## ----setup, include = FALSE--------------------------------------------------- knitr::opts_chunk$set( collapse = TRUE, comment = "#>", eval = FALSE ) ## ----load--------------------------------------------------------------------- # library(comexr) # # city_code <- "2611606" # Recife - PE (IBGE) # year_from <- "2024-01" # year_to <- "2024-12" ## ----explore-city------------------------------------------------------------- # comex_filters("city") # 7 filters # comex_details("city") # 7 details (same names as filters) # comex_metrics("city") # only FOB and KG ## ----totals------------------------------------------------------------------- # exports_total <- comex_query_city( # flow = "export", # start_period = year_from, # end_period = year_to, # filters = list(city = city_code), # month_detail = FALSE # ) # # imports_total <- comex_query_city( # flow = "import", # start_period = year_from, # end_period = year_to, # filters = list(city = city_code), # month_detail = FALSE # ) # # exports_total # imports_total ## ----balance------------------------------------------------------------------ # balance <- as.numeric(exports_total$metricFOB) - # as.numeric(imports_total$metricFOB) ## ----top-countries------------------------------------------------------------ # top_export_countries <- comex_query_city( # flow = "export", # start_period = year_from, # end_period = year_to, # details = "country", # filters = list(city = city_code), # month_detail = FALSE # ) # # top_export_countries <- top_export_countries[ # order(-as.numeric(top_export_countries$metricFOB)), # ] # head(top_export_countries, 10) # # top_import_countries <- comex_query_city( # flow = "import", # start_period = year_from, # end_period = year_to, # details = "country", # filters = list(city = city_code), # month_detail = FALSE # ) # top_import_countries <- top_import_countries[ # order(-as.numeric(top_import_countries$metricFOB)), # ] # head(top_import_countries, 10) ## ----top-blocs---------------------------------------------------------------- # exports_by_bloc <- comex_query_city( # flow = "export", # start_period = year_from, # end_period = year_to, # details = "bloc", # filters = list(city = city_code), # month_detail = FALSE # ) # # exports_by_bloc <- exports_by_bloc[ # order(-as.numeric(exports_by_bloc$metricFOB)), # ] # exports_by_bloc ## ----top-products------------------------------------------------------------- # top_export_products <- comex_query_city( # flow = "export", # start_period = year_from, # end_period = year_to, # details = "hs4", # → heading # filters = list(city = city_code), # month_detail = FALSE # ) # # top_export_products <- top_export_products[ # order(-as.numeric(top_export_products$metricFOB)), # ] # head(top_export_products, 10) ## ----top-sections------------------------------------------------------------- # exports_by_section <- comex_query_city( # flow = "export", # start_period = year_from, # end_period = year_to, # details = "section", # filters = list(city = city_code), # month_detail = FALSE # ) # exports_by_section ## ----monthly------------------------------------------------------------------ # exports_monthly <- comex_query_city( # flow = "export", # start_period = year_from, # end_period = year_to, # filters = list(city = city_code), # month_detail = TRUE # ) # exports_monthly # year, monthNumber, metricFOB, metricKG ## ----monthly-plot------------------------------------------------------------- # # Example with base R # exports_monthly$date <- as.Date( # sprintf("%s-%s-01", exports_monthly$year, exports_monthly$monthNumber) # ) # exports_monthly$fob_musd <- as.numeric(exports_monthly$metricFOB) / 1e6 # # plot( # exports_monthly$date, exports_monthly$fob_musd, # type = "b", pch = 19, # xlab = "Month", ylab = "Exports (US$ millions)", # main = sprintf("Recife - PE exports, %s to %s", year_from, year_to) # ) ## ----yearly------------------------------------------------------------------- # exports_yearly <- comex_query_city( # flow = "export", # start_period = "2019-01", # end_period = "2024-12", # filters = list(city = city_code), # month_detail = FALSE # ) # exports_yearly # one row per year ## ----drilldown---------------------------------------------------------------- # # 1. Find the top HS4 # top_hs4 <- head(top_export_products, 1)$headingCode # # # 2. Break that product down by destination # top_destinations_for_product <- comex_query_city( # flow = "export", # start_period = year_from, # end_period = year_to, # details = c("country", "hs4"), # filters = list(city = city_code, hs4 = top_hs4), # month_detail = FALSE # ) # top_destinations_for_product ## ----lookup------------------------------------------------------------------- # recife <- comex_cities() # recife[grepl("Recife", recife$text, ignore.case = TRUE), ] # # Use the `id` column (IBGE coMunGeo) in subsequent filters. ## ----detail------------------------------------------------------------------- # comex_city_detail(2611606) # #> $coMunGeo "2611606" # #> $noMun "RECIFE" # #> $noMunMin "Recife" # #> $sgUf "PE"