Students
مصاريف
EUR 5,400
تاريخ البدء
وسيلة الدراسة
داخل الحرم الجامعي
مدة
2 years
حقائق البرنامج
تفاصيل البرنامج
درجة
الماجستير
تخصص رئيسي
Artificial Intelligence | Data Analytics | Data Science
التخصص
علوم الكمبيوتر وتكنولوجيا المعلومات | لسانيات
نوع التعليم
داخل الحرم الجامعي
توقيت
لغة الدورة
إنجليزي
مصاريف
متوسط ​​الرسوم الدراسية الدولية
EUR 5,400
دفعات
تاريخ بدء البرنامجآخر موعد للتسجيل
2024-09-01-
عن البرنامج

نظرة عامة على البرنامج


Master's Degree in Data Science

The master's degree in Data Science aims to create a benchmark for excellence in the field of data science. This eminently interdisciplinary degree is based on two distinct pillars that are equally essential to data science: data management and data analytics.


General Details

  • Duration and start date: 2 academic years, 120 ECTS credits, starting in September
  • Timetable and delivery: Face-to-face
  • Fees and grants: Approximate fees for the master's degree (excluding other costs): 2,324 (5,400 for non-EU residents)
  • Language of instruction: English
  • Location: Barcelona School of Informatics (FIB)
  • Official degree: Recorded in the Ministry of Education's degree register

Admission

  • General requirements: Academic requirements for admission to master's degrees
  • Specific requirements:
    • Certification of a B2 level (CEFR) of English (or equivalent)
    • Direct admission
    • Recommended entrance qualifications:
      • Bachelor's or pre-EHEA degree in Informatics Engineering
      • Bachelor's or pre-EHEA degree in Mathematics
      • Related qualifications (with priority given to students with a thorough knowledge of mathematics and informatics):
        • Bachelor's degree in Physics
        • Bachelor's degree in Statistics
        • Bachelor's degree in Telecommunications Science and Technology
        • Bachelor's degree in Electronic Engineering and Telecommunications
        • Bachelor's degree in Civil Engineering
        • Bachelor's degree in Industrial Technology Engineering
        • Bachelor's degree in Industrial Electronics and Automatic Control Engineering
        • Bachelor's degree in Bioinformatics
        • Bachelor's degree in Artificial Intelligence
        • Bachelor's degree in Data Science and Engineering
  • Places: 40
  • Pre-enrolment: Currently closed
  • Enrolment: Information available upon request
  • Legalisation of foreign documents: Required for documents issued in non-EU countries

Curriculum

First Semester

  • Algorithms, Data Structures and Databases (6 ECTS)
  • Data Warehousing (6 ECTS)
  • Multivariate Analysis (6 ECTS)
  • Process-Oriented Data Science (6 ECTS)
  • Statistical Inference and Modelling (6 ECTS)

Second Semester

  • Big Data Management (6 ECTS)
  • Machine Learning (6 ECTS)
  • Mining Unstructured Data (6 ECTS)
  • Semantic Data Management (6 ECTS)
  • Advanced Statistical Modelling (6 ECTS)
  • Algorithmics for Data Mining (6 ECTS)
  • Bioinformatics and Statistical Genetics (6 ECTS)
  • Cloud Computing and Big Data Analytics (6 ECTS)
  • Complex and Social Networks (6 ECTS)
  • Computer Vision (6 ECTS)
  • Data Management for Transportation (4 ECTS)
  • Data Visualization (6 ECTS)
  • Debates on Ethics of Data Science (3 ECTS)
  • Human Language Engineering (4.5 ECTS)
  • Interdisciplinary Innovation Project (6 ECTS)
  • Introduction to Quantitative Linguistics (6 ECTS)
  • Introduction to Research (3 ECTS)
  • Introduction to Research (6 ECTS)
  • Optimization Techniques for Data Mining (6 ECTS)
  • Software Development for Geographic and Spacial Information (3 ECTS)
  • Techniques and Methodology of Innovation and Research in Informatics (6 ECTS)
  • Techniques and Tools for Bioinformatics (3 ECTS)
  • Viability of Business Projects (6 ECTS)

Third Semester

  • Advanced Machine Learning (6 ECTS)
  • Advanced Multivariate Analysis (6 ECTS)
  • Data Analysis and Knowledge Discovery (6 ECTS)
  • Information Retrieval and Recommender Systems (6 ECTS)
  • Machine Learning Systems in Production (Mlops) (6 ECTS)

Fourth Semester

  • Master's Thesis (30 ECTS)

Professional Opportunities

  • Graduates work in data management and data analytics
  • Main positions:
    • Data scientist
    • Data engineer
    • Data specialist
    • Data administrator
    • Systems architect
    • Systems analyst
    • Digital transformation leader (DTL)
    • Chief information officer (CIO)
    • Chief data officer (CDO)

Competencies

Generic Competencies

  • Capacity for innovation and entrepreneurship
  • Sustainability and social commitment
  • Knowledge of a foreign language (preferably English)
  • Teamwork and proper use of information resources

Specific Competencies

  • Ability to develop efficient algorithms based on knowledge and understanding of the theory of computational complexity and the main data structures in the field of data science
  • Ability to apply the basic principles of data management and processing to problems in the field of data science
  • Ability to apply data integration methods to solve data science problems in heterogeneous environments
  • Ability to apply scalable methods for storage and parallel processing of data
  • Ability to model, design, and implement complex data systems, including data visualization
  • Ability to design data science processes and to apply scientific methods to draw conclusions about populations and take decisions accordingly
  • Ability to identify the limitations imposed by data quality when tackling data science problems and to apply techniques to reduce their impact
  • Ability to extract information from structured and unstructured data
  • Ability to apply appropriate methods for analyzing other types of formats, such as processes and graphs, in the field of data science
  • Ability to identify machine learning and statistical modeling methods for solving a specific data science problem and to apply them in a rigorous manner
  • Ability to analyze and extract knowledge from unstructured information by applying natural language processing techniques and through the use of text and image mining
  • Ability to apply data science methods to multidisciplinary projects to solve problems in new or unfamiliar domains
  • Ability to identify the main data ethics and privacy issues affecting data science projects and to develop and implement appropriate measures to mitigate related threats
  • Ability to carry out and present and defend before an examination committee an original, individual piece of work consisting of a comprehensive data science engineering project that synthesizes the competencies acquired on the degree

Quality Accreditation

  • Check the degree's main quality indicators in the University Studies in Catalonia portal of the Catalan University Quality Assurance Agency
  • Find information on topics such as degree evaluation results, student satisfaction, and graduate employment data

Organisation: Academic Calendar and Regulations

  • UPC school: Barcelona School of Informatics (FIB)
  • Academic coordinator: Ňscar Romero Moral
  • Academic calendar: General academic calendar for bachelor's, master's, and doctoral degrees courses
  • Academic regulations: Academic regulations for master's degree courses at the UPC
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