Following up on my last post about IEEE ERT 2018, here are a couple of charts for my “discussion brief,” which include a Human-Machine-System Capaility Mapping chart (above) and concept illustrations of the Experiential Decision Support System (below.) The charts’ text conveys context setting remarks, which I am also providing here.
The goal of furthering machine intelligence is to make humans more able and smarter: the opposite engineering approach typically becomes a source of self-defeating technical myopia waiting to happen and missed opportunities. This simple mapping exercise can be customized to assess and roadmap capability levels.
The more sophisticated automation becomes, the more obvious the criticality of the human factor in both consumer and enterprise environments… rather than less. And, in any case, customer acceptance and adoption criteria remain Quality’s litmus test for emerging technologies.
Digitalization is fostering (a) XaaS, (b) Self-Service, (c) the Shared Economy and the (d) Maker Movement. All elevate human involvement and drive the push for opening and democratizing technologies. These make (e) citizen science and citizen developers shape the next generation prosumers at mass market scale.
Digital Transformation initiatives embracing the above allow (f) nimbler enterprise teams to operate at far greater scale, scope and speed, and shift focus from routine operations to dynamic value creation coupled with extreme efficiencies.
This entails (g) interdisciplinary workstyles and collaborative organizational behaviors that include (h) customer co-creation models. In this new context, humans remain (i) the ultimate critical element in system reliability and safety. Left shifting Quality by Design (QbD) prioritizes Human-Centered-Design tools and processes to deliver high performance workforce automation systems.
Cost-effective Lean Ops systems intertwine analytics, automation, programmability and flexible systems integration. All optimized for dynamic behaviors given Soft System’s perpetual motion. This means designing “for-ever” rapid and seamless reconfigurability instead of just engineering “day 1” implementations.
Operational Excellence dictates system-wide as well as subsystem level visualization, and a combination of centralized & distributed closed loop controls under user friendly operational modes. Cognitive models involve Situational Awareness (SA,) Sense Making (SM,) Root Cause Analysis (RCA,) Scenario Planning (SP,) and ROA (Real Options Analysis.)
The Experiential element is not just about programming known rules and policies but, most importantly, it grows by assimiliating iterative learning in the context of cyclical automation: routine decisions and manual operations can be streamlined and colapsed, then switching to “exception” based management for that particular event.
Productivity calls for streamlining operations so that (a) waste can be eliminated & prevented, and (b) value based tasks can be performed effortlessly, in less steps, at speed & without error. High performance behaviors and sustainable competitiveness also call for the ability to (c) experiment and create new capabilities, as well as leveraging (d) process mining for customer journeys & value stream mapping (CJM & VSM) to continuously optimize them and guarantee service levels.
Service Operations Centers (SOC) should be equipped with Experiential Decision Support Systems (DSS) featuring (d) collaborative filtering, (e) actionable data stories conveying hindsight, insight & foresight and (f) adaptive cybernetics. Advanced visualization for both (f) intuitive & highly abstracted infographics and (g) scientific views is of the essence.
Quality is best addressed as a human experience, which determines (d) meaning and, therefore, the degree to which a system is lean vs. over-engineered or subpar (both being defective and carrying obvious and hidden costs.) A new take on QbD for Soft Systems, which are inherently fluid by definition, emphasizes acceptance testing probing for: usefulness & utility, usability & affectivity, consumability & serviceability and safety thru use cases and lifecycle events.
I am on my way to Mobile World Congress and last night I had the opportunity to speak at DevMynd’s “Agile Software in a Hardware World.” That panel discussion featured BMW Technology Corporation (BMW, Mini, Rolls-Royce,) Monsanto’s “The Climate Corporation,” and Nokia Software Group, which I was proud to represent. The venue, 1KFulton, is a century-old and former cold storage building in the Fulton Market neighborhood, home to Google’s Chicago campus.
