---
title: "Introduction to pkmapr"
output: rmarkdown::html_vignette
vignette: >
  %\VignetteIndexEntry{intro-to-pkmapr}
  %\VignetteEngine{knitr::rmarkdown}
  %\VignetteEncoding{UTF-8}
pkgdown:
  as_is: true
---

```{r, include = FALSE}
knitr::opts_chunk$set(
  collapse = TRUE,
  comment = "#>",
  eval = FALSE
)
```


```{r setup}
library(pkmapr)
```

## Installation

Install pkmapr from GitHub:

```r
remotes::install_github("abdullahumer1101/pkmapr")
```

Or:

```r
# install.packages("pkmapr", repos = "https://abdullahumer1101.r-universe.dev")
```

## Your first map

Get province boundaries and create a quick map:

```r
provinces <- get_provinces()
pk_map(provinces)
```

## Look up names before joining

Always check official names before filtering or joining:

```r
# All provinces with their codes
pk_dictionary("provinces")

# Districts in Punjab
pk_dictionary("districts", province = "Punjab")

# Tehsils in Lahore district
pk_dictionary("tehsils", district = "Lahore")
```

## Join your own data

```r
library(dplyr)

# Example: district-level data
my_data <- data.frame(
  district_code = c("PK603", "PK604"),
  value = c(42, 37)
)

districts <- get_districts() |>
  pk_join(my_data, by = "district_code")

# Map the result
pk_map(districts, fill = "value", title = "My Values")
```

## Interactive maps

```r
pk_map_interactive(districts, 
                    fill = "value",
                    popup = c("district_name", "value"))
```

## Next steps

- `vignette("spatial-analysis-pkmapr")` for buffers, centroids, and point-in-polygon
- `vignette("epidemiology-pkmapr")` for spatial autocorrelation and hotspots
