Full-text search can be both scary and exciting. Some popular databases such as MySql and Postgres are an amazing solution for storing data… but when it comes to full-text search performances, there’s no competition with ElasticSearch.

For those who don’t know, ElasticSearch is a search engine server built on top of Lucene with an amazing distributed-architecture support. According to db-engines.com, it is currently the most used search engine out there.

In this post, we are going to build a simple REST application called The Quotes Database which will allow us to store and search as many quotes as we want.

I’ve prepared a JSON file containing 5000+ quotes with their authors, we’ll be using it as our starting data for populating ElasticSearch.

You can find the repository for this project here.

Setting up Docker

First of all, we don’t want to install ElasticSearch on our machine. We’ll be using Docker for orchestrating both the Node.js server and the ES instance on a container, which will allow us to deploy a production-ready application with all the dependencies that it needs.

Let’s create a Dockerfile inside our project root folder:

FROM node:10.15.3-alpine

WORKDIR /usr/src/app

COPY package*.json ./

RUN npm install
RUN npm install -g pm2

COPY . ./

EXPOSE 3000
EXPOSE 9200

CMD npm run start

As you can see, we’re telling Docker that we’ll run a Node.js 10.15.3-alpine runtime. We’ll also create a new working directory under /usr/src/app, where we’ll copy both the package.json and the package-lock.json files. That way, Docker will be able to run npm install inside our WORKDIR, installing our needed dependencies.

We’ll also install PM2 by running RUN npm install -g pm2. The Node.js runtime is single-threaded, so if a process crashes, the entire app needs to be restarted… PM2 checks the Node.js process status and restarts it when the app goes down for any reason.

After installing PM2, we’ll copy our codebase inside our WORKDIR (COPY . ./), and we tell Docker to expose two ports, 3000, which will expose our RESTful service, and 9200, which exposes the ElasticSearch service (EXPOSE 3000 and EXPOSE 9200).

Last but not least, we tell Docker which command will start the Node.js app with npm run start.

You may also like: Getting Started | Docker and NodeJS

Setting up docker-compose

Now you may be saying, ‘Great, I get it! But how do I handle the ElasticSearch instance inside Docker? I can’t find it in my Dockerfile!’… you’re right! That’s where docker-compose becomes useful. It allows us to orchestrate multiple Docker containers and to create a connection between them. So, let’s write down the docker-compose.yml file, which will be stored inside our project root directory:

version: ‘3.6’
services:
api:
image: node:10.15.3-alpine
container_name: tqd-node
build: .
ports:
- 3000:3000
environment:
- NODE_ENV=local
- ES_HOST=elasticsearch
- NODE_PORT=3000
- ELASTIC_URL=http://elasticsearch:9200
volumes:
- .:/usr/src/app/quotes
command: npm run start
links:
- elasticsearch
depends_on:
- elasticsearch
networks:
- esnet
elasticsearch:
container_name: tqd-elasticsearch
image: docker.elastic.co/elasticsearch/elasticsearch:7.0.1
volumes:
- esdata:/usr/share/elasticsearch/data
environment:
- bootstrap.memory_lock=true
- “ES_JAVA_OPTS=-Xms512m -Xmx512m”
- discovery.type=single-node
logging:
driver: none
ports:
- 9300:9300
- 9200:9200
networks:
- esnet
volumes:
esdata:
networks:
esnet:

This is a bit more complex than our Dockerfile, but let’s analyze it:

