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Innovation series 112318

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A Series Of Articles On “Innovation And Data For Good,” By Tim Maurer
Data for Good – Looking for Innovation in All the Wr...
Wonder, Junk and Innovation
Data for Good – Innovating with Passion and Dogged Determination
Wiki Revolution in Innovation...
Can Creativity Be Planned?
Serendipity and the 'Aha' Moment – Unexpected Insights in the Innovation
Process
KEY FINDINGS F...
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Innovation series 112318

  1. 1. A Series Of Articles On “Innovation And Data For Good,” By Tim Maurer Data for Good – Looking for Innovation in All the Wrong Places Data for Good - Enabling Innovation Like Never Before Data for Good – Towards Purpose-Driven Innovation An affiliate of the U. S. Chamber Of Commerce KEY INSIGHTS FROM THIS STORY: Multiple corporations are prisoners of deeply ingrained assumptions, information filters, and problem-solving strategies that comprise their original world views, turning the very solutions that made them great into straitjackets. Innovators must examine and harness data across and in support of multiple dimensions of innovation - - spanning product and service offerings, business models, delivery channels, customer engagement provisions, technology, convergences, partnerships, sourcing and financial strategies. Data should be relentlessly probed to answer not just questions first proposed, but also questions not considered. KEY INSIGHTS FROM THIS STORY: The rate of innovation’s success is usually below 10%, but by pursuing multiple types, dimensions and stages of innovation, success rates can be boosted many fold (and need to be). Collaboration and crowd sourcing software and rules engines can help affect Enterprise-wide innovation processes -- and funding, too. Platforms can pull insights from varied participants to help assess, prioritize, help fund and realize innovation opportunities. Sources of insights are growing and must be harnessed: data repositories; IT interoperability; protocols for data transfer; chats; published research; regulatory and patent filings; transactional data exchanges; unstructured/semi-structured data; social media; open but de-identified records; Internet of Things sensing and controlling devices; and salesforce automation can all offer critical insights. Both longitudinal look backs and forward-visioning through rapid prototyping systems can facilitate more successful innovation evaluations. Pursuing new business models will be key to success. 5888 KEY INSIGHTS FROM THIS STORY: Innovating with purpose could help organizations become “game changers.” The fastest growing new markets and opportunities could be found among the billions of people living on less than $2 per day—at the “bottom of the [economic} pyramid.” Three key approaches can help deliver profits while transforming the lives of millions of people globally: 1) bundling products; 2) offering enabling services; 3) cultivating customer peer groups Perhaps we should invest innovation resources on innovating innovation towards solving the world’s most troubling issues. · .
  2. 2. Wonder, Junk and Innovation Data for Good – Innovating with Passion and Dogged Determination Wiki Revolution in Innovation and Big Data KEY INSIGHTS FROM THIS STORY: Project ENCODE (Encyclopedia of DNA Elements) involved a new people, process and technology framework for massive, collaborative research and efficacious dissemination of findings for rapid breakthrough innovations. When the National Human Genome Research Institute announced results of ENCODE -- a 5-year study of regulation and organization of the human genome, conducted by 442 global consortium members, 32 research institutes and 1650 individual experiences which generated 15 trillion bytes of raw data – it both set in motion future innovations and defined new ways of working toward breakthrough innovations. Before the ENCODE study, the vast stretches of DNA between our approximately 20,000 protein-coding genes (more than 98% of the genetic sequence inside of our cells) was written off as junk DNA elements. It was “Big Data” that helped reveal that the components between the genes were not junk at all. Now, future opportunities are wide open to discovery, and resulting innovations are coming fast. ENCODE innovated R&D itself, redefining how people work on massive research and applications. All data generated are rapidly released into public databases, radically changing the research publishing model. Rather than publishing papers, ENCODE enabled free access to collaborative “threads” via its vast analytics portal – all so enabling, they change what's possible for the scientific community. With scientists worldwide pitching in on ENCODE, there was no guarantee every scientist would get credit. Scientists knew contributions could get lost in the collaboration to yield outcomes, yet, they provided data for public (vs. personal) good. KEY INSIGHTS FROM THIS STORY: Multiple people collaborating in directed data pursuit and analysis is helpful to discovery Pursuing an idea to funding takes more than data and substantiation – it takes perseverance To covert ideas to inventions and innovations that take hold requires working with networks -- people with organizational or financial equity. Collaboration software can help, too. “Mutual helping” should be encouraged -- lending perspective, experience, and execution to improve the quality and execution of ideas, and matching help seekers with helpers. It also means encouraging reciprocity, including through recognition of helpers. In collaboration, intellectual property (IP), trust building and talent poaching, must be addressed. KEY INSIGHTS FROM THIS STORY: - “Wiki or Container Management” is a term for driving connectivity and collaboration across multiple disciplines. It can help organizations harvest the abundance of human intelligence distributed throughout their organizations and networks.” - Container Management tackles 3 aspects of innovation: 1.) Accelerating Change; 2.) Increasing Complexity of Issues; 3.) Ubiquitous Connectivity. - Container Management exploits a “container” system that fosters collaboration to improve work processes, output and impact. · Leverage collective intelligence, integrating diverse points of view · Achieving shared and actionable understanding of key drivers · Determining what’s key to delighting customers, and managing to this · Developing and managing measurements to hold people accountable · Transitioning leaders from the role of “boss” to that of facilitator.
  3. 3. Can Creativity Be Planned? Serendipity and the 'Aha' Moment – Unexpected Insights in the Innovation Process KEY FINDINGS FROM THIS STORY: There’s great irony that Post It notes are so common in innovation and planning sessions, because the product was not planned. It was born of a use found by a choir director for an adhesive that was otherwise considered a mistake and wasn’t expected to generate any revenue. True innovation comes from multiple parties being exposed to data and methodically open to serendipitously connecting dots. The global research project to avert a global pandemic from the SARS (Severe Acute Respiratory System) virus provided a future-state model. It comprised open source technology, mass collaboration, multiple- centers, and the best scientists from 11 nations. The SARS effort involved continually passing data back and forth—including working through informative daily calls—to learn, aggregate, and disperse collective knowledge . 8888888888 KEY INSIGHTS FROM THIS STORY: Key for organizations, innovation managers and teams will be finding and tapping “super-encounterers” who repeatedly encounter and harvest unexpected information. Pair super-encounters with core, established, networked leaders, with sagacity and assets, who can make things happen. Also, get the organization to extend outside their existing network for insights. Seek serendipity—insights of previous unknown, delightful data – using systems. Discovery recommender technology can spawn serendipitous insights. Spurring innovation via serendipity includes purposefully and systematically enhancing a discoverer‘s domain knowledge to enhance likelihood he/she’ll be able to appreciate a serendipitous connection when he/she stumbles across it. Partially relevant/iterative data nuggets are key to generating new directions in discovery-seeking and harvesting processes. Publish data/discoveries for serendipity-hunting agents to find; dispatch insights to domain experts who’ll translate them. Combing big data for serendipitous insights and prepping recipients to harvest insights requires key attributes to convert insights to yield: • Supplement data gathering with collective wisdom to ascribe merit and potential to a serendipitous discovery (include data gathering “containers” and collaboration processes to share and work across systems) • Build capacity to leverage serendipitous insights into tests and production.
