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  "documentTitle": "2019 Air Street Capital The State of AI Report 2019",
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      "text": "Energy: Grid scale electricity is currently hard to store. This creates a substantial economic and environmental cost for underestimating demand (use of peaker plants; blackouts) and overestimating demand (wasted energy).",
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      "text": "Invenia is an early leader in this space. Rather than operating as a traditional energy utility, they operate as a virtual utility and are paid by Independent System Operators in various US electricity grids (California, Texas) for making more accurate predictions than other participants. Their system makes use of weather information, grid operation data and power flows to predict demand.",
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