Campos Do Jordão

Municipality in São Paulo State in Brazil

Exports (2019): $7.4k, Rnk 2098/2197

Top Destination (2019): $7.4k, France

Top Export (2019): $7.36k, Knit Socks and Hosiery

Imports (2019): $58.1k, Rnk 1578/2197

Top Origin (2019): $15.4k, China

Top Import (2019): $13.1k, Iron Stovetops

Overview: This page contains the latest international trade data for Campos do Jordão, including export and import data.

Exports: In 2019, Brazil's Campos Do Jordão exported $7.4k, making it the 2098th largest exporter out of the 2197 exporters in Brazil. In 2019 the top exports of Campos Do Jordão were Knit Socks and Hosiery ($7.36k) and Recovered Paper ($39).

Imports: In 2019, Brazil's Campos Do Jordão imported $58.1k, making it the 1578th largest importer out of the 2197 importers in Brazil. In 2019 top imports of Campos Do Jordão were Iron Stovetops ($13.1k), Knitting Machines ($12.9k), Wine ($8.39k), Non-Retail Carded Wool Yarn ($7.14k), and Knit T-shirts ($6.2k).

Yearly Exports

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Value
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Top Destination (2019): France, $7.4k

Top Product (2019): Knit Socks and Hosiery, $7.36k

In 2019 the top export destinations of Campos Do Jordão were France ($7.4k).

In 2019 the top exports of Campos Do Jordão were Knit Socks and Hosiery ($7.36k) and Recovered Paper ($39).

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Yearly Imports

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Value
Depth

Top Origin (2019): China, $15.4k

Top Import (2019): Iron Stovetops, $13.1k

In 2019 the top import origins of Campos Do Jordão were China ($15.4k), Chile ($13.1k), Morocco ($9.01k), Italy ($7.14k), and Argentina ($6.35k).

In 2019 the top imports of Campos Do Jordão were Iron Stovetops ($13.1k), Knitting Machines ($12.9k), Wine ($8.39k), Non-Retail Carded Wool Yarn ($7.14k), and Knit T-shirts ($6.2k).

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Comparison in Time

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Flow
Value

This section shows differences between total trade from Campos do Jordão throughout time.

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

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