Enterprise Data Analytics

  • New exam date: 5th of december, room to be fixed
  • Exam results: results for the writing session of 5th of September 2019 are available here
  • Exam rules update: students must confirm their presence to the next exam sessions at least 5 days before the exam date.
  • Projects update: projects are available here
  • Exam results: results for the writing session of 27th of June 2019 are available here
  • Course update: projects have been published here. More details will be given during the next lessons.
  • Lessons update: for the second part of the lesson planned for 16th of May, students are invited to attend the seminary “Data-driven methods for modeling critically-ill patients affected by atrial fibrillation” 16:30 room AB1.
  • Lessons update: students should bring their own laptop for lab exercises.
  • No lesson on 4th of april 2019: lecture suspended for this week.
  • No lesson on 14th of march 2019: lecture suspended for this week.
  • Course started: course content updated.

Teacher:

  • Dr. Massimo Callisto De Donato <dtmassimo.callisto[at]unicam.it>

ESSE3 Link

Lessons schedule:

  • 42 h - lectures and exercise sessions
  • Thursday: 14:00 pm – 16:00 pm
  • Room AB1 - Polo “Carla Lodovici”

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.

  • Acquire knowledge and competence on Big Data methodologies, techniques and technologies.
  • Know most common techniques of Big Data analysis and how they apply to real world examples.
  • Apply Big Data Analysis techniques into practical case studies.

  • 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

  • Slides link
    • Course introduction and rules
    • Enterprise Data Analytics
    • Big Data
    • Storage & Computation
    • NoSQL
    • Computation
    • Analytics lab with Apache Spark, Cassandra, PySpark
    • Data Analytics models
  • Reference materials
  • Slides course.
  • Material provided by the teacher.
  • Examples
  • Other materials

Exam Dates A.Y. 2018/2019

  • 27/06/2019 - 15:00
  • 11/07/2019 - 15:00
  • 01/08/2019 - 15:00
  • 05/09/2019 - 15:00
  • 26/09/2019 - 15:00
  • 14/11/2019 - 15:00
  • 12/12/2019 - 15:00
  • 16/01/2020 - 15:00
  • 06/02/2020 - 15:00
  • 27/02/2020 - 15:00

Exam rules:

  • Writing Examination on the topics of the course
    • Open or multiple-choice questions + Exercise
    • 2 h
  • Project lab (max 2 member per team)

Project files:

  • Projects description link
  • Projects completed link
  • Rules are discussed in the first lesson slide.

Exam Results

  • -