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Guya E-commerce & Express With Microservices

Elastic Stack version

Contents

  1. Introduction
  2. Requirements
  3. Core Structure
  4. Integration
  5. REST API Guideline
  6. Setup Konga Admin UI
  7. Elastic stack (ELK) Services

Introduction

Architectures

Microservice Architecture

The Clean Architecture

BEM

Technologies Stack

Elastic stack (ELK)

Elastic stack (ELK) gives you the ability to analyze any data set by using the searching/aggregation capabilities of Elasticsearch and the visualization power of kibana.

Based on the offical Docker images form Elastic:

Elastic stack (ELK)

Pattern Lab

Bits.dev

Storybook

Customized Json Web Token (jwt)

Requirements

Core Structure

Core structure files and folders ended up with the following concepts:

  • Everything related to docker is placed in a .docker directory on on the same level as the main application

  • In this directory

    • each service gets its own subdirectory for configuration is a .shared folder containing scripts and configuration required by multiple services
    • is an .env.example file containing variables for the docker-compose.yml
    • is a docker-test.sh file containing high level tests to validate the docker containers
    • a Makefile with common instructions to control Docker is placed in the repository root

Setup Konga Admin UI

Konga provide GUI for interacting with Kong Admin API.

Konga would ask you to configure some credentials (Username + Password) that required to access Konga Web. After that they going to prompt how we want to communicate with Kong there's 3 available option:

  • Default (Not Recommended): Konga would access the Kong Admin API directly
  • Key Auth (Recommended): Konga would access Kong Admin API that run behind Kong (Loop-Back API) using configured Api Key.
  • JWT (Recommended): Konga would access Kong Admin API that run behind Kong (Loop-Back API) using JWT by using shared key and secrets.

In this project we use the second method using Key Auth. Before we setup connection let's go back to access our Kong Admin API. Currently Kong Admin API is publicly accessible for those anyone who has access to the url which is dangerous for production environment. Now we need to protect Kong Admin API by running it behind Kong using LoopBack.

Setup Konga LoopBack

With Kong's routing design it's possible to serve Admin API itself behind Kong proxy.

To configure this we need to following steps:

  • Add Kong Admin API as services
$ curl --location --request POST 'http://localhost:8001/services/' \
--header 'Content-Type: application/json' \
--data-raw '{
    "name": "admin-api",
    "host": "localhost",
    "port": 8001
}'
  • Add Admin API route: To register route on Admin API Services we need either service name or service id, you can replace the following command below:
$ curl --location --request POST 'http://localhost:8001/services/{service_id|service_name}/routes' \
--header 'Content-Type: application/json' \
--data-raw '{
    "paths": ["/admin-api"]
}'

Now our Kong Admin API is running behind Kong Proxy, so in order to access it you need to :

$ curl localhost:8000/admin-api/

Enable Key Auth Plugin

Our Admin API already run behind kong, but is not secured yet. In order to protect Kong Admin API we need to enable key auth plugin at service level by doing this commands.

$ curl -X POST http://localhost:8001/services/{service_id|service_name}/plugins \
    --data "name=key-auth"

Add Konga as Consumer

Our Admin API already run behind kong, but is not secured yet. In order to protect Kong Admin API we need to enable key auth plugin at service level by doing this commands.

Replace {custom_id} with any key for example custom_id=cebd360d-3de6-4f8f-81b2-31575fe9846a

$ curl --location --request POST 'http://localhost:8001/consumers/' \
--form 'username=konga' \
--form 'custom_id={custom_id}'

Create API key for Konga

Using Consumer ID that generated when we're adding consumer, we will use that Consumer ID and generate API Key.

From the above output get id and replace cid below for example cid looks like e7b420e2-f200-40d0-9d1a-a0df359da56e:

$ curl --location --request POST 'http://localhost:8001/consumers/{cid}/key-auth'

Setup Connection

Now we're already have all required component to setup Konga connection

Konga Admin UI Creating Connection

Remember in picture above, because Kong and Konga are in the same network they can simply reach each other by using container name.

Elastic stack (ELK) Service

Initial setup

Disable Default Quota

By default, Elasticsearch installed with homebrew on Linux goes into read-only mode when you have less than 5% of free disk space. If you see errors similar to this:

$ curl -XPUT -u elastic:elastic_pass -H "Content-Type: application/json" http://localhost:9200/_cluster/settings -d '{ "transient": { "cluster.routing.allocation.disk.threshold_enabled": false } }'
$ curl -XPUT -u elastic:elastic_pass -H "Content-Type: application/json" http://localhost:9200/_all/_settings -d '{"index.blocks.read_only_allow_delete": null}'

Setting up user authentication

ℹ️ Refer to How to disable paid features to disable authentication.

The stack is pre-configured with the following privileged bootstrap user:

  • user: elastic
  • password: elastic_pass

Although all stack components work out-of-the-box with this user, we strongly recommend using the unprivileged built-in users instead for increased security.

