A new era of cognitive computing is unfolding and its impact is already being felt across industries, from healthcare and financial services, to manufacturing and education. According to estimates, the market around cognitive computing will grow to $46 billion in a just a few years and intelligent applications will spread like wildfire throughout the business world, transforming how we work. However, building cognitive systems and applications that can perform specific, humanlike tasks in an intelligent way is far from easy. It requires complex connections to multiple data sources and types, processing power and storage networks that can cost effectively support the high-speed exploration of huge volumes of data, and the incorporation of various analytics and machine learning techniques to deliver insights that can be acted upon. To equip you with the knowledge to succeed, we are bringing together the leading industry experts for a 2-day immersion into the leading cognitive computing use cases, strategies and technologies that every organization should know about.
Tuesday, May 22: 9:00 a.m. - 9:45 a.m.
We, of course, will never know everything. But with the arrival of Big Data, machine learning, data interoperability, and all-to-all connections, our machines are changing the long-settled basics of what we know, how we know, and what we do with what we know. Our old—ancient—strategy was to find ways to narrow knowledge down to what our 3-pound brains could manage. Now it’s cheaper to include it all than to try to filter it on the way in. But in connecting all those tiny datapoints, we are finding that the world is far more complex, delicately balanced, and unruly than we’d imagined. This is leading us to switch our fundamental strategies from preparing to unanticipating, from explaining to optimizing, from looking for causality to increasing interoperability. The risks are legion, as we have all been told over and over. But the change is epochal, and the opportunities are transformative.
David Weinberger, Harvard's Berkman Klein Center for Internet & Society and Author, Everyday Chaos, Everything is Miscellaneous, Too Big to Know, Cluetrain Manifesto (co-author)
Tuesday, May 22: 9:45 a.m. - 10:00 a.m.
9:45 a.m. - 10:00 a.m.
Only a small fraction of global firms increase productivity year after year, according to the Organization of Economic Cooperation and Development (OECD). Creating and using unique stocks of data capital is one of the key tactics these firms use to widen their lead. Come learn how two new ideas—data trade and data liquidity—can help all companies, not just superstars, take advantage of the data revolution, and hear examples of firms already putting these ideas into practice.
Paul Sonderegger, Senior Data Strategist, Oracle
Tuesday, May 22: 10:45 a.m. - 11:45 a.m.
Artificial intelligence (AI) is finally coming into its own as cognitive computing becomes the norm.
10:45 a.m. - 11:45 a.m.
While the industry is abuzz talking about the rise of artificial intelligence, the term itself is not new. In fact, the term “AI” was first coined in 1956 but fell off the radar after no monumental achievements were accomplished in the following years. But given recent advancements in analytics, visualization, and machine learning, artificial intelligence has re-emerged with a promising future. However, the question remains—will it succeed this time around?
Todd Sundsted, CTO, SumAll
10:45 a.m. - 11:45 a.m.
How can you unlock the power of data science for data-driven decision support? From a business standpoint, Bulusu details how to use machine learning techniques for predictive analytics. He also illustrates how AI can meet BI (business intelligence) through industry use cases and talks about integrating results with a BI platform, using Oracle Advanced Analytics.
Lakshman Bulusu, Consultant & VP of Research, Matlen Silver, Qteria
Tuesday, May 22: 12:00 p.m. - 12:45 p.m.
Search is not a new activity for most of us, but cognitive search adds new dimensions and functionalities that enhance the UX.
12:00 p.m. - 12:45 p.m.
Since 1994, when the first search engine was deployed, search has worked like this: A user entered search terms in a field, hit the search button, got a list of documents called search results, reviewed the list to find a few that might be relevant, downloaded one document, manually scanned it to see if it’s on point, and then returned to the list and continued the process until frustrated or out of time. Users are overwhelmed, tired, and wish they had a personal search assistant. They want to dispense with search altogether. They demand to know why the machine can’t just read all those documents for us and tell us what it finds. Well, now it can! Machine learning can change the entire search paradigm.
David Seuss, CEO, Northern Light
Tuesday, May 22: 2:00 p.m. - 2:45 p.m.
As one of the technologies getting loads of attention recently, machine learning has interesting applications for many types of enterprises.
2:00 p.m. - 2:45 p.m.
Reuters News Tracer is a capability that applies AI in journalism to find events breaking on Twitter. It assigns them a newsworthiness score so people can focus on the events that are important. The real magic of Reuters News Tracer is that it gives a confidence score about how likely it is that those events are true. This is really critical, given the rapidly changing landscape of news, including “fake news,” and the distrust of media reports.
John Duprey, Senior Architect, Thomson Reuters Labs' Center for AI & Cognitive Computing, Thomson Reuters
2:00 p.m. - 2:45 p.m.
Access to information and insights is critical for today’s complex enterprises, unlike consumer experiences with Google, Alexa, or Siri, enterprise search is broken. Advancements in ML, NLP, and text analytics are changing the dynamic for enterprise employees. This session explores how one large, global bank is delivering a research portal for its analysts that understands not just what the user asks, but what is meant; uses intent to determine which ML relevancy model to apply; and creates a graphical, interactive results view that delivers actionable insight. The session concludes with an overview of the results the bank has experienced, and how it’s looking to extend the ML-based search capabilities into other areas.
Will Johnson, CTO and Co-Founder, Attivio
Tuesday, May 22: 3:15 p.m. - 4:00 p.m.
Another technology gaining traction in our cognitive computing world is deep learning, which changes many business processes.
3:15 p.m. - 4:00 p.m.
