Tuesday, May 20, 2025

What are People Reading in 2025?

There was a shift in early 2025 to topics of tradition over the massive interest in AI exhibited in 2024. It's not that folks aren't following through with AI; they are combining and contrasting proven methods and tech, so show AI in the context of success. You can refer to 2024's hot topics by clicking here. 


There was also a shift in active countries other than the US and China. The northern European countries are typically well represented, but other than Norway, the mix is very different than usual.  



Wednesday, April 23, 2025

Preorder Practical Business Process Modeling and Analysis:

This book should be handy for those who want to master digital change with incremental business process management modeled for AI transformation. All authors have significant real-world experience and are thought leaders in digital processes and customer experiences. Click here to preorder 





Book Description

Every business transformation begins with a question: How can we do this better? Whether it’s eliminating inefficiencies, optimizing business operations, automating repetitive tasks, or reimagining entire workflows with the help of AI, success depends on understanding and optimizing business processes. However, with shifting market demands and evolving technologies, finding the right approach can be challenging.

This book dives into business process modelling, guiding you through frameworks, techniques, and tools that drive digital transformation. You'll learn to visualize complex workflows, establish scalable process architectures, and integrate automation for efficiency. With insights into BPMN and business value analysis, you'll discover how data-driven decisions can lead to smarter, more agile operations. Through real-world examples, you’ll see how leading organizations have optimized their processes and how you can apply the same principles while embarking on a digital change program.

By the end of this book, you’ll be able to design, analyze, and refine business processes for measurable impact. You'll master the synergy of technology, process, and strategy to build adaptable systems that drive sustainable growth in digital transformation.

What you will learn: 

Build scalable process architectures for long-term efficiency and adaptability.
Avoid common pitfalls in digital transformation and automation.
Apply real-world strategies and frameworks to optimize operations effectively.
Discover methods and tools to enhance business process analysis and decision-making.
Learn how BPMN can be extended for scenarios like process simulation and risk management.
Measure and maximize business value from process transformation efforts.

Who this book is for

Whether you're a business analyst, project manager, consultant, or strategist, you likely face challenges in streamlining workflows, optimizing processes, or integrating AI and automation. This book provides the tools, techniques, and frameworks to visualize, analyze, and improve business operations. Some familiarity with business processes and technology is helpful, but no prior expertise in BPMN or automation is required.

Tuesday, April 15, 2025

Art of the 1st Quarter 2025

 With a new song coming out in January 2025, my art focused on an image that projects the theme of the song and an AI-generated music video. Dark Star Love is about an exciting and scary chance meeting with a kindred soul. Will it last or will they move on? It's like plunging into a black hole of sorts. Click on this link for the full video 




Monday, March 24, 2025

Agentic AI & Process: Better Together

One of the best places to implement AI practically and successfully is in external or internal processes, including front and back-office processes used in every day and game-changing modes. Processes are often the basis of organizational actions that cross internal and external boundaries. These processes often employ resources that could benefit from AI's automation or assistance, especially where knowledge, decision-making, and agile optimization based on changing or emerging goals are required. Examples include staying in touch with customer sentiment during interactions with your organization, the state of your supply chain, prioritizing limited supplies, or internal processes that must be tuned to stay operationally optimized while responding to change. Typically, organizations start with automation and then human assistance. AI-enabled processes can also take intelligent and agile action and are often the first place unusual events and patterns are sensed, requiring tactical adjustments and pointing to potential strategy changes. Processes are a great place to start with AI, whether in mining current or past results, sensing behavior shifts that point to new opportunities or threats, making better decisions, or assisting scarce resources while optimizing outcomes.

AI can safely start inside the context of a process while sitting outside the process, watching and guiding results in either static or emergent processes/cases. Organizations must consider how best to leverage AI with processes inside or outside a process. Traditionally, processes are flow-directed, and AI services the tasks or resources of the process. Still, there are significant benefits to leveraging AI in a goal-directed process where AI responds to sensed change outside a process, managing the process's shape, sequence, and resources for organizational outcomes within governance constraints.

