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      "text": "Copernicus provides the necessary datasets to develop tools that are able to raise awareness on environmental health (e.g. on pollen dispersion or UV index).",
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      "text": "GLOBAL CAMS MODELS -> Better measures to avoid pollution peaks -> Reduced air pollution -> INCREASED VISIBILITY DUE TO AVOIDED POLLUTION PEAKS / IMPROVED PUBLIC HEALTH; GLOBAL CAMS MODELS -> Improved knowledge on the air quality trends -> Improved ability to understand the origins of health issues linked to air fluxes -> AWARENESS RAISING ON DISEASES IN THE POPULATION",
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