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The magic “I” of CIO sparks many imaginations: Chief information officer, chief infrastructure officer , Chief Integration Officer, chief International officer, Chief Inspiration Officer, Chief Innovation Officer, Chief Influence Office etc. The future of CIO is entrepreneur driven, situation oriented, value-added,she or he will take many paradoxical roles: both as business strategist and technology visionary,talent master and effective communicator,savvy business enabler and relentless cost cutter, and transform the business into "Digital Master"!

The future of CIO is digital strategist, global thought leader, and talent master: leading IT to enlighten the customers; enable business success via influence.

Sunday, June 28, 2026

Uncommon Innovation

 Uncommon innovation is usually system-level, ecosystem-based, or model-changing rather than purely product-based.

Innovation is about thinking about alternative ways to solve problems. The most useful way to think about uncommon innovation is as less obvious forms of change beyond product improvement.


Common frameworks distinguish among sustaining, disruptive, radical, architectural, process, network, and business-model innovation, with some types being less common but often more strategic.


Less common types of innovation:

-Architectural innovation: Recombine existing components into a new system or structure. It is less visible than a new product, but it can reshape an entire solution space.


-Business-model innovation: Change how value is delivered or monetized, not just what is sold.


-Customer-engagement innovation: Reframe how people interact with a product or service, often by changing the experience rather than the core offer.


Research/exploratory innovation: Target problems that are not yet well defined, which is rare but important for frontier breakthroughs.


-Ecosystem innovation: Create value through partnerships and ecosystems rather than only internal capability.


Uncommon innovation is usually system-level, ecosystem-based, or model-changing rather than purely product-based. These uncommon forms of innovation often create more durable advantages than simple feature upgrades because they change the structure around the solution, not just the solution itself. They are especially useful when the problem is unclear, the market is shifting, or a company needs new growth paths.


Perspectives of Professional Reputation

 Different perspectives refine professional reputation by shaping fitting mindsets, turning invisible behavior into visible feedback, so you can align your competence, communication, and character more intentionally.

In the hyperconnected and interdependent global societies, professional reputation takes time and effort to build coherently. Different perspectives can refine your professional reputation by demonstrating how you come across in ways you may not see yourself.


Reputation is built over time through consistent behavior, communication, trust, and the quality of your work, so outside viewpoints help you spot blind spots and strengthen the image you want to project.


Multifaceted Perspectives

-Self-perspective: Check whether your actions match your values and promises. Reputation grows when you are consistent, honest, and dependable.


-Peer perspective: Colleagues can tell you whether you are seen as collaborative, clear, and respectful in day-to-day work.


-Mentor perspective: Mentors can help you distinguish temporary mistakes from patterns and guide you toward stronger professional judgment.


-Audience perspective: Clients, managers, or stakeholders may value clarity, reliability, and follow-through more than technical skill alone.


-Cultural perspective: Different teams and cultures may interpret tone, directness, and confidence differently, so feedback from diverse people helps prevent misreading your own impact.


How to leverage feedback: Ask specific questions such as: “What do people associate me with?”, “Where do I add the most value?”, and “What weakens my credibility?” Feedback like this makes your reputation more visible and actionable. Then focus on the behaviors that matter most: keep commitments, communicate professionally, give credit, and stay open to criticism.


In practice: If one group sees you as technically strong but another sees you as hard to work with, that is a useful signal. It means your professional reputation is not just about competence; it is also about how effectively others experience you.


Different perspectives refine professional reputation by shaping fitting mindsets, turning invisible factors into visible feedback, so you can align your competence, communication, and character more intentionally.


Processes of Problem Solving

 The conceptual models understand the problem, generative models create solutions, and predictive models rank solutions. A predictive model estimates which fix is most likely to reduce delay with the least cost.

Problem-solving is about seeing a problem and actually finding a solution to that problem, not just the band-aid approach to fix the symptom. A conceptual model explains the problem space, a generative model creates candidate solutions, and a predictive model estimates which solution is most likely to work.


That distinction matches the broader difference between generative AI, which produces new content, and predictive AI, which forecasts outcomes from historical patterns. Here are the conceptual, generative and predictive models of problem solving.


