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Prof. Ph.D. (CPU) Michael Paetsch Kolloquium: Dienstag 12.00-13.00 Büro: W1.4.032 Email: [email protected] Zukunftstechnologien Syllabus Sommersemester 2016 Zeit (Raum): siehe Semesterplaung Start: siehe Semesterplanung SWS: 2 (à 45 Minuten) ECTS-Credits: 3 Level: Introduction Lehrsprache: Deutsch Voraussetzungen: Curiosity Zugehörige LV’s: --- Course overview: We are currently witnessing the development and increasingly widespread introduction of a large array of technologies that will fundamentally redefine the way companies are interacting with consumers and – equally important – consumers interact with companies. A large part of these technologies are in the area of IT and include among others platform’s and tools to store, manipulate and analyze large amount of data. Increasingly these tasks are performed autonomous and in real time with systems that are based on Artificial Intelligence (AI). These systems are predominantly designed to better understand consumer behavior and profit from these insights, by building better products or services faster and cheaper. Another set of technologies are developed that will radically improve the information and/or data exchange between companies and consumers or generate valuable data between companies and assets. Specifically, these are enabling technologies such as – for example super advanced mobile and connectionless payment systems as well as IOT systems connected to internet of things (IOT) platforms. The relevance to advancements in sensoring and biometrics will be discussed. Finally, key visionary concepts such as Industry 4.0, which could change the production logic and flow fundamentally - although they are not yet well defined – are presented. Subsequently,advancements in key non-IT technologies such 3D printing and robotics are discussed. Other visionary concepts such as self-driving car a and electric cars and smart grid / smart metering and their underlying technology are outlined. Key Learnings: At the outset, the course strives to provide students with a very broad overview of dozens of emerging technologies. Following, more mature/visible technologies are highlighted and are discussed in greater conceptual detail. As indicated above these technologies comprise of – but are not limited to – big data/business analytics, cloud technologies and player, internet of things platforms, sensoring and transmission, 5G network developments, contactless/mobile payment systems etc. After students are familiarized with key technologies shaping todays markets, the primary focus shifts to understanding how these technologies are fundamentally changing the value chains and organization of companies and markets. Specifically, students will also be introduced to the concept of data monetization and advanced new business models. It will provide a very good overview of how companies other than google and facebook are generating money with data. A great deal of effort is spent in making students understand, how these technologies push universal digitization of all internal and external processes and thereby - as a consequence will massively transform existing industries or create entirely new once. Course contributions to bachelor programs’ common learning goals: Learning Objective/Outcome Expert Contributions to Assessment learning objectives knowledge 1.1 Students demonstrate that they have basic knowledge in Business Administration. Sound knowledge base Class room of all upcoming and Interaction business relevant technologies. Final test 1.2 Students demonstrate their Focus on technologies distinguished and sound competencies in enabling Economics. 1.3 Students have command of legal methodology for case solutions on basis of claims. 1.4 Students are able to solve business problems by applying quantitative methods Use of information technology u 2.1 Students demonstrate proficiency in using computer programs to solve business problems. n.a. 2.2 Students are able to use information systems effectively in real world business settings Critical thinking and analytical Competence 3. Students are able to apply analytical and critical thinking skills to complex problems Focus on enabling students to understand Direct digitization and feedback transformation processes student Ethical awareness n.a. 4. Students are able to develop business ethics strategies and apply them to typical business decision -making problems Communication Skills 5.1 Students are able to express complex problems effectively in writing. 5.2 Students demonstrate their oral communication skills in presentations Course is designed and Direct held in a fully interactive feedback format. Students will therefore develop competence to clearly express thoughts and generate insights. 