Hacker News
Linking pages
- Decentralizing DevRel https://dx.tips/huggingface 86 comments
- GitHub - artidoro/qlora: QLoRA: Efficient Finetuning of Quantized LLMs https://github.com/artidoro/qlora 5 comments
- LLM Ecosystem: Quantization, RAG, Agents, and More | Pinecone https://www.pinecone.io/learn/llm-ecosystem/ 2 comments
- AI workflow automation, LLMs leaderboard rankings, Skybox images from a sketch, Windows copilot and more https://aibrews.substack.com/p/ai-workflow-automation-llms-leaderboard 0 comments
- Extended Guide: Instruction-tune Llama 2 https://www.philschmid.de/instruction-tune-llama-2 0 comments
- Navigating the Fine-Tuning Landscape – Transmuting Language Models with FFT, SFT, and Qlora on Colab | One https://blog.closex.org/posts/80489434/index.html 0 comments
- List of Artificial Intelligence AI Advancements by Non-Profit Researchers - MarkTechPost https://www.marktechpost.com/2023/10/27/list-of-artificial-intelligence-ai-advancements-by-non-profit-researchers/ 0 comments
- GitHub - mddunlap924/LangChain-SynData-RAG-Eval: LangChain, Llama2-Chat, and zero- and few-shot prompting are used to generate synthetic datasets for IR and RAG system evaluation https://github.com/mddunlap924/LangChain-SynData-RAG-Eval 0 comments
- How to Fine-Tune LLMs in 2024 with Hugging Face https://www.philschmid.de/fine-tune-llms-in-2024-with-trl 0 comments
- Exploring Code LLMs | KiloBytes by KB https://kshitij-banerjee.github.io/2024/04/14/exploring-code-llms/ 0 comments
- What is QLoRA?: A Visual Guide to Efficient Finetuning of Quantized LLMs https://open.substack.com/pub/codecompass00/p/qlora-visual-guide-finetune-quantized-llms-peft?r=rcorn 0 comments
- What is QLoRA?: A Visual Guide to Efficient Finetuning of Quantized LLMs https://codecompass00.substack.com/p/qlora-visual-guide-finetune-quantized-llms-peft 0 comments
- Training a bot on my own messages for fun and chaos - aditya https://adibytes.dev/writing/training-a-bot-on-myself/ 0 comments
Related searches:
Search whole site: site:huggingface.co
Search title: Making LLMs even more accessible with bitsandbytes, 4-bit quantization and QLoRA
See how to search.