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The future is bright Mar 30, 2025 Software Engineering is here to stay Mar 3, 2024 On luck and gumption Oct 8, 2023 Book review: Clojure for the Brave and True Oct 2, 2022 Why don’t they tell you that in the instructions? Aug 31, 2022 Monolithic repository vs a monolith Aug 23, 2022 Scripting languages are tools for tying APIs together, not building complex systems Jun 8, 2022 Good developers can pick up new programming languages Jun 3, 2022 Java is no longer relevant May 29, 2022 Automation and coding tools for pet projects on the Apple hardware May 28, 2022 There is no such thing as one grand unified full-stack programming language May 27, 2022 Best practices for building a microservice architecture Apr 25, 2022 Tools of the craft Dec 18, 2021 What programming language to use for a brand new project? Feb 18, 2020 Which AWS messaging and queuing service to use? Jan 25, 2019 The religion of JavaScript Nov 26, 2018 Let’s talk cloud neutrality Sep 17, 2018 TypeScript starts where JavaScript leaves off Aug 2, 2017 Design patterns in TypeScript: Chain of Responsibility Jul 22, 2017 Amazon Alexa is eating the retailers alive Jun 22, 2016 What can we learn from the last week's salesforce.com outage ? May 15, 2016 Why it makes perfect sense for Dropbox to leave AWS May 7, 2016 OAuth 2.0: the protocol at the center of the universe Jan 1, 2016 What Every College Computer Science Freshman Should Know Aug 14, 2015 The Three Myths About JavaScript Simplicity Jul 10, 2015 The longer the chain of responsibility the less likely there is anyone in the hierarchy who can actually accept it Jun 7, 2015 Big Data is not all about Hadoop May 30, 2015 Exploration of the Software Engineering as a Profession Apr 8, 2015 Thanking MIT Scratch Sep 14, 2013 Have computers become too complicated for teaching ? Jan 1, 2013 Scripting News: After X years programming Jun 5, 2012

Design patterns in TypeScript: Chain of Responsibility

July 22, 2017

In event-driven systems messages produced by one object can be handled by one or more other objects. None of the objects need to know of one another – all they need to share is a common mechanism for distributing messages. Messages are sent from one object to another making them part of a chain. This pattern is called “Chain of Responsibility.”

Chain of responsibility in TypeScript


Node.js – and TypeScript by association – have idiomatic support for asynchronous event-driven programming. The best way to implement this pattern is by utilizing the EventEmitter class.

EventEmitter acts as a message bus. Events can be emitted or sent and can be subscribed to. Objects emitting events are independent of objects subscribing to events. This message bus needs to be a Singleton since it is shared between event publishers and event subscribers.

Source: ChainOfResponsibility.ts


import {EventEmitter} from 'events';

var messageBus=new EventEmitter();

function messageConsumer(msg:Object) {
console.log(JSON.stringify(msg));
}

messageBus.on("topic", (msg) => {
messageConsumer(msg);
});

messageBus.emit("topic", {
payload: "Hello world"
});

Case study: equities trading system backend


Events are useful constructs that represent real-world business workflows. In an equities trading system, there is typically a front-end application that allows traders to enter orders. The orders are published on a message bus, and there are multiple consumers:

  1. Order Management System (OMS) whose purpose is to capture and track orders and executions of those orders. Large orders are rarely executed all in one shot – they are typically executed as some number of smaller parts.

  2. Compliance and reporting system whose purpose is to track everything that is happening and analyze data for potential patterns of fraud.


There can be many more participants in the ecosystems – market data, reporting, etc. For this article we’ll stick to a simple simulation of OMS and compliance.

Source: HFT.ts


import {EventEmitter} from 'events';

var messageBus=new EventEmitter();

interface Order {
orderId: number,
side:"Buy"|"Sell",
symbol:string,
quantity:number
}

interface Execution {
orderId: number,
executionId: number,
symbol: string,
quantity: number,
price: number
}

class OrderManagementSystem {


constructor() {
messageBus.on("order", (orderMessage) => {
this.processOrder(orderMessage as Order);
});
messageBus.on("execution", (executionMessage) => {
this.processExecution(executionMessage as Execution);
});
}

processOrder(order:Order) {
console.log(new Date().getTime()+":OMS:order:"+JSON.stringify(order));
var numberOfExecutions=10;
var quantityPerExecution=order.quantity/numberOfExecutions;
for (var i=0;i<numberOfExecutions;i++) {
messageBus.emit("execution", {
orderId:order.orderId,
executionId: i,
symbol: order.symbol,
quantity: quantityPerExecution,
price: 101.5

});
}
}

processExecution(execution:Execution) {
console.log(new Date().getTime()+":OMS:execution:"+JSON.stringify(execution));
}
}

class ComplianceSystem {
constructor() {
messageBus.on("order", (orderMessage) => {
this.trackOrder(orderMessage as Order);
});
messageBus.on("execution", (executionMessage) => {
this.trackExecution(executionMessage as Execution);
})
}

trackOrder(order:Order) {
console.log(new Date().getTime()+":COMPLIANCE:order:"+JSON.stringify(order));
}

trackExecution(execution:Execution) {
console.log(new Date().getTime()+":COMPLIANCE:execution:"+JSON.stringify(execution));
}
}

var oms=new OrderManagementSystem();
var compliance=new ComplianceSystem();


/**
* Simulate orders coming in from the front end
**/
for (var orderId=0;orderId<10;orderId++) {
messageBus.emit("order", {
orderId: orderId,
symbol: "MSFT",
quantity: 1000,
side: "Buy"
} as Order);
}

Node events implications for concurrency and parallelism


Even though Node supports asynchronous event processing, it is important to remember that there is a single CPU thread per Node process. That means that asynchronous processing of events does not necessarily happen in parallel.

To achieve true parallel event processing, Node.js offers cluster framework. This framework supports multiple forked Node processes running on the same physical machine to operate in parallel and take advantage of multi-core CPUs.

Event processing at scale


While cluster framework helps with taking advantage of multi-core CPUs, that is often not enough. In large enterprise systems, it is not uncommon to have both event publishers and event subscribers existing independently of one another. In a cloud environment, it is also possible to auto-scale event processors based on workload requirements.

Message queues are crucial for scalable event processing. While it is beyond the scope of this article to get into the details of message queues, here are some examples: