Sirinhaém

Municipality in Pernambuco State in Brazil

Exports (2019): $18.7M, Rnk 758/2197

Top Destination (2019): $8.91M, Angola

Top Export (2019): $18.7M, Raw Sugar

Imports (2019): $233k, Rnk 1337/2197

Top Origin (2019): $233k, United States

Top Import (2019): $233k, Mixed Mineral or Chemical Fertilizers

Exports: In 2019, Brazil's Sirinhaém exported $18.7M, making it the 758th largest exporter out of the 2197 exporters in Brazil. In 2019 the top exports of Sirinhaém were Raw Sugar ($18.7M) and Packing Bags ($18.1k).

Imports: In 2019, Brazil's Sirinhaém imported $233k, making it the 1337th largest importer out of the 2197 importers in Brazil. In 2019 top imports of Sirinhaém were Mixed Mineral or Chemical Fertilizers ($233k).

Value
Depth

Top Destination (2019): Angola, $8.91M

Top Product (2019): Raw Sugar, $18.7M

In 2019 the top export destinations of Sirinhaém were Angola ($8.91M), Turkey ($4.55M), Cameroon ($3.03M), Israel ($898k), and Lebanon ($594k).

In 2019 the top exports of Sirinhaém were Raw Sugar ($18.7M) and Packing Bags ($18.1k).

Export Dynamics

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Value
Depth

Top Origin (2019): United States, $233k

Top Import (2019): Mixed Mineral or Chemical Fertilizers, $233k

In 2019 the top import origins of Sirinhaém were United States ($233k).

In 2019 the top imports of Sirinhaém were Mixed Mineral or Chemical Fertilizers ($233k).

Import Dynamics

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Comparison in Time

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Flow
Value

This section shows differences between total trade from Sirinhaém throughout time.

Comparison Map

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Value

The municipalities of Brazil with the highest exports in 2019 were Rio De Janeiro ($11.3B), Duque De Caxias ($10.4B), Parauapebas ($7.02B), Canaã Dos Carajás ($4.93B), and São Paulo ($4.14B)

The municipalities of Brazil with the highest imports in 2019 were Manaus ($10.1B), São Paulo ($10.1B), Rio De Janeiro ($9.48B), Itajaí ($7.3B), and Macaé ($5.31B)

This section shows forecasts for total exports and imports from Sirinhaém. The forecast is based in a Long Short-Term Memory Model constructed using monthly trade data.

Explore Forecasts