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Mastering  Node.js

You're reading from   Mastering Node.js Build robust and scalable real-time server-side web applications efficiently

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Product type Paperback
Published in Dec 2017
Publisher Packt
ISBN-13 9781785888960
Length 498 pages
Edition 2nd Edition
Languages
Tools
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Authors (2):
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Sandro Pasquali Sandro Pasquali
Author Profile Icon Sandro Pasquali
Sandro Pasquali
Kevin Faaborg Kevin Faaborg
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Kevin Faaborg
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Table of Contents (13) Chapters Close

Preface 1. Understanding the Node Environment 2. Understanding Asynchronous Event-Driven Programming FREE CHAPTER 3. Streaming Data Across Nodes and Clients 4. Using Node to Access the Filesystem 5. Managing Many Simultaneous Client Connections 6. Creating Real-Time Applications 7. Using Multiple Processes 8. Scaling Your Application 9. Microservices 10. Testing Your Application 11. Organizing Your Work into Modules 12. Creating Your Own C++ Add-ons

Introduction – JavaScript as a systems language

When John Bardeen, Walter Brattain, and William Shockley invented the transistor in 1947, they changed the world in ways we are still discovering today. From their revolutionary building block, engineers could design and manufacture digital circuits far more complex than those possible earlier. Each decade that followed has seen a new generation of these devices: smaller, faster, and cheaper, often by orders of magnitude.

By the 1970s, corporations and universities could afford mainframe computers small enough to fit in a single room, and powerful enough that they could serve multiple users simultaneously. The minicomputer, a new and different kind of device, needed new and different kinds of technologies to help users get the most out of the machine. Ken Thompson and Dennis Ritchie at Bell Labs developed the operating system Unix, and the programming language C to write it. They built constructs into their system, like processes, threads, streams, and the hierarchical filesystem. Today, these constructs are so familiar, that it's hard to imagine a computer working any other way. However, they're just constructs, made up by these pioneers, with the goal of helping people like us understand the otherwise inscrutable patterns of data in memory and storage inside the machine.

C is a systems language, and it is a safe and powerful shorthand alternative for developers familiar with keying in assembly instructions. Given its familiar setting of a microprocessor, C makes low-level system tasks easy. For instance, you can search a block of memory for a byte of a specific value:

// find-byte.c 
int find_byte(const char *buffer, int size, const char b) {
for (int i = 0; i < size; i++) {
if (buffer[i] == b) {
return i;
}
}
return -1;
}

By the 1990s, what we could build with transistors had evolved again. A personal computer (PC) was light and cheap enough to be found on workplace and dormitory desktops. Increased speed and capacity allowed users to boot from a character-only teletype to graphical environments, with pretty fonts and color images. And with an Ethernet card and cable, your computer got a static IP address on the internet, where network programs could connect to send and receive data with any other computer on the planet.

It was within this landscape of technology that Sir Tim Berners-Lee invented the World Wide Web, and Brendan Eich created JavaScript. Designed for coders familiar with HTML tags, JavaScript was a way to move beyond static pages of text with animation and interactivity. Given its familiar setting of a webpage, JavaScript makes high-level tasks easy. Web pages are filled with text and tags, so combining two strings is easy:

// combine-text.js
const s1 = "first string";
const s2 = "second string";
let s3 = s1 + s2;

Now, let's port each program to the other language and platform. First, from the preceding combine-text.js, let's write combine-text.c:

// combine-text.c 
const char *s1 = "first string";
const char *s2 = "second string";
int size = strlen(s1) + strlen(s2);
char *buffer = (char *)malloc(size + 1); // One more for the 0x00 byte that terminates strings
strcpy(buffer, s1);
strcat(buffer, s2);
free(buffer); // Never forget to free memory!

The two string literals are easy to define, but after that, it gets a lot harder. Without automatic memory management, it's your responsibility as a developer to determine how much memory you need, allocate it from the system, write to it without overwriting the buffer, and then free it afterwards.

Secondly, let's attempt the reverse: from the find-byte.c code prior, let's write find-byte.js. Before Node, it was not possible to use JavaScript to search a block of memory for a specific byte. In the browser, JavaScript can't allocate a buffer, and doesn't even have a type for byte. But with Node, it's both possible and easy:

// find-byte.js
function find_byte(buffer, b) {
let i;
for (i = 0; i < buffer.length; i++) {
if (buffer[i] == b) {
return i;
}
}
return -1; // Not found
}
let buffer = Buffer.from("ascii A is byte value sixty-five", "utf8");
let r = find_byte(buffer, 65); // Find the first byte with value 65
console.log(r); // 6 bytes into the buffer

Emerging from generations of computing decades apart, when both computers and what people were doing with them were wildly different, there's no real reason the design, purpose, or use that drives these two languages, C and JavaScript, should necessarily come together. But they did, because in 2008 Google released Chrome, and in 2009, Ryan Dahl wrote Node.js.

