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Published April 16, 2026 | Version v8
Dataset Open

Technology Adoption in Latin America (2000-2025): Longitudinal Dataset

Description

Technology Adoption in Latin America (2000-2025): Longitudinal Dataset

Longitudinal dataset (2000-2025) on digital technology adoption indicators across 21 Latin American and Iberian countries. Variables: internet penetration, mobile subscriptions, smartphone adoption, social media usage, e-commerce, digital payments, AI tool usage, digital skills index, and technology anxiety prevalence. Sources: ITU, World Bank, GSMA, Statista.

πŸ“‹ Dataset Information

πŸ—ƒοΈ Files Included

  • technology_adoption_latam_longitudinal_v2.csv β€” Data in CSV format (UTF-8)
  • README.md β€” Dataset overview
  • CODEBOOK.md β€” Variable dictionary
  • METHODOLOGY.md β€” Study design and methodology
  • CITATION.cff / CITATION.bib / CITATION.ris β€” Citation formats
  • datapackage.json β€” Frictionless Data descriptor
  • dataset_description.json β€” schema.org metadata (Google Dataset Search)
  • schema.json β€” Formal column structure
  • checksums.txt β€” MD5/SHA256 hashes for integrity verification

πŸ“– How to Cite

de la Serna, Juan Moises (2026). Technology Adoption in Latin America (2000-2025): Longitudinal Dataset. Zenodo. 10.5281/zenodo.19150863

πŸ”‘ Keywords

technology adoption, digital transformation, Latin America, internet penetration, smartphone, AI adoption, longitudinal dataset, digital divide

βš–οΈ License and Use

Published under Creative Commons Attribution 4.0 International (CC BY 4.0). Free to share, adapt, and use commercially with appropriate attribution.

πŸ‘€ Author

de la Serna, Juan Moises β€” ORCID: 0000-0002-8401-8018 β€”

Files

ACCESSIBILITY.md

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Additional details

Related works

Is part of
Dataset: 10.5281/zenodo.18881117 (DOI)
Dataset: 10.5281/zenodo.18881119 (DOI)
Is variant form of
Dataset: 10.5281/zenodo.18881123 (DOI)