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Scientific topics: Gaussian processes

and Keywords: Large Language Model

and Resource type: e-learning

5 e-learning materials found
  • e-learning

    Fine-tuning a LLM for DNA Sequence Classification

    •• intermediate
    Statistics and probability Large Language Model Statistics and machine learning ai-ml elixir jupyter-notebook
  • e-learning

    Pretraining a Large Language Model (LLM) from Scratch on DNA Sequences

    •• intermediate
    Statistics and probability Large Language Model Statistics and machine learning ai-ml elixir jupyter-notebook
  • e-learning

    Predicting Mutation Impact with Zero-shot Learning using a pretrained DNA LLM

    •• intermediate
    Statistics and probability Large Language Model Statistics and machine learning ai-ml elixir jupyter-notebook
  • e-learning

    Optimizing DNA Sequences for Biological Functions using a DNA LLM

    •• intermediate
    Statistics and probability Large Language Model Statistics and machine learning ai-ml elixir jupyter-notebook work-in-progress
  • e-learning

    Generating Artificial Yeast DNA Sequences using a DNA LLM

    •• intermediate
    Statistics and probability Large Language Model Statistics and machine learning ai-ml elixir jupyter-notebook
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TeSS has received funding from the European Union’s Horizon 2020 research and innovation programme under grant agreement No. 676559.