Three Process Types: Headed to Hybrid

Understanding three types of processes is essential before entering the experimentation phase or deciding to institutionalize and process activity. See Figure 1 for the typical process types used today that will likely be used in a hybrid fashion in the future.


                                Figure 1: Process Types Used Today

It is important to know what each process type brings to the party as fixed processes evolve to goal-driven and event-sensitive processes. Below, I created a quick and dirty comparison of the types of processes and their attributes. As organizations journey into the AI Agentic world, leveraging the strengths of other process types will come in handy while allowing the leverage of legacy processes and computing assets.

 


 AI & Process Evolution

AI can quickly start with actions and migrate to and then move to add recognition and decision tasks in emergent processes with feedback loops as fast as real-time. Putting control outside the process/process snippets will lead to Agentic AI. See Figure 2 for the journey to Agentic AI.




                              Figure 2: Journey to Agentic AI

While AI promises and has delivered significant benefits, particularly in automation and people assistance, it is vital to manage the risks involved with any new and emergent technology. Some proven approaches allow organizations to experiment and implement new technologies while gleaning solid benefits that can be optimized over time. The two major phases are experimentation and institutionalizing. Experimentation aims to manage risk while gleaning benefits, growing institutional learning, establishing skill sets, and creating additional pathways to benefits. Institutionalization seeks to expand an organization's skill base, extend better/best practices, and create an organizational strength to leverage in the battle for AI advantage. Savvy organizations will repeat this experimentation/institutionalization cycle continuously.

Agentic AI introduces another area for experimentation that combines the strengths of agents with the strengths of processes. Over time, some or all the control of processes will be relinquished to outside the processes to Agentic AI. See Figure 3 for the four vectors of agents' abilities growing in influence in and around processes.

Trying Agentic AI


                      Figure 3: Agentic AI Ability Vectors



Institutionalizing Agentic AI After Initial Successes




                         Figure 4: Agentic AI in Context.
 
After the experimental phase of operationalizing AI, organizations must invest additional efforts to take advantage of AI while fully institutionalizing AI incrementally. Depending on the use cases chosen, this investment could include capital expenditures for software and services and budgeted internal efforts—understanding where selected use cases play in AI's overall maturity and direction. Refer to Figure 4 Agentic AI in Context. Savvy organizations will not only focus on use cases that provide benefits in the short term but also consider the use cases in an overall AI architecture and direction that matches AI maturity. This writing encourages using AI within business processes or customer journeys. Still, AI can be used in isolation of processes as bots/agents acting independently as solo automation or monitoring. The sweet spot of AI today is at the business level in internal or external processes, but AI can be used in the technical infrastructure or the B2B levels.

Net; Net:

As you can infer from the detail in this paper, processes are essential for safely operationalizing AI initially while incrementally growing the benefits and effects of AI now and in the foreseeable future. I suggest starting with process-driven AI to augment the traditional data-driven AI that has been successful. Searching data for opportunities is good, but goal-driven processes that link to business goals ensure a more direct contribution to the bottom line and the goals of an organization while staying congruent with its values. While data is critical, a dynamic process powered by AI is the closest to executive success. The emphasis on goal-directed Agentic AI approaches coupled with governance boundaries (constraints) is one of the most important ways to keep AI on point. The importance of goal management will increase over time. See my writing on goal cycles here: 

Since processes are more closely connected to goals and point to the required data sources to attain current and emerging goals, pure data-driven approaches are likely to drive costs high as all data could be significant with little goal guidance.




Wednesday, January 29, 2025

Top 5 Predictions for 2025




1. Change will dominate


Change is accelerating, and the environments in which businesses and individuals participate are changing. Complications and emergent complexity will increase, thus pushing situational analysis to the fore. While more information sources on trends and potential change are available, few businesses are taking advantage of dealing with change proactively. Those who make situational analysis a proficiency will make dealing with change a key to thriving in 2025 and beyond.

Read About Change:

Situational Analysis

Situation Analysis with SWOTS

Big Change and Peeps

2. Lack of Speed Kills

Organizations and individuals that can't keep up will be in for uncomfortable days ahead. Not only will proactivity be necessary, but the ability to adapt with the proper speed will become a cherished proficiency. Organizations need to see where they are in real-time and make decisions that follow expected and unexpected situations at all levels. Quickly taking the right actions is the most crucial ability for organizations and individuals. Bombardments from bad actors and impure data/information will complicate it.


