Università degli Studi di Napoli Federico II

uff.scuola.psb@unina.it

13. Data Science

Key features of the MSc course

The Master’s Degree in Data Science at the University of Naples Federico II provides advanced interdisciplinary training aimed at preparing graduates to operate effectively in research, innovation, industry, public administration, and knowledge-intensive services. The program builds on the scientific expertise of several Departments of the University and offers a rigorous educational path integrating computer science, statistics, mathematics, artificial intelligence, data management, machine learning, and domain-specific applications.

The structure of the program reflects a clear and coherent educational progression. The first year is devoted to the acquisition of solid methodological foundations in the core areas of Data Science, enabling students to understand, model, process, analyze, and interpret complex and heterogeneous data. The second year allows students to deepen their competences within specific application domains, through four curricula: Data Science for Public Administration, Economics and Management; Data Science for Information Technologies; Data Science for Fundamental Sciences; and Data Science for Intelligent Systems.

A central feature of the course is the ability to combine methodological expertise with domain knowledge. Students are trained to interact with specialists from different fields, to identify relevant data-driven problems, and to design appropriate analytical and computational solutions. The program also promotes critical thinking, autonomy of judgement, communication skills, and the capacity to work in multidisciplinary contexts, with particular attention to the responsible and effective use of data.

Graduates acquire a professional profile suitable for highly qualified roles such as data scientist, data analyst, machine learning specialist, AI specialist, data engineer, business intelligence expert, and consultant for data-driven decision-making. They may find opportunities in private companies, public institutions, research centers, technology firms, consulting organizations, and innovative start-ups, as well as continue their studies in PhD programs and advanced research paths.

Eligibility and Admission Guidelines

Admission to the Master’s Degree in Data Science at the University of Naples Federico II is open to candidates holding a Bachelor’s degree, or an equivalent qualification, with an academic background consistent with the interdisciplinary nature of the program. Applicants are expected to have acquired at least 30 ECTS/CFU in areas such as engineering, computer science, mathematics, statistics or physics; within these credits, at least 6 ECTS/CFU must refer to computer science-related subjects. A solid previous academic record is also required, with a Bachelor’s degree score normally above 7 on a 10-point scale. Since the program is entirely taught in English, candidates must provide evidence of English language proficiency at B2 level or higher, issued by an officially recognized certification body.

International students must apply through the UNIVERSITALY portal, which represents the official entry point to the Italian university system for foreign applicants. Candidates who fully meet the admission requirements may submit their application directly through the portal. Applicants whose background does not entirely match the stated prerequisites may request a preliminary evaluation, although admission in such cases is subject to assessment by the competent academic committee.

Students who already hold a Master’s degree, obtained either in Italy or abroad, may also apply, provided that their overall academic background is compatible with the admission criteria. After enrolment, they may request an evaluation of their previous academic career in order to verify whether some examinations can be recognized. This assessment is carried out by the committee, which makes the final decision on possible credit recognition.

Although the official enrolment deadline may extend to the end of March, students are strongly encouraged to enroll before the beginning of the first semester, in order to follow the program effectively from the start.

Study Plan

Codice esameDenominazione insegnamentoSSDModuloCFUSemestreTAF
I ANNO
U5383Mathematical methods for Data ScienceMAT/08MATH-05/Aunico 6IB
U5387Statistical Learning & Data AnalysisSECS-S/01STAT-01/AA612IB
SECS-S/01STAT-01/AB6B
U5393Fundamentals of programming & Data managementING-INF/05IINF-05/AA612IB
ING-INF/05IINF-05/AB6IB
U5386Hardware and Software for big dataING-INF/05IINF-05/AA612IIB
ING-INF/05IINF-05/AB6IIB
U5390Data Mining & Machine LearningSECS-S/01STAT-01/AA612IIB
INF/01INFO-01/AB6B
U5396Theory and Ethics of Big Data and AIM-FIL/03PHIL-03/Aunico 6IIB
II ANNO
 Insegnamento curriculare I (*)   12I/IIC
 Insegnamento curriculare II    6I/IIC
 Scelta autonoma dello studente (**)   6I/IID
 Scelta autonoma dello studente    6I/IID
 Ulteriori conoscenze (***)   6 F
 Tirocinio-stage o progetto (****)   8 F
 Esame di laurea   16 E