  4. 4. Data for Good – Looking for Innovation in All the Wrong Places Tim Maurer, March 27, 2014 You could say that innovating using Big Data requires looking for love in all the wrong places—and when you find that something to love, persevering through thick and thin to make it take hold for everyone’s mutual benefit. Alfred Sommer is an eye doctor who, in his relentless review of research datasets, came across critical information that led him to forge a low-cost, highly efficacious, life-saving innovation in healthcare. Sommer’s simple medical intervention has likely saved millions of children from premature death. Of data, he says: “You have to know your data, you have to smell it, you have to be in it. If you're not living inside the data you are going to miss the most interesting things, because the most interesting things are not going to be the questions you originally proposed; the interesting things are going to be questions you hadn't thought about." Sommer’s data-driven discovery proved that vitamin A deficiency not only resulted in juvenile night blindness but also in death. Furthermore, he proved that a two-cent oral application of vitamin A could address the issue and prevent many deaths. KEY INSIGHTS FROM THIS STORY: Multiple corporations are prisoners of deeply ingrained assumptions, information filters, and problem-solving strategies that comprise their original world views, turning the very solutions that made them great into straitjackets. Innovators must examine and harness data across and in support of multiple dimensions of innovation - - spanning product and service offerings, business models, delivery channels, customer engagement provisions, technology, convergences, partnerships, sourcing and financial strategies. Data should be relentlessly probed to answer not just questions first proposed, but also questions not considered. An affiliate of the U. S. Chamber Of Commerce
  5. 5. Sommer’s discovery and innovation came in 1982, well before technology-enabled “Big Data.” He used a hand-held calculator to painstakingly pour through multiple levels of medical data to arrive at a surprising insight with huge implications. Discovering that death could result from simple vitamin A deficiency was seen as a phenomenal breakthrough, particularly coming from an eye doctor. Frankly, he was from an unlikely place within the medical field for his discovery to be readily accepted. “Nobody was willing to accept that two cents worth of vitamin A was going to reduce childhood mortality by a third or half, let alone when that information was coming from an ophthalmologist,” said Sommer. “A lot of people had spent their lives studying the complex amalgam of elements leading to childhood deaths…It didn't sit well. What was most frustrating of all was when you present the hard data and people just say they don't believe it.” Sommer overcame the issue of disbelief and lack of acceptance by burying critics in data; he established further studies all over the world to prove his finding was accurate. The World Bank and Copenhagen Consensus have since listed Sommer’s vitamin A supplementation as one of the most cost-effective health interventions in the world. This case study illustrates that meaningful innovation often requires looking deeply into things outside the norm or in places that nobody else has examined. It shows the value that can come from focusing on what might at first appear to be impossible, or even prone to being discredited—but then having the fortitude to look anyway, the perseverance to keep delving into the issue and reaching for the solution. Indeed, successful innovation starts with the relentless pursuit of insights, using disparate data sources from across a range of gathering venues and perspectives. It also requires examining data for best practices across people, processes, technology, business models, funding—and, ideally, in the pursuit of purpose as well. Sommer’s work showed the world-changing good that can come from data-driven innovation. Unlike when Sommer conducted his groundbreaking work, the advanced data analytics of today make combing through print outs with calculators obsolete. (Phew.) But given our increasingly complex, fast- paced world in which there’s so much product and service displacement and still so many unmet needs, the same relentless pursuit of data is recognized as even more critical to innovation—and to a company’s survival—than ever before. Data analytics is seen more and more as the one strategy that can help companies succeed. GE’s 2013 Global Innovation Barometer affirmed that “63% of senior executives involved in innovation report their firm is developing the ability to use the potential of ‘Big Data’ for Innovation.”
  6. 6. Affirming this, CIOs attending the 2014 Wall Street Journal CIO Network Conference also indicated theirtop focus will be on Business Intelligence and Analytics and on building a data-driven culture— with data that is easily accessible and consumable. In his foundational 2007 innovation discourse, “Sensing, Seizing and Transforming,” David J. Teece at the University of California-Berkeley’s Institute of Management, Innovation and Organization, noted with concern that multiple corporations “became prisoners of the deeply ingrained assumptions, information filters, and problem solving strategies that made up their world views, turning the solutions that once made them great into strategic straitjackets.” Teece said that identifying and seizing opportunities means businesses must delve into the rich data coming from local and distant markets and through myriad technologies. He wrote: “This activity not only involves investment in research activity and the probing and re-probing of customer needs and technological possibilities; it also involves understanding latent demand, the structural evolution of industries and markets, and likely supplier and competitor responses…The systematic nature of many innovations compounds the need for external search.” Teece and other experts concur that innovation success entails scanning customer demographic, usage and purchase data; unearthing market perceptions; exploring entire ecosystems; discerning unmet needs through ethnographic and qualitative or quantitative research; conducting assessments of alternative ways for customers to meet needs; considering convergent industry developments, technology developments, regulatory policies; and much more. Importantly, successful innovators need to examine and harness data across and in support of multiple dimensions of innovation—well beyond product innovation itself—that can span product and service offerings, business models, delivery channel solutions, customer engagement provisions, strategic partnerships and sourcing, and financial mechanisms. Examples of this holistic scanning and multi-dimentional innovation approach can be found in the work Deloitte Consulting, LLC is doing with clients, including biopharma companies. Deloitte provides innovation landscape research and analytics that incorporates a broad examination of emerging business models and processes, converging technologies and trends, and collaboration with an array of entities. Deloitte’s proprietary discipline for arriving at innovation breakthroughs,“10 Types of Innovation,” has been proven to lift innovation success many fold. One such holistic innovation is their work with Pfizer and Keas, developing online healthcare plans that guide patients to adopt healthier lifestyles. This innovation incorporated perspectives across the entire “system of care” and social institutions, such as friends and families, churches, social clubs, and workplaces.
  7. 7. This dedicated, expansive search through massive amounts of data can produce and efficaciously deliver something distinctly valuable that affords a sustainable advantage. But technology and data scanning alone won’t do it. There’s much more in the data to be discovered than meets the eye. Going beyond what’s readily apparent and digging deeper and sifting for gold nuggets is the key. Fortunately, today’s businesses have more resources available for insightful data gathering and innovation optimization than ever before, a topic described in depth in the next installment of the Data for Good series.