5.1 Students are able to express complex problems effectively in Case studies are Performed in interactive manner writing. an 5.2 Students demonstrate their oral communication skills in presentations Capacity for teamwork 6. Students show that they are able to work successfully in teams by performing practical tasks Short team work tasks are given. student Course structure: - Chapter 1: Megatrends in communications & computing - Chapter 2: High level overview – emerging technologies - Chapter 3: Detailed Overview - Highly relevant technologies - Chapter 4: Big data Analytics / Cloud - Chapter 5: Artificial Intelligence / Cloud - Chapter 6: Connectionless Payment Systems: Technology and Importance - Chapter 7: IOT Systems and sensoring - Chapter - Chapter 9: Transformation and Disruption incl. Case Studies - Chapter 10: Data Monetization incl. Case Studies - Chapter 11: Bringing it all together: Visionary concepts for the 21st century: Industry 4.0, smart city, smart utility, self driving cars. 8: Digitization: Definition and Application and Assessment:/ - The course is assessed by means of a Referat/Hausarbeit Grading Scale: For grading details please refer to the Studien und Prüfungsordnung (SPO) 1.0 Very good, a performance significantly above the average 2.0 Good, an above average performance Case Studies 3.0 Satisfactory, an average performance 4.0 Adequate, a below average performance with noticeable shortcomings 5.0 Fail, an unacceptable performance Literature: Comprehensive Handout Anthony, Patricia; Ishizuka, Mitsuru; Lukose, Dickson (2012): PRICAI 2012. Trends in artificial intelligence ; 12th Pacific Rim International Conference on Artificial Intelligence, Kuching, Malaysia, September 3-7, 2012, Proceedings. Berlin, New York: Springer (LNCS sublibrary. SL 7, Artificial intelligence, 7458). Albach, Horst; Meffert, Heribert; Pinkwart, Andreas; Reichwald, Ralf (2014): Management of permanent change. New York: Springer Gabler. Aggarwal, Charu C. (2013): Managing and mining sensor data. New York: Springer. Allums, Skip (2014): Designing mobile payment experiences. Principles and best practices for mobile commerce. 1st ed. Sebastopol, CA: O'Reilly Media. Bassi, Alessandro (2013): Enabling things to talk. Designing IoT solutions with the IoT architectural reference model. Heidelberg: Springer. Buhr, Daniel (2015): Industry 4.0 - new tasks for innovation policy. Bonn: Friedrich-EbertStiftung, Division for Social and Economic Policies. Disrupting the mobile payment industry (2013). Unter Mitarbeit von Deirdre Bolton. New York: Bloomberg (Business and education in video). Fathi, Madjid (2013): Integration of practice-oriented knowledge technology. Trends and prospectives. Berlin, New York: Springer. Hemann, Chuck; Burbary, Ken (2013): Digital marketing analytics. Making sense of consumer data in a digital world. Indianapolis, Ind.: Que. Holler, Jan (2014): From machine-to-machine to the internet of things. Introduction to a new age of intelligence. Amsterdam: Academic Press. Hozdić, Elvis: Manufacturing for Industry 4.0. Kent, Jennifer: Dominant mobile payment approaches and leading mobile payment solution providers. A review. Lans, Rick F. van der (2012): Data virtualization for business intelligence systems. Revolutionizing data integration for data warehouses. [Place of publication not identified]: Morgan Kaufmann. Lerner, Thomas (2013): Mobile payment. Wiesbaden: Springer. Marr, Bernard (2015): Big data. Using smart big data, analytics and metrics to make better decisions and improve performance. Chichester, West Sussex, United Kingdom, Hoboken, New Jersey: John Wiley and Sons, Inc. Making the Future. 3D Printing and the Future of Digital Fabrication (2015). [Place of publication not identified], New York, N.Y., ©2014: NPO/Netherlands Public Broadcast; distributed by Films Media Group Minelli, Michael; Chambers, Michele; Dhiraj, Ambiga (2013): Big data, big analytics. Emerging Business intelligence and analytic trends for today's businesses. Hoboken, New Jersey: John Wiley & Sons, Inc (Wiley CIO). Nolan, Paulina (2014): Mobile apps and banking. Investigations of shopping, payment and financial services. New York: Nova Publishers (Banks and banking developments). Ohlhorst, Frank (2013): Big data analytics. Turning big data into big money. Hoboken, N.J.: John Wiley & Sons (Wiley & SAS business series). Paetsch, Michael (1993): Mobile communications in the U.S. and Europe. Regulation, technology, and markets. Boston: Artech House (The Artech House mobile communications library). Paetsch, M. Über die globale Vernetzung von Maschinen und Maschinen. In: Burda, Hubert; Döpfner, Mathias; Hombach, Bodo; Rüttgers, Jürgen (Hrsg.): 2020 Gedanken zur Zukunft des Internets. Klartext Verlag, Essen 2010. Piatetsky-Shapiro, Gregory (1997): Data mining and knowledge discovery. The third generation. [S.l.]: [s.n.]. Sathi, Arvind (2012): Big data analytics. 1st ed. Boise: MC Press. Schutt, Rachel; O'Neil, Cathy (2013): Doing data science. First edition. Beijing: O'Reilly Media. Sénac, P.; Ott, Max; Seneviratne, Aruna (2012): Mobile and ubiquitous Systems: Computing, networking, and services. 7th International ICST Conference, MobiQuitous 2010, Sydney, Australia, December 6-9, 2010, Revised selected papers. Berlin, New York: Springer (Lecture notes of the Institute for Computer Sciences, Social Informatics and Telecommunications Engineering, 73). Simon, Phil (2014): The visual organization. Data visualization, big data, and the quest for better decisions. Hoboken, New Jersey: Wiley (Wiley and SAS Business Series). Sinha, Sudhi (2014): Making big data work for your business. A guide to effective big data analytics. Birmingham, U.K.: Impackt Pub. Sładkowski, Aleksander; Pamuła, Wiesław (2016): Intelligent transportation systems. Problems and perspectives. Cham: Springer (Studies in systems, decision and control, volume 32). Thomas, Rob; McSharry, Patrick (2015): Big Data revolution. What farmers, doctors and insurance agents teach us about discovering Big Data patterns. Chichester: John Wiley & Sons. Welton, Travis (2015): Internet of Things. ESP8266 Introduction. Nashua, New Hampshire, Nashua, New Hampshire: Skillsoft Ireland Limited; Skillsoft Corporation. Zukas, Victoria; Zukas, Jonas A. (2015): An introduction to 3D printing. Sarasota, FL: First Edition Design Publishing.