Read About Speed:

Real-Time Awareness

Decisions, Decisions

On Point Actions


3. AI will be a Force Multiplier

Many facets of AI will gain momentum in 2025. AI will be essential to deliver productivity gains necessary to move the needle for GDP growth while reducing the hours worked for organizations and individuals. AI will unlock and multiply human potential in new and better ways. AI will be embedded in more and more interactions, processes, and applications in 2025. AI will act as agents to complete tasks for humans, enhance skills as humans complete their assignments, and give knowledge and advice in various domains and roles that humans participate in. It makes no difference if you are a consumer, employee, investor, or creator; AI will be there in emerging ways in 2025. Ethics will be tested in 2025 as some use AI in unexpected ways.

Read About AI Actions

AI for Good!

Fear of AI is Overcome

AI is Productive


4. Many Facets of AI

Many, but not all, facets of AI will make significant progress in 2025. Typically, flashy forms of AI catch the eye of the news and markets. In 2024, it was Generative AI, and in 2025, so far, it's Agentic AI. While markets tend to follow the flash, with AI, it's more than the flash. Past forms of AI will continue to build multiple baselines while the "AI du jour" will cast its temporary spells. AI will likely be used in combination with other digital technologies to find soft spots for increased productivity. It won’t be just automation; it will be assistance as well in 2025, leading to augmentation by AI and teamwork with AI.

Read About AI Types

Types of AI

AI More in Control

Automation & Assistance


5 Govern Now or Pay Later

While we all wait for governance and legal frameworks from the strategic and governmental levels, we need to do our job by setting proper goals and boundaries for AI. As AI emerges, setting up good goals and boundaries will be essential, along with auditing outcomes. Governance will lag until something bad happens at a local or global level. There will be goal and boundary conflicts until an overall framework is agreed upon and enforced, but I would settle for the framework for now. Enforcement will evolve slower than the framework initially.


Read About AI Governance

Goal Life Cycle

AI Needs for Governance Over Time

Key Technologies for Goal Management

















Monday, January 13, 2025

What Did Folks Read in 2024?

2024 was a year of AI discovery. The goal was to prove that AI could help businesses, so many proof-of-concept projects and pilots were conducted in organizations. The hope was that AI could enhance or accelerate the digital business movement. Most proof-of-concept projects proved valuable, so baking AI into digital business efforts became a reality for the future. As generative AI took the spotlight, there was a scurry in using AI to create content and code. This was a significant shift from 2023, when AI was nascent and emphasized digital processes. Customer Journey topics consistently fall behind AI and Digital in aggregate. 

                      2024 Twelve-Month Sinur Blog Activity




In 2024, countries other than the US and China focused on Northern Europe activity, where embracing new technologies occurs first. This trend has been consistent year after year since I first published my blog in 2013 and has been evident in well over a million hits. 

     2024 Activity by Country Other Than the US & China







Wednesday, December 4, 2024

Strategic Situation Analysis with SWOT

While no organization or individual can predict the future, organizations that aren’t ready for the future will be disadvantaged. I’ve asked one of my long-time associates to be a guest blogger on a topic that plays well to be prepared for the future. Frank Kowalkowski, the President of Knowledge Consultants, Inc. (see bio below), gives us a quick overview, delivering an excellent approach to being ready for the future by leveraging intelligent SWOTs. 

Summary – Enabling Situation Analysis/SWOT with Analytics

Today’s external environment is a considerable challenge in developing strategic foresight. How can we anticipate the volatile state of the landscape and separate out the stable part? Where do our opportunities lie for successful continuity, not just survival. What short-term and long-term issues lurk that may prevent achieving organizational goals? What should you act on, and what should you start watching? So many questions going forward and so little insight. Situation Analysis and SWT were designed to assist in assessing this condition. However, it has been the victim of aging usefulness.