The hottest topic in computer science today is machine learning and deep neural networks. Many problems deemed "impossible" only 5 years ago have now been solved by deep learning—playing GO, recognizing what is in an image, and translating languages are but a few examples. Software engineers are eager to adopt these new technologies as soon as they come out of research labs and the goal of this session is to equip you to do so. This session focuses on two demos: using TensorFlow for linear regression (making a numerical prediction from inputs) and using a neural network to make predictions from text inputs. Along the way, I'll show some live demos and give you tips to apply these techniques in your own projects. No PhD required.
Sara Robinson, Developer Advocate, Google
Tuesday, May 22: 4:15 p.m. - 5:00 p.m.
While tech giants have attempted to allay public concerns about “inhuman” negative or conflicting behaviors on the part of AI applications by proposing pledges to be good, many stakeholders, including governments, corporations, researchers, nonprofits, auto companies, and consumers, are asking for true accountability for the actions of emerging intelligent systems. This panel of experts discusses the growing body of work by the academic, scientific, and standards communities geared specifically to expand and tighten our understanding of the ethical context implicit (and explicit) in AI applications, from diagnosing disease to driving autonomous vehicles.
David Weinberger, Harvard's Berkman Klein Center for Internet & Society and Author, Everyday Chaos, Everything is Miscellaneous, Too Big to Know, Cluetrain Manifesto (co-author)
Sara Mattingly-Jordan, Assistant Professor, Center for Public Administration & Policy, Virginia Tech
Wednesday, May 23: 8:45 a.m. - 9:30 a.m.
As the market moves from fascination with the wonders of the current bloom of Big Data technologies to reconsideration of their risks and perils, enterprises and IT operations are left to figure out how these developments might impact their business—and when. Hadley Reynolds, co-founder of the Cognitive Computing Consortium, presents an open reference framework jointly developed with Babson College’s technology management program. The framework gives executives and operating managers a tool to characterize the impact and behaviors of potential AI applications. Beyond impacts and behaviors, the framework integrates profiles of skills and resources required to effectively execute cognitive tasks.
Hadley Reynolds, Co-founder, Cognitive Computing Consortium
Wednesday, May 23: 9:30 a.m. - 9:45 a.m.
Chris Reuter, North America Data Warehouse Sales Leader, IBM
Wednesday, May 23: 9:45 a.m. - 10:00 a.m.
Taylor Barstow, CEO and Co-Founder, Bedrock Data
Wednesday, May 23: 10:45 a.m. - 11:30 a.m.
Tuning search relevancy is a leading candidate to be replaced by machine learning.
10:45 a.m. - 11:30 a.m.
Learning to Rank (LTR) is now avialable for both Solr and Elasticsearch. Why is this such a hot topic? What does an organization need to leverage a Learning to Rank solution? Haubert explains the LTR pipeline in terms of what is available as an off-the-shelf solution and what isn't. She discusses the challenges faced when implementing LTR and some open research areas moving forward.
Elizabeth Haubert, Data Architect & Relevance Engineer, Open Source Connections LLC
Wednesday, May 23: 11:45 a.m. - 12:30 p.m.
We still have lots to learn about the practical applications of machine learning, social media, and data science within our organizations.
11:45 a.m. - 12:30 p.m.
Machine learning can be applied for sentiment analysis of unstructured data in the context of social media. For example, a large telecommunications organization leverages modern data science approaches to ease the daily business of communication experts and to give them features not available before. Learn how to use key capabilities of advanced text analytics such as language detection, genre identification, named entity extraction, key influencer or key opinion leader about a trend or brand lovers. Gain new ideas about predicting and determining potential social media crises before they happen.
Jana Mitkovska, Project Manager, Raytion
Christian Puzicha, Senior Solutions Architect, Raytion GmbH
Wednesday, May 23: 2:00 p.m. - 2:45 p.m.
Cognitive computing platforms involve artificial intelligence, graph technology, and a host of other potential considerations.
2:00 p.m. - 2:45 p.m.
Today’s knowledge workers want the findability and discoverability of Amazon’s recommendation engines and the intuitive usability of Google’s search rankings and knowledge graphs. These features have been organizational desires for years, but technology has finally caught up with the requirements backlog. Ivanov and Midkiff explain how ontologies serve as a framework for enterprise knowledge graphs, show how semantic layers complement traditional information models, and demonstrate how semantic knowledge models can be used as a basis for text mining. They use real-world production examples, including the Department of Veterans Affairs, the National Park Service, and the Harvard Business School.
Yanko Ivanov, Senior Knowledge Management Consultant, Enterprise Knowledge
James Midkiff, Semantic Web Technologist, Enterprise Knowledge
Wednesday, May 23: 3:00 p.m. - 3:45 p.m.
Security is a pervasive concern across a wide range of companies and industries. What do cognitive technologies bring to the table to ensure data is secure?
3:00 p.m. - 3:45 p.m.
Businesses and data security leaders are constantly looking for ways to better anticipate and even predict threats before they happen. Two major challenges: Companies have a huge amount of data to process and very little time to do it. New forms of targeted attacks have evolved. These new threats require new thinking, and that’s where the latest cognitive capabilities can help.
Wednesday, May 23: 4:00 p.m. - 5:00 p.m.
For the last 2 days, we've heard about exciting developments with technologies focused on the business uses for data, including machine learning, cloud computing, Hadoop, and, of course, cognitive computing. What we do with these technologies to advance business opportunities and avoid business risks is now up to each individual attendee. What are the takeaways that impact us?
Joe Caserta, Founding President, Caserta