science-llm

Science LLM

A large-scale language model for scientific domain training on redpajama arXiv split

A large-scale language model for scientific domain, trained on redpajama arXiv split

GitHub

122 stars
3 watching
14 forks
Language: Python
last commit: 9 months ago

Related projects:

Repository Description Stars
rdspring1/pytorch_gbw_lm Trains a large-scale PyTorch language model on the 1-Billion Word dataset 123
xverse-ai/xverse-7b A multilingual large language model developed by XVERSE Technology Inc. 50
luogen1996/lavin An open-source implementation of a vision-language instructed large language model 508
bytedance/lynx-llm A framework for training GPT4-style language models with multimodal inputs using large datasets and pre-trained models 229
nanbeige/nanbeige Develops large language models for text understanding and generation tasks. 85
google-deepmind/recurrentgemma An implementation of a fast and efficient language model architecture 607
bilibili/index-1.9b A lightweight, multilingual language model with a long context length 904
ncbi/genegpt An LLM that leverages NCBI Web APIs to answer biomedical information questions with improved accuracy and reliability 379
academic-hammer/hammerllm A large language model pre-trained on Chinese and English data, suitable for natural language processing tasks. 43
davendw49/k2 A large language model trained on geoscience literature and fine-tuned with knowledge-intensive data for academic copilot tasks 170
umass-foundation-model/3d-llm Developing a Large Language Model capable of processing 3D representations as inputs 961
bobazooba/xllm A tool for training and fine-tuning large language models using advanced techniques 381
samholt/l2mac Automates large code generation and writing tasks using a large language model framework 70
vpgtrans/vpgtrans Transfers visual prompt generators across large language models to reduce training costs and enable customization of multimodal LLMs 269
wgryc/phasellm A framework for managing and testing large language models to evaluate their performance and optimize user experiences. 448