Let us review for a moment. The goal of a strategic management effort is to develop a viable strategic foresight perspective for the organization. Situation analysis drives that foresight. Strategic change may include direction that ranges from simple changes to radical disruptive changes, depending on the stage of the organization's performance and the interests of management and related parties. The degree of change impacts the scope of the strategy effort, especially the effort for situation analysis.

Situation analysis with SWOT is used on a macro-strategic (enterprise-wide) basis or on a micro-scale applied to the tactical or operational part of the organization. SWOT analysis can also be applied to the study of competitors.

Why make changes to how Situation Analysis is done?

Major business modeling experts such as Michael Porter, Henry Mintzberg, and others have identified several reasons for concern and the need to upgrade to Situation Analysis with SWOT (SA/SWOT). Here is a summary of the issues for improving SA/SWOT value and quality:

  1. The lack of rigor such as ‘forward looking’ analytics and lack of extended analytics to business models has left the result incomplete.
  2. There is a lack of well-defined steps in applying SA to the strategy process. The approach varies with whoever is doing the analysis. There are as many variations as there are consulting firms.
  3. The current SA/SWOT method is labor-intensive, human-intensive research taking up at least 50% of the effort.
  4. The analytics that exist are historical in nature, and many predictive analytics are difficult to use. Few tools for strategic and tactical business analysis exist. Those have limited and complex analytic algorithms that discourage rigor in analysis.

Resolving each of these points

1. Forward-looking analytics

The history-based approach works but has limitations. History is extended into the future through various estimating techniques such as trumpet diagrams, linear trend analysis, and so on.

What is needed is the simplification of forward-looking decision algorithms that relate to capturing expected subjective conjectures and preferences through criteria evaluation. Recent advances in analytics using newer algorithms, Gen AI, and neural net AI techniques have made the SA/SWOT analysis steps more productive and of better quality.

On the left, you have a landscape category, in this case, Key Economic Factors. This is linked to Technology Trends, which in turn is linked to Social Trends, and last is the target, Business Strategies. Of course, the strategies you start with are the ones you have today, but you will also do this for future strategic foresight when you finally have that. The result is an assessment of a gap analysis for benefit and value determination if desired.

The first time you do this, it is usually a two-cycle effort: first, assess the impact on today’s strategies, which helps explain what is going on, and second, assess the impact on future direction. At the end of the day, you want to know the impact of the external landscape on the set of strategies for the next time. A path-to-point diagram such as the one below in Figure 1 helps expose the relationships needed to make it happen.
 


                                                                      Figure 1

This diagram can be extended beyond strategy to include capabilities (a tactical interest), Processes, Applications, and, eventually, Databases (an operational interest). At the end of the day, you want to know the impact of the external landscape on the set of strategies for the next time. A path-to-point diagram such as the one above in Figure 1 helps expose the relationships needed to make it happen. This type of analysis also provides the insight needed for strategic alignment with operations.

2. Using well-defined stages of SA/SWOT

Historically, each step of situation analysis and strategic planning has evolved into its own way of analysis with no underlying analytics framework. The linkage between steps is dependent on the human effort of intuitive alignment. Well-defined workflows using analytic agents that focus on analytic ensembles as agents are available today to make applying the analytics by managers and business strategic and tactical analysts simpler.

Situation insight makes visible the potential future direction the organization will take. It is part of the overall strategy process and critical to identifying the suite of strategies an organization should pursue. The net result of all this is to get a higher percentage of success in assessing direction. There are four stages of analysis to consider for SA/SWOT:

Figure 2 below shows the relationship of the four stages:



                                                                          Figure 2



Here is a brief comment on each stage:

Stage 1—External Environment—Landscape Analysis (e.g., categories like PESTLE, Industry Factors, World Economic Forum assessment, and so on as added categories) The output is a suite of externally ranked category elements of interest to the organization.

Stage 2 – Internal Environment – Strategic/Tactical/ Operational Macro views focusing on Existing Strategic categories (e.g., existing strategies, capabilities, initiatives, etc.) The output is ranked and related categories regarding the current strategic and tactical structure.

