bpmNEXT 2018: Here’s to the oddballs, with ConsenSys, XMPro and BPLogix

And we’re off with the demo sessions!

Secure, Private Decentralized Business Processes for Blockchains, ConsenSys

Vanessa Bridge of ConsenSys spoke about using BPMN diagrams to create smart contracts and other blockchain applications, while also including privacy, security and other necessary elements: essentially, using BPM to enable Ethereum-based smart contracts (rather than using blockchain as a ledger for BPM transactions and other BPM-blockchain scenarios that I’ve seen in the past). She demonstrated using Camunda BPM for a token sale application, and for a boardroom voting application. For each of the applications, she used BPMN to model the process, particularly the use of BPMN timers to track and control the smart contract process — something that’s not native to blockchain itself. Encryption and other steps were called as services from the BPMN diagram, and the results of each contract were stored in the blockchain. Good use of BPM and blockchain together in a less-expected manner.

Turn IoT Technology into Operational Capability, XMPro

Pieter van Schalkwyk of XMPro looked at the challenges of operationalizing IoT, with a virtual flood of data from sensors and machines that needs to be integrated into standard business workflows. This involves turning big data into smart data via stream processing before passing it on to the business processes in order to achieve business outcomes. XMPro provides smart listeners and agents that connect the data to the business processes, forming the glue between realtime data and resultant actions. His demo showed data being collected from a fan on a cooling tower, bringing in data the sensor logs and comparing it to manufacturer’s information and historical information in order to predict if the fan is likely to fail, create a maintenance work order and even optimize maintenance schedules. They can integrate with a large library of action agents, including their own BPM platform or other communication and collaboration platforms such as Slack. They provide a lot of control over their listener agents, which can be used for any type of big data, not just industrial device data, and integrate complex and accurate prediction models regarding likelihood and remaining useful life predictions. He showed their BPM platform that would be used downstream from the analytical processing, where the internet of things can interact with the internet of people to make additional decisions required in the context of additional information such as 3D drawings. Great example of how to filter through hundreds of millions data points in streaming mode to find the few combinations that require action to be taken. He threw out a comment at the end that this could be used for non-industrial applications, possibly for GDPR data, which definitely made me think about content analytics on content as it’s captured in order to pick out which of the events might trigger a downstream process, such as a regulatory process.

Business Milestones as Configuration, BPLogix

Scott Menter and Joby O’Brien of BPLogix finished up this section on new BPM ideas with their approach to goal orientation in BPM, which is milestone-based and requires understanding the current state of a case before deciding how to move forward. Their Process Director BPM is not BPMN-based, but rather an event-based platform where events are used to determine milestones and drive the process forward: much more of a case management view, usually visualized as a project management-style GANTT chart rather thana flow model. They demonstrated the concept of app events, where changes in state of any of a number of things — form fields, activities, document attachments, etc. — can record a journal entry that uses business semantics and process instance data. This allows events from different parts of the platform to be brought together in a single case journal that shows the significant activity within the case, but also to be triggers for other events such as determining case completion. The journal can be configured to show only certain types of events for specific users — for example, if they’re only interested in events related to outgoing correspondence — and also becomes a case collaboration discussion. Users can select events within the journal and add their own notes, such as taking responsibility for a meeting request. They also showed how machine learning and rules can be used for dynamically changing data; although shown as interactions between fields on forms, this can also be used to generate new app events. Good question from the audience on how to get customers to think about their work in terms of events rather than procedures; case management proponents will say that business people inherently think about events/state changes rather than process. Interesting representation of creating a selective journal based on business semantics rather than just logging everything and expecting users to wade through it for the interesting bits.

We’re off to lunch. I’m a bit out of practice at live-blogging, but hope that I captured some of the flavor of what’s going on here. Back with more this afternoon!

2 thoughts on “bpmNEXT 2018: Here’s to the oddballs, with ConsenSys, XMPro and BPLogix”

  1. Thanks Sandy! You can think about the App Events as a series of (business) state declarations based on one or more (transactional) states within a case, form, process, or other entity. Some App Events are “roll-ups”, or milestones, declaring a state based on a combination of other App Events.

    So App Events are a data model within Process Director. Of course, we use that data to drive decisions across the system (e.g., “if the state Application_Complete has been established, AND our machine learning model identifies this applicant as likely to be highly desirable, expedite the application review process”). But, as you correctly point out, we also provide a view to that model in the form of Journals.

    Journals provide a threaded, interactive representation of business conversations. In their simplest form, they’re rather typical, forum-like threaded comment logs. But they can be configured to include all (or, more commonly, some configurable subset) of App Events, providing structure to the conversation in the context of a human-readable log telling the story of your application from a business perspective.

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