--- license: apache-2.0 tags: - time series - forecasting - pretrained models - foundation models - time series foundation models --- # Lag-Llama: Towards Foundation Models for Probabilistic Time Series Forecasting ![lag-llama-architecture](images/lagllama.webp) Lag-Llama is the first open-source foundation model for time series forecasting! Twitter Thread: https://twitter.com. HuggingFace: {} Colab Demo: {} Paper: {Not arxiv}. arXiv has a previous outdated version of the paper and is still being updated with the latest version; please use the above link to access the latest version. This repository houses the Lag-Llama architecture. Current Features: 1. Zero-shot forecasting on a dataset of any frequency for any prediction length, using the Colab Demo. Coming Soon: 1. An online gradio demo to upload time series and get zero-shot predictions for 1. Features for finetuning the foundation model 2. Features for pretraining Lag-Llama on your own large-scale data 3. Scripts to reproduce all results in the paper.