Green NLP - controlling the carbon footprint in sustainable language technology

Description of the granted funding

GreenNLP addresses the problem of increasing energy consumption caused by modern solutions in natural language processing (NLP). Neural language models and machine translation require heavy computations to train and their size is constantly growing, which makes them expensive to deploy and run. In our project we will reduce the training costs and model sizes by clever optimizations of the underlying machine learning algorithms with techniques that make use of knowledge transfer and compression. Furthermore, we will focus on multilingual solutions that can serve many languages in a single model reducing the number of actively running systems. Finally, we will also openly document and freely distribute all our results to enable efficient reuse of ready-made components to further decrease the carbon footprint of modern language technology.
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Starting year

2023

End year

2025

Granted funding



Filip Ginter Orcid -palvelun logo
318 971 €

Funder

Research Council of Finland

Funding instrument

Targeted Academy projects

Other information

Funding decision number

353167

Fields of science

Computer and information sciences

Research fields

Tietojenkäsittelytieteet

Identified topics

green transition, sustainable development