  • We declare which version of docker-compose.yml file we’re using (3.6)
  • We declare our services:
  • api, which is our Node.js app. Just like in our Dockerfile, it requires the node:10.15.3-alpine image. We also assign a name to this container tqd-node, and here we call the previously created Dockerfile using the build . command.
  • We need to expose the 3000 port so we write these statements as follows 3000:3000. It means that we’re mapping from the port 3000 (inside our container) to the port 3000 (accessible from our machine). Then we’ll set some environment variables. The value elasticsearch is a variable which refers to the elasticsearch service inside our docker-compose.yml file.
  • We also want to mount a volume /usr/src/app/quotes. That way, once we restart our container we’ll maintain our data without losing it.
  • Once more, we tell Docker which command we need to execute once the container starts up, then we set a link to the elasticsearch service. We also tell Docker to start the api service after the elasticsearch service has booted (using the depends_on directive).
  • Last but not least, we tell Docker to connect the api service under the esnet network. That’s because every container has its own network. That way, we say that api and elasticsearch services shares the same network so they will be able to call each other with the same ports.
  • elasticsearch, which is (as you may have guessed) our ES service. It’s configuration is pretty similar to the api service. We’ll just cut off its verbose logs setting the logging directive to driver: none .
  • We also declare our volumes, where we store the ES data.
  • And we declare our network, esnet.

Bootstrapping the Node.js app

Now we need to create our Node.js application, so let’s get started setting up our package.json file:

npm init -y

Now we need to install some dependencies:

npm i -s @elastic/elasticsearch body-parser cors dotenv express

Great! Our package.json file should look like this:

{
“name”: “nodejselastic”,
“version”: “1.0.0”,
“description”: “”,
“main”: “index.js”,
“scripts”: {
“test”: “echo “Error: no test specified” && exit 1”
},
“keywords”: [],
“author”: “”,
“license”: “ISC”,
“dependencies”: {
“@elastic/elasticsearch”: “^7.3.0”,
“body-parser”: “^1.19.0”,
“cors”: “^2.8.5”,
“dotenv”: “^8.0.0”,
“express”: “^4.17.1”
}
}

Let’s implement our ElasticSearch connector in Node.js. First, we need to create a new /src/elastic.js file:

const { Client } = require(“@elastic/elasticsearch”);
require(“dotenv”).config();

const elasticUrl = process.env.ELASTIC_URL || “http://localhost:9200”;
const esclient = new Client({ node: elasticUrl });
const index = “quotes”;
const type = “quotes”;

As you can see, here we set some constants that will be incredibly useful. First of all, we create a new connection to ElasticSearch using its official Node.js SDK, then we define an index (“quotes”) and an index type(“quotes” again, we’ll see later what they mean).

Now we need to create an index on ElasticSearch. You can think of “indexes” as a SQL “database” equivalent. ElasticSearch is a NoSQL database, which means that it has no tables — it just stores JSON documents. An index is a logical namespace which maps to one or more primary shards and can have zero or more replica shards. You can read more about ElasticSearch indexes here.

Let’s now define a function that will create our index:

async function createIndex(index) {
try {
await esclient.indices.create({ index });
console.log(Created index ${index});
} catch (err) {
console.error(An error occurred while creating the index ${index}:);
console.error(err);
}
}

Now we need another function that creates the mapping for our quotes. The mapping defines the schema and types of our document:

async function setQuotesMapping () {
try {
const schema = {
quote: {
type: “text”
},
author: {
type: “text”
}
};

await esclient.indices.putMapping({ 
  index, 
  type,
  include_type_name: true,
  body: { 
    properties: schema 
  } 
})

console.log("Quotes mapping created successfully");

} catch (err) {
console.error(“An error occurred while setting the quotes mapping:”);
console.error(err);
}
}

As you can see, we’re defining the schema for our documents, and we’re inserting it inside our index.

Now let’s consider that ElasticSearch is a huge system and can take some seconds to boot up. We can’t connect to ES until it is ready, so we need a function that checks when the ES server is ready:

function checkConnection() {
return new Promise(async (resolve) => {
console.log(“Checking connection to ElasticSearch…”);
let isConnected = false;
while (!isConnected) {
try {
await esclient.cluster.health({});
console.log(“Successfully connected to ElasticSearch”);
isConnected = true;
// eslint-disable-next-line no-empty
} catch (_) {
}
}
resolve(true);
});
}

As you can see, we’re returning a promise. That’s because by using async/await we’re able to stop the entire Node.js process until this promise resolves, and it won’t do it until it connects to ES. That way, we force our Node.js to wait for ES before booting up.