 (*)       Gli Insegnamenti Curriculari sono definiti in Tabella 1 per ciascun Percorso di Studi (PdS) tra i seguenti:

  1. Curriculum Fundamental Sciences, declinato nei percorsi:
  2. Physics inspired Methodologies – FSC/PM
  3. Mathematical Methodologies – FSC /MM
  4. Life Sciences – FSC /LS
  5. Curriculum Information Technologies, declinato nei percorsi:
  6. Text and Speech Processing – ITE/TS
  7. Signal and Video Processing – ITE/SV
  8. Robotics and Statistics – ITE/RS
  9. Industrial Applications – ITE/IA
  10. Design and Security of AI Systems – ITE/AI
  11. Curriculum Public Administration, Economy and Management – ECO
  12. Curriculum Intelligent Systems – ISY

    (**)      I due insegnamenti a scelta autonoma dello studente da 6 CFU possono essere sostituiti da un unico insegnamento a scelta autonoma dello studente da 12 CFU. Gli insegnamenti a scelta autonoma dello studente possono essere selezionati tra tutti quelli offerti nei percorsi di Laurea Magistrale dell’Università di Napoli Federico II, purché siano coerenti con il percorso formativo scelto dallo studente. La Tabella 2 riporta l’elenco degli insegnamenti a scelta autonoma di automatica approvazione per ciascun Percorso di Studi (PdS). In alternativa, lo studente presenta la richiesta di piano di studi individuale che deve essere approvata dalla Commissione Didattica del Corso di Studi.

(***)        Per i soli studenti stranieri questi CFU saranno concessi dopo il conseguimento di un certificato di conoscenza della lingua italiana (corsi erogati dal Centro Linguistico di Ateneo – CLA). Per gli italiani, i crediti potranno essere conseguiti acquisendo competenze tecniche esterne al corso di studi (e.g. partecipazione a seminari, congressi, attività di tutoraggio, ecc.).

(****)      ll tirocinio extramoenia è svolto presso aziende, centri di ricerca o altri enti pubblici e/o privati, italiani o esteri, con affiancamento         un tutor dell’azienda o dell’ente e la supervisione di un tutor universitario. Il tirocinio intramoenia è svolto presso laboratori di ricerca dell’ateneo con affiancamento di almeno un tutor universitario (docente o ricercatore).

LEGENDA

Tipologia di Attività Formativa (TAF):

B = Caratterizzante

C = Affine o Integrativa

D = Attività a scelta

E = Prova finale

F = Ulteriore attività formativa e conoscenze linguistiche

 

Elenco delle propedeuticità: Il percorso di studi non presenta propedeuticità.

