TimesFM
	
TimesFM (Time Series Foundation Model) is a pretrained time-series foundation model developed by Google Research for time-series forecasting.
	
		
	
	
		Updates
	
- October 2, 2025: We changed the structure of the model to fuse QKV matrices into one for speed optimization.
Please reinstall the latest version of the timesfm package to reflect these changes. Results should be unchanged.
Resources and Technical Documentation:
Authors: Google Research
This checkpoint is not an officially supported Google product. See TimesFM in BigQuery for Google official support.
	
		
	
	
		Checkpoint timesfm-2.5-200m
	
timesfm-2.5-200m is the third open model checkpoint.
	
		
	
	
		Data
	
timesfm-2.5-200m is pretrained using
	
		
	
	
		Install
	
pip install from PyPI coming soon. At this point, please run
git clone https://github.com/google-research/timesfm.git
cd timesfm
pip install -e .
	
		
	
	
		Code Example
	
import numpy as np
import timesfm
model = timesfm.TimesFM_2p5_200M_torch.from_pretrained("google/timesfm-2.5-200m-pytorch", torch_compile=True)
model.compile(
    timesfm.ForecastConfig(
        max_context=1024,
        max_horizon=256,
        normalize_inputs=True,
        use_continuous_quantile_head=True,
        force_flip_invariance=True,
        infer_is_positive=True,
        fix_quantile_crossing=True,
    )
)
point_forecast, quantile_forecast = model.forecast(
    horizon=12,
    inputs=[
        np.linspace(0, 1, 100),
        np.sin(np.linspace(0, 20, 67)),
    ],  
)
point_forecast.shape  
quantile_forecast.shape