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Update ReadMe (#6)

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Co-authored-by: Vijay Ekambaram <vijaye12@users.noreply.huggingface.co>

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  1. README.md +12 -6
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@@ -16,8 +16,8 @@ forecasters, pre-trained on publicly available time series data with various aug
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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 ranging from minutely to hourly resolutions
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- (Ex. 10 min, 15 min, 1 hour, etc.)**
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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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@@ -35,6 +35,12 @@ Stay tuned for the release of the model weights for these newer variants.
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  - Script for Finetuning with cross-channel correlation support - to be added soon
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  ## Benchmark Highlights:
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  - TTM (with less than 1 Million parameters) outperforms the following popular Pre-trained SOTAs demanding several hundred Million to Billions of parameters [paper](https://arxiv.org/pdf/2401.03955v5.pdf):
@@ -102,10 +108,7 @@ time-series variates, a critical capability lacking in existing counterparts.
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  In addition, TTM also supports exogenous infusion and categorical data which is not released as part of this version.
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  Stay tuned for these extended features.
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- ## Recommended Use
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- 1. Users have to externally standard scale their data independently for every channel before feeding it to the model (Refer to [TSP](https://github.com/IBM/tsfm/blob/main/tsfm_public/toolkit/time_series_preprocessor.py), our data processing utility for data scaling.)
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- 2. Enabling any upsampling or prepending zeros to virtually increase the context length for shorter-length datasets is not recommended and will
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- impact the model performance.
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  ### Model Sources
@@ -114,6 +117,9 @@ Stay tuned for these extended features.
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  - **Paper:** https://arxiv.org/pdf/2401.03955v5.pdf
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  - **Paper (Newer variants, extended benchmarks):** https://arxiv.org/pdf/2401.03955.pdf
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  ## Uses
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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
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+ (Ex. 10 min, 15 min, 1 hour.).**
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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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  - Script for Finetuning with cross-channel correlation support - to be added soon
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+ ## Recommended Use
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+ 1. Users have to externally standard scale their data independently for every channel before feeding it to the model (Refer to [TSP](https://github.com/IBM/tsfm/blob/main/tsfm_public/toolkit/time_series_preprocessor.py), our data processing utility for data scaling.)
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+ 2. The current open-source version supports only minutely and hourly resolutions(Ex. 10 min, 15 min, 1 hour.). Other lower resolutions (say weekly, or monthly) are currently not supported in this version, as the model needs a minimum context length of 512 or 1024.
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+ 3. Enabling any upsampling or prepending zeros to virtually increase the context length for shorter-length datasets is not recommended and will
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+ impact the model performance.
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+
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  ## Benchmark Highlights:
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  - TTM (with less than 1 Million parameters) outperforms the following popular Pre-trained SOTAs demanding several hundred Million to Billions of parameters [paper](https://arxiv.org/pdf/2401.03955v5.pdf):
 
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  In addition, TTM also supports exogenous infusion and categorical data which is not released as part of this version.
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  Stay tuned for these extended features.
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  ### Model Sources
 
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  - **Paper:** https://arxiv.org/pdf/2401.03955v5.pdf
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  - **Paper (Newer variants, extended benchmarks):** https://arxiv.org/pdf/2401.03955.pdf
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+ ### External Blogs on TTM
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+ - https://aihorizonforecast.substack.com/p/tiny-time-mixersttms-powerful-zerofew
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+ - https://medium.com/@david.proietti_17/predicting-venetian-lagoon-tide-levels-with-multivariate-time-series-modeling-8bafdf229588
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  ## Uses
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