TABELLA I – SCELTA CURRICULARE II ANNO (12 CFU + 6 CFU) – TAF C
Codice esameDenominazione insegnamentoModuloSettoreCFUSemCdS di riferimento
PdS FSE/PH – Curriculum Fundamental Sciences/Physics inspired Methodologies
U5450Advanced Statistical Learning and ModelingAdvanced Statistical Learning and Modeling Mod ASECS-S/01STAT-01/A612IDIETI – LM Data Science
Advanced Statistical Learning and Modeling Mod BSECS-S/01STAT-01/A6IDIETI – LM Data Science
U7202Physics Informed Machine LearningunicoMAT/08MATH-05/A 6IIDIETI – LM Data Science
PdS FSE/MM – Curriculum Fundamental Sciences/Mathematical Methodologies
U5430Algorithms and Parallel Computing and Computational ComplexityAlgorithms and Parallel Computing MOD AINF/01INFO-01/A612IIDMRC – LM Ing. Matematica
Computational Complexity MOD BINF/01INFO-01/A6IDMRC – LM Ing. Matematica
U1624Operational ResearchunicoMAT/09MATH-06/A 6IDMRC – LM Ing. Matematica
PdS FSE/LS – Curriculum Fundamental Sciences/Life Sciences
U7216Biochemistry and computational biochemistryBiochemestryBIO/10BIOS-07/A612IIDIETI – LM Data Science
Computational BiochemestryBIO/10BIOS-07/A6
U1581Cell and Molecular BiologyunicoBIO/11BIOS-08/A 6IDICMAPI – LM Bioingegneria industriale
PdS ITE/TS – Curriculum Information Technologies/Text and Speech Processing
U7206Information Retrieval and Text MiningInformation RetrievalING-INF/05IINF-05/A612IIDIETI – LM Ing. Informatica
Text MiningING-INF/05IINF-05/A6IDIETI – LM Data Science
U6636Speech ProcessingunicoL-LIN/01GLOT-01/A 6IIDIETI – LM Data Science
PdS ITE/SV – Curriculum Information Technologies/Signal and Video Processing
U5444Information Theory and Signals TheoryInformation TheoryING-INF/03IINF-03/A612IDMRC – LM Ing. Matematica
Signals TheoryING-INF/03IINF-03/A62DMRC – LM Ing. Matematica
U3423Image and Video Processing for Autonomous DrivingunicoING-INF/03IINF-03/A 6IIDII – LM Autonomous Vehicle Engineering
PdS ITE/RS – Curriculum Information Technologies/Robotics and Statistics
U2563Robotics  Robotic SystemsING-INF/04IINF-04/A612IDIETI – LM Ing. Informatica
Robotic LabING-INF/04IINF-04/A6IIDIETI – LM Ing. Informatica
U7207Advanced Statistical LearningunicoSECS-S/01STAT-01/A 6IDIETI – LM Data Science
PdS ITE/IA – Curriculum Information Technologies/Industrial Applications
U5451Advanced Statistical Learning and ModelingAdvanced Statistical Learning and Modeling Mod ASECS-S/01STAT-01/A612IDIETI – LM Data Science
Advanced Statistical Learning and Modeling Mod BSECS-S/01STAT-01/A6IDIETI – LM Data Science
U2659Statistical Methods for Industrial Process MonitoringunicoSECS-S/02STAT-01/B 6IDMRC – LM Ing. Matematica
PdS ITE/AI – Curriculum Information Technologies/Design and Security of AI Systems
U7208Algorithm Design and Methods of AIAlgorithm DesignINF/01INFO-01/A612IIDIETI – LM Informatica
Methods for Artificial IntelligenceINF/01INFO-01/A6IIDIETI – LM Informatica
U2652Data SecurityunicoING-INF/05IINF-05/A 6IDIETI – LM Data Science
PdS ECO – Curriculum Public Administration, Economy and Management
U7213Computational Statistical Inference and Categorical Data AnalysisComputational Statistical InferenceSECS-S/01STAT-01/A612IDISES – LM Economia e Commercio
Categorical Data AnalysisSECS-S/01STAT-01/A6IDISES – LM Economia e Commercio
U6373Financial Time Series AnalysisunicoSECS-S/01STAT-01/A 6IDISES – LM Economics and Finance
PdS ISY – Curriculum Intelligent Systems
U7211Quantum Computation and Computational IntelligenceMod I TheoryINF/01INFO-01/A612IIDFEP – LM Quantum Science and Engineering
Computational IntelligenceINF/01INFO-01/A6IIDIETI – LM Data Science
U7215Generative Artificial IntelligenceunicoINF/01INFO-01/A 6IDIETI – LM Data Science

LEGENDA:

DFEP: Dipartimento di Fisica Ettore Pancini; DIETI: Dipartimento di Ingegneria Elettrica e Tecnologie dell’Informazione; DII: Dipartimento di Ingegneria Industriale; DISES: Dipartimento di Scienze Economiche e Statistiche; DMRC: Dipartimento di Matematica e applicazioni Renato Caccioppoli; DICMAPI: Dipartimento di Ingegneria Chimica, dei Materiali e della Produzione Industriale;