  8. 8. Data for Good - Enabling Innovation Like Never Before By Tim Maurer We live in an ever-growing ocean of data. Our networked world is a data-producing machine, and increasingly businesses and governments are recognizing the great potential for groundbreaking innovation stemming this much-championed “Big Data.” Yet, innovations do not on their own bubble out of all this information. How exactly does data drive innovation and what are the tools that enable us to harness that data? As noted in the previous Data for Good installment, the opportunities afforded through data are unlocked by deep analysis, looking for revelations in unlikely places. This innovation challenge is daunting, but the resources available for insightful data gathering and innovation optimization have never been greater. Data-driven innovation is facilitated through: A massive increase of digital data This includes IT interoperability and open protocols for data capture and exchanges across multiple sources and parties. There are also troves of research published on the Internet and databases containing patent filings. An affiliate of the U. S. Chamber Of Commerce KEY INSIGHTS FROM THIS STORY: The rate of innovation’s success is usually below 10%, but by pursuing multiple types, dimensions and stages of innovation, success rates can be boosted many fold (and need to be). Collaboration and crowd sourcing software and rules engines can help affect Enterprise-wide innovation processes -- and funding, too. Platforms can pull insights from varied participants to help assess, prioritize, help fund and realize innovation opportunities. Sources of insights are growing and must be harnessed: data repositories; IT interoperability; protocols for data transfer; chats; published research; regulatory and patent filings; transactional data exchanges; unstructured/semi-structured data; social media; open but de-identified records; Internet of Things sensing and controlling devices; and salesforce automation can all offer critical insights. Both longitudinal look backs and forward-visioning through rapid prototyping systems can facilitate more successful innovation evaluations. Pursuing new business models will be key to success. 5888
  9. 9. Organizations can also look to Web services for transactional monitoring of data, such as exchange rates, weather, and financial systems, and they can also look to unstructured and semi-structured data, including social media data, open but de-identified medical records, and more. There is the “Internet of Things,” with sensing and controlling devices feeding mountains of new data, and organizations can even look to their own Sales Force Automation Systems that can be ready sources of front-line insights. New technologies for revealing insights Cloud services are enabling more and more organizations to analyze and glean insights from myriad data sources at a fraction of the historic costs of building high-speed processing systems. Businesses can use rules engines, which are able to formulate event triggers to rapidly isolate opportunities or affirm or refute hypotheses. The science and technology of business intelligence and analytics is also accelerating, as is the capacity to leverage longitudinal assessments of approaches to innovation and IP in respective sectors and spaces. Methods for fast-tracking the innovation process Technologies (like 3D printing, Mobile Human Machine Interfaces, open IT protocols, cloud- based VoIP services) and software services (such as CAD CAM) enable rapid prototyping, elicit market receptivity, and allow faster testing of product inventions and new service offerings. When it comes to funding the innovation process, there are consumer and enterprise crowd- funding venues and technologies for securing financial contributions, which can foster innovation competitions and deployments. Crowdsourcing sites, online chat rooms and collaboration hubs in use across leading corporations and their ecosystems foster faster and more robust innovation, and with today’s mobile devices, businesses can engage, collaborate with, serve and mobilize people like never before. The good news is that there are also many experts and organizations providing these essential tools and capabilities. They can support organizations in upping their innovation game to meet today’s challenges. In the field of technology-enabled data gathering and innovation conceptualization, for example, an innovation consultancy that’s been recognized as a World Economic Forum Technology Pioneer is Imaginatik, which provides enterprise-wide, crowd sourcing and collaboration Software as a Service (SaaS) to drive and manage the innovation process.
  10. 10. Imaginatik’s “Innovation Central,” “Discovery Central,” and “Results Engine” platforms can pull insights from diverse and varied participants to help organizations assess, prioritize, and realize opportunities. The innovation specialist, Doblin, a division of Deloitte, has amassed longitudinal data on all kinds of innovations across what they view as “10 Types of Innovation” and across multiple industry sectors and landscapes. This baseline information can support innovation insight gathering, assess and corral possible convergences, identify new innovation spaces to occupy, affirm distinct value in an innovation hypothesis, or even refute proposed propositions as insufficiently distinct in creating value. Doblin has historically noted that the rate of the typical innovation’s success is usually well below 10%, and that by managing across all 10 types and dimensions of innovation, success rates can be boosted many fold. Another innovation consultancy, Optimity Advisors, has looked at collaboration from a social perspective and is now advising on harnessing massive networks via Wiki Management. The firm notes that “the power of networks is reshaping both the work we do and the way we work.” They suggest that “designing organizations for mass collaboration demands a new and very different model – Wiki Management.” Business Models Represent the Latest Innovation Opportunities Regarding the all-too-critical business plan development process for go/no-go determinations and product investment prioritizations, there’s plenty of regulatory, investment filing and population data (and plenty of industry trade articles on the Web) that can be assessed and pieced together to project potential sources of revenue, transactional volumes and costs, and to develop a traditional, compelling business case. However, while rapidly creating new products is so very necessary, if a company’s strategic plans and business cases focus primarily on new product developments, it’s quite likely that the company will miss a major new source of sustainable innovation: the business model itself. The GE Innovation Barometer notes that “fifty-two percent of senior executives believe that the development of new business models will contribute the most to their company’s performance going forward, representing a six-point increase when compared to how it has traditionally contributed to their innovation portfolio.”
