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---
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 <b>first open-source foundation model for time series forecasting</b>!
Twitter Thread: https://twitter.com.
HuggingFace: https://huggingface.co/time-series-foundation-models/Lag-Llama
Colab Demo: https://colab.research.google.com/drive/13HHKYL_HflHBKxDWycXgIUAHSeHRR5eo?usp=sharing
Paper: https://time-series-foundation-models.github.io/lag-llama.pdf
arXiv has a previous outdated version of the paper and is still being updated with the latest version; please use the above link to access the latest version.
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This repository houses the Lag-Llama architecture.
<b>Current Features:</b>
💫 <b>Zero-shot forecasting</b> on a dataset of <b>any frequency</b> for <b>any prediction length</b>, using the <a href="https://colab.research.google.com/drive/13HHKYL_HflHBKxDWycXgIUAHSeHRR5eo?usp=sharing">Colab Demo.</a><br/>
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Coming Soon:
⭐ An <b>online gradio demo</b> where you can upload time series and get zero-shot predictions.
⭐ Features for <b>finetuning</b> the foundation model
⭐ Features for <b>pretraining</b> Lag-Llama on your own large-scale data
⭐ Scripts to <b>reproduce</b> all results in the paper.
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Stay Tuned!🦙 |