Applying design principles previously only considered for operating systems. Chrome uses multiple processes to render different tabs, ensuring their isolation. Chrome was released open source and built on WebKit, but one part inside was completely new. Coding from scratch in his farmhouse in Denmark, Lars Bak's V8 used hidden class transitions, incremental garbage collection, and dynamic code generation to execute (not interpret) JavaScript faster than ever before.

With V8 under the hood, how fast can Node run JavaScript? Let's write a little program to show execution speed:

// speed-loop.js
function main() {
const cycles = 1000000000;
let start = Date.now();
for (let i = 0; i < cycles; i++) {
/* Empty loop */
}
let end = Date.now();
let duration = (end - start) / 1000;
console.log("JavaScript looped %d times in %d seconds", cycles, duration);
}
main();

The following is the output for speed-loop.js:

$ node --version
v9.3.0
$ node speed-loop.js
JavaScript looped 1000000000 times in 0.635 seconds

There's no code in the body of the for loop, but your processor is busy incrementing i, comparing it to cycles, and repeating the process. It's late 2017 as I write this, typing on a MacBook Pro with a 2.8 GHz Intel Core i7 processor. Node v9.3.0 is current, and takes less than a second to loop a billion times.

How fast is pure C? Let's see:

/* speed-loop.c */
#include <stdio.h>
#include <time.h>
int main() {
int cycles = 1000000000;
clock_t start, end;
double duration;
start = clock();
for (int i = 0; i < cycles; i++) {
/* Empty loop */
}
end = clock();
duration = ((double)(end - start)) / CLOCKS_PER_SEC;
printf("C looped %d times in %lf seconds\n", cycles,duration);
return 0;
}

The following is the output for speed-loop.c:

$ gcc --version
Apple LLVM version 8.1.0 (clang-802.0.42)
$ gcc speed-loop.c -o speed-loop
$ ./speed-loop
C looped 1000000000 times in 2.398294 seconds

For additional comparison, let's try an interpreted language, like Python:

# speed-loop.py

import time

def main():

cycles = 1000000000
start = time.perf_counter()

for i in range(0, cycles):
pass # Empty loop

end = time.perf_counter()
duration = end - start
print("Python looped %d times in %.3f seconds" % (cycles, duration))

main()

The following is the output for speed-loop.py:

$ python3 --version
Python 3.6.1
$ python3 speed-loop.py
Python looped 1000000000 times in 31.096 seconds

Node runs code fast enough so that you don't have to worry that your application might be slowed down by the execution speed. You'll still have to think about performance, of course, but constrained by factors beyond language and platform choice, such as algorithms, I/O, and external processes, services, and APIs. As V8 compiles JavaScript rather than interpreting it, Node lets you enjoy high-level language features like automatic memory management and dynamic types, without having to give up the performance of a natively-compiled binary. Earlier, you had to choose one or the other; but now, you can have both. It's great.

Computing in the 1970s was about the microprocessor, and computing in the 1990s was about the web page. Today, in 2017, another new generation of physical computing technology has once again changed our machines. The smartphone in your pocket communicates wirelessly with scalable, pay-as-you-go software services in the cloud. Those services run on virtualized instances of Unix, which in turn run on physical hardware in data centers, some of which are so large they were strategically placed to draw current from a neighboring hydroelectric dam. With such new and different machines as these, we shouldn't be surprised that what's possible for users and what's necessary for developers is also new and different, once again.

Node.js imagines JavaScript as a systems language, like C. On the page, JavaScript can manipulate headers and styles. As a systems language, JavaScript can manipulate memory buffers, processes and streams, and files and sockets. This anachronism, made possible by the performance V8 gives the language, sends it back two decades, transplanting it from the web page to the microprocessor die.

"Node's goal is to provide an easy way to build scalable network programs."
– Ryan Dahl, creator of Node.js

In this book, we will study the techniques professional Node developers use to tackle the software challenges of today. By mastering Node, you are learning how to build the next generation of software. In this chapter, we will explore how a Node application is designed, the shape and texture of its footprint on a server, and the powerful base set of tools and features Node provides for developers. Throughout, we will examine progressively more intricate examples demonstrating how Node's simple, comprehensive, and consistent architecture solves many difficult problems well.

The Unix design philosophy

As a network application scales, the volume of information it must recognize, organize, and maintain increases. This volume, in terms of I/O streams, memory usage, and processor load, expands as more clients connect. This expansion of information volume also burdens the software developer. Scaling issues appear, usually demonstrating a failure to accurately predict the behavior of a large system from the behavior of its smaller predecessors:

  • Can a data layer designed for storing a few thousand records accommodate a few million?
  • Are the algorithms used to search a handful of records efficient enough to search many more?
  • Can this server handle 10,000 simultaneous client connections?

