RiskWatch Italia

An observation on workplace accidents in Italy

The project

RiskWatch Italia is an Open Data project dedicated to analyzing workplace injuries and fatalities in Italy.

We have focused our analysis on several key aspects:

  • Year Span: from 2018 to 2024, highlighting the impact of COVID-19;
  • Gender: focusing on the conventional genders Male and Female due to the nature of our data;
  • Age Range: dividing the population into three groups according to the Italian Institute of Statistics (ISTAT): 0-14, 15-64, and 65+;
  • Nationality: distinguishing between Italian and foreign nationals;
  • Job Sectors: grouping first-level ATECO economic activity classifications into three sectors: primary, secondary, and tertiary.

Our project leverages open data sources to explore the trends, patterns, and insights surrounding workplace safety across various sectors in Italy.

Through interactive visualizations and detailed reports, we present a comprehensive view of the evolving landscape of workplace accidents and fatalities.

Overview of 2023

Injuries in Italy

Fatalities in Italy

Region with the most injuries: Lombardy

Region with the most fatalities: Lombardy

Datasets

We collected our data from INAIL (Istituto Nazionale per l'Assicurazione contro gli Infortuni sul Lavoro), ISTAT (Istituto Nazionale di Statistica), and Normattiva.

INAIL

We downloaded and processed 46 CSV datasets from INAIL, one for each region in two time periods (2018-2022 and 2023-2024). These datasets contain information about regional data on workplace accidents and fatalities, including the birthplaces of the accident victims and the economic activities in which the work was carried out.

After downloading the individual dataframes, we performed data cleaning and decoding operations. The datasets were then merged, first for the two periods separately and then together.

ISTAT

From ISTAT, we downloaded one CSV dataset containing data on the employment status of the Italian population. The ISTAT dataframe was cleaned, and the relevant data (Age, Region, and Year) were harmonized with the INAIL data to facilitate efficient merging. From this merged dataframe, we created the final datasets and saved them as CSV files.

Normattiva - Akoma Ntoso

Normattiva is a textual database storing all numbered state regulatory acts published in the Gazzetta Ufficiale from 1861 to the present day.
The database presents acts in three formats:

1. As originally published.

2. As currently in force as of a specified date.

3. As a "multivigente" text, reconstructing the lifecycle of a regulatory act, including explicit modifications over time.

We extracted the Akoma Ntoso XML files from Normattiva related to work safety decrees from recent years. An advanced search was conducted on the portal using keywords, resulting in the download of seven regulations in XML format. Metadata was added by creating a descriptive RDF turtle file. These files will help us understand the legislative changes concerning our research topic. XPath queries will be used to answer specific research questions in our project.

Source Datasets


The data from INAIL are collected separately for each region and distinguished between two time spans: 2018-2022 (stored biannually) and 2023-2024 (stored monthly). Additionally, some datasets are used to decode the data. The datasets are as follows:

Datasets 2018-2022
  • DatiConCadenzaSemestraleInfortuniAbruzzo.csv
  • DatiConCadenzaSemestraleInfortuniBasilicata.csv
  • DatiConCadenzaSemestraleInfortuniCalabria.csv
  • DatiConCadenzaSemestraleInfortuniCampania.csv
  • DatiConCadenzaSemestraleInfortuniEmiliaRomagna.csv
  • DatiConCadenzaSemestraleInfortuniFriuliVeneziaGiulia.csv
  • DatiConCadenzaSemestraleInfortuniLazio.csv
  • DatiConCadenzaSemestraleInfortuniLiguria.csv
  • DatiConCadenzaSemestraleInfortuniLombardia.csv
  • DatiConCadenzaSemestraleInfortuniMarche.csv
  • DatiConCadenzaSemestraleInfortuniMolise.csv
  • DatiConCadenzaSemestraleInfortuniPiemonte.csv
  • DatiConCadenzaSemestraleInfortuniPuglia.csv
  • DatiConCadenzaSemestraleInfortuniSicilia.csv
  • DatiConCadenzaSemestraleInfortuniToscana.csv
  • DatiConCadenzaSemestraleInfortuniTrentino.csv
  • DatiConCadenzaSemestraleInfortuniUmbria.csv
  • DatiConCadenzaSemestraleInfortuniValleDAosta.csv
  • DatiConCadenzaSemestraleInfortuniVeneto.csv

Note: The file available on the INAIL website for the Sarnina region is empty.

