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FemEcoMig

Uneven lives: female economy, migration patterns and citizenship in Early Modern Italy

Total Cost €

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EC-Contrib. €

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Partnership

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Project "FemEcoMig" data sheet

The following table provides information about the project.

Coordinator
THE CHANCELLOR MASTERS AND SCHOLARSOF THE UNIVERSITY OF CAMBRIDGE 

Organization address
address: TRINITY LANE THE OLD SCHOOLS
city: CAMBRIDGE
postcode: CB2 1TN
website: www.cam.ac.uk

contact info
title: n.a.
name: n.a.
surname: n.a.
function: n.a.
email: n.a.
telephone: n.a.
fax: n.a.

 Coordinator Country United Kingdom [UK]
 Total cost 195˙454 €
 EC max contribution 195˙454 € (100%)
 Programme 1. H2020-EU.1.3.2. (Nurturing excellence by means of cross-border and cross-sector mobility)
 Code Call H2020-MSCA-IF-2015
 Funding Scheme MSCA-IF-EF-ST
 Starting year 2017
 Duration (year-month-day) from 2017-05-01   to  2019-07-14

 Partnership

Take a look of project's partnership.

# participants  country  role  EC contrib. [€] 
1    THE CHANCELLOR MASTERS AND SCHOLARSOF THE UNIVERSITY OF CAMBRIDGE UK (CAMBRIDGE) coordinator 195˙454.00

Map

 Project objective

FemEcoMig aims to study the connections between migration patterns and female property, work and social networks in Early Modern Italy: it focuses on domestic and international migrations and on female migrants (and their families) who moved to the duchy of Savoy-Piedmont during the period 1650-1800. The project aims to change the common narrative on the history of migration by bringing into the topic a range of historiographical problems that are often considered characteristic of the history of women. It will inquire into the role women's paid and unpaid work and into the use of female property in settlement paths; it will also tackle the extent of female social networks and their use to access to urban resources. The second objective is to analyse the connections between female migration and the achievement of naturalisation. This section will investigates foreign women applying for naturalisation and the reasons for their application. The project will tackle the contents of the grant, and the conditions in which citizenship was enacted and will inquire into the links between migration and settlement paths, economic activities and family strategies. Data will be collected at the National Archives in Turin: two databases will be set up (one for female migrants, the second for people asking for naturalisation), and a sample of migrants drawn from the databases will be the object of biographical reconstruction in notarial deeds. The research will be conducted at the History Faculty of Cambridge University and at the Cambridge Group for the History of Population & Social Structure. The candidate will receive high level and interdisciplinary training to improve skills in data analysis. She will benefit from the host's organisation experience, discuss the qualitative and quantitive analysis of data, the methodological approach and the historiographical problems with the supervisor and other specialists, and improved competence in migration history and women history.

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The information about "FEMECOMIG" are provided by the European Opendata Portal: CORDIS opendata.

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