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Saylac is an R/Shiny application for multidisciplinary spatial, longitudinal, time-series, forecasting, and diagnostic analysis of global, national, and regional indicators.
SAYLAC abbreviates Spatial Analysis of Yearly, Longitudinal, and Areal Change.
The package keeps the earlier SAW-SIMODI-SURAD analytical engine but presents it through a clearer and more memorable CRAN-facing name. It can be used for indicators from education, health, poverty, economy, environment, demography, infrastructure, governance, and other development fields.
The live application is available at:
https://muse252.shinyapps.io/Saylac_Shiny_App_Ready/
After CRAN acceptance, install with:
install.packages("Saylac")For GitHub development installation, use the repository once it is public:
remotes::install_github("Abdisalammuse/Saylac", dependencies = TRUE)library(Saylac)
run_saylac()Backward-compatible launch command:
run_saw_simodi_surad()saylac_example_data()The app accepts country-year data in CSV format. A common structure is:
Country,Year,Value
Kenya,2020,7.9
Uganda,2020,6.1
The platform was first applied in:
Touryare, M. S. M., & Mohamud, M. A. (2026). Mapping the path to SDG 4 through integrated spatiotemporal forecasting of educational attainment in Eastern Africa from 1990 to 2030. Discover Sustainability. https://doi.org/10.1007/s43621-026-04022-x
citation("Saylac")GPL (>= 3)
These binaries (installable software) and packages are in development.
They may not be fully stable and should be used with caution. We make no claims about them.