Datasets 2023-2024
  • DatiConCadenzaMensileInfortuniAbruzzo.csv
  • DatiConCadenzaMensileInfortuniBasilicata.csv
  • DatiConCadenzaMensileInfortuniCalabria.csv
  • DatiConCadenzaMensileInfortuniCampania.csv
  • DatiConCadenzaMensileInfortuniEmiliaRomagna.csv
  • DatiConCadenzaMensileInfortuniFriuliVeneziaGiulia.csv
  • DatiConCadenzaMensileInfortuniLazio.csv
  • DatiConCadenzaMensileInfortuniLiguria.csv
  • DatiConCadenzaMensileInfortuniLombardia.csv
  • DatiConCadenzaMensileInfortuniMarche.csv
  • DatiConCadenzaMensileInfortuniMolise.csv
  • DatiConCadenzaMensileInfortuniPiemonte.csv
  • DatiConCadenzaMensileInfortuniPuglia.csv
  • DatiConCadenzaMensileInfortuniSardegna.csv
  • DatiConCadenzaMensileInfortuniSicilia.csv
  • DatiConCadenzaMensileInfortuniToscana.csv
  • DatiConCadenzaMensileInfortuniTrentino.csv
  • DatiConCadenzaMensileInfortuniUmbria.csv
  • DatiConCadenzaMensileInfortuniValleDAosta.csv
  • DatiConCadenzaMensileInfortuniVeneto.csv
Decoding Datasets
  • DecisioneIstruttoriaEsitoMortale.csv
  • DefinizioneAmministrativa.csv
  • GrandeGruppoTariffario.csv
  • LuogoNascita.csv
  • Provincia.csv
  • SettoreAttivitaEconomica.csv
  • TipologiaIndennizzo.csv

Using the API available here, we selected the years of interest and downloaded the data. The relevant directory on the website is: CENSUS OF POPULATION AND HOUSING > Population > Education, work, commuting for studying or working > Education, work, commuting for studying or working: Current activity status, age - municipalities. We stored the file as:

  • occupazione-italia-2016-2024.csv

Mashup Datasets


Merging INAIL and ISTAT dataset we generated 13 new cvs files.

Format Metadata URI License Issued
csv RDF mortalita.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_feriti_eta.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_feriti_genere.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_feriti_lavoro.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_feriti_nazionalita.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_feriti_settore.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_feriti_totali.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_morti_eta.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_morti_genere.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_morti_lavoro.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_morti_nazionalita.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_morti_settore.csv CC-BY 4.0 05/07/2024

Format Metadata URI License Issued
csv RDF summarised_morti_totali.csv CC-BY 4.0 05/07/2024

RDF Metadata

We generated turtle rdf files to semantically describe our datasets through controlled vocabularies.

DCAT-IT

RDF for all the generated dataset from Inail and Istat

Akoma_Ntoso

RDF for all the legal norms from Normattiva

Analyses

The source datasets have been analysed for four aspects.

Quality analysis

Following the Italian National Guidelines ("Linee guida nazionali per la valorizzazione del patrimonio informativo pubblico"), developed within the Data & Analytics Framework project by AgID and the Digital Transformation Team, we have conducted a quality analysis of our source datasets to ensure they are in good condition and suitable for the intended use.
This analysis focuses on four primary factors for assessing data quality:

  • Accuracy (syntactic and semantic): the data and its attributes correctly represent the real value of the concept or event they refer to
  • Coherence: the data and its attributes do not present any contradictions with respect to other data in the context of use by the administration owner
  • Completeness: the data are exhaustive for what concerns every expected value and with respect to the related entities (sources) that contribute to the definition of the procedure
  • Timeliness (or promptness of updating): the data and its attributes refer to the "correct time" (up to date) with respect to the procedure they refer to

The following table showcases the quality of each of the source datasets and highlights possible flaws.

>
Dataset Accuracy Coherence Completeness Timeliness
INAIL
ISTAT
Normattiva

Legal analysis

Conducting a legal analysis of the source datasets is crucial for ensuring long-term sustainability of the production process and publication of datasets, as well as for guaranteeing a balanced service that complies with public function and individual rights.

This analysis was conducted using a reference checklist comprising a series of binary questions addressing privacy issues, IPR policies, licensing, limitations on public access, economical conditions, and temporal aspects.