  11. 11. The potential value in developing new business models is affirmed in a Doblin report, which emphasized the potential untapped opportunities in expanding from molecules to new business models for biopharmaceutical companies. The report states that “new commercial models represent the biggest change in the way biopharmaceutical companies have been engaging with stakeholders since the rapid expansion of the direct-to-consumer marketing channel in the late 1990s.” In its analysis of more than 1,500 publicly announced innovations in the pharmaceutical industry during 2010, Doblin observed a biopharma industry focus on innovating for core processes, product performance, networking, and channel. Doblin concluded that what the industry had not done as much, however, was seize opportunities to “create new customer experiences, offer value-added services, or define truly new business models.” Given this, Doblin cautions that even more data will be needed when assessing and forging new business models. The report notes: “To transform existing commercial models and create new models, companies can benefit by taking an expanded view of what innovation can mean—including new services, experiences, and business models…Greater value can come from innovations that differentiate a company’s relationship with customers and other stakeholders by, for example, building a commercial model that gives physicians information when, where, and how they want it delivered. Other innovations could emphasize new services, such as simplifying patients’ access to products or improving patients’ adherence to treatments.” There’s no question: organizations today have at their disposal new tools, technologies, and processes for enabling innovation in products, services, and business models. But while these instruments can reveal deep insights gleaned through data and dramatically advance innovation, the core element in the innovation process that needs to be better understood and nurtured is the human element. Driving innovation requires passionate people to pursue insights and push through adversity, persevering despite the setbacks and failures that occur in the innovation process – a topic discussed in the next installment of this series. -
  12. 12. Data for Good – Towards Purpose-Driven Innovation By Tim Maurer (Author’s note: this blog was written before the Business & Sustainable Development Commission report indicated the UN SDGs, empowering the bottom of the economic pyramid, could yield as much as $36 trillion+ in growth, and 380 million jobs and purchasing power.) The road to innovation is littered with obstacles, and continuing on the path takes more than just a good idea; it demands perseverance and passion. Yet, from what does this drive stem? Looking to examples where data-based insights led to breakthrough innovations (such as Dr. Jim Olson’s “Tumor Paint” for brain surgery or Dr. Alfred Sommer’s low-cost Vitamin A therapy), what surfaces is the concept that pursuing “purposeful” innovation can motivate people in persevering. Indeed, often hidden in the successful pursuit of innovation within “game-changing” organizations is the concept of “purpose.” Game-changing organizations are “purpose-driven, performance-oriented and principles-led,” according to a recent Harvard Business Review (HBR) article, “Building A Game-Changing Talent Strategy.” Authors Douglas Ready, Linda Hill and Robert Thomas write that “recent research makes clear the importance of creating companies that are guided by a collective sense of purpose.” The HBR article highlights the Chinese energy company Envision, which has doubled revenues every year since its founding in 2007. The founders, Lei Zhang and Jerry Luo, created the company with the vision to “help solve the challenges of a sustainable future for mankind.” They reportedly foster open innovation and cross-cultural collaboration, and they measure key developmental “accelerators” of “wisdom, will and love.” Luo said: “Envision is here to help people achieve their ambitions and to help improve the world.” KEY INSIGHTS FROM THIS STORY: Innovating with purpose could help organizations become “game changers.” The fastest growing new markets and opportunities could be found among the billions of people living on less than $2 per day—at the “bottom of the [economic} pyramid.” Three key approaches can help deliver profits while transforming the lives of millions of people globally: 1) bundling products; 2) offering enabling services; 3) cultivating customer peer groups Perhaps we should invest innovation resources on innovating innovation towards solving the world’s most troubling issues. · . · 888
  13. 13. In his 2013 book, Innovation Engine, the late innovation consultant Jatin Desai documented the importance of “intrapreneurs.” These “mission” or “purpose”-focused individuals are key to a corporation’s overall innovation success. Desai cited excerpts from Gifford Pinchot III’s seminal book, Intrapreneuring: Why You Don't Have to Leave the Corporation to Become an Entrepreneur, writing that intrapreneurs establish new products, processes or services by combining the talents of technologists and marketers. He wrote: “Intrapreneurs are motivated to solve ambitious challenges. The best Intrapreneurs are not in it for themselves. They are with you (corporations) because they can see a faster path for bringing their dreams to life…Intraprenuers are not just seeing things differently but finding new insights that only an idea hunter can discover.” Desai also documented that intrapreneurs are experts in managing the “pivoting” that is key to surviving in this era of rapid innovation and competitive displacements. For Desai, pivoting means making “a courageous and significant shift from the current course of action, a shift most people would never make.” Given these and other insights presented in this series, it seems innovating with purpose could help enable more organizations to become “game changers,” motivate even more intrapreneurs, and ultimately yield even more successful innovations. Perhaps we should invest some of our data-gathering and innovation resources on innovating innovation itself towards a more purpose-driven end. Perhaps resources should be spent in not just analyzing how to better innovate but also in assessing on what to spend our innovation energies and resources. Perhaps we need to deploy our exhaustive data analysis in identifying and solving some of the world’s most troubling issues to afford those crucial intrapreneurs the large challenges they seek to solve. Opportunity at the Bottom of the Pyramid There’s another well-articulated data point that asserts the potential value in innovating around purpose and finding and supporting people who want to innovate based on purpose. The late economist C.K. Prahalad proposed and substantiated that there’s a vast market opportunity (perhaps $5 trillion). Prahalad and Stuart Hart fostered the concept of The Fortune at the Bottom of the Pyramid in the business journal Strategy+Business. Prahalad later wrote a book with the same title, articulating new business models and strategies targeted at providing goods and services to the poorest people in the world. Prahalad proclaimed that the fastest growing new markets and entrepreneurial opportunities would be found among the billions of people living on less than $1 or $2 per day—those as the “bottom of the [economic pyramid.” Affirming this, Bill Gates noted the proposition "offers an intriguing blueprint for how to fight poverty with profitability."
  14. 14. Prahalad advocated that, rather than Multinational Corporations (MNCs) continuing to operate in their traditional business models, markets, and channels, if MNCs were to align with Non-Government Organizations (NGOs) and the Bottom of Pyramid (BOP) community, MNCs could profit from a lucrative opportunity. And he used significant data to back up that claim when others doubted the proposition. Since Prahalad’s ground-breaking encouragement to focus on the BOP, however, there’s been some discouraging experience suggesting that profitably servicing the BOP market is indeed very difficult and, in fact, without proper discipline, may well be too difficult. But Erik Simanis, managing director of Market Creation Strategies at the Center for Sustainable Enterprise at Cornell University’s Johnson School of Management, is one innovation leader who has successfully refuted claims that BOP cannot be managed profitably. Based on his insights in the BOP arena, the merits of focusing on BOP may well be worth examining once again in the name of both purpose and profit. In a 2012 Harvard Business Review article, Simanis shows that purposeful, profitable business can be done based on his experience leading business opportunities in Africa, India, and other emerging economies. Simanis has demonstrated how to build a margin-boosting platform to solve the cost problems in bringing critical products and services to very poor markets. After articulating many of the challenges and frustrations (and even dismal results) MNCs have experienced in BOP markets, Simanis illustrates that companies can be successful if they can increase gross margins well-above company averages by lowering variable costs, by increasing pricing per unit, and by raising the value of a single transaction. He also outlines three key strategic approaches (e.g., bundling products, offering enabling services and cultivating customer peer groups) to enable profit while transforming the lives of millions of people globally. His overall views may be worth incorporating into an innovation strategy. Given the recognized role of purpose in motivating innovation, organizations may do well to focus on solving significant BOP or other purposeful challenges as at least one element in a portfolio of product innovation—a portfolio that can and should range from low risk, iterative product functionality-based innovation to higher-risk, truly disruptive and purposeful innovation. Such a pursuit of purposeful, high-impact innovations can be as a leader and orchestrator in a BOP or purposeful process or it can be as a supporting participant in a collaborative BOP or other purposeful initiative.
  15. 15. Fortunately, several innovation consultants are already aware of the value in purposeful and BOP-oriented opportunities and have even engaged in enabling purposeful initiatives. Many people have the passion to see these types of opportunities to fruition, and we now have the Big Data strategies and resources necessary to approach this systematically for everyone to benefit. Bottom line – with all our access to data, with our collaboration tools, and with longitudinal data on successful innovation approaches and impact, we now have the opportunity to innovate like never before, wherever we choose to innovate. We have the potential to make a greater impact domestically and globally in quality of life, in economic development, in purpose, in profit, and more. Given a global economy fraught with financial stress and significant areas of weakness, if we could work together with purpose, passion and perseverance to use data for good, we could perhaps see fortunes rise for everyone.