Stage 3 - SWOT Quadrant Mapping and Analysis, simple quadrant analysis, and External/Internal comparative integrated quadrant analysis. The output is a set of quadrant contents that combine the external and internal views.

Stage 4 – Strategy Formulation linkage, namely the Scenario and Forecast Strategy Development. The output from this stage is the set of strategies for the next period, along with scenarios and drivers that explain the strategy.

These four stages are typical situation analyses that lead to the rest of the strategic planning processes in many organizations.
 
3. Reducing the labor burden in SA/SWOT

Situation Analysis with SWOT is, by nature, a human endeavor supplemented by methods and support tools. The key to efficient and effective improvements in Situation Analysis is AI-enabled stages, especially the Landscape Assessment and SWOT parts.

The insight and analysis efficiency gained using automated analytics, such as Gen AI search tools, text generation for scenarios, and subjective Multi-Criteria Decision Making (MCDM) analytics, is significant. In Landscape and SWOT research, the gain is as much as a 75% improvement in time and cost.
 
4. Improving the analytics


Avoid ‘the devil is in the details’ efforts and focus on reducing complexity to focus on strategic and tactical issues. There are several key improvements in achieving the situation analysis goal through applying current advances in analytics.

The analytic-based method described here resolves many of the objections to the current approach. The theme here is ‘let technology do the legwork.’ Technology used here, especially AI-based technology, augments human insight for strategy development. This more rigorous approach resolves the concerns of experts in business modeling and strategy. The core idea is to have AI be the assistant to the manager/analyst doing the analysis.

Recent articles claim improvements of 25 to 35 % in MCDM analysis by using hybrid subject/objective analytics.

The list of suggested solutions below provides a starting point for analytics improvement.

Comments by Business Modeling Experts

Here are three of the several expert comments on issues with SWOT:

Michael Porter: Lack of analytical rigor. According to Porter, SWOT analysis does not account for the competitive forces in an industry.

Henry Mintzberg: SWOT analysis oversimplifies strategic planning by categorizing factors into strengths, weaknesses, opportunities, and threats. This leads to a narrow view of strategic issues and might result in missed opportunities or underestimated threats.

Kim Warren: SWOT analysis often lacks a clear link to organizational performance and decision-making. This leads to vague, and generic statements that do not drive specific actions or improvements.

Some Analytic Solutions that Address Weaknesses in SWOT analysis

Here are the five most significant considerations the updated SWOT approach has regarding analytics:
  • Use Multi-Criteria Decision-Making Concepts. Applying MCDM analytic criteria to analyze the landscape categories and the 4 SWOT quadrants for element significance. This provides accounting for the influence of several preferences not just one or two plus it can uncover accelerators and barriers to success.
  • Using multiple ranking approaches (composite ranking, correlation matrices, and Neural Nets) to confirm the validity of ranks and significance of relationships. This prevents domination by one analytic algorithm.
  • Use context analysis and DNA algorithms to assess and uncover hidden or significant relationships that offer valuable strategic insight.
  • Using labor savings to expand the perspectives of the landscape using added categories reflecting the current larger and industry-specific scope today of external impacts
  • Provide scenario generation and strategic implications through AI tools that utilize the results of insights gained from SWOT quadrant analytics.

For further information contact:




For training, Consulting, and SWOT Demos, contact Frank Kowalkowski at kci_frank@knowledgebiz.com

For more information on the software used, contact www.WIZSM.io


BIO:

Frank Kowalkowski is President of Knowledge Consultants, Inc., a firm focusing on business performance, business analysis, data science, business intelligence, artificial intelligence, and statistical techniques across industries. More recently, Frank has been involved in conducting workshops, professional training sessions, and assessments of business structures and transformation, data science, analytics for process management efforts. He is the author of a 1996 book on Enterprise Analysis. His most recent publications are a featured chapter in the business book Digital Transformation with BPM. His chapter is titled “Improve, Automate, Digitize.” he also has a chapter in the business architecture book titled Business and Dynamic Change, and a chapter on semantic process analytics in the book Passports to Success in BPM, and most recently, a key chapter titled Intelligent Automation and Intelligent Analytics in the 2020 book Intelligent Automation.