====== Data Analytics ======
===== News =====
* **exam 29/07/2022 results**: results are available {{ https://drive.google.com/file/d/1TOJBmMROh7OMn6Wx9ZVGcyHY9X3NP8iY/view?usp=sharing | here }}.
* **Exam rules update**: students must confirm their presence to the next exam sessions at **least 5 days before the exam date**. Confirmation must be send to by mail to the teacher, esse3 registration is not sufficient.
* **exam 01/07/2022 results**: results are available {{ https://drive.google.com/file/d/1iLbyR7ONaGcWcl4C_Z16h5G7Iwh1Q7Gd/view?usp=sharing | here }}.
* **Exam session update**: the exam planned for the 16th of June 2022 has been changed to the 1st of July 2022, 14:30 aula AB2.
* **Exam rules update**: students must confirm their presence to the next exam sessions at **least 5 days before the exam date**. Confirmation must be send to by mail to the teacher, esse3 registration is not sufficient.
* **exam 25/02/2022 results**: results are available {{ https://drive.google.com/file/d/1zAXkoWmX8HJ8sXxXeyjbRrW8_nlRxC15/view?usp=sharing | here }}.
* **exam 14/02/2022 results**: results are available {{ https://drive.google.com/file/d/1CdMd91drpG7ECO6M52j52Cy6pnjnhJLy/view?usp=sharing | here }}.
* **exam update**: the exam planned for the 11th of february has been rescheduled on the **14th of february, 2:00pm at Polo Ludovici AB1**.
* **lecture of 10th of january 2022 will be online**: last lecture will be online via webex at 14:15.
* **Rilevazione delle opinioni e della soddisfazione degli studenti, aa 2021/22**: students are invaited to submit the survey.
* **No lesson today 17th of December.**
* **Project update**: {{ https://docs.google.com/spreadsheets/d/1N4szxna3WLaPHmvqTeium8vU_jhd4WKo9g6bXxkrTu8/edit?usp=sharing | project link}} has been published. Project discussion rules: for the project 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:
- Project description / objectives
- Methodology and technology being used
- Technical implementation
- Achieved results
- Possible future improvements
* **Course update**: **lecture of 29/11/2021** will be done online only via webex.
* **No lecture 12/11/2020**: lecture suspended.
* **Course start**: the first lesson is planned for 4th of October 2020, at Polo Ludovici (LB1).
----
===== General Info =====
**Teacher**:
* [[https://didattica.unicam.it/Guide/PaginaDocente.do?docente_id=3138|Prof. Massimo Callisto De Donato]]
**ESSE3 Link**
* [[https://didattica.unicam.it/Guide/PaginaADErogata.do?ad_er_id=2021*N0*N0*S1*17829*10593&ANNO_ACCADEMICO=2021&mostra_percorsi=S|Data Analytics - AY 2021/22]]
**Scheduling of Lectures**:
* Scheduling is available at the following [[:didattica:ay2122:orario_en|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**:
* [[didattica:mscs|MSc in Computer Science (LM-18)]]
**Students Office hours**:
* Send an e-mail to the teacher to fix an appointment.
----
===== Course Objectives =====
* 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.
----
===== Syllabus =====
*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.
----
===== Study material =====
**Course Slides**
* Slides {{ https://drive.google.com/drive/folders/1YZ4V3lgDwvxLFgnn80N9oktd_eHqXEB9?usp=sharing | link}}
* Webex {{ https://docs.google.com/document/d/1rNYpEIXkYowP0Y1mf2_HBcYgDfy4jRu4T2gyeYwVDv4/edit?usp=sharing | link}}
* Projects - {{ https://docs.google.com/spreadsheets/d/1N4szxna3WLaPHmvqTeium8vU_jhd4WKo9g6bXxkrTu8/edit?usp=sharing | link }}
* Course YY 2020-21 (http://didattica.cs.unicam.it/old/doku.php?id=didattica:magistrale:eda:ay_2021:main)
* **Reference materials**
* Slides course.
* Material provided by the teacher.
* Examples
* ...
* Other materials
* ...
----
===== Exams =====
**Exam Dates A.Y. 2021/2022 (tentative)**
* 14/02/2022
* 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:
- Project description / objectives
- Methodology and technology being used
- Technical implementation
- Achieved results
- Possible future improvements
** Exam Results **
* See news section