Data

Affiliation of research teams building notable AI systems, by year of publication

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What you should know about this indicator

The distinction is documented in Academia and Industry. Systems are categorized as “Industry” if their authors are affiliated with private sector organizations, “Academia” if the authors are affiliated with universities or academic institutions, or “Industry - Academia Collaboration” when at least 30% of the authors are from each. Possible values: Industry, Research Collective, Academia, Industry - Academia Collaboration (Industry leaning), Industry - Academia Collaboration (Academia leaning), Non-profit

Affiliation of research teams building notable AI systems, by year of publication
Describes the sector where the authors of a notable AI system have their primary affiliations. The 2024 data is incomplete and was last updated 01 October 2024.
Source
Epoch (2024) – with major processing by Our World in Data
Last updated
October 1, 2024
Next expected update
November 2024
Date range
1950–2024
Unit
AI systems

Sources and processing

This data is based on the following sources

Retrieved on
October 1, 2024
Citation
This is the citation of the original data obtained from the source, prior to any processing or adaptation by Our World in Data. To cite data downloaded from this page, please use the suggested citation given in Reuse This Work below.
Epoch AI, ‘Parameter, Compute and Data Trends in Machine Learning’. Published online at epochai.org. Retrieved from: ‘https://epochai.org/data/epochdb/visualization’ [online resource]

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Citations

How to cite this page

To cite this page overall, including any descriptions, FAQs or explanations of the data authored by Our World in Data, please use the following citation:

“Data Page: Affiliation of research teams building notable AI systems, by year of publication”, part of the following publication: Charlie Giattino, Edouard Mathieu, Veronika Samborska and Max Roser (2023) - “Artificial Intelligence”. Data adapted from Epoch. Retrieved from https://ourworldindata.org/grapher/affiliation-researchers-building-artificial-intelligence-systems-all [online resource]
How to cite this data

In-line citationIf you have limited space (e.g. in data visualizations), you can use this abbreviated in-line citation:

Epoch (2024) – with major processing by Our World in Data

Full citation

Epoch (2024) – with major processing by Our World in Data. “Affiliation of research teams building notable AI systems, by year of publication” [dataset]. Epoch, “Parameter, Compute and Data Trends in Machine Learning” [original data]. Retrieved October 13, 2024 from https://ourworldindata.org/grapher/affiliation-researchers-building-artificial-intelligence-systems-all