Reflecting on that panel discussion, small group conversations and one-on-one chats before and after the event, I think that it is fair to state the following:
(A) software is undergoing a defining moment while re-shaping industries. “Software defined instruments and systems” have superseded capaibilities of hardware-centric deployments.
In other words, economic value and profitability are migrating from conventional products to software dominated environments that control tools, systems, and processes.
In this new context, (B) collaborative undertakings (co-creation, open source,) platforms, modularization and mashups are paving the way for rapid experimentation and for a wide-range of services to surface.
Back to economics… a venture capital firm operating in the Silicon Valley shared with me that when comparing current investments with equivalent old-school ones, they experienced x3 times time-to-market speed at 1/3 of the investment, which allows them to better diversify risk and fund more start-ups in the process.
Moreover, we are now operating at (C) unprecedented speed, scale and scope. For that reason alone, software should improve our ability to “pivot” and dynamically adapt to changing circumstances.
Most plans don’t survive first contact and many start-ups and emerging technologies don’t survive the so-called “crossing-the-chasm” or “Valley of Death.” So, remaining lean and embracing continuous/iterative improvement are of the essence. That’s a quality mantra rather than an excuse for forgoing best quality practices.
Back to economics again: quality management’s definition of “customer satisfaction” is now table-stakes and compliance in that area drives low-cost commoditization. “Customer delight” is the higher benchmark that commands a premium and the kind of margins enabling us to re-invest to further innovate.
Let’s now state the obvious, “customers” are human beings, aren’t they? Interestingly enough, the more sophistication and diversification, the higher the need for (D) humanizing technology so that we can better create, consume, use and democratize any digital services. In turn, this has fostered (E) Design Thinking as a leading innovation practice that intersects art and science. Design Thinking addresses HMS, Human-Machine-Systems, by prioritizing HCD, Human-Centered-Design.
In terms of economic effectiveness and efficience, that means outcome-oriented system-sizing, rather than over-engineering waste. It also means the definition of meaningful and purposeful requirements: some are designed to meet customer satisfaction metrics, while others are explicetly thought out to exceed that baseline and, hence, to actually deliver the X-Factor prompting customer delight. All key to customer acceptance and adoption growth.
Better yet, one of the event’s participants volunteered the fact that “good design” factoring inuitive interaction, advanced dataviz (data visualization) and effortless controls was proven to shrink the sales cycle by literally half: not only customers perceived and experienced the service’s taginble value early, the sales team was also able to approach more customers in that timeframe. Innovative Human-Computer-Interaction based on information design, value based tasks, streamlined processes, intuitive data visualization, effortless controls and overall UX, User Exeperience, double as compeling demonstration tools.
This is a side note: that has already become a critical success factor in Artificial Intelligence’s new developments, AI being software’s top transformational exponent as DSS, Decision Support Systems for humans and/or machines become quintessential. I will detail that in another post.
One last thought… (F) software’s pervasiveness has also brought along Agile development practices. These include “user stories” borrowing a Design Thinking technique by which application features are defined by sinthesizing human optics (persona/outcome/rationale) to put technical myopia at bay.
After all, we should all be in the business of making tech human. Otherwise, what would negating or ignoring that say about each of us and our collective culture?
I am joining a discussion on Information Visualization and Interaction Design… and the integral role of Cognitive Art to deliver innovative HCI (Human-Computer-Interfaces.)
Heare are sample projects that I have been involved in. This set showcases: multi-modal user interfaces, metaphorical abstractions, and cognitive models, as well as ergonomic form factors that optimize for extreme ease of use.
d.SCI refers to a methodology that I am working on which purposely intersects design and science. In this particular discussion, human congition and affect are the topics of interest.
“Reflecting the diversity of the agenda, we are thankful for the support of our advisory board. The board is integral to the development and execution of Design Thinking, supporting the strategic positioning of the brand and advising to the content and participants that matter most. Hear from some of the greatest minds in Design Thinking as they shed a light on its mysteries and separate fact from fiction.”
“The world of IoT and connected devices is expanding rapidly. We all carry super computers in our pockets and interact with everything from home automation, cars, consumer electronics, and healthcare devices.”