The edge of innovation is sharp and cuts quickly, presenting less time for deliberation precisely when the cost of error is magnified. The shape of objects comprising the whole of an application becomes amorphous and difficult to understand, particularly as ad hoc modifications are made, reactively, in response to dynamic tension in the system. What is described in a specification as a small subsystem may have been patched into so many other systems, that its actual boundaries are misunderstood. When this happens, it becomes impossible to accurately trace the outline of the composite parts of the whole.

Eventually, an application becomes unpredictable. It is dangerous when one cannot predict all future states of an application, or the side effects of change. Any number of servers, programming languages, hardware architectures, management styles, and so on, have attempted to subdue the intractable problem of risk following growth, of failure menacing success. Oftentimes, systems of even greater complexity are sold as the cure. The hold that any one person has on information is tenuous. Complexity follows scale; confusion follows complexity. As resolution blurs, errors happen.

Node chose clarity and simplicity instead, echoing a philosophy from decades earlier:

"Write programs that do one thing and do it well.
Write programs to work together.
Write programs to handle text streams, because that is a universal interface."
-Peter H. Salus, A Quarter-Century of Unix, 1994

From their experiences creating and maintaining Unix, Ken Thompson and Dennis Ritchie came up with a philosophy for how people should best build software. Using this philosophy as his guide, Ryan Dahl made a number of decisions in the design of Node:

  • Node's design favors simplicity over complexity
  • Node uses familiar POSIX APIs, rather than attempting an improvement
  • Node does everything with events, and doesn't need threads
  • Node leverages the existing C libraries, rather than trying to reimplement their functionality
  • Node favors text over binary formats

Text streams are the language of Unix programs. JavaScript got good at manipulating text from its beginning as a web scripting language. It's a natural fit.

POSIX

POSIX, the Portable Operating System Interface, defines the standard APIs for Unix. It's adopted in Unix-based operating systems and beyond. The IEEE created and maintains the POSIX standard to enable systems from different manufacturers to be compatible. Write your C program using POSIX APIs on your laptop running macOS, and you'll have an easier time later building it on a Raspberry Pi.

As a common denominator, POSIX is old, simple, and most importantly, well-known to developers of all stripes. To make a new directory in a C program, use this API:

int mkdir(const char *path, mode_t mode);

And here it is in Node:

fs.mkdir(path[, mode], callback)

The Node documentation for the filesystem module starts out by telling the developer, there's nothing new here:

File I/O is provided by simple wrappers around standard POSIX functions.
https://nodejs.org/api/fs.html

For Node, Ryan Dahl implemented proven POSIX APIs, rather than trying to come up with something on his own. While such an attempt might be better in some ways, or some situations, it would lose the instant familiarity that POSIX gives to new Node developers trained in other systems.

In choosing POSIX for the API, Node is in no way limited to the standards from the 1970s. It's easy for anyone to write their own module that calls down to Node's API, while presenting a different one upwards. These fancier alternatives can then compete in a Darwinian quest to prove themselves better than POSIX.

Events for everything

If a program asks the operating system to open a file on the disk, that task might complete right away. Or, it might take a moment for the disk to spin up, or for other file system activity the operating system is working on to finish before it can perform this new request. Tasks that go beyond manipulating the memory of our application's process space to more distant hardware in the computer, network, and internet are not fast or reliable enough to program in the same way. Software designers needed a way to code these tasks, which can be slow and unreliable, without making their applications slow and unreliable as a whole. For systems programmers using languages like C and Java, the standard and accepted tool to use to solve this problem is the thread.

pthread_t my_thread;
int x = 0;
/* Make a thread and have it run my_function(&x) */
pthread_create(&my_thread, NULL, my_function, &x);

If a program asks the user a question, the user might respond right away. Or, the user may take a moment to think before clicking Yes or No. For web developers using HTML and JavaScript, the way to do this is the event as follows:

<button onclick="myFunction()">Click me</button>

At first glance, these two scenarios may seem completely distinct:

  • In the first, a low-level system is shuttling blocks of memory from program to program, with delays milliseconds can be too big to measure
  • In the second, the very top surface of a huge stack of software is asking the user a question

Conceptually, however, they're the same. Node's design realizes this, and uses events for both. In Node, there is one thread, bound to an event loop. Deferred tasks are encapsulated, entering and exiting the execution context via callbacks. I/O operations generate evented data streams, and these are piped through a single stack. Concurrency is managed by the system, abstracting thread pools, and simplifying shared access to memory.

Node showed us that JavaScript doesn't need threads to be useful as a systems language. Additionally, by not having threads, JavaScript and Node avoid concurrency issues that create performance and reliability challenges that developers expert in a code base can still have difficulty reasoning about. In Chapter 2, Understanding Asynchronous Event-Driven Programming, we'll go deeper into events, and the event loop.

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