There is a newer version of the record available.

Published March 24, 2026 | Version v7
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

Files (61.5 kB)

Name Size Download all
md5:7ac9b546eed8197afa6b9c94b37bd15f
813 Bytes Preview Download
md5:6ded9a1dbada6d096b0ac16317301a68
3.9 kB Preview Download
md5:e04a3be516e32c787e8a6dea4b9bfcc0
1.4 kB Preview Download
md5:ac5d96c9cf8b6f7cd884ae21da312c65
4.9 kB Download
md5:a3a911c3e0d03fa93a053731b39a6cd7
431 Bytes Preview Download
md5:024bd81959e6385291f1e53ef96df9c8
369 Bytes Preview Download
md5:df415d282a25cf0daa9c34dd28bda0df
4.5 kB Preview Download
md5:7c2dc9ab641e11b9877c0a7c81f05228
334 Bytes Download
md5:64a2885bc70613d96904088121a36dd1
664 Bytes Download
md5:c051954fd075932a49c654079245bf33
684 Bytes Preview Download
md5:ddb95e9d562713548da131eac8dfe28f
401 Bytes Download
md5:049a1a2a808b9c1cccc06b4ec36f9203
360 Bytes Preview Download
md5:b125315f129c86e011ddfb65e58bef14
705 Bytes Preview Download
md5:02500d36cdea09452555f7d78939a672
599 Bytes Preview Download
md5:5ab9e72cb10bd61a159b98d0940bfb26
266 Bytes Preview Download
md5:6d38ab4195eb2a27237b79b6922c8722
345 Bytes Preview Download
md5:49cd9258e98f4698c71a0ba92d0a942d
906 Bytes Preview Download
md5:ae6d3380eed35345939b142965f4de27
363 Bytes Preview Download
md5:887d7b0725acf768698b826a8338aa59
2.2 kB Preview Download
md5:dc211b29d3af4dc6f7a8fdc755bce06a
1.2 kB Preview Download
md5:95c48ada6ec80dacd9a2316023c4f3c9
2.0 kB Download
md5:f5fc7a6151efa36bfc2400110526344a
1.5 kB Preview Download
md5:e86188afefe4a006e7df60ebca862b89
307 Bytes Preview Download
md5:c50bd2e1133d8f215448d9cc51a92b86
847 Bytes Preview Download
md5:50eac1e596249c745efc351e9c149844
817 Bytes Preview Download
md5:c21e1a5f230fed45b63c40a55ff05c11
645 Bytes Preview Download
md5:379c91073d41d8227a3403fb7d4dd6cf
1.6 kB Preview Download
md5:d325e408169e134b0247cd4791270463
1.2 kB Preview Download
md5:668b0acdfa0419b7df7ed7ba882dd56a
764 Bytes Preview Download
md5:074c3017aa6f501d91acb6894c248cec
549 Bytes Download
md5:9ebe8739fa5a11cb656dc934008bf66c
318 Bytes Preview Download
md5:1f3bcf20377597b085d58392c4553acf
845 Bytes Preview Download
md5:9d69fb57bc9dbfb492c95fc77ab31831
1.6 kB Preview Download
md5:f41e21b18ea170146bba70c4adfd54f2
378 Bytes Preview Download
md5:f4b7d1ad53bb56c05465a89e7b460aa1
876 Bytes Preview Download
md5:a317d202859508fa6745d60dcadd8999
794 Bytes Preview Download
md5:1a48bc8b60f64b8f4cd66f130f380c33
126 Bytes Preview Download
md5:cfbc2846cf98e8cd54d722b64c3a460c
858 Bytes Preview Download
md5:0d3e0939fcfa71f6817c22327a0f3e88
690 Bytes Preview Download
md5:39f611c68b58c6c18c84337760154de7
1.5 kB Preview Download
md5:f41cc9422e4713af0b0548658ca22c53
1.1 kB Preview Download
md5:39c83d89eb9074cd6b33a9b3f8f9c77c
1.1 kB Preview Download
md5:66076469da6d60f6eb1b5af8aba04e54
755 Bytes Preview Download
md5:ef1f30efb285c9676465b55f8d941a2e
288 Bytes Preview Download
md5:f79dba7f150e6beff3c863cb7dd9e3f7
1.1 kB Preview Download
md5:eef1c314bcf0a05d0b7d077fca4d30b1
3.2 kB Preview Download
md5:c4fc0f4b35627afbf2b100b2376cc1e1
9.1 kB Preview Download
md5:ae0a6dc6cca3924b548833fe479538a1
674 Bytes Preview Download
md5:e05372a34c8b35d0abc9d6a756ae61ec
305 Bytes Preview Download
md5:b24db5c8391ec5c5d93cd0ac083acbdf
5 Bytes Download
md5:e1b6c24cfb55fdc089cf6687a645a8e9
698 Bytes Preview Download

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)