“In this complex hardware + software environment the product development cycle can be tricky. For example, you can’t just follow agile software practices by the book when you’re building a connected pace maker. So how do we approach product development when the stakes are high and the moving parts are many? During this discussion we’ll be tackling topics such as:”
“How do you roadmap a product which includes both hardware and software components? How does agile development fit in? How does the regulatory landscape affect how we approach development and iteration? How do you build teams around these integrated products? And how do you keep them in sync and working together?”
I’d first like to thank the team at DevMynd for their kind invitation. I am looking forward to joining the panel discussion in Chicago this coming Thursday, February 22. In the meantime, I will welcome any comments and insights as I gear up for this discussion.
I’m working on outlining some of the myths, dilemmas and trade-offs that I have encounter as an Industrial Designer and in Product Management.
From a design perspective, there are two topics worth looking at: Design Thinking as a Human-Centered methodology and its outcomes in terms of: (a) utility, (b) usability, (c) consumability, (d) affectivity and (e) the composite and differential value of the resulting digital experiences that involve software and hardware.
This “new brave world” equips us with the freedom to explore new form factors, cognitive models and, most impoartantly, the development human x technology networks. Some of the specifics come down to design semantics re-defining HMS, Human-Machine-Systems, in the context of multi-modal user interfaces and innovative interactions where Machine Learning and new visualization paradigms happen to surface.
From a Product Management viewpoint, there is a need for also pondering about how to best leverage Design Thinking beyond Industrial Design and Software Development to talkle product and service strategy. Here my focus gravitates toward addressing: (a) success factors and (b) limiting factors under control, as well as (d) other determining factors beyond our area of influence that can impact the difussion of innovations either possitively or negatively. Moreover, I like to couple business model innovation with behavioral economics and information network effects.
This construct really boils down to capturing the essence behind (e) stakeholders’ acceptance criteria and (f) the users’ engagement, adoption and growth rates. This means defining capability and maturity levels and how to best factor for the fact that they adapt and evolve over time. Obviously, this leads to taking a close look at how to best intersect Lean and Agile practies, but not only, so that we can lead and navigate constantly changing environments in “digital time.”
Let’s get down to a more tactical level: end-to-end system design entails a mix of loosely and tightly coupled elements, and a platform approach to operate at speed, scale and wider scope that what black boxes can match. A reality check unveils a hybrid world where decisions on capacity and performance levels, as well as serviceability and dependency levels drive decisions toward optimizing for distributed systems and, therefore, the rising value of end-to-end solutions vs. point solutions only.
In that context, inter-disciplinary teams involving creative technologists and domain experts make our organizations effectively diverse, smarter and innovative. Otherwise, self-defeating arrogance, conflicting silos and technical myopia can make pre-production and production be costlier by promoting unncessary friction and getting everyone to work harder and harder rather than smarter. Typically, that negates productivity, forces a number corrective actions, and significantly shifts and/or downsizex sought after results.
The beauty of the Studio’s human-experience-centered practice is a healthy obssession for delivering “meaning.” The definition of “meaningful outcomes” (rather than churning outputs) makes these organizations behave based on value and impact. We strive to foster not just customer satisfaction and net promoter scores, but measurable customer delight and network effects (superior and service-level performance indicators) which, in turn, set and streamline technical requirements.
Long story short, the Studio’s mindset (critical thinking / wonder & discovery / problem solving) and workstyle (collaborative / experiential / iterative / adaptive) help explain why creative technologysts are instrumental and serial innovation engines for the digital age.
Footnote: the term “team of creative technologysts” was first coined by Nokia Bell Labs back in the 1940s to single out the differentiated value of inter-disciplinary undertakings. In the late forties, Bell Labs’ Clauded Shannon pioneered Information Theory and John Karlin set up the first Human Factors Engineering in industry. That HFE team was formed by a pyschologist, a statistician (the father of quality control visualization,) an engineer, and a physicist.