Moirai frontend
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Updated
Apr 4, 2026 - TypeScript
Moirai frontend
Example of different time series forecasting models and processing methods.
This project was driven by the need to provide our client Mela, a startup focusing on simplifying cryptocurrency investments, with a reliable and scalable platform for backtesting trading strategies. Additionally, leveraging advanced forecasting methods would enhance the platform's capability to predict future price trends with greater accuracy.
Self-hosted forecasting + prediction service. Five zero-shot time-series foundation models (Chronos-2, TimesFM 2.5, Moirai-2, Toto-1, Sundial) across six forecast types, plus nine supervised tabular ML backends (LightGBM, XGBoost, sklearn family) with calibrated / stacking / diversified meta-learners. Unified REST API + MCP server.
Digital Control Manager Backend
Benchmarking zero-shot and fine-tuned time series foundation models for process model forecasting on directly-follows time series from event logs.
Implementation of Salesforce's Moirai moel
Backtesting popular Foundation models developed by Salesforce, Google, IBM, & Amazon that supports zero shot forecasting.
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