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Using Cake for Darts

Darts is a Python library for time series forecasting, offering a unified API for statistical, deep learning, and ensemble models.
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How it works

Build and compare time series models with Darts on Cake

Cake lets you operationalize Darts for forecasting, experimentation, and benchmarking across statistical and neural time series models.

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Unified forecasting interface

Run ARIMA, RNNs, TCNs, and transformers from one consistent API.

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Automated experimentation and backtesting

Use Cake to scale experiments and version results across multiple models.

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Reproducible, policy-governed pipelines

Apply governance, auditability, and resource controls to Darts forecasting workflows.

Frequently asked questions about Cake and Darts

What is Darts?
Darts is a Python library for time series forecasting that supports classical and deep learning models under a unified API.
How does Cake help with Darts?
Cake enables scalable experimentation, evaluation, and governance for Darts-based forecasting pipelines.
What types of models can I use in Darts?
Darts supports ARIMA, exponential smoothing, RNNs, transformers, and hybrid models.
Can I compare multiple models easily with Darts?
Yes—Darts is designed for side-by-side benchmarking and backtesting across forecasting models.
Does Cake provide reproducibility for Darts workflows?
Absolutely—Cake logs metrics, tracks parameters, and manages runs for full experiment traceability.
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