To check: INAIL ISTAT Normattiva
Is the dataset free of any personal data as defined in the Regulation (EU) 2016/679?
Is the dataset free of any indirect personal data that could be used for identifying the natural person?
Is the dataset free of any particular personal data (art. 9 GDPR)?
Is the dataset free of any information that combined with common data available in the web, could identify the person?
Is the dataset free of any information related to human rights (e.g., refugees, witness protection, etc.)
Did you use a tool for calculating the range of the risk of deanonymization? Not needed Not needed
Are you using geolocalization capabilities?
Did you check that the open data platform respect all the privacy regulations (registration of the end-user, profiling, cookies, analytics, etc.)?
Do you know who, in your open data platform, is the Controller and Processor of the privacy data of the system?
Have you checked the privacy regulation of the country where the dataset are physically stored?
Do you have non-personal data?

To check: INAIL ISTAT Normattiva
Have you created and generated the dataset?
Are you the owner of the dataset?
Are you sure not to use third party data without the proper authorization and license?
Have you checked if there are any limitations in your national legal system for releasing some kind of datasets with open license?

To check: INAIL ISTAT Normattiva
Did you release the dataset with an open data license?
Did you include the clause: 'In any case the dataset can't be used for re-identifying the person'?
Did you release the API (in case you have it) with an open source license?
Have you checked that the open data/API platform license regime is in compliance with your IPR policy?

To check: INAIL ISTAT Normattiva
Did you check that the dataset concerns your institutional competences, scope and finality?
Did you check the limitations for the publication stated by your national legislation or by the EU directives?
Did you check if there are some limitations connected to the international relations, public security or national defence?
Did you check if there are some limitations concerning the public interest?
Did you check the international law limitations?
Did you check the INSPIRE law limitations for the spatial data?

To check: INAIL ISTAT Normattiva
Did you check that the dataset could be released for free?
Did you check if there are some agreements with some other partners in order to release the dataset with a reasonable price? Not needed Not needed Not needed
Did you check if the open data platform terms of service include a clause of 'non liability agreement' regarding the dataset and API provided?
In case you decide to release the dataset to a reasonable price did you check if the limitation imposed by the new directive 2019/1024/EU are respected? Not needed Not needed Not needed
In case you decide to release the dataset to a reasonable price did you check the e-Commerce directive and regulation? Not needed Not needed Not needed

To check: INAIL ISTAT Normattiva
Do you have a temporary policy for updating the dataset?
Do you have some mechanism for informing the end-user that the dataset is updated at a given time to avoid mis-usage and so potential risk of damage?
Did you check if the dataset for some reason cannot be indexed by the research engines (e.g., Google, Yahoo, etc.)?
In case of personal data, do you have a reasonable technical mechanism for collecting request of deletion (e.g., right to be forgotten)? Not needed Not needed Not needed

Publication license

Finally, a crucial aspect of the legal analysis involves selecting the publication license for the newly created mashup datasets. This decision must take into account the original licenses of the source datasets, all of which were published under CC BY 3.0.
To assist in exploring our options, we utilized the Licensing Assistant tool provided by the European Commission. Consequently, we have chosen to release all nine mashup datasets under a CC BY 4.0 license.

Below is a table detailing the original licenses of the source datasets and the final publication license selected for the mashup datasets:

ID Dataset Original licenses Final licenses
feriti_eta injuries based on the age CC BY 3.0 CC BY 4.0
feriti_genere injuries based on the gender CC BY 3.0 CC BY 4.0
feriti_lavoro injuries based on the Ateco code CC BY 3.0 CC BY 4.0
feriti_nazionaita injuries based on nationality (Italian or foreigners) CC BY 3.0 CC BY 4.0
feriti_settore injuries based on economic sector CC BY 3.0 CC BY 4.0
feriti_totali total injuries per year CC BY 3.0 CC BY 4.0

Ethical analysis



When evaluating the ethical aspects of our project's data, we drew inspiration from the Data Ethics Principles and Guidelines and the detailed Ethical Canvas from the ODI project, to ensure we thoroughly considered every ethical aspect in our data management.

Since both our source and mashup datasets exclusively feature information provided by the National Institute for Insurance against Work Accidents (INAIL), our initial focus was on examining the fairness of data collection and management by INAIL. Subsequently, we developed guidelines to address ethical concerns in processing the source datasets for our project.


