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Summer School on Agriculture, Forest and Environmental Geodata Statistical Analysis, Modelling and Machine Learning [SAFEST]

The international Summer School on Agriculture, Forest and Environmental geodata Statistical analysis, modelling and machine learning [SAFEST] will provide theoretical and practical teaching on the statistical methods and tools for geodata handling and analysis, with special emphasis to soil traits, crop yield or plant biomass in the agricultural, forest and other land uses under variable management and environmental conditions. Methods provided will be tailored to a wide range of scales, from plot to landscape to regional scales.

Topics in the school include:

  1. advanced literature search and meta-analysis;
  2. use of reference databases on land cover, soil traits, and meteorological and climate data;
  3. data visualization, spatial references and projections, proximal and remote sensed data, terrain analysis;
  4. methods for covariate identification, acquisition, and selection, harmonization, and inclusion in modelling procedures;
  5. linear mixed models for statistical analysis of soil and biological data, methods to include spatialization and soil depth as variables, methods to study unbalanced data or including variables with missing data, regression models;
  6. overview on models and some case studies: classification and regression trees models (random forest, boosted regression trees, others), artificial neural networks, and convolutional neural networks, etc..

The school will include theoretical lessons in the morning and practical lessons in the afternoon.

Participants to SAFEST will be able to deal with geodata and their handling and analysis in a wealth of areas, including agriculture, forest, other land uses, the study of soil biodiversity, soil science, farming systems, and other environmental areas.

The Summer School received the support of SHARInG-MeD project (a PRIMA 2022 action topic 1.2.1 under the grant agreement 2211).


Aim of the school is stimulating the integration among different data handling strategies and modelling procedures of geodata, with special emphasis to plant biomass and soil traits, and to support the modelling activities in various fields of expertise, including agriculture and forest management, soil management, soil biodiversity, and their potential relationship with economic, environmental indicator or social data.

Who can apply

The course is primarily aimed to Master of science students, PhD students, young researchers, master students, professionals in the topics of the school.



Program Intensity



Admission Requirements

Bachelor's degree 

Required Documents

  • Identity Document (*PASSPORT in case you are a foreign student*)
  • Enrolment Form
  • Curriculum Vitae

All the documents must be in pdf format, in order to upload them on the portal when required.

Application has to be submitted via Alice portal following the instructions of the "How to apply" page.




250 euro

Pay fees by Debit/Credit Card or PayPal online using the following form filling it with all the required data:

PagoPA - Payment Form 


  • International students without Italian Tax Code: please tick the box 'Anonymous' in order to disable the field 'Italian personal ID/VAT number'.
  • Please type your NAME and SURNAME next to the pre-filled text of the field 'Reason'
  • Please pay only after receiving the admission letter


Please write to the coordinator for further details


3 - 7 June 2024

Application Deadline

15 March 2024


Prof. Sergio Saia Questo indirizzo email è protetto dagli spambots. È necessario abilitare JavaScript per vederlo. 


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Ultima modifica: Lun 16 Ott 2023 - 10:44

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