Let us answer this, with the help of an example.
Cricket Ball Manufacturing process
We will consider a Cricket Ball manufacturing process as a hypothetical example
Background:
Now, let us say we have 2 types of Cricket Ball manufacturers XYou Sports Inc and YMe Sports Inc.
XYou Sports Inc produces ball in Country 1 where the ball will turn (Spin) more a
YMe Sports Inc produces ball in Country 2 where there is more swing.
Now the national team of Country 1 plays with the national team of Country 2 in one of its Cities…
Therefore Country 2 feels uncomfortable playing to a different brand of Cricket ball (made by X) as it has got more spin.
So, to counter that, Country 2’s Cricket board looks for XYou Sports Inc manufacturer to supply that brand to its national team.
The steps mentioned above, depict the AS-IS process view
AI-Enabled Process where human improvements were made
As XYou Sports Inc manufacturer found out that, multiple countries may need multiple type of Cricket Balls, it decided to leverage AI in getting useful insights and ultimately getting things done quickly.
As a first step, it ensured that AI process (and hence solution) was setup that addressed that the ball will be more conducive to Spin (turn) when implemented in Country 1. The AI was fed with data, and it was more like a supervised learning for the AI. The humans in the loop, were doing manual verification of key differentiating parameters/factors such as weight of the ball (in Ounces), size of the ball, bounce, seam, stitching, materials used …
AI solution evolves with the Process
Once XYou Sports Inc received the request from Country 2 as well, the team realized that they can still explore on AI technology and leverage it for bettering this process. It started to identify what kind of key differentiating factors can be included as part of the AI. The AI solution agent now has to look for an additional information(parameters) – how the prevailing weather in Country 2 impacts the cricket ball, how does the pitch/soil (in Country 2) supports this type of Cricket Ball (manufactured by XYou Sports Inc).
How did the MBB help here for XYou Sports Inc?
The MBB envisaged a plan. As this process is an ongoing journey and may have uncertainties and require constant feedback from the stakeholders (eg, National teams, Cricket Boards of respective countries..), he felt using Scrum as an agile framework might help the team to navigate through the uncertainties that might prop up.. He suggested the team to use this and also requested them to put a Kanban board for radiating information on a routine basis to all stakeholders
He had put a high-level plan that stated as
Planning Type
Objective
Remarks
Vision Planning
Developing a scalable tech excellence support Agent that supports the Cricket ball manufacturing process of XYou Sports Inc
Release Planning
Release Phase 1: Defining the AS-IS process to AI (Basic Knowledge Integration of the Cricket Ball manufacturing process)
Release Phase 2: Re-imagining the defined process in phase 1 by considering all key parameters that is required to make the ball suitable in multiple countries (Country1, Country 2)
Sprint Planning
Release 1
Sprint 1 – Creating the KB agent and AI agent for defining few basic parameters (such as weight and shape)
Sprint 2 - Defining the KB agent and AI agent for remaining parameters such as materials, bounce, seam, stitching
Release 2
Sprint 3 – Defining the KB and AI agent for additional parameters such as pitch soil, weather conditions of a country (which can influence the ball behaviour)
Duration: 2 weeks
Note: Sprint 1 will have a minimum viable product (setting up the AI process and adding very limited functionality)
Release 1 had 2 Sprints and Release 2 had 2 Sprints
Sprint 2 had the feedback incorporated from the stakeholders that came from Sprint 1. Similarly for Sprint 3, 4 the team got feedback from the previous Sprints and incorporated the feedbacks which were relevant to them
Subsequent releases had subsequent Sprints based on the emerging needs for the manufacturer.
Integrating AI into improvement Cycles and AI process got adapted with proper feedback
As we see from the above table, the team leveraged Scrum as a framework to build an iterative and incremental development of their AI based Cricket ball manufacturing process. What was a cumbersome exercise in getting huge amount of data across multiple parameters and few parameters which were changing based on the Country and its weather conditions (worst if there are multiple weather phases – summer, winter, autumn..in a country) , it became much more simpler when done with AI. Every Sprint produced some incremental values keeping the stakeholders happy.
The AI system improved itself over a time period as it gathered more data (in the usage of how the cricket balls behaved in those countries across weather seasons) and had reinforced learning to improve itself
With every Sprint, there was a Sprint Review that happened where the stakeholders were presented with the finished work (in the Sprint). Whatever feedback was given was taken into consideration and those were implemented.
Strategic Role of MBBs in maintaining alignment
The MBB was able to devise a strategy for AI solutioning of this Cricket Ball manufacturing process. He was able to setup a vision, release plan and then help the team to come up with Sprint goals for each of the Sprint making the team adjust to the uncertainties
Conclusion:
We saw here how AI enabled process with human efforts can navigate through complex scenarios/situations in an incremental manner addressing emerging needs with quick feedback cycles. The most important thing is quick release(deployment) of the value that you want your stakeholders to get and have continuous exploration of the market needs and adapt your system accordingly.