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vividfog/nordpool-predict-fi

A Python app and ML model that predicts spot prices for the Nordpool FI market.

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What it does

This project forecasts electricity spot prices in Finland's Nordpool energy market up to 7 days in advance, using weather data and machine learning models to predict how much electricity will cost hour by hour. The predictions are published openly online and can be plugged into smart home systems like Home Assistant to help households and businesses automatically respond to price changes.

Why it matters

As energy prices become increasingly volatile, tools that forecast costs in real time create real opportunities for products in smart home automation, energy management, and cost optimization — particularly in Nordic markets where dynamic pricing is already mainstream. The open data and modular design also lower the barrier for founders building energy-aware features into consumer or B2B products without needing to build the forecasting layer from scratch.

7Active

On the radar — signal detected

Stars
141
Forks
32
Contributors
3
Language
Python

Score updated Feb 28, 2026

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