Cognitive Architectures
Global Healthcare Cognitive Computing Market Report 2019 7ᵗʰ edition Top Companies, Sales, Revenue, Forecast and Detailed Analysis - Market Trends
Healthcare Cognitive Computing market report is based on present industry situations, market demands, business strategies utilized by prominent players involved in this market along with their growth synopsis. This report has been segmented into types, applications and regions. The report also comprises major drivers boosting this market. Healthcare Cognitive Computing market worth about XX million USD in 2018 and it is expected to reach YY million USD in 2026 with a CAGR of AA% during the forecast period. Cognitive computing (CC) describes technology platforms that are based on the scientific disciplines of artificial intelligence and signal processing.
The evolution of cognitive architecture will deliver human-like AI
But attempting to model an intelligence after either the ephemeral human mind or the exact physical structure of the brain (rather than iterating increasingly capable Roombas) is no small task -- and with no small amount of competing hypotheses and models to boot. In fact, a 2010 survey of the field found more than two dozen such cognitive architectures actively being studied. The current state of AGI research is "a very complex question without a clear answer," Paul S. Rosenbloom, professor of computer science at USC and developer of the Sigma architecture, told Engadget. "There's the field that calls itself AGI which is a fairly recent field that's trying to define itself in contrast to traditional AI." That is, "traditional AI" in this sense is the narrow, single process AI we see around us in our digital assistants and floor-scrubbing maid-bots.
Cognitive Computing Market – Verified Market Research Demand, Development Analysis Share, Industry Growth, Size, Analysis and Forecast 2026 - The Market Research News
Qualitative and quantitative analysis of the market based on segmentation involving both economic as well as non-economic factors Provision of market value (USD Billion) data for each segment and sub-segment • Indicates the region and segment that is expected to witness the fastest growth as well as to dominate the market • Analysis by geography highlighting the consumption of the product/service in the region as well as indicating the factors that are affecting the market within each region • Competitive landscape which incorporates the market ranking of the major players, along with new service/product launches, partnerships, business expansions and acquisitions in the past five years of companies profiled • Extensive company profiles comprising of company overview, company insights, product benchmarking and SWOT analysis for the major market players • The current as well as future market outlook of the industry with respect to recent developments (which involve growth opportunities and drivers as well as challenges and restraints of both emerging as well as developed regions • Includes an in-depth analysis of the market of various perspectives through Porter's five forces analysis • Provides insight into the market through Value Chain • Market dynamics scenario, along with growth opportunities of the market in the years to come • 6-month post sales analyst support
Modeling e-Learners' Cognitive and Metacognitive Strategy in Comparative Question Solving
Tian, Feng, Yue, Jia, Chao, Kuo-ming, Qian, Buyue, Shah, Nazaraf, Li, Longzhuang, Zhu, Haiping, Chen, Yan, Zeng, Bin, Zheng, Qinghua
Cognitive and metacognitive strategy had demonstrated a significant role in self-regulated learning (SRL), and an appropriate use of strategies is beneficial to effective learning or question-solving tasks during a human-computer interaction process. This paper proposes a novel method combining Knowledge Map (KM) based data mining technique with Thinking Map (TM) to detect learner's cognitive and metacognitive strategy in the question-solving scenario. In particular, a graph-based mining algorithm is designed to facilitate our proposed method, which can automatically map cognitive strategy to metacognitive strategy with raising abstraction level, and make the cognitive and metacognitive process viewable, which acts like a reverse engineering engine to explain how a learner thinks when solving a question. Additionally, we develop an online learning environment system for participants to learn and record their behaviors. To corroborate the effectiveness of our approach and algorithm, we conduct experiments recruiting 173 postgraduate and undergraduate students, and they were asked to complete a question-solving task, such as "What are similarities and differences between array and pointer?" from "The C Programming Language" course and "What are similarities and differences between packet switching and circuit switching?" from "Computer Network Principle" course. The mined strategies patterns results are encouraging and supported well our proposed method.
