Memvisualisasikan semua proyek untuk satu negara dan tahun
Sekarang, Anda akan membuat plot garis menggunakan data yang telah difilter untuk semua proyek yang terjadi di Brazil pada tahun fiskal 2018. Pada latihan sebelumnya, label telah ditambahkan untuk Anda. Saat membuat plot ini, Anda akan berlatih menambahkan label Anda sendiri yang akan muncul ketika Anda melakukan knit pada laporan.
Latihan ini adalah bagian dari kursus
Membuat Laporan dengan R Markdown
Petunjuk latihan
- Dalam potongan kode
brazil-investment-projects-2018, buatlah scatterplot dari databrazil_investment_projects_2018. - Tambahkan judul "Investment Services Projects in Brazil in 2018" pada plot.
- Beri label sumbu x "Date Disclosed" dan sumbu y "Total IFC Investment in Dollars in Millions".
Latihan interaktif praktis
Cobalah latihan ini dengan menyelesaikan kode contoh berikut.
{"investment_report.Rmd":"---\ntitle: \"Investment Report\"\ndate: \"`r format(Sys.time(), '%d %B %Y')`\"\noutput: html_document\n---\n\n```{r data, include = FALSE}\nlibrary(readr)\nlibrary(dplyr)\nlibrary(ggplot2)\n\ninvestment_annual_summary <- read_csv(\"https://assets.datacamp.com/production/repositories/5756/datasets/d0251f26117bbcf0ea96ac276555b9003f4f7372/investment_annual_summary.csv\")\ninvestment_services_projects <- read_csv(\"https://assets.datacamp.com/production/repositories/5756/datasets/bcb2e39ecbe521f4b414a21e35f7b8b5c50aec64/investment_services_projects.csv\")\n```\n\n\n## Datasets \n\n### Investment Annual Summary\n\nThe `investment_annual_summary` dataset provides a summary of the dollars in millions provided to each region for each fiscal year, from 2012 to 2018.\n```{r investment-annual-summary}\nggplot(investment_annual_summary, aes(x = fiscal_year, y = dollars_in_millions, color = region)) +\n geom_line() +\n labs(\n title = \"Investment Annual Summary\",\n x = \"Fiscal Year\",\n y = \"Dollars in Millions\"\n )\n```\n\n### Investment Projects in Brazil\n\nThe `investment_services_projects` dataset provides information about each investment project from 2012 to 2018. Information listed includes the project name, company name, sector, project status, and investment amounts.\n```{r brazil-investment-projects}\nbrazil_investment_projects <- investment_services_projects %>%\n filter(country == \"Brazil\") \n\nggplot(brazil_investment_projects, aes(x = date_disclosed, y = total_investment, color = status)) +\n geom_point() +\n labs(\n title = \"Investment Services Projects in Brazil\",\n x = \"Date Disclosed\",\n y = \"Total IFC Investment in Dollars in Millions\"\n )\n```\n\n### Investment Projects in Brazil in 2018\n\n```{r brazil-investment-projects-2018}\nbrazil_investment_projects_2018 <- investment_services_projects %>%\n filter(country == \"Brazil\",\n date_disclosed >= \"2017-07-01\",\n date_disclosed <= \"2018-06-30\") \n\nggplot(___, aes(x = date_disclosed, y = total_investment, color = status)) +\n geom_point() +\n labs(\n title = ___,\n x = ___,\n y = ___\n ) \n```\n\n\n"}