  16. 16. Wonder, Junk and Innovation By Tim Maurer Thomas A. Edison once opined, “To invent, you need a good imagination and a pile of junk.” Indeed, there’s value in wading through junk – or through venues historically viewed as all the “wrong places” – to realize breakthrough insights and innovations. But when it comes to innovation in genomics, a “switch” in orientation toward a quote from Socrates might better represent the opportunities: "Wisdom begins in wonder." Significant innovations are emerging out of global, big-data enabled DNA research collaboration. In 2012, the National Human Genome Research Institute announced the results of the Encyclopedia of DNA Elements (ENCODE), a five-year international study of the regulation and organization of the human genome. The goal was to build an exhaustive list of functional elements in the human genome, and to delineate the regulatory elements that control cells and circumstances in which a gene is active. The analysis was daunting, involving 442 consortium members, 32 research institutes and 1650 individual experiences. The researchers generated 15 trillion bytes of raw data. KEY INSIGHTS FROM THIS STORY: Project ENCODE (Encyclopedia of DNA Elements) involved a new people, process and technology framework for massive, collaborative research and efficacious dissemination of findings for rapid breakthrough innovations. When the National Human Genome Research Institute announced results of ENCODE -- a 5-year study of regulation and organization of the human genome, conducted by 442 global consortium members, 32 research institutes and 1650 individual experiences which generated 15 trillion bytes of raw data – it both set in motion future innovations and defined new ways of working toward breakthrough innovations. Before the ENCODE study, the vast stretches of DNA between our approximately 20,000 protein-coding genes (more than 98% of the genetic sequence inside of our cells) was written off as junk DNA elements. It was “Big Data” that helped reveal that the components between the genes were not junk at all. Now, future opportunities are wide open to discovery, and resulting innovations are coming fast. ENCODE innovated R&D itself, redefining how people work on massive research and applications. All data generated are rapidly released into public databases, radically changing the research publishing model. Rather than publishing papers, ENCODE enabled free access to collaborative “threads” via its vast analytics portal – all so enabling, they change what's possible for the scientific community. With scientists worldwide pitching in on ENCODE, there was no guarantee every scientist would get credit. Scientists knew contributions could get lost in the collaboration to yield outcomes, yet, they provided data for public (vs. personal) good.
  17. 17. The results specifically refuted the prevalent scientific belief of the time asserting that all but a small percentage of our DNA is “junk.” For years before the ENCODE study, the vast stretches of DNA between our approximately 20,000 protein-coding genes (more than 98% of the genetic sequence inside of our cells) was written off as junk DNA. It was “Big Data” that helped reveal the components between the genes were not junk at all. Importantly, had this widely-held belief not been refuted by Project ENCODE and consigned to the history books, the world would be missing out on some significant medical and other contributions. Now, future opportunities are wide open to discovery, and resulting innovations are coming fast. Project ENCODE involved deploying a new people, process and technology framework for massive, collaborative research and for affecting the efficacious dissemination of findings to rapidly yield breakthrough innovations. One key ENCODE finding has truly been a watershed development: those elements of DNA that are referred to as genes are but a very small piece of what makes our cells and our bodies work. In contrast, what had been hidden and became so valuable after all the analysis was the extensive presence of critical “switches” within DNA. The resulting biomedical approaches and technologies owing to this discovery promise vast societal impact. The breakthrough was described in a cancerfocus.net forum denoting the practical applications derived from ENCODE. From an applied science perspective, most of the changes to cells that affect cancer don't occur in our genes but occur within the 40 million different “switches” that control the genes, switching them on and off in complicated and nuanced ways. Researchers have also linked gene switches to an array of human diseases, such as multiple sclerosis, lupus, rheumatoid arthritis, Crohn’s disease, and celiac disease. New innovation-enabling approaches include catalyzing basic science studies to identify the genetic basis of complex diseases, such as diabetes, cardiovascular disease, and neurological disorders. This will in turn result in advancing other innovations, such as enhanced biopharmaceutical and agricultural production. Indeed, recent genome modifications have been used in applications as diverse as: correcting mutations that cause genetic disease and inhibiting HIV infection of human cells; engineering cell lines to produce biopharmaceuticals; and even generating pesticide-resistant crops.
  18. 18. A Collaborative Approach to Mega-Data Beyond breakthrough findings, ENCODE also innovated the process for R&D itself. ENCODE redefined how people worked together on massive research and applications. Pardis Sabeti, an assistant professor at Harvard University, said, "You need the large projects that really galvanize effort [and] get people working with each other across groups to create these resources that would not be possible in any one lab alone." A fundamental aspect of ENCODE, for example, was that all data generated has been and will continue to be rapidly released into public databases. This has radically changed the research publishing model. Rather than just publishing papers, ENCODE enables access to collaborative “threads” (like the Nature ENCODE Explorer) and wiki management. ENCODE outputs include a vast analytics portal, 741 Wiki collaborative-content pages, threads and more. Today, ENCODE results can be freely accessed by anyone on the Internet via ENCODE’s portal, or at the University of California, Santa Cruz Genome Browser, the National Center for Biotechnology Information, and the European Bioinformatics Institute. A recent genomeweb.com article looked at the success of the Human Genome Project overall, including ENCODE’s mega-scale approach. It reviewed a debate in the research community about balancing funding for consortium programs with individual grants. The article noted, “The real advantage of these large-scale programs lies in the databases and other infrastructure they generate. Done properly, these resources are so enabling that they can change what's possible for the rest of the scientific community.” Beyond simply fostering large-scale efforts that can yield vast impacts, ENCODE also suggests that purpose and passion might even trump prestige, power and profit in understanding what truly drives breakthrough innovation. With groups of scientists worldwide pitching in on ENCODE, there was no guarantee that every scientist would get credit for his or her work. People recognized that even truly great contributions could get lost in the collaborative work producing an outcome. Yet, they persevered, using data for public (rather than personal) good. Matthew Meyerson, an associate professor at Dana-Farber Cancer Institute and member of The Cancer Genome Atlas, said, "To do this, I think you just have to say, 'I'm going to go ahead and do this because it interests me, and I think the results are going to be important and I'm not going to worry too much about its impact on my career.'" While the yield from ENCODE is enormous and growing, perhaps the most valuable outcome is the realization that there is a new way of innovating through harnessing really big data that sets the benchmark and lays the foundation for rapid global impact.
  19. 19. Given the impacts that we’re already beginning to experience from Project ENCODE, we should establish a new model of innovation management to which we aspire. As with ENCODE, the use of Big Data, generated by substantial collaborations, can create significant impacts. Through this approach, we can drive purposeful and passionate innovation planning, funding and operations.