  1. Initialize passwords for built-in users
$ docker-compose exec -T elasticsearch bin/elasticsearch-setup-passwords auto --batch

Passwords for all 6 built-in users will be randomly generated. Take note of them.

  1. Unset the bootstrap password (optional)

Remove the ELASTIC_PASSWORD environment variable from the elasticsearch service inside the Compose file (docker-compose.yml). It is only used to initialize the keystore during the initial startup of Elasticsearch.

  1. Replace usernames and passwords in configuration files

Use the kibana user inside the Kibana configuration file (kibana/config/kibana.yml) and the logstash_system user inside the Logstash configuration file (logstash/config/logstash.yml) in place of the existing elastic user.

Replace the password for the elastic user inside the Logstash pipeline file (logstash/pipeline/logstash.conf).

ℹ️ Do not use the logstash_system user inside the Logstash pipeline file, it does not have sufficient permissions to create indices. Follow the instructions at Configuring Security in Logstash to create a user with suitable roles.

See also the Configuration section below.

  1. Restart Kibana and Logstash to apply changes
$ docker-compose restart kibana logstash

ℹ️ Learn more about the security of the Elastic stack at Tutorial: Getting started with security.

Injecting data

Give Kibana about a minute to initialize, then access the Kibana web UI by hitting http://localhost:5601 with a web browser and use the following default credentials to log in:

  • user: elastic
  • password: <your generated elastic password>

Now that the stack is running, you can go ahead and inject some log entries. The shipped Logstash configuration allows you to send content via TCP:

# Using BSD netcat (Debian, Ubuntu, MacOS system, ...)
$ cat /path/to/logfile.log | nc -q0 localhost 5000
# Using GNU netcat (CentOS, Fedora, MacOS Homebrew, ...)
$ cat /path/to/logfile.log | nc -c localhost 5000

You can also load the sample data provided by your Kibana installation.

Default Kibana index pattern creation

When Kibana launches for the first time, it is not configured with any index pattern.

Via the Kibana web UI

ℹ️ You need to inject data into Logstash before being able to configure a Logstash index pattern via the Kibana web UI.

Navigate to the Discover view of Kibana from the left sidebar. You will be prompted to create an index pattern. Enter logstash-* to match Logstash indices then, on the next page, select @timestamp as the time filter field. Finally, click Create index pattern and return to the Discover view to inspect your log entries.

Refer to Connect Kibana with Elasticsearch and Creating an index pattern for detailed instructions about the index pattern configuration.

On the command line

Create an index pattern via the Kibana API:

$ curl -XPOST -D- 'http://localhost:5601/api/saved_objects/index-pattern' \
    -H 'Content-Type: application/json' \
    -H 'kbn-version: 7.6.0' \
    -u elastic:<your generated elastic password> \
    -d '{"attributes":{"title":"logstash-*","timeFieldName":"@timestamp"}}'

The created pattern will automatically be marked as the default index pattern as soon as the Kibana UI is opened for the first time.

Configuration

ℹ️ Configuration is not dynamically reloaded, you will need to restart individual components after any configuration change.

How to configure Elasticsearch

The Elasticsearch configuration is stored in .docker/elasticsearch/config/elasticsearch.yml.

You can also specify the options you want to override by setting environment variables inside the Compose file:

elasticsearch:

  environment:
    network.host: _non_loopback_
    cluster.name: my-cluster

Please refer to the following documentation page for more details about how to configure Elasticsearch inside Docker containers: Install Elasticsearch with Docker.

How to configure Kibana

The Kibana default configuration is stored in .docker/kibana/config/kibana.yml.

It is also possible to map the entire config directory instead of a single file.

Please refer to the following documentation page for more details about how to configure Kibana inside Docker containers: Running Kibana on Docker.

How to configure Logstash

The Logstash configuration is stored in .docker/logstash/config/logstash.yml.

It is also possible to map the entire config directory instead of a single file, however you must be aware that Logstash will be expecting a log4j2.properties file for its own logging.

Please refer to the following documentation page for more details about how to configure Logstash inside Docker containers: Configuring Logstash for Docker.

How to disable paid features

Switch the value of Elasticsearch's xpack.license.self_generated.type option from trial to basic (see License settings).

Extensibility

How to add plugins

To add plugins to any ELK component you have to:

  1. Add a RUN statement to the corresponding Dockerfile (eg. RUN logstash-plugin install logstash-filter-json)
  2. Add the associated plugin code configuration to the service configuration (eg. Logstash input/output)
  3. Rebuild the images using the docker-compose build command

How to enable the provided extensions

A few extensions are available inside the extensions directory. These extensions provide features which are not part of the standard Elastic stack, but can be used to enrich it with extra integrations.

The documentation for these extensions is provided inside each individual subdirectory, on a per-extension basis. Some of them require manual changes to the default ELK configuration.