We’re done with ElasticSearch! Now let’s export our functions:

module.exports = {
esclient,
setQuotesMapping,
checkConnection,
createIndex,
index,
type
};

Great! Let’s see the entire elastic.js file:

const { Client } = require(“@elastic/elasticsearch”);
require(“dotenv”).config();
const elasticUrl = process.env.ELASTIC_URL || “http://localhost:9200”;
const esclient = new Client({ node: elasticUrl });
const index = “quotes”;
const type = “quotes”;
/**

  • @function createIndex

  • @returns {void}

  • @description Creates an index in ElasticSearch.
    /
    async function createIndex(index) {
    try {
    await esclient.indices.create({ index });
    console.log(Created index ${index});
    } catch (err) {
    console.error(An error occurred while creating the index ${index}:);
    console.error(err);
    }
    }
    /
    *

  • @function setQuotesMapping,

  • @returns {void}

  • @description Sets the quotes mapping to the database.
    */
    async function setQuotesMapping () {
    try {
    const schema = {
    quote: {
    type: “text”
    },
    author: {
    type: “text”
    }
    };

    await esclient.indices.putMapping({
    index,
    type,
    include_type_name: true,
    body: {
    properties: schema
    }
    })

    console.log(“Quotes mapping created successfully”);

} catch (err) {
console.error(“An error occurred while setting the quotes mapping:”);
console.error(err);
}
}
/**

  • @function checkConnection
  • @returns {Promise<Boolean>}
  • @description Checks if the client is connected to ElasticSearch
    */
    function checkConnection() {
    return new Promise(async (resolve) => {
    console.log(“Checking connection to ElasticSearch…”);
    let isConnected = false;
    while (!isConnected) {
    try {
    await esclient.cluster.health({});
    console.log(“Successfully connected to ElasticSearch”);
    isConnected = true;
    // eslint-disable-next-line no-empty
    } catch (_) {
    }
    }
    resolve(true);
    });
    }
    module.exports = {
    esclient,
    setQuotesMapping,
    checkConnection,
    createIndex,
    index,
    type
    };

Populating ElasticSearch with quotes

Now we need to populate our ES instance with our quotes. This may sound easy, but believe me, it can be tricky.

Let’s create a new file in /src/data/index.js:

const elastic = require(“…/elastic”);
const quotes = require(“./quotes.json”);

const esAction = {
index: {
_index: elastic.index,
_type: elastic.type
}
};

As you can see, we’re importing the elastic module we just created and our quotes from a JSON file stored in /src/data/quotes.json. We’re also creating an object called esAction, which will tell ES how to index a document once we insert it.

Now we need a script to populate our database. We also need to create an array of Object with the following structure:

[
{
index: {
_index: elastic.index,
_type: elastic.type
}
},
{
author: “quote author”,
quote: “quote”
},

]

As you can see, for each quote we’re gonna insert, we need to set its mapping to ElasticSearch. So that’s what we’ll do:

async function populateDatabase() {
const docs = [];
for (const quote of quotes) {
docs.push(esAction);
docs.push(quote);
}
return elastic.esclient.bulk({ body: docs });
}

Great! Now let’s create our main file in /src/main.js and see how we’ll structure everything we’ve written so far:

const elastic = require(“./elastic”);
const data = require(“./data”);
require(“dotenv”).config();

(async function main() {

const isElasticReady = await elastic.checkConnection();
if (isElasticReady) {
const elasticIndex = await elastic.esclient.indices.exists({index: elastic.index});

if (!elasticIndex.body) {
  await elastic.createIndex(elastic.index);
  await elastic.setQuotesMapping();
  await data.populateDatabase()
}

}

})();

Let’s analyze the code above. We create a self-executing main function which will check for the ES connection. The code execution won’t proceed until ES is connected. When ES is ready, we’ll check if the quotes index exists. If it doesn’t, we’ll create it, we’ll set its mapping and will populate the database. Obviously, we’ll do so only the first time we start up our server!

Creating a RESTful API

Now we need to create our RESTful server. We’ll be using Express.js, which is the most popular Node.js framework out there for building servers.