  20. 20. Data for Good – Innovating with Passion and Dogged Determination By Tim Maurer All the excitement over the age of “Big Data” sometimes seems to champion numbers and raw information as the source of world-changing innovations. The thing is, data on its own does nothing. It is the people who take an insight gleaned through data and run with it through all the frustrating hurdles of the innovation process that turn a sound insight into a viable, groundbreaking application. Innovation success requires hiring and nurturing skilled people who can access and mine data for gems; who can collaborate with others for mutual benefit; and who can muster the spark of energy, the passion, and the fortitude to drive the process from data to insights and invention to a systemic innovation or business model shift that takes hold in affecting a true, breakthrough change. This despite—and often persevering through—the inertia that will likely need to be overcome. Bleeding-edge stuff. We can all be inspired by exemplary innovators who not only illustrate the art of mining data for innovation, but also model how to push the envelope in making an impact through research-based innovation. One exciting biomedical innovator to watch, Dr. Jim Olson, speaks on the importance of finding the spark of brilliance—like that brilliance in the center of a violet—and of having the passion that’s represented in a violet’s purple petals. An affiliate of the U. S. Chamber Of Commerce KEY INSIGHTS FROM THIS STORY: Multiple people collaborating in directed data pursuit and analysis is helpful to discovery Pursuing an idea to funding takes more than data and substantiation – it takes perseverance To covert ideas to inventions and innovations that take hold requires working with networks -- people with organizational or financial equity. Collaboration software can help, too. “Mutual helping” should be encouraged -- lending perspective, experience, and execution to improve the quality and execution of ideas, and matching help seekers with helpers. It also means encouraging reciprocity, including through recognition of helpers. In collaboration, intellectual property (IP), trust building and talent poaching, must be addressed.
  21. 21. Olson is a surgeon specializing in children’s brain cancer treatment. He created Tumor Paint from scorpion venom to better differentiate healthy brain cells from tumorous cells. This helps surgeons avoid the typical collateral damage that often comes from removing healthy cells during brain surgery due to lack of distinction between the healthy and cancerous cells. When asked what gave him the idea to work with scorpion venom, Olson cited the data- related research work that a talented neurosurgery resident contributed. Patrick Gabikin had come into Olson’s lab to perform research. Olson guided Patrick Gabikin to dig into Big Data, to review all the scientific literature and computer databases, adding that other scientists had examined differences between brain tumors and normal brains for years and had published their information—but typically only in the form of lists. After six weeks of digging and presenting various findings to Olson, Olson saw the basis for a solution that seemed promising. Gabikin had found articles where researchers were studying chlorotoxin, which is created by scorpions. This ultimately became the targeting agent in Olson’s Tumor Paint. Olson would soon attach a fluorescent molecule to it, grow a human brain tumor in a mouse, and inject the tumor paint molecule in the blood stream to determine if the tumor would glow. An hour and a half after injecting the paint, the tumor was indeed glowing, and Olson was literally jumping for joy. Still, to grant-funding bodies and others in the field, Olson’s innovation initially seemed far too outlandish and improbable to fund or support. So, after his moment of brilliance, Olson had to muster the passion and perseverance to not only prove his theory, but also pursue and secure self-funding sources to make his seemingly inconceivable discovery a viable part of surgery. Passion and perseverance was the key. Fortunately, through innovativeness and persevering in fundraising, Olson succeeded in raising the capital. In part to encourage and engage others, Olson has named his latest and perhaps most exciting initiative, Project Violet, after a patient who had suffered from incurable brain cancer and who, after she died, had arranged for her brain to be donated for science. Project Violet will use crowd funding to secure the help of the community to develop new class anti-cancer compounds derived from scaffolds of nature—chemical templates from organisms such as violets, scorpions and sunflowers. Olson’s ultimate goal is to develop treatments that are highly targeted to kill cancer while sparing patients from the toxic side effects of chemotherapy, including nausea and hair loss. His team is now pursuing the development of a fundamentally new class of anti-cancer compounds: molecules called “optides” that specifically attack cancerous cells while leaving healthy cells untouched and offer the potential to improve on current chemotherapies.
  22. 22. Collaborating for Innovation As Olson and others like him are uncovering data-based breakthroughs, we can see that innovation is not a solitary endeavor. Working together, we have the potential to achieve much more than we could on our own. In short, we need to up our collective game in the area of collaboration. In managing innovation through impeding inertia and barriers, it can be beneficial to team people who can identify a spark of brilliance together with established players across enterprises and industry ecosystems who have the equity, budgets and networks needed to affect institutional change. Identifying and marshalling multiple parties with the propensity to collaborate—as well as harvesting collaboration processes and technologies—is becoming more and more essential for success. In Olson’s case, the key to taking innovative insights to fruition went well beyond data collection and analytics and involved collaboration and continual, concerted perseverance. Olson formed a team and is reaching across disciplines, and the team is not just working on developing improvements in brain tumor surgeries or finding a cure for a particular disease. And fostering even greater collaboration, they’re also creating a platform that can be used by thousands of scientists to address many diseases like Alzheimer’s disease, autism, and diseases that affect developing nations. According to the GE Global Innovation Barometer, 87% of senior executives think their company would innovate better through partnering than by working on their own, and 67% have “developed a new product, improved a product or created a new business model through collaboration with another company.” Fostering collaborations within companies and across disparate units and departments is also critical. Noted innovation expert, IDEO, was highlighted recently in the Harvard Business Review for its documentation of “mutual helping” as an essential dynamic within a truly successful innovation culture. Beyond workload sharing, “mutual helping” is the process of lending perspective, experience, and execution to improve the quality and execution of ideas. It’s the matching of help seekers with the helpers themselves. Mutual helping also means encouraging reciprocity, including through the recognition of the helpers. It also entails working to eliminate the perception that seeking help is a sign of weakness. According to IDEO, successful mutual helping entails fostering a collaborative
  23. 23. innovation environment comprised of three measurable indicators: competence; trust; and accessibility. Unfortunately, today, when it comes to collaboration, there appears to be significant room for improvement. In assessing their collaborative capabilities, a majority of WSJ CIO Network Conference participants (51%) would only give their organizations a “C” or “D” grade for collaboration. There are also concerns over intellectual property (IP), as well as trust and talent poaching, that need to be addressed. In any innovative endeavor, motivating passion is essential for success, though the sources from which this relentless determination can arise are often unique to the innovator. As discussed in the next installment in this series, maintaining a focus on “purpose” throughout the innovation process is what can drive breakthrough discoveries. For Olson, his deceased patient, Violet, has become a catalyst for purpose and innovation. May we all find our Violets, seizing the moment when inspiration blossoms from the fertile soil of disparate data, and applying the passion and perseverance needed to see a discovery through to fruition. This is precisely what is meant by data for good.
