Luca Colomba

Dottorato in Ingegneria Informatica E Dei Sistemi , 36o ciclo (2020-2023)

Dottorato concluso nel 2024

Tesi:

Spatial data science: from aerial data to discrete spatio-temporal event analysis (Abstract)

Tutori:

Paolo Garza

Profilo

Argomento di ricerca

Data Analytics and Big Spatio-Temporal Data

Interessi di ricerca

Life sciences
Software engineering and Mobile computing

Biografia

Luca Colomba graduated in Computer Engineering at Politecnico di Torino, Italy in 2019 with the thesis "Automatic processing of satellite acquisitions for burnt area detection and damage estimation". From February to April 2020, he was involved in a post-graduate research activity at Dipartimento di Automatica e Informatica (DAUIN), Politecnico di Torino. He is currently a PhD student in "Data Analytics and Big Spatio-Temporal Data" at the SmartData Center in Politecnico di Torino.
He is interested in the application of data mining and machine learning algorithms to large volumes of data, with a focus on geospatial and temporal information, in order to extract valuable information, perform predictions and identify patterns using Python's data science ecosystem, including Apache Spark framework. Moreover, he published several research papers in the field of remote sensing, Earth Observation and deep learning, focusing on emergency managament and land cover classification.
His main research topics are: Big Data Analytics, Data Mining and Machine Learning.

Premi e riconoscimenti

  • PhD Quality Awards 2023 document (2023)
  • Volunteer at ECML/PKDD2023 conference (Torino, 18-22 September 2023) (2023)
  • 2nd year PhD Quality Award (2nd prize) (2024)
  • Travel Grant Award to PhD Students for SIGSPATIAL2022 conference, given to volunteers who helped throughout the conference. (2023)
  • 2nd place at Waste Classification Challenge held during International Summer School on Deep Learning 2021 (ISSonDL2021): the challenge consisted in developing and training a Deep Learning model to perform binary classification on images. Images represented different items that needed to be classified either as "Recyclable" or "Organic". To make the challenge more difficult, the organisers randomly added noise to all images in the form of random black rectangles. (2021)

Didattica

Insegnamenti

Corso di laurea magistrale

MostraNascondi A.A. passati

Ricerca

Gruppi di ricerca

Pubblicazioni

Pubblicazioni durante il dottorato Vedi tutte le pubblicazioni su Porto@Iris

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