Data Ethics Principles

  • Human being at the center INAIL, in releasing its datasets, does not indicate anywhere on its website the policies followed to respect ethical and legal principles.
    According to information on the ISTAT website, ISTAT's policies align with ethical and legislative principles, focusing on effectively publishing statistical information and analysis results to raise awareness of Italy's conditions and enhance decision-making processes among private and public institutions.
  • Equality INAIL, in releasing its open data, does not make an effort to propose the use of statistical methodologies to highlight discrimination and injustices. The data provides all the necessary information to conduct such studies, but these studies are not carried out by the institute itself.
    On the other hand, ISTAT utilizes statistical methodologies to publish data on critical equality issues across various domains.
  • Transparency While ISTAT provides comprehensive documentation (SIQual) describing the methodologies for data collection, processing, and storage, INAIL does not provide any information regarding this in the production of its open data.
  • Accountability ISTAT's quality policy aligns with the European framework established by Eurostat, adhering to the principles outlined in the European Statistics Code of Practice. This framework ensures and enhances accountability and governance within both the European Statistical System and the National Statistical Systems it encompasses. INAIL does not provide information in this regard, leaving doubts about its methods of accountability.
  • Individual data protection ISTAT anonymizes its datasets to prioritize respondent privacy, safeguard data confidentiality, and operate transparently and independently. Collected information is protected by statistical confidentiality and adheres to personal data protection legislation. The INAIL datasets present an "event-oriented" structure, collecting individual events. This approach, despite the anonymization of the participating subjects (injured person and employer), is not compliant with the GDPR, since, especially in cases of serious injuries or deaths, identification can be obtained indirectly by checking the available information online.

Ethical concerns and their management


Despite ISTAT's compliance with ethical principles in data collection and management, the team placed significant emphasis on the ethical handling of sensitive information contained within the datasets.

Data pertaining to age, residence, religious observance, and reproductive health are particularly sensitive, and their ethical handling was carefully considered through the following steps:

  • Data integrity and privacy are rigorously maintained by aggregating source dataset values and presenting them as percentage values, thereby preventing any correlation with real individuals.
  • To ensure equality and protect vulnerable groups, clear boundaries were set by intentionally excluding certain data provided by ISTAT, such as distinctions based on citizenship, to mitigate potential discriminatory practices.

Anonymization


The data as collected in our final mashed up were not compliant with the General Data Protection Regulation (GDPR). In fact eight out of thirteen contained personal data.
Personal data are defined as: Personal data is any information that relates to an identified or identifiable living individual. Different pieces of information, which collected together can lead to the identification of a particular person, also constitute personal data.

Personal data is any information that relates to an identified or identifiable living individual. Different pieces of information, which collected together can lead to the identification of a particular person, also constitute personal data.

Our data analysis created the final output dataset counting INAIL datasets’ instances of events of injuries and fatalities for each year in each region. In many cases in a specific region in a given year only one event occurred. Therefore, we were producing personal data that indirectly.

While the GDPR does not apply to deceased persons (as specified in Recital 27), Italy has availed itself of the option of proposing a different approach with the harmonization decree of the Privacy Code (Legislative Decree 101/2018), which, through Article 2-terdecies, extended the provisions of the GDPR to the processing of personal data of deceased persons. Therefore we have processed a double approach to ensure that no living individual was going to be identified.
We grouped the result in different layers and at the same time we hidden the unique values signing all values between 1 and 10 as 10.

Technical analysis

Source datasets

All source dataset have been evaluated based on the metadata model provided by AGID that classifies metadata quality on a range of 4 levels according to two factors: data-metadata bond and detail level

Dataset Provenience Format Metadata URI License
Inail datasets Inail Open Data .csv, .xml, .rdf Level 2: The linkage is weak because the data is accompanied by external metadata included on the dataset download page in a separate rdf files Infortuni CC BY 4.0
Istat dataset IstatData .csv, .sdmx, .json Level 4: An SDMX structured file is available for download, featuring a robust connection between data and metadata with detailed descriptions at the datum level. These files are machine-readable.
Level 2: Additional metadata offering transparent information about sources and methodologies are accessible on a separate webpage, available via a sidebar menu
Occupazione CC BY 3.0
Normattiva IPZS .xml, .pdf, .epub, .rtf Level 4: Inside the specific XML file there is all the “meta” section with different level of detailed description. They are machine readable. Search filter: "sicurezza lavoro" CC BY 4.0

RDF Assertion and Metadata for the mashup datasets

All produced mashup dataset have been thoroughly described with metadata, following the specification of DCAT-AP_IT standard as recommended by AGID's public information heritage valorization guidelines.

