2021/12/22

Workflows with JMS messaging

 Last several years there is a lot of buzz about Apache Kafka, Apache Pulsar and in general about event streams. But looking into lots of organizations they are in many case still relying on "old good traditional messaging". To give one example of that, IBM MQ is very popular within small, medium and big enterprises to realize messaging between systems.

While event streams are starting to play bigger role in integration, there are still big opportunities to build systems and services based on traditional messaging. In Java world, JMS is an excellent solution to that. Majority (if not all) Java frameworks for building services have support for JMS such as Spring, Quarkus, Jakarta EE application servers and many more.

Have a read of full article here.

2021/11/30

Apache Kafka event stream with workflows

Apache Kafka event streams consumed by workflows

An inspiration for this blog post is another blog post by Piotr Minkowski that perfectly introduced Kafka Streams with Quarkus. This triggered a thought - can workflows be used as an alternative to Kafka Streams to process multiple event streams (merge them and process various events streams with some correlation logic)?


A complete blog article can be found at Apache Kafka event stream with workflows
 

2021/04/29

User task forms and email notifications in Automatiko

 Automatiko 0.4.0 has just been released. I comes with quite some new features among them are 

  • user task forms that is provided by user task management addon
  • user task notifications that is provided by user task email addon
These two combined provide an excellent support for human actors participating in workflow automation. This article is about to provide some hints behind these two features of Automatiko, so let's dive into them directly.

User task forms

Forms that represent user task (a task assigned to human actors) are a common requirement in the process/workflow automation scenarios. In many cases it is expected that forms will be auto generated by the workflow engine (and some offerings on the market actually do that). But the main problem with that approach is that is is very limited. In many cases it can only support basic forms and what is even more important they are not providing proper business context behind the task. They are usually very generic and expose internal parts of the workflow engine that runs them. 

To give an example -  let's assume we have a simple vacation request approval task assigned to a manager. The auto generated forms are usually going to present it with a checkbox for approval decision and a button to complete the task. The reason for that is the generation of the task form is based on data types of its outputs which will be approved of type boolean and boolean is usually represented as check box. While this will work it does not show the form in expected format - meaning it would show the details of the request and then have two buttons one to approve and another to reject. Taking it even further if the reject button is used the form could ask for additional comment why it was rejected. This can't be done with auto generated forms.

The approach in Automatiko is bit different, it can still show very simple generic form but that is considered as fallback option as sometimes there is just a matter of providing kind of "For your information" type of tasks where the only thing to be done is to acknowledge it. Though for anything that requires input from end user the form should be designed and provided as part of the service.

This is realised with templates for user tasks. Each template is a fully featured HTML page that can use any kind of framework or styles. You can build a really dynamic forms with the use of JavaScript frameworks e.g. JQuery, you can style it with Bootstrap and so on. You own the entire space on how to build your forms, how to layout the forms, if you need to load data from other service to populate fields you can do that without a hassle.
Templates in Automatiko relies on Qute, a server side templating engine from Quarkus. It gives you all the power of the templating and is very well tuned for performance and fast delivery to your clients. Automatiko will give you all the details you need for given task so you can render it and make it very contextual to your users so they will directly know what is expected from them. Plus you can make it to look and feel as any other application in your organisation.

You can read up on the details on how to build your user tasks forms in Automatiko documentation and you can also take a look at vacation request example what makes use of it.

Email notifications

Another important aspect of the user tasks in workflow automation is to notify when a task is assigned. This is very common and almost any user of workflow automation expects this to be out of the box. Automatiko comes with this by a means of addon that will equip your service with this feature.



Emails are expected to serve as a way of notifying about task being assigned and not necessarily about the complete context behind the task. That's why a default template for emails in many cases will be good enough. But it is configurable as well so you can define an email notification template for every task separately. It uses the same approach as the user task forms - templates. 