We’ll start with the /src/server/index.js file:

const express      = require(“express”);
const cors = require(“cors”);
const bodyParser = require(“body-parser”);
const routes = require(“./routes”);
require(“dotenv”).config();

const app = express();
const port = process.env.NODE_PORT || 3000;

function start() {
return app.use(cors())
.use(bodyParser.urlencoded({ extended: false }))
.use(bodyParser.json())
.use(“/quotes”,routes)
.use((_req, res) => res.status(404).json({ success: false,error: “Route not found” }))
.listen(port, () => console.log(Server ready on port ${port}));
}

module.exports = {
start
};

As you can see, it is just a standard Express.js server, we won’t spend much time on that.

Let’s see our /src/server/routes/index.js file:

const express    = require(“express”);
const controller = require(“…/controllers”);
const routes = express.Router();

routes.route(“/”).get(controller.getQuotes);
routes.route(“/new”).post(controller.addQuote);

module.exports = routes;

We just create two endpoints:

  1. GET /, will return a list of quotes matching our query string parameters.
  2. POST /new/, will allow us to post a new quote storing it inside ElasticSearch.

So now let’s see our /src/server/controllers/index.js file:

  }
}

async function addQuote(req, res) {
const body = req.body;
if (!body.quote || !body.author) {
res.status(422).json({
error: true,
data: “Missing required parameter(s): ‘body’ or ‘author’”
});
return;
}
try {
const result = await model.insertNewQuote(body.quote, body.author);
res.json({
success: true,
data: {
id: result.body._id,
author: body.author,
quote: body.quote
}
});
} catch (err) {
res.status(500).json({ success: false, error: “Unknown error.”});
}
}
module.exports = {
getQuotes,
addQuote
};

Here we’re basically defining two functions:

  1. getQuotes, which requires at least one querystring parameter – text
  2. addQuote, which require two parameters – author and quote

The ElasticSearch interface is delegated to our /src/server/models/index.js. This structure helps us maintain a MVC-ish architecture.

Let’s see our model:

const { esclient, index, type } = require(“…/…/elastic”);

async function getQuotes(req) {
const query = {
query: {
match: {
quote: {
query: req.text,
operator: “and”,
fuzziness: “auto”
}
}
}
}

const { body: { hits } } = await esclient.search({
from: req.page || 0,
size: req.limit || 100,
index: index,
type: type,
body: query
});

const results = hits.total.value;
const values = hits.hits.map((hit) => {
return {
id: hit._id,
quote: hit._source.quote,
author: hit._source.author,
score: hit._score
}
});

return {
results,
values
}
}

As you can see, we’re composing our ElasticSearch query by selecting every quote that includes a given word or phrase.

Then, we spawn the query, setting both page and limit values we can pass them in a query string, for instance http://localhost:3000/quotes?text=love&page=1&limit=100. If these values are not passed via querystring, we’ll fall back to their default values.

ElasticSearch returns an incredibly big amount of data, but we just need four things:

  1. Quote ID
  2. The quote itself
  3. Quote author
  4. Score

The score represents how close the quote is to our search term. Once we have these values, we return them with the total results number, which may be useful when paginating the results on the front end.

Now we need to create the last function for our model insertNewQuote:

async function insertNewQuote(quote, author) {
return esclient.index({
index,
type,
body: {
quote,
author
}
})
}

This function is really simple, we just post the quote and the author to our index and return the query result back to the controller.

Now the complete /src/server/models/index.js file should look like this:

const { esclient, index, type } = require(“…/…/elastic”);

async function getQuotes(req) {
const query = {
query: {
match: {
quote: {
query: req.text,
operator: “and”,
fuzziness: “auto”
}
}
}
}

const { body: { hits } } = await esclient.search({
from: req.page || 0,
size: req.limit || 100,
index: index,
type: type,
body: query
});

const results = hits.total.value;

const values = hits.hits.map((hit) => {
return {
id: hit._id,
quote: hit._source.quote,
author: hit._source.author,
score: hit._score
}
});

return {
results,
values
}
}

async function insertNewQuote(quote, author) {
return esclient.index({
index,
type,
body: {
quote,
author
}
})
}

module.exports = {
getQuotes,
insertNewQuote
}

And we’re done! We just need to setup our start script inside out package.json file and we’re ready to go:

