Consumer

from streamback import Streamback, KafkaStream, RedisStream
import time

streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)


@streamback.listen("test_hello_stream")
def test_hello_stream(context, message):
    print("received: {value}".format(value=message.value))
    for i in range(10):
        message.respond("Hello #{i} from the consumer!".format(i=i))
        time.sleep(2)


streamback.start()

Producer

from streamback import Streamback

streamback = Streamback(
    "example_producer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)

for message in streamback.send("test_hello_stream", {"something": "Hello world!"}).stream():
    print(message)

## OR

stream = streamback.send("test_hello_stream", {"something": "Hello world!"})

message1 = stream.read()
message2 = stream.read()
message3 = stream.read()

Concurrent consumers

Streamback supports concurrent consumers via process forking, when you call streamback.start(), the process forks for each of the consumers you have defined. On each consumer you can define the number of processes you want to run, by default each listener creates one process but you can change this to fine tune the performance of your consumers.

from streamback import Streamback

streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)


@streamback.listen("test_hello", concurrency=2)  ## spawns 2 processes for this listener
def test_hello(context, message):
    print("received: {value}".format(value=message.value))


@streamback.listen("test_hello_2", concurrency=20)  ## spawns 20 processes for this listener
def test_hello_2(context, message):
    print("received: {value}".format(value=message.value))


streamback.start()

SASL Authentication

streamback = Streamback(
    "example_producer_app",
    streams="main=kafka://user@1234:kafka:9092&feedback=redis://redis:6379"
)

Consumer input mapping to objects

For a more type oriented approach you can map the input of the consumer to a class.

class TestInput(object):
    def __init__(self, arg1, arg2):
        self.arg1 = arg1
        self.arg2 = arg2


@streamback.listen("test_input")
def test_input(context, message):
    input = message.map(TestInput)
    print(input.arg1)
    print(input.arg2)
    message.respond({
        "arg1": input.arg1,
        "arg2": input.arg2
    })

Producer feedback mapping to objects

In a similar way you can map the feedback of the producer to a class.

class TestResponse(object):
    def __init__(self, arg1, arg2):
        self.arg1 = arg1
        self.arg2 = arg2


response = streamback.send("test_input", {"arg1": "Hello world!", "arg2": "Hello world!"}).read("main_app",
                                                                                                map=TestResponse)
print(response.arg1)
print(response.arg2)

Input injection

Instead of having to deconstruct the message.value inside the consumer's logic, you can pass to the consumer only the arguments of the message.value that you want to use.

@streamback.listen("test_input", input=["arg1", "arg2"])
def test_input(arg1, arg2):
    pass


streamback.send("test_input", {"arg1": "Hello world!", "arg2": "Hello world!"})

Class based consumers

@streamback.listen("new_log")
class LogsConsumer(Listener):
    logs = []

    def consume(self, context, message):
        self.logs.append(message.value)
        if len(self.logs) > 100:
            self.flush_logs()

    def flush_logs(self):
        database_commit(self.logs)

Router

The StreambackRouter helps with spliting the consumer logic into different files, it is not required to use it but it helps

some_consumers.py

from streamback import Router

router = Router()


@router.listen("test_hello")
def test_hello(context, message):
    print("received: {value}".format(value=message.value))

my_consumer_app.py

from streamback import Streamback

from some_consumers import router as some_consumers_router

streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379"
)

streamback.include_router(some_consumers_router)

streamback.start()

Handling consume exceptions and other callbacks

from streamback import Streamback, Callback


class StreambackCallbacks(Callback):
    def on_consume_begin(self, streamback, listener, context, message):
        print("on_consume_begin:", message)

    def on_consume_end(self, streamback, listener, context, message, exception=None):
        print("on_consume_end:", message, exception)

    def on_consume_exception(self, streamback, listener, exception, context, message):
        print("on_consume_exception:", type(exception))

    def on_fork(self):
        print("on_fork")


streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379",
).add_callback(StreambackCallbacks())

Extensions

By using the callbacks mechanism new extensions can be created to inject custom logic into the lifecycle of Streamback.

Stats extension

The ListenerStats extension can be used to log the memory usage of each listener.

from streamback import Streamback, ListenerStats

streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379",
).add_callback(ListenerStats(interval=10))

The above will log the memory usage of the listeners every 10 seconds

AutoRestart extension

from streamback import Streamback, AutoRestart

streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379",
).add_callback(AutoRestart(max_seconds=10, max_memory_mb=100))

The above will restart the child processes every 10 seconds or when it reaches 100mb of rss memory usage.

Custom extensions

You can extend the ListenerStats class to add custom logic like reporting the memory usage to a monitoring service.

from streamback import Streamback, ListenerStats


class MyListenerStats(ListenerStats):
    def on_stats(self, stats):
        print(stats)


streamback = Streamback(
    "example_consumer_app",
    streams="main=kafka://kafka:9092&feedback=redis://redis:6379",
).add_callback(MyListenerStats(interval=10))

Why python 2.7 compatible?

Streamback has been created for usage in car.gr's systems which has some legacy python 2.7 services. We are are planing to move Streamback to python >3.7 in some later version but for now the python 2.7 support was crucial and thus the async/await support was sacrificed. Currently it is used in production to handle millions of messages per day.

Project details


Download files

Download the file for your platform. If you're not sure which to choose, learn more about installing packages.

Source Distribution

streamback-0.3.13.tar.gz (21.6 kB view details)

Uploaded Source

Built Distribution

If you're not sure about the file name format, learn more about wheel file names.

streamback-0.3.13-py3-none-any.whl (24.2 kB view details)

Uploaded Python 3

File details

Details for the file streamback-0.3.13.tar.gz.

File metadata

  • Download URL: streamback-0.3.13.tar.gz
  • Upload date:
  • Size: 21.6 kB
  • Tags: Source
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.9.5

File hashes

Hashes for streamback-0.3.13.tar.gz
Algorithm Hash digest
SHA256 d73500eca4ad8b3b6f31f2806b91ab50e85d206c4bfa664feb8d85b9747e084a
MD5 5db4059654a315512c706a58646557d5
BLAKE2b-256 a23043f8b4d6921814d020efdf9cca3e99b9e67d26970e291b4103077b97bd99

See more details on using hashes here.

File details

Details for the file streamback-0.3.13-py3-none-any.whl.

File metadata

  • Download URL: streamback-0.3.13-py3-none-any.whl
  • Upload date:
  • Size: 24.2 kB
  • Tags: Python 3
  • Uploaded using Trusted Publishing? No
  • Uploaded via: twine/4.0.2 CPython/3.9.5

File hashes

Hashes for streamback-0.3.13-py3-none-any.whl
Algorithm Hash digest
SHA256 3af3504bd0150479b69d8b9b568a9db295ab79ba3d8dd5d212e5e34ba9898c1d
MD5 a085a5fd42799ad07787ca15b55373dc
BLAKE2b-256 84e46cb312731ed1a85448286e154e193748f65c766b8e6a3662a975bc41956a

See more details on using hashes here.

Supported by

AWS Cloud computing and Security Sponsor Datadog Monitoring Depot Continuous Integration Fastly CDN Google Download Analytics Pingdom Monitoring Sentry Error logging StatusPage Status page