In addition, tasks can be assigned to individuals and groups so somehow there must be a way to know the email addresses for them. By default Automatiko assumes users are represented as email addresses but that is not always the case. Don't worry, there is a simple way to solve it, by implementing a single interface you can provide your way of resolving user and group identifiers to email addresses. To learn more head to the Automatiko documentation.


At the end I'd like to give you an opportunity to see it in action, have a look at this short video showing both features in action.

If you have any questions or comments feel free to reach out on twitter or mailing list (@automatiko_io) automatiko-dev@googlegroups.com).

2021/04/14

Version workflow data with ease

 A common scenario when working with workflows is to handle data objects and their changes. In most of the situations workflow instance will only keep the last value of it and to realise use cases like comparing what was just sent to the instance with what was already in there requires having duplicated data object definitions. This is not the best approach as it makes the workflow definition "corrupted" with details less important from the business goal perspective.

With Automatiko (since version 0.3.0) there is an alternative way to this problem. This is to version data objects by annotating it with data object tag called versioned.

So what happens when you make data object versioned?

Automatiko engine will record every change to the variable as new version. These versions are then available to be accessed as any other variable but will require additional suffix to the variable name


  • suffix $ will give access to complete version list of the variable e.g. person$
  • suffix $X where X is a number of the version to retrieve it can be a negative (-1) to fetch latest version e.g. person$5 or person$-1

Sometimes referring to versions directly might result in errors like attempting to get the version that does not exist. To make it simpler, Automatiko provides ready to use functions that can be used from 

  • script tasks
  • gateway conditions

The functions you can use are as follows:
  • previousVersion(versions) allows to get latest version of the variable list - previousVersion(person$)
  • variableVersion(versions, number) allows to get variable version stored under version number - variableVersion(person$, 4) - note that this one is safe and will return null when given version number does not exist
  • isEqual(var1, var2) allows to easily compare two versions of the variable - isEqual(person, previousVersion(person$))


Another aspect is that you can easily create your custom functions by simply implementing io.automatiko.engine.api.Functions interface and implementing public static methods that will become functions and will be available in the workflow definition. You can read up more in Automatiko documentation.

In addition to that Process Management UI also provides quick access to variable versions and allows to also revert to given version of the data object. Once you have process management addon in your service it provides both UI and REST api to interact with versions of the data objects.




Following video shows this in action and the value it brings.


Stay tuned for more updates around Automatiko project. If you have any questions or comments join our community either on mailing list or GitHub discussions.

2021/03/17

Kubernetes Operator with Automatiko

Here is more of a developer view on the recently published article on Automatiko blog about building Kubernetes Operators with workflows. It shows that is brings significant value to the overall visibility of the operator logic and makes it really approachable for non kubernetes gurus.


I'd like to take it a bit further and show how efficient it can be thanks to the internals of Automatiko. Automatiko takes advantage of Quarkus that provide the runtime mechanics so to say. Quarkus comes with an outstanding feature called dev mode. Everyone who heard about Quarkus most likely heard about dev mode and live reload. But there is more to it!!!

Remote dev mode - is a sibling to the dev mode but it allows you to live reload application remotely. A perfect fit for in-container development or even better in kubernetes cluster development. This brings us to the unbelievable efficient developer experience when building Kubernetes operators - you can build them directly inside the Kubernetes cluster. No need for rebuilding the image, no need to redeploying the container and so on... it just works like a charm.


Have a look at this video illustrating how you can easily work on your operator logic that runs inside the kubernetes cluster. Make modifications to the logic and try it out almost instantly (assuming your kubernetes cluster and deployed container have enough resources to make it efficient ;)).


The video showed number of features

  • how to configure the application to run in remote dev mode
  • how to make changes to the workflow definition
  • how to make modification to application code
  • automatic reload of the application that includes both workflow and java classes
All working smoothly and efficiently without much of a hassle 

A huge kudos to Quarkus team for making it a fantastic piece of software that makes developer life easier... a truly cloud native as it enables direct in cluster development that speeds the work up significantly!!!