JVM tuning

How to specify the amount of memory used by a service

By default, both Elasticsearch and Logstash start with 1/4 of the total host memory allocated to the JVM Heap Size.

The startup scripts for Elasticsearch and Logstash can append extra JVM options from the value of an environment variable, allowing the user to adjust the amount of memory that can be used by each component:

Service Environment variable
Elasticsearch ES_JAVA_OPTS
Logstash LS_JAVA_OPTS

To accomodate environments where memory is scarce (Docker for Mac has only 2 GB available by default), the Heap Size allocation is capped by default to 256MB per service in the docker-compose.yml file. If you want to override the default JVM configuration, edit the matching environment variable(s) in the docker-compose.yml file.

For example, to increase the maximum JVM Heap Size for Logstash:

logstash:

  environment:
    LS_JAVA_OPTS: -Xmx1g -Xms1g

How to enable a remote JMX connection to a service

As for the Java Heap memory (see above), you can specify JVM options to enable JMX and map the JMX port on the Docker host.

Update the {ES,LS}_JAVA_OPTS environment variable with the following content (I've mapped the JMX service on the port 18080, you can change that). Do not forget to update the -Djava.rmi.server.hostname option with the IP address of your Docker host (replace DOCKER_HOST_IP):

logstash:

  environment:
    LS_JAVA_OPTS: -Dcom.sun.management.jmxremote -Dcom.sun.management.jmxremote.ssl=false -Dcom.sun.management.jmxremote.authenticate=false -Dcom.sun.management.jmxremote.port=18080 -Dcom.sun.management.jmxremote.rmi.port=18080 -Djava.rmi.server.hostname=DOCKER_HOST_IP -Dcom.sun.management.jmxremote.local.only=false

Going further

Plugins and integrations

:Insert

Swarm mode

: Under Development

Experimental support for Docker Swarm mode is provided in the form of a docker-stack.yml file, which can be deployed in an existing Swarm cluster using the following command:

$ docker stack deploy -c docker-stack.yml elk

If all components get deployed without any error, the following command will show 3 running services:

$ docker stack services elk

ℹ️ To scale Elasticsearch in Swarm mode, configure zen to use the DNS name tasks.elasticsearch instead of elasticsearch.

chmod 700 get_helm.sh

kubectl create -f namespaces.yml

Monitoring

Edit Prometheus service

Since prometheus & grafana services are available within a cluster (ClusterIP is the default Kubernetes service), therefore they can not be accessed outside of cluster.

In order to access the web GUI from outside of cluster, on our local machine we need to change default ClusterIP services to NodePort (Kubernetes transparently routes incoming traffic on the NodePort to your service).

$ export EDITOR=vim

$ kubectl edit -n guya-ltd-monitoring service/prometheus-operator-{randNum}-prometheus

and change type: ClusterIp to type: NodePort

REST API Guideline

Pagination

Name Type Default value Description
Page `integer string` 1
limit `integer string` 10

Example:

$ curl http://api.example.com/paths?page=4&limit=10

Ordering

It is possible to order the results by 1 or more keys using order_by(). The order may be specified by prepending each of the keys by “+” or “-”. Ascending order is assumed if there’s no prefix.:

Name Type Default value Description
order_by array null List of fields to order

Example:

$ curl http://api.example.com/paths?order_by=name,+age,-job

Filtering

Filtering follows {column name}={operator name}:{value}

Operator name list:

  • ne – not equal to
  • lt – less than
  • lte – less than or equal to
  • gt – greater than
  • gte – greater than or equal to
  • not – negate a standard check, may be used before
  • in – value is in list (a list of values should be provided)
  • nin – value is not in list (a list of values should be provided)
  • mod – value % x == y, where x and y are two provided values
  • all – every item in list of values provided is in array
  • size – the size of the array is
  • exists – value for field exists

Example:

$ curl http://api.example.com/paths?age=ge:18&name=abebe

Status Code usage

  • 200 Ok, usage GET, /api/v1/items, /api/v1/items/12
  • 201 No Content
  • 401 Unauthorized
  • 403 Forbidden
  • 400 Not Found
  • 400 Bad Request, ALL

Api Response Guide

    HTTP/1.1 200
    Content-Type: application/json

{
    status_code: 200,
    status: "OK",
    message: "All items retrived",
    links: {
        slef: "https://api.guya.com/v2/{resource}/{id}"
    }
    error: {
        message: "Error Message",
        type: "ValueError",
        code: 2500,
        trace_id: "dsfsf"
        ...
    },
    error: {
        email: {
            message: "Error Message",
            type: "ValueError",
            code: 2500,
            trace_id: "dsfsf"
            ...
        }
    }
    pagination: {
        count: 100,
        limit: 10,
        page: 2
    },
    // For Multi
    data: [
        {},
    ],
    // Single item
    data: {
        id: "id"
        name: "User",
        created_at: ""
    }
}

Api Sending Request

{
    username: "User one",
    password: "password"
}