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Home / In the News / Media Article

2019-10-24

As China builds up Africa, some in Uganda warn of trouble

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Associated Press
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Related AidData Publications

Working Paper
64

Connective Financing: Chinese Infrastructure Projects and the Diffusion of Economic Activity in Developing Countries

2018-09-11

Related Datasets

Geocoded China Data

AidData's Geocoded Global Chinese Official Finance Dataset, Version 1.1.1

This dataset geolocates Chinese Government-financed projects that were implemented between 2000-2014. It captures 3,485 projects worth $273.6 billion in total official financing. The dataset includes both Chinese aid and non-concessional official financing.

Related Blog Posts

September 11, 2018

Chinese infrastructure investments reduce inequalities in developing countries

A new AidData working paper analyzes Chinese infrastructure's impacts using the most comprehensive dataset of Chinese development project locations ever assembled.

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