didattica:ay2122:da:main

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Data Analytics

  • Course start: the first lesson is planned for 4th of October 2020, at Polo Ludovici (LB1).

Teacher:

ESSE3 Link

Scheduling of Lectures:

  • Scheduling is available at the following link
  • 42 h - lectures, exercise sessions
  • Schedule on: Monday at LB1 room-new Polo Ludovici - 14:00 to 16:00 / Friday at AB1 Polo Ludovici - 14:00 to 16:00

Degrees:

Students Office hours:

  • Send an e-mail to the teacher to fix an appointment.

  • knowledge about business data analysis and modern scenarios such as the Internet of Things.
  • Understanding of main differences between classical methods in data analysis and new modern scenarios.
  • Knowledge and expertise on Big Data methodologies and technologies, basic principles and concepts, techniques that enable data analysis and management.
  • Knowledge of the main Big Data technological frameworks and application in real case studies.
  • Highlight some Intelligent Data Analysis techniques.

  • Introduction to enterprise and data management.
  • Analysis of scenarios and contexts of data generation: from the inter-organizational model to the Internet of things.
  • Introduction to the classic data analysis techniques: ETL (Extract, Transform, Load), Business Intelligence, Reporting Tools.
  • Methodologies and technologies for the management and analysis of large amounts of data: introduction to the Big Data model, concepts, principles and technological frameworks.
  • Data Analytics methodologies and techniques: batch analysis models, streaming computation.
  • Data Analytics evolution towards intelligent data understanding models.

Course Slides

  • Projects - TBD
  • Reference materials
    • Slides course.
    • Material provided by the teacher.
    • Examples
    • Other materials

Exam Dates A.Y. 2021/2022 (tentative)

  • 07/02/2022
  • 25/02/2022
  • 23/05/2022
  • 17/06/2022
  • 25/07/2022
  • 05/09/2022
  • 30/09/2022
  • 06/02/2023
  • 27/02/2023

Exam rules:

  • Writing Examination on the topics of the course
  • Project lab (max 3 member per team)

For the discussion students have to publish the final code to a public github repository (or similar) along with the necessary documnatation (pre-requisite, installation, configuration, usage, etc). Moreover a set of slides have to be presented in that day along with a practical demonstration of the running code. Slides should cover the following points:

  1. Project description / objectives
  2. Methodology and technology being used
  3. Technical implementation
  4. Achieved results
  5. Possible future improvements

Exam Results

  • See news section
  • didattica/ay2122/da/main.1633695019.txt.gz
  • Last modified: 2021/10/08 14:10
  • by massimo