Since all our datasets contain data of specific national interest and are derived from Istat datasets, which is an italian public research institution we decided to adopt DCAT-AP_IT (2016), the national standard.

Moreover:

  • To describe in full transparency the sources and the activities underlying the creation of our mashup datasets we adopted PROV-O - the provenance ontology as strongly recommended on a european level and also allowed by DCAT-AP_IT metadata model
  • To authoritatively describe the keywords and themes addressed by the datasets, we relied on the vocabularies of EuroVoc and the Publications Office of the European Union.
  • We have created a Turtle RDF file to describe the collection of datasets resulting from our mashup work, and an additional Turtle RDF file to describe the documents selected from Normattiva.

FAIR

Finally, we assessed the datasets against the FAIR principles proposed by the GO FAIR Initiative. These principles, advocated by a consortium of scientists and organizations, aim to enhance the Findability, Accessibility, Interoperability, and Reusability of digital assets.

Inail Istat Normattiva Mashup data
(Meta)data are assigned a globally unique and persistent identifier
Data are described with rich metadata
Metadata clearly and explicitly include the identifier of the data they describe
(Meta)data are registered or indexed in a searchable resource

Inail Istat Normattiva Mashup data
(Meta)data are retrievable by their identifier using a standardised communications protocol n/a n/a Possible development
The communication protocol is open, free, and universally implementable
The communication protocol allows for an authentication and authorisation procedure, where necessary
Metadata are accessible, even when the data are no longer available n/a n/a

Inail Istat Normattiva Mashup data
(Meta)data use a formal, accessible, shared, and broadly applicable language for knowledge representation.
(Meta)data use vocabularies that follow FAIR principles
(Meta)data include qualified references to other (meta)data

Inail Istat Normattiva Mashup data
(Meta)data are richly described with a plurality of accurate and relevant attributes
(Meta)data are released with a clear and accessible data usage license n/a n/a
(Meta)data are associated with detailed provenance n/a n/a
(Meta)data meet domain-relevant community standards

SUSTAINABILITY OF THE DATASETS

The data we collect is based on three main sources: INAIL OpenData, ISTAT database, and Normattiva.

The initial datasets are organized to ensure their long-term sustainability. Regular updates keep these data collections alive and dynamic.

On the other hand, the datasets produced by our team are part of the final output of the Open Access and Digital Ethics project at the University of Bologna (https://www.unibo.it/en). For this reason, the website development team members do not commit to ensuring the update of the data we collect.

Their storage on GitHub (https://github.com/ChiaraParravicini/RiskWatchItalia) ensures their persistence for a medium to long period.
However, since no permalink is produced for each of them and their existence is linked to the developers' account, no long-term durability inference can be made.

Visualization

In this section, we aim to provide a comprehensive overview of workplace deaths and accidents across Italy.
The first part focuses on presenting a general overview using choropleth maps with a time slider to select the year for which you want to view the data. This will also include the percentage comparison between workplace deaths and accidents.

In the second part, we delve deeper into the data, analyzing it based on variables such as gender, nationality, industry sector and age of the individuals involved in workplace incidents. For the gender variable, a stacked bar chart is used. The nationality data is presented with a clustered bar chart. Age data is visualized through a stacked area graph, and the industry sector data with a line graph.
Some visualizations allow for regional comparisons by enabling the selection of specific years, while others provide a diachronic perspective, allowing the selection of individual regions.

Perc. Fatalities/Accidents

Total Number of Accidents

Total Number of Fatalities

Normattiva - Akoma Ntoso

Observing the results of our analyses and visualizations, we have noticed a peak in fatalities in certain specific sectors of work during the years 2019-2020. These data appear to correlate with the COVID-19 pandemic.


To delve deeper into this scenario, we have decided to analyze DECRETO-LEGGE 17 Marzo 2020, n. 18, which addresses Measures to strengthen the National Health Service and provide economic support to families, workers, and businesses affected by the COVID-19 epidemiological emergency.


