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      "text": "The system has more than halved the mean absolute error (MAE) of the ESO's previous forecast with a lead time of 1 hour and reduced the MAE of a 24 hour lead time forecast by 14%.",
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      "text": "National Grid Electricity System Operator (ESO) are responsible for balancing electricity supply and demand in real time. Forecasts of electricity supply and demand are essential for this task.\nOpen Climate Fix worked with ESO to build a new forecasting system based on the Temporal Fusion Transformer, which has been delivering forecasts to the control room since May 2021.\nThe system has more than halved the mean absolute error (MAE) of the ESO's previous forecast with a lead time of 1 hour and reduced the MAE of a 24 hour lead time forecast by 14%. This should lower carbon emissions and costs.",
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