Toto 2.0: Time Series Forecasting Enters the Scaling Era

· ArXiv · AI/CL/LG ·

Toto 2.0 releases five open-weights time series forecasting models (4M–2.5B parameters) under Apache 2.0, setting new SOTA on BOOM, GIFT-Eval, and TIME benchmarks.

Categories: Model Releases, OSS & Tools

Excerpt

We show that time series foundation models scale: a single training recipe produces reliable forecast-quality improvements from 4M to 2.5B parameters. We release Toto 2.0, a family of five open-weights forecasting models trained under this recipe. The Toto 2.0 family sets a new state of the art on three forecasting benchmarks: BOOM, our observability benchmark; GIFT-Eval, the standard general-purpose benchmark; and the recent contamination-resistant TIME benchmark. This report describes our experimental results and details the design decisions behind Toto 2.0: its architecture and training recipe, training data, and the u-muP hyperparameter transfer pipeline. All five base checkpoints are released under Apache 2.0.