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@@ -25,7 +25,7 @@ It is an instruct fine-tuned version of the [Bielik-11B-v2](https://huggingface.
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  Forementioned model stands as a testament to the unique collaboration between the open-science/open-souce project SpeakLeash and the High Performance Computing (HPC) center: ACK Cyfronet AGH.
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  Developed and trained on Polish text corpora, which has been cherry-picked and processed by the SpeakLeash team, this endeavor leverages Polish large-scale computing infrastructure,
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  specifically within the PLGrid environment, and more precisely, the HPC centers: ACK Cyfronet AGH.
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- The creation and training of the Bielik-11B-v2.2-Instruct was propelled by the support of computational grant number PLG/2024/016951, conducted on the Helios supercomputer,
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  enabling the use of cutting-edge technology and computational resources essential for large-scale machine learning processes.
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  As a result, the model exhibits an exceptional ability to understand and process the Polish language, providing accurate responses and performing a variety of linguistic tasks with high precision.
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  Forementioned model stands as a testament to the unique collaboration between the open-science/open-souce project SpeakLeash and the High Performance Computing (HPC) center: ACK Cyfronet AGH.
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  Developed and trained on Polish text corpora, which has been cherry-picked and processed by the SpeakLeash team, this endeavor leverages Polish large-scale computing infrastructure,
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  specifically within the PLGrid environment, and more precisely, the HPC centers: ACK Cyfronet AGH.
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+ The creation and training of the Bielik-11B-v2.2-Instruct was propelled by the support of computational grant number PLG/2024/016951, conducted on the Athena and Helios supercomputer,
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  enabling the use of cutting-edge technology and computational resources essential for large-scale machine learning processes.
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  As a result, the model exhibits an exceptional ability to understand and process the Polish language, providing accurate responses and performing a variety of linguistic tasks with high precision.
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