Problem-solving roles

-Conceptual: define the problem, constraints, goals, and relationships.


-Generative: propose possible actions, designs, or hypotheses.


-Predictive: score those options by estimating success, risk, or impact.


This is a useful way to think about problem solving because one model frames the issue, one expands the option set, and one helps choose among options.


Simple example: For a product delay problem, a conceptual model maps causes such as supplier risk, staffing, and approvals. A generative model suggests fixes such as alternate vendors, schedule compression, or process changes. A predictive model estimates which fix is most likely to reduce delay with the least cost.


So problem-solving is both art and science. The conceptual models understand the problem, generative models create solutions, and predictive models rank solutions.


Interdisciplinary Understanding of Science

 Interdisciplinary understanding of science and engineering is the ability to connect scientific principles and engineering practice across fields to solve complex problems more effectively.

Science = "What" & "How." Engineering = making things work scientifically, artistically, and systematically as possible.
An interdisciplinary understanding of science and engineering means being able to connect concepts, methods, and constraints across multiple fields to solve complex problems. Recent sources describe it as a dynamic process that combines technical knowledge with communication, collaboration, and the ability to work across disciplinary boundaries.


In practice, this kind of understanding goes beyond knowing one specialty well. It means recognizing how science explains phenomena, how engineering turns that knowledge into systems, and how related fields such as mathematics, computing, design, and even the arts can improve outcomes and make ideas more usable or accessible.

Many real-world problems are socio-technical, meaning they involve both technical and human factors. Interdisciplinary training helps people address problems such as infrastructure, energy, healthcare, and manufacturing by integrating perspectives instead of treating each discipline in isolation.

-A scientist understands enough engineering to think about manufacturability, scale, and reliability.


-An engineer understands enough science to interpret evidence, model behavior, and test assumptions.


Both can communicate across teams, integrate data from different fields, and adapt when a problem does not fit one discipline neatly.


For example, designing a medical device may require biology to understand people, engineering to build the device, statistics to evaluate results, and design thinking to make it usable in real settings. That is interdisciplinary understanding in action.

Interdisciplinary understanding of science and engineering is the ability to connect scientific principles and engineering practice across fields to solve complex problems more effectively.


Greatness Built in Tough Time

 Greatness is built in hard times because adversity tests leaders, strengthens resilience, and reveals the discipline needed to guide others.

Leadership is about influence and change. Innovation is about thinking better ways to solve problems large or small. Greatness is often built during tough times because pressure reveals character, sharpens judgment, and forces leaders to focus on what matters most.


Leadership character: In difficult periods, people look for calm, clarity, and direction more than charisma. Strong leaders do not just react; they set priorities, communicate honestly, and help the team stay focused on the vision and mission.


Why hard times shape leaders: Hard times expose weaknesses in systems and in leadership practices, which creates a chance to improve faster than in easy times. They also build resilience, because leaders learn to overcome fear, make decisions under uncertainty, and support others when conditions are unstable.


Greatness is forged in hard times through innovative perspectives: Hard times build greatness when seen through an innovation breakthrough. Creativity turns hard times into the fountain of ideas and foundation of greatness.


Greatness is built in tough times because adversity tests leaders, strengthens resilience, and reveals the discipline needed to guide others. Hard times build great leaders by forcing clarity, courage, and responsibility.


Innovation

Innovation from a global perspective means building the systems, partnerships, and governance needed to compete, collaborate, and stay resilient in an interconnected world.

Innovation is a complex puzzle we all intend to solve. A useful way to frame an innovation  from global perspectives is: innovation should be treated as a strategic, cross-border differentiated capability, not just an internal R&D goal. Recent research emphasizes that countries and firms need to align innovation with competitiveness, open collaboration, and governance across global networks.

In global terms, an innovation strategy is the expectation that organizations or governments actively create conditions for new ideas to become scalable products, services, or policies. It also implies that innovation decisions should account for international competition, value chains, standards, and the security implications of technology transitions.