2021/02/25

Getting Started with Automatiko - IoT and MQTT - Part 2

As a follow up of part 1 of the Automatiko IoT and MQTT I'd like to take you further in exploration around workflows and IoT with MQTT. 


This time we look at the details of how to take advantage of some MQTT features (e.g. wildcard topics), collect sensor data into a bucket (or to make this simple - a list) and then assign user tasks based on amount of data collected instead of for every event.

In addition to that, we look into Automatiko features that makes using workflows for IoT way easier...

Wildcard topics

Let's start with MQTT feature for subscribers - this is actually what workflow in our sample is - a MQTT topic subscriber. So let's first look like how does it work under the hood in Automatiko.

Automatiko uses message events (start or intermediate) of BPMN to integrate with message broker - in this case MQTT. Message events are referencing message which describes the way how it can connect to the broker

  • by default uses name as the topic name 
  • data type of the message defines what type will be used to unmarshall incoming event into
  • supports custom attributes to alter defaults

In this article we are going to use custom attributes to define both topic that will use wildcard and the correlation expression to extract information out of the topic instead of the message (as we did in part 1).





In the screenshot above you can see two custom attributes
  • topic
  • correlationExpression
Topic is used to define the actual topic in MQTT that the workflow definition will be connected to and listening to incoming events. 

Correlation expression on the other side defines an expression that will be used for each incoming event to extract a key to be used for both identification and correlation.

Correlation expression uses special function "topic" that accepts following parameters
  • message - references the incoming message
  • index - an index that will reference different parts of the topic - it starts with 0
So for this example topic(message, 1) and the topic home/kitchen/temp the extracted correlation key will be kitchen. This in turn will be used as identifier of the workflow instance and thus you can use it in the service api calls.

You can read up more on the messaging support in automatiko in documentation.

Data bucket to collect sensor data

Next topic for today is the collection of sensor data. In part one we simply assign it to a data object of the same type. This time we expand and make sure we can accumulate the data.

So with that said there are few things that must be done

  • data object must be of type list
  • data object of type list needs to be initialized so it can easily get new items
  • message events received from MQTT need to be added to the list instead of assigned to data object (which would mean overridden)

Changing type is rather simple but ensuring it is initialized might be a bit more complex... but not with automatiko :) It is as simple as adding a tag on data object - auto-initialized



Configuring the message event to append to a list instead of assigning to the data object is also rather simple with automatiko, it is to use expression instead of direct mapping on the message event.



And that's it - we have now ready to use data bucket for our sensor data.


Decide when to include human actors

In this simple example we are going to receive events from MQTT and collect them into a bucket. But we don't want to involve human actors on each event. So here we can use gateways - a construct that allows us to have different paths in the workflow.


We only create a user task when the bucket has more than 5 events collected. Otherwise it simply end the path. But to prevent the workflow instance from finishing we make the workflow to be ad hoc - that allows it to stay active even though there are no active nodes in it. Marking workflow as ad hoc is done in the Properties -> Process panel.

See it in action

Have a look at this 10 min video showing all this in action. Note that this is live coding so you will see the errors as they might show up and you can imagine that this is not a scripted video where everything works from the start :)



Code can be found in github where each part of the series is a separate tag and main branch is pointing to latest version of the code base.

Conclusions

This part focused on bringing more advanced features of MQTT into the workflows to show the integration and how powerful these two can be. Using topic information as correlation, locating right workflow instances for incoming events and accumulating data is one of the most common use cases for IoT so workflows should make it simple to realize that.

2021/02/22

Getting Started with Automatiko - IoT and MQTT - Part 1

Around a month ago there was the first release of Automatiko project. It aims at providing an easy to use yet powerful toolkit to build services and functions based on workflows and decision. You can read up more information about the Automatiko project at the website or blog.

This blog post is very basic introduction that attempts to address the first level of entry when starting with Automatiko. 

