Time-Series LLMs, Explained with t0-alpha
t0-alpha is a decoder-style patch transformer for probabilistic time-series forecasting. Raw series are split into 32-step patches, embedded, processed through causal time-attention and group-attention layers, and decoded into future quantiles rather than a single point forecast. The post Time-Serie

t0-alpha is a decoder-style patch transformer for probabilistic time-series forecasting. Raw series are split into 32-step patches, embedded, processed through causal time-attention and group-attention layers, and decoded into future quantiles rather than a single point forecast. The post Time-Series LLMs, Explained with t0-alpha appeared first on Towards Data Science.
Key Takeaways
- •t0-alpha is a decoder-style patch transformer for probabilistic time-series forecasting
- •This story was reported by Towards Data Science, covering developments in the newsletter space.
- •AI advancements continue to reshape industries — read the full article on Towards Data Science for complete coverage.
📖 Continue reading the full article:
Read Full Article on Towards Data Science →