Global perspectives that shape it


-Competitiveness: Nations are using innovation strategies to commercialize and industrialize technologies faster, so firms and governments must benchmark themselves against global peers.


-Open collaboration: Innovation increasingly happens through global partnerships, licensing, and shared R&D rather than within a single organization.


-Security and resilience: Policymakers are being urged to evaluate the security effects of innovation, not only its economic upside.


-Governance: Effective innovation depends on clear criteria, accountability, and leadership structures that define what success looks like


-Practical implication: For an engineering or technology organization, this means setting an innovation strategy around three questions: where do we need to lead globally, where should we collaborate openly, and where do we need safeguards because of security or strategic risk. That turns innovation from a vague aspiration into a decision framework.


Innovation from a global perspective means building the systems, partnerships, and governance needed to compete, collaborate, and stay resilient in an interconnected world to generate multiple values..


Interdisciplinary Problem-Solving

 Build a multidisciplinary team by starting with the whole problem, staffing the full scenario with process management disciplines, giving the team decision authority, and keeping it focused on measurable outcomes.

Problem solving becomes more complex than ever in a hyper-connected and interdependent world. To build a multidisciplinary team for end-to-end problem-solving, start with the whole problem, then assemble the smallest set of people who can focus on discovery, design, delivery, operations, and user needs.

Guidance on multidisciplinary teams emphasizes clear/ goals, diverse expertise, shared accountability, and access to specialist support when needed.


A strong team usually includes people who can cover the full problem flow: That includes product or problem owner, engineering, design, domain expert, operations, data/analytics, and someone who represents the user or customer perspective. The key is not to maximize headcount, but to make sure every critical decision and implementation gap has a clear owner and can be closed to overcome barriers.


Practices to Set Up the Interdisciplinary Team for Problem-Solving

-Define the end-to-end outcome in one sentence, so everyone is solving the same problem.


-Identify the skills needed across the workflow, from user insight to delivery and support.


-Put decision-makers in the team so they can collect feedback properly, act quickly and stay accountable.


-Keep the structure flat enough for fast coordination, with clear responsibilities.


-Add outside specialists only when the team truly needs them, such as legal, policy, or deep technical expertise.


Working model: For end-to-end problem-solving, the team should own the problem from discovery through implementation and iteration, not just handoffs between departments. That means the team meets to solve problems, tests assumptions early, and regularly reviews whether the solution is actually working for users.


If the problem is improving a digital service, the team might include a service designer, software engineer, data analyst, operations lead, subject-matter expert, and user advocate. Together they can define the issue, design the service, build it, test it, and improve it without friction due to separate silos.


Build a multidisciplinary team by starting with the whole problem, staffing the full scenario with process management disciplines, giving the team decision authority, and keeping it focused on measurable outcomes.


Innovation Partnership

 The right innovation partner expands or complement your capability, reduces your blind spots, and helps you move faster from idea to impact.

In today’s complex business environment, innovation needs to become more collaborative across the boundaries. Finding the right partners for harnessing innovation means choosing collaborators whose strengths complement yours, whose values align, and who can help turn ideas into performance results.


The best partnerships are all about finding partners who can fill your gaps and make it easier to move from concept to implementation.


What to look for

-Complementary strengths: Pick partners who bring capabilities you do not have, so the best team can solve more of the problem end to end.


-Shared values: Alignment on work ethic, communication, and collaboration matters as much as technical fit.


-Clear purpose: Define what innovation outcome you want before evaluating, whether it is product development, market expansion, or process improvement.


-Proof of execution: Look for partners with a track record of delivery, not just good ideas.


-Trust and transparency: Start with small projects so you can test how the relationship works in practice.


A practical selection method


-State the innovation problem and the result you want.


-List the capabilities your team lacks.


-Identify partners who supply those missing capabilities.


-Check values, communication style, and operating rhythm.


-Run a small initiative before committing to a larger collaboration.


Innovation partnerships succeed when each side contributes something distinct and valuable, rather than duplicating what the other already does. That is what turns a partnership into an innovation engine instead of just another vendor relationship.


