Skip to content

BWStearns/faust_intro

Folders and files

NameName
Last commit message
Last commit date

Latest commit

 

History

11 Commits
 
 
 
 
 
 
 
 
 
 

Repository files navigation

Gettting Started with Faust

Make sure you have Kafka running locally. If you don't already have a local cluster then you can use the docker compose in this repo.

docker-compose up

The dependencies are set up just using a dumb requirements.txt file.

pip install -r requirements.txt

Then to run the agent(s) use:

faust -A app.demo worker -l info

How to use this Repo

The intent of this repo is to demonstrate a simple usage of agents, topics, tables, and records in Faust, and to give developers interested in Faust a simple but working toy system to modify and fool around with.

What the Demo Agents Do

Overall this is a very simple toy pipeline that listens to a stream of purchases and aggregates them into a mapping from the customer to the total amount of money spent. The service also exposes an endpoint that allows a client to make a request to see how much money a given customer has spent (an example request would be a GET request to http://localhost:6066/customer/brian).

It listens to a topic ("purchase_topic") and consumes messages that are json representations of the type PurchaseRecord. PurchaseRecord is a subtype of a faust Record, which is basically a struct or named tuple with some optional niceities (in this example we declare the class using the argument serializer="json" which takes care of de/serialization for us).

It then invokes handle_purchase on each PurchaseRecord, which fetches the customer record from the customer_table and adds the purchase amount to the customer's total. Tables can largely be treated like dictionaries but they are persistant across restarts due to Faust storing a changelog of the collection on an autogenerated topic. Documentation is available here.

The purchase_processor then yields the purchase, which is passed to the sink declared in the agent decorator. The sink in this case is the purchase_note_topic, which is being listened to by a second agent, the note_processor. This agent simply prints the customer and the contents of their purchase's note if there is one.

Sending Messages to the Agent

demo_producer has some simple functions for sending PurchaseRecords to the topic that the agent is listening to. In a new terminal window you can open up a new ipython terminal and do the following:

In [3]: from app.demo_producer import *
In [4]: send_purchases(make_random_purchases(10))

and you should see something like the following in the agent output:

[2020-04-02 12:33:01,443] [36672] [WARNING] meher has spent 225 so far. 
[2020-04-02 12:33:01,443] [36672] [WARNING] Processing: 
[2020-04-02 12:33:01,444] [36672] [WARNING] <PurchaseRecord: msg_id='27325376-03b3-4bc8-988b-bfc1abe61ff3', customer='brian', amount=18, note='Baz'> 
[2020-04-02 12:33:01,444] [36672] [WARNING] brian has spent 290 so far. 
[2020-04-02 12:33:01,444] [36672] [WARNING] Processing: 
[2020-04-02 12:33:01,444] [36672] [WARNING] <PurchaseRecord: msg_id='d41dd1cd-c803-477e-a232-75d7069145cb', customer='brian', amount=5, note='Baz'> 
[2020-04-02 12:33:01,445] [36672] [WARNING] brian has spent 295 so far. 
[2020-04-02 12:33:01,445] [36672] [WARNING] Processing: 
[2020-04-02 12:33:01,446] [36672] [WARNING] <PurchaseRecord: msg_id='314b6a01-305d-4b9d-b622-5b9870803486', customer='meher', amount=2, note='Foo'> 
[2020-04-02 12:33:01,446] [36672] [WARNING] meher has spent 227 so far. 
[2020-04-02 12:33:02,422] [36672] [WARNING] brian says: Bar. 
[2020-04-02 12:33:02,423] [36672] [WARNING] brian says: Foo.

Resources

Faust Documentation

About

a toy project for some faust stuff

Resources

Stars

Watchers

Forks

Releases

No releases published

Packages

No packages published

Languages