  24. 24. A Wiki Revolution in Innovation and Big Data By Tim Maurer When Wikipedia began in 2001, it capitalized on the Internet Age’s collaborative potential. Wikipedia’s open-source approach to sharing and spreading data (encyclopedic content) has proven so successful, the prefix “wiki” has become a prevalent term in all things online. This is valuable not just for sharing information; it can be a catalyst for innovation. Innovation consultant Rod Collins, of Optimity Advisors, has articulated a key facet of a new type of approach to fostering innovation and collaboration, what he calls “Wiki Management” (which is also the title of his 2013 book). Within Wiki Management is a new philosophy and practice that can drive incredible connectivity and collaborative work across multiple disciplines. Collins has defined how this can help organizations affect and harvest collaboration and data. “The wiki world is a hyper-connected global network where people can work directly and effectively with each other without having to go through a central organization,” said Collins. This includes “the ability to process the abundance of human intelligence distributed throughout their organizations.” Collins argues for a replacement of command and control management with new “container- based” facilitation models for driving innovation in a hyper-connected world. Among other things, Collins articulates how Wiki Management exploits the “container” that fosters collaboration to improve work processes, output and impact. In this case, container refers to the development of technology spaces for content. As Collins describes it: KEY INSIGHTS FROM THIS STORY: - “Wiki or Container Management” is a term for driving connectivity and collaboration across multiple disciplines. It can help organizations harvest the abundance of human intelligence distributed throughout their organizations and networks.” - Container Management tackles 3 aspects of innovation: 1.) Accelerating Change; 2.) Increasing Complexity of Issues; and 3.) Ubiquitous Connectivity. - Container Management exploits a “container” system that fosters collaboration to improve work processes, output and impact. · Leverage collective intelligence, integrating diverse points of view · Achieving shared and actionable understanding of key drivers · Determining what’s key to delighting customers, and managing to this · Developing and managing measurements to hold people accountable · Transitioning leaders from the role of “boss” to that of facilitator.
  25. 25. “Before the mid-1990s, writing the content of computer programs involved far more work than necessary because software specialists didn't have a practical way to share their methods. In early 1995, Ward Cunningham came up with an innovative solution for how programmers could share their common staples when he launched the WikiWikiWeb site. In creating the “wiki,” as it came to be known among its early aficionados, Cunningham constructed a container in which programmers could effectively self-organize their work. Open source leaders and Agile managers don't manage content—they manage the container. The container is the virtual or the physical space in which people work together.” Overall, Wiki Management tackles three fundamental aspects of innovation: 1.) Accelerating Change; 2.) Increasing Complexity of Issues; and 3.) Ubiquitous Connectivity. Wiki Management describes how the power of networks is dramatically reshaping both the work we do and the way we work. It establishes keys to harnessing this, including (but not limited to): · Leveraging collective intelligence and effectively integrating diverse points of view · Achieving a shared and actionable understanding of the key drivers of success, including the iterative measures and outcomes that drive the future · Determining what’s important to delighting customers, and manage to this · Developing and managing actionable measurements to hold people accountable, including to their peers · Transitioning leaders from the role of “boss” to that of facilitator. As an example, Collins contrasts the development of the original online encyclopedia, Nupedia, with the open-source Wikipedia. He frames the staying power, currency and ubiquitous value of Wikipedia to make the case for why open source is more valuable. Nupedia started back in 2000, but the concept to create an online publication was impeded by its conventional seven-step, academician-oriented, hierarchical editorial review process that only produced 25 reference articles after the initial development year. So the founders abandoned the process, replaced it with the Wiki container process, and dubbed it Wikipedia, which enabled both contributions and edits at a far greater and sustainable rate from a mass of contributors. “The meteoric growth of Wikipedia is well documented, and most of us have never heard of Nupedia. While the experts continue to debate the quality of the online encyclopedia, all of us are amazed that the world's largest and most widely used reference work continues to be built by a self-organized collaboration of the masses,” notes Collins. Through this example, Collins affirms the need for opening eyes to new disruptive business models (versus simply improving performance on an old model) and particularly illustrates the value of the container.
  26. 26. Can Creativity Be Planned? By Tim Maurer In an earlier post, I wrote about Project ENCODE, the massive, global research into the human genome, including the functionality of hidden regulatory switches within our DNA. This was one of the greatest examples of “Data For Good,” and it involved significant collaboration, tremendous computing power, and new ways of gathering and presenting findings. ENCODE redefined how people work together on massive research and applications. A fundamental aspect of the project, for example, was that all data is rapidly released into public databases, which can foster connections and new insights. In Wiki Management, Rod Collins, of Optimity Advisors cites another, similar global research project comprised of open source technology, mass collaboration, multiple-centers, and the best scientists from across 11 nations. It was the 2003 effort to rapidly identify and help address the SARS (Severe Acute Respiratory System) virus. This process ultimately averted a global pandemic, and it’s similar to the collaboration and container management processes pursued in ENCODE. Indeed, the SARS effort involved continually passing data back and forth—including working through informed and informative daily calls—to learn, aggregate, and disperse collective knowledge. According to Collins, innovation requires discovering what we don’t know that we don’t know. Numerous examples from history show that sometimes the greatest breakthroughs happen by accident (e.g., penicillin, Post-It notes). Collins says this is another key aspect of container-enabled innovation, what he calls “serendipity over planning.” KEY FINDINGS FROM THIS STORY: There’s great irony that Post It notes are so common in innovation and planning sessions, because the product was not planned. It was born of a use found by a choir director for an adhesive that was otherwise considered a mistake and wasn’t expected to generate any revenue. True innovation comes from multiple parties being exposed to data and methodically open to serendipitously connecting dots. The global research project to avert a global pandemic from the SARS (Severe Acute Respiratory System) virus provided a great future-state model. It comprised open source technology, mass collaboration, multiple-centers, and the best scientists from 11 nations. The SARS effort involved continually passing data back and forth—including working through informative daily calls—to learn, aggregate, and disperse collective knowledge. 8888888888
  27. 27. While serendipitous discoveries may be accidental, that does not mean serendipity is random. Rather, it is the product of connections or insights paired with one’s ability to recognize the discovery. “Creativity cannot be planned, it can only be facilitated,” Collins argues. “Centralized planning of command and control is designed to eliminate surprises and therefore blunts serendipity…Organizations need good surprises for sustained business success.” The value in fostering serendipity would seem to be key to looking for innovation in all the wrong places.