A concise way to say it is: the right innovation partner expands or complement your capability, reduces your blind spots, and helps you move faster from idea to impact.


Impact of "Biology International Conference” 2026

 BIO International 2026 was the flagship biotech convention of the year, built around deal-making, scientific knowledge exchange, and cross-sector collaboration.

There were always so many great international conferences held in San Diego, California. In fact, the convention center here is one of the largest in the world. I headed to the Biology International conference 2026 last week. It was a major biotech gathering focused on knowledge sharing, partnering, and translating science into real world problem solving. 

The conference brought together biotech companies, pharma investors, researchers, policymakers, and service providers to form partnerships and accelerate development. The event emphasized business development, innovation, and “improving lives,” so its value is more about connecting the people who turn research into therapies and premium products or services.

Keynote Presentation & Panel Discussions: The opening keynote sessions of BIO 2026 were meant to set the tone for the convention by framing the industry around innovation, healthcare impact, and global collaboration. The panel discussions featured high-profile voices from biotech, public service, media, and patient advocacy, alongside sessions on major themes such as AI, advanced therapy, oncology, and market growth. These sessions were a launch point for the conference’s larger goals: connecting leaders, highlighting emerging biotech priorities, and showing how science can translate into real-world solutions and business outcomes.

Program highlights: The Biology International Conference 2026 is designed as a cross-disciplinary forum where researchers, clinicians, industry scientists, and professionals share recent findings and practical approaches across modern biology. The program featured more than hundreds of sessions covering a broad range of topics, including AI and digital health, biomanufacturing, diagnostics, oncology, regulatory innovation, and workforce leadership. The important presentations include such as: 

-Translating Innovation Across Borders: Creating Global Gateways for Biotech Startups 

-Partnering to Advance Innovation 

-Beyond the Bench: How the Industry Strengthens Communities - and Our Reputation 

-The Innovation Mandate: Strengthening the Biopharma Ecosystem for the Next Generation -Financing Innovation in Diagnostics and Precision Medicine 

-Strategic Innovation: Building Smarter Pipelines for Challenging Targets 

-When Science Takes a Trust Fall: Rebuilding Confidence to Support Continued Innovation 


-New Frontiers in Neuroscience: Spotlighting the Latest Advancements in CNS Research and Development 

-The State of Emerging Biotechs: Investment, Deal, and Pipeline Trends 

Building Value Through Strategic Pipeline Diversification 

-The Next Precision Frontier: Scaling Beyond Oncology 

-At the Helm of Biopharma: Insights from Women Leading Science, Strategy, and Scale 

-The Therapeutic Modality Puzzle in Oncology: One Size Fits All or Fit to Purpose? 

-Evolving and Integrating Technologies Across the Cell and Gene Therapy Ecosystem 

-Advancing Next-Gen Biomanufacturing Across Modalities: Insights on Flexible, Resilient, and Sustainable Scale-Up 


-Breakthrough Innovations Driving Global Competitiveness – Novel Platform Technology Concepts and Drug Licensing Frameworks 

-Bridging Borders: How US-Asia Collaboration Is Redefining Global Biotech Deal-Making 

-Reimagining Development and Commercial Strategies for Innovative Medicines in Europe and the Middle East 


-Future-Ready Solutions to the Global Biomanufacturing Talent Challenge 

-Constructing the Bioscience Pipeline: How Policy, Education, and Industry Drive Workforce Innovation 

-A 360º View of the Biopharma Industry's Talent Solution 


-Turning AI Hype into Real-World Breakthroughs and Measurable Value for Pharma 

-Breaking Through the Noise: Building Marketable AI Platforms in Biotech 

-In AI We Trust? The Shift from Calculator to Collaborator 

-Enhancing Access Through AI: A Framework for the Future of Healthcare 

-From Code to Clinic: Investing in AI and Life Sciences 

-The New Playbook for AI & Data Partnerships in Biopharma 

-Regulating the Future: Global Perspectives on AI Governance 

-AI Transformation – Building Organizations that Turn Potential into Breakthroughs 

-Putting AI in Its Proper Place - Where and When to Empower Expertise by Embedding AI 


Impact of Expos: The large expo in the conference was very impressive, with hundreds of booths and international pavilions, which underscores how large the partnering and expo component is. The experts and professionals came from all over the world gathered in California to brainstorm varying research topics and problem-solving in the biological sectors and its global ecosystem. There were vendor presentation sections including: company presentations and Start-up / innovation pitching, partnering meetings for exhibitor/vendor interactions. 

