Data Science Lab: process and methods (2022/23)

Data Science Lab: process and methods (2022/23)

General Information

SSD: ING-INF/05

CFU: 8

Professor: Elena Baralis

Teaching Assistants: Flavio Giobergia, Eliana Pastor, Alkis Koudounas, Lorenzo Vaiani


Exams

Exam rules

The exam rules for the A.Y. 2022/23 are available here.

Written Exams

In this section you will find the results of the written tests — good luck!

  • Winter Session # 1
  • Winter Session # 2
  • Summer Session
  • Fall Session

Projects

Exam SessionAssignmentResultsExample Report *
Wintertextfinal scores
Summertext
Falltext

* Occasionally, we may ask students to publish here their reports in case of very good productions. They will serve as a reference for their colleagues.

Teaching Material

Data science

This section will contain the slides of the data science course.

  • Course introduction (slides)
  • Introduction to data science (slides)
  • Data preprocessing (slides)
  • Association rules (slides)
  • Data exploration, feature engineering and data visualization (slides)
  • Classification fundamentals (slides)
  • Clustering fundamentals (slides)
  • Regression analysis (slides)
  • Time series analysis (slides)

Python

This section will contain the slides of the data science course.

  • Introduction to Python (slides)
  • Python programming (slides)
  • Structuring Python projects (slides)
  • NumPy (slides)
  • Pandas (slides)
  • Matplotlib (slides)
  • scikit-learn – classification (slides)
  • scikit-learn – regression (slides)
  • scikit-learn – clustering (slides)
  • scikit-learn – preprocessing (slides)

Exercises

Other material


Laboratory Material

This section will contain all the material for carrying out laboratories. No laboratory will be evaluated and assigned a mark, so no laboratory will give additional points to the final exam.

Material

Introduction to laboratories – pdf

Data Science Lab Environment: link

* During this laboratory, we will set up Data Science Lab Environment, the online evaluation platform we will use during the leaderboard part of the project.

Team organization

Students will be divided into two teams, Team 1 and Team 2. Team 1 will attend the laboratories on Monday from 13:00 to 16:00. Team 2, instead, will attend on Thursday from 11:30 to 14:30. Both lab sessions will be held in LAIB 3.

You can find the list of student ID – team mappings here. If your student ID is not in the least, please use the following rule:

  • Team 1 if your last name starts with a letter from A to K
  • Team 2 if your last name starts with a letter from J to Z