  28. 28. S erendipity and the 'Aha' Moment – Unexpected Insights in the Innovation Process By Tim Maurer Disruptive innovation and displacement is happening so fast that many innovation and product development leaders are looking to accelerate and systematize the hard-to-fulfill ideation and discovery phase of the innovation process—the innovation funnel. To that end, for more than 20 years, organizations, researchers and computer scientists have been examining the recurring role that serendipity has played in successful innovations. These innovation drivers have sought to not only assess the role of serendipity, but to also determine if serendipity can indeed be systemically enabled through big data, analytics and visualization. Indeed, it can be. Simply defined, serendipity is “an aptitude for making desirable discoveries by accident.” Key findings on serendipity in innovation are detailed in a paper, “Discovery Is Never by Chance: Designing for (Un)Serendipity,” by experts at the University of Southampton, UK and Microsoft Research. The paper describes how computer scientists have been generating “serendipity-inducing systems.” KEY INSIGHTS FROM THIS STORY: Key for organizations, innovation managers and teams will be finding and tapping “super-encounterers” who repeatedly encounter and harvest unexpected information. Pair super-encounters with core, established, networked leaders, with sagacity and assets, who can make things happen. Also, get the organization to extend outside their existing network for insights. Seek serendipity—insights of previous unknown, delightful data – using systems. Discovery recommender technology can spawn serendipitous insights. Spurring innovation via serendipity includes purposefully and systematically enhancing a discoverer‘s domain knowledge to enhance likelihood he/she’ll be able to appreciate a serendipitous connection when he/she stumbles across it. Partially relevant/iterative data nuggets are key to generating new directions in discovery-seeking and harvesting processes. Publish data/discoveries for serendipity-hunting agents to find; dispatch insights to domain experts who’ll translate them. Combing big data for serendipitous insights and prepping recipients to harvest insights requires key attributes to convert insights to yield: • Supplement data gathering with collective wisdom to ascribe merit and potential to a serendipitous discovery (include data gathering “containers” and collaboration processes to share and work across systems) • Build capacity to leverage serendipitous insights into tests and production.
  29. 29. IT experts have focused on developing “discovery recommender” technology to recommend something interesting and previously unknown—or at least something unknown within the domain involved. These systems can enhance serendipity as a foreground activity in innovation and can foster behavior change in looking for, internalizing, and applying insights. The authors suggest it is the particular type of unknown and unexpected data that creates value in a Big Data-type recommender system. In particular, tapping other domain “knowns” can be very valuable. Importantly, it has also been shown that partially relevant or iterative nuggets of data or results may play a key role in informing and generating new directions in the discovery- seeking and harvesting processes. The authors of the paper cite the importance of publishing discoveries so many serendipity-hunting agents can find them. They also cite the importance of structurally dispatching this insight to appropriate domain experts who may be able to make something of it. They stress that knowledge about the encountered information or resource—as well as knowledge about the task the person is engaged in— are both critical dimensions within serendipity and recommender-system outputs. Combining the value of big data for serendipitous insights and preparing recipients to harvest those insights, the authors unearthed several key attributes for potential systemic replication, including: • Structured data gathering and analytics to unearth what would be viewed as serendipity—particularly insights from previous “unknown” and “delightful” data. • Supplementing that data gathering with elements to tap and increase collective wisdom to ascribe merit and potential to a serendipitous discovery (which could include the use of data gathering processes and “containers” as well as collaboration processes to share and work information across organizations, ecosystems, unrelated disciplines and industries) • Building capacity to internalize serendipitous discovery into innovative insight and action, including through networks that can marshal resources to extend innovative insights and ideas into tests and eventually full production. Enter the Super-Encounterers Another key finding that presents implications for organizations, innovation managers and teams is the existence of so-called “super-encounterers.” These are people who regularly and repeatedly encounter—and harvest—unexpected information, even counting on it as an important “expected” element in information acquisition.
  30. 30. Finding, retaining, nurturing, equipping, and leveraging super-encounterers who can receive, discern, and share information is the key to establishing a culture that can produce serendipity-enabled discoveries and innovations. One of today’s most recognized, successful and enabling super-encounterers is the big data innovation leader, Stephen Wolfram. His innovativeness using big data and analytics was behind the renowned computer language Mathematica. Wolfram also publishes one of the most leveraged computational knowledge engines, Wolfram|Alpha, which supports Apple’s Siri, Microsoft’s Bing, Facebook’s personal analytics, the CIA World Factbook and the independent search engine DuckDuckGo. Written with over 15 million lines of Mathematica code, Wolfram|Alpha has helped people make powerful, unanticipated connections across multiple databases and operations. “The number one thing I probably contribute is making connections to other things,” Wolfram said. “As a CEO, I get different people in different parts of our company to learn about what’s happening in other parts of the company. It’s somewhat successful, but ultimately I’m usually the one who has to tell people to make this or that connection.” Yet, fostering serendipity (or at least the potential for it) is possible throughout an organization, not just with these super-encounterers. It boils down to expanding knowledge and connections to create fertile ground for serendipitous insights. In a 2011, Forbes contributor Deborah Mills Scofield wrote that the randomness that emanates from our networks is a key element in disruptive innovation. According to Scofield, “What you know depends a lot on who you know. … If you stay within those confines, your network remains fairly constant and self-selected. … It’s when you venture outside of that circle that your network, and knowledge, starts to expand – you ‘know’ more people so you ‘learn’ more which leads to knowing more people and on and on.” The importance of chance encounters in the workplace can be frustrated by a world where telecommuting is increasingly in vogue. Not so at Yahoo!, which banned telecommuting in 2013. Of this challenge, Greg Lindsay wrote in The New York Times about the importance of forcing collaborations among colleagues and filling corporate “structural holes.” Lindsay noted: “As Yahoo and Google see it, serendipity is largely a byproduct of social networks. Close-knit teams do well at tackling the challenges in front of them, but lack the connections to spot complementary ideas elsewhere in the company…but are hallway collisions really the best way to stoke innovation?”
  31. 31. The Beauty of Sagacity Innovations that have been enabled via serendipity have required an equally important aspect—“sagacity” (the breakthrough connection of those findings to relevant perspectives—or wisdom—to generate the truly “aha” discovery). Indeed, equally important to appreciating serendipity is finding those parties who have the sagacity to accept the insights referred by the serendipity-hunting systems and developed by the super-encounterers—especially if those encounterers are not the final say regarding an idea’s worth. A 2012 paper from scholars at Sam Houston State University, “Leadership Sagacity and Its Relationship with Individual Creative Performance and Innovation,” affirms the importance of sagacity in leadership when guiding an idea through full innovation implementation. The authors assert that it is essential for leaders with authority for allocation of resources to have a high level of sagacity, including a high level of discernment, wisdom, and judgment necessary to decide which ideas should be championed toward innovation. As an example of the importance of sagacity in innovation leadership, consider Ernest Duchesne, who first documented Penicillin in 1897. Duchesne’s findings, however, were rejected by the Institut Pasteur, reportedly because of his youth. It would take another 30 years before Alexander Fleming would accidentally create Penicillium mold, the first step down the road to today’s antibiotics. There other examples of potentially serendipitous discoveries missed for lack of sagacity, essentially because people were incapable of drawing or accepting the necessary connections. Thus, a complementary challenge to spurring innovation through serendipity must involve purposefully and systematically enhancing the discoverer‘s domain knowledge to enhance the likelihood that they will be able to appreciate a serendipitous connection when they stumble across it.

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