Before you start...

So first things first... to get you up and running you need few things on your local computer

  • Java 11 +
  • Maven 3.6 +
  • Eclipse IDE  and Automatiko plugin
  • Optionally docker or podman to run services as containers

Head directly to documentation of Automatiko project to follow step by step instruction how to get the above up and running.

The use case

The use case of this introductory sample is very simple - to connect to MQTT to receive data from the sensors that are being published there. It mainly focuses on the steps to get this working and further articles will provide more advanced features in action.

Let's get started


To get started you need to create a project, a maven project to be precise. Luckily Automatiko comes with bunch of maven archetypes that makes this task way faster. One of the is `automatiko-iot-archetype` and this is the one we are going to use today.

Archetype can be used from IDE or command line so whatever you prefer can be used and result will be exactly the same.

Once the project is there, you need to define your data model that will be used by the workflow - as data objects. In this example you can create simple POJO like class names `Temperature` that will have two fields

  • value - of type double that will contain the temperature value from the sensor
  • room - the location where the temperature was measured

Next step is to create a workflow definition that will be responsible for connection to MQTT broker. This is realised by message start event that allows not only to be the entry point for new instances but also allows to define some characteristics of the connectivity and processing.



All that is needed to talk to the MQTT broker is defined directly in the workflow definition. In our sample case, the topic in MQTT broker is simple taken from the message defined on the start event.

At the same time, data that is received from the MQTT topic is automatically converted to the data model - represented as 'Temperature` class and mapped to a `temp` data object inside the workflow instance.

Lastly, user task is also added to the workflow definition that introduces a human actor into the flow. That is mainly for demonstration purpose to show we receive data from MQTT that is properly converted into a Temperature class instance and set within the workflow instance data objects (aka variables).

A bit of advance...

As you will see when running this sample, ID of the workflow instance is auto generated (in UUID format). But that can be changed and take advantage of either data or the MQTT topic itself. By setting correlation or correlation expression on the message (via its custom attributes) you can set the id to be more domain specific.




In this case, we take the room from the message and use it as correlation. Correlation upon start of the workflow instance becomes its id - aka business key and by that it can be used in exchange with the generated ID. With that said you can use this when interacting with service API.


You can look at the introduction video that covers the content of this article.

Let's get this running...

To get this running we need a MQTT broker. Personally I find Mosquitto to be excellent choice but any MQTT compliant broker would work.  

You can get Mosqiutto running with just a simple command (docker required)

docker run -it -p 1883:1883 -p 9001:9001 eclipse-mosquitto

There are other ways to run mosquitto so visit website if docker is not an option.

Run the Automatiko service

Since Automatiko generates fully functional service there is no much to do to see it in action. It is based on maven and leverages Quarkus as runtime so most Quarkus features are also available out of the box e.g. dev mode, Dev UI etc.

mvn clean quarkus:dev

and then wait a bit for maven to download all the bits....

Once it's started you should see similar log entries


You can head directly to http://localhost:8080/swagger-ui and you will be presented with nicely document API of your service


So it is now fully functional service connected to your local MQTT broker. With this you can start publishing sensor data to it and see how quickly they are consumed by Automatiko service.

You can use mosquitto client command to publish messages from command line

mosquitto_pub -t temperature -m '{"room":"livingroom", "value" : 25.0}'

use Swagger UI to see created instances based on incoming messages from MQTT.

Running as container

In case you would like to get this running as container then it is again dead simple, just run maven command with `container` profile enabled

mvn clean package -Pcontainer

And that's it. As soon as build is over you will have the container image in your local registry.

Conclusion

That's it for the first introduction - I hope it will get you interested and you will look forward for the next articles. They will come ever other week... at least that's the plan. Please share your feedback either here or via mailing list and twitter. 

If you have any ideas for the use cases to cover with Automatiko don't hesitate to let us know about them as we are here to help and explore.

Thanks for reading!