I chatted with a few global vendors and presenters. They introduced their products or services professionally and demonstrated the optimistic attitude for the next phase growth of biology with the emerging technology and across boundary collaboration.  

-Translational biology and bioengineering with Molecular & cellular mechanisms: How to turn discoveries into diagnostics, therapies, and clinical workflows.

-Genomics, computational biology, Microbiology, immunology, and AI: Focus on data-driven discovery, model building, and biological interpretation.

-Ethics, reproducibility, and research governance: Advocate responsible science and effective collaboration.

The impact of the convention lies in the deals, collaborations, and knowledge-sharing. It enables collaboration across biotech, pharma, academia, and government. Its main-stage programming also spotlights leaders at the intersection of science, technology, and healthcare, reinforcing the event’s role as a major driver of industry direction and partnership.

I think biology is one of the most important industries for us humans to constantly grow and renew ourselves. It impact each of us significantly. I would say we can initiate more broader and deeper topics to discuss, advocate superscientific research, inspiring innovation breakthroughs and unleashing collective human potential. 

In short, BIO International 2026 was the flagship biotech convention of the year, built around deal-making, scientific knowledge exchange, and cross-sector collaboration. Its main significance lies in how it supports the biotech economy and helps move discoveries toward real-world solutions. 


Real Understanding

 We have to understand things from different perspectives in order to solve problems holistically.

Real understanding begins the moment we stop trying to sound right and start trying to see clearly, listen emphatically and perceive objectively. That shift is significant , but it changes everything: we trade imitation for attention and articulation.


To understand something is not to repeat its definition, or to win an argument with its vocabulary. It is to grasp how its parts relate, what it depends on, and what would happen if those dependencies changed. Understanding has a kind of internal stability: when you move the idea to a new context, it bends rather than breaks. If it falls into slogans only when tested, it was never about real understanding—it was memorization. It’s always important to embed principles into processes and practices.


This is why the most reliable learning feels unglamorous. You encounter confusion, then you reframe your questions and refine your answers. You tolerate partial answers long enough to notice their boundaries. You learn that “I don’t know yet” can be a productive state, not a failure. Knowledge arrives through friction: you think, you check, you revise. The mind becomes less certain in the shallow way and more fluent in the deep way—because it has earned its reputation for being insightful. .


In the end, real understanding is about being both confident and humble at the same time.. It respects complexity without being defeated by it. It can be expressed simply because it has been worked thoroughly. And it leaves room for further learning, not because it lacks confidence, but because it recognizes that the world is larger than any single explanation. We have to understand things from different perspectives in order to solve problems holistically.


Don’t

 Don’t pretend to be someone you are not. Don’t pretend to know everything, don’t pretend to like everybody…

Don’t you change your mind too frequently 

Don’t you think about the fact 

Don’t you scare about the truth

Don’t you waste time on trivial details

Don’t you addict to the past 

Don’t you worry about the future 

Don’t you care about the outcome?



Don’t pretend to be someone you are not

Don’t pretend to know everything.

Don’t pretend you like everybody.


Don’t you uncomfortable to say no

Don’t you create silo, without listening to others’ point of view?

Don’t you understand sequence consequences behind scenes 

Don’t you fear of the change 

Don’t you set limits on yourself based on outdated rules?


Don’t leave it alone

Don’t just tear it down

Don’t get it wrong 

Don’t rush up

Don’t feel bad 

Don’t be scared…


Don’t you know the world broad and wide? 

Don’t you want to explore further and deeper

Don’t you know the roles to play in modern time

Don’t you understand the world of difference 


Don’t take things granted 

Don’t take yourself too seriously.

Don’t ignore others viewpoints 

Don’t be too hard on yourself