“scripts”: {
“start”: “pm2-runtime start ./src/main.js --name node_app”,
“stop”: “pm2-runtime stop node_app "
}

We also need to update our /src/main.js script in order to start up our Express.js server once ElasticSearch has been connected:

const elastic = require(”./elastic");
const server = require(“./server”);
const data = require(“./data”);
require(“dotenv”).config();

(async function main() {
const isElasticReady = await elastic.checkConnection();

if (isElasticReady) {
const elasticIndex = await elastic.esclient.indices.exists({index: elastic.index});

if (!elasticIndex.body) {
  await elastic.createIndex(elastic.index);
  await elastic.setQuotesMapping();
  await data.populateDatabase()
}

server.start();

}
})();

Launching the application

We’re now ready to start our application using docker-compose!

Just run the following command:

docker-compose up

You’ll need to wait until Docker downloads both the ElasticSearch and Node.js images, then it will boot up your server and you’ll be ready to query against your REST endpoints!

Let’s test with a couple of cURL calls:

curl localhost:3000/quotes?text=love&limit=3

{
“success”: true,
“data”: {
“results”: 716,
“values”: [
{
“id”: “JDE3kGwBuLHMiUvv1itT”,
“quote”: “There is only one happiness in life, to love and be loved.”,
“author”: “George Sand”,
“score”: 6.7102118
},
{
“id”: “JjE3kGwBuLHMiUvv1itT”,
“quote”: “Live through feeling and you will live through love. For feeling is the language of the soul, and feeling is truth.”,
“author”: “Matt Zotti”,
“score”: 6.2868223
},
{
“id”: “NTE3kGwBuLHMiUvv1iFO”,
“quote”: “Genuine love should first be directed at oneself if we do not love ourselves, how can we love others?”,
“author”: “Dalai Lama”,
“score”: 5.236455
}
]
}
}

So as you can see, we decided to limit our results to 3, but there are over 713 quotes!

We can easily get the next three quotes by calling:

curl localhost:3000/quotes?text=love&limit=3&page=2

{
“success”: true,
“data”: {
“results”: 716,
“values”: [
{
“id”: “SsyHkGwBrOFNsaVmePwE”,
“quote”: “Forgiveness is choosing to love. It is the first skill of self-giving love.”,
“author”: “Mohandas Gandhi”,
“score”: 4.93597
},
{
“id”: “rDE3kGwBuLHMiUvv1idS”,
“quote”: “Neither a lofty degree of intelligence nor imagination nor both together go to the making of genius. Love, love, love, that is the soul of genius.”,
“author”: “Wolfgang Amadeus Mozart”,
“score”: 4.7821507
},
{
“id”: “TjE3kGwBuLHMiUvv1h9K”,
“quote”: “Speak low, if you speak love.”,
“author”: “William Shakespeare”,
“score”: 4.6697206
}
]
}
}

And what if you need to insert a new quote? Just call the /quotes/new endpoint!

curl --request POST 
–url http://localhost:3000/quotes/new
–header ‘content-type: application/json’
–data ‘{
“author”: “Michele Riva”,
“quote”: “Using Docker and ElasticSearch is challenging, but totally worth it.”
}’

and the response will be:

{
“success”: true,
“data”: {
“id”: “is2QkGwBrOFNsaVmFAi8”,
“author”: “Michele Riva”,
“quote”: “Using Docker and ElasticSearch is challenging, but totally worth it.”
}
}

Conclusion

Docker makes it incredibly easy to manage our dependencies and their deployment. From that point, we could host our application on HerokuAWS ECSGoogle Cloud Container or any other Docker-based service with ease, without struggling to setup our server with their super-complex configurations.

Originally published by Michele Riva at blog.logrocket.com

=============================



#docker #node-js

Building a Full-text search with Node.js and ElasticSearch on Docker
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