To achieve this, the following research questions have been defined and subsequently transformed into XPath queries for the automatic interrogation of the document itself:

  • 1 - What is the title of the document?

    XPath:

    eli_title_contents = root.xpath('//nrdfa:span[@property="eli:title"]/@content', namespaces=namespaces)


    Result:

    Document title: Misure di potenziamento del Servizio sanitario nazionale e di sostegno economico per famiglie, lavoratori e imprese connesse all'emergenza epidemiologica


  • XPath:

    document_uri = root.xpath('//akn:FRBRuri/@value', namespaces=namespaces)


    Result:

    Document URI:

    /akn/it/act/decreto-legge/stato/2020-03-17/18/ita@2024-03-27

    /akn/it/act/decreto-legge/stato/2020-03-17/18

    /akn/it/act/decreto-legge/stato/2020-03-17/18/ita@2024-03-27.xml


  • XPath:

    document_pub_num = root.xpath('//akn:publication/@number', namespaces=namespaces)


    Result:

    Publication number: 70


  • XPath:

    dates_of_modification = root.xpath('//akn:eventRef/@date', namespaces=namespaces)

    sources_of_modification = root.xpath('//akn:eventRef/@source', namespaces=namespaces)


    Result:
    Date Source
    2020-03-17ro1
    2020-03-18rp1
    2020-04-08rp2
    2020-04-08rp3
    2020-04-29rp4
    2020-04-30rp5
    2020-05-10rp6
    2020-05-16rp7
    2020-05-19rp8
    2020-06-06rp9
    2020-06-06rp10
    2020-06-16rp11
    2020-06-29rp12
    2020-07-09rp13
    2020-07-15rp14
    2020-07-16rp15
    2020-07-18rp16
    2020-07-30rp17
    2020-08-14rp18
    2020-09-14rp19
    2020-09-28rp20
    2020-10-07rp21
    2020-10-13rp22
    2020-10-20rp23
    2020-10-28rp24
    2020-11-09rp25
    2020-11-30rp26
    2020-12-03rp27
    2020-12-24rp28
    2020-12-30rp29
    2020-12-31rp30
    2021-01-14rp31
    2021-01-15rp32
    2021-01-30rp33
    2021-03-01rp34
    2021-03-01rp35
    2021-03-22rp36
    2021-04-01rp37
    2021-04-22rp38
    2021-04-29rp39
    2021-04-30rp40
    2021-05-21rp41
    2021-05-25rp42
    2021-05-31rp43
    2021-06-21rp44
    2021-06-23rp45
    2021-06-30rp46
    2021-07-07rp47
    2021-07-23rp48
    2021-07-24rp49
    2021-07-30rp50
    2021-08-06rp51
    2021-09-10rp52
    2021-09-18rp53
    2021-09-27rp54
    2021-10-01rp55
    2021-10-21rp56
    2021-11-06rp57
    2021-11-09rp58
    2021-12-20rp59
    2021-12-24rp60
    2021-12-30rp61
    2021-12-31rp62
    2021-12-31rp63
    2022-01-27rp64
    2022-02-18rp65
    2022-02-28rp66
    2022-03-01rp67
    2022-03-21rp68
    2022-03-24rp69
    2022-03-28rp70
    2022-04-28rp71
    2022-04-30rp72
    2022-05-20rp73
    2022-05-23rp74
    2022-06-16rp75
    2022-06-21rp76
    2022-06-29rp77
    2022-08-05rp78
    2022-08-09rp79
    2022-08-19rp80
    2022-09-21rp81
    2022-12-29rp82
    2022-12-29rp83
    2023-02-27rp84
    2023-09-29rp85
    2023-11-28rp86
    2023-12-30rp87
    2023-12-30rp88
    2024-02-28rp89
    2024-03-12rp90

The python file containing the xPath query and all the procedures is available here.

Licenses and Credits

Mashup Dataset

Creative Commons Attribution 4.0 International (CC-BY 4.0)


Softwares used

amCharts: linkware license
Leaflet: Copyright (c) 2010-2024,(BSD 2-Clause "Simplified" License)

Team

Daniele Spedicati

Project ideation — Data retrieval — Mashup datasets — Quality and Technical analysis — Website development

Erica Andreose

Project ideation — RDF assertion of the metadata — Ethical and Legal analysis — Akoma Ntoso — Website development

Chiara Parravicini

Project ideation — Visualizations— Website development