Algorithms and instructions for fine-tuning LLMs with FELT Labs
Full tutorial: https://medium.com/@breta.hajek/fine-tuning-large-language-models-with-felt-labs-full-guide-3f1c3fcc9af6
Does your project have a specific need for fine-tuning LLMs? Contact us at [email protected], and our team will help you with that!
Provider: https://provider.feltlabs.ai/
File URL: https://raw.githubusercontent.com/FELT-Labs/llm-finetuning/main/algorithm.py
Entry point: python3 $ALGO
Docker image: feltlabs/llm-compute:latest
Access type: Compute
Provider: https://provider.feltlabs.ai/
File URL: https://raw.githubusercontent.com/FELT-Labs/llm-finetuning/main/dataset.json
Go to https://app.feltlabs.ai/learning/single and do following steps:
- Select your dataset
- Select fine-tuning algorithm
- Pick hyperparameters
- Start training
Use inference.ipynb notebook for running the inference. You can use it through Google Colab: https://colab.research.google.com/github/FELT-Labs/llm-finetuning/blob/main/inference.ipynb