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Innovation management

01TXISM

A.A. 2020/21

Course Language

Inglese

Degree programme(s)

Master of science-level of the Bologna process in Data Science And Engineering - Torino

Course structure
Teaching Hours
Lezioni 36
Esercitazioni in aula 24
Lecturers
Teacher Status SSD h.Les h.Ex h.Lab h.Tut Years teaching
Neirotti Paolo Professore Ordinario ING-IND/35 18 0 0 0 2
Co-lectuers
Espandi

Context
SSD CFU Activities Area context
ING-IND/16
ING-IND/35
3
3
C - Affini o integrative
C - Affini o integrative
Attività formative affini o integrative
Attività formative affini o integrative
2019/20
Digital technologies are improving the capability of organizations and individuals of accessing, storing and analyzing information (cloud computing, big data and artificial intelligence), of making things in a smarter, more efficient and safer way (augmented and virtual reality, additive manufacturing), and of connecting things (Internet of Things - IoT). There are certain dimensions in which digital technologies transform industries and processes in ways that replicate and extend transformations of the past. For example, IoT, big data and artificial intelligence offer new ways of implementing continuous improvement and lean thinking methods. However, there are other ways in which digital technologies transform industries that are fundamentally new (e.g. smart connected products and product-service systems), create new approaches to design and management, expose organizations to new sources of uncertainty, risk and competition, and require new approaches to decision-making, design and engineering. Both the “old” revisited approaches and the more radical transformations have in common the need to develop job positions characterized by technical skills on data science and managerial skills and attitudes needed to understand with a business and an operational engineering lens how big data can be used. Such T-shaped profile of skills will allow data scientists to work in cross-functional teams and have effective coordination with business domain experts. The course intends to explore the main challenges and perils produced at three levels. At the macro level, the course provides an interpretation of the social and economic implications of big data and it will offer a comparative analysis of its characteristics and effects across industries, within and outside the manufacturing world. Contextual factors will be considered. While digital transformation and big data enable global innovations, economic regulations and institutions are still at a local level. This implies an understanding of the factors that can facilitate or hinder the success and the replicability of digital transformation initiatives across different industries. At the meso level, big data raise fundamental questions on the underlying processes, routines, capabilities and structures by which organizations innovate and build their organizational learning mechanisms, in processes like product and service development, manufacturing and customer relationship management. At the micro level, the simultaneous introduction of Artificial Intelligence, Big Data, algorithms and virtual reality challenges existing skills and capabilities into the organization. This raises several points for organizations related to how the new digital skills should be acquired and combined with “analog” legacy skills of an organization.
At the end of the course, students will have acquired a concrete ability to analyze and manage business decisions related to big data in both strategic and operational terms.
At the end of the course, students will have acquired a concrete ability to analyze and manage business decisions related to big data in both strategic and operational terms.
For an easier acquisition of the course contents, it might be useful for students to know the fundamentals of Economics and Business Organization, as well as the basics of Business Strategy.
For an easier acquisition of the course contents, it might be useful for students to know the fundamentals of Economics and Business Organization, as well as the basics of Business Strategy.
1. Technological Innovation, companies and sectors: Determinants, taxonomies and dynamics of innovation, dominant design and standard. Innovation in business models. Technological forecasting. 2. Big Data as a strategic resource of competition: the use in incremental vs. radical innovation; big data and business model innovation; big data and its relation with a firm’s core competencies 3. Big data and industry-level changes: how big data and the related digital technologies require new core competencies and new alliances between firms 4. Big Data and new organizational architecture: what type of organizational changes and configurations are needed to deploy big data and data scientists effectively 5. Big Data and AI and their role in the decision-making processes at the individual and organizational level.
1. Technological Innovation, companies and sectors: Determinants, taxonomies and dynamics of innovation, dominant design and standard. Innovation in business models. Technological forecasting. 2. Big Data as a strategic resource of competition: the use in incremental vs. radical innovation; big data and business model innovation; big data and its relation with a firm’s core competencies 3. Big data and industry-level changes: how big data and the related digital technologies require new core competencies and new alliances between firms 4. Big Data and new organizational architecture: what type of organizational changes and configurations are needed to deploy big data and data scientists effectively 5. Big Data and AI and their role in the decision-making processes at the individual and organizational level.
The course consists of lectures, with extensive use of case studies drawn from experience and empirical research, and practices.
The course consists of lectures, with extensive use of case studies drawn from experience and empirical research, and practices.
Texts, readings, handouts and other learning resources
Texts, readings, handouts and other learning resources
Modalità di esame: Prova scritta (in aula);
Exam: Written test;
... Exam: written test; individual project Assessment will be based on a written exam and on assignments handed in during the course.
Gli studenti e le studentesse con disabilità o con Disturbi Specifici di Apprendimento (DSA), oltre alla segnalazione tramite procedura informatizzata, sono invitati a comunicare anche direttamente al/la docente titolare dell'insegnamento, con un preavviso non inferiore ad una settimana dall'avvio della sessione d'esame, gli strumenti compensativi concordati con l'Unità Special Needs, al fine di permettere al/la docente la declinazione più idonea in riferimento alla specifica tipologia di esame.
Exam: Written test;
Exam: written test; individual project Assessment will be based on a written exam and on assignments handed in during the course.
In addition to the message sent by the online system, students with disabilities or Specific Learning Disorders (SLD) are invited to directly inform the professor in charge of the course about the special arrangements for the exam that have been agreed with the Special Needs Unit. The professor has to be informed at least one week before the beginning of the examination session in order to provide students with the most suitable arrangements for each specific type of exam.
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