2020-2021

Information Retrieval

Credits: 
4
Hours: 
42
Area: 
Big Data Sensing & Procurement
Teachers: 
Description: 

The module provides the description of a search engine structure and of Text Mining tools, by analyzing their characteristics and limits with respect to the computational cost, the precision/recall/F1 parameters, and the expressivity of the supported queries. The module is also based on hands-on activities that will present well-known open-source Python tools for the crawling and analysis of web pages, the semantic annotation of texts (TagMe), and the indexing of text data collections (ElasticSearch).

Deep Learning

Credits: 
2
Hours: 
22
Area: 
Big Data Mining
Teachers: 
Tutor: 
Description: 

The course will first introduce the fundamentals of artificial neural networks and, then, it will provide an overview of the main techniques and models of the deep learning field. Specific focus will be placed on detailing neural models that are useful for addressing predictive tasks on vectorial, sequential and image data, and to generative deep learning, including variational and adversarial learning.

Data Visualization and Data Journalism

Credits: 
3
Hours: 
34
Area: 
Big Data Story Telling
Description: 

The module aims at preparing students to the approprieted presentation of data and knowledge extracted from them through visualization tools and narratives that exploit multimedia.
The module first presents the basic visualization techniques for the effective presentation of information from several different sources: structured data (relational, hierarchies, trees), relational data (social networks), temporal data, spatial data and spatio-temporal data.

Big data sources, crowdsourcing, crowdsensing

Credits: 
2
Hours: 
20
Area: 
Big Data Sensing & Procurement
Teachers: 
Description: 

This module presentes techniques and methods for acquisition of Big Data from a large sources of data available, including mobile phone data, GPS data, customer purchase data, social network data, open and administrative data, environmental and personal sensor data. We discuss also several participatory methods for crowdsourcing or crowdsensing collection of data through ad hoc campains like serious games and viral diffusion.

Big Data for Society

Credits: 
1
Hours: 
12
Area: 
Big Data for Social Good
Academic Year: 
Description: 

The module si composed by several Seminars on experiences and case- and use-studies of Big Data analytics and Social Mining from the SoBigData.eu labs and from the companies and institutions that are partners in the Master.

Big Data Ethics

Credits: 
2
Hours: 
22
Area: 
Big Data Ethics
Description: 

The module aims to introduce ethical and legal notions of privacy, anonymity, transparency and non-discrimination, also referring the Directives and Regulations of the European Union and their ongoing evolution. The module will show technologies for Privacy-by-Design, for predictive model auditing and for protecting the users' rights and that allow the analysis of Big Data without harming the right to the protection of personal data, to transparency and to a fair treatment.

Data Driven Innovation

Credits: 
1
Hours: 
12
Area: 
Big Data for Business
Description: 

The module aims to show the main characteristics of the innovation processes in companies and institutions. After some basics of innovation economics, the management of the innovation processes will be presented (role of R&D, Open Innovation, etc.). The module also shows new innovation opportunities available after the last progresses in large scale data acquisition and elaboration, the basics of business models and start-ups. An exercise of business model innovation will try to explore che big data potential in opening new business opportunities.

Santoro Roberto

As graduate researcher at the university of Pisa, Roberto worked initially on algorithms for similarity measures and classification on knowledge graphs (Google Research Award), and later on algorithms for economic networks. He then moved into industry: in Spaziodati he works both on the development of semantic annotation engines and on data science/machine learning projects applied to large economic and textual datasets. In SpazioDati he is also in charge of the SmartDataLake EU project.

English

Del Sarto Nicola

Nicola Del Sarto is a post-doctoral research fellow at Scuola Superiore Sant'Anna in Pisa. He received a Ph.D in Management from Scuola Superiore Sant'Anna in 2019. Nicola's research interests focus on start-ups and support mechanisms such as incubators, accelerators and corporate accelerator programs. Moreover, he is investigating the processes of business creation under the Open Innovation paradigm. Nicola holds a Master degree in economics from University of Pisa and a post graduate master in Management, innovation and engineering of services from Scuola Superiore Sant'Anna.

English

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