Cognitive Computing Market Overview, Growth, Types, Applications, Regions and Forecast to 2026 - Industry Reports
Qualitative and quantitative analysis of the market based on segmentation involving both economic as well as non-economic factors • Provision of market value (USD Billion) data for each segment and sub-segment • Indicates the region and segment that is expected to witness the fastest growth as well as to dominate the market • Analysis by geography highlighting the consumption of the product/service in the region as well as indicating the factors that are affecting the market within each region • Competitive landscape which incorporates the market ranking of the major players, along with new service/product launches, partnerships, business expansions and acquisitions in the past five years of companies profiled • Extensive company profiles comprising of company overview, company insights, product benchmarking and SWOT analysis for the major market players • The current as well as future market outlook of the industry with respect to recent developments (which involve growth opportunities and drivers as well as challenges and restraints of both emerging as well as developed regions • Includes an in-depth analysis of the market of various perspectives through Porter's five forces analysis • Provides insight into the market through Value Chain • Market dynamics scenario, along with growth opportunities of the market in the years to come • 6-month post sales analyst support
The Ancient Rites That Gave Birth to Religion - Issue 72: Quandary
The invention of religion is a big bang in human history. Gods and spirits helped explain the unexplainable, and religious belief gave meaning and purpose to people struggling to survive. But what if everything we thought we knew about religion was wrong? What if belief in the supernatural is window dressing on what really matters--elaborate rituals that foster group cohesion, creating personal bonds that people are willing to die for. Anthropologist Harvey Whitehouse thinks too much talk about religion is based on loose conjecture and simplistic explanations. Whitehouse directs the Institute of Cognitive and Evolutionary Anthropology at Oxford University. For years he's been collaborating with scholars around the world to build a massive body of data that grounds the study of religion in science. Whitehouse draws on an array of disciplines--archeology, ethnography, history, evolutionary psychology, cognitive science--to construct a profile of religious practices. Whitehouse's fascination with religion goes back to his own groundbreaking field study of traditional beliefs in Papua New Guinea in the 1980s.
Wave Computing Unveils New Licensable 64-Bit AI IP Platform to Enable High-Speed Inferencing and Training in Edge Applications
Wave Computing, the Silicon Valley company accelerating artificial intelligence (AI) from the datacenter to the edge, announced its new TritonAI 64 platform, which integrates a triad of powerful technologies into a single, future-proof intellectual property (IP) licensable solution. Wave's TritonAI 64 platform delivers 8-to-32-bit integer-based support for high-performance AI inferencing at the edge now, with bfloat16 and 32-bit floating point-based support for edge training in the future. Wave's TritonAI 64 platform is an industry-first solution, enabling customers the ability to address a broad range of AI use cases with a single platform. The platform delivers efficient edge inferencing and training performance to support today's AI algorithms, while providing customers with flexibility to future-proof their investment for emerging AI algorithms. Features of the TritonAI 64 platform include a leading-edge MIPS 64-bit SIMD engine that is integrated with Wave's unique approach to dataflow and tensor-based configurable technology.
What is Cognitive Computing? How are Enterprises benefitting from Cognitive Technology?
AI has truly been a far-flung goal ever since the conception of computing, and every day we seem to be getting closer and closer to that goal with new cognitive computing models. Coming from the amalgamation of cognitive science and based on the basic premise of simulating the human thought process, the concept, as well as applications of cognitive computing, are bound to have far-reaching impacts on not just our private lives, but also industries like healthcare, insurance and more. The advantages of cognitive technology are well and truly a step beyond the conventional AI systems. According to David Kenny, General Manager, IBM Watson -- the most advanced cognitive computing framework, "AI can only be as smart as the people teaching it." The same is not true for the latest cognitive revolution.
Towards a Quantum-Like Cognitive Architecture for Decision-Making
Moreira, Catarina, Fell, Lauren, Dehdashti, Shahram, Bruza, Peter, Wichert, Andreas
We propose an alternative and unifying framework for decision-making that, by using quantum mechanics, provides more generalised cognitive and decision models with the ability to represent more information than classical models. This framework can accommodate and predict several cognitive biases reported in Lieder & Griffiths without heavy reliance on heuristics nor on assumptions of the computational resources of the mind. Expected utility theory and classical probabilities tell us what people should do if employing traditionally rational thought, but do not tell us what people do in reality (Machina, 2009). Under this principle, L&G propose an architecture for cognition that can serve as an intermediary layer between Neuroscience and Computation. Whilst instances where large expenditures of cognitive resources occur are theoretically alluded to, the model primarily assumes a preference for fast, heuristic-based processing.
Cognitive computing applications refocus developers' skills
This is the fourth in a continuing series of stories previewing sessions of importance to cloud application developers at the Cloud Expo conference, which takes place June 7 to 9 at the Jacob Javits Center in New York. Judith Hurwitz is president and CEO of Hurwitz & Associates, a Needham, Mass., research and consulting firm focused on emerging technology, including big data, cognitive computing and governance. She is co-author of the book Cognitive Computing and Big Data Analytics, published in 2015. Her Cloud Expo session, "What Is the Business Imperative for Cognitive Computing?" is scheduled for Wednesday, June 8, at 8:40 a.m. In it, she puts cognitive computing into perspective with its value to the business, examines what it takes to build a cognitive application and identifies the types of services that best fit this data-driven approach.