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@@ -21,7 +21,7 @@ TinyTimeMixers (TTMs) are compact pre-trained models for Multivariate Time-Serie
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  TTM outperforms several popular benchmarks demanding billions of parameters in zero-shot and few-shot forecasting. TTMs are lightweight
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  forecasters, pre-trained on publicly available time series data with various augmentations. TTM provides state-of-the-art zero-shot forecasts and can easily be
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- fine-tuned for multi-variate forecasts with just 5% of the training data to be competitive. Refer to our [paper](https://arxiv.org/pdf/2401.03955v5.pdf) for more details.
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  **The current open-source version supports point forecasting use-cases specifically ranging from minutely to hourly resolutions
@@ -30,9 +30,47 @@ fine-tuned for multi-variate forecasts with just 5% of the training data to be c
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  **Note that zeroshot, fine-tuning and inference tasks using TTM can easily be executed in 1 GPU machine or in laptops too!!**
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- **Recent updates:** We have developed more sophisticated variants of TTMs (TTM-B, TTM-E and TTM-A), featuring extended benchmarks that compare them with some of the latest models
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- such as TimesFM, Moirai, Chronos, Lag-llama, and Moment. For full details, please refer to the latest version of our [paper](https://arxiv.org/pdf/2401.03955.pdf).
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- Stay tuned for the release of the model weights for these newer variants.
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
 
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  ## How to Get Started with the Model
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@@ -84,17 +122,6 @@ only 3-6 hours using 6 A100 GPUs, as opposed to several days or weeks in traditi
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  Each pre-trained model will be released in a different branch name in this model card. Kindly access the required model using our
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  getting started [notebook](https://github.com/IBM/tsfm/blob/main/notebooks/hfdemo/ttm_getting_started.ipynb) mentioning the branch name.
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- ## Model Releases (along with the branch name where the models are stored):
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-
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- - **512-96:** Given the last 512 time-points (i.e. context length), this model can forecast up to next 96 time-points (i.e. forecast length)
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- in future. This model is targeted towards a forecasting setting of context length 512 and forecast length 96 and
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- recommended for hourly and minutely resolutions (Ex. 10 min, 15 min, 1 hour, etc). (branch name: main)
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-
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- - **1024-96:** Given the last 1024 time-points (i.e. context length), this model can forecast up to next 96 time-points (i.e. forecast length)
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- in future. This model is targeted towards a long forecasting setting of context length 1024 and forecast length 96 and
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- recommended for hourly and minutely resolutions (Ex. 10 min, 15 min, 1 hour, etc). (branch name: 1024-96-v1)
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-
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- - Stay tuned for more models !
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  ## Model Details
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  TTM outperforms several popular benchmarks demanding billions of parameters in zero-shot and few-shot forecasting. TTMs are lightweight
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  forecasters, pre-trained on publicly available time series data with various augmentations. TTM provides state-of-the-art zero-shot forecasts and can easily be
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+ fine-tuned for multi-variate forecasts with just 5% of the training data to be competitive. Refer to our [paper](https://arxiv.org/pdf/2401.03955.pdf) for more details.
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  **The current open-source version supports point forecasting use-cases specifically ranging from minutely to hourly resolutions
 
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  **Note that zeroshot, fine-tuning and inference tasks using TTM can easily be executed in 1 GPU machine or in laptops too!!**
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+
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+ ## Model Releases (along with the branch name where the models are stored):
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+
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+
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+ - **512-96:** Given the last 512 time-points (i.e. context length), this model can forecast up to next 96 time-points (i.e. forecast length)
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+ in future. This model is targeted towards a forecasting setting of context length 512 and forecast length 96 and
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+ recommended for hourly and minutely resolutions (Ex. 10 min, 15 min, 1 hour, etc). (branch name: main)
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+
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+ - **1024-96:** Given the last 1024 time-points (i.e. context length), this model can forecast up to next 96 time-points (i.e. forecast length)
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+ in future. This model is targeted towards a long forecasting setting of context length 1024 and forecast length 96 and
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+ recommended for hourly and minutely resolutions (Ex. 10 min, 15 min, 1 hour, etc). (branch name: 1024-96-v1)
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+
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+ - **New Releases (trained on larger pretraining datasets, released on October 2024)**:
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+
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+ - **512-96-r2**: Given the last 512 time-points (i.e. context length), this model can forecast up to next 96 time-points (i.e. forecast length)
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+ in future. This model is pre-trained with a larger pretraining dataset for improved accuracy. Recommended for hourly and minutely
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+ resolutions (Ex. 10 min, 15 min, 1 hour, etc). (branch name: 512-96-r2)
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+
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+ - **1024-96-r2**: Given the last 1024 time-points (i.e. context length), this model can forecast up to next 96 time-points (i.e. forecast length)
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+ in future. This model is pre-trained with a larger pretraining dataset for improved accuracy. Recommended for hourly and minutely
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+ resolutions (Ex. 10 min, 15 min, 1 hour, etc). (branch name: 1024-96-r2)
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+
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+
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+ - **1536-96-r2**: Given the last 1536 time-points (i.e. context length), this model can forecast up to next 96 time-points (i.e. forecast length)
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+ in future. This model is pre-trained with a larger pretraining dataset for improved accuracy. Recommended for hourly and minutely
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+ resolutions (Ex. 10 min, 15 min, 1 hour, etc). (branch name: 1536-96-r2)
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+
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+
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+ ## Model Capabilities
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+ - Zeroshot Multivariate Forecasting
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+ - Finetuned Multivariate Forecasting:
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+ - Channel-Independent Finetuning
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+ - Channel-Mix Finetuning
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+ - **New Releases (extended features released on October 2024)**
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+ - Finetuning and Forecasting with Exogenous/Control Variables
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+ - Finetuning and Forecasting with static categorical features
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+ - Rolling Forecasts - Extend forecast lengths beyond 96 via rolling capability
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+ -
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+
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+
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+
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  ## How to Get Started with the Model
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  Each pre-trained model will be released in a different branch name in this model card. Kindly access the required model using our
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  getting started [notebook](https://github.com/IBM/tsfm/blob/main/notebooks/hfdemo/ttm_getting_started.ipynb) mentioning the branch name.
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  ## Model Details
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