NI: Nuova Istituzione

 

TABELLA 2 – Elenco degli insegnamenti a SCELTA AUTONOMA di automatica approvazione II ANNO (6 CFU + 6 CFU oppure 12 CFU) – TAF D
Codice esameDenominazione insegnamentoSSDCFUSemCdS di riferimento
Già insegnamenti o moduli di insegnamenti curriculari se non facenti parte del PdS scelto
U7207Advanced Statistical LearningSECS-S/01STAT-01/A6IDIETI – LM Data Science
U7218Advanced Statistical ModelingSECS-S/01STAT-01/A6IDIETI – LM Data Science
U1643Algorithms and Parallel ComputingINF/01INFO-01/A6IIDMRC – LM Ing. Matematica
U7219Computational IntelligenceINF/01INFO-01/A6IIDIETI – LM Data Science
U2653Data SecurityING-INF/05IINF-05/A6IDIETI – LM Data Science
U7215Generative Artificial IntelligenceINF/01INFO-01/A6IDIETI – LM Data Science
NIFinancial Time Series AnalysisSECS-S/01STAT-01/A6IDISES – LM Econ. and Finance
U3423Image and Video Processing for Autonomous DrivingING-INF/03IINF-03/A6IIDII – LM Autonomous Vehicle Engineering
U1644Information TheoryING-INF/03IINF-03/A6IDMRC – LM Ing. Matematica
U3522Methods for Artificial IntelligenceINF/01INFO-01/A6IIDIETI – LM Informatica
U5902Text MiningING-INF/05IINF-05/A6IDIETI – LM Data Science
Altri insegnamenti
U5494AI Systems EngineeringING-INF/05IINF-05/A6IDIETI – LM Ing. Informatica
U4763Applied Quantum SystemsFIS/03PHYS-03/A6IIDFEP – LM Quantum Science and Engineering
U1205AstroinformaticsFIS/05PHYS-05/A6IIDFEP – LM Fisica
U3525Biometric SystemsINF/01INFO-01/A6IIDIETI – LM Informatica
U3523Computer VisionINF/01INFO-01/A6IDIETI – LM Informatica
U2658Data visualizationING-INF/05IINF-05/A6IIDIETI – LM Data Science
U3536Human robot interactionINF/01INFO-01/A6IDIETI – LM Informatica
U3546Information Systems and Business IntelligenceING-INF/05IINF-05/A6IDIETI – LM Ing. Informatica
U3539Natural Language ProcessingINF/01INFO-01/A6IIDIETI – LM Informatica
U1437Real and Functional AnalysisMAT/05MATH-03/A6IDMRC – LM Ing. Matematica
U3835Reliability and Risk in Aerospace EngineeringSECS-S/02STAT-01/B6IIDII – LM Ing. Aerospaziale
U5937Software Architecture DesignING-INF/05IINF-05/A6IDIETI – LM Ing. Informatica
U6635Techniques of Text Analysis and Computational LinguisticL-LIN/01GLOT-01/A6IDIETI – LM Data Science
25880Advanced MicroeconomicsSECS-P/01ECON-01/A12IDISES – LM Economics and Finance
25881Advanced MacroeconomicsSECS-P/01ECON-01/A12IIDISES – LM Economics and Finance
27381Economics of RegulationSECS-P/03ECON-03/A6IIDISES – LM Economics and Finance
27382Financial EconometricsSECS-P/05ECON-05/A6IIDISES – LM Economics and Finance
25884Mathematics for Economics and FinanceSECS-S/06STAT-04/A12IDISES – LM Economics and Finance
NIMetodi statistici per la ricerca socialeSECS-S/05STAT-03/B6IDISES – LM Economia e Commercio
NIPreference learningSECS-S/01STAT-01/A6IDISES – LM Economia e Commercio
U6640SW and methods for statistical analysis of economic dataSECS-S/01STAT-01/A6IIDIETI – LM Data Science